// 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 "paddle/fluid/framework/details/all_reduce_op_handle.h" #include "paddle/fluid/framework/details/broadcast_op_handle.h" #include "paddle/fluid/framework/details/computation_op_handle.h" #include "paddle/fluid/framework/details/data_balance_op_handle.h" #include "paddle/fluid/framework/details/multi_devices_graph_builder.h" #include "paddle/fluid/framework/details/reduce_op_handle.h" #include "paddle/fluid/framework/details/rpc_op_handle.h" #include "paddle/fluid/framework/details/scale_loss_grad_op_handle.h" #include "paddle/fluid/framework/ir/node.h" #include "paddle/fluid/framework/op_info.h" #include "paddle/fluid/framework/scope.h" namespace paddle { namespace framework { namespace details { #ifdef PADDLE_WITH_CUDA MultiDevSSAGraphBuilder::MultiDevSSAGraphBuilder( const std::vector &places, const std::string &loss_var_name, const std::unordered_set ¶ms, const std::vector &local_scopes, platform::NCCLContextMap *nccl_ctxs, const BuildStrategy &strategy) : loss_var_name_(loss_var_name), places_(places), local_scopes_(local_scopes), nccl_ctxs_(nccl_ctxs), strategy_(strategy) { #else MultiDevSSAGraphBuilder::MultiDevSSAGraphBuilder( const std::vector &places, const std::string &loss_var_name, const std::unordered_set ¶ms, const std::vector &local_scopes, const BuildStrategy &strategy) : loss_var_name_(loss_var_name), places_(places), local_scopes_(local_scopes), strategy_(strategy) { #endif for (auto &p : params) { grad_names_.insert(GradVarName(p)); } balance_vars_.resize(places_.size(), 0); if (strategy_.enable_data_balance_ && places_.size() == 1) { LOG(WARNING) << "It is no need to enable data balance when there is only " "one place. enable_data_balance is set to False."; strategy_.enable_data_balance_ = false; } } void MultiDevSSAGraphBuilder::CreateOpHandleIOs(Graph *result, const OpDesc &op, size_t place_id) const { auto p = places_[place_id]; auto *op_handle = result->Get("ops").back().get(); op_handle->SetDeviceContext(p, platform::DeviceContextPool::Instance().Get(p)); for (auto &each_var_name : op.InputArgumentNames()) { VarHandle *var = CreateOrGetLatestVarHandle(result, each_var_name, p, place_id); op_handle->AddInput(var); } for (auto &each_var_name : op.OutputArgumentNames()) { CreateOpOutput(result, op_handle, each_var_name, p, place_id); } } std::vector MultiDevSSAGraphBuilder::FindDistTrainSendVars( const ProgramDesc &program) const { std::vector send_vars; // since parameters are all in block 0, // it's enough to only scan send ops in block 0 for (auto *op : program.Block(0).AllOps()) { // TODO(Yancey1989): use a graceful method to find send op, // instead of the the hard code string if (op->Type() == "send") { auto op_vars = op->InputArgumentNames(); send_vars.reserve(send_vars.size() + std::distance(op_vars.begin(), op_vars.end())); send_vars.insert(send_vars.end(), op_vars.begin(), op_vars.end()); } } return send_vars; } std::vector MultiDevSSAGraphBuilder::FindDistTrainRecvVars( const ProgramDesc &program) const { std::vector recv_vars; for (auto *op : program.Block(0).AllOps()) { // TODO(Yancey1989): use a graceful method to find recv op, // instead of the hard code string if (op->Type() == "recv") { auto op_vars = op->OutputArgumentNames(); recv_vars.reserve(recv_vars.size() + std::distance(op_vars.begin(), op_vars.end())); recv_vars.insert(recv_vars.end(), op_vars.begin(), op_vars.end()); } } return recv_vars; } bool MultiDevSSAGraphBuilder::IsDistTrainOp( const OpDesc &op, const std::vector &send_vars, const std::vector &recv_vars) const { if (send_vars.size() == 0 || recv_vars.size() == 0) { return false; } /** * Check any of opvars contains `.block` and in sendvars */ auto checker = [](const std::vector &opvars, const std::vector &rpc_vars) -> bool { for (auto &var : opvars) { // a variable name with the suffix `.block` means it's a splited // variable by (DistributeTranspiler) // [python/paddle/fluid/transpiler/distribute_transpiler.py] if (var.find(".block") != std::string::npos && std::find(rpc_vars.begin(), rpc_vars.end(), var) != rpc_vars.end()) { return true; } } return false; }; return checker(op.OutputArgumentNames(), send_vars) || checker(op.InputArgumentNames(), recv_vars); } size_t MultiDevSSAGraphBuilder::GetAppropriateDeviceID( const std::vector &var_names) const { int64_t numel_sum = 0; for (auto var_name : var_names) { auto var_desc = all_vars_.at(var_name); PADDLE_ENFORCE_NOT_NULL(var_desc); auto dim = framework::make_ddim(var_desc->GetShape()); int64_t numel = framework::product(dim); PADDLE_ENFORCE_GT(numel, 0); numel_sum += numel; } auto smallest = std::min_element(std::begin(balance_vars_), std::end(balance_vars_)); size_t dev_id = static_cast(std::distance(std::begin(balance_vars_), smallest)); balance_vars_[dev_id] += numel_sum; return dev_id; } std::unique_ptr MultiDevSSAGraphBuilder::Build( std::unique_ptr graph) const { const ProgramDesc &program = graph->Program(); for (auto *var : program.Block(0).AllVars()) { all_vars_.emplace(var->Name(), var); } Graph &result = *graph; std::unordered_set og_has_been_broadcast; // We cannot invoke resize. It is a bug of GCC 4.8 result.Set("vars", new GraphVars(places_.size())); result.Set("dep_vars", new GraphDepVars); result.Set("ops", new GraphOps); // find send/recv vars so that we can place the distributed training // realted op in the place 0 auto send_vars = FindDistTrainSendVars(program); auto recv_vars = FindDistTrainRecvVars(program); std::vector> bcast_var_name_set; bcast_var_name_set.resize(places_.size()); size_t cur_device_id = 0; bool is_forwarding = true; for (auto *op : program.Block(0).AllOps()) { if (boost::get( op->GetAttr(OpProtoAndCheckerMaker::OpRoleAttrName())) == static_cast(OpRole::kRPC)) { CreateRPCOp(&result, *op); } else if (IsDistTrainOp(*op, send_vars, recv_vars)) { CreateDistTrainOp(&result, *op); } else if (IsScaleLossOp(*op)) { // user can customize loss@grad if not use_default_grad_scale_ if (strategy_.gradient_scale_ != BuildStrategy::GradientScaleStrategy::kCustomized) { CreateScaleLossGradOp(&result); } // This assumes the backward generating code will ensure IsScaleLossOp // is true only for the op that scale the final scalar loss. // It also assumes backward op will always follow the forward op in // the block. is_forwarding = false; } else { int op_dev_id = GetOpDeviceID(*op); if (op_dev_id != -1) { // This op only runs on one specific device. CreateComputationalOp(&result, *op, op_dev_id); for (auto &var_name : op->OutputArgumentNames()) { var_name_on_devices_.emplace(var_name, op_dev_id); } } else { // This op runs on all devices, and its output may have parameter's // gradients. if (op->Type() == "read" && strategy_.enable_data_balance_) { op->SetAttr("throw_eof_exp", false); CreateComputationalOps(&result, *op, places_.size()); const auto &data_var_names = op->Output("Out"); InsertDataBalanceOp(&result, data_var_names); } else { CreateComputationalOps(&result, *op, places_.size()); } if (!is_forwarding && places_.size() > 1) { // Currently, we assume that once gradient is generated, it can be // broadcast, and each gradient is only broadcast once. if (static_cast(boost::get(op->GetAttr( OpProtoAndCheckerMaker::OpRoleAttrName())) & static_cast(OpRole::kBackward))) { try { auto backward_vars = boost::get>(op->GetNullableAttr( OpProtoAndCheckerMaker::OpRoleVarAttrName())); PADDLE_ENFORCE_EQ(backward_vars.size() % 2, 0); for (size_t i = 0; i < backward_vars.size(); i += 2) { auto &p_name = backward_vars[i]; auto &g_name = backward_vars[i + 1]; VLOG(10) << "Bcast " << g_name << " for parameter " << p_name; switch (strategy_.reduce_) { case BuildStrategy::ReduceStrategy::kReduce: cur_device_id = GetAppropriateDeviceID({g_name}); CreateReduceOp(&result, g_name, cur_device_id); var_name_on_devices_.emplace(g_name, cur_device_id); bcast_var_name_set[cur_device_id].emplace(p_name); break; case BuildStrategy::ReduceStrategy::kAllReduce: if (IsSparseGradient(g_name)) { CreateReduceOp(&result, g_name, 0); CreateBroadcastOp(&result, g_name, 0); } else { InsertAllReduceOp(&result, g_name); } break; default: LOG(FATAL) << "Unknown reduce strategy "; break; } } } catch (boost::bad_get e) { } } } } } } bool use_gpu = false; #ifdef PADDLE_WITH_CUDA use_gpu = nccl_ctxs_ != nullptr; #endif if (use_gpu || strategy_.reduce_ == BuildStrategy::ReduceStrategy::kAllReduce) { // Insert BCast Ops for (size_t dev_id = 0; dev_id < bcast_var_name_set.size(); ++dev_id) { auto &to_bcast_set = bcast_var_name_set[dev_id]; for (auto &bcast_name : to_bcast_set) { CreateBroadcastOp(&result, bcast_name, dev_id); } } } /* Dependency graph has been constructed. However, there are still data hazards need to be handled. */ PolishGraphToSupportDataHazards(&result); /* * Only variables should be the leaves of graph. */ AddOutputToLeafOps(&result); return std::move(graph); } bool MultiDevSSAGraphBuilder::IsSparseGradient(const std::string &og) const { PADDLE_ENFORCE(all_vars_.count(og) != 0); if (all_vars_.at(og)->GetType() == proto::VarType::SELECTED_ROWS) { return true; } return false; } void MultiDevSSAGraphBuilder::SetCommunicationContext( OpHandleBase *op_handle, const platform::Place &p) const { #ifdef PADDLE_WITH_CUDA if (nccl_ctxs_ == nullptr) { op_handle->SetDeviceContext(p, platform::DeviceContextPool::Instance().Get(p)); } #else op_handle->SetDeviceContext(p, platform::DeviceContextPool::Instance().Get(p)); #endif } void MultiDevSSAGraphBuilder::CreateBroadcastOp(Graph *result, const std::string &p_name, size_t src_dev_id) const { result->nodes.emplace_back(new ir::Node(ir::Node::Type::kOperation)); #ifdef PADDLE_WITH_CUDA auto *op_handle = new BroadcastOpHandle(result->nodes.back().get(), local_scopes_, places_, nccl_ctxs_); #else auto *op_handle = new BroadcastOpHandle(result->nodes.back().get(), local_scopes_, places_); #endif result->Get("ops").emplace_back(op_handle); auto *in = result->Get("vars").at(src_dev_id).at(p_name).back().get(); op_handle->AddInput(in); for (size_t i = 0; i < places_.size(); ++i) { auto &p = places_[i]; SetCommunicationContext(op_handle, p); result->nodes.emplace_back(new ir::Node(ir::Node::Type::kVariable)); auto &vars = result->Get("vars").at(i).at(p_name); auto *out_var = new VarHandle(result->nodes.back().get(), vars.size(), i, p_name, p); vars.emplace_back(out_var); op_handle->AddOutput(out_var); } } void MultiDevSSAGraphBuilder::CreateComputationalOp(Graph *result, const OpDesc &op, int dev_id) const { result->nodes.emplace_back(new ir::Node(ir::Node::Type::kOperation)); result->Get("ops").emplace_back(new ComputationOpHandle( result->nodes.back().get(), op, local_scopes_[dev_id], places_[dev_id])); CreateOpHandleIOs(result, op, dev_id); } void MultiDevSSAGraphBuilder::InsertAllReduceOp(Graph *result, const std::string &og) const { result->nodes.emplace_back(new ir::Node(ir::Node::Type::kOperation)); #ifdef PADDLE_WITH_CUDA result->Get("ops").emplace_back(new AllReduceOpHandle( result->nodes.back().get(), local_scopes_, places_, nccl_ctxs_)); #else result->Get("ops").emplace_back(new AllReduceOpHandle( result->nodes.back().get(), local_scopes_, places_)); #endif auto *op_handle = result->Get("ops").back().get(); for (size_t i = 0; i < places_.size(); ++i) { auto &p = places_[i]; SetCommunicationContext(op_handle, p); auto &vars = result->Get("vars")[i][og]; PADDLE_ENFORCE(!vars.empty()); auto &prev_grad = vars.back(); op_handle->AddInput(prev_grad.get()); result->nodes.emplace_back(new ir::Node(ir::Node::Type::kVariable)); auto var = new VarHandle(result->nodes.back().get(), vars.size(), i, og, p); vars.emplace_back(var); op_handle->AddOutput(var); } } void MultiDevSSAGraphBuilder::InsertDataBalanceOp( Graph *result, const std::vector &datas) const { result->nodes.emplace_back(new ir::Node(ir::Node::Type::kOperation)); #ifdef PADDLE_WITH_CUDA result->Get("ops").emplace_back(new DataBalanceOpHandle( result->nodes.back().get(), local_scopes_, places_, nccl_ctxs_)); #else result->Get("ops").emplace_back(new DataBalanceOpHandle( result->nodes.back().get(), local_scopes_, places_)); #endif auto *op_handle = result->Get("ops").back().get(); for (size_t i = 0; i < places_.size(); ++i) { auto &p = places_[i]; SetCommunicationContext(op_handle, p); for (const std::string &d_name : datas) { auto &vars = result->Get("vars")[i][d_name]; PADDLE_ENFORCE(!vars.empty()); op_handle->AddInput(vars.back().get()); result->nodes.emplace_back(new ir::Node(ir::Node::Type::kVariable)); auto var = new VarHandle(result->nodes.back().get(), vars.size(), i, d_name, p); vars.emplace_back(var); op_handle->AddOutput(var); } } } bool MultiDevSSAGraphBuilder::IsParameterGradientOnce( const std::string &og, std::unordered_set *og_has_been_broadcast) const { bool is_pg_once = grad_names_.count(og) != 0 && og_has_been_broadcast->count(og) == 0; if (is_pg_once) { // Insert NCCL AllReduce Op og_has_been_broadcast->insert(og); } return is_pg_once; } int MultiDevSSAGraphBuilder::GetOpDeviceID(const OpDesc &op) const { if (strategy_.reduce_ != BuildStrategy::ReduceStrategy::kReduce) { return -1; } int op_role = boost::get( op.GetAttr(framework::OpProtoAndCheckerMaker::OpRoleAttrName())); if (op_role != static_cast(framework::OpRole::kOptimize)) { return -1; } auto param_grad = boost::get>( op.GetAttr(OpProtoAndCheckerMaker::OpRoleVarAttrName())); PADDLE_ENFORCE_EQ(param_grad.size(), 2U); int dev_id = GetVarDeviceID(param_grad[1]); PADDLE_ENFORCE_NE(dev_id, -1, "dev_id should not be -1.[%s, %s]", op.Type(), param_grad[0]); return dev_id; } int MultiDevSSAGraphBuilder::GetVarDeviceID(const std::string &varname) const { auto got = var_name_on_devices_.find(varname); return got == var_name_on_devices_.end() ? -1 : got->second; } void MultiDevSSAGraphBuilder::CreateScaleLossGradOp(Graph *result) const { for (size_t i = 0; i < places_.size(); ++i) { // Insert ScaleCost OpHandle #ifdef PADDLE_WITH_CUDA auto *communication_dev_ctx = nccl_ctxs_ ? nccl_ctxs_->DevCtx(places_[i]) : platform::DeviceContextPool::Instance().Get(places_[i]); #else auto *communication_dev_ctx = platform::DeviceContextPool::Instance().Get(platform::CPUPlace()); #endif result->nodes.emplace_back(new ir::Node(ir::Node::Type::kOperation)); auto *op_handle = new ScaleLossGradOpHandle( result->nodes.back().get(), local_scopes_.size(), local_scopes_[i], places_[i], communication_dev_ctx); result->Get("ops").emplace_back(op_handle); // FIXME: Currently ScaleLossGradOp only use device_count as scale // factor. So it does not depend on any other operators. // VarHandle *loss = GetVarHandle(loss_var_name, place); // loss->pending_ops_.emplace_back(op_handle); // op_handle->inputs_.emplace_back(loss); CreateOpOutput(result, op_handle, GradVarName(loss_var_name_), places_[i], i); } } void MultiDevSSAGraphBuilder::CreateComputationalOps(Graph *result, const OpDesc &op, size_t num_places) const { for (size_t scope_idx = 0; scope_idx < num_places; ++scope_idx) { auto p = places_[scope_idx]; auto s = local_scopes_[scope_idx]; result->nodes.emplace_back(new ir::Node(ir::Node::Type::kOperation)); result->Get("ops").emplace_back( new ComputationOpHandle(result->nodes.back().get(), op, s, p)); CreateOpHandleIOs(result, op, scope_idx); } } VarHandle *MultiDevSSAGraphBuilder::CreateReduceOp(Graph *result, const std::string &og, int dst_dev_id) const { result->nodes.emplace_back(new ir::Node(ir::Node::Type::kOperation)); #ifdef PADDLE_WITH_CUDA result->Get("ops").emplace_back(new ReduceOpHandle( result->nodes.back().get(), local_scopes_, places_, nccl_ctxs_)); #else result->Get("ops").emplace_back( new ReduceOpHandle(result->nodes.back().get(), local_scopes_, places_)); #endif auto *op_handle = result->Get("ops").back().get(); for (size_t i = 0; i < places_.size(); ++i) { auto &p = places_[i]; SetCommunicationContext(op_handle, p); auto &vars = result->Get("vars")[i][og]; PADDLE_ENFORCE(!vars.empty()); auto &prev_grad = vars.back(); op_handle->AddInput(prev_grad.get()); } auto &vars = result->Get("vars")[dst_dev_id][og]; result->nodes.emplace_back(new ir::Node(ir::Node::Type::kVariable)); auto var = new VarHandle(result->nodes.back().get(), vars.size(), dst_dev_id, og, places_[dst_dev_id]); vars.emplace_back(var); op_handle->AddOutput(var); return var; } // Find the first occurence of `prev_op_name` and make current `op` depend // on it. void MultiDevSSAGraphBuilder::ConnectOp(Graph *result, OpHandleBase *op, const std::string &prev_op_name) const { for (auto &prev_op : result->Get("ops")) { if (prev_op->Name() == prev_op_name) { result->nodes.emplace_back(new ir::Node(ir::Node::Type::kVariable)); auto *dep_var = new DummyVarHandle(result->nodes.back().get()); prev_op->AddOutput(dep_var); result->Get("dep_vars").emplace(dep_var); op->AddInput(dep_var); } } } void MultiDevSSAGraphBuilder::CreateDistTrainOp(Graph *result, const OpDesc &op) const { int op_dev_id = -1; if (op.Type() == "split_byref" || op.Type() == "split_selected_rows") { op_dev_id = GetVarDeviceID(op.InputArgumentNames()[0]); if (strategy_.reduce_ == BuildStrategy::ReduceStrategy::kAllReduce) { op_dev_id = GetAppropriateDeviceID(op.InputArgumentNames()); for (auto &varname : op.InputArgumentNames()) { var_name_on_devices_.emplace(varname, op_dev_id); } } for (auto &varname : op.OutputArgumentNames()) { var_name_on_devices_.emplace(varname, op_dev_id); } } else if (op.Type() == "concat") { op_dev_id = GetVarDeviceID(op.InputArgumentNames()[0]); for (auto &varname : op.OutputArgumentNames()) { var_name_on_devices_.emplace(varname, op_dev_id); } } else { PADDLE_ENFORCE( "the distribute training related op should be in [split_byref, " "concat]."); } PADDLE_ENFORCE(op_dev_id != -1, "can not find right place for distributed op: %s", op.Type()); CreateComputationalOp(result, op, op_dev_id); if (op.Type() == "concat") { ConnectOp(result, result->Get("ops").back().get(), "fetch_barrier"); } } // Create RPC related op handles that connects its in ops and out ops. void MultiDevSSAGraphBuilder::CreateRPCOp(Graph *result, const OpDesc &op) const { int op_dev_id = -1; if (op.Type() == "send") { op_dev_id = GetVarDeviceID(op.InputArgumentNames()[0]); // the variable name which contains .block means it was splited by // split_byref op // so that we can balance the variable blocks to all the pserver // instances. if (strategy_.reduce_ == BuildStrategy::ReduceStrategy::kAllReduce && op.InputArgumentNames()[0].find(".block") == std::string::npos) { op_dev_id = GetAppropriateDeviceID(op.InputArgumentNames()); for (auto &varname : op.InputArgumentNames()) { var_name_on_devices_.emplace(varname, op_dev_id); } } } else if (op.Type() == "recv") { op_dev_id = GetAppropriateDeviceID(op.OutputArgumentNames()); for (auto &varname : op.OutputArgumentNames()) { var_name_on_devices_.emplace(varname, op_dev_id); } } else { // send_barrier and fetch_barrier op can be scheduled on device 0 op_dev_id = 0; } PADDLE_ENFORCE(op_dev_id != -1, "can not find the right place for rpc op: %s", op.Type()); result->nodes.emplace_back(new ir::Node(ir::Node::Type::kOperation)); result->Get("ops").emplace_back( new RPCOpHandle(result->nodes.back().get(), op, local_scopes_[op_dev_id], op.Type(), places_[op_dev_id])); if (op.Type() == "send_barrier") { ConnectOp(result, result->Get("ops").back().get(), "send"); } else if (op.Type() == "recv") { ConnectOp(result, result->Get("ops").back().get(), "send_barrier"); } else if (op.Type() == "fetch_barrier") { ConnectOp(result, result->Get("ops").back().get(), "recv"); } else if (op.Type() == "send") { // do nothing } else { PADDLE_THROW( "rpc op should be in [" "send, send_barrier. recv, fetch_barrier]"); } CreateOpHandleIOs(result, op, op_dev_id); } bool MultiDevSSAGraphBuilder::IsScaleLossOp(const OpDesc &op) const { return boost::get( op.GetAttr(OpProtoAndCheckerMaker::OpRoleAttrName())) == (static_cast(OpRole::kBackward) | static_cast(OpRole::kLoss)) && !loss_var_name_.empty(); // If loss_var is empty. This is test mode } } // namespace details } // namespace framework } // namespace paddle