Visible to Intel only — GUID: GUID-56C5BCE1-9AB4-4C03-956C-1C52F10C5292
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-56C5BCE1-9AB4-4C03-956C-1C52F10C5292
performance_profiling cpp
This example demonstrates the best practices for application performance optimizations with oneDNN. Annotated version: Performance Profiling Example
This example demonstrates the best practices for application performance optimizations with oneDNN. Annotated version: Performance Profiling Example
/*******************************************************************************
* Copyright 2019-2024 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 <iostream>
#include <stdexcept>
#include <vector>
#include "oneapi/dnnl/dnnl.hpp"
#include "example_utils.hpp"
using namespace dnnl;
// [Prologue]
// Set Strides and Padding
const memory::dims strides = {4, 4};
const memory::dims padding = {0, 0};
// [Prologue]
//
// function to init data
void init_data(memory &m, float v) {
size_t size = m.get_desc().get_size() / sizeof(float);
std::vector<float> data(size, v);
write_to_dnnl_memory(data.data(), m);
}
// function to execute non-fused relu
void create_and_execute_relu(memory &data, engine &eng, stream &s) {
// relu operates on whatever data format is given to it
// create a primitive
auto relu_pd = eltwise_forward::primitive_desc(eng,
prop_kind::forward_inference, algorithm::eltwise_relu,
data.get_desc(), data.get_desc(), 0.f, 0.f);
auto relu = eltwise_forward(relu_pd);
// execute it (in-place)
relu.execute(s, {{DNNL_ARG_SRC, data}, {DNNL_ARG_DST, data}});
}
// [Create post_op attr with relu]
// function to create post-op attribute for fused relu
primitive_attr create_attr_with_relu_post_op() {
// create a post-op with relu
post_ops ops;
ops.append_eltwise(algorithm::eltwise_relu, 0.f, 0.f);
// create an attribute and set the corresponding post op
primitive_attr attr;
attr.set_post_ops(ops);
return attr;
}
// [Create post_op attr with relu]
// Implementation for naive convolution on nchw (data) and oihw (weights),
// followed by execution of non-fused relu
void conv_relu_naive(const memory &user_src, const memory &user_wei,
memory user_dst, engine &eng, stream &s) {
// [Create mem_desc]
// copy the dimensions and format from user's memory
auto conv_src_md = memory::desc(user_src.get_desc());
auto conv_wei_md = memory::desc(user_wei.get_desc());
auto conv_dst_md = memory::desc(user_dst.get_desc());
// [Create mem_desc]
// [Create conv_prim_desc]
// create a convolution primitive descriptor
auto conv_pd = convolution_forward::primitive_desc(eng,
prop_kind::forward_inference, algorithm::convolution_direct,
conv_src_md, conv_wei_md, conv_dst_md, strides, padding, padding);
// [Create conv_prim_desc]
// [Create conv_primitive]
// create convolution primitive
auto conv = convolution_forward(conv_pd);
// [Create conv_primitive]
// [Add to stream]
// execute convolution by adding it to the stream s
conv.execute(s,
{{DNNL_ARG_SRC, user_src}, {DNNL_ARG_WEIGHTS, user_wei},
{DNNL_ARG_DST, user_dst}});
// [Add to stream]
// [Create and execute relu]
// execute relu (on convolution's destination format, whatever it is)
create_and_execute_relu(user_dst, eng, s);
s.wait();
// [Create and execute relu]
}
// Implementation for convolution on blocked format for data and
// weights, followed by execution of non-fused relu
void conv_relu_blocked(memory user_src, memory user_wei, memory user_dst,
engine &eng, stream &s) {
// [Create mem_desc with tag=any]
// copy the dimensions and data type from user's memory and set format tag
// to "any" to allow convolution to pick the best implementation
auto conv_src_md = memory::desc(user_src.get_desc().get_dims(),
user_src.get_desc().get_data_type(), memory::format_tag::any);
auto conv_wei_md = memory::desc(user_wei.get_desc().get_dims(),
user_wei.get_desc().get_data_type(), memory::format_tag::any);
auto conv_dst_md = memory::desc(user_dst.get_desc().get_dims(),
user_dst.get_desc().get_data_type(), memory::format_tag::any);
// [Create mem_desc with tag=any]
// [Create conv_prim_desc implementation2]
// create a convolution primitive descriptor and primitive
auto conv_pd = convolution_forward::primitive_desc(eng,
prop_kind::forward_inference, algorithm::convolution_direct,
conv_src_md, conv_wei_md, conv_dst_md, strides, padding, padding);
// [Create conv_prim_desc implementation2]
// [Conditionally create and execute reorder prims]
// prepare convolution source
memory conv_src = user_src;
if (conv_pd.src_desc() != user_src.get_desc()) {
conv_src = memory(conv_pd.src_desc(), eng);
auto r_pd = reorder::primitive_desc(user_src, conv_src);
reorder(r_pd).execute(s, user_src, conv_src);
}
// prepare convolution weights
memory conv_wei = user_wei;
if (conv_pd.weights_desc() != user_wei.get_desc()) {
conv_wei = memory(conv_pd.weights_desc(), eng);
auto r_pd = reorder::primitive_desc(user_wei, conv_wei);
reorder(r_pd).execute(s, user_wei, conv_wei);
}
// prepare convolution destination
memory conv_dst = user_dst;
if (conv_pd.dst_desc() != user_dst.get_desc())
conv_dst = memory(conv_pd.dst_desc(), eng);
// [Conditionally create and execute reorder prims]
// [Create conv_primitive implementation2]
// create convolution primitive
auto conv = convolution_forward(conv_pd);
// [Create conv_primitive implementation2]
// [Add to stream implementation2]
// execute convolution by adding it to the stream s
conv.execute(s,
{{DNNL_ARG_SRC, conv_src}, {DNNL_ARG_WEIGHTS, conv_wei},
{DNNL_ARG_DST, conv_dst}});
// [Add to stream implementation2]
// [Create and execute relu implementation2]
// execute relu (on convolution's destination format, whatever it is)
create_and_execute_relu(conv_dst, eng, s);
// [Create and execute relu implementation2]
if (conv_pd.dst_desc() != user_dst.get_desc()) {
auto r_pd = reorder::primitive_desc(conv_dst, user_dst);
reorder(r_pd).execute(s, conv_dst, user_dst);
}
s.wait();
// reorder data to the user's format if needed.
}
// Implementation for convolution on blocked format for data and
// weights and the relu operation fused via a post-op attribute added to the
// convolution prim_descriptor
void conv_relu_fused(memory user_src, memory user_wei, memory user_dst,
const engine &eng, stream &s) {
// copy the dimensions data type from user's memory and set format tag
// to any to allow convolution to pick the best implementation
auto conv_src_md = memory::desc(user_src.get_desc().get_dims(),
user_src.get_desc().get_data_type(), memory::format_tag::any);
auto conv_wei_md = memory::desc(user_wei.get_desc().get_dims(),
user_wei.get_desc().get_data_type(), memory::format_tag::any);
auto conv_dst_md = memory::desc(user_dst.get_desc().get_dims(),
user_dst.get_desc().get_data_type(), memory::format_tag::any);
// Next the convolution prim descriptor is created, which inherits the ReLU
// [Create prim_desc with attr]
// create an attribute for fused relu
auto attr = create_attr_with_relu_post_op();
// create a convolution primitive descriptor
auto conv_pd = convolution_forward::primitive_desc(eng,
prop_kind::forward_inference, algorithm::convolution_direct,
conv_src_md, conv_wei_md, conv_dst_md, strides, padding, padding,
attr);
// [Create prim_desc with attr]
// prepare convolution source
memory conv_src = user_src;
if (conv_pd.src_desc() != user_src.get_desc()) {
conv_src = memory(conv_pd.src_desc(), eng);
auto r_pd = reorder::primitive_desc(user_src, conv_src);
reorder(r_pd).execute(s, user_src, conv_src);
}
// prepare convolution weights
memory conv_wei = user_wei;
if (conv_pd.weights_desc() != user_wei.get_desc()) {
conv_wei = memory(conv_pd.weights_desc(), eng);
auto r_pd = reorder::primitive_desc(user_wei, conv_wei);
reorder(r_pd).execute(s, user_wei, conv_wei);
}
// prepare convolution destination
memory conv_dst = user_dst;
if (conv_pd.dst_desc() != user_dst.get_desc())
conv_dst = memory(conv_pd.dst_desc(), eng);
// [Create conv_primitive implementation3]
// create convolution primitive
auto conv = convolution_forward(conv_pd);
// [Create conv_primitive implementation3]
// [Add to stream implementation3]
// execute convolution by adding it to the stream s
conv.execute(s,
{{DNNL_ARG_SRC, conv_src}, {DNNL_ARG_WEIGHTS, conv_wei},
{DNNL_ARG_DST, conv_dst}});
// [Add to stream implementation3]
// reorder data to user's format if needed
if (conv_pd.dst_desc() != user_dst.get_desc()) {
auto r_pd = reorder::primitive_desc(conv_dst, user_dst);
reorder(r_pd).execute(s, conv_dst, user_dst);
}
s.wait();
}
void performance_profiling(engine::kind engine_kind, int argc, char **argv) {
// Initialize engine
engine eng(engine_kind, 0);
// Initialize stream
stream s(eng);
// [Set dimensions]
// set dimensions for synthetic data and weights
const memory::dim BATCH = 128;
const memory::dim IC = 3, OC = 96;
const memory::dim IH = 227, KH = 11, OH = 55;
const memory::dim IW = 227, KW = 11, OW = 55;
// [Set dimensions]
// [Create memory objects]
// create oneDNN memory objects for user's tensors (in nchw and oihw formats)
auto user_src = memory({{BATCH, IC, IH, IW}, memory::data_type::f32,
memory::format_tag::nchw},
eng);
auto user_wei = memory({{OC, IC, KH, KW}, memory::data_type::f32,
memory::format_tag::oihw},
eng);
auto user_dst = memory({{BATCH, OC, OH, OW}, memory::data_type::f32,
memory::format_tag::nchw},
eng);
// [Create memory objects]
// fill source, destination, and weights with synthetic data
init_data(user_src, 1);
init_data(user_dst, -1);
init_data(user_wei, .5);
// set implementation ("naive"||"blocked"||"fused") setting implementation
// to "validation" will run all implementations
std::string implementation;
if (argc <= 2)
implementation = "validation";
else if (argc == 3)
implementation = argv[2];
if (!(implementation == "validation" || implementation == "naive"
|| implementation == "blocked" || implementation == "fused")) {
std::cout << "The implementation can be one of:\n";
std::cout << " - naive: NCHW format without fusion\n";
std::cout << " - blocked: format propagation without fusion\n";
std::cout << " - fused: format propagation with fusion\n";
std::cout << " - validation: runs all implementations\n\n";
std::cout << "Validation will run if no parameters are specified.\n\n";
throw std::invalid_argument("Incorrect input arguments.");
}
if (implementation == "naive" || implementation == "validation") {
std::cout << "Implementation: naive.\n";
// run conv + relu w/o fusing
conv_relu_naive(user_src, user_wei, user_dst, eng, s);
std::cout << "Conv + ReLU w/ nchw format completed.\n";
}
if (implementation == "blocked" || implementation == "validation") {
std::cout << "Implementation: blocked.\n";
// run conv + relu w/o fusing
conv_relu_blocked(user_src, user_wei, user_dst, eng, s);
std::cout << "Conv + ReLU w/ blocked format completed.\n";
}
if (implementation == "fused" || implementation == "validation") {
std::cout << "Implementation: fused.\n";
// run conv + relu w/ fusing
conv_relu_fused(user_src, user_wei, user_dst, eng, s);
std::cout << "Conv + ReLU w/ fusing completed.\n";
}
}
int main(int argc, char **argv) {
engine::kind engine_kind = parse_engine_kind(argc, argv, 1);
return handle_example_errors(
performance_profiling, engine_kind, argc, argv);
}