/* Copyright (c) 2016 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/parallel_executor.h" #include "ThreadPool.h" #include "executor.h" #include "lod_tensor.h" #include "op_registry.h" namespace paddle { namespace framework { #ifdef PADDLE_WITH_CUDA // FIXME: CHECK the return value of x; #define NCCL_INVOKE(x) x #endif struct OpHandle; struct VarHandleBase { virtual ~VarHandleBase() {} virtual std::string DebugString() const = 0; OpHandle *generated_op_; std::vector pending_ops_; }; struct VarHandle : public VarHandleBase { std::string DebugString() const override { std::stringstream ss; ss << name_ << ":" << place_; return ss.str(); } size_t version_; std::string name_; platform::Place place_; }; struct DependencyVarHandle : public VarHandleBase { std::string DebugString() const override { return "Dependency Variable"; } }; struct OpHandle { std::vector inputs_; std::vector outputs_; std::unordered_map dev_ctx_; std::string DebugString() { std::stringstream ss; ss << "("; for (auto *var : inputs_) { ss << var->DebugString() << ", "; } ss << ") --> ("; for (auto *var : outputs_) { ss << var->DebugString() << ", "; } ss << ")\n"; return ss.str(); } virtual ~OpHandle() {} virtual void Run() { PADDLE_THROW("Not implemented"); } virtual void Wait() {} }; struct ComputationOpHandle : public OpHandle { std::unique_ptr op_; Scope *scope_; platform::Place place_; explicit ComputationOpHandle(const OpDesc &op_desc, Scope *scope, platform::Place place) : op_(framework::OpRegistry::CreateOp(op_desc)), scope_(scope), place_(place) {} void Run() override { // Wait other op if necessary LOG(INFO) << "Run " << this << " " << DebugString(); auto *cur_ctx = dev_ctx_[place_]; for (auto *in : inputs_) { if (in->generated_op_ && in->generated_op_->dev_ctx_[place_] != cur_ctx) { in->generated_op_->Wait(); } } op_->Run(*scope_, place_); LOG(INFO) << "Done " << this; } }; struct ScaleLossGradOpHandle : public OpHandle { float coeff_; Scope *scope_; platform::Place place_; explicit ScaleLossGradOpHandle(size_t num_dev, Scope *scope, platform::Place place) : coeff_(static_cast(1.0 / num_dev)), scope_(scope), place_(place) {} void Run() override { LOG(INFO) << "Run Scale Loss Grad"; std::string var_name = static_cast(this->outputs_[0])->name_; float *tmp = scope_->FindVar(var_name) ->GetMutable() ->mutable_data(make_ddim({1}), place_); if (platform::is_cpu_place(place_)) { *tmp = coeff_; } else { memory::Copy( boost::get(place_), tmp, platform::CPUPlace(), &coeff_, sizeof(float), static_cast(this->dev_ctx_[place_]) ->stream()); } } }; struct NCCLAllReduceOpHandle : public OpHandle { void Run() override { if (this->inputs_.size() == 1) { return; // No need to all reduce when GPU count = 1; } } }; class ParallelExecutorPrivate { public: explicit ParallelExecutorPrivate(size_t num_threads = 12) : pool_(num_threads) {} std::unordered_map local_scopes_; #ifdef PADDLE_WITH_CUDA struct NCCLContext { std::unique_ptr ctx_; ncclComm_t comm; explicit NCCLContext(int dev_id) { ctx_.reset(new platform::CUDADeviceContext(platform::CUDAPlace(dev_id))); } cudaStream_t stream() const { return ctx_->stream(); } int device_id() const { return boost::get(ctx_->GetPlace()).device; } static void InitNCCLContext(std::map &contexts) { std::vector comms; std::vector devs; comms.resize(contexts.size()); devs.reserve(contexts.size()); for (auto &ctx : contexts) { devs.push_back(ctx.first); } NCCL_INVOKE(platform::dynload::ncclCommInitAll( &comms[0], static_cast(contexts.size()), &devs[0])); int i = 0; for (auto &ctx : contexts) { ctx.second.comm = comms[i++]; } } }; std::map communication_streams_; NCCLContext &GetNCCLCtx(platform::Place p) { int dev_id = boost::get(p).device; return communication_streams_.at(dev_id); } #endif platform::DeviceContext *CommunicationDevCtx(const platform::Place &place) { if (platform::is_cpu_place(place) || local_scopes_.size() == 1) { return const_cast( platform::DeviceContextPool::Instance().Get(place)); } else { #ifdef PADDLE_WITH_CUDA return GetNCCLCtx(place).ctx_.get(); #else PADDLE_THROW("Not compiled with CUDA") #endif } } platform::Place main_place_; std::unordered_map>, platform::PlaceHash> vars_; std::unordered_set> dep_vars_; std::vector> ops_; // Use a simpler thread pool, might be faster. ThreadPool pool_; std::unique_ptr exception_; }; // TODO(yy): Move this function somewhere ncclDataType_t ToNCCLDataType(std::type_index type) { // FIXME!! return ncclFloat; } ParallelExecutor::ParallelExecutor( const std::vector &places, const std::unordered_set ¶ms, const ProgramDesc &startup_program, const ProgramDesc &main_program, const std::string &loss_var_name, Scope *scope) : member_(new ParallelExecutorPrivate()) { // Step 1. RunStartupProgram and Bcast the params to devs. Executor exe(places[0]); exe.Run(startup_program, scope, 0); // Create local scopes for (auto &place : places) { member_->local_scopes_[place] = &scope->NewScope(); } member_->main_place_ = places[0]; // Bcast Parameters to all GPUs if (platform::is_gpu_place(member_->main_place_) && member_->local_scopes_.size() != 1) { // Is CUDA BuildNCCLCommunicator(); BCastParamsToGPUs(startup_program); } // Startup Program has been run. All local scopes has correct parameters. // Step 2. Convert main_program to SSA form and dependency graph. Also, insert // ncclOp ConstructDependencyGraph(params, main_program, loss_var_name); // Step 3. Create vars in each scope; for (auto &pair : member_->local_scopes_) { auto *scope = pair.second; for (auto *var : main_program.Block(0).AllVars()) { if (scope->FindVar(var->Name()) != nullptr) { continue; } InitializeVariable(scope->Var(var->Name()), var->GetType()); } } } void ParallelExecutor::ConstructDependencyGraph( const std::unordered_set ¶ms, const ProgramDesc &main_program, const std::string &loss_var_name) const { std::unordered_set grads; for (auto &each_param : params) { grads.insert(each_param + "@GRAD"); } bool is_forwarding = true; for (auto *op : main_program.Block(0).AllOps()) { bool change_forward = false; if (!is_forwarding) { // FIXME(yy): Do not hard code like this if (op->OutputArgumentNames().size() == 1 && op->OutputArgumentNames()[0] == loss_var_name + "@GRAD") { continue; // Drop fill 1. for backward coeff; } } for (auto &pair : member_->local_scopes_) { member_->ops_.emplace_back( new ComputationOpHandle(*op, pair.second, pair.first)); auto *op_handle = member_->ops_.back().get(); op_handle->dev_ctx_[pair.first] = const_cast( platform::DeviceContextPool::Instance().Get(pair.first)); auto var_names = op->InputArgumentNames(); for (auto &each_var_name : var_names) { auto &place = pair.first; VarHandle *var = GetVarHandle(each_var_name, place); op_handle->inputs_.emplace_back(var); var->pending_ops_.emplace_back(op_handle); } var_names = op->OutputArgumentNames(); for (auto &each_var_name : var_names) { auto &place = pair.first; GenerateVar(op_handle, each_var_name, place); } if (is_forwarding) { if (var_names.size() == 1 && var_names[0] == loss_var_name) { // Insert ScaleCost OpHandle member_->ops_.emplace_back(new ScaleLossGradOpHandle( this->member_->local_scopes_.size(), pair.second, pair.first)); op_handle = member_->ops_.back().get(); op_handle->dev_ctx_[pair.first] = member_->CommunicationDevCtx(pair.first); auto &place = pair.first; // 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); GenerateVar(op_handle, loss_var_name + "@GRAD", place); change_forward = true; LOG(INFO) << "Scale Loss " << op_handle->DebugString(); } } } if (change_forward) { is_forwarding = false; } if (!is_forwarding) { auto var_names = op->OutputArgumentNames(); for (auto &og : var_names) { if (grads.count(og) != 0) { // is param grad // Insert NCCL AllReduce Op member_->ops_.emplace_back(new NCCLAllReduceOpHandle()); auto *op_handle = member_->ops_.back().get(); for (auto &pair : member_->local_scopes_) { auto &place = pair.first; auto &vars = member_->vars_[place][og]; if (vars.empty()) { // This device has no data. continue. continue; } auto *prev_grad = &vars[vars.size() - 1]; op_handle->inputs_.emplace_back(prev_grad); prev_grad->pending_ops_.emplace_back(op_handle); auto &var = vars[vars.size()]; var.place_ = place; var.generated_op_ = op_handle; var.name_ = og; var.version_ = vars.size() - 1; op_handle->outputs_.emplace_back(&var); for (auto &pair : member_->local_scopes_) { op_handle->dev_ctx_[pair.first] = member_->CommunicationDevCtx(pair.first); } } } } } } /** * Dependency graph has been constructed. However, there are still data * harzaeds need to be handled. * * We only handle write after read(WAR), since it should not have a write * after write in program. If there are write after write operators, we need * prune them. * * https://en.wikipedia.org/wiki/Hazard_(computer_architecture)#Write_after_read_(WAR) */ for (auto &place_pair : member_->vars_) { for (auto &name_pair : place_pair.second) { if (name_pair.second.size() <= 1) { return; } auto it_new = name_pair.second.rbegin(); auto it_old = name_pair.second.rbegin(); ++it_old; for (; it_old != name_pair.second.rend(); it_new = it_old, ++it_old) { auto *write_op = it_new->second.generated_op_; auto &read_ops = it_old->second.pending_ops_; auto *ex_write_op = it_old->second.generated_op_; if (ex_write_op == nullptr) { // Nobody write this var. continue; } LOG(INFO) << "Link " << it_new->second.DebugString() << " From " << it_old->second.version_ << " To " << it_new->second.version_; for (auto *read_op : read_ops) { // Manually add a dependency var from read_op to write_op; if (read_op == write_op) { // Read Write is the same op. continue; } auto *dep_var = new DependencyVarHandle(); dep_var->generated_op_ = read_op; read_op->outputs_.emplace_back(dep_var); dep_var->pending_ops_.emplace_back(write_op); write_op->inputs_.emplace_back(dep_var); member_->dep_vars_.emplace(dep_var); } } } } } void ParallelExecutor::GenerateVar(OpHandle *op_handle, const std::string &each_var_name, const platform::Place &place) const { auto &vars = member_->vars_[place][each_var_name]; size_t version = vars.size(); auto &var = vars[version]; var.version_ = version; var.generated_op_ = op_handle; var.name_ = each_var_name; var.place_ = place; op_handle->outputs_.emplace_back(&var); } VarHandle *ParallelExecutor::GetVarHandle(const std::string &each_var_name, const platform::Place &place) const { auto &var_holders = member_->vars_[place]; auto &var_holder = var_holders[each_var_name]; VarHandle *var = nullptr; if (var_holder.empty()) { auto &init_var = var_holder[0]; init_var.place_ = place; init_var.name_ = each_var_name; init_var.generated_op_ = nullptr; init_var.version_ = 0; var = &init_var; } else { var = &var_holder.rbegin()->second; } return var; } void ParallelExecutor::BCastParamsToGPUs( const ProgramDesc &startup_program) const { #ifdef PADDLE_WITH_CUDA auto *main_scope = member_->local_scopes_[member_->main_place_]; for (auto *var_desc : startup_program.Block(0).AllVars()) { if (var_desc->GetType() == proto::VarType::LOD_TENSOR) { auto &main_tensor = main_scope->FindVar(var_desc->Name())->Get(); ncclDataType_t data_type = ToNCCLDataType(main_tensor.type()); auto &dims = main_tensor.dims(); size_t numel = main_tensor.numel(); std::vector> mems; mems.emplace_back(const_cast(main_tensor.data()), &member_->GetNCCLCtx(member_->main_place_)); for (auto &pair : member_->local_scopes_) { if (pair.first == member_->main_place_) { continue; } auto local_scope = pair.second; auto *t = local_scope->Var(var_desc->Name())->GetMutable(); t->Resize(dims); mems.emplace_back(t->mutable_data(pair.first, main_tensor.type()), &member_->GetNCCLCtx(member_->main_place_)); } // TODO(yy): Invoke ncclBCast here. mems, numel, data_type. The mems[0] // is the src, rests are dests. (void)(data_type); (void)(numel); } } #else PADDLE_THROW("Not compiled with CUDA"); #endif } void ParallelExecutor::BuildNCCLCommunicator() const { #ifdef PADDLE_WITH_CUDA for (auto &place_pair : member_->local_scopes_) { auto place = place_pair.first; int dev_id = boost::get(place).device; member_->communication_streams_.emplace( dev_id, ParallelExecutorPrivate::NCCLContext(dev_id)); } ParallelExecutorPrivate::NCCLContext::InitNCCLContext( member_->communication_streams_); #endif } std::vector ParallelExecutor::Run( const std::vector &fetch_tensors) { // Version --> VarHandle member_->exception_.reset(); std::unordered_map pending_vars; std::unordered_map pending_ops; for (auto &place_pair : member_->vars_) { for (auto &name_pair : place_pair.second) { for (auto &version_pair : name_pair.second) { pending_vars[&version_pair.second] = version_pair.second.generated_op_ == nullptr; } } } for (auto &var : member_->dep_vars_) { pending_vars[var.get()] = var->generated_op_ == nullptr; } std::vector to_run; for (auto &op : member_->ops_) { if (op->inputs_.empty()) { // Special case, Op has no input. to_run.emplace_back(op.get()); } else { pending_ops.insert({op.get(), op->inputs_.size()}); } } for (auto *op : to_run) { RunOp(pending_vars, op); } while (!pending_ops.empty()) { VarHandleBase *ready_var = nullptr; for (auto &pair : pending_vars) { if (pair.second) { ready_var = pair.first; } } if (ready_var == nullptr) { // FIXME use conditional var instead of busy wait. if (member_->exception_) { throw * member_->exception_; } std::this_thread::yield(); continue; } pending_vars.erase(ready_var); to_run.clear(); for (auto *op : ready_var->pending_ops_) { auto &deps = pending_ops[op]; --deps; if (deps == 0) { to_run.emplace_back(op); } } for (auto *op : to_run) { pending_ops.erase(op); RunOp(pending_vars, op); } } return std::vector(); } void ParallelExecutor::RunOp( std::unordered_map &pending_vars, OpHandle *op) const { std::vector ready_buffer; for (auto *var : op->outputs_) { ready_buffer.emplace_back(&pending_vars[var]); } auto op_run = [ready_buffer, op, this] { try { // TODO(yy) Check Previous Op has same dev ctx. op->Run(); for (auto *ready : ready_buffer) { *ready = true; } } catch (platform::EnforceNotMet ex) { member_->exception_.reset(new platform::EnforceNotMet(ex)); } catch (...) { LOG(FATAL) << "Unknown exception catched"; } }; member_->pool_.enqueue(op_run); } } // namespace framework } // namespace paddle