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Add pregenerated local solver as factory param #1426

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merged 8 commits into from
Oct 24, 2023

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@greole greole commented Oct 13, 2023

This PR adds a factory parameter to the Schwarz preconditioner to pass in a fully generated solver. This can be useful in situations where one wants to reuse a pre-generated solver/ preconditioner.

@ginkgo-bot ginkgo-bot added mod:core This is related to the core module. type:preconditioner This is related to the preconditioners labels Oct 13, 2023
@pratikvn pratikvn self-requested a review October 17, 2023 14:49
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Some possible simplifications. Otherwise looks good.

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@greole greole added the 1:ST:ready-for-review This PR is ready for review label Oct 18, 2023
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@yhmtsai yhmtsai changed the title WIP Add pregenerated local solver as factory param Add pregenerated local solver as factory param Oct 18, 2023
@greole greole requested a review from yhmtsai October 18, 2023 12:53
@greole greole force-pushed the schwarz_pregen_local_solver branch 7 times, most recently from 10a31d0 to 85d41ca Compare October 23, 2023 07:50
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greole commented Oct 23, 2023

format!

@yhmtsai yhmtsai added 1:ST:ready-to-merge This PR is ready to merge. and removed 1:ST:ready-for-review This PR is ready for review labels Oct 23, 2023
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yhmtsai commented Oct 23, 2023

It also needs to rebase on the latest develop

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greole commented Oct 23, 2023

rebase!

greole and others added 2 commits October 23, 2023 12:06
Co-authored-by: Yuhsiang Tsai <[email protected]>
Co-authored-by: Gregor Olenik <[email protected]>
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Kudos, SonarCloud Quality Gate passed!    Quality Gate passed

Bug A 0 Bugs
Vulnerability A 0 Vulnerabilities
Security Hotspot A 0 Security Hotspots
Code Smell A 1 Code Smell

97.6% 97.6% Coverage
0.0% 0.0% Duplication

warning The version of Java (11.0.3) you have used to run this analysis is deprecated and we will stop accepting it soon. Please update to at least Java 17.
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Codecov Report

Attention: 1 lines in your changes are missing coverage. Please review.

Files Coverage Δ
...ginkgo/core/distributed/preconditioner/schwarz.hpp 100.00% <100.00%> (ø)
test/mpi/preconditioner/schwarz.cpp 100.00% <100.00%> (ø)
core/distributed/preconditioner/schwarz.cpp 95.65% <91.66%> (+3.34%) ⬆️

... and 29 files with indirect coverage changes

📢 Thoughts on this report? Let us know!.

@greole greole merged commit d940646 into develop Oct 24, 2023
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@greole greole deleted the schwarz_pregen_local_solver branch October 24, 2023 06:02
@tcojean tcojean mentioned this pull request Nov 6, 2023
tcojean added a commit that referenced this pull request Nov 10, 2023
Release 1.7.0 to master

The Ginkgo team is proud to announce the new Ginkgo minor release 1.7.0. This release brings new features such as:
- Complete GPU-resident sparse direct solvers feature set and interfaces,
- Improved Cholesky factorization performance,
- A new MC64 reordering,
- Batched iterative solver support with the BiCGSTAB solver with batched Dense and ELL matrix types,
- MPI support for the SYCL backend,
- Improved ParILU(T)/ParIC(T) preconditioner convergence,
and 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 3.16+
+ C++14 compliant compiler
+ Linux and macOS
  + GCC: 5.5+
  + clang: 3.9+
  + Intel compiler: 2019+
  + Apple Clang: 14.0 is tested. Earlier versions might also work.
  + NVHPC: 22.7+
  + Cray Compiler: 14.0.1+
  + CUDA module: CMake 3.18+, and CUDA 10.1+ or NVHPC 22.7+
  + HIP module: ROCm 4.5+
  + DPC++ module: Intel oneAPI 2022.1+ with oneMKL and oneDPL. Set the CXX compiler to `dpcpp` or `icpx`.
  + MPI: standard version 3.1+, ideally GPU Aware, for best performance
+ Windows
  + MinGW: GCC 5.5+
  + Microsoft Visual Studio: VS 2019+
  + CUDA module: CUDA 10.1+, Microsoft Visual Studio
  + OpenMP module: MinGW.

### Version support changes

+ CUDA 9.2 is no longer supported and 10.0 is untested [#1382](#1382)
+ Ginkgo now requires CMake version 3.16 (and 3.18 for CUDA) [#1368](#1368)

### Interface changes

+ `const` Factory parameters can no longer be modified through `with_*` functions, as this breaks const-correctness [#1336](#1336) [#1439](#1439)

### New Deprecations

+ The `device_reset` parameter of CUDA and HIP executors no longer has an effect, and its `allocation_mode` parameters have been deprecated in favor of the `Allocator` interface. [#1315](#1315)
+ The CMake parameter `GINKGO_BUILD_DPCPP` has been deprecated in favor of `GINKGO_BUILD_SYCL`. [#1350](#1350)
+ The `gko::reorder::Rcm` interface has been deprecated in favor of `gko::experimental::reorder::Rcm` based on `Permutation`. [#1418](#1418)
+ The Permutation class' `permute_mask` functionality. [#1415](#1415)
+ Multiple functions with typos (`set_complex_subpsace()`, range functions such as `conj_operaton` etc). [#1348](#1348)

### Summary of previous deprecations
+ `gko::lend()` is not necessary anymore.
+ The classes `RelativeResidualNorm` and `AbsoluteResidualNorm` are deprecated in favor of `ResidualNorm`.
+ The class `AmgxPgm` is deprecated in favor of `Pgm`.
+ Default constructors for the CSR `load_balance` and `automatical` strategies
+ The PolymorphicObject's move-semantic `copy_from` variant
+ The templated `SolverBase` class.
+ The class `MachineTopology` is deprecated in favor of `machine_topology`.
+ Logger constructors and create functions with the `executor` parameter.
+ The virtual, protected, Dense functions `compute_norm1_impl`, `add_scaled_impl`, etc.
+ Logger events for solvers and criterion without the additional `implicit_tau_sq` parameter.
+ The global `gko::solver::default_krylov_dim`, use instead `gko::solver::gmres_default_krylov_dim`.

### Added features

+ Adds a batch::BatchLinOp class that forms a base class for batched linear operators such as batched matrix formats, solver and preconditioners [#1379](#1379)
+ Adds a batch::MultiVector class that enables operations such as dot, norm, scale on batched vectors [#1371](#1371)
+ Adds a batch::Dense matrix format that stores batched dense matrices and provides gemv operations for these dense matrices. [#1413](#1413)
+ Adds a batch::Ell matrix format that stores batched Ell matrices and provides spmv operations for these batched Ell matrices. [#1416](#1416) [#1437](#1437)
+ Add a batch::Bicgstab solver (class, core, and reference kernels) that enables iterative solution of batched linear systems [#1438](#1438).
+ Add device kernels (CUDA, HIP, and DPCPP) for batch::Bicgstab solver. [#1443](#1443).
+ New MC64 reordering algorithm which optimizes the diagonal product or sum of a matrix by permuting the rows, and computes additional scaling factors for equilibriation [#1120](#1120)
+ New interface for (non-symmetric) permutation and scaled permutation of Dense and Csr matrices [#1415](#1415)
+ LU and Cholesky Factorizations can now be separated into their factors [#1432](#1432)
+ New symbolic LU factorization algorithm that is optimized for matrices with an almost-symmetric sparsity pattern [#1445](#1445)
+ Sorting kernels for SparsityCsr on all backends [#1343](#1343)
+ Allow passing pre-generated local solver as factory parameter for the distributed Schwarz preconditioner [#1426](#1426)
+ Add DPCPP kernels for Partition [#1034](#1034), and CSR's `check_diagonal_entries` and `add_scaled_identity` functionality [#1436](#1436)
+ Adds a helper function to create a partition based on either local sizes, or local ranges [#1227](#1227)
+ Add function to compute arithmetic mean of dense and distributed vectors [#1275](#1275)
+ Adds `icpx` compiler supports [#1350](#1350)
+ All backends can be built simultaneously [#1333](#1333)
+ Emits a CMake warning in downstream projects that use different compilers than the installed Ginkgo [#1372](#1372)
+ Reordering algorithms in sparse_blas benchmark [#1354](#1354)
+ Benchmarks gained an `-allocator` parameter to specify device allocators [#1385](#1385)
+ Benchmarks gained an `-input_matrix` parameter that initializes the input JSON based on the filename [#1387](#1387)
+ Benchmark inputs can now be reordered as a preprocessing step [#1408](#1408)


### Improvements

+ Significantly improve Cholesky factorization performance [#1366](#1366)
+ Improve parallel build performance [#1378](#1378)
+ Allow constrained parallel test execution using CTest resources [#1373](#1373)
+ Use arithmetic type more inside mixed precision ELL [#1414](#1414)
+ Most factory parameters of factory type no longer need to be constructed explicitly via `.on(exec)` [#1336](#1336) [#1439](#1439)
+ Improve ParILU(T)/ParIC(T) convergence by using more appropriate atomic operations [#1434](#1434)

### Fixes

+ Fix an over-allocation for OpenMP reductions [#1369](#1369)
+ Fix DPCPP's common-kernel reduction for empty input sizes [#1362](#1362)
+ Fix several typos in the API and documentation [#1348](#1348)
+ Fix inconsistent `Threads` between generations [#1388](#1388)
+ Fix benchmark median condition [#1398](#1398)
+ Fix HIP 5.6.0 compilation [#1411](#1411)
+ Fix missing destruction of rand_generator from cuda/hip [#1417](#1417)
+ Fix PAPI logger destruction order [#1419](#1419)
+ Fix TAU logger compilation [#1422](#1422)
+ Fix relative criterion to not iterate if the residual is already zero [#1079](#1079)
+ Fix memory_order invocations with C++20 changes [#1402](#1402)
+ Fix `check_diagonal_entries_exist` report correctly when only missing diagonal value in the last rows. [#1440](#1440)
+ Fix checking OpenMPI version in cross-compilation settings [#1446](#1446)
+ Fix false-positive deprecation warnings in Ginkgo, especially for the old Rcm (it doesn't emit deprecation warnings anymore as a result but is still considered deprecated) [#1444](#1444)


### Related PR: #1451
tcojean added a commit that referenced this pull request Nov 10, 2023
Release 1.7.0 to develop

The Ginkgo team is proud to announce the new Ginkgo minor release 1.7.0. This release brings new features such as:
- Complete GPU-resident sparse direct solvers feature set and interfaces,
- Improved Cholesky factorization performance,
- A new MC64 reordering,
- Batched iterative solver support with the BiCGSTAB solver with batched Dense and ELL matrix types,
- MPI support for the SYCL backend,
- Improved ParILU(T)/ParIC(T) preconditioner convergence,
and 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 3.16+
+ C++14 compliant compiler
+ Linux and macOS
  + GCC: 5.5+
  + clang: 3.9+
  + Intel compiler: 2019+
  + Apple Clang: 14.0 is tested. Earlier versions might also work.
  + NVHPC: 22.7+
  + Cray Compiler: 14.0.1+
  + CUDA module: CMake 3.18+, and CUDA 10.1+ or NVHPC 22.7+
  + HIP module: ROCm 4.5+
  + DPC++ module: Intel oneAPI 2022.1+ with oneMKL and oneDPL. Set the CXX compiler to `dpcpp` or `icpx`.
  + MPI: standard version 3.1+, ideally GPU Aware, for best performance
+ Windows
  + MinGW: GCC 5.5+
  + Microsoft Visual Studio: VS 2019+
  + CUDA module: CUDA 10.1+, Microsoft Visual Studio
  + OpenMP module: MinGW.

### Version support changes

+ CUDA 9.2 is no longer supported and 10.0 is untested [#1382](#1382)
+ Ginkgo now requires CMake version 3.16 (and 3.18 for CUDA) [#1368](#1368)

### Interface changes

+ `const` Factory parameters can no longer be modified through `with_*` functions, as this breaks const-correctness [#1336](#1336) [#1439](#1439)

### New Deprecations

+ The `device_reset` parameter of CUDA and HIP executors no longer has an effect, and its `allocation_mode` parameters have been deprecated in favor of the `Allocator` interface. [#1315](#1315)
+ The CMake parameter `GINKGO_BUILD_DPCPP` has been deprecated in favor of `GINKGO_BUILD_SYCL`. [#1350](#1350)
+ The `gko::reorder::Rcm` interface has been deprecated in favor of `gko::experimental::reorder::Rcm` based on `Permutation`. [#1418](#1418)
+ The Permutation class' `permute_mask` functionality. [#1415](#1415)
+ Multiple functions with typos (`set_complex_subpsace()`, range functions such as `conj_operaton` etc). [#1348](#1348)

### Summary of previous deprecations
+ `gko::lend()` is not necessary anymore.
+ The classes `RelativeResidualNorm` and `AbsoluteResidualNorm` are deprecated in favor of `ResidualNorm`.
+ The class `AmgxPgm` is deprecated in favor of `Pgm`.
+ Default constructors for the CSR `load_balance` and `automatical` strategies
+ The PolymorphicObject's move-semantic `copy_from` variant
+ The templated `SolverBase` class.
+ The class `MachineTopology` is deprecated in favor of `machine_topology`.
+ Logger constructors and create functions with the `executor` parameter.
+ The virtual, protected, Dense functions `compute_norm1_impl`, `add_scaled_impl`, etc.
+ Logger events for solvers and criterion without the additional `implicit_tau_sq` parameter.
+ The global `gko::solver::default_krylov_dim`, use instead `gko::solver::gmres_default_krylov_dim`.

### Added features

+ Adds a batch::BatchLinOp class that forms a base class for batched linear operators such as batched matrix formats, solver and preconditioners [#1379](#1379)
+ Adds a batch::MultiVector class that enables operations such as dot, norm, scale on batched vectors [#1371](#1371)
+ Adds a batch::Dense matrix format that stores batched dense matrices and provides gemv operations for these dense matrices. [#1413](#1413)
+ Adds a batch::Ell matrix format that stores batched Ell matrices and provides spmv operations for these batched Ell matrices. [#1416](#1416) [#1437](#1437)
+ Add a batch::Bicgstab solver (class, core, and reference kernels) that enables iterative solution of batched linear systems [#1438](#1438).
+ Add device kernels (CUDA, HIP, and DPCPP) for batch::Bicgstab solver. [#1443](#1443).
+ New MC64 reordering algorithm which optimizes the diagonal product or sum of a matrix by permuting the rows, and computes additional scaling factors for equilibriation [#1120](#1120)
+ New interface for (non-symmetric) permutation and scaled permutation of Dense and Csr matrices [#1415](#1415)
+ LU and Cholesky Factorizations can now be separated into their factors [#1432](#1432)
+ New symbolic LU factorization algorithm that is optimized for matrices with an almost-symmetric sparsity pattern [#1445](#1445)
+ Sorting kernels for SparsityCsr on all backends [#1343](#1343)
+ Allow passing pre-generated local solver as factory parameter for the distributed Schwarz preconditioner [#1426](#1426)
+ Add DPCPP kernels for Partition [#1034](#1034), and CSR's `check_diagonal_entries` and `add_scaled_identity` functionality [#1436](#1436)
+ Adds a helper function to create a partition based on either local sizes, or local ranges [#1227](#1227)
+ Add function to compute arithmetic mean of dense and distributed vectors [#1275](#1275)
+ Adds `icpx` compiler supports [#1350](#1350)
+ All backends can be built simultaneously [#1333](#1333)
+ Emits a CMake warning in downstream projects that use different compilers than the installed Ginkgo [#1372](#1372)
+ Reordering algorithms in sparse_blas benchmark [#1354](#1354)
+ Benchmarks gained an `-allocator` parameter to specify device allocators [#1385](#1385)
+ Benchmarks gained an `-input_matrix` parameter that initializes the input JSON based on the filename [#1387](#1387)
+ Benchmark inputs can now be reordered as a preprocessing step [#1408](#1408)


### Improvements

+ Significantly improve Cholesky factorization performance [#1366](#1366)
+ Improve parallel build performance [#1378](#1378)
+ Allow constrained parallel test execution using CTest resources [#1373](#1373)
+ Use arithmetic type more inside mixed precision ELL [#1414](#1414)
+ Most factory parameters of factory type no longer need to be constructed explicitly via `.on(exec)` [#1336](#1336) [#1439](#1439)
+ Improve ParILU(T)/ParIC(T) convergence by using more appropriate atomic operations [#1434](#1434)

### Fixes

+ Fix an over-allocation for OpenMP reductions [#1369](#1369)
+ Fix DPCPP's common-kernel reduction for empty input sizes [#1362](#1362)
+ Fix several typos in the API and documentation [#1348](#1348)
+ Fix inconsistent `Threads` between generations [#1388](#1388)
+ Fix benchmark median condition [#1398](#1398)
+ Fix HIP 5.6.0 compilation [#1411](#1411)
+ Fix missing destruction of rand_generator from cuda/hip [#1417](#1417)
+ Fix PAPI logger destruction order [#1419](#1419)
+ Fix TAU logger compilation [#1422](#1422)
+ Fix relative criterion to not iterate if the residual is already zero [#1079](#1079)
+ Fix memory_order invocations with C++20 changes [#1402](#1402)
+ Fix `check_diagonal_entries_exist` report correctly when only missing diagonal value in the last rows. [#1440](#1440)
+ Fix checking OpenMPI version in cross-compilation settings [#1446](#1446)
+ Fix false-positive deprecation warnings in Ginkgo, especially for the old Rcm (it doesn't emit deprecation warnings anymore as a result but is still considered deprecated) [#1444](#1444)

### Related PR: #1454
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