/* 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. */ #pragma once #include #include #include #include #include #include #include #include #include #include "DataConfig.pb.h" #include "paddle/math/Matrix.h" #include "paddle/math/SparseMatrix.h" #include "paddle/math/Vector.h" #include "paddle/parameter/Argument.h" #include "paddle/utils/ClassRegistrar.h" #include "paddle/utils/Locks.h" #include "paddle/utils/Logging.h" #include "paddle/utils/Queue.h" #include "paddle/utils/ThreadLocal.h" #include "paddle/utils/Util.h" #include "paddle/utils/common.h" namespace paddle { /** * @def REGISTER_DATA_PROVIDER * @brief Macro for registering a data provider. The class type should contain * a consturctor with parameter (DataConfig, bool). */ #define REGISTER_DATA_PROVIDER(__type_name, __class_name) \ static InitFunction __reg_type_##__type_name([]() { \ DataProvider::registrar_.registerClass( \ #__type_name, \ [](DataConfig conf, ModelConfig, bool useGpu) -> DataProvider* { \ DataProvider* dp = new __class_name(conf, useGpu); \ return dp; \ }); \ }) /** * @def REGISTER_DATA_PROVIDER_EX * @brief Macro for registering a data provider, which contains a constructor * with parameter (DataConfig, ModelConfig, bool). */ #define REGISTER_DATA_PROVIDER_EX(__type_name, __class_name) \ static InitFunction __reg_type_##__type_name([] { \ DataProvider::registrar_.registerClass<__class_name>(#__type_name); \ }) class DataBatch; class BufferBatch; typedef std::shared_ptr DataBatchPtr; typedef std::shared_ptr BufferBatchPtr; /** * @brief Data for batch training a neural network */ class DataBatch { public: DataBatch() : size_(0) { data_.clear(); } /** * @brief Get batch size * @return batch size */ int64_t getSize() const { return size_; } /** * @brief Get num of sequences of sequence data * @return num of sequences */ int64_t getNumSequences() const { if (data_.empty()) return size_; return data_[0].sequenceStartPositions ? data_[0].sequenceStartPositions->getSize() - 1 : size_; } /** * @brief Set batch size * @param[in] size size */ void setSize(int64_t size) { size_ = size; } /** * @brief Get size of argument vector * @return size of argument vector * @note For usual supervised learning, input data and label is needed, * then there will be two argument. */ int64_t getNumStreams() const { return data_.size(); } /** * @brief Get a argument with index i * @param[in] i index in argument vector * @return a argument with index i */ const Argument& getStream(int i) const { return data_[i]; } /** * @brief Get all argument * @return an argument vector */ std::vector& getStreams() { return data_; } /** * @brief Get all argument const * @return an argument vector */ std::vector getStreams() const { return data_; } /** * @brief Clear DataBatch */ void clear() { data_.clear(); size_ = 0; } /** * @brief Append data to DataBatch * @param[in] data matrix data * @note The order in which each data stream is appended must match the order * specified in stream_names of DataConfig. The stream_names can be obtained * using DataProvider::getStreamNames(). */ void appendData(MatrixPtr data) { Argument argu; argu.value = data; data_.push_back(argu); } /** * @brief Append sequence data to DataBatch * @param[in] data matrix data * @param[in] sequenceStartPositions sequence data * @note The order in which each data stream is appended must match the order * specified in stream_names of DataConfig. The stream_names can be obtained * using DataProvider::getStreamNames(). */ void appendData(const MatrixPtr& data, const ICpuGpuVectorPtr& sequenceStartPositions) { Argument argu; argu.value = data; argu.sequenceStartPositions = sequenceStartPositions; data_.push_back(argu); } /** * @brief Append label data * @param[in] label label data * @param[in] value matrix data, default null */ void appendLabel(IVectorPtr label, MatrixPtr value = nullptr) { Argument argu; argu.ids = label; argu.value = value; data_.push_back(argu); } /** * @brief Append user defined data * @param[in] ptr user defined data */ void appendUserDefinedPtr(UserDefinedVectorPtr ptr) { Argument argu; argu.udp = ptr; data_.push_back(argu); } /* * @brief Append argument * @param[in] argus DataBatch.getStreams() * @param[in] size DataBatch.getSize() * @param[in] dataId sub dataprovider id (in MultiDataProvider) */ void appendArguments(const std::vector& argus, int size, int dataId) { size_ += size; for (const auto& argu : argus) { data_.push_back(argu); data_.back().dataId = dataId; } } protected: /** * @brief batch size */ int64_t size_; /** * @brief A batch data consist of a Argument vector, * An argument corresponds to a type of input data. */ std::vector data_; }; class BufferBatch { public: BufferBatch() { hlStream_ = HPPL_STREAM_DEFAULT; hlEvent_ = NULL; batchData_ = NULL; } ~BufferBatch() { if (hlEvent_) { hl_destroy_event(hlEvent_); hlEvent_ = NULL; } if (batchData_) { delete batchData_; batchData_ = NULL; } } void setDataBatch(DataBatch* batchData) { batchData_ = batchData; } DataBatch* getDataBatch() { return batchData_; } void setCuStream(hl_stream_t stream) { hlStream_ = stream; } hl_stream_t getCuStream() const { return hlStream_; } void setCuEvent(hl_event_t event) { hlEvent_ = event; } hl_event_t getCuEvent() const { return hlEvent_; } void createCuEvent() { if (!hlEvent_) { hlStream_ = HPPL_STREAM_1; hl_create_event(&hlEvent_); } } void syncEvent() { if (hlEvent_) { hl_stream_wait_event(hlStream_, hlEvent_); } } void swap(BufferBatch* bufBatch); void clone(DataBatch* srcBatch, bool useGpu); protected: DataBatch* batchData_; hl_stream_t hlStream_; hl_event_t hlEvent_; }; class DataProvider; typedef std::shared_ptr DataProviderPtr; typedef Queue BufferBatchQueue; class DoubleBuffer { public: DoubleBuffer(DataProvider* dataPool, bool useGpu, int64_t batchSize = 0); virtual ~DoubleBuffer(); void removeOneBatch(DataBatch* dataBatch); void setBatchSize(int64_t newBatchSize) { batchSize_ = newBatchSize; } int64_t getBatchSize() { return batchSize_; } void startAsyncLoad(); void finishAsyncLoad() { stopping_ = true; taskReadySem_.post(); if (asyncLoader_) { asyncLoader_->join(); } } void setPending(bool pending) { pending_ = pending; } protected: virtual void asyncLoadBatch(); void insertOneBatch(DataBatch* batch); DataProvider* dataPool_; bool useGpu_; int32_t batchSize_; ThreadLocal usingBatch_; BufferBatchQueue* dataQueue_; BufferBatchQueue* bufferQueue_; std::unique_ptr asyncLoader_; Semaphore taskReadySem_; bool stopping_; bool pending_; }; /** * @brief Base class for DataProvider, which supplies data for training * @note It can supplies multiple streams of data. * For typical supervised training, there are two streams: * one is for input, one is for label. */ class DataProvider { public: static ClassRegistrar registrar_; static DataProvider* create(const DataConfig& config, const ModelConfig& modelConfig, bool useGpu = FLAGS_use_gpu); /** * @brief create only used for unittest. */ inline static DataProvider* create(const DataConfig& config, bool useGpu = FLAGS_use_gpu) { return create(config, ModelConfig(), useGpu); } DataProvider(const DataConfig& config, bool useGpu) : config_(config), skipShuffle_(false), usageRatio_(config.usage_ratio()), useGpu_(useGpu) { if (config_.async_load_data()) { initAsyncLoader(); } } virtual ~DataProvider() {} const DataConfig& getConfig() const { return config_; } void setSkipShuffle() { skipShuffle_ = true; } /** * @brief Get next batch of training samples * @param[in] size size of training samples to get * @param[out] batch a batch of training samples * @return actual size of obtained training samples */ int64_t getNextBatch(int64_t size, DataBatch* batch); /** * @brief Shuffle the data set */ virtual void shuffle() = 0; /** * @brief reset all the value of index * @note reset() must be called before any calls to getNextBatch() * IMPORTANT: subclass reset() should always call the base class reset() * at the end of the function */ virtual void reset() { if (doubleBuffer_ != nullptr) { doubleBuffer_->startAsyncLoad(); } } /** * @brief Get the size of training samples * @return the number of training samples in the data set. * @note return -1 to indicate unlimited number of samples. */ virtual int64_t getSize() = 0; /** * @brief Get next batch training samples internally * @param[in] size size of training samples to get * @param[out] batch a batch of training samples * @return actual size of obtained training samples */ virtual int64_t getNextBatchInternal(int64_t size, DataBatch* batch) = 0; protected: DataConfig config_; bool skipShuffle_; float usageRatio_; bool useGpu_; std::unique_ptr doubleBuffer_; ThreadLocal> constantSlots_; /** * @@brief Get next batch training samples from buffer * @param[in] size size of training samples to get * @param[out] batch a batch of training samples * @return actual size of obtained training samples */ int64_t getNextBatchFromBuffer(int64_t size, DataBatch* batch); void initAsyncLoader(); }; /** * A data provider which does nothing. It only serves as providing * necessary configurations such as stream_names */ class DummyDataProvider : public DataProvider { public: DummyDataProvider(const DataConfig& config, bool useGpu) : DataProvider(config, useGpu) {} virtual void shuffle() {} virtual void reset() { DataProvider::reset(); } virtual int64_t getSize() { return 0; } virtual int64_t getNextBatchInternal(int64_t size, DataBatch* batch) { (void)size; (void)batch; return 0; } }; /** * Data provider for one input and one integer label. */ class SimpleDataProviderBase : public DataProvider { protected: /// sample feature dimension int64_t sampleDim_; /// the number of samples int64_t bufferCapacity_; int64_t sampleNumInBuf_; /// next item to read in buffer int64_t nextItemIndex_; /// some user defined info for validation bool withInfo_; /// data buffer: bufferCapacity_ * nDataDim_ CpuMatrixPtr hInputDataBuf_; /// label buffer:bufferCapacity_ * 1 CpuIVectorPtr hInputLabelBuf_; /// info buffer:bufferCapacity_ * 1 CpuIVectorPtr hInputInfoBuf_; ThreadLocal dataBatch_; ThreadLocal labelBatch_; ThreadLocal infoBatch_; RWLock lock_; public: SimpleDataProviderBase(const DataConfig& config, bool useGpu, bool withInfo); ~SimpleDataProviderBase() {} void shuffle(); virtual void reset(); virtual int64_t getSize(); virtual int64_t getNextBatchInternal(int64_t size, DataBatch* batch); /// return the number of samples in the buffer int64_t fillBuffer(); protected: /** * @brief Fill at most size samples into data and label. * * Each input is stored in contiguous memory locations in data. * * data[n * sampleDim_] .. data[n * sampleDim_ + sampleDim_ - 1] is for * the input of the n-th sample. * * label[n] is the label for the n-th sample. */ virtual int64_t fillBufferImp(real* data, int* label, int* info, int64_t size) = 0; }; class SimpleDataProvider : public SimpleDataProviderBase { public: SimpleDataProvider(const DataConfig& config, bool useGpu); ~SimpleDataProvider(); virtual void reset(); protected: void loadData(const std::string& fileName); void loadDataFile(const std::string& fileName); virtual int64_t fillBufferImp(real* data, int* label, int* info, int64_t size); protected: size_t currentSampleIndex_; std::vector labels_; std::vector data_; }; } // namespace paddle