1 #ifdef PETSC_RCS_HEADER 2 static char vcid[] = "$Id: mpidense.c,v 1.105 1999/02/15 21:55:24 balay Exp balay $"; 3 #endif 4 5 /* 6 Basic functions for basic parallel dense matrices. 7 */ 8 9 #include "src/mat/impls/dense/mpi/mpidense.h" 10 #include "src/vec/vecimpl.h" 11 12 #undef __FUNC__ 13 #define __FUNC__ "MatSetValues_MPIDense" 14 int MatSetValues_MPIDense(Mat mat,int m,int *idxm,int n,int *idxn,Scalar *v,InsertMode addv) 15 { 16 Mat_MPIDense *A = (Mat_MPIDense *) mat->data; 17 int ierr, i, j, rstart = A->rstart, rend = A->rend, row; 18 int roworiented = A->roworiented; 19 20 PetscFunctionBegin; 21 for ( i=0; i<m; i++ ) { 22 if (idxm[i] < 0) continue; 23 if (idxm[i] >= A->M) SETERRQ(PETSC_ERR_ARG_OUTOFRANGE,0,"Row too large"); 24 if (idxm[i] >= rstart && idxm[i] < rend) { 25 row = idxm[i] - rstart; 26 if (roworiented) { 27 ierr = MatSetValues(A->A,1,&row,n,idxn,v+i*n,addv); CHKERRQ(ierr); 28 } else { 29 for ( j=0; j<n; j++ ) { 30 if (idxn[j] < 0) continue; 31 if (idxn[j] >= A->N) SETERRQ(PETSC_ERR_ARG_OUTOFRANGE,0,"Column too large"); 32 ierr = MatSetValues(A->A,1,&row,1,&idxn[j],v+i+j*m,addv); CHKERRQ(ierr); 33 } 34 } 35 } else { 36 if (roworiented) { 37 ierr = StashValues_Private(&A->stash,idxm[i],n,idxn,v+i*n,addv); CHKERRQ(ierr); 38 } else { /* must stash each seperately */ 39 row = idxm[i]; 40 for ( j=0; j<n; j++ ) { 41 ierr = StashValues_Private(&A->stash,row,1,&idxn[j],v+i+j*m,addv);CHKERRQ(ierr); 42 } 43 } 44 } 45 } 46 PetscFunctionReturn(0); 47 } 48 49 #undef __FUNC__ 50 #define __FUNC__ "MatGetValues_MPIDense" 51 int MatGetValues_MPIDense(Mat mat,int m,int *idxm,int n,int *idxn,Scalar *v) 52 { 53 Mat_MPIDense *mdn = (Mat_MPIDense *) mat->data; 54 int ierr, i, j, rstart = mdn->rstart, rend = mdn->rend, row; 55 56 PetscFunctionBegin; 57 for ( i=0; i<m; i++ ) { 58 if (idxm[i] < 0) SETERRQ(PETSC_ERR_ARG_OUTOFRANGE,0,"Negative row"); 59 if (idxm[i] >= mdn->M) SETERRQ(PETSC_ERR_ARG_OUTOFRANGE,0,"Row too large"); 60 if (idxm[i] >= rstart && idxm[i] < rend) { 61 row = idxm[i] - rstart; 62 for ( j=0; j<n; j++ ) { 63 if (idxn[j] < 0) SETERRQ(PETSC_ERR_ARG_OUTOFRANGE,0,"Negative column"); 64 if (idxn[j] >= mdn->N) { 65 SETERRQ(PETSC_ERR_ARG_OUTOFRANGE,0,"Column too large"); 66 } 67 ierr = MatGetValues(mdn->A,1,&row,1,&idxn[j],v+i*n+j); CHKERRQ(ierr); 68 } 69 } else { 70 SETERRQ(PETSC_ERR_SUP,0,"Only local values currently supported"); 71 } 72 } 73 PetscFunctionReturn(0); 74 } 75 76 #undef __FUNC__ 77 #define __FUNC__ "MatGetArray_MPIDense" 78 int MatGetArray_MPIDense(Mat A,Scalar **array) 79 { 80 Mat_MPIDense *a = (Mat_MPIDense *) A->data; 81 int ierr; 82 83 PetscFunctionBegin; 84 ierr = MatGetArray(a->A,array); CHKERRQ(ierr); 85 PetscFunctionReturn(0); 86 } 87 88 #undef __FUNC__ 89 #define __FUNC__ "MatRestoreArray_MPIDense" 90 int MatRestoreArray_MPIDense(Mat A,Scalar **array) 91 { 92 PetscFunctionBegin; 93 PetscFunctionReturn(0); 94 } 95 96 #undef __FUNC__ 97 #define __FUNC__ "MatAssemblyBegin_MPIDense" 98 int MatAssemblyBegin_MPIDense(Mat mat,MatAssemblyType mode) 99 { 100 Mat_MPIDense *mdn = (Mat_MPIDense *) mat->data; 101 MPI_Comm comm = mat->comm; 102 int size = mdn->size, *owners = mdn->rowners, rank = mdn->rank; 103 int *nprocs,i,j,idx,*procs,nsends,nreceives,nmax,*work; 104 int tag = mat->tag, *owner,*starts,count,ierr; 105 InsertMode addv; 106 MPI_Request *send_waits,*recv_waits; 107 Scalar *rvalues,*svalues; 108 109 PetscFunctionBegin; 110 /* make sure all processors are either in INSERTMODE or ADDMODE */ 111 ierr = MPI_Allreduce(&mat->insertmode,&addv,1,MPI_INT,MPI_BOR,comm);CHKERRQ(ierr); 112 if (addv == (ADD_VALUES|INSERT_VALUES)) { 113 SETERRQ(PETSC_ERR_ARG_WRONGSTATE,0,"Cannot mix adds/inserts on different procs"); 114 } 115 mat->insertmode = addv; /* in case this processor had no cache */ 116 117 /* first count number of contributors to each processor */ 118 nprocs = (int *) PetscMalloc( 2*size*sizeof(int) ); CHKPTRQ(nprocs); 119 PetscMemzero(nprocs,2*size*sizeof(int)); procs = nprocs + size; 120 owner = (int *) PetscMalloc( (mdn->stash.n+1)*sizeof(int) ); CHKPTRQ(owner); 121 for ( i=0; i<mdn->stash.n; i++ ) { 122 idx = mdn->stash.idx[i]; 123 for ( j=0; j<size; j++ ) { 124 if (idx >= owners[j] && idx < owners[j+1]) { 125 nprocs[j]++; procs[j] = 1; owner[i] = j; break; 126 } 127 } 128 } 129 nsends = 0; for ( i=0; i<size; i++ ) { nsends += procs[i];} 130 131 /* inform other processors of number of messages and max length*/ 132 work = (int *) PetscMalloc( size*sizeof(int) ); CHKPTRQ(work); 133 ierr = MPI_Allreduce(procs,work,size,MPI_INT,MPI_SUM,comm);CHKERRQ(ierr); 134 nreceives = work[rank]; 135 if (nreceives > size) SETERRQ(PETSC_ERR_PLIB,0,"Internal PETSc error"); 136 ierr = MPI_Allreduce(nprocs,work,size,MPI_INT,MPI_MAX,comm);CHKERRQ(ierr); 137 nmax = work[rank]; 138 PetscFree(work); 139 140 /* post receives: 141 1) each message will consist of ordered pairs 142 (global index,value) we store the global index as a double 143 to simplify the message passing. 144 2) since we don't know how long each individual message is we 145 allocate the largest needed buffer for each receive. Potentially 146 this is a lot of wasted space. 147 148 This could be done better. 149 */ 150 rvalues = (Scalar *) PetscMalloc(3*(nreceives+1)*(nmax+1)*sizeof(Scalar));CHKPTRQ(rvalues); 151 recv_waits = (MPI_Request *) PetscMalloc((nreceives+1)*sizeof(MPI_Request));CHKPTRQ(recv_waits); 152 for ( i=0; i<nreceives; i++ ) { 153 ierr = MPI_Irecv(rvalues+3*nmax*i,3*nmax,MPIU_SCALAR,MPI_ANY_SOURCE,tag,comm,recv_waits+i);CHKERRQ(ierr); 154 } 155 156 /* do sends: 157 1) starts[i] gives the starting index in svalues for stuff going to 158 the ith processor 159 */ 160 svalues = (Scalar *) PetscMalloc( 3*(mdn->stash.n+1)*sizeof(Scalar));CHKPTRQ(svalues); 161 send_waits = (MPI_Request *) PetscMalloc((nsends+1)*sizeof(MPI_Request));CHKPTRQ(send_waits); 162 starts = (int *) PetscMalloc( size*sizeof(int) ); CHKPTRQ(starts); 163 starts[0] = 0; 164 for ( i=1; i<size; i++ ) { starts[i] = starts[i-1] + nprocs[i-1];} 165 for ( i=0; i<mdn->stash.n; i++ ) { 166 svalues[3*starts[owner[i]]] = (Scalar) mdn->stash.idx[i]; 167 svalues[3*starts[owner[i]]+1] = (Scalar) mdn->stash.idy[i]; 168 svalues[3*(starts[owner[i]]++)+2] = mdn->stash.array[i]; 169 } 170 PetscFree(owner); 171 starts[0] = 0; 172 for ( i=1; i<size; i++ ) { starts[i] = starts[i-1] + nprocs[i-1];} 173 count = 0; 174 for ( i=0; i<size; i++ ) { 175 if (procs[i]) { 176 ierr = MPI_Isend(svalues+3*starts[i],3*nprocs[i],MPIU_SCALAR,i,tag,comm,send_waits+count++);CHKERRQ(ierr); 177 } 178 } 179 PetscFree(starts); PetscFree(nprocs); 180 181 /* Free cache space */ 182 PLogInfo(mat,"MatAssemblyBegin_MPIDense:Number of off-processor values %d\n",mdn->stash.n); 183 ierr = StashReset_Private(&mdn->stash); CHKERRQ(ierr); 184 185 mdn->svalues = svalues; mdn->rvalues = rvalues; 186 mdn->nsends = nsends; mdn->nrecvs = nreceives; 187 mdn->send_waits = send_waits; mdn->recv_waits = recv_waits; 188 mdn->rmax = nmax; 189 190 PetscFunctionReturn(0); 191 } 192 extern int MatSetUpMultiply_MPIDense(Mat); 193 194 #undef __FUNC__ 195 #define __FUNC__ "MatAssemblyEnd_MPIDense" 196 int MatAssemblyEnd_MPIDense(Mat mat,MatAssemblyType mode) 197 { 198 Mat_MPIDense *mdn = (Mat_MPIDense *) mat->data; 199 MPI_Status *send_status,recv_status; 200 int imdex, nrecvs=mdn->nrecvs, count=nrecvs, i, n, ierr, row, col; 201 Scalar *values,val; 202 InsertMode addv = mat->insertmode; 203 204 PetscFunctionBegin; 205 /* wait on receives */ 206 while (count) { 207 ierr = MPI_Waitany(nrecvs,mdn->recv_waits,&imdex,&recv_status);CHKERRQ(ierr); 208 /* unpack receives into our local space */ 209 values = mdn->rvalues + 3*imdex*mdn->rmax; 210 ierr = MPI_Get_count(&recv_status,MPIU_SCALAR,&n);CHKERRQ(ierr); 211 n = n/3; 212 for ( i=0; i<n; i++ ) { 213 row = (int) PetscReal(values[3*i]) - mdn->rstart; 214 col = (int) PetscReal(values[3*i+1]); 215 val = values[3*i+2]; 216 if (col >= 0 && col < mdn->N) { 217 MatSetValues(mdn->A,1,&row,1,&col,&val,addv); 218 } 219 else {SETERRQ(PETSC_ERR_ARG_OUTOFRANGE,0,"Invalid column");} 220 } 221 count--; 222 } 223 PetscFree(mdn->recv_waits); PetscFree(mdn->rvalues); 224 225 /* wait on sends */ 226 if (mdn->nsends) { 227 send_status = (MPI_Status *) PetscMalloc(mdn->nsends*sizeof(MPI_Status));CHKPTRQ(send_status); 228 ierr = MPI_Waitall(mdn->nsends,mdn->send_waits,send_status);CHKERRQ(ierr); 229 PetscFree(send_status); 230 } 231 PetscFree(mdn->send_waits); PetscFree(mdn->svalues); 232 233 ierr = MatAssemblyBegin(mdn->A,mode); CHKERRQ(ierr); 234 ierr = MatAssemblyEnd(mdn->A,mode); CHKERRQ(ierr); 235 236 if (!mat->was_assembled && mode == MAT_FINAL_ASSEMBLY) { 237 ierr = MatSetUpMultiply_MPIDense(mat); CHKERRQ(ierr); 238 } 239 PetscFunctionReturn(0); 240 } 241 242 #undef __FUNC__ 243 #define __FUNC__ "MatZeroEntries_MPIDense" 244 int MatZeroEntries_MPIDense(Mat A) 245 { 246 int ierr; 247 Mat_MPIDense *l = (Mat_MPIDense *) A->data; 248 249 PetscFunctionBegin; 250 ierr = MatZeroEntries(l->A);CHKERRQ(ierr); 251 PetscFunctionReturn(0); 252 } 253 254 #undef __FUNC__ 255 #define __FUNC__ "MatGetBlockSize_MPIDense" 256 int MatGetBlockSize_MPIDense(Mat A,int *bs) 257 { 258 PetscFunctionBegin; 259 *bs = 1; 260 PetscFunctionReturn(0); 261 } 262 263 /* the code does not do the diagonal entries correctly unless the 264 matrix is square and the column and row owerships are identical. 265 This is a BUG. The only way to fix it seems to be to access 266 mdn->A and mdn->B directly and not through the MatZeroRows() 267 routine. 268 */ 269 #undef __FUNC__ 270 #define __FUNC__ "MatZeroRows_MPIDense" 271 int MatZeroRows_MPIDense(Mat A,IS is,Scalar *diag) 272 { 273 Mat_MPIDense *l = (Mat_MPIDense *) A->data; 274 int i,ierr,N, *rows,*owners = l->rowners,size = l->size; 275 int *procs,*nprocs,j,found,idx,nsends,*work; 276 int nmax,*svalues,*starts,*owner,nrecvs,rank = l->rank; 277 int *rvalues,tag = A->tag,count,base,slen,n,*source; 278 int *lens,imdex,*lrows,*values; 279 MPI_Comm comm = A->comm; 280 MPI_Request *send_waits,*recv_waits; 281 MPI_Status recv_status,*send_status; 282 IS istmp; 283 284 PetscFunctionBegin; 285 ierr = ISGetSize(is,&N); CHKERRQ(ierr); 286 ierr = ISGetIndices(is,&rows); CHKERRQ(ierr); 287 288 /* first count number of contributors to each processor */ 289 nprocs = (int *) PetscMalloc( 2*size*sizeof(int) ); CHKPTRQ(nprocs); 290 PetscMemzero(nprocs,2*size*sizeof(int)); procs = nprocs + size; 291 owner = (int *) PetscMalloc((N+1)*sizeof(int)); CHKPTRQ(owner); /* see note*/ 292 for ( i=0; i<N; i++ ) { 293 idx = rows[i]; 294 found = 0; 295 for ( j=0; j<size; j++ ) { 296 if (idx >= owners[j] && idx < owners[j+1]) { 297 nprocs[j]++; procs[j] = 1; owner[i] = j; found = 1; break; 298 } 299 } 300 if (!found) SETERRQ(PETSC_ERR_ARG_OUTOFRANGE,0,"Index out of range"); 301 } 302 nsends = 0; for ( i=0; i<size; i++ ) { nsends += procs[i];} 303 304 /* inform other processors of number of messages and max length*/ 305 work = (int *) PetscMalloc( size*sizeof(int) ); CHKPTRQ(work); 306 ierr = MPI_Allreduce( procs, work,size,MPI_INT,MPI_SUM,comm);CHKERRQ(ierr); 307 nrecvs = work[rank]; 308 ierr = MPI_Allreduce( nprocs, work,size,MPI_INT,MPI_MAX,comm);CHKERRQ(ierr); 309 nmax = work[rank]; 310 PetscFree(work); 311 312 /* post receives: */ 313 rvalues = (int *) PetscMalloc((nrecvs+1)*(nmax+1)*sizeof(int));CHKPTRQ(rvalues); 314 recv_waits = (MPI_Request *) PetscMalloc((nrecvs+1)*sizeof(MPI_Request));CHKPTRQ(recv_waits); 315 for ( i=0; i<nrecvs; i++ ) { 316 ierr = MPI_Irecv(rvalues+nmax*i,nmax,MPI_INT,MPI_ANY_SOURCE,tag,comm,recv_waits+i);CHKERRQ(ierr); 317 } 318 319 /* do sends: 320 1) starts[i] gives the starting index in svalues for stuff going to 321 the ith processor 322 */ 323 svalues = (int *) PetscMalloc( (N+1)*sizeof(int) ); CHKPTRQ(svalues); 324 send_waits = (MPI_Request *) PetscMalloc((nsends+1)*sizeof(MPI_Request));CHKPTRQ(send_waits); 325 starts = (int *) PetscMalloc( (size+1)*sizeof(int) ); CHKPTRQ(starts); 326 starts[0] = 0; 327 for ( i=1; i<size; i++ ) { starts[i] = starts[i-1] + nprocs[i-1];} 328 for ( i=0; i<N; i++ ) { 329 svalues[starts[owner[i]]++] = rows[i]; 330 } 331 ISRestoreIndices(is,&rows); 332 333 starts[0] = 0; 334 for ( i=1; i<size+1; i++ ) { starts[i] = starts[i-1] + nprocs[i-1];} 335 count = 0; 336 for ( i=0; i<size; i++ ) { 337 if (procs[i]) { 338 ierr = MPI_Isend(svalues+starts[i],nprocs[i],MPI_INT,i,tag,comm,send_waits+count++);CHKERRQ(ierr); 339 } 340 } 341 PetscFree(starts); 342 343 base = owners[rank]; 344 345 /* wait on receives */ 346 lens = (int *) PetscMalloc( 2*(nrecvs+1)*sizeof(int) ); CHKPTRQ(lens); 347 source = lens + nrecvs; 348 count = nrecvs; slen = 0; 349 while (count) { 350 ierr = MPI_Waitany(nrecvs,recv_waits,&imdex,&recv_status);CHKERRQ(ierr); 351 /* unpack receives into our local space */ 352 ierr = MPI_Get_count(&recv_status,MPI_INT,&n);CHKERRQ(ierr); 353 source[imdex] = recv_status.MPI_SOURCE; 354 lens[imdex] = n; 355 slen += n; 356 count--; 357 } 358 PetscFree(recv_waits); 359 360 /* move the data into the send scatter */ 361 lrows = (int *) PetscMalloc( (slen+1)*sizeof(int) ); CHKPTRQ(lrows); 362 count = 0; 363 for ( i=0; i<nrecvs; i++ ) { 364 values = rvalues + i*nmax; 365 for ( j=0; j<lens[i]; j++ ) { 366 lrows[count++] = values[j] - base; 367 } 368 } 369 PetscFree(rvalues); PetscFree(lens); 370 PetscFree(owner); PetscFree(nprocs); 371 372 /* actually zap the local rows */ 373 ierr = ISCreateGeneral(PETSC_COMM_SELF,slen,lrows,&istmp);CHKERRQ(ierr); 374 PLogObjectParent(A,istmp); 375 PetscFree(lrows); 376 ierr = MatZeroRows(l->A,istmp,diag); CHKERRQ(ierr); 377 ierr = ISDestroy(istmp); CHKERRQ(ierr); 378 379 /* wait on sends */ 380 if (nsends) { 381 send_status = (MPI_Status *) PetscMalloc(nsends*sizeof(MPI_Status));CHKPTRQ(send_status); 382 ierr = MPI_Waitall(nsends,send_waits,send_status);CHKERRQ(ierr); 383 PetscFree(send_status); 384 } 385 PetscFree(send_waits); PetscFree(svalues); 386 387 PetscFunctionReturn(0); 388 } 389 390 #undef __FUNC__ 391 #define __FUNC__ "MatMult_MPIDense" 392 int MatMult_MPIDense(Mat mat,Vec xx,Vec yy) 393 { 394 Mat_MPIDense *mdn = (Mat_MPIDense *) mat->data; 395 int ierr; 396 397 PetscFunctionBegin; 398 ierr = VecScatterBegin(xx,mdn->lvec,INSERT_VALUES,SCATTER_FORWARD,mdn->Mvctx);CHKERRQ(ierr); 399 ierr = VecScatterEnd(xx,mdn->lvec,INSERT_VALUES,SCATTER_FORWARD,mdn->Mvctx);CHKERRQ(ierr); 400 ierr = MatMult_SeqDense(mdn->A,mdn->lvec,yy); CHKERRQ(ierr); 401 PetscFunctionReturn(0); 402 } 403 404 #undef __FUNC__ 405 #define __FUNC__ "MatMultAdd_MPIDense" 406 int MatMultAdd_MPIDense(Mat mat,Vec xx,Vec yy,Vec zz) 407 { 408 Mat_MPIDense *mdn = (Mat_MPIDense *) mat->data; 409 int ierr; 410 411 PetscFunctionBegin; 412 ierr = VecScatterBegin(xx,mdn->lvec,INSERT_VALUES,SCATTER_FORWARD,mdn->Mvctx);CHKERRQ(ierr); 413 ierr = VecScatterEnd(xx,mdn->lvec,INSERT_VALUES,SCATTER_FORWARD,mdn->Mvctx);CHKERRQ(ierr); 414 ierr = MatMultAdd_SeqDense(mdn->A,mdn->lvec,yy,zz); CHKERRQ(ierr); 415 PetscFunctionReturn(0); 416 } 417 418 #undef __FUNC__ 419 #define __FUNC__ "MatMultTrans_MPIDense" 420 int MatMultTrans_MPIDense(Mat A,Vec xx,Vec yy) 421 { 422 Mat_MPIDense *a = (Mat_MPIDense *) A->data; 423 int ierr; 424 Scalar zero = 0.0; 425 426 PetscFunctionBegin; 427 ierr = VecSet(&zero,yy); CHKERRQ(ierr); 428 ierr = MatMultTrans_SeqDense(a->A,xx,a->lvec); CHKERRQ(ierr); 429 ierr = VecScatterBegin(a->lvec,yy,ADD_VALUES,SCATTER_REVERSE,a->Mvctx); CHKERRQ(ierr); 430 ierr = VecScatterEnd(a->lvec,yy,ADD_VALUES,SCATTER_REVERSE,a->Mvctx); CHKERRQ(ierr); 431 PetscFunctionReturn(0); 432 } 433 434 #undef __FUNC__ 435 #define __FUNC__ "MatMultTransAdd_MPIDense" 436 int MatMultTransAdd_MPIDense(Mat A,Vec xx,Vec yy,Vec zz) 437 { 438 Mat_MPIDense *a = (Mat_MPIDense *) A->data; 439 int ierr; 440 441 PetscFunctionBegin; 442 ierr = VecCopy(yy,zz); CHKERRQ(ierr); 443 ierr = MatMultTrans_SeqDense(a->A,xx,a->lvec); CHKERRQ(ierr); 444 ierr = VecScatterBegin(a->lvec,zz,ADD_VALUES,SCATTER_REVERSE,a->Mvctx); CHKERRQ(ierr); 445 ierr = VecScatterEnd(a->lvec,zz,ADD_VALUES,SCATTER_REVERSE,a->Mvctx); CHKERRQ(ierr); 446 PetscFunctionReturn(0); 447 } 448 449 #undef __FUNC__ 450 #define __FUNC__ "MatGetDiagonal_MPIDense" 451 int MatGetDiagonal_MPIDense(Mat A,Vec v) 452 { 453 Mat_MPIDense *a = (Mat_MPIDense *) A->data; 454 Mat_SeqDense *aloc = (Mat_SeqDense *) a->A->data; 455 int ierr, len, i, n, m = a->m, radd; 456 Scalar *x, zero = 0.0; 457 458 PetscFunctionBegin; 459 VecSet(&zero,v); 460 ierr = VecGetArray(v,&x); CHKERRQ(ierr); 461 ierr = VecGetSize(v,&n); CHKERRQ(ierr); 462 if (n != a->M) SETERRQ(PETSC_ERR_ARG_SIZ,0,"Nonconforming mat and vec"); 463 len = PetscMin(aloc->m,aloc->n); 464 radd = a->rstart*m; 465 for ( i=0; i<len; i++ ) { 466 x[i] = aloc->v[radd + i*m + i]; 467 } 468 PetscFunctionReturn(0); 469 } 470 471 #undef __FUNC__ 472 #define __FUNC__ "MatDestroy_MPIDense" 473 int MatDestroy_MPIDense(Mat mat) 474 { 475 Mat_MPIDense *mdn = (Mat_MPIDense *) mat->data; 476 int ierr; 477 478 PetscFunctionBegin; 479 if (--mat->refct > 0) PetscFunctionReturn(0); 480 481 if (mat->mapping) { 482 ierr = ISLocalToGlobalMappingDestroy(mat->mapping); CHKERRQ(ierr); 483 } 484 if (mat->bmapping) { 485 ierr = ISLocalToGlobalMappingDestroy(mat->bmapping); CHKERRQ(ierr); 486 } 487 #if defined(USE_PETSC_LOG) 488 PLogObjectState((PetscObject)mat,"Rows=%d, Cols=%d",mdn->M,mdn->N); 489 #endif 490 ierr = StashDestroy_Private(&mdn->stash); CHKERRQ(ierr); 491 PetscFree(mdn->rowners); 492 ierr = MatDestroy(mdn->A); CHKERRQ(ierr); 493 if (mdn->lvec) VecDestroy(mdn->lvec); 494 if (mdn->Mvctx) VecScatterDestroy(mdn->Mvctx); 495 if (mdn->factor) { 496 if (mdn->factor->temp) PetscFree(mdn->factor->temp); 497 if (mdn->factor->tag) PetscFree(mdn->factor->tag); 498 if (mdn->factor->pivots) PetscFree(mdn->factor->pivots); 499 PetscFree(mdn->factor); 500 } 501 PetscFree(mdn); 502 if (mat->rmap) { 503 ierr = MapDestroy(mat->rmap);CHKERRQ(ierr); 504 } 505 if (mat->cmap) { 506 ierr = MapDestroy(mat->cmap);CHKERRQ(ierr); 507 } 508 PLogObjectDestroy(mat); 509 PetscHeaderDestroy(mat); 510 PetscFunctionReturn(0); 511 } 512 513 #undef __FUNC__ 514 #define __FUNC__ "MatView_MPIDense_Binary" 515 static int MatView_MPIDense_Binary(Mat mat,Viewer viewer) 516 { 517 Mat_MPIDense *mdn = (Mat_MPIDense *) mat->data; 518 int ierr; 519 520 PetscFunctionBegin; 521 if (mdn->size == 1) { 522 ierr = MatView(mdn->A,viewer); CHKERRQ(ierr); 523 } 524 else SETERRQ(PETSC_ERR_SUP,0,"Only uniprocessor output supported"); 525 PetscFunctionReturn(0); 526 } 527 528 #undef __FUNC__ 529 #define __FUNC__ "MatView_MPIDense_ASCII" 530 static int MatView_MPIDense_ASCII(Mat mat,Viewer viewer) 531 { 532 Mat_MPIDense *mdn = (Mat_MPIDense *) mat->data; 533 int ierr, format, size = mdn->size, rank = mdn->rank; 534 FILE *fd; 535 ViewerType vtype; 536 537 PetscFunctionBegin; 538 ierr = ViewerGetType(viewer,&vtype);CHKERRQ(ierr); 539 ierr = ViewerASCIIGetPointer(viewer,&fd); CHKERRQ(ierr); 540 ierr = ViewerGetFormat(viewer,&format); 541 if (format == VIEWER_FORMAT_ASCII_INFO_LONG) { 542 MatInfo info; 543 ierr = MatGetInfo(mat,MAT_LOCAL,&info); 544 PetscSequentialPhaseBegin(mat->comm,1); 545 fprintf(fd," [%d] local rows %d nz %d nz alloced %d mem %d \n",rank,mdn->m, 546 (int)info.nz_used,(int)info.nz_allocated,(int)info.memory); 547 fflush(fd); 548 PetscSequentialPhaseEnd(mat->comm,1); 549 ierr = VecScatterView(mdn->Mvctx,viewer); CHKERRQ(ierr); 550 PetscFunctionReturn(0); 551 } else if (format == VIEWER_FORMAT_ASCII_INFO) { 552 PetscFunctionReturn(0); 553 } 554 555 if (size == 1) { 556 ierr = MatView(mdn->A,viewer); CHKERRQ(ierr); 557 } else { 558 /* assemble the entire matrix onto first processor. */ 559 Mat A; 560 int M = mdn->M, N = mdn->N,m,row,i, nz, *cols; 561 Scalar *vals; 562 Mat_SeqDense *Amdn = (Mat_SeqDense*) mdn->A->data; 563 564 if (!rank) { 565 ierr = MatCreateMPIDense(mat->comm,M,N,M,N,PETSC_NULL,&A); CHKERRQ(ierr); 566 } else { 567 ierr = MatCreateMPIDense(mat->comm,0,N,M,N,PETSC_NULL,&A); CHKERRQ(ierr); 568 } 569 PLogObjectParent(mat,A); 570 571 /* Copy the matrix ... This isn't the most efficient means, 572 but it's quick for now */ 573 row = mdn->rstart; m = Amdn->m; 574 for ( i=0; i<m; i++ ) { 575 ierr = MatGetRow(mat,row,&nz,&cols,&vals); CHKERRQ(ierr); 576 ierr = MatSetValues(A,1,&row,nz,cols,vals,INSERT_VALUES); CHKERRQ(ierr); 577 ierr = MatRestoreRow(mat,row,&nz,&cols,&vals); CHKERRQ(ierr); 578 row++; 579 } 580 581 ierr = MatAssemblyBegin(A,MAT_FINAL_ASSEMBLY); CHKERRQ(ierr); 582 ierr = MatAssemblyEnd(A,MAT_FINAL_ASSEMBLY); CHKERRQ(ierr); 583 if (!rank) { 584 ierr = MatView(((Mat_MPIDense*)(A->data))->A,viewer); CHKERRQ(ierr); 585 } 586 ierr = MatDestroy(A); CHKERRQ(ierr); 587 } 588 PetscFunctionReturn(0); 589 } 590 591 #undef __FUNC__ 592 #define __FUNC__ "MatView_MPIDense" 593 int MatView_MPIDense(Mat mat,Viewer viewer) 594 { 595 int ierr; 596 ViewerType vtype; 597 598 ierr = ViewerGetType(viewer,&vtype); CHKERRQ(ierr); 599 if (PetscTypeCompare(vtype,ASCII_VIEWER)) { 600 ierr = MatView_MPIDense_ASCII(mat,viewer); CHKERRQ(ierr); 601 } else if (PetscTypeCompare(vtype,BINARY_VIEWER)) { 602 ierr = MatView_MPIDense_Binary(mat,viewer);CHKERRQ(ierr); 603 } else { 604 SETERRQ(1,1,"Viewer type not supported by PETSc object"); 605 } 606 PetscFunctionReturn(0); 607 } 608 609 #undef __FUNC__ 610 #define __FUNC__ "MatGetInfo_MPIDense" 611 int MatGetInfo_MPIDense(Mat A,MatInfoType flag,MatInfo *info) 612 { 613 Mat_MPIDense *mat = (Mat_MPIDense *) A->data; 614 Mat mdn = mat->A; 615 int ierr; 616 double isend[5], irecv[5]; 617 618 PetscFunctionBegin; 619 info->rows_global = (double)mat->M; 620 info->columns_global = (double)mat->N; 621 info->rows_local = (double)mat->m; 622 info->columns_local = (double)mat->N; 623 info->block_size = 1.0; 624 ierr = MatGetInfo(mdn,MAT_LOCAL,info); CHKERRQ(ierr); 625 isend[0] = info->nz_used; isend[1] = info->nz_allocated; isend[2] = info->nz_unneeded; 626 isend[3] = info->memory; isend[4] = info->mallocs; 627 if (flag == MAT_LOCAL) { 628 info->nz_used = isend[0]; 629 info->nz_allocated = isend[1]; 630 info->nz_unneeded = isend[2]; 631 info->memory = isend[3]; 632 info->mallocs = isend[4]; 633 } else if (flag == MAT_GLOBAL_MAX) { 634 ierr = MPI_Allreduce(isend,irecv,5,MPI_DOUBLE,MPI_MAX,A->comm);CHKERRQ(ierr); 635 info->nz_used = irecv[0]; 636 info->nz_allocated = irecv[1]; 637 info->nz_unneeded = irecv[2]; 638 info->memory = irecv[3]; 639 info->mallocs = irecv[4]; 640 } else if (flag == MAT_GLOBAL_SUM) { 641 ierr = MPI_Allreduce(isend,irecv,5,MPI_DOUBLE,MPI_SUM,A->comm);CHKERRQ(ierr); 642 info->nz_used = irecv[0]; 643 info->nz_allocated = irecv[1]; 644 info->nz_unneeded = irecv[2]; 645 info->memory = irecv[3]; 646 info->mallocs = irecv[4]; 647 } 648 info->fill_ratio_given = 0; /* no parallel LU/ILU/Cholesky */ 649 info->fill_ratio_needed = 0; 650 info->factor_mallocs = 0; 651 PetscFunctionReturn(0); 652 } 653 654 /* extern int MatLUFactorSymbolic_MPIDense(Mat,IS,IS,double,Mat*); 655 extern int MatLUFactorNumeric_MPIDense(Mat,Mat*); 656 extern int MatLUFactor_MPIDense(Mat,IS,IS,double); 657 extern int MatSolve_MPIDense(Mat,Vec,Vec); 658 extern int MatSolveAdd_MPIDense(Mat,Vec,Vec,Vec); 659 extern int MatSolveTrans_MPIDense(Mat,Vec,Vec); 660 extern int MatSolveTransAdd_MPIDense(Mat,Vec,Vec,Vec); */ 661 662 #undef __FUNC__ 663 #define __FUNC__ "MatSetOption_MPIDense" 664 int MatSetOption_MPIDense(Mat A,MatOption op) 665 { 666 Mat_MPIDense *a = (Mat_MPIDense *) A->data; 667 668 PetscFunctionBegin; 669 if (op == MAT_NO_NEW_NONZERO_LOCATIONS || 670 op == MAT_YES_NEW_NONZERO_LOCATIONS || 671 op == MAT_NEW_NONZERO_LOCATION_ERR || 672 op == MAT_NEW_NONZERO_ALLOCATION_ERR || 673 op == MAT_COLUMNS_SORTED || 674 op == MAT_COLUMNS_UNSORTED) { 675 MatSetOption(a->A,op); 676 } else if (op == MAT_ROW_ORIENTED) { 677 a->roworiented = 1; 678 MatSetOption(a->A,op); 679 } else if (op == MAT_ROWS_SORTED || 680 op == MAT_ROWS_UNSORTED || 681 op == MAT_SYMMETRIC || 682 op == MAT_STRUCTURALLY_SYMMETRIC || 683 op == MAT_YES_NEW_DIAGONALS || 684 op == MAT_USE_HASH_TABLE) { 685 PLogInfo(A,"MatSetOption_MPIDense:Option ignored\n"); 686 } else if (op == MAT_COLUMN_ORIENTED) { 687 a->roworiented = 0; MatSetOption(a->A,op); 688 } else if (op == MAT_NO_NEW_DIAGONALS) { 689 SETERRQ(PETSC_ERR_SUP,0,"MAT_NO_NEW_DIAGONALS"); 690 } else { 691 SETERRQ(PETSC_ERR_SUP,0,"unknown option"); 692 } 693 PetscFunctionReturn(0); 694 } 695 696 #undef __FUNC__ 697 #define __FUNC__ "MatGetSize_MPIDense" 698 int MatGetSize_MPIDense(Mat A,int *m,int *n) 699 { 700 Mat_MPIDense *mat = (Mat_MPIDense *) A->data; 701 702 PetscFunctionBegin; 703 *m = mat->M; *n = mat->N; 704 PetscFunctionReturn(0); 705 } 706 707 #undef __FUNC__ 708 #define __FUNC__ "MatGetLocalSize_MPIDense" 709 int MatGetLocalSize_MPIDense(Mat A,int *m,int *n) 710 { 711 Mat_MPIDense *mat = (Mat_MPIDense *) A->data; 712 713 PetscFunctionBegin; 714 *m = mat->m; *n = mat->N; 715 PetscFunctionReturn(0); 716 } 717 718 #undef __FUNC__ 719 #define __FUNC__ "MatGetOwnershipRange_MPIDense" 720 int MatGetOwnershipRange_MPIDense(Mat A,int *m,int *n) 721 { 722 Mat_MPIDense *mat = (Mat_MPIDense *) A->data; 723 724 PetscFunctionBegin; 725 *m = mat->rstart; *n = mat->rend; 726 PetscFunctionReturn(0); 727 } 728 729 #undef __FUNC__ 730 #define __FUNC__ "MatGetRow_MPIDense" 731 int MatGetRow_MPIDense(Mat A,int row,int *nz,int **idx,Scalar **v) 732 { 733 Mat_MPIDense *mat = (Mat_MPIDense *) A->data; 734 int lrow, rstart = mat->rstart, rend = mat->rend,ierr; 735 736 PetscFunctionBegin; 737 if (row < rstart || row >= rend) SETERRQ(PETSC_ERR_SUP,0,"only local rows") 738 lrow = row - rstart; 739 ierr = MatGetRow(mat->A,lrow,nz,idx,v);CHKERRQ(ierr); 740 PetscFunctionReturn(0); 741 } 742 743 #undef __FUNC__ 744 #define __FUNC__ "MatRestoreRow_MPIDense" 745 int MatRestoreRow_MPIDense(Mat mat,int row,int *nz,int **idx,Scalar **v) 746 { 747 PetscFunctionBegin; 748 if (idx) PetscFree(*idx); 749 if (v) PetscFree(*v); 750 PetscFunctionReturn(0); 751 } 752 753 #undef __FUNC__ 754 #define __FUNC__ "MatNorm_MPIDense" 755 int MatNorm_MPIDense(Mat A,NormType type,double *norm) 756 { 757 Mat_MPIDense *mdn = (Mat_MPIDense *) A->data; 758 Mat_SeqDense *mat = (Mat_SeqDense*) mdn->A->data; 759 int ierr, i, j; 760 double sum = 0.0; 761 Scalar *v = mat->v; 762 763 PetscFunctionBegin; 764 if (mdn->size == 1) { 765 ierr = MatNorm(mdn->A,type,norm); CHKERRQ(ierr); 766 } else { 767 if (type == NORM_FROBENIUS) { 768 for (i=0; i<mat->n*mat->m; i++ ) { 769 #if defined(USE_PETSC_COMPLEX) 770 sum += PetscReal(PetscConj(*v)*(*v)); v++; 771 #else 772 sum += (*v)*(*v); v++; 773 #endif 774 } 775 ierr = MPI_Allreduce(&sum,norm,1,MPI_DOUBLE,MPI_SUM,A->comm);CHKERRQ(ierr); 776 *norm = sqrt(*norm); 777 PLogFlops(2*mat->n*mat->m); 778 } else if (type == NORM_1) { 779 double *tmp, *tmp2; 780 tmp = (double *) PetscMalloc( 2*mdn->N*sizeof(double) ); CHKPTRQ(tmp); 781 tmp2 = tmp + mdn->N; 782 PetscMemzero(tmp,2*mdn->N*sizeof(double)); 783 *norm = 0.0; 784 v = mat->v; 785 for ( j=0; j<mat->n; j++ ) { 786 for ( i=0; i<mat->m; i++ ) { 787 tmp[j] += PetscAbsScalar(*v); v++; 788 } 789 } 790 ierr = MPI_Allreduce(tmp,tmp2,mdn->N,MPI_DOUBLE,MPI_SUM,A->comm);CHKERRQ(ierr); 791 for ( j=0; j<mdn->N; j++ ) { 792 if (tmp2[j] > *norm) *norm = tmp2[j]; 793 } 794 PetscFree(tmp); 795 PLogFlops(mat->n*mat->m); 796 } else if (type == NORM_INFINITY) { /* max row norm */ 797 double ntemp; 798 ierr = MatNorm(mdn->A,type,&ntemp); CHKERRQ(ierr); 799 ierr = MPI_Allreduce(&ntemp,norm,1,MPI_DOUBLE,MPI_MAX,A->comm);CHKERRQ(ierr); 800 } else { 801 SETERRQ(PETSC_ERR_SUP,0,"No support for two norm"); 802 } 803 } 804 PetscFunctionReturn(0); 805 } 806 807 #undef __FUNC__ 808 #define __FUNC__ "MatTranspose_MPIDense" 809 int MatTranspose_MPIDense(Mat A,Mat *matout) 810 { 811 Mat_MPIDense *a = (Mat_MPIDense *) A->data; 812 Mat_SeqDense *Aloc = (Mat_SeqDense *) a->A->data; 813 Mat B; 814 int M = a->M, N = a->N, m, n, *rwork, rstart = a->rstart; 815 int j, i, ierr; 816 Scalar *v; 817 818 PetscFunctionBegin; 819 if (matout == PETSC_NULL && M != N) { 820 SETERRQ(PETSC_ERR_SUP,0,"Supports square matrix only in-place"); 821 } 822 ierr = MatCreateMPIDense(A->comm,PETSC_DECIDE,PETSC_DECIDE,N,M,PETSC_NULL,&B);CHKERRQ(ierr); 823 824 m = Aloc->m; n = Aloc->n; v = Aloc->v; 825 rwork = (int *) PetscMalloc(n*sizeof(int)); CHKPTRQ(rwork); 826 for ( j=0; j<n; j++ ) { 827 for (i=0; i<m; i++) rwork[i] = rstart + i; 828 ierr = MatSetValues(B,1,&j,m,rwork,v,INSERT_VALUES); CHKERRQ(ierr); 829 v += m; 830 } 831 PetscFree(rwork); 832 ierr = MatAssemblyBegin(B,MAT_FINAL_ASSEMBLY); CHKERRQ(ierr); 833 ierr = MatAssemblyEnd(B,MAT_FINAL_ASSEMBLY); CHKERRQ(ierr); 834 if (matout != PETSC_NULL) { 835 *matout = B; 836 } else { 837 PetscOps *Abops; 838 MatOps Aops; 839 840 /* This isn't really an in-place transpose, but free data struct from a */ 841 PetscFree(a->rowners); 842 ierr = MatDestroy(a->A); CHKERRQ(ierr); 843 if (a->lvec) VecDestroy(a->lvec); 844 if (a->Mvctx) VecScatterDestroy(a->Mvctx); 845 PetscFree(a); 846 847 /* 848 This is horrible, horrible code. We need to keep the 849 A pointers for the bops and ops but copy everything 850 else from C. 851 */ 852 Abops = A->bops; 853 Aops = A->ops; 854 PetscMemcpy(A,B,sizeof(struct _p_Mat)); 855 A->bops = Abops; 856 A->ops = Aops; 857 858 PetscHeaderDestroy(B); 859 } 860 PetscFunctionReturn(0); 861 } 862 863 #include "pinclude/blaslapack.h" 864 #undef __FUNC__ 865 #define __FUNC__ "MatScale_MPIDense" 866 int MatScale_MPIDense(Scalar *alpha,Mat inA) 867 { 868 Mat_MPIDense *A = (Mat_MPIDense *) inA->data; 869 Mat_SeqDense *a = (Mat_SeqDense *) A->A->data; 870 int one = 1, nz; 871 872 PetscFunctionBegin; 873 nz = a->m*a->n; 874 BLscal_( &nz, alpha, a->v, &one ); 875 PLogFlops(nz); 876 PetscFunctionReturn(0); 877 } 878 879 static int MatDuplicate_MPIDense(Mat,MatDuplicateOption,Mat *); 880 extern int MatGetSubMatrices_MPIDense(Mat,int,IS *,IS *,MatReuse,Mat **); 881 882 /* -------------------------------------------------------------------*/ 883 static struct _MatOps MatOps_Values = {MatSetValues_MPIDense, 884 MatGetRow_MPIDense, 885 MatRestoreRow_MPIDense, 886 MatMult_MPIDense, 887 MatMultAdd_MPIDense, 888 MatMultTrans_MPIDense, 889 MatMultTransAdd_MPIDense, 890 0, 891 0, 892 0, 893 0, 894 0, 895 0, 896 0, 897 MatTranspose_MPIDense, 898 MatGetInfo_MPIDense,0, 899 MatGetDiagonal_MPIDense, 900 0, 901 MatNorm_MPIDense, 902 MatAssemblyBegin_MPIDense, 903 MatAssemblyEnd_MPIDense, 904 0, 905 MatSetOption_MPIDense, 906 MatZeroEntries_MPIDense, 907 MatZeroRows_MPIDense, 908 0, 909 0, 910 0, 911 0, 912 MatGetSize_MPIDense, 913 MatGetLocalSize_MPIDense, 914 MatGetOwnershipRange_MPIDense, 915 0, 916 0, 917 MatGetArray_MPIDense, 918 MatRestoreArray_MPIDense, 919 MatDuplicate_MPIDense, 920 0, 921 0, 922 0, 923 0, 924 0, 925 MatGetSubMatrices_MPIDense, 926 0, 927 MatGetValues_MPIDense, 928 0, 929 0, 930 MatScale_MPIDense, 931 0, 932 0, 933 0, 934 MatGetBlockSize_MPIDense, 935 0, 936 0, 937 0, 938 0, 939 0, 940 0, 941 0, 942 0, 943 0, 944 0, 945 0, 946 0, 947 MatGetMaps_Petsc}; 948 949 #undef __FUNC__ 950 #define __FUNC__ "MatCreateMPIDense" 951 /*@C 952 MatCreateMPIDense - Creates a sparse parallel matrix in dense format. 953 954 Collective on MPI_Comm 955 956 Input Parameters: 957 + comm - MPI communicator 958 . m - number of local rows (or PETSC_DECIDE to have calculated if M is given) 959 . n - number of local columns (or PETSC_DECIDE to have calculated if N is given) 960 . M - number of global rows (or PETSC_DECIDE to have calculated if m is given) 961 . N - number of global columns (or PETSC_DECIDE to have calculated if n is given) 962 - data - optional location of matrix data. Set data=PETSC_NULL for PETSc 963 to control all matrix memory allocation. 964 965 Output Parameter: 966 . A - the matrix 967 968 Notes: 969 The dense format is fully compatible with standard Fortran 77 970 storage by columns. 971 972 The data input variable is intended primarily for Fortran programmers 973 who wish to allocate their own matrix memory space. Most users should 974 set data=PETSC_NULL. 975 976 The user MUST specify either the local or global matrix dimensions 977 (possibly both). 978 979 Currently, the only parallel dense matrix decomposition is by rows, 980 so that n=N and each submatrix owns all of the global columns. 981 982 Level: intermediate 983 984 .keywords: matrix, dense, parallel 985 986 .seealso: MatCreate(), MatCreateSeqDense(), MatSetValues() 987 @*/ 988 int MatCreateMPIDense(MPI_Comm comm,int m,int n,int M,int N,Scalar *data,Mat *A) 989 { 990 Mat mat; 991 Mat_MPIDense *a; 992 int ierr, i,flg; 993 994 PetscFunctionBegin; 995 /* Note: For now, when data is specified above, this assumes the user correctly 996 allocates the local dense storage space. We should add error checking. */ 997 998 *A = 0; 999 PetscHeaderCreate(mat,_p_Mat,struct _MatOps,MAT_COOKIE,MATMPIDENSE,"Mat",comm,MatDestroy,MatView); 1000 PLogObjectCreate(mat); 1001 mat->data = (void *) (a = PetscNew(Mat_MPIDense)); CHKPTRQ(a); 1002 PetscMemcpy(mat->ops,&MatOps_Values,sizeof(struct _MatOps)); 1003 mat->ops->destroy = MatDestroy_MPIDense; 1004 mat->ops->view = MatView_MPIDense; 1005 mat->factor = 0; 1006 mat->mapping = 0; 1007 1008 a->factor = 0; 1009 mat->insertmode = NOT_SET_VALUES; 1010 MPI_Comm_rank(comm,&a->rank); 1011 MPI_Comm_size(comm,&a->size); 1012 1013 ierr = PetscSplitOwnership(comm,&m,&M);CHKERRQ(ierr); 1014 1015 /* 1016 The computation of n is wrong below, n should represent the number of local 1017 rows in the right (column vector) 1018 */ 1019 1020 /* each row stores all columns */ 1021 if (N == PETSC_DECIDE) N = n; 1022 if (n == PETSC_DECIDE) {n = N/a->size + ((N % a->size) > a->rank);} 1023 /* if (n != N) SETERRQ(PETSC_ERR_SUP,0,"For now, only n=N is supported"); */ 1024 a->N = mat->N = N; 1025 a->M = mat->M = M; 1026 a->m = mat->m = m; 1027 a->n = mat->n = n; 1028 1029 /* the information in the maps duplicates the information computed below, eventually 1030 we should remove the duplicate information that is not contained in the maps */ 1031 ierr = MapCreateMPI(comm,m,M,&mat->rmap);CHKERRQ(ierr); 1032 ierr = MapCreateMPI(comm,PETSC_DECIDE,N,&mat->cmap);CHKERRQ(ierr); 1033 1034 /* build local table of row and column ownerships */ 1035 a->rowners = (int *) PetscMalloc(2*(a->size+2)*sizeof(int)); CHKPTRQ(a->rowners); 1036 a->cowners = a->rowners + a->size + 1; 1037 PLogObjectMemory(mat,2*(a->size+2)*sizeof(int)+sizeof(struct _p_Mat)+sizeof(Mat_MPIDense)); 1038 ierr = MPI_Allgather(&m,1,MPI_INT,a->rowners+1,1,MPI_INT,comm);CHKERRQ(ierr); 1039 a->rowners[0] = 0; 1040 for ( i=2; i<=a->size; i++ ) { 1041 a->rowners[i] += a->rowners[i-1]; 1042 } 1043 a->rstart = a->rowners[a->rank]; 1044 a->rend = a->rowners[a->rank+1]; 1045 ierr = MPI_Allgather(&n,1,MPI_INT,a->cowners+1,1,MPI_INT,comm);CHKERRQ(ierr); 1046 a->cowners[0] = 0; 1047 for ( i=2; i<=a->size; i++ ) { 1048 a->cowners[i] += a->cowners[i-1]; 1049 } 1050 1051 ierr = MatCreateSeqDense(PETSC_COMM_SELF,m,N,data,&a->A); CHKERRQ(ierr); 1052 PLogObjectParent(mat,a->A); 1053 1054 /* build cache for off array entries formed */ 1055 ierr = StashCreate_Private(comm,1,&a->stash); CHKERRQ(ierr); 1056 1057 /* stuff used for matrix vector multiply */ 1058 a->lvec = 0; 1059 a->Mvctx = 0; 1060 a->roworiented = 1; 1061 1062 *A = mat; 1063 ierr = OptionsHasName(PETSC_NULL,"-help",&flg); CHKERRQ(ierr); 1064 if (flg) { 1065 ierr = MatPrintHelp(mat); CHKERRQ(ierr); 1066 } 1067 PetscFunctionReturn(0); 1068 } 1069 1070 #undef __FUNC__ 1071 #define __FUNC__ "MatDuplicate_MPIDense" 1072 static int MatDuplicate_MPIDense(Mat A,MatDuplicateOption cpvalues,Mat *newmat) 1073 { 1074 Mat mat; 1075 Mat_MPIDense *a,*oldmat = (Mat_MPIDense *) A->data; 1076 int ierr; 1077 FactorCtx *factor; 1078 1079 PetscFunctionBegin; 1080 *newmat = 0; 1081 PetscHeaderCreate(mat,_p_Mat,struct _MatOps,MAT_COOKIE,MATMPIDENSE,"Mat",A->comm,MatDestroy,MatView); 1082 PLogObjectCreate(mat); 1083 mat->data = (void *) (a = PetscNew(Mat_MPIDense)); CHKPTRQ(a); 1084 PetscMemcpy(mat->ops,&MatOps_Values,sizeof(struct _MatOps)); 1085 mat->ops->destroy = MatDestroy_MPIDense; 1086 mat->ops->view = MatView_MPIDense; 1087 mat->factor = A->factor; 1088 mat->assembled = PETSC_TRUE; 1089 1090 a->m = mat->m = oldmat->m; 1091 a->n = mat->n = oldmat->n; 1092 a->M = mat->M = oldmat->M; 1093 a->N = mat->N = oldmat->N; 1094 if (oldmat->factor) { 1095 a->factor = (FactorCtx *) (factor = PetscNew(FactorCtx)); CHKPTRQ(factor); 1096 /* copy factor contents ... add this code! */ 1097 } else a->factor = 0; 1098 1099 a->rstart = oldmat->rstart; 1100 a->rend = oldmat->rend; 1101 a->size = oldmat->size; 1102 a->rank = oldmat->rank; 1103 mat->insertmode = NOT_SET_VALUES; 1104 1105 a->rowners = (int *) PetscMalloc((a->size+1)*sizeof(int)); CHKPTRQ(a->rowners); 1106 PLogObjectMemory(mat,(a->size+1)*sizeof(int)+sizeof(struct _p_Mat)+sizeof(Mat_MPIDense)); 1107 PetscMemcpy(a->rowners,oldmat->rowners,(a->size+1)*sizeof(int)); 1108 ierr = StashCreate_Private(A->comm,1,&a->stash); CHKERRQ(ierr); 1109 1110 ierr = VecDuplicate(oldmat->lvec,&a->lvec); CHKERRQ(ierr); 1111 PLogObjectParent(mat,a->lvec); 1112 ierr = VecScatterCopy(oldmat->Mvctx,&a->Mvctx); CHKERRQ(ierr); 1113 PLogObjectParent(mat,a->Mvctx); 1114 ierr = MatDuplicate(oldmat->A,cpvalues,&a->A); CHKERRQ(ierr); 1115 PLogObjectParent(mat,a->A); 1116 *newmat = mat; 1117 PetscFunctionReturn(0); 1118 } 1119 1120 #include "sys.h" 1121 1122 #undef __FUNC__ 1123 #define __FUNC__ "MatLoad_MPIDense_DenseInFile" 1124 int MatLoad_MPIDense_DenseInFile(MPI_Comm comm,int fd,int M, int N, Mat *newmat) 1125 { 1126 int *rowners, i,size,rank,m,ierr,nz,j; 1127 Scalar *array,*vals,*vals_ptr; 1128 MPI_Status status; 1129 1130 PetscFunctionBegin; 1131 MPI_Comm_rank(comm,&rank); 1132 MPI_Comm_size(comm,&size); 1133 1134 /* determine ownership of all rows */ 1135 m = M/size + ((M % size) > rank); 1136 rowners = (int *) PetscMalloc((size+2)*sizeof(int)); CHKPTRQ(rowners); 1137 ierr = MPI_Allgather(&m,1,MPI_INT,rowners+1,1,MPI_INT,comm);CHKERRQ(ierr); 1138 rowners[0] = 0; 1139 for ( i=2; i<=size; i++ ) { 1140 rowners[i] += rowners[i-1]; 1141 } 1142 1143 ierr = MatCreateMPIDense(comm,m,PETSC_DECIDE,M,N,PETSC_NULL,newmat);CHKERRQ(ierr); 1144 ierr = MatGetArray(*newmat,&array); CHKERRQ(ierr); 1145 1146 if (!rank) { 1147 vals = (Scalar *) PetscMalloc( m*N*sizeof(Scalar) ); CHKPTRQ(vals); 1148 1149 /* read in my part of the matrix numerical values */ 1150 ierr = PetscBinaryRead(fd,vals,m*N,PETSC_SCALAR); CHKERRQ(ierr); 1151 1152 /* insert into matrix-by row (this is why cannot directly read into array */ 1153 vals_ptr = vals; 1154 for ( i=0; i<m; i++ ) { 1155 for ( j=0; j<N; j++ ) { 1156 array[i + j*m] = *vals_ptr++; 1157 } 1158 } 1159 1160 /* read in other processors and ship out */ 1161 for ( i=1; i<size; i++ ) { 1162 nz = (rowners[i+1] - rowners[i])*N; 1163 ierr = PetscBinaryRead(fd,vals,nz,PETSC_SCALAR); CHKERRQ(ierr); 1164 ierr = MPI_Send(vals,nz,MPIU_SCALAR,i,(*newmat)->tag,comm);CHKERRQ(ierr); 1165 } 1166 } else { 1167 /* receive numeric values */ 1168 vals = (Scalar*) PetscMalloc( m*N*sizeof(Scalar) ); CHKPTRQ(vals); 1169 1170 /* receive message of values*/ 1171 ierr = MPI_Recv(vals,m*N,MPIU_SCALAR,0,(*newmat)->tag,comm,&status);CHKERRQ(ierr); 1172 1173 /* insert into matrix-by row (this is why cannot directly read into array */ 1174 vals_ptr = vals; 1175 for ( i=0; i<m; i++ ) { 1176 for ( j=0; j<N; j++ ) { 1177 array[i + j*m] = *vals_ptr++; 1178 } 1179 } 1180 } 1181 PetscFree(rowners); 1182 PetscFree(vals); 1183 ierr = MatAssemblyBegin(*newmat,MAT_FINAL_ASSEMBLY); CHKERRQ(ierr); 1184 ierr = MatAssemblyEnd(*newmat,MAT_FINAL_ASSEMBLY); CHKERRQ(ierr); 1185 PetscFunctionReturn(0); 1186 } 1187 1188 1189 #undef __FUNC__ 1190 #define __FUNC__ "MatLoad_MPIDense" 1191 int MatLoad_MPIDense(Viewer viewer,MatType type,Mat *newmat) 1192 { 1193 Mat A; 1194 Scalar *vals,*svals; 1195 MPI_Comm comm = ((PetscObject)viewer)->comm; 1196 MPI_Status status; 1197 int header[4],rank,size,*rowlengths = 0,M,N,m,*rowners,maxnz,*cols; 1198 int *ourlens,*sndcounts = 0,*procsnz = 0, *offlens,jj,*mycols,*smycols; 1199 int tag = ((PetscObject)viewer)->tag; 1200 int i, nz, ierr, j,rstart, rend, fd; 1201 1202 PetscFunctionBegin; 1203 MPI_Comm_size(comm,&size); MPI_Comm_rank(comm,&rank); 1204 if (!rank) { 1205 ierr = ViewerBinaryGetDescriptor(viewer,&fd); CHKERRQ(ierr); 1206 ierr = PetscBinaryRead(fd,(char *)header,4,PETSC_INT); CHKERRQ(ierr); 1207 if (header[0] != MAT_COOKIE) SETERRQ(PETSC_ERR_FILE_UNEXPECTED,0,"not matrix object"); 1208 } 1209 1210 ierr = MPI_Bcast(header+1,3,MPI_INT,0,comm);CHKERRQ(ierr); 1211 M = header[1]; N = header[2]; nz = header[3]; 1212 1213 /* 1214 Handle case where matrix is stored on disk as a dense matrix 1215 */ 1216 if (nz == MATRIX_BINARY_FORMAT_DENSE) { 1217 ierr = MatLoad_MPIDense_DenseInFile(comm,fd,M,N,newmat);CHKERRQ(ierr); 1218 PetscFunctionReturn(0); 1219 } 1220 1221 /* determine ownership of all rows */ 1222 m = M/size + ((M % size) > rank); 1223 rowners = (int *) PetscMalloc((size+2)*sizeof(int)); CHKPTRQ(rowners); 1224 ierr = MPI_Allgather(&m,1,MPI_INT,rowners+1,1,MPI_INT,comm);CHKERRQ(ierr); 1225 rowners[0] = 0; 1226 for ( i=2; i<=size; i++ ) { 1227 rowners[i] += rowners[i-1]; 1228 } 1229 rstart = rowners[rank]; 1230 rend = rowners[rank+1]; 1231 1232 /* distribute row lengths to all processors */ 1233 ourlens = (int*) PetscMalloc( 2*(rend-rstart)*sizeof(int) ); CHKPTRQ(ourlens); 1234 offlens = ourlens + (rend-rstart); 1235 if (!rank) { 1236 rowlengths = (int*) PetscMalloc( M*sizeof(int) ); CHKPTRQ(rowlengths); 1237 ierr = PetscBinaryRead(fd,rowlengths,M,PETSC_INT); CHKERRQ(ierr); 1238 sndcounts = (int*) PetscMalloc( size*sizeof(int) ); CHKPTRQ(sndcounts); 1239 for ( i=0; i<size; i++ ) sndcounts[i] = rowners[i+1] - rowners[i]; 1240 ierr = MPI_Scatterv(rowlengths,sndcounts,rowners,MPI_INT,ourlens,rend-rstart,MPI_INT,0,comm);CHKERRQ(ierr); 1241 PetscFree(sndcounts); 1242 } else { 1243 ierr = MPI_Scatterv(0,0,0,MPI_INT,ourlens,rend-rstart,MPI_INT, 0,comm);CHKERRQ(ierr); 1244 } 1245 1246 if (!rank) { 1247 /* calculate the number of nonzeros on each processor */ 1248 procsnz = (int*) PetscMalloc( size*sizeof(int) ); CHKPTRQ(procsnz); 1249 PetscMemzero(procsnz,size*sizeof(int)); 1250 for ( i=0; i<size; i++ ) { 1251 for ( j=rowners[i]; j< rowners[i+1]; j++ ) { 1252 procsnz[i] += rowlengths[j]; 1253 } 1254 } 1255 PetscFree(rowlengths); 1256 1257 /* determine max buffer needed and allocate it */ 1258 maxnz = 0; 1259 for ( i=0; i<size; i++ ) { 1260 maxnz = PetscMax(maxnz,procsnz[i]); 1261 } 1262 cols = (int *) PetscMalloc( maxnz*sizeof(int) ); CHKPTRQ(cols); 1263 1264 /* read in my part of the matrix column indices */ 1265 nz = procsnz[0]; 1266 mycols = (int *) PetscMalloc( nz*sizeof(int) ); CHKPTRQ(mycols); 1267 ierr = PetscBinaryRead(fd,mycols,nz,PETSC_INT); CHKERRQ(ierr); 1268 1269 /* read in every one elses and ship off */ 1270 for ( i=1; i<size; i++ ) { 1271 nz = procsnz[i]; 1272 ierr = PetscBinaryRead(fd,cols,nz,PETSC_INT); CHKERRQ(ierr); 1273 ierr = MPI_Send(cols,nz,MPI_INT,i,tag,comm);CHKERRQ(ierr); 1274 } 1275 PetscFree(cols); 1276 } else { 1277 /* determine buffer space needed for message */ 1278 nz = 0; 1279 for ( i=0; i<m; i++ ) { 1280 nz += ourlens[i]; 1281 } 1282 mycols = (int*) PetscMalloc( nz*sizeof(int) ); CHKPTRQ(mycols); 1283 1284 /* receive message of column indices*/ 1285 ierr = MPI_Recv(mycols,nz,MPI_INT,0,tag,comm,&status);CHKERRQ(ierr); 1286 ierr = MPI_Get_count(&status,MPI_INT,&maxnz);CHKERRQ(ierr); 1287 if (maxnz != nz) SETERRQ(PETSC_ERR_FILE_UNEXPECTED,0,"something is wrong with file"); 1288 } 1289 1290 /* loop over local rows, determining number of off diagonal entries */ 1291 PetscMemzero(offlens,m*sizeof(int)); 1292 jj = 0; 1293 for ( i=0; i<m; i++ ) { 1294 for ( j=0; j<ourlens[i]; j++ ) { 1295 if (mycols[jj] < rstart || mycols[jj] >= rend) offlens[i]++; 1296 jj++; 1297 } 1298 } 1299 1300 /* create our matrix */ 1301 for ( i=0; i<m; i++ ) { 1302 ourlens[i] -= offlens[i]; 1303 } 1304 ierr = MatCreateMPIDense(comm,m,PETSC_DECIDE,M,N,PETSC_NULL,newmat);CHKERRQ(ierr); 1305 A = *newmat; 1306 for ( i=0; i<m; i++ ) { 1307 ourlens[i] += offlens[i]; 1308 } 1309 1310 if (!rank) { 1311 vals = (Scalar *) PetscMalloc( maxnz*sizeof(Scalar) ); CHKPTRQ(vals); 1312 1313 /* read in my part of the matrix numerical values */ 1314 nz = procsnz[0]; 1315 ierr = PetscBinaryRead(fd,vals,nz,PETSC_SCALAR); CHKERRQ(ierr); 1316 1317 /* insert into matrix */ 1318 jj = rstart; 1319 smycols = mycols; 1320 svals = vals; 1321 for ( i=0; i<m; i++ ) { 1322 ierr = MatSetValues(A,1,&jj,ourlens[i],smycols,svals,INSERT_VALUES);CHKERRQ(ierr); 1323 smycols += ourlens[i]; 1324 svals += ourlens[i]; 1325 jj++; 1326 } 1327 1328 /* read in other processors and ship out */ 1329 for ( i=1; i<size; i++ ) { 1330 nz = procsnz[i]; 1331 ierr = PetscBinaryRead(fd,vals,nz,PETSC_SCALAR); CHKERRQ(ierr); 1332 ierr = MPI_Send(vals,nz,MPIU_SCALAR,i,A->tag,comm);CHKERRQ(ierr); 1333 } 1334 PetscFree(procsnz); 1335 } else { 1336 /* receive numeric values */ 1337 vals = (Scalar*) PetscMalloc( nz*sizeof(Scalar) ); CHKPTRQ(vals); 1338 1339 /* receive message of values*/ 1340 ierr = MPI_Recv(vals,nz,MPIU_SCALAR,0,A->tag,comm,&status);CHKERRQ(ierr); 1341 ierr = MPI_Get_count(&status,MPIU_SCALAR,&maxnz);CHKERRQ(ierr); 1342 if (maxnz != nz) SETERRQ(PETSC_ERR_FILE_UNEXPECTED,0,"something is wrong with file"); 1343 1344 /* insert into matrix */ 1345 jj = rstart; 1346 smycols = mycols; 1347 svals = vals; 1348 for ( i=0; i<m; i++ ) { 1349 ierr = MatSetValues(A,1,&jj,ourlens[i],smycols,svals,INSERT_VALUES);CHKERRQ(ierr); 1350 smycols += ourlens[i]; 1351 svals += ourlens[i]; 1352 jj++; 1353 } 1354 } 1355 PetscFree(ourlens); PetscFree(vals); PetscFree(mycols); PetscFree(rowners); 1356 1357 ierr = MatAssemblyBegin(A,MAT_FINAL_ASSEMBLY); CHKERRQ(ierr); 1358 ierr = MatAssemblyEnd(A,MAT_FINAL_ASSEMBLY); CHKERRQ(ierr); 1359 PetscFunctionReturn(0); 1360 } 1361 1362 1363 1364 1365 1366