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Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/66123 Some models may take in a list of tensors as inputs, thus the bundled inputs will contain `IValues` that are of the type `c10::List`. For Vulkan models, every tensor in the `IValue` list has to be converted to a vulkan tensor first, and this case is not currently handled by the Vulkan model wrapper in the benchmark binary. This diff introduces `IValue` type checking to the input processor of the Vulkan model wrapper, and adds support for Tensor and List types. Test Plan: ``` # Build the binary cd ~/fbsource buck build -c ndk.custom_libcxx=false -c pt.enable_qpl=0 //xplat/caffe2:ptmobile_compareAndroid\#android-arm64 --show-output # Push it to the device adb push buck-out/gen/xplat/caffe2/ptmobile_compareAndroid\#android-arm64 /data/local/tmp/compare_models # Run the benchmark binary BENCH_CMD="/data/local/tmp/compare_models" BENCH_CMD+=" --model=$PATH_TO_MODEL" BENCH_CMD+=" --refmodel=$PATH_TO_REFERENCE_MODEL" BENCH_CMD+=" --input_type=float --input_dims=$MODEL_INPUT_SIZE" BENCH_CMD+=" --iter=100" BENCH_CMD+=" --tolerance 1e-5" ``` Reviewed By: beback4u Differential Revision: D31276862 fbshipit-source-id: 1d9abf958963da6ecad641202f0458402bee5ced
324 lines
10 KiB
C++
324 lines
10 KiB
C++
/**
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* Copyright (c) 2016-present, Facebook, Inc.
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*
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* Licensed under the Apache License, Version 2.0 (the "License");
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* you may not use this file except in compliance with the License.
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* You may obtain a copy of the License at
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*
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* http://www.apache.org/licenses/LICENSE-2.0
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*
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* Unless required by applicable law or agreed to in writing, software
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* distributed under the License is distributed on an "AS IS" BASIS,
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* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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* See the License for the specific language governing permissions and
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* limitations under the License.
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*/
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#include <string>
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#include <vector>
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#include <ATen/ATen.h>
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#include "caffe2/core/timer.h"
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#include "caffe2/utils/string_utils.h"
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#include <torch/csrc/autograd/grad_mode.h>
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#include <torch/csrc/jit/mobile/module.h>
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#include <torch/csrc/jit/mobile/import.h>
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#include <torch/csrc/jit/serialization/import.h>
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#include <torch/script.h>
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#include <c10/mobile/CPUCachingAllocator.h>
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#include <chrono>
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using namespace std::chrono;
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C10_DEFINE_string(model, "", "The given torch script model to benchmark.");
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C10_DEFINE_string(
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input_dims,
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"",
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"Alternate to input_files, if all inputs are simple "
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"float TensorCPUs, specify the dimension using comma "
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"separated numbers. If multiple input needed, use "
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"semicolon to separate the dimension of different "
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"tensors.");
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C10_DEFINE_string(input_type, "", "Input type (uint8_t/float)");
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C10_DEFINE_string(
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input_memory_format,
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"contiguous_format",
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"Input memory format (contiguous_format/channels_last)");
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C10_DEFINE_bool(
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no_inputs,
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false,
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"Whether the model has any input. Will ignore other input arguments if true");
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C10_DEFINE_bool(
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use_caching_allocator,
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false,
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"Whether to cache allocations between inference iterations");
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C10_DEFINE_int(
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use_bundled_input,
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-1,
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"If set, benchmark will expect the model to have bundled inputs "
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"and will run on the input with this index. ");
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C10_DEFINE_bool(
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print_output,
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false,
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"Whether to print output with all one input tensor.");
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C10_DEFINE_int(warmup, 0, "The number of iterations to warm up.");
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C10_DEFINE_int(iter, 10, "The number of iterations to run.");
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C10_DEFINE_bool(
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report_pep,
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false,
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"Whether to print performance stats for AI-PEP.");
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C10_DEFINE_int(pytext_len, 0, "Length of input sequence.");
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C10_DEFINE_bool(vulkan, false, "Whether to use Vulkan backend (GPU).");
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namespace {
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std::vector<std::string>
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split(char separator, const std::string& string, bool ignore_empty = true) {
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std::vector<std::string> pieces;
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std::stringstream ss(string);
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std::string item;
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while (getline(ss, item, separator)) {
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if (!ignore_empty || !item.empty()) {
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pieces.push_back(std::move(item));
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}
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}
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return pieces;
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}
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std::vector<c10::IValue> create_inputs() {
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if (FLAGS_no_inputs) {
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return {};
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}
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if (FLAGS_use_bundled_input >= 0) {
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// Need to get these after the model is loaded.
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return {};
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}
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CAFFE_ENFORCE_GE(FLAGS_input_dims.size(), 0, "Input dims must be specified.");
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CAFFE_ENFORCE_GE(FLAGS_input_type.size(), 0, "Input type must be specified.");
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std::vector<std::string> input_dims_list = split(';', FLAGS_input_dims);
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std::vector<std::string> input_type_list = split(';', FLAGS_input_type);
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std::vector<std::string> input_memory_format_list =
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split(';', FLAGS_input_memory_format);
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CAFFE_ENFORCE_EQ(
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input_dims_list.size(),
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input_type_list.size(),
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"Input dims and type should have the same number of items.");
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CAFFE_ENFORCE_EQ(
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input_dims_list.size(),
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input_memory_format_list.size(),
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"Input dims and format should have the same number of items.");
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std::vector<c10::IValue> inputs;
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for (size_t i = 0; i < input_dims_list.size(); ++i) {
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auto input_dims_str = split(',', input_dims_list[i]);
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std::vector<int64_t> input_dims;
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for (const auto& s : input_dims_str) {
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input_dims.push_back(c10::stoi(s));
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}
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at::ScalarType input_type;
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if (input_type_list[i] == "float") {
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input_type = at::ScalarType::Float;
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} else if (input_type_list[i] == "uint8_t") {
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input_type = at::ScalarType::Byte;
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} else if (input_type_list[i] == "int64") {
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input_type = at::ScalarType::Long;
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} else {
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CAFFE_THROW("Unsupported input type: ", input_type_list[i]);
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}
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at::MemoryFormat input_memory_format;
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if (input_memory_format_list[i] == "channels_last") {
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if (input_dims.size() != 4u) {
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CAFFE_THROW(
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"channels_last memory format only available on 4D tensors!");
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}
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input_memory_format = at::MemoryFormat::ChannelsLast;
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} else if (input_memory_format_list[i] == "contiguous_format") {
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input_memory_format = at::MemoryFormat::Contiguous;
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} else {
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CAFFE_THROW(
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"Unsupported input memory format: ", input_memory_format_list[i]);
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}
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inputs.push_back(
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torch::ones(
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input_dims,
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at::TensorOptions(input_type).
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memory_format(input_memory_format)));
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}
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if (FLAGS_pytext_len > 0) {
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auto stensor = FLAGS_pytext_len * at::ones({1}, torch::kI64);
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inputs.push_back(stensor);
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}
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return inputs;
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}
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template<class T>
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class Runner {
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public:
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virtual ~Runner() = default;
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virtual c10::IValue run(
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T& module,
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const std::vector<c10::IValue>& inputs) {
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return module.forward(inputs);
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}
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};
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template<class T>
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class vkRunner final : public Runner<T> {
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public:
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virtual ~vkRunner() = default;
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virtual c10::IValue run(
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T& module,
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const std::vector<c10::IValue>& inputs) override {
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// Upload the input tensor(s) to GPU memory.
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inputs_.clear();
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inputs_.reserve(inputs.size());
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for (const auto& input : inputs) {
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if (input.isTensor()) {
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inputs_.emplace_back(input.toTensor().vulkan());
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}
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else if (input.isList()) {
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const c10::List<c10::IValue> input_as_list = input.toList();
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c10::List<at::Tensor> input_vk_list;
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input_vk_list.reserve(input_as_list.size());
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for (int i=0; i < input_as_list.size(); ++i) {
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const c10::IValue element = input_as_list.get(i);
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if (element.isTensor()) {
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input_vk_list.emplace_back(element.toTensor().vulkan());
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}
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else {
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CAFFE_THROW("Input of type c10::List must only contain Tensors!");
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}
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}
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inputs_.emplace_back(c10::IValue(input_vk_list));
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}
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else {
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CAFFE_THROW("Inputs must only contain IValues of type c10::Tensor or c10::List!");
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}
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}
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// Run, and download the output tensor to system memory.
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return module.forward(inputs_).toTensor().cpu();
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}
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private:
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std::vector<c10::IValue> inputs_;
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};
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} // namespace
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int main(int argc, char** argv) {
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c10::SetUsageMessage(
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"Run speed benchmark for pytorch model.\n"
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"Example usage:\n"
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"./speed_benchmark_torch"
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" --model=<model_file>"
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" --use_bundled_input=0"
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" --warmup=5"
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" --iter=20");
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if (!c10::ParseCommandLineFlags(&argc, &argv)) {
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std::cerr << "Failed to parse command line flags!" << std::endl;
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return 1;
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}
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std::vector<c10::IValue> inputs = create_inputs();
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c10::InferenceMode mode;
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#if BUILD_LITE_INTERPRETER
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auto module = torch::jit::_load_for_mobile(FLAGS_model);
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#else
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torch::jit::GraphOptimizerEnabledGuard no_optimizer_guard(false);
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auto module = torch::jit::load(FLAGS_model);
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#endif
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if (FLAGS_use_bundled_input >= 0) {
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auto get_method = module.find_method("get_all_bundled_inputs");
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if (!get_method) {
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std::cerr << "Model does not have bundled inputs. Before saving," << std::endl
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<< "use torch.utils.bundled_inputs.augment_model_with_bundled_inputs." << std::endl;
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return 1;
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}
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auto all_inputs = (*get_method)({}).toList();
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if (FLAGS_use_bundled_input >= all_inputs.size()) {
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// NOTE: This check is only to make the error message nicer.
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// The get call below does internal bounds checking.
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std::cerr << "Model has only " << all_inputs.size() << " bundled inputs." << std::endl;
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return 1;
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}
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inputs = all_inputs.get(FLAGS_use_bundled_input).toTuple()->elements();
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}
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#ifdef BUILD_LITE_INTERPRETER
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using ModuleType = torch::jit::mobile::Module;
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#else
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using ModuleType = torch::jit::Module;
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#endif
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const auto runner = FLAGS_vulkan ? std::make_unique<vkRunner<ModuleType>>()
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: std::make_unique<Runner<ModuleType>>();
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#ifndef BUILD_LITE_INTERPRETER
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module.eval();
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#endif
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if (FLAGS_print_output) {
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std::cout << runner->run(module, inputs) << std::endl;
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}
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c10::CPUCachingAllocator caching_allocator;
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c10::optional<c10::WithCPUCachingAllocatorGuard> caching_allocator_guard;
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if (FLAGS_use_caching_allocator) {
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caching_allocator_guard.emplace(&caching_allocator);
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}
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std::cout << "Starting benchmark." << std::endl;
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std::cout << "Running warmup runs." << std::endl;
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CAFFE_ENFORCE(
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FLAGS_warmup >= 0,
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"Number of warm up runs should be non negative, provided ",
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FLAGS_warmup,
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".");
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for (int i = 0; i < FLAGS_warmup; ++i) {
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runner->run(module, inputs);
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}
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std::cout << "Main runs." << std::endl;
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CAFFE_ENFORCE(
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FLAGS_iter >= 0,
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"Number of main runs should be non negative, provided ",
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FLAGS_iter,
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".");
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caffe2::Timer timer;
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std::vector<float> times;
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auto micros = timer.MicroSeconds();
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for (int i = 0; i < FLAGS_iter; ++i) {
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auto start = high_resolution_clock::now();
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runner->run(module, inputs);
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auto stop = high_resolution_clock::now();
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auto duration = duration_cast<microseconds>(stop - start);
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times.push_back(duration.count());
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}
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micros = timer.MicroSeconds();
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if (FLAGS_report_pep) {
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for (auto t : times) {
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std::cout << "PyTorchObserver {\"type\": \"NET\", \"unit\": \"us\", \"metric\": \"latency\", \"value\": \"" << t << "\"}" << std::endl;
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}
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}
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std::cout << "Main run finished. Microseconds per iter: "
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<< micros / FLAGS_iter
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<< ". Iters per second: " << 1000.0 * 1000 * FLAGS_iter / micros
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<< std::endl;
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return 0;
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}
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