/* Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved. 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 #include #include #include #include #include #include // NOLINT #include #include "gflags/gflags.h" #include "gtest/gtest.h" #include "paddle/fluid/inference/tests/test_helper.h" DEFINE_string(dirname, "", "Directory of the inference model."); DEFINE_int32(repeat, 100, "Running the inference program repeat times"); DEFINE_bool(use_mkldnn, false, "Use MKLDNN to run inference"); DEFINE_bool(prepare_vars, true, "Prepare variables before executor"); DEFINE_bool(prepare_context, true, "Prepare Context before executor"); DEFINE_int32(num_threads, 1, "Number of threads should be used"); inline double get_current_ms() { struct timeval time; gettimeofday(&time, NULL); return 1e+3 * time.tv_sec + 1e-3 * time.tv_usec; } // return size of total words size_t read_datasets(std::vector* out, const std::string& filename) { using namespace std; // NOLINT size_t sz = 0; fstream fin(filename); string line; out->clear(); while (getline(fin, line)) { istringstream iss(line); vector ids; string field; while (getline(iss, field, ' ')) { ids.push_back(stoi(field)); } if (ids.size() >= 1024 ) { continue; } paddle::framework::LoDTensor words; paddle::framework::LoD lod{{0, ids.size()}}; words.set_lod(lod); int64_t* pdata = words.mutable_data( {static_cast(ids.size()), 1}, paddle::platform::CPUPlace()); memcpy(pdata, ids.data(), words.numel() * sizeof(int64_t)); out->emplace_back(words); sz += ids.size(); } return sz; } void test_multi_threads() { /* size_t jobs_per_thread = std::min(inputdatas.size() / FLAGS_num_threads, inputdatas.size()); std::vector workers(FLAGS_num_threads, jobs_per_thread); workers[FLAGS_num_threads - 1] += inputdatas.size() % FLAGS_num_threads; std::vector> infer_threads; for (size_t i = 0; i < workers.size(); ++i) { infer_threads.emplace_back(new std::thread([&, i]() { size_t start = i * jobs_per_thread; for (size_t j = start; j < start + workers[i]; ++j ) { // 0. Call `paddle::framework::InitDevices()` initialize all the devices // In unittests, this is done in paddle/testing/paddle_gtest_main.cc paddle::framework::LoDTensor words; auto& srcdata = inputdatas[j]; paddle::framework::LoD lod{{0, srcdata.size()}}; words.set_lod(lod); int64_t* pdata = words.mutable_data( {static_cast(srcdata.size()), 1}, paddle::platform::CPUPlace()); memcpy(pdata, srcdata.data(), words.numel() * sizeof(int64_t)); LOG(INFO) << "thread id: " << i << ", words size:" << words.numel(); std::vector cpu_feeds; cpu_feeds.push_back(&words); paddle::framework::LoDTensor output1; std::vector cpu_fetchs1; cpu_fetchs1.push_back(&output1); // Run inference on CPU if (FLAGS_prepare_vars) { if (FLAGS_prepare_context) { TestInference( dirname, cpu_feeds, cpu_fetchs1, FLAGS_repeat, model_combined, FLAGS_use_mkldnn); } else { TestInference( dirname, cpu_feeds, cpu_fetchs1, FLAGS_repeat, model_combined, FLAGS_use_mkldnn); } } else { if (FLAGS_prepare_context) { TestInference( dirname, cpu_feeds, cpu_fetchs1, FLAGS_repeat, model_combined, FLAGS_use_mkldnn); } else { TestInference( dirname, cpu_feeds, cpu_fetchs1, FLAGS_repeat, model_combined, FLAGS_use_mkldnn); } } //LOG(INFO) << output1.lod(); //LOG(INFO) << output1.dims(); } })); } auto start_ms = get_current_ms(); for (int i = 0; i < FLAGS_num_threads; ++i) { infer_threads[i]->join(); } auto stop_ms = get_current_ms(); LOG(INFO) << "total: " << stop_ms - start_ms << " ms";*/ } TEST(inference, nlp) { if (FLAGS_dirname.empty()) { LOG(FATAL) << "Usage: ./example --dirname=path/to/your/model"; } LOG(INFO) << "FLAGS_dirname: " << FLAGS_dirname << std::endl; std::string dirname = FLAGS_dirname; std::vector datasets; size_t num_total_words = read_datasets(&datasets, "/home/tangjian/paddle-tj/out.ids.txt"); LOG(INFO) << "Number of dataset samples(seq len<1024): " << datasets.size(); LOG(INFO) << "Total number of words: " << num_total_words; const bool model_combined = false; // 0. Call `paddle::framework::InitDevices()` initialize all the devices // 1. Define place, executor, scope auto place = paddle::platform::CPUPlace(); auto executor = paddle::framework::Executor(place); auto* scope = new paddle::framework::Scope(); // 2. Initialize the inference_program and load parameters std::unique_ptr inference_program; inference_program = InitProgram(&executor, scope, dirname, model_combined); if (FLAGS_use_mkldnn) { EnableMKLDNN(inference_program); } if (FLAGS_num_threads > 1) { test_multi_threads(); } else { if (FLAGS_prepare_vars) { executor.CreateVariables(*inference_program, scope, 0); } // always prepare context and burning first time std::unique_ptr ctx; ctx = executor.Prepare(*inference_program, 0); // preapre fetch const std::vector& fetch_target_names = inference_program->GetFetchTargetNames(); PADDLE_ENFORCE_EQ(fetch_target_names.size(), 1UL); std::map fetch_targets; paddle::framework::LoDTensor outtensor; fetch_targets[fetch_target_names[0]] = &outtensor; // prepare feed const std::vector& feed_target_names = inference_program->GetFeedTargetNames(); PADDLE_ENFORCE_EQ(feed_target_names.size(), 1UL); std::map feed_targets; // for data and run auto start_ms = get_current_ms(); for (size_t i = 0; i < datasets.size(); ++i) { feed_targets[feed_target_names[0]] = &(datasets[i]); executor.RunPreparedContext(ctx.get(), scope, &feed_targets, &fetch_targets, !FLAGS_prepare_vars); } auto stop_ms = get_current_ms(); LOG(INFO) << "Total infer time: " << (stop_ms - start_ms) / 1000.0 / 60 << " min, avg time per seq: " << (stop_ms - start_ms) / datasets.size() << " ms"; // { // just for test // auto* scope = new paddle::framework::Scope(); // paddle::framework::LoDTensor outtensor; // TestInference( // dirname, {&(datasets[0])}, {&outtensor}, FLAGS_repeat, model_combined, // false); // delete scope; // } } delete scope; }