1 /* 2 This is where the abstract matrix operations are defined 3 Portions of this code are under: 4 Copyright (c) 2022 Advanced Micro Devices, Inc. All rights reserved. 5 */ 6 7 #include <petsc/private/matimpl.h> /*I "petscmat.h" I*/ 8 #include <petsc/private/isimpl.h> 9 #include <petsc/private/vecimpl.h> 10 11 /* Logging support */ 12 PetscClassId MAT_CLASSID; 13 PetscClassId MAT_COLORING_CLASSID; 14 PetscClassId MAT_FDCOLORING_CLASSID; 15 PetscClassId MAT_TRANSPOSECOLORING_CLASSID; 16 17 PetscLogEvent MAT_Mult, MAT_MultAdd, MAT_MultTranspose; 18 PetscLogEvent MAT_MultTransposeAdd, MAT_Solve, MAT_Solves, MAT_SolveAdd, MAT_SolveTranspose, MAT_MatSolve, MAT_MatTrSolve; 19 PetscLogEvent MAT_SolveTransposeAdd, MAT_SOR, MAT_ForwardSolve, MAT_BackwardSolve, MAT_LUFactor, MAT_LUFactorSymbolic; 20 PetscLogEvent MAT_LUFactorNumeric, MAT_CholeskyFactor, MAT_CholeskyFactorSymbolic, MAT_CholeskyFactorNumeric, MAT_ILUFactor; 21 PetscLogEvent MAT_ILUFactorSymbolic, MAT_ICCFactorSymbolic, MAT_Copy, MAT_Convert, MAT_Scale, MAT_AssemblyBegin; 22 PetscLogEvent MAT_QRFactorNumeric, MAT_QRFactorSymbolic, MAT_QRFactor; 23 PetscLogEvent MAT_AssemblyEnd, MAT_SetValues, MAT_GetValues, MAT_GetRow, MAT_GetRowIJ, MAT_CreateSubMats, MAT_GetOrdering, MAT_RedundantMat, MAT_GetSeqNonzeroStructure; 24 PetscLogEvent MAT_IncreaseOverlap, MAT_Partitioning, MAT_PartitioningND, MAT_Coarsen, MAT_ZeroEntries, MAT_Load, MAT_View, MAT_AXPY, MAT_FDColoringCreate; 25 PetscLogEvent MAT_FDColoringSetUp, MAT_FDColoringApply, MAT_Transpose, MAT_FDColoringFunction, MAT_CreateSubMat; 26 PetscLogEvent MAT_TransposeColoringCreate; 27 PetscLogEvent MAT_MatMult, MAT_MatMultSymbolic, MAT_MatMultNumeric; 28 PetscLogEvent MAT_PtAP, MAT_PtAPSymbolic, MAT_PtAPNumeric, MAT_RARt, MAT_RARtSymbolic, MAT_RARtNumeric; 29 PetscLogEvent MAT_MatTransposeMult, MAT_MatTransposeMultSymbolic, MAT_MatTransposeMultNumeric; 30 PetscLogEvent MAT_TransposeMatMult, MAT_TransposeMatMultSymbolic, MAT_TransposeMatMultNumeric; 31 PetscLogEvent MAT_MatMatMult, MAT_MatMatMultSymbolic, MAT_MatMatMultNumeric; 32 PetscLogEvent MAT_MultHermitianTranspose, MAT_MultHermitianTransposeAdd; 33 PetscLogEvent MAT_Getsymtransreduced, MAT_GetBrowsOfAcols; 34 PetscLogEvent MAT_GetBrowsOfAocols, MAT_Getlocalmat, MAT_Getlocalmatcondensed, MAT_Seqstompi, MAT_Seqstompinum, MAT_Seqstompisym; 35 PetscLogEvent MAT_GetMultiProcBlock; 36 PetscLogEvent MAT_CUSPARSECopyToGPU, MAT_CUSPARSECopyFromGPU, MAT_CUSPARSEGenerateTranspose, MAT_CUSPARSESolveAnalysis; 37 PetscLogEvent MAT_HIPSPARSECopyToGPU, MAT_HIPSPARSECopyFromGPU, MAT_HIPSPARSEGenerateTranspose, MAT_HIPSPARSESolveAnalysis; 38 PetscLogEvent MAT_PreallCOO, MAT_SetVCOO; 39 PetscLogEvent MAT_CreateGraph; 40 PetscLogEvent MAT_SetValuesBatch; 41 PetscLogEvent MAT_ViennaCLCopyToGPU; 42 PetscLogEvent MAT_CUDACopyToGPU, MAT_HIPCopyToGPU; 43 PetscLogEvent MAT_DenseCopyToGPU, MAT_DenseCopyFromGPU; 44 PetscLogEvent MAT_Merge, MAT_Residual, MAT_SetRandom; 45 PetscLogEvent MAT_FactorFactS, MAT_FactorInvS; 46 PetscLogEvent MATCOLORING_Apply, MATCOLORING_Comm, MATCOLORING_Local, MATCOLORING_ISCreate, MATCOLORING_SetUp, MATCOLORING_Weights; 47 PetscLogEvent MAT_H2Opus_Build, MAT_H2Opus_Compress, MAT_H2Opus_Orthog, MAT_H2Opus_LR; 48 49 const char *const MatFactorTypes[] = {"NONE", "LU", "CHOLESKY", "ILU", "ICC", "ILUDT", "QR", "MatFactorType", "MAT_FACTOR_", NULL}; 50 51 /*@ 52 MatSetRandom - Sets all components of a matrix to random numbers. 53 54 Logically Collective 55 56 Input Parameters: 57 + x - the matrix 58 - rctx - the `PetscRandom` object, formed by `PetscRandomCreate()`, or `NULL` and 59 it will create one internally. 60 61 Example: 62 .vb 63 PetscRandomCreate(PETSC_COMM_WORLD,&rctx); 64 MatSetRandom(x,rctx); 65 PetscRandomDestroy(rctx); 66 .ve 67 68 Level: intermediate 69 70 Notes: 71 For sparse matrices that have been preallocated but not been assembled, it randomly selects appropriate locations, 72 73 for sparse matrices that already have nonzero locations, it fills the locations with random numbers. 74 75 It generates an error if used on unassembled sparse matrices that have not been preallocated. 76 77 .seealso: [](ch_matrices), `Mat`, `PetscRandom`, `PetscRandomCreate()`, `MatZeroEntries()`, `MatSetValues()`, `PetscRandomDestroy()` 78 @*/ 79 PetscErrorCode MatSetRandom(Mat x, PetscRandom rctx) 80 { 81 PetscRandom randObj = NULL; 82 83 PetscFunctionBegin; 84 PetscValidHeaderSpecific(x, MAT_CLASSID, 1); 85 if (rctx) PetscValidHeaderSpecific(rctx, PETSC_RANDOM_CLASSID, 2); 86 PetscValidType(x, 1); 87 MatCheckPreallocated(x, 1); 88 89 if (!rctx) { 90 MPI_Comm comm; 91 PetscCall(PetscObjectGetComm((PetscObject)x, &comm)); 92 PetscCall(PetscRandomCreate(comm, &randObj)); 93 PetscCall(PetscRandomSetType(randObj, x->defaultrandtype)); 94 PetscCall(PetscRandomSetFromOptions(randObj)); 95 rctx = randObj; 96 } 97 PetscCall(PetscLogEventBegin(MAT_SetRandom, x, rctx, 0, 0)); 98 PetscUseTypeMethod(x, setrandom, rctx); 99 PetscCall(PetscLogEventEnd(MAT_SetRandom, x, rctx, 0, 0)); 100 101 PetscCall(MatAssemblyBegin(x, MAT_FINAL_ASSEMBLY)); 102 PetscCall(MatAssemblyEnd(x, MAT_FINAL_ASSEMBLY)); 103 PetscCall(PetscRandomDestroy(&randObj)); 104 PetscFunctionReturn(PETSC_SUCCESS); 105 } 106 107 /*@ 108 MatCopyHashToXAIJ - copy hash table entries into an XAIJ matrix type 109 110 Logically Collective 111 112 Input Parameter: 113 . A - A matrix in unassembled, hash table form 114 115 Output Parameter: 116 . B - The XAIJ matrix. This can either be `A` or some matrix of equivalent size, e.g. obtained from `A` via `MatDuplicate()` 117 118 Example: 119 .vb 120 PetscCall(MatDuplicate(A, MAT_DO_NOT_COPY_VALUES, &B)); 121 PetscCall(MatCopyHashToXAIJ(A, B)); 122 .ve 123 124 Level: advanced 125 126 Notes: 127 If `B` is `A`, then the hash table data structure will be destroyed. `B` is assembled 128 129 .seealso: [](ch_matrices), `Mat`, `MAT_USE_HASH_TABLE` 130 @*/ 131 PetscErrorCode MatCopyHashToXAIJ(Mat A, Mat B) 132 { 133 PetscFunctionBegin; 134 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 135 PetscUseTypeMethod(A, copyhashtoxaij, B); 136 PetscFunctionReturn(PETSC_SUCCESS); 137 } 138 139 /*@ 140 MatFactorGetErrorZeroPivot - returns the pivot value that was determined to be zero and the row it occurred in 141 142 Logically Collective 143 144 Input Parameter: 145 . mat - the factored matrix 146 147 Output Parameters: 148 + pivot - the pivot value computed 149 - row - the row that the zero pivot occurred. This row value must be interpreted carefully due to row reorderings and which processes 150 the share the matrix 151 152 Level: advanced 153 154 Notes: 155 This routine does not work for factorizations done with external packages. 156 157 This routine should only be called if `MatGetFactorError()` returns a value of `MAT_FACTOR_NUMERIC_ZEROPIVOT` 158 159 This can also be called on non-factored matrices that come from, for example, matrices used in SOR. 160 161 .seealso: [](ch_matrices), `Mat`, `MatZeroEntries()`, `MatFactor()`, `MatGetFactor()`, 162 `MatLUFactorSymbolic()`, `MatCholeskyFactorSymbolic()`, `MatFactorClearError()`, 163 `MAT_FACTOR_NUMERIC_ZEROPIVOT` 164 @*/ 165 PetscErrorCode MatFactorGetErrorZeroPivot(Mat mat, PetscReal *pivot, PetscInt *row) 166 { 167 PetscFunctionBegin; 168 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 169 PetscAssertPointer(pivot, 2); 170 PetscAssertPointer(row, 3); 171 *pivot = mat->factorerror_zeropivot_value; 172 *row = mat->factorerror_zeropivot_row; 173 PetscFunctionReturn(PETSC_SUCCESS); 174 } 175 176 /*@ 177 MatFactorGetError - gets the error code from a factorization 178 179 Logically Collective 180 181 Input Parameter: 182 . mat - the factored matrix 183 184 Output Parameter: 185 . err - the error code 186 187 Level: advanced 188 189 Note: 190 This can also be called on non-factored matrices that come from, for example, matrices used in SOR. 191 192 .seealso: [](ch_matrices), `Mat`, `MatZeroEntries()`, `MatFactor()`, `MatGetFactor()`, `MatLUFactorSymbolic()`, `MatCholeskyFactorSymbolic()`, 193 `MatFactorClearError()`, `MatFactorGetErrorZeroPivot()`, `MatFactorError` 194 @*/ 195 PetscErrorCode MatFactorGetError(Mat mat, MatFactorError *err) 196 { 197 PetscFunctionBegin; 198 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 199 PetscAssertPointer(err, 2); 200 *err = mat->factorerrortype; 201 PetscFunctionReturn(PETSC_SUCCESS); 202 } 203 204 /*@ 205 MatFactorClearError - clears the error code in a factorization 206 207 Logically Collective 208 209 Input Parameter: 210 . mat - the factored matrix 211 212 Level: developer 213 214 Note: 215 This can also be called on non-factored matrices that come from, for example, matrices used in SOR. 216 217 .seealso: [](ch_matrices), `Mat`, `MatZeroEntries()`, `MatFactor()`, `MatGetFactor()`, `MatLUFactorSymbolic()`, `MatCholeskyFactorSymbolic()`, `MatFactorGetError()`, `MatFactorGetErrorZeroPivot()`, 218 `MatGetErrorCode()`, `MatFactorError` 219 @*/ 220 PetscErrorCode MatFactorClearError(Mat mat) 221 { 222 PetscFunctionBegin; 223 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 224 mat->factorerrortype = MAT_FACTOR_NOERROR; 225 mat->factorerror_zeropivot_value = 0.0; 226 mat->factorerror_zeropivot_row = 0; 227 PetscFunctionReturn(PETSC_SUCCESS); 228 } 229 230 PetscErrorCode MatFindNonzeroRowsOrCols_Basic(Mat mat, PetscBool cols, PetscReal tol, IS *nonzero) 231 { 232 Vec r, l; 233 const PetscScalar *al; 234 PetscInt i, nz, gnz, N, n, st; 235 236 PetscFunctionBegin; 237 PetscCall(MatCreateVecs(mat, &r, &l)); 238 if (!cols) { /* nonzero rows */ 239 PetscCall(MatGetOwnershipRange(mat, &st, NULL)); 240 PetscCall(MatGetSize(mat, &N, NULL)); 241 PetscCall(MatGetLocalSize(mat, &n, NULL)); 242 PetscCall(VecSet(l, 0.0)); 243 PetscCall(VecSetRandom(r, NULL)); 244 PetscCall(MatMult(mat, r, l)); 245 PetscCall(VecGetArrayRead(l, &al)); 246 } else { /* nonzero columns */ 247 PetscCall(MatGetOwnershipRangeColumn(mat, &st, NULL)); 248 PetscCall(MatGetSize(mat, NULL, &N)); 249 PetscCall(MatGetLocalSize(mat, NULL, &n)); 250 PetscCall(VecSet(r, 0.0)); 251 PetscCall(VecSetRandom(l, NULL)); 252 PetscCall(MatMultTranspose(mat, l, r)); 253 PetscCall(VecGetArrayRead(r, &al)); 254 } 255 if (tol <= 0.0) { 256 for (i = 0, nz = 0; i < n; i++) 257 if (al[i] != 0.0) nz++; 258 } else { 259 for (i = 0, nz = 0; i < n; i++) 260 if (PetscAbsScalar(al[i]) > tol) nz++; 261 } 262 PetscCallMPI(MPIU_Allreduce(&nz, &gnz, 1, MPIU_INT, MPI_SUM, PetscObjectComm((PetscObject)mat))); 263 if (gnz != N) { 264 PetscInt *nzr; 265 PetscCall(PetscMalloc1(nz, &nzr)); 266 if (nz) { 267 if (tol < 0) { 268 for (i = 0, nz = 0; i < n; i++) 269 if (al[i] != 0.0) nzr[nz++] = i + st; 270 } else { 271 for (i = 0, nz = 0; i < n; i++) 272 if (PetscAbsScalar(al[i]) > tol) nzr[nz++] = i + st; 273 } 274 } 275 PetscCall(ISCreateGeneral(PetscObjectComm((PetscObject)mat), nz, nzr, PETSC_OWN_POINTER, nonzero)); 276 } else *nonzero = NULL; 277 if (!cols) { /* nonzero rows */ 278 PetscCall(VecRestoreArrayRead(l, &al)); 279 } else { 280 PetscCall(VecRestoreArrayRead(r, &al)); 281 } 282 PetscCall(VecDestroy(&l)); 283 PetscCall(VecDestroy(&r)); 284 PetscFunctionReturn(PETSC_SUCCESS); 285 } 286 287 /*@ 288 MatFindNonzeroRows - Locate all rows that are not completely zero in the matrix 289 290 Input Parameter: 291 . mat - the matrix 292 293 Output Parameter: 294 . keptrows - the rows that are not completely zero 295 296 Level: intermediate 297 298 Note: 299 `keptrows` is set to `NULL` if all rows are nonzero. 300 301 Developer Note: 302 If `keptrows` is not `NULL`, it must be sorted. 303 304 .seealso: [](ch_matrices), `Mat`, `MatFindZeroRows()` 305 @*/ 306 PetscErrorCode MatFindNonzeroRows(Mat mat, IS *keptrows) 307 { 308 PetscFunctionBegin; 309 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 310 PetscValidType(mat, 1); 311 PetscAssertPointer(keptrows, 2); 312 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 313 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 314 if (mat->ops->findnonzerorows) PetscUseTypeMethod(mat, findnonzerorows, keptrows); 315 else PetscCall(MatFindNonzeroRowsOrCols_Basic(mat, PETSC_FALSE, 0.0, keptrows)); 316 if (keptrows && *keptrows) PetscCall(ISSetInfo(*keptrows, IS_SORTED, IS_GLOBAL, PETSC_FALSE, PETSC_TRUE)); 317 PetscFunctionReturn(PETSC_SUCCESS); 318 } 319 320 /*@ 321 MatFindZeroRows - Locate all rows that are completely zero in the matrix 322 323 Input Parameter: 324 . mat - the matrix 325 326 Output Parameter: 327 . zerorows - the rows that are completely zero 328 329 Level: intermediate 330 331 Note: 332 `zerorows` is set to `NULL` if no rows are zero. 333 334 .seealso: [](ch_matrices), `Mat`, `MatFindNonzeroRows()` 335 @*/ 336 PetscErrorCode MatFindZeroRows(Mat mat, IS *zerorows) 337 { 338 IS keptrows; 339 PetscInt m, n; 340 341 PetscFunctionBegin; 342 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 343 PetscValidType(mat, 1); 344 PetscAssertPointer(zerorows, 2); 345 PetscCall(MatFindNonzeroRows(mat, &keptrows)); 346 /* MatFindNonzeroRows sets keptrows to NULL if there are no zero rows. 347 In keeping with this convention, we set zerorows to NULL if there are no zero 348 rows. */ 349 if (keptrows == NULL) { 350 *zerorows = NULL; 351 } else { 352 PetscCall(MatGetOwnershipRange(mat, &m, &n)); 353 PetscCall(ISComplement(keptrows, m, n, zerorows)); 354 PetscCall(ISDestroy(&keptrows)); 355 } 356 PetscFunctionReturn(PETSC_SUCCESS); 357 } 358 359 /*@ 360 MatGetDiagonalBlock - Returns the part of the matrix associated with the on-process coupling 361 362 Not Collective 363 364 Input Parameter: 365 . A - the matrix 366 367 Output Parameter: 368 . a - the diagonal part (which is a SEQUENTIAL matrix) 369 370 Level: advanced 371 372 Notes: 373 See `MatCreateAIJ()` for more information on the "diagonal part" of the matrix. 374 375 Use caution, as the reference count on the returned matrix is not incremented and it is used as part of `A`'s normal operation. 376 377 .seealso: [](ch_matrices), `Mat`, `MatCreateAIJ()`, `MATAIJ`, `MATBAIJ`, `MATSBAIJ` 378 @*/ 379 PetscErrorCode MatGetDiagonalBlock(Mat A, Mat *a) 380 { 381 PetscFunctionBegin; 382 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 383 PetscValidType(A, 1); 384 PetscAssertPointer(a, 2); 385 PetscCheck(!A->factortype, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 386 if (A->ops->getdiagonalblock) PetscUseTypeMethod(A, getdiagonalblock, a); 387 else { 388 PetscMPIInt size; 389 390 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)A), &size)); 391 PetscCheck(size == 1, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Not for parallel matrix type %s", ((PetscObject)A)->type_name); 392 *a = A; 393 } 394 PetscFunctionReturn(PETSC_SUCCESS); 395 } 396 397 /*@ 398 MatGetTrace - Gets the trace of a matrix. The sum of the diagonal entries. 399 400 Collective 401 402 Input Parameter: 403 . mat - the matrix 404 405 Output Parameter: 406 . trace - the sum of the diagonal entries 407 408 Level: advanced 409 410 .seealso: [](ch_matrices), `Mat` 411 @*/ 412 PetscErrorCode MatGetTrace(Mat mat, PetscScalar *trace) 413 { 414 Vec diag; 415 416 PetscFunctionBegin; 417 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 418 PetscAssertPointer(trace, 2); 419 PetscCall(MatCreateVecs(mat, &diag, NULL)); 420 PetscCall(MatGetDiagonal(mat, diag)); 421 PetscCall(VecSum(diag, trace)); 422 PetscCall(VecDestroy(&diag)); 423 PetscFunctionReturn(PETSC_SUCCESS); 424 } 425 426 /*@ 427 MatRealPart - Zeros out the imaginary part of the matrix 428 429 Logically Collective 430 431 Input Parameter: 432 . mat - the matrix 433 434 Level: advanced 435 436 .seealso: [](ch_matrices), `Mat`, `MatImaginaryPart()` 437 @*/ 438 PetscErrorCode MatRealPart(Mat mat) 439 { 440 PetscFunctionBegin; 441 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 442 PetscValidType(mat, 1); 443 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 444 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 445 MatCheckPreallocated(mat, 1); 446 PetscUseTypeMethod(mat, realpart); 447 PetscFunctionReturn(PETSC_SUCCESS); 448 } 449 450 /*@C 451 MatGetGhosts - Get the global indices of all ghost nodes defined by the sparse matrix 452 453 Collective 454 455 Input Parameter: 456 . mat - the matrix 457 458 Output Parameters: 459 + nghosts - number of ghosts (for `MATBAIJ` and `MATSBAIJ` matrices there is one ghost for each matrix block) 460 - ghosts - the global indices of the ghost points 461 462 Level: advanced 463 464 Note: 465 `nghosts` and `ghosts` are suitable to pass into `VecCreateGhost()` or `VecCreateGhostBlock()` 466 467 .seealso: [](ch_matrices), `Mat`, `VecCreateGhost()`, `VecCreateGhostBlock()` 468 @*/ 469 PetscErrorCode MatGetGhosts(Mat mat, PetscInt *nghosts, const PetscInt *ghosts[]) 470 { 471 PetscFunctionBegin; 472 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 473 PetscValidType(mat, 1); 474 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 475 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 476 if (mat->ops->getghosts) PetscUseTypeMethod(mat, getghosts, nghosts, ghosts); 477 else { 478 if (nghosts) *nghosts = 0; 479 if (ghosts) *ghosts = NULL; 480 } 481 PetscFunctionReturn(PETSC_SUCCESS); 482 } 483 484 /*@ 485 MatImaginaryPart - Moves the imaginary part of the matrix to the real part and zeros the imaginary part 486 487 Logically Collective 488 489 Input Parameter: 490 . mat - the matrix 491 492 Level: advanced 493 494 .seealso: [](ch_matrices), `Mat`, `MatRealPart()` 495 @*/ 496 PetscErrorCode MatImaginaryPart(Mat mat) 497 { 498 PetscFunctionBegin; 499 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 500 PetscValidType(mat, 1); 501 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 502 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 503 MatCheckPreallocated(mat, 1); 504 PetscUseTypeMethod(mat, imaginarypart); 505 PetscFunctionReturn(PETSC_SUCCESS); 506 } 507 508 /*@ 509 MatMissingDiagonal - Determine if sparse matrix is missing a diagonal entry (or block entry for `MATBAIJ` and `MATSBAIJ` matrices) in the nonzero structure 510 511 Not Collective 512 513 Input Parameter: 514 . mat - the matrix 515 516 Output Parameters: 517 + missing - is any diagonal entry missing 518 - dd - first diagonal entry that is missing (optional) on this process 519 520 Level: advanced 521 522 Note: 523 This does not return diagonal entries that are in the nonzero structure but happen to have a zero numerical value 524 525 .seealso: [](ch_matrices), `Mat` 526 @*/ 527 PetscErrorCode MatMissingDiagonal(Mat mat, PetscBool *missing, PetscInt *dd) 528 { 529 PetscFunctionBegin; 530 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 531 PetscValidType(mat, 1); 532 PetscAssertPointer(missing, 2); 533 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix %s", ((PetscObject)mat)->type_name); 534 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 535 PetscUseTypeMethod(mat, missingdiagonal, missing, dd); 536 PetscFunctionReturn(PETSC_SUCCESS); 537 } 538 539 // PetscClangLinter pragma disable: -fdoc-section-header-unknown 540 /*@C 541 MatGetRow - Gets a row of a matrix. You MUST call `MatRestoreRow()` 542 for each row that you get to ensure that your application does 543 not bleed memory. 544 545 Not Collective 546 547 Input Parameters: 548 + mat - the matrix 549 - row - the row to get 550 551 Output Parameters: 552 + ncols - if not `NULL`, the number of nonzeros in `row` 553 . cols - if not `NULL`, the column numbers 554 - vals - if not `NULL`, the numerical values 555 556 Level: advanced 557 558 Notes: 559 This routine is provided for people who need to have direct access 560 to the structure of a matrix. We hope that we provide enough 561 high-level matrix routines that few users will need it. 562 563 `MatGetRow()` always returns 0-based column indices, regardless of 564 whether the internal representation is 0-based (default) or 1-based. 565 566 For better efficiency, set `cols` and/or `vals` to `NULL` if you do 567 not wish to extract these quantities. 568 569 The user can only examine the values extracted with `MatGetRow()`; 570 the values CANNOT be altered. To change the matrix entries, one 571 must use `MatSetValues()`. 572 573 You can only have one call to `MatGetRow()` outstanding for a particular 574 matrix at a time, per processor. `MatGetRow()` can only obtain rows 575 associated with the given processor, it cannot get rows from the 576 other processors; for that we suggest using `MatCreateSubMatrices()`, then 577 `MatGetRow()` on the submatrix. The row index passed to `MatGetRow()` 578 is in the global number of rows. 579 580 Use `MatGetRowIJ()` and `MatRestoreRowIJ()` to access all the local indices of the sparse matrix. 581 582 Use `MatSeqAIJGetArray()` and similar functions to access the numerical values for certain matrix types directly. 583 584 Fortran Note: 585 .vb 586 PetscInt, pointer :: cols(:) 587 PetscScalar, pointer :: vals(:) 588 .ve 589 590 .seealso: [](ch_matrices), `Mat`, `MatRestoreRow()`, `MatSetValues()`, `MatGetValues()`, `MatCreateSubMatrices()`, `MatGetDiagonal()`, `MatGetRowIJ()`, `MatRestoreRowIJ()` 591 @*/ 592 PetscErrorCode MatGetRow(Mat mat, PetscInt row, PetscInt *ncols, const PetscInt *cols[], const PetscScalar *vals[]) 593 { 594 PetscInt incols; 595 596 PetscFunctionBegin; 597 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 598 PetscValidType(mat, 1); 599 PetscCheck(mat->assembled, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 600 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 601 MatCheckPreallocated(mat, 1); 602 PetscCheck(row >= mat->rmap->rstart && row < mat->rmap->rend, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Only for local rows, %" PetscInt_FMT " not in [%" PetscInt_FMT ",%" PetscInt_FMT ")", row, mat->rmap->rstart, mat->rmap->rend); 603 PetscCall(PetscLogEventBegin(MAT_GetRow, mat, 0, 0, 0)); 604 PetscUseTypeMethod(mat, getrow, row, &incols, (PetscInt **)cols, (PetscScalar **)vals); 605 if (ncols) *ncols = incols; 606 PetscCall(PetscLogEventEnd(MAT_GetRow, mat, 0, 0, 0)); 607 PetscFunctionReturn(PETSC_SUCCESS); 608 } 609 610 /*@ 611 MatConjugate - replaces the matrix values with their complex conjugates 612 613 Logically Collective 614 615 Input Parameter: 616 . mat - the matrix 617 618 Level: advanced 619 620 .seealso: [](ch_matrices), `Mat`, `MatRealPart()`, `MatImaginaryPart()`, `VecConjugate()`, `MatTranspose()` 621 @*/ 622 PetscErrorCode MatConjugate(Mat mat) 623 { 624 PetscFunctionBegin; 625 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 626 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 627 if (PetscDefined(USE_COMPLEX) && mat->hermitian != PETSC_BOOL3_TRUE) { 628 PetscUseTypeMethod(mat, conjugate); 629 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 630 } 631 PetscFunctionReturn(PETSC_SUCCESS); 632 } 633 634 /*@C 635 MatRestoreRow - Frees any temporary space allocated by `MatGetRow()`. 636 637 Not Collective 638 639 Input Parameters: 640 + mat - the matrix 641 . row - the row to get 642 . ncols - the number of nonzeros 643 . cols - the columns of the nonzeros 644 - vals - if nonzero the column values 645 646 Level: advanced 647 648 Notes: 649 This routine should be called after you have finished examining the entries. 650 651 This routine zeros out `ncols`, `cols`, and `vals`. This is to prevent accidental 652 us of the array after it has been restored. If you pass `NULL`, it will 653 not zero the pointers. Use of `cols` or `vals` after `MatRestoreRow()` is invalid. 654 655 Fortran Note: 656 .vb 657 PetscInt, pointer :: cols(:) 658 PetscScalar, pointer :: vals(:) 659 .ve 660 661 .seealso: [](ch_matrices), `Mat`, `MatGetRow()` 662 @*/ 663 PetscErrorCode MatRestoreRow(Mat mat, PetscInt row, PetscInt *ncols, const PetscInt *cols[], const PetscScalar *vals[]) 664 { 665 PetscFunctionBegin; 666 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 667 if (ncols) PetscAssertPointer(ncols, 3); 668 PetscCheck(mat->assembled, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 669 PetscTryTypeMethod(mat, restorerow, row, ncols, (PetscInt **)cols, (PetscScalar **)vals); 670 if (ncols) *ncols = 0; 671 if (cols) *cols = NULL; 672 if (vals) *vals = NULL; 673 PetscFunctionReturn(PETSC_SUCCESS); 674 } 675 676 /*@ 677 MatGetRowUpperTriangular - Sets a flag to enable calls to `MatGetRow()` for matrix in `MATSBAIJ` format. 678 You should call `MatRestoreRowUpperTriangular()` after calling` MatGetRow()` and `MatRestoreRow()` to disable the flag. 679 680 Not Collective 681 682 Input Parameter: 683 . mat - the matrix 684 685 Level: advanced 686 687 Note: 688 The flag is to ensure that users are aware that `MatGetRow()` only provides the upper triangular part of the row for the matrices in `MATSBAIJ` format. 689 690 .seealso: [](ch_matrices), `Mat`, `MATSBAIJ`, `MatRestoreRowUpperTriangular()` 691 @*/ 692 PetscErrorCode MatGetRowUpperTriangular(Mat mat) 693 { 694 PetscFunctionBegin; 695 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 696 PetscValidType(mat, 1); 697 PetscCheck(mat->assembled, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 698 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 699 MatCheckPreallocated(mat, 1); 700 PetscTryTypeMethod(mat, getrowuppertriangular); 701 PetscFunctionReturn(PETSC_SUCCESS); 702 } 703 704 /*@ 705 MatRestoreRowUpperTriangular - Disable calls to `MatGetRow()` for matrix in `MATSBAIJ` format. 706 707 Not Collective 708 709 Input Parameter: 710 . mat - the matrix 711 712 Level: advanced 713 714 Note: 715 This routine should be called after you have finished calls to `MatGetRow()` and `MatRestoreRow()`. 716 717 .seealso: [](ch_matrices), `Mat`, `MATSBAIJ`, `MatGetRowUpperTriangular()` 718 @*/ 719 PetscErrorCode MatRestoreRowUpperTriangular(Mat mat) 720 { 721 PetscFunctionBegin; 722 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 723 PetscValidType(mat, 1); 724 PetscCheck(mat->assembled, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 725 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 726 MatCheckPreallocated(mat, 1); 727 PetscTryTypeMethod(mat, restorerowuppertriangular); 728 PetscFunctionReturn(PETSC_SUCCESS); 729 } 730 731 /*@ 732 MatSetOptionsPrefix - Sets the prefix used for searching for all 733 `Mat` options in the database. 734 735 Logically Collective 736 737 Input Parameters: 738 + A - the matrix 739 - prefix - the prefix to prepend to all option names 740 741 Level: advanced 742 743 Notes: 744 A hyphen (-) must NOT be given at the beginning of the prefix name. 745 The first character of all runtime options is AUTOMATICALLY the hyphen. 746 747 This is NOT used for options for the factorization of the matrix. Normally the 748 prefix is automatically passed in from the PC calling the factorization. To set 749 it directly use `MatSetOptionsPrefixFactor()` 750 751 .seealso: [](ch_matrices), `Mat`, `MatSetFromOptions()`, `MatSetOptionsPrefixFactor()` 752 @*/ 753 PetscErrorCode MatSetOptionsPrefix(Mat A, const char prefix[]) 754 { 755 PetscFunctionBegin; 756 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 757 PetscCall(PetscObjectSetOptionsPrefix((PetscObject)A, prefix)); 758 PetscTryMethod(A, "MatSetOptionsPrefix_C", (Mat, const char[]), (A, prefix)); 759 PetscFunctionReturn(PETSC_SUCCESS); 760 } 761 762 /*@ 763 MatSetOptionsPrefixFactor - Sets the prefix used for searching for all matrix factor options in the database for 764 for matrices created with `MatGetFactor()` 765 766 Logically Collective 767 768 Input Parameters: 769 + A - the matrix 770 - prefix - the prefix to prepend to all option names for the factored matrix 771 772 Level: developer 773 774 Notes: 775 A hyphen (-) must NOT be given at the beginning of the prefix name. 776 The first character of all runtime options is AUTOMATICALLY the hyphen. 777 778 Normally the prefix is automatically passed in from the `PC` calling the factorization. To set 779 it directly when not using `KSP`/`PC` use `MatSetOptionsPrefixFactor()` 780 781 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatSetFromOptions()`, `MatSetOptionsPrefix()`, `MatAppendOptionsPrefixFactor()` 782 @*/ 783 PetscErrorCode MatSetOptionsPrefixFactor(Mat A, const char prefix[]) 784 { 785 PetscFunctionBegin; 786 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 787 if (prefix) { 788 PetscAssertPointer(prefix, 2); 789 PetscCheck(prefix[0] != '-', PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONG, "Options prefix should not begin with a hyphen"); 790 if (prefix != A->factorprefix) { 791 PetscCall(PetscFree(A->factorprefix)); 792 PetscCall(PetscStrallocpy(prefix, &A->factorprefix)); 793 } 794 } else PetscCall(PetscFree(A->factorprefix)); 795 PetscFunctionReturn(PETSC_SUCCESS); 796 } 797 798 /*@ 799 MatAppendOptionsPrefixFactor - Appends to the prefix used for searching for all matrix factor options in the database for 800 for matrices created with `MatGetFactor()` 801 802 Logically Collective 803 804 Input Parameters: 805 + A - the matrix 806 - prefix - the prefix to prepend to all option names for the factored matrix 807 808 Level: developer 809 810 Notes: 811 A hyphen (-) must NOT be given at the beginning of the prefix name. 812 The first character of all runtime options is AUTOMATICALLY the hyphen. 813 814 Normally the prefix is automatically passed in from the `PC` calling the factorization. To set 815 it directly when not using `KSP`/`PC` use `MatAppendOptionsPrefixFactor()` 816 817 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `PetscOptionsCreate()`, `PetscOptionsDestroy()`, `PetscObjectSetOptionsPrefix()`, `PetscObjectPrependOptionsPrefix()`, 818 `PetscObjectGetOptionsPrefix()`, `TSAppendOptionsPrefix()`, `SNESAppendOptionsPrefix()`, `KSPAppendOptionsPrefix()`, `MatSetOptionsPrefixFactor()`, 819 `MatSetOptionsPrefix()` 820 @*/ 821 PetscErrorCode MatAppendOptionsPrefixFactor(Mat A, const char prefix[]) 822 { 823 size_t len1, len2, new_len; 824 825 PetscFunctionBegin; 826 PetscValidHeader(A, 1); 827 if (!prefix) PetscFunctionReturn(PETSC_SUCCESS); 828 if (!A->factorprefix) { 829 PetscCall(MatSetOptionsPrefixFactor(A, prefix)); 830 PetscFunctionReturn(PETSC_SUCCESS); 831 } 832 PetscCheck(prefix[0] != '-', PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONG, "Options prefix should not begin with a hyphen"); 833 834 PetscCall(PetscStrlen(A->factorprefix, &len1)); 835 PetscCall(PetscStrlen(prefix, &len2)); 836 new_len = len1 + len2 + 1; 837 PetscCall(PetscRealloc(new_len * sizeof(*A->factorprefix), &A->factorprefix)); 838 PetscCall(PetscStrncpy(A->factorprefix + len1, prefix, len2 + 1)); 839 PetscFunctionReturn(PETSC_SUCCESS); 840 } 841 842 /*@ 843 MatAppendOptionsPrefix - Appends to the prefix used for searching for all 844 matrix options in the database. 845 846 Logically Collective 847 848 Input Parameters: 849 + A - the matrix 850 - prefix - the prefix to prepend to all option names 851 852 Level: advanced 853 854 Note: 855 A hyphen (-) must NOT be given at the beginning of the prefix name. 856 The first character of all runtime options is AUTOMATICALLY the hyphen. 857 858 .seealso: [](ch_matrices), `Mat`, `MatGetOptionsPrefix()`, `MatAppendOptionsPrefixFactor()`, `MatSetOptionsPrefix()` 859 @*/ 860 PetscErrorCode MatAppendOptionsPrefix(Mat A, const char prefix[]) 861 { 862 PetscFunctionBegin; 863 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 864 PetscCall(PetscObjectAppendOptionsPrefix((PetscObject)A, prefix)); 865 PetscTryMethod(A, "MatAppendOptionsPrefix_C", (Mat, const char[]), (A, prefix)); 866 PetscFunctionReturn(PETSC_SUCCESS); 867 } 868 869 /*@ 870 MatGetOptionsPrefix - Gets the prefix used for searching for all 871 matrix options in the database. 872 873 Not Collective 874 875 Input Parameter: 876 . A - the matrix 877 878 Output Parameter: 879 . prefix - pointer to the prefix string used 880 881 Level: advanced 882 883 .seealso: [](ch_matrices), `Mat`, `MatAppendOptionsPrefix()`, `MatSetOptionsPrefix()`, `MatAppendOptionsPrefixFactor()`, `MatSetOptionsPrefixFactor()` 884 @*/ 885 PetscErrorCode MatGetOptionsPrefix(Mat A, const char *prefix[]) 886 { 887 PetscFunctionBegin; 888 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 889 PetscAssertPointer(prefix, 2); 890 PetscCall(PetscObjectGetOptionsPrefix((PetscObject)A, prefix)); 891 PetscFunctionReturn(PETSC_SUCCESS); 892 } 893 894 /*@ 895 MatGetState - Gets the state of a `Mat`. Same value as returned by `PetscObjectStateGet()` 896 897 Not Collective 898 899 Input Parameter: 900 . A - the matrix 901 902 Output Parameter: 903 . state - the object state 904 905 Level: advanced 906 907 Note: 908 Object state is an integer which gets increased every time 909 the object is changed. By saving and later querying the object state 910 one can determine whether information about the object is still current. 911 912 See `MatGetNonzeroState()` to determine if the nonzero structure of the matrix has changed. 913 914 .seealso: [](ch_matrices), `Mat`, `MatCreate()`, `PetscObjectStateGet()`, `MatGetNonzeroState()` 915 @*/ 916 PetscErrorCode MatGetState(Mat A, PetscObjectState *state) 917 { 918 PetscFunctionBegin; 919 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 920 PetscAssertPointer(state, 2); 921 PetscCall(PetscObjectStateGet((PetscObject)A, state)); 922 PetscFunctionReturn(PETSC_SUCCESS); 923 } 924 925 /*@ 926 MatResetPreallocation - Reset matrix to use the original preallocation values provided by the user, for example with `MatXAIJSetPreallocation()` 927 928 Collective 929 930 Input Parameter: 931 . A - the matrix 932 933 Level: beginner 934 935 Notes: 936 After calling `MatAssemblyBegin()` and `MatAssemblyEnd()` with `MAT_FINAL_ASSEMBLY` the matrix data structures represent the nonzeros assigned to the 937 matrix. If that space is less than the preallocated space that extra preallocated space is no longer available to take on new values. `MatResetPreallocation()` 938 makes all of the preallocation space available 939 940 Current values in the matrix are lost in this call 941 942 Currently only supported for `MATAIJ` matrices. 943 944 .seealso: [](ch_matrices), `Mat`, `MatSeqAIJSetPreallocation()`, `MatMPIAIJSetPreallocation()`, `MatXAIJSetPreallocation()` 945 @*/ 946 PetscErrorCode MatResetPreallocation(Mat A) 947 { 948 PetscFunctionBegin; 949 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 950 PetscValidType(A, 1); 951 PetscUseMethod(A, "MatResetPreallocation_C", (Mat), (A)); 952 PetscFunctionReturn(PETSC_SUCCESS); 953 } 954 955 /*@ 956 MatResetHash - Reset the matrix so that it will use a hash table for the next round of `MatSetValues()` and `MatAssemblyBegin()`/`MatAssemblyEnd()`. 957 958 Collective 959 960 Input Parameter: 961 . A - the matrix 962 963 Level: intermediate 964 965 Notes: 966 The matrix will again delete the hash table data structures after following calls to `MatAssemblyBegin()`/`MatAssemblyEnd()` with `MAT_FINAL_ASSEMBLY`. 967 968 Currently only supported for `MATAIJ` matrices. 969 970 .seealso: [](ch_matrices), `Mat`, `MatResetPreallocation()` 971 @*/ 972 PetscErrorCode MatResetHash(Mat A) 973 { 974 PetscFunctionBegin; 975 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 976 PetscValidType(A, 1); 977 PetscCheck(A->insertmode == NOT_SET_VALUES, PETSC_COMM_SELF, PETSC_ERR_SUP, "Cannot reset to hash state after setting some values but not yet calling MatAssemblyBegin()/MatAssemblyEnd()"); 978 if (A->num_ass == 0) PetscFunctionReturn(PETSC_SUCCESS); 979 PetscUseMethod(A, "MatResetHash_C", (Mat), (A)); 980 /* These flags are used to determine whether certain setups occur */ 981 A->was_assembled = PETSC_FALSE; 982 A->assembled = PETSC_FALSE; 983 /* Log that the state of this object has changed; this will help guarantee that preconditioners get re-setup */ 984 PetscCall(PetscObjectStateIncrease((PetscObject)A)); 985 PetscFunctionReturn(PETSC_SUCCESS); 986 } 987 988 /*@ 989 MatSetUp - Sets up the internal matrix data structures for later use by the matrix 990 991 Collective 992 993 Input Parameter: 994 . A - the matrix 995 996 Level: advanced 997 998 Notes: 999 If the user has not set preallocation for this matrix then an efficient algorithm will be used for the first round of 1000 setting values in the matrix. 1001 1002 This routine is called internally by other `Mat` functions when needed so rarely needs to be called by users 1003 1004 .seealso: [](ch_matrices), `Mat`, `MatMult()`, `MatCreate()`, `MatDestroy()`, `MatXAIJSetPreallocation()` 1005 @*/ 1006 PetscErrorCode MatSetUp(Mat A) 1007 { 1008 PetscFunctionBegin; 1009 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 1010 if (!((PetscObject)A)->type_name) { 1011 PetscMPIInt size; 1012 1013 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)A), &size)); 1014 PetscCall(MatSetType(A, size == 1 ? MATSEQAIJ : MATMPIAIJ)); 1015 } 1016 if (!A->preallocated) PetscTryTypeMethod(A, setup); 1017 PetscCall(PetscLayoutSetUp(A->rmap)); 1018 PetscCall(PetscLayoutSetUp(A->cmap)); 1019 A->preallocated = PETSC_TRUE; 1020 PetscFunctionReturn(PETSC_SUCCESS); 1021 } 1022 1023 #if defined(PETSC_HAVE_SAWS) 1024 #include <petscviewersaws.h> 1025 #endif 1026 1027 /* 1028 If threadsafety is on extraneous matrices may be printed 1029 1030 This flag cannot be stored in the matrix because the original matrix in MatView() may assemble a new matrix which is passed into MatViewFromOptions() 1031 */ 1032 #if !defined(PETSC_HAVE_THREADSAFETY) 1033 static PetscInt insidematview = 0; 1034 #endif 1035 1036 /*@ 1037 MatViewFromOptions - View properties of the matrix based on options set in the options database 1038 1039 Collective 1040 1041 Input Parameters: 1042 + A - the matrix 1043 . obj - optional additional object that provides the options prefix to use 1044 - name - command line option 1045 1046 Options Database Key: 1047 . -mat_view [viewertype]:... - the viewer and its options 1048 1049 Level: intermediate 1050 1051 Note: 1052 .vb 1053 If no value is provided ascii:stdout is used 1054 ascii[:[filename][:[format][:append]]] defaults to stdout - format can be one of ascii_info, ascii_info_detail, or ascii_matlab, 1055 for example ascii::ascii_info prints just the information about the object not all details 1056 unless :append is given filename opens in write mode, overwriting what was already there 1057 binary[:[filename][:[format][:append]]] defaults to the file binaryoutput 1058 draw[:drawtype[:filename]] for example, draw:tikz, draw:tikz:figure.tex or draw:x 1059 socket[:port] defaults to the standard output port 1060 saws[:communicatorname] publishes object to the Scientific Application Webserver (SAWs) 1061 .ve 1062 1063 .seealso: [](ch_matrices), `Mat`, `MatView()`, `PetscObjectViewFromOptions()`, `MatCreate()` 1064 @*/ 1065 PetscErrorCode MatViewFromOptions(Mat A, PetscObject obj, const char name[]) 1066 { 1067 PetscFunctionBegin; 1068 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 1069 #if !defined(PETSC_HAVE_THREADSAFETY) 1070 if (insidematview) PetscFunctionReturn(PETSC_SUCCESS); 1071 #endif 1072 PetscCall(PetscObjectViewFromOptions((PetscObject)A, obj, name)); 1073 PetscFunctionReturn(PETSC_SUCCESS); 1074 } 1075 1076 /*@ 1077 MatView - display information about a matrix in a variety ways 1078 1079 Collective on viewer 1080 1081 Input Parameters: 1082 + mat - the matrix 1083 - viewer - visualization context 1084 1085 Options Database Keys: 1086 + -mat_view ::ascii_info - Prints info on matrix at conclusion of `MatAssemblyEnd()` 1087 . -mat_view ::ascii_info_detail - Prints more detailed info 1088 . -mat_view - Prints matrix in ASCII format 1089 . -mat_view ::ascii_matlab - Prints matrix in MATLAB format 1090 . -mat_view draw - PetscDraws nonzero structure of matrix, using `MatView()` and `PetscDrawOpenX()`. 1091 . -display <name> - Sets display name (default is host) 1092 . -draw_pause <sec> - Sets number of seconds to pause after display 1093 . -mat_view socket - Sends matrix to socket, can be accessed from MATLAB (see Users-Manual: ch_matlab for details) 1094 . -viewer_socket_machine <machine> - - 1095 . -viewer_socket_port <port> - - 1096 . -mat_view binary - save matrix to file in binary format 1097 - -viewer_binary_filename <name> - - 1098 1099 Level: beginner 1100 1101 Notes: 1102 The available visualization contexts include 1103 + `PETSC_VIEWER_STDOUT_SELF` - for sequential matrices 1104 . `PETSC_VIEWER_STDOUT_WORLD` - for parallel matrices created on `PETSC_COMM_WORLD` 1105 . `PETSC_VIEWER_STDOUT_`(comm) - for matrices created on MPI communicator comm 1106 - `PETSC_VIEWER_DRAW_WORLD` - graphical display of nonzero structure 1107 1108 The user can open alternative visualization contexts with 1109 + `PetscViewerASCIIOpen()` - Outputs matrix to a specified file 1110 . `PetscViewerBinaryOpen()` - Outputs matrix in binary to a specified file; corresponding input uses `MatLoad()` 1111 . `PetscViewerDrawOpen()` - Outputs nonzero matrix nonzero structure to an X window display 1112 - `PetscViewerSocketOpen()` - Outputs matrix to Socket viewer, `PETSCVIEWERSOCKET`. Only the `MATSEQDENSE` and `MATAIJ` types support this viewer. 1113 1114 The user can call `PetscViewerPushFormat()` to specify the output 1115 format of ASCII printed objects (when using `PETSC_VIEWER_STDOUT_SELF`, 1116 `PETSC_VIEWER_STDOUT_WORLD` and `PetscViewerASCIIOpen()`). Available formats include 1117 + `PETSC_VIEWER_DEFAULT` - default, prints matrix contents 1118 . `PETSC_VIEWER_ASCII_MATLAB` - prints matrix contents in MATLAB format 1119 . `PETSC_VIEWER_ASCII_DENSE` - prints entire matrix including zeros 1120 . `PETSC_VIEWER_ASCII_COMMON` - prints matrix contents, using a sparse format common among all matrix types 1121 . `PETSC_VIEWER_ASCII_IMPL` - prints matrix contents, using an implementation-specific format (which is in many cases the same as the default) 1122 . `PETSC_VIEWER_ASCII_INFO` - prints basic information about the matrix size and structure (not the matrix entries) 1123 - `PETSC_VIEWER_ASCII_INFO_DETAIL` - prints more detailed information about the matrix nonzero structure (still not vector or matrix entries) 1124 1125 The ASCII viewers are only recommended for small matrices on at most a moderate number of processes, 1126 the program will seemingly hang and take hours for larger matrices, for larger matrices one should use the binary format. 1127 1128 In the debugger you can do "call MatView(mat,0)" to display the matrix. (The same holds for any PETSc object viewer). 1129 1130 See the manual page for `MatLoad()` for the exact format of the binary file when the binary 1131 viewer is used. 1132 1133 See share/petsc/matlab/PetscBinaryRead.m for a MATLAB code that can read in the binary file when the binary 1134 viewer is used and lib/petsc/bin/PetscBinaryIO.py for loading them into Python. 1135 1136 One can use '-mat_view draw -draw_pause -1' to pause the graphical display of matrix nonzero structure, 1137 and then use the following mouse functions. 1138 .vb 1139 left mouse: zoom in 1140 middle mouse: zoom out 1141 right mouse: continue with the simulation 1142 .ve 1143 1144 .seealso: [](ch_matrices), `Mat`, `PetscViewerPushFormat()`, `PetscViewerASCIIOpen()`, `PetscViewerDrawOpen()`, `PetscViewer`, 1145 `PetscViewerSocketOpen()`, `PetscViewerBinaryOpen()`, `MatLoad()`, `MatViewFromOptions()` 1146 @*/ 1147 PetscErrorCode MatView(Mat mat, PetscViewer viewer) 1148 { 1149 PetscInt rows, cols, rbs, cbs; 1150 PetscBool isascii, isstring, issaws; 1151 PetscViewerFormat format; 1152 PetscMPIInt size; 1153 1154 PetscFunctionBegin; 1155 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 1156 PetscValidType(mat, 1); 1157 if (!viewer) PetscCall(PetscViewerASCIIGetStdout(PetscObjectComm((PetscObject)mat), &viewer)); 1158 PetscValidHeaderSpecific(viewer, PETSC_VIEWER_CLASSID, 2); 1159 1160 PetscCall(PetscViewerGetFormat(viewer, &format)); 1161 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)viewer), &size)); 1162 if (size == 1 && format == PETSC_VIEWER_LOAD_BALANCE) PetscFunctionReturn(PETSC_SUCCESS); 1163 1164 #if !defined(PETSC_HAVE_THREADSAFETY) 1165 insidematview++; 1166 #endif 1167 PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERSTRING, &isstring)); 1168 PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERASCII, &isascii)); 1169 PetscCall(PetscObjectTypeCompare((PetscObject)viewer, PETSCVIEWERSAWS, &issaws)); 1170 PetscCheck((isascii && (format == PETSC_VIEWER_ASCII_INFO || format == PETSC_VIEWER_ASCII_INFO_DETAIL)) || !mat->factortype, PetscObjectComm((PetscObject)viewer), PETSC_ERR_ARG_WRONGSTATE, "No viewers for factored matrix except ASCII, info, or info_detail"); 1171 1172 PetscCall(PetscLogEventBegin(MAT_View, mat, viewer, 0, 0)); 1173 if (isascii) { 1174 if (!mat->preallocated) { 1175 PetscCall(PetscViewerASCIIPrintf(viewer, "Matrix has not been preallocated yet\n")); 1176 #if !defined(PETSC_HAVE_THREADSAFETY) 1177 insidematview--; 1178 #endif 1179 PetscCall(PetscLogEventEnd(MAT_View, mat, viewer, 0, 0)); 1180 PetscFunctionReturn(PETSC_SUCCESS); 1181 } 1182 if (!mat->assembled) { 1183 PetscCall(PetscViewerASCIIPrintf(viewer, "Matrix has not been assembled yet\n")); 1184 #if !defined(PETSC_HAVE_THREADSAFETY) 1185 insidematview--; 1186 #endif 1187 PetscCall(PetscLogEventEnd(MAT_View, mat, viewer, 0, 0)); 1188 PetscFunctionReturn(PETSC_SUCCESS); 1189 } 1190 PetscCall(PetscObjectPrintClassNamePrefixType((PetscObject)mat, viewer)); 1191 if (format == PETSC_VIEWER_ASCII_INFO || format == PETSC_VIEWER_ASCII_INFO_DETAIL) { 1192 MatNullSpace nullsp, transnullsp; 1193 1194 PetscCall(PetscViewerASCIIPushTab(viewer)); 1195 PetscCall(MatGetSize(mat, &rows, &cols)); 1196 PetscCall(MatGetBlockSizes(mat, &rbs, &cbs)); 1197 if (rbs != 1 || cbs != 1) { 1198 if (rbs != cbs) PetscCall(PetscViewerASCIIPrintf(viewer, "rows=%" PetscInt_FMT ", cols=%" PetscInt_FMT ", rbs=%" PetscInt_FMT ", cbs=%" PetscInt_FMT "%s\n", rows, cols, rbs, cbs, mat->bsizes ? " variable blocks set" : "")); 1199 else PetscCall(PetscViewerASCIIPrintf(viewer, "rows=%" PetscInt_FMT ", cols=%" PetscInt_FMT ", bs=%" PetscInt_FMT "%s\n", rows, cols, rbs, mat->bsizes ? " variable blocks set" : "")); 1200 } else PetscCall(PetscViewerASCIIPrintf(viewer, "rows=%" PetscInt_FMT ", cols=%" PetscInt_FMT "\n", rows, cols)); 1201 if (mat->factortype) { 1202 MatSolverType solver; 1203 PetscCall(MatFactorGetSolverType(mat, &solver)); 1204 PetscCall(PetscViewerASCIIPrintf(viewer, "package used to perform factorization: %s\n", solver)); 1205 } 1206 if (mat->ops->getinfo) { 1207 PetscBool is_constant_or_diagonal; 1208 1209 // Don't print nonzero information for constant or diagonal matrices, it just adds noise to the output 1210 PetscCall(PetscObjectTypeCompareAny((PetscObject)mat, &is_constant_or_diagonal, MATCONSTANTDIAGONAL, MATDIAGONAL, "")); 1211 if (!is_constant_or_diagonal) { 1212 MatInfo info; 1213 1214 PetscCall(MatGetInfo(mat, MAT_GLOBAL_SUM, &info)); 1215 PetscCall(PetscViewerASCIIPrintf(viewer, "total: nonzeros=%.f, allocated nonzeros=%.f\n", info.nz_used, info.nz_allocated)); 1216 if (!mat->factortype) PetscCall(PetscViewerASCIIPrintf(viewer, "total number of mallocs used during MatSetValues calls=%" PetscInt_FMT "\n", (PetscInt)info.mallocs)); 1217 } 1218 } 1219 PetscCall(MatGetNullSpace(mat, &nullsp)); 1220 PetscCall(MatGetTransposeNullSpace(mat, &transnullsp)); 1221 if (nullsp) PetscCall(PetscViewerASCIIPrintf(viewer, " has attached null space\n")); 1222 if (transnullsp && transnullsp != nullsp) PetscCall(PetscViewerASCIIPrintf(viewer, " has attached transposed null space\n")); 1223 PetscCall(MatGetNearNullSpace(mat, &nullsp)); 1224 if (nullsp) PetscCall(PetscViewerASCIIPrintf(viewer, " has attached near null space\n")); 1225 PetscCall(PetscViewerASCIIPushTab(viewer)); 1226 PetscCall(MatProductView(mat, viewer)); 1227 PetscCall(PetscViewerASCIIPopTab(viewer)); 1228 if (mat->bsizes && format == PETSC_VIEWER_ASCII_INFO_DETAIL) { 1229 IS tmp; 1230 1231 PetscCall(ISCreateGeneral(PetscObjectComm((PetscObject)viewer), mat->nblocks, mat->bsizes, PETSC_USE_POINTER, &tmp)); 1232 PetscCall(PetscObjectSetName((PetscObject)tmp, "Block Sizes")); 1233 PetscCall(PetscViewerASCIIPushTab(viewer)); 1234 PetscCall(ISView(tmp, viewer)); 1235 PetscCall(PetscViewerASCIIPopTab(viewer)); 1236 PetscCall(ISDestroy(&tmp)); 1237 } 1238 } 1239 } else if (issaws) { 1240 #if defined(PETSC_HAVE_SAWS) 1241 PetscMPIInt rank; 1242 1243 PetscCall(PetscObjectName((PetscObject)mat)); 1244 PetscCallMPI(MPI_Comm_rank(PETSC_COMM_WORLD, &rank)); 1245 if (!((PetscObject)mat)->amsmem && rank == 0) PetscCall(PetscObjectViewSAWs((PetscObject)mat, viewer)); 1246 #endif 1247 } else if (isstring) { 1248 const char *type; 1249 PetscCall(MatGetType(mat, &type)); 1250 PetscCall(PetscViewerStringSPrintf(viewer, " MatType: %-7.7s", type)); 1251 PetscTryTypeMethod(mat, view, viewer); 1252 } 1253 if ((format == PETSC_VIEWER_NATIVE || format == PETSC_VIEWER_LOAD_BALANCE) && mat->ops->viewnative) { 1254 PetscCall(PetscViewerASCIIPushTab(viewer)); 1255 PetscUseTypeMethod(mat, viewnative, viewer); 1256 PetscCall(PetscViewerASCIIPopTab(viewer)); 1257 } else if (mat->ops->view) { 1258 PetscCall(PetscViewerASCIIPushTab(viewer)); 1259 PetscUseTypeMethod(mat, view, viewer); 1260 PetscCall(PetscViewerASCIIPopTab(viewer)); 1261 } 1262 if (isascii) { 1263 PetscCall(PetscViewerGetFormat(viewer, &format)); 1264 if (format == PETSC_VIEWER_ASCII_INFO || format == PETSC_VIEWER_ASCII_INFO_DETAIL) PetscCall(PetscViewerASCIIPopTab(viewer)); 1265 } 1266 PetscCall(PetscLogEventEnd(MAT_View, mat, viewer, 0, 0)); 1267 #if !defined(PETSC_HAVE_THREADSAFETY) 1268 insidematview--; 1269 #endif 1270 PetscFunctionReturn(PETSC_SUCCESS); 1271 } 1272 1273 #if defined(PETSC_USE_DEBUG) 1274 #include <../src/sys/totalview/tv_data_display.h> 1275 PETSC_UNUSED static int TV_display_type(const struct _p_Mat *mat) 1276 { 1277 TV_add_row("Local rows", "int", &mat->rmap->n); 1278 TV_add_row("Local columns", "int", &mat->cmap->n); 1279 TV_add_row("Global rows", "int", &mat->rmap->N); 1280 TV_add_row("Global columns", "int", &mat->cmap->N); 1281 TV_add_row("Typename", TV_ascii_string_type, ((PetscObject)mat)->type_name); 1282 return TV_format_OK; 1283 } 1284 #endif 1285 1286 /*@ 1287 MatLoad - Loads a matrix that has been stored in binary/HDF5 format 1288 with `MatView()`. The matrix format is determined from the options database. 1289 Generates a parallel MPI matrix if the communicator has more than one 1290 processor. The default matrix type is `MATAIJ`. 1291 1292 Collective 1293 1294 Input Parameters: 1295 + mat - the newly loaded matrix, this needs to have been created with `MatCreate()` 1296 or some related function before a call to `MatLoad()` 1297 - viewer - `PETSCVIEWERBINARY`/`PETSCVIEWERHDF5` file viewer 1298 1299 Options Database Key: 1300 . -matload_block_size <bs> - set block size 1301 1302 Level: beginner 1303 1304 Notes: 1305 If the `Mat` type has not yet been given then `MATAIJ` is used, call `MatSetFromOptions()` on the 1306 `Mat` before calling this routine if you wish to set it from the options database. 1307 1308 `MatLoad()` automatically loads into the options database any options 1309 given in the file filename.info where filename is the name of the file 1310 that was passed to the `PetscViewerBinaryOpen()`. The options in the info 1311 file will be ignored if you use the -viewer_binary_skip_info option. 1312 1313 If the type or size of mat is not set before a call to `MatLoad()`, PETSc 1314 sets the default matrix type AIJ and sets the local and global sizes. 1315 If type and/or size is already set, then the same are used. 1316 1317 In parallel, each processor can load a subset of rows (or the 1318 entire matrix). This routine is especially useful when a large 1319 matrix is stored on disk and only part of it is desired on each 1320 processor. For example, a parallel solver may access only some of 1321 the rows from each processor. The algorithm used here reads 1322 relatively small blocks of data rather than reading the entire 1323 matrix and then subsetting it. 1324 1325 Viewer's `PetscViewerType` must be either `PETSCVIEWERBINARY` or `PETSCVIEWERHDF5`. 1326 Such viewer can be created using `PetscViewerBinaryOpen()` or `PetscViewerHDF5Open()`, 1327 or the sequence like 1328 .vb 1329 `PetscViewer` v; 1330 `PetscViewerCreate`(`PETSC_COMM_WORLD`,&v); 1331 `PetscViewerSetType`(v,`PETSCVIEWERBINARY`); 1332 `PetscViewerSetFromOptions`(v); 1333 `PetscViewerFileSetMode`(v,`FILE_MODE_READ`); 1334 `PetscViewerFileSetName`(v,"datafile"); 1335 .ve 1336 The optional `PetscViewerSetFromOptions()` call allows overriding `PetscViewerSetType()` using the option 1337 .vb 1338 -viewer_type {binary, hdf5} 1339 .ve 1340 1341 See the example src/ksp/ksp/tutorials/ex27.c with the first approach, 1342 and src/mat/tutorials/ex10.c with the second approach. 1343 1344 In case of `PETSCVIEWERBINARY`, a native PETSc binary format is used. Each of the blocks 1345 is read onto MPI rank 0 and then shipped to its destination MPI rank, one after another. 1346 Multiple objects, both matrices and vectors, can be stored within the same file. 1347 Their `PetscObject` name is ignored; they are loaded in the order of their storage. 1348 1349 Most users should not need to know the details of the binary storage 1350 format, since `MatLoad()` and `MatView()` completely hide these details. 1351 But for anyone who is interested, the standard binary matrix storage 1352 format is 1353 1354 .vb 1355 PetscInt MAT_FILE_CLASSID 1356 PetscInt number of rows 1357 PetscInt number of columns 1358 PetscInt total number of nonzeros 1359 PetscInt *number nonzeros in each row 1360 PetscInt *column indices of all nonzeros (starting index is zero) 1361 PetscScalar *values of all nonzeros 1362 .ve 1363 If PETSc was not configured with `--with-64-bit-indices` then only `MATMPIAIJ` matrices with more than `PETSC_INT_MAX` non-zeros can be 1364 stored or loaded (each MPI process part of the matrix must have less than `PETSC_INT_MAX` nonzeros). Since the total nonzero count in this 1365 case will not fit in a (32-bit) `PetscInt` the value `PETSC_INT_MAX` is used for the header entry `total number of nonzeros`. 1366 1367 PETSc automatically does the byte swapping for 1368 machines that store the bytes reversed. Thus if you write your own binary 1369 read/write routines you have to swap the bytes; see `PetscBinaryRead()` 1370 and `PetscBinaryWrite()` to see how this may be done. 1371 1372 In case of `PETSCVIEWERHDF5`, a parallel HDF5 reader is used. 1373 Each processor's chunk is loaded independently by its owning MPI process. 1374 Multiple objects, both matrices and vectors, can be stored within the same file. 1375 They are looked up by their PetscObject name. 1376 1377 As the MATLAB MAT-File Version 7.3 format is also a HDF5 flavor, we decided to use 1378 by default the same structure and naming of the AIJ arrays and column count 1379 within the HDF5 file. This means that a MAT file saved with -v7.3 flag, e.g. 1380 .vb 1381 save example.mat A b -v7.3 1382 .ve 1383 can be directly read by this routine (see Reference 1 for details). 1384 1385 Depending on your MATLAB version, this format might be a default, 1386 otherwise you can set it as default in Preferences. 1387 1388 Unless -nocompression flag is used to save the file in MATLAB, 1389 PETSc must be configured with ZLIB package. 1390 1391 See also examples src/mat/tutorials/ex10.c and src/ksp/ksp/tutorials/ex27.c 1392 1393 This reader currently supports only real `MATSEQAIJ`, `MATMPIAIJ`, `MATSEQDENSE` and `MATMPIDENSE` matrices for `PETSCVIEWERHDF5` 1394 1395 Corresponding `MatView()` is not yet implemented. 1396 1397 The loaded matrix is actually a transpose of the original one in MATLAB, 1398 unless you push `PETSC_VIEWER_HDF5_MAT` format (see examples above). 1399 With this format, matrix is automatically transposed by PETSc, 1400 unless the matrix is marked as SPD or symmetric 1401 (see `MatSetOption()`, `MAT_SPD`, `MAT_SYMMETRIC`). 1402 1403 See MATLAB Documentation on `save()`, <https://www.mathworks.com/help/matlab/ref/save.html#btox10b-1-version> 1404 1405 .seealso: [](ch_matrices), `Mat`, `PetscViewerBinaryOpen()`, `PetscViewerSetType()`, `MatView()`, `VecLoad()` 1406 @*/ 1407 PetscErrorCode MatLoad(Mat mat, PetscViewer viewer) 1408 { 1409 PetscBool flg; 1410 1411 PetscFunctionBegin; 1412 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 1413 PetscValidHeaderSpecific(viewer, PETSC_VIEWER_CLASSID, 2); 1414 1415 if (!((PetscObject)mat)->type_name) PetscCall(MatSetType(mat, MATAIJ)); 1416 1417 flg = PETSC_FALSE; 1418 PetscCall(PetscOptionsGetBool(((PetscObject)mat)->options, ((PetscObject)mat)->prefix, "-matload_symmetric", &flg, NULL)); 1419 if (flg) { 1420 PetscCall(MatSetOption(mat, MAT_SYMMETRIC, PETSC_TRUE)); 1421 PetscCall(MatSetOption(mat, MAT_SYMMETRY_ETERNAL, PETSC_TRUE)); 1422 } 1423 flg = PETSC_FALSE; 1424 PetscCall(PetscOptionsGetBool(((PetscObject)mat)->options, ((PetscObject)mat)->prefix, "-matload_spd", &flg, NULL)); 1425 if (flg) PetscCall(MatSetOption(mat, MAT_SPD, PETSC_TRUE)); 1426 1427 PetscCall(PetscLogEventBegin(MAT_Load, mat, viewer, 0, 0)); 1428 PetscUseTypeMethod(mat, load, viewer); 1429 PetscCall(PetscLogEventEnd(MAT_Load, mat, viewer, 0, 0)); 1430 PetscFunctionReturn(PETSC_SUCCESS); 1431 } 1432 1433 static PetscErrorCode MatDestroy_Redundant(Mat_Redundant **redundant) 1434 { 1435 Mat_Redundant *redund = *redundant; 1436 1437 PetscFunctionBegin; 1438 if (redund) { 1439 if (redund->matseq) { /* via MatCreateSubMatrices() */ 1440 PetscCall(ISDestroy(&redund->isrow)); 1441 PetscCall(ISDestroy(&redund->iscol)); 1442 PetscCall(MatDestroySubMatrices(1, &redund->matseq)); 1443 } else { 1444 PetscCall(PetscFree2(redund->send_rank, redund->recv_rank)); 1445 PetscCall(PetscFree(redund->sbuf_j)); 1446 PetscCall(PetscFree(redund->sbuf_a)); 1447 for (PetscInt i = 0; i < redund->nrecvs; i++) { 1448 PetscCall(PetscFree(redund->rbuf_j[i])); 1449 PetscCall(PetscFree(redund->rbuf_a[i])); 1450 } 1451 PetscCall(PetscFree4(redund->sbuf_nz, redund->rbuf_nz, redund->rbuf_j, redund->rbuf_a)); 1452 } 1453 1454 if (redund->subcomm) PetscCall(PetscCommDestroy(&redund->subcomm)); 1455 PetscCall(PetscFree(redund)); 1456 } 1457 PetscFunctionReturn(PETSC_SUCCESS); 1458 } 1459 1460 /*@ 1461 MatDestroy - Frees space taken by a matrix. 1462 1463 Collective 1464 1465 Input Parameter: 1466 . A - the matrix 1467 1468 Level: beginner 1469 1470 Developer Note: 1471 Some special arrays of matrices are not destroyed in this routine but instead by the routines called by 1472 `MatDestroySubMatrices()`. Thus one must be sure that any changes here must also be made in those routines. 1473 `MatHeaderMerge()` and `MatHeaderReplace()` also manipulate the data in the `Mat` object and likely need changes 1474 if changes are needed here. 1475 1476 .seealso: [](ch_matrices), `Mat`, `MatCreate()` 1477 @*/ 1478 PetscErrorCode MatDestroy(Mat *A) 1479 { 1480 PetscFunctionBegin; 1481 if (!*A) PetscFunctionReturn(PETSC_SUCCESS); 1482 PetscValidHeaderSpecific(*A, MAT_CLASSID, 1); 1483 if (--((PetscObject)*A)->refct > 0) { 1484 *A = NULL; 1485 PetscFunctionReturn(PETSC_SUCCESS); 1486 } 1487 1488 /* if memory was published with SAWs then destroy it */ 1489 PetscCall(PetscObjectSAWsViewOff((PetscObject)*A)); 1490 PetscTryTypeMethod(*A, destroy); 1491 1492 PetscCall(PetscFree((*A)->factorprefix)); 1493 PetscCall(PetscFree((*A)->defaultvectype)); 1494 PetscCall(PetscFree((*A)->defaultrandtype)); 1495 PetscCall(PetscFree((*A)->bsizes)); 1496 PetscCall(PetscFree((*A)->solvertype)); 1497 for (PetscInt i = 0; i < MAT_FACTOR_NUM_TYPES; i++) PetscCall(PetscFree((*A)->preferredordering[i])); 1498 if ((*A)->redundant && (*A)->redundant->matseq[0] == *A) (*A)->redundant->matseq[0] = NULL; 1499 PetscCall(MatDestroy_Redundant(&(*A)->redundant)); 1500 PetscCall(MatProductClear(*A)); 1501 PetscCall(MatNullSpaceDestroy(&(*A)->nullsp)); 1502 PetscCall(MatNullSpaceDestroy(&(*A)->transnullsp)); 1503 PetscCall(MatNullSpaceDestroy(&(*A)->nearnullsp)); 1504 PetscCall(MatDestroy(&(*A)->schur)); 1505 PetscCall(PetscLayoutDestroy(&(*A)->rmap)); 1506 PetscCall(PetscLayoutDestroy(&(*A)->cmap)); 1507 PetscCall(PetscHeaderDestroy(A)); 1508 PetscFunctionReturn(PETSC_SUCCESS); 1509 } 1510 1511 // PetscClangLinter pragma disable: -fdoc-section-header-unknown 1512 /*@ 1513 MatSetValues - Inserts or adds a block of values into a matrix. 1514 These values may be cached, so `MatAssemblyBegin()` and `MatAssemblyEnd()` 1515 MUST be called after all calls to `MatSetValues()` have been completed. 1516 1517 Not Collective 1518 1519 Input Parameters: 1520 + mat - the matrix 1521 . m - the number of rows 1522 . idxm - the global indices of the rows 1523 . n - the number of columns 1524 . idxn - the global indices of the columns 1525 . v - a one-dimensional array that contains the values implicitly stored as a two-dimensional array, by default in row-major order. 1526 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 1527 - addv - either `ADD_VALUES` to add values to any existing entries, or `INSERT_VALUES` to replace existing entries with new values 1528 1529 Level: beginner 1530 1531 Notes: 1532 Calls to `MatSetValues()` with the `INSERT_VALUES` and `ADD_VALUES` 1533 options cannot be mixed without intervening calls to the assembly 1534 routines. 1535 1536 `MatSetValues()` uses 0-based row and column numbers in Fortran 1537 as well as in C. 1538 1539 Negative indices may be passed in `idxm` and `idxn`, these rows and columns are 1540 simply ignored. This allows easily inserting element stiffness matrices 1541 with homogeneous Dirichlet boundary conditions that you don't want represented 1542 in the matrix. 1543 1544 Efficiency Alert: 1545 The routine `MatSetValuesBlocked()` may offer much better efficiency 1546 for users of block sparse formats (`MATSEQBAIJ` and `MATMPIBAIJ`). 1547 1548 Fortran Notes: 1549 If any of `idxm`, `idxn`, and `v` are scalars pass them using, for example, 1550 .vb 1551 call MatSetValues(mat, one, [idxm], one, [idxn], [v], INSERT_VALUES, ierr) 1552 .ve 1553 1554 If `v` is a two-dimensional array use `reshape()` to pass it as a one dimensional array 1555 1556 Developer Note: 1557 This is labeled with C so does not automatically generate Fortran stubs and interfaces 1558 because it requires multiple Fortran interfaces depending on which arguments are scalar or arrays. 1559 1560 .seealso: [](ch_matrices), `Mat`, `MatSetOption()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValuesBlocked()`, `MatSetValuesLocal()`, 1561 `InsertMode`, `INSERT_VALUES`, `ADD_VALUES` 1562 @*/ 1563 PetscErrorCode MatSetValues(Mat mat, PetscInt m, const PetscInt idxm[], PetscInt n, const PetscInt idxn[], const PetscScalar v[], InsertMode addv) 1564 { 1565 PetscFunctionBeginHot; 1566 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 1567 PetscValidType(mat, 1); 1568 if (!m || !n) PetscFunctionReturn(PETSC_SUCCESS); /* no values to insert */ 1569 PetscAssertPointer(idxm, 3); 1570 PetscAssertPointer(idxn, 5); 1571 MatCheckPreallocated(mat, 1); 1572 1573 if (mat->insertmode == NOT_SET_VALUES) mat->insertmode = addv; 1574 else PetscCheck(mat->insertmode == addv, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Cannot mix add values and insert values"); 1575 1576 if (PetscDefined(USE_DEBUG)) { 1577 PetscInt i, j; 1578 1579 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 1580 if (v) { 1581 for (i = 0; i < m; i++) { 1582 for (j = 0; j < n; j++) { 1583 if (mat->erroriffailure && PetscIsInfOrNanScalar(v[i * n + j])) 1584 #if defined(PETSC_USE_COMPLEX) 1585 SETERRQ(PETSC_COMM_SELF, PETSC_ERR_FP, "Inserting %g+i%g at matrix entry (%" PetscInt_FMT ",%" PetscInt_FMT ")", (double)PetscRealPart(v[i * n + j]), (double)PetscImaginaryPart(v[i * n + j]), idxm[i], idxn[j]); 1586 #else 1587 SETERRQ(PETSC_COMM_SELF, PETSC_ERR_FP, "Inserting %g at matrix entry (%" PetscInt_FMT ",%" PetscInt_FMT ")", (double)v[i * n + j], idxm[i], idxn[j]); 1588 #endif 1589 } 1590 } 1591 } 1592 for (i = 0; i < m; i++) PetscCheck(idxm[i] < mat->rmap->N, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "Cannot insert in row %" PetscInt_FMT ", maximum is %" PetscInt_FMT, idxm[i], mat->rmap->N - 1); 1593 for (i = 0; i < n; i++) PetscCheck(idxn[i] < mat->cmap->N, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "Cannot insert in column %" PetscInt_FMT ", maximum is %" PetscInt_FMT, idxn[i], mat->cmap->N - 1); 1594 } 1595 1596 if (mat->assembled) { 1597 mat->was_assembled = PETSC_TRUE; 1598 mat->assembled = PETSC_FALSE; 1599 } 1600 PetscCall(PetscLogEventBegin(MAT_SetValues, mat, 0, 0, 0)); 1601 PetscUseTypeMethod(mat, setvalues, m, idxm, n, idxn, v, addv); 1602 PetscCall(PetscLogEventEnd(MAT_SetValues, mat, 0, 0, 0)); 1603 PetscFunctionReturn(PETSC_SUCCESS); 1604 } 1605 1606 // PetscClangLinter pragma disable: -fdoc-section-header-unknown 1607 /*@ 1608 MatSetValuesIS - Inserts or adds a block of values into a matrix using an `IS` to indicate the rows and columns 1609 These values may be cached, so `MatAssemblyBegin()` and `MatAssemblyEnd()` 1610 MUST be called after all calls to `MatSetValues()` have been completed. 1611 1612 Not Collective 1613 1614 Input Parameters: 1615 + mat - the matrix 1616 . ism - the rows to provide 1617 . isn - the columns to provide 1618 . v - a one-dimensional array that contains the values implicitly stored as a two-dimensional array, by default in row-major order. 1619 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 1620 - addv - either `ADD_VALUES` to add values to any existing entries, or `INSERT_VALUES` to replace existing entries with new values 1621 1622 Level: beginner 1623 1624 Notes: 1625 By default, the values, `v`, are stored in row-major order. See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 1626 1627 Calls to `MatSetValues()` with the `INSERT_VALUES` and `ADD_VALUES` 1628 options cannot be mixed without intervening calls to the assembly 1629 routines. 1630 1631 `MatSetValues()` uses 0-based row and column numbers in Fortran 1632 as well as in C. 1633 1634 Negative indices may be passed in `ism` and `isn`, these rows and columns are 1635 simply ignored. This allows easily inserting element stiffness matrices 1636 with homogeneous Dirichlet boundary conditions that you don't want represented 1637 in the matrix. 1638 1639 Fortran Note: 1640 If `v` is a two-dimensional array use `reshape()` to pass it as a one dimensional array 1641 1642 Efficiency Alert: 1643 The routine `MatSetValuesBlocked()` may offer much better efficiency 1644 for users of block sparse formats (`MATSEQBAIJ` and `MATMPIBAIJ`). 1645 1646 This is currently not optimized for any particular `ISType` 1647 1648 .seealso: [](ch_matrices), `Mat`, `MatSetOption()`, `MatSetValues()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValuesBlocked()`, `MatSetValuesLocal()`, 1649 `InsertMode`, `INSERT_VALUES`, `ADD_VALUES` 1650 @*/ 1651 PetscErrorCode MatSetValuesIS(Mat mat, IS ism, IS isn, const PetscScalar v[], InsertMode addv) 1652 { 1653 PetscInt m, n; 1654 const PetscInt *rows, *cols; 1655 1656 PetscFunctionBeginHot; 1657 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 1658 PetscCall(ISGetIndices(ism, &rows)); 1659 PetscCall(ISGetIndices(isn, &cols)); 1660 PetscCall(ISGetLocalSize(ism, &m)); 1661 PetscCall(ISGetLocalSize(isn, &n)); 1662 PetscCall(MatSetValues(mat, m, rows, n, cols, v, addv)); 1663 PetscCall(ISRestoreIndices(ism, &rows)); 1664 PetscCall(ISRestoreIndices(isn, &cols)); 1665 PetscFunctionReturn(PETSC_SUCCESS); 1666 } 1667 1668 /*@ 1669 MatSetValuesRowLocal - Inserts a row (block row for `MATBAIJ` matrices) of nonzero 1670 values into a matrix 1671 1672 Not Collective 1673 1674 Input Parameters: 1675 + mat - the matrix 1676 . row - the (block) row to set 1677 - v - a one-dimensional array that contains the values. For `MATBAIJ` they are implicitly stored as a two-dimensional array, by default in row-major order. 1678 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 1679 1680 Level: intermediate 1681 1682 Notes: 1683 The values, `v`, are column-oriented (for the block version) and sorted 1684 1685 All the nonzero values in `row` must be provided 1686 1687 The matrix must have previously had its column indices set, likely by having been assembled. 1688 1689 `row` must belong to this MPI process 1690 1691 Fortran Note: 1692 If `v` is a two-dimensional array use `reshape()` to pass it as a one dimensional array 1693 1694 .seealso: [](ch_matrices), `Mat`, `MatSetOption()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValuesBlocked()`, `MatSetValuesLocal()`, 1695 `InsertMode`, `INSERT_VALUES`, `ADD_VALUES`, `MatSetValues()`, `MatSetValuesRow()`, `MatSetLocalToGlobalMapping()` 1696 @*/ 1697 PetscErrorCode MatSetValuesRowLocal(Mat mat, PetscInt row, const PetscScalar v[]) 1698 { 1699 PetscInt globalrow; 1700 1701 PetscFunctionBegin; 1702 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 1703 PetscValidType(mat, 1); 1704 PetscAssertPointer(v, 3); 1705 PetscCall(ISLocalToGlobalMappingApply(mat->rmap->mapping, 1, &row, &globalrow)); 1706 PetscCall(MatSetValuesRow(mat, globalrow, v)); 1707 PetscFunctionReturn(PETSC_SUCCESS); 1708 } 1709 1710 /*@ 1711 MatSetValuesRow - Inserts a row (block row for `MATBAIJ` matrices) of nonzero 1712 values into a matrix 1713 1714 Not Collective 1715 1716 Input Parameters: 1717 + mat - the matrix 1718 . row - the (block) row to set 1719 - v - a logically two-dimensional (column major) array of values for block matrices with blocksize larger than one, otherwise a one dimensional array of values 1720 1721 Level: advanced 1722 1723 Notes: 1724 The values, `v`, are column-oriented for the block version. 1725 1726 All the nonzeros in `row` must be provided 1727 1728 THE MATRIX MUST HAVE PREVIOUSLY HAD ITS COLUMN INDICES SET. IT IS RARE THAT THIS ROUTINE IS USED, usually `MatSetValues()` is used. 1729 1730 `row` must belong to this process 1731 1732 .seealso: [](ch_matrices), `Mat`, `MatSetValues()`, `MatSetOption()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValuesBlocked()`, `MatSetValuesLocal()`, 1733 `InsertMode`, `INSERT_VALUES`, `ADD_VALUES` 1734 @*/ 1735 PetscErrorCode MatSetValuesRow(Mat mat, PetscInt row, const PetscScalar v[]) 1736 { 1737 PetscFunctionBeginHot; 1738 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 1739 PetscValidType(mat, 1); 1740 MatCheckPreallocated(mat, 1); 1741 PetscAssertPointer(v, 3); 1742 PetscCheck(mat->insertmode != ADD_VALUES, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Cannot mix add and insert values"); 1743 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 1744 mat->insertmode = INSERT_VALUES; 1745 1746 if (mat->assembled) { 1747 mat->was_assembled = PETSC_TRUE; 1748 mat->assembled = PETSC_FALSE; 1749 } 1750 PetscCall(PetscLogEventBegin(MAT_SetValues, mat, 0, 0, 0)); 1751 PetscUseTypeMethod(mat, setvaluesrow, row, v); 1752 PetscCall(PetscLogEventEnd(MAT_SetValues, mat, 0, 0, 0)); 1753 PetscFunctionReturn(PETSC_SUCCESS); 1754 } 1755 1756 // PetscClangLinter pragma disable: -fdoc-section-header-unknown 1757 /*@ 1758 MatSetValuesStencil - Inserts or adds a block of values into a matrix. 1759 Using structured grid indexing 1760 1761 Not Collective 1762 1763 Input Parameters: 1764 + mat - the matrix 1765 . m - number of rows being entered 1766 . idxm - grid coordinates (and component number when dof > 1) for matrix rows being entered 1767 . n - number of columns being entered 1768 . idxn - grid coordinates (and component number when dof > 1) for matrix columns being entered 1769 . v - a one-dimensional array that contains the values implicitly stored as a two-dimensional array, by default in row-major order. 1770 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 1771 - addv - either `ADD_VALUES` to add to existing entries at that location or `INSERT_VALUES` to replace existing entries with new values 1772 1773 Level: beginner 1774 1775 Notes: 1776 By default the values, `v`, are row-oriented. See `MatSetOption()` for other options. 1777 1778 Calls to `MatSetValuesStencil()` with the `INSERT_VALUES` and `ADD_VALUES` 1779 options cannot be mixed without intervening calls to the assembly 1780 routines. 1781 1782 The grid coordinates are across the entire grid, not just the local portion 1783 1784 `MatSetValuesStencil()` uses 0-based row and column numbers in Fortran 1785 as well as in C. 1786 1787 For setting/accessing vector values via array coordinates you can use the `DMDAVecGetArray()` routine 1788 1789 In order to use this routine you must either obtain the matrix with `DMCreateMatrix()` 1790 or call `MatSetLocalToGlobalMapping()` and `MatSetStencil()` first. 1791 1792 The columns and rows in the stencil passed in MUST be contained within the 1793 ghost region of the given process as set with DMDACreateXXX() or `MatSetStencil()`. For example, 1794 if you create a `DMDA` with an overlap of one grid level and on a particular process its first 1795 local nonghost x logical coordinate is 6 (so its first ghost x logical coordinate is 5) the 1796 first i index you can use in your column and row indices in `MatSetStencil()` is 5. 1797 1798 For periodic boundary conditions use negative indices for values to the left (below 0; that are to be 1799 obtained by wrapping values from right edge). For values to the right of the last entry using that index plus one 1800 etc to obtain values that obtained by wrapping the values from the left edge. This does not work for anything but the 1801 `DM_BOUNDARY_PERIODIC` boundary type. 1802 1803 For indices that don't mean anything for your case (like the k index when working in 2d) or the c index when you have 1804 a single value per point) you can skip filling those indices. 1805 1806 Inspired by the structured grid interface to the HYPRE package 1807 (https://computation.llnl.gov/projects/hypre-scalable-linear-solvers-multigrid-methods) 1808 1809 Fortran Note: 1810 If `y` is a two-dimensional array use `reshape()` to pass it as a one dimensional array 1811 1812 Efficiency Alert: 1813 The routine `MatSetValuesBlockedStencil()` may offer much better efficiency 1814 for users of block sparse formats (`MATSEQBAIJ` and `MATMPIBAIJ`). 1815 1816 .seealso: [](ch_matrices), `Mat`, `DMDA`, `MatSetOption()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValuesBlocked()`, `MatSetValuesLocal()` 1817 `MatSetValues()`, `MatSetValuesBlockedStencil()`, `MatSetStencil()`, `DMCreateMatrix()`, `DMDAVecGetArray()`, `MatStencil` 1818 @*/ 1819 PetscErrorCode MatSetValuesStencil(Mat mat, PetscInt m, const MatStencil idxm[], PetscInt n, const MatStencil idxn[], const PetscScalar v[], InsertMode addv) 1820 { 1821 PetscInt buf[8192], *bufm = NULL, *bufn = NULL, *jdxm, *jdxn; 1822 PetscInt j, i, dim = mat->stencil.dim, *dims = mat->stencil.dims + 1, tmp; 1823 PetscInt *starts = mat->stencil.starts, *dxm = (PetscInt *)idxm, *dxn = (PetscInt *)idxn, sdim = dim - (1 - (PetscInt)mat->stencil.noc); 1824 1825 PetscFunctionBegin; 1826 if (!m || !n) PetscFunctionReturn(PETSC_SUCCESS); /* no values to insert */ 1827 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 1828 PetscValidType(mat, 1); 1829 PetscAssertPointer(idxm, 3); 1830 PetscAssertPointer(idxn, 5); 1831 1832 if ((m + n) <= (PetscInt)PETSC_STATIC_ARRAY_LENGTH(buf)) { 1833 jdxm = buf; 1834 jdxn = buf + m; 1835 } else { 1836 PetscCall(PetscMalloc2(m, &bufm, n, &bufn)); 1837 jdxm = bufm; 1838 jdxn = bufn; 1839 } 1840 for (i = 0; i < m; i++) { 1841 for (j = 0; j < 3 - sdim; j++) dxm++; 1842 tmp = *dxm++ - starts[0]; 1843 for (j = 0; j < dim - 1; j++) { 1844 if ((*dxm++ - starts[j + 1]) < 0 || tmp < 0) tmp = -1; 1845 else tmp = tmp * dims[j] + *(dxm - 1) - starts[j + 1]; 1846 } 1847 if (mat->stencil.noc) dxm++; 1848 jdxm[i] = tmp; 1849 } 1850 for (i = 0; i < n; i++) { 1851 for (j = 0; j < 3 - sdim; j++) dxn++; 1852 tmp = *dxn++ - starts[0]; 1853 for (j = 0; j < dim - 1; j++) { 1854 if ((*dxn++ - starts[j + 1]) < 0 || tmp < 0) tmp = -1; 1855 else tmp = tmp * dims[j] + *(dxn - 1) - starts[j + 1]; 1856 } 1857 if (mat->stencil.noc) dxn++; 1858 jdxn[i] = tmp; 1859 } 1860 PetscCall(MatSetValuesLocal(mat, m, jdxm, n, jdxn, v, addv)); 1861 PetscCall(PetscFree2(bufm, bufn)); 1862 PetscFunctionReturn(PETSC_SUCCESS); 1863 } 1864 1865 /*@ 1866 MatSetValuesBlockedStencil - Inserts or adds a block of values into a matrix. 1867 Using structured grid indexing 1868 1869 Not Collective 1870 1871 Input Parameters: 1872 + mat - the matrix 1873 . m - number of rows being entered 1874 . idxm - grid coordinates for matrix rows being entered 1875 . n - number of columns being entered 1876 . idxn - grid coordinates for matrix columns being entered 1877 . v - a one-dimensional array that contains the values implicitly stored as a two-dimensional array, by default in row-major order. 1878 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 1879 - addv - either `ADD_VALUES` to add to existing entries or `INSERT_VALUES` to replace existing entries with new values 1880 1881 Level: beginner 1882 1883 Notes: 1884 By default the values, `v`, are row-oriented and unsorted. 1885 See `MatSetOption()` for other options. 1886 1887 Calls to `MatSetValuesBlockedStencil()` with the `INSERT_VALUES` and `ADD_VALUES` 1888 options cannot be mixed without intervening calls to the assembly 1889 routines. 1890 1891 The grid coordinates are across the entire grid, not just the local portion 1892 1893 `MatSetValuesBlockedStencil()` uses 0-based row and column numbers in Fortran 1894 as well as in C. 1895 1896 For setting/accessing vector values via array coordinates you can use the `DMDAVecGetArray()` routine 1897 1898 In order to use this routine you must either obtain the matrix with `DMCreateMatrix()` 1899 or call `MatSetBlockSize()`, `MatSetLocalToGlobalMapping()` and `MatSetStencil()` first. 1900 1901 The columns and rows in the stencil passed in MUST be contained within the 1902 ghost region of the given process as set with DMDACreateXXX() or `MatSetStencil()`. For example, 1903 if you create a `DMDA` with an overlap of one grid level and on a particular process its first 1904 local nonghost x logical coordinate is 6 (so its first ghost x logical coordinate is 5) the 1905 first i index you can use in your column and row indices in `MatSetStencil()` is 5. 1906 1907 Negative indices may be passed in `idxm` and `idxn`, these rows and columns are 1908 simply ignored. This allows easily inserting element stiffness matrices 1909 with homogeneous Dirichlet boundary conditions that you don't want represented 1910 in the matrix. 1911 1912 Inspired by the structured grid interface to the HYPRE package 1913 (https://computation.llnl.gov/projects/hypre-scalable-linear-solvers-multigrid-methods) 1914 1915 Fortran Notes: 1916 `idxm` and `idxn` should be declared as 1917 .vb 1918 MatStencil idxm(4,m),idxn(4,n) 1919 .ve 1920 and the values inserted using 1921 .vb 1922 idxm(MatStencil_i,1) = i 1923 idxm(MatStencil_j,1) = j 1924 idxm(MatStencil_k,1) = k 1925 etc 1926 .ve 1927 1928 If `v` is a two-dimensional array use `reshape()` to pass it as a one dimensional array 1929 1930 .seealso: [](ch_matrices), `Mat`, `DMDA`, `MatSetOption()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValuesBlocked()`, `MatSetValuesLocal()` 1931 `MatSetValues()`, `MatSetValuesStencil()`, `MatSetStencil()`, `DMCreateMatrix()`, `DMDAVecGetArray()`, `MatStencil`, 1932 `MatSetBlockSize()`, `MatSetLocalToGlobalMapping()` 1933 @*/ 1934 PetscErrorCode MatSetValuesBlockedStencil(Mat mat, PetscInt m, const MatStencil idxm[], PetscInt n, const MatStencil idxn[], const PetscScalar v[], InsertMode addv) 1935 { 1936 PetscInt buf[8192], *bufm = NULL, *bufn = NULL, *jdxm, *jdxn; 1937 PetscInt j, i, dim = mat->stencil.dim, *dims = mat->stencil.dims + 1, tmp; 1938 PetscInt *starts = mat->stencil.starts, *dxm = (PetscInt *)idxm, *dxn = (PetscInt *)idxn, sdim = dim - (1 - (PetscInt)mat->stencil.noc); 1939 1940 PetscFunctionBegin; 1941 if (!m || !n) PetscFunctionReturn(PETSC_SUCCESS); /* no values to insert */ 1942 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 1943 PetscValidType(mat, 1); 1944 PetscAssertPointer(idxm, 3); 1945 PetscAssertPointer(idxn, 5); 1946 PetscAssertPointer(v, 6); 1947 1948 if ((m + n) <= (PetscInt)PETSC_STATIC_ARRAY_LENGTH(buf)) { 1949 jdxm = buf; 1950 jdxn = buf + m; 1951 } else { 1952 PetscCall(PetscMalloc2(m, &bufm, n, &bufn)); 1953 jdxm = bufm; 1954 jdxn = bufn; 1955 } 1956 for (i = 0; i < m; i++) { 1957 for (j = 0; j < 3 - sdim; j++) dxm++; 1958 tmp = *dxm++ - starts[0]; 1959 for (j = 0; j < sdim - 1; j++) { 1960 if ((*dxm++ - starts[j + 1]) < 0 || tmp < 0) tmp = -1; 1961 else tmp = tmp * dims[j] + *(dxm - 1) - starts[j + 1]; 1962 } 1963 dxm++; 1964 jdxm[i] = tmp; 1965 } 1966 for (i = 0; i < n; i++) { 1967 for (j = 0; j < 3 - sdim; j++) dxn++; 1968 tmp = *dxn++ - starts[0]; 1969 for (j = 0; j < sdim - 1; j++) { 1970 if ((*dxn++ - starts[j + 1]) < 0 || tmp < 0) tmp = -1; 1971 else tmp = tmp * dims[j] + *(dxn - 1) - starts[j + 1]; 1972 } 1973 dxn++; 1974 jdxn[i] = tmp; 1975 } 1976 PetscCall(MatSetValuesBlockedLocal(mat, m, jdxm, n, jdxn, v, addv)); 1977 PetscCall(PetscFree2(bufm, bufn)); 1978 PetscFunctionReturn(PETSC_SUCCESS); 1979 } 1980 1981 /*@ 1982 MatSetStencil - Sets the grid information for setting values into a matrix via 1983 `MatSetValuesStencil()` 1984 1985 Not Collective 1986 1987 Input Parameters: 1988 + mat - the matrix 1989 . dim - dimension of the grid 1, 2, or 3 1990 . dims - number of grid points in x, y, and z direction, including ghost points on your processor 1991 . starts - starting point of ghost nodes on your processor in x, y, and z direction 1992 - dof - number of degrees of freedom per node 1993 1994 Level: beginner 1995 1996 Notes: 1997 Inspired by the structured grid interface to the HYPRE package 1998 (www.llnl.gov/CASC/hyper) 1999 2000 For matrices generated with `DMCreateMatrix()` this routine is automatically called and so not needed by the 2001 user. 2002 2003 .seealso: [](ch_matrices), `Mat`, `MatStencil`, `MatSetOption()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValuesBlocked()`, `MatSetValuesLocal()` 2004 `MatSetValues()`, `MatSetValuesBlockedStencil()`, `MatSetValuesStencil()` 2005 @*/ 2006 PetscErrorCode MatSetStencil(Mat mat, PetscInt dim, const PetscInt dims[], const PetscInt starts[], PetscInt dof) 2007 { 2008 PetscFunctionBegin; 2009 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2010 PetscAssertPointer(dims, 3); 2011 PetscAssertPointer(starts, 4); 2012 2013 mat->stencil.dim = dim + (dof > 1); 2014 for (PetscInt i = 0; i < dim; i++) { 2015 mat->stencil.dims[i] = dims[dim - i - 1]; /* copy the values in backwards */ 2016 mat->stencil.starts[i] = starts[dim - i - 1]; 2017 } 2018 mat->stencil.dims[dim] = dof; 2019 mat->stencil.starts[dim] = 0; 2020 mat->stencil.noc = (PetscBool)(dof == 1); 2021 PetscFunctionReturn(PETSC_SUCCESS); 2022 } 2023 2024 /*@ 2025 MatSetValuesBlocked - Inserts or adds a block of values into a matrix. 2026 2027 Not Collective 2028 2029 Input Parameters: 2030 + mat - the matrix 2031 . m - the number of block rows 2032 . idxm - the global block indices 2033 . n - the number of block columns 2034 . idxn - the global block indices 2035 . v - a one-dimensional array that contains the values implicitly stored as a two-dimensional array, by default in row-major order. 2036 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 2037 - addv - either `ADD_VALUES` to add values to any existing entries, or `INSERT_VALUES` replaces existing entries with new values 2038 2039 Level: intermediate 2040 2041 Notes: 2042 If you create the matrix yourself (that is not with a call to `DMCreateMatrix()`) then you MUST call 2043 MatXXXXSetPreallocation() or `MatSetUp()` before using this routine. 2044 2045 The `m` and `n` count the NUMBER of blocks in the row direction and column direction, 2046 NOT the total number of rows/columns; for example, if the block size is 2 and 2047 you are passing in values for rows 2,3,4,5 then `m` would be 2 (not 4). 2048 The values in `idxm` would be 1 2; that is the first index for each block divided by 2049 the block size. 2050 2051 You must call `MatSetBlockSize()` when constructing this matrix (before 2052 preallocating it). 2053 2054 By default, the values, `v`, are stored in row-major order. See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 2055 2056 Calls to `MatSetValuesBlocked()` with the `INSERT_VALUES` and `ADD_VALUES` 2057 options cannot be mixed without intervening calls to the assembly 2058 routines. 2059 2060 `MatSetValuesBlocked()` uses 0-based row and column numbers in Fortran 2061 as well as in C. 2062 2063 Negative indices may be passed in `idxm` and `idxn`, these rows and columns are 2064 simply ignored. This allows easily inserting element stiffness matrices 2065 with homogeneous Dirichlet boundary conditions that you don't want represented 2066 in the matrix. 2067 2068 Each time an entry is set within a sparse matrix via `MatSetValues()`, 2069 internal searching must be done to determine where to place the 2070 data in the matrix storage space. By instead inserting blocks of 2071 entries via `MatSetValuesBlocked()`, the overhead of matrix assembly is 2072 reduced. 2073 2074 Example: 2075 .vb 2076 Suppose m=n=2 and block size(bs) = 2 The array is 2077 2078 1 2 | 3 4 2079 5 6 | 7 8 2080 - - - | - - - 2081 9 10 | 11 12 2082 13 14 | 15 16 2083 2084 v[] should be passed in like 2085 v[] = [1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16] 2086 2087 If you are not using row-oriented storage of v (that is you called MatSetOption(mat,MAT_ROW_ORIENTED,PETSC_FALSE)) then 2088 v[] = [1,5,9,13,2,6,10,14,3,7,11,15,4,8,12,16] 2089 .ve 2090 2091 Fortran Notes: 2092 If any of `idmx`, `idxn`, and `v` are scalars pass them using, for example, 2093 .vb 2094 call MatSetValuesBlocked(mat, one, [idxm], one, [idxn], [v], INSERT_VALUES, ierr) 2095 .ve 2096 2097 If `v` is a two-dimensional array use `reshape()` to pass it as a one dimensional array 2098 2099 .seealso: [](ch_matrices), `Mat`, `MatSetBlockSize()`, `MatSetOption()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValues()`, `MatSetValuesBlockedLocal()` 2100 @*/ 2101 PetscErrorCode MatSetValuesBlocked(Mat mat, PetscInt m, const PetscInt idxm[], PetscInt n, const PetscInt idxn[], const PetscScalar v[], InsertMode addv) 2102 { 2103 PetscFunctionBeginHot; 2104 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2105 PetscValidType(mat, 1); 2106 if (!m || !n) PetscFunctionReturn(PETSC_SUCCESS); /* no values to insert */ 2107 PetscAssertPointer(idxm, 3); 2108 PetscAssertPointer(idxn, 5); 2109 MatCheckPreallocated(mat, 1); 2110 if (mat->insertmode == NOT_SET_VALUES) mat->insertmode = addv; 2111 else PetscCheck(mat->insertmode == addv, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Cannot mix add values and insert values"); 2112 if (PetscDefined(USE_DEBUG)) { 2113 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2114 PetscCheck(mat->ops->setvaluesblocked || mat->ops->setvalues, PETSC_COMM_SELF, PETSC_ERR_SUP, "Mat type %s", ((PetscObject)mat)->type_name); 2115 } 2116 if (PetscDefined(USE_DEBUG)) { 2117 PetscInt rbs, cbs, M, N, i; 2118 PetscCall(MatGetBlockSizes(mat, &rbs, &cbs)); 2119 PetscCall(MatGetSize(mat, &M, &N)); 2120 for (i = 0; i < m; i++) PetscCheck(idxm[i] * rbs < M, PETSC_COMM_SELF, PETSC_ERR_ARG_OUTOFRANGE, "Row block %" PetscInt_FMT " contains an index %" PetscInt_FMT "*%" PetscInt_FMT " greater than row length %" PetscInt_FMT, i, idxm[i], rbs, M); 2121 for (i = 0; i < n; i++) 2122 PetscCheck(idxn[i] * cbs < N, PETSC_COMM_SELF, PETSC_ERR_ARG_OUTOFRANGE, "Column block %" PetscInt_FMT " contains an index %" PetscInt_FMT "*%" PetscInt_FMT " greater than column length %" PetscInt_FMT, i, idxn[i], cbs, N); 2123 } 2124 if (mat->assembled) { 2125 mat->was_assembled = PETSC_TRUE; 2126 mat->assembled = PETSC_FALSE; 2127 } 2128 PetscCall(PetscLogEventBegin(MAT_SetValues, mat, 0, 0, 0)); 2129 if (mat->ops->setvaluesblocked) { 2130 PetscUseTypeMethod(mat, setvaluesblocked, m, idxm, n, idxn, v, addv); 2131 } else { 2132 PetscInt buf[8192], *bufr = NULL, *bufc = NULL, *iidxm, *iidxn; 2133 PetscInt i, j, bs, cbs; 2134 2135 PetscCall(MatGetBlockSizes(mat, &bs, &cbs)); 2136 if ((m * bs + n * cbs) <= (PetscInt)PETSC_STATIC_ARRAY_LENGTH(buf)) { 2137 iidxm = buf; 2138 iidxn = buf + m * bs; 2139 } else { 2140 PetscCall(PetscMalloc2(m * bs, &bufr, n * cbs, &bufc)); 2141 iidxm = bufr; 2142 iidxn = bufc; 2143 } 2144 for (i = 0; i < m; i++) { 2145 for (j = 0; j < bs; j++) iidxm[i * bs + j] = bs * idxm[i] + j; 2146 } 2147 if (m != n || bs != cbs || idxm != idxn) { 2148 for (i = 0; i < n; i++) { 2149 for (j = 0; j < cbs; j++) iidxn[i * cbs + j] = cbs * idxn[i] + j; 2150 } 2151 } else iidxn = iidxm; 2152 PetscCall(MatSetValues(mat, m * bs, iidxm, n * cbs, iidxn, v, addv)); 2153 PetscCall(PetscFree2(bufr, bufc)); 2154 } 2155 PetscCall(PetscLogEventEnd(MAT_SetValues, mat, 0, 0, 0)); 2156 PetscFunctionReturn(PETSC_SUCCESS); 2157 } 2158 2159 /*@ 2160 MatGetValues - Gets a block of local values from a matrix. 2161 2162 Not Collective; can only return values that are owned by the give process 2163 2164 Input Parameters: 2165 + mat - the matrix 2166 . v - a logically two-dimensional array for storing the values 2167 . m - the number of rows 2168 . idxm - the global indices of the rows 2169 . n - the number of columns 2170 - idxn - the global indices of the columns 2171 2172 Level: advanced 2173 2174 Notes: 2175 The user must allocate space (m*n `PetscScalar`s) for the values, `v`. 2176 The values, `v`, are then returned in a row-oriented format, 2177 analogous to that used by default in `MatSetValues()`. 2178 2179 `MatGetValues()` uses 0-based row and column numbers in 2180 Fortran as well as in C. 2181 2182 `MatGetValues()` requires that the matrix has been assembled 2183 with `MatAssemblyBegin()`/`MatAssemblyEnd()`. Thus, calls to 2184 `MatSetValues()` and `MatGetValues()` CANNOT be made in succession 2185 without intermediate matrix assembly. 2186 2187 Negative row or column indices will be ignored and those locations in `v` will be 2188 left unchanged. 2189 2190 For the standard row-based matrix formats, `idxm` can only contain rows owned by the requesting MPI process. 2191 That is, rows with global index greater than or equal to rstart and less than rend where rstart and rend are obtainable 2192 from `MatGetOwnershipRange`(mat,&rstart,&rend). 2193 2194 .seealso: [](ch_matrices), `Mat`, `MatGetRow()`, `MatCreateSubMatrices()`, `MatSetValues()`, `MatGetOwnershipRange()`, `MatGetValuesLocal()`, `MatGetValue()` 2195 @*/ 2196 PetscErrorCode MatGetValues(Mat mat, PetscInt m, const PetscInt idxm[], PetscInt n, const PetscInt idxn[], PetscScalar v[]) 2197 { 2198 PetscFunctionBegin; 2199 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2200 PetscValidType(mat, 1); 2201 if (!m || !n) PetscFunctionReturn(PETSC_SUCCESS); 2202 PetscAssertPointer(idxm, 3); 2203 PetscAssertPointer(idxn, 5); 2204 PetscAssertPointer(v, 6); 2205 PetscCheck(mat->assembled, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2206 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2207 MatCheckPreallocated(mat, 1); 2208 2209 PetscCall(PetscLogEventBegin(MAT_GetValues, mat, 0, 0, 0)); 2210 PetscUseTypeMethod(mat, getvalues, m, idxm, n, idxn, v); 2211 PetscCall(PetscLogEventEnd(MAT_GetValues, mat, 0, 0, 0)); 2212 PetscFunctionReturn(PETSC_SUCCESS); 2213 } 2214 2215 /*@ 2216 MatGetValuesLocal - retrieves values from certain locations in a matrix using the local numbering of the indices 2217 defined previously by `MatSetLocalToGlobalMapping()` 2218 2219 Not Collective 2220 2221 Input Parameters: 2222 + mat - the matrix 2223 . nrow - number of rows 2224 . irow - the row local indices 2225 . ncol - number of columns 2226 - icol - the column local indices 2227 2228 Output Parameter: 2229 . y - a one-dimensional array that contains the values implicitly stored as a two-dimensional array, by default in row-major order. 2230 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 2231 2232 Level: advanced 2233 2234 Notes: 2235 If you create the matrix yourself (that is not with a call to `DMCreateMatrix()`) then you MUST call `MatSetLocalToGlobalMapping()` before using this routine. 2236 2237 This routine can only return values that are owned by the requesting MPI process. That is, for standard matrix formats, rows that, in the global numbering, 2238 are greater than or equal to rstart and less than rend where rstart and rend are obtainable from `MatGetOwnershipRange`(mat,&rstart,&rend). One can 2239 determine if the resulting global row associated with the local row r is owned by the requesting MPI process by applying the `ISLocalToGlobalMapping` set 2240 with `MatSetLocalToGlobalMapping()`. 2241 2242 .seealso: [](ch_matrices), `Mat`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValues()`, `MatSetLocalToGlobalMapping()`, 2243 `MatSetValuesLocal()`, `MatGetValues()` 2244 @*/ 2245 PetscErrorCode MatGetValuesLocal(Mat mat, PetscInt nrow, const PetscInt irow[], PetscInt ncol, const PetscInt icol[], PetscScalar y[]) 2246 { 2247 PetscFunctionBeginHot; 2248 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2249 PetscValidType(mat, 1); 2250 MatCheckPreallocated(mat, 1); 2251 if (!nrow || !ncol) PetscFunctionReturn(PETSC_SUCCESS); /* no values to retrieve */ 2252 PetscAssertPointer(irow, 3); 2253 PetscAssertPointer(icol, 5); 2254 if (PetscDefined(USE_DEBUG)) { 2255 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2256 PetscCheck(mat->ops->getvalueslocal || mat->ops->getvalues, PETSC_COMM_SELF, PETSC_ERR_SUP, "Mat type %s", ((PetscObject)mat)->type_name); 2257 } 2258 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2259 PetscCall(PetscLogEventBegin(MAT_GetValues, mat, 0, 0, 0)); 2260 if (mat->ops->getvalueslocal) PetscUseTypeMethod(mat, getvalueslocal, nrow, irow, ncol, icol, y); 2261 else { 2262 PetscInt buf[8192], *bufr = NULL, *bufc = NULL, *irowm, *icolm; 2263 if ((nrow + ncol) <= (PetscInt)PETSC_STATIC_ARRAY_LENGTH(buf)) { 2264 irowm = buf; 2265 icolm = buf + nrow; 2266 } else { 2267 PetscCall(PetscMalloc2(nrow, &bufr, ncol, &bufc)); 2268 irowm = bufr; 2269 icolm = bufc; 2270 } 2271 PetscCheck(mat->rmap->mapping, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "MatGetValuesLocal() cannot proceed without local-to-global row mapping (See MatSetLocalToGlobalMapping())."); 2272 PetscCheck(mat->cmap->mapping, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "MatGetValuesLocal() cannot proceed without local-to-global column mapping (See MatSetLocalToGlobalMapping())."); 2273 PetscCall(ISLocalToGlobalMappingApply(mat->rmap->mapping, nrow, irow, irowm)); 2274 PetscCall(ISLocalToGlobalMappingApply(mat->cmap->mapping, ncol, icol, icolm)); 2275 PetscCall(MatGetValues(mat, nrow, irowm, ncol, icolm, y)); 2276 PetscCall(PetscFree2(bufr, bufc)); 2277 } 2278 PetscCall(PetscLogEventEnd(MAT_GetValues, mat, 0, 0, 0)); 2279 PetscFunctionReturn(PETSC_SUCCESS); 2280 } 2281 2282 /*@ 2283 MatSetValuesBatch - Adds (`ADD_VALUES`) many blocks of values into a matrix at once. The blocks must all be square and 2284 the same size. Currently, this can only be called once and creates the given matrix. 2285 2286 Not Collective 2287 2288 Input Parameters: 2289 + mat - the matrix 2290 . nb - the number of blocks 2291 . bs - the number of rows (and columns) in each block 2292 . rows - a concatenation of the rows for each block 2293 - v - a concatenation of logically two-dimensional arrays of values 2294 2295 Level: advanced 2296 2297 Notes: 2298 `MatSetPreallocationCOO()` and `MatSetValuesCOO()` may be a better way to provide the values 2299 2300 In the future, we will extend this routine to handle rectangular blocks, and to allow multiple calls for a given matrix. 2301 2302 .seealso: [](ch_matrices), `Mat`, `MatSetOption()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValuesBlocked()`, `MatSetValuesLocal()`, 2303 `InsertMode`, `INSERT_VALUES`, `ADD_VALUES`, `MatSetValues()`, `MatSetPreallocationCOO()`, `MatSetValuesCOO()` 2304 @*/ 2305 PetscErrorCode MatSetValuesBatch(Mat mat, PetscInt nb, PetscInt bs, PetscInt rows[], const PetscScalar v[]) 2306 { 2307 PetscFunctionBegin; 2308 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2309 PetscValidType(mat, 1); 2310 PetscAssertPointer(rows, 4); 2311 PetscAssertPointer(v, 5); 2312 PetscAssert(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2313 2314 PetscCall(PetscLogEventBegin(MAT_SetValuesBatch, mat, 0, 0, 0)); 2315 if (mat->ops->setvaluesbatch) PetscUseTypeMethod(mat, setvaluesbatch, nb, bs, rows, v); 2316 else { 2317 for (PetscInt b = 0; b < nb; ++b) PetscCall(MatSetValues(mat, bs, &rows[b * bs], bs, &rows[b * bs], &v[b * bs * bs], ADD_VALUES)); 2318 } 2319 PetscCall(PetscLogEventEnd(MAT_SetValuesBatch, mat, 0, 0, 0)); 2320 PetscFunctionReturn(PETSC_SUCCESS); 2321 } 2322 2323 /*@ 2324 MatSetLocalToGlobalMapping - Sets a local-to-global numbering for use by 2325 the routine `MatSetValuesLocal()` to allow users to insert matrix entries 2326 using a local (per-processor) numbering. 2327 2328 Not Collective 2329 2330 Input Parameters: 2331 + x - the matrix 2332 . rmapping - row mapping created with `ISLocalToGlobalMappingCreate()` or `ISLocalToGlobalMappingCreateIS()` 2333 - cmapping - column mapping 2334 2335 Level: intermediate 2336 2337 Note: 2338 If the matrix is obtained with `DMCreateMatrix()` then this may already have been called on the matrix 2339 2340 .seealso: [](ch_matrices), `Mat`, `DM`, `DMCreateMatrix()`, `MatGetLocalToGlobalMapping()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValues()`, `MatSetValuesLocal()`, `MatGetValuesLocal()` 2341 @*/ 2342 PetscErrorCode MatSetLocalToGlobalMapping(Mat x, ISLocalToGlobalMapping rmapping, ISLocalToGlobalMapping cmapping) 2343 { 2344 PetscFunctionBegin; 2345 PetscValidHeaderSpecific(x, MAT_CLASSID, 1); 2346 PetscValidType(x, 1); 2347 if (rmapping) PetscValidHeaderSpecific(rmapping, IS_LTOGM_CLASSID, 2); 2348 if (cmapping) PetscValidHeaderSpecific(cmapping, IS_LTOGM_CLASSID, 3); 2349 if (x->ops->setlocaltoglobalmapping) PetscUseTypeMethod(x, setlocaltoglobalmapping, rmapping, cmapping); 2350 else { 2351 PetscCall(PetscLayoutSetISLocalToGlobalMapping(x->rmap, rmapping)); 2352 PetscCall(PetscLayoutSetISLocalToGlobalMapping(x->cmap, cmapping)); 2353 } 2354 PetscFunctionReturn(PETSC_SUCCESS); 2355 } 2356 2357 /*@ 2358 MatGetLocalToGlobalMapping - Gets the local-to-global numbering set by `MatSetLocalToGlobalMapping()` 2359 2360 Not Collective 2361 2362 Input Parameter: 2363 . A - the matrix 2364 2365 Output Parameters: 2366 + rmapping - row mapping 2367 - cmapping - column mapping 2368 2369 Level: advanced 2370 2371 .seealso: [](ch_matrices), `Mat`, `MatSetLocalToGlobalMapping()`, `MatSetValuesLocal()` 2372 @*/ 2373 PetscErrorCode MatGetLocalToGlobalMapping(Mat A, ISLocalToGlobalMapping *rmapping, ISLocalToGlobalMapping *cmapping) 2374 { 2375 PetscFunctionBegin; 2376 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 2377 PetscValidType(A, 1); 2378 if (rmapping) { 2379 PetscAssertPointer(rmapping, 2); 2380 *rmapping = A->rmap->mapping; 2381 } 2382 if (cmapping) { 2383 PetscAssertPointer(cmapping, 3); 2384 *cmapping = A->cmap->mapping; 2385 } 2386 PetscFunctionReturn(PETSC_SUCCESS); 2387 } 2388 2389 /*@ 2390 MatSetLayouts - Sets the `PetscLayout` objects for rows and columns of a matrix 2391 2392 Logically Collective 2393 2394 Input Parameters: 2395 + A - the matrix 2396 . rmap - row layout 2397 - cmap - column layout 2398 2399 Level: advanced 2400 2401 Note: 2402 The `PetscLayout` objects are usually created automatically for the matrix so this routine rarely needs to be called. 2403 2404 .seealso: [](ch_matrices), `Mat`, `PetscLayout`, `MatCreateVecs()`, `MatGetLocalToGlobalMapping()`, `MatGetLayouts()` 2405 @*/ 2406 PetscErrorCode MatSetLayouts(Mat A, PetscLayout rmap, PetscLayout cmap) 2407 { 2408 PetscFunctionBegin; 2409 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 2410 PetscCall(PetscLayoutReference(rmap, &A->rmap)); 2411 PetscCall(PetscLayoutReference(cmap, &A->cmap)); 2412 PetscFunctionReturn(PETSC_SUCCESS); 2413 } 2414 2415 /*@ 2416 MatGetLayouts - Gets the `PetscLayout` objects for rows and columns 2417 2418 Not Collective 2419 2420 Input Parameter: 2421 . A - the matrix 2422 2423 Output Parameters: 2424 + rmap - row layout 2425 - cmap - column layout 2426 2427 Level: advanced 2428 2429 .seealso: [](ch_matrices), `Mat`, [Matrix Layouts](sec_matlayout), `PetscLayout`, `MatCreateVecs()`, `MatGetLocalToGlobalMapping()`, `MatSetLayouts()` 2430 @*/ 2431 PetscErrorCode MatGetLayouts(Mat A, PetscLayout *rmap, PetscLayout *cmap) 2432 { 2433 PetscFunctionBegin; 2434 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 2435 PetscValidType(A, 1); 2436 if (rmap) { 2437 PetscAssertPointer(rmap, 2); 2438 *rmap = A->rmap; 2439 } 2440 if (cmap) { 2441 PetscAssertPointer(cmap, 3); 2442 *cmap = A->cmap; 2443 } 2444 PetscFunctionReturn(PETSC_SUCCESS); 2445 } 2446 2447 /*@ 2448 MatSetValuesLocal - Inserts or adds values into certain locations of a matrix, 2449 using a local numbering of the rows and columns. 2450 2451 Not Collective 2452 2453 Input Parameters: 2454 + mat - the matrix 2455 . nrow - number of rows 2456 . irow - the row local indices 2457 . ncol - number of columns 2458 . icol - the column local indices 2459 . y - a one-dimensional array that contains the values implicitly stored as a two-dimensional array, by default in row-major order. 2460 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 2461 - addv - either `ADD_VALUES` to add values to any existing entries, or `INSERT_VALUES` to replace existing entries with new values 2462 2463 Level: intermediate 2464 2465 Notes: 2466 If you create the matrix yourself (that is not with a call to `DMCreateMatrix()`) then you MUST call `MatSetLocalToGlobalMapping()` before using this routine 2467 2468 Calls to `MatSetValuesLocal()` with the `INSERT_VALUES` and `ADD_VALUES` 2469 options cannot be mixed without intervening calls to the assembly 2470 routines. 2471 2472 These values may be cached, so `MatAssemblyBegin()` and `MatAssemblyEnd()` 2473 MUST be called after all calls to `MatSetValuesLocal()` have been completed. 2474 2475 Fortran Notes: 2476 If any of `irow`, `icol`, and `y` are scalars pass them using, for example, 2477 .vb 2478 call MatSetValuesLocal(mat, one, [irow], one, [icol], [y], INSERT_VALUES, ierr) 2479 .ve 2480 2481 If `y` is a two-dimensional array use `reshape()` to pass it as a one dimensional array 2482 2483 .seealso: [](ch_matrices), `Mat`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, `MatSetValues()`, `MatSetLocalToGlobalMapping()`, 2484 `MatGetValuesLocal()` 2485 @*/ 2486 PetscErrorCode MatSetValuesLocal(Mat mat, PetscInt nrow, const PetscInt irow[], PetscInt ncol, const PetscInt icol[], const PetscScalar y[], InsertMode addv) 2487 { 2488 PetscFunctionBeginHot; 2489 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2490 PetscValidType(mat, 1); 2491 MatCheckPreallocated(mat, 1); 2492 if (!nrow || !ncol) PetscFunctionReturn(PETSC_SUCCESS); /* no values to insert */ 2493 PetscAssertPointer(irow, 3); 2494 PetscAssertPointer(icol, 5); 2495 if (mat->insertmode == NOT_SET_VALUES) mat->insertmode = addv; 2496 else PetscCheck(mat->insertmode == addv, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Cannot mix add values and insert values"); 2497 if (PetscDefined(USE_DEBUG)) { 2498 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2499 PetscCheck(mat->ops->setvalueslocal || mat->ops->setvalues, PETSC_COMM_SELF, PETSC_ERR_SUP, "Mat type %s", ((PetscObject)mat)->type_name); 2500 } 2501 2502 if (mat->assembled) { 2503 mat->was_assembled = PETSC_TRUE; 2504 mat->assembled = PETSC_FALSE; 2505 } 2506 PetscCall(PetscLogEventBegin(MAT_SetValues, mat, 0, 0, 0)); 2507 if (mat->ops->setvalueslocal) PetscUseTypeMethod(mat, setvalueslocal, nrow, irow, ncol, icol, y, addv); 2508 else { 2509 PetscInt buf[8192], *bufr = NULL, *bufc = NULL; 2510 const PetscInt *irowm, *icolm; 2511 2512 if ((!mat->rmap->mapping && !mat->cmap->mapping) || (nrow + ncol) <= (PetscInt)PETSC_STATIC_ARRAY_LENGTH(buf)) { 2513 bufr = buf; 2514 bufc = buf + nrow; 2515 irowm = bufr; 2516 icolm = bufc; 2517 } else { 2518 PetscCall(PetscMalloc2(nrow, &bufr, ncol, &bufc)); 2519 irowm = bufr; 2520 icolm = bufc; 2521 } 2522 if (mat->rmap->mapping) PetscCall(ISLocalToGlobalMappingApply(mat->rmap->mapping, nrow, irow, bufr)); 2523 else irowm = irow; 2524 if (mat->cmap->mapping) { 2525 if (mat->cmap->mapping != mat->rmap->mapping || ncol != nrow || icol != irow) PetscCall(ISLocalToGlobalMappingApply(mat->cmap->mapping, ncol, icol, bufc)); 2526 else icolm = irowm; 2527 } else icolm = icol; 2528 PetscCall(MatSetValues(mat, nrow, irowm, ncol, icolm, y, addv)); 2529 if (bufr != buf) PetscCall(PetscFree2(bufr, bufc)); 2530 } 2531 PetscCall(PetscLogEventEnd(MAT_SetValues, mat, 0, 0, 0)); 2532 PetscFunctionReturn(PETSC_SUCCESS); 2533 } 2534 2535 /*@ 2536 MatSetValuesBlockedLocal - Inserts or adds values into certain locations of a matrix, 2537 using a local ordering of the nodes a block at a time. 2538 2539 Not Collective 2540 2541 Input Parameters: 2542 + mat - the matrix 2543 . nrow - number of rows 2544 . irow - the row local indices 2545 . ncol - number of columns 2546 . icol - the column local indices 2547 . y - a one-dimensional array that contains the values implicitly stored as a two-dimensional array, by default in row-major order. 2548 See `MAT_ROW_ORIENTED` in `MatSetOption()` for how to use column-major order. 2549 - addv - either `ADD_VALUES` to add values to any existing entries, or `INSERT_VALUES` to replace existing entries with new values 2550 2551 Level: intermediate 2552 2553 Notes: 2554 If you create the matrix yourself (that is not with a call to `DMCreateMatrix()`) then you MUST call `MatSetBlockSize()` and `MatSetLocalToGlobalMapping()` 2555 before using this routineBefore calling `MatSetValuesLocal()`, the user must first set the 2556 2557 Calls to `MatSetValuesBlockedLocal()` with the `INSERT_VALUES` and `ADD_VALUES` 2558 options cannot be mixed without intervening calls to the assembly 2559 routines. 2560 2561 These values may be cached, so `MatAssemblyBegin()` and `MatAssemblyEnd()` 2562 MUST be called after all calls to `MatSetValuesBlockedLocal()` have been completed. 2563 2564 Fortran Notes: 2565 If any of `irow`, `icol`, and `y` are scalars pass them using, for example, 2566 .vb 2567 call MatSetValuesBlockedLocal(mat, one, [irow], one, [icol], [y], INSERT_VALUES, ierr) 2568 .ve 2569 2570 If `y` is a two-dimensional array use `reshape()` to pass it as a one dimensional array 2571 2572 .seealso: [](ch_matrices), `Mat`, `MatSetBlockSize()`, `MatSetLocalToGlobalMapping()`, `MatAssemblyBegin()`, `MatAssemblyEnd()`, 2573 `MatSetValuesLocal()`, `MatSetValuesBlocked()` 2574 @*/ 2575 PetscErrorCode MatSetValuesBlockedLocal(Mat mat, PetscInt nrow, const PetscInt irow[], PetscInt ncol, const PetscInt icol[], const PetscScalar y[], InsertMode addv) 2576 { 2577 PetscFunctionBeginHot; 2578 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2579 PetscValidType(mat, 1); 2580 MatCheckPreallocated(mat, 1); 2581 if (!nrow || !ncol) PetscFunctionReturn(PETSC_SUCCESS); /* no values to insert */ 2582 PetscAssertPointer(irow, 3); 2583 PetscAssertPointer(icol, 5); 2584 if (mat->insertmode == NOT_SET_VALUES) mat->insertmode = addv; 2585 else PetscCheck(mat->insertmode == addv, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Cannot mix add values and insert values"); 2586 if (PetscDefined(USE_DEBUG)) { 2587 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2588 PetscCheck(mat->ops->setvaluesblockedlocal || mat->ops->setvaluesblocked || mat->ops->setvalueslocal || mat->ops->setvalues, PETSC_COMM_SELF, PETSC_ERR_SUP, "Mat type %s", ((PetscObject)mat)->type_name); 2589 } 2590 2591 if (mat->assembled) { 2592 mat->was_assembled = PETSC_TRUE; 2593 mat->assembled = PETSC_FALSE; 2594 } 2595 if (PetscUnlikelyDebug(mat->rmap->mapping)) { /* Condition on the mapping existing, because MatSetValuesBlockedLocal_IS does not require it to be set. */ 2596 PetscInt irbs, rbs; 2597 PetscCall(MatGetBlockSizes(mat, &rbs, NULL)); 2598 PetscCall(ISLocalToGlobalMappingGetBlockSize(mat->rmap->mapping, &irbs)); 2599 PetscCheck(rbs == irbs, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Different row block sizes! mat %" PetscInt_FMT ", row l2g map %" PetscInt_FMT, rbs, irbs); 2600 } 2601 if (PetscUnlikelyDebug(mat->cmap->mapping)) { 2602 PetscInt icbs, cbs; 2603 PetscCall(MatGetBlockSizes(mat, NULL, &cbs)); 2604 PetscCall(ISLocalToGlobalMappingGetBlockSize(mat->cmap->mapping, &icbs)); 2605 PetscCheck(cbs == icbs, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Different col block sizes! mat %" PetscInt_FMT ", col l2g map %" PetscInt_FMT, cbs, icbs); 2606 } 2607 PetscCall(PetscLogEventBegin(MAT_SetValues, mat, 0, 0, 0)); 2608 if (mat->ops->setvaluesblockedlocal) PetscUseTypeMethod(mat, setvaluesblockedlocal, nrow, irow, ncol, icol, y, addv); 2609 else { 2610 PetscInt buf[8192], *bufr = NULL, *bufc = NULL; 2611 const PetscInt *irowm, *icolm; 2612 2613 if ((!mat->rmap->mapping && !mat->cmap->mapping) || (nrow + ncol) <= ((PetscInt)PETSC_STATIC_ARRAY_LENGTH(buf))) { 2614 bufr = buf; 2615 bufc = buf + nrow; 2616 irowm = bufr; 2617 icolm = bufc; 2618 } else { 2619 PetscCall(PetscMalloc2(nrow, &bufr, ncol, &bufc)); 2620 irowm = bufr; 2621 icolm = bufc; 2622 } 2623 if (mat->rmap->mapping) PetscCall(ISLocalToGlobalMappingApplyBlock(mat->rmap->mapping, nrow, irow, bufr)); 2624 else irowm = irow; 2625 if (mat->cmap->mapping) { 2626 if (mat->cmap->mapping != mat->rmap->mapping || ncol != nrow || icol != irow) PetscCall(ISLocalToGlobalMappingApplyBlock(mat->cmap->mapping, ncol, icol, bufc)); 2627 else icolm = irowm; 2628 } else icolm = icol; 2629 PetscCall(MatSetValuesBlocked(mat, nrow, irowm, ncol, icolm, y, addv)); 2630 if (bufr != buf) PetscCall(PetscFree2(bufr, bufc)); 2631 } 2632 PetscCall(PetscLogEventEnd(MAT_SetValues, mat, 0, 0, 0)); 2633 PetscFunctionReturn(PETSC_SUCCESS); 2634 } 2635 2636 /*@ 2637 MatMultDiagonalBlock - Computes the matrix-vector product, $y = Dx$. Where `D` is defined by the inode or block structure of the diagonal 2638 2639 Collective 2640 2641 Input Parameters: 2642 + mat - the matrix 2643 - x - the vector to be multiplied 2644 2645 Output Parameter: 2646 . y - the result 2647 2648 Level: developer 2649 2650 Note: 2651 The vectors `x` and `y` cannot be the same. I.e., one cannot 2652 call `MatMultDiagonalBlock`(A,y,y). 2653 2654 .seealso: [](ch_matrices), `Mat`, `MatMult()`, `MatMultTranspose()`, `MatMultAdd()`, `MatMultTransposeAdd()` 2655 @*/ 2656 PetscErrorCode MatMultDiagonalBlock(Mat mat, Vec x, Vec y) 2657 { 2658 PetscFunctionBegin; 2659 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2660 PetscValidType(mat, 1); 2661 PetscValidHeaderSpecific(x, VEC_CLASSID, 2); 2662 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 2663 2664 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2665 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2666 PetscCheck(x != y, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "x and y must be different vectors"); 2667 MatCheckPreallocated(mat, 1); 2668 2669 PetscUseTypeMethod(mat, multdiagonalblock, x, y); 2670 PetscCall(PetscObjectStateIncrease((PetscObject)y)); 2671 PetscFunctionReturn(PETSC_SUCCESS); 2672 } 2673 2674 /*@ 2675 MatMult - Computes the matrix-vector product, $y = Ax$. 2676 2677 Neighbor-wise Collective 2678 2679 Input Parameters: 2680 + mat - the matrix 2681 - x - the vector to be multiplied 2682 2683 Output Parameter: 2684 . y - the result 2685 2686 Level: beginner 2687 2688 Note: 2689 The vectors `x` and `y` cannot be the same. I.e., one cannot 2690 call `MatMult`(A,y,y). 2691 2692 .seealso: [](ch_matrices), `Mat`, `MatMultTranspose()`, `MatMultAdd()`, `MatMultTransposeAdd()` 2693 @*/ 2694 PetscErrorCode MatMult(Mat mat, Vec x, Vec y) 2695 { 2696 PetscFunctionBegin; 2697 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2698 PetscValidType(mat, 1); 2699 PetscValidHeaderSpecific(x, VEC_CLASSID, 2); 2700 VecCheckAssembled(x); 2701 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 2702 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2703 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2704 PetscCheck(x != y, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "x and y must be different vectors"); 2705 PetscCheck(mat->cmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, x->map->N); 2706 PetscCheck(mat->rmap->N == y->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec y: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, y->map->N); 2707 PetscCheck(mat->cmap->n == x->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->n, x->map->n); 2708 PetscCheck(mat->rmap->n == y->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec y: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, y->map->n); 2709 PetscCall(VecSetErrorIfLocked(y, 3)); 2710 if (mat->erroriffailure) PetscCall(VecValidValues_Internal(x, 2, PETSC_TRUE)); 2711 MatCheckPreallocated(mat, 1); 2712 2713 PetscCall(VecLockReadPush(x)); 2714 PetscCall(PetscLogEventBegin(MAT_Mult, mat, x, y, 0)); 2715 PetscUseTypeMethod(mat, mult, x, y); 2716 PetscCall(PetscLogEventEnd(MAT_Mult, mat, x, y, 0)); 2717 if (mat->erroriffailure) PetscCall(VecValidValues_Internal(y, 3, PETSC_FALSE)); 2718 PetscCall(VecLockReadPop(x)); 2719 PetscFunctionReturn(PETSC_SUCCESS); 2720 } 2721 2722 /*@ 2723 MatMultTranspose - Computes matrix transpose times a vector $y = A^T * x$. 2724 2725 Neighbor-wise Collective 2726 2727 Input Parameters: 2728 + mat - the matrix 2729 - x - the vector to be multiplied 2730 2731 Output Parameter: 2732 . y - the result 2733 2734 Level: beginner 2735 2736 Notes: 2737 The vectors `x` and `y` cannot be the same. I.e., one cannot 2738 call `MatMultTranspose`(A,y,y). 2739 2740 For complex numbers this does NOT compute the Hermitian (complex conjugate) transpose multiple, 2741 use `MatMultHermitianTranspose()` 2742 2743 .seealso: [](ch_matrices), `Mat`, `MatMult()`, `MatMultAdd()`, `MatMultTransposeAdd()`, `MatMultHermitianTranspose()`, `MatTranspose()` 2744 @*/ 2745 PetscErrorCode MatMultTranspose(Mat mat, Vec x, Vec y) 2746 { 2747 PetscErrorCode (*op)(Mat, Vec, Vec) = NULL; 2748 2749 PetscFunctionBegin; 2750 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2751 PetscValidType(mat, 1); 2752 PetscValidHeaderSpecific(x, VEC_CLASSID, 2); 2753 VecCheckAssembled(x); 2754 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 2755 2756 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2757 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2758 PetscCheck(x != y, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "x and y must be different vectors"); 2759 PetscCheck(mat->cmap->N == y->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec y: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, y->map->N); 2760 PetscCheck(mat->rmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, x->map->N); 2761 PetscCheck(mat->cmap->n == y->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec y: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->n, y->map->n); 2762 PetscCheck(mat->rmap->n == x->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, x->map->n); 2763 if (mat->erroriffailure) PetscCall(VecValidValues_Internal(x, 2, PETSC_TRUE)); 2764 MatCheckPreallocated(mat, 1); 2765 2766 if (!mat->ops->multtranspose) { 2767 if (mat->symmetric == PETSC_BOOL3_TRUE && mat->ops->mult) op = mat->ops->mult; 2768 PetscCheck(op, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Matrix type %s does not have a multiply transpose defined or is symmetric and does not have a multiply defined", ((PetscObject)mat)->type_name); 2769 } else op = mat->ops->multtranspose; 2770 PetscCall(PetscLogEventBegin(MAT_MultTranspose, mat, x, y, 0)); 2771 PetscCall(VecLockReadPush(x)); 2772 PetscCall((*op)(mat, x, y)); 2773 PetscCall(VecLockReadPop(x)); 2774 PetscCall(PetscLogEventEnd(MAT_MultTranspose, mat, x, y, 0)); 2775 PetscCall(PetscObjectStateIncrease((PetscObject)y)); 2776 if (mat->erroriffailure) PetscCall(VecValidValues_Internal(y, 3, PETSC_FALSE)); 2777 PetscFunctionReturn(PETSC_SUCCESS); 2778 } 2779 2780 /*@ 2781 MatMultHermitianTranspose - Computes matrix Hermitian-transpose times a vector $y = A^H * x$. 2782 2783 Neighbor-wise Collective 2784 2785 Input Parameters: 2786 + mat - the matrix 2787 - x - the vector to be multiplied 2788 2789 Output Parameter: 2790 . y - the result 2791 2792 Level: beginner 2793 2794 Notes: 2795 The vectors `x` and `y` cannot be the same. I.e., one cannot 2796 call `MatMultHermitianTranspose`(A,y,y). 2797 2798 Also called the conjugate transpose, complex conjugate transpose, or adjoint. 2799 2800 For real numbers `MatMultTranspose()` and `MatMultHermitianTranspose()` are identical. 2801 2802 .seealso: [](ch_matrices), `Mat`, `MatMult()`, `MatMultAdd()`, `MatMultHermitianTransposeAdd()`, `MatMultTranspose()` 2803 @*/ 2804 PetscErrorCode MatMultHermitianTranspose(Mat mat, Vec x, Vec y) 2805 { 2806 PetscFunctionBegin; 2807 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2808 PetscValidType(mat, 1); 2809 PetscValidHeaderSpecific(x, VEC_CLASSID, 2); 2810 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 2811 2812 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2813 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2814 PetscCheck(x != y, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "x and y must be different vectors"); 2815 PetscCheck(mat->cmap->N == y->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec y: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, y->map->N); 2816 PetscCheck(mat->rmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, x->map->N); 2817 PetscCheck(mat->cmap->n == y->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec y: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->n, y->map->n); 2818 PetscCheck(mat->rmap->n == x->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, x->map->n); 2819 MatCheckPreallocated(mat, 1); 2820 2821 PetscCall(PetscLogEventBegin(MAT_MultHermitianTranspose, mat, x, y, 0)); 2822 #if defined(PETSC_USE_COMPLEX) 2823 if (mat->ops->multhermitiantranspose || (mat->hermitian == PETSC_BOOL3_TRUE && mat->ops->mult)) { 2824 PetscCall(VecLockReadPush(x)); 2825 if (mat->ops->multhermitiantranspose) PetscUseTypeMethod(mat, multhermitiantranspose, x, y); 2826 else PetscUseTypeMethod(mat, mult, x, y); 2827 PetscCall(VecLockReadPop(x)); 2828 } else { 2829 Vec w; 2830 PetscCall(VecDuplicate(x, &w)); 2831 PetscCall(VecCopy(x, w)); 2832 PetscCall(VecConjugate(w)); 2833 PetscCall(MatMultTranspose(mat, w, y)); 2834 PetscCall(VecDestroy(&w)); 2835 PetscCall(VecConjugate(y)); 2836 } 2837 PetscCall(PetscObjectStateIncrease((PetscObject)y)); 2838 #else 2839 PetscCall(MatMultTranspose(mat, x, y)); 2840 #endif 2841 PetscCall(PetscLogEventEnd(MAT_MultHermitianTranspose, mat, x, y, 0)); 2842 PetscFunctionReturn(PETSC_SUCCESS); 2843 } 2844 2845 /*@ 2846 MatMultAdd - Computes $v3 = v2 + A * v1$. 2847 2848 Neighbor-wise Collective 2849 2850 Input Parameters: 2851 + mat - the matrix 2852 . v1 - the vector to be multiplied by `mat` 2853 - v2 - the vector to be added to the result 2854 2855 Output Parameter: 2856 . v3 - the result 2857 2858 Level: beginner 2859 2860 Note: 2861 The vectors `v1` and `v3` cannot be the same. I.e., one cannot 2862 call `MatMultAdd`(A,v1,v2,v1). 2863 2864 .seealso: [](ch_matrices), `Mat`, `MatMultTranspose()`, `MatMult()`, `MatMultTransposeAdd()` 2865 @*/ 2866 PetscErrorCode MatMultAdd(Mat mat, Vec v1, Vec v2, Vec v3) 2867 { 2868 PetscFunctionBegin; 2869 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2870 PetscValidType(mat, 1); 2871 PetscValidHeaderSpecific(v1, VEC_CLASSID, 2); 2872 PetscValidHeaderSpecific(v2, VEC_CLASSID, 3); 2873 PetscValidHeaderSpecific(v3, VEC_CLASSID, 4); 2874 2875 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2876 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2877 PetscCheck(mat->cmap->N == v1->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec v1: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, v1->map->N); 2878 /* PetscCheck(mat->rmap->N == v2->map->N,PETSC_COMM_SELF,PETSC_ERR_ARG_SIZ,"Mat mat,Vec v2: global dim %" PetscInt_FMT " %" PetscInt_FMT,mat->rmap->N,v2->map->N); 2879 PetscCheck(mat->rmap->N == v3->map->N,PETSC_COMM_SELF,PETSC_ERR_ARG_SIZ,"Mat mat,Vec v3: global dim %" PetscInt_FMT " %" PetscInt_FMT,mat->rmap->N,v3->map->N); */ 2880 PetscCheck(mat->rmap->n == v3->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec v3: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, v3->map->n); 2881 PetscCheck(mat->rmap->n == v2->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec v2: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, v2->map->n); 2882 PetscCheck(v1 != v3, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "v1 and v3 must be different vectors"); 2883 MatCheckPreallocated(mat, 1); 2884 2885 PetscCall(PetscLogEventBegin(MAT_MultAdd, mat, v1, v2, v3)); 2886 PetscCall(VecLockReadPush(v1)); 2887 PetscUseTypeMethod(mat, multadd, v1, v2, v3); 2888 PetscCall(VecLockReadPop(v1)); 2889 PetscCall(PetscLogEventEnd(MAT_MultAdd, mat, v1, v2, v3)); 2890 PetscCall(PetscObjectStateIncrease((PetscObject)v3)); 2891 PetscFunctionReturn(PETSC_SUCCESS); 2892 } 2893 2894 /*@ 2895 MatMultTransposeAdd - Computes $v3 = v2 + A^T * v1$. 2896 2897 Neighbor-wise Collective 2898 2899 Input Parameters: 2900 + mat - the matrix 2901 . v1 - the vector to be multiplied by the transpose of the matrix 2902 - v2 - the vector to be added to the result 2903 2904 Output Parameter: 2905 . v3 - the result 2906 2907 Level: beginner 2908 2909 Note: 2910 The vectors `v1` and `v3` cannot be the same. I.e., one cannot 2911 call `MatMultTransposeAdd`(A,v1,v2,v1). 2912 2913 .seealso: [](ch_matrices), `Mat`, `MatMultTranspose()`, `MatMultAdd()`, `MatMult()` 2914 @*/ 2915 PetscErrorCode MatMultTransposeAdd(Mat mat, Vec v1, Vec v2, Vec v3) 2916 { 2917 PetscErrorCode (*op)(Mat, Vec, Vec, Vec) = (!mat->ops->multtransposeadd && mat->symmetric) ? mat->ops->multadd : mat->ops->multtransposeadd; 2918 2919 PetscFunctionBegin; 2920 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2921 PetscValidType(mat, 1); 2922 PetscValidHeaderSpecific(v1, VEC_CLASSID, 2); 2923 PetscValidHeaderSpecific(v2, VEC_CLASSID, 3); 2924 PetscValidHeaderSpecific(v3, VEC_CLASSID, 4); 2925 2926 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2927 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2928 PetscCheck(mat->rmap->N == v1->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec v1: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, v1->map->N); 2929 PetscCheck(mat->cmap->N == v2->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec v2: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, v2->map->N); 2930 PetscCheck(mat->cmap->N == v3->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec v3: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, v3->map->N); 2931 PetscCheck(v1 != v3, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "v1 and v3 must be different vectors"); 2932 PetscCheck(op, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Mat type %s", ((PetscObject)mat)->type_name); 2933 MatCheckPreallocated(mat, 1); 2934 2935 PetscCall(PetscLogEventBegin(MAT_MultTransposeAdd, mat, v1, v2, v3)); 2936 PetscCall(VecLockReadPush(v1)); 2937 PetscCall((*op)(mat, v1, v2, v3)); 2938 PetscCall(VecLockReadPop(v1)); 2939 PetscCall(PetscLogEventEnd(MAT_MultTransposeAdd, mat, v1, v2, v3)); 2940 PetscCall(PetscObjectStateIncrease((PetscObject)v3)); 2941 PetscFunctionReturn(PETSC_SUCCESS); 2942 } 2943 2944 /*@ 2945 MatMultHermitianTransposeAdd - Computes $v3 = v2 + A^H * v1$. 2946 2947 Neighbor-wise Collective 2948 2949 Input Parameters: 2950 + mat - the matrix 2951 . v1 - the vector to be multiplied by the Hermitian transpose 2952 - v2 - the vector to be added to the result 2953 2954 Output Parameter: 2955 . v3 - the result 2956 2957 Level: beginner 2958 2959 Note: 2960 The vectors `v1` and `v3` cannot be the same. I.e., one cannot 2961 call `MatMultHermitianTransposeAdd`(A,v1,v2,v1). 2962 2963 .seealso: [](ch_matrices), `Mat`, `MatMultHermitianTranspose()`, `MatMultTranspose()`, `MatMultAdd()`, `MatMult()` 2964 @*/ 2965 PetscErrorCode MatMultHermitianTransposeAdd(Mat mat, Vec v1, Vec v2, Vec v3) 2966 { 2967 PetscFunctionBegin; 2968 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 2969 PetscValidType(mat, 1); 2970 PetscValidHeaderSpecific(v1, VEC_CLASSID, 2); 2971 PetscValidHeaderSpecific(v2, VEC_CLASSID, 3); 2972 PetscValidHeaderSpecific(v3, VEC_CLASSID, 4); 2973 2974 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 2975 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 2976 PetscCheck(v1 != v3, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "v1 and v3 must be different vectors"); 2977 PetscCheck(mat->rmap->N == v1->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec v1: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, v1->map->N); 2978 PetscCheck(mat->cmap->N == v2->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec v2: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, v2->map->N); 2979 PetscCheck(mat->cmap->N == v3->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec v3: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, v3->map->N); 2980 MatCheckPreallocated(mat, 1); 2981 2982 PetscCall(PetscLogEventBegin(MAT_MultHermitianTransposeAdd, mat, v1, v2, v3)); 2983 PetscCall(VecLockReadPush(v1)); 2984 if (mat->ops->multhermitiantransposeadd) PetscUseTypeMethod(mat, multhermitiantransposeadd, v1, v2, v3); 2985 else { 2986 Vec w, z; 2987 PetscCall(VecDuplicate(v1, &w)); 2988 PetscCall(VecCopy(v1, w)); 2989 PetscCall(VecConjugate(w)); 2990 PetscCall(VecDuplicate(v3, &z)); 2991 PetscCall(MatMultTranspose(mat, w, z)); 2992 PetscCall(VecDestroy(&w)); 2993 PetscCall(VecConjugate(z)); 2994 if (v2 != v3) { 2995 PetscCall(VecWAXPY(v3, 1.0, v2, z)); 2996 } else { 2997 PetscCall(VecAXPY(v3, 1.0, z)); 2998 } 2999 PetscCall(VecDestroy(&z)); 3000 } 3001 PetscCall(VecLockReadPop(v1)); 3002 PetscCall(PetscLogEventEnd(MAT_MultHermitianTransposeAdd, mat, v1, v2, v3)); 3003 PetscCall(PetscObjectStateIncrease((PetscObject)v3)); 3004 PetscFunctionReturn(PETSC_SUCCESS); 3005 } 3006 3007 /*@ 3008 MatGetFactorType - gets the type of factorization a matrix is 3009 3010 Not Collective 3011 3012 Input Parameter: 3013 . mat - the matrix 3014 3015 Output Parameter: 3016 . t - the type, one of `MAT_FACTOR_NONE`, `MAT_FACTOR_LU`, `MAT_FACTOR_CHOLESKY`, `MAT_FACTOR_ILU`, `MAT_FACTOR_ICC,MAT_FACTOR_ILUDT`, `MAT_FACTOR_QR` 3017 3018 Level: intermediate 3019 3020 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatFactorType`, `MatGetFactor()`, `MatSetFactorType()`, `MAT_FACTOR_NONE`, `MAT_FACTOR_LU`, `MAT_FACTOR_CHOLESKY`, `MAT_FACTOR_ILU`, 3021 `MAT_FACTOR_ICC`,`MAT_FACTOR_ILUDT`, `MAT_FACTOR_QR` 3022 @*/ 3023 PetscErrorCode MatGetFactorType(Mat mat, MatFactorType *t) 3024 { 3025 PetscFunctionBegin; 3026 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3027 PetscValidType(mat, 1); 3028 PetscAssertPointer(t, 2); 3029 *t = mat->factortype; 3030 PetscFunctionReturn(PETSC_SUCCESS); 3031 } 3032 3033 /*@ 3034 MatSetFactorType - sets the type of factorization a matrix is 3035 3036 Logically Collective 3037 3038 Input Parameters: 3039 + mat - the matrix 3040 - t - the type, one of `MAT_FACTOR_NONE`, `MAT_FACTOR_LU`, `MAT_FACTOR_CHOLESKY`, `MAT_FACTOR_ILU`, `MAT_FACTOR_ICC,MAT_FACTOR_ILUDT`, `MAT_FACTOR_QR` 3041 3042 Level: intermediate 3043 3044 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatFactorType`, `MatGetFactor()`, `MatGetFactorType()`, `MAT_FACTOR_NONE`, `MAT_FACTOR_LU`, `MAT_FACTOR_CHOLESKY`, `MAT_FACTOR_ILU`, 3045 `MAT_FACTOR_ICC`,`MAT_FACTOR_ILUDT`, `MAT_FACTOR_QR` 3046 @*/ 3047 PetscErrorCode MatSetFactorType(Mat mat, MatFactorType t) 3048 { 3049 PetscFunctionBegin; 3050 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3051 PetscValidType(mat, 1); 3052 mat->factortype = t; 3053 PetscFunctionReturn(PETSC_SUCCESS); 3054 } 3055 3056 /*@ 3057 MatGetInfo - Returns information about matrix storage (number of 3058 nonzeros, memory, etc.). 3059 3060 Collective if `MAT_GLOBAL_MAX` or `MAT_GLOBAL_SUM` is used as the flag 3061 3062 Input Parameters: 3063 + mat - the matrix 3064 - flag - flag indicating the type of parameters to be returned (`MAT_LOCAL` - local matrix, `MAT_GLOBAL_MAX` - maximum over all processors, `MAT_GLOBAL_SUM` - sum over all processors) 3065 3066 Output Parameter: 3067 . info - matrix information context 3068 3069 Options Database Key: 3070 . -mat_view ::ascii_info - print matrix info to `PETSC_STDOUT` 3071 3072 Level: intermediate 3073 3074 Notes: 3075 The `MatInfo` context contains a variety of matrix data, including 3076 number of nonzeros allocated and used, number of mallocs during 3077 matrix assembly, etc. Additional information for factored matrices 3078 is provided (such as the fill ratio, number of mallocs during 3079 factorization, etc.). 3080 3081 Example: 3082 See the file ${PETSC_DIR}/include/petscmat.h for a complete list of 3083 data within the `MatInfo` context. For example, 3084 .vb 3085 MatInfo info; 3086 Mat A; 3087 double mal, nz_a, nz_u; 3088 3089 MatGetInfo(A, MAT_LOCAL, &info); 3090 mal = info.mallocs; 3091 nz_a = info.nz_allocated; 3092 .ve 3093 3094 .seealso: [](ch_matrices), `Mat`, `MatInfo`, `MatStashGetInfo()` 3095 @*/ 3096 PetscErrorCode MatGetInfo(Mat mat, MatInfoType flag, MatInfo *info) 3097 { 3098 PetscFunctionBegin; 3099 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3100 PetscValidType(mat, 1); 3101 PetscAssertPointer(info, 3); 3102 MatCheckPreallocated(mat, 1); 3103 PetscUseTypeMethod(mat, getinfo, flag, info); 3104 PetscFunctionReturn(PETSC_SUCCESS); 3105 } 3106 3107 /* 3108 This is used by external packages where it is not easy to get the info from the actual 3109 matrix factorization. 3110 */ 3111 PetscErrorCode MatGetInfo_External(Mat A, MatInfoType flag, MatInfo *info) 3112 { 3113 PetscFunctionBegin; 3114 PetscCall(PetscMemzero(info, sizeof(MatInfo))); 3115 PetscFunctionReturn(PETSC_SUCCESS); 3116 } 3117 3118 /*@ 3119 MatLUFactor - Performs in-place LU factorization of matrix. 3120 3121 Collective 3122 3123 Input Parameters: 3124 + mat - the matrix 3125 . row - row permutation 3126 . col - column permutation 3127 - info - options for factorization, includes 3128 .vb 3129 fill - expected fill as ratio of original fill. 3130 dtcol - pivot tolerance (0 no pivot, 1 full column pivoting) 3131 Run with the option -info to determine an optimal value to use 3132 .ve 3133 3134 Level: developer 3135 3136 Notes: 3137 Most users should employ the `KSP` interface for linear solvers 3138 instead of working directly with matrix algebra routines such as this. 3139 See, e.g., `KSPCreate()`. 3140 3141 This changes the state of the matrix to a factored matrix; it cannot be used 3142 for example with `MatSetValues()` unless one first calls `MatSetUnfactored()`. 3143 3144 This is really in-place only for dense matrices, the preferred approach is to use `MatGetFactor()`, `MatLUFactorSymbolic()`, and `MatLUFactorNumeric()` 3145 when not using `KSP`. 3146 3147 Fortran Note: 3148 A valid (non-null) `info` argument must be provided 3149 3150 .seealso: [](ch_matrices), [Matrix Factorization](sec_matfactor), `Mat`, `MatFactorType`, `MatLUFactorSymbolic()`, `MatLUFactorNumeric()`, `MatCholeskyFactor()`, 3151 `MatGetOrdering()`, `MatSetUnfactored()`, `MatFactorInfo`, `MatGetFactor()` 3152 @*/ 3153 PetscErrorCode MatLUFactor(Mat mat, IS row, IS col, const MatFactorInfo *info) 3154 { 3155 MatFactorInfo tinfo; 3156 3157 PetscFunctionBegin; 3158 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3159 if (row) PetscValidHeaderSpecific(row, IS_CLASSID, 2); 3160 if (col) PetscValidHeaderSpecific(col, IS_CLASSID, 3); 3161 if (info) PetscAssertPointer(info, 4); 3162 PetscValidType(mat, 1); 3163 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3164 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 3165 MatCheckPreallocated(mat, 1); 3166 if (!info) { 3167 PetscCall(MatFactorInfoInitialize(&tinfo)); 3168 info = &tinfo; 3169 } 3170 3171 PetscCall(PetscLogEventBegin(MAT_LUFactor, mat, row, col, 0)); 3172 PetscUseTypeMethod(mat, lufactor, row, col, info); 3173 PetscCall(PetscLogEventEnd(MAT_LUFactor, mat, row, col, 0)); 3174 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 3175 PetscFunctionReturn(PETSC_SUCCESS); 3176 } 3177 3178 /*@ 3179 MatILUFactor - Performs in-place ILU factorization of matrix. 3180 3181 Collective 3182 3183 Input Parameters: 3184 + mat - the matrix 3185 . row - row permutation 3186 . col - column permutation 3187 - info - structure containing 3188 .vb 3189 levels - number of levels of fill. 3190 expected fill - as ratio of original fill. 3191 1 or 0 - indicating force fill on diagonal (improves robustness for matrices 3192 missing diagonal entries) 3193 .ve 3194 3195 Level: developer 3196 3197 Notes: 3198 Most users should employ the `KSP` interface for linear solvers 3199 instead of working directly with matrix algebra routines such as this. 3200 See, e.g., `KSPCreate()`. 3201 3202 Probably really in-place only when level of fill is zero, otherwise allocates 3203 new space to store factored matrix and deletes previous memory. The preferred approach is to use `MatGetFactor()`, `MatILUFactorSymbolic()`, and `MatILUFactorNumeric()` 3204 when not using `KSP`. 3205 3206 Fortran Note: 3207 A valid (non-null) `info` argument must be provided 3208 3209 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatILUFactorSymbolic()`, `MatLUFactorNumeric()`, `MatCholeskyFactor()`, `MatFactorInfo` 3210 @*/ 3211 PetscErrorCode MatILUFactor(Mat mat, IS row, IS col, const MatFactorInfo *info) 3212 { 3213 PetscFunctionBegin; 3214 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3215 if (row) PetscValidHeaderSpecific(row, IS_CLASSID, 2); 3216 if (col) PetscValidHeaderSpecific(col, IS_CLASSID, 3); 3217 PetscAssertPointer(info, 4); 3218 PetscValidType(mat, 1); 3219 PetscCheck(mat->rmap->N == mat->cmap->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONG, "matrix must be square"); 3220 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3221 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 3222 MatCheckPreallocated(mat, 1); 3223 3224 PetscCall(PetscLogEventBegin(MAT_ILUFactor, mat, row, col, 0)); 3225 PetscUseTypeMethod(mat, ilufactor, row, col, info); 3226 PetscCall(PetscLogEventEnd(MAT_ILUFactor, mat, row, col, 0)); 3227 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 3228 PetscFunctionReturn(PETSC_SUCCESS); 3229 } 3230 3231 /*@ 3232 MatLUFactorSymbolic - Performs symbolic LU factorization of matrix. 3233 Call this routine before calling `MatLUFactorNumeric()` and after `MatGetFactor()`. 3234 3235 Collective 3236 3237 Input Parameters: 3238 + fact - the factor matrix obtained with `MatGetFactor()` 3239 . mat - the matrix 3240 . row - the row permutation 3241 . col - the column permutation 3242 - info - options for factorization, includes 3243 .vb 3244 fill - expected fill as ratio of original fill. Run with the option -info to determine an optimal value to use 3245 dtcol - pivot tolerance (0 no pivot, 1 full column pivoting) 3246 .ve 3247 3248 Level: developer 3249 3250 Notes: 3251 See [Matrix Factorization](sec_matfactor) for additional information about factorizations 3252 3253 Most users should employ the simplified `KSP` interface for linear solvers 3254 instead of working directly with matrix algebra routines such as this. 3255 See, e.g., `KSPCreate()`. 3256 3257 Fortran Note: 3258 A valid (non-null) `info` argument must be provided 3259 3260 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatLUFactor()`, `MatLUFactorNumeric()`, `MatCholeskyFactor()`, `MatFactorInfo`, `MatFactorInfoInitialize()` 3261 @*/ 3262 PetscErrorCode MatLUFactorSymbolic(Mat fact, Mat mat, IS row, IS col, const MatFactorInfo *info) 3263 { 3264 MatFactorInfo tinfo; 3265 3266 PetscFunctionBegin; 3267 PetscValidHeaderSpecific(fact, MAT_CLASSID, 1); 3268 PetscValidHeaderSpecific(mat, MAT_CLASSID, 2); 3269 if (row) PetscValidHeaderSpecific(row, IS_CLASSID, 3); 3270 if (col) PetscValidHeaderSpecific(col, IS_CLASSID, 4); 3271 if (info) PetscAssertPointer(info, 5); 3272 PetscValidType(fact, 1); 3273 PetscValidType(mat, 2); 3274 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3275 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 3276 MatCheckPreallocated(mat, 2); 3277 if (!info) { 3278 PetscCall(MatFactorInfoInitialize(&tinfo)); 3279 info = &tinfo; 3280 } 3281 3282 if (!fact->trivialsymbolic) PetscCall(PetscLogEventBegin(MAT_LUFactorSymbolic, mat, row, col, 0)); 3283 PetscUseTypeMethod(fact, lufactorsymbolic, mat, row, col, info); 3284 if (!fact->trivialsymbolic) PetscCall(PetscLogEventEnd(MAT_LUFactorSymbolic, mat, row, col, 0)); 3285 PetscCall(PetscObjectStateIncrease((PetscObject)fact)); 3286 PetscFunctionReturn(PETSC_SUCCESS); 3287 } 3288 3289 /*@ 3290 MatLUFactorNumeric - Performs numeric LU factorization of a matrix. 3291 Call this routine after first calling `MatLUFactorSymbolic()` and `MatGetFactor()`. 3292 3293 Collective 3294 3295 Input Parameters: 3296 + fact - the factor matrix obtained with `MatGetFactor()` 3297 . mat - the matrix 3298 - info - options for factorization 3299 3300 Level: developer 3301 3302 Notes: 3303 See `MatLUFactor()` for in-place factorization. See 3304 `MatCholeskyFactorNumeric()` for the symmetric, positive definite case. 3305 3306 Most users should employ the `KSP` interface for linear solvers 3307 instead of working directly with matrix algebra routines such as this. 3308 See, e.g., `KSPCreate()`. 3309 3310 Fortran Note: 3311 A valid (non-null) `info` argument must be provided 3312 3313 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatFactorInfo`, `MatLUFactorSymbolic()`, `MatLUFactor()`, `MatCholeskyFactor()` 3314 @*/ 3315 PetscErrorCode MatLUFactorNumeric(Mat fact, Mat mat, const MatFactorInfo *info) 3316 { 3317 MatFactorInfo tinfo; 3318 3319 PetscFunctionBegin; 3320 PetscValidHeaderSpecific(fact, MAT_CLASSID, 1); 3321 PetscValidHeaderSpecific(mat, MAT_CLASSID, 2); 3322 PetscValidType(fact, 1); 3323 PetscValidType(mat, 2); 3324 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3325 PetscCheck(mat->rmap->N == (fact)->rmap->N && mat->cmap->N == (fact)->cmap->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Mat fact: global dimensions are different %" PetscInt_FMT " should = %" PetscInt_FMT " %" PetscInt_FMT " should = %" PetscInt_FMT, 3326 mat->rmap->N, (fact)->rmap->N, mat->cmap->N, (fact)->cmap->N); 3327 3328 MatCheckPreallocated(mat, 2); 3329 if (!info) { 3330 PetscCall(MatFactorInfoInitialize(&tinfo)); 3331 info = &tinfo; 3332 } 3333 3334 if (!fact->trivialsymbolic) PetscCall(PetscLogEventBegin(MAT_LUFactorNumeric, mat, fact, 0, 0)); 3335 else PetscCall(PetscLogEventBegin(MAT_LUFactor, mat, fact, 0, 0)); 3336 PetscUseTypeMethod(fact, lufactornumeric, mat, info); 3337 if (!fact->trivialsymbolic) PetscCall(PetscLogEventEnd(MAT_LUFactorNumeric, mat, fact, 0, 0)); 3338 else PetscCall(PetscLogEventEnd(MAT_LUFactor, mat, fact, 0, 0)); 3339 PetscCall(MatViewFromOptions(fact, NULL, "-mat_factor_view")); 3340 PetscCall(PetscObjectStateIncrease((PetscObject)fact)); 3341 PetscFunctionReturn(PETSC_SUCCESS); 3342 } 3343 3344 /*@ 3345 MatCholeskyFactor - Performs in-place Cholesky factorization of a 3346 symmetric matrix. 3347 3348 Collective 3349 3350 Input Parameters: 3351 + mat - the matrix 3352 . perm - row and column permutations 3353 - info - expected fill as ratio of original fill 3354 3355 Level: developer 3356 3357 Notes: 3358 See `MatLUFactor()` for the nonsymmetric case. See also `MatGetFactor()`, 3359 `MatCholeskyFactorSymbolic()`, and `MatCholeskyFactorNumeric()`. 3360 3361 Most users should employ the `KSP` interface for linear solvers 3362 instead of working directly with matrix algebra routines such as this. 3363 See, e.g., `KSPCreate()`. 3364 3365 Fortran Note: 3366 A valid (non-null) `info` argument must be provided 3367 3368 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatFactorInfo`, `MatLUFactor()`, `MatCholeskyFactorSymbolic()`, `MatCholeskyFactorNumeric()` 3369 `MatGetOrdering()` 3370 @*/ 3371 PetscErrorCode MatCholeskyFactor(Mat mat, IS perm, const MatFactorInfo *info) 3372 { 3373 MatFactorInfo tinfo; 3374 3375 PetscFunctionBegin; 3376 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3377 if (perm) PetscValidHeaderSpecific(perm, IS_CLASSID, 2); 3378 if (info) PetscAssertPointer(info, 3); 3379 PetscValidType(mat, 1); 3380 PetscCheck(mat->rmap->N == mat->cmap->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONG, "Matrix must be square"); 3381 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3382 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 3383 MatCheckPreallocated(mat, 1); 3384 if (!info) { 3385 PetscCall(MatFactorInfoInitialize(&tinfo)); 3386 info = &tinfo; 3387 } 3388 3389 PetscCall(PetscLogEventBegin(MAT_CholeskyFactor, mat, perm, 0, 0)); 3390 PetscUseTypeMethod(mat, choleskyfactor, perm, info); 3391 PetscCall(PetscLogEventEnd(MAT_CholeskyFactor, mat, perm, 0, 0)); 3392 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 3393 PetscFunctionReturn(PETSC_SUCCESS); 3394 } 3395 3396 /*@ 3397 MatCholeskyFactorSymbolic - Performs symbolic Cholesky factorization 3398 of a symmetric matrix. 3399 3400 Collective 3401 3402 Input Parameters: 3403 + fact - the factor matrix obtained with `MatGetFactor()` 3404 . mat - the matrix 3405 . perm - row and column permutations 3406 - info - options for factorization, includes 3407 .vb 3408 fill - expected fill as ratio of original fill. 3409 dtcol - pivot tolerance (0 no pivot, 1 full column pivoting) 3410 Run with the option -info to determine an optimal value to use 3411 .ve 3412 3413 Level: developer 3414 3415 Notes: 3416 See `MatLUFactorSymbolic()` for the nonsymmetric case. See also 3417 `MatCholeskyFactor()` and `MatCholeskyFactorNumeric()`. 3418 3419 Most users should employ the `KSP` interface for linear solvers 3420 instead of working directly with matrix algebra routines such as this. 3421 See, e.g., `KSPCreate()`. 3422 3423 Fortran Note: 3424 A valid (non-null) `info` argument must be provided 3425 3426 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatFactorInfo`, `MatGetFactor()`, `MatLUFactorSymbolic()`, `MatCholeskyFactor()`, `MatCholeskyFactorNumeric()` 3427 `MatGetOrdering()` 3428 @*/ 3429 PetscErrorCode MatCholeskyFactorSymbolic(Mat fact, Mat mat, IS perm, const MatFactorInfo *info) 3430 { 3431 MatFactorInfo tinfo; 3432 3433 PetscFunctionBegin; 3434 PetscValidHeaderSpecific(fact, MAT_CLASSID, 1); 3435 PetscValidHeaderSpecific(mat, MAT_CLASSID, 2); 3436 if (perm) PetscValidHeaderSpecific(perm, IS_CLASSID, 3); 3437 if (info) PetscAssertPointer(info, 4); 3438 PetscValidType(fact, 1); 3439 PetscValidType(mat, 2); 3440 PetscCheck(mat->rmap->N == mat->cmap->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONG, "Matrix must be square"); 3441 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3442 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 3443 MatCheckPreallocated(mat, 2); 3444 if (!info) { 3445 PetscCall(MatFactorInfoInitialize(&tinfo)); 3446 info = &tinfo; 3447 } 3448 3449 if (!fact->trivialsymbolic) PetscCall(PetscLogEventBegin(MAT_CholeskyFactorSymbolic, mat, perm, 0, 0)); 3450 PetscUseTypeMethod(fact, choleskyfactorsymbolic, mat, perm, info); 3451 if (!fact->trivialsymbolic) PetscCall(PetscLogEventEnd(MAT_CholeskyFactorSymbolic, mat, perm, 0, 0)); 3452 PetscCall(PetscObjectStateIncrease((PetscObject)fact)); 3453 PetscFunctionReturn(PETSC_SUCCESS); 3454 } 3455 3456 /*@ 3457 MatCholeskyFactorNumeric - Performs numeric Cholesky factorization 3458 of a symmetric matrix. Call this routine after first calling `MatGetFactor()` and 3459 `MatCholeskyFactorSymbolic()`. 3460 3461 Collective 3462 3463 Input Parameters: 3464 + fact - the factor matrix obtained with `MatGetFactor()`, where the factored values are stored 3465 . mat - the initial matrix that is to be factored 3466 - info - options for factorization 3467 3468 Level: developer 3469 3470 Note: 3471 Most users should employ the `KSP` interface for linear solvers 3472 instead of working directly with matrix algebra routines such as this. 3473 See, e.g., `KSPCreate()`. 3474 3475 Fortran Note: 3476 A valid (non-null) `info` argument must be provided 3477 3478 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatFactorInfo`, `MatGetFactor()`, `MatCholeskyFactorSymbolic()`, `MatCholeskyFactor()`, `MatLUFactorNumeric()` 3479 @*/ 3480 PetscErrorCode MatCholeskyFactorNumeric(Mat fact, Mat mat, const MatFactorInfo *info) 3481 { 3482 MatFactorInfo tinfo; 3483 3484 PetscFunctionBegin; 3485 PetscValidHeaderSpecific(fact, MAT_CLASSID, 1); 3486 PetscValidHeaderSpecific(mat, MAT_CLASSID, 2); 3487 PetscValidType(fact, 1); 3488 PetscValidType(mat, 2); 3489 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3490 PetscCheck(mat->rmap->N == (fact)->rmap->N && mat->cmap->N == (fact)->cmap->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Mat fact: global dim %" PetscInt_FMT " should = %" PetscInt_FMT " %" PetscInt_FMT " should = %" PetscInt_FMT, 3491 mat->rmap->N, (fact)->rmap->N, mat->cmap->N, (fact)->cmap->N); 3492 MatCheckPreallocated(mat, 2); 3493 if (!info) { 3494 PetscCall(MatFactorInfoInitialize(&tinfo)); 3495 info = &tinfo; 3496 } 3497 3498 if (!fact->trivialsymbolic) PetscCall(PetscLogEventBegin(MAT_CholeskyFactorNumeric, mat, fact, 0, 0)); 3499 else PetscCall(PetscLogEventBegin(MAT_CholeskyFactor, mat, fact, 0, 0)); 3500 PetscUseTypeMethod(fact, choleskyfactornumeric, mat, info); 3501 if (!fact->trivialsymbolic) PetscCall(PetscLogEventEnd(MAT_CholeskyFactorNumeric, mat, fact, 0, 0)); 3502 else PetscCall(PetscLogEventEnd(MAT_CholeskyFactor, mat, fact, 0, 0)); 3503 PetscCall(MatViewFromOptions(fact, NULL, "-mat_factor_view")); 3504 PetscCall(PetscObjectStateIncrease((PetscObject)fact)); 3505 PetscFunctionReturn(PETSC_SUCCESS); 3506 } 3507 3508 /*@ 3509 MatQRFactor - Performs in-place QR factorization of matrix. 3510 3511 Collective 3512 3513 Input Parameters: 3514 + mat - the matrix 3515 . col - column permutation 3516 - info - options for factorization, includes 3517 .vb 3518 fill - expected fill as ratio of original fill. 3519 dtcol - pivot tolerance (0 no pivot, 1 full column pivoting) 3520 Run with the option -info to determine an optimal value to use 3521 .ve 3522 3523 Level: developer 3524 3525 Notes: 3526 Most users should employ the `KSP` interface for linear solvers 3527 instead of working directly with matrix algebra routines such as this. 3528 See, e.g., `KSPCreate()`. 3529 3530 This changes the state of the matrix to a factored matrix; it cannot be used 3531 for example with `MatSetValues()` unless one first calls `MatSetUnfactored()`. 3532 3533 Fortran Note: 3534 A valid (non-null) `info` argument must be provided 3535 3536 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatFactorInfo`, `MatGetFactor()`, `MatQRFactorSymbolic()`, `MatQRFactorNumeric()`, `MatLUFactor()`, 3537 `MatSetUnfactored()` 3538 @*/ 3539 PetscErrorCode MatQRFactor(Mat mat, IS col, const MatFactorInfo *info) 3540 { 3541 PetscFunctionBegin; 3542 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3543 if (col) PetscValidHeaderSpecific(col, IS_CLASSID, 2); 3544 if (info) PetscAssertPointer(info, 3); 3545 PetscValidType(mat, 1); 3546 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3547 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 3548 MatCheckPreallocated(mat, 1); 3549 PetscCall(PetscLogEventBegin(MAT_QRFactor, mat, col, 0, 0)); 3550 PetscUseMethod(mat, "MatQRFactor_C", (Mat, IS, const MatFactorInfo *), (mat, col, info)); 3551 PetscCall(PetscLogEventEnd(MAT_QRFactor, mat, col, 0, 0)); 3552 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 3553 PetscFunctionReturn(PETSC_SUCCESS); 3554 } 3555 3556 /*@ 3557 MatQRFactorSymbolic - Performs symbolic QR factorization of matrix. 3558 Call this routine after `MatGetFactor()` but before calling `MatQRFactorNumeric()`. 3559 3560 Collective 3561 3562 Input Parameters: 3563 + fact - the factor matrix obtained with `MatGetFactor()` 3564 . mat - the matrix 3565 . col - column permutation 3566 - info - options for factorization, includes 3567 .vb 3568 fill - expected fill as ratio of original fill. 3569 dtcol - pivot tolerance (0 no pivot, 1 full column pivoting) 3570 Run with the option -info to determine an optimal value to use 3571 .ve 3572 3573 Level: developer 3574 3575 Note: 3576 Most users should employ the `KSP` interface for linear solvers 3577 instead of working directly with matrix algebra routines such as this. 3578 See, e.g., `KSPCreate()`. 3579 3580 Fortran Note: 3581 A valid (non-null) `info` argument must be provided 3582 3583 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatFactorInfo`, `MatQRFactor()`, `MatQRFactorNumeric()`, `MatLUFactor()`, `MatFactorInfoInitialize()` 3584 @*/ 3585 PetscErrorCode MatQRFactorSymbolic(Mat fact, Mat mat, IS col, const MatFactorInfo *info) 3586 { 3587 MatFactorInfo tinfo; 3588 3589 PetscFunctionBegin; 3590 PetscValidHeaderSpecific(fact, MAT_CLASSID, 1); 3591 PetscValidHeaderSpecific(mat, MAT_CLASSID, 2); 3592 if (col) PetscValidHeaderSpecific(col, IS_CLASSID, 3); 3593 if (info) PetscAssertPointer(info, 4); 3594 PetscValidType(fact, 1); 3595 PetscValidType(mat, 2); 3596 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3597 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 3598 MatCheckPreallocated(mat, 2); 3599 if (!info) { 3600 PetscCall(MatFactorInfoInitialize(&tinfo)); 3601 info = &tinfo; 3602 } 3603 3604 if (!fact->trivialsymbolic) PetscCall(PetscLogEventBegin(MAT_QRFactorSymbolic, fact, mat, col, 0)); 3605 PetscUseMethod(fact, "MatQRFactorSymbolic_C", (Mat, Mat, IS, const MatFactorInfo *), (fact, mat, col, info)); 3606 if (!fact->trivialsymbolic) PetscCall(PetscLogEventEnd(MAT_QRFactorSymbolic, fact, mat, col, 0)); 3607 PetscCall(PetscObjectStateIncrease((PetscObject)fact)); 3608 PetscFunctionReturn(PETSC_SUCCESS); 3609 } 3610 3611 /*@ 3612 MatQRFactorNumeric - Performs numeric QR factorization of a matrix. 3613 Call this routine after first calling `MatGetFactor()`, and `MatQRFactorSymbolic()`. 3614 3615 Collective 3616 3617 Input Parameters: 3618 + fact - the factor matrix obtained with `MatGetFactor()` 3619 . mat - the matrix 3620 - info - options for factorization 3621 3622 Level: developer 3623 3624 Notes: 3625 See `MatQRFactor()` for in-place factorization. 3626 3627 Most users should employ the `KSP` interface for linear solvers 3628 instead of working directly with matrix algebra routines such as this. 3629 See, e.g., `KSPCreate()`. 3630 3631 Fortran Note: 3632 A valid (non-null) `info` argument must be provided 3633 3634 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatFactorInfo`, `MatGetFactor()`, `MatQRFactor()`, `MatQRFactorSymbolic()`, `MatLUFactor()` 3635 @*/ 3636 PetscErrorCode MatQRFactorNumeric(Mat fact, Mat mat, const MatFactorInfo *info) 3637 { 3638 MatFactorInfo tinfo; 3639 3640 PetscFunctionBegin; 3641 PetscValidHeaderSpecific(fact, MAT_CLASSID, 1); 3642 PetscValidHeaderSpecific(mat, MAT_CLASSID, 2); 3643 PetscValidType(fact, 1); 3644 PetscValidType(mat, 2); 3645 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 3646 PetscCheck(mat->rmap->N == fact->rmap->N && mat->cmap->N == fact->cmap->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Mat fact: global dimensions are different %" PetscInt_FMT " should = %" PetscInt_FMT " %" PetscInt_FMT " should = %" PetscInt_FMT, 3647 mat->rmap->N, (fact)->rmap->N, mat->cmap->N, (fact)->cmap->N); 3648 3649 MatCheckPreallocated(mat, 2); 3650 if (!info) { 3651 PetscCall(MatFactorInfoInitialize(&tinfo)); 3652 info = &tinfo; 3653 } 3654 3655 if (!fact->trivialsymbolic) PetscCall(PetscLogEventBegin(MAT_QRFactorNumeric, mat, fact, 0, 0)); 3656 else PetscCall(PetscLogEventBegin(MAT_QRFactor, mat, fact, 0, 0)); 3657 PetscUseMethod(fact, "MatQRFactorNumeric_C", (Mat, Mat, const MatFactorInfo *), (fact, mat, info)); 3658 if (!fact->trivialsymbolic) PetscCall(PetscLogEventEnd(MAT_QRFactorNumeric, mat, fact, 0, 0)); 3659 else PetscCall(PetscLogEventEnd(MAT_QRFactor, mat, fact, 0, 0)); 3660 PetscCall(MatViewFromOptions(fact, NULL, "-mat_factor_view")); 3661 PetscCall(PetscObjectStateIncrease((PetscObject)fact)); 3662 PetscFunctionReturn(PETSC_SUCCESS); 3663 } 3664 3665 /*@ 3666 MatSolve - Solves $A x = b$, given a factored matrix. 3667 3668 Neighbor-wise Collective 3669 3670 Input Parameters: 3671 + mat - the factored matrix 3672 - b - the right-hand-side vector 3673 3674 Output Parameter: 3675 . x - the result vector 3676 3677 Level: developer 3678 3679 Notes: 3680 The vectors `b` and `x` cannot be the same. I.e., one cannot 3681 call `MatSolve`(A,x,x). 3682 3683 Most users should employ the `KSP` interface for linear solvers 3684 instead of working directly with matrix algebra routines such as this. 3685 See, e.g., `KSPCreate()`. 3686 3687 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatLUFactor()`, `MatSolveAdd()`, `MatSolveTranspose()`, `MatSolveTransposeAdd()` 3688 @*/ 3689 PetscErrorCode MatSolve(Mat mat, Vec b, Vec x) 3690 { 3691 PetscFunctionBegin; 3692 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3693 PetscValidType(mat, 1); 3694 PetscValidHeaderSpecific(b, VEC_CLASSID, 2); 3695 PetscValidHeaderSpecific(x, VEC_CLASSID, 3); 3696 PetscCheckSameComm(mat, 1, b, 2); 3697 PetscCheckSameComm(mat, 1, x, 3); 3698 PetscCheck(x != b, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "x and b must be different vectors"); 3699 PetscCheck(mat->cmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, x->map->N); 3700 PetscCheck(mat->rmap->N == b->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, b->map->N); 3701 PetscCheck(mat->rmap->n == b->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, b->map->n); 3702 if (!mat->rmap->N && !mat->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 3703 MatCheckPreallocated(mat, 1); 3704 3705 PetscCall(PetscLogEventBegin(MAT_Solve, mat, b, x, 0)); 3706 PetscCall(VecFlag(x, mat->factorerrortype)); 3707 if (mat->factorerrortype) PetscCall(PetscInfo(mat, "MatFactorError %d\n", mat->factorerrortype)); 3708 else PetscUseTypeMethod(mat, solve, b, x); 3709 PetscCall(PetscLogEventEnd(MAT_Solve, mat, b, x, 0)); 3710 PetscCall(PetscObjectStateIncrease((PetscObject)x)); 3711 PetscFunctionReturn(PETSC_SUCCESS); 3712 } 3713 3714 static PetscErrorCode MatMatSolve_Basic(Mat A, Mat B, Mat X, PetscBool trans) 3715 { 3716 Vec b, x; 3717 PetscInt N, i; 3718 PetscErrorCode (*f)(Mat, Vec, Vec); 3719 PetscBool Abound, Bneedconv = PETSC_FALSE, Xneedconv = PETSC_FALSE; 3720 3721 PetscFunctionBegin; 3722 if (A->factorerrortype) { 3723 PetscCall(PetscInfo(A, "MatFactorError %d\n", A->factorerrortype)); 3724 PetscCall(MatSetInf(X)); 3725 PetscFunctionReturn(PETSC_SUCCESS); 3726 } 3727 f = (!trans || (!A->ops->solvetranspose && A->symmetric)) ? A->ops->solve : A->ops->solvetranspose; 3728 PetscCheck(f, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Mat type %s", ((PetscObject)A)->type_name); 3729 PetscCall(MatBoundToCPU(A, &Abound)); 3730 if (!Abound) { 3731 PetscCall(PetscObjectTypeCompareAny((PetscObject)B, &Bneedconv, MATSEQDENSE, MATMPIDENSE, "")); 3732 PetscCall(PetscObjectTypeCompareAny((PetscObject)X, &Xneedconv, MATSEQDENSE, MATMPIDENSE, "")); 3733 } 3734 #if PetscDefined(HAVE_CUDA) 3735 if (Bneedconv) PetscCall(MatConvert(B, MATDENSECUDA, MAT_INPLACE_MATRIX, &B)); 3736 if (Xneedconv) PetscCall(MatConvert(X, MATDENSECUDA, MAT_INPLACE_MATRIX, &X)); 3737 #elif PetscDefined(HAVE_HIP) 3738 if (Bneedconv) PetscCall(MatConvert(B, MATDENSEHIP, MAT_INPLACE_MATRIX, &B)); 3739 if (Xneedconv) PetscCall(MatConvert(X, MATDENSEHIP, MAT_INPLACE_MATRIX, &X)); 3740 #endif 3741 PetscCall(MatGetSize(B, NULL, &N)); 3742 for (i = 0; i < N; i++) { 3743 PetscCall(MatDenseGetColumnVecRead(B, i, &b)); 3744 PetscCall(MatDenseGetColumnVecWrite(X, i, &x)); 3745 PetscCall((*f)(A, b, x)); 3746 PetscCall(MatDenseRestoreColumnVecWrite(X, i, &x)); 3747 PetscCall(MatDenseRestoreColumnVecRead(B, i, &b)); 3748 } 3749 if (Bneedconv) PetscCall(MatConvert(B, MATDENSE, MAT_INPLACE_MATRIX, &B)); 3750 if (Xneedconv) PetscCall(MatConvert(X, MATDENSE, MAT_INPLACE_MATRIX, &X)); 3751 PetscFunctionReturn(PETSC_SUCCESS); 3752 } 3753 3754 /*@ 3755 MatMatSolve - Solves $A X = B$, given a factored matrix. 3756 3757 Neighbor-wise Collective 3758 3759 Input Parameters: 3760 + A - the factored matrix 3761 - B - the right-hand-side matrix `MATDENSE` (or sparse `MATAIJ`-- when using MUMPS) 3762 3763 Output Parameter: 3764 . X - the result matrix (dense matrix) 3765 3766 Level: developer 3767 3768 Note: 3769 If `B` is a `MATDENSE` matrix then one can call `MatMatSolve`(A,B,B) except with `MATSOLVERMKL_CPARDISO`; 3770 otherwise, `B` and `X` cannot be the same. 3771 3772 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatSolve()`, `MatMatSolveTranspose()`, `MatLUFactor()`, `MatCholeskyFactor()` 3773 @*/ 3774 PetscErrorCode MatMatSolve(Mat A, Mat B, Mat X) 3775 { 3776 PetscFunctionBegin; 3777 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 3778 PetscValidType(A, 1); 3779 PetscValidHeaderSpecific(B, MAT_CLASSID, 2); 3780 PetscValidHeaderSpecific(X, MAT_CLASSID, 3); 3781 PetscCheckSameComm(A, 1, B, 2); 3782 PetscCheckSameComm(A, 1, X, 3); 3783 PetscCheck(A->cmap->N == X->rmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Mat A,Mat X: global dim %" PetscInt_FMT " %" PetscInt_FMT, A->cmap->N, X->rmap->N); 3784 PetscCheck(A->rmap->N == B->rmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Mat A,Mat B: global dim %" PetscInt_FMT " %" PetscInt_FMT, A->rmap->N, B->rmap->N); 3785 PetscCheck(X->cmap->N == B->cmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Solution matrix must have same number of columns as rhs matrix"); 3786 if (!A->rmap->N && !A->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 3787 MatCheckPreallocated(A, 1); 3788 3789 PetscCall(PetscLogEventBegin(MAT_MatSolve, A, B, X, 0)); 3790 if (!A->ops->matsolve) { 3791 PetscCall(PetscInfo(A, "Mat type %s using basic MatMatSolve\n", ((PetscObject)A)->type_name)); 3792 PetscCall(MatMatSolve_Basic(A, B, X, PETSC_FALSE)); 3793 } else PetscUseTypeMethod(A, matsolve, B, X); 3794 PetscCall(PetscLogEventEnd(MAT_MatSolve, A, B, X, 0)); 3795 PetscCall(PetscObjectStateIncrease((PetscObject)X)); 3796 PetscFunctionReturn(PETSC_SUCCESS); 3797 } 3798 3799 /*@ 3800 MatMatSolveTranspose - Solves $A^T X = B $, given a factored matrix. 3801 3802 Neighbor-wise Collective 3803 3804 Input Parameters: 3805 + A - the factored matrix 3806 - B - the right-hand-side matrix (`MATDENSE` matrix) 3807 3808 Output Parameter: 3809 . X - the result matrix (dense matrix) 3810 3811 Level: developer 3812 3813 Note: 3814 The matrices `B` and `X` cannot be the same. I.e., one cannot 3815 call `MatMatSolveTranspose`(A,X,X). 3816 3817 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatSolveTranspose()`, `MatMatSolve()`, `MatLUFactor()`, `MatCholeskyFactor()` 3818 @*/ 3819 PetscErrorCode MatMatSolveTranspose(Mat A, Mat B, Mat X) 3820 { 3821 PetscFunctionBegin; 3822 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 3823 PetscValidType(A, 1); 3824 PetscValidHeaderSpecific(B, MAT_CLASSID, 2); 3825 PetscValidHeaderSpecific(X, MAT_CLASSID, 3); 3826 PetscCheckSameComm(A, 1, B, 2); 3827 PetscCheckSameComm(A, 1, X, 3); 3828 PetscCheck(X != B, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_IDN, "X and B must be different matrices"); 3829 PetscCheck(A->cmap->N == X->rmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Mat A,Mat X: global dim %" PetscInt_FMT " %" PetscInt_FMT, A->cmap->N, X->rmap->N); 3830 PetscCheck(A->rmap->N == B->rmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Mat A,Mat B: global dim %" PetscInt_FMT " %" PetscInt_FMT, A->rmap->N, B->rmap->N); 3831 PetscCheck(A->rmap->n == B->rmap->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat A,Mat B: local dim %" PetscInt_FMT " %" PetscInt_FMT, A->rmap->n, B->rmap->n); 3832 PetscCheck(X->cmap->N >= B->cmap->N, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Solution matrix must have same number of columns as rhs matrix"); 3833 if (!A->rmap->N && !A->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 3834 MatCheckPreallocated(A, 1); 3835 3836 PetscCall(PetscLogEventBegin(MAT_MatSolve, A, B, X, 0)); 3837 if (!A->ops->matsolvetranspose) { 3838 PetscCall(PetscInfo(A, "Mat type %s using basic MatMatSolveTranspose\n", ((PetscObject)A)->type_name)); 3839 PetscCall(MatMatSolve_Basic(A, B, X, PETSC_TRUE)); 3840 } else PetscUseTypeMethod(A, matsolvetranspose, B, X); 3841 PetscCall(PetscLogEventEnd(MAT_MatSolve, A, B, X, 0)); 3842 PetscCall(PetscObjectStateIncrease((PetscObject)X)); 3843 PetscFunctionReturn(PETSC_SUCCESS); 3844 } 3845 3846 /*@ 3847 MatMatTransposeSolve - Solves $A X = B^T$, given a factored matrix. 3848 3849 Neighbor-wise Collective 3850 3851 Input Parameters: 3852 + A - the factored matrix 3853 - Bt - the transpose of right-hand-side matrix as a `MATDENSE` 3854 3855 Output Parameter: 3856 . X - the result matrix (dense matrix) 3857 3858 Level: developer 3859 3860 Note: 3861 For MUMPS, it only supports centralized sparse compressed column format on the host processor for right-hand side matrix. User must create `Bt` in sparse compressed row 3862 format on the host processor and call `MatMatTransposeSolve()` to implement MUMPS' `MatMatSolve()`. 3863 3864 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatMatSolve()`, `MatMatSolveTranspose()`, `MatLUFactor()`, `MatCholeskyFactor()` 3865 @*/ 3866 PetscErrorCode MatMatTransposeSolve(Mat A, Mat Bt, Mat X) 3867 { 3868 PetscFunctionBegin; 3869 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 3870 PetscValidType(A, 1); 3871 PetscValidHeaderSpecific(Bt, MAT_CLASSID, 2); 3872 PetscValidHeaderSpecific(X, MAT_CLASSID, 3); 3873 PetscCheckSameComm(A, 1, Bt, 2); 3874 PetscCheckSameComm(A, 1, X, 3); 3875 3876 PetscCheck(X != Bt, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_IDN, "X and B must be different matrices"); 3877 PetscCheck(A->cmap->N == X->rmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Mat A,Mat X: global dim %" PetscInt_FMT " %" PetscInt_FMT, A->cmap->N, X->rmap->N); 3878 PetscCheck(A->rmap->N == Bt->cmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Mat A,Mat Bt: global dim %" PetscInt_FMT " %" PetscInt_FMT, A->rmap->N, Bt->cmap->N); 3879 PetscCheck(X->cmap->N >= Bt->rmap->N, PetscObjectComm((PetscObject)X), PETSC_ERR_ARG_SIZ, "Solution matrix must have same number of columns as row number of the rhs matrix"); 3880 if (!A->rmap->N && !A->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 3881 PetscCheck(A->factortype, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Unfactored matrix"); 3882 MatCheckPreallocated(A, 1); 3883 3884 PetscCall(PetscLogEventBegin(MAT_MatTrSolve, A, Bt, X, 0)); 3885 PetscUseTypeMethod(A, mattransposesolve, Bt, X); 3886 PetscCall(PetscLogEventEnd(MAT_MatTrSolve, A, Bt, X, 0)); 3887 PetscCall(PetscObjectStateIncrease((PetscObject)X)); 3888 PetscFunctionReturn(PETSC_SUCCESS); 3889 } 3890 3891 /*@ 3892 MatForwardSolve - Solves $ L x = b $, given a factored matrix, $A = LU $, or 3893 $U^T*D^(1/2) x = b$, given a factored symmetric matrix, $A = U^T*D*U$, 3894 3895 Neighbor-wise Collective 3896 3897 Input Parameters: 3898 + mat - the factored matrix 3899 - b - the right-hand-side vector 3900 3901 Output Parameter: 3902 . x - the result vector 3903 3904 Level: developer 3905 3906 Notes: 3907 `MatSolve()` should be used for most applications, as it performs 3908 a forward solve followed by a backward solve. 3909 3910 The vectors `b` and `x` cannot be the same, i.e., one cannot 3911 call `MatForwardSolve`(A,x,x). 3912 3913 For matrix in `MATSEQBAIJ` format with block size larger than 1, 3914 the diagonal blocks are not implemented as $D = D^(1/2) * D^(1/2)$ yet. 3915 `MatForwardSolve()` solves $U^T*D y = b$, and 3916 `MatBackwardSolve()` solves $U x = y$. 3917 Thus they do not provide a symmetric preconditioner. 3918 3919 .seealso: [](ch_matrices), `Mat`, `MatBackwardSolve()`, `MatGetFactor()`, `MatSolve()` 3920 @*/ 3921 PetscErrorCode MatForwardSolve(Mat mat, Vec b, Vec x) 3922 { 3923 PetscFunctionBegin; 3924 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3925 PetscValidType(mat, 1); 3926 PetscValidHeaderSpecific(b, VEC_CLASSID, 2); 3927 PetscValidHeaderSpecific(x, VEC_CLASSID, 3); 3928 PetscCheckSameComm(mat, 1, b, 2); 3929 PetscCheckSameComm(mat, 1, x, 3); 3930 PetscCheck(x != b, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "x and b must be different vectors"); 3931 PetscCheck(mat->cmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, x->map->N); 3932 PetscCheck(mat->rmap->N == b->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, b->map->N); 3933 PetscCheck(mat->rmap->n == b->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, b->map->n); 3934 if (!mat->rmap->N && !mat->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 3935 MatCheckPreallocated(mat, 1); 3936 3937 PetscCall(PetscLogEventBegin(MAT_ForwardSolve, mat, b, x, 0)); 3938 PetscUseTypeMethod(mat, forwardsolve, b, x); 3939 PetscCall(PetscLogEventEnd(MAT_ForwardSolve, mat, b, x, 0)); 3940 PetscCall(PetscObjectStateIncrease((PetscObject)x)); 3941 PetscFunctionReturn(PETSC_SUCCESS); 3942 } 3943 3944 /*@ 3945 MatBackwardSolve - Solves $U x = b$, given a factored matrix, $A = LU$. 3946 $D^(1/2) U x = b$, given a factored symmetric matrix, $A = U^T*D*U$, 3947 3948 Neighbor-wise Collective 3949 3950 Input Parameters: 3951 + mat - the factored matrix 3952 - b - the right-hand-side vector 3953 3954 Output Parameter: 3955 . x - the result vector 3956 3957 Level: developer 3958 3959 Notes: 3960 `MatSolve()` should be used for most applications, as it performs 3961 a forward solve followed by a backward solve. 3962 3963 The vectors `b` and `x` cannot be the same. I.e., one cannot 3964 call `MatBackwardSolve`(A,x,x). 3965 3966 For matrix in `MATSEQBAIJ` format with block size larger than 1, 3967 the diagonal blocks are not implemented as $D = D^(1/2) * D^(1/2)$ yet. 3968 `MatForwardSolve()` solves $U^T*D y = b$, and 3969 `MatBackwardSolve()` solves $U x = y$. 3970 Thus they do not provide a symmetric preconditioner. 3971 3972 .seealso: [](ch_matrices), `Mat`, `MatForwardSolve()`, `MatGetFactor()`, `MatSolve()` 3973 @*/ 3974 PetscErrorCode MatBackwardSolve(Mat mat, Vec b, Vec x) 3975 { 3976 PetscFunctionBegin; 3977 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 3978 PetscValidType(mat, 1); 3979 PetscValidHeaderSpecific(b, VEC_CLASSID, 2); 3980 PetscValidHeaderSpecific(x, VEC_CLASSID, 3); 3981 PetscCheckSameComm(mat, 1, b, 2); 3982 PetscCheckSameComm(mat, 1, x, 3); 3983 PetscCheck(x != b, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "x and b must be different vectors"); 3984 PetscCheck(mat->cmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, x->map->N); 3985 PetscCheck(mat->rmap->N == b->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, b->map->N); 3986 PetscCheck(mat->rmap->n == b->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, b->map->n); 3987 if (!mat->rmap->N && !mat->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 3988 MatCheckPreallocated(mat, 1); 3989 3990 PetscCall(PetscLogEventBegin(MAT_BackwardSolve, mat, b, x, 0)); 3991 PetscUseTypeMethod(mat, backwardsolve, b, x); 3992 PetscCall(PetscLogEventEnd(MAT_BackwardSolve, mat, b, x, 0)); 3993 PetscCall(PetscObjectStateIncrease((PetscObject)x)); 3994 PetscFunctionReturn(PETSC_SUCCESS); 3995 } 3996 3997 /*@ 3998 MatSolveAdd - Computes $x = y + A^{-1}*b$, given a factored matrix. 3999 4000 Neighbor-wise Collective 4001 4002 Input Parameters: 4003 + mat - the factored matrix 4004 . b - the right-hand-side vector 4005 - y - the vector to be added to 4006 4007 Output Parameter: 4008 . x - the result vector 4009 4010 Level: developer 4011 4012 Note: 4013 The vectors `b` and `x` cannot be the same. I.e., one cannot 4014 call `MatSolveAdd`(A,x,y,x). 4015 4016 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatSolve()`, `MatGetFactor()`, `MatSolveTranspose()`, `MatSolveTransposeAdd()` 4017 @*/ 4018 PetscErrorCode MatSolveAdd(Mat mat, Vec b, Vec y, Vec x) 4019 { 4020 PetscScalar one = 1.0; 4021 Vec tmp; 4022 4023 PetscFunctionBegin; 4024 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4025 PetscValidType(mat, 1); 4026 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 4027 PetscValidHeaderSpecific(b, VEC_CLASSID, 2); 4028 PetscValidHeaderSpecific(x, VEC_CLASSID, 4); 4029 PetscCheckSameComm(mat, 1, b, 2); 4030 PetscCheckSameComm(mat, 1, y, 3); 4031 PetscCheckSameComm(mat, 1, x, 4); 4032 PetscCheck(x != b, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "x and b must be different vectors"); 4033 PetscCheck(mat->cmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, x->map->N); 4034 PetscCheck(mat->rmap->N == b->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, b->map->N); 4035 PetscCheck(mat->rmap->N == y->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec y: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, y->map->N); 4036 PetscCheck(mat->rmap->n == b->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, b->map->n); 4037 PetscCheck(x->map->n == y->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Vec x,Vec y: local dim %" PetscInt_FMT " %" PetscInt_FMT, x->map->n, y->map->n); 4038 if (!mat->rmap->N && !mat->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 4039 MatCheckPreallocated(mat, 1); 4040 4041 PetscCall(PetscLogEventBegin(MAT_SolveAdd, mat, b, x, y)); 4042 PetscCall(VecFlag(x, mat->factorerrortype)); 4043 if (mat->factorerrortype) { 4044 PetscCall(PetscInfo(mat, "MatFactorError %d\n", mat->factorerrortype)); 4045 } else if (mat->ops->solveadd) { 4046 PetscUseTypeMethod(mat, solveadd, b, y, x); 4047 } else { 4048 /* do the solve then the add manually */ 4049 if (x != y) { 4050 PetscCall(MatSolve(mat, b, x)); 4051 PetscCall(VecAXPY(x, one, y)); 4052 } else { 4053 PetscCall(VecDuplicate(x, &tmp)); 4054 PetscCall(VecCopy(x, tmp)); 4055 PetscCall(MatSolve(mat, b, x)); 4056 PetscCall(VecAXPY(x, one, tmp)); 4057 PetscCall(VecDestroy(&tmp)); 4058 } 4059 } 4060 PetscCall(PetscLogEventEnd(MAT_SolveAdd, mat, b, x, y)); 4061 PetscCall(PetscObjectStateIncrease((PetscObject)x)); 4062 PetscFunctionReturn(PETSC_SUCCESS); 4063 } 4064 4065 /*@ 4066 MatSolveTranspose - Solves $A^T x = b$, given a factored matrix. 4067 4068 Neighbor-wise Collective 4069 4070 Input Parameters: 4071 + mat - the factored matrix 4072 - b - the right-hand-side vector 4073 4074 Output Parameter: 4075 . x - the result vector 4076 4077 Level: developer 4078 4079 Notes: 4080 The vectors `b` and `x` cannot be the same. I.e., one cannot 4081 call `MatSolveTranspose`(A,x,x). 4082 4083 Most users should employ the `KSP` interface for linear solvers 4084 instead of working directly with matrix algebra routines such as this. 4085 See, e.g., `KSPCreate()`. 4086 4087 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `KSP`, `MatSolve()`, `MatSolveAdd()`, `MatSolveTransposeAdd()` 4088 @*/ 4089 PetscErrorCode MatSolveTranspose(Mat mat, Vec b, Vec x) 4090 { 4091 PetscErrorCode (*f)(Mat, Vec, Vec) = (!mat->ops->solvetranspose && mat->symmetric) ? mat->ops->solve : mat->ops->solvetranspose; 4092 4093 PetscFunctionBegin; 4094 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4095 PetscValidType(mat, 1); 4096 PetscValidHeaderSpecific(b, VEC_CLASSID, 2); 4097 PetscValidHeaderSpecific(x, VEC_CLASSID, 3); 4098 PetscCheckSameComm(mat, 1, b, 2); 4099 PetscCheckSameComm(mat, 1, x, 3); 4100 PetscCheck(x != b, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "x and b must be different vectors"); 4101 PetscCheck(mat->rmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, x->map->N); 4102 PetscCheck(mat->cmap->N == b->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, b->map->N); 4103 if (!mat->rmap->N && !mat->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 4104 MatCheckPreallocated(mat, 1); 4105 PetscCall(PetscLogEventBegin(MAT_SolveTranspose, mat, b, x, 0)); 4106 PetscCall(VecFlag(x, mat->factorerrortype)); 4107 if (mat->factorerrortype) { 4108 PetscCall(PetscInfo(mat, "MatFactorError %d\n", mat->factorerrortype)); 4109 } else { 4110 PetscCheck(f, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Matrix type %s", ((PetscObject)mat)->type_name); 4111 PetscCall((*f)(mat, b, x)); 4112 } 4113 PetscCall(PetscLogEventEnd(MAT_SolveTranspose, mat, b, x, 0)); 4114 PetscCall(PetscObjectStateIncrease((PetscObject)x)); 4115 PetscFunctionReturn(PETSC_SUCCESS); 4116 } 4117 4118 /*@ 4119 MatSolveTransposeAdd - Computes $x = y + A^{-T} b$ 4120 factored matrix. 4121 4122 Neighbor-wise Collective 4123 4124 Input Parameters: 4125 + mat - the factored matrix 4126 . b - the right-hand-side vector 4127 - y - the vector to be added to 4128 4129 Output Parameter: 4130 . x - the result vector 4131 4132 Level: developer 4133 4134 Note: 4135 The vectors `b` and `x` cannot be the same. I.e., one cannot 4136 call `MatSolveTransposeAdd`(A,x,y,x). 4137 4138 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatSolve()`, `MatSolveAdd()`, `MatSolveTranspose()` 4139 @*/ 4140 PetscErrorCode MatSolveTransposeAdd(Mat mat, Vec b, Vec y, Vec x) 4141 { 4142 PetscScalar one = 1.0; 4143 Vec tmp; 4144 PetscErrorCode (*f)(Mat, Vec, Vec, Vec) = (!mat->ops->solvetransposeadd && mat->symmetric) ? mat->ops->solveadd : mat->ops->solvetransposeadd; 4145 4146 PetscFunctionBegin; 4147 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4148 PetscValidType(mat, 1); 4149 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 4150 PetscValidHeaderSpecific(b, VEC_CLASSID, 2); 4151 PetscValidHeaderSpecific(x, VEC_CLASSID, 4); 4152 PetscCheckSameComm(mat, 1, b, 2); 4153 PetscCheckSameComm(mat, 1, y, 3); 4154 PetscCheckSameComm(mat, 1, x, 4); 4155 PetscCheck(x != b, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "x and b must be different vectors"); 4156 PetscCheck(mat->rmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, x->map->N); 4157 PetscCheck(mat->cmap->N == b->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, b->map->N); 4158 PetscCheck(mat->cmap->N == y->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec y: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, y->map->N); 4159 PetscCheck(x->map->n == y->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Vec x,Vec y: local dim %" PetscInt_FMT " %" PetscInt_FMT, x->map->n, y->map->n); 4160 if (!mat->rmap->N && !mat->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 4161 MatCheckPreallocated(mat, 1); 4162 4163 PetscCall(PetscLogEventBegin(MAT_SolveTransposeAdd, mat, b, x, y)); 4164 PetscCall(VecFlag(x, mat->factorerrortype)); 4165 if (mat->factorerrortype) { 4166 PetscCall(PetscInfo(mat, "MatFactorError %d\n", mat->factorerrortype)); 4167 } else if (f) { 4168 PetscCall((*f)(mat, b, y, x)); 4169 } else { 4170 /* do the solve then the add manually */ 4171 if (x != y) { 4172 PetscCall(MatSolveTranspose(mat, b, x)); 4173 PetscCall(VecAXPY(x, one, y)); 4174 } else { 4175 PetscCall(VecDuplicate(x, &tmp)); 4176 PetscCall(VecCopy(x, tmp)); 4177 PetscCall(MatSolveTranspose(mat, b, x)); 4178 PetscCall(VecAXPY(x, one, tmp)); 4179 PetscCall(VecDestroy(&tmp)); 4180 } 4181 } 4182 PetscCall(PetscLogEventEnd(MAT_SolveTransposeAdd, mat, b, x, y)); 4183 PetscCall(PetscObjectStateIncrease((PetscObject)x)); 4184 PetscFunctionReturn(PETSC_SUCCESS); 4185 } 4186 4187 // PetscClangLinter pragma disable: -fdoc-section-header-unknown 4188 /*@ 4189 MatSOR - Computes relaxation (SOR, Gauss-Seidel) sweeps. 4190 4191 Neighbor-wise Collective 4192 4193 Input Parameters: 4194 + mat - the matrix 4195 . b - the right-hand side 4196 . omega - the relaxation factor 4197 . flag - flag indicating the type of SOR (see below) 4198 . shift - diagonal shift 4199 . its - the number of iterations 4200 - lits - the number of local iterations 4201 4202 Output Parameter: 4203 . x - the solution (can contain an initial guess, use option `SOR_ZERO_INITIAL_GUESS` to indicate no guess) 4204 4205 SOR Flags: 4206 + `SOR_FORWARD_SWEEP` - forward SOR 4207 . `SOR_BACKWARD_SWEEP` - backward SOR 4208 . `SOR_SYMMETRIC_SWEEP` - SSOR (symmetric SOR) 4209 . `SOR_LOCAL_FORWARD_SWEEP` - local forward SOR 4210 . `SOR_LOCAL_BACKWARD_SWEEP` - local forward SOR 4211 . `SOR_LOCAL_SYMMETRIC_SWEEP` - local SSOR 4212 . `SOR_EISENSTAT` - SOR with Eisenstat trick 4213 . `SOR_APPLY_UPPER`, `SOR_APPLY_LOWER` - applies upper/lower triangular part of matrix to vector (with `omega`) 4214 - `SOR_ZERO_INITIAL_GUESS` - zero initial guess 4215 4216 Level: developer 4217 4218 Notes: 4219 `SOR_LOCAL_FORWARD_SWEEP`, `SOR_LOCAL_BACKWARD_SWEEP`, and 4220 `SOR_LOCAL_SYMMETRIC_SWEEP` perform separate independent smoothings 4221 on each processor. 4222 4223 Application programmers will not generally use `MatSOR()` directly, 4224 but instead will employ `PCSOR` or `PCEISENSTAT` 4225 4226 For `MATBAIJ`, `MATSBAIJ`, and `MATAIJ` matrices with inodes, this does a block SOR smoothing, otherwise it does a pointwise smoothing. 4227 For `MATAIJ` matrices with inodes, the block sizes are determined by the inode sizes, not the block size set with `MatSetBlockSize()` 4228 4229 Vectors `x` and `b` CANNOT be the same 4230 4231 The flags are implemented as bitwise inclusive or operations. 4232 For example, use (`SOR_ZERO_INITIAL_GUESS` | `SOR_SYMMETRIC_SWEEP`) 4233 to specify a zero initial guess for SSOR. 4234 4235 Developer Note: 4236 We should add block SOR support for `MATAIJ` matrices with block size set to greater than one and no inodes 4237 4238 .seealso: [](ch_matrices), `Mat`, `MatMult()`, `KSP`, `PC`, `MatGetFactor()` 4239 @*/ 4240 PetscErrorCode MatSOR(Mat mat, Vec b, PetscReal omega, MatSORType flag, PetscReal shift, PetscInt its, PetscInt lits, Vec x) 4241 { 4242 PetscFunctionBegin; 4243 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4244 PetscValidType(mat, 1); 4245 PetscValidHeaderSpecific(b, VEC_CLASSID, 2); 4246 PetscValidHeaderSpecific(x, VEC_CLASSID, 8); 4247 PetscCheckSameComm(mat, 1, b, 2); 4248 PetscCheckSameComm(mat, 1, x, 8); 4249 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 4250 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 4251 PetscCheck(mat->cmap->N == x->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec x: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->cmap->N, x->map->N); 4252 PetscCheck(mat->rmap->N == b->map->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: global dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->N, b->map->N); 4253 PetscCheck(mat->rmap->n == b->map->n, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Mat mat,Vec b: local dim %" PetscInt_FMT " %" PetscInt_FMT, mat->rmap->n, b->map->n); 4254 PetscCheck(its > 0, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "Relaxation requires global its %" PetscInt_FMT " positive", its); 4255 PetscCheck(lits > 0, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "Relaxation requires local its %" PetscInt_FMT " positive", lits); 4256 PetscCheck(b != x, PETSC_COMM_SELF, PETSC_ERR_ARG_IDN, "b and x vector cannot be the same"); 4257 4258 MatCheckPreallocated(mat, 1); 4259 PetscCall(PetscLogEventBegin(MAT_SOR, mat, b, x, 0)); 4260 PetscUseTypeMethod(mat, sor, b, omega, flag, shift, its, lits, x); 4261 PetscCall(PetscLogEventEnd(MAT_SOR, mat, b, x, 0)); 4262 PetscCall(PetscObjectStateIncrease((PetscObject)x)); 4263 PetscFunctionReturn(PETSC_SUCCESS); 4264 } 4265 4266 /* 4267 Default matrix copy routine. 4268 */ 4269 PetscErrorCode MatCopy_Basic(Mat A, Mat B, MatStructure str) 4270 { 4271 PetscInt i, rstart = 0, rend = 0, nz; 4272 const PetscInt *cwork; 4273 const PetscScalar *vwork; 4274 4275 PetscFunctionBegin; 4276 if (B->assembled) PetscCall(MatZeroEntries(B)); 4277 if (str == SAME_NONZERO_PATTERN) { 4278 PetscCall(MatGetOwnershipRange(A, &rstart, &rend)); 4279 for (i = rstart; i < rend; i++) { 4280 PetscCall(MatGetRow(A, i, &nz, &cwork, &vwork)); 4281 PetscCall(MatSetValues(B, 1, &i, nz, cwork, vwork, INSERT_VALUES)); 4282 PetscCall(MatRestoreRow(A, i, &nz, &cwork, &vwork)); 4283 } 4284 } else { 4285 PetscCall(MatAYPX(B, 0.0, A, str)); 4286 } 4287 PetscCall(MatAssemblyBegin(B, MAT_FINAL_ASSEMBLY)); 4288 PetscCall(MatAssemblyEnd(B, MAT_FINAL_ASSEMBLY)); 4289 PetscFunctionReturn(PETSC_SUCCESS); 4290 } 4291 4292 /*@ 4293 MatCopy - Copies a matrix to another matrix. 4294 4295 Collective 4296 4297 Input Parameters: 4298 + A - the matrix 4299 - str - `SAME_NONZERO_PATTERN` or `DIFFERENT_NONZERO_PATTERN` 4300 4301 Output Parameter: 4302 . B - where the copy is put 4303 4304 Level: intermediate 4305 4306 Notes: 4307 If you use `SAME_NONZERO_PATTERN`, then the two matrices must have the same nonzero pattern or the routine will crash. 4308 4309 `MatCopy()` copies the matrix entries of a matrix to another existing 4310 matrix (after first zeroing the second matrix). A related routine is 4311 `MatConvert()`, which first creates a new matrix and then copies the data. 4312 4313 .seealso: [](ch_matrices), `Mat`, `MatConvert()`, `MatDuplicate()` 4314 @*/ 4315 PetscErrorCode MatCopy(Mat A, Mat B, MatStructure str) 4316 { 4317 PetscInt i; 4318 4319 PetscFunctionBegin; 4320 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 4321 PetscValidHeaderSpecific(B, MAT_CLASSID, 2); 4322 PetscValidType(A, 1); 4323 PetscValidType(B, 2); 4324 PetscCheckSameComm(A, 1, B, 2); 4325 MatCheckPreallocated(B, 2); 4326 PetscCheck(A->assembled, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 4327 PetscCheck(!A->factortype, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 4328 PetscCheck(A->rmap->N == B->rmap->N && A->cmap->N == B->cmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Mat A,Mat B: global dim (%" PetscInt_FMT ",%" PetscInt_FMT ") (%" PetscInt_FMT ",%" PetscInt_FMT ")", A->rmap->N, B->rmap->N, 4329 A->cmap->N, B->cmap->N); 4330 MatCheckPreallocated(A, 1); 4331 if (A == B) PetscFunctionReturn(PETSC_SUCCESS); 4332 4333 PetscCall(PetscLogEventBegin(MAT_Copy, A, B, 0, 0)); 4334 if (A->ops->copy) PetscUseTypeMethod(A, copy, B, str); 4335 else PetscCall(MatCopy_Basic(A, B, str)); 4336 4337 B->stencil.dim = A->stencil.dim; 4338 B->stencil.noc = A->stencil.noc; 4339 for (i = 0; i <= A->stencil.dim + (A->stencil.noc ? 0 : -1); i++) { 4340 B->stencil.dims[i] = A->stencil.dims[i]; 4341 B->stencil.starts[i] = A->stencil.starts[i]; 4342 } 4343 4344 PetscCall(PetscLogEventEnd(MAT_Copy, A, B, 0, 0)); 4345 PetscCall(PetscObjectStateIncrease((PetscObject)B)); 4346 PetscFunctionReturn(PETSC_SUCCESS); 4347 } 4348 4349 /*@ 4350 MatConvert - Converts a matrix to another matrix, either of the same 4351 or different type. 4352 4353 Collective 4354 4355 Input Parameters: 4356 + mat - the matrix 4357 . newtype - new matrix type. Use `MATSAME` to create a new matrix of the 4358 same type as the original matrix. 4359 - reuse - denotes if the destination matrix is to be created or reused. 4360 Use `MAT_INPLACE_MATRIX` for inplace conversion (that is when you want the input `Mat` to be changed to contain the matrix in the new format), otherwise use 4361 `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` (can only be used after the first call was made with `MAT_INITIAL_MATRIX`, causes the matrix space in M to be reused). 4362 4363 Output Parameter: 4364 . M - pointer to place new matrix 4365 4366 Level: intermediate 4367 4368 Notes: 4369 `MatConvert()` first creates a new matrix and then copies the data from 4370 the first matrix. A related routine is `MatCopy()`, which copies the matrix 4371 entries of one matrix to another already existing matrix context. 4372 4373 Cannot be used to convert a sequential matrix to parallel or parallel to sequential, 4374 the MPI communicator of the generated matrix is always the same as the communicator 4375 of the input matrix. 4376 4377 .seealso: [](ch_matrices), `Mat`, `MatCopy()`, `MatDuplicate()`, `MAT_INITIAL_MATRIX`, `MAT_REUSE_MATRIX`, `MAT_INPLACE_MATRIX` 4378 @*/ 4379 PetscErrorCode MatConvert(Mat mat, MatType newtype, MatReuse reuse, Mat *M) 4380 { 4381 PetscBool sametype, issame, flg; 4382 PetscBool3 issymmetric, ishermitian, isspd; 4383 char convname[256], mtype[256]; 4384 Mat B; 4385 4386 PetscFunctionBegin; 4387 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4388 PetscValidType(mat, 1); 4389 PetscAssertPointer(M, 4); 4390 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 4391 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 4392 MatCheckPreallocated(mat, 1); 4393 4394 PetscCall(PetscOptionsGetString(((PetscObject)mat)->options, ((PetscObject)mat)->prefix, "-matconvert_type", mtype, sizeof(mtype), &flg)); 4395 if (flg) newtype = mtype; 4396 4397 PetscCall(PetscObjectTypeCompare((PetscObject)mat, newtype, &sametype)); 4398 PetscCall(PetscStrcmp(newtype, "same", &issame)); 4399 PetscCheck(!(reuse == MAT_INPLACE_MATRIX) || !(mat != *M), PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "MAT_INPLACE_MATRIX requires same input and output matrix"); 4400 if (reuse == MAT_REUSE_MATRIX) { 4401 PetscValidHeaderSpecific(*M, MAT_CLASSID, 4); 4402 PetscCheck(mat != *M, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "MAT_REUSE_MATRIX means reuse matrix in final argument, perhaps you mean MAT_INPLACE_MATRIX"); 4403 } 4404 4405 if ((reuse == MAT_INPLACE_MATRIX) && (issame || sametype)) { 4406 PetscCall(PetscInfo(mat, "Early return for inplace %s %d %d\n", ((PetscObject)mat)->type_name, sametype, issame)); 4407 PetscFunctionReturn(PETSC_SUCCESS); 4408 } 4409 4410 /* Cache Mat options because some converters use MatHeaderReplace() */ 4411 issymmetric = mat->symmetric; 4412 ishermitian = mat->hermitian; 4413 isspd = mat->spd; 4414 4415 if ((sametype || issame) && (reuse == MAT_INITIAL_MATRIX) && mat->ops->duplicate) { 4416 PetscCall(PetscInfo(mat, "Calling duplicate for initial matrix %s %d %d\n", ((PetscObject)mat)->type_name, sametype, issame)); 4417 PetscUseTypeMethod(mat, duplicate, MAT_COPY_VALUES, M); 4418 } else { 4419 PetscErrorCode (*conv)(Mat, MatType, MatReuse, Mat *) = NULL; 4420 const char *prefix[3] = {"seq", "mpi", ""}; 4421 PetscInt i; 4422 /* 4423 Order of precedence: 4424 0) See if newtype is a superclass of the current matrix. 4425 1) See if a specialized converter is known to the current matrix. 4426 2) See if a specialized converter is known to the desired matrix class. 4427 3) See if a good general converter is registered for the desired class 4428 (as of 6/27/03 only MATMPIADJ falls into this category). 4429 4) See if a good general converter is known for the current matrix. 4430 5) Use a really basic converter. 4431 */ 4432 4433 /* 0) See if newtype is a superclass of the current matrix. 4434 i.e mat is mpiaij and newtype is aij */ 4435 for (i = 0; i < (PetscInt)PETSC_STATIC_ARRAY_LENGTH(prefix); i++) { 4436 PetscCall(PetscStrncpy(convname, prefix[i], sizeof(convname))); 4437 PetscCall(PetscStrlcat(convname, newtype, sizeof(convname))); 4438 PetscCall(PetscStrcmp(convname, ((PetscObject)mat)->type_name, &flg)); 4439 PetscCall(PetscInfo(mat, "Check superclass %s %s -> %d\n", convname, ((PetscObject)mat)->type_name, flg)); 4440 if (flg) { 4441 if (reuse == MAT_INPLACE_MATRIX) { 4442 PetscCall(PetscInfo(mat, "Early return\n")); 4443 PetscFunctionReturn(PETSC_SUCCESS); 4444 } else if (reuse == MAT_INITIAL_MATRIX && mat->ops->duplicate) { 4445 PetscCall(PetscInfo(mat, "Calling MatDuplicate\n")); 4446 PetscUseTypeMethod(mat, duplicate, MAT_COPY_VALUES, M); 4447 PetscFunctionReturn(PETSC_SUCCESS); 4448 } else if (reuse == MAT_REUSE_MATRIX && mat->ops->copy) { 4449 PetscCall(PetscInfo(mat, "Calling MatCopy\n")); 4450 PetscCall(MatCopy(mat, *M, SAME_NONZERO_PATTERN)); 4451 PetscFunctionReturn(PETSC_SUCCESS); 4452 } 4453 } 4454 } 4455 /* 1) See if a specialized converter is known to the current matrix and the desired class */ 4456 for (i = 0; i < (PetscInt)PETSC_STATIC_ARRAY_LENGTH(prefix); i++) { 4457 PetscCall(PetscStrncpy(convname, "MatConvert_", sizeof(convname))); 4458 PetscCall(PetscStrlcat(convname, ((PetscObject)mat)->type_name, sizeof(convname))); 4459 PetscCall(PetscStrlcat(convname, "_", sizeof(convname))); 4460 PetscCall(PetscStrlcat(convname, prefix[i], sizeof(convname))); 4461 PetscCall(PetscStrlcat(convname, issame ? ((PetscObject)mat)->type_name : newtype, sizeof(convname))); 4462 PetscCall(PetscStrlcat(convname, "_C", sizeof(convname))); 4463 PetscCall(PetscObjectQueryFunction((PetscObject)mat, convname, &conv)); 4464 PetscCall(PetscInfo(mat, "Check specialized (1) %s (%s) -> %d\n", convname, ((PetscObject)mat)->type_name, !!conv)); 4465 if (conv) goto foundconv; 4466 } 4467 4468 /* 2) See if a specialized converter is known to the desired matrix class. */ 4469 PetscCall(MatCreate(PetscObjectComm((PetscObject)mat), &B)); 4470 PetscCall(MatSetSizes(B, mat->rmap->n, mat->cmap->n, mat->rmap->N, mat->cmap->N)); 4471 PetscCall(MatSetType(B, newtype)); 4472 for (i = 0; i < (PetscInt)PETSC_STATIC_ARRAY_LENGTH(prefix); i++) { 4473 PetscCall(PetscStrncpy(convname, "MatConvert_", sizeof(convname))); 4474 PetscCall(PetscStrlcat(convname, ((PetscObject)mat)->type_name, sizeof(convname))); 4475 PetscCall(PetscStrlcat(convname, "_", sizeof(convname))); 4476 PetscCall(PetscStrlcat(convname, prefix[i], sizeof(convname))); 4477 PetscCall(PetscStrlcat(convname, newtype, sizeof(convname))); 4478 PetscCall(PetscStrlcat(convname, "_C", sizeof(convname))); 4479 PetscCall(PetscObjectQueryFunction((PetscObject)B, convname, &conv)); 4480 PetscCall(PetscInfo(mat, "Check specialized (2) %s (%s) -> %d\n", convname, ((PetscObject)B)->type_name, !!conv)); 4481 if (conv) { 4482 PetscCall(MatDestroy(&B)); 4483 goto foundconv; 4484 } 4485 } 4486 4487 /* 3) See if a good general converter is registered for the desired class */ 4488 conv = B->ops->convertfrom; 4489 PetscCall(PetscInfo(mat, "Check convertfrom (%s) -> %d\n", ((PetscObject)B)->type_name, !!conv)); 4490 PetscCall(MatDestroy(&B)); 4491 if (conv) goto foundconv; 4492 4493 /* 4) See if a good general converter is known for the current matrix */ 4494 if (mat->ops->convert) conv = mat->ops->convert; 4495 PetscCall(PetscInfo(mat, "Check general convert (%s) -> %d\n", ((PetscObject)mat)->type_name, !!conv)); 4496 if (conv) goto foundconv; 4497 4498 /* 5) Use a really basic converter. */ 4499 PetscCall(PetscInfo(mat, "Using MatConvert_Basic\n")); 4500 conv = MatConvert_Basic; 4501 4502 foundconv: 4503 PetscCall(PetscLogEventBegin(MAT_Convert, mat, 0, 0, 0)); 4504 PetscCall((*conv)(mat, newtype, reuse, M)); 4505 if (mat->rmap->mapping && mat->cmap->mapping && !(*M)->rmap->mapping && !(*M)->cmap->mapping) { 4506 /* the block sizes must be same if the mappings are copied over */ 4507 (*M)->rmap->bs = mat->rmap->bs; 4508 (*M)->cmap->bs = mat->cmap->bs; 4509 PetscCall(PetscObjectReference((PetscObject)mat->rmap->mapping)); 4510 PetscCall(PetscObjectReference((PetscObject)mat->cmap->mapping)); 4511 (*M)->rmap->mapping = mat->rmap->mapping; 4512 (*M)->cmap->mapping = mat->cmap->mapping; 4513 } 4514 (*M)->stencil.dim = mat->stencil.dim; 4515 (*M)->stencil.noc = mat->stencil.noc; 4516 for (i = 0; i <= mat->stencil.dim + (mat->stencil.noc ? 0 : -1); i++) { 4517 (*M)->stencil.dims[i] = mat->stencil.dims[i]; 4518 (*M)->stencil.starts[i] = mat->stencil.starts[i]; 4519 } 4520 PetscCall(PetscLogEventEnd(MAT_Convert, mat, 0, 0, 0)); 4521 } 4522 PetscCall(PetscObjectStateIncrease((PetscObject)*M)); 4523 4524 /* Reset Mat options */ 4525 if (issymmetric != PETSC_BOOL3_UNKNOWN) PetscCall(MatSetOption(*M, MAT_SYMMETRIC, PetscBool3ToBool(issymmetric))); 4526 if (ishermitian != PETSC_BOOL3_UNKNOWN) PetscCall(MatSetOption(*M, MAT_HERMITIAN, PetscBool3ToBool(ishermitian))); 4527 if (isspd != PETSC_BOOL3_UNKNOWN) PetscCall(MatSetOption(*M, MAT_SPD, PetscBool3ToBool(isspd))); 4528 PetscFunctionReturn(PETSC_SUCCESS); 4529 } 4530 4531 /*@ 4532 MatFactorGetSolverType - Returns name of the package providing the factorization routines 4533 4534 Not Collective 4535 4536 Input Parameter: 4537 . mat - the matrix, must be a factored matrix 4538 4539 Output Parameter: 4540 . type - the string name of the package (do not free this string) 4541 4542 Level: intermediate 4543 4544 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatSolverType`, `MatCopy()`, `MatDuplicate()`, `MatGetFactorAvailable()` 4545 @*/ 4546 PetscErrorCode MatFactorGetSolverType(Mat mat, MatSolverType *type) 4547 { 4548 PetscErrorCode (*conv)(Mat, MatSolverType *); 4549 4550 PetscFunctionBegin; 4551 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4552 PetscValidType(mat, 1); 4553 PetscAssertPointer(type, 2); 4554 PetscCheck(mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Only for factored matrix"); 4555 PetscCall(PetscObjectQueryFunction((PetscObject)mat, "MatFactorGetSolverType_C", &conv)); 4556 if (conv) PetscCall((*conv)(mat, type)); 4557 else *type = MATSOLVERPETSC; 4558 PetscFunctionReturn(PETSC_SUCCESS); 4559 } 4560 4561 typedef struct _MatSolverTypeForSpecifcType *MatSolverTypeForSpecifcType; 4562 struct _MatSolverTypeForSpecifcType { 4563 MatType mtype; 4564 /* no entry for MAT_FACTOR_NONE */ 4565 PetscErrorCode (*createfactor[MAT_FACTOR_NUM_TYPES - 1])(Mat, MatFactorType, Mat *); 4566 MatSolverTypeForSpecifcType next; 4567 }; 4568 4569 typedef struct _MatSolverTypeHolder *MatSolverTypeHolder; 4570 struct _MatSolverTypeHolder { 4571 char *name; 4572 MatSolverTypeForSpecifcType handlers; 4573 MatSolverTypeHolder next; 4574 }; 4575 4576 static MatSolverTypeHolder MatSolverTypeHolders = NULL; 4577 4578 /*@C 4579 MatSolverTypeRegister - Registers a `MatSolverType` that works for a particular matrix type 4580 4581 Logically Collective, No Fortran Support 4582 4583 Input Parameters: 4584 + package - name of the package, for example `petsc` or `superlu` 4585 . mtype - the matrix type that works with this package 4586 . ftype - the type of factorization supported by the package 4587 - createfactor - routine that will create the factored matrix ready to be used 4588 4589 Level: developer 4590 4591 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatFactorGetSolverType()`, `MatCopy()`, `MatDuplicate()`, `MatGetFactorAvailable()`, 4592 `MatGetFactor()` 4593 @*/ 4594 PetscErrorCode MatSolverTypeRegister(MatSolverType package, MatType mtype, MatFactorType ftype, PetscErrorCode (*createfactor)(Mat, MatFactorType, Mat *)) 4595 { 4596 MatSolverTypeHolder next = MatSolverTypeHolders, prev = NULL; 4597 PetscBool flg; 4598 MatSolverTypeForSpecifcType inext, iprev = NULL; 4599 4600 PetscFunctionBegin; 4601 PetscCall(MatInitializePackage()); 4602 if (!next) { 4603 PetscCall(PetscNew(&MatSolverTypeHolders)); 4604 PetscCall(PetscStrallocpy(package, &MatSolverTypeHolders->name)); 4605 PetscCall(PetscNew(&MatSolverTypeHolders->handlers)); 4606 PetscCall(PetscStrallocpy(mtype, (char **)&MatSolverTypeHolders->handlers->mtype)); 4607 MatSolverTypeHolders->handlers->createfactor[(int)ftype - 1] = createfactor; 4608 PetscFunctionReturn(PETSC_SUCCESS); 4609 } 4610 while (next) { 4611 PetscCall(PetscStrcasecmp(package, next->name, &flg)); 4612 if (flg) { 4613 PetscCheck(next->handlers, PETSC_COMM_SELF, PETSC_ERR_PLIB, "MatSolverTypeHolder is missing handlers"); 4614 inext = next->handlers; 4615 while (inext) { 4616 PetscCall(PetscStrcasecmp(mtype, inext->mtype, &flg)); 4617 if (flg) { 4618 inext->createfactor[(int)ftype - 1] = createfactor; 4619 PetscFunctionReturn(PETSC_SUCCESS); 4620 } 4621 iprev = inext; 4622 inext = inext->next; 4623 } 4624 PetscCall(PetscNew(&iprev->next)); 4625 PetscCall(PetscStrallocpy(mtype, (char **)&iprev->next->mtype)); 4626 iprev->next->createfactor[(int)ftype - 1] = createfactor; 4627 PetscFunctionReturn(PETSC_SUCCESS); 4628 } 4629 prev = next; 4630 next = next->next; 4631 } 4632 PetscCall(PetscNew(&prev->next)); 4633 PetscCall(PetscStrallocpy(package, &prev->next->name)); 4634 PetscCall(PetscNew(&prev->next->handlers)); 4635 PetscCall(PetscStrallocpy(mtype, (char **)&prev->next->handlers->mtype)); 4636 prev->next->handlers->createfactor[(int)ftype - 1] = createfactor; 4637 PetscFunctionReturn(PETSC_SUCCESS); 4638 } 4639 4640 /*@C 4641 MatSolverTypeGet - Gets the function that creates the factor matrix if it exist 4642 4643 Input Parameters: 4644 + type - name of the package, for example `petsc` or `superlu`, if this is 'NULL', then the first result that satisfies the other criteria is returned 4645 . ftype - the type of factorization supported by the type 4646 - mtype - the matrix type that works with this type 4647 4648 Output Parameters: 4649 + foundtype - `PETSC_TRUE` if the type was registered 4650 . foundmtype - `PETSC_TRUE` if the type supports the requested mtype 4651 - createfactor - routine that will create the factored matrix ready to be used or `NULL` if not found 4652 4653 Calling sequence of `createfactor`: 4654 + A - the matrix providing the factor matrix 4655 . ftype - the `MatFactorType` of the factor requested 4656 - B - the new factor matrix that responds to MatXXFactorSymbolic,Numeric() functions, such as `MatLUFactorSymbolic()` 4657 4658 Level: developer 4659 4660 Note: 4661 When `type` is `NULL` the available functions are searched for based on the order of the calls to `MatSolverTypeRegister()` in `MatInitializePackage()`. 4662 Since different PETSc configurations may have different external solvers, seemingly identical runs with different PETSc configurations may use a different solver. 4663 For example if one configuration had `--download-mumps` while a different one had `--download-superlu_dist`. 4664 4665 .seealso: [](ch_matrices), `Mat`, `MatFactorType`, `MatType`, `MatCopy()`, `MatDuplicate()`, `MatGetFactorAvailable()`, `MatSolverTypeRegister()`, `MatGetFactor()`, 4666 `MatInitializePackage()` 4667 @*/ 4668 PetscErrorCode MatSolverTypeGet(MatSolverType type, MatType mtype, MatFactorType ftype, PetscBool *foundtype, PetscBool *foundmtype, PetscErrorCode (**createfactor)(Mat A, MatFactorType ftype, Mat *B)) 4669 { 4670 MatSolverTypeHolder next = MatSolverTypeHolders; 4671 PetscBool flg; 4672 MatSolverTypeForSpecifcType inext; 4673 4674 PetscFunctionBegin; 4675 if (foundtype) *foundtype = PETSC_FALSE; 4676 if (foundmtype) *foundmtype = PETSC_FALSE; 4677 if (createfactor) *createfactor = NULL; 4678 4679 if (type) { 4680 while (next) { 4681 PetscCall(PetscStrcasecmp(type, next->name, &flg)); 4682 if (flg) { 4683 if (foundtype) *foundtype = PETSC_TRUE; 4684 inext = next->handlers; 4685 while (inext) { 4686 PetscCall(PetscStrbeginswith(mtype, inext->mtype, &flg)); 4687 if (flg) { 4688 if (foundmtype) *foundmtype = PETSC_TRUE; 4689 if (createfactor) *createfactor = inext->createfactor[(int)ftype - 1]; 4690 PetscFunctionReturn(PETSC_SUCCESS); 4691 } 4692 inext = inext->next; 4693 } 4694 } 4695 next = next->next; 4696 } 4697 } else { 4698 while (next) { 4699 inext = next->handlers; 4700 while (inext) { 4701 PetscCall(PetscStrcmp(mtype, inext->mtype, &flg)); 4702 if (flg && inext->createfactor[(int)ftype - 1]) { 4703 if (foundtype) *foundtype = PETSC_TRUE; 4704 if (foundmtype) *foundmtype = PETSC_TRUE; 4705 if (createfactor) *createfactor = inext->createfactor[(int)ftype - 1]; 4706 PetscFunctionReturn(PETSC_SUCCESS); 4707 } 4708 inext = inext->next; 4709 } 4710 next = next->next; 4711 } 4712 /* try with base classes inext->mtype */ 4713 next = MatSolverTypeHolders; 4714 while (next) { 4715 inext = next->handlers; 4716 while (inext) { 4717 PetscCall(PetscStrbeginswith(mtype, inext->mtype, &flg)); 4718 if (flg && inext->createfactor[(int)ftype - 1]) { 4719 if (foundtype) *foundtype = PETSC_TRUE; 4720 if (foundmtype) *foundmtype = PETSC_TRUE; 4721 if (createfactor) *createfactor = inext->createfactor[(int)ftype - 1]; 4722 PetscFunctionReturn(PETSC_SUCCESS); 4723 } 4724 inext = inext->next; 4725 } 4726 next = next->next; 4727 } 4728 } 4729 PetscFunctionReturn(PETSC_SUCCESS); 4730 } 4731 4732 PetscErrorCode MatSolverTypeDestroy(void) 4733 { 4734 MatSolverTypeHolder next = MatSolverTypeHolders, prev; 4735 MatSolverTypeForSpecifcType inext, iprev; 4736 4737 PetscFunctionBegin; 4738 while (next) { 4739 PetscCall(PetscFree(next->name)); 4740 inext = next->handlers; 4741 while (inext) { 4742 PetscCall(PetscFree(inext->mtype)); 4743 iprev = inext; 4744 inext = inext->next; 4745 PetscCall(PetscFree(iprev)); 4746 } 4747 prev = next; 4748 next = next->next; 4749 PetscCall(PetscFree(prev)); 4750 } 4751 MatSolverTypeHolders = NULL; 4752 PetscFunctionReturn(PETSC_SUCCESS); 4753 } 4754 4755 /*@ 4756 MatFactorGetCanUseOrdering - Indicates if the factorization can use the ordering provided in `MatLUFactorSymbolic()`, `MatCholeskyFactorSymbolic()` 4757 4758 Logically Collective 4759 4760 Input Parameter: 4761 . mat - the matrix 4762 4763 Output Parameter: 4764 . flg - `PETSC_TRUE` if uses the ordering 4765 4766 Level: developer 4767 4768 Note: 4769 Most internal PETSc factorizations use the ordering passed to the factorization routine but external 4770 packages do not, thus we want to skip generating the ordering when it is not needed or used. 4771 4772 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatCopy()`, `MatDuplicate()`, `MatGetFactorAvailable()`, `MatGetFactor()`, `MatLUFactorSymbolic()`, `MatCholeskyFactorSymbolic()` 4773 @*/ 4774 PetscErrorCode MatFactorGetCanUseOrdering(Mat mat, PetscBool *flg) 4775 { 4776 PetscFunctionBegin; 4777 *flg = mat->canuseordering; 4778 PetscFunctionReturn(PETSC_SUCCESS); 4779 } 4780 4781 /*@ 4782 MatFactorGetPreferredOrdering - The preferred ordering for a particular matrix factor object 4783 4784 Logically Collective 4785 4786 Input Parameters: 4787 + mat - the matrix obtained with `MatGetFactor()` 4788 - ftype - the factorization type to be used 4789 4790 Output Parameter: 4791 . otype - the preferred ordering type 4792 4793 Level: developer 4794 4795 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatFactorType`, `MatOrderingType`, `MatCopy()`, `MatDuplicate()`, `MatGetFactorAvailable()`, `MatGetFactor()`, `MatLUFactorSymbolic()`, `MatCholeskyFactorSymbolic()` 4796 @*/ 4797 PetscErrorCode MatFactorGetPreferredOrdering(Mat mat, MatFactorType ftype, MatOrderingType *otype) 4798 { 4799 PetscFunctionBegin; 4800 *otype = mat->preferredordering[ftype]; 4801 PetscCheck(*otype, PETSC_COMM_SELF, PETSC_ERR_PLIB, "MatFactor did not have a preferred ordering"); 4802 PetscFunctionReturn(PETSC_SUCCESS); 4803 } 4804 4805 /*@ 4806 MatGetFactor - Returns a matrix suitable to calls to MatXXFactorSymbolic,Numeric() 4807 4808 Collective 4809 4810 Input Parameters: 4811 + mat - the matrix 4812 . type - name of solver type, for example, `superlu`, `petsc` (to use PETSc's solver if it is available), if this is 'NULL', then the first result that satisfies 4813 the other criteria is returned 4814 - ftype - factor type, `MAT_FACTOR_LU`, `MAT_FACTOR_CHOLESKY`, `MAT_FACTOR_ICC`, `MAT_FACTOR_ILU`, `MAT_FACTOR_QR` 4815 4816 Output Parameter: 4817 . f - the factor matrix used with MatXXFactorSymbolic,Numeric() calls. Can be `NULL` in some cases, see notes below. 4818 4819 Options Database Keys: 4820 + -pc_factor_mat_solver_type <type> - choose the type at run time. When using `KSP` solvers 4821 . -pc_factor_mat_factor_on_host <bool> - do mat factorization on host (with device matrices). Default is doing it on device 4822 - -pc_factor_mat_solve_on_host <bool> - do mat solve on host (with device matrices). Default is doing it on device 4823 4824 Level: intermediate 4825 4826 Notes: 4827 The return matrix can be `NULL` if the requested factorization is not available, since some combinations of matrix types and factorization 4828 types registered with `MatSolverTypeRegister()` cannot be fully tested if not at runtime. 4829 4830 Users usually access the factorization solvers via `KSP` 4831 4832 Some PETSc matrix formats have alternative solvers available that are contained in alternative packages 4833 such as pastix, superlu, mumps etc. PETSc must have been ./configure to use the external solver, using the option --download-package or --with-package-dir 4834 4835 When `type` is `NULL` the available results are searched for based on the order of the calls to `MatSolverTypeRegister()` in `MatInitializePackage()`. 4836 Since different PETSc configurations may have different external solvers, seemingly identical runs with different PETSc configurations may use a different solver. 4837 For example if one configuration had --download-mumps while a different one had --download-superlu_dist. 4838 4839 Some of the packages have options for controlling the factorization, these are in the form -prefix_mat_packagename_packageoption 4840 where prefix is normally obtained from the calling `KSP`/`PC`. If `MatGetFactor()` is called directly one can set 4841 call `MatSetOptionsPrefixFactor()` on the originating matrix or `MatSetOptionsPrefix()` on the resulting factor matrix. 4842 4843 Developer Note: 4844 This should actually be called `MatCreateFactor()` since it creates a new factor object 4845 4846 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `KSP`, `MatSolverType`, `MatFactorType`, `MatCopy()`, `MatDuplicate()`, 4847 `MatGetFactorAvailable()`, `MatFactorGetCanUseOrdering()`, `MatSolverTypeRegister()`, `MatSolverTypeGet()` 4848 `MAT_FACTOR_LU`, `MAT_FACTOR_CHOLESKY`, `MAT_FACTOR_ICC`, `MAT_FACTOR_ILU`, `MAT_FACTOR_QR`, `MatInitializePackage()` 4849 @*/ 4850 PetscErrorCode MatGetFactor(Mat mat, MatSolverType type, MatFactorType ftype, Mat *f) 4851 { 4852 PetscBool foundtype, foundmtype, shell, hasop = PETSC_FALSE; 4853 PetscErrorCode (*conv)(Mat, MatFactorType, Mat *); 4854 4855 PetscFunctionBegin; 4856 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4857 PetscValidType(mat, 1); 4858 4859 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 4860 MatCheckPreallocated(mat, 1); 4861 4862 PetscCall(MatIsShell(mat, &shell)); 4863 if (shell) PetscCall(MatHasOperation(mat, MATOP_GET_FACTOR, &hasop)); 4864 if (hasop) { 4865 PetscUseTypeMethod(mat, getfactor, type, ftype, f); 4866 PetscFunctionReturn(PETSC_SUCCESS); 4867 } 4868 4869 PetscCall(MatSolverTypeGet(type, ((PetscObject)mat)->type_name, ftype, &foundtype, &foundmtype, &conv)); 4870 if (!foundtype) { 4871 if (type) { 4872 SETERRQ(PetscObjectComm((PetscObject)mat), PETSC_ERR_MISSING_FACTOR, "Could not locate solver type %s for factorization type %s and matrix type %s. Perhaps you must ./configure with --download-%s", type, MatFactorTypes[ftype], 4873 ((PetscObject)mat)->type_name, type); 4874 } else { 4875 SETERRQ(PetscObjectComm((PetscObject)mat), PETSC_ERR_MISSING_FACTOR, "Could not locate a solver type for factorization type %s and matrix type %s.", MatFactorTypes[ftype], ((PetscObject)mat)->type_name); 4876 } 4877 } 4878 PetscCheck(foundmtype, PetscObjectComm((PetscObject)mat), PETSC_ERR_MISSING_FACTOR, "MatSolverType %s does not support matrix type %s", type, ((PetscObject)mat)->type_name); 4879 PetscCheck(conv, PetscObjectComm((PetscObject)mat), PETSC_ERR_MISSING_FACTOR, "MatSolverType %s does not support factorization type %s for matrix type %s", type, MatFactorTypes[ftype], ((PetscObject)mat)->type_name); 4880 4881 PetscCall((*conv)(mat, ftype, f)); 4882 if (mat->factorprefix) PetscCall(MatSetOptionsPrefix(*f, mat->factorprefix)); 4883 PetscFunctionReturn(PETSC_SUCCESS); 4884 } 4885 4886 /*@ 4887 MatGetFactorAvailable - Returns a flag if matrix supports particular type and factor type 4888 4889 Not Collective 4890 4891 Input Parameters: 4892 + mat - the matrix 4893 . type - name of solver type, for example, `superlu`, `petsc` (to use PETSc's default) 4894 - ftype - factor type, `MAT_FACTOR_LU`, `MAT_FACTOR_CHOLESKY`, `MAT_FACTOR_ICC`, `MAT_FACTOR_ILU`, `MAT_FACTOR_QR` 4895 4896 Output Parameter: 4897 . flg - PETSC_TRUE if the factorization is available 4898 4899 Level: intermediate 4900 4901 Notes: 4902 Some PETSc matrix formats have alternative solvers available that are contained in alternative packages 4903 such as pastix, superlu, mumps etc. 4904 4905 PETSc must have been ./configure to use the external solver, using the option --download-package 4906 4907 Developer Note: 4908 This should actually be called `MatCreateFactorAvailable()` since `MatGetFactor()` creates a new factor object 4909 4910 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatSolverType`, `MatFactorType`, `MatGetFactor()`, `MatCopy()`, `MatDuplicate()`, `MatSolverTypeRegister()`, 4911 `MAT_FACTOR_LU`, `MAT_FACTOR_CHOLESKY`, `MAT_FACTOR_ICC`, `MAT_FACTOR_ILU`, `MAT_FACTOR_QR`, `MatSolverTypeGet()` 4912 @*/ 4913 PetscErrorCode MatGetFactorAvailable(Mat mat, MatSolverType type, MatFactorType ftype, PetscBool *flg) 4914 { 4915 PetscErrorCode (*gconv)(Mat, MatFactorType, Mat *); 4916 4917 PetscFunctionBegin; 4918 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4919 PetscAssertPointer(flg, 4); 4920 4921 *flg = PETSC_FALSE; 4922 if (!((PetscObject)mat)->type_name) PetscFunctionReturn(PETSC_SUCCESS); 4923 4924 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 4925 MatCheckPreallocated(mat, 1); 4926 4927 PetscCall(MatSolverTypeGet(type, ((PetscObject)mat)->type_name, ftype, NULL, NULL, &gconv)); 4928 *flg = gconv ? PETSC_TRUE : PETSC_FALSE; 4929 PetscFunctionReturn(PETSC_SUCCESS); 4930 } 4931 4932 /*@ 4933 MatDuplicate - Duplicates a matrix including the non-zero structure. 4934 4935 Collective 4936 4937 Input Parameters: 4938 + mat - the matrix 4939 - op - One of `MAT_DO_NOT_COPY_VALUES`, `MAT_COPY_VALUES`, or `MAT_SHARE_NONZERO_PATTERN`. 4940 See the manual page for `MatDuplicateOption()` for an explanation of these options. 4941 4942 Output Parameter: 4943 . M - pointer to place new matrix 4944 4945 Level: intermediate 4946 4947 Notes: 4948 You cannot change the nonzero pattern for the parent or child matrix later if you use `MAT_SHARE_NONZERO_PATTERN`. 4949 4950 If `op` is not `MAT_COPY_VALUES` the numerical values in the new matrix are zeroed. 4951 4952 May be called with an unassembled input `Mat` if `MAT_DO_NOT_COPY_VALUES` is used, in which case the output `Mat` is unassembled as well. 4953 4954 When original mat is a product of matrix operation, e.g., an output of `MatMatMult()` or `MatCreateSubMatrix()`, only the matrix data structure of `mat` 4955 is duplicated and the internal data structures created for the reuse of previous matrix operations are not duplicated. 4956 User should not use `MatDuplicate()` to create new matrix `M` if `M` is intended to be reused as the product of matrix operation. 4957 4958 .seealso: [](ch_matrices), `Mat`, `MatCopy()`, `MatConvert()`, `MatDuplicateOption` 4959 @*/ 4960 PetscErrorCode MatDuplicate(Mat mat, MatDuplicateOption op, Mat *M) 4961 { 4962 Mat B; 4963 VecType vtype; 4964 PetscInt i; 4965 PetscObject dm, container_h, container_d; 4966 PetscErrorCodeFn *viewf; 4967 4968 PetscFunctionBegin; 4969 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 4970 PetscValidType(mat, 1); 4971 PetscAssertPointer(M, 3); 4972 PetscCheck(op != MAT_COPY_VALUES || mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "MAT_COPY_VALUES not allowed for unassembled matrix"); 4973 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 4974 MatCheckPreallocated(mat, 1); 4975 4976 PetscCall(PetscLogEventBegin(MAT_Convert, mat, 0, 0, 0)); 4977 PetscUseTypeMethod(mat, duplicate, op, M); 4978 PetscCall(PetscLogEventEnd(MAT_Convert, mat, 0, 0, 0)); 4979 B = *M; 4980 4981 PetscCall(MatGetOperation(mat, MATOP_VIEW, &viewf)); 4982 if (viewf) PetscCall(MatSetOperation(B, MATOP_VIEW, viewf)); 4983 PetscCall(MatGetVecType(mat, &vtype)); 4984 PetscCall(MatSetVecType(B, vtype)); 4985 4986 B->stencil.dim = mat->stencil.dim; 4987 B->stencil.noc = mat->stencil.noc; 4988 for (i = 0; i <= mat->stencil.dim + (mat->stencil.noc ? 0 : -1); i++) { 4989 B->stencil.dims[i] = mat->stencil.dims[i]; 4990 B->stencil.starts[i] = mat->stencil.starts[i]; 4991 } 4992 4993 B->nooffproczerorows = mat->nooffproczerorows; 4994 B->nooffprocentries = mat->nooffprocentries; 4995 4996 PetscCall(PetscObjectQuery((PetscObject)mat, "__PETSc_dm", &dm)); 4997 if (dm) PetscCall(PetscObjectCompose((PetscObject)B, "__PETSc_dm", dm)); 4998 PetscCall(PetscObjectQuery((PetscObject)mat, "__PETSc_MatCOOStruct_Host", &container_h)); 4999 if (container_h) PetscCall(PetscObjectCompose((PetscObject)B, "__PETSc_MatCOOStruct_Host", container_h)); 5000 PetscCall(PetscObjectQuery((PetscObject)mat, "__PETSc_MatCOOStruct_Device", &container_d)); 5001 if (container_d) PetscCall(PetscObjectCompose((PetscObject)B, "__PETSc_MatCOOStruct_Device", container_d)); 5002 if (op == MAT_COPY_VALUES) PetscCall(MatPropagateSymmetryOptions(mat, B)); 5003 PetscCall(PetscObjectStateIncrease((PetscObject)B)); 5004 PetscFunctionReturn(PETSC_SUCCESS); 5005 } 5006 5007 /*@ 5008 MatGetDiagonal - Gets the diagonal of a matrix as a `Vec` 5009 5010 Logically Collective 5011 5012 Input Parameter: 5013 . mat - the matrix 5014 5015 Output Parameter: 5016 . v - the diagonal of the matrix 5017 5018 Level: intermediate 5019 5020 Note: 5021 If `mat` has local sizes `n` x `m`, this routine fills the first `ndiag = min(n, m)` entries 5022 of `v` with the diagonal values. Thus `v` must have local size of at least `ndiag`. If `v` 5023 is larger than `ndiag`, the values of the remaining entries are unspecified. 5024 5025 Currently only correct in parallel for square matrices. 5026 5027 .seealso: [](ch_matrices), `Mat`, `Vec`, `MatGetRow()`, `MatCreateSubMatrices()`, `MatCreateSubMatrix()`, `MatGetRowMaxAbs()` 5028 @*/ 5029 PetscErrorCode MatGetDiagonal(Mat mat, Vec v) 5030 { 5031 PetscFunctionBegin; 5032 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5033 PetscValidType(mat, 1); 5034 PetscValidHeaderSpecific(v, VEC_CLASSID, 2); 5035 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5036 MatCheckPreallocated(mat, 1); 5037 if (PetscDefined(USE_DEBUG)) { 5038 PetscInt nv, row, col, ndiag; 5039 5040 PetscCall(VecGetLocalSize(v, &nv)); 5041 PetscCall(MatGetLocalSize(mat, &row, &col)); 5042 ndiag = PetscMin(row, col); 5043 PetscCheck(nv >= ndiag, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Nonconforming Mat and Vec. Vec local size %" PetscInt_FMT " < Mat local diagonal length %" PetscInt_FMT, nv, ndiag); 5044 } 5045 5046 PetscUseTypeMethod(mat, getdiagonal, v); 5047 PetscCall(PetscObjectStateIncrease((PetscObject)v)); 5048 PetscFunctionReturn(PETSC_SUCCESS); 5049 } 5050 5051 /*@ 5052 MatGetRowMin - Gets the minimum value (of the real part) of each 5053 row of the matrix 5054 5055 Logically Collective 5056 5057 Input Parameter: 5058 . mat - the matrix 5059 5060 Output Parameters: 5061 + v - the vector for storing the maximums 5062 - idx - the indices of the column found for each row (optional, pass `NULL` if not needed) 5063 5064 Level: intermediate 5065 5066 Note: 5067 The result of this call are the same as if one converted the matrix to dense format 5068 and found the minimum value in each row (i.e. the implicit zeros are counted as zeros). 5069 5070 This code is only implemented for a couple of matrix formats. 5071 5072 .seealso: [](ch_matrices), `Mat`, `MatGetDiagonal()`, `MatCreateSubMatrices()`, `MatCreateSubMatrix()`, `MatGetRowMaxAbs()`, `MatGetRowMinAbs()`, 5073 `MatGetRowMax()` 5074 @*/ 5075 PetscErrorCode MatGetRowMin(Mat mat, Vec v, PetscInt idx[]) 5076 { 5077 PetscFunctionBegin; 5078 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5079 PetscValidType(mat, 1); 5080 PetscValidHeaderSpecific(v, VEC_CLASSID, 2); 5081 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5082 5083 if (!mat->cmap->N) { 5084 PetscCall(VecSet(v, PETSC_MAX_REAL)); 5085 if (idx) { 5086 PetscInt i, m = mat->rmap->n; 5087 for (i = 0; i < m; i++) idx[i] = -1; 5088 } 5089 } else { 5090 MatCheckPreallocated(mat, 1); 5091 } 5092 PetscUseTypeMethod(mat, getrowmin, v, idx); 5093 PetscCall(PetscObjectStateIncrease((PetscObject)v)); 5094 PetscFunctionReturn(PETSC_SUCCESS); 5095 } 5096 5097 /*@ 5098 MatGetRowMinAbs - Gets the minimum value (in absolute value) of each 5099 row of the matrix 5100 5101 Logically Collective 5102 5103 Input Parameter: 5104 . mat - the matrix 5105 5106 Output Parameters: 5107 + v - the vector for storing the minimums 5108 - idx - the indices of the column found for each row (or `NULL` if not needed) 5109 5110 Level: intermediate 5111 5112 Notes: 5113 if a row is completely empty or has only 0.0 values, then the `idx` value for that 5114 row is 0 (the first column). 5115 5116 This code is only implemented for a couple of matrix formats. 5117 5118 .seealso: [](ch_matrices), `Mat`, `MatGetDiagonal()`, `MatCreateSubMatrices()`, `MatCreateSubMatrix()`, `MatGetRowMax()`, `MatGetRowMaxAbs()`, `MatGetRowMin()` 5119 @*/ 5120 PetscErrorCode MatGetRowMinAbs(Mat mat, Vec v, PetscInt idx[]) 5121 { 5122 PetscFunctionBegin; 5123 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5124 PetscValidType(mat, 1); 5125 PetscValidHeaderSpecific(v, VEC_CLASSID, 2); 5126 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5127 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 5128 5129 if (!mat->cmap->N) { 5130 PetscCall(VecSet(v, 0.0)); 5131 if (idx) { 5132 PetscInt i, m = mat->rmap->n; 5133 for (i = 0; i < m; i++) idx[i] = -1; 5134 } 5135 } else { 5136 MatCheckPreallocated(mat, 1); 5137 if (idx) PetscCall(PetscArrayzero(idx, mat->rmap->n)); 5138 PetscUseTypeMethod(mat, getrowminabs, v, idx); 5139 } 5140 PetscCall(PetscObjectStateIncrease((PetscObject)v)); 5141 PetscFunctionReturn(PETSC_SUCCESS); 5142 } 5143 5144 /*@ 5145 MatGetRowMax - Gets the maximum value (of the real part) of each 5146 row of the matrix 5147 5148 Logically Collective 5149 5150 Input Parameter: 5151 . mat - the matrix 5152 5153 Output Parameters: 5154 + v - the vector for storing the maximums 5155 - idx - the indices of the column found for each row (optional, otherwise pass `NULL`) 5156 5157 Level: intermediate 5158 5159 Notes: 5160 The result of this call are the same as if one converted the matrix to dense format 5161 and found the minimum value in each row (i.e. the implicit zeros are counted as zeros). 5162 5163 This code is only implemented for a couple of matrix formats. 5164 5165 .seealso: [](ch_matrices), `Mat`, `MatGetDiagonal()`, `MatCreateSubMatrices()`, `MatCreateSubMatrix()`, `MatGetRowMaxAbs()`, `MatGetRowMin()`, `MatGetRowMinAbs()` 5166 @*/ 5167 PetscErrorCode MatGetRowMax(Mat mat, Vec v, PetscInt idx[]) 5168 { 5169 PetscFunctionBegin; 5170 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5171 PetscValidType(mat, 1); 5172 PetscValidHeaderSpecific(v, VEC_CLASSID, 2); 5173 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5174 5175 if (!mat->cmap->N) { 5176 PetscCall(VecSet(v, PETSC_MIN_REAL)); 5177 if (idx) { 5178 PetscInt i, m = mat->rmap->n; 5179 for (i = 0; i < m; i++) idx[i] = -1; 5180 } 5181 } else { 5182 MatCheckPreallocated(mat, 1); 5183 PetscUseTypeMethod(mat, getrowmax, v, idx); 5184 } 5185 PetscCall(PetscObjectStateIncrease((PetscObject)v)); 5186 PetscFunctionReturn(PETSC_SUCCESS); 5187 } 5188 5189 /*@ 5190 MatGetRowMaxAbs - Gets the maximum value (in absolute value) of each 5191 row of the matrix 5192 5193 Logically Collective 5194 5195 Input Parameter: 5196 . mat - the matrix 5197 5198 Output Parameters: 5199 + v - the vector for storing the maximums 5200 - idx - the indices of the column found for each row (or `NULL` if not needed) 5201 5202 Level: intermediate 5203 5204 Notes: 5205 if a row is completely empty or has only 0.0 values, then the `idx` value for that 5206 row is 0 (the first column). 5207 5208 This code is only implemented for a couple of matrix formats. 5209 5210 .seealso: [](ch_matrices), `Mat`, `MatGetDiagonal()`, `MatCreateSubMatrices()`, `MatCreateSubMatrix()`, `MatGetRowSum()`, `MatGetRowMin()`, `MatGetRowMinAbs()` 5211 @*/ 5212 PetscErrorCode MatGetRowMaxAbs(Mat mat, Vec v, PetscInt idx[]) 5213 { 5214 PetscFunctionBegin; 5215 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5216 PetscValidType(mat, 1); 5217 PetscValidHeaderSpecific(v, VEC_CLASSID, 2); 5218 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5219 5220 if (!mat->cmap->N) { 5221 PetscCall(VecSet(v, 0.0)); 5222 if (idx) { 5223 PetscInt i, m = mat->rmap->n; 5224 for (i = 0; i < m; i++) idx[i] = -1; 5225 } 5226 } else { 5227 MatCheckPreallocated(mat, 1); 5228 if (idx) PetscCall(PetscArrayzero(idx, mat->rmap->n)); 5229 PetscUseTypeMethod(mat, getrowmaxabs, v, idx); 5230 } 5231 PetscCall(PetscObjectStateIncrease((PetscObject)v)); 5232 PetscFunctionReturn(PETSC_SUCCESS); 5233 } 5234 5235 /*@ 5236 MatGetRowSumAbs - Gets the sum value (in absolute value) of each row of the matrix 5237 5238 Logically Collective 5239 5240 Input Parameter: 5241 . mat - the matrix 5242 5243 Output Parameter: 5244 . v - the vector for storing the sum 5245 5246 Level: intermediate 5247 5248 This code is only implemented for a couple of matrix formats. 5249 5250 .seealso: [](ch_matrices), `Mat`, `MatGetDiagonal()`, `MatCreateSubMatrices()`, `MatCreateSubMatrix()`, `MatGetRowMax()`, `MatGetRowMin()`, `MatGetRowMinAbs()` 5251 @*/ 5252 PetscErrorCode MatGetRowSumAbs(Mat mat, Vec v) 5253 { 5254 PetscFunctionBegin; 5255 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5256 PetscValidType(mat, 1); 5257 PetscValidHeaderSpecific(v, VEC_CLASSID, 2); 5258 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5259 5260 if (!mat->cmap->N) { 5261 PetscCall(VecSet(v, 0.0)); 5262 } else { 5263 MatCheckPreallocated(mat, 1); 5264 PetscUseTypeMethod(mat, getrowsumabs, v); 5265 } 5266 PetscCall(PetscObjectStateIncrease((PetscObject)v)); 5267 PetscFunctionReturn(PETSC_SUCCESS); 5268 } 5269 5270 /*@ 5271 MatGetRowSum - Gets the sum of each row of the matrix 5272 5273 Logically or Neighborhood Collective 5274 5275 Input Parameter: 5276 . mat - the matrix 5277 5278 Output Parameter: 5279 . v - the vector for storing the sum of rows 5280 5281 Level: intermediate 5282 5283 Note: 5284 This code is slow since it is not currently specialized for different formats 5285 5286 .seealso: [](ch_matrices), `Mat`, `MatGetDiagonal()`, `MatCreateSubMatrices()`, `MatCreateSubMatrix()`, `MatGetRowMax()`, `MatGetRowMin()`, `MatGetRowMaxAbs()`, `MatGetRowMinAbs()`, `MatGetRowSumAbs()` 5287 @*/ 5288 PetscErrorCode MatGetRowSum(Mat mat, Vec v) 5289 { 5290 Vec ones; 5291 5292 PetscFunctionBegin; 5293 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5294 PetscValidType(mat, 1); 5295 PetscValidHeaderSpecific(v, VEC_CLASSID, 2); 5296 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5297 MatCheckPreallocated(mat, 1); 5298 PetscCall(MatCreateVecs(mat, &ones, NULL)); 5299 PetscCall(VecSet(ones, 1.)); 5300 PetscCall(MatMult(mat, ones, v)); 5301 PetscCall(VecDestroy(&ones)); 5302 PetscFunctionReturn(PETSC_SUCCESS); 5303 } 5304 5305 /*@ 5306 MatTransposeSetPrecursor - Set the matrix from which the second matrix will receive numerical transpose data with a call to `MatTranspose`(A,`MAT_REUSE_MATRIX`,&B) 5307 when B was not obtained with `MatTranspose`(A,`MAT_INITIAL_MATRIX`,&B) 5308 5309 Collective 5310 5311 Input Parameter: 5312 . mat - the matrix to provide the transpose 5313 5314 Output Parameter: 5315 . B - the matrix to contain the transpose; it MUST have the nonzero structure of the transpose of A or the code will crash or generate incorrect results 5316 5317 Level: advanced 5318 5319 Note: 5320 Normally the use of `MatTranspose`(A, `MAT_REUSE_MATRIX`, &B) requires that `B` was obtained with a call to `MatTranspose`(A, `MAT_INITIAL_MATRIX`, &B). This 5321 routine allows bypassing that call. 5322 5323 .seealso: [](ch_matrices), `Mat`, `MatTransposeSymbolic()`, `MatTranspose()`, `MatMultTranspose()`, `MatMultTransposeAdd()`, `MatIsTranspose()`, `MatReuse`, `MAT_INITIAL_MATRIX`, `MAT_REUSE_MATRIX`, `MAT_INPLACE_MATRIX` 5324 @*/ 5325 PetscErrorCode MatTransposeSetPrecursor(Mat mat, Mat B) 5326 { 5327 MatParentState *rb = NULL; 5328 5329 PetscFunctionBegin; 5330 PetscCall(PetscNew(&rb)); 5331 rb->id = ((PetscObject)mat)->id; 5332 rb->state = 0; 5333 PetscCall(MatGetNonzeroState(mat, &rb->nonzerostate)); 5334 PetscCall(PetscObjectContainerCompose((PetscObject)B, "MatTransposeParent", rb, PetscCtxDestroyDefault)); 5335 PetscFunctionReturn(PETSC_SUCCESS); 5336 } 5337 5338 /*@ 5339 MatTranspose - Computes the transpose of a matrix, either in-place or out-of-place. 5340 5341 Collective 5342 5343 Input Parameters: 5344 + mat - the matrix to transpose 5345 - reuse - either `MAT_INITIAL_MATRIX`, `MAT_REUSE_MATRIX`, or `MAT_INPLACE_MATRIX` 5346 5347 Output Parameter: 5348 . B - the transpose of the matrix 5349 5350 Level: intermediate 5351 5352 Notes: 5353 If you use `MAT_INPLACE_MATRIX` then you must pass in `&mat` for `B` 5354 5355 `MAT_REUSE_MATRIX` uses the `B` matrix obtained from a previous call to this function with `MAT_INITIAL_MATRIX` to store the transpose. If you already have a matrix to contain the 5356 transpose, call `MatTransposeSetPrecursor(mat, B)` before calling this routine. 5357 5358 If the nonzero structure of `mat` changed from the previous call to this function with the same matrices an error will be generated for some matrix types. 5359 5360 Consider using `MatCreateTranspose()` instead if you only need a matrix that behaves like the transpose but don't need the storage to be changed. 5361 For example, the result of `MatCreateTranspose()` will compute the transpose of the given matrix times a vector for matrix-vector products computed with `MatMult()`. 5362 5363 If `mat` is unchanged from the last call this function returns immediately without recomputing the result 5364 5365 If you only need the symbolic transpose of a matrix, and not the numerical values, use `MatTransposeSymbolic()` 5366 5367 .seealso: [](ch_matrices), `Mat`, `MatTransposeSetPrecursor()`, `MatMultTranspose()`, `MatMultTransposeAdd()`, `MatIsTranspose()`, `MatReuse`, `MAT_INITIAL_MATRIX`, `MAT_REUSE_MATRIX`, `MAT_INPLACE_MATRIX`, 5368 `MatTransposeSymbolic()`, `MatCreateTranspose()` 5369 @*/ 5370 PetscErrorCode MatTranspose(Mat mat, MatReuse reuse, Mat *B) 5371 { 5372 PetscContainer rB = NULL; 5373 MatParentState *rb = NULL; 5374 5375 PetscFunctionBegin; 5376 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5377 PetscValidType(mat, 1); 5378 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5379 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 5380 PetscCheck(reuse != MAT_INPLACE_MATRIX || mat == *B, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "MAT_INPLACE_MATRIX requires last matrix to match first"); 5381 PetscCheck(reuse != MAT_REUSE_MATRIX || mat != *B, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Perhaps you mean MAT_INPLACE_MATRIX"); 5382 MatCheckPreallocated(mat, 1); 5383 if (reuse == MAT_REUSE_MATRIX) { 5384 PetscCall(PetscObjectQuery((PetscObject)*B, "MatTransposeParent", (PetscObject *)&rB)); 5385 PetscCheck(rB, PetscObjectComm((PetscObject)*B), PETSC_ERR_ARG_WRONG, "Reuse matrix used was not generated from call to MatTranspose(). Suggest MatTransposeSetPrecursor()."); 5386 PetscCall(PetscContainerGetPointer(rB, (void **)&rb)); 5387 PetscCheck(rb->id == ((PetscObject)mat)->id, PetscObjectComm((PetscObject)*B), PETSC_ERR_ARG_WRONG, "Reuse matrix used was not generated from input matrix"); 5388 if (rb->state == ((PetscObject)mat)->state) PetscFunctionReturn(PETSC_SUCCESS); 5389 } 5390 5391 PetscCall(PetscLogEventBegin(MAT_Transpose, mat, 0, 0, 0)); 5392 if (reuse != MAT_INPLACE_MATRIX || mat->symmetric != PETSC_BOOL3_TRUE) { 5393 PetscUseTypeMethod(mat, transpose, reuse, B); 5394 PetscCall(PetscObjectStateIncrease((PetscObject)*B)); 5395 } 5396 PetscCall(PetscLogEventEnd(MAT_Transpose, mat, 0, 0, 0)); 5397 5398 if (reuse == MAT_INITIAL_MATRIX) PetscCall(MatTransposeSetPrecursor(mat, *B)); 5399 if (reuse != MAT_INPLACE_MATRIX) { 5400 PetscCall(PetscObjectQuery((PetscObject)*B, "MatTransposeParent", (PetscObject *)&rB)); 5401 PetscCall(PetscContainerGetPointer(rB, (void **)&rb)); 5402 rb->state = ((PetscObject)mat)->state; 5403 rb->nonzerostate = mat->nonzerostate; 5404 } 5405 PetscFunctionReturn(PETSC_SUCCESS); 5406 } 5407 5408 /*@ 5409 MatTransposeSymbolic - Computes the symbolic part of the transpose of a matrix. 5410 5411 Collective 5412 5413 Input Parameter: 5414 . A - the matrix to transpose 5415 5416 Output Parameter: 5417 . B - the transpose. This is a complete matrix but the numerical portion is invalid. One can call `MatTranspose`(A,`MAT_REUSE_MATRIX`,&B) to compute the 5418 numerical portion. 5419 5420 Level: intermediate 5421 5422 Note: 5423 This is not supported for many matrix types, use `MatTranspose()` in those cases 5424 5425 .seealso: [](ch_matrices), `Mat`, `MatTransposeSetPrecursor()`, `MatTranspose()`, `MatMultTranspose()`, `MatMultTransposeAdd()`, `MatIsTranspose()`, `MatReuse`, `MAT_INITIAL_MATRIX`, `MAT_REUSE_MATRIX`, `MAT_INPLACE_MATRIX` 5426 @*/ 5427 PetscErrorCode MatTransposeSymbolic(Mat A, Mat *B) 5428 { 5429 PetscFunctionBegin; 5430 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 5431 PetscValidType(A, 1); 5432 PetscCheck(A->assembled, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5433 PetscCheck(!A->factortype, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 5434 PetscCall(PetscLogEventBegin(MAT_Transpose, A, 0, 0, 0)); 5435 PetscUseTypeMethod(A, transposesymbolic, B); 5436 PetscCall(PetscLogEventEnd(MAT_Transpose, A, 0, 0, 0)); 5437 5438 PetscCall(MatTransposeSetPrecursor(A, *B)); 5439 PetscFunctionReturn(PETSC_SUCCESS); 5440 } 5441 5442 PetscErrorCode MatTransposeCheckNonzeroState_Private(Mat A, Mat B) 5443 { 5444 PetscContainer rB; 5445 MatParentState *rb; 5446 5447 PetscFunctionBegin; 5448 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 5449 PetscValidType(A, 1); 5450 PetscCheck(A->assembled, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5451 PetscCheck(!A->factortype, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 5452 PetscCall(PetscObjectQuery((PetscObject)B, "MatTransposeParent", (PetscObject *)&rB)); 5453 PetscCheck(rB, PetscObjectComm((PetscObject)B), PETSC_ERR_ARG_WRONG, "Reuse matrix used was not generated from call to MatTranspose()"); 5454 PetscCall(PetscContainerGetPointer(rB, (void **)&rb)); 5455 PetscCheck(rb->id == ((PetscObject)A)->id, PetscObjectComm((PetscObject)B), PETSC_ERR_ARG_WRONG, "Reuse matrix used was not generated from input matrix"); 5456 PetscCheck(rb->nonzerostate == A->nonzerostate, PetscObjectComm((PetscObject)B), PETSC_ERR_ARG_WRONGSTATE, "Reuse matrix has changed nonzero structure"); 5457 PetscFunctionReturn(PETSC_SUCCESS); 5458 } 5459 5460 /*@ 5461 MatIsTranspose - Test whether a matrix is another one's transpose, 5462 or its own, in which case it tests symmetry. 5463 5464 Collective 5465 5466 Input Parameters: 5467 + A - the matrix to test 5468 . B - the matrix to test against, this can equal the first parameter 5469 - tol - tolerance, differences between entries smaller than this are counted as zero 5470 5471 Output Parameter: 5472 . flg - the result 5473 5474 Level: intermediate 5475 5476 Notes: 5477 The sequential algorithm has a running time of the order of the number of nonzeros; the parallel 5478 test involves parallel copies of the block off-diagonal parts of the matrix. 5479 5480 .seealso: [](ch_matrices), `Mat`, `MatTranspose()`, `MatIsSymmetric()`, `MatIsHermitian()` 5481 @*/ 5482 PetscErrorCode MatIsTranspose(Mat A, Mat B, PetscReal tol, PetscBool *flg) 5483 { 5484 PetscErrorCode (*f)(Mat, Mat, PetscReal, PetscBool *), (*g)(Mat, Mat, PetscReal, PetscBool *); 5485 5486 PetscFunctionBegin; 5487 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 5488 PetscValidHeaderSpecific(B, MAT_CLASSID, 2); 5489 PetscAssertPointer(flg, 4); 5490 PetscCall(PetscObjectQueryFunction((PetscObject)A, "MatIsTranspose_C", &f)); 5491 PetscCall(PetscObjectQueryFunction((PetscObject)B, "MatIsTranspose_C", &g)); 5492 *flg = PETSC_FALSE; 5493 if (f && g) { 5494 PetscCheck(f == g, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_NOTSAMETYPE, "Matrices do not have the same comparator for symmetry test"); 5495 PetscCall((*f)(A, B, tol, flg)); 5496 } else { 5497 MatType mattype; 5498 5499 PetscCall(MatGetType(f ? B : A, &mattype)); 5500 SETERRQ(PETSC_COMM_SELF, PETSC_ERR_SUP, "Matrix of type %s does not support checking for transpose", mattype); 5501 } 5502 PetscFunctionReturn(PETSC_SUCCESS); 5503 } 5504 5505 /*@ 5506 MatHermitianTranspose - Computes an in-place or out-of-place Hermitian transpose of a matrix in complex conjugate. 5507 5508 Collective 5509 5510 Input Parameters: 5511 + mat - the matrix to transpose and complex conjugate 5512 - reuse - either `MAT_INITIAL_MATRIX`, `MAT_REUSE_MATRIX`, or `MAT_INPLACE_MATRIX` 5513 5514 Output Parameter: 5515 . B - the Hermitian transpose 5516 5517 Level: intermediate 5518 5519 .seealso: [](ch_matrices), `Mat`, `MatTranspose()`, `MatMultTranspose()`, `MatMultTransposeAdd()`, `MatIsTranspose()`, `MatReuse` 5520 @*/ 5521 PetscErrorCode MatHermitianTranspose(Mat mat, MatReuse reuse, Mat *B) 5522 { 5523 PetscFunctionBegin; 5524 PetscCall(MatTranspose(mat, reuse, B)); 5525 #if defined(PETSC_USE_COMPLEX) 5526 PetscCall(MatConjugate(*B)); 5527 #endif 5528 PetscFunctionReturn(PETSC_SUCCESS); 5529 } 5530 5531 /*@ 5532 MatIsHermitianTranspose - Test whether a matrix is another one's Hermitian transpose, 5533 5534 Collective 5535 5536 Input Parameters: 5537 + A - the matrix to test 5538 . B - the matrix to test against, this can equal the first parameter 5539 - tol - tolerance, differences between entries smaller than this are counted as zero 5540 5541 Output Parameter: 5542 . flg - the result 5543 5544 Level: intermediate 5545 5546 Notes: 5547 Only available for `MATAIJ` matrices. 5548 5549 The sequential algorithm 5550 has a running time of the order of the number of nonzeros; the parallel 5551 test involves parallel copies of the block off-diagonal parts of the matrix. 5552 5553 .seealso: [](ch_matrices), `Mat`, `MatTranspose()`, `MatIsSymmetric()`, `MatIsHermitian()`, `MatIsTranspose()` 5554 @*/ 5555 PetscErrorCode MatIsHermitianTranspose(Mat A, Mat B, PetscReal tol, PetscBool *flg) 5556 { 5557 PetscErrorCode (*f)(Mat, Mat, PetscReal, PetscBool *), (*g)(Mat, Mat, PetscReal, PetscBool *); 5558 5559 PetscFunctionBegin; 5560 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 5561 PetscValidHeaderSpecific(B, MAT_CLASSID, 2); 5562 PetscAssertPointer(flg, 4); 5563 PetscCall(PetscObjectQueryFunction((PetscObject)A, "MatIsHermitianTranspose_C", &f)); 5564 PetscCall(PetscObjectQueryFunction((PetscObject)B, "MatIsHermitianTranspose_C", &g)); 5565 if (f && g) { 5566 PetscCheck(f == g, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_NOTSAMETYPE, "Matrices do not have the same comparator for Hermitian test"); 5567 PetscCall((*f)(A, B, tol, flg)); 5568 } else { 5569 MatType mattype; 5570 5571 PetscCall(MatGetType(f ? B : A, &mattype)); 5572 SETERRQ(PETSC_COMM_SELF, PETSC_ERR_SUP, "Matrix of type %s does not support checking for Hermitian transpose", mattype); 5573 } 5574 PetscFunctionReturn(PETSC_SUCCESS); 5575 } 5576 5577 /*@ 5578 MatPermute - Creates a new matrix with rows and columns permuted from the 5579 original. 5580 5581 Collective 5582 5583 Input Parameters: 5584 + mat - the matrix to permute 5585 . row - row permutation, each processor supplies only the permutation for its rows 5586 - col - column permutation, each processor supplies only the permutation for its columns 5587 5588 Output Parameter: 5589 . B - the permuted matrix 5590 5591 Level: advanced 5592 5593 Note: 5594 The index sets map from row/col of permuted matrix to row/col of original matrix. 5595 The index sets should be on the same communicator as mat and have the same local sizes. 5596 5597 Developer Note: 5598 If you want to implement `MatPermute()` for a matrix type, and your approach doesn't 5599 exploit the fact that row and col are permutations, consider implementing the 5600 more general `MatCreateSubMatrix()` instead. 5601 5602 .seealso: [](ch_matrices), `Mat`, `MatGetOrdering()`, `ISAllGather()`, `MatCreateSubMatrix()` 5603 @*/ 5604 PetscErrorCode MatPermute(Mat mat, IS row, IS col, Mat *B) 5605 { 5606 PetscFunctionBegin; 5607 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5608 PetscValidType(mat, 1); 5609 PetscValidHeaderSpecific(row, IS_CLASSID, 2); 5610 PetscValidHeaderSpecific(col, IS_CLASSID, 3); 5611 PetscAssertPointer(B, 4); 5612 PetscCheckSameComm(mat, 1, row, 2); 5613 if (row != col) PetscCheckSameComm(row, 2, col, 3); 5614 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5615 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 5616 PetscCheck(mat->ops->permute || mat->ops->createsubmatrix, PETSC_COMM_SELF, PETSC_ERR_SUP, "MatPermute not available for Mat type %s", ((PetscObject)mat)->type_name); 5617 MatCheckPreallocated(mat, 1); 5618 5619 if (mat->ops->permute) { 5620 PetscUseTypeMethod(mat, permute, row, col, B); 5621 PetscCall(PetscObjectStateIncrease((PetscObject)*B)); 5622 } else { 5623 PetscCall(MatCreateSubMatrix(mat, row, col, MAT_INITIAL_MATRIX, B)); 5624 } 5625 PetscFunctionReturn(PETSC_SUCCESS); 5626 } 5627 5628 /*@ 5629 MatEqual - Compares two matrices. 5630 5631 Collective 5632 5633 Input Parameters: 5634 + A - the first matrix 5635 - B - the second matrix 5636 5637 Output Parameter: 5638 . flg - `PETSC_TRUE` if the matrices are equal; `PETSC_FALSE` otherwise. 5639 5640 Level: intermediate 5641 5642 Note: 5643 If either of the matrix is "matrix-free", meaning the matrix entries are not stored explicitly then equality is determined by comparing 5644 the results of several matrix-vector product using randomly created vectors, see `MatMultEqual()`. 5645 5646 .seealso: [](ch_matrices), `Mat`, `MatMultEqual()` 5647 @*/ 5648 PetscErrorCode MatEqual(Mat A, Mat B, PetscBool *flg) 5649 { 5650 PetscFunctionBegin; 5651 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 5652 PetscValidHeaderSpecific(B, MAT_CLASSID, 2); 5653 PetscValidType(A, 1); 5654 PetscValidType(B, 2); 5655 PetscAssertPointer(flg, 3); 5656 PetscCheckSameComm(A, 1, B, 2); 5657 MatCheckPreallocated(A, 1); 5658 MatCheckPreallocated(B, 2); 5659 PetscCheck(A->assembled, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5660 PetscCheck(B->assembled, PetscObjectComm((PetscObject)B), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5661 PetscCheck(A->rmap->N == B->rmap->N && A->cmap->N == B->cmap->N, PetscObjectComm((PetscObject)A), PETSC_ERR_ARG_SIZ, "Mat A,Mat B: global dim %" PetscInt_FMT " %" PetscInt_FMT " %" PetscInt_FMT " %" PetscInt_FMT, A->rmap->N, B->rmap->N, A->cmap->N, 5662 B->cmap->N); 5663 if (A->ops->equal && A->ops->equal == B->ops->equal) { 5664 PetscUseTypeMethod(A, equal, B, flg); 5665 } else { 5666 PetscCall(MatMultEqual(A, B, 10, flg)); 5667 } 5668 PetscFunctionReturn(PETSC_SUCCESS); 5669 } 5670 5671 /*@ 5672 MatDiagonalScale - Scales a matrix on the left and right by diagonal 5673 matrices that are stored as vectors. Either of the two scaling 5674 matrices can be `NULL`. 5675 5676 Collective 5677 5678 Input Parameters: 5679 + mat - the matrix to be scaled 5680 . l - the left scaling vector (or `NULL`) 5681 - r - the right scaling vector (or `NULL`) 5682 5683 Level: intermediate 5684 5685 Note: 5686 `MatDiagonalScale()` computes $A = LAR$, where 5687 L = a diagonal matrix (stored as a vector), R = a diagonal matrix (stored as a vector) 5688 The L scales the rows of the matrix, the R scales the columns of the matrix. 5689 5690 .seealso: [](ch_matrices), `Mat`, `MatScale()`, `MatShift()`, `MatDiagonalSet()` 5691 @*/ 5692 PetscErrorCode MatDiagonalScale(Mat mat, Vec l, Vec r) 5693 { 5694 PetscFunctionBegin; 5695 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5696 PetscValidType(mat, 1); 5697 if (l) { 5698 PetscValidHeaderSpecific(l, VEC_CLASSID, 2); 5699 PetscCheckSameComm(mat, 1, l, 2); 5700 } 5701 if (r) { 5702 PetscValidHeaderSpecific(r, VEC_CLASSID, 3); 5703 PetscCheckSameComm(mat, 1, r, 3); 5704 } 5705 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5706 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 5707 MatCheckPreallocated(mat, 1); 5708 if (!l && !r) PetscFunctionReturn(PETSC_SUCCESS); 5709 5710 PetscCall(PetscLogEventBegin(MAT_Scale, mat, 0, 0, 0)); 5711 PetscUseTypeMethod(mat, diagonalscale, l, r); 5712 PetscCall(PetscLogEventEnd(MAT_Scale, mat, 0, 0, 0)); 5713 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 5714 if (l != r) mat->symmetric = PETSC_BOOL3_FALSE; 5715 PetscFunctionReturn(PETSC_SUCCESS); 5716 } 5717 5718 /*@ 5719 MatScale - Scales all elements of a matrix by a given number. 5720 5721 Logically Collective 5722 5723 Input Parameters: 5724 + mat - the matrix to be scaled 5725 - a - the scaling value 5726 5727 Level: intermediate 5728 5729 .seealso: [](ch_matrices), `Mat`, `MatDiagonalScale()` 5730 @*/ 5731 PetscErrorCode MatScale(Mat mat, PetscScalar a) 5732 { 5733 PetscFunctionBegin; 5734 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5735 PetscValidType(mat, 1); 5736 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5737 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 5738 PetscValidLogicalCollectiveScalar(mat, a, 2); 5739 MatCheckPreallocated(mat, 1); 5740 5741 PetscCall(PetscLogEventBegin(MAT_Scale, mat, 0, 0, 0)); 5742 if (a != (PetscScalar)1.0) { 5743 PetscUseTypeMethod(mat, scale, a); 5744 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 5745 } 5746 PetscCall(PetscLogEventEnd(MAT_Scale, mat, 0, 0, 0)); 5747 PetscFunctionReturn(PETSC_SUCCESS); 5748 } 5749 5750 /*@ 5751 MatNorm - Calculates various norms of a matrix. 5752 5753 Collective 5754 5755 Input Parameters: 5756 + mat - the matrix 5757 - type - the type of norm, `NORM_1`, `NORM_FROBENIUS`, `NORM_INFINITY` 5758 5759 Output Parameter: 5760 . nrm - the resulting norm 5761 5762 Level: intermediate 5763 5764 .seealso: [](ch_matrices), `Mat` 5765 @*/ 5766 PetscErrorCode MatNorm(Mat mat, NormType type, PetscReal *nrm) 5767 { 5768 PetscFunctionBegin; 5769 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5770 PetscValidType(mat, 1); 5771 PetscAssertPointer(nrm, 3); 5772 5773 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 5774 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 5775 MatCheckPreallocated(mat, 1); 5776 5777 PetscUseTypeMethod(mat, norm, type, nrm); 5778 PetscFunctionReturn(PETSC_SUCCESS); 5779 } 5780 5781 /* 5782 This variable is used to prevent counting of MatAssemblyBegin() that 5783 are called from within a MatAssemblyEnd(). 5784 */ 5785 static PetscInt MatAssemblyEnd_InUse = 0; 5786 /*@ 5787 MatAssemblyBegin - Begins assembling the matrix. This routine should 5788 be called after completing all calls to `MatSetValues()`. 5789 5790 Collective 5791 5792 Input Parameters: 5793 + mat - the matrix 5794 - type - type of assembly, either `MAT_FLUSH_ASSEMBLY` or `MAT_FINAL_ASSEMBLY` 5795 5796 Level: beginner 5797 5798 Notes: 5799 `MatSetValues()` generally caches the values that belong to other MPI processes. The matrix is ready to 5800 use only after `MatAssemblyBegin()` and `MatAssemblyEnd()` have been called. 5801 5802 Use `MAT_FLUSH_ASSEMBLY` when switching between `ADD_VALUES` and `INSERT_VALUES` 5803 in `MatSetValues()`; use `MAT_FINAL_ASSEMBLY` for the final assembly before 5804 using the matrix. 5805 5806 ALL processes that share a matrix MUST call `MatAssemblyBegin()` and `MatAssemblyEnd()` the SAME NUMBER of times, and each time with the 5807 same flag of `MAT_FLUSH_ASSEMBLY` or `MAT_FINAL_ASSEMBLY` for all processes. Thus you CANNOT locally change from `ADD_VALUES` to `INSERT_VALUES`, that is 5808 a global collective operation requiring all processes that share the matrix. 5809 5810 Space for preallocated nonzeros that is not filled by a call to `MatSetValues()` or a related routine are compressed 5811 out by assembly. If you intend to use that extra space on a subsequent assembly, be sure to insert explicit zeros 5812 before `MAT_FINAL_ASSEMBLY` so the space is not compressed out. 5813 5814 .seealso: [](ch_matrices), `Mat`, `MatAssemblyEnd()`, `MatSetValues()`, `MatAssembled()` 5815 @*/ 5816 PetscErrorCode MatAssemblyBegin(Mat mat, MatAssemblyType type) 5817 { 5818 PetscFunctionBegin; 5819 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5820 PetscValidType(mat, 1); 5821 MatCheckPreallocated(mat, 1); 5822 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix. Did you forget to call MatSetUnfactored()?"); 5823 if (mat->assembled) { 5824 mat->was_assembled = PETSC_TRUE; 5825 mat->assembled = PETSC_FALSE; 5826 } 5827 5828 if (!MatAssemblyEnd_InUse) { 5829 PetscCall(PetscLogEventBegin(MAT_AssemblyBegin, mat, 0, 0, 0)); 5830 PetscTryTypeMethod(mat, assemblybegin, type); 5831 PetscCall(PetscLogEventEnd(MAT_AssemblyBegin, mat, 0, 0, 0)); 5832 } else PetscTryTypeMethod(mat, assemblybegin, type); 5833 PetscFunctionReturn(PETSC_SUCCESS); 5834 } 5835 5836 /*@ 5837 MatAssembled - Indicates if a matrix has been assembled and is ready for 5838 use; for example, in matrix-vector product. 5839 5840 Not Collective 5841 5842 Input Parameter: 5843 . mat - the matrix 5844 5845 Output Parameter: 5846 . assembled - `PETSC_TRUE` or `PETSC_FALSE` 5847 5848 Level: advanced 5849 5850 .seealso: [](ch_matrices), `Mat`, `MatAssemblyEnd()`, `MatSetValues()`, `MatAssemblyBegin()` 5851 @*/ 5852 PetscErrorCode MatAssembled(Mat mat, PetscBool *assembled) 5853 { 5854 PetscFunctionBegin; 5855 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5856 PetscAssertPointer(assembled, 2); 5857 *assembled = mat->assembled; 5858 PetscFunctionReturn(PETSC_SUCCESS); 5859 } 5860 5861 /*@ 5862 MatAssemblyEnd - Completes assembling the matrix. This routine should 5863 be called after `MatAssemblyBegin()`. 5864 5865 Collective 5866 5867 Input Parameters: 5868 + mat - the matrix 5869 - type - type of assembly, either `MAT_FLUSH_ASSEMBLY` or `MAT_FINAL_ASSEMBLY` 5870 5871 Options Database Keys: 5872 + -mat_view ::ascii_info - Prints info on matrix at conclusion of `MatAssemblyEnd()` 5873 . -mat_view ::ascii_info_detail - Prints more detailed info 5874 . -mat_view - Prints matrix in ASCII format 5875 . -mat_view ::ascii_matlab - Prints matrix in MATLAB format 5876 . -mat_view draw - draws nonzero structure of matrix, using `MatView()` and `PetscDrawOpenX()`. 5877 . -display <name> - Sets display name (default is host) 5878 . -draw_pause <sec> - Sets number of seconds to pause after display 5879 . -mat_view socket - Sends matrix to socket, can be accessed from MATLAB (See [Using MATLAB with PETSc](ch_matlab)) 5880 . -viewer_socket_machine <machine> - Machine to use for socket 5881 . -viewer_socket_port <port> - Port number to use for socket 5882 - -mat_view binary:filename[:append] - Save matrix to file in binary format 5883 5884 Level: beginner 5885 5886 .seealso: [](ch_matrices), `Mat`, `MatAssemblyBegin()`, `MatSetValues()`, `PetscDrawOpenX()`, `PetscDrawCreate()`, `MatView()`, `MatAssembled()`, `PetscViewerSocketOpen()` 5887 @*/ 5888 PetscErrorCode MatAssemblyEnd(Mat mat, MatAssemblyType type) 5889 { 5890 static PetscInt inassm = 0; 5891 PetscBool flg = PETSC_FALSE; 5892 5893 PetscFunctionBegin; 5894 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 5895 PetscValidType(mat, 1); 5896 5897 inassm++; 5898 MatAssemblyEnd_InUse++; 5899 if (MatAssemblyEnd_InUse == 1) { /* Do the logging only the first time through */ 5900 PetscCall(PetscLogEventBegin(MAT_AssemblyEnd, mat, 0, 0, 0)); 5901 PetscTryTypeMethod(mat, assemblyend, type); 5902 PetscCall(PetscLogEventEnd(MAT_AssemblyEnd, mat, 0, 0, 0)); 5903 } else PetscTryTypeMethod(mat, assemblyend, type); 5904 5905 /* Flush assembly is not a true assembly */ 5906 if (type != MAT_FLUSH_ASSEMBLY) { 5907 if (mat->num_ass) { 5908 if (!mat->symmetry_eternal) { 5909 mat->symmetric = PETSC_BOOL3_UNKNOWN; 5910 mat->hermitian = PETSC_BOOL3_UNKNOWN; 5911 } 5912 if (!mat->structural_symmetry_eternal && mat->ass_nonzerostate != mat->nonzerostate) mat->structurally_symmetric = PETSC_BOOL3_UNKNOWN; 5913 if (!mat->spd_eternal) mat->spd = PETSC_BOOL3_UNKNOWN; 5914 } 5915 mat->num_ass++; 5916 mat->assembled = PETSC_TRUE; 5917 mat->ass_nonzerostate = mat->nonzerostate; 5918 } 5919 5920 mat->insertmode = NOT_SET_VALUES; 5921 MatAssemblyEnd_InUse--; 5922 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 5923 if (inassm == 1 && type != MAT_FLUSH_ASSEMBLY) { 5924 PetscCall(MatViewFromOptions(mat, NULL, "-mat_view")); 5925 5926 if (mat->checksymmetryonassembly) { 5927 PetscCall(MatIsSymmetric(mat, mat->checksymmetrytol, &flg)); 5928 if (flg) { 5929 PetscCall(PetscPrintf(PetscObjectComm((PetscObject)mat), "Matrix is symmetric (tolerance %g)\n", (double)mat->checksymmetrytol)); 5930 } else { 5931 PetscCall(PetscPrintf(PetscObjectComm((PetscObject)mat), "Matrix is not symmetric (tolerance %g)\n", (double)mat->checksymmetrytol)); 5932 } 5933 } 5934 if (mat->nullsp && mat->checknullspaceonassembly) PetscCall(MatNullSpaceTest(mat->nullsp, mat, NULL)); 5935 } 5936 inassm--; 5937 PetscFunctionReturn(PETSC_SUCCESS); 5938 } 5939 5940 // PetscClangLinter pragma disable: -fdoc-section-header-unknown 5941 /*@ 5942 MatSetOption - Sets a parameter option for a matrix. Some options 5943 may be specific to certain storage formats. Some options 5944 determine how values will be inserted (or added). Sorted, 5945 row-oriented input will generally assemble the fastest. The default 5946 is row-oriented. 5947 5948 Logically Collective for certain operations, such as `MAT_SPD`, not collective for `MAT_ROW_ORIENTED`, see `MatOption` 5949 5950 Input Parameters: 5951 + mat - the matrix 5952 . op - the option, one of those listed below (and possibly others), 5953 - flg - turn the option on (`PETSC_TRUE`) or off (`PETSC_FALSE`) 5954 5955 Options Describing Matrix Structure: 5956 + `MAT_SPD` - symmetric positive definite 5957 . `MAT_SYMMETRIC` - symmetric in terms of both structure and value 5958 . `MAT_HERMITIAN` - transpose is the complex conjugation 5959 . `MAT_STRUCTURALLY_SYMMETRIC` - symmetric nonzero structure 5960 . `MAT_SYMMETRY_ETERNAL` - indicates the symmetry (or Hermitian structure) or its absence will persist through any changes to the matrix 5961 . `MAT_STRUCTURAL_SYMMETRY_ETERNAL` - indicates the structural symmetry or its absence will persist through any changes to the matrix 5962 . `MAT_SPD_ETERNAL` - indicates the value of `MAT_SPD` (true or false) will persist through any changes to the matrix 5963 5964 These are not really options of the matrix, they are knowledge about the structure of the matrix that users may provide so that they 5965 do not need to be computed (usually at a high cost) 5966 5967 Options For Use with `MatSetValues()`: 5968 Insert a logically dense subblock, which can be 5969 . `MAT_ROW_ORIENTED` - row-oriented (default) 5970 5971 These options reflect the data you pass in with `MatSetValues()`; it has 5972 nothing to do with how the data is stored internally in the matrix 5973 data structure. 5974 5975 When (re)assembling a matrix, we can restrict the input for 5976 efficiency/debugging purposes. These options include 5977 . `MAT_NEW_NONZERO_LOCATIONS` - additional insertions will be allowed if they generate a new nonzero (slow) 5978 . `MAT_FORCE_DIAGONAL_ENTRIES` - forces diagonal entries to be allocated 5979 . `MAT_IGNORE_OFF_PROC_ENTRIES` - drops off-processor entries 5980 . `MAT_NEW_NONZERO_LOCATION_ERR` - generates an error for new matrix entry 5981 . `MAT_USE_HASH_TABLE` - uses a hash table to speed up matrix assembly 5982 . `MAT_NO_OFF_PROC_ENTRIES` - you know each process will only set values for its own rows, will generate an error if 5983 any process sets values for another process. This avoids all reductions in the MatAssembly routines and thus improves 5984 performance for very large process counts. 5985 - `MAT_SUBSET_OFF_PROC_ENTRIES` - you know that the first assembly after setting this flag will set a superset 5986 of the off-process entries required for all subsequent assemblies. This avoids a rendezvous step in the MatAssembly 5987 functions, instead sending only neighbor messages. 5988 5989 Level: intermediate 5990 5991 Notes: 5992 Except for `MAT_UNUSED_NONZERO_LOCATION_ERR` and `MAT_ROW_ORIENTED` all processes that share the matrix must pass the same value in flg! 5993 5994 Some options are relevant only for particular matrix types and 5995 are thus ignored by others. Other options are not supported by 5996 certain matrix types and will generate an error message if set. 5997 5998 If using Fortran to compute a matrix, one may need to 5999 use the column-oriented option (or convert to the row-oriented 6000 format). 6001 6002 `MAT_NEW_NONZERO_LOCATIONS` set to `PETSC_FALSE` indicates that any add or insertion 6003 that would generate a new entry in the nonzero structure is instead 6004 ignored. Thus, if memory has not already been allocated for this particular 6005 data, then the insertion is ignored. For dense matrices, in which 6006 the entire array is allocated, no entries are ever ignored. 6007 Set after the first `MatAssemblyEnd()`. If this option is set, then the `MatAssemblyBegin()`/`MatAssemblyEnd()` processes has one less global reduction 6008 6009 `MAT_NEW_NONZERO_LOCATION_ERR` set to PETSC_TRUE indicates that any add or insertion 6010 that would generate a new entry in the nonzero structure instead produces 6011 an error. (Currently supported for `MATAIJ` and `MATBAIJ` formats only.) If this option is set, then the `MatAssemblyBegin()`/`MatAssemblyEnd()` processes has one less global reduction 6012 6013 `MAT_NEW_NONZERO_ALLOCATION_ERR` set to `PETSC_TRUE` indicates that any add or insertion 6014 that would generate a new entry that has not been preallocated will 6015 instead produce an error. (Currently supported for `MATAIJ` and `MATBAIJ` formats 6016 only.) This is a useful flag when debugging matrix memory preallocation. 6017 If this option is set, then the `MatAssemblyBegin()`/`MatAssemblyEnd()` processes has one less global reduction 6018 6019 `MAT_IGNORE_OFF_PROC_ENTRIES` set to `PETSC_TRUE` indicates entries destined for 6020 other processors should be dropped, rather than stashed. 6021 This is useful if you know that the "owning" processor is also 6022 always generating the correct matrix entries, so that PETSc need 6023 not transfer duplicate entries generated on another processor. 6024 6025 `MAT_USE_HASH_TABLE` indicates that a hash table be used to improve the 6026 searches during matrix assembly. When this flag is set, the hash table 6027 is created during the first matrix assembly. This hash table is 6028 used the next time through, during `MatSetValues()`/`MatSetValuesBlocked()` 6029 to improve the searching of indices. `MAT_NEW_NONZERO_LOCATIONS` flag 6030 should be used with `MAT_USE_HASH_TABLE` flag. This option is currently 6031 supported by `MATMPIBAIJ` format only. 6032 6033 `MAT_KEEP_NONZERO_PATTERN` indicates when `MatZeroRows()` is called the zeroed entries 6034 are kept in the nonzero structure. This flag is not used for `MatZeroRowsColumns()` 6035 6036 `MAT_IGNORE_ZERO_ENTRIES` - for `MATAIJ` and `MATIS` matrices this will stop zero values from creating 6037 a zero location in the matrix 6038 6039 `MAT_USE_INODES` - indicates using inode version of the code - works with `MATAIJ` matrix types 6040 6041 `MAT_NO_OFF_PROC_ZERO_ROWS` - you know each process will only zero its own rows. This avoids all reductions in the 6042 zero row routines and thus improves performance for very large process counts. 6043 6044 `MAT_IGNORE_LOWER_TRIANGULAR` - For `MATSBAIJ` matrices will ignore any insertions you make in the lower triangular 6045 part of the matrix (since they should match the upper triangular part). 6046 6047 `MAT_SORTED_FULL` - each process provides exactly its local rows; all column indices for a given row are passed in a 6048 single call to `MatSetValues()`, preallocation is perfect, row-oriented, `INSERT_VALUES` is used. Common 6049 with finite difference schemes with non-periodic boundary conditions. 6050 6051 Developer Note: 6052 `MAT_SYMMETRY_ETERNAL`, `MAT_STRUCTURAL_SYMMETRY_ETERNAL`, and `MAT_SPD_ETERNAL` are used by `MatAssemblyEnd()` and in other 6053 places where otherwise the value of `MAT_SYMMETRIC`, `MAT_STRUCTURALLY_SYMMETRIC` or `MAT_SPD` would need to be changed back 6054 to `PETSC_BOOL3_UNKNOWN` because the matrix values had changed so the code cannot be certain that the related property had 6055 not changed. 6056 6057 .seealso: [](ch_matrices), `MatOption`, `Mat`, `MatGetOption()` 6058 @*/ 6059 PetscErrorCode MatSetOption(Mat mat, MatOption op, PetscBool flg) 6060 { 6061 PetscFunctionBegin; 6062 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6063 if (op > 0) { 6064 PetscValidLogicalCollectiveEnum(mat, op, 2); 6065 PetscValidLogicalCollectiveBool(mat, flg, 3); 6066 } 6067 6068 PetscCheck(((int)op) > MAT_OPTION_MIN && ((int)op) < MAT_OPTION_MAX, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_OUTOFRANGE, "Options %d is out of range", (int)op); 6069 6070 switch (op) { 6071 case MAT_FORCE_DIAGONAL_ENTRIES: 6072 mat->force_diagonals = flg; 6073 PetscFunctionReturn(PETSC_SUCCESS); 6074 case MAT_NO_OFF_PROC_ENTRIES: 6075 mat->nooffprocentries = flg; 6076 PetscFunctionReturn(PETSC_SUCCESS); 6077 case MAT_SUBSET_OFF_PROC_ENTRIES: 6078 mat->assembly_subset = flg; 6079 if (!mat->assembly_subset) { /* See the same logic in VecAssembly wrt VEC_SUBSET_OFF_PROC_ENTRIES */ 6080 #if !defined(PETSC_HAVE_MPIUNI) 6081 PetscCall(MatStashScatterDestroy_BTS(&mat->stash)); 6082 #endif 6083 mat->stash.first_assembly_done = PETSC_FALSE; 6084 } 6085 PetscFunctionReturn(PETSC_SUCCESS); 6086 case MAT_NO_OFF_PROC_ZERO_ROWS: 6087 mat->nooffproczerorows = flg; 6088 PetscFunctionReturn(PETSC_SUCCESS); 6089 case MAT_SPD: 6090 if (flg) { 6091 mat->spd = PETSC_BOOL3_TRUE; 6092 mat->symmetric = PETSC_BOOL3_TRUE; 6093 mat->structurally_symmetric = PETSC_BOOL3_TRUE; 6094 } else { 6095 mat->spd = PETSC_BOOL3_FALSE; 6096 } 6097 break; 6098 case MAT_SYMMETRIC: 6099 mat->symmetric = PetscBoolToBool3(flg); 6100 if (flg) mat->structurally_symmetric = PETSC_BOOL3_TRUE; 6101 #if !defined(PETSC_USE_COMPLEX) 6102 mat->hermitian = PetscBoolToBool3(flg); 6103 #endif 6104 break; 6105 case MAT_HERMITIAN: 6106 mat->hermitian = PetscBoolToBool3(flg); 6107 if (flg) mat->structurally_symmetric = PETSC_BOOL3_TRUE; 6108 #if !defined(PETSC_USE_COMPLEX) 6109 mat->symmetric = PetscBoolToBool3(flg); 6110 #endif 6111 break; 6112 case MAT_STRUCTURALLY_SYMMETRIC: 6113 mat->structurally_symmetric = PetscBoolToBool3(flg); 6114 break; 6115 case MAT_SYMMETRY_ETERNAL: 6116 PetscCheck(mat->symmetric != PETSC_BOOL3_UNKNOWN, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Cannot set MAT_SYMMETRY_ETERNAL without first setting MAT_SYMMETRIC to true or false"); 6117 mat->symmetry_eternal = flg; 6118 if (flg) mat->structural_symmetry_eternal = PETSC_TRUE; 6119 break; 6120 case MAT_STRUCTURAL_SYMMETRY_ETERNAL: 6121 PetscCheck(mat->structurally_symmetric != PETSC_BOOL3_UNKNOWN, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Cannot set MAT_STRUCTURAL_SYMMETRY_ETERNAL without first setting MAT_STRUCTURALLY_SYMMETRIC to true or false"); 6122 mat->structural_symmetry_eternal = flg; 6123 break; 6124 case MAT_SPD_ETERNAL: 6125 PetscCheck(mat->spd != PETSC_BOOL3_UNKNOWN, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Cannot set MAT_SPD_ETERNAL without first setting MAT_SPD to true or false"); 6126 mat->spd_eternal = flg; 6127 if (flg) { 6128 mat->structural_symmetry_eternal = PETSC_TRUE; 6129 mat->symmetry_eternal = PETSC_TRUE; 6130 } 6131 break; 6132 case MAT_STRUCTURE_ONLY: 6133 mat->structure_only = flg; 6134 break; 6135 case MAT_SORTED_FULL: 6136 mat->sortedfull = flg; 6137 break; 6138 default: 6139 break; 6140 } 6141 PetscTryTypeMethod(mat, setoption, op, flg); 6142 PetscFunctionReturn(PETSC_SUCCESS); 6143 } 6144 6145 /*@ 6146 MatGetOption - Gets a parameter option that has been set for a matrix. 6147 6148 Logically Collective 6149 6150 Input Parameters: 6151 + mat - the matrix 6152 - op - the option, this only responds to certain options, check the code for which ones 6153 6154 Output Parameter: 6155 . flg - turn the option on (`PETSC_TRUE`) or off (`PETSC_FALSE`) 6156 6157 Level: intermediate 6158 6159 Notes: 6160 Can only be called after `MatSetSizes()` and `MatSetType()` have been set. 6161 6162 Certain option values may be unknown, for those use the routines `MatIsSymmetric()`, `MatIsHermitian()`, `MatIsStructurallySymmetric()`, or 6163 `MatIsSymmetricKnown()`, `MatIsHermitianKnown()`, `MatIsStructurallySymmetricKnown()` 6164 6165 .seealso: [](ch_matrices), `Mat`, `MatOption`, `MatSetOption()`, `MatIsSymmetric()`, `MatIsHermitian()`, `MatIsStructurallySymmetric()`, 6166 `MatIsSymmetricKnown()`, `MatIsHermitianKnown()`, `MatIsStructurallySymmetricKnown()` 6167 @*/ 6168 PetscErrorCode MatGetOption(Mat mat, MatOption op, PetscBool *flg) 6169 { 6170 PetscFunctionBegin; 6171 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6172 PetscValidType(mat, 1); 6173 6174 PetscCheck(((int)op) > MAT_OPTION_MIN && ((int)op) < MAT_OPTION_MAX, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_OUTOFRANGE, "Options %d is out of range", (int)op); 6175 PetscCheck(((PetscObject)mat)->type_name, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_TYPENOTSET, "Cannot get options until type and size have been set, see MatSetType() and MatSetSizes()"); 6176 6177 switch (op) { 6178 case MAT_NO_OFF_PROC_ENTRIES: 6179 *flg = mat->nooffprocentries; 6180 break; 6181 case MAT_NO_OFF_PROC_ZERO_ROWS: 6182 *flg = mat->nooffproczerorows; 6183 break; 6184 case MAT_SYMMETRIC: 6185 SETERRQ(PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Use MatIsSymmetric() or MatIsSymmetricKnown()"); 6186 break; 6187 case MAT_HERMITIAN: 6188 SETERRQ(PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Use MatIsHermitian() or MatIsHermitianKnown()"); 6189 break; 6190 case MAT_STRUCTURALLY_SYMMETRIC: 6191 SETERRQ(PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Use MatIsStructurallySymmetric() or MatIsStructurallySymmetricKnown()"); 6192 break; 6193 case MAT_SPD: 6194 SETERRQ(PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "Use MatIsSPDKnown()"); 6195 break; 6196 case MAT_SYMMETRY_ETERNAL: 6197 *flg = mat->symmetry_eternal; 6198 break; 6199 case MAT_STRUCTURAL_SYMMETRY_ETERNAL: 6200 *flg = mat->symmetry_eternal; 6201 break; 6202 default: 6203 break; 6204 } 6205 PetscFunctionReturn(PETSC_SUCCESS); 6206 } 6207 6208 /*@ 6209 MatZeroEntries - Zeros all entries of a matrix. For sparse matrices 6210 this routine retains the old nonzero structure. 6211 6212 Logically Collective 6213 6214 Input Parameter: 6215 . mat - the matrix 6216 6217 Level: intermediate 6218 6219 Note: 6220 If the matrix was not preallocated then a default, likely poor preallocation will be set in the matrix, so this should be called after the preallocation phase. 6221 See the Performance chapter of the users manual for information on preallocating matrices. 6222 6223 .seealso: [](ch_matrices), `Mat`, `MatZeroRows()`, `MatZeroRowsColumns()` 6224 @*/ 6225 PetscErrorCode MatZeroEntries(Mat mat) 6226 { 6227 PetscFunctionBegin; 6228 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6229 PetscValidType(mat, 1); 6230 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 6231 PetscCheck(mat->insertmode == NOT_SET_VALUES, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for matrices where you have set values but not yet assembled"); 6232 MatCheckPreallocated(mat, 1); 6233 6234 PetscCall(PetscLogEventBegin(MAT_ZeroEntries, mat, 0, 0, 0)); 6235 PetscUseTypeMethod(mat, zeroentries); 6236 PetscCall(PetscLogEventEnd(MAT_ZeroEntries, mat, 0, 0, 0)); 6237 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 6238 PetscFunctionReturn(PETSC_SUCCESS); 6239 } 6240 6241 /*@ 6242 MatZeroRowsColumns - Zeros all entries (except possibly the main diagonal) 6243 of a set of rows and columns of a matrix. 6244 6245 Collective 6246 6247 Input Parameters: 6248 + mat - the matrix 6249 . numRows - the number of rows/columns to zero 6250 . rows - the global row indices 6251 . diag - value put in the diagonal of the eliminated rows 6252 . x - optional vector of the solution for zeroed rows (other entries in vector are not used), these must be set before this call 6253 - b - optional vector of the right-hand side, that will be adjusted by provided solution entries 6254 6255 Level: intermediate 6256 6257 Notes: 6258 This routine, along with `MatZeroRows()`, is typically used to eliminate known Dirichlet boundary conditions from a linear system. 6259 6260 For each zeroed row, the value of the corresponding `b` is set to diag times the value of the corresponding `x`. 6261 The other entries of `b` will be adjusted by the known values of `x` times the corresponding matrix entries in the columns that are being eliminated 6262 6263 If the resulting linear system is to be solved with `KSP` then one can (but does not have to) call `KSPSetInitialGuessNonzero()` to allow the 6264 Krylov method to take advantage of the known solution on the zeroed rows. 6265 6266 For the parallel case, all processes that share the matrix (i.e., 6267 those in the communicator used for matrix creation) MUST call this 6268 routine, regardless of whether any rows being zeroed are owned by 6269 them. 6270 6271 Unlike `MatZeroRows()`, this ignores the `MAT_KEEP_NONZERO_PATTERN` option value set with `MatSetOption()`, it merely zeros those entries in the matrix, but never 6272 removes them from the nonzero pattern. The nonzero pattern of the matrix can still change if a nonzero needs to be inserted on a diagonal entry that was previously 6273 missing. 6274 6275 Each processor can indicate any rows in the entire matrix to be zeroed (i.e. each process does NOT have to 6276 list only rows local to itself). 6277 6278 The option `MAT_NO_OFF_PROC_ZERO_ROWS` does not apply to this routine. 6279 6280 .seealso: [](ch_matrices), `Mat`, `MatZeroRowsIS()`, `MatZeroRows()`, `MatZeroRowsLocalIS()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6281 `MatZeroRowsColumnsLocal()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRowsColumnsIS()`, `MatZeroRowsColumnsStencil()` 6282 @*/ 6283 PetscErrorCode MatZeroRowsColumns(Mat mat, PetscInt numRows, const PetscInt rows[], PetscScalar diag, Vec x, Vec b) 6284 { 6285 PetscFunctionBegin; 6286 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6287 PetscValidType(mat, 1); 6288 if (numRows) PetscAssertPointer(rows, 3); 6289 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 6290 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 6291 MatCheckPreallocated(mat, 1); 6292 6293 PetscUseTypeMethod(mat, zerorowscolumns, numRows, rows, diag, x, b); 6294 PetscCall(MatViewFromOptions(mat, NULL, "-mat_view")); 6295 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 6296 PetscFunctionReturn(PETSC_SUCCESS); 6297 } 6298 6299 /*@ 6300 MatZeroRowsColumnsIS - Zeros all entries (except possibly the main diagonal) 6301 of a set of rows and columns of a matrix. 6302 6303 Collective 6304 6305 Input Parameters: 6306 + mat - the matrix 6307 . is - the rows to zero 6308 . diag - value put in all diagonals of eliminated rows (0.0 will even eliminate diagonal entry) 6309 . x - optional vector of solutions for zeroed rows (other entries in vector are not used) 6310 - b - optional vector of right-hand side, that will be adjusted by provided solution 6311 6312 Level: intermediate 6313 6314 Note: 6315 See `MatZeroRowsColumns()` for details on how this routine operates. 6316 6317 .seealso: [](ch_matrices), `Mat`, `MatZeroRowsIS()`, `MatZeroRowsColumns()`, `MatZeroRowsLocalIS()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6318 `MatZeroRowsColumnsLocal()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRows()`, `MatZeroRowsColumnsStencil()` 6319 @*/ 6320 PetscErrorCode MatZeroRowsColumnsIS(Mat mat, IS is, PetscScalar diag, Vec x, Vec b) 6321 { 6322 PetscInt numRows; 6323 const PetscInt *rows; 6324 6325 PetscFunctionBegin; 6326 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6327 PetscValidHeaderSpecific(is, IS_CLASSID, 2); 6328 PetscValidType(mat, 1); 6329 PetscValidType(is, 2); 6330 PetscCall(ISGetLocalSize(is, &numRows)); 6331 PetscCall(ISGetIndices(is, &rows)); 6332 PetscCall(MatZeroRowsColumns(mat, numRows, rows, diag, x, b)); 6333 PetscCall(ISRestoreIndices(is, &rows)); 6334 PetscFunctionReturn(PETSC_SUCCESS); 6335 } 6336 6337 /*@ 6338 MatZeroRows - Zeros all entries (except possibly the main diagonal) 6339 of a set of rows of a matrix. 6340 6341 Collective 6342 6343 Input Parameters: 6344 + mat - the matrix 6345 . numRows - the number of rows to zero 6346 . rows - the global row indices 6347 . diag - value put in the diagonal of the zeroed rows 6348 . x - optional vector of solutions for zeroed rows (other entries in vector are not used), these must be set before this call 6349 - b - optional vector of right-hand side, that will be adjusted by provided solution entries 6350 6351 Level: intermediate 6352 6353 Notes: 6354 This routine, along with `MatZeroRowsColumns()`, is typically used to eliminate known Dirichlet boundary conditions from a linear system. 6355 6356 For each zeroed row, the value of the corresponding `b` is set to `diag` times the value of the corresponding `x`. 6357 6358 If the resulting linear system is to be solved with `KSP` then one can (but does not have to) call `KSPSetInitialGuessNonzero()` to allow the 6359 Krylov method to take advantage of the known solution on the zeroed rows. 6360 6361 May be followed by using a `PC` of type `PCREDISTRIBUTE` to solve the reduced problem (`PCDISTRIBUTE` completely eliminates the zeroed rows and their corresponding columns) 6362 from the matrix. 6363 6364 Unlike `MatZeroRowsColumns()` for the `MATAIJ` and `MATBAIJ` matrix formats this removes the old nonzero structure, from the eliminated rows of the matrix 6365 but does not release memory. Because of this removal matrix-vector products with the adjusted matrix will be a bit faster. For the dense 6366 formats this does not alter the nonzero structure. 6367 6368 If the option `MatSetOption`(mat,`MAT_KEEP_NONZERO_PATTERN`,`PETSC_TRUE`) the nonzero structure 6369 of the matrix is not changed the values are 6370 merely zeroed. 6371 6372 The user can set a value in the diagonal entry (or for the `MATAIJ` format 6373 formats can optionally remove the main diagonal entry from the 6374 nonzero structure as well, by passing 0.0 as the final argument). 6375 6376 For the parallel case, all processes that share the matrix (i.e., 6377 those in the communicator used for matrix creation) MUST call this 6378 routine, regardless of whether any rows being zeroed are owned by 6379 them. 6380 6381 Each processor can indicate any rows in the entire matrix to be zeroed (i.e. each process does NOT have to 6382 list only rows local to itself). 6383 6384 You can call `MatSetOption`(mat,`MAT_NO_OFF_PROC_ZERO_ROWS`,`PETSC_TRUE`) if each process indicates only rows it 6385 owns that are to be zeroed. This saves a global synchronization in the implementation. 6386 6387 .seealso: [](ch_matrices), `Mat`, `MatZeroRowsIS()`, `MatZeroRowsColumns()`, `MatZeroRowsLocalIS()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6388 `MatZeroRowsColumnsLocal()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRowsColumnsIS()`, `MatZeroRowsColumnsStencil()`, `PCREDISTRIBUTE`, `MAT_KEEP_NONZERO_PATTERN` 6389 @*/ 6390 PetscErrorCode MatZeroRows(Mat mat, PetscInt numRows, const PetscInt rows[], PetscScalar diag, Vec x, Vec b) 6391 { 6392 PetscFunctionBegin; 6393 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6394 PetscValidType(mat, 1); 6395 if (numRows) PetscAssertPointer(rows, 3); 6396 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 6397 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 6398 MatCheckPreallocated(mat, 1); 6399 6400 PetscUseTypeMethod(mat, zerorows, numRows, rows, diag, x, b); 6401 PetscCall(MatViewFromOptions(mat, NULL, "-mat_view")); 6402 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 6403 PetscFunctionReturn(PETSC_SUCCESS); 6404 } 6405 6406 /*@ 6407 MatZeroRowsIS - Zeros all entries (except possibly the main diagonal) 6408 of a set of rows of a matrix indicated by an `IS` 6409 6410 Collective 6411 6412 Input Parameters: 6413 + mat - the matrix 6414 . is - index set, `IS`, of rows to remove (if `NULL` then no row is removed) 6415 . diag - value put in all diagonals of eliminated rows 6416 . x - optional vector of solutions for zeroed rows (other entries in vector are not used) 6417 - b - optional vector of right-hand side, that will be adjusted by provided solution 6418 6419 Level: intermediate 6420 6421 Note: 6422 See `MatZeroRows()` for details on how this routine operates. 6423 6424 .seealso: [](ch_matrices), `Mat`, `MatZeroRows()`, `MatZeroRowsColumns()`, `MatZeroRowsLocalIS()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6425 `MatZeroRowsColumnsLocal()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRowsColumnsIS()`, `MatZeroRowsColumnsStencil()`, `IS` 6426 @*/ 6427 PetscErrorCode MatZeroRowsIS(Mat mat, IS is, PetscScalar diag, Vec x, Vec b) 6428 { 6429 PetscInt numRows = 0; 6430 const PetscInt *rows = NULL; 6431 6432 PetscFunctionBegin; 6433 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6434 PetscValidType(mat, 1); 6435 if (is) { 6436 PetscValidHeaderSpecific(is, IS_CLASSID, 2); 6437 PetscCall(ISGetLocalSize(is, &numRows)); 6438 PetscCall(ISGetIndices(is, &rows)); 6439 } 6440 PetscCall(MatZeroRows(mat, numRows, rows, diag, x, b)); 6441 if (is) PetscCall(ISRestoreIndices(is, &rows)); 6442 PetscFunctionReturn(PETSC_SUCCESS); 6443 } 6444 6445 /*@ 6446 MatZeroRowsStencil - Zeros all entries (except possibly the main diagonal) 6447 of a set of rows of a matrix indicated by a `MatStencil`. These rows must be local to the process. 6448 6449 Collective 6450 6451 Input Parameters: 6452 + mat - the matrix 6453 . numRows - the number of rows to remove 6454 . rows - the grid coordinates (and component number when dof > 1) for matrix rows indicated by an array of `MatStencil` 6455 . diag - value put in all diagonals of eliminated rows (0.0 will even eliminate diagonal entry) 6456 . x - optional vector of solutions for zeroed rows (other entries in vector are not used) 6457 - b - optional vector of right-hand side, that will be adjusted by provided solution 6458 6459 Level: intermediate 6460 6461 Notes: 6462 See `MatZeroRows()` for details on how this routine operates. 6463 6464 The grid coordinates are across the entire grid, not just the local portion 6465 6466 For periodic boundary conditions use negative indices for values to the left (below 0; that are to be 6467 obtained by wrapping values from right edge). For values to the right of the last entry using that index plus one 6468 etc to obtain values that obtained by wrapping the values from the left edge. This does not work for anything but the 6469 `DM_BOUNDARY_PERIODIC` boundary type. 6470 6471 For indices that don't mean anything for your case (like the `k` index when working in 2d) or the `c` index when you have 6472 a single value per point) you can skip filling those indices. 6473 6474 Fortran Note: 6475 `idxm` and `idxn` should be declared as 6476 .vb 6477 MatStencil idxm(4, m) 6478 .ve 6479 and the values inserted using 6480 .vb 6481 idxm(MatStencil_i, 1) = i 6482 idxm(MatStencil_j, 1) = j 6483 idxm(MatStencil_k, 1) = k 6484 idxm(MatStencil_c, 1) = c 6485 etc 6486 .ve 6487 6488 .seealso: [](ch_matrices), `Mat`, `MatStencil`, `MatZeroRowsIS()`, `MatZeroRowsColumns()`, `MatZeroRowsLocalIS()`, `MatZeroRows()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6489 `MatZeroRowsColumnsLocal()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRowsColumnsIS()`, `MatZeroRowsColumnsStencil()` 6490 @*/ 6491 PetscErrorCode MatZeroRowsStencil(Mat mat, PetscInt numRows, const MatStencil rows[], PetscScalar diag, Vec x, Vec b) 6492 { 6493 PetscInt dim = mat->stencil.dim; 6494 PetscInt sdim = dim - (1 - (PetscInt)mat->stencil.noc); 6495 PetscInt *dims = mat->stencil.dims + 1; 6496 PetscInt *starts = mat->stencil.starts; 6497 PetscInt *dxm = (PetscInt *)rows; 6498 PetscInt *jdxm, i, j, tmp, numNewRows = 0; 6499 6500 PetscFunctionBegin; 6501 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6502 PetscValidType(mat, 1); 6503 if (numRows) PetscAssertPointer(rows, 3); 6504 6505 PetscCall(PetscMalloc1(numRows, &jdxm)); 6506 for (i = 0; i < numRows; ++i) { 6507 /* Skip unused dimensions (they are ordered k, j, i, c) */ 6508 for (j = 0; j < 3 - sdim; ++j) dxm++; 6509 /* Local index in X dir */ 6510 tmp = *dxm++ - starts[0]; 6511 /* Loop over remaining dimensions */ 6512 for (j = 0; j < dim - 1; ++j) { 6513 /* If nonlocal, set index to be negative */ 6514 if ((*dxm++ - starts[j + 1]) < 0 || tmp < 0) tmp = PETSC_INT_MIN; 6515 /* Update local index */ 6516 else tmp = tmp * dims[j] + *(dxm - 1) - starts[j + 1]; 6517 } 6518 /* Skip component slot if necessary */ 6519 if (mat->stencil.noc) dxm++; 6520 /* Local row number */ 6521 if (tmp >= 0) jdxm[numNewRows++] = tmp; 6522 } 6523 PetscCall(MatZeroRowsLocal(mat, numNewRows, jdxm, diag, x, b)); 6524 PetscCall(PetscFree(jdxm)); 6525 PetscFunctionReturn(PETSC_SUCCESS); 6526 } 6527 6528 /*@ 6529 MatZeroRowsColumnsStencil - Zeros all row and column entries (except possibly the main diagonal) 6530 of a set of rows and columns of a matrix. 6531 6532 Collective 6533 6534 Input Parameters: 6535 + mat - the matrix 6536 . numRows - the number of rows/columns to remove 6537 . rows - the grid coordinates (and component number when dof > 1) for matrix rows 6538 . diag - value put in all diagonals of eliminated rows (0.0 will even eliminate diagonal entry) 6539 . x - optional vector of solutions for zeroed rows (other entries in vector are not used) 6540 - b - optional vector of right-hand side, that will be adjusted by provided solution 6541 6542 Level: intermediate 6543 6544 Notes: 6545 See `MatZeroRowsColumns()` for details on how this routine operates. 6546 6547 The grid coordinates are across the entire grid, not just the local portion 6548 6549 For periodic boundary conditions use negative indices for values to the left (below 0; that are to be 6550 obtained by wrapping values from right edge). For values to the right of the last entry using that index plus one 6551 etc to obtain values that obtained by wrapping the values from the left edge. This does not work for anything but the 6552 `DM_BOUNDARY_PERIODIC` boundary type. 6553 6554 For indices that don't mean anything for your case (like the `k` index when working in 2d) or the `c` index when you have 6555 a single value per point) you can skip filling those indices. 6556 6557 Fortran Note: 6558 `idxm` and `idxn` should be declared as 6559 .vb 6560 MatStencil idxm(4, m) 6561 .ve 6562 and the values inserted using 6563 .vb 6564 idxm(MatStencil_i, 1) = i 6565 idxm(MatStencil_j, 1) = j 6566 idxm(MatStencil_k, 1) = k 6567 idxm(MatStencil_c, 1) = c 6568 etc 6569 .ve 6570 6571 .seealso: [](ch_matrices), `Mat`, `MatZeroRowsIS()`, `MatZeroRowsColumns()`, `MatZeroRowsLocalIS()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6572 `MatZeroRowsColumnsLocal()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRowsColumnsIS()`, `MatZeroRows()` 6573 @*/ 6574 PetscErrorCode MatZeroRowsColumnsStencil(Mat mat, PetscInt numRows, const MatStencil rows[], PetscScalar diag, Vec x, Vec b) 6575 { 6576 PetscInt dim = mat->stencil.dim; 6577 PetscInt sdim = dim - (1 - (PetscInt)mat->stencil.noc); 6578 PetscInt *dims = mat->stencil.dims + 1; 6579 PetscInt *starts = mat->stencil.starts; 6580 PetscInt *dxm = (PetscInt *)rows; 6581 PetscInt *jdxm, i, j, tmp, numNewRows = 0; 6582 6583 PetscFunctionBegin; 6584 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6585 PetscValidType(mat, 1); 6586 if (numRows) PetscAssertPointer(rows, 3); 6587 6588 PetscCall(PetscMalloc1(numRows, &jdxm)); 6589 for (i = 0; i < numRows; ++i) { 6590 /* Skip unused dimensions (they are ordered k, j, i, c) */ 6591 for (j = 0; j < 3 - sdim; ++j) dxm++; 6592 /* Local index in X dir */ 6593 tmp = *dxm++ - starts[0]; 6594 /* Loop over remaining dimensions */ 6595 for (j = 0; j < dim - 1; ++j) { 6596 /* If nonlocal, set index to be negative */ 6597 if ((*dxm++ - starts[j + 1]) < 0 || tmp < 0) tmp = PETSC_INT_MIN; 6598 /* Update local index */ 6599 else tmp = tmp * dims[j] + *(dxm - 1) - starts[j + 1]; 6600 } 6601 /* Skip component slot if necessary */ 6602 if (mat->stencil.noc) dxm++; 6603 /* Local row number */ 6604 if (tmp >= 0) jdxm[numNewRows++] = tmp; 6605 } 6606 PetscCall(MatZeroRowsColumnsLocal(mat, numNewRows, jdxm, diag, x, b)); 6607 PetscCall(PetscFree(jdxm)); 6608 PetscFunctionReturn(PETSC_SUCCESS); 6609 } 6610 6611 /*@ 6612 MatZeroRowsLocal - Zeros all entries (except possibly the main diagonal) 6613 of a set of rows of a matrix; using local numbering of rows. 6614 6615 Collective 6616 6617 Input Parameters: 6618 + mat - the matrix 6619 . numRows - the number of rows to remove 6620 . rows - the local row indices 6621 . diag - value put in all diagonals of eliminated rows 6622 . x - optional vector of solutions for zeroed rows (other entries in vector are not used) 6623 - b - optional vector of right-hand side, that will be adjusted by provided solution 6624 6625 Level: intermediate 6626 6627 Notes: 6628 Before calling `MatZeroRowsLocal()`, the user must first set the 6629 local-to-global mapping by calling MatSetLocalToGlobalMapping(), this is often already set for matrices obtained with `DMCreateMatrix()`. 6630 6631 See `MatZeroRows()` for details on how this routine operates. 6632 6633 .seealso: [](ch_matrices), `Mat`, `MatZeroRowsIS()`, `MatZeroRowsColumns()`, `MatZeroRowsLocalIS()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRows()`, `MatSetOption()`, 6634 `MatZeroRowsColumnsLocal()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRowsColumnsIS()`, `MatZeroRowsColumnsStencil()` 6635 @*/ 6636 PetscErrorCode MatZeroRowsLocal(Mat mat, PetscInt numRows, const PetscInt rows[], PetscScalar diag, Vec x, Vec b) 6637 { 6638 PetscFunctionBegin; 6639 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6640 PetscValidType(mat, 1); 6641 if (numRows) PetscAssertPointer(rows, 3); 6642 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 6643 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 6644 MatCheckPreallocated(mat, 1); 6645 6646 if (mat->ops->zerorowslocal) { 6647 PetscUseTypeMethod(mat, zerorowslocal, numRows, rows, diag, x, b); 6648 } else { 6649 IS is, newis; 6650 PetscInt *newRows, nl = 0; 6651 6652 PetscCheck(mat->rmap->mapping, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Need to provide local to global mapping to matrix first"); 6653 PetscCall(ISCreateGeneral(PETSC_COMM_SELF, numRows, rows, PETSC_USE_POINTER, &is)); 6654 PetscCall(ISLocalToGlobalMappingApplyIS(mat->rmap->mapping, is, &newis)); 6655 PetscCall(ISGetIndices(newis, (const PetscInt **)&newRows)); 6656 for (PetscInt i = 0; i < numRows; i++) 6657 if (newRows[i] > -1) newRows[nl++] = newRows[i]; 6658 PetscUseTypeMethod(mat, zerorows, nl, newRows, diag, x, b); 6659 PetscCall(ISRestoreIndices(newis, (const PetscInt **)&newRows)); 6660 PetscCall(ISDestroy(&newis)); 6661 PetscCall(ISDestroy(&is)); 6662 } 6663 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 6664 PetscFunctionReturn(PETSC_SUCCESS); 6665 } 6666 6667 /*@ 6668 MatZeroRowsLocalIS - Zeros all entries (except possibly the main diagonal) 6669 of a set of rows of a matrix; using local numbering of rows. 6670 6671 Collective 6672 6673 Input Parameters: 6674 + mat - the matrix 6675 . is - index set of rows to remove 6676 . diag - value put in all diagonals of eliminated rows 6677 . x - optional vector of solutions for zeroed rows (other entries in vector are not used) 6678 - b - optional vector of right-hand side, that will be adjusted by provided solution 6679 6680 Level: intermediate 6681 6682 Notes: 6683 Before calling `MatZeroRowsLocalIS()`, the user must first set the 6684 local-to-global mapping by calling `MatSetLocalToGlobalMapping()`, this is often already set for matrices obtained with `DMCreateMatrix()`. 6685 6686 See `MatZeroRows()` for details on how this routine operates. 6687 6688 .seealso: [](ch_matrices), `Mat`, `MatZeroRowsIS()`, `MatZeroRowsColumns()`, `MatZeroRows()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6689 `MatZeroRowsColumnsLocal()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRowsColumnsIS()`, `MatZeroRowsColumnsStencil()` 6690 @*/ 6691 PetscErrorCode MatZeroRowsLocalIS(Mat mat, IS is, PetscScalar diag, Vec x, Vec b) 6692 { 6693 PetscInt numRows; 6694 const PetscInt *rows; 6695 6696 PetscFunctionBegin; 6697 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6698 PetscValidType(mat, 1); 6699 PetscValidHeaderSpecific(is, IS_CLASSID, 2); 6700 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 6701 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 6702 MatCheckPreallocated(mat, 1); 6703 6704 PetscCall(ISGetLocalSize(is, &numRows)); 6705 PetscCall(ISGetIndices(is, &rows)); 6706 PetscCall(MatZeroRowsLocal(mat, numRows, rows, diag, x, b)); 6707 PetscCall(ISRestoreIndices(is, &rows)); 6708 PetscFunctionReturn(PETSC_SUCCESS); 6709 } 6710 6711 /*@ 6712 MatZeroRowsColumnsLocal - Zeros all entries (except possibly the main diagonal) 6713 of a set of rows and columns of a matrix; using local numbering of rows. 6714 6715 Collective 6716 6717 Input Parameters: 6718 + mat - the matrix 6719 . numRows - the number of rows to remove 6720 . rows - the global row indices 6721 . diag - value put in all diagonals of eliminated rows 6722 . x - optional vector of solutions for zeroed rows (other entries in vector are not used) 6723 - b - optional vector of right-hand side, that will be adjusted by provided solution 6724 6725 Level: intermediate 6726 6727 Notes: 6728 Before calling `MatZeroRowsColumnsLocal()`, the user must first set the 6729 local-to-global mapping by calling `MatSetLocalToGlobalMapping()`, this is often already set for matrices obtained with `DMCreateMatrix()`. 6730 6731 See `MatZeroRowsColumns()` for details on how this routine operates. 6732 6733 .seealso: [](ch_matrices), `Mat`, `MatZeroRowsIS()`, `MatZeroRowsColumns()`, `MatZeroRowsLocalIS()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6734 `MatZeroRows()`, `MatZeroRowsColumnsLocalIS()`, `MatZeroRowsColumnsIS()`, `MatZeroRowsColumnsStencil()` 6735 @*/ 6736 PetscErrorCode MatZeroRowsColumnsLocal(Mat mat, PetscInt numRows, const PetscInt rows[], PetscScalar diag, Vec x, Vec b) 6737 { 6738 PetscFunctionBegin; 6739 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6740 PetscValidType(mat, 1); 6741 if (numRows) PetscAssertPointer(rows, 3); 6742 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 6743 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 6744 MatCheckPreallocated(mat, 1); 6745 6746 if (mat->ops->zerorowscolumnslocal) { 6747 PetscUseTypeMethod(mat, zerorowscolumnslocal, numRows, rows, diag, x, b); 6748 } else { 6749 IS is, newis; 6750 PetscInt *newRows, nl = 0; 6751 6752 PetscCheck(mat->rmap->mapping, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Need to provide local to global mapping to matrix first"); 6753 PetscCall(ISCreateGeneral(PETSC_COMM_SELF, numRows, rows, PETSC_USE_POINTER, &is)); 6754 PetscCall(ISLocalToGlobalMappingApplyIS(mat->rmap->mapping, is, &newis)); 6755 PetscCall(ISGetIndices(newis, (const PetscInt **)&newRows)); 6756 for (PetscInt i = 0; i < numRows; i++) 6757 if (newRows[i] > -1) newRows[nl++] = newRows[i]; 6758 PetscUseTypeMethod(mat, zerorowscolumns, nl, newRows, diag, x, b); 6759 PetscCall(ISRestoreIndices(newis, (const PetscInt **)&newRows)); 6760 PetscCall(ISDestroy(&newis)); 6761 PetscCall(ISDestroy(&is)); 6762 } 6763 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 6764 PetscFunctionReturn(PETSC_SUCCESS); 6765 } 6766 6767 /*@ 6768 MatZeroRowsColumnsLocalIS - Zeros all entries (except possibly the main diagonal) 6769 of a set of rows and columns of a matrix; using local numbering of rows. 6770 6771 Collective 6772 6773 Input Parameters: 6774 + mat - the matrix 6775 . is - index set of rows to remove 6776 . diag - value put in all diagonals of eliminated rows 6777 . x - optional vector of solutions for zeroed rows (other entries in vector are not used) 6778 - b - optional vector of right-hand side, that will be adjusted by provided solution 6779 6780 Level: intermediate 6781 6782 Notes: 6783 Before calling `MatZeroRowsColumnsLocalIS()`, the user must first set the 6784 local-to-global mapping by calling `MatSetLocalToGlobalMapping()`, this is often already set for matrices obtained with `DMCreateMatrix()`. 6785 6786 See `MatZeroRowsColumns()` for details on how this routine operates. 6787 6788 .seealso: [](ch_matrices), `Mat`, `MatZeroRowsIS()`, `MatZeroRowsColumns()`, `MatZeroRowsLocalIS()`, `MatZeroRowsStencil()`, `MatZeroEntries()`, `MatZeroRowsLocal()`, `MatSetOption()`, 6789 `MatZeroRowsColumnsLocal()`, `MatZeroRows()`, `MatZeroRowsColumnsIS()`, `MatZeroRowsColumnsStencil()` 6790 @*/ 6791 PetscErrorCode MatZeroRowsColumnsLocalIS(Mat mat, IS is, PetscScalar diag, Vec x, Vec b) 6792 { 6793 PetscInt numRows; 6794 const PetscInt *rows; 6795 6796 PetscFunctionBegin; 6797 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6798 PetscValidType(mat, 1); 6799 PetscValidHeaderSpecific(is, IS_CLASSID, 2); 6800 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 6801 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 6802 MatCheckPreallocated(mat, 1); 6803 6804 PetscCall(ISGetLocalSize(is, &numRows)); 6805 PetscCall(ISGetIndices(is, &rows)); 6806 PetscCall(MatZeroRowsColumnsLocal(mat, numRows, rows, diag, x, b)); 6807 PetscCall(ISRestoreIndices(is, &rows)); 6808 PetscFunctionReturn(PETSC_SUCCESS); 6809 } 6810 6811 /*@ 6812 MatGetSize - Returns the numbers of rows and columns in a matrix. 6813 6814 Not Collective 6815 6816 Input Parameter: 6817 . mat - the matrix 6818 6819 Output Parameters: 6820 + m - the number of global rows 6821 - n - the number of global columns 6822 6823 Level: beginner 6824 6825 Note: 6826 Both output parameters can be `NULL` on input. 6827 6828 .seealso: [](ch_matrices), `Mat`, `MatSetSizes()`, `MatGetLocalSize()` 6829 @*/ 6830 PetscErrorCode MatGetSize(Mat mat, PetscInt *m, PetscInt *n) 6831 { 6832 PetscFunctionBegin; 6833 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6834 if (m) *m = mat->rmap->N; 6835 if (n) *n = mat->cmap->N; 6836 PetscFunctionReturn(PETSC_SUCCESS); 6837 } 6838 6839 /*@ 6840 MatGetLocalSize - For most matrix formats, excluding `MATELEMENTAL` and `MATSCALAPACK`, Returns the number of local rows and local columns 6841 of a matrix. For all matrices this is the local size of the left and right vectors as returned by `MatCreateVecs()`. 6842 6843 Not Collective 6844 6845 Input Parameter: 6846 . mat - the matrix 6847 6848 Output Parameters: 6849 + m - the number of local rows, use `NULL` to not obtain this value 6850 - n - the number of local columns, use `NULL` to not obtain this value 6851 6852 Level: beginner 6853 6854 .seealso: [](ch_matrices), `Mat`, `MatSetSizes()`, `MatGetSize()` 6855 @*/ 6856 PetscErrorCode MatGetLocalSize(Mat mat, PetscInt *m, PetscInt *n) 6857 { 6858 PetscFunctionBegin; 6859 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6860 if (m) PetscAssertPointer(m, 2); 6861 if (n) PetscAssertPointer(n, 3); 6862 if (m) *m = mat->rmap->n; 6863 if (n) *n = mat->cmap->n; 6864 PetscFunctionReturn(PETSC_SUCCESS); 6865 } 6866 6867 /*@ 6868 MatGetOwnershipRangeColumn - Returns the range of matrix columns associated with rows of a 6869 vector one multiplies this matrix by that are owned by this processor. 6870 6871 Not Collective, unless matrix has not been allocated, then collective 6872 6873 Input Parameter: 6874 . mat - the matrix 6875 6876 Output Parameters: 6877 + m - the global index of the first local column, use `NULL` to not obtain this value 6878 - n - one more than the global index of the last local column, use `NULL` to not obtain this value 6879 6880 Level: developer 6881 6882 Notes: 6883 If the `Mat` was obtained from a `DM` with `DMCreateMatrix()`, then the range values are determined by the specific `DM`. 6884 6885 If the `Mat` was created directly the range values are determined by the local size passed to `MatSetSizes()` or `MatCreateAIJ()`. 6886 If `PETSC_DECIDE` was passed as the local size, then the vector uses default values for the range using `PetscSplitOwnership()`. 6887 6888 For certain `DM`, such as `DMDA`, it is better to use `DM` specific routines, such as `DMDAGetGhostCorners()`, to determine 6889 the local values in the matrix. 6890 6891 Returns the columns of the "diagonal block" for most sparse matrix formats. See [Matrix 6892 Layouts](sec_matlayout) for details on matrix layouts. 6893 6894 .seealso: [](ch_matrices), `Mat`, `MatGetOwnershipRange()`, `MatGetOwnershipRanges()`, `MatGetOwnershipRangesColumn()`, `PetscLayout`, 6895 `MatSetSizes()`, `MatCreateAIJ()`, `DMDAGetGhostCorners()`, `DM` 6896 @*/ 6897 PetscErrorCode MatGetOwnershipRangeColumn(Mat mat, PetscInt *m, PetscInt *n) 6898 { 6899 PetscFunctionBegin; 6900 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6901 PetscValidType(mat, 1); 6902 if (m) PetscAssertPointer(m, 2); 6903 if (n) PetscAssertPointer(n, 3); 6904 MatCheckPreallocated(mat, 1); 6905 if (m) *m = mat->cmap->rstart; 6906 if (n) *n = mat->cmap->rend; 6907 PetscFunctionReturn(PETSC_SUCCESS); 6908 } 6909 6910 /*@ 6911 MatGetOwnershipRange - For matrices that own values by row, excludes `MATELEMENTAL` and `MATSCALAPACK`, returns the range of matrix rows owned by 6912 this MPI process. 6913 6914 Not Collective 6915 6916 Input Parameter: 6917 . mat - the matrix 6918 6919 Output Parameters: 6920 + m - the global index of the first local row, use `NULL` to not obtain this value 6921 - n - one more than the global index of the last local row, use `NULL` to not obtain this value 6922 6923 Level: beginner 6924 6925 Notes: 6926 If the `Mat` was obtained from a `DM` with `DMCreateMatrix()`, then the range values are determined by the specific `DM`. 6927 6928 If the `Mat` was created directly the range values are determined by the local size passed to `MatSetSizes()` or `MatCreateAIJ()`. 6929 If `PETSC_DECIDE` was passed as the local size, then the vector uses default values for the range using `PetscSplitOwnership()`. 6930 6931 For certain `DM`, such as `DMDA`, it is better to use `DM` specific routines, such as `DMDAGetGhostCorners()`, to determine 6932 the local values in the matrix. 6933 6934 The high argument is one more than the last element stored locally. 6935 6936 For all matrices it returns the range of matrix rows associated with rows of a vector that 6937 would contain the result of a matrix vector product with this matrix. See [Matrix 6938 Layouts](sec_matlayout) for details on matrix layouts. 6939 6940 .seealso: [](ch_matrices), `Mat`, `MatGetOwnershipRanges()`, `MatGetOwnershipRangeColumn()`, `MatGetOwnershipRangesColumn()`, `PetscSplitOwnership()`, 6941 `PetscSplitOwnershipBlock()`, `PetscLayout`, `MatSetSizes()`, `MatCreateAIJ()`, `DMDAGetGhostCorners()`, `DM` 6942 @*/ 6943 PetscErrorCode MatGetOwnershipRange(Mat mat, PetscInt *m, PetscInt *n) 6944 { 6945 PetscFunctionBegin; 6946 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6947 PetscValidType(mat, 1); 6948 if (m) PetscAssertPointer(m, 2); 6949 if (n) PetscAssertPointer(n, 3); 6950 MatCheckPreallocated(mat, 1); 6951 if (m) *m = mat->rmap->rstart; 6952 if (n) *n = mat->rmap->rend; 6953 PetscFunctionReturn(PETSC_SUCCESS); 6954 } 6955 6956 /*@C 6957 MatGetOwnershipRanges - For matrices that own values by row, excludes `MATELEMENTAL` and 6958 `MATSCALAPACK`, returns the range of matrix rows owned by each process. 6959 6960 Not Collective, unless matrix has not been allocated 6961 6962 Input Parameter: 6963 . mat - the matrix 6964 6965 Output Parameter: 6966 . ranges - start of each processors portion plus one more than the total length at the end, of length `size` + 1 6967 where `size` is the number of MPI processes used by `mat` 6968 6969 Level: beginner 6970 6971 Notes: 6972 If the `Mat` was obtained from a `DM` with `DMCreateMatrix()`, then the range values are determined by the specific `DM`. 6973 6974 If the `Mat` was created directly the range values are determined by the local size passed to `MatSetSizes()` or `MatCreateAIJ()`. 6975 If `PETSC_DECIDE` was passed as the local size, then the vector uses default values for the range using `PetscSplitOwnership()`. 6976 6977 For certain `DM`, such as `DMDA`, it is better to use `DM` specific routines, such as `DMDAGetGhostCorners()`, to determine 6978 the local values in the matrix. 6979 6980 For all matrices it returns the ranges of matrix rows associated with rows of a vector that 6981 would contain the result of a matrix vector product with this matrix. See [Matrix 6982 Layouts](sec_matlayout) for details on matrix layouts. 6983 6984 .seealso: [](ch_matrices), `Mat`, `MatGetOwnershipRange()`, `MatGetOwnershipRangeColumn()`, `MatGetOwnershipRangesColumn()`, `PetscLayout`, 6985 `PetscSplitOwnership()`, `PetscSplitOwnershipBlock()`, `MatSetSizes()`, `MatCreateAIJ()`, 6986 `DMDAGetGhostCorners()`, `DM` 6987 @*/ 6988 PetscErrorCode MatGetOwnershipRanges(Mat mat, const PetscInt *ranges[]) 6989 { 6990 PetscFunctionBegin; 6991 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 6992 PetscValidType(mat, 1); 6993 MatCheckPreallocated(mat, 1); 6994 PetscCall(PetscLayoutGetRanges(mat->rmap, ranges)); 6995 PetscFunctionReturn(PETSC_SUCCESS); 6996 } 6997 6998 /*@C 6999 MatGetOwnershipRangesColumn - Returns the ranges of matrix columns associated with rows of a 7000 vector one multiplies this vector by that are owned by each processor. 7001 7002 Not Collective, unless matrix has not been allocated 7003 7004 Input Parameter: 7005 . mat - the matrix 7006 7007 Output Parameter: 7008 . ranges - start of each processors portion plus one more than the total length at the end 7009 7010 Level: beginner 7011 7012 Notes: 7013 If the `Mat` was obtained from a `DM` with `DMCreateMatrix()`, then the range values are determined by the specific `DM`. 7014 7015 If the `Mat` was created directly the range values are determined by the local size passed to `MatSetSizes()` or `MatCreateAIJ()`. 7016 If `PETSC_DECIDE` was passed as the local size, then the vector uses default values for the range using `PetscSplitOwnership()`. 7017 7018 For certain `DM`, such as `DMDA`, it is better to use `DM` specific routines, such as `DMDAGetGhostCorners()`, to determine 7019 the local values in the matrix. 7020 7021 Returns the columns of the "diagonal blocks", for most sparse matrix formats. See [Matrix 7022 Layouts](sec_matlayout) for details on matrix layouts. 7023 7024 .seealso: [](ch_matrices), `Mat`, `MatGetOwnershipRange()`, `MatGetOwnershipRangeColumn()`, `MatGetOwnershipRanges()`, 7025 `PetscSplitOwnership()`, `PetscSplitOwnershipBlock()`, `PetscLayout`, `MatSetSizes()`, `MatCreateAIJ()`, 7026 `DMDAGetGhostCorners()`, `DM` 7027 @*/ 7028 PetscErrorCode MatGetOwnershipRangesColumn(Mat mat, const PetscInt *ranges[]) 7029 { 7030 PetscFunctionBegin; 7031 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7032 PetscValidType(mat, 1); 7033 MatCheckPreallocated(mat, 1); 7034 PetscCall(PetscLayoutGetRanges(mat->cmap, ranges)); 7035 PetscFunctionReturn(PETSC_SUCCESS); 7036 } 7037 7038 /*@ 7039 MatGetOwnershipIS - Get row and column ownership of a matrices' values as index sets. 7040 7041 Not Collective 7042 7043 Input Parameter: 7044 . A - matrix 7045 7046 Output Parameters: 7047 + rows - rows in which this process owns elements, , use `NULL` to not obtain this value 7048 - cols - columns in which this process owns elements, use `NULL` to not obtain this value 7049 7050 Level: intermediate 7051 7052 Note: 7053 You should call `ISDestroy()` on the returned `IS` 7054 7055 For most matrices, excluding `MATELEMENTAL` and `MATSCALAPACK`, this corresponds to values 7056 returned by `MatGetOwnershipRange()`, `MatGetOwnershipRangeColumn()`. For `MATELEMENTAL` and 7057 `MATSCALAPACK` the ownership is more complicated. See [Matrix Layouts](sec_matlayout) for 7058 details on matrix layouts. 7059 7060 .seealso: [](ch_matrices), `IS`, `Mat`, `MatGetOwnershipRanges()`, `MatSetValues()`, `MATELEMENTAL`, `MATSCALAPACK` 7061 @*/ 7062 PetscErrorCode MatGetOwnershipIS(Mat A, IS *rows, IS *cols) 7063 { 7064 PetscErrorCode (*f)(Mat, IS *, IS *); 7065 7066 PetscFunctionBegin; 7067 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 7068 PetscValidType(A, 1); 7069 MatCheckPreallocated(A, 1); 7070 PetscCall(PetscObjectQueryFunction((PetscObject)A, "MatGetOwnershipIS_C", &f)); 7071 if (f) { 7072 PetscCall((*f)(A, rows, cols)); 7073 } else { /* Create a standard row-based partition, each process is responsible for ALL columns in their row block */ 7074 if (rows) PetscCall(ISCreateStride(PETSC_COMM_SELF, A->rmap->n, A->rmap->rstart, 1, rows)); 7075 if (cols) PetscCall(ISCreateStride(PETSC_COMM_SELF, A->cmap->N, 0, 1, cols)); 7076 } 7077 PetscFunctionReturn(PETSC_SUCCESS); 7078 } 7079 7080 /*@ 7081 MatILUFactorSymbolic - Performs symbolic ILU factorization of a matrix obtained with `MatGetFactor()` 7082 Uses levels of fill only, not drop tolerance. Use `MatLUFactorNumeric()` 7083 to complete the factorization. 7084 7085 Collective 7086 7087 Input Parameters: 7088 + fact - the factorized matrix obtained with `MatGetFactor()` 7089 . mat - the matrix 7090 . row - row permutation 7091 . col - column permutation 7092 - info - structure containing 7093 .vb 7094 levels - number of levels of fill. 7095 expected fill - as ratio of original fill. 7096 1 or 0 - indicating force fill on diagonal (improves robustness for matrices 7097 missing diagonal entries) 7098 .ve 7099 7100 Level: developer 7101 7102 Notes: 7103 See [Matrix Factorization](sec_matfactor) for additional information. 7104 7105 Most users should employ the `KSP` interface for linear solvers 7106 instead of working directly with matrix algebra routines such as this. 7107 See, e.g., `KSPCreate()`. 7108 7109 Uses the definition of level of fill as in Y. Saad, {cite}`saad2003` 7110 7111 Fortran Note: 7112 A valid (non-null) `info` argument must be provided 7113 7114 .seealso: [](ch_matrices), `Mat`, [Matrix Factorization](sec_matfactor), `MatGetFactor()`, `MatLUFactorSymbolic()`, `MatLUFactorNumeric()`, `MatCholeskyFactor()` 7115 `MatGetOrdering()`, `MatFactorInfo` 7116 @*/ 7117 PetscErrorCode MatILUFactorSymbolic(Mat fact, Mat mat, IS row, IS col, const MatFactorInfo *info) 7118 { 7119 PetscFunctionBegin; 7120 PetscValidHeaderSpecific(mat, MAT_CLASSID, 2); 7121 PetscValidType(mat, 2); 7122 if (row) PetscValidHeaderSpecific(row, IS_CLASSID, 3); 7123 if (col) PetscValidHeaderSpecific(col, IS_CLASSID, 4); 7124 PetscAssertPointer(info, 5); 7125 PetscAssertPointer(fact, 1); 7126 PetscCheck(info->levels >= 0, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_OUTOFRANGE, "Levels of fill negative %" PetscInt_FMT, (PetscInt)info->levels); 7127 PetscCheck(info->fill >= 1.0, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_OUTOFRANGE, "Expected fill less than 1.0 %g", (double)info->fill); 7128 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 7129 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 7130 MatCheckPreallocated(mat, 2); 7131 7132 if (!fact->trivialsymbolic) PetscCall(PetscLogEventBegin(MAT_ILUFactorSymbolic, mat, row, col, 0)); 7133 PetscUseTypeMethod(fact, ilufactorsymbolic, mat, row, col, info); 7134 if (!fact->trivialsymbolic) PetscCall(PetscLogEventEnd(MAT_ILUFactorSymbolic, mat, row, col, 0)); 7135 PetscFunctionReturn(PETSC_SUCCESS); 7136 } 7137 7138 /*@ 7139 MatICCFactorSymbolic - Performs symbolic incomplete 7140 Cholesky factorization for a symmetric matrix. Use 7141 `MatCholeskyFactorNumeric()` to complete the factorization. 7142 7143 Collective 7144 7145 Input Parameters: 7146 + fact - the factorized matrix obtained with `MatGetFactor()` 7147 . mat - the matrix to be factored 7148 . perm - row and column permutation 7149 - info - structure containing 7150 .vb 7151 levels - number of levels of fill. 7152 expected fill - as ratio of original fill. 7153 .ve 7154 7155 Level: developer 7156 7157 Notes: 7158 Most users should employ the `KSP` interface for linear solvers 7159 instead of working directly with matrix algebra routines such as this. 7160 See, e.g., `KSPCreate()`. 7161 7162 This uses the definition of level of fill as in Y. Saad {cite}`saad2003` 7163 7164 Fortran Note: 7165 A valid (non-null) `info` argument must be provided 7166 7167 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatCholeskyFactorNumeric()`, `MatCholeskyFactor()`, `MatFactorInfo` 7168 @*/ 7169 PetscErrorCode MatICCFactorSymbolic(Mat fact, Mat mat, IS perm, const MatFactorInfo *info) 7170 { 7171 PetscFunctionBegin; 7172 PetscValidHeaderSpecific(mat, MAT_CLASSID, 2); 7173 PetscValidType(mat, 2); 7174 if (perm) PetscValidHeaderSpecific(perm, IS_CLASSID, 3); 7175 PetscAssertPointer(info, 4); 7176 PetscAssertPointer(fact, 1); 7177 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 7178 PetscCheck(info->levels >= 0, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_OUTOFRANGE, "Levels negative %" PetscInt_FMT, (PetscInt)info->levels); 7179 PetscCheck(info->fill >= 1.0, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_OUTOFRANGE, "Expected fill less than 1.0 %g", (double)info->fill); 7180 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 7181 MatCheckPreallocated(mat, 2); 7182 7183 if (!fact->trivialsymbolic) PetscCall(PetscLogEventBegin(MAT_ICCFactorSymbolic, mat, perm, 0, 0)); 7184 PetscUseTypeMethod(fact, iccfactorsymbolic, mat, perm, info); 7185 if (!fact->trivialsymbolic) PetscCall(PetscLogEventEnd(MAT_ICCFactorSymbolic, mat, perm, 0, 0)); 7186 PetscFunctionReturn(PETSC_SUCCESS); 7187 } 7188 7189 /*@C 7190 MatCreateSubMatrices - Extracts several submatrices from a matrix. If submat 7191 points to an array of valid matrices, they may be reused to store the new 7192 submatrices. 7193 7194 Collective 7195 7196 Input Parameters: 7197 + mat - the matrix 7198 . n - the number of submatrixes to be extracted (on this processor, may be zero) 7199 . irow - index set of rows to extract 7200 . icol - index set of columns to extract 7201 - scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 7202 7203 Output Parameter: 7204 . submat - the array of submatrices 7205 7206 Level: advanced 7207 7208 Notes: 7209 `MatCreateSubMatrices()` can extract ONLY sequential submatrices 7210 (from both sequential and parallel matrices). Use `MatCreateSubMatrix()` 7211 to extract a parallel submatrix. 7212 7213 Some matrix types place restrictions on the row and column 7214 indices, such as that they be sorted or that they be equal to each other. 7215 7216 The index sets may not have duplicate entries. 7217 7218 When extracting submatrices from a parallel matrix, each processor can 7219 form a different submatrix by setting the rows and columns of its 7220 individual index sets according to the local submatrix desired. 7221 7222 When finished using the submatrices, the user should destroy 7223 them with `MatDestroySubMatrices()`. 7224 7225 `MAT_REUSE_MATRIX` can only be used when the nonzero structure of the 7226 original matrix has not changed from that last call to `MatCreateSubMatrices()`. 7227 7228 This routine creates the matrices in submat; you should NOT create them before 7229 calling it. It also allocates the array of matrix pointers submat. 7230 7231 For `MATBAIJ` matrices the index sets must respect the block structure, that is if they 7232 request one row/column in a block, they must request all rows/columns that are in 7233 that block. For example, if the block size is 2 you cannot request just row 0 and 7234 column 0. 7235 7236 Fortran Note: 7237 .vb 7238 Mat, pointer :: submat(:) 7239 .ve 7240 7241 .seealso: [](ch_matrices), `Mat`, `MatDestroySubMatrices()`, `MatCreateSubMatrix()`, `MatGetRow()`, `MatGetDiagonal()`, `MatReuse` 7242 @*/ 7243 PetscErrorCode MatCreateSubMatrices(Mat mat, PetscInt n, const IS irow[], const IS icol[], MatReuse scall, Mat *submat[]) 7244 { 7245 PetscInt i; 7246 PetscBool eq; 7247 7248 PetscFunctionBegin; 7249 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7250 PetscValidType(mat, 1); 7251 if (n) { 7252 PetscAssertPointer(irow, 3); 7253 for (i = 0; i < n; i++) PetscValidHeaderSpecific(irow[i], IS_CLASSID, 3); 7254 PetscAssertPointer(icol, 4); 7255 for (i = 0; i < n; i++) PetscValidHeaderSpecific(icol[i], IS_CLASSID, 4); 7256 } 7257 PetscAssertPointer(submat, 6); 7258 if (n && scall == MAT_REUSE_MATRIX) { 7259 PetscAssertPointer(*submat, 6); 7260 for (i = 0; i < n; i++) PetscValidHeaderSpecific((*submat)[i], MAT_CLASSID, 6); 7261 } 7262 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 7263 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 7264 MatCheckPreallocated(mat, 1); 7265 PetscCall(PetscLogEventBegin(MAT_CreateSubMats, mat, 0, 0, 0)); 7266 PetscUseTypeMethod(mat, createsubmatrices, n, irow, icol, scall, submat); 7267 PetscCall(PetscLogEventEnd(MAT_CreateSubMats, mat, 0, 0, 0)); 7268 for (i = 0; i < n; i++) { 7269 (*submat)[i]->factortype = MAT_FACTOR_NONE; /* in case in place factorization was previously done on submatrix */ 7270 PetscCall(ISEqualUnsorted(irow[i], icol[i], &eq)); 7271 if (eq) PetscCall(MatPropagateSymmetryOptions(mat, (*submat)[i])); 7272 #if defined(PETSC_HAVE_VIENNACL) || defined(PETSC_HAVE_CUDA) || defined(PETSC_HAVE_HIP) 7273 if (mat->boundtocpu && mat->bindingpropagates) { 7274 PetscCall(MatBindToCPU((*submat)[i], PETSC_TRUE)); 7275 PetscCall(MatSetBindingPropagates((*submat)[i], PETSC_TRUE)); 7276 } 7277 #endif 7278 } 7279 PetscFunctionReturn(PETSC_SUCCESS); 7280 } 7281 7282 /*@C 7283 MatCreateSubMatricesMPI - Extracts MPI submatrices across a sub communicator of `mat` (by pairs of `IS` that may live on subcomms). 7284 7285 Collective 7286 7287 Input Parameters: 7288 + mat - the matrix 7289 . n - the number of submatrixes to be extracted 7290 . irow - index set of rows to extract 7291 . icol - index set of columns to extract 7292 - scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 7293 7294 Output Parameter: 7295 . submat - the array of submatrices 7296 7297 Level: advanced 7298 7299 Note: 7300 This is used by `PCGASM` 7301 7302 .seealso: [](ch_matrices), `Mat`, `PCGASM`, `MatCreateSubMatrices()`, `MatCreateSubMatrix()`, `MatGetRow()`, `MatGetDiagonal()`, `MatReuse` 7303 @*/ 7304 PetscErrorCode MatCreateSubMatricesMPI(Mat mat, PetscInt n, const IS irow[], const IS icol[], MatReuse scall, Mat *submat[]) 7305 { 7306 PetscInt i; 7307 PetscBool eq; 7308 7309 PetscFunctionBegin; 7310 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7311 PetscValidType(mat, 1); 7312 if (n) { 7313 PetscAssertPointer(irow, 3); 7314 PetscValidHeaderSpecific(*irow, IS_CLASSID, 3); 7315 PetscAssertPointer(icol, 4); 7316 PetscValidHeaderSpecific(*icol, IS_CLASSID, 4); 7317 } 7318 PetscAssertPointer(submat, 6); 7319 if (n && scall == MAT_REUSE_MATRIX) { 7320 PetscAssertPointer(*submat, 6); 7321 PetscValidHeaderSpecific(**submat, MAT_CLASSID, 6); 7322 } 7323 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 7324 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 7325 MatCheckPreallocated(mat, 1); 7326 7327 PetscCall(PetscLogEventBegin(MAT_CreateSubMats, mat, 0, 0, 0)); 7328 PetscUseTypeMethod(mat, createsubmatricesmpi, n, irow, icol, scall, submat); 7329 PetscCall(PetscLogEventEnd(MAT_CreateSubMats, mat, 0, 0, 0)); 7330 for (i = 0; i < n; i++) { 7331 PetscCall(ISEqualUnsorted(irow[i], icol[i], &eq)); 7332 if (eq) PetscCall(MatPropagateSymmetryOptions(mat, (*submat)[i])); 7333 } 7334 PetscFunctionReturn(PETSC_SUCCESS); 7335 } 7336 7337 /*@C 7338 MatDestroyMatrices - Destroys an array of matrices 7339 7340 Collective 7341 7342 Input Parameters: 7343 + n - the number of local matrices 7344 - mat - the matrices (this is a pointer to the array of matrices) 7345 7346 Level: advanced 7347 7348 Notes: 7349 Frees not only the matrices, but also the array that contains the matrices 7350 7351 For matrices obtained with `MatCreateSubMatrices()` use `MatDestroySubMatrices()` 7352 7353 .seealso: [](ch_matrices), `Mat`, `MatCreateSubMatrices()`, `MatDestroySubMatrices()` 7354 @*/ 7355 PetscErrorCode MatDestroyMatrices(PetscInt n, Mat *mat[]) 7356 { 7357 PetscInt i; 7358 7359 PetscFunctionBegin; 7360 if (!*mat) PetscFunctionReturn(PETSC_SUCCESS); 7361 PetscCheck(n >= 0, PETSC_COMM_SELF, PETSC_ERR_ARG_OUTOFRANGE, "Trying to destroy negative number of matrices %" PetscInt_FMT, n); 7362 PetscAssertPointer(mat, 2); 7363 7364 for (i = 0; i < n; i++) PetscCall(MatDestroy(&(*mat)[i])); 7365 7366 /* memory is allocated even if n = 0 */ 7367 PetscCall(PetscFree(*mat)); 7368 PetscFunctionReturn(PETSC_SUCCESS); 7369 } 7370 7371 /*@C 7372 MatDestroySubMatrices - Destroys a set of matrices obtained with `MatCreateSubMatrices()`. 7373 7374 Collective 7375 7376 Input Parameters: 7377 + n - the number of local matrices 7378 - mat - the matrices (this is a pointer to the array of matrices, to match the calling sequence of `MatCreateSubMatrices()`) 7379 7380 Level: advanced 7381 7382 Note: 7383 Frees not only the matrices, but also the array that contains the matrices 7384 7385 .seealso: [](ch_matrices), `Mat`, `MatCreateSubMatrices()`, `MatDestroyMatrices()` 7386 @*/ 7387 PetscErrorCode MatDestroySubMatrices(PetscInt n, Mat *mat[]) 7388 { 7389 Mat mat0; 7390 7391 PetscFunctionBegin; 7392 if (!*mat) PetscFunctionReturn(PETSC_SUCCESS); 7393 /* mat[] is an array of length n+1, see MatCreateSubMatrices_xxx() */ 7394 PetscCheck(n >= 0, PETSC_COMM_SELF, PETSC_ERR_ARG_OUTOFRANGE, "Trying to destroy negative number of matrices %" PetscInt_FMT, n); 7395 PetscAssertPointer(mat, 2); 7396 7397 mat0 = (*mat)[0]; 7398 if (mat0 && mat0->ops->destroysubmatrices) { 7399 PetscCall((*mat0->ops->destroysubmatrices)(n, mat)); 7400 } else { 7401 PetscCall(MatDestroyMatrices(n, mat)); 7402 } 7403 PetscFunctionReturn(PETSC_SUCCESS); 7404 } 7405 7406 /*@ 7407 MatGetSeqNonzeroStructure - Extracts the nonzero structure from a matrix and stores it, in its entirety, on each process 7408 7409 Collective 7410 7411 Input Parameter: 7412 . mat - the matrix 7413 7414 Output Parameter: 7415 . matstruct - the sequential matrix with the nonzero structure of `mat` 7416 7417 Level: developer 7418 7419 .seealso: [](ch_matrices), `Mat`, `MatDestroySeqNonzeroStructure()`, `MatCreateSubMatrices()`, `MatDestroyMatrices()` 7420 @*/ 7421 PetscErrorCode MatGetSeqNonzeroStructure(Mat mat, Mat *matstruct) 7422 { 7423 PetscFunctionBegin; 7424 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7425 PetscAssertPointer(matstruct, 2); 7426 7427 PetscValidType(mat, 1); 7428 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 7429 MatCheckPreallocated(mat, 1); 7430 7431 PetscCall(PetscLogEventBegin(MAT_GetSeqNonzeroStructure, mat, 0, 0, 0)); 7432 PetscUseTypeMethod(mat, getseqnonzerostructure, matstruct); 7433 PetscCall(PetscLogEventEnd(MAT_GetSeqNonzeroStructure, mat, 0, 0, 0)); 7434 PetscFunctionReturn(PETSC_SUCCESS); 7435 } 7436 7437 /*@C 7438 MatDestroySeqNonzeroStructure - Destroys matrix obtained with `MatGetSeqNonzeroStructure()`. 7439 7440 Collective 7441 7442 Input Parameter: 7443 . mat - the matrix 7444 7445 Level: advanced 7446 7447 Note: 7448 This is not needed, one can just call `MatDestroy()` 7449 7450 .seealso: [](ch_matrices), `Mat`, `MatGetSeqNonzeroStructure()` 7451 @*/ 7452 PetscErrorCode MatDestroySeqNonzeroStructure(Mat *mat) 7453 { 7454 PetscFunctionBegin; 7455 PetscAssertPointer(mat, 1); 7456 PetscCall(MatDestroy(mat)); 7457 PetscFunctionReturn(PETSC_SUCCESS); 7458 } 7459 7460 /*@ 7461 MatIncreaseOverlap - Given a set of submatrices indicated by index sets, 7462 replaces the index sets by larger ones that represent submatrices with 7463 additional overlap. 7464 7465 Collective 7466 7467 Input Parameters: 7468 + mat - the matrix 7469 . n - the number of index sets 7470 . is - the array of index sets (these index sets will changed during the call) 7471 - ov - the additional overlap requested 7472 7473 Options Database Key: 7474 . -mat_increase_overlap_scalable - use a scalable algorithm to compute the overlap (supported by MPIAIJ matrix) 7475 7476 Level: developer 7477 7478 Note: 7479 The computed overlap preserves the matrix block sizes when the blocks are square. 7480 That is: if a matrix nonzero for a given block would increase the overlap all columns associated with 7481 that block are included in the overlap regardless of whether each specific column would increase the overlap. 7482 7483 .seealso: [](ch_matrices), `Mat`, `PCASM`, `MatSetBlockSize()`, `MatIncreaseOverlapSplit()`, `MatCreateSubMatrices()` 7484 @*/ 7485 PetscErrorCode MatIncreaseOverlap(Mat mat, PetscInt n, IS is[], PetscInt ov) 7486 { 7487 PetscInt i, bs, cbs; 7488 7489 PetscFunctionBegin; 7490 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7491 PetscValidType(mat, 1); 7492 PetscValidLogicalCollectiveInt(mat, n, 2); 7493 PetscCheck(n >= 0, PETSC_COMM_SELF, PETSC_ERR_ARG_OUTOFRANGE, "Must have one or more domains, you have %" PetscInt_FMT, n); 7494 if (n) { 7495 PetscAssertPointer(is, 3); 7496 for (i = 0; i < n; i++) PetscValidHeaderSpecific(is[i], IS_CLASSID, 3); 7497 } 7498 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 7499 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 7500 MatCheckPreallocated(mat, 1); 7501 7502 if (!ov || !n) PetscFunctionReturn(PETSC_SUCCESS); 7503 PetscCall(PetscLogEventBegin(MAT_IncreaseOverlap, mat, 0, 0, 0)); 7504 PetscUseTypeMethod(mat, increaseoverlap, n, is, ov); 7505 PetscCall(PetscLogEventEnd(MAT_IncreaseOverlap, mat, 0, 0, 0)); 7506 PetscCall(MatGetBlockSizes(mat, &bs, &cbs)); 7507 if (bs == cbs) { 7508 for (i = 0; i < n; i++) PetscCall(ISSetBlockSize(is[i], bs)); 7509 } 7510 PetscFunctionReturn(PETSC_SUCCESS); 7511 } 7512 7513 PetscErrorCode MatIncreaseOverlapSplit_Single(Mat, IS *, PetscInt); 7514 7515 /*@ 7516 MatIncreaseOverlapSplit - Given a set of submatrices indicated by index sets across 7517 a sub communicator, replaces the index sets by larger ones that represent submatrices with 7518 additional overlap. 7519 7520 Collective 7521 7522 Input Parameters: 7523 + mat - the matrix 7524 . n - the number of index sets 7525 . is - the array of index sets (these index sets will changed during the call) 7526 - ov - the additional overlap requested 7527 7528 ` Options Database Key: 7529 . -mat_increase_overlap_scalable - use a scalable algorithm to compute the overlap (supported by MPIAIJ matrix) 7530 7531 Level: developer 7532 7533 .seealso: [](ch_matrices), `Mat`, `MatCreateSubMatrices()`, `MatIncreaseOverlap()` 7534 @*/ 7535 PetscErrorCode MatIncreaseOverlapSplit(Mat mat, PetscInt n, IS is[], PetscInt ov) 7536 { 7537 PetscInt i; 7538 7539 PetscFunctionBegin; 7540 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7541 PetscValidType(mat, 1); 7542 PetscCheck(n >= 0, PETSC_COMM_SELF, PETSC_ERR_ARG_OUTOFRANGE, "Must have one or more domains, you have %" PetscInt_FMT, n); 7543 if (n) { 7544 PetscAssertPointer(is, 3); 7545 PetscValidHeaderSpecific(*is, IS_CLASSID, 3); 7546 } 7547 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 7548 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 7549 MatCheckPreallocated(mat, 1); 7550 if (!ov) PetscFunctionReturn(PETSC_SUCCESS); 7551 PetscCall(PetscLogEventBegin(MAT_IncreaseOverlap, mat, 0, 0, 0)); 7552 for (i = 0; i < n; i++) PetscCall(MatIncreaseOverlapSplit_Single(mat, &is[i], ov)); 7553 PetscCall(PetscLogEventEnd(MAT_IncreaseOverlap, mat, 0, 0, 0)); 7554 PetscFunctionReturn(PETSC_SUCCESS); 7555 } 7556 7557 /*@ 7558 MatGetBlockSize - Returns the matrix block size. 7559 7560 Not Collective 7561 7562 Input Parameter: 7563 . mat - the matrix 7564 7565 Output Parameter: 7566 . bs - block size 7567 7568 Level: intermediate 7569 7570 Notes: 7571 Block row formats are `MATBAIJ` and `MATSBAIJ` ALWAYS have square block storage in the matrix. 7572 7573 If the block size has not been set yet this routine returns 1. 7574 7575 .seealso: [](ch_matrices), `Mat`, `MATBAIJ`, `MATSBAIJ`, `MatCreateSeqBAIJ()`, `MatCreateBAIJ()`, `MatGetBlockSizes()` 7576 @*/ 7577 PetscErrorCode MatGetBlockSize(Mat mat, PetscInt *bs) 7578 { 7579 PetscFunctionBegin; 7580 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7581 PetscAssertPointer(bs, 2); 7582 *bs = mat->rmap->bs; 7583 PetscFunctionReturn(PETSC_SUCCESS); 7584 } 7585 7586 /*@ 7587 MatGetBlockSizes - Returns the matrix block row and column sizes. 7588 7589 Not Collective 7590 7591 Input Parameter: 7592 . mat - the matrix 7593 7594 Output Parameters: 7595 + rbs - row block size 7596 - cbs - column block size 7597 7598 Level: intermediate 7599 7600 Notes: 7601 Block row formats are `MATBAIJ` and `MATSBAIJ` ALWAYS have square block storage in the matrix. 7602 If you pass a different block size for the columns than the rows, the row block size determines the square block storage. 7603 7604 If a block size has not been set yet this routine returns 1. 7605 7606 .seealso: [](ch_matrices), `Mat`, `MATBAIJ`, `MATSBAIJ`, `MatCreateSeqBAIJ()`, `MatCreateBAIJ()`, `MatGetBlockSize()`, `MatSetBlockSize()`, `MatSetBlockSizes()` 7607 @*/ 7608 PetscErrorCode MatGetBlockSizes(Mat mat, PetscInt *rbs, PetscInt *cbs) 7609 { 7610 PetscFunctionBegin; 7611 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7612 if (rbs) PetscAssertPointer(rbs, 2); 7613 if (cbs) PetscAssertPointer(cbs, 3); 7614 if (rbs) *rbs = mat->rmap->bs; 7615 if (cbs) *cbs = mat->cmap->bs; 7616 PetscFunctionReturn(PETSC_SUCCESS); 7617 } 7618 7619 /*@ 7620 MatSetBlockSize - Sets the matrix block size. 7621 7622 Logically Collective 7623 7624 Input Parameters: 7625 + mat - the matrix 7626 - bs - block size 7627 7628 Level: intermediate 7629 7630 Notes: 7631 Block row formats are `MATBAIJ` and `MATSBAIJ` formats ALWAYS have square block storage in the matrix. 7632 This must be called before `MatSetUp()` or MatXXXSetPreallocation() (or will default to 1) and the block size cannot be changed later. 7633 7634 For `MATAIJ` matrix format, this function can be called at a later stage, provided that the specified block size 7635 is compatible with the matrix local sizes. 7636 7637 .seealso: [](ch_matrices), `Mat`, `MATBAIJ`, `MATSBAIJ`, `MATAIJ`, `MatCreateSeqBAIJ()`, `MatCreateBAIJ()`, `MatGetBlockSize()`, `MatSetBlockSizes()`, `MatGetBlockSizes()` 7638 @*/ 7639 PetscErrorCode MatSetBlockSize(Mat mat, PetscInt bs) 7640 { 7641 PetscFunctionBegin; 7642 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7643 PetscValidLogicalCollectiveInt(mat, bs, 2); 7644 PetscCall(MatSetBlockSizes(mat, bs, bs)); 7645 PetscFunctionReturn(PETSC_SUCCESS); 7646 } 7647 7648 typedef struct { 7649 PetscInt n; 7650 IS *is; 7651 Mat *mat; 7652 PetscObjectState nonzerostate; 7653 Mat C; 7654 } EnvelopeData; 7655 7656 static PetscErrorCode EnvelopeDataDestroy(void **ptr) 7657 { 7658 EnvelopeData *edata = (EnvelopeData *)*ptr; 7659 7660 PetscFunctionBegin; 7661 for (PetscInt i = 0; i < edata->n; i++) PetscCall(ISDestroy(&edata->is[i])); 7662 PetscCall(PetscFree(edata->is)); 7663 PetscCall(PetscFree(edata)); 7664 PetscFunctionReturn(PETSC_SUCCESS); 7665 } 7666 7667 /*@ 7668 MatComputeVariableBlockEnvelope - Given a matrix whose nonzeros are in blocks along the diagonal this computes and stores 7669 the sizes of these blocks in the matrix. An individual block may lie over several processes. 7670 7671 Collective 7672 7673 Input Parameter: 7674 . mat - the matrix 7675 7676 Level: intermediate 7677 7678 Notes: 7679 There can be zeros within the blocks 7680 7681 The blocks can overlap between processes, including laying on more than two processes 7682 7683 .seealso: [](ch_matrices), `Mat`, `MatInvertVariableBlockEnvelope()`, `MatSetVariableBlockSizes()` 7684 @*/ 7685 PetscErrorCode MatComputeVariableBlockEnvelope(Mat mat) 7686 { 7687 PetscInt n, *sizes, *starts, i = 0, env = 0, tbs = 0, lblocks = 0, rstart, II, ln = 0, cnt = 0, cstart, cend; 7688 PetscInt *diag, *odiag, sc; 7689 VecScatter scatter; 7690 PetscScalar *seqv; 7691 const PetscScalar *parv; 7692 const PetscInt *ia, *ja; 7693 PetscBool set, flag, done; 7694 Mat AA = mat, A; 7695 MPI_Comm comm; 7696 PetscMPIInt rank, size, tag; 7697 MPI_Status status; 7698 PetscContainer container; 7699 EnvelopeData *edata; 7700 Vec seq, par; 7701 IS isglobal; 7702 7703 PetscFunctionBegin; 7704 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7705 PetscCall(MatIsSymmetricKnown(mat, &set, &flag)); 7706 if (!set || !flag) { 7707 /* TODO: only needs nonzero structure of transpose */ 7708 PetscCall(MatTranspose(mat, MAT_INITIAL_MATRIX, &AA)); 7709 PetscCall(MatAXPY(AA, 1.0, mat, DIFFERENT_NONZERO_PATTERN)); 7710 } 7711 PetscCall(MatAIJGetLocalMat(AA, &A)); 7712 PetscCall(MatGetRowIJ(A, 0, PETSC_FALSE, PETSC_FALSE, &n, &ia, &ja, &done)); 7713 PetscCheck(done, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Unable to get IJ structure from matrix"); 7714 7715 PetscCall(MatGetLocalSize(mat, &n, NULL)); 7716 PetscCall(PetscObjectGetNewTag((PetscObject)mat, &tag)); 7717 PetscCall(PetscObjectGetComm((PetscObject)mat, &comm)); 7718 PetscCallMPI(MPI_Comm_size(comm, &size)); 7719 PetscCallMPI(MPI_Comm_rank(comm, &rank)); 7720 7721 PetscCall(PetscMalloc2(n, &sizes, n, &starts)); 7722 7723 if (rank > 0) { 7724 PetscCallMPI(MPI_Recv(&env, 1, MPIU_INT, rank - 1, tag, comm, &status)); 7725 PetscCallMPI(MPI_Recv(&tbs, 1, MPIU_INT, rank - 1, tag, comm, &status)); 7726 } 7727 PetscCall(MatGetOwnershipRange(mat, &rstart, NULL)); 7728 for (i = 0; i < n; i++) { 7729 env = PetscMax(env, ja[ia[i + 1] - 1]); 7730 II = rstart + i; 7731 if (env == II) { 7732 starts[lblocks] = tbs; 7733 sizes[lblocks++] = 1 + II - tbs; 7734 tbs = 1 + II; 7735 } 7736 } 7737 if (rank < size - 1) { 7738 PetscCallMPI(MPI_Send(&env, 1, MPIU_INT, rank + 1, tag, comm)); 7739 PetscCallMPI(MPI_Send(&tbs, 1, MPIU_INT, rank + 1, tag, comm)); 7740 } 7741 7742 PetscCall(MatRestoreRowIJ(A, 0, PETSC_FALSE, PETSC_FALSE, &n, &ia, &ja, &done)); 7743 if (!set || !flag) PetscCall(MatDestroy(&AA)); 7744 PetscCall(MatDestroy(&A)); 7745 7746 PetscCall(PetscNew(&edata)); 7747 PetscCall(MatGetNonzeroState(mat, &edata->nonzerostate)); 7748 edata->n = lblocks; 7749 /* create IS needed for extracting blocks from the original matrix */ 7750 PetscCall(PetscMalloc1(lblocks, &edata->is)); 7751 for (PetscInt i = 0; i < lblocks; i++) PetscCall(ISCreateStride(PETSC_COMM_SELF, sizes[i], starts[i], 1, &edata->is[i])); 7752 7753 /* Create the resulting inverse matrix nonzero structure with preallocation information */ 7754 PetscCall(MatCreate(PetscObjectComm((PetscObject)mat), &edata->C)); 7755 PetscCall(MatSetSizes(edata->C, mat->rmap->n, mat->cmap->n, mat->rmap->N, mat->cmap->N)); 7756 PetscCall(MatSetBlockSizesFromMats(edata->C, mat, mat)); 7757 PetscCall(MatSetType(edata->C, MATAIJ)); 7758 7759 /* Communicate the start and end of each row, from each block to the correct rank */ 7760 /* TODO: Use PetscSF instead of VecScatter */ 7761 for (PetscInt i = 0; i < lblocks; i++) ln += sizes[i]; 7762 PetscCall(VecCreateSeq(PETSC_COMM_SELF, 2 * ln, &seq)); 7763 PetscCall(VecGetArrayWrite(seq, &seqv)); 7764 for (PetscInt i = 0; i < lblocks; i++) { 7765 for (PetscInt j = 0; j < sizes[i]; j++) { 7766 seqv[cnt] = starts[i]; 7767 seqv[cnt + 1] = starts[i] + sizes[i]; 7768 cnt += 2; 7769 } 7770 } 7771 PetscCall(VecRestoreArrayWrite(seq, &seqv)); 7772 PetscCallMPI(MPI_Scan(&cnt, &sc, 1, MPIU_INT, MPI_SUM, PetscObjectComm((PetscObject)mat))); 7773 sc -= cnt; 7774 PetscCall(VecCreateMPI(PetscObjectComm((PetscObject)mat), 2 * mat->rmap->n, 2 * mat->rmap->N, &par)); 7775 PetscCall(ISCreateStride(PETSC_COMM_SELF, cnt, sc, 1, &isglobal)); 7776 PetscCall(VecScatterCreate(seq, NULL, par, isglobal, &scatter)); 7777 PetscCall(ISDestroy(&isglobal)); 7778 PetscCall(VecScatterBegin(scatter, seq, par, INSERT_VALUES, SCATTER_FORWARD)); 7779 PetscCall(VecScatterEnd(scatter, seq, par, INSERT_VALUES, SCATTER_FORWARD)); 7780 PetscCall(VecScatterDestroy(&scatter)); 7781 PetscCall(VecDestroy(&seq)); 7782 PetscCall(MatGetOwnershipRangeColumn(mat, &cstart, &cend)); 7783 PetscCall(PetscMalloc2(mat->rmap->n, &diag, mat->rmap->n, &odiag)); 7784 PetscCall(VecGetArrayRead(par, &parv)); 7785 cnt = 0; 7786 PetscCall(MatGetSize(mat, NULL, &n)); 7787 for (PetscInt i = 0; i < mat->rmap->n; i++) { 7788 PetscInt start, end, d = 0, od = 0; 7789 7790 start = (PetscInt)PetscRealPart(parv[cnt]); 7791 end = (PetscInt)PetscRealPart(parv[cnt + 1]); 7792 cnt += 2; 7793 7794 if (start < cstart) { 7795 od += cstart - start + n - cend; 7796 d += cend - cstart; 7797 } else if (start < cend) { 7798 od += n - cend; 7799 d += cend - start; 7800 } else od += n - start; 7801 if (end <= cstart) { 7802 od -= cstart - end + n - cend; 7803 d -= cend - cstart; 7804 } else if (end < cend) { 7805 od -= n - cend; 7806 d -= cend - end; 7807 } else od -= n - end; 7808 7809 odiag[i] = od; 7810 diag[i] = d; 7811 } 7812 PetscCall(VecRestoreArrayRead(par, &parv)); 7813 PetscCall(VecDestroy(&par)); 7814 PetscCall(MatXAIJSetPreallocation(edata->C, mat->rmap->bs, diag, odiag, NULL, NULL)); 7815 PetscCall(PetscFree2(diag, odiag)); 7816 PetscCall(PetscFree2(sizes, starts)); 7817 7818 PetscCall(PetscContainerCreate(PETSC_COMM_SELF, &container)); 7819 PetscCall(PetscContainerSetPointer(container, edata)); 7820 PetscCall(PetscContainerSetCtxDestroy(container, EnvelopeDataDestroy)); 7821 PetscCall(PetscObjectCompose((PetscObject)mat, "EnvelopeData", (PetscObject)container)); 7822 PetscCall(PetscObjectDereference((PetscObject)container)); 7823 PetscFunctionReturn(PETSC_SUCCESS); 7824 } 7825 7826 /*@ 7827 MatInvertVariableBlockEnvelope - set matrix C to be the inverted block diagonal of matrix A 7828 7829 Collective 7830 7831 Input Parameters: 7832 + A - the matrix 7833 - reuse - indicates if the `C` matrix was obtained from a previous call to this routine 7834 7835 Output Parameter: 7836 . C - matrix with inverted block diagonal of `A` 7837 7838 Level: advanced 7839 7840 Note: 7841 For efficiency the matrix `A` should have all the nonzero entries clustered in smallish blocks along the diagonal. 7842 7843 .seealso: [](ch_matrices), `Mat`, `MatInvertBlockDiagonal()`, `MatComputeBlockDiagonal()` 7844 @*/ 7845 PetscErrorCode MatInvertVariableBlockEnvelope(Mat A, MatReuse reuse, Mat *C) 7846 { 7847 PetscContainer container; 7848 EnvelopeData *edata; 7849 PetscObjectState nonzerostate; 7850 7851 PetscFunctionBegin; 7852 PetscCall(PetscObjectQuery((PetscObject)A, "EnvelopeData", (PetscObject *)&container)); 7853 if (!container) { 7854 PetscCall(MatComputeVariableBlockEnvelope(A)); 7855 PetscCall(PetscObjectQuery((PetscObject)A, "EnvelopeData", (PetscObject *)&container)); 7856 } 7857 PetscCall(PetscContainerGetPointer(container, (void **)&edata)); 7858 PetscCall(MatGetNonzeroState(A, &nonzerostate)); 7859 PetscCheck(nonzerostate <= edata->nonzerostate, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Cannot handle changes to matrix nonzero structure"); 7860 PetscCheck(reuse != MAT_REUSE_MATRIX || *C == edata->C, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "C matrix must be the same as previously output"); 7861 7862 PetscCall(MatCreateSubMatrices(A, edata->n, edata->is, edata->is, MAT_INITIAL_MATRIX, &edata->mat)); 7863 *C = edata->C; 7864 7865 for (PetscInt i = 0; i < edata->n; i++) { 7866 Mat D; 7867 PetscScalar *dvalues; 7868 7869 PetscCall(MatConvert(edata->mat[i], MATSEQDENSE, MAT_INITIAL_MATRIX, &D)); 7870 PetscCall(MatSetOption(*C, MAT_ROW_ORIENTED, PETSC_FALSE)); 7871 PetscCall(MatSeqDenseInvert(D)); 7872 PetscCall(MatDenseGetArray(D, &dvalues)); 7873 PetscCall(MatSetValuesIS(*C, edata->is[i], edata->is[i], dvalues, INSERT_VALUES)); 7874 PetscCall(MatDestroy(&D)); 7875 } 7876 PetscCall(MatDestroySubMatrices(edata->n, &edata->mat)); 7877 PetscCall(MatAssemblyBegin(*C, MAT_FINAL_ASSEMBLY)); 7878 PetscCall(MatAssemblyEnd(*C, MAT_FINAL_ASSEMBLY)); 7879 PetscFunctionReturn(PETSC_SUCCESS); 7880 } 7881 7882 /*@ 7883 MatSetVariableBlockSizes - Sets diagonal point-blocks of the matrix that need not be of the same size 7884 7885 Not Collective 7886 7887 Input Parameters: 7888 + mat - the matrix 7889 . nblocks - the number of blocks on this process, each block can only exist on a single process 7890 - bsizes - the block sizes 7891 7892 Level: intermediate 7893 7894 Notes: 7895 Currently used by `PCVPBJACOBI` for `MATAIJ` matrices 7896 7897 Each variable point-block set of degrees of freedom must live on a single MPI process. That is a point block cannot straddle two MPI processes. 7898 7899 .seealso: [](ch_matrices), `Mat`, `MatCreateSeqBAIJ()`, `MatCreateBAIJ()`, `MatGetBlockSize()`, `MatSetBlockSizes()`, `MatGetBlockSizes()`, `MatGetVariableBlockSizes()`, 7900 `MatComputeVariableBlockEnvelope()`, `PCVPBJACOBI` 7901 @*/ 7902 PetscErrorCode MatSetVariableBlockSizes(Mat mat, PetscInt nblocks, const PetscInt bsizes[]) 7903 { 7904 PetscInt ncnt = 0, nlocal; 7905 7906 PetscFunctionBegin; 7907 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7908 PetscCall(MatGetLocalSize(mat, &nlocal, NULL)); 7909 PetscCheck(nblocks >= 0 && nblocks <= nlocal, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Number of local blocks %" PetscInt_FMT " is not in [0, %" PetscInt_FMT "]", nblocks, nlocal); 7910 for (PetscInt i = 0; i < nblocks; i++) ncnt += bsizes[i]; 7911 PetscCheck(ncnt == nlocal, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Sum of local block sizes %" PetscInt_FMT " does not equal local size of matrix %" PetscInt_FMT, ncnt, nlocal); 7912 PetscCall(PetscFree(mat->bsizes)); 7913 mat->nblocks = nblocks; 7914 PetscCall(PetscMalloc1(nblocks, &mat->bsizes)); 7915 PetscCall(PetscArraycpy(mat->bsizes, bsizes, nblocks)); 7916 PetscFunctionReturn(PETSC_SUCCESS); 7917 } 7918 7919 /*@C 7920 MatGetVariableBlockSizes - Gets a diagonal blocks of the matrix that need not be of the same size 7921 7922 Not Collective; No Fortran Support 7923 7924 Input Parameter: 7925 . mat - the matrix 7926 7927 Output Parameters: 7928 + nblocks - the number of blocks on this process 7929 - bsizes - the block sizes 7930 7931 Level: intermediate 7932 7933 .seealso: [](ch_matrices), `Mat`, `MatCreateSeqBAIJ()`, `MatCreateBAIJ()`, `MatGetBlockSize()`, `MatSetBlockSizes()`, `MatGetBlockSizes()`, `MatSetVariableBlockSizes()`, `MatComputeVariableBlockEnvelope()` 7934 @*/ 7935 PetscErrorCode MatGetVariableBlockSizes(Mat mat, PetscInt *nblocks, const PetscInt *bsizes[]) 7936 { 7937 PetscFunctionBegin; 7938 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 7939 if (nblocks) *nblocks = mat->nblocks; 7940 if (bsizes) *bsizes = mat->bsizes; 7941 PetscFunctionReturn(PETSC_SUCCESS); 7942 } 7943 7944 /*@ 7945 MatSelectVariableBlockSizes - When creating a submatrix, pass on the variable block sizes 7946 7947 Not Collective 7948 7949 Input Parameter: 7950 + subA - the submatrix 7951 . A - the original matrix 7952 - isrow - The `IS` of selected rows for the submatrix, must be sorted 7953 7954 Level: developer 7955 7956 Notes: 7957 If the index set is not sorted or contains off-process entries, this function will do nothing. 7958 7959 .seealso: [](ch_matrices), `Mat`, `MatSetVariableBlockSizes()`, `MatComputeVariableBlockEnvelope()` 7960 @*/ 7961 PetscErrorCode MatSelectVariableBlockSizes(Mat subA, Mat A, IS isrow) 7962 { 7963 const PetscInt *rows; 7964 PetscInt n, rStart, rEnd, Nb = 0; 7965 PetscBool flg = A->bsizes ? PETSC_TRUE : PETSC_FALSE; 7966 7967 PetscFunctionBegin; 7968 // The code for block size extraction does not support an unsorted IS 7969 if (flg) PetscCall(ISSorted(isrow, &flg)); 7970 // We don't support originally off-diagonal blocks 7971 if (flg) { 7972 PetscCall(MatGetOwnershipRange(A, &rStart, &rEnd)); 7973 PetscCall(ISGetLocalSize(isrow, &n)); 7974 PetscCall(ISGetIndices(isrow, &rows)); 7975 for (PetscInt i = 0; i < n && flg; ++i) { 7976 if (rows[i] < rStart || rows[i] >= rEnd) flg = PETSC_FALSE; 7977 } 7978 PetscCall(ISRestoreIndices(isrow, &rows)); 7979 } 7980 // quiet return if we can't extract block size 7981 PetscCallMPI(MPIU_Allreduce(MPI_IN_PLACE, &flg, 1, MPI_C_BOOL, MPI_LAND, PetscObjectComm((PetscObject)subA))); 7982 if (!flg) PetscFunctionReturn(PETSC_SUCCESS); 7983 7984 // extract block sizes 7985 PetscCall(ISGetIndices(isrow, &rows)); 7986 for (PetscInt b = 0, gr = rStart, i = 0; b < A->nblocks; ++b) { 7987 PetscBool occupied = PETSC_FALSE; 7988 7989 for (PetscInt br = 0; br < A->bsizes[b]; ++br) { 7990 const PetscInt row = gr + br; 7991 7992 if (i == n) break; 7993 if (rows[i] == row) { 7994 occupied = PETSC_TRUE; 7995 ++i; 7996 } 7997 while (i < n && rows[i] < row) ++i; 7998 } 7999 gr += A->bsizes[b]; 8000 if (occupied) ++Nb; 8001 } 8002 subA->nblocks = Nb; 8003 PetscCall(PetscFree(subA->bsizes)); 8004 PetscCall(PetscMalloc1(subA->nblocks, &subA->bsizes)); 8005 PetscInt sb = 0; 8006 for (PetscInt b = 0, gr = rStart, i = 0; b < A->nblocks; ++b) { 8007 if (sb < subA->nblocks) subA->bsizes[sb] = 0; 8008 for (PetscInt br = 0; br < A->bsizes[b]; ++br) { 8009 const PetscInt row = gr + br; 8010 8011 if (i == n) break; 8012 if (rows[i] == row) { 8013 ++subA->bsizes[sb]; 8014 ++i; 8015 } 8016 while (i < n && rows[i] < row) ++i; 8017 } 8018 gr += A->bsizes[b]; 8019 if (sb < subA->nblocks && subA->bsizes[sb]) ++sb; 8020 } 8021 PetscCheck(sb == subA->nblocks, PETSC_COMM_SELF, PETSC_ERR_PLIB, "Invalid number of blocks %" PetscInt_FMT " != %" PetscInt_FMT, sb, subA->nblocks); 8022 PetscInt nlocal, ncnt = 0; 8023 PetscCall(MatGetLocalSize(subA, &nlocal, NULL)); 8024 PetscCheck(subA->nblocks >= 0 && subA->nblocks <= nlocal, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Number of local blocks %" PetscInt_FMT " is not in [0, %" PetscInt_FMT "]", subA->nblocks, nlocal); 8025 for (PetscInt i = 0; i < subA->nblocks; i++) ncnt += subA->bsizes[i]; 8026 PetscCheck(ncnt == nlocal, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "Sum of local block sizes %" PetscInt_FMT " does not equal local size of matrix %" PetscInt_FMT, ncnt, nlocal); 8027 PetscCall(ISRestoreIndices(isrow, &rows)); 8028 PetscFunctionReturn(PETSC_SUCCESS); 8029 } 8030 8031 /*@ 8032 MatSetBlockSizes - Sets the matrix block row and column sizes. 8033 8034 Logically Collective 8035 8036 Input Parameters: 8037 + mat - the matrix 8038 . rbs - row block size 8039 - cbs - column block size 8040 8041 Level: intermediate 8042 8043 Notes: 8044 Block row formats are `MATBAIJ` and `MATSBAIJ`. These formats ALWAYS have square block storage in the matrix. 8045 If you pass a different block size for the columns than the rows, the row block size determines the square block storage. 8046 This must be called before `MatSetUp()` or MatXXXSetPreallocation() (or will default to 1) and the block size cannot be changed later. 8047 8048 For `MATAIJ` matrix this function can be called at a later stage, provided that the specified block sizes 8049 are compatible with the matrix local sizes. 8050 8051 The row and column block size determine the blocksize of the "row" and "column" vectors returned by `MatCreateVecs()`. 8052 8053 .seealso: [](ch_matrices), `Mat`, `MatCreateSeqBAIJ()`, `MatCreateBAIJ()`, `MatGetBlockSize()`, `MatSetBlockSize()`, `MatGetBlockSizes()` 8054 @*/ 8055 PetscErrorCode MatSetBlockSizes(Mat mat, PetscInt rbs, PetscInt cbs) 8056 { 8057 PetscFunctionBegin; 8058 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8059 PetscValidLogicalCollectiveInt(mat, rbs, 2); 8060 PetscValidLogicalCollectiveInt(mat, cbs, 3); 8061 PetscTryTypeMethod(mat, setblocksizes, rbs, cbs); 8062 if (mat->rmap->refcnt) { 8063 ISLocalToGlobalMapping l2g = NULL; 8064 PetscLayout nmap = NULL; 8065 8066 PetscCall(PetscLayoutDuplicate(mat->rmap, &nmap)); 8067 if (mat->rmap->mapping) PetscCall(ISLocalToGlobalMappingDuplicate(mat->rmap->mapping, &l2g)); 8068 PetscCall(PetscLayoutDestroy(&mat->rmap)); 8069 mat->rmap = nmap; 8070 mat->rmap->mapping = l2g; 8071 } 8072 if (mat->cmap->refcnt) { 8073 ISLocalToGlobalMapping l2g = NULL; 8074 PetscLayout nmap = NULL; 8075 8076 PetscCall(PetscLayoutDuplicate(mat->cmap, &nmap)); 8077 if (mat->cmap->mapping) PetscCall(ISLocalToGlobalMappingDuplicate(mat->cmap->mapping, &l2g)); 8078 PetscCall(PetscLayoutDestroy(&mat->cmap)); 8079 mat->cmap = nmap; 8080 mat->cmap->mapping = l2g; 8081 } 8082 PetscCall(PetscLayoutSetBlockSize(mat->rmap, rbs)); 8083 PetscCall(PetscLayoutSetBlockSize(mat->cmap, cbs)); 8084 PetscFunctionReturn(PETSC_SUCCESS); 8085 } 8086 8087 /*@ 8088 MatSetBlockSizesFromMats - Sets the matrix block row and column sizes to match a pair of matrices 8089 8090 Logically Collective 8091 8092 Input Parameters: 8093 + mat - the matrix 8094 . fromRow - matrix from which to copy row block size 8095 - fromCol - matrix from which to copy column block size (can be same as fromRow) 8096 8097 Level: developer 8098 8099 .seealso: [](ch_matrices), `Mat`, `MatCreateSeqBAIJ()`, `MatCreateBAIJ()`, `MatGetBlockSize()`, `MatSetBlockSizes()` 8100 @*/ 8101 PetscErrorCode MatSetBlockSizesFromMats(Mat mat, Mat fromRow, Mat fromCol) 8102 { 8103 PetscFunctionBegin; 8104 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8105 PetscValidHeaderSpecific(fromRow, MAT_CLASSID, 2); 8106 PetscValidHeaderSpecific(fromCol, MAT_CLASSID, 3); 8107 PetscCall(PetscLayoutSetBlockSize(mat->rmap, fromRow->rmap->bs)); 8108 PetscCall(PetscLayoutSetBlockSize(mat->cmap, fromCol->cmap->bs)); 8109 PetscFunctionReturn(PETSC_SUCCESS); 8110 } 8111 8112 /*@ 8113 MatResidual - Default routine to calculate the residual r = b - Ax 8114 8115 Collective 8116 8117 Input Parameters: 8118 + mat - the matrix 8119 . b - the right-hand-side 8120 - x - the approximate solution 8121 8122 Output Parameter: 8123 . r - location to store the residual 8124 8125 Level: developer 8126 8127 .seealso: [](ch_matrices), `Mat`, `MatMult()`, `MatMultAdd()`, `PCMGSetResidual()` 8128 @*/ 8129 PetscErrorCode MatResidual(Mat mat, Vec b, Vec x, Vec r) 8130 { 8131 PetscFunctionBegin; 8132 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8133 PetscValidHeaderSpecific(b, VEC_CLASSID, 2); 8134 PetscValidHeaderSpecific(x, VEC_CLASSID, 3); 8135 PetscValidHeaderSpecific(r, VEC_CLASSID, 4); 8136 PetscValidType(mat, 1); 8137 MatCheckPreallocated(mat, 1); 8138 PetscCall(PetscLogEventBegin(MAT_Residual, mat, 0, 0, 0)); 8139 if (!mat->ops->residual) { 8140 PetscCall(MatMult(mat, x, r)); 8141 PetscCall(VecAYPX(r, -1.0, b)); 8142 } else { 8143 PetscUseTypeMethod(mat, residual, b, x, r); 8144 } 8145 PetscCall(PetscLogEventEnd(MAT_Residual, mat, 0, 0, 0)); 8146 PetscFunctionReturn(PETSC_SUCCESS); 8147 } 8148 8149 /*@C 8150 MatGetRowIJ - Returns the compressed row storage i and j indices for the local rows of a sparse matrix 8151 8152 Collective 8153 8154 Input Parameters: 8155 + mat - the matrix 8156 . shift - 0 or 1 indicating we want the indices starting at 0 or 1 8157 . symmetric - `PETSC_TRUE` or `PETSC_FALSE` indicating the matrix data structure should be symmetrized 8158 - inodecompressed - `PETSC_TRUE` or `PETSC_FALSE` indicating if the nonzero structure of the 8159 inodes or the nonzero elements is wanted. For `MATBAIJ` matrices the compressed version is 8160 always used. 8161 8162 Output Parameters: 8163 + n - number of local rows in the (possibly compressed) matrix, use `NULL` if not needed 8164 . ia - the row pointers; that is ia[0] = 0, ia[row] = ia[row-1] + number of elements in that row of the matrix, use `NULL` if not needed 8165 . ja - the column indices, use `NULL` if not needed 8166 - done - indicates if the routine actually worked and returned appropriate ia[] and ja[] arrays; callers 8167 are responsible for handling the case when done == `PETSC_FALSE` and ia and ja are not set 8168 8169 Level: developer 8170 8171 Notes: 8172 You CANNOT change any of the ia[] or ja[] values. 8173 8174 Use `MatRestoreRowIJ()` when you are finished accessing the ia[] and ja[] values. 8175 8176 Fortran Notes: 8177 Use 8178 .vb 8179 PetscInt, pointer :: ia(:),ja(:) 8180 call MatGetRowIJ(mat,shift,symmetric,inodecompressed,n,ia,ja,done,ierr) 8181 ! Access the ith and jth entries via ia(i) and ja(j) 8182 .ve 8183 8184 .seealso: [](ch_matrices), `Mat`, `MATAIJ`, `MatGetColumnIJ()`, `MatRestoreRowIJ()`, `MatSeqAIJGetArray()` 8185 @*/ 8186 PetscErrorCode MatGetRowIJ(Mat mat, PetscInt shift, PetscBool symmetric, PetscBool inodecompressed, PetscInt *n, const PetscInt *ia[], const PetscInt *ja[], PetscBool *done) 8187 { 8188 PetscFunctionBegin; 8189 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8190 PetscValidType(mat, 1); 8191 if (n) PetscAssertPointer(n, 5); 8192 if (ia) PetscAssertPointer(ia, 6); 8193 if (ja) PetscAssertPointer(ja, 7); 8194 if (done) PetscAssertPointer(done, 8); 8195 MatCheckPreallocated(mat, 1); 8196 if (!mat->ops->getrowij && done) *done = PETSC_FALSE; 8197 else { 8198 if (done) *done = PETSC_TRUE; 8199 PetscCall(PetscLogEventBegin(MAT_GetRowIJ, mat, 0, 0, 0)); 8200 PetscUseTypeMethod(mat, getrowij, shift, symmetric, inodecompressed, n, ia, ja, done); 8201 PetscCall(PetscLogEventEnd(MAT_GetRowIJ, mat, 0, 0, 0)); 8202 } 8203 PetscFunctionReturn(PETSC_SUCCESS); 8204 } 8205 8206 /*@C 8207 MatGetColumnIJ - Returns the compressed column storage i and j indices for sequential matrices. 8208 8209 Collective 8210 8211 Input Parameters: 8212 + mat - the matrix 8213 . shift - 1 or zero indicating we want the indices starting at 0 or 1 8214 . symmetric - `PETSC_TRUE` or `PETSC_FALSE` indicating the matrix data structure should be 8215 symmetrized 8216 - inodecompressed - `PETSC_TRUE` or `PETSC_FALSE` indicating if the nonzero structure of the 8217 inodes or the nonzero elements is wanted. For `MATBAIJ` matrices the compressed version is 8218 always used. 8219 8220 Output Parameters: 8221 + n - number of columns in the (possibly compressed) matrix 8222 . ia - the column pointers; that is ia[0] = 0, ia[col] = i[col-1] + number of elements in that col of the matrix 8223 . ja - the row indices 8224 - done - `PETSC_TRUE` or `PETSC_FALSE`, indicating whether the values have been returned 8225 8226 Level: developer 8227 8228 .seealso: [](ch_matrices), `Mat`, `MatGetRowIJ()`, `MatRestoreColumnIJ()` 8229 @*/ 8230 PetscErrorCode MatGetColumnIJ(Mat mat, PetscInt shift, PetscBool symmetric, PetscBool inodecompressed, PetscInt *n, const PetscInt *ia[], const PetscInt *ja[], PetscBool *done) 8231 { 8232 PetscFunctionBegin; 8233 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8234 PetscValidType(mat, 1); 8235 PetscAssertPointer(n, 5); 8236 if (ia) PetscAssertPointer(ia, 6); 8237 if (ja) PetscAssertPointer(ja, 7); 8238 PetscAssertPointer(done, 8); 8239 MatCheckPreallocated(mat, 1); 8240 if (!mat->ops->getcolumnij) *done = PETSC_FALSE; 8241 else { 8242 *done = PETSC_TRUE; 8243 PetscUseTypeMethod(mat, getcolumnij, shift, symmetric, inodecompressed, n, ia, ja, done); 8244 } 8245 PetscFunctionReturn(PETSC_SUCCESS); 8246 } 8247 8248 /*@C 8249 MatRestoreRowIJ - Call after you are completed with the ia,ja indices obtained with `MatGetRowIJ()`. 8250 8251 Collective 8252 8253 Input Parameters: 8254 + mat - the matrix 8255 . shift - 1 or zero indicating we want the indices starting at 0 or 1 8256 . symmetric - `PETSC_TRUE` or `PETSC_FALSE` indicating the matrix data structure should be symmetrized 8257 . inodecompressed - `PETSC_TRUE` or `PETSC_FALSE` indicating if the nonzero structure of the 8258 inodes or the nonzero elements is wanted. For `MATBAIJ` matrices the compressed version is 8259 always used. 8260 . n - size of (possibly compressed) matrix 8261 . ia - the row pointers 8262 - ja - the column indices 8263 8264 Output Parameter: 8265 . done - `PETSC_TRUE` or `PETSC_FALSE` indicated that the values have been returned 8266 8267 Level: developer 8268 8269 Note: 8270 This routine zeros out `n`, `ia`, and `ja`. This is to prevent accidental 8271 us of the array after it has been restored. If you pass `NULL`, it will 8272 not zero the pointers. Use of ia or ja after `MatRestoreRowIJ()` is invalid. 8273 8274 .seealso: [](ch_matrices), `Mat`, `MatGetRowIJ()`, `MatRestoreColumnIJ()` 8275 @*/ 8276 PetscErrorCode MatRestoreRowIJ(Mat mat, PetscInt shift, PetscBool symmetric, PetscBool inodecompressed, PetscInt *n, const PetscInt *ia[], const PetscInt *ja[], PetscBool *done) 8277 { 8278 PetscFunctionBegin; 8279 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8280 PetscValidType(mat, 1); 8281 if (ia) PetscAssertPointer(ia, 6); 8282 if (ja) PetscAssertPointer(ja, 7); 8283 if (done) PetscAssertPointer(done, 8); 8284 MatCheckPreallocated(mat, 1); 8285 8286 if (!mat->ops->restorerowij && done) *done = PETSC_FALSE; 8287 else { 8288 if (done) *done = PETSC_TRUE; 8289 PetscUseTypeMethod(mat, restorerowij, shift, symmetric, inodecompressed, n, ia, ja, done); 8290 if (n) *n = 0; 8291 if (ia) *ia = NULL; 8292 if (ja) *ja = NULL; 8293 } 8294 PetscFunctionReturn(PETSC_SUCCESS); 8295 } 8296 8297 /*@C 8298 MatRestoreColumnIJ - Call after you are completed with the ia,ja indices obtained with `MatGetColumnIJ()`. 8299 8300 Collective 8301 8302 Input Parameters: 8303 + mat - the matrix 8304 . shift - 1 or zero indicating we want the indices starting at 0 or 1 8305 . symmetric - `PETSC_TRUE` or `PETSC_FALSE` indicating the matrix data structure should be symmetrized 8306 - inodecompressed - `PETSC_TRUE` or `PETSC_FALSE` indicating if the nonzero structure of the 8307 inodes or the nonzero elements is wanted. For `MATBAIJ` matrices the compressed version is 8308 always used. 8309 8310 Output Parameters: 8311 + n - size of (possibly compressed) matrix 8312 . ia - the column pointers 8313 . ja - the row indices 8314 - done - `PETSC_TRUE` or `PETSC_FALSE` indicated that the values have been returned 8315 8316 Level: developer 8317 8318 .seealso: [](ch_matrices), `Mat`, `MatGetColumnIJ()`, `MatRestoreRowIJ()` 8319 @*/ 8320 PetscErrorCode MatRestoreColumnIJ(Mat mat, PetscInt shift, PetscBool symmetric, PetscBool inodecompressed, PetscInt *n, const PetscInt *ia[], const PetscInt *ja[], PetscBool *done) 8321 { 8322 PetscFunctionBegin; 8323 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8324 PetscValidType(mat, 1); 8325 if (ia) PetscAssertPointer(ia, 6); 8326 if (ja) PetscAssertPointer(ja, 7); 8327 PetscAssertPointer(done, 8); 8328 MatCheckPreallocated(mat, 1); 8329 8330 if (!mat->ops->restorecolumnij) *done = PETSC_FALSE; 8331 else { 8332 *done = PETSC_TRUE; 8333 PetscUseTypeMethod(mat, restorecolumnij, shift, symmetric, inodecompressed, n, ia, ja, done); 8334 if (n) *n = 0; 8335 if (ia) *ia = NULL; 8336 if (ja) *ja = NULL; 8337 } 8338 PetscFunctionReturn(PETSC_SUCCESS); 8339 } 8340 8341 /*@ 8342 MatColoringPatch - Used inside matrix coloring routines that use `MatGetRowIJ()` and/or 8343 `MatGetColumnIJ()`. 8344 8345 Collective 8346 8347 Input Parameters: 8348 + mat - the matrix 8349 . ncolors - maximum color value 8350 . n - number of entries in colorarray 8351 - colorarray - array indicating color for each column 8352 8353 Output Parameter: 8354 . iscoloring - coloring generated using colorarray information 8355 8356 Level: developer 8357 8358 .seealso: [](ch_matrices), `Mat`, `MatGetRowIJ()`, `MatGetColumnIJ()` 8359 @*/ 8360 PetscErrorCode MatColoringPatch(Mat mat, PetscInt ncolors, PetscInt n, ISColoringValue colorarray[], ISColoring *iscoloring) 8361 { 8362 PetscFunctionBegin; 8363 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8364 PetscValidType(mat, 1); 8365 PetscAssertPointer(colorarray, 4); 8366 PetscAssertPointer(iscoloring, 5); 8367 MatCheckPreallocated(mat, 1); 8368 8369 if (!mat->ops->coloringpatch) { 8370 PetscCall(ISColoringCreate(PetscObjectComm((PetscObject)mat), ncolors, n, colorarray, PETSC_OWN_POINTER, iscoloring)); 8371 } else { 8372 PetscUseTypeMethod(mat, coloringpatch, ncolors, n, colorarray, iscoloring); 8373 } 8374 PetscFunctionReturn(PETSC_SUCCESS); 8375 } 8376 8377 /*@ 8378 MatSetUnfactored - Resets a factored matrix to be treated as unfactored. 8379 8380 Logically Collective 8381 8382 Input Parameter: 8383 . mat - the factored matrix to be reset 8384 8385 Level: developer 8386 8387 Notes: 8388 This routine should be used only with factored matrices formed by in-place 8389 factorization via ILU(0) (or by in-place LU factorization for the `MATSEQDENSE` 8390 format). This option can save memory, for example, when solving nonlinear 8391 systems with a matrix-free Newton-Krylov method and a matrix-based, in-place 8392 ILU(0) preconditioner. 8393 8394 One can specify in-place ILU(0) factorization by calling 8395 .vb 8396 PCType(pc,PCILU); 8397 PCFactorSeUseInPlace(pc); 8398 .ve 8399 or by using the options -pc_type ilu -pc_factor_in_place 8400 8401 In-place factorization ILU(0) can also be used as a local 8402 solver for the blocks within the block Jacobi or additive Schwarz 8403 methods (runtime option: -sub_pc_factor_in_place). See Users-Manual: ch_pc 8404 for details on setting local solver options. 8405 8406 Most users should employ the `KSP` interface for linear solvers 8407 instead of working directly with matrix algebra routines such as this. 8408 See, e.g., `KSPCreate()`. 8409 8410 .seealso: [](ch_matrices), `Mat`, `PCFactorSetUseInPlace()`, `PCFactorGetUseInPlace()` 8411 @*/ 8412 PetscErrorCode MatSetUnfactored(Mat mat) 8413 { 8414 PetscFunctionBegin; 8415 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8416 PetscValidType(mat, 1); 8417 MatCheckPreallocated(mat, 1); 8418 mat->factortype = MAT_FACTOR_NONE; 8419 if (!mat->ops->setunfactored) PetscFunctionReturn(PETSC_SUCCESS); 8420 PetscUseTypeMethod(mat, setunfactored); 8421 PetscFunctionReturn(PETSC_SUCCESS); 8422 } 8423 8424 /*@ 8425 MatCreateSubMatrix - Gets a single submatrix on the same number of processors 8426 as the original matrix. 8427 8428 Collective 8429 8430 Input Parameters: 8431 + mat - the original matrix 8432 . isrow - parallel `IS` containing the rows this processor should obtain 8433 . iscol - parallel `IS` containing all columns you wish to keep. Each process should list the columns that will be in IT's "diagonal part" in the new matrix. 8434 - cll - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 8435 8436 Output Parameter: 8437 . newmat - the new submatrix, of the same type as the original matrix 8438 8439 Level: advanced 8440 8441 Notes: 8442 The submatrix will be able to be multiplied with vectors using the same layout as `iscol`. 8443 8444 Some matrix types place restrictions on the row and column indices, such 8445 as that they be sorted or that they be equal to each other. For `MATBAIJ` and `MATSBAIJ` matrices the indices must include all rows/columns of a block; 8446 for example, if the block size is 3 one cannot select the 0 and 2 rows without selecting the 1 row. 8447 8448 The index sets may not have duplicate entries. 8449 8450 The first time this is called you should use a cll of `MAT_INITIAL_MATRIX`, 8451 the `MatCreateSubMatrix()` routine will create the newmat for you. Any additional calls 8452 to this routine with a mat of the same nonzero structure and with a call of `MAT_REUSE_MATRIX` 8453 will reuse the matrix generated the first time. You should call `MatDestroy()` on `newmat` when 8454 you are finished using it. 8455 8456 The communicator of the newly obtained matrix is ALWAYS the same as the communicator of 8457 the input matrix. 8458 8459 If `iscol` is `NULL` then all columns are obtained (not supported in Fortran). 8460 8461 If `isrow` and `iscol` have a nontrivial block-size, then the resulting matrix has this block-size as well. This feature 8462 is used by `PCFIELDSPLIT` to allow easy nesting of its use. 8463 8464 Example usage: 8465 Consider the following 8x8 matrix with 34 non-zero values, that is 8466 assembled across 3 processors. Let's assume that proc0 owns 3 rows, 8467 proc1 owns 3 rows, proc2 owns 2 rows. This division can be shown 8468 as follows 8469 .vb 8470 1 2 0 | 0 3 0 | 0 4 8471 Proc0 0 5 6 | 7 0 0 | 8 0 8472 9 0 10 | 11 0 0 | 12 0 8473 ------------------------------------- 8474 13 0 14 | 15 16 17 | 0 0 8475 Proc1 0 18 0 | 19 20 21 | 0 0 8476 0 0 0 | 22 23 0 | 24 0 8477 ------------------------------------- 8478 Proc2 25 26 27 | 0 0 28 | 29 0 8479 30 0 0 | 31 32 33 | 0 34 8480 .ve 8481 8482 Suppose `isrow` = [0 1 | 4 | 6 7] and `iscol` = [1 2 | 3 4 5 | 6]. The resulting submatrix is 8483 8484 .vb 8485 2 0 | 0 3 0 | 0 8486 Proc0 5 6 | 7 0 0 | 8 8487 ------------------------------- 8488 Proc1 18 0 | 19 20 21 | 0 8489 ------------------------------- 8490 Proc2 26 27 | 0 0 28 | 29 8491 0 0 | 31 32 33 | 0 8492 .ve 8493 8494 .seealso: [](ch_matrices), `Mat`, `MatCreateSubMatrices()`, `MatCreateSubMatricesMPI()`, `MatCreateSubMatrixVirtual()`, `MatSubMatrixVirtualUpdate()` 8495 @*/ 8496 PetscErrorCode MatCreateSubMatrix(Mat mat, IS isrow, IS iscol, MatReuse cll, Mat *newmat) 8497 { 8498 PetscMPIInt size; 8499 Mat *local; 8500 IS iscoltmp; 8501 PetscBool flg; 8502 8503 PetscFunctionBegin; 8504 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8505 PetscValidHeaderSpecific(isrow, IS_CLASSID, 2); 8506 if (iscol) PetscValidHeaderSpecific(iscol, IS_CLASSID, 3); 8507 PetscAssertPointer(newmat, 5); 8508 if (cll == MAT_REUSE_MATRIX) PetscValidHeaderSpecific(*newmat, MAT_CLASSID, 5); 8509 PetscValidType(mat, 1); 8510 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 8511 PetscCheck(cll != MAT_IGNORE_MATRIX, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Cannot use MAT_IGNORE_MATRIX"); 8512 PetscCheck(cll != MAT_INPLACE_MATRIX, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Cannot use MAT_INPLACE_MATRIX"); 8513 8514 MatCheckPreallocated(mat, 1); 8515 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)mat), &size)); 8516 8517 if (!iscol || isrow == iscol) { 8518 PetscBool stride; 8519 PetscMPIInt grabentirematrix = 0, grab; 8520 PetscCall(PetscObjectTypeCompare((PetscObject)isrow, ISSTRIDE, &stride)); 8521 if (stride) { 8522 PetscInt first, step, n, rstart, rend; 8523 PetscCall(ISStrideGetInfo(isrow, &first, &step)); 8524 if (step == 1) { 8525 PetscCall(MatGetOwnershipRange(mat, &rstart, &rend)); 8526 if (rstart == first) { 8527 PetscCall(ISGetLocalSize(isrow, &n)); 8528 if (n == rend - rstart) grabentirematrix = 1; 8529 } 8530 } 8531 } 8532 PetscCallMPI(MPIU_Allreduce(&grabentirematrix, &grab, 1, MPI_INT, MPI_MIN, PetscObjectComm((PetscObject)mat))); 8533 if (grab) { 8534 PetscCall(PetscInfo(mat, "Getting entire matrix as submatrix\n")); 8535 if (cll == MAT_INITIAL_MATRIX) { 8536 *newmat = mat; 8537 PetscCall(PetscObjectReference((PetscObject)mat)); 8538 } 8539 PetscFunctionReturn(PETSC_SUCCESS); 8540 } 8541 } 8542 8543 if (!iscol) { 8544 PetscCall(ISCreateStride(PetscObjectComm((PetscObject)mat), mat->cmap->n, mat->cmap->rstart, 1, &iscoltmp)); 8545 } else { 8546 iscoltmp = iscol; 8547 } 8548 8549 /* if original matrix is on just one processor then use submatrix generated */ 8550 if (mat->ops->createsubmatrices && !mat->ops->createsubmatrix && size == 1 && cll == MAT_REUSE_MATRIX) { 8551 PetscCall(MatCreateSubMatrices(mat, 1, &isrow, &iscoltmp, MAT_REUSE_MATRIX, &newmat)); 8552 goto setproperties; 8553 } else if (mat->ops->createsubmatrices && !mat->ops->createsubmatrix && size == 1) { 8554 PetscCall(MatCreateSubMatrices(mat, 1, &isrow, &iscoltmp, MAT_INITIAL_MATRIX, &local)); 8555 *newmat = *local; 8556 PetscCall(PetscFree(local)); 8557 goto setproperties; 8558 } else if (!mat->ops->createsubmatrix) { 8559 /* Create a new matrix type that implements the operation using the full matrix */ 8560 PetscCall(PetscLogEventBegin(MAT_CreateSubMat, mat, 0, 0, 0)); 8561 switch (cll) { 8562 case MAT_INITIAL_MATRIX: 8563 PetscCall(MatCreateSubMatrixVirtual(mat, isrow, iscoltmp, newmat)); 8564 break; 8565 case MAT_REUSE_MATRIX: 8566 PetscCall(MatSubMatrixVirtualUpdate(*newmat, mat, isrow, iscoltmp)); 8567 break; 8568 default: 8569 SETERRQ(PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_OUTOFRANGE, "Invalid MatReuse, must be either MAT_INITIAL_MATRIX or MAT_REUSE_MATRIX"); 8570 } 8571 PetscCall(PetscLogEventEnd(MAT_CreateSubMat, mat, 0, 0, 0)); 8572 goto setproperties; 8573 } 8574 8575 PetscCall(PetscLogEventBegin(MAT_CreateSubMat, mat, 0, 0, 0)); 8576 PetscUseTypeMethod(mat, createsubmatrix, isrow, iscoltmp, cll, newmat); 8577 PetscCall(PetscLogEventEnd(MAT_CreateSubMat, mat, 0, 0, 0)); 8578 8579 setproperties: 8580 if ((*newmat)->symmetric == PETSC_BOOL3_UNKNOWN && (*newmat)->structurally_symmetric == PETSC_BOOL3_UNKNOWN && (*newmat)->spd == PETSC_BOOL3_UNKNOWN && (*newmat)->hermitian == PETSC_BOOL3_UNKNOWN) { 8581 PetscCall(ISEqualUnsorted(isrow, iscoltmp, &flg)); 8582 if (flg) PetscCall(MatPropagateSymmetryOptions(mat, *newmat)); 8583 } 8584 if (!iscol) PetscCall(ISDestroy(&iscoltmp)); 8585 if (*newmat && cll == MAT_INITIAL_MATRIX) PetscCall(PetscObjectStateIncrease((PetscObject)*newmat)); 8586 if (!iscol || isrow == iscol) PetscCall(MatSelectVariableBlockSizes(*newmat, mat, isrow)); 8587 PetscFunctionReturn(PETSC_SUCCESS); 8588 } 8589 8590 /*@ 8591 MatPropagateSymmetryOptions - Propagates symmetry options set on a matrix to another matrix 8592 8593 Not Collective 8594 8595 Input Parameters: 8596 + A - the matrix we wish to propagate options from 8597 - B - the matrix we wish to propagate options to 8598 8599 Level: beginner 8600 8601 Note: 8602 Propagates the options associated to `MAT_SYMMETRY_ETERNAL`, `MAT_STRUCTURALLY_SYMMETRIC`, `MAT_HERMITIAN`, `MAT_SPD`, `MAT_SYMMETRIC`, and `MAT_STRUCTURAL_SYMMETRY_ETERNAL` 8603 8604 .seealso: [](ch_matrices), `Mat`, `MatSetOption()`, `MatIsSymmetricKnown()`, `MatIsSPDKnown()`, `MatIsHermitianKnown()`, `MatIsStructurallySymmetricKnown()` 8605 @*/ 8606 PetscErrorCode MatPropagateSymmetryOptions(Mat A, Mat B) 8607 { 8608 PetscFunctionBegin; 8609 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 8610 PetscValidHeaderSpecific(B, MAT_CLASSID, 2); 8611 B->symmetry_eternal = A->symmetry_eternal; 8612 B->structural_symmetry_eternal = A->structural_symmetry_eternal; 8613 B->symmetric = A->symmetric; 8614 B->structurally_symmetric = A->structurally_symmetric; 8615 B->spd = A->spd; 8616 B->hermitian = A->hermitian; 8617 PetscFunctionReturn(PETSC_SUCCESS); 8618 } 8619 8620 /*@ 8621 MatStashSetInitialSize - sets the sizes of the matrix stash, that is 8622 used during the assembly process to store values that belong to 8623 other processors. 8624 8625 Not Collective 8626 8627 Input Parameters: 8628 + mat - the matrix 8629 . size - the initial size of the stash. 8630 - bsize - the initial size of the block-stash(if used). 8631 8632 Options Database Keys: 8633 + -matstash_initial_size <size> or <size0,size1,...sizep-1> - set initial size 8634 - -matstash_block_initial_size <bsize> or <bsize0,bsize1,...bsizep-1> - set initial block size 8635 8636 Level: intermediate 8637 8638 Notes: 8639 The block-stash is used for values set with `MatSetValuesBlocked()` while 8640 the stash is used for values set with `MatSetValues()` 8641 8642 Run with the option -info and look for output of the form 8643 MatAssemblyBegin_MPIXXX:Stash has MM entries, uses nn mallocs. 8644 to determine the appropriate value, MM, to use for size and 8645 MatAssemblyBegin_MPIXXX:Block-Stash has BMM entries, uses nn mallocs. 8646 to determine the value, BMM to use for bsize 8647 8648 .seealso: [](ch_matrices), `MatAssemblyBegin()`, `MatAssemblyEnd()`, `Mat`, `MatStashGetInfo()` 8649 @*/ 8650 PetscErrorCode MatStashSetInitialSize(Mat mat, PetscInt size, PetscInt bsize) 8651 { 8652 PetscFunctionBegin; 8653 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8654 PetscValidType(mat, 1); 8655 PetscCall(MatStashSetInitialSize_Private(&mat->stash, size)); 8656 PetscCall(MatStashSetInitialSize_Private(&mat->bstash, bsize)); 8657 PetscFunctionReturn(PETSC_SUCCESS); 8658 } 8659 8660 /*@ 8661 MatInterpolateAdd - $w = y + A*x$ or $A^T*x$ depending on the shape of 8662 the matrix 8663 8664 Neighbor-wise Collective 8665 8666 Input Parameters: 8667 + A - the matrix 8668 . x - the vector to be multiplied by the interpolation operator 8669 - y - the vector to be added to the result 8670 8671 Output Parameter: 8672 . w - the resulting vector 8673 8674 Level: intermediate 8675 8676 Notes: 8677 `w` may be the same vector as `y`. 8678 8679 This allows one to use either the restriction or interpolation (its transpose) 8680 matrix to do the interpolation 8681 8682 .seealso: [](ch_matrices), `Mat`, `MatMultAdd()`, `MatMultTransposeAdd()`, `MatRestrict()`, `PCMG` 8683 @*/ 8684 PetscErrorCode MatInterpolateAdd(Mat A, Vec x, Vec y, Vec w) 8685 { 8686 PetscInt M, N, Ny; 8687 8688 PetscFunctionBegin; 8689 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 8690 PetscValidHeaderSpecific(x, VEC_CLASSID, 2); 8691 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 8692 PetscValidHeaderSpecific(w, VEC_CLASSID, 4); 8693 PetscCall(MatGetSize(A, &M, &N)); 8694 PetscCall(VecGetSize(y, &Ny)); 8695 if (M == Ny) { 8696 PetscCall(MatMultAdd(A, x, y, w)); 8697 } else { 8698 PetscCall(MatMultTransposeAdd(A, x, y, w)); 8699 } 8700 PetscFunctionReturn(PETSC_SUCCESS); 8701 } 8702 8703 /*@ 8704 MatInterpolate - $y = A*x$ or $A^T*x$ depending on the shape of 8705 the matrix 8706 8707 Neighbor-wise Collective 8708 8709 Input Parameters: 8710 + A - the matrix 8711 - x - the vector to be interpolated 8712 8713 Output Parameter: 8714 . y - the resulting vector 8715 8716 Level: intermediate 8717 8718 Note: 8719 This allows one to use either the restriction or interpolation (its transpose) 8720 matrix to do the interpolation 8721 8722 .seealso: [](ch_matrices), `Mat`, `MatMultAdd()`, `MatMultTransposeAdd()`, `MatRestrict()`, `PCMG` 8723 @*/ 8724 PetscErrorCode MatInterpolate(Mat A, Vec x, Vec y) 8725 { 8726 PetscInt M, N, Ny; 8727 8728 PetscFunctionBegin; 8729 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 8730 PetscValidHeaderSpecific(x, VEC_CLASSID, 2); 8731 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 8732 PetscCall(MatGetSize(A, &M, &N)); 8733 PetscCall(VecGetSize(y, &Ny)); 8734 if (M == Ny) { 8735 PetscCall(MatMult(A, x, y)); 8736 } else { 8737 PetscCall(MatMultTranspose(A, x, y)); 8738 } 8739 PetscFunctionReturn(PETSC_SUCCESS); 8740 } 8741 8742 /*@ 8743 MatRestrict - $y = A*x$ or $A^T*x$ 8744 8745 Neighbor-wise Collective 8746 8747 Input Parameters: 8748 + A - the matrix 8749 - x - the vector to be restricted 8750 8751 Output Parameter: 8752 . y - the resulting vector 8753 8754 Level: intermediate 8755 8756 Note: 8757 This allows one to use either the restriction or interpolation (its transpose) 8758 matrix to do the restriction 8759 8760 .seealso: [](ch_matrices), `Mat`, `MatMultAdd()`, `MatMultTransposeAdd()`, `MatInterpolate()`, `PCMG` 8761 @*/ 8762 PetscErrorCode MatRestrict(Mat A, Vec x, Vec y) 8763 { 8764 PetscInt M, N, Nx; 8765 8766 PetscFunctionBegin; 8767 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 8768 PetscValidHeaderSpecific(x, VEC_CLASSID, 2); 8769 PetscValidHeaderSpecific(y, VEC_CLASSID, 3); 8770 PetscCall(MatGetSize(A, &M, &N)); 8771 PetscCall(VecGetSize(x, &Nx)); 8772 if (M == Nx) { 8773 PetscCall(MatMultTranspose(A, x, y)); 8774 } else { 8775 PetscCall(MatMult(A, x, y)); 8776 } 8777 PetscFunctionReturn(PETSC_SUCCESS); 8778 } 8779 8780 /*@ 8781 MatMatInterpolateAdd - $Y = W + A*X$ or $W + A^T*X$ depending on the shape of `A` 8782 8783 Neighbor-wise Collective 8784 8785 Input Parameters: 8786 + A - the matrix 8787 . x - the input dense matrix to be multiplied 8788 - w - the input dense matrix to be added to the result 8789 8790 Output Parameter: 8791 . y - the output dense matrix 8792 8793 Level: intermediate 8794 8795 Note: 8796 This allows one to use either the restriction or interpolation (its transpose) 8797 matrix to do the interpolation. `y` matrix can be reused if already created with the proper sizes, 8798 otherwise it will be recreated. `y` must be initialized to `NULL` if not supplied. 8799 8800 .seealso: [](ch_matrices), `Mat`, `MatInterpolateAdd()`, `MatMatInterpolate()`, `MatMatRestrict()`, `PCMG` 8801 @*/ 8802 PetscErrorCode MatMatInterpolateAdd(Mat A, Mat x, Mat w, Mat *y) 8803 { 8804 PetscInt M, N, Mx, Nx, Mo, My = 0, Ny = 0; 8805 PetscBool trans = PETSC_TRUE; 8806 MatReuse reuse = MAT_INITIAL_MATRIX; 8807 8808 PetscFunctionBegin; 8809 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 8810 PetscValidHeaderSpecific(x, MAT_CLASSID, 2); 8811 PetscValidType(x, 2); 8812 if (w) PetscValidHeaderSpecific(w, MAT_CLASSID, 3); 8813 if (*y) PetscValidHeaderSpecific(*y, MAT_CLASSID, 4); 8814 PetscCall(MatGetSize(A, &M, &N)); 8815 PetscCall(MatGetSize(x, &Mx, &Nx)); 8816 if (N == Mx) trans = PETSC_FALSE; 8817 else PetscCheck(M == Mx, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Size mismatch: A %" PetscInt_FMT "x%" PetscInt_FMT ", X %" PetscInt_FMT "x%" PetscInt_FMT, M, N, Mx, Nx); 8818 Mo = trans ? N : M; 8819 if (*y) { 8820 PetscCall(MatGetSize(*y, &My, &Ny)); 8821 if (Mo == My && Nx == Ny) { 8822 reuse = MAT_REUSE_MATRIX; 8823 } else { 8824 PetscCheck(w || *y != w, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Cannot reuse y and w, size mismatch: A %" PetscInt_FMT "x%" PetscInt_FMT ", X %" PetscInt_FMT "x%" PetscInt_FMT ", Y %" PetscInt_FMT "x%" PetscInt_FMT, M, N, Mx, Nx, My, Ny); 8825 PetscCall(MatDestroy(y)); 8826 } 8827 } 8828 8829 if (w && *y == w) { /* this is to minimize changes in PCMG */ 8830 PetscBool flg; 8831 8832 PetscCall(PetscObjectQuery((PetscObject)*y, "__MatMatIntAdd_w", (PetscObject *)&w)); 8833 if (w) { 8834 PetscInt My, Ny, Mw, Nw; 8835 8836 PetscCall(PetscObjectTypeCompare((PetscObject)*y, ((PetscObject)w)->type_name, &flg)); 8837 PetscCall(MatGetSize(*y, &My, &Ny)); 8838 PetscCall(MatGetSize(w, &Mw, &Nw)); 8839 if (!flg || My != Mw || Ny != Nw) w = NULL; 8840 } 8841 if (!w) { 8842 PetscCall(MatDuplicate(*y, MAT_COPY_VALUES, &w)); 8843 PetscCall(PetscObjectCompose((PetscObject)*y, "__MatMatIntAdd_w", (PetscObject)w)); 8844 PetscCall(PetscObjectDereference((PetscObject)w)); 8845 } else { 8846 PetscCall(MatCopy(*y, w, UNKNOWN_NONZERO_PATTERN)); 8847 } 8848 } 8849 if (!trans) { 8850 PetscCall(MatMatMult(A, x, reuse, PETSC_DETERMINE, y)); 8851 } else { 8852 PetscCall(MatTransposeMatMult(A, x, reuse, PETSC_DETERMINE, y)); 8853 } 8854 if (w) PetscCall(MatAXPY(*y, 1.0, w, UNKNOWN_NONZERO_PATTERN)); 8855 PetscFunctionReturn(PETSC_SUCCESS); 8856 } 8857 8858 /*@ 8859 MatMatInterpolate - $Y = A*X$ or $A^T*X$ depending on the shape of `A` 8860 8861 Neighbor-wise Collective 8862 8863 Input Parameters: 8864 + A - the matrix 8865 - x - the input dense matrix 8866 8867 Output Parameter: 8868 . y - the output dense matrix 8869 8870 Level: intermediate 8871 8872 Note: 8873 This allows one to use either the restriction or interpolation (its transpose) 8874 matrix to do the interpolation. `y` matrix can be reused if already created with the proper sizes, 8875 otherwise it will be recreated. `y` must be initialized to `NULL` if not supplied. 8876 8877 .seealso: [](ch_matrices), `Mat`, `MatInterpolate()`, `MatRestrict()`, `MatMatRestrict()`, `PCMG` 8878 @*/ 8879 PetscErrorCode MatMatInterpolate(Mat A, Mat x, Mat *y) 8880 { 8881 PetscFunctionBegin; 8882 PetscCall(MatMatInterpolateAdd(A, x, NULL, y)); 8883 PetscFunctionReturn(PETSC_SUCCESS); 8884 } 8885 8886 /*@ 8887 MatMatRestrict - $Y = A*X$ or $A^T*X$ depending on the shape of `A` 8888 8889 Neighbor-wise Collective 8890 8891 Input Parameters: 8892 + A - the matrix 8893 - x - the input dense matrix 8894 8895 Output Parameter: 8896 . y - the output dense matrix 8897 8898 Level: intermediate 8899 8900 Note: 8901 This allows one to use either the restriction or interpolation (its transpose) 8902 matrix to do the restriction. `y` matrix can be reused if already created with the proper sizes, 8903 otherwise it will be recreated. `y` must be initialized to `NULL` if not supplied. 8904 8905 .seealso: [](ch_matrices), `Mat`, `MatRestrict()`, `MatInterpolate()`, `MatMatInterpolate()`, `PCMG` 8906 @*/ 8907 PetscErrorCode MatMatRestrict(Mat A, Mat x, Mat *y) 8908 { 8909 PetscFunctionBegin; 8910 PetscCall(MatMatInterpolateAdd(A, x, NULL, y)); 8911 PetscFunctionReturn(PETSC_SUCCESS); 8912 } 8913 8914 /*@ 8915 MatGetNullSpace - retrieves the null space of a matrix. 8916 8917 Logically Collective 8918 8919 Input Parameters: 8920 + mat - the matrix 8921 - nullsp - the null space object 8922 8923 Level: developer 8924 8925 .seealso: [](ch_matrices), `Mat`, `MatCreate()`, `MatNullSpaceCreate()`, `MatSetNearNullSpace()`, `MatSetNullSpace()`, `MatNullSpace` 8926 @*/ 8927 PetscErrorCode MatGetNullSpace(Mat mat, MatNullSpace *nullsp) 8928 { 8929 PetscFunctionBegin; 8930 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 8931 PetscAssertPointer(nullsp, 2); 8932 *nullsp = (mat->symmetric == PETSC_BOOL3_TRUE && !mat->nullsp) ? mat->transnullsp : mat->nullsp; 8933 PetscFunctionReturn(PETSC_SUCCESS); 8934 } 8935 8936 /*@C 8937 MatGetNullSpaces - gets the null spaces, transpose null spaces, and near null spaces from an array of matrices 8938 8939 Logically Collective 8940 8941 Input Parameters: 8942 + n - the number of matrices 8943 - mat - the array of matrices 8944 8945 Output Parameters: 8946 . nullsp - an array of null spaces, `NULL` for each matrix that does not have a null space, length 3 * `n` 8947 8948 Level: developer 8949 8950 Note: 8951 Call `MatRestoreNullspaces()` to provide these to another array of matrices 8952 8953 .seealso: [](ch_matrices), `Mat`, `MatCreate()`, `MatNullSpaceCreate()`, `MatSetNearNullSpace()`, `MatGetNullSpace()`, `MatSetTransposeNullSpace()`, `MatGetTransposeNullSpace()`, 8954 `MatNullSpaceRemove()`, `MatRestoreNullSpaces()` 8955 @*/ 8956 PetscErrorCode MatGetNullSpaces(PetscInt n, Mat mat[], MatNullSpace *nullsp[]) 8957 { 8958 PetscFunctionBegin; 8959 PetscCheck(n >= 0, PETSC_COMM_SELF, PETSC_ERR_ARG_OUTOFRANGE, "Number of matrices %" PetscInt_FMT " must be non-negative", n); 8960 PetscAssertPointer(mat, 2); 8961 PetscAssertPointer(nullsp, 3); 8962 8963 PetscCall(PetscCalloc1(3 * n, nullsp)); 8964 for (PetscInt i = 0; i < n; i++) { 8965 PetscValidHeaderSpecific(mat[i], MAT_CLASSID, 2); 8966 (*nullsp)[i] = mat[i]->nullsp; 8967 PetscCall(PetscObjectReference((PetscObject)(*nullsp)[i])); 8968 (*nullsp)[n + i] = mat[i]->nearnullsp; 8969 PetscCall(PetscObjectReference((PetscObject)(*nullsp)[n + i])); 8970 (*nullsp)[2 * n + i] = mat[i]->transnullsp; 8971 PetscCall(PetscObjectReference((PetscObject)(*nullsp)[2 * n + i])); 8972 } 8973 PetscFunctionReturn(PETSC_SUCCESS); 8974 } 8975 8976 /*@C 8977 MatRestoreNullSpaces - sets the null spaces, transpose null spaces, and near null spaces obtained with `MatGetNullSpaces()` for an array of matrices 8978 8979 Logically Collective 8980 8981 Input Parameters: 8982 + n - the number of matrices 8983 . mat - the array of matrices 8984 - nullsp - an array of null spaces 8985 8986 Level: developer 8987 8988 Note: 8989 Call `MatGetNullSpaces()` to create `nullsp` 8990 8991 .seealso: [](ch_matrices), `Mat`, `MatCreate()`, `MatNullSpaceCreate()`, `MatSetNearNullSpace()`, `MatGetNullSpace()`, `MatSetTransposeNullSpace()`, `MatGetTransposeNullSpace()`, 8992 `MatNullSpaceRemove()`, `MatGetNullSpaces()` 8993 @*/ 8994 PetscErrorCode MatRestoreNullSpaces(PetscInt n, Mat mat[], MatNullSpace *nullsp[]) 8995 { 8996 PetscFunctionBegin; 8997 PetscCheck(n >= 0, PETSC_COMM_SELF, PETSC_ERR_ARG_OUTOFRANGE, "Number of matrices %" PetscInt_FMT " must be non-negative", n); 8998 PetscAssertPointer(mat, 2); 8999 PetscAssertPointer(nullsp, 3); 9000 PetscAssertPointer(*nullsp, 3); 9001 9002 for (PetscInt i = 0; i < n; i++) { 9003 PetscValidHeaderSpecific(mat[i], MAT_CLASSID, 2); 9004 PetscCall(MatSetNullSpace(mat[i], (*nullsp)[i])); 9005 PetscCall(PetscObjectDereference((PetscObject)(*nullsp)[i])); 9006 PetscCall(MatSetNearNullSpace(mat[i], (*nullsp)[n + i])); 9007 PetscCall(PetscObjectDereference((PetscObject)(*nullsp)[n + i])); 9008 PetscCall(MatSetTransposeNullSpace(mat[i], (*nullsp)[2 * n + i])); 9009 PetscCall(PetscObjectDereference((PetscObject)(*nullsp)[2 * n + i])); 9010 } 9011 PetscCall(PetscFree(*nullsp)); 9012 PetscFunctionReturn(PETSC_SUCCESS); 9013 } 9014 9015 /*@ 9016 MatSetNullSpace - attaches a null space to a matrix. 9017 9018 Logically Collective 9019 9020 Input Parameters: 9021 + mat - the matrix 9022 - nullsp - the null space object 9023 9024 Level: advanced 9025 9026 Notes: 9027 This null space is used by the `KSP` linear solvers to solve singular systems. 9028 9029 Overwrites any previous null space that may have been attached. You can remove the null space from the matrix object by calling this routine with an nullsp of `NULL` 9030 9031 For inconsistent singular systems (linear systems where the right-hand side is not in the range of the operator) the `KSP` residuals will not converge 9032 to zero but the linear system will still be solved in a least squares sense. 9033 9034 The fundamental theorem of linear algebra (Gilbert Strang, Introduction to Applied Mathematics, page 72) states that 9035 the domain of a matrix $A$ (from $R^n$ to $R^m$ ($m$ rows, $n$ columns) $R^n$ = the direct sum of the null space of $A$, $n(A)$, plus the range of $A^T$, $R(A^T)$. 9036 Similarly $R^m$ = direct sum $n(A^T) + R(A)$. Hence the linear system $A x = b$ has a solution only if $b$ in $R(A)$ (or correspondingly $b$ is orthogonal to 9037 $n(A^T))$ and if $x$ is a solution then $x + \alpha n(A)$ is a solution for any $\alpha$. The minimum norm solution is orthogonal to $n(A)$. For problems without a solution 9038 the solution that minimizes the norm of the residual (the least squares solution) can be obtained by solving $A x = \hat{b}$ where $\hat{b}$ is $b$ orthogonalized to the $n(A^T)$. 9039 This $\hat{b}$ can be obtained by calling `MatNullSpaceRemove()` with the null space of the transpose of the matrix. 9040 9041 If the matrix is known to be symmetric because it is an `MATSBAIJ` matrix or one has called 9042 `MatSetOption`(mat,`MAT_SYMMETRIC` or possibly `MAT_SYMMETRY_ETERNAL`,`PETSC_TRUE`); this 9043 routine also automatically calls `MatSetTransposeNullSpace()`. 9044 9045 The user should call `MatNullSpaceDestroy()`. 9046 9047 .seealso: [](ch_matrices), `Mat`, `MatCreate()`, `MatNullSpaceCreate()`, `MatSetNearNullSpace()`, `MatGetNullSpace()`, `MatSetTransposeNullSpace()`, `MatGetTransposeNullSpace()`, `MatNullSpaceRemove()`, 9048 `KSPSetPCSide()` 9049 @*/ 9050 PetscErrorCode MatSetNullSpace(Mat mat, MatNullSpace nullsp) 9051 { 9052 PetscFunctionBegin; 9053 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9054 if (nullsp) PetscValidHeaderSpecific(nullsp, MAT_NULLSPACE_CLASSID, 2); 9055 if (nullsp) PetscCall(PetscObjectReference((PetscObject)nullsp)); 9056 PetscCall(MatNullSpaceDestroy(&mat->nullsp)); 9057 mat->nullsp = nullsp; 9058 if (mat->symmetric == PETSC_BOOL3_TRUE) PetscCall(MatSetTransposeNullSpace(mat, nullsp)); 9059 PetscFunctionReturn(PETSC_SUCCESS); 9060 } 9061 9062 /*@ 9063 MatGetTransposeNullSpace - retrieves the null space of the transpose of a matrix. 9064 9065 Logically Collective 9066 9067 Input Parameters: 9068 + mat - the matrix 9069 - nullsp - the null space object 9070 9071 Level: developer 9072 9073 .seealso: [](ch_matrices), `Mat`, `MatNullSpace`, `MatCreate()`, `MatNullSpaceCreate()`, `MatSetNearNullSpace()`, `MatSetTransposeNullSpace()`, `MatSetNullSpace()`, `MatGetNullSpace()` 9074 @*/ 9075 PetscErrorCode MatGetTransposeNullSpace(Mat mat, MatNullSpace *nullsp) 9076 { 9077 PetscFunctionBegin; 9078 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9079 PetscValidType(mat, 1); 9080 PetscAssertPointer(nullsp, 2); 9081 *nullsp = (mat->symmetric == PETSC_BOOL3_TRUE && !mat->transnullsp) ? mat->nullsp : mat->transnullsp; 9082 PetscFunctionReturn(PETSC_SUCCESS); 9083 } 9084 9085 /*@ 9086 MatSetTransposeNullSpace - attaches the null space of a transpose of a matrix to the matrix 9087 9088 Logically Collective 9089 9090 Input Parameters: 9091 + mat - the matrix 9092 - nullsp - the null space object 9093 9094 Level: advanced 9095 9096 Notes: 9097 This allows solving singular linear systems defined by the transpose of the matrix using `KSP` solvers with left preconditioning. 9098 9099 See `MatSetNullSpace()` 9100 9101 .seealso: [](ch_matrices), `Mat`, `MatNullSpace`, `MatCreate()`, `MatNullSpaceCreate()`, `MatSetNearNullSpace()`, `MatGetNullSpace()`, `MatSetNullSpace()`, `MatGetTransposeNullSpace()`, `MatNullSpaceRemove()`, `KSPSetPCSide()` 9102 @*/ 9103 PetscErrorCode MatSetTransposeNullSpace(Mat mat, MatNullSpace nullsp) 9104 { 9105 PetscFunctionBegin; 9106 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9107 if (nullsp) PetscValidHeaderSpecific(nullsp, MAT_NULLSPACE_CLASSID, 2); 9108 if (nullsp) PetscCall(PetscObjectReference((PetscObject)nullsp)); 9109 PetscCall(MatNullSpaceDestroy(&mat->transnullsp)); 9110 mat->transnullsp = nullsp; 9111 PetscFunctionReturn(PETSC_SUCCESS); 9112 } 9113 9114 /*@ 9115 MatSetNearNullSpace - attaches a null space to a matrix, which is often the null space (rigid body modes) of the operator without boundary conditions 9116 This null space will be used to provide near null space vectors to a multigrid preconditioner built from this matrix. 9117 9118 Logically Collective 9119 9120 Input Parameters: 9121 + mat - the matrix 9122 - nullsp - the null space object 9123 9124 Level: advanced 9125 9126 Notes: 9127 Overwrites any previous near null space that may have been attached 9128 9129 You can remove the null space by calling this routine with an `nullsp` of `NULL` 9130 9131 .seealso: [](ch_matrices), `Mat`, `MatNullSpace`, `MatCreate()`, `MatNullSpaceCreate()`, `MatSetNullSpace()`, `MatNullSpaceCreateRigidBody()`, `MatGetNearNullSpace()` 9132 @*/ 9133 PetscErrorCode MatSetNearNullSpace(Mat mat, MatNullSpace nullsp) 9134 { 9135 PetscFunctionBegin; 9136 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9137 PetscValidType(mat, 1); 9138 if (nullsp) PetscValidHeaderSpecific(nullsp, MAT_NULLSPACE_CLASSID, 2); 9139 MatCheckPreallocated(mat, 1); 9140 if (nullsp) PetscCall(PetscObjectReference((PetscObject)nullsp)); 9141 PetscCall(MatNullSpaceDestroy(&mat->nearnullsp)); 9142 mat->nearnullsp = nullsp; 9143 PetscFunctionReturn(PETSC_SUCCESS); 9144 } 9145 9146 /*@ 9147 MatGetNearNullSpace - Get null space attached with `MatSetNearNullSpace()` 9148 9149 Not Collective 9150 9151 Input Parameter: 9152 . mat - the matrix 9153 9154 Output Parameter: 9155 . nullsp - the null space object, `NULL` if not set 9156 9157 Level: advanced 9158 9159 .seealso: [](ch_matrices), `Mat`, `MatNullSpace`, `MatSetNearNullSpace()`, `MatGetNullSpace()`, `MatNullSpaceCreate()` 9160 @*/ 9161 PetscErrorCode MatGetNearNullSpace(Mat mat, MatNullSpace *nullsp) 9162 { 9163 PetscFunctionBegin; 9164 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9165 PetscValidType(mat, 1); 9166 PetscAssertPointer(nullsp, 2); 9167 MatCheckPreallocated(mat, 1); 9168 *nullsp = mat->nearnullsp; 9169 PetscFunctionReturn(PETSC_SUCCESS); 9170 } 9171 9172 /*@ 9173 MatICCFactor - Performs in-place incomplete Cholesky factorization of matrix. 9174 9175 Collective 9176 9177 Input Parameters: 9178 + mat - the matrix 9179 . row - row/column permutation 9180 - info - information on desired factorization process 9181 9182 Level: developer 9183 9184 Notes: 9185 Probably really in-place only when level of fill is zero, otherwise allocates 9186 new space to store factored matrix and deletes previous memory. 9187 9188 Most users should employ the `KSP` interface for linear solvers 9189 instead of working directly with matrix algebra routines such as this. 9190 See, e.g., `KSPCreate()`. 9191 9192 Fortran Note: 9193 A valid (non-null) `info` argument must be provided 9194 9195 .seealso: [](ch_matrices), `Mat`, `MatFactorInfo`, `MatGetFactor()`, `MatICCFactorSymbolic()`, `MatLUFactorNumeric()`, `MatCholeskyFactor()` 9196 @*/ 9197 PetscErrorCode MatICCFactor(Mat mat, IS row, const MatFactorInfo *info) 9198 { 9199 PetscFunctionBegin; 9200 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9201 PetscValidType(mat, 1); 9202 if (row) PetscValidHeaderSpecific(row, IS_CLASSID, 2); 9203 PetscAssertPointer(info, 3); 9204 PetscCheck(mat->rmap->N == mat->cmap->N, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONG, "matrix must be square"); 9205 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 9206 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 9207 MatCheckPreallocated(mat, 1); 9208 PetscUseTypeMethod(mat, iccfactor, row, info); 9209 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 9210 PetscFunctionReturn(PETSC_SUCCESS); 9211 } 9212 9213 /*@ 9214 MatDiagonalScaleLocal - Scales columns of a matrix given the scaling values including the 9215 ghosted ones. 9216 9217 Not Collective 9218 9219 Input Parameters: 9220 + mat - the matrix 9221 - diag - the diagonal values, including ghost ones 9222 9223 Level: developer 9224 9225 Notes: 9226 Works only for `MATMPIAIJ` and `MATMPIBAIJ` matrices 9227 9228 This allows one to avoid during communication to perform the scaling that must be done with `MatDiagonalScale()` 9229 9230 .seealso: [](ch_matrices), `Mat`, `MatDiagonalScale()` 9231 @*/ 9232 PetscErrorCode MatDiagonalScaleLocal(Mat mat, Vec diag) 9233 { 9234 PetscMPIInt size; 9235 9236 PetscFunctionBegin; 9237 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9238 PetscValidHeaderSpecific(diag, VEC_CLASSID, 2); 9239 PetscValidType(mat, 1); 9240 9241 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Matrix must be already assembled"); 9242 PetscCall(PetscLogEventBegin(MAT_Scale, mat, 0, 0, 0)); 9243 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)mat), &size)); 9244 if (size == 1) { 9245 PetscInt n, m; 9246 PetscCall(VecGetSize(diag, &n)); 9247 PetscCall(MatGetSize(mat, NULL, &m)); 9248 PetscCheck(m == n, PETSC_COMM_SELF, PETSC_ERR_SUP, "Only supported for sequential matrices when no ghost points/periodic conditions"); 9249 PetscCall(MatDiagonalScale(mat, NULL, diag)); 9250 } else { 9251 PetscUseMethod(mat, "MatDiagonalScaleLocal_C", (Mat, Vec), (mat, diag)); 9252 } 9253 PetscCall(PetscLogEventEnd(MAT_Scale, mat, 0, 0, 0)); 9254 PetscCall(PetscObjectStateIncrease((PetscObject)mat)); 9255 PetscFunctionReturn(PETSC_SUCCESS); 9256 } 9257 9258 /*@ 9259 MatGetInertia - Gets the inertia from a factored matrix 9260 9261 Collective 9262 9263 Input Parameter: 9264 . mat - the matrix 9265 9266 Output Parameters: 9267 + nneg - number of negative eigenvalues 9268 . nzero - number of zero eigenvalues 9269 - npos - number of positive eigenvalues 9270 9271 Level: advanced 9272 9273 Note: 9274 Matrix must have been factored by `MatCholeskyFactor()` 9275 9276 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatCholeskyFactor()` 9277 @*/ 9278 PetscErrorCode MatGetInertia(Mat mat, PetscInt *nneg, PetscInt *nzero, PetscInt *npos) 9279 { 9280 PetscFunctionBegin; 9281 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9282 PetscValidType(mat, 1); 9283 PetscCheck(mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Unfactored matrix"); 9284 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Numeric factor mat is not assembled"); 9285 PetscUseTypeMethod(mat, getinertia, nneg, nzero, npos); 9286 PetscFunctionReturn(PETSC_SUCCESS); 9287 } 9288 9289 /*@C 9290 MatSolves - Solves $A x = b$, given a factored matrix, for a collection of vectors 9291 9292 Neighbor-wise Collective 9293 9294 Input Parameters: 9295 + mat - the factored matrix obtained with `MatGetFactor()` 9296 - b - the right-hand-side vectors 9297 9298 Output Parameter: 9299 . x - the result vectors 9300 9301 Level: developer 9302 9303 Note: 9304 The vectors `b` and `x` cannot be the same. I.e., one cannot 9305 call `MatSolves`(A,x,x). 9306 9307 .seealso: [](ch_matrices), `Mat`, `Vecs`, `MatSolveAdd()`, `MatSolveTranspose()`, `MatSolveTransposeAdd()`, `MatSolve()` 9308 @*/ 9309 PetscErrorCode MatSolves(Mat mat, Vecs b, Vecs x) 9310 { 9311 PetscFunctionBegin; 9312 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9313 PetscValidType(mat, 1); 9314 PetscCheck(x != b, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_IDN, "x and b must be different vectors"); 9315 PetscCheck(mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Unfactored matrix"); 9316 if (!mat->rmap->N && !mat->cmap->N) PetscFunctionReturn(PETSC_SUCCESS); 9317 9318 MatCheckPreallocated(mat, 1); 9319 PetscCall(PetscLogEventBegin(MAT_Solves, mat, 0, 0, 0)); 9320 PetscUseTypeMethod(mat, solves, b, x); 9321 PetscCall(PetscLogEventEnd(MAT_Solves, mat, 0, 0, 0)); 9322 PetscFunctionReturn(PETSC_SUCCESS); 9323 } 9324 9325 /*@ 9326 MatIsSymmetric - Test whether a matrix is symmetric 9327 9328 Collective 9329 9330 Input Parameters: 9331 + A - the matrix to test 9332 - tol - difference between value and its transpose less than this amount counts as equal (use 0.0 for exact transpose) 9333 9334 Output Parameter: 9335 . flg - the result 9336 9337 Level: intermediate 9338 9339 Notes: 9340 For real numbers `MatIsSymmetric()` and `MatIsHermitian()` return identical results 9341 9342 If the matrix does not yet know if it is symmetric or not this can be an expensive operation, also available `MatIsSymmetricKnown()` 9343 9344 One can declare that a matrix is symmetric with `MatSetOption`(mat,`MAT_SYMMETRIC`,`PETSC_TRUE`) and if it is known to remain symmetric 9345 after changes to the matrices values one can call `MatSetOption`(mat,`MAT_SYMMETRY_ETERNAL`,`PETSC_TRUE`) 9346 9347 .seealso: [](ch_matrices), `Mat`, `MatTranspose()`, `MatIsTranspose()`, `MatIsHermitian()`, `MatIsStructurallySymmetric()`, `MatSetOption()`, `MatIsSymmetricKnown()`, 9348 `MAT_SYMMETRIC`, `MAT_SYMMETRY_ETERNAL` 9349 @*/ 9350 PetscErrorCode MatIsSymmetric(Mat A, PetscReal tol, PetscBool *flg) 9351 { 9352 PetscFunctionBegin; 9353 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 9354 PetscAssertPointer(flg, 3); 9355 if (A->symmetric != PETSC_BOOL3_UNKNOWN && !tol) *flg = PetscBool3ToBool(A->symmetric); 9356 else { 9357 if (A->ops->issymmetric) PetscUseTypeMethod(A, issymmetric, tol, flg); 9358 else PetscCall(MatIsTranspose(A, A, tol, flg)); 9359 if (!tol) PetscCall(MatSetOption(A, MAT_SYMMETRIC, *flg)); 9360 } 9361 PetscFunctionReturn(PETSC_SUCCESS); 9362 } 9363 9364 /*@ 9365 MatIsHermitian - Test whether a matrix is Hermitian 9366 9367 Collective 9368 9369 Input Parameters: 9370 + A - the matrix to test 9371 - tol - difference between value and its transpose less than this amount counts as equal (use 0.0 for exact Hermitian) 9372 9373 Output Parameter: 9374 . flg - the result 9375 9376 Level: intermediate 9377 9378 Notes: 9379 For real numbers `MatIsSymmetric()` and `MatIsHermitian()` return identical results 9380 9381 If the matrix does not yet know if it is Hermitian or not this can be an expensive operation, also available `MatIsHermitianKnown()` 9382 9383 One can declare that a matrix is Hermitian with `MatSetOption`(mat,`MAT_HERMITIAN`,`PETSC_TRUE`) and if it is known to remain Hermitian 9384 after changes to the matrices values one can call `MatSetOption`(mat,`MAT_SYMEMTRY_ETERNAL`,`PETSC_TRUE`) 9385 9386 .seealso: [](ch_matrices), `Mat`, `MatTranspose()`, `MatIsTranspose()`, `MatIsHermitianKnown()`, `MatIsStructurallySymmetric()`, `MatSetOption()`, 9387 `MatIsSymmetricKnown()`, `MatIsSymmetric()`, `MAT_HERMITIAN`, `MAT_SYMMETRY_ETERNAL` 9388 @*/ 9389 PetscErrorCode MatIsHermitian(Mat A, PetscReal tol, PetscBool *flg) 9390 { 9391 PetscFunctionBegin; 9392 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 9393 PetscAssertPointer(flg, 3); 9394 if (A->hermitian != PETSC_BOOL3_UNKNOWN && !tol) *flg = PetscBool3ToBool(A->hermitian); 9395 else { 9396 if (A->ops->ishermitian) PetscUseTypeMethod(A, ishermitian, tol, flg); 9397 else PetscCall(MatIsHermitianTranspose(A, A, tol, flg)); 9398 if (!tol) PetscCall(MatSetOption(A, MAT_HERMITIAN, *flg)); 9399 } 9400 PetscFunctionReturn(PETSC_SUCCESS); 9401 } 9402 9403 /*@ 9404 MatIsSymmetricKnown - Checks if a matrix knows if it is symmetric or not and its symmetric state 9405 9406 Not Collective 9407 9408 Input Parameter: 9409 . A - the matrix to check 9410 9411 Output Parameters: 9412 + set - `PETSC_TRUE` if the matrix knows its symmetry state (this tells you if the next flag is valid) 9413 - flg - the result (only valid if set is `PETSC_TRUE`) 9414 9415 Level: advanced 9416 9417 Notes: 9418 Does not check the matrix values directly, so this may return unknown (set = `PETSC_FALSE`). Use `MatIsSymmetric()` 9419 if you want it explicitly checked 9420 9421 One can declare that a matrix is symmetric with `MatSetOption`(mat,`MAT_SYMMETRIC`,`PETSC_TRUE`) and if it is known to remain symmetric 9422 after changes to the matrices values one can call `MatSetOption`(mat,`MAT_SYMMETRY_ETERNAL`,`PETSC_TRUE`) 9423 9424 .seealso: [](ch_matrices), `Mat`, `MAT_SYMMETRY_ETERNAL`, `MatTranspose()`, `MatIsTranspose()`, `MatIsHermitian()`, `MatIsStructurallySymmetric()`, `MatSetOption()`, `MatIsSymmetric()`, `MatIsHermitianKnown()` 9425 @*/ 9426 PetscErrorCode MatIsSymmetricKnown(Mat A, PetscBool *set, PetscBool *flg) 9427 { 9428 PetscFunctionBegin; 9429 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 9430 PetscAssertPointer(set, 2); 9431 PetscAssertPointer(flg, 3); 9432 if (A->symmetric != PETSC_BOOL3_UNKNOWN) { 9433 *set = PETSC_TRUE; 9434 *flg = PetscBool3ToBool(A->symmetric); 9435 } else { 9436 *set = PETSC_FALSE; 9437 } 9438 PetscFunctionReturn(PETSC_SUCCESS); 9439 } 9440 9441 /*@ 9442 MatIsSPDKnown - Checks if a matrix knows if it is symmetric positive definite or not and its symmetric positive definite state 9443 9444 Not Collective 9445 9446 Input Parameter: 9447 . A - the matrix to check 9448 9449 Output Parameters: 9450 + set - `PETSC_TRUE` if the matrix knows its symmetric positive definite state (this tells you if the next flag is valid) 9451 - flg - the result (only valid if set is `PETSC_TRUE`) 9452 9453 Level: advanced 9454 9455 Notes: 9456 Does not check the matrix values directly, so this may return unknown (set = `PETSC_FALSE`). 9457 9458 One can declare that a matrix is SPD with `MatSetOption`(mat,`MAT_SPD`,`PETSC_TRUE`) and if it is known to remain SPD 9459 after changes to the matrices values one can call `MatSetOption`(mat,`MAT_SPD_ETERNAL`,`PETSC_TRUE`) 9460 9461 .seealso: [](ch_matrices), `Mat`, `MAT_SPD_ETERNAL`, `MAT_SPD`, `MatTranspose()`, `MatIsTranspose()`, `MatIsHermitian()`, `MatIsStructurallySymmetric()`, `MatSetOption()`, `MatIsSymmetric()`, `MatIsHermitianKnown()` 9462 @*/ 9463 PetscErrorCode MatIsSPDKnown(Mat A, PetscBool *set, PetscBool *flg) 9464 { 9465 PetscFunctionBegin; 9466 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 9467 PetscAssertPointer(set, 2); 9468 PetscAssertPointer(flg, 3); 9469 if (A->spd != PETSC_BOOL3_UNKNOWN) { 9470 *set = PETSC_TRUE; 9471 *flg = PetscBool3ToBool(A->spd); 9472 } else { 9473 *set = PETSC_FALSE; 9474 } 9475 PetscFunctionReturn(PETSC_SUCCESS); 9476 } 9477 9478 /*@ 9479 MatIsHermitianKnown - Checks if a matrix knows if it is Hermitian or not and its Hermitian state 9480 9481 Not Collective 9482 9483 Input Parameter: 9484 . A - the matrix to check 9485 9486 Output Parameters: 9487 + set - `PETSC_TRUE` if the matrix knows its Hermitian state (this tells you if the next flag is valid) 9488 - flg - the result (only valid if set is `PETSC_TRUE`) 9489 9490 Level: advanced 9491 9492 Notes: 9493 Does not check the matrix values directly, so this may return unknown (set = `PETSC_FALSE`). Use `MatIsHermitian()` 9494 if you want it explicitly checked 9495 9496 One can declare that a matrix is Hermitian with `MatSetOption`(mat,`MAT_HERMITIAN`,`PETSC_TRUE`) and if it is known to remain Hermitian 9497 after changes to the matrices values one can call `MatSetOption`(mat,`MAT_SYMMETRY_ETERNAL`,`PETSC_TRUE`) 9498 9499 .seealso: [](ch_matrices), `Mat`, `MAT_SYMMETRY_ETERNAL`, `MAT_HERMITIAN`, `MatTranspose()`, `MatIsTranspose()`, `MatIsHermitian()`, `MatIsStructurallySymmetric()`, `MatSetOption()`, `MatIsSymmetric()` 9500 @*/ 9501 PetscErrorCode MatIsHermitianKnown(Mat A, PetscBool *set, PetscBool *flg) 9502 { 9503 PetscFunctionBegin; 9504 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 9505 PetscAssertPointer(set, 2); 9506 PetscAssertPointer(flg, 3); 9507 if (A->hermitian != PETSC_BOOL3_UNKNOWN) { 9508 *set = PETSC_TRUE; 9509 *flg = PetscBool3ToBool(A->hermitian); 9510 } else { 9511 *set = PETSC_FALSE; 9512 } 9513 PetscFunctionReturn(PETSC_SUCCESS); 9514 } 9515 9516 /*@ 9517 MatIsStructurallySymmetric - Test whether a matrix is structurally symmetric 9518 9519 Collective 9520 9521 Input Parameter: 9522 . A - the matrix to test 9523 9524 Output Parameter: 9525 . flg - the result 9526 9527 Level: intermediate 9528 9529 Notes: 9530 If the matrix does yet know it is structurally symmetric this can be an expensive operation, also available `MatIsStructurallySymmetricKnown()` 9531 9532 One can declare that a matrix is structurally symmetric with `MatSetOption`(mat,`MAT_STRUCTURALLY_SYMMETRIC`,`PETSC_TRUE`) and if it is known to remain structurally 9533 symmetric after changes to the matrices values one can call `MatSetOption`(mat,`MAT_STRUCTURAL_SYMMETRY_ETERNAL`,`PETSC_TRUE`) 9534 9535 .seealso: [](ch_matrices), `Mat`, `MAT_STRUCTURALLY_SYMMETRIC`, `MAT_STRUCTURAL_SYMMETRY_ETERNAL`, `MatTranspose()`, `MatIsTranspose()`, `MatIsHermitian()`, `MatIsSymmetric()`, `MatSetOption()`, `MatIsStructurallySymmetricKnown()` 9536 @*/ 9537 PetscErrorCode MatIsStructurallySymmetric(Mat A, PetscBool *flg) 9538 { 9539 PetscFunctionBegin; 9540 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 9541 PetscAssertPointer(flg, 2); 9542 if (A->structurally_symmetric != PETSC_BOOL3_UNKNOWN) { 9543 *flg = PetscBool3ToBool(A->structurally_symmetric); 9544 } else { 9545 PetscUseTypeMethod(A, isstructurallysymmetric, flg); 9546 PetscCall(MatSetOption(A, MAT_STRUCTURALLY_SYMMETRIC, *flg)); 9547 } 9548 PetscFunctionReturn(PETSC_SUCCESS); 9549 } 9550 9551 /*@ 9552 MatIsStructurallySymmetricKnown - Checks if a matrix knows if it is structurally symmetric or not and its structurally symmetric state 9553 9554 Not Collective 9555 9556 Input Parameter: 9557 . A - the matrix to check 9558 9559 Output Parameters: 9560 + set - PETSC_TRUE if the matrix knows its structurally symmetric state (this tells you if the next flag is valid) 9561 - flg - the result (only valid if set is PETSC_TRUE) 9562 9563 Level: advanced 9564 9565 Notes: 9566 One can declare that a matrix is structurally symmetric with `MatSetOption`(mat,`MAT_STRUCTURALLY_SYMMETRIC`,`PETSC_TRUE`) and if it is known to remain structurally 9567 symmetric after changes to the matrices values one can call `MatSetOption`(mat,`MAT_STRUCTURAL_SYMMETRY_ETERNAL`,`PETSC_TRUE`) 9568 9569 Use `MatIsStructurallySymmetric()` to explicitly check if a matrix is structurally symmetric (this is an expensive operation) 9570 9571 .seealso: [](ch_matrices), `Mat`, `MAT_STRUCTURALLY_SYMMETRIC`, `MatTranspose()`, `MatIsTranspose()`, `MatIsHermitian()`, `MatIsStructurallySymmetric()`, `MatSetOption()`, `MatIsSymmetric()`, `MatIsHermitianKnown()` 9572 @*/ 9573 PetscErrorCode MatIsStructurallySymmetricKnown(Mat A, PetscBool *set, PetscBool *flg) 9574 { 9575 PetscFunctionBegin; 9576 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 9577 PetscAssertPointer(set, 2); 9578 PetscAssertPointer(flg, 3); 9579 if (A->structurally_symmetric != PETSC_BOOL3_UNKNOWN) { 9580 *set = PETSC_TRUE; 9581 *flg = PetscBool3ToBool(A->structurally_symmetric); 9582 } else { 9583 *set = PETSC_FALSE; 9584 } 9585 PetscFunctionReturn(PETSC_SUCCESS); 9586 } 9587 9588 /*@ 9589 MatStashGetInfo - Gets how many values are currently in the matrix stash, i.e. need 9590 to be communicated to other processors during the `MatAssemblyBegin()`/`MatAssemblyEnd()` process 9591 9592 Not Collective 9593 9594 Input Parameter: 9595 . mat - the matrix 9596 9597 Output Parameters: 9598 + nstash - the size of the stash 9599 . reallocs - the number of additional mallocs incurred. 9600 . bnstash - the size of the block stash 9601 - breallocs - the number of additional mallocs incurred.in the block stash 9602 9603 Level: advanced 9604 9605 .seealso: [](ch_matrices), `MatAssemblyBegin()`, `MatAssemblyEnd()`, `Mat`, `MatStashSetInitialSize()` 9606 @*/ 9607 PetscErrorCode MatStashGetInfo(Mat mat, PetscInt *nstash, PetscInt *reallocs, PetscInt *bnstash, PetscInt *breallocs) 9608 { 9609 PetscFunctionBegin; 9610 PetscCall(MatStashGetInfo_Private(&mat->stash, nstash, reallocs)); 9611 PetscCall(MatStashGetInfo_Private(&mat->bstash, bnstash, breallocs)); 9612 PetscFunctionReturn(PETSC_SUCCESS); 9613 } 9614 9615 /*@ 9616 MatCreateVecs - Get vector(s) compatible with the matrix, i.e. with the same 9617 parallel layout, `PetscLayout` for rows and columns 9618 9619 Collective 9620 9621 Input Parameter: 9622 . mat - the matrix 9623 9624 Output Parameters: 9625 + right - (optional) vector that the matrix can be multiplied against 9626 - left - (optional) vector that the matrix vector product can be stored in 9627 9628 Level: advanced 9629 9630 Notes: 9631 The blocksize of the returned vectors is determined by the row and column block sizes set with `MatSetBlockSizes()` or the single blocksize (same for both) set by `MatSetBlockSize()`. 9632 9633 These are new vectors which are not owned by the mat, they should be destroyed in `VecDestroy()` when no longer needed 9634 9635 .seealso: [](ch_matrices), `Mat`, `Vec`, `VecCreate()`, `VecDestroy()`, `DMCreateGlobalVector()` 9636 @*/ 9637 PetscErrorCode MatCreateVecs(Mat mat, Vec *right, Vec *left) 9638 { 9639 PetscFunctionBegin; 9640 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9641 PetscValidType(mat, 1); 9642 if (mat->ops->getvecs) { 9643 PetscUseTypeMethod(mat, getvecs, right, left); 9644 } else { 9645 if (right) { 9646 PetscCheck(mat->cmap->n >= 0, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "PetscLayout for columns not yet setup"); 9647 PetscCall(VecCreateWithLayout_Private(mat->cmap, right)); 9648 PetscCall(VecSetType(*right, mat->defaultvectype)); 9649 #if defined(PETSC_HAVE_VIENNACL) || defined(PETSC_HAVE_CUDA) || defined(PETSC_HAVE_HIP) 9650 if (mat->boundtocpu && mat->bindingpropagates) { 9651 PetscCall(VecSetBindingPropagates(*right, PETSC_TRUE)); 9652 PetscCall(VecBindToCPU(*right, PETSC_TRUE)); 9653 } 9654 #endif 9655 } 9656 if (left) { 9657 PetscCheck(mat->rmap->n >= 0, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "PetscLayout for rows not yet setup"); 9658 PetscCall(VecCreateWithLayout_Private(mat->rmap, left)); 9659 PetscCall(VecSetType(*left, mat->defaultvectype)); 9660 #if defined(PETSC_HAVE_VIENNACL) || defined(PETSC_HAVE_CUDA) || defined(PETSC_HAVE_HIP) 9661 if (mat->boundtocpu && mat->bindingpropagates) { 9662 PetscCall(VecSetBindingPropagates(*left, PETSC_TRUE)); 9663 PetscCall(VecBindToCPU(*left, PETSC_TRUE)); 9664 } 9665 #endif 9666 } 9667 } 9668 PetscFunctionReturn(PETSC_SUCCESS); 9669 } 9670 9671 /*@ 9672 MatFactorInfoInitialize - Initializes a `MatFactorInfo` data structure 9673 with default values. 9674 9675 Not Collective 9676 9677 Input Parameter: 9678 . info - the `MatFactorInfo` data structure 9679 9680 Level: developer 9681 9682 Notes: 9683 The solvers are generally used through the `KSP` and `PC` objects, for example 9684 `PCLU`, `PCILU`, `PCCHOLESKY`, `PCICC` 9685 9686 Once the data structure is initialized one may change certain entries as desired for the particular factorization to be performed 9687 9688 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorInfo` 9689 @*/ 9690 PetscErrorCode MatFactorInfoInitialize(MatFactorInfo *info) 9691 { 9692 PetscFunctionBegin; 9693 PetscCall(PetscMemzero(info, sizeof(MatFactorInfo))); 9694 PetscFunctionReturn(PETSC_SUCCESS); 9695 } 9696 9697 /*@ 9698 MatFactorSetSchurIS - Set indices corresponding to the Schur complement you wish to have computed 9699 9700 Collective 9701 9702 Input Parameters: 9703 + mat - the factored matrix 9704 - is - the index set defining the Schur indices (0-based) 9705 9706 Level: advanced 9707 9708 Notes: 9709 Call `MatFactorSolveSchurComplement()` or `MatFactorSolveSchurComplementTranspose()` after this call to solve a Schur complement system. 9710 9711 You can call `MatFactorGetSchurComplement()` or `MatFactorCreateSchurComplement()` after this call. 9712 9713 This functionality is only supported for `MATSOLVERMUMPS` and `MATSOLVERMKL_PARDISO` 9714 9715 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorGetSchurComplement()`, `MatFactorRestoreSchurComplement()`, `MatFactorCreateSchurComplement()`, `MatFactorSolveSchurComplement()`, 9716 `MatFactorSolveSchurComplementTranspose()`, `MATSOLVERMUMPS`, `MATSOLVERMKL_PARDISO` 9717 @*/ 9718 PetscErrorCode MatFactorSetSchurIS(Mat mat, IS is) 9719 { 9720 PetscErrorCode (*f)(Mat, IS); 9721 9722 PetscFunctionBegin; 9723 PetscValidType(mat, 1); 9724 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 9725 PetscValidType(is, 2); 9726 PetscValidHeaderSpecific(is, IS_CLASSID, 2); 9727 PetscCheckSameComm(mat, 1, is, 2); 9728 PetscCheck(mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Only for factored matrix"); 9729 PetscCall(PetscObjectQueryFunction((PetscObject)mat, "MatFactorSetSchurIS_C", &f)); 9730 PetscCheck(f, PetscObjectComm((PetscObject)mat), PETSC_ERR_SUP, "The selected MatSolverType does not support Schur complement computation. You should use MATSOLVERMUMPS or MATSOLVERMKL_PARDISO"); 9731 PetscCall(MatDestroy(&mat->schur)); 9732 PetscCall((*f)(mat, is)); 9733 PetscCheck(mat->schur, PetscObjectComm((PetscObject)mat), PETSC_ERR_PLIB, "Schur complement has not been created"); 9734 PetscFunctionReturn(PETSC_SUCCESS); 9735 } 9736 9737 /*@ 9738 MatFactorCreateSchurComplement - Create a Schur complement matrix object using Schur data computed during the factorization step 9739 9740 Logically Collective 9741 9742 Input Parameters: 9743 + F - the factored matrix obtained by calling `MatGetFactor()` 9744 . S - location where to return the Schur complement, can be `NULL` 9745 - status - the status of the Schur complement matrix, can be `NULL` 9746 9747 Level: advanced 9748 9749 Notes: 9750 You must call `MatFactorSetSchurIS()` before calling this routine. 9751 9752 This functionality is only supported for `MATSOLVERMUMPS` and `MATSOLVERMKL_PARDISO` 9753 9754 The routine provides a copy of the Schur matrix stored within the solver data structures. 9755 The caller must destroy the object when it is no longer needed. 9756 If `MatFactorInvertSchurComplement()` has been called, the routine gets back the inverse. 9757 9758 Use `MatFactorGetSchurComplement()` to get access to the Schur complement matrix inside the factored matrix instead of making a copy of it (which this function does) 9759 9760 See `MatCreateSchurComplement()` or `MatGetSchurComplement()` for ways to create virtual or approximate Schur complements. 9761 9762 Developer Note: 9763 The reason this routine exists is because the representation of the Schur complement within the factor matrix may be different than a standard PETSc 9764 matrix representation and we normally do not want to use the time or memory to make a copy as a regular PETSc matrix. 9765 9766 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorSetSchurIS()`, `MatFactorGetSchurComplement()`, `MatFactorSchurStatus`, `MATSOLVERMUMPS`, `MATSOLVERMKL_PARDISO` 9767 @*/ 9768 PetscErrorCode MatFactorCreateSchurComplement(Mat F, Mat *S, MatFactorSchurStatus *status) 9769 { 9770 PetscFunctionBegin; 9771 PetscValidHeaderSpecific(F, MAT_CLASSID, 1); 9772 if (S) PetscAssertPointer(S, 2); 9773 if (status) PetscAssertPointer(status, 3); 9774 if (S) { 9775 PetscErrorCode (*f)(Mat, Mat *); 9776 9777 PetscCall(PetscObjectQueryFunction((PetscObject)F, "MatFactorCreateSchurComplement_C", &f)); 9778 if (f) { 9779 PetscCall((*f)(F, S)); 9780 } else { 9781 PetscCall(MatDuplicate(F->schur, MAT_COPY_VALUES, S)); 9782 } 9783 } 9784 if (status) *status = F->schur_status; 9785 PetscFunctionReturn(PETSC_SUCCESS); 9786 } 9787 9788 /*@ 9789 MatFactorGetSchurComplement - Gets access to a Schur complement matrix using the current Schur data within a factored matrix 9790 9791 Logically Collective 9792 9793 Input Parameters: 9794 + F - the factored matrix obtained by calling `MatGetFactor()` 9795 . S - location where to return the Schur complement, can be `NULL` 9796 - status - the status of the Schur complement matrix, can be `NULL` 9797 9798 Level: advanced 9799 9800 Notes: 9801 You must call `MatFactorSetSchurIS()` before calling this routine. 9802 9803 Schur complement mode is currently implemented for sequential matrices with factor type of `MATSOLVERMUMPS` 9804 9805 The routine returns a the Schur Complement stored within the data structures of the solver. 9806 9807 If `MatFactorInvertSchurComplement()` has previously been called, the returned matrix is actually the inverse of the Schur complement. 9808 9809 The returned matrix should not be destroyed; the caller should call `MatFactorRestoreSchurComplement()` when the object is no longer needed. 9810 9811 Use `MatFactorCreateSchurComplement()` to create a copy of the Schur complement matrix that is within a factored matrix 9812 9813 See `MatCreateSchurComplement()` or `MatGetSchurComplement()` for ways to create virtual or approximate Schur complements. 9814 9815 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorSetSchurIS()`, `MatFactorRestoreSchurComplement()`, `MatFactorCreateSchurComplement()`, `MatFactorSchurStatus` 9816 @*/ 9817 PetscErrorCode MatFactorGetSchurComplement(Mat F, Mat *S, MatFactorSchurStatus *status) 9818 { 9819 PetscFunctionBegin; 9820 PetscValidHeaderSpecific(F, MAT_CLASSID, 1); 9821 if (S) { 9822 PetscAssertPointer(S, 2); 9823 *S = F->schur; 9824 } 9825 if (status) { 9826 PetscAssertPointer(status, 3); 9827 *status = F->schur_status; 9828 } 9829 PetscFunctionReturn(PETSC_SUCCESS); 9830 } 9831 9832 static PetscErrorCode MatFactorUpdateSchurStatus_Private(Mat F) 9833 { 9834 Mat S = F->schur; 9835 9836 PetscFunctionBegin; 9837 switch (F->schur_status) { 9838 case MAT_FACTOR_SCHUR_UNFACTORED: // fall-through 9839 case MAT_FACTOR_SCHUR_INVERTED: 9840 if (S) { 9841 S->ops->solve = NULL; 9842 S->ops->matsolve = NULL; 9843 S->ops->solvetranspose = NULL; 9844 S->ops->matsolvetranspose = NULL; 9845 S->ops->solveadd = NULL; 9846 S->ops->solvetransposeadd = NULL; 9847 S->factortype = MAT_FACTOR_NONE; 9848 PetscCall(PetscFree(S->solvertype)); 9849 } 9850 case MAT_FACTOR_SCHUR_FACTORED: // fall-through 9851 break; 9852 default: 9853 SETERRQ(PetscObjectComm((PetscObject)F), PETSC_ERR_SUP, "Unhandled MatFactorSchurStatus %d", F->schur_status); 9854 } 9855 PetscFunctionReturn(PETSC_SUCCESS); 9856 } 9857 9858 /*@ 9859 MatFactorRestoreSchurComplement - Restore the Schur complement matrix object obtained from a call to `MatFactorGetSchurComplement()` 9860 9861 Logically Collective 9862 9863 Input Parameters: 9864 + F - the factored matrix obtained by calling `MatGetFactor()` 9865 . S - location where the Schur complement is stored 9866 - status - the status of the Schur complement matrix (see `MatFactorSchurStatus`) 9867 9868 Level: advanced 9869 9870 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorSetSchurIS()`, `MatFactorCreateSchurComplement()`, `MatFactorSchurStatus` 9871 @*/ 9872 PetscErrorCode MatFactorRestoreSchurComplement(Mat F, Mat *S, MatFactorSchurStatus status) 9873 { 9874 PetscFunctionBegin; 9875 PetscValidHeaderSpecific(F, MAT_CLASSID, 1); 9876 if (S) { 9877 PetscValidHeaderSpecific(*S, MAT_CLASSID, 2); 9878 *S = NULL; 9879 } 9880 F->schur_status = status; 9881 PetscCall(MatFactorUpdateSchurStatus_Private(F)); 9882 PetscFunctionReturn(PETSC_SUCCESS); 9883 } 9884 9885 /*@ 9886 MatFactorSolveSchurComplementTranspose - Solve the transpose of the Schur complement system computed during the factorization step 9887 9888 Logically Collective 9889 9890 Input Parameters: 9891 + F - the factored matrix obtained by calling `MatGetFactor()` 9892 . rhs - location where the right-hand side of the Schur complement system is stored 9893 - sol - location where the solution of the Schur complement system has to be returned 9894 9895 Level: advanced 9896 9897 Notes: 9898 The sizes of the vectors should match the size of the Schur complement 9899 9900 Must be called after `MatFactorSetSchurIS()` 9901 9902 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorSetSchurIS()`, `MatFactorSolveSchurComplement()` 9903 @*/ 9904 PetscErrorCode MatFactorSolveSchurComplementTranspose(Mat F, Vec rhs, Vec sol) 9905 { 9906 PetscFunctionBegin; 9907 PetscValidType(F, 1); 9908 PetscValidType(rhs, 2); 9909 PetscValidType(sol, 3); 9910 PetscValidHeaderSpecific(F, MAT_CLASSID, 1); 9911 PetscValidHeaderSpecific(rhs, VEC_CLASSID, 2); 9912 PetscValidHeaderSpecific(sol, VEC_CLASSID, 3); 9913 PetscCheckSameComm(F, 1, rhs, 2); 9914 PetscCheckSameComm(F, 1, sol, 3); 9915 PetscCall(MatFactorFactorizeSchurComplement(F)); 9916 switch (F->schur_status) { 9917 case MAT_FACTOR_SCHUR_FACTORED: 9918 PetscCall(MatSolveTranspose(F->schur, rhs, sol)); 9919 break; 9920 case MAT_FACTOR_SCHUR_INVERTED: 9921 PetscCall(MatMultTranspose(F->schur, rhs, sol)); 9922 break; 9923 default: 9924 SETERRQ(PetscObjectComm((PetscObject)F), PETSC_ERR_SUP, "Unhandled MatFactorSchurStatus %d", F->schur_status); 9925 } 9926 PetscFunctionReturn(PETSC_SUCCESS); 9927 } 9928 9929 /*@ 9930 MatFactorSolveSchurComplement - Solve the Schur complement system computed during the factorization step 9931 9932 Logically Collective 9933 9934 Input Parameters: 9935 + F - the factored matrix obtained by calling `MatGetFactor()` 9936 . rhs - location where the right-hand side of the Schur complement system is stored 9937 - sol - location where the solution of the Schur complement system has to be returned 9938 9939 Level: advanced 9940 9941 Notes: 9942 The sizes of the vectors should match the size of the Schur complement 9943 9944 Must be called after `MatFactorSetSchurIS()` 9945 9946 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorSetSchurIS()`, `MatFactorSolveSchurComplementTranspose()` 9947 @*/ 9948 PetscErrorCode MatFactorSolveSchurComplement(Mat F, Vec rhs, Vec sol) 9949 { 9950 PetscFunctionBegin; 9951 PetscValidType(F, 1); 9952 PetscValidType(rhs, 2); 9953 PetscValidType(sol, 3); 9954 PetscValidHeaderSpecific(F, MAT_CLASSID, 1); 9955 PetscValidHeaderSpecific(rhs, VEC_CLASSID, 2); 9956 PetscValidHeaderSpecific(sol, VEC_CLASSID, 3); 9957 PetscCheckSameComm(F, 1, rhs, 2); 9958 PetscCheckSameComm(F, 1, sol, 3); 9959 PetscCall(MatFactorFactorizeSchurComplement(F)); 9960 switch (F->schur_status) { 9961 case MAT_FACTOR_SCHUR_FACTORED: 9962 PetscCall(MatSolve(F->schur, rhs, sol)); 9963 break; 9964 case MAT_FACTOR_SCHUR_INVERTED: 9965 PetscCall(MatMult(F->schur, rhs, sol)); 9966 break; 9967 default: 9968 SETERRQ(PetscObjectComm((PetscObject)F), PETSC_ERR_SUP, "Unhandled MatFactorSchurStatus %d", F->schur_status); 9969 } 9970 PetscFunctionReturn(PETSC_SUCCESS); 9971 } 9972 9973 PETSC_SINGLE_LIBRARY_INTERN PetscErrorCode MatSeqDenseInvertFactors_Private(Mat); 9974 #if PetscDefined(HAVE_CUDA) 9975 PETSC_SINGLE_LIBRARY_INTERN PetscErrorCode MatSeqDenseCUDAInvertFactors_Internal(Mat); 9976 #endif 9977 9978 /* Schur status updated in the interface */ 9979 static PetscErrorCode MatFactorInvertSchurComplement_Private(Mat F) 9980 { 9981 Mat S = F->schur; 9982 9983 PetscFunctionBegin; 9984 if (S) { 9985 PetscMPIInt size; 9986 PetscBool isdense, isdensecuda; 9987 9988 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)S), &size)); 9989 PetscCheck(size <= 1, PetscObjectComm((PetscObject)S), PETSC_ERR_SUP, "Not yet implemented"); 9990 PetscCall(PetscObjectTypeCompare((PetscObject)S, MATSEQDENSE, &isdense)); 9991 PetscCall(PetscObjectTypeCompare((PetscObject)S, MATSEQDENSECUDA, &isdensecuda)); 9992 PetscCheck(isdense || isdensecuda, PetscObjectComm((PetscObject)S), PETSC_ERR_SUP, "Not implemented for type %s", ((PetscObject)S)->type_name); 9993 PetscCall(PetscLogEventBegin(MAT_FactorInvS, F, 0, 0, 0)); 9994 if (isdense) { 9995 PetscCall(MatSeqDenseInvertFactors_Private(S)); 9996 } else if (isdensecuda) { 9997 #if defined(PETSC_HAVE_CUDA) 9998 PetscCall(MatSeqDenseCUDAInvertFactors_Internal(S)); 9999 #endif 10000 } 10001 // HIP?????????????? 10002 PetscCall(PetscLogEventEnd(MAT_FactorInvS, F, 0, 0, 0)); 10003 } 10004 PetscFunctionReturn(PETSC_SUCCESS); 10005 } 10006 10007 /*@ 10008 MatFactorInvertSchurComplement - Invert the Schur complement matrix computed during the factorization step 10009 10010 Logically Collective 10011 10012 Input Parameter: 10013 . F - the factored matrix obtained by calling `MatGetFactor()` 10014 10015 Level: advanced 10016 10017 Notes: 10018 Must be called after `MatFactorSetSchurIS()`. 10019 10020 Call `MatFactorGetSchurComplement()` or `MatFactorCreateSchurComplement()` AFTER this call to actually compute the inverse and get access to it. 10021 10022 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorSetSchurIS()`, `MatFactorGetSchurComplement()`, `MatFactorCreateSchurComplement()` 10023 @*/ 10024 PetscErrorCode MatFactorInvertSchurComplement(Mat F) 10025 { 10026 PetscFunctionBegin; 10027 PetscValidType(F, 1); 10028 PetscValidHeaderSpecific(F, MAT_CLASSID, 1); 10029 if (F->schur_status == MAT_FACTOR_SCHUR_INVERTED) PetscFunctionReturn(PETSC_SUCCESS); 10030 PetscCall(MatFactorFactorizeSchurComplement(F)); 10031 PetscCall(MatFactorInvertSchurComplement_Private(F)); 10032 F->schur_status = MAT_FACTOR_SCHUR_INVERTED; 10033 PetscFunctionReturn(PETSC_SUCCESS); 10034 } 10035 10036 /*@ 10037 MatFactorFactorizeSchurComplement - Factorize the Schur complement matrix computed during the factorization step 10038 10039 Logically Collective 10040 10041 Input Parameter: 10042 . F - the factored matrix obtained by calling `MatGetFactor()` 10043 10044 Level: advanced 10045 10046 Note: 10047 Must be called after `MatFactorSetSchurIS()` 10048 10049 .seealso: [](ch_matrices), `Mat`, `MatGetFactor()`, `MatFactorSetSchurIS()`, `MatFactorInvertSchurComplement()` 10050 @*/ 10051 PetscErrorCode MatFactorFactorizeSchurComplement(Mat F) 10052 { 10053 MatFactorInfo info; 10054 10055 PetscFunctionBegin; 10056 PetscValidType(F, 1); 10057 PetscValidHeaderSpecific(F, MAT_CLASSID, 1); 10058 if (F->schur_status == MAT_FACTOR_SCHUR_INVERTED || F->schur_status == MAT_FACTOR_SCHUR_FACTORED) PetscFunctionReturn(PETSC_SUCCESS); 10059 PetscCall(PetscLogEventBegin(MAT_FactorFactS, F, 0, 0, 0)); 10060 PetscCall(PetscMemzero(&info, sizeof(MatFactorInfo))); 10061 if (F->factortype == MAT_FACTOR_CHOLESKY) { /* LDL^t regarded as Cholesky */ 10062 PetscCall(MatCholeskyFactor(F->schur, NULL, &info)); 10063 } else { 10064 PetscCall(MatLUFactor(F->schur, NULL, NULL, &info)); 10065 } 10066 PetscCall(PetscLogEventEnd(MAT_FactorFactS, F, 0, 0, 0)); 10067 F->schur_status = MAT_FACTOR_SCHUR_FACTORED; 10068 PetscFunctionReturn(PETSC_SUCCESS); 10069 } 10070 10071 /*@ 10072 MatPtAP - Creates the matrix product $C = P^T * A * P$ 10073 10074 Neighbor-wise Collective 10075 10076 Input Parameters: 10077 + A - the matrix 10078 . P - the projection matrix 10079 . scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 10080 - fill - expected fill as ratio of nnz(C)/(nnz(A) + nnz(P)), use `PETSC_DETERMINE` or `PETSC_CURRENT` if you do not have a good estimate 10081 if the result is a dense matrix this is irrelevant 10082 10083 Output Parameter: 10084 . C - the product matrix 10085 10086 Level: intermediate 10087 10088 Notes: 10089 C will be created and must be destroyed by the user with `MatDestroy()`. 10090 10091 An alternative approach to this function is to use `MatProductCreate()` and set the desired options before the computation is done 10092 10093 The deprecated `PETSC_DEFAULT` in `fill` also means use the current value 10094 10095 Developer Note: 10096 For matrix types without special implementation the function fallbacks to `MatMatMult()` followed by `MatTransposeMatMult()`. 10097 10098 .seealso: [](ch_matrices), `Mat`, `MatProductCreate()`, `MatMatMult()`, `MatRARt()` 10099 @*/ 10100 PetscErrorCode MatPtAP(Mat A, Mat P, MatReuse scall, PetscReal fill, Mat *C) 10101 { 10102 PetscFunctionBegin; 10103 if (scall == MAT_REUSE_MATRIX) MatCheckProduct(*C, 5); 10104 PetscCheck(scall != MAT_INPLACE_MATRIX, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Inplace product not supported"); 10105 10106 if (scall == MAT_INITIAL_MATRIX) { 10107 PetscCall(MatProductCreate(A, P, NULL, C)); 10108 PetscCall(MatProductSetType(*C, MATPRODUCT_PtAP)); 10109 PetscCall(MatProductSetAlgorithm(*C, "default")); 10110 PetscCall(MatProductSetFill(*C, fill)); 10111 10112 (*C)->product->api_user = PETSC_TRUE; 10113 PetscCall(MatProductSetFromOptions(*C)); 10114 PetscCheck((*C)->ops->productsymbolic, PetscObjectComm((PetscObject)*C), PETSC_ERR_SUP, "MatProduct %s not supported for A %s and P %s", MatProductTypes[MATPRODUCT_PtAP], ((PetscObject)A)->type_name, ((PetscObject)P)->type_name); 10115 PetscCall(MatProductSymbolic(*C)); 10116 } else { /* scall == MAT_REUSE_MATRIX */ 10117 PetscCall(MatProductReplaceMats(A, P, NULL, *C)); 10118 } 10119 10120 PetscCall(MatProductNumeric(*C)); 10121 (*C)->symmetric = A->symmetric; 10122 (*C)->spd = A->spd; 10123 PetscFunctionReturn(PETSC_SUCCESS); 10124 } 10125 10126 /*@ 10127 MatRARt - Creates the matrix product $C = R * A * R^T$ 10128 10129 Neighbor-wise Collective 10130 10131 Input Parameters: 10132 + A - the matrix 10133 . R - the projection matrix 10134 . scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 10135 - fill - expected fill as ratio of nnz(C)/nnz(A), use `PETSC_DETERMINE` or `PETSC_CURRENT` if you do not have a good estimate 10136 if the result is a dense matrix this is irrelevant 10137 10138 Output Parameter: 10139 . C - the product matrix 10140 10141 Level: intermediate 10142 10143 Notes: 10144 `C` will be created and must be destroyed by the user with `MatDestroy()`. 10145 10146 An alternative approach to this function is to use `MatProductCreate()` and set the desired options before the computation is done 10147 10148 This routine is currently only implemented for pairs of `MATAIJ` matrices and classes 10149 which inherit from `MATAIJ`. Due to PETSc sparse matrix block row distribution among processes, 10150 the parallel `MatRARt()` is implemented computing the explicit transpose of `R`, which can be very expensive. 10151 We recommend using `MatPtAP()` when possible. 10152 10153 The deprecated `PETSC_DEFAULT` in `fill` also means use the current value 10154 10155 .seealso: [](ch_matrices), `Mat`, `MatProductCreate()`, `MatMatMult()`, `MatPtAP()` 10156 @*/ 10157 PetscErrorCode MatRARt(Mat A, Mat R, MatReuse scall, PetscReal fill, Mat *C) 10158 { 10159 PetscFunctionBegin; 10160 if (scall == MAT_REUSE_MATRIX) MatCheckProduct(*C, 5); 10161 PetscCheck(scall != MAT_INPLACE_MATRIX, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Inplace product not supported"); 10162 10163 if (scall == MAT_INITIAL_MATRIX) { 10164 PetscCall(MatProductCreate(A, R, NULL, C)); 10165 PetscCall(MatProductSetType(*C, MATPRODUCT_RARt)); 10166 PetscCall(MatProductSetAlgorithm(*C, "default")); 10167 PetscCall(MatProductSetFill(*C, fill)); 10168 10169 (*C)->product->api_user = PETSC_TRUE; 10170 PetscCall(MatProductSetFromOptions(*C)); 10171 PetscCheck((*C)->ops->productsymbolic, PetscObjectComm((PetscObject)*C), PETSC_ERR_SUP, "MatProduct %s not supported for A %s and R %s", MatProductTypes[MATPRODUCT_RARt], ((PetscObject)A)->type_name, ((PetscObject)R)->type_name); 10172 PetscCall(MatProductSymbolic(*C)); 10173 } else { /* scall == MAT_REUSE_MATRIX */ 10174 PetscCall(MatProductReplaceMats(A, R, NULL, *C)); 10175 } 10176 10177 PetscCall(MatProductNumeric(*C)); 10178 if (A->symmetric == PETSC_BOOL3_TRUE) PetscCall(MatSetOption(*C, MAT_SYMMETRIC, PETSC_TRUE)); 10179 PetscFunctionReturn(PETSC_SUCCESS); 10180 } 10181 10182 static PetscErrorCode MatProduct_Private(Mat A, Mat B, MatReuse scall, PetscReal fill, MatProductType ptype, Mat *C) 10183 { 10184 PetscBool flg = PETSC_TRUE; 10185 10186 PetscFunctionBegin; 10187 PetscCheck(scall != MAT_INPLACE_MATRIX, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "MAT_INPLACE_MATRIX product not supported"); 10188 if (scall == MAT_INITIAL_MATRIX) { 10189 PetscCall(PetscInfo(A, "Calling MatProduct API with MAT_INITIAL_MATRIX and product type %s\n", MatProductTypes[ptype])); 10190 PetscCall(MatProductCreate(A, B, NULL, C)); 10191 PetscCall(MatProductSetAlgorithm(*C, MATPRODUCTALGORITHMDEFAULT)); 10192 PetscCall(MatProductSetFill(*C, fill)); 10193 } else { /* scall == MAT_REUSE_MATRIX */ 10194 Mat_Product *product = (*C)->product; 10195 10196 PetscCall(PetscObjectBaseTypeCompareAny((PetscObject)*C, &flg, MATSEQDENSE, MATMPIDENSE, "")); 10197 if (flg && product && product->type != ptype) { 10198 PetscCall(MatProductClear(*C)); 10199 product = NULL; 10200 } 10201 PetscCall(PetscInfo(A, "Calling MatProduct API with MAT_REUSE_MATRIX %s product present and product type %s\n", product ? "with" : "without", MatProductTypes[ptype])); 10202 if (!product) { /* user provide the dense matrix *C without calling MatProductCreate() or reusing it from previous calls */ 10203 PetscCheck(flg, PetscObjectComm((PetscObject)*C), PETSC_ERR_SUP, "Call MatProductCreate() first"); 10204 PetscCall(MatProductCreate_Private(A, B, NULL, *C)); 10205 product = (*C)->product; 10206 product->fill = fill; 10207 product->clear = PETSC_TRUE; 10208 } else { /* user may change input matrices A or B when MAT_REUSE_MATRIX */ 10209 flg = PETSC_FALSE; 10210 PetscCall(MatProductReplaceMats(A, B, NULL, *C)); 10211 } 10212 } 10213 if (flg) { 10214 (*C)->product->api_user = PETSC_TRUE; 10215 PetscCall(MatProductSetType(*C, ptype)); 10216 PetscCall(MatProductSetFromOptions(*C)); 10217 PetscCall(MatProductSymbolic(*C)); 10218 } 10219 PetscCall(MatProductNumeric(*C)); 10220 PetscFunctionReturn(PETSC_SUCCESS); 10221 } 10222 10223 /*@ 10224 MatMatMult - Performs matrix-matrix multiplication C=A*B. 10225 10226 Neighbor-wise Collective 10227 10228 Input Parameters: 10229 + A - the left matrix 10230 . B - the right matrix 10231 . scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 10232 - fill - expected fill as ratio of nnz(C)/(nnz(A) + nnz(B)), use `PETSC_DETERMINE` or `PETSC_CURRENT` if you do not have a good estimate 10233 if the result is a dense matrix this is irrelevant 10234 10235 Output Parameter: 10236 . C - the product matrix 10237 10238 Notes: 10239 Unless scall is `MAT_REUSE_MATRIX` C will be created. 10240 10241 `MAT_REUSE_MATRIX` can only be used if the matrices A and B have the same nonzero pattern as in the previous call and C was obtained from a previous 10242 call to this function with `MAT_INITIAL_MATRIX`. 10243 10244 To determine the correct fill value, run with `-info` and search for the string "Fill ratio" to see the value actually needed. 10245 10246 In the special case where matrix `B` (and hence `C`) are dense you can create the correctly sized matrix `C` yourself and then call this routine with `MAT_REUSE_MATRIX`, 10247 rather than first having `MatMatMult()` create it for you. You can NEVER do this if the matrix `C` is sparse. 10248 10249 The deprecated `PETSC_DEFAULT` in `fill` also means use the current value 10250 10251 Example of Usage: 10252 .vb 10253 MatProductCreate(A,B,NULL,&C); 10254 MatProductSetType(C,MATPRODUCT_AB); 10255 MatProductSymbolic(C); 10256 MatProductNumeric(C); // compute C=A * B 10257 MatProductReplaceMats(A1,B1,NULL,C); // compute C=A1 * B1 10258 MatProductNumeric(C); 10259 MatProductReplaceMats(A2,NULL,NULL,C); // compute C=A2 * B1 10260 MatProductNumeric(C); 10261 .ve 10262 10263 Level: intermediate 10264 10265 .seealso: [](ch_matrices), `Mat`, `MatProductType`, `MATPRODUCT_AB`, `MatTransposeMatMult()`, `MatMatTransposeMult()`, `MatPtAP()`, `MatProductCreate()`, `MatProductSymbolic()`, `MatProductReplaceMats()`, `MatProductNumeric()` 10266 @*/ 10267 PetscErrorCode MatMatMult(Mat A, Mat B, MatReuse scall, PetscReal fill, Mat *C) 10268 { 10269 PetscFunctionBegin; 10270 PetscCall(MatProduct_Private(A, B, scall, fill, MATPRODUCT_AB, C)); 10271 PetscFunctionReturn(PETSC_SUCCESS); 10272 } 10273 10274 /*@ 10275 MatMatTransposeMult - Performs matrix-matrix multiplication $C = A*B^T$. 10276 10277 Neighbor-wise Collective 10278 10279 Input Parameters: 10280 + A - the left matrix 10281 . B - the right matrix 10282 . scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 10283 - fill - expected fill as ratio of nnz(C)/(nnz(A) + nnz(B)), use `PETSC_DETERMINE` or `PETSC_CURRENT` if not known 10284 10285 Output Parameter: 10286 . C - the product matrix 10287 10288 Options Database Key: 10289 . -matmattransmult_mpidense_mpidense_via {allgatherv,cyclic} - Choose between algorithms for `MATMPIDENSE` matrices: the 10290 first redundantly copies the transposed `B` matrix on each process and requires O(log P) communication complexity; 10291 the second never stores more than one portion of the `B` matrix at a time but requires O(P) communication complexity. 10292 10293 Level: intermediate 10294 10295 Notes: 10296 C will be created if `MAT_INITIAL_MATRIX` and must be destroyed by the user with `MatDestroy()`. 10297 10298 `MAT_REUSE_MATRIX` can only be used if the matrices A and B have the same nonzero pattern as in the previous call 10299 10300 To determine the correct fill value, run with -info and search for the string "Fill ratio" to see the value 10301 actually needed. 10302 10303 This routine is currently only implemented for pairs of `MATSEQAIJ` matrices, for the `MATSEQDENSE` class, 10304 and for pairs of `MATMPIDENSE` matrices. 10305 10306 This routine is shorthand for using `MatProductCreate()` with the `MatProductType` of `MATPRODUCT_ABt` 10307 10308 The deprecated `PETSC_DEFAULT` in `fill` also means use the current value 10309 10310 .seealso: [](ch_matrices), `Mat`, `MatProductCreate()`, `MATPRODUCT_ABt`, `MatMatMult()`, `MatTransposeMatMult()` `MatPtAP()`, `MatProductAlgorithm`, `MatProductType` 10311 @*/ 10312 PetscErrorCode MatMatTransposeMult(Mat A, Mat B, MatReuse scall, PetscReal fill, Mat *C) 10313 { 10314 PetscFunctionBegin; 10315 PetscCall(MatProduct_Private(A, B, scall, fill, MATPRODUCT_ABt, C)); 10316 if (A == B) PetscCall(MatSetOption(*C, MAT_SYMMETRIC, PETSC_TRUE)); 10317 PetscFunctionReturn(PETSC_SUCCESS); 10318 } 10319 10320 /*@ 10321 MatTransposeMatMult - Performs matrix-matrix multiplication $C = A^T*B$. 10322 10323 Neighbor-wise Collective 10324 10325 Input Parameters: 10326 + A - the left matrix 10327 . B - the right matrix 10328 . scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 10329 - fill - expected fill as ratio of nnz(C)/(nnz(A) + nnz(B)), use `PETSC_DETERMINE` or `PETSC_CURRENT` if not known 10330 10331 Output Parameter: 10332 . C - the product matrix 10333 10334 Level: intermediate 10335 10336 Notes: 10337 `C` will be created if `MAT_INITIAL_MATRIX` and must be destroyed by the user with `MatDestroy()`. 10338 10339 `MAT_REUSE_MATRIX` can only be used if the matrices A and B have the same nonzero pattern as in the previous call. 10340 10341 This routine is shorthand for using `MatProductCreate()` with the `MatProductType` of `MATPRODUCT_AtB` 10342 10343 To determine the correct fill value, run with -info and search for the string "Fill ratio" to see the value 10344 actually needed. 10345 10346 This routine is currently implemented for pairs of `MATAIJ` matrices and pairs of `MATSEQDENSE` matrices and classes 10347 which inherit from `MATSEQAIJ`. `C` will be of the same type as the input matrices. 10348 10349 The deprecated `PETSC_DEFAULT` in `fill` also means use the current value 10350 10351 .seealso: [](ch_matrices), `Mat`, `MatProductCreate()`, `MATPRODUCT_AtB`, `MatMatMult()`, `MatMatTransposeMult()`, `MatPtAP()` 10352 @*/ 10353 PetscErrorCode MatTransposeMatMult(Mat A, Mat B, MatReuse scall, PetscReal fill, Mat *C) 10354 { 10355 PetscFunctionBegin; 10356 PetscCall(MatProduct_Private(A, B, scall, fill, MATPRODUCT_AtB, C)); 10357 PetscFunctionReturn(PETSC_SUCCESS); 10358 } 10359 10360 /*@ 10361 MatMatMatMult - Performs matrix-matrix-matrix multiplication D=A*B*C. 10362 10363 Neighbor-wise Collective 10364 10365 Input Parameters: 10366 + A - the left matrix 10367 . B - the middle matrix 10368 . C - the right matrix 10369 . scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 10370 - fill - expected fill as ratio of nnz(D)/(nnz(A) + nnz(B)+nnz(C)), use `PETSC_DETERMINE` or `PETSC_CURRENT` if you do not have a good estimate 10371 if the result is a dense matrix this is irrelevant 10372 10373 Output Parameter: 10374 . D - the product matrix 10375 10376 Level: intermediate 10377 10378 Notes: 10379 Unless `scall` is `MAT_REUSE_MATRIX` `D` will be created. 10380 10381 `MAT_REUSE_MATRIX` can only be used if the matrices `A`, `B`, and `C` have the same nonzero pattern as in the previous call 10382 10383 This routine is shorthand for using `MatProductCreate()` with the `MatProductType` of `MATPRODUCT_ABC` 10384 10385 To determine the correct fill value, run with `-info` and search for the string "Fill ratio" to see the value 10386 actually needed. 10387 10388 If you have many matrices with the same non-zero structure to multiply, you 10389 should use `MAT_REUSE_MATRIX` in all calls but the first 10390 10391 The deprecated `PETSC_DEFAULT` in `fill` also means use the current value 10392 10393 .seealso: [](ch_matrices), `Mat`, `MatProductCreate()`, `MATPRODUCT_ABC`, `MatMatMult`, `MatPtAP()`, `MatMatTransposeMult()`, `MatTransposeMatMult()` 10394 @*/ 10395 PetscErrorCode MatMatMatMult(Mat A, Mat B, Mat C, MatReuse scall, PetscReal fill, Mat *D) 10396 { 10397 PetscFunctionBegin; 10398 if (scall == MAT_REUSE_MATRIX) MatCheckProduct(*D, 6); 10399 PetscCheck(scall != MAT_INPLACE_MATRIX, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Inplace product not supported"); 10400 10401 if (scall == MAT_INITIAL_MATRIX) { 10402 PetscCall(MatProductCreate(A, B, C, D)); 10403 PetscCall(MatProductSetType(*D, MATPRODUCT_ABC)); 10404 PetscCall(MatProductSetAlgorithm(*D, "default")); 10405 PetscCall(MatProductSetFill(*D, fill)); 10406 10407 (*D)->product->api_user = PETSC_TRUE; 10408 PetscCall(MatProductSetFromOptions(*D)); 10409 PetscCheck((*D)->ops->productsymbolic, PetscObjectComm((PetscObject)*D), PETSC_ERR_SUP, "MatProduct %s not supported for A %s, B %s and C %s", MatProductTypes[MATPRODUCT_ABC], ((PetscObject)A)->type_name, ((PetscObject)B)->type_name, 10410 ((PetscObject)C)->type_name); 10411 PetscCall(MatProductSymbolic(*D)); 10412 } else { /* user may change input matrices when REUSE */ 10413 PetscCall(MatProductReplaceMats(A, B, C, *D)); 10414 } 10415 PetscCall(MatProductNumeric(*D)); 10416 PetscFunctionReturn(PETSC_SUCCESS); 10417 } 10418 10419 /*@ 10420 MatCreateRedundantMatrix - Create redundant matrices and put them into processors of subcommunicators. 10421 10422 Collective 10423 10424 Input Parameters: 10425 + mat - the matrix 10426 . nsubcomm - the number of subcommunicators (= number of redundant parallel or sequential matrices) 10427 . subcomm - MPI communicator split from the communicator where mat resides in (or `MPI_COMM_NULL` if nsubcomm is used) 10428 - reuse - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 10429 10430 Output Parameter: 10431 . matredundant - redundant matrix 10432 10433 Level: advanced 10434 10435 Notes: 10436 `MAT_REUSE_MATRIX` can only be used when the nonzero structure of the 10437 original matrix has not changed from that last call to `MatCreateRedundantMatrix()`. 10438 10439 This routine creates the duplicated matrices in the subcommunicators; you should NOT create them before 10440 calling it. 10441 10442 `PetscSubcommCreate()` can be used to manage the creation of the subcomm but need not be. 10443 10444 .seealso: [](ch_matrices), `Mat`, `MatDestroy()`, `PetscSubcommCreate()`, `PetscSubcomm` 10445 @*/ 10446 PetscErrorCode MatCreateRedundantMatrix(Mat mat, PetscInt nsubcomm, MPI_Comm subcomm, MatReuse reuse, Mat *matredundant) 10447 { 10448 MPI_Comm comm; 10449 PetscMPIInt size; 10450 PetscInt mloc_sub, nloc_sub, rstart, rend, M = mat->rmap->N, N = mat->cmap->N, bs = mat->rmap->bs; 10451 Mat_Redundant *redund = NULL; 10452 PetscSubcomm psubcomm = NULL; 10453 MPI_Comm subcomm_in = subcomm; 10454 Mat *matseq; 10455 IS isrow, iscol; 10456 PetscBool newsubcomm = PETSC_FALSE; 10457 10458 PetscFunctionBegin; 10459 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 10460 if (nsubcomm && reuse == MAT_REUSE_MATRIX) { 10461 PetscAssertPointer(*matredundant, 5); 10462 PetscValidHeaderSpecific(*matredundant, MAT_CLASSID, 5); 10463 } 10464 10465 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)mat), &size)); 10466 if (size == 1 || nsubcomm == 1) { 10467 if (reuse == MAT_INITIAL_MATRIX) { 10468 PetscCall(MatDuplicate(mat, MAT_COPY_VALUES, matredundant)); 10469 } else { 10470 PetscCheck(*matredundant != mat, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "MAT_REUSE_MATRIX means reuse the matrix passed in as the final argument, not the original matrix"); 10471 PetscCall(MatCopy(mat, *matredundant, SAME_NONZERO_PATTERN)); 10472 } 10473 PetscFunctionReturn(PETSC_SUCCESS); 10474 } 10475 10476 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 10477 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 10478 MatCheckPreallocated(mat, 1); 10479 10480 PetscCall(PetscLogEventBegin(MAT_RedundantMat, mat, 0, 0, 0)); 10481 if (subcomm_in == MPI_COMM_NULL && reuse == MAT_INITIAL_MATRIX) { /* get subcomm if user does not provide subcomm */ 10482 /* create psubcomm, then get subcomm */ 10483 PetscCall(PetscObjectGetComm((PetscObject)mat, &comm)); 10484 PetscCallMPI(MPI_Comm_size(comm, &size)); 10485 PetscCheck(nsubcomm >= 1 && nsubcomm <= size, PETSC_COMM_SELF, PETSC_ERR_ARG_SIZ, "nsubcomm must between 1 and %d", size); 10486 10487 PetscCall(PetscSubcommCreate(comm, &psubcomm)); 10488 PetscCall(PetscSubcommSetNumber(psubcomm, nsubcomm)); 10489 PetscCall(PetscSubcommSetType(psubcomm, PETSC_SUBCOMM_CONTIGUOUS)); 10490 PetscCall(PetscSubcommSetFromOptions(psubcomm)); 10491 PetscCall(PetscCommDuplicate(PetscSubcommChild(psubcomm), &subcomm, NULL)); 10492 newsubcomm = PETSC_TRUE; 10493 PetscCall(PetscSubcommDestroy(&psubcomm)); 10494 } 10495 10496 /* get isrow, iscol and a local sequential matrix matseq[0] */ 10497 if (reuse == MAT_INITIAL_MATRIX) { 10498 mloc_sub = PETSC_DECIDE; 10499 nloc_sub = PETSC_DECIDE; 10500 if (bs < 1) { 10501 PetscCall(PetscSplitOwnership(subcomm, &mloc_sub, &M)); 10502 PetscCall(PetscSplitOwnership(subcomm, &nloc_sub, &N)); 10503 } else { 10504 PetscCall(PetscSplitOwnershipBlock(subcomm, bs, &mloc_sub, &M)); 10505 PetscCall(PetscSplitOwnershipBlock(subcomm, bs, &nloc_sub, &N)); 10506 } 10507 PetscCallMPI(MPI_Scan(&mloc_sub, &rend, 1, MPIU_INT, MPI_SUM, subcomm)); 10508 rstart = rend - mloc_sub; 10509 PetscCall(ISCreateStride(PETSC_COMM_SELF, mloc_sub, rstart, 1, &isrow)); 10510 PetscCall(ISCreateStride(PETSC_COMM_SELF, N, 0, 1, &iscol)); 10511 PetscCall(ISSetIdentity(iscol)); 10512 } else { /* reuse == MAT_REUSE_MATRIX */ 10513 PetscCheck(*matredundant != mat, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "MAT_REUSE_MATRIX means reuse the matrix passed in as the final argument, not the original matrix"); 10514 /* retrieve subcomm */ 10515 PetscCall(PetscObjectGetComm((PetscObject)*matredundant, &subcomm)); 10516 redund = (*matredundant)->redundant; 10517 isrow = redund->isrow; 10518 iscol = redund->iscol; 10519 matseq = redund->matseq; 10520 } 10521 PetscCall(MatCreateSubMatrices(mat, 1, &isrow, &iscol, reuse, &matseq)); 10522 10523 /* get matredundant over subcomm */ 10524 if (reuse == MAT_INITIAL_MATRIX) { 10525 PetscCall(MatCreateMPIMatConcatenateSeqMat(subcomm, matseq[0], nloc_sub, reuse, matredundant)); 10526 10527 /* create a supporting struct and attach it to C for reuse */ 10528 PetscCall(PetscNew(&redund)); 10529 (*matredundant)->redundant = redund; 10530 redund->isrow = isrow; 10531 redund->iscol = iscol; 10532 redund->matseq = matseq; 10533 if (newsubcomm) { 10534 redund->subcomm = subcomm; 10535 } else { 10536 redund->subcomm = MPI_COMM_NULL; 10537 } 10538 } else { 10539 PetscCall(MatCreateMPIMatConcatenateSeqMat(subcomm, matseq[0], PETSC_DECIDE, reuse, matredundant)); 10540 } 10541 #if defined(PETSC_HAVE_VIENNACL) || defined(PETSC_HAVE_CUDA) || defined(PETSC_HAVE_HIP) 10542 if (matseq[0]->boundtocpu && matseq[0]->bindingpropagates) { 10543 PetscCall(MatBindToCPU(*matredundant, PETSC_TRUE)); 10544 PetscCall(MatSetBindingPropagates(*matredundant, PETSC_TRUE)); 10545 } 10546 #endif 10547 PetscCall(PetscLogEventEnd(MAT_RedundantMat, mat, 0, 0, 0)); 10548 PetscFunctionReturn(PETSC_SUCCESS); 10549 } 10550 10551 /*@C 10552 MatGetMultiProcBlock - Create multiple 'parallel submatrices' from 10553 a given `Mat`. Each submatrix can span multiple procs. 10554 10555 Collective 10556 10557 Input Parameters: 10558 + mat - the matrix 10559 . subComm - the sub communicator obtained as if by `MPI_Comm_split(PetscObjectComm((PetscObject)mat))` 10560 - scall - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 10561 10562 Output Parameter: 10563 . subMat - parallel sub-matrices each spanning a given `subcomm` 10564 10565 Level: advanced 10566 10567 Notes: 10568 The submatrix partition across processors is dictated by `subComm` a 10569 communicator obtained by `MPI_comm_split()` or via `PetscSubcommCreate()`. The `subComm` 10570 is not restricted to be grouped with consecutive original MPI processes. 10571 10572 Due the `MPI_Comm_split()` usage, the parallel layout of the submatrices 10573 map directly to the layout of the original matrix [wrt the local 10574 row,col partitioning]. So the original 'DiagonalMat' naturally maps 10575 into the 'DiagonalMat' of the `subMat`, hence it is used directly from 10576 the `subMat`. However the offDiagMat looses some columns - and this is 10577 reconstructed with `MatSetValues()` 10578 10579 This is used by `PCBJACOBI` when a single block spans multiple MPI processes. 10580 10581 .seealso: [](ch_matrices), `Mat`, `MatCreateRedundantMatrix()`, `MatCreateSubMatrices()`, `PCBJACOBI` 10582 @*/ 10583 PetscErrorCode MatGetMultiProcBlock(Mat mat, MPI_Comm subComm, MatReuse scall, Mat *subMat) 10584 { 10585 PetscMPIInt commsize, subCommSize; 10586 10587 PetscFunctionBegin; 10588 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)mat), &commsize)); 10589 PetscCallMPI(MPI_Comm_size(subComm, &subCommSize)); 10590 PetscCheck(subCommSize <= commsize, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_OUTOFRANGE, "CommSize %d < SubCommZize %d", commsize, subCommSize); 10591 10592 PetscCheck(scall != MAT_REUSE_MATRIX || *subMat != mat, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "MAT_REUSE_MATRIX means reuse the matrix passed in as the final argument, not the original matrix"); 10593 PetscCall(PetscLogEventBegin(MAT_GetMultiProcBlock, mat, 0, 0, 0)); 10594 PetscUseTypeMethod(mat, getmultiprocblock, subComm, scall, subMat); 10595 PetscCall(PetscLogEventEnd(MAT_GetMultiProcBlock, mat, 0, 0, 0)); 10596 PetscFunctionReturn(PETSC_SUCCESS); 10597 } 10598 10599 /*@ 10600 MatGetLocalSubMatrix - Gets a reference to a submatrix specified in local numbering 10601 10602 Not Collective 10603 10604 Input Parameters: 10605 + mat - matrix to extract local submatrix from 10606 . isrow - local row indices for submatrix 10607 - iscol - local column indices for submatrix 10608 10609 Output Parameter: 10610 . submat - the submatrix 10611 10612 Level: intermediate 10613 10614 Notes: 10615 `submat` should be disposed of with `MatRestoreLocalSubMatrix()`. 10616 10617 Depending on the format of `mat`, the returned `submat` may not implement `MatMult()`. Its communicator may be 10618 the same as `mat`, it may be `PETSC_COMM_SELF`, or some other sub-communictor of `mat`'s. 10619 10620 `submat` always implements `MatSetValuesLocal()`. If `isrow` and `iscol` have the same block size, then 10621 `MatSetValuesBlockedLocal()` will also be implemented. 10622 10623 `mat` must have had a `ISLocalToGlobalMapping` provided to it with `MatSetLocalToGlobalMapping()`. 10624 Matrices obtained with `DMCreateMatrix()` generally already have the local to global mapping provided. 10625 10626 .seealso: [](ch_matrices), `Mat`, `MatRestoreLocalSubMatrix()`, `MatCreateLocalRef()`, `MatSetLocalToGlobalMapping()` 10627 @*/ 10628 PetscErrorCode MatGetLocalSubMatrix(Mat mat, IS isrow, IS iscol, Mat *submat) 10629 { 10630 PetscFunctionBegin; 10631 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 10632 PetscValidHeaderSpecific(isrow, IS_CLASSID, 2); 10633 PetscValidHeaderSpecific(iscol, IS_CLASSID, 3); 10634 PetscCheckSameComm(isrow, 2, iscol, 3); 10635 PetscAssertPointer(submat, 4); 10636 PetscCheck(mat->rmap->mapping, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Matrix must have local to global mapping provided before this call"); 10637 10638 if (mat->ops->getlocalsubmatrix) { 10639 PetscUseTypeMethod(mat, getlocalsubmatrix, isrow, iscol, submat); 10640 } else { 10641 PetscCall(MatCreateLocalRef(mat, isrow, iscol, submat)); 10642 } 10643 (*submat)->assembled = mat->assembled; 10644 PetscFunctionReturn(PETSC_SUCCESS); 10645 } 10646 10647 /*@ 10648 MatRestoreLocalSubMatrix - Restores a reference to a submatrix specified in local numbering obtained with `MatGetLocalSubMatrix()` 10649 10650 Not Collective 10651 10652 Input Parameters: 10653 + mat - matrix to extract local submatrix from 10654 . isrow - local row indices for submatrix 10655 . iscol - local column indices for submatrix 10656 - submat - the submatrix 10657 10658 Level: intermediate 10659 10660 .seealso: [](ch_matrices), `Mat`, `MatGetLocalSubMatrix()` 10661 @*/ 10662 PetscErrorCode MatRestoreLocalSubMatrix(Mat mat, IS isrow, IS iscol, Mat *submat) 10663 { 10664 PetscFunctionBegin; 10665 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 10666 PetscValidHeaderSpecific(isrow, IS_CLASSID, 2); 10667 PetscValidHeaderSpecific(iscol, IS_CLASSID, 3); 10668 PetscCheckSameComm(isrow, 2, iscol, 3); 10669 PetscAssertPointer(submat, 4); 10670 if (*submat) PetscValidHeaderSpecific(*submat, MAT_CLASSID, 4); 10671 10672 if (mat->ops->restorelocalsubmatrix) { 10673 PetscUseTypeMethod(mat, restorelocalsubmatrix, isrow, iscol, submat); 10674 } else { 10675 PetscCall(MatDestroy(submat)); 10676 } 10677 *submat = NULL; 10678 PetscFunctionReturn(PETSC_SUCCESS); 10679 } 10680 10681 /*@ 10682 MatFindZeroDiagonals - Finds all the rows of a matrix that have zero or no diagonal entry in the matrix 10683 10684 Collective 10685 10686 Input Parameter: 10687 . mat - the matrix 10688 10689 Output Parameter: 10690 . is - if any rows have zero diagonals this contains the list of them 10691 10692 Level: developer 10693 10694 .seealso: [](ch_matrices), `Mat`, `MatMultTranspose()`, `MatMultAdd()`, `MatMultTransposeAdd()` 10695 @*/ 10696 PetscErrorCode MatFindZeroDiagonals(Mat mat, IS *is) 10697 { 10698 PetscFunctionBegin; 10699 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 10700 PetscValidType(mat, 1); 10701 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 10702 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 10703 10704 if (!mat->ops->findzerodiagonals) { 10705 Vec diag; 10706 const PetscScalar *a; 10707 PetscInt *rows; 10708 PetscInt rStart, rEnd, r, nrow = 0; 10709 10710 PetscCall(MatCreateVecs(mat, &diag, NULL)); 10711 PetscCall(MatGetDiagonal(mat, diag)); 10712 PetscCall(MatGetOwnershipRange(mat, &rStart, &rEnd)); 10713 PetscCall(VecGetArrayRead(diag, &a)); 10714 for (r = 0; r < rEnd - rStart; ++r) 10715 if (a[r] == 0.0) ++nrow; 10716 PetscCall(PetscMalloc1(nrow, &rows)); 10717 nrow = 0; 10718 for (r = 0; r < rEnd - rStart; ++r) 10719 if (a[r] == 0.0) rows[nrow++] = r + rStart; 10720 PetscCall(VecRestoreArrayRead(diag, &a)); 10721 PetscCall(VecDestroy(&diag)); 10722 PetscCall(ISCreateGeneral(PetscObjectComm((PetscObject)mat), nrow, rows, PETSC_OWN_POINTER, is)); 10723 } else { 10724 PetscUseTypeMethod(mat, findzerodiagonals, is); 10725 } 10726 PetscFunctionReturn(PETSC_SUCCESS); 10727 } 10728 10729 /*@ 10730 MatFindOffBlockDiagonalEntries - Finds all the rows of a matrix that have entries outside of the main diagonal block (defined by the matrix block size) 10731 10732 Collective 10733 10734 Input Parameter: 10735 . mat - the matrix 10736 10737 Output Parameter: 10738 . is - contains the list of rows with off block diagonal entries 10739 10740 Level: developer 10741 10742 .seealso: [](ch_matrices), `Mat`, `MatMultTranspose()`, `MatMultAdd()`, `MatMultTransposeAdd()` 10743 @*/ 10744 PetscErrorCode MatFindOffBlockDiagonalEntries(Mat mat, IS *is) 10745 { 10746 PetscFunctionBegin; 10747 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 10748 PetscValidType(mat, 1); 10749 PetscCheck(mat->assembled, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 10750 PetscCheck(!mat->factortype, PetscObjectComm((PetscObject)mat), PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 10751 10752 PetscUseTypeMethod(mat, findoffblockdiagonalentries, is); 10753 PetscFunctionReturn(PETSC_SUCCESS); 10754 } 10755 10756 /*@C 10757 MatInvertBlockDiagonal - Inverts the block diagonal entries. 10758 10759 Collective; No Fortran Support 10760 10761 Input Parameter: 10762 . mat - the matrix 10763 10764 Output Parameter: 10765 . values - the block inverses in column major order (FORTRAN-like) 10766 10767 Level: advanced 10768 10769 Notes: 10770 The size of the blocks is determined by the block size of the matrix. 10771 10772 The blocks never overlap between two MPI processes, use `MatInvertVariableBlockEnvelope()` for that case 10773 10774 The blocks all have the same size, use `MatInvertVariableBlockDiagonal()` for variable block size 10775 10776 .seealso: [](ch_matrices), `Mat`, `MatInvertVariableBlockEnvelope()`, `MatInvertBlockDiagonalMat()` 10777 @*/ 10778 PetscErrorCode MatInvertBlockDiagonal(Mat mat, const PetscScalar *values[]) 10779 { 10780 PetscFunctionBegin; 10781 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 10782 PetscCheck(mat->assembled, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 10783 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 10784 PetscUseTypeMethod(mat, invertblockdiagonal, values); 10785 PetscFunctionReturn(PETSC_SUCCESS); 10786 } 10787 10788 /*@ 10789 MatInvertVariableBlockDiagonal - Inverts the point block diagonal entries. 10790 10791 Collective; No Fortran Support 10792 10793 Input Parameters: 10794 + mat - the matrix 10795 . nblocks - the number of blocks on the process, set with `MatSetVariableBlockSizes()` 10796 - bsizes - the size of each block on the process, set with `MatSetVariableBlockSizes()` 10797 10798 Output Parameter: 10799 . values - the block inverses in column major order (FORTRAN-like) 10800 10801 Level: advanced 10802 10803 Notes: 10804 Use `MatInvertBlockDiagonal()` if all blocks have the same size 10805 10806 The blocks never overlap between two MPI processes, use `MatInvertVariableBlockEnvelope()` for that case 10807 10808 .seealso: [](ch_matrices), `Mat`, `MatInvertBlockDiagonal()`, `MatSetVariableBlockSizes()`, `MatInvertVariableBlockEnvelope()` 10809 @*/ 10810 PetscErrorCode MatInvertVariableBlockDiagonal(Mat mat, PetscInt nblocks, const PetscInt bsizes[], PetscScalar values[]) 10811 { 10812 PetscFunctionBegin; 10813 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 10814 PetscCheck(mat->assembled, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for unassembled matrix"); 10815 PetscCheck(!mat->factortype, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONGSTATE, "Not for factored matrix"); 10816 PetscUseTypeMethod(mat, invertvariableblockdiagonal, nblocks, bsizes, values); 10817 PetscFunctionReturn(PETSC_SUCCESS); 10818 } 10819 10820 /*@ 10821 MatInvertBlockDiagonalMat - set the values of matrix C to be the inverted block diagonal of matrix A 10822 10823 Collective 10824 10825 Input Parameters: 10826 + A - the matrix 10827 - C - matrix with inverted block diagonal of `A`. This matrix should be created and may have its type set. 10828 10829 Level: advanced 10830 10831 Note: 10832 The blocksize of the matrix is used to determine the blocks on the diagonal of `C` 10833 10834 .seealso: [](ch_matrices), `Mat`, `MatInvertBlockDiagonal()` 10835 @*/ 10836 PetscErrorCode MatInvertBlockDiagonalMat(Mat A, Mat C) 10837 { 10838 const PetscScalar *vals; 10839 PetscInt *dnnz; 10840 PetscInt m, rstart, rend, bs, i, j; 10841 10842 PetscFunctionBegin; 10843 PetscCall(MatInvertBlockDiagonal(A, &vals)); 10844 PetscCall(MatGetBlockSize(A, &bs)); 10845 PetscCall(MatGetLocalSize(A, &m, NULL)); 10846 PetscCall(MatSetLayouts(C, A->rmap, A->cmap)); 10847 PetscCall(MatSetBlockSizes(C, A->rmap->bs, A->cmap->bs)); 10848 PetscCall(PetscMalloc1(m / bs, &dnnz)); 10849 for (j = 0; j < m / bs; j++) dnnz[j] = 1; 10850 PetscCall(MatXAIJSetPreallocation(C, bs, dnnz, NULL, NULL, NULL)); 10851 PetscCall(PetscFree(dnnz)); 10852 PetscCall(MatGetOwnershipRange(C, &rstart, &rend)); 10853 PetscCall(MatSetOption(C, MAT_ROW_ORIENTED, PETSC_FALSE)); 10854 for (i = rstart / bs; i < rend / bs; i++) PetscCall(MatSetValuesBlocked(C, 1, &i, 1, &i, &vals[(i - rstart / bs) * bs * bs], INSERT_VALUES)); 10855 PetscCall(MatAssemblyBegin(C, MAT_FINAL_ASSEMBLY)); 10856 PetscCall(MatAssemblyEnd(C, MAT_FINAL_ASSEMBLY)); 10857 PetscCall(MatSetOption(C, MAT_ROW_ORIENTED, PETSC_TRUE)); 10858 PetscFunctionReturn(PETSC_SUCCESS); 10859 } 10860 10861 /*@ 10862 MatTransposeColoringDestroy - Destroys a coloring context for matrix product $C = A*B^T$ that was created 10863 via `MatTransposeColoringCreate()`. 10864 10865 Collective 10866 10867 Input Parameter: 10868 . c - coloring context 10869 10870 Level: intermediate 10871 10872 .seealso: [](ch_matrices), `Mat`, `MatTransposeColoringCreate()` 10873 @*/ 10874 PetscErrorCode MatTransposeColoringDestroy(MatTransposeColoring *c) 10875 { 10876 MatTransposeColoring matcolor = *c; 10877 10878 PetscFunctionBegin; 10879 if (!matcolor) PetscFunctionReturn(PETSC_SUCCESS); 10880 if (--((PetscObject)matcolor)->refct > 0) { 10881 matcolor = NULL; 10882 PetscFunctionReturn(PETSC_SUCCESS); 10883 } 10884 10885 PetscCall(PetscFree3(matcolor->ncolumns, matcolor->nrows, matcolor->colorforrow)); 10886 PetscCall(PetscFree(matcolor->rows)); 10887 PetscCall(PetscFree(matcolor->den2sp)); 10888 PetscCall(PetscFree(matcolor->colorforcol)); 10889 PetscCall(PetscFree(matcolor->columns)); 10890 if (matcolor->brows > 0) PetscCall(PetscFree(matcolor->lstart)); 10891 PetscCall(PetscHeaderDestroy(c)); 10892 PetscFunctionReturn(PETSC_SUCCESS); 10893 } 10894 10895 /*@ 10896 MatTransColoringApplySpToDen - Given a symbolic matrix product $C = A*B^T$ for which 10897 a `MatTransposeColoring` context has been created, computes a dense $B^T$ by applying 10898 `MatTransposeColoring` to sparse `B`. 10899 10900 Collective 10901 10902 Input Parameters: 10903 + coloring - coloring context created with `MatTransposeColoringCreate()` 10904 - B - sparse matrix 10905 10906 Output Parameter: 10907 . Btdense - dense matrix $B^T$ 10908 10909 Level: developer 10910 10911 Note: 10912 These are used internally for some implementations of `MatRARt()` 10913 10914 .seealso: [](ch_matrices), `Mat`, `MatTransposeColoringCreate()`, `MatTransposeColoringDestroy()`, `MatTransColoringApplyDenToSp()` 10915 @*/ 10916 PetscErrorCode MatTransColoringApplySpToDen(MatTransposeColoring coloring, Mat B, Mat Btdense) 10917 { 10918 PetscFunctionBegin; 10919 PetscValidHeaderSpecific(coloring, MAT_TRANSPOSECOLORING_CLASSID, 1); 10920 PetscValidHeaderSpecific(B, MAT_CLASSID, 2); 10921 PetscValidHeaderSpecific(Btdense, MAT_CLASSID, 3); 10922 10923 PetscCall((*B->ops->transcoloringapplysptoden)(coloring, B, Btdense)); 10924 PetscFunctionReturn(PETSC_SUCCESS); 10925 } 10926 10927 /*@ 10928 MatTransColoringApplyDenToSp - Given a symbolic matrix product $C_{sp} = A*B^T$ for which 10929 a `MatTransposeColoring` context has been created and a dense matrix $C_{den} = A*B^T_{dense}$ 10930 in which `B^T_{dens}` is obtained from `MatTransColoringApplySpToDen()`, recover sparse matrix 10931 $C_{sp}$ from $C_{den}$. 10932 10933 Collective 10934 10935 Input Parameters: 10936 + matcoloring - coloring context created with `MatTransposeColoringCreate()` 10937 - Cden - matrix product of a sparse matrix and a dense matrix Btdense 10938 10939 Output Parameter: 10940 . Csp - sparse matrix 10941 10942 Level: developer 10943 10944 Note: 10945 These are used internally for some implementations of `MatRARt()` 10946 10947 .seealso: [](ch_matrices), `Mat`, `MatTransposeColoringCreate()`, `MatTransposeColoringDestroy()`, `MatTransColoringApplySpToDen()` 10948 @*/ 10949 PetscErrorCode MatTransColoringApplyDenToSp(MatTransposeColoring matcoloring, Mat Cden, Mat Csp) 10950 { 10951 PetscFunctionBegin; 10952 PetscValidHeaderSpecific(matcoloring, MAT_TRANSPOSECOLORING_CLASSID, 1); 10953 PetscValidHeaderSpecific(Cden, MAT_CLASSID, 2); 10954 PetscValidHeaderSpecific(Csp, MAT_CLASSID, 3); 10955 10956 PetscCall((*Csp->ops->transcoloringapplydentosp)(matcoloring, Cden, Csp)); 10957 PetscCall(MatAssemblyBegin(Csp, MAT_FINAL_ASSEMBLY)); 10958 PetscCall(MatAssemblyEnd(Csp, MAT_FINAL_ASSEMBLY)); 10959 PetscFunctionReturn(PETSC_SUCCESS); 10960 } 10961 10962 /*@ 10963 MatTransposeColoringCreate - Creates a matrix coloring context for the matrix product $C = A*B^T$. 10964 10965 Collective 10966 10967 Input Parameters: 10968 + mat - the matrix product C 10969 - iscoloring - the coloring of the matrix; usually obtained with `MatColoringCreate()` or `DMCreateColoring()` 10970 10971 Output Parameter: 10972 . color - the new coloring context 10973 10974 Level: intermediate 10975 10976 .seealso: [](ch_matrices), `Mat`, `MatTransposeColoringDestroy()`, `MatTransColoringApplySpToDen()`, 10977 `MatTransColoringApplyDenToSp()` 10978 @*/ 10979 PetscErrorCode MatTransposeColoringCreate(Mat mat, ISColoring iscoloring, MatTransposeColoring *color) 10980 { 10981 MatTransposeColoring c; 10982 MPI_Comm comm; 10983 10984 PetscFunctionBegin; 10985 PetscAssertPointer(color, 3); 10986 10987 PetscCall(PetscLogEventBegin(MAT_TransposeColoringCreate, mat, 0, 0, 0)); 10988 PetscCall(PetscObjectGetComm((PetscObject)mat, &comm)); 10989 PetscCall(PetscHeaderCreate(c, MAT_TRANSPOSECOLORING_CLASSID, "MatTransposeColoring", "Matrix product C=A*B^T via coloring", "Mat", comm, MatTransposeColoringDestroy, NULL)); 10990 c->ctype = iscoloring->ctype; 10991 PetscUseTypeMethod(mat, transposecoloringcreate, iscoloring, c); 10992 *color = c; 10993 PetscCall(PetscLogEventEnd(MAT_TransposeColoringCreate, mat, 0, 0, 0)); 10994 PetscFunctionReturn(PETSC_SUCCESS); 10995 } 10996 10997 /*@ 10998 MatGetNonzeroState - Returns a 64-bit integer representing the current state of nonzeros in the matrix. If the 10999 matrix has had new nonzero locations added to (or removed from) the matrix since the previous call, the value will be larger. 11000 11001 Not Collective 11002 11003 Input Parameter: 11004 . mat - the matrix 11005 11006 Output Parameter: 11007 . state - the current state 11008 11009 Level: intermediate 11010 11011 Notes: 11012 You can only compare states from two different calls to the SAME matrix, you cannot compare calls between 11013 different matrices 11014 11015 Use `PetscObjectStateGet()` to check for changes to the numerical values in a matrix 11016 11017 Use the result of `PetscObjectGetId()` to compare if a previously checked matrix is the same as the current matrix, do not compare object pointers. 11018 11019 .seealso: [](ch_matrices), `Mat`, `PetscObjectStateGet()`, `PetscObjectGetId()` 11020 @*/ 11021 PetscErrorCode MatGetNonzeroState(Mat mat, PetscObjectState *state) 11022 { 11023 PetscFunctionBegin; 11024 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 11025 *state = mat->nonzerostate; 11026 PetscFunctionReturn(PETSC_SUCCESS); 11027 } 11028 11029 /*@ 11030 MatCreateMPIMatConcatenateSeqMat - Creates a single large PETSc matrix by concatenating sequential 11031 matrices from each processor 11032 11033 Collective 11034 11035 Input Parameters: 11036 + comm - the communicators the parallel matrix will live on 11037 . seqmat - the input sequential matrices 11038 . n - number of local columns (or `PETSC_DECIDE`) 11039 - reuse - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 11040 11041 Output Parameter: 11042 . mpimat - the parallel matrix generated 11043 11044 Level: developer 11045 11046 Note: 11047 The number of columns of the matrix in EACH processor MUST be the same. 11048 11049 .seealso: [](ch_matrices), `Mat` 11050 @*/ 11051 PetscErrorCode MatCreateMPIMatConcatenateSeqMat(MPI_Comm comm, Mat seqmat, PetscInt n, MatReuse reuse, Mat *mpimat) 11052 { 11053 PetscMPIInt size; 11054 11055 PetscFunctionBegin; 11056 PetscCallMPI(MPI_Comm_size(comm, &size)); 11057 if (size == 1) { 11058 if (reuse == MAT_INITIAL_MATRIX) { 11059 PetscCall(MatDuplicate(seqmat, MAT_COPY_VALUES, mpimat)); 11060 } else { 11061 PetscCall(MatCopy(seqmat, *mpimat, SAME_NONZERO_PATTERN)); 11062 } 11063 PetscFunctionReturn(PETSC_SUCCESS); 11064 } 11065 11066 PetscCheck(reuse != MAT_REUSE_MATRIX || seqmat != *mpimat, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "MAT_REUSE_MATRIX means reuse the matrix passed in as the final argument, not the original matrix"); 11067 11068 PetscCall(PetscLogEventBegin(MAT_Merge, seqmat, 0, 0, 0)); 11069 PetscCall((*seqmat->ops->creatempimatconcatenateseqmat)(comm, seqmat, n, reuse, mpimat)); 11070 PetscCall(PetscLogEventEnd(MAT_Merge, seqmat, 0, 0, 0)); 11071 PetscFunctionReturn(PETSC_SUCCESS); 11072 } 11073 11074 /*@ 11075 MatSubdomainsCreateCoalesce - Creates index subdomains by coalescing adjacent MPI processes' ownership ranges. 11076 11077 Collective 11078 11079 Input Parameters: 11080 + A - the matrix to create subdomains from 11081 - N - requested number of subdomains 11082 11083 Output Parameters: 11084 + n - number of subdomains resulting on this MPI process 11085 - iss - `IS` list with indices of subdomains on this MPI process 11086 11087 Level: advanced 11088 11089 Note: 11090 The number of subdomains must be smaller than the communicator size 11091 11092 .seealso: [](ch_matrices), `Mat`, `IS` 11093 @*/ 11094 PetscErrorCode MatSubdomainsCreateCoalesce(Mat A, PetscInt N, PetscInt *n, IS *iss[]) 11095 { 11096 MPI_Comm comm, subcomm; 11097 PetscMPIInt size, rank, color; 11098 PetscInt rstart, rend, k; 11099 11100 PetscFunctionBegin; 11101 PetscCall(PetscObjectGetComm((PetscObject)A, &comm)); 11102 PetscCallMPI(MPI_Comm_size(comm, &size)); 11103 PetscCallMPI(MPI_Comm_rank(comm, &rank)); 11104 PetscCheck(N >= 1 && N < size, PETSC_COMM_SELF, PETSC_ERR_ARG_WRONG, "number of subdomains must be > 0 and < %d, got N = %" PetscInt_FMT, size, N); 11105 *n = 1; 11106 k = size / N + (size % N > 0); /* There are up to k ranks to a color */ 11107 color = rank / k; 11108 PetscCallMPI(MPI_Comm_split(comm, color, rank, &subcomm)); 11109 PetscCall(PetscMalloc1(1, iss)); 11110 PetscCall(MatGetOwnershipRange(A, &rstart, &rend)); 11111 PetscCall(ISCreateStride(subcomm, rend - rstart, rstart, 1, iss[0])); 11112 PetscCallMPI(MPI_Comm_free(&subcomm)); 11113 PetscFunctionReturn(PETSC_SUCCESS); 11114 } 11115 11116 /*@ 11117 MatGalerkin - Constructs the coarse grid problem matrix via Galerkin projection. 11118 11119 If the interpolation and restriction operators are the same, uses `MatPtAP()`. 11120 If they are not the same, uses `MatMatMatMult()`. 11121 11122 Once the coarse grid problem is constructed, correct for interpolation operators 11123 that are not of full rank, which can legitimately happen in the case of non-nested 11124 geometric multigrid. 11125 11126 Input Parameters: 11127 + restrct - restriction operator 11128 . dA - fine grid matrix 11129 . interpolate - interpolation operator 11130 . reuse - either `MAT_INITIAL_MATRIX` or `MAT_REUSE_MATRIX` 11131 - fill - expected fill, use `PETSC_DETERMINE` or `PETSC_DETERMINE` if you do not have a good estimate 11132 11133 Output Parameter: 11134 . A - the Galerkin coarse matrix 11135 11136 Options Database Key: 11137 . -pc_mg_galerkin <both,pmat,mat,none> - for what matrices the Galerkin process should be used 11138 11139 Level: developer 11140 11141 Note: 11142 The deprecated `PETSC_DEFAULT` in `fill` also means use the current value 11143 11144 .seealso: [](ch_matrices), `Mat`, `MatPtAP()`, `MatMatMatMult()` 11145 @*/ 11146 PetscErrorCode MatGalerkin(Mat restrct, Mat dA, Mat interpolate, MatReuse reuse, PetscReal fill, Mat *A) 11147 { 11148 IS zerorows; 11149 Vec diag; 11150 11151 PetscFunctionBegin; 11152 PetscCheck(reuse != MAT_INPLACE_MATRIX, PetscObjectComm((PetscObject)A), PETSC_ERR_SUP, "Inplace product not supported"); 11153 /* Construct the coarse grid matrix */ 11154 if (interpolate == restrct) { 11155 PetscCall(MatPtAP(dA, interpolate, reuse, fill, A)); 11156 } else { 11157 PetscCall(MatMatMatMult(restrct, dA, interpolate, reuse, fill, A)); 11158 } 11159 11160 /* If the interpolation matrix is not of full rank, A will have zero rows. 11161 This can legitimately happen in the case of non-nested geometric multigrid. 11162 In that event, we set the rows of the matrix to the rows of the identity, 11163 ignoring the equations (as the RHS will also be zero). */ 11164 11165 PetscCall(MatFindZeroRows(*A, &zerorows)); 11166 11167 if (zerorows != NULL) { /* if there are any zero rows */ 11168 PetscCall(MatCreateVecs(*A, &diag, NULL)); 11169 PetscCall(MatGetDiagonal(*A, diag)); 11170 PetscCall(VecISSet(diag, zerorows, 1.0)); 11171 PetscCall(MatDiagonalSet(*A, diag, INSERT_VALUES)); 11172 PetscCall(VecDestroy(&diag)); 11173 PetscCall(ISDestroy(&zerorows)); 11174 } 11175 PetscFunctionReturn(PETSC_SUCCESS); 11176 } 11177 11178 /*@C 11179 MatSetOperation - Allows user to set a matrix operation for any matrix type 11180 11181 Logically Collective 11182 11183 Input Parameters: 11184 + mat - the matrix 11185 . op - the name of the operation 11186 - f - the function that provides the operation 11187 11188 Level: developer 11189 11190 Example Usage: 11191 .vb 11192 extern PetscErrorCode usermult(Mat, Vec, Vec); 11193 11194 PetscCall(MatCreateXXX(comm, ..., &A)); 11195 PetscCall(MatSetOperation(A, MATOP_MULT, (PetscErrorCodeFn *)usermult)); 11196 .ve 11197 11198 Notes: 11199 See the file `include/petscmat.h` for a complete list of matrix 11200 operations, which all have the form MATOP_<OPERATION>, where 11201 <OPERATION> is the name (in all capital letters) of the 11202 user interface routine (e.g., `MatMult()` -> `MATOP_MULT`). 11203 11204 All user-provided functions (except for `MATOP_DESTROY`) should have the same calling 11205 sequence as the usual matrix interface routines, since they 11206 are intended to be accessed via the usual matrix interface 11207 routines, e.g., 11208 .vb 11209 MatMult(Mat, Vec, Vec) -> usermult(Mat, Vec, Vec) 11210 .ve 11211 11212 In particular each function MUST return `PETSC_SUCCESS` on success and 11213 nonzero on failure. 11214 11215 This routine is distinct from `MatShellSetOperation()` in that it can be called on any matrix type. 11216 11217 .seealso: [](ch_matrices), `Mat`, `MatGetOperation()`, `MatCreateShell()`, `MatShellSetContext()`, `MatShellSetOperation()` 11218 @*/ 11219 PetscErrorCode MatSetOperation(Mat mat, MatOperation op, PetscErrorCodeFn *f) 11220 { 11221 PetscFunctionBegin; 11222 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 11223 if (op == MATOP_VIEW && !mat->ops->viewnative && f != (PetscErrorCodeFn *)mat->ops->view) mat->ops->viewnative = mat->ops->view; 11224 (((PetscErrorCodeFn **)mat->ops)[op]) = f; 11225 PetscFunctionReturn(PETSC_SUCCESS); 11226 } 11227 11228 /*@C 11229 MatGetOperation - Gets a matrix operation for any matrix type. 11230 11231 Not Collective 11232 11233 Input Parameters: 11234 + mat - the matrix 11235 - op - the name of the operation 11236 11237 Output Parameter: 11238 . f - the function that provides the operation 11239 11240 Level: developer 11241 11242 Example Usage: 11243 .vb 11244 PetscErrorCode (*usermult)(Mat, Vec, Vec); 11245 11246 MatGetOperation(A, MATOP_MULT, (PetscErrorCodeFn **)&usermult); 11247 .ve 11248 11249 Notes: 11250 See the file `include/petscmat.h` for a complete list of matrix 11251 operations, which all have the form MATOP_<OPERATION>, where 11252 <OPERATION> is the name (in all capital letters) of the 11253 user interface routine (e.g., `MatMult()` -> `MATOP_MULT`). 11254 11255 This routine is distinct from `MatShellGetOperation()` in that it can be called on any matrix type. 11256 11257 .seealso: [](ch_matrices), `Mat`, `MatSetOperation()`, `MatCreateShell()`, `MatShellGetContext()`, `MatShellGetOperation()` 11258 @*/ 11259 PetscErrorCode MatGetOperation(Mat mat, MatOperation op, PetscErrorCodeFn **f) 11260 { 11261 PetscFunctionBegin; 11262 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 11263 *f = (((PetscErrorCodeFn **)mat->ops)[op]); 11264 PetscFunctionReturn(PETSC_SUCCESS); 11265 } 11266 11267 /*@ 11268 MatHasOperation - Determines whether the given matrix supports the particular operation. 11269 11270 Not Collective 11271 11272 Input Parameters: 11273 + mat - the matrix 11274 - op - the operation, for example, `MATOP_GET_DIAGONAL` 11275 11276 Output Parameter: 11277 . has - either `PETSC_TRUE` or `PETSC_FALSE` 11278 11279 Level: advanced 11280 11281 Note: 11282 See `MatSetOperation()` for additional discussion on naming convention and usage of `op`. 11283 11284 .seealso: [](ch_matrices), `Mat`, `MatCreateShell()`, `MatGetOperation()`, `MatSetOperation()` 11285 @*/ 11286 PetscErrorCode MatHasOperation(Mat mat, MatOperation op, PetscBool *has) 11287 { 11288 PetscFunctionBegin; 11289 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 11290 PetscAssertPointer(has, 3); 11291 if (mat->ops->hasoperation) { 11292 PetscUseTypeMethod(mat, hasoperation, op, has); 11293 } else { 11294 if (((void **)mat->ops)[op]) *has = PETSC_TRUE; 11295 else { 11296 *has = PETSC_FALSE; 11297 if (op == MATOP_CREATE_SUBMATRIX) { 11298 PetscMPIInt size; 11299 11300 PetscCallMPI(MPI_Comm_size(PetscObjectComm((PetscObject)mat), &size)); 11301 if (size == 1) PetscCall(MatHasOperation(mat, MATOP_CREATE_SUBMATRICES, has)); 11302 } 11303 } 11304 } 11305 PetscFunctionReturn(PETSC_SUCCESS); 11306 } 11307 11308 /*@ 11309 MatHasCongruentLayouts - Determines whether the rows and columns layouts of the matrix are congruent 11310 11311 Collective 11312 11313 Input Parameter: 11314 . mat - the matrix 11315 11316 Output Parameter: 11317 . cong - either `PETSC_TRUE` or `PETSC_FALSE` 11318 11319 Level: beginner 11320 11321 .seealso: [](ch_matrices), `Mat`, `MatCreate()`, `MatSetSizes()`, `PetscLayout` 11322 @*/ 11323 PetscErrorCode MatHasCongruentLayouts(Mat mat, PetscBool *cong) 11324 { 11325 PetscFunctionBegin; 11326 PetscValidHeaderSpecific(mat, MAT_CLASSID, 1); 11327 PetscValidType(mat, 1); 11328 PetscAssertPointer(cong, 2); 11329 if (!mat->rmap || !mat->cmap) { 11330 *cong = mat->rmap == mat->cmap ? PETSC_TRUE : PETSC_FALSE; 11331 PetscFunctionReturn(PETSC_SUCCESS); 11332 } 11333 if (mat->congruentlayouts == PETSC_DECIDE) { /* first time we compare rows and cols layouts */ 11334 PetscCall(PetscLayoutSetUp(mat->rmap)); 11335 PetscCall(PetscLayoutSetUp(mat->cmap)); 11336 PetscCall(PetscLayoutCompare(mat->rmap, mat->cmap, cong)); 11337 if (*cong) mat->congruentlayouts = 1; 11338 else mat->congruentlayouts = 0; 11339 } else *cong = mat->congruentlayouts ? PETSC_TRUE : PETSC_FALSE; 11340 PetscFunctionReturn(PETSC_SUCCESS); 11341 } 11342 11343 PetscErrorCode MatSetInf(Mat A) 11344 { 11345 PetscFunctionBegin; 11346 PetscUseTypeMethod(A, setinf); 11347 PetscFunctionReturn(PETSC_SUCCESS); 11348 } 11349 11350 /*@ 11351 MatCreateGraph - create a scalar matrix (that is a matrix with one vertex for each block vertex in the original matrix), for use in graph algorithms 11352 and possibly removes small values from the graph structure. 11353 11354 Collective 11355 11356 Input Parameters: 11357 + A - the matrix 11358 . sym - `PETSC_TRUE` indicates that the graph should be symmetrized 11359 . scale - `PETSC_TRUE` indicates that the graph edge weights should be symmetrically scaled with the diagonal entry 11360 . filter - filter value - < 0: does nothing; == 0: removes only 0.0 entries; otherwise: removes entries with abs(entries) <= value 11361 . num_idx - size of 'index' array 11362 - index - array of block indices to use for graph strength of connection weight 11363 11364 Output Parameter: 11365 . graph - the resulting graph 11366 11367 Level: advanced 11368 11369 .seealso: [](ch_matrices), `Mat`, `MatCreate()`, `PCGAMG` 11370 @*/ 11371 PetscErrorCode MatCreateGraph(Mat A, PetscBool sym, PetscBool scale, PetscReal filter, PetscInt num_idx, PetscInt index[], Mat *graph) 11372 { 11373 PetscFunctionBegin; 11374 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 11375 PetscValidType(A, 1); 11376 PetscValidLogicalCollectiveBool(A, scale, 3); 11377 PetscAssertPointer(graph, 7); 11378 PetscCall(PetscLogEventBegin(MAT_CreateGraph, A, 0, 0, 0)); 11379 PetscUseTypeMethod(A, creategraph, sym, scale, filter, num_idx, index, graph); 11380 PetscCall(PetscLogEventEnd(MAT_CreateGraph, A, 0, 0, 0)); 11381 PetscFunctionReturn(PETSC_SUCCESS); 11382 } 11383 11384 /*@ 11385 MatEliminateZeros - eliminate the nondiagonal zero entries in place from the nonzero structure of a sparse `Mat` in place, 11386 meaning the same memory is used for the matrix, and no new memory is allocated. 11387 11388 Collective 11389 11390 Input Parameters: 11391 + A - the matrix 11392 - keep - if for a given row of `A`, the diagonal coefficient is zero, indicates whether it should be left in the structure or eliminated as well 11393 11394 Level: intermediate 11395 11396 Developer Note: 11397 The entries in the sparse matrix data structure are shifted to fill in the unneeded locations in the data. Thus the end 11398 of the arrays in the data structure are unneeded. 11399 11400 .seealso: [](ch_matrices), `Mat`, `MatCreate()`, `MatCreateGraph()`, `MatFilter()` 11401 @*/ 11402 PetscErrorCode MatEliminateZeros(Mat A, PetscBool keep) 11403 { 11404 PetscFunctionBegin; 11405 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 11406 PetscUseTypeMethod(A, eliminatezeros, keep); 11407 PetscFunctionReturn(PETSC_SUCCESS); 11408 } 11409 11410 /*@C 11411 MatGetCurrentMemType - Get the memory location of the matrix 11412 11413 Not Collective, but the result will be the same on all MPI processes 11414 11415 Input Parameter: 11416 . A - the matrix whose memory type we are checking 11417 11418 Output Parameter: 11419 . m - the memory type 11420 11421 Level: intermediate 11422 11423 .seealso: [](ch_matrices), `Mat`, `MatBoundToCPU()`, `PetscMemType` 11424 @*/ 11425 PetscErrorCode MatGetCurrentMemType(Mat A, PetscMemType *m) 11426 { 11427 PetscFunctionBegin; 11428 PetscValidHeaderSpecific(A, MAT_CLASSID, 1); 11429 PetscAssertPointer(m, 2); 11430 if (A->ops->getcurrentmemtype) PetscUseTypeMethod(A, getcurrentmemtype, m); 11431 else *m = PETSC_MEMTYPE_HOST; 11432 PetscFunctionReturn(PETSC_SUCCESS); 11433 } 11434