Visible to Intel only — GUID: GUID-18EC0EB7-636B-4291-B47F-EBD336EF6CC9
Abs
AbsBackward
Add
AvgPool
AvgPoolBackward
BatchNormForwardTraining
BatchNormInference
BatchNormTrainingBackward
BiasAdd
BiasAddBackward
Clamp
ClampBackward
Concat
Convolution
ConvolutionBackwardData
ConvolutionBackwardWeights
ConvTranspose
ConvTransposeBackwardData
ConvTransposeBackwardWeights
Dequantize
Divide
DynamicDequantize
DynamicQuantize
Elu
EluBackward
End
Exp
GELU
GELUBackward
HardSigmoid
HardSigmoidBackward
HardSwish
HardSwishBackward
Interpolate
InterpolateBackward
LayerNorm
LayerNormBackward
LeakyReLU
Log
LogSoftmax
LogSoftmaxBackward
MatMul
Maximum
MaxPool
MaxPoolBackward
Minimum
Mish
MishBackward
Multiply
Pow
PReLU
PReLUBackward
Quantize
Reciprocal
ReduceL1
ReduceL2
ReduceMax
ReduceMean
ReduceMin
ReduceProd
ReduceSum
ReLU
ReLUBackward
Reorder
Round
Select
Sigmoid
SigmoidBackward
SoftMax
SoftMaxBackward
SoftPlus
SoftPlusBackward
Sqrt
SqrtBackward
Square
SquaredDifference
StaticReshape
StaticTranspose
Subtract
Tanh
TanhBackward
TypeCast
Wildcard
enum dnnl_alg_kind_t
enum dnnl_normalization_flags_t
enum dnnl_primitive_kind_t
enum dnnl_prop_kind_t
enum dnnl_query_t
enum dnnl::normalization_flags
enum dnnl::query
struct dnnl_exec_arg_t
struct dnnl_primitive
struct dnnl_primitive_desc
struct dnnl::primitive
struct dnnl::primitive_desc
struct dnnl::primitive_desc_base
enum dnnl_rnn_direction_t
enum dnnl_rnn_flags_t
enum dnnl::rnn_direction
enum dnnl::rnn_flags
struct dnnl::augru_backward
struct dnnl::augru_forward
struct dnnl::gru_backward
struct dnnl::gru_forward
struct dnnl::lbr_augru_backward
struct dnnl::lbr_augru_forward
struct dnnl::lbr_gru_backward
struct dnnl::lbr_gru_forward
struct dnnl::lstm_backward
struct dnnl::lstm_forward
struct dnnl::rnn_primitive_desc_base
struct dnnl::vanilla_rnn_backward
struct dnnl::vanilla_rnn_forward
Visible to Intel only — GUID: GUID-18EC0EB7-636B-4291-B47F-EBD336EF6CC9
weights_decompression_matmul cpp
Annotated version: MatMul Tutorial: weights decompression
Annotated version: MatMul Tutorial: weights decompression
/*******************************************************************************
* Copyright 2023-2024 Intel Corporation
*
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*******************************************************************************/
#include <cassert>
#include <cctype>
#include <cmath>
#include <cstdio>
#include <iostream>
#include <random>
#include <stdexcept>
#include <vector>
#include "oneapi/dnnl/dnnl.hpp"
#include "example_utils.hpp"
using namespace dnnl;
namespace {
void init_vector(std::vector<float> &v) {
std::mt19937 gen;
std::uniform_real_distribution<float> u(0, 1);
for (auto &e : v)
e = u(gen);
}
} // namespace
int number_of_runs = 1;
// Create a MatMul primitive descriptor for the following op:
// C_f32 = A_f32 * (B_s8 - zp_B) * sc_B[:]
//
// Here:
// - Matrices A and C are of f32 data type.
// - The B matrix is stored as int8_t, its zero point is zp_B, and all its
// dimensions are known. This matrix can be a matrix of compressed weights
// in an MLP topology.
// - The weights scaling values are not known at the primitive creation time.
matmul::primitive_desc matmul_pd_create(
int64_t M, int64_t N, int64_t K, int64_t G, const engine &eng) {
memory::desc a_md({M, K}, memory::data_type::f32, {K, 1}); // M x K layout
memory::desc b_md({K, N}, memory::data_type::s8, memory::format_tag::any);
memory::desc c_md({M, N}, memory::data_type::f32, {N, 1}); // M x N layout
// Create attributes and indicate that the alpha and zero points are
// runtime parameters
primitive_attr attr;
// Set scales with multiple scales along K and N dimensions and with groups along K.
attr.set_scales(DNNL_ARG_WEIGHTS,
/* mask */ (1 << 0) + (1 << 1), {G, 1}, memory::data_type::f32);
// Set a single zero point with s8 data type.
attr.set_zero_points(
DNNL_ARG_WEIGHTS, /* mask */ 0, {}, memory::data_type::s8);
// Set fpmath mode with `apply_to_int=true` to apply fpmath mode behavior to
// integral primitives (in this example, matmul).
attr.set_fpmath_mode(fpmath_mode::bf16, true);
// Create a MatMul primitive descriptor
return matmul::primitive_desc(eng, a_md, b_md, c_md, attr);
}
void prepare_input(memory &A_f32_mem, memory &sc_B_mem, memory &zp_B_mem) {
int64_t M = A_f32_mem.get_desc().get_dims()[0];
int64_t N = sc_B_mem.get_desc().get_dims()[0];
int64_t K = A_f32_mem.get_desc().get_dims()[1];
int64_t NUM_G = sc_B_mem.get_desc().get_dims()[1];
std::vector<float> A_f32(M * K);
init_vector(A_f32);
std::vector<float> sc_B(NUM_G * N);
init_vector(sc_B);
int8_t zp_B = 2;
write_to_dnnl_memory(A_f32.data(), A_f32_mem);
write_to_dnnl_memory(&zp_B, zp_B_mem);
write_to_dnnl_memory(sc_B.data(), sc_B_mem);
}
void infer(const matmul &matmul_p, int64_t M, int64_t N, int64_t K, int64_t G,
const memory &B_s8_mem, const engine &eng) {
// input of the current layer / operation
memory A_f32_mem({{M, K}, memory::data_type::f32, {K, 1}}, eng);
// De-quantization parameters (eg. Scale and Shift)
const int64_t n_groups = K / G;
memory sc_B_mem({{N, n_groups}, memory::data_type::f32, {1, N}}, eng);
memory zp_B_mem({{1}, memory::data_type::s8, {1}}, eng);
// the function below fills dnnl::memory with some values
// these memories, typically, come from the previous layers / operations
// with meaningful data inside
prepare_input(A_f32_mem, sc_B_mem, zp_B_mem);
// output - no initialization required
memory C_f32_mem({{M, N}, memory::data_type::f32, {N, 1}}, eng);
stream s(eng);
for (int run = 0; run < number_of_runs; ++run)
matmul_p.execute(s,
{{DNNL_ARG_SRC, A_f32_mem}, {DNNL_ARG_WEIGHTS, B_s8_mem},
{DNNL_ARG_DST, C_f32_mem},
{DNNL_ARG_ATTR_SCALES | DNNL_ARG_WEIGHTS, sc_B_mem},
{DNNL_ARG_ATTR_ZERO_POINTS | DNNL_ARG_WEIGHTS,
zp_B_mem}});
s.wait();
}
void weights_decompression_matmul(engine::kind engine_kind) {
engine eng(engine_kind, 0);
const int64_t K = 96;
const int64_t N = 1000;
const int64_t M = 100;
// Quantization Group size for scales
const int64_t G = K / 2;
auto matmul_pd = matmul_pd_create(M, N, K, G, eng);
// Original weights stored as float in a known format
std::vector<float> B_f32(K * N);
init_vector(B_f32);
// Pre-packed weights stored as int8_t
memory B_s8_mem(matmul_pd.weights_desc(), eng);
{
stream s(eng);
memory B_f32_mem(
{{K, N}, memory::data_type::f32, memory::format_tag::ab}, eng);
write_to_dnnl_memory(B_f32.data(), B_f32_mem);
reorder(B_f32_mem, B_s8_mem).execute(s, B_f32_mem, B_s8_mem);
s.wait();
}
matmul matmul_p(matmul_pd);
infer(matmul_p, M, N, K, G, B_s8_mem, eng);
}
int main(int argc, char **argv) {
engine::kind engine_kind = parse_engine_kind(argc, argv);
// GPU is not supported
if (engine_kind != engine::kind::cpu) return 0;
return handle_example_errors(weights_decompression_matmul, engine_kind);
}