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dataset.h 28.6 KB
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/*!
 * Copyright (c) 2016 Microsoft Corporation. All rights reserved.
 * Licensed under the MIT License. See LICENSE file in the project root for license information.
 */
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#ifndef LIGHTGBM_DATASET_H_
#define LIGHTGBM_DATASET_H_
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#include <LightGBM/config.h>
#include <LightGBM/feature_group.h>
#include <LightGBM/meta.h>
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#include <LightGBM/train_share_states.h>
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#include <LightGBM/utils/openmp_wrapper.h>
#include <LightGBM/utils/random.h>
#include <LightGBM/utils/text_reader.h>

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#include <string>
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#include <functional>
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#include <map>
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#include <memory>
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#include <mutex>
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#include <unordered_set>
#include <utility>
#include <vector>
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#include <LightGBM/cuda/cuda_column_data.hpp>
#include <LightGBM/cuda/cuda_metadata.hpp>

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namespace LightGBM {

/*! \brief forward declaration */
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class DatasetLoader;
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/*!
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* \brief This class is used to store some meta(non-feature) data for training data,
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*        e.g. labels, weights, initial scores, query level information.
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*
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*        Some details:
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*        1. Label, used for training.
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*        2. Weights, weighs of records, optional
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*        3. Query Boundaries, necessary for LambdaRank.
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*           The documents of i-th query is in [ query_boundaries[i], query_boundaries[i+1] )
*        4. Query Weights, auto calculate by weights and query_boundaries(if both of them are existed)
*           the weight for i-th query is sum(query_boundaries[i] , .., query_boundaries[i+1]) / (query_boundaries[i + 1] -  query_boundaries[i+1])
*        5. Initial score. optional. if existing, the model will boost from this score, otherwise will start from 0.
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*/
class Metadata {
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 public:
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  /*!
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  * \brief Null constructor
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  */
  Metadata();
  /*!
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  * \brief Initialization will load query level information, since it is need for sampling data
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  * \param data_filename Filename of data
  */
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  void Init(const char* data_filename);
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  /*!
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  * \brief init as subset
  * \param metadata Filename of data
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  * \param used_indices
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  * \param num_used_indices
  */
  void Init(const Metadata& metadata, const data_size_t* used_indices, data_size_t num_used_indices);
  /*!
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  * \brief Initial with binary memory
  * \param memory Pointer to memory
  */
  void LoadFromMemory(const void* memory);
  /*! \brief Destructor */
  ~Metadata();

  /*!
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  * \brief Initial work, will allocate space for label, weight(if exists) and query(if exists)
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  * \param num_data Number of training data
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  * \param weight_idx Index of weight column, < 0 means doesn't exists
  * \param query_idx Index of query id column, < 0 means doesn't exists
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  */
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  void Init(data_size_t num_data, int weight_idx, int query_idx);
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  /*!
  * \brief Partition label by used indices
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  * \param used_indices Indices of local used
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  */
  void PartitionLabel(const std::vector<data_size_t>& used_indices);

  /*!
  * \brief Partition meta data according to local used indices if need
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  * \param num_all_data Number of total training data, including other machines' data on distributed learning
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  * \param used_data_indices Indices of local used training data
  */
  void CheckOrPartition(data_size_t num_all_data,
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                        const std::vector<data_size_t>& used_data_indices);
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  void SetLabel(const label_t* label, data_size_t len);
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  void SetWeights(const label_t* weights, data_size_t len);
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  void SetQuery(const data_size_t* query, data_size_t len);
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  /*!
  * \brief Set initial scores
  * \param init_score Initial scores, this class will manage memory for init_score.
  */
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  void SetInitScore(const double* init_score, data_size_t len);
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  /*!
  * \brief Save binary data to file
  * \param file File want to write
  */
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  void SaveBinaryToFile(const VirtualFileWriter* writer) const;
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  /*!
  * \brief Get sizes in byte of this object
  */
  size_t SizesInByte() const;

  /*!
  * \brief Get pointer of label
  * \return Pointer of label
  */
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  inline const label_t* label() const { return label_.data(); }
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  /*!
  * \brief Set label for one record
  * \param idx Index of this record
  * \param value Label value of this record
  */
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  inline void SetLabelAt(data_size_t idx, label_t value) {
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    label_[idx] = value;
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  }

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  /*!
  * \brief Set Weight for one record
  * \param idx Index of this record
  * \param value Weight value of this record
  */
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  inline void SetWeightAt(data_size_t idx, label_t value) {
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    weights_[idx] = value;
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  }

  /*!
  * \brief Set Query Id for one record
  * \param idx Index of this record
  * \param value Query Id value of this record
  */
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  inline void SetQueryAt(data_size_t idx, data_size_t value) {
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    queries_[idx] = static_cast<data_size_t>(value);
  }

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  /*!
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  * \brief Get weights, if not exists, will return nullptr
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  * \return Pointer of weights
  */
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  inline const label_t* weights() const {
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    if (!weights_.empty()) {
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      return weights_.data();
    } else {
      return nullptr;
    }
  }
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  /*!
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  * \brief Get data boundaries on queries, if not exists, will return nullptr
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  *        we assume data will order by query,
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  *        the interval of [query_boundaris[i], query_boundaris[i+1])
  *        is the data indices for query i.
  * \return Pointer of data boundaries on queries
  */
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  inline const data_size_t* query_boundaries() const {
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    if (!query_boundaries_.empty()) {
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      return query_boundaries_.data();
    } else {
      return nullptr;
    }
  }
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  /*!
  * \brief Get Number of queries
  * \return Number of queries
  */
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  inline data_size_t num_queries() const { return num_queries_; }
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  /*!
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  * \brief Get weights for queries, if not exists, will return nullptr
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  * \return Pointer of weights for queries
  */
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  inline const label_t* query_weights() const {
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    if (!query_weights_.empty()) {
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      return query_weights_.data();
    } else {
      return nullptr;
    }
  }
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  /*!
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  * \brief Get initial scores, if not exists, will return nullptr
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  * \return Pointer of initial scores
  */
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  inline const double* init_score() const {
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    if (!init_score_.empty()) {
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      return init_score_.data();
    } else {
      return nullptr;
    }
  }
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  /*!
  * \brief Get size of initial scores
  */
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  inline int64_t num_init_score() const { return num_init_score_; }
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  /*! \brief Disable copy */
  Metadata& operator=(const Metadata&) = delete;
  /*! \brief Disable copy */
  Metadata(const Metadata&) = delete;
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  #ifdef USE_CUDA_EXP

  CUDAMetadata* cuda_metadata() const { return cuda_metadata_.get(); }

  void CreateCUDAMetadata(const int gpu_device_id);

  #endif  // USE_CUDA_EXP

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 private:
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  /*! \brief Load initial scores from file */
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  void LoadInitialScore();
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  /*! \brief Load wights from file */
  void LoadWeights();
  /*! \brief Load query boundaries from file */
  void LoadQueryBoundaries();
  /*! \brief Load query wights */
  void LoadQueryWeights();
  /*! \brief Filename of current data */
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  std::string data_filename_;
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  /*! \brief Number of data */
  data_size_t num_data_;
  /*! \brief Number of weights, used to check correct weight file */
  data_size_t num_weights_;
  /*! \brief Label data */
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  std::vector<label_t> label_;
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  /*! \brief Weights data */
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  std::vector<label_t> weights_;
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  /*! \brief Query boundaries */
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  std::vector<data_size_t> query_boundaries_;
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  /*! \brief Query weights */
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  std::vector<label_t> query_weights_;
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  /*! \brief Number of querys */
  data_size_t num_queries_;
  /*! \brief Number of Initial score, used to check correct weight file */
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  int64_t num_init_score_;
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  /*! \brief Initial score */
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  std::vector<double> init_score_;
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  /*! \brief Queries data */
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  std::vector<data_size_t> queries_;
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  /*! \brief mutex for threading safe call */
  std::mutex mutex_;
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  bool weight_load_from_file_;
  bool query_load_from_file_;
  bool init_score_load_from_file_;
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  #ifdef USE_CUDA_EXP
  std::unique_ptr<CUDAMetadata> cuda_metadata_;
  #endif  // USE_CUDA_EXP
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};


/*! \brief Interface for Parser */
class Parser {
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 public:
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  typedef const char* (*AtofFunc)(const char* p, double* out);

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  /*! \brief Default constructor */
  Parser() {}

  /*!
  * \brief Constructor for customized parser. The constructor accepts content not path because need to save/load the config along with model string
  */
  explicit Parser(std::string) {}

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  /*! \brief virtual destructor */
  virtual ~Parser() {}

  /*!
  * \brief Parse one line with label
  * \param str One line record, string format, should end with '\0'
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  * \param out_features Output columns, store in (column_idx, values)
  * \param out_label Label will store to this if exists
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  */
  virtual void ParseOneLine(const char* str,
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                            std::vector<std::pair<int, double>>* out_features, double* out_label) const = 0;
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  virtual int NumFeatures() const = 0;
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  /*!
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  * \brief Create an object of parser, will auto choose the format depend on file
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  * \param filename One Filename of data
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  * \param header whether input file contains header
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  * \param num_features Pass num_features of this data file if you know, <=0 means don't know
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  * \param label_idx index of label column
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  * \param precise_float_parser using precise floating point number parsing if true
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  * \return Object of parser
  */
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  static Parser* CreateParser(const char* filename, bool header, int num_features, int label_idx, bool precise_float_parser);
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  /*!
  * \brief Create an object of parser, could use customized parser, or auto choose the format depend on file
  * \param filename One Filename of data
  * \param header whether input file contains header
  * \param num_features Pass num_features of this data file if you know, <=0 means don't know
  * \param label_idx index of label column
  * \param precise_float_parser using precise floating point number parsing if true
  * \param parser_config_str Customized parser config content
  * \return Object of parser
  */
  static Parser* CreateParser(const char* filename, bool header, int num_features, int label_idx, bool precise_float_parser,
                              std::string parser_config_str);

  /*!
  * \brief Generate parser config str used for custom parser initialization, may save values of label id and header
  * \param filename One Filename of data
  * \param parser_config_filename One Filename of parser config
  * \param header whether input file contains header
  * \param label_idx index of label column
  * \return Parser config str
  */
  static std::string GenerateParserConfigStr(const char* filename, const char* parser_config_filename, bool header, int label_idx);
};

/*! \brief Interface for parser factory, used by customized parser */
class ParserFactory {
 private:
  ParserFactory() {}
  std::map<std::string, std::function<Parser*(std::string)>> object_map_;

 public:
  ~ParserFactory() {}
  static ParserFactory& getInstance();
  void Register(std::string class_name, std::function<Parser*(std::string)> objc);
  Parser* getObject(std::string class_name, std::string config_str);
};

/*! \brief Interface for parser reflector, used by customized parser */
class ParserReflector {
 public:
  ParserReflector(std::string class_name, std::function<Parser*(std::string)> objc) {
    ParserFactory::getInstance().Register(class_name, objc);
  }
  virtual ~ParserReflector() {}
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};

/*! \brief The main class of data set,
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*          which are used to training or validation
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*/
class Dataset {
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 public:
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  friend DatasetLoader;
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  LIGHTGBM_EXPORT Dataset();
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  LIGHTGBM_EXPORT Dataset(data_size_t num_data);
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  void Construct(
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    std::vector<std::unique_ptr<BinMapper>>* bin_mappers,
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    int num_total_features,
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    const std::vector<std::vector<double>>& forced_bins,
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    int** sample_non_zero_indices,
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    double** sample_values,
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    const int* num_per_col,
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    int num_sample_col,
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    size_t total_sample_cnt,
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    const Config& io_config);
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  /*! \brief Destructor */
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  LIGHTGBM_EXPORT ~Dataset();
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  LIGHTGBM_EXPORT bool CheckAlign(const Dataset& other) const {
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    if (num_features_ != other.num_features_) {
      return false;
    }
    if (num_total_features_ != other.num_total_features_) {
      return false;
    }
    if (label_idx_ != other.label_idx_) {
      return false;
    }
    for (int i = 0; i < num_features_; ++i) {
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      if (!FeatureBinMapper(i)->CheckAlign(*(other.FeatureBinMapper(i)))) {
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        return false;
      }
    }
    return true;
  }

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  inline void FinishOneRow(int tid, data_size_t row_idx, const std::vector<bool>& is_feature_added) {
    if (is_finish_load_) { return; }
    for (auto fidx : feature_need_push_zeros_) {
      if (is_feature_added[fidx]) { continue; }
      const int group = feature2group_[fidx];
      const int sub_feature = feature2subfeature_[fidx];
      feature_groups_[group]->PushData(tid, sub_feature, row_idx, 0.0f);
    }
  }

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  inline void PushOneRow(int tid, data_size_t row_idx, const std::vector<double>& feature_values) {
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    if (is_finish_load_) { return; }
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    for (size_t i = 0; i < feature_values.size() && i < static_cast<size_t>(num_total_features_); ++i) {
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      int feature_idx = used_feature_map_[i];
      if (feature_idx >= 0) {
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        const int group = feature2group_[feature_idx];
        const int sub_feature = feature2subfeature_[feature_idx];
        feature_groups_[group]->PushData(tid, sub_feature, row_idx, feature_values[i]);
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        if (has_raw_) {
          int feat_ind = numeric_feature_map_[feature_idx];
          if (feat_ind >= 0) {
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            raw_data_[feat_ind][row_idx] = static_cast<float>(feature_values[i]);
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          }
        }
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      }
    }
  }

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  inline void PushOneRow(int tid, data_size_t row_idx, const std::vector<std::pair<int, double>>& feature_values) {
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    if (is_finish_load_) { return; }
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    std::vector<bool> is_feature_added(num_features_, false);
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    for (auto& inner_data : feature_values) {
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      if (inner_data.first >= num_total_features_) { continue; }
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      int feature_idx = used_feature_map_[inner_data.first];
      if (feature_idx >= 0) {
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        is_feature_added[feature_idx] = true;
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        const int group = feature2group_[feature_idx];
        const int sub_feature = feature2subfeature_[feature_idx];
        feature_groups_[group]->PushData(tid, sub_feature, row_idx, inner_data.second);
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        if (has_raw_) {
          int feat_ind = numeric_feature_map_[feature_idx];
          if (feat_ind >= 0) {
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            raw_data_[feat_ind][row_idx] = static_cast<float>(inner_data.second);
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          }
        }
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      }
    }
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    FinishOneRow(tid, row_idx, is_feature_added);
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  }

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  inline void PushOneData(int tid, data_size_t row_idx, int group, int feature_idx, int sub_feature, double value) {
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    feature_groups_[group]->PushData(tid, sub_feature, row_idx, value);
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    if (has_raw_) {
      int feat_ind = numeric_feature_map_[feature_idx];
      if (feat_ind >= 0) {
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        raw_data_[feat_ind][row_idx] = static_cast<float>(value);
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      }
    }
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  }

  inline int RealFeatureIndex(int fidx) const {
    return real_feature_idx_[fidx];
  }

  inline int InnerFeatureIndex(int col_idx) const {
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    return used_feature_map_[col_idx];
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  }
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  inline int Feature2Group(int feature_idx) const {
    return feature2group_[feature_idx];
  }
  inline int Feture2SubFeature(int feature_idx) const {
    return feature2subfeature_[feature_idx];
  }
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  inline uint64_t GroupBinBoundary(int group_idx) const {
    return group_bin_boundaries_[group_idx];
  }
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  inline uint64_t NumTotalBin() const {
    return group_bin_boundaries_.back();
  }
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  inline std::vector<int> ValidFeatureIndices() const {
    std::vector<int> ret;
    for (int i = 0; i < num_total_features_; ++i) {
      if (used_feature_map_[i] >= 0) {
        ret.push_back(i);
      }
    }
    return ret;
  }
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  void ReSize(data_size_t num_data);

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  void CopySubrow(const Dataset* fullset, const data_size_t* used_indices, data_size_t num_used_indices, bool need_meta_data);
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  MultiValBin* GetMultiBinFromSparseFeatures(const std::vector<uint32_t>& offsets) const;
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  MultiValBin* GetMultiBinFromAllFeatures(const std::vector<uint32_t>& offsets) const;
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  TrainingShareStates* GetShareStates(
      score_t* gradients, score_t* hessians,
      const std::vector<int8_t>& is_feature_used, bool is_constant_hessian,
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      bool force_col_wise, bool force_row_wise) const;
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  LIGHTGBM_EXPORT void FinishLoad();
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  LIGHTGBM_EXPORT bool SetFloatField(const char* field_name, const float* field_data, data_size_t num_element);
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  LIGHTGBM_EXPORT bool SetDoubleField(const char* field_name, const double* field_data, data_size_t num_element);
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  LIGHTGBM_EXPORT bool SetIntField(const char* field_name, const int* field_data, data_size_t num_element);
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  LIGHTGBM_EXPORT bool GetFloatField(const char* field_name, data_size_t* out_len, const float** out_ptr);
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  LIGHTGBM_EXPORT bool GetDoubleField(const char* field_name, data_size_t* out_len, const double** out_ptr);
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  LIGHTGBM_EXPORT bool GetIntField(const char* field_name, data_size_t* out_len, const int** out_ptr);
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  /*!
  * \brief Save current dataset into binary file, will save to "filename.bin"
  */
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  LIGHTGBM_EXPORT void SaveBinaryFile(const char* bin_filename);
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  LIGHTGBM_EXPORT void DumpTextFile(const char* text_filename);

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  LIGHTGBM_EXPORT void CopyFeatureMapperFrom(const Dataset* dataset);
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  LIGHTGBM_EXPORT void CreateValid(const Dataset* dataset);

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  void InitTrain(const std::vector<int8_t>& is_feature_used,
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                 TrainingShareStates* share_state) const;
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  template <bool USE_INDICES, bool USE_HESSIAN>
  void ConstructHistogramsInner(const std::vector<int8_t>& is_feature_used,
                                const data_size_t* data_indices,
                                data_size_t num_data, const score_t* gradients,
                                const score_t* hessians,
                                score_t* ordered_gradients,
                                score_t* ordered_hessians,
                                TrainingShareStates* share_state,
                                hist_t* hist_data) const;

  template <bool USE_INDICES, bool ORDERED>
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  void ConstructHistogramsMultiVal(const data_size_t* data_indices,
                                   data_size_t num_data,
                                   const score_t* gradients,
                                   const score_t* hessians,
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                                   TrainingShareStates* share_state,
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                                   hist_t* hist_data) const;

  inline void ConstructHistograms(
      const std::vector<int8_t>& is_feature_used,
      const data_size_t* data_indices, data_size_t num_data,
      const score_t* gradients, const score_t* hessians,
      score_t* ordered_gradients, score_t* ordered_hessians,
      TrainingShareStates* share_state, hist_t* hist_data) const {
    if (num_data <= 0) {
      return;
    }
    bool use_indices = data_indices != nullptr && (num_data < num_data_);
    if (share_state->is_constant_hessian) {
      if (use_indices) {
        ConstructHistogramsInner<true, false>(
            is_feature_used, data_indices, num_data, gradients, hessians,
            ordered_gradients, ordered_hessians, share_state, hist_data);
      } else {
        ConstructHistogramsInner<false, false>(
            is_feature_used, data_indices, num_data, gradients, hessians,
            ordered_gradients, ordered_hessians, share_state, hist_data);
      }
    } else {
      if (use_indices) {
        ConstructHistogramsInner<true, true>(
            is_feature_used, data_indices, num_data, gradients, hessians,
            ordered_gradients, ordered_hessians, share_state, hist_data);
      } else {
        ConstructHistogramsInner<false, true>(
            is_feature_used, data_indices, num_data, gradients, hessians,
            ordered_gradients, ordered_hessians, share_state, hist_data);
      }
    }
  }
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  void FixHistogram(int feature_idx, double sum_gradient, double sum_hessian, hist_t* data) const;
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  inline data_size_t Split(int feature, const uint32_t* threshold,
                           int num_threshold, bool default_left,
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                           const data_size_t* data_indices,
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                           data_size_t cnt, data_size_t* lte_indices,
                           data_size_t* gt_indices) const {
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    const int group = feature2group_[feature];
    const int sub_feature = feature2subfeature_[feature];
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    return feature_groups_[group]->Split(
        sub_feature, threshold, num_threshold, default_left, data_indices,
        cnt, lte_indices, gt_indices);
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  }

  inline int SubFeatureBinOffset(int i) const {
    const int sub_feature = feature2subfeature_[i];
    if (sub_feature == 0) {
      return 1;
    } else {
      return 0;
    }
  }

  inline int FeatureNumBin(int i) const {
    const int group = feature2group_[i];
    const int sub_feature = feature2subfeature_[i];
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    return feature_groups_[group]->bin_mappers_[sub_feature]->num_bin();
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  }
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  inline int FeatureGroupNumBin(int group) const {
    return feature_groups_[group]->num_total_bin_;
  }
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  inline const BinMapper* FeatureBinMapper(int i) const {
    const int group = feature2group_[i];
    const int sub_feature = feature2subfeature_[i];
    return feature_groups_[group]->bin_mappers_[sub_feature].get();
  }

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  inline const Bin* FeatureGroupBin(int group) const {
    return feature_groups_[group]->bin_data_.get();
  }

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  inline BinIterator* FeatureIterator(int i) const {
    const int group = feature2group_[i];
    const int sub_feature = feature2subfeature_[i];
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    return feature_groups_[group]->SubFeatureIterator(sub_feature);
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  }

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  inline BinIterator* FeatureGroupIterator(int group) const {
    return feature_groups_[group]->FeatureGroupIterator();
  }
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  inline bool IsMultiGroup(int i) const {
    return feature_groups_[i]->is_multi_val_;
  }

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  inline size_t FeatureGroupSizesInByte(int group) const {
    return feature_groups_[group]->FeatureGroupSizesInByte();
  }

  inline void* FeatureGroupData(int group) const {
    return feature_groups_[group]->FeatureGroupData();
  }

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  const void* GetColWiseData(
    const int feature_group_index,
    const int sub_feature_index,
    uint8_t* bit_type,
    bool* is_sparse,
    std::vector<BinIterator*>* bin_iterator,
    const int num_threads) const;

  const void* GetColWiseData(
    const int feature_group_index,
    const int sub_feature_index,
    uint8_t* bit_type,
    bool* is_sparse,
    BinIterator** bin_iterator) const;

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  inline double RealThreshold(int i, uint32_t threshold) const {
    const int group = feature2group_[i];
    const int sub_feature = feature2subfeature_[i];
    return feature_groups_[group]->bin_mappers_[sub_feature]->BinToValue(threshold);
  }

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  // given a real threshold, find the closest threshold bin
  inline uint32_t BinThreshold(int i, double threshold_double) const {
    const int group = feature2group_[i];
    const int sub_feature = feature2subfeature_[i];
    return feature_groups_[group]->bin_mappers_[sub_feature]->ValueToBin(threshold_double);
  }

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  inline int MaxRealCatValue(int i) const {
    const int group = feature2group_[i];
    const int sub_feature = feature2subfeature_[i];
    return feature_groups_[group]->bin_mappers_[sub_feature]->MaxCatValue();
  }

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  /*!
  * \brief Get meta data pointer
  * \return Pointer of meta data
  */
  inline const Metadata& metadata() const { return metadata_; }

  /*! \brief Get Number of used features */
  inline int num_features() const { return num_features_; }

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  /*! \brief Get number of numeric features */
  inline int num_numeric_features() const { return num_numeric_features_; }

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  /*! \brief Get Number of feature groups */
  inline int num_feature_groups() const { return num_groups_;}

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  /*! \brief Get Number of total features */
  inline int num_total_features() const { return num_total_features_; }

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  /*! \brief Get the index of label column */
  inline int label_idx() const { return label_idx_; }

  /*! \brief Get names of current data set */
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  inline const std::vector<std::string>& feature_names() const { return feature_names_; }

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  /*! \brief Get content of parser config file */
  inline const std::string parser_config_str() const { return parser_config_str_; }

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  inline void set_feature_names(const std::vector<std::string>& feature_names) {
    if (feature_names.size() != static_cast<size_t>(num_total_features_)) {
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      Log::Fatal("Size of feature_names error, should equal with total number of features");
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    }
    feature_names_ = std::vector<std::string>(feature_names);
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    std::unordered_set<std::string> feature_name_set;
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    // replace ' ' in feature_names with '_'
    bool spaceInFeatureName = false;
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    for (auto& feature_name : feature_names_) {
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      // check JSON
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      if (!Common::CheckAllowedJSON(feature_name)) {
        Log::Fatal("Do not support special JSON characters in feature name.");
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      }
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      if (feature_name.find(' ') != std::string::npos) {
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        spaceInFeatureName = true;
        std::replace(feature_name.begin(), feature_name.end(), ' ', '_');
      }
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      if (feature_name_set.count(feature_name) > 0) {
        Log::Fatal("Feature (%s) appears more than one time.", feature_name.c_str());
      }
      feature_name_set.insert(feature_name);
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    }
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    if (spaceInFeatureName) {
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      Log::Warning("Found whitespace in feature_names, replace with underlines");
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    }
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  }
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  inline std::vector<std::string> feature_infos() const {
    std::vector<std::string> bufs;
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    for (int i = 0; i < num_total_features_; ++i) {
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      int fidx = used_feature_map_[i];
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      if (fidx < 0) {
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        bufs.push_back("none");
      } else {
        const auto bin_mapper = FeatureBinMapper(fidx);
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        bufs.push_back(bin_mapper->bin_info_string());
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      }
    }
    return bufs;
  }

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  /*! \brief Get Number of data */
  inline data_size_t num_data() const { return num_data_; }

  /*! \brief Disable copy */
  Dataset& operator=(const Dataset&) = delete;
  /*! \brief Disable copy */
  Dataset(const Dataset&) = delete;

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  void AddFeaturesFrom(Dataset* other);
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  /*! \brief Get has_raw_ */
  inline bool has_raw() const { return has_raw_; }

  /*! \brief Set has_raw_ */
  inline void SetHasRaw(bool has_raw) { has_raw_ = has_raw; }

  /*! \brief Resize raw_data_ */
  inline void ResizeRaw(int num_rows) {
    if (static_cast<int>(raw_data_.size()) > num_numeric_features_) {
      raw_data_.resize(num_numeric_features_);
    }
    for (size_t i = 0; i < raw_data_.size(); ++i) {
      raw_data_[i].resize(num_rows);
    }
    int curr_size = static_cast<int>(raw_data_.size());
    for (int i = curr_size; i < num_numeric_features_; ++i) {
      raw_data_.push_back(std::vector<float>(num_rows, 0));
    }
  }

  /*! \brief Get pointer to raw_data_ feature */
  inline const float* raw_index(int feat_ind) const {
    return raw_data_[numeric_feature_map_[feat_ind]].data();
  }

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  inline uint32_t feature_max_bin(const int inner_feature_index) const {
    const int feature_group_index = Feature2Group(inner_feature_index);
    const int sub_feature_index = feature2subfeature_[inner_feature_index];
    return feature_groups_[feature_group_index]->feature_max_bin(sub_feature_index);
  }

  inline uint32_t feature_min_bin(const int inner_feature_index) const {
    const int feature_group_index = Feature2Group(inner_feature_index);
    const int sub_feature_index = feature2subfeature_[inner_feature_index];
    return feature_groups_[feature_group_index]->feature_min_bin(sub_feature_index);
  }

  #ifdef USE_CUDA_EXP

  const CUDAColumnData* cuda_column_data() const {
    return cuda_column_data_.get();
  }

  #endif  // USE_CUDA_EXP

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 private:
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  void CreateCUDAColumnData();

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  std::string data_filename_;
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  /*! \brief Store used features */
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  std::vector<std::unique_ptr<FeatureGroup>> feature_groups_;
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  /*! \brief Mapper from real feature index to used index*/
  std::vector<int> used_feature_map_;
  /*! \brief Number of used features*/
  int num_features_;
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  /*! \brief Number of total features*/
  int num_total_features_;
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  /*! \brief Number of total data*/
  data_size_t num_data_;
  /*! \brief Store some label level data*/
  Metadata metadata_;
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  /*! \brief index of label column */
  int label_idx_ = 0;
  /*! \brief store feature names */
  std::vector<std::string> feature_names_;
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  /*! \brief store feature names */
  static const char* binary_file_token;
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  int num_groups_;
  std::vector<int> real_feature_idx_;
  std::vector<int> feature2group_;
  std::vector<int> feature2subfeature_;
  std::vector<uint64_t> group_bin_boundaries_;
  std::vector<int> group_feature_start_;
  std::vector<int> group_feature_cnt_;
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  bool is_finish_load_;
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  int max_bin_;
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  std::vector<int32_t> max_bin_by_feature_;
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  std::vector<std::vector<double>> forced_bin_bounds_;
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  int bin_construct_sample_cnt_;
  int min_data_in_bin_;
  bool use_missing_;
  bool zero_as_missing_;
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  std::vector<int> feature_need_push_zeros_;
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  std::vector<std::vector<float>> raw_data_;
  bool has_raw_;
  /*! map feature (inner index) to its index in the list of numeric (non-categorical) features */
  std::vector<int> numeric_feature_map_;
  int num_numeric_features_;
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  std::string device_type_;
  int gpu_device_id_;

  #ifdef USE_CUDA_EXP
  std::unique_ptr<CUDAColumnData> cuda_column_data_;
  #endif  // USE_CUDA_EXP

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  std::string parser_config_str_;
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};

}  // namespace LightGBM

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#endif   // LightGBM_DATA_H_