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Add NVHPC CI and fix issues #1331
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#pragma omp parallel for reduction(+ : norm) | ||
for (size_type j = 0; j < num_cols; j++) { | ||
norm += squared_norm(subspace_vectors->at(row, j)); | ||
} | ||
run_kernel_reduction( | ||
exec, | ||
[](auto col, auto row, auto subspace_vectors) { | ||
return squared_norm(subspace_vectors(row, col)); | ||
}, | ||
GKO_KERNEL_REDUCE_SUM(remove_complex<ValueType>), &norm, num_cols, | ||
static_cast<int64>(row), subspace_vectors); |
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Is it for fix or optimization?
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It's a first step towards unifying it, but also a workaround for NVHPC's limited pragma omp reduction
feature set
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Do you have any specific feature name for the unsupported one and the corresponding error message?
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basically pragma omp (parallel) for reduction
is supported, but omp declare reduction
is not
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I see. because omp run_kernel_reduction
does not use omp reduction (declare for complex), it works via run_kernel_reduction
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others LGTM. Some of CI tests are not passed, so I do not put my approval yet
#pragma omp parallel for reduction(+ : norm) | ||
for (size_type j = 0; j < num_cols; j++) { | ||
norm += squared_norm(subspace_vectors->at(row, j)); | ||
} | ||
run_kernel_reduction( | ||
exec, | ||
[](auto col, auto row, auto subspace_vectors) { | ||
return squared_norm(subspace_vectors(row, col)); | ||
}, | ||
GKO_KERNEL_REDUCE_SUM(remove_complex<ValueType>), &norm, num_cols, | ||
static_cast<int64>(row), subspace_vectors); |
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Do you have any specific feature name for the unsupported one and the corresponding error message?
CUDA >= 11.7 seems to use new kernels for all devices
format! |
This should now be ""working"" including for Jacobi. I am also trying the new containers at the same time with the fixed environment. |
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LGTM. only have comments on testing version - should keep at least one job for the minimal supported version like cuda 9.2 and dpcpp 2022.1
#pragma omp parallel for reduction(+ : norm) | ||
for (size_type j = 0; j < num_cols; j++) { | ||
norm += squared_norm(subspace_vectors->at(row, j)); | ||
} | ||
run_kernel_reduction( | ||
exec, | ||
[](auto col, auto row, auto subspace_vectors) { | ||
return squared_norm(subspace_vectors(row, col)); | ||
}, | ||
GKO_KERNEL_REDUCE_SUM(remove_complex<ValueType>), &norm, num_cols, | ||
static_cast<int64>(row), subspace_vectors); |
There was a problem hiding this comment.
Choose a reason for hiding this comment
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I see. because omp run_kernel_reduction
does not use omp reduction (declare for complex), it works via run_kernel_reduction
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LGTM (though somebody else should review my changes)
Codecov ReportPatch coverage:
Additional details and impacted files@@ Coverage Diff @@
## develop #1331 +/- ##
===========================================
- Coverage 91.19% 90.81% -0.39%
===========================================
Files 598 598
Lines 50628 50666 +38
===========================================
- Hits 46172 46011 -161
- Misses 4456 4655 +199
☔ View full report in Codecov by Sentry. |
Co-authored-by: Terry Cojean <tcojean@users.noreply.github.com>
Kudos, SonarCloud Quality Gate passed! |
Release 1.6.0 of Ginkgo. The Ginkgo team is proud to announce the new Ginkgo minor release 1.6.0. This release brings new features such as: - Several building blocks for GPU-resident sparse direct solvers like symbolic and numerical LU and Cholesky factorization, ..., - A distributed Schwarz preconditioner, - New FGMRES and GCR solvers, - Distributed benchmarks for the SpMV operation, solvers, ... - Support for non-default streams in the CUDA and HIP backends, - Mixed precision support for the CSR SpMV, - A new profiling logger which integrates with NVTX, ROCTX, TAU and VTune to provide internal Ginkgo knowledge to most HPC profilers! and much more. If you face an issue, please first check our [known issues page](https://github.com/ginkgo-project/ginkgo/wiki/Known-Issues) and the [open issues list](https://github.com/ginkgo-project/ginkgo/issues) and if you do not find a solution, feel free to [open a new issue](https://github.com/ginkgo-project/ginkgo/issues/new/choose) or ask a question using the [github discussions](https://github.com/ginkgo-project/ginkgo/discussions). Supported systems and requirements: + For all platforms, CMake 3.13+ + C++14 compliant compiler + Linux and macOS + GCC: 5.5+ + clang: 3.9+ + Intel compiler: 2018+ + Apple Clang: 14.0 is tested. Earlier versions might also work. + NVHPC: 22.7+ + Cray Compiler: 14.0.1+ + CUDA module: CUDA 9.2+ or NVHPC 22.7+ + HIP module: ROCm 4.5+ + DPC++ module: Intel OneAPI 2021.3+ with oneMKL and oneDPL. Set the CXX compiler to `dpcpp`. + Windows + MinGW: GCC 5.5+ + Microsoft Visual Studio: VS 2019+ + CUDA module: CUDA 9.2+, Microsoft Visual Studio + OpenMP module: MinGW. ### Version Support Changes + ROCm 4.0+ -> 4.5+ after [#1303](#1303) + Removed Cygwin pipeline and support [#1283](#1283) ### Interface Changes + Due to internal changes, `ConcreteExecutor::run` will now always throw if the corresponding module for the `ConcreteExecutor` is not build [#1234](#1234) + The constructor of `experimental::distributed::Vector` was changed to only accept local vectors as `std::unique_ptr` [#1284](#1284) + The default parameters for the `solver::MultiGrid` were improved. In particular, the smoother defaults to one iteration of `Ir` with `Jacobi` preconditioner, and the coarse grid solver uses the new direct solver with LU factorization. [#1291](#1291) [#1327](#1327) + The `iteration_complete` event gained a more expressive overload with additional parameters, the old overloads were deprecated. [#1288](#1288) [#1327](#1327) ### Deprecations + Deprecated less expressive `iteration_complete` event. Users are advised to now implement the function `void iteration_complete(const LinOp* solver, const LinOp* b, const LinOp* x, const size_type& it, const LinOp* r, const LinOp* tau, const LinOp* implicit_tau_sq, const array<stopping_status>* status, bool stopped)` [#1288](#1288) ### Added Features + A distributed Schwarz preconditioner. [#1248](#1248) + A GCR solver [#1239](#1239) + Flexible Gmres solver [#1244](#1244) + Enable Gmres solver for distributed matrices and vectors [#1201](#1201) + An example that uses Kokkos to assemble the system matrix [#1216](#1216) + A symbolic LU factorization allowing the `gko::experimental::factorization::Lu` and `gko::experimental::solver::Direct` classes to be used for matrices with non-symmetric sparsity pattern [#1210](#1210) + A numerical Cholesky factorization [#1215](#1215) + Symbolic factorizations in host-side operations are now wrapped in a host-side `Operation` to make their execution visible to loggers. This means that profiling loggers and benchmarks are no longer missing a separate entry for their runtime [#1232](#1232) + Symbolic factorization benchmark [#1302](#1302) + The `ProfilerHook` logger allows annotating the Ginkgo execution (apply, operations, ...) for profiling frameworks like NVTX, ROCTX and TAU. [#1055](#1055) + `ProfilerHook::created_(nested_)summary` allows the generation of a lightweight runtime profile over all Ginkgo functions written to a user-defined stream [#1270](#1270) for both host and device timing functionality [#1313](#1313) + It is now possible to enable host buffers for MPI communications at runtime even if the compile option `GINKGO_FORCE_GPU_AWARE_MPI` is set. [#1228](#1228) + A stencil matrices generator (5-pt, 7-pt, 9-pt, and 27-pt) for benchmarks [#1204](#1204) + Distributed benchmarks (multi-vector blas, SpMV, solver) [#1204](#1204) + Benchmarks for CSR sorting and lookup [#1219](#1219) + A timer for MPI benchmarks that reports the longest time [#1217](#1217) + A `timer_method=min|max|average|median` flag for benchmark timing summary [#1294](#1294) + Support for non-default streams in CUDA and HIP executors [#1236](#1236) + METIS integration for nested dissection reordering [#1296](#1296) + SuiteSparse AMD integration for fillin-reducing reordering [#1328](#1328) + Csr mixed-precision SpMV support [#1319](#1319) + A `with_loggers` function for all `Factory` parameters [#1337](#1337) ### Improvements + Improve naming of kernel operations for loggers [#1277](#1277) + Annotate solver iterations in `ProfilerHook` [#1290](#1290) + Allow using the profiler hooks and inline input strings in benchmarks [#1342](#1342) + Allow passing smart pointers in place of raw pointers to most matrix functions. This means that things like `vec->compute_norm2(x.get())` or `vec->compute_norm2(lend(x))` can be simplified to `vec->compute_norm2(x)` [#1279](#1279) [#1261](#1261) + Catch overflows in prefix sum operations, which makes Ginkgo's operations much less likely to crash. This also improves the performance of the prefix sum kernel [#1303](#1303) + Make the installed GinkgoConfig.cmake file relocatable and follow more best practices [#1325](#1325) ### Fixes + Fix OpenMPI version check [#1200](#1200) + Fix the mpi cxx type binding by c binding [#1306](#1306) + Fix runtime failures for one-sided MPI wrapper functions observed on some OpenMPI versions [#1249](#1249) + Disable thread pinning with GPU executors due to poor performance [#1230](#1230) + Fix hwloc version detection [#1266](#1266) + Fix PAPI detection in non-implicit include directories [#1268](#1268) + Fix PAPI support for newer PAPI versions: [#1321](#1321) + Fix pkg-config file generation for library paths outside prefix [#1271](#1271) + Fix various build failures with ROCm 5.4, CUDA 12, and OneAPI 6 [#1214](#1214), [#1235](#1235), [#1251](#1251) + Fix incorrect read for skew-symmetric MatrixMarket files with explicit diagonal entries [#1272](#1272) + Fix handling of missing diagonal entries in symbolic factorizations [#1263](#1263) + Fix segmentation fault in benchmark matrix construction [#1299](#1299) + Fix the stencil matrix creation for benchmarking [#1305](#1305) + Fix the additional residual check in IR [#1307](#1307) + Fix the cuSPARSE CSR SpMM issue on single strided vector when cuda >= 11.6 [#1322](#1322) [#1331](#1331) + Fix Isai generation for large sparsity powers [#1327](#1327) + Fix Ginkgo compilation and test with NVHPC >= 22.7 [#1331](#1331) + Fix Ginkgo compilation of 32 bit binaries with MSVC [#1349](#1349)
This is no longer a WIP, but issues remain:
InvestigateI just disabled the offending tests, if somebody wants to investigate, check why Release builds beforematrix_generator_test
likely miscompilationdisable miscompiling matrix_generator tests
fail.jacobi_kernels
adaptive/reduced precision issues