// Copyright (c) 2019 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. /* 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 "paddle/fluid/framework/fleet/fleet_wrapper.h" #include "glog/logging.h" #include "paddle/fluid/framework/op_registry.h" namespace paddle { namespace framework { const uint32_t MAX_FEASIGN_NUM = 1024 * 100 * 100; std::shared_ptr FleetWrapper::s_instance_ = NULL; bool FleetWrapper::is_initialized_ = false; std::mutex FleetWrapper::ins_mutex; #ifdef PADDLE_WITH_PSLIB std::shared_ptr FleetWrapper::pslib_ptr_ = NULL; #endif void FleetWrapper::SetClient2ClientConfig(int request_timeout_ms, int connect_timeout_ms, int max_retry) { client2client_request_timeout_ms_ = request_timeout_ms; client2client_connect_timeout_ms_ = connect_timeout_ms; client2client_max_retry_ = max_retry; } void FleetWrapper::InitServer(const std::string& dist_desc, int index) { #ifdef PADDLE_WITH_PSLIB if (!is_initialized_) { VLOG(3) << "Going to init server"; pslib_ptr_ = std::shared_ptr( new paddle::distributed::PSlib()); pslib_ptr_->init_server(dist_desc, index); is_initialized_ = true; } else { VLOG(3) << "Server can be initialized only once"; } #endif } void FleetWrapper::InitWorker(const std::string& dist_desc, const std::vector& host_sign_list, int node_num, int index) { #ifdef PADDLE_WITH_PSLIB if (!is_initialized_) { VLOG(0) << "Going to init worker"; pslib_ptr_ = std::shared_ptr( new paddle::distributed::PSlib()); pslib_ptr_->init_worker(dist_desc, const_cast(host_sign_list.data()), node_num, index); dist_desc_ = dist_desc; is_initialized_ = true; } else { VLOG(3) << "Worker can be initialized only once"; } #endif } void FleetWrapper::StopServer() { #ifdef PADDLE_WITH_PSLIB VLOG(3) << "Going to stop server"; pslib_ptr_->stop_server(); #endif } void FleetWrapper::FinalizeWorker() { #ifdef PADDLE_WITH_PSLIB VLOG(3) << "Going to finalize worker"; pslib_ptr_->finalize_worker(); #endif } uint64_t FleetWrapper::RunServer() { #ifdef PADDLE_WITH_PSLIB VLOG(3) << "Going to run server"; return pslib_ptr_->run_server(); #else return 0; #endif } uint64_t FleetWrapper::RunServer(const std::string& ip, uint32_t port) { #ifdef PADDLE_WITH_PSLIB VLOG(3) << "Going to run server with ip " << ip << " port " << port; auto ret = pslib_ptr_->run_server(ip, port); return ret; #else return 0; #endif } void FleetWrapper::GatherServers(const std::vector& host_sign_list, int node_num) { #ifdef PADDLE_WITH_PSLIB VLOG(3) << "Going to gather server ips"; pslib_ptr_->gather_servers(const_cast(host_sign_list.data()), node_num); #endif } void FleetWrapper::GatherClients(const std::vector& host_sign_list) { #ifdef PADDLE_WITH_PSLIB VLOG(0) << "Going to gather client ips"; size_t len = host_sign_list.size(); pslib_ptr_->gather_clients(const_cast(host_sign_list.data()), len); #endif } std::vector FleetWrapper::GetClientsInfo() { #ifdef PADDLE_WITH_PSLIB VLOG(3) << "Going to get client info"; return pslib_ptr_->get_client_info(); #endif return std::vector(); } void FleetWrapper::CreateClient2ClientConnection() { #ifdef PADDLE_WITH_PSLIB VLOG(0) << "Going to create client2client connection"; pslib_ptr_->create_client2client_connection(client2client_request_timeout_ms_, client2client_connect_timeout_ms_, client2client_max_retry_); #endif } #ifdef PADDLE_WITH_PSLIB void FleetWrapper::HeterPullSparseVars( int workerid, std::shared_ptr task, const uint64_t table_id, const std::vector& var_names, int fea_value_dim, const std::vector& var_emb_names) { std::vector<::std::future> pull_sparse_status; pull_sparse_status.resize(0); auto& scope = *(task->scope_); auto& fea_keys = (task->features_)[table_id]; auto& fea_values = (task->feature_values_)[table_id]; fea_keys.clear(); for (size_t var_index = 0; var_index < var_names.size(); ++var_index) { const std::string& name = var_names[var_index]; Variable* var = scope.FindVar(name); if (var == nullptr) { continue; } phi::DenseTensor* tensor = var->GetMutable(); CHECK(tensor != nullptr) << "tensor of var " << name << " is null"; int64_t* ids = tensor->data(); size_t len = tensor->numel(); // skip slots which do not have embedding const std::string& emb_name = var_emb_names[var_index]; Variable* emb_var = scope.FindVar(emb_name); if (emb_var == nullptr) { continue; } for (auto i = 0u; i < len; ++i) { if (ids[i] == 0u) { continue; } fea_keys.push_back(static_cast(ids[i])); } } fea_values.resize(fea_keys.size() + 1); for (auto& t : fea_values) { t.resize(fea_value_dim); } std::vector pull_result_ptr; for (auto& t : fea_values) { pull_result_ptr.push_back(t.data()); } auto status = pslib_ptr_->_worker_ptr->heter_pull_sparse(workerid, pull_result_ptr.data(), table_id, fea_keys.data(), fea_keys.size(), task->taskid_); pull_sparse_status.push_back(std::move(status)); for (auto& t : pull_sparse_status) { t.wait(); auto status = t.get(); if (status != 0) { LOG(ERROR) << "fleet pull sparse failed, status[" << status << "]"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } } } void FleetWrapper::HeterPushSparseVars( std::shared_ptr task, const Scope& scope, const uint64_t table_id, const std::vector& sparse_key_names, const std::vector& sparse_grad_names, const int emb_dim, std::vector<::std::future>* push_sparse_status, const bool use_cvm, const bool dump_slot, const bool no_cvm) { int batch_size = task->cur_batch_; int offset = 2; int slot_offset = 0; int grad_dim = emb_dim; int show_index = 0; int click_index = 1; auto& fea_keys = (task->features_)[table_id]; auto& fea_labels = (task->feature_labels_)[table_id]; auto& push_values = (task->feature_grads_)[table_id]; auto& sparse_push_keys = (task->sparse_push_keys_)[table_id]; if (use_cvm) { offset = 0; grad_dim = emb_dim - 2; } if (no_cvm) { offset = 0; grad_dim = emb_dim; } if (dump_slot) { slot_offset = 1; show_index = 1; click_index = 2; } CHECK_GE(grad_dim, 0); sparse_push_keys.clear(); sparse_push_keys.reserve(fea_keys.size() + 1); push_values.resize(fea_keys.size() + 1); for (auto& t : push_values) { t.resize(emb_dim + offset + slot_offset); } uint64_t fea_idx = 0u; for (size_t i = 0; i < sparse_key_names.size() && i < sparse_grad_names.size(); ++i) { Variable* var = scope.FindVar(sparse_key_names[i]); if (var == nullptr) { continue; } phi::DenseTensor* tensor = var->GetMutable(); if (tensor == nullptr) { LOG(ERROR) << "tensor of var[" << sparse_key_names[i] << "] is null"; exit(-1); } size_t len = tensor->numel(); int64_t* ids = tensor->data(); int slot = 0; if (dump_slot) { slot = std::stoi(sparse_key_names[i]); } Variable* g_var = scope.FindVar(sparse_grad_names[i]); if (g_var == nullptr) { continue; } phi::DenseTensor* g_tensor = g_var->GetMutable(); if (g_tensor == nullptr) { LOG(ERROR) << "tensor of var[" << sparse_key_names[i] << "] is null"; exit(-1); } float* g = g_tensor->data(); if (scale_sparse_gradient_with_batch_size_ && grad_dim > 0) { int dim = emb_dim + offset; Eigen::Map< Eigen::Matrix> g_mat(g, g_tensor->numel() / dim, dim); g_mat.rightCols(grad_dim) *= batch_size; } for (auto id_idx = 0u; id_idx < len; ++id_idx) { if (ids[id_idx] == 0) { g += emb_dim; continue; } sparse_push_keys.push_back(ids[id_idx]); CHECK(fea_idx < push_values.size()); if (use_cvm || no_cvm) { memcpy(push_values[fea_idx].data() + offset + slot_offset, g, sizeof(float) * emb_dim); } else { CHECK(fea_idx < fea_labels.size()); memcpy(push_values[fea_idx].data() + offset + slot_offset, g, sizeof(float) * emb_dim); push_values[fea_idx][show_index] = 1.0f; push_values[fea_idx][click_index] = static_cast(fea_labels[fea_idx]); } if (dump_slot) { push_values[fea_idx][0] = static_cast(slot); } g += emb_dim; fea_idx++; } } // slots whose embedding has been stop gradient or // not involved in forward-backward uint64_t no_grad_fea_num = 0u; for (size_t i = sparse_grad_names.size(); i < sparse_key_names.size(); ++i) { Variable* var = scope.FindVar(sparse_key_names[i]); if (var == nullptr) { continue; } phi::DenseTensor* tensor = var->GetMutable(); if (tensor == nullptr) { LOG(ERROR) << "tensor of var[" << sparse_key_names[i] << "] is null"; exit(-1); } size_t len = tensor->numel(); int64_t* ids = tensor->data(); for (auto id_idx = 0u; id_idx < len; ++id_idx) { if (ids[id_idx] == 0) { continue; } ++no_grad_fea_num; } } CHECK(fea_idx + no_grad_fea_num == fea_keys.size()) << "fea_idx: " << fea_idx << " no_grad_fea_num: " << no_grad_fea_num << " features size: " << fea_keys.size(); CHECK(fea_idx == sparse_push_keys.size()); if (fea_idx == 0) { return; } std::vector push_g_vec; for (auto i = 0u; i < sparse_push_keys.size(); ++i) { push_g_vec.push_back(push_values[i].data()); } auto status = pslib_ptr_->_worker_ptr->push_sparse(table_id, sparse_push_keys.data(), (const float**)push_g_vec.data(), sparse_push_keys.size()); push_sparse_status->push_back(std::move(status)); } #endif int FleetWrapper::RegisterHeterCallback(HeterCallBackFunc handler) { #ifdef PADDLE_WITH_PSLIB VLOG(3) << "calling FleetWrapper::RegisterHeterCallback"; VLOG(3) << "pslib_ptr_=" << pslib_ptr_; VLOG(3) << "_worker_ptr=" << pslib_ptr_->_worker_ptr; return pslib_ptr_->_worker_ptr->registe_heter_callback(handler); #else VLOG(0) << "FleetWrapper::RegisterHeterCallback" << " does nothing when no pslib"; #endif return 0; } void FleetWrapper::PullSparseToLocal(const uint64_t table_id, int fea_value_dim) { #ifdef PADDLE_WITH_PSLIB size_t fea_keys_size = local_tables_.size(); if (fea_keys_size == 0) { return; } local_table_shard_num_ = fea_keys_size; platform::Timer timeline; std::vector threads(fea_keys_size); auto ptl_func = [this, &table_id](int i) { size_t key_size = this->local_tables_[i].size(); std::vector keys; keys.reserve(key_size); std::vector pull_result_ptr; pull_result_ptr.reserve(key_size); for (auto& kv : this->local_tables_[i]) { keys.emplace_back(kv.first); pull_result_ptr.emplace_back(kv.second.data()); } auto tt = pslib_ptr_->_worker_ptr->pull_sparse( pull_result_ptr.data(), table_id, keys.data(), key_size); tt.wait(); auto status = tt.get(); if (status != 0) { LOG(ERROR) << "fleet pull sparse failed, status[" << status << "]"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } else { VLOG(3) << "FleetWrapper Pull sparse to local done with table size: " << pull_result_ptr.size(); } }; timeline.Start(); for (size_t i = 0; i < threads.size(); i++) { threads[i] = std::thread(ptl_func, i); } for (std::thread& t : threads) { t.join(); } local_pull_pool_.reset(new ::ThreadPool(pull_local_thread_num_)); timeline.Pause(); #endif } void FleetWrapper::PullSparseVarsFromLocal( const Scope& scope, const uint64_t table_id, const std::vector& var_names, std::vector* fea_keys, std::vector>* fea_values, int fea_value_dim) { #ifdef PADDLE_WITH_PSLIB fea_keys->clear(); fea_keys->resize(0); fea_keys->reserve(MAX_FEASIGN_NUM); for (auto name : var_names) { Variable* var = scope.FindVar(name); if (var == nullptr) { continue; } phi::DenseTensor* tensor = var->GetMutable(); CHECK(tensor != nullptr) << "tensor of var " << name << " is null"; int64_t* ids = tensor->data(); size_t len = tensor->numel(); for (auto i = 0u; i < len; ++i) { if (ids[i] == 0u) { continue; } fea_keys->push_back(static_cast(ids[i])); } } fea_values->resize(fea_keys->size() + 1); for (auto& t : *fea_values) { t.resize(fea_value_dim); } size_t key_length = fea_keys->size(); int local_step = key_length / pull_local_thread_num_; std::vector> task_futures; task_futures.reserve(key_length / local_step + 1); for (size_t i = 0; i < key_length; i += local_step) { size_t end = i + local_step < key_length ? i + local_step : key_length; auto pull_local_task = [this, i, end, &fea_values, &fea_keys, &fea_value_dim] { for (size_t j = i; j < end; j++) { std::memcpy((*fea_values)[j].data(), local_tables_[(*fea_keys)[j] % local_table_shard_num_] [(*fea_keys)[j]] .data(), fea_value_dim * sizeof(float)); } }; task_futures.emplace_back( local_pull_pool_->enqueue(std::move(pull_local_task))); } for (auto& tf : task_futures) { tf.wait(); } #endif } void FleetWrapper::ClearLocalTable() { #ifdef PADDLE_WITH_PSLIB for (auto& t : local_tables_) { t.clear(); } #endif } std::future FleetWrapper::PullSparseVarsAsync( const Scope& scope, const uint64_t table_id, const std::vector& var_names, std::vector* fea_keys, std::vector>* fea_values, int fea_value_dim) { #ifdef PADDLE_WITH_PSLIB fea_keys->clear(); fea_keys->resize(0); fea_keys->reserve(MAX_FEASIGN_NUM); for (auto name : var_names) { Variable* var = scope.FindVar(name); if (var == nullptr) { continue; } phi::DenseTensor* tensor = var->GetMutable(); CHECK(tensor != nullptr) << "tensor of var " << name << " is null"; int64_t* ids = tensor->data(); size_t len = tensor->numel(); for (auto i = 0u; i < len; ++i) { if (ids[i] == 0u) { continue; } fea_keys->push_back(static_cast(ids[i])); } } fea_values->resize(fea_keys->size() + 1); for (auto& t : *fea_values) { t.resize(fea_value_dim); } std::vector pull_result_ptr; for (auto& t : *fea_values) { pull_result_ptr.push_back(t.data()); } return pslib_ptr_->_worker_ptr->pull_sparse( pull_result_ptr.data(), table_id, fea_keys->data(), fea_keys->size()); #endif return std::future(); } void FleetWrapper::PullSparseVarsSync( const Scope& scope, const uint64_t table_id, const std::vector& var_names, std::vector* fea_keys, std::vector>* fea_values, int fea_value_dim, const std::vector& var_emb_names) { #ifdef PADDLE_WITH_PSLIB std::vector<::std::future> pull_sparse_status; pull_sparse_status.resize(0); fea_keys->clear(); fea_keys->resize(0); fea_keys->reserve(MAX_FEASIGN_NUM); for (size_t var_index = 0; var_index < var_names.size(); ++var_index) { const std::string& name = var_names[var_index]; Variable* var = scope.FindVar(name); if (var == nullptr) { continue; } phi::DenseTensor* tensor = var->GetMutable(); CHECK(tensor != nullptr) << "tensor of var " << name << " is null"; int64_t* ids = tensor->data(); size_t len = tensor->numel(); // skip slots which do not have embedding const std::string& emb_name = var_emb_names[var_index]; Variable* emb_var = scope.FindVar(emb_name); if (emb_var == nullptr) { continue; } for (auto i = 0u; i < len; ++i) { if (ids[i] == 0u) { continue; } fea_keys->push_back(static_cast(ids[i])); } } fea_values->resize(fea_keys->size() + 1); for (auto& t : *fea_values) { t.resize(fea_value_dim); } std::vector pull_result_ptr; for (auto& t : *fea_values) { pull_result_ptr.push_back(t.data()); } int32_t cnt = 0; while (true) { pull_sparse_status.clear(); auto status = pslib_ptr_->_worker_ptr->pull_sparse( pull_result_ptr.data(), table_id, fea_keys->data(), fea_keys->size()); pull_sparse_status.push_back(std::move(status)); bool flag = true; for (auto& t : pull_sparse_status) { t.wait(); int32_t status = -1; try { status = t.get(); } catch (const std::future_error& e) { VLOG(0) << "Caught a future_error with code" << e.code() << ", Message:" << e.what(); } if (status != 0) { VLOG(0) << "fleet pull sparse failed, status[" << status << "]"; sleep(sleep_seconds_before_fail_exit_); flag = false; cnt++; } if (cnt > 3) { VLOG(0) << "fleet pull sparse failed, retry 3 times"; exit(-1); } } if (flag) { break; } } #endif } void FleetWrapper::PullSparseToTensorSync( const uint64_t table_id, int fea_dim, uint64_t padding_id, platform::Place place, std::vector* inputs, std::vector* outputs) { #ifdef PADDLE_WITH_PSLIB std::vector fea_keys; std::vector pull_result_ptr; fea_keys.reserve(MAX_FEASIGN_NUM / 100); pull_result_ptr.reserve(MAX_FEASIGN_NUM / 100); std::vector init_value(fea_dim, 0); phi::DenseTensor* output = nullptr; float* output_data = nullptr; size_t output_index = -1; size_t output_len = 0; for (size_t index = 0; index < inputs->size(); ++index) { const phi::DenseTensor* tensor = inputs->at(index); const int64_t* ids = tensor->data(); size_t len = tensor->numel(); for (size_t i = 0; i < len; ++i, output_len += fea_dim) { if (!output || output_len == size_t(output->numel())) { ++output_index; CHECK(output_index < outputs->size()); // NOLINT output = outputs->at(output_index); output_data = output->mutable_data(place); output_len = 0; CHECK(output->numel() % fea_dim == 0); // NOLINT CHECK(output_data != nullptr); // NOLINT } uint64_t real_id = static_cast(ids[i]); if (real_id == padding_id) { memcpy(output_data + output_len, init_value.data(), sizeof(float) * fea_dim); continue; } fea_keys.push_back(real_id); pull_result_ptr.push_back(output_data + output_len); } } auto status = pslib_ptr_->_worker_ptr->pull_sparse( pull_result_ptr.data(), table_id, fea_keys.data(), fea_keys.size()); status.wait(); auto ret = status.get(); if (ret != 0) { LOG(ERROR) << "fleet pull sparse failed, status[" << ret << "]"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } #else for (size_t index = 0; index < inputs->size(); ++index) { auto* tensor = inputs->at(index); size_t len = tensor->numel(); std::vector init_data(fea_dim, 0); for (size_t i = 0; i < len; ++i) { memcpy(outputs->at(index)->mutable_data(place), init_data.data(), fea_dim); } } #endif } void FleetWrapper::PullDenseVarsAsync( const Scope& scope, const uint64_t tid, const std::vector& var_names, std::vector<::std::future>* pull_dense_status, bool in_cpu) { #ifdef PADDLE_WITH_PSLIB auto& regions = _regions[tid]; regions.clear(); regions.resize(var_names.size()); for (auto i = 0u; i < var_names.size(); ++i) { std::string varname = var_names[i]; if (!in_cpu) { varname = var_names[i] + "pin"; } Variable* var = scope.FindVar(varname); phi::DenseTensor* tensor = var->GetMutable(); float* w = tensor->data(); paddle::ps::Region reg(w, tensor->numel()); regions[i] = std::move(reg); } auto status = pslib_ptr_->_worker_ptr->pull_dense(regions.data(), regions.size(), tid); pull_dense_status->push_back(std::move(status)); #endif } void FleetWrapper::PullDenseVarsSync( const Scope& scope, const uint64_t tid, const std::vector& var_names) { #ifdef PADDLE_WITH_PSLIB auto& regions = _regions[tid]; regions.clear(); regions.reserve(var_names.size()); for (auto& t : var_names) { Variable* var = scope.FindVar(t); phi::DenseTensor* tensor = var->GetMutable(); float* w = tensor->data(); paddle::ps::Region reg(w, tensor->numel()); regions.emplace_back(std::move(reg)); } int32_t status = -1; int32_t cnt = 0; while (true) { auto tt = pslib_ptr_->_worker_ptr->pull_dense( regions.data(), regions.size(), tid); bool flag = true; tt.wait(); try { status = tt.get(); } catch (const std::future_error& e) { VLOG(0) << "Caught a future_error with code" << e.code() << ", Message:" << e.what(); } if (status != 0) { VLOG(0) << "fleet pull dense sync failed, status[" << status << "]"; sleep(sleep_seconds_before_fail_exit_); flag = false; cnt++; } if (cnt > 3) { VLOG(0) << "fleet pull dense sync failed, retry 3 times"; exit(-1); } if (flag) { break; } } #endif } void FleetWrapper::PushDenseParamSync( const Scope& scope, const uint64_t table_id, const std::vector& var_names) { #ifdef PADDLE_WITH_PSLIB auto place = platform::CPUPlace(); std::vector regions; for (auto& t : var_names) { Variable* var = scope.FindVar(t); CHECK(var != nullptr) << "var[" << t << "] not found"; phi::DenseTensor* tensor = var->GetMutable(); float* g = tensor->mutable_data(place); paddle::ps::Region reg(g, tensor->numel()); regions.emplace_back(std::move(reg)); } auto push_status = pslib_ptr_->_worker_ptr->push_dense_param( regions.data(), regions.size(), table_id); push_status.wait(); auto status = push_status.get(); CHECK(status == 0) << "push dense param failed, status[" << status << "]"; #endif } void FleetWrapper::PushDenseVarsSync( Scope* scope, const uint64_t table_id, const std::vector& var_names) {} #if (defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)) && \ (defined PADDLE_WITH_PSLIB) void FleetWrapper::PushDenseVarsAsync( const Scope& scope, const uint64_t table_id, const std::vector& var_names, std::vector<::std::future>* push_sparse_status, float scale_datanorm, int batch_size, const paddle::platform::Place& place, gpuStream_t stream, gpuEvent_t event) { std::vector regions; for (auto& t : var_names) { Variable* var = scope.FindVar(t); phi::DenseTensor* tensor = var->GetMutable(); int count = tensor->numel(); float* g_data = tensor->data(); Variable* pin_var = scope.FindVar(t + "pin"); phi::DenseTensor* pin_tensor = pin_var->GetMutable(); float* pin_g = pin_tensor->mutable_data(tensor->dims(), platform::CUDAPinnedPlace()); memory::Copy(platform::CUDAPinnedPlace(), pin_g, place, g_data, sizeof(float) * count, stream); #ifdef PADDLE_WITH_HIP PADDLE_ENFORCE_GPU_SUCCESS(hipEventRecord(event, stream)); hipEventSynchronize(event); #else PADDLE_ENFORCE_GPU_SUCCESS(cudaEventRecord(event, stream)); cudaEventSynchronize(event); #endif float* g = pin_g; if (scale_datanorm >= 0) { if (t.find(".batch_size@GRAD") != std::string::npos || t.find(".batch_sum@GRAD") != std::string::npos) { Eigen::Map mat(g, 1, count); float scale = 1.0 / batch_size; mat *= scale; } else if (t.find(".batch_square_sum@GRAD") != std::string::npos) { VLOG(3) << "epsilon: " << scale_datanorm; for (int i = 0; i < count; ++i) { g[i] = (g[i] - batch_size * scale_datanorm) / batch_size + batch_size * scale_datanorm; } } } paddle::ps::Region reg(g, count); regions.emplace_back(std::move(reg)); } auto status = pslib_ptr_->_worker_ptr->push_dense( regions.data(), regions.size(), table_id); if (push_sparse_status) { push_sparse_status->push_back(std::move(status)); } } #endif #ifdef PADDLE_WITH_XPU void FleetWrapper::PushDenseVarsAsync( const Scope& scope, const uint64_t table_id, const std::vector& var_names, std::vector<::std::future>* push_sparse_status, float scale_datanorm, int batch_size, const paddle::platform::Place& place) { #ifdef PADDLE_WITH_PSLIB std::vector regions; for (auto& t : var_names) { Variable* var = scope.FindVar(t); phi::DenseTensor* tensor = var->GetMutable(); int count = tensor->numel(); float* g_data = tensor->data(); Variable* pin_var = scope.FindVar(t + "pin"); phi::DenseTensor* pin_tensor = pin_var->GetMutable(); float* pin_g = pin_tensor->mutable_data(tensor->dims(), platform::CPUPlace()); memory::Copy( platform::CPUPlace(), pin_g, place, g_data, sizeof(float) * count); float* g = pin_g; if (scale_datanorm >= 0) { if (t.find(".batch_size@GRAD") != std::string::npos || t.find(".batch_sum@GRAD") != std::string::npos) { Eigen::Map mat(g, 1, count); float scale = 1.0 / batch_size; mat *= scale; } else if (t.find(".batch_square_sum@GRAD") != std::string::npos) { VLOG(3) << "epsilon: " << scale_datanorm; for (int i = 0; i < count; ++i) { g[i] = (g[i] - batch_size * scale_datanorm) / batch_size + batch_size * scale_datanorm; } } } paddle::ps::Region reg(g, count); regions.emplace_back(std::move(reg)); } auto status = pslib_ptr_->_worker_ptr->push_dense( regions.data(), regions.size(), table_id); if (push_sparse_status) { push_sparse_status->push_back(std::move(status)); } #endif } #endif void FleetWrapper::PushDenseVarsAsync( const Scope& scope, const uint64_t table_id, const std::vector& var_names, std::vector<::std::future>* push_sparse_status, float scale_datanorm, int batch_size) { #ifdef PADDLE_WITH_PSLIB std::vector regions; for (auto& t : var_names) { Variable* var = scope.FindVar(t); phi::DenseTensor* tensor = var->GetMutable(); int count = tensor->numel(); float* g = tensor->data(); if (scale_datanorm >= 0) { if (t.find(".batch_size@GRAD") != std::string::npos || t.find(".batch_sum@GRAD") != std::string::npos) { Eigen::Map mat(g, 1, count); float scale = 1.0 / batch_size; mat *= scale; } else if (t.find(".batch_square_sum@GRAD") != std::string::npos) { VLOG(3) << "epsilon: " << scale_datanorm; for (int i = 0; i < count; ++i) { g[i] = (g[i] - batch_size * scale_datanorm) / batch_size + batch_size * scale_datanorm; } } } paddle::ps::Region reg(g, count); regions.emplace_back(std::move(reg)); } auto status = pslib_ptr_->_worker_ptr->push_dense( regions.data(), regions.size(), table_id); if (push_sparse_status) { push_sparse_status->push_back(std::move(status)); } #endif } void FleetWrapper::PushSparseVarsWithLabelAsync( const Scope& scope, const uint64_t table_id, const std::vector& fea_keys, const std::vector& fea_labels, const std::vector& sparse_key_names, const std::vector& sparse_grad_names, const int emb_dim, std::vector>* push_values, std::vector<::std::future>* push_sparse_status, const int batch_size, const bool use_cvm, const bool dump_slot, std::vector* sparse_push_keys, const bool no_cvm, const bool scale_sparse_gradient_with_batch_size) { #ifdef PADDLE_WITH_PSLIB int offset = 2; int slot_offset = 0; int grad_dim = emb_dim; int show_index = 0; int click_index = 1; if (use_cvm) { offset = 0; grad_dim = emb_dim - 2; } if (no_cvm) { offset = 0; grad_dim = emb_dim; } if (dump_slot) { slot_offset = 1; show_index = 1; click_index = 2; } CHECK_GE(grad_dim, 0); sparse_push_keys->clear(); sparse_push_keys->reserve(fea_keys.size() + 1); push_values->resize(fea_keys.size() + 1); for (auto& t : *push_values) { t.resize(emb_dim + offset + slot_offset); } uint64_t fea_idx = 0u; for (size_t i = 0; i < sparse_key_names.size() && i < sparse_grad_names.size(); ++i) { Variable* var = scope.FindVar(sparse_key_names[i]); if (var == nullptr) { continue; } phi::DenseTensor* tensor = var->GetMutable(); if (tensor == nullptr) { LOG(ERROR) << "tensor of var[" << sparse_key_names[i] << "] is null"; exit(-1); } size_t len = tensor->numel(); int64_t* ids = tensor->data(); int slot = 0; if (dump_slot) { try { slot = std::stoi(sparse_key_names[i]); } catch (std::invalid_argument const& e) { PADDLE_THROW(platform::errors::PreconditionNotMet( "sparse var's name: %s, doesn't support non-integer type name when " "dump_slot=True", sparse_key_names[i])); } catch (std::out_of_range const& e) { PADDLE_THROW(platform::errors::PreconditionNotMet( "sparse var's name: %s, integer type name out of range when " "dump_slot=True", sparse_key_names[i])); } } Variable* g_var = scope.FindVar(sparse_grad_names[i]); if (g_var == nullptr) { continue; } phi::DenseTensor* g_tensor = g_var->GetMutable(); if (g_tensor == nullptr) { LOG(ERROR) << "tensor of var[" << sparse_key_names[i] << "] is null"; exit(-1); } float* g = g_tensor->data(); if (scale_sparse_gradient_with_batch_size && grad_dim > 0) { int dim = emb_dim; Eigen::Map< Eigen::Matrix> g_mat(g, g_tensor->numel() / dim, dim); g_mat.rightCols(grad_dim) *= batch_size; } for (auto id_idx = 0u; id_idx < len; ++id_idx) { if (ids[id_idx] == 0) { g += emb_dim; continue; } sparse_push_keys->push_back(ids[id_idx]); CHECK(fea_idx < (*push_values).size()); if (use_cvm || no_cvm) { memcpy((*push_values)[fea_idx].data() + offset + slot_offset, g, sizeof(float) * emb_dim); } else { CHECK(fea_idx < fea_labels.size()); memcpy((*push_values)[fea_idx].data() + offset + slot_offset, g, sizeof(float) * emb_dim); (*push_values)[fea_idx][show_index] = 1.0f; (*push_values)[fea_idx][click_index] = static_cast(fea_labels[fea_idx]); } if (dump_slot) { (*push_values)[fea_idx][0] = static_cast(slot); } g += emb_dim; fea_idx++; } } // slots whose embedding has been stop gradient or // not involved in forward-backward uint64_t no_grad_fea_num = 0u; for (size_t i = sparse_grad_names.size(); i < sparse_key_names.size(); ++i) { Variable* var = scope.FindVar(sparse_key_names[i]); if (var == nullptr) { continue; } phi::DenseTensor* tensor = var->GetMutable(); if (tensor == nullptr) { LOG(ERROR) << "tensor of var[" << sparse_key_names[i] << "] is null"; exit(-1); } size_t len = tensor->numel(); int64_t* ids = tensor->data(); for (auto id_idx = 0u; id_idx < len; ++id_idx) { if (ids[id_idx] == 0) { continue; } ++no_grad_fea_num; } } CHECK(fea_idx + no_grad_fea_num == fea_keys.size()) << "fea_idx: " << fea_idx << " no_grad_fea_num: " << no_grad_fea_num << " features size: " << fea_keys.size(); CHECK(fea_idx == sparse_push_keys->size()); if (fea_idx == 0) { return; } std::vector push_g_vec; for (auto i = 0u; i < sparse_push_keys->size(); ++i) { push_g_vec.push_back((*push_values)[i].data()); } auto status = pslib_ptr_->_worker_ptr->push_sparse(table_id, sparse_push_keys->data(), (const float**)push_g_vec.data(), sparse_push_keys->size()); push_sparse_status->push_back(std::move(status)); #endif } void FleetWrapper::PushSparseFromTensorWithLabelAsync( const Scope& scope, const uint64_t table_id, int fea_dim, uint64_t padding_id, bool scale_sparse, const std::string& accesor, const std::string& click_name, platform::Place place, const std::vector& input_names, std::vector* inputs, std::vector* outputs) { #ifdef PADDLE_WITH_PSLIB int show_index = 0; int click_index = 1; // these default values can not be used, it must be set. bool dump_slot = false; int slot_offset = 0; int grad_dim = 0; // don't worry, user do not have to care about all these flags if (accesor == "DownpourCtrAccessor" || accesor == "DownpourCtrDymfAccessor") { dump_slot = true; slot_offset = 1; grad_dim = fea_dim - 2; show_index = 1; click_index = 2; } else if (accesor == "DownpourFeatureValueAccessor") { dump_slot = false; slot_offset = 0; grad_dim = fea_dim - 2; } else if (accesor == "DownpourSparseValueAccessor") { dump_slot = false; slot_offset = 0; grad_dim = fea_dim; } CHECK(grad_dim >= 0); // NOLINT int batch_size = -1; for (auto* input : *inputs) { int cur_batch_size = input->lod().size() ? input->lod()[0].size() - 1 : input->dims()[0]; if (batch_size == -1) { batch_size = cur_batch_size; } else { CHECK(batch_size == cur_batch_size); // NOLINT } } CHECK(batch_size > 0); // NOLINT std::vector g; for (const phi::DenseTensor* g_tensor : *outputs) { size_t origin = g.size(); size_t add = g_tensor->numel(); g.resize(origin + add); memcpy(g.data() + origin, g_tensor->data(), add); } if (scale_sparse && grad_dim > 0) { size_t dim = static_cast(grad_dim); Eigen::Map< Eigen::Matrix> g_mat(g.data(), g.size() / dim, dim); g_mat.rightCols(grad_dim) *= batch_size; } std::vector fea_labels; fea_labels.reserve(MAX_FEASIGN_NUM / 100); framework::Variable* var = scope.FindVar(click_name); size_t global_idx = 0; if (click_name != "") { CHECK(var != nullptr); // NOLINT phi::DenseTensor* label_tensor = var->GetMutable(); CHECK(label_tensor != nullptr); // NOLINT int64_t* label_ptr = label_tensor->data(); for (auto* tensor : *inputs) { const int64_t* ids = tensor->data(); size_t fea_idx = 0; for (size_t lod_idx = 1; lod_idx < tensor->lod()[0].size(); ++lod_idx) { size_t cur = GetAbsoluteSum(tensor->lod()[0][lod_idx - 1], tensor->lod()[0][lod_idx], 0, tensor->lod()); for (size_t i = 0; i < cur; ++i, ++fea_idx) { if (static_cast(ids[fea_idx]) == padding_id) { continue; } fea_labels.push_back(static_cast(label_ptr[lod_idx - 1])); ++global_idx; } } } } std::vector push_keys; push_keys.reserve(MAX_FEASIGN_NUM / 100); std::vector> push_values; push_values.reserve(MAX_FEASIGN_NUM / 100); size_t output_len = 0; size_t input_idx = 0; for (size_t index = 0; index < inputs->size(); ++index) { const phi::DenseTensor* tensor = inputs->at(index); const int64_t* ids = tensor->data(); size_t len = tensor->numel(); for (size_t i = 0; i < len; ++i, output_len += fea_dim) { if (static_cast(ids[i]) == padding_id) { continue; } push_keys.emplace_back(ids[i]); push_values.emplace_back(fea_dim + slot_offset); float* data = push_values.back().data(); if (!var) { memcpy( data + slot_offset, g.data() + output_len, sizeof(float) * fea_dim); } else { memcpy(data + slot_offset, g.data() + output_len, sizeof(float) * grad_dim); data[show_index] = 1.0f; data[click_index] = static_cast(fea_labels.at(input_idx)); } if (dump_slot) { int slot = std::stoi(input_names[index]); data[0] = static_cast(slot); } ++input_idx; } } CHECK(output_len == g.size()); // NOLINT if (click_name != "") { CHECK(input_idx == global_idx); // NOLINT } std::vector push_g_vec(input_idx, nullptr); for (auto i = 0u; i < push_keys.size(); ++i) { push_g_vec[i] = push_values.at(i).data(); } auto status = pslib_ptr_->_worker_ptr->push_sparse(table_id, push_keys.data(), (const float**)push_g_vec.data(), push_keys.size()); #endif } void FleetWrapper::LoadFromPaddleModel(Scope& scope, const uint64_t table_id, std::vector var_list, std::string model_path, std::string model_proto_file, std::vector table_var_list, bool load_combine) { #ifdef PADDLE_WITH_PSLIB // load ProgramDesc from model file auto read_proto_func = [](const std::string& filename) -> ProgramDesc { std::string contents; std::ifstream fin(filename, std::ios::in | std::ios::binary); fin.seekg(0, std::ios::end); contents.resize(fin.tellg()); fin.seekg(0, std::ios::beg); fin.read(&contents[0], contents.size()); fin.close(); ProgramDesc program_desc(contents); return program_desc; }; const ProgramDesc old_program = read_proto_func(model_proto_file); Scope* old_scope = new Scope(); auto& old_block = old_program.Block(0); auto place = platform::CPUPlace(); std::vector old_param_list; for (auto& t : var_list) { VarDesc* old_var_desc = old_block.FindVar(t); if (old_var_desc == nullptr) { continue; } // init variable in scope Variable* old_var = old_scope->Var(old_var_desc->Name()); InitializeVariable(old_var, old_var_desc->GetType()); old_param_list.push_back(t); if (load_combine) { continue; } // load variable from model paddle::framework::AttributeMap attrs; attrs.insert({"file_path", model_path + "/" + old_var_desc->Name()}); auto load_op = paddle::framework::OpRegistry::CreateOp( "load", {}, {{"Out", {old_var_desc->Name()}}}, attrs); load_op->Run(*old_scope, place); } if (load_combine) { std::sort(old_param_list.begin(), old_param_list.end()); paddle::framework::AttributeMap attrs; attrs.insert({"file_path", model_path}); auto load_op = paddle::framework::OpRegistry::CreateOp( "load_combine", {}, {{"Out", old_param_list}}, attrs); load_op->Run(*old_scope, place); } for (auto& t : old_param_list) { Variable* old_var = old_scope->Var(t); // old model data, here we assume data type is float phi::DenseTensor* old_tensor = old_var->GetMutable(); float* old_data = old_tensor->data(); // new model data, here we assume data type is float Variable* var = scope.FindVar(t); CHECK(var != nullptr) << "var[" << t << "] not found"; phi::DenseTensor* tensor = var->GetMutable(); float* data = tensor->data(); // copy from old data to new data if (old_tensor->numel() > tensor->numel()) { memcpy(data, old_data, tensor->numel() * sizeof(float)); } else { memcpy(data, old_data, old_tensor->numel() * sizeof(float)); } } delete old_scope; PushDenseParamSync(scope, table_id, table_var_list); #endif } void FleetWrapper::LoadModel(const std::string& path, const int mode) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->load(path, std::to_string(mode)); ret.wait(); if (ret.get() != 0) { LOG(ERROR) << "load model from path:" << path << " failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } #else VLOG(0) << "FleetWrapper::LoadModel does nothing when no pslib"; #endif } void FleetWrapper::LoadModelOneTable(const uint64_t table_id, const std::string& path, const int mode) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->load(table_id, path, std::to_string(mode)); ret.wait(); if (ret.get() != 0) { LOG(ERROR) << "load model of table id: " << table_id << ", from path: " << path << " failed"; exit(-1); } #else VLOG(0) << "FleetWrapper::LoadModel does nothing when no pslib"; #endif } void FleetWrapper::LoadWithWhitelist(const uint64_t table_id, const std::string& path, const int mode) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->load_with_whitelist( table_id, path, std::to_string(mode)); ret.wait(); if (ret.get() != 0) { LOG(ERROR) << "load model of table id: " << table_id << ", from path: " << path << " failed"; exit(-1); } #else VLOG(0) << "FleetWrapper::LoadWhitelist does nothing when no pslib"; #endif } void FleetWrapper::SaveMultiTableOnePath(const std::vector& table_ids, const std::string& path, const int mode) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->save_multi_table_one_path( table_ids, path, std::to_string(mode)); ret.wait(); int32_t feasign_cnt = ret.get(); if (feasign_cnt == -1) { LOG(ERROR) << "save model failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } #else VLOG(0) << "FleetWrapper::SaveMultiTableOnePath does nothing when no pslib"; #endif } void FleetWrapper::SaveModel(const std::string& path, const int mode) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->save(path, std::to_string(mode)); ret.wait(); int32_t feasign_cnt = ret.get(); if (feasign_cnt == -1) { LOG(ERROR) << "save model failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } #else VLOG(0) << "FleetWrapper::SaveModel does nothing when no pslib"; #endif } void FleetWrapper::SaveModelOneTable(const uint64_t table_id, const std::string& path, const int mode) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->save(table_id, path, std::to_string(mode)); ret.wait(); if (ret.get() != 0) { LOG(ERROR) << "save model of table id: " << table_id << ", to path: " << path << " failed"; exit(-1); } #else VLOG(0) << "FleetWrapper::SaveModelOneTable does nothing when no pslib"; #endif } void FleetWrapper::SaveModelOneTablePrefix(const uint64_t table_id, const std::string& path, const int mode, const std::string& prefix) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->save( table_id, path, std::to_string(mode), prefix); ret.wait(); if (ret.get() != 0) { LOG(ERROR) << "save model (with prefix) of table id: " << table_id << ", to path: " << path << " failed"; exit(-1); } #else VLOG(0) << "FleetWrapper::SaveModelOneTablePrefix does nothing when no pslib"; #endif } void FleetWrapper::SetDate(const uint64_t table_id, const std::string& date) { #if (defined PADDLE_WITH_PSLIB) && (defined PADDLE_WITH_HETERPS) assert(date.size() == 8); int year = std::stoi(date.substr(0, 4)); int month = std::stoi(date.substr(4, 2)); int day = std::stoi(date.substr(6, 2)); struct std::tm b; b.tm_year = year - 1900; b.tm_mon = month - 1; b.tm_mday = day; b.tm_hour = b.tm_min = b.tm_sec = 0; std::time_t seconds_from_1970 = std::mktime(&b); int day_id = seconds_from_1970 / 86400; auto ret = pslib_ptr_->_worker_ptr->set_day_id(table_id, day_id); ret.wait(); if (ret.get() != 0) { LOG(ERROR) << "setdate : " << date << " failed"; exit(-1); } #else VLOG(0) << "FleetWrapper::SetDate does nothing when no pslib-gpu"; #endif } void FleetWrapper::PrintTableStat(uint64_t table_id, uint32_t pass_id, size_t threshold) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->print_table_stat(table_id, pass_id, threshold); ret.wait(); int32_t err_code = ret.get(); if (err_code == -1) { LOG(ERROR) << "print table stat failed"; } #else VLOG(0) << "FleetWrapper::PrintTableStat does nothing when no pslib"; #endif } void FleetWrapper::SetFileNumOneShard(const uint64_t table_id, int file_num) { #if (defined PADDLE_WITH_PSLIB) && (defined PADDLE_WITH_HETERPS) auto ret = pslib_ptr_->_worker_ptr->set_file_num_one_shard(table_id, file_num); ret.wait(); int32_t err_code = ret.get(); if (err_code == -1) { LOG(ERROR) << "set_file_num_one_shard failed"; } #else VLOG(0) << "FleetWrapper::SetFileNumOneShard does nothing when no pslib-gpu"; #endif } double FleetWrapper::GetCacheThreshold(int table_id) { #ifdef PADDLE_WITH_PSLIB double cache_threshold = 0.0; auto ret = pslib_ptr_->_worker_ptr->flush(); ret.wait(); ret = pslib_ptr_->_worker_ptr->get_cache_threshold(table_id, cache_threshold); ret.wait(); if (cache_threshold < 0) { LOG(ERROR) << "get cache threshold failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } return cache_threshold; #else VLOG(0) << "FleetWrapper::GetCacheThreshold does nothing when no pslib"; return 0.0; #endif } void FleetWrapper::CacheShuffle(int table_id, const std::string& path, const int mode, const double cache_threshold) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->cache_shuffle( table_id, path, std::to_string(mode), std::to_string(cache_threshold)); ret.wait(); int32_t feasign_cnt = ret.get(); if (feasign_cnt == -1) { LOG(ERROR) << "cache shuffle failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } #else VLOG(0) << "FleetWrapper::CacheShuffle does nothing when no pslib"; #endif } int32_t FleetWrapper::SaveCache(int table_id, const std::string& path, const int mode) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->save_cache(table_id, path, std::to_string(mode)); ret.wait(); int32_t feasign_cnt = ret.get(); if (feasign_cnt == -1) { LOG(ERROR) << "table save cache failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } return feasign_cnt; #else VLOG(0) << "FleetWrapper::SaveCache does nothing when no pslib"; return -1; #endif } int32_t FleetWrapper::SaveWithWhitelist(int table_id, const std::string& path, const int mode, const std::string& whitelist_path) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->save_with_whitelist( table_id, path, std::to_string(mode), whitelist_path); ret.wait(); int32_t feasign_cnt = ret.get(); if (feasign_cnt == -1) { LOG(ERROR) << "table save cache failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } return feasign_cnt; #else VLOG(0) << "FleetWrapper::SaveCache does nothing when no pslib"; return -1; #endif } void FleetWrapper::ShrinkSparseTable(int table_id) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->shrink(table_id); ret.wait(); int32_t err_code = ret.get(); if (err_code == -1) { LOG(ERROR) << "Shrink Sparse Table failed"; exit(-1); } #else VLOG(0) << "FleetWrapper::ShrinkSparseTable does nothing when no pslib"; #endif } void FleetWrapper::ClearModel() { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->clear(); ret.wait(); int32_t err_code = ret.get(); if (err_code == -1) { LOG(ERROR) << "Clear Model failed"; } #else VLOG(0) << "FleetWrapper::ClearModel does nothing when no pslib"; #endif } void FleetWrapper::ClearOneTable(const uint64_t table_id) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->clear(table_id); ret.wait(); int32_t err_code = ret.get(); if (err_code == -1) { LOG(ERROR) << "Clear One Table failed table_id: " << table_id; } #else VLOG(0) << "FleetWrapper::ClearOneTable does nothing when no pslib"; #endif } void FleetWrapper::ShrinkDenseTable(int table_id, Scope* scope, std::vector var_list, float decay, int emb_dim) { #ifdef PADDLE_WITH_PSLIB std::vector regions; for (std::string& name : var_list) { if (name.find("batch_sum") != std::string::npos) { Variable* var = scope->FindVar(name); CHECK(var != nullptr) << "var[" << name << "] not found"; VLOG(0) << "prepare shrink dense batch_sum"; phi::DenseTensor* tensor = var->GetMutable(); float* g = tensor->data(); // show_batch_sum += N * log(decay) std::string size_name = name; size_name.replace( size_name.find("batch_sum"), size_name.length(), "batch_size"); Variable* var_size = scope->FindVar(size_name); CHECK(var_size != nullptr) << "var[" << size_name << "] not found"; VLOG(3) << "shrink dense batch_sum: " << name << ", " << size_name; float* g_size = var_size->GetMutable()->data(); for (int k = 0; k < tensor->numel(); k += emb_dim) { g[k] = g[k] + g_size[k] * log(decay); } paddle::ps::Region reg(g, tensor->numel()); regions.emplace_back(std::move(reg)); } else { Variable* var = scope->FindVar(name); CHECK(var != nullptr) << "var[" << name << "] not found"; phi::DenseTensor* tensor = var->GetMutable(); float* g = tensor->data(); paddle::ps::Region reg(g, tensor->numel()); regions.emplace_back(std::move(reg)); } } auto push_status = pslib_ptr_->_worker_ptr->push_dense_param( regions.data(), regions.size(), table_id); push_status.wait(); auto status = push_status.get(); if (status != 0) { // PADDLE_THORW(platform::errors::Fatal( // "push shrink dense param failed, status is [%d].", status)); sleep(sleep_seconds_before_fail_exit_); exit(-1); } #else VLOG(0) << "FleetWrapper::ShrinkSparseTable does nothing when no pslib"; #endif } void FleetWrapper::ClientFlush() { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->flush(); ret.wait(); int32_t err_code = ret.get(); if (err_code == -1) { LOG(ERROR) << "Client Flush failed"; } #else VLOG(0) << "FleetWrapper::ServerFlush does nothing when no pslib"; #endif } int FleetWrapper::RegisterClientToClientMsgHandler(int msg_type, MsgHandlerFunc handler) { #ifdef PADDLE_WITH_PSLIB VLOG(3) << "calling FleetWrapper::RegisterClientToClientMsgHandler"; VLOG(3) << "pslib_ptr_=" << pslib_ptr_; VLOG(3) << "_worker_ptr=" << pslib_ptr_->_worker_ptr; return pslib_ptr_->_worker_ptr->registe_client2client_msg_handler(msg_type, handler); #else VLOG(0) << "FleetWrapper::RegisterClientToClientMsgHandler" << " does nothing when no pslib"; #endif return 0; } std::future FleetWrapper::SendClientToClientMsg( int msg_type, int to_client_id, const std::string& msg) { #ifdef PADDLE_WITH_PSLIB return pslib_ptr_->_worker_ptr->send_client2client_msg( msg_type, to_client_id, msg); #else VLOG(0) << "FleetWrapper::SendClientToClientMsg" << " does nothing when no pslib"; #endif return std::future(); } std::default_random_engine& FleetWrapper::LocalRandomEngine() { struct engine_wrapper_t { std::default_random_engine engine; #ifdef PADDLE_WITH_PSLIB engine_wrapper_t() { struct timespec tp; clock_gettime(CLOCK_REALTIME, &tp); double cur_time = tp.tv_sec + tp.tv_nsec * 1e-9; static std::atomic x(0); std::seed_seq sseq = {x++, x++, x++, (uint64_t)(cur_time * 1000)}; engine.seed(sseq); } #endif }; thread_local engine_wrapper_t r; return r.engine; } int32_t FleetWrapper::CopyTable(const uint64_t src_table_id, const uint64_t dest_table_id) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->copy_table(src_table_id, dest_table_id); ret.wait(); int32_t feasign_cnt = ret.get(); if (feasign_cnt == -1) { LOG(ERROR) << "copy table failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } return feasign_cnt; #else VLOG(0) << "FleetWrapper::CopyTable does nothing when no pslib"; return 0; #endif } void FleetWrapper::Confirm() { #ifdef PADDLE_WITH_PSLIB // FIXME(xujiaqi01): will later support confirm // auto ret = pslib_ptr_->_worker_ptr->confirm(); // ret.wait(); VLOG(0) << "disable FleetWrapper::Confirm temporarily"; #else VLOG(0) << "FleetWrapper::Confirm does nothing when no pslib"; #endif } void FleetWrapper::Revert() { #ifdef PADDLE_WITH_PSLIB // FIXME(xujiaqi01): will later support revert // auto ret = pslib_ptr_->_worker_ptr->revert(); // ret.wait(); VLOG(0) << "disable FleetWrapper::Revert temporarily"; #else VLOG(0) << "FleetWrapper::Revert does nothing when no pslib"; #endif } int32_t FleetWrapper::CopyTableByFeasign( const uint64_t src_table_id, const uint64_t dest_table_id, const std::vector& feasign_list) { #ifdef PADDLE_WITH_PSLIB auto ret = pslib_ptr_->_worker_ptr->copy_table_by_feasign( src_table_id, dest_table_id, feasign_list.data(), feasign_list.size()); ret.wait(); int32_t feasign_cnt = ret.get(); if (feasign_cnt == -1) { LOG(ERROR) << "copy table by feasign failed"; sleep(sleep_seconds_before_fail_exit_); exit(-1); } return feasign_cnt; #else VLOG(0) << "FleetWrapper::CopyTableByFeasign does nothing when no pslib"; return 0; #endif } size_t FleetWrapper::GetAbsoluteSum(size_t start, size_t end, size_t level, const framework::LoD& lod) { if (level >= lod.size() - 1) { return end - start; } size_t ret = 0; for (size_t i = start; i < end - 1; ++i) { size_t pos1 = lod[level][i]; size_t pos2 = lod[level][i + 1]; ret += GetAbsoluteSum(pos1, pos2, level + 1, lod); } return ret; } } // end namespace framework } // end namespace paddle