opm-simulators/opm/simulators/linalg/bda/cusparseSolverBackend.hpp
2019-12-18 17:09:33 +01:00

152 lines
5.4 KiB
C++

/*
Copyright 2019 Equinor ASA
This file is part of the Open Porous Media project (OPM).
OPM is free software: you can redistribute it and/or modify
it under the terms of the GNU General Public License as published by
the Free Software Foundation, either version 3 of the License, or
(at your option) any later version.
OPM is distributed in the hope that it will be useful,
but WITHOUT ANY WARRANTY; without even the implied warranty of
MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
GNU General Public License for more details.
You should have received a copy of the GNU General Public License
along with OPM. If not, see <http://www.gnu.org/licenses/>.
*/
#ifndef OPM_CUSPARSESOLVER_BACKEND_HEADER_INCLUDED
#define OPM_CUSPARSESOLVER_BACKEND_HEADER_INCLUDED
#include "cublas_v2.h"
#include "cusparse_v2.h"
#include "opm/simulators/linalg/bda/BdaResult.hpp"
namespace Opm
{
/// This class implements a cusparse-based ilu0-bicgstab solver on GPU
class cusparseSolverBackend{
private:
int minit;
int maxit;
double tolerance;
cublasHandle_t cublasHandle;
cusparseHandle_t cusparseHandle;
cudaStream_t stream;
cusparseMatDescr_t descr_B, descr_M, descr_L, descr_U;
bsrilu02Info_t info_M;
bsrsv2Info_t info_L, info_U;
// b: bsr matrix, m: preconditioner
double *d_bVals, *d_mVals;
int *d_bCols, *d_mCols;
int *d_bRows, *d_mRows;
double *d_x, *d_b, *d_r, *d_rw, *d_p;
double *d_pw, *d_s, *d_t, *d_v;
double *vals;
int *cols, *rows;
double *x, *b;
void *d_buffer;
int N, Nb, nnz, nnzb;
int BLOCK_SIZE;
bool initialized = false;
bool analysis_done = false;
// verbosity
// 0: print nothing during solves, only when initializing
// 1: print number of iterations and final norm
// 2: also print norm each iteration
// 3: also print timings of different backend functions
int verbosity = 0;
/// Solve linear system using ilu0-bicgstab
/// \param[inout] res summary of solver result
void gpu_pbicgstab(BdaResult& res);
/// Initialize GPU and allocate memory
/// \param[in] N number of nonzeroes, divide by dim*dim to get number of blocks
/// \param[in] nnz number of nonzeroes, divide by dim*dim to get number of blocks
/// \param[in] dim size of block
void initialize(int N, int nnz, int dim);
/// Clean memory
void finalize();
/// Copy linear system to GPU
/// \param[in] vals array of nonzeroes, each block is stored row-wise and contiguous, contains nnz values
/// \param[in] rows array of rowPointers, contains N/dim+1 values
/// \param[in] cols array of columnIndices, contains nnz values
/// \param[in] b input vector, contains N values
void copy_system_to_gpu(double *vals, int *rows, int *cols, double *b);
// Update linear system on GPU, don't copy rowpointers and colindices, they stay the same
/// \param[in] vals array of nonzeroes, each block is stored row-wise and contiguous, contains nnz values
/// \param[in] b input vector, contains N values
void update_system_on_gpu(double *vals, double *b);
/// Reset preconditioner on GPU, ilu0-decomposition is done inplace by cusparse
void reset_prec_on_gpu();
/// Analyse sparsity pattern to extract parallelism
/// \return true iff analysis was successful
bool analyse_matrix();
/// Perform ilu0-decomposition
/// \return true iff decomposition was successful
bool create_preconditioner();
/// Solve linear system
/// \param[inout] res summary of solver result
void solve_system(BdaResult &res);
public:
enum class cusparseSolverStatus {
CUSPARSE_SOLVER_SUCCESS,
CUSPARSE_SOLVER_ANALYSIS_FAILED,
CUSPARSE_SOLVER_CREATE_PRECONDITIONER_FAILED,
CUSPARSE_SOLVER_UNKNOWN_ERROR
};
/// Construct a cusparseSolver
/// \param[in] linear_solver_verbosity verbosity of cusparseSolver
/// \param[in] maxit maximum number of iterations for cusparseSolver
/// \param[in] tolerance required relative tolerance for cusparseSolver
cusparseSolverBackend(int linear_solver_verbosity, int maxit, double tolerance);
/// Destroy a cusparseSolver, and free memory
~cusparseSolverBackend();
/// Solve linear system, A*x = b, matrix A must be in blocked-CSR format
/// \param[in] N number of rows, divide by dim to get number of blockrows
/// \param[in] nnz number of nonzeroes, divide by dim*dim to get number of blocks
/// \param[in] dim size of block
/// \param[in] vals array of nonzeroes, each block is stored row-wise and contiguous, contains nnz values
/// \param[in] rows array of rowPointers, contains N/dim+1 values
/// \param[in] cols array of columnIndices, contains nnz values
/// \param[in] b input vector, contains N values
/// \param[inout] res summary of solver result
/// \return status code
cusparseSolverStatus solve_system(int N, int nnz, int dim, double *vals, int *rows, int *cols, double *b, BdaResult &res);
/// Post processing after linear solve, now only copies resulting x vector back
/// \param[inout] x resulting x vector, caller must guarantee that x points to a valid array
void post_process(double *x);
}; // end class cusparseSolverBackend
}
#endif