#include #include #include #include #include #include #include #include #include #include #include #include #include #include #include #include #include "./application/predictor.hpp" namespace LightGBM { class Booster { public: explicit Booster(const char* filename) { boosting_.reset(Boosting::CreateBoosting(filename)); } Booster(const Dataset* train_data, std::vector valid_data, std::vector valid_names, const char* parameters) :train_data_(train_data), valid_datas_(valid_data) { config_.LoadFromString(parameters); // create boosting if (config_.io_config.input_model.size() > 0) { Log::Warning("continued train from model is not support for c_api, \ please use continued train with input score"); } boosting_.reset(Boosting::CreateBoosting(config_.boosting_type, "")); // create objective function objective_fun_.reset(ObjectiveFunction::CreateObjectiveFunction(config_.objective_type, config_.objective_config)); if (objective_fun_ == nullptr) { Log::Warning("Using self-defined objective functions"); } // create training metric for (auto metric_type : config_.metric_types) { auto metric = std::unique_ptr( Metric::CreateMetric(metric_type, config_.metric_config)); if (metric == nullptr) { continue; } metric->Init("training", train_data_->metadata(), train_data_->num_data()); train_metric_.push_back(std::move(metric)); } train_metric_.shrink_to_fit(); // add metric for validation data for (size_t i = 0; i < valid_datas_.size(); ++i) { valid_metrics_.emplace_back(); for (auto metric_type : config_.metric_types) { auto metric = std::unique_ptr(Metric::CreateMetric(metric_type, config_.metric_config)); if (metric == nullptr) { continue; } metric->Init(valid_names[i].c_str(), valid_datas_[i]->metadata(), valid_datas_[i]->num_data()); valid_metrics_.back().push_back(std::move(metric)); } valid_metrics_.back().shrink_to_fit(); } valid_metrics_.shrink_to_fit(); // initialize the objective function if (objective_fun_ != nullptr) { objective_fun_->Init(train_data_->metadata(), train_data_->num_data()); } // initialize the boosting boosting_->Init(&config_.boosting_config, train_data_, objective_fun_.get(), Common::ConstPtrInVectorWrapper(train_metric_)); // add validation data into boosting for (size_t i = 0; i < valid_datas_.size(); ++i) { boosting_->AddDataset(valid_datas_[i], Common::ConstPtrInVectorWrapper(valid_metrics_[i])); } } ~Booster() { } bool TrainOneIter() { return boosting_->TrainOneIter(nullptr, nullptr, false); } bool TrainOneIter(const float* gradients, const float* hessians) { return boosting_->TrainOneIter(gradients, hessians, false); } void PrepareForPrediction(int num_used_model, int predict_type) { boosting_->SetNumUsedModel(num_used_model); bool is_predict_leaf = false; bool is_raw_score = false; if (predict_type == C_API_PREDICT_LEAF_INDEX) { is_predict_leaf = true; } else if (predict_type == C_API_PREDICT_RAW_SCORE) { is_raw_score = true; } else { is_raw_score = false; } predictor_.reset(new Predictor(boosting_.get(), is_raw_score, is_predict_leaf)); } std::vector Predict(const std::vector>& features) { return predictor_->GetPredictFunction()(features); } void PredictForFile(const char* data_filename, const char* result_filename, bool data_has_header) { predictor_->Predict(data_filename, result_filename, data_has_header); } void SaveModelToFile(int num_used_model, const char* filename) { boosting_->SaveModelToFile(num_used_model, true, filename); } const Boosting* GetBoosting() const { return boosting_.get(); } const float* GetTrainingScore(int* out_len) const { return boosting_->GetTrainingScore(out_len); } const inline int NumberOfClasses() const { return boosting_->NumberOfClasses(); } private: std::unique_ptr boosting_; /*! \brief All configs */ OverallConfig config_; /*! \brief Training data */ const Dataset* train_data_; /*! \brief Validation data */ std::vector valid_datas_; /*! \brief Metric for training data */ std::vector> train_metric_; /*! \brief Metrics for validation data */ std::vector>> valid_metrics_; /*! \brief Training objective function */ std::unique_ptr objective_fun_; /*! \brief Using predictor for prediction task */ std::unique_ptr predictor_; }; } using namespace LightGBM; DllExport const char* LGBM_GetLastError() { return LastErrorMsg().c_str(); } DllExport int LGBM_CreateDatasetFromFile(const char* filename, const char* parameters, const DatesetHandle* reference, DatesetHandle* out) { API_BEGIN(); OverallConfig config; config.LoadFromString(parameters); DatasetLoader loader(config.io_config, nullptr); loader.SetHeader(filename); if (reference == nullptr) { *out = new std::shared_ptr(loader.LoadFromFile(filename)); } else { *out = new std::shared_ptr( loader.LoadFromFileAlignWithOtherDataset(filename, reinterpret_cast*>(*reference)->get()) ); } API_END(); } DllExport int LGBM_CreateDatasetFromBinaryFile(const char* filename, DatesetHandle* out) { API_BEGIN(); OverallConfig config; DatasetLoader loader(config.io_config, nullptr); *out = new std::shared_ptr(loader.LoadFromBinFile(filename, 0, 1)); API_END(); } DllExport int LGBM_CreateDatasetFromMat(const void* data, int data_type, int32_t nrow, int32_t ncol, int is_row_major, const char* parameters, const DatesetHandle* reference, DatesetHandle* out) { API_BEGIN(); OverallConfig config; config.LoadFromString(parameters); DatasetLoader loader(config.io_config, nullptr); std::unique_ptr ret; auto get_row_fun = RowFunctionFromDenseMatric(data, nrow, ncol, data_type, is_row_major); if (reference == nullptr) { // sample data first Random rand(config.io_config.data_random_seed); const size_t sample_cnt = static_cast(nrow < config.io_config.bin_construct_sample_cnt ? nrow : config.io_config.bin_construct_sample_cnt); auto sample_indices = rand.Sample(nrow, sample_cnt); std::vector> sample_values(ncol); for (size_t i = 0; i < sample_indices.size(); ++i) { auto idx = sample_indices[i]; auto row = get_row_fun(static_cast(idx)); for (size_t j = 0; j < row.size(); ++j) { if (std::fabs(row[j]) > 1e-15) { sample_values[j].push_back(row[j]); } } } ret.reset(loader.CostructFromSampleData(sample_values, sample_cnt, nrow)); } else { ret.reset(new Dataset(nrow, config.io_config.num_class)); ret->CopyFeatureMapperFrom( reinterpret_cast*>(*reference)->get(), config.io_config.is_enable_sparse); } #pragma omp parallel for schedule(guided) for (int i = 0; i < nrow; ++i) { const int tid = omp_get_thread_num(); auto one_row = get_row_fun(i); ret->PushOneRow(tid, i, one_row); } ret->FinishLoad(); *out = new std::shared_ptr(ret.release()); API_END(); } DllExport int LGBM_CreateDatasetFromCSR(const void* indptr, int indptr_type, const int32_t* indices, const void* data, int data_type, int64_t nindptr, int64_t nelem, int64_t num_col, const char* parameters, const DatesetHandle* reference, DatesetHandle* out) { API_BEGIN(); OverallConfig config; config.LoadFromString(parameters); DatasetLoader loader(config.io_config, nullptr); std::unique_ptr ret; auto get_row_fun = RowFunctionFromCSR(indptr, indptr_type, indices, data, data_type, nindptr, nelem); int32_t nrow = static_cast(nindptr - 1); if (reference == nullptr) { // sample data first Random rand(config.io_config.data_random_seed); const size_t sample_cnt = static_cast(nrow < config.io_config.bin_construct_sample_cnt ? nrow : config.io_config.bin_construct_sample_cnt); auto sample_indices = rand.Sample(nrow, sample_cnt); std::vector> sample_values; for (size_t i = 0; i < sample_indices.size(); ++i) { auto idx = sample_indices[i]; auto row = get_row_fun(static_cast(idx)); for (std::pair& inner_data : row) { if (std::fabs(inner_data.second) > 1e-15) { if (static_cast(inner_data.first) >= sample_values.size()) { // if need expand feature set size_t need_size = inner_data.first - sample_values.size() + 1; for (size_t j = 0; j < need_size; ++j) { sample_values.emplace_back(); } } // edit the feature value sample_values[inner_data.first].push_back(inner_data.second); } } } CHECK(num_col >= static_cast(sample_values.size())); ret.reset(loader.CostructFromSampleData(sample_values, sample_cnt, nrow)); } else { ret.reset(new Dataset(nrow, config.io_config.num_class)); ret->CopyFeatureMapperFrom( reinterpret_cast*>(*reference)->get(), config.io_config.is_enable_sparse); } #pragma omp parallel for schedule(guided) for (int i = 0; i < nindptr - 1; ++i) { const int tid = omp_get_thread_num(); auto one_row = get_row_fun(i); ret->PushOneRow(tid, i, one_row); } ret->FinishLoad(); *out = new std::shared_ptr(ret.release()); API_END(); } DllExport int LGBM_CreateDatasetFromCSC(const void* col_ptr, int col_ptr_type, const int32_t* indices, const void* data, int data_type, int64_t ncol_ptr, int64_t nelem, int64_t num_row, const char* parameters, const DatesetHandle* reference, DatesetHandle* out) { API_BEGIN(); OverallConfig config; config.LoadFromString(parameters); DatasetLoader loader(config.io_config, nullptr); std::unique_ptr ret; auto get_col_fun = ColumnFunctionFromCSC(col_ptr, col_ptr_type, indices, data, data_type, ncol_ptr, nelem); int32_t nrow = static_cast(num_row); if (reference == nullptr) { Log::Warning("Construct from CSC format is not efficient"); // sample data first Random rand(config.io_config.data_random_seed); const size_t sample_cnt = static_cast(nrow < config.io_config.bin_construct_sample_cnt ? nrow : config.io_config.bin_construct_sample_cnt); auto sample_indices = rand.Sample(nrow, sample_cnt); std::vector> sample_values(ncol_ptr - 1); #pragma omp parallel for schedule(guided) for (int i = 0; i < static_cast(sample_values.size()); ++i) { auto cur_col = get_col_fun(i); sample_values[i] = SampleFromOneColumn(cur_col, sample_indices); } ret.reset(loader.CostructFromSampleData(sample_values, sample_cnt, nrow)); } else { ret.reset(new Dataset(nrow, config.io_config.num_class)); ret->CopyFeatureMapperFrom( reinterpret_cast*>(*reference)->get(), config.io_config.is_enable_sparse); } #pragma omp parallel for schedule(guided) for (int i = 0; i < ncol_ptr - 1; ++i) { const int tid = omp_get_thread_num(); auto one_col = get_col_fun(i); ret->PushOneColumn(tid, i, one_col); } ret->FinishLoad(); *out = new std::shared_ptr(ret.release()); API_END(); } DllExport int LGBM_DatasetFree(DatesetHandle handle) { API_BEGIN(); delete reinterpret_cast*>(handle); API_END(); } DllExport int LGBM_DatasetSaveBinary(DatesetHandle handle, const char* filename) { API_BEGIN(); auto dataset = reinterpret_cast*>(handle); dataset->get()->SaveBinaryFile(filename); API_END(); } DllExport int LGBM_DatasetSetField(DatesetHandle handle, const char* field_name, const void* field_data, int64_t num_element, int type) { API_BEGIN(); auto dataset = reinterpret_cast*>(handle); bool is_success = false; if (type == C_API_DTYPE_FLOAT32) { is_success = dataset->get()->SetFloatField(field_name, reinterpret_cast(field_data), static_cast(num_element)); } else if (type == C_API_DTYPE_INT32) { is_success = dataset->get()->SetIntField(field_name, reinterpret_cast(field_data), static_cast(num_element)); } if (!is_success) { throw std::runtime_error("Input data type erorr or field not found"); } API_END(); } DllExport int LGBM_DatasetGetField(DatesetHandle handle, const char* field_name, int64_t* out_len, const void** out_ptr, int* out_type) { API_BEGIN(); auto dataset = reinterpret_cast*>(handle); bool is_success = false; if (dataset->get()->GetFloatField(field_name, out_len, reinterpret_cast(out_ptr))) { *out_type = C_API_DTYPE_FLOAT32; is_success = true; } else if (dataset->get()->GetIntField(field_name, out_len, reinterpret_cast(out_ptr))) { *out_type = C_API_DTYPE_INT32; is_success = true; } if (!is_success) { throw std::runtime_error("Field not found"); } API_END(); } DllExport int LGBM_DatasetGetNumData(DatesetHandle handle, int64_t* out) { API_BEGIN(); auto dataset = reinterpret_cast*>(handle); *out = dataset->get()->num_data(); API_END(); } DllExport int LGBM_DatasetGetNumFeature(DatesetHandle handle, int64_t* out) { API_BEGIN(); auto dataset = reinterpret_cast*>(handle); *out = dataset->get()->num_total_features(); API_END(); } // ---- start of booster DllExport int LGBM_BoosterCreate(const DatesetHandle train_data, const DatesetHandle valid_datas[], const char* valid_names[], int n_valid_datas, const char* parameters, BoosterHandle* out) { API_BEGIN(); const Dataset* p_train_data = reinterpret_cast*>(train_data)->get(); std::vector p_valid_datas; std::vector p_valid_names; for (int i = 0; i < n_valid_datas; ++i) { p_valid_datas.emplace_back(reinterpret_cast*>(valid_datas[i])->get()); p_valid_names.emplace_back(valid_names[i]); } *out = new std::shared_ptr(new Booster(p_train_data, p_valid_datas, p_valid_names, parameters)); API_END(); } DllExport int LGBM_BoosterLoadFromModelfile( const char* filename, BoosterHandle* out) { API_BEGIN(); *out = new std::shared_ptr(new Booster(filename)); API_END(); } DllExport int LGBM_BoosterFree(BoosterHandle handle) { API_BEGIN(); delete reinterpret_cast*>(handle); API_END(); } DllExport int LGBM_BoosterUpdateOneIter(BoosterHandle handle, int* is_finished) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); if (ref_booster->TrainOneIter()) { *is_finished = 1; } else { *is_finished = 0; } API_END(); } DllExport int LGBM_BoosterUpdateOneIterCustom(BoosterHandle handle, const float* grad, const float* hess, int* is_finished) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); if (ref_booster->TrainOneIter(grad, hess)) { *is_finished = 1; } else { *is_finished = 0; } API_END(); } DllExport int LGBM_BoosterEval(BoosterHandle handle, int data, int64_t* out_len, float* out_results) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); auto boosting = ref_booster->GetBoosting(); auto result_buf = boosting->GetEvalAt(data); *out_len = static_cast(result_buf.size()); for (size_t i = 0; i < result_buf.size(); ++i) { (out_results)[i] = static_cast(result_buf[i]); } API_END(); } DllExport int LGBM_BoosterGetScore(BoosterHandle handle, int64_t* out_len, const float** out_result) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); int len = 0; *out_result = ref_booster->GetTrainingScore(&len); *out_len = static_cast(len); API_END(); } DllExport int LGBM_BoosterGetPredict(BoosterHandle handle, int data, int64_t* out_len, float* out_result) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); auto boosting = ref_booster->GetBoosting(); int len = 0; boosting->GetPredictAt(data, out_result, &len); *out_len = static_cast(len); API_END(); } DllExport int LGBM_BoosterPredictForFile(BoosterHandle handle, int predict_type, int64_t n_used_trees, int data_has_header, const char* data_filename, const char* result_filename) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); ref_booster->PrepareForPrediction(static_cast(n_used_trees), predict_type); bool bool_data_has_header = data_has_header > 0 ? true : false; ref_booster->PredictForFile(data_filename, result_filename, bool_data_has_header); API_END(); } DllExport int LGBM_BoosterPredictForCSR(BoosterHandle handle, const void* indptr, int indptr_type, const int32_t* indices, const void* data, int data_type, int64_t nindptr, int64_t nelem, int64_t, int predict_type, int64_t n_used_trees, double* out_result) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); ref_booster->PrepareForPrediction(static_cast(n_used_trees), predict_type); auto get_row_fun = RowFunctionFromCSR(indptr, indptr_type, indices, data, data_type, nindptr, nelem); int num_class = ref_booster->NumberOfClasses(); int nrow = static_cast(nindptr - 1); #pragma omp parallel for schedule(guided) for (int i = 0; i < nrow; ++i) { auto one_row = get_row_fun(i); auto predicton_result = ref_booster->Predict(one_row); for (int j = 0; j < num_class; ++j) { out_result[i * num_class + j] = predicton_result[j]; } } API_END(); } DllExport int LGBM_BoosterPredictForMat(BoosterHandle handle, const void* data, int data_type, int32_t nrow, int32_t ncol, int is_row_major, int predict_type, int64_t n_used_trees, double* out_result) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); ref_booster->PrepareForPrediction(static_cast(n_used_trees), predict_type); auto get_row_fun = RowPairFunctionFromDenseMatric(data, nrow, ncol, data_type, is_row_major); int num_class = ref_booster->NumberOfClasses(); #pragma omp parallel for schedule(guided) for (int i = 0; i < nrow; ++i) { auto one_row = get_row_fun(i); auto predicton_result = ref_booster->Predict(one_row); for (int j = 0; j < num_class; ++j) { out_result[i * num_class + j] = predicton_result[j]; } } API_END(); } DllExport int LGBM_BoosterSaveModel(BoosterHandle handle, int num_used_model, const char* filename) { API_BEGIN(); Booster* ref_booster = reinterpret_cast*>(handle)->get(); ref_booster->SaveModelToFile(num_used_model, filename); API_END(); } // ---- start of some help functions std::function(int row_idx)> RowFunctionFromDenseMatric(const void* data, int num_row, int num_col, int data_type, int is_row_major) { if (data_type == C_API_DTYPE_FLOAT32) { const float* data_ptr = reinterpret_cast(data); if (is_row_major) { return [data_ptr, num_col, num_row](int row_idx) { std::vector ret(num_col); auto tmp_ptr = data_ptr + num_col * row_idx; for (int i = 0; i < num_col; ++i) { ret[i] = static_cast(*(tmp_ptr + i)); } return ret; }; } else { return [data_ptr, num_col, num_row](int row_idx) { std::vector ret(num_col); for (int i = 0; i < num_col; ++i) { ret[i] = static_cast(*(data_ptr + num_row * i + row_idx)); } return ret; }; } } else if (data_type == C_API_DTYPE_FLOAT64) { const double* data_ptr = reinterpret_cast(data); if (is_row_major) { return [data_ptr, num_col, num_row](int row_idx) { std::vector ret(num_col); auto tmp_ptr = data_ptr + num_col * row_idx; for (int i = 0; i < num_col; ++i) { ret[i] = static_cast(*(tmp_ptr + i)); } return ret; }; } else { return [data_ptr, num_col, num_row](int row_idx) { std::vector ret(num_col); for (int i = 0; i < num_col; ++i) { ret[i] = static_cast(*(data_ptr + num_row * i + row_idx)); } return ret; }; } } throw std::runtime_error("unknown data type in RowFunctionFromDenseMatric"); } std::function>(int row_idx)> RowPairFunctionFromDenseMatric(const void* data, int num_row, int num_col, int data_type, int is_row_major) { auto inner_function = RowFunctionFromDenseMatric(data, num_row, num_col, data_type, is_row_major); if (inner_function != nullptr) { return [inner_function](int row_idx) { auto raw_values = inner_function(row_idx); std::vector> ret; for (int i = 0; i < static_cast(raw_values.size()); ++i) { if (std::fabs(raw_values[i]) > 1e-15) { ret.emplace_back(i, raw_values[i]); } } return ret; }; } return nullptr; } std::function>(int idx)> RowFunctionFromCSR(const void* indptr, int indptr_type, const int32_t* indices, const void* data, int data_type, int64_t nindptr, int64_t nelem) { if (data_type == C_API_DTYPE_FLOAT32) { const float* data_ptr = reinterpret_cast(data); if (indptr_type == C_API_DTYPE_INT32) { const int32_t* ptr_indptr = reinterpret_cast(indptr); return [ptr_indptr, indices, data_ptr, nindptr, nelem](int idx) { std::vector> ret; int64_t start = ptr_indptr[idx]; int64_t end = ptr_indptr[idx + 1]; for (int64_t i = start; i <= end; ++i) { ret.emplace_back(indices[i], data_ptr[i]); } return ret; }; } else if (indptr_type == C_API_DTYPE_INT64) { const int64_t* ptr_indptr = reinterpret_cast(indptr); return [ptr_indptr, indices, data_ptr, nindptr, nelem](int idx) { std::vector> ret; int64_t start = ptr_indptr[idx]; int64_t end = ptr_indptr[idx + 1]; for (int64_t i = start; i <= end; ++i) { ret.emplace_back(indices[i], data_ptr[i]); } return ret; }; } } else if (data_type == C_API_DTYPE_FLOAT64) { const double* data_ptr = reinterpret_cast(data); if (indptr_type == C_API_DTYPE_INT32) { const int32_t* ptr_indptr = reinterpret_cast(indptr); return [ptr_indptr, indices, data_ptr, nindptr, nelem](int idx) { std::vector> ret; int64_t start = ptr_indptr[idx]; int64_t end = ptr_indptr[idx + 1]; for (int64_t i = start; i <= end; ++i) { ret.emplace_back(indices[i], data_ptr[i]); } return ret; }; } else if (indptr_type == C_API_DTYPE_INT64) { const int64_t* ptr_indptr = reinterpret_cast(indptr); return [ptr_indptr, indices, data_ptr, nindptr, nelem](int idx) { std::vector> ret; int64_t start = ptr_indptr[idx]; int64_t end = ptr_indptr[idx + 1]; for (int64_t i = start; i <= end; ++i) { ret.emplace_back(indices[i], data_ptr[i]); } return ret; }; } } throw std::runtime_error("unknown data type in RowFunctionFromCSR"); } std::function>(int idx)> ColumnFunctionFromCSC(const void* col_ptr, int col_ptr_type, const int32_t* indices, const void* data, int data_type, int64_t ncol_ptr, int64_t nelem) { if (data_type == C_API_DTYPE_FLOAT32) { const float* data_ptr = reinterpret_cast(data); if (col_ptr_type == C_API_DTYPE_INT32) { const int32_t* ptr_col_ptr = reinterpret_cast(col_ptr); return [ptr_col_ptr, indices, data_ptr, ncol_ptr, nelem](int idx) { std::vector> ret; int64_t start = ptr_col_ptr[idx]; int64_t end = ptr_col_ptr[idx + 1]; for (int64_t i = start; i < end; ++i) { ret.emplace_back(indices[i], data_ptr[i]); } return ret; }; } else if (col_ptr_type == C_API_DTYPE_INT64) { const int64_t* ptr_col_ptr = reinterpret_cast(col_ptr); return [ptr_col_ptr, indices, data_ptr, ncol_ptr, nelem](int idx) { std::vector> ret; int64_t start = ptr_col_ptr[idx]; int64_t end = ptr_col_ptr[idx + 1]; for (int64_t i = start; i < end; ++i) { ret.emplace_back(indices[i], data_ptr[i]); } return ret; }; } } else if (data_type == C_API_DTYPE_FLOAT64) { const double* data_ptr = reinterpret_cast(data); if (col_ptr_type == C_API_DTYPE_INT32) { const int32_t* ptr_col_ptr = reinterpret_cast(col_ptr); return [ptr_col_ptr, indices, data_ptr, ncol_ptr, nelem](int idx) { std::vector> ret; int64_t start = ptr_col_ptr[idx]; int64_t end = ptr_col_ptr[idx + 1]; for (int64_t i = start; i < end; ++i) { ret.emplace_back(indices[i], data_ptr[i]); } return ret; }; } else if (col_ptr_type == C_API_DTYPE_INT64) { const int64_t* ptr_col_ptr = reinterpret_cast(col_ptr); return [ptr_col_ptr, indices, data_ptr, ncol_ptr, nelem](int idx) { std::vector> ret; int64_t start = ptr_col_ptr[idx]; int64_t end = ptr_col_ptr[idx + 1]; for (int64_t i = start; i < end; ++i) { ret.emplace_back(indices[i], data_ptr[i]); } return ret; }; } } throw std::runtime_error("unknown data type in ColumnFunctionFromCSC"); } std::vector SampleFromOneColumn(const std::vector>& data, const std::vector& indices) { size_t j = 0; std::vector ret; for (auto row_idx : indices) { while (j < data.size() && data[j].first < static_cast(row_idx)) { ++j; } if (j < data.size() && data[j].first == static_cast(row_idx)) { ret.push_back(data[j].second); } } return ret; }