FeatureSpace.hpp 25.7 KB
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/** @file feature_creation/feature_space/FeatureSpace.hpp
 *  @brief Create a feature space from an initial set of features and algebraic operators
 *
 *  Use an initial set of features and combine them to generate more complicated algebraical features. SIS is also performed here
 *
 *  @author Thomas A. R. Purcell (tpurcell)
 *  @bug No known bugs.
 */

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#ifndef FEATURE_SPACE
#define FEATURE_SPACE

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#include <boost/serialization/shared_ptr.hpp>
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#include <boost/filesystem.hpp>
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#include <iostream>
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#include <iomanip>
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#include <utility>
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#include "mpi_interface/MPI_Interface.hpp"
#include "mpi_interface/MPI_ops.hpp"
#include "mpi_interface/serialize_tuple.h"
#include "feature_creation/node/ModelNode.hpp"
#include "feature_creation/node/operator_nodes/allowed_ops.hpp"
#include "feature_creation/node/utils.hpp"
#include "feature_creation/node/value_storage/nodes_value_containers.hpp"
#include "utils/compare_features.hpp"
#include "utils/project.hpp"

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#ifdef PY_BINDINGS
    namespace np = boost::python::numpy;
    namespace py = boost::python;
#endif
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// DocString: cls_feat_space
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/**
 * @brief Feature Space for SISSO calculations
 * @details Stores and performs all feature calculations for SIS
 *
 */
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class FeatureSpace
{
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    std::vector<node_ptr> _phi_selected; //!< selected features
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    std::vector<node_ptr> _phi; //!< all features
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    const std::vector<node_ptr> _phi_0; //!< initial feature space
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    #ifdef PARAMETERIZE
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    std::vector<un_param_op_node_gen> _un_param_operators; //!< list of all parameterized unary operators with free parameters
    std::vector<bin_param_op_node_gen> _com_bin_param_operators; //!< list of all parameterized commutable binary operators with free parameters
    std::vector<bin_param_op_node_gen> _bin_param_operators; //!< list of all parameterized binary operators with free parameters
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    std::vector<std::string> _allowed_param_ops; //!< Map of parameterization operator set (set of operators and non-linear parameters used for a non-linear least squares fit to property)
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    #endif
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    std::vector<std::string> _allowed_ops; //!< list of all allowed operators strings
    std::vector<un_op_node_gen> _un_operators; //!< list of all unary operators
    std::vector<bin_op_node_gen> _com_bin_operators; //!< list of all commutable binary operators
    std::vector<bin_op_node_gen> _bin_operators; //!< list of all binary operators

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    std::vector<double> _prop; //!< The property to fit
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    std::vector<double> _scores; //!< projection scores for each feature

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    const std::vector<int> _task_sizes; //!< The number of elements in each task (training data)
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    std::vector<int> _start_gen; //!< list of the indexes where each generation starts in _phi
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    const std::string _project_type; //!< The type of projection that should be done during SIS
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    const std::string _feature_space_file; //!< File to store information about the selected features
    const std::string _feature_space_summary_file; //!< File to store information about the selected features
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    std::function<void(const double*, double*, const std::vector<node_ptr>&, const std::vector<int>&, const int)> _project; //!< Function used to calculate the scores for SIS
    std::function<void(const double*, double*, const std::vector<node_ptr>&, const std::vector<int>&, const int)> _project_no_omp; //!< Function used to calculate the scores for SIS without changing omp environment
    std::function<bool(const double*, const int, const double, const std::vector<double>&, const double, const int, const int)> _is_valid; //!< Function used to calculate the scores for SIS
    std::function<bool(const double*, const int, const double, const std::vector<node_ptr>&, const std::vector<double>&, const double)> _is_valid_feat_list; //!< Function used to calculate the scores for SIS without changing omp environment
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    std::shared_ptr<MPI_Interface> _mpi_comm; //!< MPI communicator
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    const double _cross_cor_max; //!< Maximum cross-correlation used for selecting features
    const double _l_bound; //!< lower bound for absolute value of the features
    const double _u_bound; //!< upper bound for absolute value of the features
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    int _n_rung_store; //!< Total rungs stored
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    int _n_feat; //!< Total number of features
    int _max_phi; //!< Maximum rung for the feature creation
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    const int _n_sis_select; //!< Number of features to select for each dimensions
    const int _n_samp; //!< Number of samples (training data)
    const int _n_rung_generate; //!< Total number of rungs to generate on the fly
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    int _max_param_depth; //!< Max depth to parameterize a feature (default=_max_rung)

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public:
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    #ifdef PARAMETERIZE
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    /**
     * @brief Constructor for the feature space
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     * @details constructs the feature space from an initial set of features and a list of allowed operators
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     *
     * @param mpi_comm MPI communicator for the calculations
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     * @param phi_0 The initial set of features to combine
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     * @param allowed_ops list of allowed operators
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     * @param allowed_param_ops dictionary of the parameterizable operators and their associated free parameters
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     * @param prop The property to be learned (training data)
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     * @param task_sizes The number of samples per task
     * @param project_type The projection operator to use
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     * @param max_phi highest rung value for the calculation
     * @param n_sis_select number of features to select during each SIS step
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     * @param max_store_rung number of rungs to calculate and store the value of the features for all samples
     * @param n_rung_generate number of rungs to generate on the fly during SIS (this must be 1 or 0 right now, possible to be higher with recursive algorithm)
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     * @param cross_corr_max Maximum cross-correlation used for selecting features
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     * @param min_abs_feat_val minimum absolute feature value
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     * @param max_abs_feat_val maximum absolute feature value
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     * @param max_param_depth the maximum paremterization depths for features
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     */
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    FeatureSpace(
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        std::shared_ptr<MPI_Interface> mpi_comm,
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        std::vector<node_ptr> phi_0,
        std::vector<std::string> allowed_ops,
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        std::vector<std::string> allowed_param_ops,
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        std::vector<double> prop,
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        std::vector<int> task_sizes,
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        std::string project_type="regression",
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        int max_phi=1,
        int n_sis_select=1,
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        int max_store_rung=-1,
        int n_rung_generate=0,
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        double cross_corr_max=1.0,
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        double min_abs_feat_val=1e-50,
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        double max_abs_feat_val=1e50,
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        int max_param_depth = -1
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    );
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    #else
    /**
     * @brief Constructor for the feature space
     * @details constructs the feature space from an initial set of features and a list of allowed operators
     *
     * @param mpi_comm MPI communicator for the calculations
     * @param phi_0 The initial set of features to combine
     * @param allowed_ops list of allowed operators
     * @param allowed_param_ops dictionary of the parameterizable operators and their associated free parameters
     * @param prop The property to be learned (training data)
     * @param task_sizes The number of samples per task
     * @param project_type The projection operator to use
     * @param max_phi highest rung value for the calculation
     * @param n_sis_select number of features to select during each SIS step
     * @param max_store_rung number of rungs to calculate and store the value of the features for all samples
     * @param n_rung_generate number of rungs to generate on the fly during SIS (this must be 1 or 0 right now, possible to be higher with recursive algorithm)
     * @param cross_corr_max Maximum cross-correlation used for selecting features
     * @param min_abs_feat_val minimum absolute feature value
     * @param max_abs_feat_val maximum absolute feature value
     * @param max_param_depth the maximum paremterization depths for features
     */
    FeatureSpace(
        std::shared_ptr<MPI_Interface> mpi_comm,
        std::vector<node_ptr> phi_0,
        std::vector<std::string> allowed_ops,
        std::vector<double> prop,
        std::vector<int> task_sizes,
        std::string project_type="regression",
        int max_phi=1,
        int n_sis_select=1,
        int max_store_rung=-1,
        int n_rung_generate=0,
        double cross_corr_max=1.0,
        double min_abs_feat_val=1e-50,
        double max_abs_feat_val=1e50
    );
    #endif
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    /**
     * @brief Initialize the feature set given a property vector
     */
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    void initialize_fs();
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    /**
     * @brief Uses _allowed_ops to set the operator lists
     */
    void set_op_lists();

    /**
     * @brief Initializes the output files for SIS
     */
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    void initialize_fs_output_files() const;
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    /**
     * @brief Generate the full feature set from the allowed operators and initial feature set
     * @details populates phi with all features from an initial set and the allowed operators
     */
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    void generate_feature_space();
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    /**
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     * @brief The selected feature space
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     */
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    inline std::vector<node_ptr> phi_selected() const {return _phi_selected;};
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    /**
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     * @brief The full feature space
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     */
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    inline std::vector<node_ptr> phi() const {return _phi;};
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    /**
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     * @brief The initial feature space
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     */
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    inline std::vector<node_ptr> phi0() const {return _phi_0;};
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    /**
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     * @brief The vector of projection scores for SIS
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     */
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    inline std::vector<double> scores() const {return _scores;}
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    /**
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     * @brief The MPI Communicator
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     */
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    inline std::shared_ptr<MPI_Interface> mpi_comm() const {return _mpi_comm;}
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    /**
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     * @brief The vector storing the number of samples in each task
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     */
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    inline std::vector<int> task_sizes() const {return _task_sizes;}
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    // DocString: feat_space_feature_space_file
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    /**
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     * @brief The feature space filename
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     */
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    inline std::string feature_space_file() const {return _feature_space_file;}
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    // DocString: feat_space_l_bound
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    /**
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     * @brief The minimum absolute value of the feature
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     */
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    inline double l_bound() const {return _l_bound;}
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    // DocString: feat_space_u_bound
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    /**
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     * @brief The maximum absolute value of the feature
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     */
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    inline double u_bound() const {return _u_bound;}
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    // DocString: feat_space_max_phi
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    /**
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     * @brief The maximum rung of the feature space
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     */
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    inline int max_phi() const {return _max_phi;}
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    // DocString: feat_space_n_sis_select
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    /**
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     * @brief The number of features selected in each SIS step
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     */
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    inline int n_sis_select() const {return _n_sis_select;}
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    // DocString: feat_space_n_samp
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    /**
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     * @brief The number of samples per feature
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     */
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    inline int n_samp() const {return _n_samp;}
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    // DocString: feat_space_n_feat
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    /**
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     * @brief The number of features in the feature space
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     */
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    inline int n_feat() const {return _n_feat;}
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    // DocString: feat_space_n_rung_store
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    /**
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     * @brief The number of rungs whose feature training data is stored in memory
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     */
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    inline int n_rung_store() const {return _n_rung_store;}
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    // DocString: feat_space_n_rung_generate
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    /**
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     * @brief The number of rungs to be generated on the fly during SIS
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     */
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    inline int n_rung_generate() const {return _n_rung_generate;}
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    #ifdef PARAMETERIZE
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    /**
     * @brief Generate a new set of features from a single feature
     * @details Take in the feature and perform all valid algebraic operations on it.
     *
     * @param feat The feature to spawn new features from
     * @param feat_set The feature set to pull features from for combinations
     * @param feat_ind starting index for the next feature generated
     * @param optimizer The object used to optimize the parameterized features
     * @param l_bound lower bound for the absolute value of the feature
     * @param u_bound upper bound for the abosulte value of the feature
     */
    void generate_new_feats(
        std::vector<node_ptr>::iterator& feat,
        std::vector<node_ptr>& feat_set,
        unsigned long int& feat_ind,
        std::shared_ptr<NLOptimizer> optimizer,
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        const double l_bound=1e-50,
        const double u_bound=1e50
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    );
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    #else
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    /**
     * @brief Generate a new set of features from a single feature
     * @details Take in the feature and perform all valid algebraic operations on it.
     *
     * @param feat The feature to spawn new features from
     * @param feat_set The feature set to pull features from for combinations
     * @param feat_ind starting index for the next feature generated
     * @param l_bound lower bound for the absolute value of the feature
     * @param u_bound upper bound for the abosulte value of the feature
     */
    void generate_new_feats(
        std::vector<node_ptr>::iterator& feat,
        std::vector<node_ptr>& feat_set,
        unsigned long int& feat_ind,
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        const double l_bound=1e-50,
        const double u_bound=1e50
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    );
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    #endif
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    /**
     * @brief Calculate the SIS Scores for feature generated on the fly
     * @details Create the next rung of features and calculate their projection scores. Only keep those that can be selected by SIS.
     *
     * @param prop Pointer to the start of the vector storing the data to project the features onto
     * @param size The size of the data to project over
     * @param phi_selected The features that would be selected from the previous rungs
     * @param scores_selected The projection scores of the features that would be selected from the previous rungs
     */
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    void project_generated(const double* prop, const int size, std::vector<node_ptr>& phi_selected, std::vector<double>& scores_selected);
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    /**
     * @brief Perform SIS on a feature set with a specified property
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     * @details Perform sure-independence screening with either the correct property or the error
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     *
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     * @param prop The property to perform SIS over
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     */
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    void sis(const std::vector<double>& prop);
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    // DocString: feat_space_feat_in_phi
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    /**
     * @brief Is a feature in this process' _phi?
     *
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     * @param ind The index of the feature
     * @return True if feature is in this rank's _phi
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     */
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    inline bool feat_in_phi(int ind) const {return (ind >= _phi[0]->feat_ind()) && (ind <= _phi.back()->feat_ind());}
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    // DocString: feat_space_remove_feature
    /**
     * @brief Remove a feature from phi
     *
     * @param ind index of feature to remove
     */
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    void remove_feature(const int ind);
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    // Python Interface Functions
    #ifdef PY_BINDINGS
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    #ifdef PARAMETERIZE
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    /**
     * @brief Constructor for the feature space that takes in python objects
     * @details constructs the feature space from an initial set of features and a list of allowed operators (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     *
     * @param phi_0 The initial set of features to combine
     * @param allowed_ops list of allowed operators
     * @param allowed_param_ops dictionary of the parameterizable operators and their associated free parameters
     * @param prop The property to be learned (training data)
     * @param task_sizes The number of samples per task
     * @param project_type The projection operator to use
     * @param max_phi highest rung value for the calculation
     * @param n_sis_select number of features to select during each SIS step
     * @param max_store_rung number of rungs to calculate and store the value of the features for all samples
     * @param n_rung_generate number of rungs to generate on the fly during SIS (this must be 1 or 0 right now, possible to be higher with recursive algorithm)
     * @param cross_corr_max Maximum cross-correlation used for selecting features
     * @param min_abs_feat_val minimum absolute feature value
     * @param max_abs_feat_val maximum absolute feature value
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     * @param max_param_depth the maximum paremterization depths for features
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     */
    FeatureSpace(
        py::list phi_0,
        py::list allowed_ops,
        py::list allowed_param_ops,
        py::list prop,
        py::list task_sizes,
        std::string project_type="regression",
        int max_phi=1,
        int n_sis_select=1,
        int max_store_rung=-1,
        int n_rung_generate=0,
        double cross_corr_max=1.0,
        double min_abs_feat_val=1e-50,
        double max_abs_feat_val=1e50,
        int max_param_depth = -1
    );

    /**
     * @brief Constructor for the feature space that takes in python and numpy objects
     * @details constructs the feature space from an initial set of features and a list of allowed operators (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     *
     * @param phi_0 The initial set of features to combine
     * @param allowed_ops list of allowed operators
     * @param allowed_param_ops dictionary of the parameterizable operators and their associated free parameters
     * @param prop The property to be learned (training data)
     * @param task_sizes The number of samples per task
     * @param project_type The projection operator to use
     * @param max_phi highest rung value for the calculation
     * @param n_sis_select number of features to select during each SIS step
     * @param max_store_rung number of rungs to calculate and store the value of the features for all samples
     * @param n_rung_generate number of rungs to generate on the fly during SIS (this must be 1 or 0 right now, possible to be higher with recursive algorithm)
     * @param cross_corr_max Maximum cross-correlation used for selecting features
     * @param min_abs_feat_val minimum absolute feature value
     * @param max_abs_feat_val maximum absolute feature value
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     * @param max_param_depth the maximum paremterization depths for features
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     */
    FeatureSpace(
        py::list phi_0,
        py::list allowed_ops,
        py::list allowed_param_ops,
        np::ndarray prop,
        py::list task_sizes,
        std::string project_type="regression",
        int max_phi=1,
        int n_sis_select=1,
        int max_store_rung=-1,
        int n_rung_generate=0,
        double cross_corr_max=1.0,
        double min_abs_feat_val=1e-50,
        double max_abs_feat_val=1e50,
        int max_param_depth = -1
    );
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    #else
    /**
     * @brief Constructor for the feature space that takes in python objects
     * @details constructs the feature space from an initial set of features and a list of allowed operators (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     *
     * @param phi_0 The initial set of features to combine
     * @param allowed_ops list of allowed operators
     * @param prop The property to be learned (training data)
     * @param task_sizes The number of samples per task
     * @param project_type The projection operator to use
     * @param max_phi highest rung value for the calculation
     * @param n_sis_select number of features to select during each SIS step
     * @param max_store_rung number of rungs to calculate and store the value of the features for all samples
     * @param n_rung_generate number of rungs to generate on the fly during SIS (this must be 1 or 0 right now, possible to be higher with recursive algorithm)
     * @param cross_corr_max Maximum cross-correlation used for selecting features
     * @param min_abs_feat_val minimum absolute feature value
     * @param max_abs_feat_val maximum absolute feature value
     */
    FeatureSpace(
        py::list phi_0,
        py::list allowed_ops,
        py::list prop,
        py::list task_sizes,
        std::string project_type="regression",
        int max_phi=1,
        int n_sis_select=1,
        int max_store_rung=-1,
        int n_rung_generate=0,
        double cross_corr_max=1.0,
        double min_abs_feat_val=1e-50,
        double max_abs_feat_val=1e50
    );
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    /**
     * @brief Constructor for the feature space that takes in python and numpy objects
     * @details constructs the feature space from an initial set of features and a list of allowed operators (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     *
     * @param phi_0 The initial set of features to combine
     * @param allowed_ops list of allowed operators
     * @param prop The property to be learned (training data)
     * @param task_sizes The number of samples per task
     * @param project_type The projection operator to use
     * @param max_phi highest rung value for the calculation
     * @param n_sis_select number of features to select during each SIS step
     * @param max_store_rung number of rungs to calculate and store the value of the features for all samples
     * @param n_rung_generate number of rungs to generate on the fly during SIS (this must be 1 or 0 right now, possible to be higher with recursive algorithm)
     * @param cross_corr_max Maximum cross-correlation used for selecting features
     * @param min_abs_feat_val minimum absolute feature value
     * @param max_abs_feat_val maximum absolute feature value
     */
    FeatureSpace(
        py::list phi_0,
        py::list allowed_ops,
        np::ndarray prop,
        py::list task_sizes,
        std::string project_type="regression",
        int max_phi=1,
        int n_sis_select=1,
        int max_store_rung=-1,
        int n_rung_generate=0,
        double cross_corr_max=1.0,
        double min_abs_feat_val=1e-50,
        double max_abs_feat_val=1e50
    );
    #endif
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    /**
     * @brief Constructor for the feature space that takes in python and numpy objects
     * @details constructs the feature space from an initial set of features and a file containing postfix expressions for the features (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     *
     * @param feature_file The file with the postfix expressions for the feature space
     * @param phi_0 The initial set of features to combine
     * @param prop The property to be learned (training data)
     * @param task_sizes The number of samples per task
     * @param project_type The projection operator to use
     * @param n_sis_select number of features to select during each SIS step
     * @param cross_corr_max Maximum cross-correlation used for selecting features
     */
    FeatureSpace(
        std::string feature_file,
        py::list phi_0,
        np::ndarray prop,
        py::list task_sizes,
        std::string project_type="pearson",
        int n_sis_select=1,
        double cross_corr_max=1.0
    );

    /**
     * @brief Constructor for the feature space that takes in python and numpy objects
     * @details constructs the feature space from an initial set of features and a file containing postfix expressions for the features (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     *
     * @param feature_file The file with the postfix expressions for the feature space
     * @param prop The property to be learned (training data)
     * @param phi_0 The initial set of features to combine
     * @param task_sizes The number of samples per task
     * @param project_type The projection operator to use
     * @param n_sis_select number of features to select during each SIS step
     * @param cross_corr_max Maximum cross-correlation used for selecting features
     */
    FeatureSpace(
        std::string feature_file,
        py::list phi_0,
        py::list prop,
        py::list task_sizes,
        std::string project_type="pearson",
        int n_sis_select=1,
        double cross_corr_max=1.0
    );

    // DocString: feat_space_sis_arr
    /**
     * @brief Wrapper function for SIS using a numpy array
     *
     * @param prop(np.ndarray) The property to perform SIS over as a numpy array
     */
    inline void sis(np::ndarray prop)
    {
        std::vector<double> prop_vec = python_conv_utils::from_ndarray<double>(prop);
        sis(prop_vec);
    }

    // DocString: feat_space_sis_list
    /**
     * @brief Wrapper function for SIS using a python list
     *
     * @param prop(list) The property to perform SIS over as a python list
     */
    inline void sis(py::list prop)
    {
        std::vector<double> prop_vec = python_conv_utils::from_list<double>(prop);
        sis(prop_vec);
    }

    // DocString: feat_space_phi_selected_py
    /**
     * @brief The selected feature space (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     * @return _phi_selected as a python list
     */
    py::list phi_selected_py();

    // DocString: feat_space_phi0_py
    /**
     * @brief The initial feature space (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     * @return _phi0 as a python list
     */
    py::list phi0_py();

    // DocString: feat_space_phi_py
    /**
     * @brief The feature space (cpp definition in <python/feature_creation/FeatureSpace.cpp>)
     * @return _phi as a python list
     */
    py::list phi_py();

    // DocString: feat_space_scores_py
    /**
     * @brief The vector of projection scores for SIS
     * @return _scores as a numpy array
     */
    inline np::ndarray scores_py(){return python_conv_utils::to_ndarray<double>(_scores);};

    // DocString: feat_space_task_sizes_py
    /**
     * @brief The vector storing the number of samples in each task
     * @return _task_sizes as a python list
     */
    inline py::list task_sizes_py(){return python_conv_utils::to_list<int>(_task_sizes);};

    // DocString: feat_space_allowed_ops_py
    /**
     * @brief The list of allowed operator nodes
     * @return _allowed_ops as a python list
     */
    inline py::list allowed_ops_py(){return python_conv_utils::to_list<std::string>(_allowed_ops);}

    // DocString: feat_space_start_gen_py
    /**
     * @brief The index in _phi where each generation starts
     * @return _start_gen as a python list
     */
    inline py::list start_gen_py(){return python_conv_utils::to_list<int>(_start_gen);}

    // DocString: feat_space_get_feature
    /**
     * @brief Return a feature at a specified index
     *
     * @param ind index of the feature to get
     * @return A ModelNode of the feature at index ind
     */
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    inline ModelNode get_feature(const int ind) const {return ModelNode(_phi[ind]);}
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    #endif
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};

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#endif