xref: /libCEED/README.md (revision 13964f0727a62e5421e6d3b433e838b96a9ce891)
1bcb2dfaeSJed Brown# libCEED: Efficient Extensible Discretization
2bcb2dfaeSJed Brown
3d3fde3fbSJed Brown[![GitHub Actions][github-badge]][github-link]
4d3fde3fbSJed Brown[![GitLab-CI][gitlab-badge]][gitlab-link]
5d3fde3fbSJed Brown[![Azure Pipelines][azure-badge]][azure-link]
6d3fde3fbSJed Brown[![Code coverage][codecov-badge]][codecov-link]
7d3fde3fbSJed Brown[![BSD-2-Clause][license-badge]][license-link]
8d3fde3fbSJed Brown[![Documentation][doc-badge]][doc-link]
9d3fde3fbSJed Brown[![JOSS paper][joss-badge]][joss-link]
10d3fde3fbSJed Brown[![Binder][binder-badge]][binder-link]
11bcb2dfaeSJed Brown
12bcb2dfaeSJed Brown## Summary and Purpose
13bcb2dfaeSJed Brown
14bcb2dfaeSJed BrownlibCEED provides fast algebra for element-based discretizations, designed for
15bcb2dfaeSJed Brownperformance portability, run-time flexibility, and clean embedding in higher
16bcb2dfaeSJed Brownlevel libraries and applications. It offers a C99 interface as well as bindings
17bcb2dfaeSJed Brownfor Fortran, Python, Julia, and Rust.
18bcb2dfaeSJed BrownWhile our focus is on high-order finite elements, the approach is mostly
19bcb2dfaeSJed Brownalgebraic and thus applicable to other discretizations in factored form, as
20*13964f07SJed Brownexplained in the [user manual](https://libceed.org/en/latest/) and
21bcb2dfaeSJed BrownAPI implementation portion of the
22*13964f07SJed Brown[documentation](https://libceed.org/en/latest/api/).
23bcb2dfaeSJed Brown
24bcb2dfaeSJed BrownOne of the challenges with high-order methods is that a global sparse matrix is
25bcb2dfaeSJed Brownno longer a good representation of a high-order linear operator, both with
26bcb2dfaeSJed Brownrespect to the FLOPs needed for its evaluation, as well as the memory transfer
27bcb2dfaeSJed Brownneeded for a matvec.  Thus, high-order methods require a new "format" that still
28bcb2dfaeSJed Brownrepresents a linear (or more generally non-linear) operator, but not through a
29bcb2dfaeSJed Brownsparse matrix.
30bcb2dfaeSJed Brown
31bcb2dfaeSJed BrownThe goal of libCEED is to propose such a format, as well as supporting
32bcb2dfaeSJed Brownimplementations and data structures, that enable efficient operator evaluation
33bcb2dfaeSJed Brownon a variety of computational device types (CPUs, GPUs, etc.). This new operator
34bcb2dfaeSJed Browndescription is based on algebraically
35*13964f07SJed Brown[factored form](https://libceed.org/en/latest/libCEEDapi/#finite-element-operator-decomposition),
36bcb2dfaeSJed Brownwhich is easy to incorporate in a wide variety of applications, without significant
37bcb2dfaeSJed Brownrefactoring of their own discretization infrastructure.
38bcb2dfaeSJed Brown
39bcb2dfaeSJed BrownThe repository is part of the
40bcb2dfaeSJed Brown[CEED software suite](http://ceed.exascaleproject.org/software/), a collection of
41bcb2dfaeSJed Brownsoftware benchmarks, miniapps, libraries and APIs for efficient exascale
42bcb2dfaeSJed Browndiscretizations based on high-order finite element and spectral element methods.
43bcb2dfaeSJed BrownSee <http://github.com/ceed> for more information and source code availability.
44bcb2dfaeSJed Brown
45bcb2dfaeSJed BrownThe CEED research is supported by the
46bcb2dfaeSJed Brown[Exascale Computing Project](https://exascaleproject.org/exascale-computing-project)
47bcb2dfaeSJed Brown(17-SC-20-SC), a collaborative effort of two U.S. Department of Energy
48bcb2dfaeSJed Brownorganizations (Office of Science and the National Nuclear Security
49bcb2dfaeSJed BrownAdministration) responsible for the planning and preparation of a
50bcb2dfaeSJed Brown[capable exascale ecosystem](https://exascaleproject.org/what-is-exascale), including
51bcb2dfaeSJed Brownsoftware, applications, hardware, advanced system engineering and early testbed
52bcb2dfaeSJed Brownplatforms, in support of the nation’s exascale computing imperative.
53bcb2dfaeSJed Brown
54*13964f07SJed BrownFor more details on the CEED API see the [user manual](https://libceed.org/en/latest/).
55bcb2dfaeSJed Brown
56bcb2dfaeSJed Brown% gettingstarted-inclusion-marker
57bcb2dfaeSJed Brown
58bcb2dfaeSJed Brown## Building
59bcb2dfaeSJed Brown
60bcb2dfaeSJed BrownThe CEED library, `libceed`, is a C99 library with no required dependencies, and
61bcb2dfaeSJed Brownwith Fortran, Python, Julia, and Rust interfaces.  It can be built using:
62bcb2dfaeSJed Brown
63bcb2dfaeSJed Brown```
64bcb2dfaeSJed Brownmake
65bcb2dfaeSJed Brown```
66bcb2dfaeSJed Brown
67bcb2dfaeSJed Brownor, with optimization flags:
68bcb2dfaeSJed Brown
69bcb2dfaeSJed Brown```
70bcb2dfaeSJed Brownmake OPT='-O3 -march=skylake-avx512 -ffp-contract=fast'
71bcb2dfaeSJed Brown```
72bcb2dfaeSJed Brown
73bcb2dfaeSJed BrownThese optimization flags are used by all languages (C, C++, Fortran) and this
74bcb2dfaeSJed Brownmakefile variable can also be set for testing and examples (below).
75bcb2dfaeSJed Brown
76bcb2dfaeSJed BrownThe library attempts to automatically detect support for the AVX
77bcb2dfaeSJed Browninstruction set using gcc-style compiler options for the host.
78bcb2dfaeSJed BrownSupport may need to be manually specified via:
79bcb2dfaeSJed Brown
80bcb2dfaeSJed Brown```
81bcb2dfaeSJed Brownmake AVX=1
82bcb2dfaeSJed Brown```
83bcb2dfaeSJed Brown
84bcb2dfaeSJed Brownor:
85bcb2dfaeSJed Brown
86bcb2dfaeSJed Brown```
87bcb2dfaeSJed Brownmake AVX=0
88bcb2dfaeSJed Brown```
89bcb2dfaeSJed Brown
90bcb2dfaeSJed Brownif your compiler does not support gcc-style options, if you are cross
91bcb2dfaeSJed Browncompiling, etc.
92bcb2dfaeSJed Brown
93bcb2dfaeSJed BrownTo enable CUDA support, add `CUDA_DIR=/opt/cuda` or an appropriate directory
94bcb2dfaeSJed Brownto your `make` invocation. To enable HIP support, add `HIP_DIR=/opt/rocm` or
95bcb2dfaeSJed Brownan appropriate directory. To store these or other arguments as defaults for
96bcb2dfaeSJed Brownfuture invocations of `make`, use:
97bcb2dfaeSJed Brown
98bcb2dfaeSJed Brown```
99bcb2dfaeSJed Brownmake configure CUDA_DIR=/usr/local/cuda HIP_DIR=/opt/rocm OPT='-O3 -march=znver2'
100bcb2dfaeSJed Brown```
101bcb2dfaeSJed Brown
102bcb2dfaeSJed Brownwhich stores these variables in `config.mk`.
103bcb2dfaeSJed Brown
104bcb2dfaeSJed Brown## Additional Language Interfaces
105bcb2dfaeSJed Brown
106bcb2dfaeSJed BrownThe Fortran interface is built alongside the library automatically.
107bcb2dfaeSJed Brown
108bcb2dfaeSJed BrownPython users can install using:
109bcb2dfaeSJed Brown
110bcb2dfaeSJed Brown```
111bcb2dfaeSJed Brownpip install libceed
112bcb2dfaeSJed Brown```
113bcb2dfaeSJed Brown
114bcb2dfaeSJed Brownor in a clone of the repository via `pip install .`.
115bcb2dfaeSJed Brown
116bcb2dfaeSJed BrownJulia users can install using:
117bcb2dfaeSJed Brown
118bcb2dfaeSJed Brown```
119bcb2dfaeSJed Brown$ julia
120bcb2dfaeSJed Brownjulia> ]
121bcb2dfaeSJed Brownpkg> add LibCEED
122bcb2dfaeSJed Brown```
123bcb2dfaeSJed Brown
124186a1480SWill PaznerSee the [LibCEED.jl documentation](http://ceed.exascaleproject.org/libCEED-julia-docs/dev/)
125186a1480SWill Paznerfor more information.
126bcb2dfaeSJed Brown
127bcb2dfaeSJed BrownRust users can include libCEED via `Cargo.toml`:
128bcb2dfaeSJed Brown
129bcb2dfaeSJed Brown```toml
130bcb2dfaeSJed Brown[dependencies]
131bcb2dfaeSJed Brownlibceed = { git = "https://github.com/CEED/libCEED", branch = "main" }
132bcb2dfaeSJed Brown```
133bcb2dfaeSJed Brown
134bcb2dfaeSJed BrownSee the [Cargo documentation](https://doc.rust-lang.org/cargo/reference/specifying-dependencies.html#specifying-dependencies-from-git-repositories) for details.
135bcb2dfaeSJed Brown
136bcb2dfaeSJed Brown## Testing
137bcb2dfaeSJed Brown
138bcb2dfaeSJed BrownThe test suite produces [TAP](https://testanything.org) output and is run by:
139bcb2dfaeSJed Brown
140bcb2dfaeSJed Brown```
141bcb2dfaeSJed Brownmake test
142bcb2dfaeSJed Brown```
143bcb2dfaeSJed Brown
144bcb2dfaeSJed Brownor, using the `prove` tool distributed with Perl (recommended):
145bcb2dfaeSJed Brown
146bcb2dfaeSJed Brown```
147bcb2dfaeSJed Brownmake prove
148bcb2dfaeSJed Brown```
149bcb2dfaeSJed Brown
150bcb2dfaeSJed Brown## Backends
151bcb2dfaeSJed Brown
152bcb2dfaeSJed BrownThere are multiple supported backends, which can be selected at runtime in the examples:
153bcb2dfaeSJed Brown
154bcb2dfaeSJed Brown| CEED resource              | Backend                                           | Deterministic Capable |
155d3fde3fbSJed Brown| :---                       | :---                                              | :---:                 |
156d3fde3fbSJed Brown||
157d3fde3fbSJed Brown| **CPU Native**             |
158d3fde3fbSJed Brown| `/cpu/self/ref/serial`     | Serial reference implementation                   | Yes                   |
159d3fde3fbSJed Brown| `/cpu/self/ref/blocked`    | Blocked reference implementation                  | Yes                   |
160d3fde3fbSJed Brown| `/cpu/self/opt/serial`     | Serial optimized C implementation                 | Yes                   |
161d3fde3fbSJed Brown| `/cpu/self/opt/blocked`    | Blocked optimized C implementation                | Yes                   |
162d3fde3fbSJed Brown| `/cpu/self/avx/serial`     | Serial AVX implementation                         | Yes                   |
163d3fde3fbSJed Brown| `/cpu/self/avx/blocked`    | Blocked AVX implementation                        | Yes                   |
164d3fde3fbSJed Brown||
165d3fde3fbSJed Brown| **CPU Valgrind**           |
166d3fde3fbSJed Brown| `/cpu/self/memcheck/*`     | Memcheck backends, undefined value checks         | Yes                   |
167d3fde3fbSJed Brown||
168d3fde3fbSJed Brown| **CPU LIBXSMM**            |
169d3fde3fbSJed Brown| `/cpu/self/xsmm/serial`    | Serial LIBXSMM implementation                     | Yes                   |
170d3fde3fbSJed Brown| `/cpu/self/xsmm/blocked`   | Blocked LIBXSMM implementation                    | Yes                   |
171d3fde3fbSJed Brown||
172d3fde3fbSJed Brown| **CUDA Native**            |
173d3fde3fbSJed Brown| `/gpu/cuda/ref`            | Reference pure CUDA kernels                       | Yes                   |
174d3fde3fbSJed Brown| `/gpu/cuda/shared`         | Optimized pure CUDA kernels using shared memory   | Yes                   |
175d3fde3fbSJed Brown| `/gpu/cuda/gen`            | Optimized pure CUDA kernels using code generation | No                    |
176d3fde3fbSJed Brown||
177d3fde3fbSJed Brown| **HIP Native**             |
178d3fde3fbSJed Brown| `/gpu/hip/ref`             | Reference pure HIP kernels                        | Yes                   |
179d3fde3fbSJed Brown| `/gpu/hip/shared`          | Optimized pure HIP kernels using shared memory    | Yes                   |
180d3fde3fbSJed Brown| `/gpu/hip/gen`             | Optimized pure HIP kernels using code generation  | No                    |
181d3fde3fbSJed Brown||
182d3fde3fbSJed Brown| **MAGMA**                  |
183d3fde3fbSJed Brown| `/gpu/cuda/magma`          | CUDA MAGMA kernels                                | No                    |
184d3fde3fbSJed Brown| `/gpu/cuda/magma/det`      | CUDA MAGMA kernels                                | Yes                   |
185d3fde3fbSJed Brown| `/gpu/hip/magma`           | HIP MAGMA kernels                                 | No                    |
186d3fde3fbSJed Brown| `/gpu/hip/magma/det`       | HIP MAGMA kernels                                 | Yes                   |
187d3fde3fbSJed Brown||
188d3fde3fbSJed Brown| **OCCA**                   |
189d3fde3fbSJed Brown| `/*/occa`                  | Selects backend based on available OCCA modes     | Yes                   |
190d3fde3fbSJed Brown| `/cpu/self/occa`           | OCCA backend with serial CPU kernels              | Yes                   |
191d3fde3fbSJed Brown| `/cpu/openmp/occa`         | OCCA backend with OpenMP kernels                  | Yes                   |
192d3fde3fbSJed Brown| `/gpu/cuda/occa`           | OCCA backend with CUDA kernels                    | Yes                   |
193d3fde3fbSJed Brown| `/gpu/hip/occa`~           | OCCA backend with HIP kernels                     | Yes                   |
194bcb2dfaeSJed Brown
195bcb2dfaeSJed BrownThe `/cpu/self/*/serial` backends process one element at a time and are intended for meshes
196bcb2dfaeSJed Brownwith a smaller number of high order elements. The `/cpu/self/*/blocked` backends process
197bcb2dfaeSJed Brownblocked batches of eight interlaced elements and are intended for meshes with higher numbers
198bcb2dfaeSJed Brownof elements.
199bcb2dfaeSJed Brown
200bcb2dfaeSJed BrownThe `/cpu/self/ref/*` backends are written in pure C and provide basic functionality.
201bcb2dfaeSJed Brown
202bcb2dfaeSJed BrownThe `/cpu/self/opt/*` backends are written in pure C and use partial e-vectors to improve performance.
203bcb2dfaeSJed Brown
204bcb2dfaeSJed BrownThe `/cpu/self/avx/*` backends rely upon AVX instructions to provide vectorized CPU performance.
205bcb2dfaeSJed Brown
206bcb2dfaeSJed BrownThe `/cpu/self/memcheck/*` backends rely upon the [Valgrind](http://valgrind.org/) Memcheck tool
207bcb2dfaeSJed Brownto help verify that user QFunctions have no undefined values. To use, run your code with
208bcb2dfaeSJed BrownValgrind and the Memcheck backends, e.g. `valgrind ./build/ex1 -ceed /cpu/self/ref/memcheck`. A
209bcb2dfaeSJed Brown'development' or 'debugging' version of Valgrind with headers is required to use this backend.
210bcb2dfaeSJed BrownThis backend can be run in serial or blocked mode and defaults to running in the serial mode
211bcb2dfaeSJed Brownif `/cpu/self/memcheck` is selected at runtime.
212bcb2dfaeSJed Brown
213bcb2dfaeSJed BrownThe `/cpu/self/xsmm/*` backends rely upon the [LIBXSMM](http://github.com/hfp/libxsmm) package
214bcb2dfaeSJed Brownto provide vectorized CPU performance. If linking MKL and LIBXSMM is desired but
215bcb2dfaeSJed Brownthe Makefile is not detecting `MKLROOT`, linking libCEED against MKL can be
216bcb2dfaeSJed Brownforced by setting the environment variable `MKL=1`.
217bcb2dfaeSJed Brown
218bcb2dfaeSJed BrownThe `/gpu/cuda/*` backends provide GPU performance strictly using CUDA.
219bcb2dfaeSJed Brown
220bcb2dfaeSJed BrownThe `/gpu/hip/*` backends provide GPU performance strictly using HIP. They are based on
221f577dd42Snbeamsthe `/gpu/cuda/*` backends.  ROCm version 4.2 or newer is required.
222bcb2dfaeSJed Brown
223bcb2dfaeSJed BrownThe `/gpu/*/magma/*` backends rely upon the [MAGMA](https://bitbucket.org/icl/magma) package.
224bcb2dfaeSJed BrownTo enable the MAGMA backends, the environment variable `MAGMA_DIR` must point to the top-level
225bcb2dfaeSJed BrownMAGMA directory, with the MAGMA library located in `$(MAGMA_DIR)/lib/`.
226bcb2dfaeSJed BrownBy default, `MAGMA_DIR` is set to `../magma`; to build the MAGMA backends
227bcb2dfaeSJed Brownwith a MAGMA installation located elsewhere, create a link to `magma/` in libCEED's parent
228bcb2dfaeSJed Browndirectory, or set `MAGMA_DIR` to the proper location.  MAGMA version 2.5.0 or newer is required.
229bcb2dfaeSJed BrownCurrently, each MAGMA library installation is only built for either CUDA or HIP.  The corresponding
230bcb2dfaeSJed Brownset of libCEED backends (`/gpu/cuda/magma/*` or `/gpu/hip/magma/*`) will automatically be built
231bcb2dfaeSJed Brownfor the version of the MAGMA library found in `MAGMA_DIR`.
232bcb2dfaeSJed Brown
233bcb2dfaeSJed BrownUsers can specify a device for all CUDA, HIP, and MAGMA backends through adding `:device_id=#`
234bcb2dfaeSJed Brownafter the resource name.  For example:
235bcb2dfaeSJed Brown
236bcb2dfaeSJed Brown> - `/gpu/cuda/gen:device_id=1`
237bcb2dfaeSJed Brown
238bcb2dfaeSJed BrownThe `/*/occa` backends rely upon the [OCCA](http://github.com/libocca/occa) package to provide
239bcb2dfaeSJed Browncross platform performance. To enable the OCCA backend, the environment variable `OCCA_DIR` must point
240bcb2dfaeSJed Brownto the top-level OCCA directory, with the OCCA library located in the `${OCCA_DIR}/lib` (By default,
241bcb2dfaeSJed Brown`OCCA_DIR` is set to `../occa`).
242bcb2dfaeSJed Brown
243bcb2dfaeSJed BrownAdditionally, users can pass specific OCCA device properties after setting the CEED resource.
244bcb2dfaeSJed BrownFor example:
245bcb2dfaeSJed Brown
246bcb2dfaeSJed Brown> - `"/*/occa:mode='CUDA',device_id=0"`
247bcb2dfaeSJed Brown
248bcb2dfaeSJed BrownBit-for-bit reproducibility is important in some applications.
249bcb2dfaeSJed BrownHowever, some libCEED backends use non-deterministic operations, such as `atomicAdd` for increased performance.
250bcb2dfaeSJed BrownThe backends which are capable of generating reproducible results, with the proper compilation options, are highlighted in the list above.
251bcb2dfaeSJed Brown
252bcb2dfaeSJed Brown## Examples
253bcb2dfaeSJed Brown
254bcb2dfaeSJed BrownlibCEED comes with several examples of its usage, ranging from standalone C
255bcb2dfaeSJed Browncodes in the `/examples/ceed` directory to examples based on external packages,
256bcb2dfaeSJed Brownsuch as MFEM, PETSc, and Nek5000. Nek5000 v18.0 or greater is required.
257bcb2dfaeSJed Brown
258bcb2dfaeSJed BrownTo build the examples, set the `MFEM_DIR`, `PETSC_DIR`, and
259bcb2dfaeSJed Brown`NEK5K_DIR` variables and run:
260bcb2dfaeSJed Brown
261bcb2dfaeSJed Brown```
262bcb2dfaeSJed Browncd examples/
263bcb2dfaeSJed Brown```
264bcb2dfaeSJed Brown
265bcb2dfaeSJed Brown% running-examples-inclusion-marker
266bcb2dfaeSJed Brown
267bcb2dfaeSJed Brown```console
268bcb2dfaeSJed Brown# libCEED examples on CPU and GPU
269bcb2dfaeSJed Browncd ceed/
270bcb2dfaeSJed Brownmake
271bcb2dfaeSJed Brown./ex1-volume -ceed /cpu/self
272bcb2dfaeSJed Brown./ex1-volume -ceed /gpu/cuda
273bcb2dfaeSJed Brown./ex2-surface -ceed /cpu/self
274bcb2dfaeSJed Brown./ex2-surface -ceed /gpu/cuda
275bcb2dfaeSJed Browncd ..
276bcb2dfaeSJed Brown
277bcb2dfaeSJed Brown# MFEM+libCEED examples on CPU and GPU
278bcb2dfaeSJed Browncd mfem/
279bcb2dfaeSJed Brownmake
280bcb2dfaeSJed Brown./bp1 -ceed /cpu/self -no-vis
281bcb2dfaeSJed Brown./bp3 -ceed /gpu/cuda -no-vis
282bcb2dfaeSJed Browncd ..
283bcb2dfaeSJed Brown
284bcb2dfaeSJed Brown# Nek5000+libCEED examples on CPU and GPU
285bcb2dfaeSJed Browncd nek/
286bcb2dfaeSJed Brownmake
287bcb2dfaeSJed Brown./nek-examples.sh -e bp1 -ceed /cpu/self -b 3
288bcb2dfaeSJed Brown./nek-examples.sh -e bp3 -ceed /gpu/cuda -b 3
289bcb2dfaeSJed Browncd ..
290bcb2dfaeSJed Brown
291bcb2dfaeSJed Brown# PETSc+libCEED examples on CPU and GPU
292bcb2dfaeSJed Browncd petsc/
293bcb2dfaeSJed Brownmake
294bcb2dfaeSJed Brown./bps -problem bp1 -ceed /cpu/self
295bcb2dfaeSJed Brown./bps -problem bp2 -ceed /gpu/cuda
296bcb2dfaeSJed Brown./bps -problem bp3 -ceed /cpu/self
297bcb2dfaeSJed Brown./bps -problem bp4 -ceed /gpu/cuda
298bcb2dfaeSJed Brown./bps -problem bp5 -ceed /cpu/self
299bcb2dfaeSJed Brown./bps -problem bp6 -ceed /gpu/cuda
300bcb2dfaeSJed Browncd ..
301bcb2dfaeSJed Brown
302bcb2dfaeSJed Browncd petsc/
303bcb2dfaeSJed Brownmake
304bcb2dfaeSJed Brown./bpsraw -problem bp1 -ceed /cpu/self
305bcb2dfaeSJed Brown./bpsraw -problem bp2 -ceed /gpu/cuda
306bcb2dfaeSJed Brown./bpsraw -problem bp3 -ceed /cpu/self
307bcb2dfaeSJed Brown./bpsraw -problem bp4 -ceed /gpu/cuda
308bcb2dfaeSJed Brown./bpsraw -problem bp5 -ceed /cpu/self
309bcb2dfaeSJed Brown./bpsraw -problem bp6 -ceed /gpu/cuda
310bcb2dfaeSJed Browncd ..
311bcb2dfaeSJed Brown
312bcb2dfaeSJed Browncd petsc/
313bcb2dfaeSJed Brownmake
314bcb2dfaeSJed Brown./bpssphere -problem bp1 -ceed /cpu/self
315bcb2dfaeSJed Brown./bpssphere -problem bp2 -ceed /gpu/cuda
316bcb2dfaeSJed Brown./bpssphere -problem bp3 -ceed /cpu/self
317bcb2dfaeSJed Brown./bpssphere -problem bp4 -ceed /gpu/cuda
318bcb2dfaeSJed Brown./bpssphere -problem bp5 -ceed /cpu/self
319bcb2dfaeSJed Brown./bpssphere -problem bp6 -ceed /gpu/cuda
320bcb2dfaeSJed Browncd ..
321bcb2dfaeSJed Brown
322bcb2dfaeSJed Browncd petsc/
323bcb2dfaeSJed Brownmake
324bcb2dfaeSJed Brown./area -problem cube -ceed /cpu/self -degree 3
325bcb2dfaeSJed Brown./area -problem cube -ceed /gpu/cuda -degree 3
326bcb2dfaeSJed Brown./area -problem sphere -ceed /cpu/self -degree 3 -dm_refine 2
327bcb2dfaeSJed Brown./area -problem sphere -ceed /gpu/cuda -degree 3 -dm_refine 2
328bcb2dfaeSJed Brown
329bcb2dfaeSJed Browncd fluids/
330bcb2dfaeSJed Brownmake
331bcb2dfaeSJed Brown./navierstokes -ceed /cpu/self -degree 1
332bcb2dfaeSJed Brown./navierstokes -ceed /gpu/cuda -degree 1
333bcb2dfaeSJed Browncd ..
334bcb2dfaeSJed Brown
335bcb2dfaeSJed Browncd solids/
336bcb2dfaeSJed Brownmake
337bcb2dfaeSJed Brown./elasticity -ceed /cpu/self -mesh [.exo file] -degree 2 -E 1 -nu 0.3 -problem Linear -forcing mms
338bcb2dfaeSJed Brown./elasticity -ceed /gpu/cuda -mesh [.exo file] -degree 2 -E 1 -nu 0.3 -problem Linear -forcing mms
339bcb2dfaeSJed Browncd ..
340bcb2dfaeSJed Brown```
341bcb2dfaeSJed Brown
342bcb2dfaeSJed BrownFor the last example shown, sample meshes to be used in place of
343bcb2dfaeSJed Brown`[.exo file]` can be found at <https://github.com/jeremylt/ceedSampleMeshes>
344bcb2dfaeSJed Brown
345bcb2dfaeSJed BrownThe above code assumes a GPU-capable machine with the OCCA backend
346bcb2dfaeSJed Brownenabled. Depending on the available backends, other CEED resource
347bcb2dfaeSJed Brownspecifiers can be provided with the `-ceed` option. Other command line
348bcb2dfaeSJed Brownarguments can be found in [examples/petsc](https://github.com/CEED/libCEED/blob/main/examples/petsc/README.md).
349bcb2dfaeSJed Brown
350bcb2dfaeSJed Brown% benchmarks-marker
351bcb2dfaeSJed Brown
352bcb2dfaeSJed Brown## Benchmarks
353bcb2dfaeSJed Brown
354bcb2dfaeSJed BrownA sequence of benchmarks for all enabled backends can be run using:
355bcb2dfaeSJed Brown
356bcb2dfaeSJed Brown```
357bcb2dfaeSJed Brownmake benchmarks
358bcb2dfaeSJed Brown```
359bcb2dfaeSJed Brown
360bcb2dfaeSJed BrownThe results from the benchmarks are stored inside the `benchmarks/` directory
361bcb2dfaeSJed Brownand they can be viewed using the commands (requires python with matplotlib):
362bcb2dfaeSJed Brown
363bcb2dfaeSJed Brown```
364bcb2dfaeSJed Browncd benchmarks
365bcb2dfaeSJed Brownpython postprocess-plot.py petsc-bps-bp1-*-output.txt
366bcb2dfaeSJed Brownpython postprocess-plot.py petsc-bps-bp3-*-output.txt
367bcb2dfaeSJed Brown```
368bcb2dfaeSJed Brown
369bcb2dfaeSJed BrownUsing the `benchmarks` target runs a comprehensive set of benchmarks which may
370bcb2dfaeSJed Browntake some time to run. Subsets of the benchmarks can be run using the scripts in the `benchmarks` folder.
371bcb2dfaeSJed Brown
372bcb2dfaeSJed BrownFor more details about the benchmarks, see the `benchmarks/README.md` file.
373bcb2dfaeSJed Brown
374bcb2dfaeSJed Brown## Install
375bcb2dfaeSJed Brown
376bcb2dfaeSJed BrownTo install libCEED, run:
377bcb2dfaeSJed Brown
378bcb2dfaeSJed Brown```
379bcb2dfaeSJed Brownmake install prefix=/usr/local
380bcb2dfaeSJed Brown```
381bcb2dfaeSJed Brown
382bcb2dfaeSJed Brownor (e.g., if creating packages):
383bcb2dfaeSJed Brown
384bcb2dfaeSJed Brown```
385bcb2dfaeSJed Brownmake install prefix=/usr DESTDIR=/packaging/path
386bcb2dfaeSJed Brown```
387bcb2dfaeSJed Brown
388bcb2dfaeSJed BrownThe usual variables like `CC` and `CFLAGS` are used, and optimization flags
389bcb2dfaeSJed Brownfor all languages can be set using the likes of `OPT='-O3 -march=native'`. Use
390bcb2dfaeSJed Brown`STATIC=1` to build static libraries (`libceed.a`).
391bcb2dfaeSJed Brown
392bcb2dfaeSJed BrownTo install libCEED for Python, run:
393bcb2dfaeSJed Brown
394bcb2dfaeSJed Brown```
395bcb2dfaeSJed Brownpip install libceed
396bcb2dfaeSJed Brown```
397bcb2dfaeSJed Brown
398bcb2dfaeSJed Brownwith the desired setuptools options, such as `--user`.
399bcb2dfaeSJed Brown
400bcb2dfaeSJed Brown### pkg-config
401bcb2dfaeSJed Brown
402bcb2dfaeSJed BrownIn addition to library and header, libCEED provides a [pkg-config](https://en.wikipedia.org/wiki/Pkg-config)
403bcb2dfaeSJed Brownfile that can be used to easily compile and link.
404bcb2dfaeSJed Brown[For example](https://people.freedesktop.org/~dbn/pkg-config-guide.html#faq), if
405bcb2dfaeSJed Brown`$prefix` is a standard location or you set the environment variable
406bcb2dfaeSJed Brown`PKG_CONFIG_PATH`:
407bcb2dfaeSJed Brown
408bcb2dfaeSJed Brown```
409bcb2dfaeSJed Browncc `pkg-config --cflags --libs ceed` -o myapp myapp.c
410bcb2dfaeSJed Brown```
411bcb2dfaeSJed Brown
412bcb2dfaeSJed Brownwill build `myapp` with libCEED.  This can be used with the source or
413bcb2dfaeSJed Browninstalled directories.  Most build systems have support for pkg-config.
414bcb2dfaeSJed Brown
415bcb2dfaeSJed Brown## Contact
416bcb2dfaeSJed Brown
417bcb2dfaeSJed BrownYou can reach the libCEED team by emailing [ceed-users@llnl.gov](mailto:ceed-users@llnl.gov)
418bcb2dfaeSJed Brownor by leaving a comment in the [issue tracker](https://github.com/CEED/libCEED/issues).
419bcb2dfaeSJed Brown
420bcb2dfaeSJed Brown## How to Cite
421bcb2dfaeSJed Brown
422bcb2dfaeSJed BrownIf you utilize libCEED please cite:
423bcb2dfaeSJed Brown
424bcb2dfaeSJed Brown```
425bcb2dfaeSJed Brown@article{libceed-joss-paper,
426bcb2dfaeSJed Brown  author       = {Jed Brown and Ahmad Abdelfattah and Valeria Barra and Natalie Beams and Jean Sylvain Camier and Veselin Dobrev and Yohann Dudouit and Leila Ghaffari and Tzanio Kolev and David Medina and Will Pazner and Thilina Ratnayaka and Jeremy Thompson and Stan Tomov},
427bcb2dfaeSJed Brown  title        = {{libCEED}: Fast algebra for high-order element-based discretizations},
428bcb2dfaeSJed Brown  journal      = {Journal of Open Source Software},
429bcb2dfaeSJed Brown  year         = {2021},
430bcb2dfaeSJed Brown  publisher    = {The Open Journal},
431bcb2dfaeSJed Brown  volume       = {6},
432bcb2dfaeSJed Brown  number       = {63},
433bcb2dfaeSJed Brown  pages        = {2945},
434bcb2dfaeSJed Brown  doi          = {10.21105/joss.02945}
435bcb2dfaeSJed Brown}
436bcb2dfaeSJed Brown
437bcb2dfaeSJed Brown@misc{libceed-user-manual,
438bcb2dfaeSJed Brown  author       = {Abdelfattah, Ahmad and
439bcb2dfaeSJed Brown                  Barra, Valeria and
440bcb2dfaeSJed Brown                  Beams, Natalie and
441bcb2dfaeSJed Brown                  Brown, Jed and
442bcb2dfaeSJed Brown                  Camier, Jean-Sylvain and
443bcb2dfaeSJed Brown                  Dobrev, Veselin and
444bcb2dfaeSJed Brown                  Dudouit, Yohann and
445bcb2dfaeSJed Brown                  Ghaffari, Leila and
446bcb2dfaeSJed Brown                  Kolev, Tzanio and
447bcb2dfaeSJed Brown                  Medina, David and
448bcb2dfaeSJed Brown                  Pazner, Will and
449bcb2dfaeSJed Brown                  Ratnayaka, Thilina and
450bcb2dfaeSJed Brown                  Thompson, Jeremy L and
451bcb2dfaeSJed Brown                  Tomov, Stanimire},
452bcb2dfaeSJed Brown  title        = {{libCEED} User Manual},
453bcb2dfaeSJed Brown  month        = jul,
454bcb2dfaeSJed Brown  year         = 2021,
455bcb2dfaeSJed Brown  publisher    = {Zenodo},
456bcb2dfaeSJed Brown  version      = {0.9.0},
457bcb2dfaeSJed Brown  doi          = {10.5281/zenodo.5077489}
458bcb2dfaeSJed Brown}
459bcb2dfaeSJed Brown```
460bcb2dfaeSJed Brown
461bcb2dfaeSJed BrownFor libCEED's Python interface please cite:
462bcb2dfaeSJed Brown
463bcb2dfaeSJed Brown```
464bcb2dfaeSJed Brown@InProceedings{libceed-paper-proc-scipy-2020,
465bcb2dfaeSJed Brown  author    = {{V}aleria {B}arra and {J}ed {B}rown and {J}eremy {T}hompson and {Y}ohann {D}udouit},
466bcb2dfaeSJed Brown  title     = {{H}igh-performance operator evaluations with ease of use: lib{C}{E}{E}{D}'s {P}ython interface},
467bcb2dfaeSJed Brown  booktitle = {{P}roceedings of the 19th {P}ython in {S}cience {C}onference},
468bcb2dfaeSJed Brown  pages     = {85 - 90},
469bcb2dfaeSJed Brown  year      = {2020},
470bcb2dfaeSJed Brown  editor    = {{M}eghann {A}garwal and {C}hris {C}alloway and {D}illon {N}iederhut and {D}avid {S}hupe},
471bcb2dfaeSJed Brown  doi       = {10.25080/Majora-342d178e-00c}
472bcb2dfaeSJed Brown}
473bcb2dfaeSJed Brown```
474bcb2dfaeSJed Brown
475bcb2dfaeSJed BrownThe BiBTeX entries for these references can be found in the
476bcb2dfaeSJed Brown`doc/bib/references.bib` file.
477bcb2dfaeSJed Brown
478bcb2dfaeSJed Brown## Copyright
479bcb2dfaeSJed Brown
480bcb2dfaeSJed BrownThe following copyright applies to each file in the CEED software suite, unless
481bcb2dfaeSJed Brownotherwise stated in the file:
482bcb2dfaeSJed Brown
483bcb2dfaeSJed Brown> Copyright (c) 2017, Lawrence Livermore National Security, LLC. Produced at the
484bcb2dfaeSJed Brown> Lawrence Livermore National Laboratory. LLNL-CODE-734707. All Rights reserved.
485bcb2dfaeSJed Brown
486bcb2dfaeSJed BrownSee files LICENSE and NOTICE for details.
487d3fde3fbSJed Brown
488d3fde3fbSJed Brown[github-badge]: https://github.com/CEED/libCEED/workflows/C/Fortran/badge.svg
489d3fde3fbSJed Brown[github-link]: https://github.com/CEED/libCEED/actions
490d3fde3fbSJed Brown[gitlab-badge]: https://gitlab.com/libceed/libCEED/badges/main/pipeline.svg?key_text=GitLab-CI
491d3fde3fbSJed Brown[gitlab-link]: https://gitlab.com/libceed/libCEED/-/pipelines?page=1&scope=all&ref=main
492d3fde3fbSJed Brown[azure-badge]: https://dev.azure.com/CEED-ECP/libCEED/_apis/build/status/CEED.libCEED?branchName=main
493d3fde3fbSJed Brown[azure-link]: https://dev.azure.com/CEED-ECP/libCEED/_build?definitionId=2
494d3fde3fbSJed Brown[codecov-badge]: https://codecov.io/gh/CEED/libCEED/branch/main/graphs/badge.svg
495d3fde3fbSJed Brown[codecov-link]: https://codecov.io/gh/CEED/libCEED/
496d3fde3fbSJed Brown[license-badge]: https://img.shields.io/badge/License-BSD%202--Clause-orange.svg
497d3fde3fbSJed Brown[license-link]: https://opensource.org/licenses/BSD-2-Clause
498d3fde3fbSJed Brown[doc-badge]: https://readthedocs.org/projects/libceed/badge/?version=latest
499*13964f07SJed Brown[doc-link]: https://libceed.org/en/latest/?badge=latest
500d3fde3fbSJed Brown[joss-badge]: https://joss.theoj.org/papers/10.21105/joss.02945/status.svg
501d3fde3fbSJed Brown[joss-link]: https://doi.org/10.21105/joss.02945
502d3fde3fbSJed Brown[binder-badge]: http://mybinder.org/badge_logo.svg
5031bd2483cSJeremy L Thompson[binder-link]: https://mybinder.org/v2/gh/CEED/libCEED/main?urlpath=lab/tree/examples/python/tutorial-0-ceed.ipynb
504