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SparseCsrLinearAlgebra.cpp
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SparseCsrLinearAlgebra.cpp
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#define TORCH_ASSERT_ONLY_METHOD_OPERATORS
#include <ATen/native/mkl/SparseCsrLinearAlgebra.h>
#include <ATen/native/SparseTensorUtils.h>
// Don't compile with MKL for macos since linking the sparse MKL routines
// needs some build fixes.
// Macros source:
// https://web.archive.org/web/20191012035921/http://nadeausoftware.com/articles/2012/01/c_c_tip_how_use_compiler_predefined_macros_detect_operating_system
#if !AT_MKL_ENABLED() || defined(__APPLE__) || \
defined(__MACH__)
namespace at {
namespace sparse_csr {
Tensor& _sparse_mm_mkl_(
Tensor& self,
const SparseCsrTensor& sparse_,
const Tensor& dense,
const Tensor& t,
const Scalar& alpha,
const Scalar& beta) {
#if __APPLE__ || __MACH__
AT_ERROR("sparse_mm_mkl: MKL support is disabled on macos/iOS.");
#else
AT_ERROR("sparse_mm_mkl: ATen not compiled with MKL support");
#endif
return self; // for stopping compiler warnings.
}
} // namespace native
} // namespace at
#else // AT_MKL_ENABLED
#include <ATen/mkl/Descriptors.h>
#include <ATen/mkl/Exceptions.h>
#include <ATen/mkl/Limits.h>
#include <mkl.h>
#include <mkl_spblas.h>
#include <ATen/Dispatch.h>
#include <ATen/ExpandUtils.h>
#include <ATen/SparseCsrTensorImpl.h>
namespace at {
namespace sparse_csr {
#ifdef MKL_ILP64
static constexpr ScalarType TORCH_INT_TYPE = at::kLong;
#else
static constexpr ScalarType TORCH_INT_TYPE = at::kInt;
#endif
class SparseCsrMKLInterface {
private:
sparse_matrix_t A{nullptr};
matrix_descr desc;
public:
SparseCsrMKLInterface(
MKL_INT* col_indices,
MKL_INT* crow_indices,
double* values,
MKL_INT nrows,
MKL_INT ncols) {
desc.type = SPARSE_MATRIX_TYPE_GENERAL;
int retval = mkl_sparse_d_create_csr(
&A,
SPARSE_INDEX_BASE_ZERO,
nrows,
ncols,
crow_indices,
crow_indices + 1,
col_indices,
values);
TORCH_CHECK(
retval == 0,
"mkl_sparse_d_create_csr failed with error code: ",
retval);
}
SparseCsrMKLInterface(
MKL_INT* col_indices,
MKL_INT* crow_indices,
float* values,
MKL_INT nrows,
MKL_INT ncols) {
desc.type = SPARSE_MATRIX_TYPE_GENERAL;
int retval = mkl_sparse_s_create_csr(
&A,
SPARSE_INDEX_BASE_ZERO,
nrows,
ncols,
crow_indices,
crow_indices + 1,
col_indices,
values);
TORCH_CHECK(
retval == 0,
"mkl_sparse_s_create_csr failed with error code: ",
retval);
}
// res(nrows, dense_ncols) = (sparse(nrows * ncols) @ dense(ncols x dense_ncols))
inline void sparse_mm(
float* res,
float* dense,
float alpha,
float beta,
MKL_INT nrows,
MKL_INT ncols,
MKL_INT dense_ncols) {
int stat;
if (dense_ncols == 1) {
stat = mkl_sparse_s_mv(
SPARSE_OPERATION_NON_TRANSPOSE,
alpha,
A,
desc,
dense,
beta,
res);
TORCH_CHECK(stat == 0, "mkl_sparse_s_mv failed with error code: ", stat);
} else {
stat = mkl_sparse_s_mm(
SPARSE_OPERATION_NON_TRANSPOSE,
alpha,
A,
desc,
SPARSE_LAYOUT_ROW_MAJOR,
dense,
nrows,
ncols,
beta,
res,
dense_ncols);
TORCH_CHECK(stat == 0, "mkl_sparse_s_mm failed with error code: ", stat);
}
}
inline void sparse_mm(
double* res,
double* dense,
double alpha,
double beta,
MKL_INT nrows,
MKL_INT ncols,
MKL_INT dense_ncols) {
int stat;
if (dense_ncols == 1) {
stat = mkl_sparse_d_mv(
SPARSE_OPERATION_NON_TRANSPOSE,
alpha,
A,
desc,
dense,
beta,
res);
TORCH_CHECK(stat == 0, "mkl_sparse_d_mv failed with error code: ", stat);
}
else {
stat = mkl_sparse_d_mm(
SPARSE_OPERATION_NON_TRANSPOSE,
alpha,
A,
desc,
SPARSE_LAYOUT_ROW_MAJOR,
dense,
nrows,
ncols,
beta,
res,
dense_ncols);
TORCH_CHECK(stat == 0, "mkl_sparse_d_mm failed with error code: ", stat);
}
}
~SparseCsrMKLInterface() {
mkl_sparse_destroy(A);
}
};
template <typename scalar_t>
static inline void sparse_mm_mkl_template(
Tensor& res,
const Tensor& col_indices,
const Tensor& crow_indices,
const Tensor& values,
const Tensor& dense,
const Tensor& t,
const Scalar& alpha,
const Scalar& beta,
IntArrayRef size,
IntArrayRef dense_size) {
SparseCsrMKLInterface mkl_impl(
col_indices.data_ptr<MKL_INT>(),
crow_indices.data_ptr<MKL_INT>(),
values.data_ptr<scalar_t>(),
size[0],
size[1]);
mkl_impl.sparse_mm(
res.data_ptr<scalar_t>(),
dense.data_ptr<scalar_t>(),
alpha.to<scalar_t>(),
beta.to<scalar_t>(),
size[0],
size[1],
dense_size[1]);
}
static bool inline constexpr is_mkl_int32_index() {
#ifdef MKL_ILP64
return false;
#else
return true;
#endif
}
Tensor& _sparse_mm_mkl_(
Tensor& self,
const SparseCsrTensor& sparse_,
const Tensor& dense,
const Tensor& t,
const Scalar& alpha,
const Scalar& beta) {
if (is_mkl_int32_index()) {
if (sparse_.crow_indices().scalar_type() != kInt) {
TORCH_WARN(
"Pytorch is compiled with MKL LP64 and will convert crow_indices to int32.");
}
if (sparse_.col_indices().scalar_type() != kInt) {
TORCH_WARN(
"Pytorch is compiled with MKL LP64 and will convert col_indices to int32.");
}
} else { // This is for future proofing if we ever change to using MKL ILP64.
if (sparse_.crow_indices().scalar_type() != kLong) {
TORCH_WARN(
"Pytorch is compiled with MKL ILP64 and will convert crow_indices dtype to int64.");
}
if (sparse_.col_indices().scalar_type() != kLong) {
TORCH_WARN(
"Pytorch is compiled with MKL ILP64 and will convert col_indices dtype to int64.");
}
}
AT_DISPATCH_FLOATING_TYPES(
dense.scalar_type(), "addmm_sparse_csr_dense", [&] {
sparse_mm_mkl_template<scalar_t>(
self,
sparse_.col_indices().to(TORCH_INT_TYPE),
sparse_.crow_indices().to(TORCH_INT_TYPE),
sparse_.values(),
dense,
t,
alpha,
beta,
sparse_.sizes(),
dense.sizes());
});
return self;
}
} // namespace native
} // namespace at
#endif // AT_MKL_ENABLED