/* 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 "paddle/fluid/framework/convert_utils.h" #include "paddle/fluid/framework/data_type.h" #include "paddle/fluid/framework/device_worker.h" #include "paddle/fluid/operators/controlflow/conditional_block_op_helper.h" #include "paddle/fluid/platform/cpu_helper.h" #include "paddle/fluid/platform/lodtensor_printer.h" #if defined PADDLE_WITH_PSCORE #include "paddle/fluid/distributed/ps/service/communicator/communicator.h" #endif namespace paddle { namespace framework { void HogwildWorker::Initialize(const TrainerDesc &desc) { fetch_config_ = desc.fetch_config(); param_ = desc.hogwild_param(); skip_ops_.resize(param_.skip_ops_size()); for (int i = 0; i < param_.skip_ops_size(); ++i) { skip_ops_[i] = param_.skip_ops(i); } use_cvm_ = desc.use_cvm(); thread_barrier_ = desc.thread_barrier(); for (int i = 0; i < param_.stat_var_names_size(); ++i) { stat_var_name_map_[param_.stat_var_names(i)] = 1; } } void HogwildWorker::CreateThreadOperators(const ProgramDesc &program) { auto &block = program.Block(0); op_names_.clear(); for (auto &op_desc : block.AllOps()) { std::unique_ptr local_op = OpRegistry::CreateOp(*op_desc); op_names_.push_back(op_desc->Type()); OperatorBase *local_op_ptr = local_op.release(); ops_.push_back(local_op_ptr); continue; } operators::PrepareSafeEagerDeletionOnConditionalOpAndConditionalGradOp( program, 0, ops_); } void HogwildWorker::CreateThreadScope(const ProgramDesc &program) { auto &block = program.Block(0); PADDLE_ENFORCE_NOT_NULL( root_scope_, platform::errors::NotFound( "Root scope should be set before creating thread scope.")); thread_scope_ = &root_scope_->NewScope(); for (auto &var : block.AllVars()) { all_param_.push_back(var->Name()); if (var->Persistable()) { auto *ptr = root_scope_->Var(var->Name()); InitializeVariable(ptr, var->GetType()); if (stat_var_name_map_.find(var->Name()) != stat_var_name_map_.end() && thread_id_ != 0) { int tensor_dim = root_scope_->FindVar(var->Name())->GetMutable()->numel(); auto *ptr1 = thread_scope_->Var(var->Name()); InitializeVariable(ptr1, var->GetType()); LoDTensor *thread_tensor = ptr1->GetMutable(); LoDTensor *root_tensor = root_scope_->FindVar(var->Name())->GetMutable(); #define MemsetCallback(cpp_type, proto_type) \ do { \ if (framework::TransToProtoVarType(root_tensor->dtype()) == proto_type) { \ SetZero(thread_tensor, root_tensor, tensor_dim); \ } \ } while (0) _ForEachDataType_(MemsetCallback); } } else { auto *ptr = thread_scope_->Var(var->Name()); InitializeVariable(ptr, var->GetType()); } } } template void HogwildWorker::SetZero(LoDTensor *tensor, LoDTensor *root_tensor, int tensor_dim) { T *ptr = tensor->mutable_data(root_tensor->dims(), platform::CPUPlace()); memset(ptr, 0, sizeof(T) * tensor_dim); } void HogwildWorker::BindingDataFeedMemory() { const std::vector &input_feed = device_reader_->GetUseSlotAlias(); for (auto name : input_feed) { device_reader_->AddFeedVar(thread_scope_->FindVar(name), name); } } void HogwildWorker::CreateDeviceResource(const ProgramDesc &main_prog) { CreateThreadScope(main_prog); CreateThreadOperators(main_prog); } void HogwildWorker::TrainFilesWithProfiler() { platform::SetNumThreads(1); device_reader_->Start(); std::vector op_total_time; std::vector op_name; for (auto &op : ops_) { op_name.push_back(op->Type()); } op_total_time.resize(ops_.size()); for (size_t i = 0; i < op_total_time.size(); ++i) { op_total_time[i] = 0.0; } platform::Timer timeline; double total_time = 0.0; double read_time = 0.0; int cur_batch; int batch_cnt = 0; timeline.Start(); uint64_t total_inst = 0; while ((cur_batch = device_reader_->Next()) > 0) { VLOG(3) << "read a batch in thread " << thread_id_; timeline.Pause(); read_time += timeline.ElapsedSec(); total_time += timeline.ElapsedSec(); for (size_t i = 0; i < ops_.size(); ++i) { bool need_skip = false; for (auto t = 0u; t < skip_ops_.size(); ++t) { if (ops_[i]->Type().find(skip_ops_[t]) != std::string::npos) { need_skip = true; break; } } timeline.Start(); VLOG(3) << "Going to run op " << op_name[i]; if (!need_skip) { ops_[i]->Run(*thread_scope_, place_); #ifdef PADDLE_WITH_HETERPS dev_ctx_->Wait(); #endif } VLOG(3) << "Op " << op_name[i] << " Finished"; timeline.Pause(); op_total_time[i] += timeline.ElapsedSec(); total_time += timeline.ElapsedSec(); } if (need_dump_field_) { DumpField(*thread_scope_, dump_mode_, dump_interval_); } if (need_dump_param_ && thread_id_ == 0) { DumpParam(*thread_scope_, batch_cnt); } total_inst += cur_batch; ++batch_cnt; PrintFetchVars(); #ifdef PADDLE_WITH_HETERPS dev_ctx_->Wait(); VLOG(1) << "GpuPs worker " << thread_id_ << " train cost " << total_time << " seconds, ins_num: " << total_inst; for (size_t i = 0; i < op_name.size(); ++i) { VLOG(1) << "card:" << thread_id_ << ", op: " << op_name[i] << ", mean time: " << op_total_time[i] / total_inst << "s, totol time:" << op_total_time[i] << "sec"; } #else if (thread_id_ == 0) { if (batch_cnt > 0 && batch_cnt % 100 == 0) { for (size_t i = 0; i < ops_.size(); ++i) { fprintf(stderr, "op_name:[%zu][%s], op_mean_time:[%fs]\n", i, op_name[i].c_str(), op_total_time[i] / batch_cnt); } fprintf(stderr, "mean read time: %fs\n", read_time / batch_cnt); fprintf(stderr, "IO percent: %f\n", read_time / total_time * 100); fprintf(stderr, "%6.2f instances/s\n", total_inst / total_time); } } #endif thread_scope_->DropKids(); timeline.Start(); } if (need_dump_field_ || need_dump_param_) { writer_.Flush(); } #if defined PADDLE_WITH_PSCORE if (thread_barrier_) { paddle::distributed::Communicator::GetInstance()->BarrierTriggerDecrement(); } #endif } void HogwildWorker::TrainFiles() { platform::SetNumThreads(1); platform::Timer timeline; timeline.Start(); int total_ins_num = 0; // how to accumulate fetched values here device_reader_->Start(); int cur_batch; int batch_cnt = 0; #if defined(PADDLE_WITH_HETERPS) && defined(PADDLE_WITH_CUDA) platform::SetDeviceId(thread_id_); #endif while ((cur_batch = device_reader_->Next()) > 0) { for (auto &op : ops_) { bool need_skip = false; for (auto t = 0u; t < skip_ops_.size(); ++t) { if (op->Type().find(skip_ops_[t]) != std::string::npos) { need_skip = true; break; } } if (!need_skip) { op->Run(*thread_scope_, place_); } } if (need_dump_field_) { DumpField(*thread_scope_, dump_mode_, dump_interval_); } if (need_dump_param_ && thread_id_ == 0) { DumpParam(*thread_scope_, batch_cnt); } total_ins_num += cur_batch; ++batch_cnt; PrintFetchVars(); thread_scope_->DropKids(); #ifdef PADDLE_WITH_HETERPS dev_ctx_->Wait(); #endif } timeline.Pause(); VLOG(1) << "worker " << thread_id_ << " train cost " << timeline.ElapsedSec() << " seconds, ins_num: " << total_ins_num; if (need_dump_field_ || need_dump_param_) { writer_.Flush(); } #if defined PADDLE_WITH_PSCORE if (thread_barrier_) { paddle::distributed::Communicator::GetInstance()->BarrierTriggerDecrement(); } #endif } void HogwildWorker::PrintFetchVars() { // call count batch_num_++; int batch_per_print = fetch_config_.print_period(); int fetch_var_num = fetch_config_.fetch_var_names_size(); if (fetch_var_num == 0) { return; } if (thread_id_ == 0 && batch_num_ % batch_per_print == 0) { time_t curtime; time(&curtime); char mbstr[80]; std::strftime( mbstr, sizeof(mbstr), "%Y-%m-%d %H:%M:%S", std::localtime(&curtime)); std::stringstream ss; ss << "time: [" << mbstr << "], "; ss << "batch: [" << batch_num_ << "], "; for (int i = 0; i < fetch_var_num; ++i) { platform::PrintVar(thread_scope_, fetch_config_.fetch_var_names(i), fetch_config_.fetch_var_str_format(i), &ss); if (i < fetch_var_num - 1) { ss << ", "; } } std::cout << ss.str() << std::endl; } } } // end namespace framework } // end namespace paddle