/* Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserve. 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 "MultiGradientMachine.h" #include "paddle/utils/Logging.h" #include "paddle/utils/Stat.h" #include "NeuralNetwork.h" #include "ParallelNeuralNetwork.h" DEFINE_bool(allow_only_one_model_on_one_gpu, true, "If true, do not allow multiple models on one GPU device"); #ifdef PADDLE_METRIC_LEARNING DECLARE_bool(external); #endif namespace paddle { // get types of the parameters which need to be merged after backward() static void fillMergeTypes(PassType passType, std::vector* mergeTypes) { mergeTypes->clear(); if (passType != PASS_TEST) { mergeTypes->push_back(PARAMETER_GRADIENT); } } MultiGradientMachine::MultiGradientMachine(const ModelConfig& config, bool useGpu) : useGpu_(useGpu), trainerBarrier_(FLAGS_trainer_count), allBarrier_(FLAGS_trainer_count + 1), inArgsCopied_(false) { #ifdef PADDLE_METRIC_LEARNING isPassGrad_ = FLAGS_external; #else isPassGrad_ = false; #endif numThreads_ = FLAGS_trainer_count; if (useGpu) { //! TODO(yuyang18): When useGpu=false && paddle is not compiled with gpu, //! the hl_get_device_count will get an error result. It seems should return //! 0 when hppl is not compiled as gpu version. numDevices_ = hl_get_device_count(); } else { numDevices_ = 0; } ParamInitCallback mainParamInitCb = [this](int paramId, Parameter* para) { // only create buf for CPU parameters // GPU parameters will be created in each thread if (para->useGpu()) return; if (para->isSparseRemoteUpdate()) { para->enableType(PARAMETER_VALUE, FLAGS_loadsave_parameters_in_pserver ? Parameter::MAT_SPARSE_ROW_PREFETCH : Parameter::MAT_SPARSE_ROW_PREFETCH_FULL_SIZE); para->enableType(PARAMETER_GRADIENT, Parameter::MAT_SPARSE_ROW); } else if (para->isGradSparseUpdate()) { para->enableType(PARAMETER_VALUE); para->enableType(PARAMETER_GRADIENT, Parameter::MAT_SPARSE_ROW_IDS); SparseRowIdsCpuMatrix* mat = dynamic_cast( para->getMat(PARAMETER_GRADIENT).get()); mat->setNumOfThreads(FLAGS_trainer_count); } else if (para->isValueShared()) { para->enableType(PARAMETER_VALUE, Parameter::MAT_VALUE_SHARED); if (!para->isStatic()) { para->enableType(PARAMETER_GRADIENT); } } else { para->enableType(PARAMETER_VALUE); if (!para->isStatic()) { para->enableType(PARAMETER_GRADIENT); } } }; NeuralNetwork* nn = NeuralNetwork::create(config); nn->init(config, mainParamInitCb); gradientMachine_.reset(nn); parameters_ = gradientMachine_->getParameters(); numLogicalDevices_ = 0; if (useGpu_) { numLogicalDevices_ = 1; for (size_t pid = 0; pid < parameters_.size(); pid++) { if (parameters_[pid]->getConfig().device() + 1 > numLogicalDevices_) { numLogicalDevices_ = parameters_[pid]->getConfig().device() + 1; } } LOG(INFO) << "numLogicalDevices=" << numLogicalDevices_ << " numThreads=" << numThreads_ << " numDevices=" << numDevices_; if (numLogicalDevices_ * numThreads_ > numDevices_ && FLAGS_allow_only_one_model_on_one_gpu) { LOG(FATAL) << "trainer_count * num_devices_in_model " << "(" << numThreads_ << "*" << numLogicalDevices_ << ")" << "=" << numThreads_ * numLogicalDevices_ << " exceeds number of GPU devices(" << numDevices_ << ")"; } numLogicalDevices_ = std::min(numLogicalDevices_, numDevices_); /* Enables direct access to memory allocations on a peer device */ for (int i = 0; i < numThreads_; i++) { for (int d = 0; d < numLogicalDevices_; ++d) { enablePeerAccess(logicalDeviceId2RealDeviceId(d, i), logicalDeviceId2RealDeviceId(d, i + 1)); enablePeerAccess(logicalDeviceId2RealDeviceId(d, i), logicalDeviceId2RealDeviceId(d, i - 1)); } } } for (int i = 0; i < numThreads_; ++i) { threads_.emplace_back(new TrainerThread(config, i, this)); } bufferSizes_.resize(numLogicalDevices_, 0); paraMainThread_.reserve(parameters_.size()); int pid = 0; for (auto& para : parameters_) { if (para->isStatic() || !para->useGpu()) { paraMainThread_.push_back(0); } else { int end = pid++ % numThreads_; paraMainThread_.push_back(end); int paraDeviceId = para->getDeviceId(); if (paraDeviceId == -1) paraDeviceId = 0; paraDeviceId = paraDeviceId % numLogicalDevices_; if (para->getSize() > bufferSizes_[paraDeviceId]) { bufferSizes_[paraDeviceId] = para->getSize(); VLOG(1) << "bufferSize[" << paraDeviceId << "]" << para->getSize(); } } } // TODO(xuwei06) Instead of using maximal buffer size, we may use a smaller // fixed buffer size and use pipeline to dispatch parameter value and merge // parameter gradient, which may be faster. // combination of all trainers mainPara into GradientMachine parameters hasNonstaticCpuParamters_ = false; for (size_t pid = 0; pid < parameters_.size(); pid++) { if (parameters_[pid]->useGpu()) { parameters_[pid] = threads_[paraMainThread_[pid]]->getParameters()[pid]; } else if (!parameters_[pid]->isStatic()) { hasNonstaticCpuParamters_ = true; } } gradBufs_.resize(numThreads_); for (int i = 0; i < numThreads_; ++i) { gradBufs_[i].resize(numLogicalDevices_); for (int d = 0; d < numLogicalDevices_; ++d) { gradBufs_[i][d].sem.post(); } } outArgStream_ = HPPL_STREAM_1; for (auto& thread : threads_) { thread->start(); } } std::vector*> MultiGradientMachine::getSlaveParameters() { std::vector*> vec; vec.reserve(threads_.size()); for (auto& thread : threads_) { vec.push_back(&thread->getParameters()); } return vec; } void MultiGradientMachine::notifyGradientTransfer(int paramId) { gradQueue_.enqueue(paramId); } void MultiGradientMachine::allocGradBufs() { if (numLogicalDevices_ == 0) return; if (gradBufs_[0][0].bufs.size() >= mergeTypes_.size()) return; for (int i = 0; i < numThreads_; i++) { for (int d = 0; d < numLogicalDevices_; ++d) { if (bufferSizes_[d] == 0) continue; SetDevice device(logicalDeviceId2RealDeviceId(d, i)); for (size_t j = 0; j < mergeTypes_.size(); j++) { gradBufs_[i][d].bufs.push_back( Vector::create(bufferSizes_[d], /* useGpu= */ true)); } } } } void MultiGradientMachine::prefetch(const std::vector& inArgs) { // Each gradient machine in threads needs to do prefetch on its own // part of inArgs. So we need to first divide inArgs to each thread inArgs_ = inArgs; startTask(TASK_COPY_IN_ARGS); for (auto& para : parameters_) { if (para->isSparseRemoteUpdate()) { auto mat = dynamic_cast( para->getMat(PARAMETER_VALUE).get()); mat->clearIndices(); } } waitForCopyInArgs(); // Because SparsePrefetchRowCpuMatrix can only be changed by ONE thread // at one time, we need to do prefetch sequentially for (auto& thread : threads_) { thread->prefetch(); } for (auto& para : parameters_) { if (para->isSparseRemoteUpdate()) { auto mat = dynamic_cast( para->getMat(PARAMETER_VALUE).get()); mat->setupIndices(); auto matGrad = dynamic_cast( para->getMat(PARAMETER_GRADIENT).get()); matGrad->reserveStore(); } } } void MultiGradientMachine::forward(const std::vector& inArgs, std::vector* outArgs, PassType passType) { forwardImp(inArgs, outArgs, passType, TASK_FORWARD); } void MultiGradientMachine::forwardImp(const std::vector& inArgs, std::vector* outArgs, PassType passType, TaskType taskType) { updateThreadParameters(); passType_ = passType; if (!inArgsCopied_) { inArgs_ = inArgs; inArgsCopied_ = false; } fillMergeTypes(passType, &mergeTypes_); allocGradBufs(); startTask(taskType); getOutArgs(outArgs, passType); } void MultiGradientMachine::backward(const UpdateCallback& callback) { backwardCallback_ = callback; startTask(TASK_BACKWARD); backwardImp(callback); } void MultiGradientMachine::forwardBackward(const std::vector& inArgs, std::vector* outArgs, PassType passType, const UpdateCallback& callback) { backwardCallback_ = callback; forwardImp(inArgs, outArgs, passType, TASK_FORWARD_BACKWARD); backwardImp(callback); } MatrixPtr MultiGradientMachine::getLayerOutput( const std::string& layerName) const { // each thread has the same neural network auto nn = threads_[0]->getGradientMachine(); size_t height = 0; size_t width = nn->getLayerOutput(layerName)->getWidth(); std::vector mats; mats.reserve(threads_.size()); for (auto& thread : threads_) { MatrixPtr out = thread->getGradientMachine()->getLayerOutput(layerName); mats.push_back(out); height += out->getHeight(); CHECK_EQ(width, out->getWidth()); } MatrixPtr layerOutput; Matrix::resizeOrCreate(layerOutput, height, width, false, false); // copy one layer output from one trainer thread at each time size_t startRow = 0; for (auto& mat : mats) { auto tmpMatrix = layerOutput->subMatrix(startRow, mat->getHeight()); tmpMatrix->copyFrom(*mat); startRow += mat->getHeight(); } return layerOutput; } void MultiGradientMachine::backwardImp(const UpdateCallback& callback) { for (size_t i = 0; i < parameters_.size(); i++) { if (!parameters_[i]->useGpu() || parameters_[i]->isStatic()) continue; REGISTER_TIMER("controller_dequeue"); gradQueue_.dequeue(); } if (hasNonstaticCpuParamters()) { waitAfterMerge(); if (backwardCallback_) { for (auto& para : parameters_) { if (!para->useGpu() && !para->isStatic()) { backwardCallback_(para.get()); } } } } } void MultiGradientMachine::updateThreadParameters() { for (size_t pid = 0; pid < parameters_.size(); ++pid) { if (!parameters_[pid]->useGpu()) continue; if (!parameters_[pid]->isValueUpdated()) continue; parameters_[pid]->clearValueUpdated(); for (int i = 0; i < (int)threads_.size(); i++) { threads_[i]->incUpdateCounter(); } // NotifyValueReady should happen after that all threads' incUpdateCounter() // are called so that the counters are correct when notifyValueReady() // is called. threads_[paraMainThread_[pid]]->notifyValueReady(pid); } } void MultiGradientMachine::onPassEnd() { for (auto& thread : threads_) { thread->onPassEnd(); } } void MultiGradientMachine::finish() { for (auto& thread : threads_) { thread->stop(); } } Evaluator* MultiGradientMachine::makeEvaluator() const { return threads_[0]->getGradientMachine()->makeEvaluator(); } void MultiGradientMachine::eval(Evaluator* evaluator) const { for (auto& thread : threads_) { SetDevice device(thread->getDeviceId()); thread->getGradientMachine()->eval(evaluator); } } void MultiGradientMachine::getOutArgs(std::vector* outArgs, PassType passType) { for (auto& thread : threads_) { REGISTER_TIMER("waitOutArgs"); thread->waitOutArgsReady(); } outArgs_.resize(threads_[0]->getOutArgs().size()); REGISTER_TIMER("copyOutArgs"); for (size_t i = 0; i < outArgs_.size(); ++i) { std::vector args; args.reserve(threads_.size()); for (auto& thread : threads_) { args.push_back(thread->getOutArgs()[i]); } outArgs_[i].concat(args, useGpu_, outArgStream_, passType); } if (useGpu_) { hl_stream_synchronize(outArgStream_); } *outArgs = outArgs_; } void MultiGradientMachine::setOutputGrad(const std::vector& args) { CHECK_EQ(args.size(), outArgs_.size()); for (size_t i = 0; i < args.size(); i++) { outArgs_[i].grad = args[i].grad; } } void MultiGradientMachine::startTask(TaskType taskType) { taskType_ = taskType; for (auto& thread : threads_) { thread->notifyTaskReady(); } } TrainerThread::TrainerThread(const ModelConfig& config, int threadId, MultiGradientMachine* multiMachine) : multiMachine_(multiMachine), config_(config), threadId_(threadId), inArgsCopied_(false) { int numThreads = multiMachine->getNumThreads(); auto& mainParas = multiMachine->getParameters(); using std::placeholders::_1; using std::placeholders::_2; partnerId_ = mod(threadId_ - 1, numThreads); deviceId_ = !multiMachine_->useGpu() ? -1 : multiMachine_->logicalDeviceId2RealDeviceId(0, threadId_); SetDevice gpuDevice(deviceId_); NeuralNetwork* nn = nullptr; if (!multiMachine->useGpu() || !FLAGS_parallel_nn) { nn = NeuralNetwork::create(config); } else { nn = new ParallelNeuralNetwork(); for (auto& paraConfig : *config_.mutable_parameters()) { if (paraConfig.device() != -1) { paraConfig.set_device(multiMachine_->logicalDeviceId2RealDeviceId( paraConfig.device(), threadId_)); } } for (auto& layerConfig : *config_.mutable_layers()) { if (layerConfig.device() != -1) { layerConfig.set_device(multiMachine_->logicalDeviceId2RealDeviceId( layerConfig.device(), threadId_)); } } } // Only GPU do not share parameter values with main paramters. ParamInitCallback slaveParamInitCb = std::bind(parameterInitNN, _1, _2, &mainParas); nn->init(config_, slaveParamInitCb); gradientMachine_.reset(nn); parameters_ = gradientMachine_->getParameters(); if (!FLAGS_parallel_nn) { for (auto& para : parameters_) { para->setDevice(deviceId_); } } backwardCallback_ = std::bind(&TrainerThread::backwardCallback, this, std::placeholders::_1); gradStream_ = HPPL_STREAM_2; valueStream_ = HPPL_STREAM_3; stopping_ = false; updateCounter_ = 0; parameterUpdated_ = false; } TrainerThread::~TrainerThread() { stop(); } void TrainerThread::start() { gradientMachine_->start(); computeThread_.reset(new std::thread([this]() { computeThread(); })); if (multiMachine_->useGpu()) { gradCollectThread_.reset( new std::thread([this]() { gradCollectThread(); })); valueDispatchThread_.reset( new std::thread([this]() { valueDispatchThread(); })); copyThread_.reset(new std::thread([this]() { copyGradToBufferThread(); })); } } void TrainerThread::stop() { if (stopping_) return; stopping_ = true; if (computeThread_) { taskReadySem_.post(); computeThread_->join(); } if (gradCollectThread_) { gradQueue_.enqueue(0); gradCollectThread_->join(); } if (copyThread_) { gradBufQueue_.enqueue(0); copyThread_->join(); } if (valueDispatchThread_) { valueReadyQueue_.enqueue(0); valueDispatchThread_->join(); } } void TrainerThread::computeThread() { VLOG(1) << "gradComputeThread " << threadId_; if (deviceId_ >= 0) { hl_init(deviceId_); } while (true) { { REGISTER_TIMER("taskSem_wait"); taskReadySem_.wait(); } if (stopping_) break; switch (multiMachine_->getTaskType()) { case MultiGradientMachine::TASK_FORWARD_BACKWARD: forward(); backward(); break; case MultiGradientMachine::TASK_FORWARD: forward(); break; case MultiGradientMachine::TASK_BACKWARD: backward(); break; case MultiGradientMachine::TASK_COPY_IN_ARGS: copyInArgs(); inArgsCopied_ = true; multiMachine_->waitForCopyInArgs(); break; } } } void TrainerThread::prefetch() { SetDevice setDevice(deviceId_); gradientMachine_->prefetch(inArgs_); } void TrainerThread::forward() { if (!inArgsCopied_) { REGISTER_TIMER("copyInArgs"); copyInArgs(); } else { inArgsCopied_ = false; } if (multiMachine_->getPassType() != PASS_TEST) { REGISTER_TIMER("clearGradient"); // For main parameter, the user of MultiGpuSyncMachine is responsible // for setting the gradient to zero for (size_t i = 0; i < parameters_.size(); i++) { if (parameters_[i]->useGpu()) { if (multiMachine_->paraMainThread(i) != threadId_) { SetDevice device(parameters_[i]->getDeviceId()); parameters_[i]->clearGradient(); } } else { parameters_[i]->clearGradient(); } } } { REGISTER_TIMER("wait_value"); valueReadyCond_.wait([this]() { return !parameterUpdated_; }); } { fillMergeTypes(multiMachine_->getPassType(), &mergeTypes_); } { REGISTER_TIMER("thread_forward"); gradientMachine_->forward(inArgs_, &outArgs_, multiMachine_->getPassType()); } outArgsReadySem_.post(); } void TrainerThread::backward() { REGISTER_TIMER("thread_backward"); if (multiMachine_->isPassGrad()) { copyOutputGrad(); } gradientMachine_->backward(backwardCallback_); if (multiMachine_->hasNonstaticCpuParamters()) { mergeCpuGradients(); } } void TrainerThread::backwardCallback(Parameter* para) { // CPU parameters are merged in the end if (!para->useGpu()) return; int paramId = para->getID(); if (multiMachine_->getNumThreads() == 1) { // no need to do merge if there is only one thread doCallback(paramId); } else if (threadId_ == mod(multiMachine_->paraMainThread(paramId) - 1, multiMachine_->getNumThreads())) { notifyCopyGradToBuffer(paramId); } else { notifyGradientCollect(paramId); } } void TrainerThread::copyGradToBufferThread() { VLOG(1) << "copyGradToBufferThread " << threadId_; if (deviceId_ >= 0) { hl_init(deviceId_); } auto& partnerThread = multiMachine_->getThread(partnerId_); auto& gradBufs = multiMachine_->getGradBuf(partnerId_); while (true) { int pid = gradBufQueue_.dequeue(); if (stopping_) break; int pdeviceId = multiMachine_->realDeviceId2LogicalDeviceId( parameters_[pid]->getDeviceId(), threadId_); auto& gradBuf = gradBufs[pdeviceId]; { REGISTER_TIMER("waitBufferReady"); gradBuf.sem.wait(); } { REGISTER_TIMER("copyGradToBuffer"); SetDevice setDevice(parameters_[pid]->getDeviceId()); for (size_t i = 0; i < mergeTypes_.size(); ++i) { gradBuf.bufs[i]->resize( parameters_[pid]->getBuf(mergeTypes_[i])->getSize()); gradBuf.bufs[i]->copyFrom(*parameters_[pid]->getBuf(mergeTypes_[i]), gradStream_); } hl_stream_synchronize(gradStream_); } partnerThread->notifyGradientCollect(pid); } } void TrainerThread::gradCollectThread() { VLOG(1) << "gradCollectThread " << threadId_; if (deviceId_ >= 0) { hl_init(deviceId_); } std::vector gradReadyCount(parameters_.size(), 0); auto& gradBufs = multiMachine_->getGradBuf(threadId_); while (true) { int pid = gradQueue_.dequeue(); if (stopping_) break; if (++gradReadyCount[pid] < 2) continue; gradReadyCount[pid] = 0; int pdeviceId = multiMachine_->realDeviceId2LogicalDeviceId( parameters_[pid]->getDeviceId(), threadId_); auto& gradBuf = gradBufs[pdeviceId]; { REGISTER_TIMER("mergeGrad"); for (size_t i = 0; i < mergeTypes_.size(); ++i) { ParameterType type = mergeTypes_[i]; const VectorPtr& localGrad = parameters_[pid]->getBuf(type); SetDevice setDevice(parameters_[pid]->getDeviceId()); localGrad->add(*gradBuf.bufs[i]); } } gradBuf.sem.post(); if (multiMachine_->paraMainThread(pid) == threadId_) { doCallback(pid); } else { notifyCopyGradToBuffer(pid); } } } void TrainerThread::doCallback(int pid) { REGISTER_TIMER("callback"); auto& gpuThreads = multiMachine_->getAllThreads(); if (multiMachine_->getBackwardCallback()) { // The callback supplied by the user of MultiGradientMachine may handle // the parameter update using the gradient. multiMachine_->getBackwardCallback()(parameters_[pid].get()); if (parameters_[pid]->isValueUpdated()) { parameters_[pid]->clearValueUpdated(); for (auto& thread : gpuThreads) { thread->incUpdateCounter(); } notifyValueReady(pid); } } multiMachine_->notifyGradientTransfer(pid); } void TrainerThread::valueDispatchThread() { VLOG(1) << "valueDispatchThread " << threadId_; if (deviceId_ >= 0) { hl_init(deviceId_); } auto& thread = multiMachine_->getThread(partnerId_); while (true) { int pid; { REGISTER_TIMER("value_dequeue"); pid = valueReadyQueue_.dequeue(); } if (stopping_) break; if (multiMachine_->paraMainThread(pid) == partnerId_) continue; { REGISTER_TIMER("copyValue"); SetDevice setDevice(parameters_[pid]->getDeviceId()); thread->getValueBuf(pid)->copyFrom(*getValueBuf(pid), valueStream_); hl_stream_synchronize(valueStream_); } thread->notifyValueReady(pid); } } void TrainerThread::notifyValueReady(int paramId) { if (--updateCounter_ == 0) { valueReadyCond_.notify_all([this] { parameterUpdated_ = false; }); } notifyValueDispatch(paramId); } void TrainerThread::copyInArgs() { const std::vector& fullInArgs = multiMachine_->getInArgs(); int numThreads = multiMachine_->getAllThreads().size(); int32_t numSequences = fullInArgs[0].getNumSequences(); int32_t startSeq = numSequences * threadId_ / numThreads; int32_t endSeq = numSequences * (threadId_ + 1) / numThreads; int32_t copySize = endSeq - startSeq; /** * For the first copy, need to allocate space here */ if (inArgs_.size() == 0) { inArgs_.resize(fullInArgs.size()); } if (copySize == 0) { return; } for (size_t i = 0; i < fullInArgs.size(); i++) { inArgs_[i].resizeAndCopyFrom( fullInArgs[i], startSeq, copySize, FLAGS_parallel_nn ? false : multiMachine_->useGpu()); } } void TrainerThread::mergeCpuGradients() { CHECK_EQ(mergeTypes_.size(), 1UL); CHECK_EQ(mergeTypes_[0], PARAMETER_GRADIENT); { REGISTER_TIMER("waitbeforeMerge"); multiMachine_->waitBeforeMerge(); } std::vector*> slaveParameters = multiMachine_->getSlaveParameters(); CHECK(slaveParameters.size()); for (auto& para : multiMachine_->getNonStaticParameters()) { if (para->useGpu()) continue; if (para->isSparseRemoteUpdate()) { REGISTER_TIMER("mergeRemoteGradSparse"); mergeGradSparseRemote(para.get(), slaveParameters); } else if (para->isGradSparseUpdate()) { REGISTER_TIMER("mergeGradSparse"); mergeGradSparse(para.get(), slaveParameters); } else { REGISTER_TIMER("mergeGradDense"); mergeGradDense(para.get(), slaveParameters); } } { REGISTER_TIMER("waitbeforeMerge"); multiMachine_->waitAfterMerge(); } } void TrainerThread::mergeGradSparse( Parameter* para, std::vector*>& slaveParameters) { size_t pid = para->getID(); SparseRowIdsCpuMatrix* mainMat = dynamic_cast( para->getMat(PARAMETER_GRADIENT).get()); std::vector& ids = mainMat->getIds(threadId_); for (auto slaveParams : slaveParameters) { SparseRowCpuMatrix* mat = dynamic_cast( (*slaveParams)[pid]->getMat(PARAMETER_GRADIENT).get()); mat->addTo(*mainMat, ids, threadId_, multiMachine_->getNumThreads()); // we use a sample hash method(%) instead of range partition, // because range partition has balance issue sometimes, // when feature ids are not generated from hashcode. } uniqueIds(ids); } void TrainerThread::mergeGradSparseRemote( Parameter* para, std::vector*>& slaveParameters) { size_t pid = para->getID(); SparseRowCpuMatrix* mainMat = dynamic_cast(para->getMat(PARAMETER_GRADIENT).get()); mainMat->checkIndices(); mainMat->zeroMemThread(threadId_, multiMachine_->getNumThreads()); for (auto slaveParams : slaveParameters) { SparseRowCpuMatrix* mat = dynamic_cast( (*slaveParams)[pid]->getMat(PARAMETER_GRADIENT).get()); mat->addTo(*mainMat, threadId_, multiMachine_->getNumThreads()); } } void TrainerThread::mergeGradDense( Parameter* para, std::vector*>& slaveParameters) { size_t pid = para->getID(); auto interval = calcSplitArrayInterval(para->getSize(), (size_t)threadId_, multiMachine_->getNumThreads(), 8LU /*for avx*/); size_t startSeq = interval.first; size_t copySize = interval.second - interval.first; // setup sub bufs CpuVector destGrad(0, nullptr); destGrad.subVecFrom(*para->getBuf(PARAMETER_GRADIENT), startSeq, copySize); // merge CpuVector slaveGradSub(0, nullptr); for (auto slaveParams : slaveParameters) { slaveGradSub.subVecFrom( *(*slaveParams)[pid]->getBuf(PARAMETER_GRADIENT), startSeq, copySize); destGrad.add(slaveGradSub); } } void TrainerThread::copyOutputGrad() { const std::vector& outputGradArgs = multiMachine_->outArgs_; int numThreads = multiMachine_->getAllThreads().size(); int32_t numSequences = outputGradArgs[0].getNumSequences(); int32_t startSeq = numSequences * threadId_ / numThreads; int32_t endSeq = numSequences * (threadId_ + 1) / numThreads; int32_t copySize = endSeq - startSeq; outArgs_.resize(outputGradArgs.size()); for (size_t i = 0; i < outputGradArgs.size(); i++) { outArgs_[i].resizeAndCopyFrom(outputGradArgs[i], startSeq, copySize, multiMachine_->useGpu(), HPPL_STREAM_DEFAULT); } if (multiMachine_->useGpu()) { hl_stream_synchronize(HPPL_STREAM_DEFAULT); } gradientMachine_->setOutputGrad(outArgs_); } } // namespace paddle