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Matmul.cpp
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Matmul.cpp
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#define TORCH_ASSERT_ONLY_METHOD_OPERATORS
#include <ATen/core/Tensor.h>
#include <ATen/Config.h>
#include <ATen/Context.h>
#include <ATen/native/mkldnn/Matmul.h>
#if !AT_MKLDNN_ENABLED()
namespace at {
namespace native {
void mkldnn_matmul(
const Tensor &mat1,
const Tensor &mat2,
const Tensor &result,
float beta,
float alpha) {
TORCH_CHECK(false, "mkldnn_matmul: ATen not compiled with MKLDNN support");
}
bool use_mkldnn_bf16_matmul(
const Tensor& mat1,
const Tensor& mat2,
const Tensor& result_opt){
return false;
}
bool use_mkldnn_fp16_matmul(
const Tensor& mat1,
const Tensor& mat2,
const Tensor& result_opt){
return false;
}
bool mkldnn_bf16_gemm(
TransposeType transa, TransposeType transb,
int64_t m, int64_t n, int64_t k,
float alpha,
const c10::BFloat16 *a, int64_t lda,
const c10::BFloat16 *b, int64_t ldb,
float beta,
c10::BFloat16 *c, int64_t ldc) {
return false;
}
bool mkldnn_fp16_gemm(
TransposeType transa, TransposeType transb,
int64_t m, int64_t n, int64_t k,
float alpha,
const c10::Half *a, int64_t lda,
const c10::Half *b, int64_t ldb,
float beta,
c10::Half *c, int64_t ldc) {
return false;
}
bool mkldnn_bf32_gemm(
TransposeType transa, TransposeType transb,
int64_t m, int64_t n, int64_t k,
float alpha,
const float *a, int64_t lda,
const float *b, int64_t ldb,
float beta,
float *c, int64_t ldc){
return false;
}
bool use_mkldnn_bf32_matmul(
const Tensor& mat1,
const Tensor& mat2,
const Tensor& result) {
return false;
}
bool use_mkldnn_matmul(
const Tensor& mat1,
const Tensor& mat2,
const Tensor& result) {
return false;
}
void mkldnn_matmul_i8i8i32(
const Tensor &mat1,
const Tensor &mat2,
const Tensor &result) {
TORCH_INTERNAL_ASSERT(false, __func__, ": ATen not compiled with MKLDNN support");
}
} // namespace native
} // namespace at
#else // AT_MKLDNN_ENABLED
#include <ATen/native/mkldnn/MKLDNNCommon.h>
#include <ATen/native/mkldnn/Utils.h>
namespace at {
namespace native {
static bool use_mkldnn_bf16_matmul() {
return at::globalContext().userEnabledMkldnn() && mkldnn_bf16_device_check();
}
static bool use_mkldnn_fp16_matmul() {
return at::globalContext().userEnabledMkldnn() && mkldnn_fp16_device_check();
}
static bool use_mkldnn_bf32_matmul() {
return use_mkldnn_bf16_matmul() && at::globalContext().float32MatmulPrecision() == at::Float32MatmulPrecision::MEDIUM;
}
template<typename scalar_t>
inline typename std::enable_if_t<
std::is_same_v<scalar_t, float> ||
std::is_same_v<scalar_t, c10::Half> ||
std::is_same_v<scalar_t, c10::BFloat16>,
bool>
mkldnn_gemm(
TransposeType transa, TransposeType transb,
int64_t m, int64_t n, int64_t k,
float alpha,
const scalar_t *a_data, int64_t lda,
const scalar_t *b_data, int64_t ldb,
float beta,
scalar_t *c_data, int64_t ldc) {
bool bf16_usable = std::is_same_v<scalar_t, c10::BFloat16> && use_mkldnn_bf16_matmul();
bool fp16_usable = std::is_same_v<scalar_t, c10::Half> && use_mkldnn_fp16_matmul();
bool bf32_usable = std::is_same_v<scalar_t, float> && use_mkldnn_bf32_matmul();
if ( !(bf16_usable || fp16_usable || bf32_usable) ||
(m * n * k <= 16 * 16 * 16) || (alpha == 0.0f)) {
return false;
}
ideep::attr_t op_attr;
// Use mkldnn post ops to perform the add.
if (beta != 0.0f) {
op_attr = ideep::attr_t::fuse_sum();
}
if (bf32_usable) op_attr.set_fpmath_mode(dnnl_fpmath_mode_bf16); // bf32 path
// NOTE: View as c-contiguous to avoid extra reordering in mkldnn
// Use identity: C = AB <=> C^T = B^T A^T
ideep::tensor::dims a_strides{{lda, 1}}, b_strides{{ldb, 1}}, c_strides{{ldc, 1}};
if (transa != TransposeType::NoTranspose) {
std::swap(a_strides[0], a_strides[1]);
}
if (transb != TransposeType::NoTranspose) {
std::swap(b_strides[0], b_strides[1]);
}
auto idtype = ideep::tensor::data_type::bf16;
if constexpr (std::is_same_v<scalar_t, c10::Half>) {
idtype = ideep::tensor::data_type::f16;
}
if constexpr (std::is_same_v<scalar_t, float>) {
idtype = ideep::tensor::data_type::f32;
}
ideep::tensor a({
/*sizes=*/{k, m},
idtype,
/*strides=*/a_strides},
const_cast<scalar_t*>(a_data));
ideep::tensor b({
/*sizes=*/{n, k},
idtype,
/*strides=*/b_strides},
const_cast<scalar_t*>(b_data));
ideep::tensor c({
/*sizes=*/{n, m},
idtype,
/*strides=*/c_strides},
c_data);
ideep::matmul_forward::compute(
b, a, c, alpha, beta,
ideep::scale_t(), ideep::scale_t(), ideep::scale_t(), op_attr);
if (c.get_data_handle() != c_data){
// ideep will query onednn expect format of output
// if given output format is not expected, ideep will re-init an output buffer
// under this case, we need copy the re-inited buffer back to given buffer
ideep::tensor real_output({
/*sizes=*/{n, m},
idtype,
/*strides=*/c_strides},
c_data);
c.reorder_to(real_output);
}
return true;
}
bool mkldnn_bf16_gemm(
TransposeType transa, TransposeType transb,
int64_t m, int64_t n, int64_t k,
float alpha,
const c10::BFloat16 *a, int64_t lda,
const c10::BFloat16 *b, int64_t ldb,
float beta,
c10::BFloat16 *c, int64_t ldc) {
return mkldnn_gemm<c10::BFloat16>(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc);
}
bool mkldnn_fp16_gemm(
TransposeType transa, TransposeType transb,
int64_t m, int64_t n, int64_t k,
float alpha,
const c10::Half *a, int64_t lda,
const c10::Half *b, int64_t ldb,
float beta,
c10::Half *c, int64_t ldc) {
return mkldnn_gemm<c10::Half>(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc);
}
bool mkldnn_bf32_gemm(
TransposeType transa, TransposeType transb,
int64_t m, int64_t n, int64_t k,
float alpha,
const float *a, int64_t lda,
const float *b, int64_t ldb,
float beta,
float *c, int64_t ldc){
return mkldnn_gemm<float>(transa, transb, m, n, k, alpha, a, lda, b, ldb, beta, c, ldc);
}
void mkldnn_matmul(
const Tensor &mat1,
const Tensor &mat2,
const Tensor &result,
float beta,
float alpha) {
TORCH_CHECK((mat1.dim() == 2 && mat2.dim() == 2) || // aten::addmm
(mat1.dim() == 3 && mat2.dim() == 3) || // aten::bmm, aten::baddbmm
(mat1.dim() == 2 && mat2.dim() == 1) || // aten::mv
(mat1.dim() == 1 && mat2.dim() == 1), // aten::dot
"mkldnn_matmul: unsupported dims for mat and mat2");
#if defined(__aarch64__)
// oneDNN fast-maths mode (enabled by setting the environment variable ONEDNN_DEFAULT_FPMATH_MODE=BF16) will dispatch
// fp32 inputs to bf16 kernels where HW permits. So, both fp32 and bf16 inputs are permitted.
TORCH_CHECK((mat1.scalar_type() == mat2.scalar_type()) && (mat1.scalar_type() == result.scalar_type()) &&
((mat1.scalar_type() == at::kFloat) || (mat1.scalar_type() == at::kBFloat16)),
"mkldnn_matmul: only enabled for fp32 and bf16 path");
// device needs to support bf16 if the inputs are of bf16 type
if (mat1.scalar_type() == at::kBFloat16) {
TORCH_CHECK(mkldnn_bf16_device_check_arm(),
"mkldnn_matmul: mkldnn_matmul bf16 path needs a cpu with bf16 support");
}
#else
TORCH_CHECK(
(mat1.scalar_type() == at::kBFloat16 ||
mat1.scalar_type() == at::kHalf ||
mat1.scalar_type() == at::kFloat) &&
mat2.scalar_type() == mat1.scalar_type() &&
result.scalar_type() == mat1.scalar_type(),
"mkldnn_matmul: only enabled for bf16 and fp16 path");
if (mat1.scalar_type() == at::kBFloat16 || mat1.scalar_type() == at::kFloat) {
TORCH_CHECK(
mkldnn_bf16_device_check(),
"mkldnn_matmul: mkldnn_matmul bf16 path needs the cpu support avx_ne_convert or avx512bw, avx512vl and avx512dq, or AWS Graviton3");
} else {
TORCH_INTERNAL_ASSERT(mat1.scalar_type() == at::kHalf);
TORCH_CHECK(
mkldnn_fp16_device_check(),
"mkldnn_matmul: mkldnn_matmul fp16 path needs the cpu support avx_ne_convert or avx512_fp16");
}
#endif
auto mat1_unsqueezed = mat1.dim() == 1 ? mat1.unsqueeze(0) : mat1;
auto mat2_unsqueezed = mat2.dim() == 1 ? mat2.unsqueeze(1) : mat2;
auto result_unsqueezed = result.dim() == 1 ? result.unsqueeze(1) : result;
bool bf32_usable = mat1.scalar_type() == at::kFloat && use_mkldnn_bf32_matmul();
ideep::attr_t op_attr;
// "addmm", "addbmm" "baddbmm" in pytorch allow bias to be 2-D or 3-D tensor
// but mkldnn matmul primitive only support bias be 1-D tensors
// to address their differences, we use mkldnn post ops to perform a fused "add" after matrix multiplication is over
if (beta != 0.0f) op_attr = ideep::attr_t::fuse_sum();
if (bf32_usable) op_attr.set_fpmath_mode(dnnl_fpmath_mode_bf16); // bf32 path
// If alpha = 0, dose not need actually do gemm computation
if (alpha == 0)
return;
auto is_mkldnn_optimized_format = [&](const Tensor& t) {
if (t.is_contiguous()) return true;
const auto sizes = t.sizes();
const auto strides = t.strides();
if (t.dim() == 2){
return strides[0] == 1 && strides[1] == sizes[0];
} else {
// dim = 3
return strides[0] == sizes[1] * sizes[2] && strides[1] == 1 && strides[2] == sizes[1];
}
};
// Mkldnn only optimized for contiguous or transposed (transpose last 2 dim if 3-D tensor) format now
// Will remove this "contiguous" after mkldnn have fully supported
Tensor mat1_ = is_mkldnn_optimized_format(mat1_unsqueezed) ? mat1_unsqueezed : mat1_unsqueezed.contiguous();
Tensor mat2_ = is_mkldnn_optimized_format(mat2_unsqueezed) ? mat2_unsqueezed : mat2_unsqueezed.contiguous();
// Make sure mat1 and mat2 have default contiguous strides if they are contiguous tensors for better performance.
mat1_ = may_convert_to_default_contiguous_strides(mat1_);
mat2_ = may_convert_to_default_contiguous_strides(mat2_);
// mkldnn_matmul only proceed CPU tensor
const ideep::tensor x = itensor_view_from_dense(mat1_);
const ideep::tensor w = itensor_view_from_dense(mat2_);
ideep::tensor y = itensor_view_from_dense(result_unsqueezed);
ideep::matmul_forward::compute(x, w, y, alpha, beta,
ideep::scale_t(), ideep::scale_t(), ideep::scale_t(), op_attr);
if (y.get_data_handle() != result.data_ptr()){
// ideep will query onednn expect format of output
// if given output format is not expected, ideep will re-init an output buffer
// under this case, we need copy the re-inited buffer back to given buffer
ideep::tensor public_y = itensor_view_from_dense(result);
y.reorder_to(public_y);
}
if (mat1.dim() == 1 && mat2.dim() == 1){
// aten::dot
result.squeeze_();
}
}
inline bool checksize(const Tensor& mat1, const Tensor& mat2){
// if dim = 2, mat1's size = (m * n), mat2's size = (n * k)
// else if dim = 3, mat1's size = (b * m * n), mat2's size = (b * n * k)
// else called from aten::mv, mat1.size = (m * n), mat2.size = (n)
// only m * n * b * k(if exist) are large enough we can get benefit from mkldnn optimized gemm kernel
static const int64_t mkldnn_gemm_min_size = 16 * 16 * 16;
if (mat1.dim() == 1 && mat2.dim() == 1) {
// aten::dot
return mat1.size(0) > mkldnn_gemm_min_size;
} else if (mat1.dim() == 2 && mat2.dim() == 1) {
// aten::mv
return mat1.size(0) * mat1.size(1) > mkldnn_gemm_min_size;
} else if (mat2.dim() == 2 && mat2.dim() == 2) {
// aten::addmm
return mat1.size(0) * mat1.size(1) * mat2.size(1) > mkldnn_gemm_min_size;
} else {
// aten::bmm, aten::baddbmm
return mat1.size(0) * mat1.size(1) * mat1.size(2) * mat2.size(2) > mkldnn_gemm_min_size;
}
}
bool use_mkldnn_bf16_matmul(
const Tensor& mat1,
const Tensor& mat2,
const Tensor& result) {
#if defined(__aarch64__)
if (mkldnn_bf16_device_check_arm()) {
//onednn fastmath mode can leverage bf16 HW even for the fp32 input, e.g. Arm Neoverse V1
//so, don't restrict the mkldnn_matmul only for bf16 inputs, allow it for float as well
return (
use_mkldnn_bf16_matmul() &&
(mat1.scalar_type() == mat2.scalar_type()) && (!result.defined() || (mat1.scalar_type() == result.scalar_type())) &&
((mat1.scalar_type() == kFloat) || (mat1.scalar_type() == kBFloat16)) &&
mat1.numel() != 0 &&
mat2.numel() != 0 &&
checksize(mat1, mat2));
} else
#endif
{
return (
use_mkldnn_bf16_matmul() &&
mat1.scalar_type() == kBFloat16 &&
mat2.scalar_type() == kBFloat16 &&
(!result.defined() || result.scalar_type() == kBFloat16) &&
mat1.numel() != 0 &&
mat2.numel() != 0 &&
checksize(mat1, mat2));
}
}
bool use_mkldnn_fp16_matmul(
const Tensor& mat1,
const Tensor& mat2,
const Tensor& result) {
return (
use_mkldnn_fp16_matmul() &&
mat1.scalar_type() == kHalf &&
mat2.scalar_type() == kHalf &&
(!result.defined() || result.scalar_type() == kHalf) &&
mat1.numel() != 0 &&
mat2.numel() != 0 &&
checksize(mat1, mat2));
}
bool use_mkldnn_bf32_matmul(
const Tensor& mat1,
const Tensor& mat2,
const Tensor& result) {
return (
use_mkldnn_bf32_matmul() &&
mat1.scalar_type() == kFloat &&
mat2.scalar_type() == kFloat &&
(!result.defined() || result.scalar_type() == kFloat) &&
mat1.numel() != 0 &&
mat2.numel() != 0 &&
checksize(mat1, mat2));
}
bool use_mkldnn_matmul(
const Tensor& mat1,
const Tensor& mat2,
const Tensor& result) {
return (use_mkldnn_bf16_matmul(mat1, mat2, result) || use_mkldnn_fp16_matmul(mat1, mat2, result) || use_mkldnn_bf32_matmul(mat1, mat2, result));
}
static void _mkldnn_matmul_i8i8i32_with_primitive(
const Tensor &mat1,
const Tensor &mat2,
const Tensor &result) {
// Create ideep tensors for oneDNN computation
auto src = ideep::tensor(
{mat1.sizes().vec(),
ideep::tensor::data_type::s8,
mat1.strides().vec()},
mat1.data_ptr());
auto wei = ideep::tensor(
{mat2.sizes().vec(),
ideep::tensor::data_type::s8,
mat2.strides().vec()},
mat2.data_ptr());
auto dst = ideep::tensor(
{result.sizes().vec(),
ideep::tensor::data_type::s32,
result.strides().vec()},
result.data_ptr());
// Create primitive desc
auto engine = ideep::engine::cpu_engine();
ideep::attr_t op_attr;
op_attr.set_scratchpad_mode(dnnl::scratchpad_mode::user);
auto src_desc = src.get_desc();
auto wei_desc = wei.get_desc();
auto dst_desc = dst.get_desc();
auto prim_desc = dnnl::matmul::primitive_desc(
engine, src_desc, wei_desc, dst_desc, op_attr);
// Reorder mat2 if needed
auto expected_weight = wei.reorder_if_differ_in(prim_desc.weights_desc());
// Prepare args for primitive
ideep::tensor scratchpad(prim_desc.scratchpad_desc());
ideep::exec_args args;
args.insert({DNNL_ARG_SRC, src});
args.insert({DNNL_ARG_WEIGHTS, expected_weight});
args.insert({DNNL_ARG_DST, dst});
args.insert({DNNL_ARG_SCRATCHPAD, scratchpad});
// Create primitve and execute
auto primitive = dnnl::matmul(prim_desc);
primitive.execute(ideep::stream::default_stream(), args);
}
static void _mkldnn_gemm_i8i8i32_with_blas(
const Tensor& self,
const Tensor& mat2,
const Tensor& result) {
const int m = result.size(0);
const int n = result.size(1);
const int k = self.size(1);
const char transa = self.strides()[1] == 1 ? 'N' : 'T';
const char transb = mat2.strides()[1] == 1 ? 'N' : 'T';
const char offsetc = 'F';
const int lda = transa == 'T' ? self.stride(1) : self.stride(0);
const int ldb = transb == 'T' ? mat2.stride(1) : mat2.stride(0);
const int ldc = n;
const float alpha = 1;
const float beta = 0;
int8_t ao = 0;
int8_t bo = 0;
int32_t co = 0;
dnnl::gemm_s8s8s32(
transa,
transb,
offsetc,
m,
n,
k,
alpha,
(int8_t*)self.data_ptr(),
lda,
ao,
(int8_t*)mat2.data_ptr(),
ldb,
bo,
beta,
(int32_t*)result.data_ptr(),
ldc,
&co);
}
void mkldnn_matmul_i8i8i32(
const Tensor &mat1,
const Tensor &mat2,
const Tensor &result) {
// x:s8 * w:s8 -> y:s32
// both inputs should be 2d
// In most cases, using DNNL blas API is faster but it requires a/b contiguous along one dimentsion
bool a_is_contigous = (mat1.stride(0) == 1 || mat1.stride(1) == 1);
bool b_is_contigous = (mat2.stride(0) == 1 || mat2.stride(1) == 1);
if (a_is_contigous && b_is_contigous) {
_mkldnn_gemm_i8i8i32_with_blas(mat1, mat2, result);
} else {
_mkldnn_matmul_i8i8i32_with_primitive(mat1, mat2, result);
}
}
} // namespace native
} // namespace at
#endif // AT_MKLDNN_ENABLED