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# coding: utf-8
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"""Wrapper for C API of LightGBM."""
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# This import causes lib_lightgbm.{dll,dylib,so} to be loaded.
# It's intentionally done here, as early as possible, to avoid issues like
# "libgomp.so.1: cannot allocate memory in static TLS block" on aarch64 Linux.
#
# For details, see the "cannot allocate memory in static TLS block" entry in docs/FAQ.rst.
from .libpath import _LIB  # isort: skip

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import abc
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import ctypes
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import inspect
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import json
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import warnings
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from collections import OrderedDict
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from copy import deepcopy
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from enum import Enum
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from functools import wraps
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from os import SEEK_END, environ
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from os.path import getsize
from pathlib import Path
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from tempfile import NamedTemporaryFile
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from typing import TYPE_CHECKING, Any, Callable, Dict, Iterable, Iterator, List, Optional, Set, Tuple, Union
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import numpy as np
import scipy.sparse

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from .compat import (
    PANDAS_INSTALLED,
    PYARROW_INSTALLED,
    arrow_cffi,
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    arrow_is_boolean,
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    arrow_is_floating,
    arrow_is_integer,
    concat,
    dt_DataTable,
    pa_Array,
    pa_chunked_array,
    pa_ChunkedArray,
    pa_compute,
    pa_Table,
    pd_CategoricalDtype,
    pd_DataFrame,
    pd_Series,
)
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if TYPE_CHECKING:
    from typing import Literal

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    # typing.TypeGuard was only introduced in Python 3.10
    try:
        from typing import TypeGuard
    except ImportError:
        from typing_extensions import TypeGuard


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__all__ = [
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    "Booster",
    "Dataset",
    "LGBMDeprecationWarning",
    "LightGBMError",
    "register_logger",
    "Sequence",
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]

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_BoosterHandle = ctypes.c_void_p
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_DatasetHandle = ctypes.c_void_p
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_ctypes_int_ptr = Union[
    "ctypes._Pointer[ctypes.c_int32]",
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    "ctypes._Pointer[ctypes.c_int64]",
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]
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_ctypes_int_array = Union[
    "ctypes.Array[ctypes._Pointer[ctypes.c_int32]]",
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    "ctypes.Array[ctypes._Pointer[ctypes.c_int64]]",
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]
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_ctypes_float_ptr = Union[
    "ctypes._Pointer[ctypes.c_float]",
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    "ctypes._Pointer[ctypes.c_double]",
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]
_ctypes_float_array = Union[
    "ctypes.Array[ctypes._Pointer[ctypes.c_float]]",
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    "ctypes.Array[ctypes._Pointer[ctypes.c_double]]",
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]
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_LGBM_EvalFunctionResultType = Tuple[str, float, bool]
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_LGBM_BoosterBestScoreType = Dict[str, Dict[str, float]]
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_LGBM_BoosterEvalMethodResultType = Tuple[str, str, float, bool]
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_LGBM_BoosterEvalMethodResultWithStandardDeviationType = Tuple[str, str, float, bool, float]
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_LGBM_CategoricalFeatureConfiguration = Union[List[str], List[int], "Literal['auto']"]
_LGBM_FeatureNameConfiguration = Union[List[str], "Literal['auto']"]
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_LGBM_GroupType = Union[
    List[float],
    List[int],
    np.ndarray,
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    pd_Series,
    pa_Array,
    pa_ChunkedArray,
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]
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_LGBM_PositionType = Union[
    np.ndarray,
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    pd_Series,
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]
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_LGBM_InitScoreType = Union[
    List[float],
    List[List[float]],
    np.ndarray,
    pd_Series,
    pd_DataFrame,
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    pa_Table,
    pa_Array,
    pa_ChunkedArray,
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]
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_LGBM_TrainDataType = Union[
    str,
    Path,
    np.ndarray,
    pd_DataFrame,
    dt_DataTable,
    scipy.sparse.spmatrix,
    "Sequence",
    List["Sequence"],
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    List[np.ndarray],
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    pa_Table,
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]
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_LGBM_LabelType = Union[
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    List[float],
    List[int],
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    np.ndarray,
    pd_Series,
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    pd_DataFrame,
    pa_Array,
    pa_ChunkedArray,
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]
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_LGBM_PredictDataType = Union[
    str,
    Path,
    np.ndarray,
    pd_DataFrame,
    dt_DataTable,
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    scipy.sparse.spmatrix,
    pa_Table,
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]
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_LGBM_WeightType = Union[
    List[float],
    List[int],
    np.ndarray,
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    pd_Series,
    pa_Array,
    pa_ChunkedArray,
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]
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_LGBM_SetFieldType = Union[
    List[List[float]],
    List[List[int]],
    List[float],
    List[int],
    np.ndarray,
    pd_Series,
    pd_DataFrame,
    pa_Table,
    pa_Array,
    pa_ChunkedArray,
]

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ZERO_THRESHOLD = 1e-35

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_MULTICLASS_OBJECTIVES = {"multiclass", "multiclassova", "multiclass_ova", "ova", "ovr", "softmax"}

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class LightGBMError(Exception):
    """Error thrown by LightGBM."""

    pass


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def _is_zero(x: float) -> bool:
    return -ZERO_THRESHOLD <= x <= ZERO_THRESHOLD


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def _get_sample_count(total_nrow: int, params: str) -> int:
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    sample_cnt = ctypes.c_int(0)
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    _safe_call(
        _LIB.LGBM_GetSampleCount(
            ctypes.c_int32(total_nrow),
            _c_str(params),
            ctypes.byref(sample_cnt),
        )
    )
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    return sample_cnt.value

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class _MissingType(Enum):
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    NONE = "None"
    NAN = "NaN"
    ZERO = "Zero"
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class _DummyLogger:
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    def info(self, msg: str) -> None:
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        print(msg)  # noqa: T201
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    def warning(self, msg: str) -> None:
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        warnings.warn(msg, stacklevel=3)


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_LOGGER: Any = _DummyLogger()
_INFO_METHOD_NAME = "info"
_WARNING_METHOD_NAME = "warning"
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def _has_method(logger: Any, method_name: str) -> bool:
    return callable(getattr(logger, method_name, None))


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def register_logger(
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    logger: Any,
    info_method_name: str = "info",
    warning_method_name: str = "warning",
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) -> None:
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    """Register custom logger.

    Parameters
    ----------
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    logger : Any
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        Custom logger.
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    info_method_name : str, optional (default="info")
        Method used to log info messages.
    warning_method_name : str, optional (default="warning")
        Method used to log warning messages.
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    """
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    if not _has_method(logger, info_method_name) or not _has_method(logger, warning_method_name):
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        raise TypeError(f"Logger must provide '{info_method_name}' and '{warning_method_name}' method")
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    global _LOGGER, _INFO_METHOD_NAME, _WARNING_METHOD_NAME
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    _LOGGER = logger
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    _INFO_METHOD_NAME = info_method_name
    _WARNING_METHOD_NAME = warning_method_name
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def _normalize_native_string(func: Callable[[str], None]) -> Callable[[str], None]:
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    """Join log messages from native library which come by chunks."""
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    msg_normalized: List[str] = []
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    @wraps(func)
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    def wrapper(msg: str) -> None:
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        nonlocal msg_normalized
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        if msg.strip() == "":
            msg = "".join(msg_normalized)
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            msg_normalized = []
            return func(msg)
        else:
            msg_normalized.append(msg)

    return wrapper


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def _log_info(msg: str) -> None:
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    getattr(_LOGGER, _INFO_METHOD_NAME)(msg)
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def _log_warning(msg: str) -> None:
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    getattr(_LOGGER, _WARNING_METHOD_NAME)(msg)
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@_normalize_native_string
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def _log_native(msg: str) -> None:
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    getattr(_LOGGER, _INFO_METHOD_NAME)(msg)
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def _log_callback(msg: bytes) -> None:
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    """Redirect logs from native library into Python."""
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    _log_native(str(msg.decode("utf-8")))
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# connect the Python logger to logging in lib_lightgbm
if not environ.get("LIGHTGBM_BUILD_DOC", False):
    _LIB.LGBM_GetLastError.restype = ctypes.c_char_p
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    callback = ctypes.CFUNCTYPE(None, ctypes.c_char_p)
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    _LIB.callback = callback(_log_callback)  # type: ignore[attr-defined]
    if _LIB.LGBM_RegisterLogCallback(_LIB.callback) != 0:
        raise LightGBMError(_LIB.LGBM_GetLastError().decode("utf-8"))
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_NUMERIC_TYPES = (int, float, bool)
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def _safe_call(ret: int) -> None:
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    """Check the return value from C API call.

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    Parameters
    ----------
    ret : int
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        The return value from C API calls.
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    """
    if ret != 0:
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        raise LightGBMError(_LIB.LGBM_GetLastError().decode("utf-8"))
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def _is_numeric(obj: Any) -> bool:
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    """Check whether object is a number or not, include numpy number, etc."""
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    try:
        float(obj)
        return True
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    except (TypeError, ValueError):
        # TypeError: obj is not a string or a number
        # ValueError: invalid literal
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        return False

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def _is_numpy_1d_array(data: Any) -> bool:
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    """Check whether data is a numpy 1-D array."""
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    return isinstance(data, np.ndarray) and len(data.shape) == 1
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def _is_numpy_column_array(data: Any) -> bool:
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    """Check whether data is a column numpy array."""
    if not isinstance(data, np.ndarray):
        return False
    shape = data.shape
    return len(shape) == 2 and shape[1] == 1


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def _cast_numpy_array_to_dtype(array: np.ndarray, dtype: "np.typing.DTypeLike") -> np.ndarray:
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    """Cast numpy array to given dtype."""
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    if array.dtype == dtype:
        return array
    return array.astype(dtype=dtype, copy=False)


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def _is_1d_list(data: Any) -> bool:
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    """Check whether data is a 1-D list."""
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    return isinstance(data, list) and (not data or _is_numeric(data[0]))
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def _is_list_of_numpy_arrays(data: Any) -> "TypeGuard[List[np.ndarray]]":
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    return isinstance(data, list) and all(isinstance(x, np.ndarray) for x in data)
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def _is_list_of_sequences(data: Any) -> "TypeGuard[List[Sequence]]":
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    return isinstance(data, list) and all(isinstance(x, Sequence) for x in data)
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def _is_1d_collection(data: Any) -> bool:
    """Check whether data is a 1-D collection."""
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    return _is_numpy_1d_array(data) or _is_numpy_column_array(data) or _is_1d_list(data) or isinstance(data, pd_Series)
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def _list_to_1d_numpy(
    data: Any,
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    dtype: "np.typing.DTypeLike",
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    name: str,
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) -> np.ndarray:
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    """Convert data to numpy 1-D array."""
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    if _is_numpy_1d_array(data):
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        return _cast_numpy_array_to_dtype(data, dtype)
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    elif _is_numpy_column_array(data):
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        _log_warning("Converting column-vector to 1d array")
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        array = data.ravel()
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        return _cast_numpy_array_to_dtype(array, dtype)
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    elif _is_1d_list(data):
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        return np.asarray(data, dtype=dtype)
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    elif isinstance(data, pd_Series):
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        _check_for_bad_pandas_dtypes(data.to_frame().dtypes)
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        return np.asarray(data, dtype=dtype)  # SparseArray should be supported as well
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    else:
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        raise TypeError(
            f"Wrong type({type(data).__name__}) for {name}.\n" "It should be list, numpy 1-D array or pandas Series"
        )
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def _is_numpy_2d_array(data: Any) -> bool:
    """Check whether data is a numpy 2-D array."""
    return isinstance(data, np.ndarray) and len(data.shape) == 2 and data.shape[1] > 1


def _is_2d_list(data: Any) -> bool:
    """Check whether data is a 2-D list."""
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    return isinstance(data, list) and len(data) > 0 and _is_1d_list(data[0])
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def _is_2d_collection(data: Any) -> bool:
    """Check whether data is a 2-D collection."""
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    return _is_numpy_2d_array(data) or _is_2d_list(data) or isinstance(data, pd_DataFrame)
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def _is_pyarrow_array(data: Any) -> "TypeGuard[Union[pa_Array, pa_ChunkedArray]]":
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    """Check whether data is a PyArrow array."""
    return isinstance(data, (pa_Array, pa_ChunkedArray))


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def _is_pyarrow_table(data: Any) -> bool:
    """Check whether data is a PyArrow table."""
    return isinstance(data, pa_Table)


class _ArrowCArray:
    """Simple wrapper around the C representation of an Arrow type."""

    n_chunks: int
    chunks: arrow_cffi.CData
    schema: arrow_cffi.CData

    def __init__(self, n_chunks: int, chunks: arrow_cffi.CData, schema: arrow_cffi.CData):
        self.n_chunks = n_chunks
        self.chunks = chunks
        self.schema = schema

    @property
    def chunks_ptr(self) -> int:
        """Returns the address of the pointer to the list of chunks making up the array."""
        return int(arrow_cffi.cast("uintptr_t", arrow_cffi.addressof(self.chunks[0])))

    @property
    def schema_ptr(self) -> int:
        """Returns the address of the pointer to the schema of the array."""
        return int(arrow_cffi.cast("uintptr_t", self.schema))


def _export_arrow_to_c(data: pa_Table) -> _ArrowCArray:
    """Export an Arrow type to its C representation."""
    # Obtain objects to export
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    if isinstance(data, pa_Array):
        export_objects = [data]
    elif isinstance(data, pa_ChunkedArray):
        export_objects = data.chunks
    elif isinstance(data, pa_Table):
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        export_objects = data.to_batches()
    else:
        raise ValueError(f"data of type '{type(data)}' cannot be exported to Arrow")

    # Prepare export
    chunks = arrow_cffi.new("struct ArrowArray[]", len(export_objects))
    schema = arrow_cffi.new("struct ArrowSchema*")

    # Export all objects
    for i, obj in enumerate(export_objects):
        chunk_ptr = int(arrow_cffi.cast("uintptr_t", arrow_cffi.addressof(chunks[i])))
        if i == 0:
            schema_ptr = int(arrow_cffi.cast("uintptr_t", schema))
            obj._export_to_c(chunk_ptr, schema_ptr)
        else:
            obj._export_to_c(chunk_ptr)

    return _ArrowCArray(len(chunks), chunks, schema)


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def _data_to_2d_numpy(
    data: Any,
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    dtype: "np.typing.DTypeLike",
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    name: str,
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) -> np.ndarray:
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    """Convert data to numpy 2-D array."""
    if _is_numpy_2d_array(data):
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        return _cast_numpy_array_to_dtype(data, dtype)
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    if _is_2d_list(data):
        return np.array(data, dtype=dtype)
    if isinstance(data, pd_DataFrame):
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        _check_for_bad_pandas_dtypes(data.dtypes)
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        return _cast_numpy_array_to_dtype(data.values, dtype)
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    raise TypeError(
        f"Wrong type({type(data).__name__}) for {name}.\n"
        "It should be list of lists, numpy 2-D array or pandas DataFrame"
    )
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def _cfloat32_array_to_numpy(*, cptr: "ctypes._Pointer", length: int) -> np.ndarray:
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    """Convert a ctypes float pointer array to a numpy array."""
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    if isinstance(cptr, ctypes.POINTER(ctypes.c_float)):
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        return np.ctypeslib.as_array(cptr, shape=(length,)).copy()
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    else:
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        raise RuntimeError("Expected float pointer")
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def _cfloat64_array_to_numpy(*, cptr: "ctypes._Pointer", length: int) -> np.ndarray:
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    """Convert a ctypes double pointer array to a numpy array."""
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    if isinstance(cptr, ctypes.POINTER(ctypes.c_double)):
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        return np.ctypeslib.as_array(cptr, shape=(length,)).copy()
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    else:
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        raise RuntimeError("Expected double pointer")
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def _cint32_array_to_numpy(*, cptr: "ctypes._Pointer", length: int) -> np.ndarray:
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    """Convert a ctypes int pointer array to a numpy array."""
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    if isinstance(cptr, ctypes.POINTER(ctypes.c_int32)):
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        return np.ctypeslib.as_array(cptr, shape=(length,)).copy()
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    else:
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        raise RuntimeError("Expected int32 pointer")
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def _cint64_array_to_numpy(*, cptr: "ctypes._Pointer", length: int) -> np.ndarray:
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    """Convert a ctypes int pointer array to a numpy array."""
    if isinstance(cptr, ctypes.POINTER(ctypes.c_int64)):
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        return np.ctypeslib.as_array(cptr, shape=(length,)).copy()
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    else:
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        raise RuntimeError("Expected int64 pointer")
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def _c_str(string: str) -> ctypes.c_char_p:
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    """Convert a Python string to C string."""
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    return ctypes.c_char_p(string.encode("utf-8"))
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def _c_array(ctype: type, values: List[Any]) -> ctypes.Array:
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    """Convert a Python array to C array."""
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    return (ctype * len(values))(*values)  # type: ignore[operator]
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def _json_default_with_numpy(obj: Any) -> Any:
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    """Convert numpy classes to JSON serializable objects."""
    if isinstance(obj, (np.integer, np.floating, np.bool_)):
        return obj.item()
    elif isinstance(obj, np.ndarray):
        return obj.tolist()
    else:
        return obj


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def _to_string(x: Union[int, float, str, List]) -> str:
    if isinstance(x, list):
        val_list = ",".join(str(val) for val in x)
        return f"[{val_list}]"
    else:
        return str(x)


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def _param_dict_to_str(data: Optional[Dict[str, Any]]) -> str:
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    """Convert Python dictionary to string, which is passed to C API."""
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    if data is None or not data:
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        return ""
    pairs = []
    for key, val in data.items():
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        if isinstance(val, (list, tuple, set)) or _is_numpy_1d_array(val):
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            pairs.append(f"{key}={','.join(map(_to_string, val))}")
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        elif isinstance(val, (str, Path, _NUMERIC_TYPES)) or _is_numeric(val):
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            pairs.append(f"{key}={val}")
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        elif val is not None:
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            raise TypeError(f"Unknown type of parameter:{key}, got:{type(val).__name__}")
    return " ".join(pairs)
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class _TempFile:
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    """Proxy class to workaround errors on Windows."""

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    def __enter__(self) -> "_TempFile":
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        with NamedTemporaryFile(prefix="lightgbm_tmp_", delete=True) as f:
            self.name = f.name
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            self.path = Path(self.name)
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        return self
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    def __exit__(self, exc_type: Any, exc_val: Any, exc_tb: Any) -> None:
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        if self.path.is_file():
            self.path.unlink()
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# DeprecationWarning is not shown by default, so let's create our own with higher level
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# ref: https://peps.python.org/pep-0565/#additional-use-case-for-futurewarning
class LGBMDeprecationWarning(FutureWarning):
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    """Custom deprecation warning."""

    pass


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def _emit_datatable_deprecation_warning() -> None:
    msg = (
        "Support for 'datatable' in LightGBM is deprecated, and will be removed in a future release. "
        "To avoid this warning, convert 'datatable' inputs to a supported format "
        "(for example, use the 'to_numpy()' method)."
    )
    warnings.warn(msg, category=LGBMDeprecationWarning, stacklevel=2)


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class _ConfigAliases:
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    # lazy evaluation to allow import without dynamic library, e.g., for docs generation
    aliases = None

    @staticmethod
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    def _get_all_param_aliases() -> Dict[str, List[str]]:
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        buffer_len = 1 << 20
        tmp_out_len = ctypes.c_int64(0)
        string_buffer = ctypes.create_string_buffer(buffer_len)
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        ptr_string_buffer = ctypes.c_char_p(ctypes.addressof(string_buffer))
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        _safe_call(
            _LIB.LGBM_DumpParamAliases(
                ctypes.c_int64(buffer_len),
                ctypes.byref(tmp_out_len),
                ptr_string_buffer,
            )
        )
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        actual_len = tmp_out_len.value
        # if buffer length is not long enough, re-allocate a buffer
        if actual_len > buffer_len:
            string_buffer = ctypes.create_string_buffer(actual_len)
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            ptr_string_buffer = ctypes.c_char_p(ctypes.addressof(string_buffer))
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            _safe_call(
                _LIB.LGBM_DumpParamAliases(
                    ctypes.c_int64(actual_len),
                    ctypes.byref(tmp_out_len),
                    ptr_string_buffer,
                )
            )
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        return json.loads(
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            string_buffer.value.decode("utf-8"), object_hook=lambda obj: {k: [k] + v for k, v in obj.items()}
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        )
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    @classmethod
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    def get(cls, *args: str) -> Set[str]:
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        if cls.aliases is None:
            cls.aliases = cls._get_all_param_aliases()
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        ret = set()
        for i in args:
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            ret.update(cls.get_sorted(i))
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        return ret

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    @classmethod
    def get_sorted(cls, name: str) -> List[str]:
        if cls.aliases is None:
            cls.aliases = cls._get_all_param_aliases()
        return cls.aliases.get(name, [name])

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    @classmethod
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    def get_by_alias(cls, *args: str) -> Set[str]:
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        if cls.aliases is None:
            cls.aliases = cls._get_all_param_aliases()
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        ret = set(args)
        for arg in args:
            for aliases in cls.aliases.values():
                if arg in aliases:
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                    ret.update(aliases)
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                    break
        return ret

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def _choose_param_value(main_param_name: str, params: Dict[str, Any], default_value: Any) -> Dict[str, Any]:
    """Get a single parameter value, accounting for aliases.

    Parameters
    ----------
    main_param_name : str
        Name of the main parameter to get a value for. One of the keys of ``_ConfigAliases``.
    params : dict
        Dictionary of LightGBM parameters.
    default_value : Any
        Default value to use for the parameter, if none is found in ``params``.

    Returns
    -------
    params : dict
        A ``params`` dict with exactly one value for ``main_param_name``, and all aliases ``main_param_name`` removed.
        If both ``main_param_name`` and one or more aliases for it are found, the value of ``main_param_name`` will be preferred.
    """
    # avoid side effects on passed-in parameters
    params = deepcopy(params)

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    aliases = _ConfigAliases.get_sorted(main_param_name)
    aliases = [a for a in aliases if a != main_param_name]
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    # if main_param_name was provided, keep that value and remove all aliases
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    if main_param_name in params.keys():
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        for param in aliases:
            params.pop(param, None)
        return params
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    # if main param name was not found, search for an alias
    for param in aliases:
        if param in params.keys():
            params[main_param_name] = params[param]
            break
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    if main_param_name in params.keys():
        for param in aliases:
            params.pop(param, None)
        return params

    # neither of main_param_name, aliases were found
    params[main_param_name] = default_value
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    return params


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_MAX_INT32 = (1 << 31) - 1
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"""Macro definition of data type in C API of LightGBM"""
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_C_API_DTYPE_FLOAT32 = 0
_C_API_DTYPE_FLOAT64 = 1
_C_API_DTYPE_INT32 = 2
_C_API_DTYPE_INT64 = 3
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"""Matrix is row major in Python"""
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_C_API_IS_ROW_MAJOR = 1
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"""Macro definition of prediction type in C API of LightGBM"""
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_C_API_PREDICT_NORMAL = 0
_C_API_PREDICT_RAW_SCORE = 1
_C_API_PREDICT_LEAF_INDEX = 2
_C_API_PREDICT_CONTRIB = 3
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"""Macro definition of sparse matrix type"""
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_C_API_MATRIX_TYPE_CSR = 0
_C_API_MATRIX_TYPE_CSC = 1
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"""Macro definition of feature importance type"""
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_C_API_FEATURE_IMPORTANCE_SPLIT = 0
_C_API_FEATURE_IMPORTANCE_GAIN = 1
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"""Data type of data field"""
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_FIELD_TYPE_MAPPER = {
    "label": _C_API_DTYPE_FLOAT32,
    "weight": _C_API_DTYPE_FLOAT32,
    "init_score": _C_API_DTYPE_FLOAT64,
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    "group": _C_API_DTYPE_INT32,
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    "position": _C_API_DTYPE_INT32,
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}
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"""String name to int feature importance type mapper"""
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_FEATURE_IMPORTANCE_TYPE_MAPPER = {
    "split": _C_API_FEATURE_IMPORTANCE_SPLIT,
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    "gain": _C_API_FEATURE_IMPORTANCE_GAIN,
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}
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def _convert_from_sliced_object(data: np.ndarray) -> np.ndarray:
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    """Fix the memory of multi-dimensional sliced object."""
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    if isinstance(data, np.ndarray) and isinstance(data.base, np.ndarray):
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        if not data.flags.c_contiguous:
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            _log_warning(
                "Usage of np.ndarray subset (sliced data) is not recommended "
                "due to it will double the peak memory cost in LightGBM."
            )
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            return np.copy(data)
    return data


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def _c_float_array(data: np.ndarray) -> Tuple[_ctypes_float_ptr, int, np.ndarray]:
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    """Get pointer of float numpy array / list."""
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    if _is_1d_list(data):
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        data = np.asarray(data)
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    if _is_numpy_1d_array(data):
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        data = _convert_from_sliced_object(data)
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        assert data.flags.c_contiguous
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        ptr_data: _ctypes_float_ptr
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        if data.dtype == np.float32:
            ptr_data = data.ctypes.data_as(ctypes.POINTER(ctypes.c_float))
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            type_data = _C_API_DTYPE_FLOAT32
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        elif data.dtype == np.float64:
            ptr_data = data.ctypes.data_as(ctypes.POINTER(ctypes.c_double))
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            type_data = _C_API_DTYPE_FLOAT64
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        else:
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            raise TypeError(f"Expected np.float32 or np.float64, met type({data.dtype})")
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    else:
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        raise TypeError(f"Unknown type({type(data).__name__})")
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    return (ptr_data, type_data, data)  # return `data` to avoid the temporary copy is freed
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def _c_int_array(data: np.ndarray) -> Tuple[_ctypes_int_ptr, int, np.ndarray]:
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    """Get pointer of int numpy array / list."""
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    if _is_1d_list(data):
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        data = np.asarray(data)
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    if _is_numpy_1d_array(data):
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        data = _convert_from_sliced_object(data)
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        assert data.flags.c_contiguous
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        ptr_data: _ctypes_int_ptr
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        if data.dtype == np.int32:
            ptr_data = data.ctypes.data_as(ctypes.POINTER(ctypes.c_int32))
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            type_data = _C_API_DTYPE_INT32
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        elif data.dtype == np.int64:
            ptr_data = data.ctypes.data_as(ctypes.POINTER(ctypes.c_int64))
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            type_data = _C_API_DTYPE_INT64
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        else:
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            raise TypeError(f"Expected np.int32 or np.int64, met type({data.dtype})")
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    else:
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        raise TypeError(f"Unknown type({type(data).__name__})")
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    return (ptr_data, type_data, data)  # return `data` to avoid the temporary copy is freed
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def _is_allowed_numpy_dtype(dtype: type) -> bool:
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    float128 = getattr(np, "float128", type(None))
    return issubclass(dtype, (np.integer, np.floating, np.bool_)) and not issubclass(dtype, (np.timedelta64, float128))
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def _check_for_bad_pandas_dtypes(pandas_dtypes_series: pd_Series) -> None:
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    bad_pandas_dtypes = [
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        f"{column_name}: {pandas_dtype}"
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        for column_name, pandas_dtype in pandas_dtypes_series.items()
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        if not _is_allowed_numpy_dtype(pandas_dtype.type)
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    ]
    if bad_pandas_dtypes:
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        raise ValueError(
            'pandas dtypes must be int, float or bool.\n'
            f'Fields with bad pandas dtypes: {", ".join(bad_pandas_dtypes)}'
        )
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def _pandas_to_numpy(
    data: pd_DataFrame,
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    target_dtype: "np.typing.DTypeLike",
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) -> np.ndarray:
    _check_for_bad_pandas_dtypes(data.dtypes)
    try:
        # most common case (no nullable dtypes)
        return data.to_numpy(dtype=target_dtype, copy=False)
    except TypeError:
        # 1.0 <= pd version < 1.1 and nullable dtypes, least common case
        # raises error because array is casted to type(pd.NA) and there's no na_value argument
        return data.astype(target_dtype, copy=False).values
    except ValueError:
        # data has nullable dtypes, but we can specify na_value argument and copy will be made
        return data.to_numpy(dtype=target_dtype, na_value=np.nan)


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def _data_from_pandas(
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    data: pd_DataFrame,
    feature_name: _LGBM_FeatureNameConfiguration,
    categorical_feature: _LGBM_CategoricalFeatureConfiguration,
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    pandas_categorical: Optional[List[List]],
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) -> Tuple[np.ndarray, List[str], Union[List[str], List[int]], List[List]]:
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    if len(data.shape) != 2 or data.shape[0] < 1:
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        raise ValueError("Input data must be 2 dimensional and non empty.")
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    # take shallow copy in case we modify categorical columns
    # whole column modifications don't change the original df
    data = data.copy(deep=False)

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    # determine feature names
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    if feature_name == "auto":
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        feature_name = [str(col) for col in data.columns]

    # determine categorical features
    cat_cols = [col for col, dtype in zip(data.columns, data.dtypes) if isinstance(dtype, pd_CategoricalDtype)]
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    cat_cols_not_ordered: List[str] = [col for col in cat_cols if not data[col].cat.ordered]
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    if pandas_categorical is None:  # train dataset
        pandas_categorical = [list(data[col].cat.categories) for col in cat_cols]
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    else:
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        if len(cat_cols) != len(pandas_categorical):
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            raise ValueError("train and valid dataset categorical_feature do not match.")
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        for col, category in zip(cat_cols, pandas_categorical):
            if list(data[col].cat.categories) != list(category):
                data[col] = data[col].cat.set_categories(category)
    if len(cat_cols):  # cat_cols is list
        data[cat_cols] = data[cat_cols].apply(lambda x: x.cat.codes).replace({-1: np.nan})
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    # use cat cols from DataFrame
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    if categorical_feature == "auto":
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        categorical_feature = cat_cols_not_ordered

    df_dtypes = [dtype.type for dtype in data.dtypes]
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    # so that the target dtype considers floats
    df_dtypes.append(np.float32)
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    target_dtype = np.result_type(*df_dtypes)
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    return (
        _pandas_to_numpy(data, target_dtype=target_dtype),
        feature_name,
        categorical_feature,
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        pandas_categorical,
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    )
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def _dump_pandas_categorical(
    pandas_categorical: Optional[List[List]],
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    file_name: Optional[Union[str, Path]] = None,
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) -> str:
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    categorical_json = json.dumps(pandas_categorical, default=_json_default_with_numpy)
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    pandas_str = f"\npandas_categorical:{categorical_json}\n"
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    if file_name is not None:
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        with open(file_name, "a") as f:
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            f.write(pandas_str)
    return pandas_str


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def _load_pandas_categorical(
    file_name: Optional[Union[str, Path]] = None,
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    model_str: Optional[str] = None,
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) -> Optional[List[List]]:
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    pandas_key = "pandas_categorical:"
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    offset = -len(pandas_key)
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    if file_name is not None:
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        max_offset = -getsize(file_name)
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        with open(file_name, "rb") as f:
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            while True:
                if offset < max_offset:
                    offset = max_offset
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                f.seek(offset, SEEK_END)
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                lines = f.readlines()
                if len(lines) >= 2:
                    break
                offset *= 2
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        last_line = lines[-1].decode("utf-8").strip()
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        if not last_line.startswith(pandas_key):
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            last_line = lines[-2].decode("utf-8").strip()
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    elif model_str is not None:
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        idx = model_str.rfind("\n", 0, offset)
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        last_line = model_str[idx:].strip()
    if last_line.startswith(pandas_key):
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        return json.loads(last_line[len(pandas_key) :])
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    else:
        return None
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class Sequence(abc.ABC):
    """
    Generic data access interface.

    Object should support the following operations:

    .. code-block::

        # Get total row number.
        >>> len(seq)
        # Random access by row index. Used for data sampling.
        >>> seq[10]
        # Range data access. Used to read data in batch when constructing Dataset.
        >>> seq[0:100]
        # Optionally specify batch_size to control range data read size.
        >>> seq.batch_size

    - With random access, **data sampling does not need to go through all data**.
    - With range data access, there's **no need to read all data into memory thus reduce memory usage**.

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    .. versionadded:: 3.3.0

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    Attributes
    ----------
    batch_size : int
        Default size of a batch.
    """

    batch_size = 4096  # Defaults to read 4K rows in each batch.

    @abc.abstractmethod
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    def __getitem__(self, idx: Union[int, slice, List[int]]) -> np.ndarray:
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        """Return data for given row index.

        A basic implementation should look like this:

        .. code-block:: python

            if isinstance(idx, numbers.Integral):
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                return self._get_one_line(idx)
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            elif isinstance(idx, slice):
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                return np.stack([self._get_one_line(i) for i in range(idx.start, idx.stop)])
            elif isinstance(idx, list):
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                # Only required if using ``Dataset.subset()``.
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                return np.array([self._get_one_line(i) for i in idx])
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            else:
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                raise TypeError(f"Sequence index must be integer, slice or list, got {type(idx).__name__}")
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        Parameters
        ----------
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        idx : int, slice[int], list[int]
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            Item index.

        Returns
        -------
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        result : numpy 1-D array or numpy 2-D array
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            1-D array if idx is int, 2-D array if idx is slice or list.
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        """
        raise NotImplementedError("Sub-classes of lightgbm.Sequence must implement __getitem__()")

    @abc.abstractmethod
    def __len__(self) -> int:
        """Return row count of this sequence."""
        raise NotImplementedError("Sub-classes of lightgbm.Sequence must implement __len__()")


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class _InnerPredictor:
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    """_InnerPredictor of LightGBM.

    Not exposed to user.
    Used only for prediction, usually used for continued training.

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    .. note::

        Can be converted from Booster, but cannot be converted to Booster.
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    """
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    def __init__(
        self,
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        booster_handle: _BoosterHandle,
        pandas_categorical: Optional[List[List]],
        pred_parameter: Dict[str, Any],
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        manage_handle: bool,
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    ):
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        """Initialize the _InnerPredictor.
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        Parameters
        ----------
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        booster_handle : object
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            Handle of Booster.
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        pandas_categorical : list of list, or None
            If provided, list of categories for ``pandas`` categorical columns.
            Where the ``i``th element of the list contains the categories for the ``i``th categorical feature.
        pred_parameter : dict
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            Other parameters for the prediction.
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        manage_handle : bool
            If ``True``, free the corresponding Booster on the C++ side when this Python object is deleted.
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        """
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        self._handle = booster_handle
        self.__is_manage_handle = manage_handle
        self.pandas_categorical = pandas_categorical
        self.pred_parameter = _param_dict_to_str(pred_parameter)

        out_num_class = ctypes.c_int(0)
        _safe_call(
            _LIB.LGBM_BoosterGetNumClasses(
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                self._handle,
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                ctypes.byref(out_num_class),
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            )
        )
        self.num_class = out_num_class.value
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    @classmethod
    def from_booster(
        cls,
        booster: "Booster",
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        pred_parameter: Dict[str, Any],
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    ) -> "_InnerPredictor":
        """Initialize an ``_InnerPredictor`` from a ``Booster``.

        Parameters
        ----------
        booster : Booster
            Booster.
        pred_parameter : dict
            Other parameters for the prediction.
        """
        out_cur_iter = ctypes.c_int(0)
        _safe_call(
            _LIB.LGBM_BoosterGetCurrentIteration(
                booster._handle,
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                ctypes.byref(out_cur_iter),
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            )
        )
        return cls(
            booster_handle=booster._handle,
            pandas_categorical=booster.pandas_categorical,
            pred_parameter=pred_parameter,
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            manage_handle=False,
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        )

    @classmethod
    def from_model_file(
        cls,
        model_file: Union[str, Path],
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        pred_parameter: Dict[str, Any],
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    ) -> "_InnerPredictor":
        """Initialize an ``_InnerPredictor`` from a text file containing a LightGBM model.

        Parameters
        ----------
        model_file : str or pathlib.Path
            Path to the model file.
        pred_parameter : dict
            Other parameters for the prediction.
        """
        booster_handle = ctypes.c_void_p()
        out_num_iterations = ctypes.c_int(0)
        _safe_call(
            _LIB.LGBM_BoosterCreateFromModelfile(
                _c_str(str(model_file)),
                ctypes.byref(out_num_iterations),
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                ctypes.byref(booster_handle),
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            )
        )
        return cls(
            booster_handle=booster_handle,
            pandas_categorical=_load_pandas_categorical(file_name=model_file),
            pred_parameter=pred_parameter,
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            manage_handle=True,
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        )
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    def __del__(self) -> None:
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        try:
            if self.__is_manage_handle:
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                _safe_call(_LIB.LGBM_BoosterFree(self._handle))
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        except AttributeError:
            pass
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    def __getstate__(self) -> Dict[str, Any]:
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        this = self.__dict__.copy()
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        this.pop("handle", None)
        this.pop("_handle", None)
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        return this

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    def predict(
        self,
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        data: _LGBM_PredictDataType,
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        start_iteration: int = 0,
        num_iteration: int = -1,
        raw_score: bool = False,
        pred_leaf: bool = False,
        pred_contrib: bool = False,
        data_has_header: bool = False,
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        validate_features: bool = False,
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    ) -> Union[np.ndarray, scipy.sparse.spmatrix, List[scipy.sparse.spmatrix]]:
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        """Predict logic.
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        Parameters
        ----------
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        data : str, pathlib.Path, numpy array, pandas DataFrame, pyarrow Table, H2O DataTable's Frame (deprecated) or scipy.sparse
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            Data source for prediction.
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            If str or pathlib.Path, it represents the path to a text file (CSV, TSV, or LibSVM).
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        start_iteration : int, optional (default=0)
            Start index of the iteration to predict.
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        num_iteration : int, optional (default=-1)
            Iteration used for prediction.
        raw_score : bool, optional (default=False)
            Whether to predict raw scores.
        pred_leaf : bool, optional (default=False)
            Whether to predict leaf index.
        pred_contrib : bool, optional (default=False)
            Whether to predict feature contributions.
        data_has_header : bool, optional (default=False)
            Whether data has header.
            Used only for txt data.
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        validate_features : bool, optional (default=False)
            If True, ensure that the features used to predict match the ones used to train.
            Used only if data is pandas DataFrame.
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            .. versionadded:: 4.0.0

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        Returns
        -------
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        result : numpy array, scipy.sparse or list of scipy.sparse
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            Prediction result.
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            Can be sparse or a list of sparse objects (each element represents predictions for one class) for feature contributions (when ``pred_contrib=True``).
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        """
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        if isinstance(data, Dataset):
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            raise TypeError("Cannot use Dataset instance for prediction, please use raw data instead")
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        elif isinstance(data, pd_DataFrame) and validate_features:
            data_names = [str(x) for x in data.columns]
            ptr_names = (ctypes.c_char_p * len(data_names))()
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            ptr_names[:] = [x.encode("utf-8") for x in data_names]
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            _safe_call(
                _LIB.LGBM_BoosterValidateFeatureNames(
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                    self._handle,
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                    ptr_names,
                    ctypes.c_int(len(data_names)),
                )
            )
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        if isinstance(data, pd_DataFrame):
            data = _data_from_pandas(
                data=data,
                feature_name="auto",
                categorical_feature="auto",
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                pandas_categorical=self.pandas_categorical,
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            )[0]

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        predict_type = _C_API_PREDICT_NORMAL
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        if raw_score:
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            predict_type = _C_API_PREDICT_RAW_SCORE
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        if pred_leaf:
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            predict_type = _C_API_PREDICT_LEAF_INDEX
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        if pred_contrib:
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            predict_type = _C_API_PREDICT_CONTRIB
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        if isinstance(data, (str, Path)):
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            with _TempFile() as f:
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                _safe_call(
                    _LIB.LGBM_BoosterPredictForFile(
                        self._handle,
                        _c_str(str(data)),
                        ctypes.c_int(data_has_header),
                        ctypes.c_int(predict_type),
                        ctypes.c_int(start_iteration),
                        ctypes.c_int(num_iteration),
                        _c_str(self.pred_parameter),
                        _c_str(f.name),
                    )
                )
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                preds = np.loadtxt(f.name, dtype=np.float64)
                nrow = preds.shape[0]
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        elif isinstance(data, scipy.sparse.csr_matrix):
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            preds, nrow = self.__pred_for_csr(
                csr=data,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        elif isinstance(data, scipy.sparse.csc_matrix):
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            preds, nrow = self.__pred_for_csc(
                csc=data,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        elif isinstance(data, np.ndarray):
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            preds, nrow = self.__pred_for_np2d(
                mat=data,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        elif _is_pyarrow_table(data):
            preds, nrow = self.__pred_for_pyarrow_table(
                table=data,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        elif isinstance(data, list):
            try:
                data = np.array(data)
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            except BaseException as err:
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                raise ValueError("Cannot convert data list to numpy array.") from err
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            preds, nrow = self.__pred_for_np2d(
                mat=data,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        elif isinstance(data, dt_DataTable):
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            _emit_datatable_deprecation_warning()
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            preds, nrow = self.__pred_for_np2d(
                mat=data.to_numpy(),
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        else:
            try:
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                _log_warning("Converting data to scipy sparse matrix.")
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                csr = scipy.sparse.csr_matrix(data)
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            except BaseException as err:
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                raise TypeError(f"Cannot predict data for type {type(data).__name__}") from err
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            preds, nrow = self.__pred_for_csr(
                csr=csr,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        if pred_leaf:
            preds = preds.astype(np.int32)
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        is_sparse = isinstance(preds, (list, scipy.sparse.spmatrix))
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        if not is_sparse and preds.size != nrow:
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            if preds.size % nrow == 0:
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                preds = preds.reshape(nrow, -1)
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            else:
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                raise ValueError(f"Length of predict result ({preds.size}) cannot be divide nrow ({nrow})")
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        return preds

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    def __get_num_preds(
        self,
        start_iteration: int,
        num_iteration: int,
        nrow: int,
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        predict_type: int,
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    ) -> int:
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        """Get size of prediction result."""
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        if nrow > _MAX_INT32:
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            raise LightGBMError(
                "LightGBM cannot perform prediction for data "
                f"with number of rows greater than MAX_INT32 ({_MAX_INT32}).\n"
                "You can split your data into chunks "
                "and then concatenate predictions for them"
            )
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        n_preds = ctypes.c_int64(0)
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        _safe_call(
            _LIB.LGBM_BoosterCalcNumPredict(
                self._handle,
                ctypes.c_int(nrow),
                ctypes.c_int(predict_type),
                ctypes.c_int(start_iteration),
                ctypes.c_int(num_iteration),
                ctypes.byref(n_preds),
            )
        )
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        return n_preds.value
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    def __inner_predict_np2d(
        self,
        mat: np.ndarray,
        start_iteration: int,
        num_iteration: int,
        predict_type: int,
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        preds: Optional[np.ndarray],
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    ) -> Tuple[np.ndarray, int]:
        if mat.dtype == np.float32 or mat.dtype == np.float64:
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            data = np.asarray(mat.reshape(mat.size), dtype=mat.dtype)
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        else:  # change non-float data to float data, need to copy
            data = np.array(mat.reshape(mat.size), dtype=np.float32)
        ptr_data, type_ptr_data, _ = _c_float_array(data)
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        n_preds = self.__get_num_preds(
            start_iteration=start_iteration,
            num_iteration=num_iteration,
            nrow=mat.shape[0],
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            predict_type=predict_type,
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        )
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        if preds is None:
            preds = np.empty(n_preds, dtype=np.float64)
        elif len(preds.shape) != 1 or len(preds) != n_preds:
            raise ValueError("Wrong length of pre-allocated predict array")
        out_num_preds = ctypes.c_int64(0)
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        _safe_call(
            _LIB.LGBM_BoosterPredictForMat(
                self._handle,
                ptr_data,
                ctypes.c_int(type_ptr_data),
                ctypes.c_int32(mat.shape[0]),
                ctypes.c_int32(mat.shape[1]),
                ctypes.c_int(_C_API_IS_ROW_MAJOR),
                ctypes.c_int(predict_type),
                ctypes.c_int(start_iteration),
                ctypes.c_int(num_iteration),
                _c_str(self.pred_parameter),
                ctypes.byref(out_num_preds),
                preds.ctypes.data_as(ctypes.POINTER(ctypes.c_double)),
            )
        )
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        if n_preds != out_num_preds.value:
            raise ValueError("Wrong length for predict results")
        return preds, mat.shape[0]

    def __pred_for_np2d(
        self,
        mat: np.ndarray,
        start_iteration: int,
        num_iteration: int,
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        predict_type: int,
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    ) -> Tuple[np.ndarray, int]:
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        """Predict for a 2-D numpy matrix."""
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        if len(mat.shape) != 2:
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            raise ValueError("Input numpy.ndarray or list must be 2 dimensional")
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        nrow = mat.shape[0]
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        if nrow > _MAX_INT32:
            sections = np.arange(start=_MAX_INT32, stop=nrow, step=_MAX_INT32)
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            # __get_num_preds() cannot work with nrow > MAX_INT32, so calculate overall number of predictions piecemeal
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            n_preds = [
                self.__get_num_preds(start_iteration, num_iteration, i, predict_type)
                for i in np.diff([0] + list(sections) + [nrow])
            ]
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            n_preds_sections = np.array([0] + n_preds, dtype=np.intp).cumsum()
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            preds = np.empty(sum(n_preds), dtype=np.float64)
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            for chunk, (start_idx_pred, end_idx_pred) in zip(
                np.array_split(mat, sections), zip(n_preds_sections, n_preds_sections[1:])
            ):
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                # avoid memory consumption by arrays concatenation operations
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                self.__inner_predict_np2d(
                    mat=chunk,
                    start_iteration=start_iteration,
                    num_iteration=num_iteration,
                    predict_type=predict_type,
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                    preds=preds[start_idx_pred:end_idx_pred],
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                )
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            return preds, nrow
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        else:
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            return self.__inner_predict_np2d(
                mat=mat,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
                predict_type=predict_type,
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                preds=None,
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            )
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    def __create_sparse_native(
        self,
        cs: Union[scipy.sparse.csc_matrix, scipy.sparse.csr_matrix],
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        out_shape: np.ndarray,
        out_ptr_indptr: "ctypes._Pointer",
        out_ptr_indices: "ctypes._Pointer",
        out_ptr_data: "ctypes._Pointer",
        indptr_type: int,
        data_type: int,
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        is_csr: bool,
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    ) -> Union[List[scipy.sparse.csc_matrix], List[scipy.sparse.csr_matrix]]:
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        # create numpy array from output arrays
        data_indices_len = out_shape[0]
        indptr_len = out_shape[1]
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        if indptr_type == _C_API_DTYPE_INT32:
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            out_indptr = _cint32_array_to_numpy(cptr=out_ptr_indptr, length=indptr_len)
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        elif indptr_type == _C_API_DTYPE_INT64:
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            out_indptr = _cint64_array_to_numpy(cptr=out_ptr_indptr, length=indptr_len)
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        else:
            raise TypeError("Expected int32 or int64 type for indptr")
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        if data_type == _C_API_DTYPE_FLOAT32:
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            out_data = _cfloat32_array_to_numpy(cptr=out_ptr_data, length=data_indices_len)
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        elif data_type == _C_API_DTYPE_FLOAT64:
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            out_data = _cfloat64_array_to_numpy(cptr=out_ptr_data, length=data_indices_len)
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        else:
            raise TypeError("Expected float32 or float64 type for data")
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        out_indices = _cint32_array_to_numpy(cptr=out_ptr_indices, length=data_indices_len)
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        # break up indptr based on number of rows (note more than one matrix in multiclass case)
        per_class_indptr_shape = cs.indptr.shape[0]
        # for CSC there is extra column added
        if not is_csr:
            per_class_indptr_shape += 1
        out_indptr_arrays = np.split(out_indptr, out_indptr.shape[0] / per_class_indptr_shape)
        # reformat output into a csr or csc matrix or list of csr or csc matrices
        cs_output_matrices = []
        offset = 0
        for cs_indptr in out_indptr_arrays:
            matrix_indptr_len = cs_indptr[cs_indptr.shape[0] - 1]
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            cs_indices = out_indices[offset + cs_indptr[0] : offset + matrix_indptr_len]
            cs_data = out_data[offset + cs_indptr[0] : offset + matrix_indptr_len]
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            offset += matrix_indptr_len
            # same shape as input csr or csc matrix except extra column for expected value
            cs_shape = [cs.shape[0], cs.shape[1] + 1]
            # note: make sure we copy data as it will be deallocated next
            if is_csr:
                cs_output_matrices.append(scipy.sparse.csr_matrix((cs_data, cs_indices, cs_indptr), cs_shape))
            else:
                cs_output_matrices.append(scipy.sparse.csc_matrix((cs_data, cs_indices, cs_indptr), cs_shape))
        # free the temporary native indptr, indices, and data
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        _safe_call(
            _LIB.LGBM_BoosterFreePredictSparse(
                out_ptr_indptr,
                out_ptr_indices,
                out_ptr_data,
                ctypes.c_int(indptr_type),
                ctypes.c_int(data_type),
            )
        )
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        if len(cs_output_matrices) == 1:
            return cs_output_matrices[0]
        return cs_output_matrices

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    def __inner_predict_csr(
        self,
        csr: scipy.sparse.csr_matrix,
        start_iteration: int,
        num_iteration: int,
        predict_type: int,
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        preds: Optional[np.ndarray],
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    ) -> Tuple[np.ndarray, int]:
        nrow = len(csr.indptr) - 1
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        n_preds = self.__get_num_preds(
            start_iteration=start_iteration,
            num_iteration=num_iteration,
            nrow=nrow,
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            predict_type=predict_type,
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        )
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        if preds is None:
            preds = np.empty(n_preds, dtype=np.float64)
        elif len(preds.shape) != 1 or len(preds) != n_preds:
            raise ValueError("Wrong length of pre-allocated predict array")
        out_num_preds = ctypes.c_int64(0)
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        ptr_indptr, type_ptr_indptr, _ = _c_int_array(csr.indptr)
        ptr_data, type_ptr_data, _ = _c_float_array(csr.data)
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        assert csr.shape[1] <= _MAX_INT32
        csr_indices = csr.indices.astype(np.int32, copy=False)

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        _safe_call(
            _LIB.LGBM_BoosterPredictForCSR(
                self._handle,
                ptr_indptr,
                ctypes.c_int(type_ptr_indptr),
                csr_indices.ctypes.data_as(ctypes.POINTER(ctypes.c_int32)),
                ptr_data,
                ctypes.c_int(type_ptr_data),
                ctypes.c_int64(len(csr.indptr)),
                ctypes.c_int64(len(csr.data)),
                ctypes.c_int64(csr.shape[1]),
                ctypes.c_int(predict_type),
                ctypes.c_int(start_iteration),
                ctypes.c_int(num_iteration),
                _c_str(self.pred_parameter),
                ctypes.byref(out_num_preds),
                preds.ctypes.data_as(ctypes.POINTER(ctypes.c_double)),
            )
        )
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        if n_preds != out_num_preds.value:
            raise ValueError("Wrong length for predict results")
        return preds, nrow

    def __inner_predict_csr_sparse(
        self,
        csr: scipy.sparse.csr_matrix,
        start_iteration: int,
        num_iteration: int,
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        predict_type: int,
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    ) -> Tuple[Union[List[scipy.sparse.csc_matrix], List[scipy.sparse.csr_matrix]], int]:
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        ptr_indptr, type_ptr_indptr, __ = _c_int_array(csr.indptr)
        ptr_data, type_ptr_data, _ = _c_float_array(csr.data)
        csr_indices = csr.indices.astype(np.int32, copy=False)
        matrix_type = _C_API_MATRIX_TYPE_CSR
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        out_ptr_indptr: _ctypes_int_ptr
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        if type_ptr_indptr == _C_API_DTYPE_INT32:
            out_ptr_indptr = ctypes.POINTER(ctypes.c_int32)()
        else:
            out_ptr_indptr = ctypes.POINTER(ctypes.c_int64)()
        out_ptr_indices = ctypes.POINTER(ctypes.c_int32)()
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        out_ptr_data: _ctypes_float_ptr
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        if type_ptr_data == _C_API_DTYPE_FLOAT32:
            out_ptr_data = ctypes.POINTER(ctypes.c_float)()
        else:
            out_ptr_data = ctypes.POINTER(ctypes.c_double)()
        out_shape = np.empty(2, dtype=np.int64)
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        _safe_call(
            _LIB.LGBM_BoosterPredictSparseOutput(
                self._handle,
                ptr_indptr,
                ctypes.c_int(type_ptr_indptr),
                csr_indices.ctypes.data_as(ctypes.POINTER(ctypes.c_int32)),
                ptr_data,
                ctypes.c_int(type_ptr_data),
                ctypes.c_int64(len(csr.indptr)),
                ctypes.c_int64(len(csr.data)),
                ctypes.c_int64(csr.shape[1]),
                ctypes.c_int(predict_type),
                ctypes.c_int(start_iteration),
                ctypes.c_int(num_iteration),
                _c_str(self.pred_parameter),
                ctypes.c_int(matrix_type),
                out_shape.ctypes.data_as(ctypes.POINTER(ctypes.c_int64)),
                ctypes.byref(out_ptr_indptr),
                ctypes.byref(out_ptr_indices),
                ctypes.byref(out_ptr_data),
            )
        )
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        matrices = self.__create_sparse_native(
            cs=csr,
            out_shape=out_shape,
            out_ptr_indptr=out_ptr_indptr,
            out_ptr_indices=out_ptr_indices,
            out_ptr_data=out_ptr_data,
            indptr_type=type_ptr_indptr,
            data_type=type_ptr_data,
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            is_csr=True,
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        )
        nrow = len(csr.indptr) - 1
        return matrices, nrow

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    def __pred_for_csr(
        self,
        csr: scipy.sparse.csr_matrix,
        start_iteration: int,
        num_iteration: int,
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        predict_type: int,
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    ) -> Tuple[np.ndarray, int]:
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        """Predict for a CSR data."""
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        if predict_type == _C_API_PREDICT_CONTRIB:
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            return self.__inner_predict_csr_sparse(
                csr=csr,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        nrow = len(csr.indptr) - 1
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        if nrow > _MAX_INT32:
            sections = [0] + list(np.arange(start=_MAX_INT32, stop=nrow, step=_MAX_INT32)) + [nrow]
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            # __get_num_preds() cannot work with nrow > MAX_INT32, so calculate overall number of predictions piecemeal
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            n_preds = [self.__get_num_preds(start_iteration, num_iteration, i, predict_type) for i in np.diff(sections)]
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            n_preds_sections = np.array([0] + n_preds, dtype=np.intp).cumsum()
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            preds = np.empty(sum(n_preds), dtype=np.float64)
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            for (start_idx, end_idx), (start_idx_pred, end_idx_pred) in zip(
                zip(sections, sections[1:]), zip(n_preds_sections, n_preds_sections[1:])
            ):
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                # avoid memory consumption by arrays concatenation operations
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                self.__inner_predict_csr(
                    csr=csr[start_idx:end_idx],
                    start_iteration=start_iteration,
                    num_iteration=num_iteration,
                    predict_type=predict_type,
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                    preds=preds[start_idx_pred:end_idx_pred],
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                )
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            return preds, nrow
        else:
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            return self.__inner_predict_csr(
                csr=csr,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
                predict_type=predict_type,
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                preds=None,
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            )

    def __inner_predict_sparse_csc(
        self,
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        csc: scipy.sparse.csc_matrix,
        start_iteration: int,
        num_iteration: int,
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        predict_type: int,
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    ) -> Tuple[Union[List[scipy.sparse.csc_matrix], List[scipy.sparse.csr_matrix]], int]:
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        ptr_indptr, type_ptr_indptr, __ = _c_int_array(csc.indptr)
        ptr_data, type_ptr_data, _ = _c_float_array(csc.data)
        csc_indices = csc.indices.astype(np.int32, copy=False)
        matrix_type = _C_API_MATRIX_TYPE_CSC
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        out_ptr_indptr: _ctypes_int_ptr
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        if type_ptr_indptr == _C_API_DTYPE_INT32:
            out_ptr_indptr = ctypes.POINTER(ctypes.c_int32)()
        else:
            out_ptr_indptr = ctypes.POINTER(ctypes.c_int64)()
        out_ptr_indices = ctypes.POINTER(ctypes.c_int32)()
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        out_ptr_data: _ctypes_float_ptr
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        if type_ptr_data == _C_API_DTYPE_FLOAT32:
            out_ptr_data = ctypes.POINTER(ctypes.c_float)()
        else:
            out_ptr_data = ctypes.POINTER(ctypes.c_double)()
        out_shape = np.empty(2, dtype=np.int64)
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        _safe_call(
            _LIB.LGBM_BoosterPredictSparseOutput(
                self._handle,
                ptr_indptr,
                ctypes.c_int(type_ptr_indptr),
                csc_indices.ctypes.data_as(ctypes.POINTER(ctypes.c_int32)),
                ptr_data,
                ctypes.c_int(type_ptr_data),
                ctypes.c_int64(len(csc.indptr)),
                ctypes.c_int64(len(csc.data)),
                ctypes.c_int64(csc.shape[0]),
                ctypes.c_int(predict_type),
                ctypes.c_int(start_iteration),
                ctypes.c_int(num_iteration),
                _c_str(self.pred_parameter),
                ctypes.c_int(matrix_type),
                out_shape.ctypes.data_as(ctypes.POINTER(ctypes.c_int64)),
                ctypes.byref(out_ptr_indptr),
                ctypes.byref(out_ptr_indices),
                ctypes.byref(out_ptr_data),
            )
        )
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        matrices = self.__create_sparse_native(
            cs=csc,
            out_shape=out_shape,
            out_ptr_indptr=out_ptr_indptr,
            out_ptr_indices=out_ptr_indices,
            out_ptr_data=out_ptr_data,
            indptr_type=type_ptr_indptr,
            data_type=type_ptr_data,
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            is_csr=False,
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        )
        nrow = csc.shape[0]
        return matrices, nrow
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    def __pred_for_csc(
        self,
        csc: scipy.sparse.csc_matrix,
        start_iteration: int,
        num_iteration: int,
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        predict_type: int,
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    ) -> Tuple[np.ndarray, int]:
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        """Predict for a CSC data."""
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        nrow = csc.shape[0]
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        if nrow > _MAX_INT32:
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            return self.__pred_for_csr(
                csr=csc.tocsr(),
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        if predict_type == _C_API_PREDICT_CONTRIB:
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            return self.__inner_predict_sparse_csc(
                csc=csc,
                start_iteration=start_iteration,
                num_iteration=num_iteration,
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                predict_type=predict_type,
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            )
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        n_preds = self.__get_num_preds(
            start_iteration=start_iteration,
            num_iteration=num_iteration,
            nrow=nrow,
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            predict_type=predict_type,
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        )
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        preds = np.empty(n_preds, dtype=np.float64)
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        out_num_preds = ctypes.c_int64(0)

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        ptr_indptr, type_ptr_indptr, __ = _c_int_array(csc.indptr)
        ptr_data, type_ptr_data, _ = _c_float_array(csc.data)
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        assert csc.shape[0] <= _MAX_INT32
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        csc_indices = csc.indices.astype(np.int32, copy=False)
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        _safe_call(
            _LIB.LGBM_BoosterPredictForCSC(
                self._handle,
                ptr_indptr,
                ctypes.c_int(type_ptr_indptr),
                csc_indices.ctypes.data_as(ctypes.POINTER(ctypes.c_int32)),
                ptr_data,
                ctypes.c_int(type_ptr_data),
                ctypes.c_int64(len(csc.indptr)),
                ctypes.c_int64(len(csc.data)),
                ctypes.c_int64(csc.shape[0]),
                ctypes.c_int(predict_type),
                ctypes.c_int(start_iteration),
                ctypes.c_int(num_iteration),
                _c_str(self.pred_parameter),
                ctypes.byref(out_num_preds),
                preds.ctypes.data_as(ctypes.POINTER(ctypes.c_double)),
            )
        )
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        if n_preds != out_num_preds.value:
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            raise ValueError("Wrong length for predict results")
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        return preds, nrow
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    def __pred_for_pyarrow_table(
        self,
        table: pa_Table,
        start_iteration: int,
        num_iteration: int,
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        predict_type: int,
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    ) -> Tuple[np.ndarray, int]:
        """Predict for a PyArrow table."""
        if not PYARROW_INSTALLED:
            raise LightGBMError("Cannot predict from Arrow without `pyarrow` installed.")

        # Check that the input is valid: we only handle numbers (for now)
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        if not all(arrow_is_integer(t) or arrow_is_floating(t) or arrow_is_boolean(t) for t in table.schema.types):
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            raise ValueError("Arrow table may only have integer or floating point datatypes")

        # Prepare prediction output array
        n_preds = self.__get_num_preds(
            start_iteration=start_iteration,
            num_iteration=num_iteration,
            nrow=table.num_rows,
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            predict_type=predict_type,
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        )
        preds = np.empty(n_preds, dtype=np.float64)
        out_num_preds = ctypes.c_int64(0)

        # Export Arrow table to C and run prediction
        c_array = _export_arrow_to_c(table)
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        _safe_call(
            _LIB.LGBM_BoosterPredictForArrow(
                self._handle,
                ctypes.c_int64(c_array.n_chunks),
                ctypes.c_void_p(c_array.chunks_ptr),
                ctypes.c_void_p(c_array.schema_ptr),
                ctypes.c_int(predict_type),
                ctypes.c_int(start_iteration),
                ctypes.c_int(num_iteration),
                _c_str(self.pred_parameter),
                ctypes.byref(out_num_preds),
                preds.ctypes.data_as(ctypes.POINTER(ctypes.c_double)),
            )
        )
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        if n_preds != out_num_preds.value:
            raise ValueError("Wrong length for predict results")
        return preds, table.num_rows
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    def current_iteration(self) -> int:
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        """Get the index of the current iteration.

        Returns
        -------
        cur_iter : int
            The index of the current iteration.
        """
        out_cur_iter = ctypes.c_int(0)
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        _safe_call(
            _LIB.LGBM_BoosterGetCurrentIteration(
                self._handle,
                ctypes.byref(out_cur_iter),
            )
        )
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        return out_cur_iter.value

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class Dataset:
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    """
    Dataset in LightGBM.

    LightGBM does not train on raw data.
    It discretizes continuous features into histogram bins, tries to combine categorical features,
    and automatically handles missing and infinite values.

    This class handles that preprocessing, and holds that alternative representation of the input data.
    """
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    def __init__(
        self,
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        data: _LGBM_TrainDataType,
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        label: Optional[_LGBM_LabelType] = None,
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        reference: Optional["Dataset"] = None,
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        weight: Optional[_LGBM_WeightType] = None,
        group: Optional[_LGBM_GroupType] = None,
        init_score: Optional[_LGBM_InitScoreType] = None,
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        feature_name: _LGBM_FeatureNameConfiguration = "auto",
        categorical_feature: _LGBM_CategoricalFeatureConfiguration = "auto",
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        params: Optional[Dict[str, Any]] = None,
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        free_raw_data: bool = True,
        position: Optional[_LGBM_PositionType] = None,
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    ):
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        """Initialize Dataset.
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        Parameters
        ----------
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        data : str, pathlib.Path, numpy array, pandas DataFrame, H2O DataTable's Frame (deprecated), scipy.sparse, Sequence, list of Sequence, list of numpy array or pyarrow Table
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            Data source of Dataset.
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            If str or pathlib.Path, it represents the path to a text file (CSV, TSV, or LibSVM) or a LightGBM Dataset binary file.
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        label : list, numpy 1-D array, pandas Series / one-column DataFrame, pyarrow Array, pyarrow ChunkedArray or None, optional (default=None)
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            Label of the data.
        reference : Dataset or None, optional (default=None)
            If this is Dataset for validation, training data should be used as reference.
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        weight : list, numpy 1-D array, pandas Series, pyarrow Array, pyarrow ChunkedArray or None, optional (default=None)
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            Weight for each instance. Weights should be non-negative.
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        group : list, numpy 1-D array, pandas Series, pyarrow Array, pyarrow ChunkedArray or None, optional (default=None)
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            Group/query data.
            Only used in the learning-to-rank task.
            sum(group) = n_samples.
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            For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
            where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
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        init_score : list, list of lists (for multi-class task), numpy array, pandas Series, pandas DataFrame (for multi-class task), pyarrow Array, pyarrow ChunkedArray, pyarrow Table (for multi-class task) or None, optional (default=None)
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            Init score for Dataset.
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        feature_name : list of str, or 'auto', optional (default="auto")
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            Feature names.
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            If 'auto' and data is pandas DataFrame or pyarrow Table, data columns names are used.
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        categorical_feature : list of str or int, or 'auto', optional (default="auto")
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            Categorical features.
            If list of int, interpreted as indices.
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            If list of str, interpreted as feature names (need to specify ``feature_name`` as well).
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            If 'auto' and data is pandas DataFrame, pandas unordered categorical columns are used.
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            All values in categorical features will be cast to int32 and thus should be less than int32 max value (2147483647).
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            Large values could be memory consuming. Consider using consecutive integers starting from zero.
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            All negative values in categorical features will be treated as missing values.
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            The output cannot be monotonically constrained with respect to a categorical feature.
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            Floating point numbers in categorical features will be rounded towards 0.
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        params : dict or None, optional (default=None)
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            Other parameters for Dataset.
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        free_raw_data : bool, optional (default=True)
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            If True, raw data is freed after constructing inner Dataset.
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        position : numpy 1-D array, pandas Series or None, optional (default=None)
            Position of items used in unbiased learning-to-rank task.
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        """
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        self._handle: Optional[_DatasetHandle] = None
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        self.data = data
        self.label = label
        self.reference = reference
        self.weight = weight
        self.group = group
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        self.position = position
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        self.init_score = init_score
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        self.feature_name: _LGBM_FeatureNameConfiguration = feature_name
        self.categorical_feature: _LGBM_CategoricalFeatureConfiguration = categorical_feature
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        self.params = deepcopy(params)
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        self.free_raw_data = free_raw_data
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        self.used_indices: Optional[List[int]] = None
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        self._need_slice = True
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        self._predictor: Optional[_InnerPredictor] = None
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        self.pandas_categorical: Optional[List[List]] = None
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        self._params_back_up: Optional[Dict[str, Any]] = None
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        self.version = 0
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        self._start_row = 0  # Used when pushing rows one by one.
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    def __del__(self) -> None:
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        try:
            self._free_handle()
        except AttributeError:
            pass
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    def _create_sample_indices(self, total_nrow: int) -> np.ndarray:
        """Get an array of randomly chosen indices from this ``Dataset``.

        Indices are sampled without replacement.

        Parameters
        ----------
        total_nrow : int
            Total number of rows to sample from.
            If this value is greater than the value of parameter ``bin_construct_sample_cnt``, only ``bin_construct_sample_cnt`` indices will be used.
            If Dataset has multiple input data, this should be the sum of rows of every file.

        Returns
        -------
        indices : numpy array
            Indices for sampled data.
        """
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        param_str = _param_dict_to_str(self.get_params())
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        sample_cnt = _get_sample_count(total_nrow, param_str)
        indices = np.empty(sample_cnt, dtype=np.int32)
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        ptr_data, _, _ = _c_int_array(indices)
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        actual_sample_cnt = ctypes.c_int32(0)

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        _safe_call(
            _LIB.LGBM_SampleIndices(
                ctypes.c_int32(total_nrow),
                _c_str(param_str),
                ptr_data,
                ctypes.byref(actual_sample_cnt),
            )
        )
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        assert sample_cnt == actual_sample_cnt.value
        return indices
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    def _init_from_ref_dataset(
        self,
        total_nrow: int,
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        ref_dataset: _DatasetHandle,
    ) -> "Dataset":
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        """Create dataset from a reference dataset.

        Parameters
        ----------
        total_nrow : int
            Number of rows expected to add to dataset.
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        ref_dataset : object
            Handle of reference dataset to extract metadata from.
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        Returns
        -------
        self : Dataset
            Constructed Dataset object.
        """
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        self._handle = ctypes.c_void_p()
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        _safe_call(
            _LIB.LGBM_DatasetCreateByReference(
                ref_dataset,
                ctypes.c_int64(total_nrow),
                ctypes.byref(self._handle),
            )
        )
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        return self

    def _init_from_sample(
        self,
        sample_data: List[np.ndarray],
        sample_indices: List[np.ndarray],
        sample_cnt: int,
        total_nrow: int,
    ) -> "Dataset":
        """Create Dataset from sampled data structures.

        Parameters
        ----------
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        sample_data : list of numpy array
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            Sample data for each column.
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        sample_indices : list of numpy array
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            Sample data row index for each column.
        sample_cnt : int
            Number of samples.
        total_nrow : int
            Total number of rows for all input files.

        Returns
        -------
        self : Dataset
            Constructed Dataset object.
        """
        ncol = len(sample_indices)
        assert len(sample_data) == ncol, "#sample data column != #column indices"

        for i in range(ncol):
            if sample_data[i].dtype != np.double:
                raise ValueError(f"sample_data[{i}] type {sample_data[i].dtype} is not double")
            if sample_indices[i].dtype != np.int32:
                raise ValueError(f"sample_indices[{i}] type {sample_indices[i].dtype} is not int32")

        # c type: double**
        # each double* element points to start of each column of sample data.
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        sample_col_ptr: _ctypes_float_array = (ctypes.POINTER(ctypes.c_double) * ncol)()
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        # c type int**
        # each int* points to start of indices for each column
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        indices_col_ptr: _ctypes_int_array = (ctypes.POINTER(ctypes.c_int32) * ncol)()
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        for i in range(ncol):
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            sample_col_ptr[i] = _c_float_array(sample_data[i])[0]
            indices_col_ptr[i] = _c_int_array(sample_indices[i])[0]
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        num_per_col = np.array([len(d) for d in sample_indices], dtype=np.int32)
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        num_per_col_ptr, _, _ = _c_int_array(num_per_col)
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        self._handle = ctypes.c_void_p()
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        params_str = _param_dict_to_str(self.get_params())
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        _safe_call(
            _LIB.LGBM_DatasetCreateFromSampledColumn(
                ctypes.cast(sample_col_ptr, ctypes.POINTER(ctypes.POINTER(ctypes.c_double))),
                ctypes.cast(indices_col_ptr, ctypes.POINTER(ctypes.POINTER(ctypes.c_int32))),
                ctypes.c_int32(ncol),
                num_per_col_ptr,
                ctypes.c_int32(sample_cnt),
                ctypes.c_int32(total_nrow),
                ctypes.c_int64(total_nrow),
                _c_str(params_str),
                ctypes.byref(self._handle),
            )
        )
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        return self

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    def _push_rows(self, data: np.ndarray) -> "Dataset":
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        """Add rows to Dataset.

        Parameters
        ----------
        data : numpy 1-D array
            New data to add to the Dataset.

        Returns
        -------
        self : Dataset
            Dataset object.
        """
        nrow, ncol = data.shape
        data = data.reshape(data.size)
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        data_ptr, data_type, _ = _c_float_array(data)
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        _safe_call(
            _LIB.LGBM_DatasetPushRows(
                self._handle,
                data_ptr,
                data_type,
                ctypes.c_int32(nrow),
                ctypes.c_int32(ncol),
                ctypes.c_int32(self._start_row),
            )
        )
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        self._start_row += nrow
        return self

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    def get_params(self) -> Dict[str, Any]:
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        """Get the used parameters in the Dataset.

        Returns
        -------
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        params : dict
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            The used parameters in this Dataset object.
        """
        if self.params is not None:
            # no min_data, nthreads and verbose in this function
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            dataset_params = _ConfigAliases.get(
                "bin_construct_sample_cnt",
                "categorical_feature",
                "data_random_seed",
                "enable_bundle",
                "feature_pre_filter",
                "forcedbins_filename",
                "group_column",
                "header",
                "ignore_column",
                "is_enable_sparse",
                "label_column",
                "linear_tree",
                "max_bin",
                "max_bin_by_feature",
                "min_data_in_bin",
                "pre_partition",
                "precise_float_parser",
                "two_round",
                "use_missing",
                "weight_column",
                "zero_as_missing",
            )
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            return {k: v for k, v in self.params.items() if k in dataset_params}
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        else:
            return {}
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    def _free_handle(self) -> "Dataset":
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        if self._handle is not None:
            _safe_call(_LIB.LGBM_DatasetFree(self._handle))
            self._handle = None
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        self._need_slice = True
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        if self.used_indices is not None:
            self.data = None
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        return self
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    def _set_init_score_by_predictor(
        self,
        predictor: Optional[_InnerPredictor],
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        data: _LGBM_TrainDataType,
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        used_indices: Optional[Union[List[int], np.ndarray]],
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    ) -> "Dataset":
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        data_has_header = False
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        if isinstance(data, (str, Path)) and self.params is not None:
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            # check data has header or not
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            data_has_header = any(self.params.get(alias, False) for alias in _ConfigAliases.get("header"))
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        num_data = self.num_data()
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        if predictor is not None:
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            init_score: Union[np.ndarray, scipy.sparse.spmatrix] = predictor.predict(
                data=data,
                raw_score=True,
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                data_has_header=data_has_header,
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            )
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            init_score = init_score.ravel()
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            if used_indices is not None:
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                assert not self._need_slice
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                if isinstance(data, (str, Path)):
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                    sub_init_score = np.empty(num_data * predictor.num_class, dtype=np.float64)
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                    assert num_data == len(used_indices)
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                    for i in range(len(used_indices)):
                        for j in range(predictor.num_class):
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                            sub_init_score[i * predictor.num_class + j] = init_score[
                                used_indices[i] * predictor.num_class + j
                            ]
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                    init_score = sub_init_score
            if predictor.num_class > 1:
                # need to regroup init_score
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                new_init_score = np.empty(init_score.size, dtype=np.float64)
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                for i in range(num_data):
                    for j in range(predictor.num_class):
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                        new_init_score[j * num_data + i] = init_score[i * predictor.num_class + j]
                init_score = new_init_score
        elif self.init_score is not None:
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            init_score = np.full_like(self.init_score, fill_value=0.0, dtype=np.float64)
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        else:
            return self
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        self.set_init_score(init_score)
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        return self
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2087

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    def _lazy_init(
        self,
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        data: Optional[_LGBM_TrainDataType],
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        label: Optional[_LGBM_LabelType],
        reference: Optional["Dataset"],
        weight: Optional[_LGBM_WeightType],
        group: Optional[_LGBM_GroupType],
        init_score: Optional[_LGBM_InitScoreType],
        predictor: Optional[_InnerPredictor],
        feature_name: _LGBM_FeatureNameConfiguration,
        categorical_feature: _LGBM_CategoricalFeatureConfiguration,
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        params: Optional[Dict[str, Any]],
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        position: Optional[_LGBM_PositionType],
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    ) -> "Dataset":
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        if data is None:
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            self._handle = None
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            return self
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        if reference is not None:
            self.pandas_categorical = reference.pandas_categorical
            categorical_feature = reference.categorical_feature
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        if isinstance(data, pd_DataFrame):
            data, feature_name, categorical_feature, self.pandas_categorical = _data_from_pandas(
                data=data,
                feature_name=feature_name,
                categorical_feature=categorical_feature,
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                pandas_categorical=self.pandas_categorical,
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            )
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        # process for args
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        params = {} if params is None else params
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        args_names = inspect.signature(self.__class__._lazy_init).parameters.keys()
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        for key in params.keys():
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            if key in args_names:
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                _log_warning(
                    f"{key} keyword has been found in `params` and will be ignored.\n"
                    f"Please use {key} argument of the Dataset constructor to pass this parameter."
                )
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        # get categorical features
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        if isinstance(categorical_feature, list):
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            categorical_indices = set()
            feature_dict = {}
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            if isinstance(feature_name, list):
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                feature_dict = {name: i for i, name in enumerate(feature_name)}
            for name in categorical_feature:
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                if isinstance(name, str) and name in feature_dict:
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                    categorical_indices.add(feature_dict[name])
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                elif isinstance(name, int):
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                    categorical_indices.add(name)
                else:
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                    raise TypeError(f"Wrong type({type(name).__name__}) or unknown name({name}) in categorical_feature")
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            if categorical_indices:
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                for cat_alias in _ConfigAliases.get("categorical_feature"):
                    if cat_alias in params:
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                        # If the params[cat_alias] is equal to categorical_indices, do not report the warning.
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                        if not (isinstance(params[cat_alias], list) and set(params[cat_alias]) == categorical_indices):
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                            _log_warning(f"{cat_alias} in param dict is overridden.")
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                        params.pop(cat_alias, None)
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                params["categorical_column"] = sorted(categorical_indices)
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        params_str = _param_dict_to_str(params)
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        self.params = params
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        # process for reference dataset
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        ref_dataset = None
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        if isinstance(reference, Dataset):
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            ref_dataset = reference.construct()._handle
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        elif reference is not None:
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            raise TypeError("Reference dataset should be None or dataset instance")
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        # start construct data
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        if isinstance(data, (str, Path)):
2157
            self._handle = ctypes.c_void_p()
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            _safe_call(
                _LIB.LGBM_DatasetCreateFromFile(
                    _c_str(str(data)),
                    _c_str(params_str),
                    ref_dataset,
                    ctypes.byref(self._handle),
                )
            )
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        elif isinstance(data, scipy.sparse.csr_matrix):
            self.__init_from_csr(data, params_str, ref_dataset)
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        elif isinstance(data, scipy.sparse.csc_matrix):
            self.__init_from_csc(data, params_str, ref_dataset)
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        elif isinstance(data, np.ndarray):
            self.__init_from_np2d(data, params_str, ref_dataset)
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        elif _is_pyarrow_table(data):
            self.__init_from_pyarrow_table(data, params_str, ref_dataset)
            feature_name = data.column_names
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        elif isinstance(data, list) and len(data) > 0:
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            if _is_list_of_numpy_arrays(data):
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                self.__init_from_list_np2d(data, params_str, ref_dataset)
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            elif _is_list_of_sequences(data):
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                self.__init_from_seqs(data, ref_dataset)
            else:
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                raise TypeError("Data list can only be of ndarray or Sequence")
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        elif isinstance(data, Sequence):
            self.__init_from_seqs([data], ref_dataset)
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        elif isinstance(data, dt_DataTable):
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            _emit_datatable_deprecation_warning()
2186
            self.__init_from_np2d(data.to_numpy(), params_str, ref_dataset)
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        else:
            try:
                csr = scipy.sparse.csr_matrix(data)
                self.__init_from_csr(csr, params_str, ref_dataset)
2191
            except BaseException as err:
2192
                raise TypeError(f"Cannot initialize Dataset from {type(data).__name__}") from err
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        if label is not None:
            self.set_label(label)
        if self.get_label() is None:
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            raise ValueError("Label should not be None")
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        if weight is not None:
            self.set_weight(weight)
        if group is not None:
            self.set_group(group)
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        if position is not None:
            self.set_position(position)
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        if isinstance(predictor, _InnerPredictor):
            if self._predictor is None and init_score is not None:
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                _log_warning("The init_score will be overridden by the prediction of init_model.")
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            self._set_init_score_by_predictor(predictor=predictor, data=data, used_indices=None)
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        elif init_score is not None:
            self.set_init_score(init_score)
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2209
        elif predictor is not None:
2210
            raise TypeError(f"Wrong predictor type {type(predictor).__name__}")
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2211
        # set feature names
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        return self.set_feature_name(feature_name)
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2213

2214
    @staticmethod
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    def _yield_row_from_seqlist(seqs: List[Sequence], indices: Iterable[int]) -> Iterator[np.ndarray]:
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        offset = 0
        seq_id = 0
        seq = seqs[seq_id]
        for row_id in indices:
            assert row_id >= offset, "sample indices are expected to be monotonic"
            while row_id >= offset + len(seq):
                offset += len(seq)
                seq_id += 1
                seq = seqs[seq_id]
            id_in_seq = row_id - offset
            row = seq[id_in_seq]
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            yield row if row.flags["OWNDATA"] else row.copy()
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    def __sample(self, seqs: List[Sequence], total_nrow: int) -> Tuple[List[np.ndarray], List[np.ndarray]]:
        """Sample data from seqs.

        Mimics behavior in c_api.cpp:LGBM_DatasetCreateFromMats()

        Returns
        -------
            sampled_rows, sampled_row_indices
        """
        indices = self._create_sample_indices(total_nrow)

        # Select sampled rows, transpose to column order.
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        sampled = np.array(list(self._yield_row_from_seqlist(seqs, indices)))
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        sampled = sampled.T

        filtered = []
        filtered_idx = []
        sampled_row_range = np.arange(len(indices), dtype=np.int32)
        for col in sampled:
            col_predicate = (np.abs(col) > ZERO_THRESHOLD) | np.isnan(col)
            filtered_col = col[col_predicate]
            filtered_row_idx = sampled_row_range[col_predicate]

            filtered.append(filtered_col)
            filtered_idx.append(filtered_row_idx)

        return filtered, filtered_idx

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    def __init_from_seqs(
        self,
        seqs: List[Sequence],
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        ref_dataset: Optional[_DatasetHandle],
2261
    ) -> "Dataset":
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        """
        Initialize data from list of Sequence objects.

        Sequence: Generic Data Access Object
            Supports random access and access by batch if properly defined by user

        Data scheme uniformity are trusted, not checked
        """
        total_nrow = sum(len(seq) for seq in seqs)

        # create validation dataset from ref_dataset
        if ref_dataset is not None:
            self._init_from_ref_dataset(total_nrow, ref_dataset)
        else:
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            param_str = _param_dict_to_str(self.get_params())
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            sample_cnt = _get_sample_count(total_nrow, param_str)

            sample_data, col_indices = self.__sample(seqs, total_nrow)
            self._init_from_sample(sample_data, col_indices, sample_cnt, total_nrow)

        for seq in seqs:
            nrow = len(seq)
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            batch_size = getattr(seq, "batch_size", None) or Sequence.batch_size
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            for start in range(0, nrow, batch_size):
                end = min(start + batch_size, nrow)
                self._push_rows(seq[start:end])
        return self

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    def __init_from_np2d(
        self,
        mat: np.ndarray,
        params_str: str,
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        ref_dataset: Optional[_DatasetHandle],
2295
    ) -> "Dataset":
2296
        """Initialize data from a 2-D numpy matrix."""
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        if len(mat.shape) != 2:
2298
            raise ValueError("Input numpy.ndarray must be 2 dimensional")
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        self._handle = ctypes.c_void_p()
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        if mat.dtype == np.float32 or mat.dtype == np.float64:
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            data = np.asarray(mat.reshape(mat.size), dtype=mat.dtype)
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        else:  # change non-float data to float data, need to copy
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            data = np.asarray(mat.reshape(mat.size), dtype=np.float32)
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        ptr_data, type_ptr_data, _ = _c_float_array(data)
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        _safe_call(
            _LIB.LGBM_DatasetCreateFromMat(
                ptr_data,
                ctypes.c_int(type_ptr_data),
                ctypes.c_int32(mat.shape[0]),
                ctypes.c_int32(mat.shape[1]),
                ctypes.c_int(_C_API_IS_ROW_MAJOR),
                _c_str(params_str),
                ref_dataset,
                ctypes.byref(self._handle),
            )
        )
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        return self
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    def __init_from_list_np2d(
        self,
        mats: List[np.ndarray],
        params_str: str,
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        ref_dataset: Optional[_DatasetHandle],
2326
    ) -> "Dataset":
2327
        """Initialize data from a list of 2-D numpy matrices."""
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        ncol = mats[0].shape[1]
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        nrow = np.empty((len(mats),), np.int32)
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        ptr_data: _ctypes_float_array
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        if mats[0].dtype == np.float64:
            ptr_data = (ctypes.POINTER(ctypes.c_double) * len(mats))()
        else:
            ptr_data = (ctypes.POINTER(ctypes.c_float) * len(mats))()

        holders = []
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        type_ptr_data = -1
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2340

        for i, mat in enumerate(mats):
            if len(mat.shape) != 2:
2341
                raise ValueError("Input numpy.ndarray must be 2 dimensional")
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            if mat.shape[1] != ncol:
2344
                raise ValueError("Input arrays must have same number of columns")
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2348

            nrow[i] = mat.shape[0]

            if mat.dtype == np.float32 or mat.dtype == np.float64:
2349
                mats[i] = np.asarray(mat.reshape(mat.size), dtype=mat.dtype)
2350
            else:  # change non-float data to float data, need to copy
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2352
                mats[i] = np.array(mat.reshape(mat.size), dtype=np.float32)

2353
            chunk_ptr_data, chunk_type_ptr_data, holder = _c_float_array(mats[i])
2354
            if type_ptr_data != -1 and chunk_type_ptr_data != type_ptr_data:
2355
                raise ValueError("Input chunks must have same type")
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            ptr_data[i] = chunk_ptr_data
            type_ptr_data = chunk_type_ptr_data
            holders.append(holder)

2360
        self._handle = ctypes.c_void_p()
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        _safe_call(
            _LIB.LGBM_DatasetCreateFromMats(
                ctypes.c_int32(len(mats)),
                ctypes.cast(ptr_data, ctypes.POINTER(ctypes.POINTER(ctypes.c_double))),
                ctypes.c_int(type_ptr_data),
                nrow.ctypes.data_as(ctypes.POINTER(ctypes.c_int32)),
                ctypes.c_int32(ncol),
                ctypes.c_int(_C_API_IS_ROW_MAJOR),
                _c_str(params_str),
                ref_dataset,
                ctypes.byref(self._handle),
            )
        )
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        return self
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    def __init_from_csr(
        self,
        csr: scipy.sparse.csr_matrix,
        params_str: str,
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        ref_dataset: Optional[_DatasetHandle],
2381
    ) -> "Dataset":
2382
        """Initialize data from a CSR matrix."""
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        if len(csr.indices) != len(csr.data):
2384
            raise ValueError(f"Length mismatch: {len(csr.indices)} vs {len(csr.data)}")
2385
        self._handle = ctypes.c_void_p()
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        ptr_indptr, type_ptr_indptr, __ = _c_int_array(csr.indptr)
        ptr_data, type_ptr_data, _ = _c_float_array(csr.data)
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2390
        assert csr.shape[1] <= _MAX_INT32
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        csr_indices = csr.indices.astype(np.int32, copy=False)
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        _safe_call(
            _LIB.LGBM_DatasetCreateFromCSR(
                ptr_indptr,
                ctypes.c_int(type_ptr_indptr),
                csr_indices.ctypes.data_as(ctypes.POINTER(ctypes.c_int32)),
                ptr_data,
                ctypes.c_int(type_ptr_data),
                ctypes.c_int64(len(csr.indptr)),
                ctypes.c_int64(len(csr.data)),
                ctypes.c_int64(csr.shape[1]),
                _c_str(params_str),
                ref_dataset,
                ctypes.byref(self._handle),
            )
        )
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        return self
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    def __init_from_csc(
        self,
        csc: scipy.sparse.csc_matrix,
        params_str: str,
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        ref_dataset: Optional[_DatasetHandle],
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    ) -> "Dataset":
2416
        """Initialize data from a CSC matrix."""
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        if len(csc.indices) != len(csc.data):
2418
            raise ValueError(f"Length mismatch: {len(csc.indices)} vs {len(csc.data)}")
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        self._handle = ctypes.c_void_p()
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        ptr_indptr, type_ptr_indptr, __ = _c_int_array(csc.indptr)
        ptr_data, type_ptr_data, _ = _c_float_array(csc.data)
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        assert csc.shape[0] <= _MAX_INT32
2425
        csc_indices = csc.indices.astype(np.int32, copy=False)
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        _safe_call(
            _LIB.LGBM_DatasetCreateFromCSC(
                ptr_indptr,
                ctypes.c_int(type_ptr_indptr),
                csc_indices.ctypes.data_as(ctypes.POINTER(ctypes.c_int32)),
                ptr_data,
                ctypes.c_int(type_ptr_data),
                ctypes.c_int64(len(csc.indptr)),
                ctypes.c_int64(len(csc.data)),
                ctypes.c_int64(csc.shape[0]),
                _c_str(params_str),
                ref_dataset,
                ctypes.byref(self._handle),
            )
        )
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        return self
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2443

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    def __init_from_pyarrow_table(
        self,
        table: pa_Table,
        params_str: str,
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        ref_dataset: Optional[_DatasetHandle],
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    ) -> "Dataset":
        """Initialize data from a PyArrow table."""
        if not PYARROW_INSTALLED:
            raise LightGBMError("Cannot init dataframe from Arrow without `pyarrow` installed.")

        # Check that the input is valid: we only handle numbers (for now)
2455
        if not all(arrow_is_integer(t) or arrow_is_floating(t) or arrow_is_boolean(t) for t in table.schema.types):
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            raise ValueError("Arrow table may only have integer or floating point datatypes")

        # Export Arrow table to C
        c_array = _export_arrow_to_c(table)
        self._handle = ctypes.c_void_p()
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        _safe_call(
            _LIB.LGBM_DatasetCreateFromArrow(
                ctypes.c_int64(c_array.n_chunks),
                ctypes.c_void_p(c_array.chunks_ptr),
                ctypes.c_void_p(c_array.schema_ptr),
                _c_str(params_str),
                ref_dataset,
                ctypes.byref(self._handle),
            )
        )
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        return self

2473
    @staticmethod
2474
    def _compare_params_for_warning(
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        params: Dict[str, Any],
        other_params: Dict[str, Any],
2477
        ignore_keys: Set[str],
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    ) -> bool:
        """Compare two dictionaries with params ignoring some keys.
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        It is only for the warning purpose.

        Parameters
        ----------
2485
        params : dict
2486
            One dictionary with parameters to compare.
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        other_params : dict
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            Another dictionary with parameters to compare.
        ignore_keys : set
            Keys that should be ignored during comparing two dictionaries.
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        Returns
        -------
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        compare_result : bool
          Returns whether two dictionaries with params are equal.
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        """
        for k in other_params:
            if k not in ignore_keys:
                if k not in params or params[k] != other_params[k]:
                    return False
        for k in params:
            if k not in ignore_keys:
                if k not in other_params or params[k] != other_params[k]:
                    return False
        return True

2507
    def construct(self) -> "Dataset":
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        """Lazy init.

        Returns
        -------
        self : Dataset
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            Constructed Dataset object.
2514
        """
2515
        if self._handle is None:
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            if self.reference is not None:
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                reference_params = self.reference.get_params()
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                params = self.get_params()
                if params != reference_params:
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                    if not self._compare_params_for_warning(
                        params=params,
                        other_params=reference_params,
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                        ignore_keys=_ConfigAliases.get("categorical_feature"),
2524
                    ):
2525
                        _log_warning("Overriding the parameters from Reference Dataset.")
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                    self._update_params(reference_params)
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                if self.used_indices is None:
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                    # create valid
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                    self._lazy_init(
                        data=self.data,
                        label=self.label,
                        reference=self.reference,
                        weight=self.weight,
                        group=self.group,
                        position=self.position,
                        init_score=self.init_score,
                        predictor=self._predictor,
                        feature_name=self.feature_name,
                        categorical_feature="auto",
                        params=self.params,
                    )
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                else:
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                    # construct subset
2544
                    used_indices = _list_to_1d_numpy(self.used_indices, dtype=np.int32, name="used_indices")
2545
                    assert used_indices.flags.c_contiguous
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                    if self.reference.group is not None:
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                        group_info = np.array(self.reference.group).astype(np.int32, copy=False)
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                        _, self.group = np.unique(
                            np.repeat(range(len(group_info)), repeats=group_info)[self.used_indices], return_counts=True
                        )
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                    self._handle = ctypes.c_void_p()
2552
                    params_str = _param_dict_to_str(self.params)
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                    _safe_call(
                        _LIB.LGBM_DatasetGetSubset(
                            self.reference.construct()._handle,
                            used_indices.ctypes.data_as(ctypes.POINTER(ctypes.c_int32)),
                            ctypes.c_int32(used_indices.shape[0]),
                            _c_str(params_str),
                            ctypes.byref(self._handle),
                        )
                    )
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                    if not self.free_raw_data:
                        self.get_data()
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                    if self.group is not None:
                        self.set_group(self.group)
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                    if self.position is not None:
                        self.set_position(self.position)
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                    if self.get_label() is None:
                        raise ValueError("Label should not be None.")
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                    if (
                        isinstance(self._predictor, _InnerPredictor)
                        and self._predictor is not self.reference._predictor
                    ):
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                        self.get_data()
2575
                        self._set_init_score_by_predictor(
2576
                            predictor=self._predictor, data=self.data, used_indices=used_indices
2577
                        )
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            else:
2579
                # create train
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                self._lazy_init(
                    data=self.data,
                    label=self.label,
                    reference=None,
                    weight=self.weight,
                    group=self.group,
                    init_score=self.init_score,
                    predictor=self._predictor,
                    feature_name=self.feature_name,
                    categorical_feature=self.categorical_feature,
                    params=self.params,
                    position=self.position,
                )
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            if self.free_raw_data:
                self.data = None
2595
            self.feature_name = self.get_feature_name()
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        return self
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    def create_valid(
        self,
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        data: _LGBM_TrainDataType,
2601
        label: Optional[_LGBM_LabelType] = None,
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        weight: Optional[_LGBM_WeightType] = None,
        group: Optional[_LGBM_GroupType] = None,
        init_score: Optional[_LGBM_InitScoreType] = None,
2605
        params: Optional[Dict[str, Any]] = None,
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        position: Optional[_LGBM_PositionType] = None,
2607
    ) -> "Dataset":
2608
        """Create validation data align with current Dataset.
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        Parameters
        ----------
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        data : str, pathlib.Path, numpy array, pandas DataFrame, H2O DataTable's Frame (deprecated), scipy.sparse, Sequence, list of Sequence or list of numpy array
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            Data source of Dataset.
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            If str or pathlib.Path, it represents the path to a text file (CSV, TSV, or LibSVM) or a LightGBM Dataset binary file.
2615
        label : list, numpy 1-D array, pandas Series / one-column DataFrame, pyarrow Array, pyarrow ChunkedArray or None, optional (default=None)
2616
            Label of the data.
2617
        weight : list, numpy 1-D array, pandas Series, pyarrow Array, pyarrow ChunkedArray or None, optional (default=None)
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            Weight for each instance. Weights should be non-negative.
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        group : list, numpy 1-D array, pandas Series, pyarrow Array, pyarrow ChunkedArray or None, optional (default=None)
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            Group/query data.
            Only used in the learning-to-rank task.
            sum(group) = n_samples.
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            For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
            where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
2625
        init_score : list, list of lists (for multi-class task), numpy array, pandas Series, pandas DataFrame (for multi-class task), pyarrow Array, pyarrow ChunkedArray, pyarrow Table (for multi-class task) or None, optional (default=None)
2626
            Init score for Dataset.
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        params : dict or None, optional (default=None)
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            Other parameters for validation Dataset.
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        position : numpy 1-D array, pandas Series or None, optional (default=None)
            Position of items used in unbiased learning-to-rank task.
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        Returns
        -------
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        valid : Dataset
            Validation Dataset with reference to self.
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2636
        """
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        ret = Dataset(
            data,
            label=label,
            reference=self,
            weight=weight,
            group=group,
            position=position,
            init_score=init_score,
            params=params,
            free_raw_data=self.free_raw_data,
        )
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        ret._predictor = self._predictor
2649
        ret.pandas_categorical = self.pandas_categorical
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        return ret
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    def subset(
        self,
        used_indices: List[int],
2655
        params: Optional[Dict[str, Any]] = None,
2656
    ) -> "Dataset":
2657
        """Get subset of current Dataset.
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        Parameters
        ----------
        used_indices : list of int
2662
            Indices used to create the subset.
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        params : dict or None, optional (default=None)
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            These parameters will be passed to Dataset constructor.
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        Returns
        -------
        subset : Dataset
            Subset of the current Dataset.
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        """
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        if params is None:
            params = self.params
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        ret = Dataset(
            None,
            reference=self,
            feature_name=self.feature_name,
            categorical_feature=self.categorical_feature,
            params=params,
            free_raw_data=self.free_raw_data,
        )
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        ret._predictor = self._predictor
2682
        ret.pandas_categorical = self.pandas_categorical
2683
        ret.used_indices = sorted(used_indices)
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        return ret

2686
    def save_binary(self, filename: Union[str, Path]) -> "Dataset":
2687
        """Save Dataset to a binary file.
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2689
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        .. note::

            Please note that `init_score` is not saved in binary file.
            If you need it, please set it again after loading Dataset.

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        Parameters
        ----------
2696
        filename : str or pathlib.Path
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            Name of the output file.
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        Returns
        -------
        self : Dataset
            Returns self.
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        """
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        _safe_call(
            _LIB.LGBM_DatasetSaveBinary(
                self.construct()._handle,
                _c_str(str(filename)),
            )
        )
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2710
        return self
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2711

2712
    def _update_params(self, params: Optional[Dict[str, Any]]) -> "Dataset":
2713
2714
        if not params:
            return self
2715
        params = deepcopy(params)
2716

2717
        def update() -> None:
2718
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2720
            if not self.params:
                self.params = params
            else:
2721
                self._params_back_up = deepcopy(self.params)
2722
2723
                self.params.update(params)

2724
        if self._handle is None:
2725
2726
2727
            update()
        elif params is not None:
            ret = _LIB.LGBM_DatasetUpdateParamChecking(
2728
                _c_str(_param_dict_to_str(self.params)),
2729
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                _c_str(_param_dict_to_str(params)),
            )
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            if ret != 0:
                # could be updated if data is not freed
                if self.data is not None:
                    update()
                    self._free_handle()
                else:
2737
                    raise LightGBMError(_LIB.LGBM_GetLastError().decode("utf-8"))
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        return self
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2740
    def _reverse_update_params(self) -> "Dataset":
2741
        if self._handle is None:
2742
2743
            self.params = deepcopy(self._params_back_up)
            self._params_back_up = None
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2744
        return self
2745

2746
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2748
    def set_field(
        self,
        field_name: str,
2749
        data: Optional[_LGBM_SetFieldType],
2750
    ) -> "Dataset":
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        """Set property into the Dataset.
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        Parameters
        ----------
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        field_name : str
2756
            The field name of the information.
2757
        data : list, list of lists (for multi-class task), numpy array, pandas Series, pandas DataFrame (for multi-class task), pyarrow Array, pyarrow ChunkedArray or None
2758
            The data to be set.
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        Returns
        -------
        self : Dataset
            Dataset with set property.
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2764
        """
2765
        if self._handle is None:
2766
            raise Exception(f"Cannot set {field_name} before construct dataset")
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2767
        if data is None:
2768
            # set to None
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            _safe_call(
                _LIB.LGBM_DatasetSetField(
                    self._handle,
                    _c_str(field_name),
                    None,
                    ctypes.c_int(0),
                    ctypes.c_int(_FIELD_TYPE_MAPPER[field_name]),
                )
            )
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            return self
2779
2780

        # If the data is a arrow data, we can just pass it to C
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        if _is_pyarrow_array(data) or _is_pyarrow_table(data):
            # If a table is being passed, we concatenate the columns. This is only valid for
            # 'init_score'.
            if _is_pyarrow_table(data):
                if field_name != "init_score":
                    raise ValueError(f"pyarrow tables are not supported for field '{field_name}'")
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                data = pa_chunked_array(
                    [
                        chunk
                        for array in data.columns  # type: ignore
                        for chunk in array.chunks
                    ]
                )
2794

2795
            c_array = _export_arrow_to_c(data)
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            _safe_call(
                _LIB.LGBM_DatasetSetFieldFromArrow(
                    self._handle,
                    _c_str(field_name),
                    ctypes.c_int64(c_array.n_chunks),
                    ctypes.c_void_p(c_array.chunks_ptr),
                    ctypes.c_void_p(c_array.schema_ptr),
                )
            )
2805
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2807
            self.version += 1
            return self

2808
        dtype: "np.typing.DTypeLike"
2809
        if field_name == "init_score":
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2810
            dtype = np.float64
2811
            if _is_1d_collection(data):
2812
                data = _list_to_1d_numpy(data, dtype=dtype, name=field_name)
2813
            elif _is_2d_collection(data):
2814
                data = _data_to_2d_numpy(data, dtype=dtype, name=field_name)
2815
                data = data.ravel(order="F")
2816
2817
            else:
                raise TypeError(
2818
2819
                    "init_score must be list, numpy 1-D array or pandas Series.\n"
                    "In multiclass classification init_score can also be a list of lists, numpy 2-D array or pandas DataFrame."
2820
2821
                )
        else:
2822
            if field_name in {"group", "position"}:
2823
2824
2825
                dtype = np.int32
            else:
                dtype = np.float32
2826
            data = _list_to_1d_numpy(data, dtype=dtype, name=field_name)
2827

2828
        ptr_data: Union[_ctypes_float_ptr, _ctypes_int_ptr]
2829
        if data.dtype == np.float32 or data.dtype == np.float64:
2830
            ptr_data, type_data, _ = _c_float_array(data)
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2831
        elif data.dtype == np.int32:
2832
            ptr_data, type_data, _ = _c_int_array(data)
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2833
        else:
2834
            raise TypeError(f"Expected np.float32/64 or np.int32, met type({data.dtype})")
2835
        if type_data != _FIELD_TYPE_MAPPER[field_name]:
2836
            raise TypeError("Input type error for set_field")
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2845
        _safe_call(
            _LIB.LGBM_DatasetSetField(
                self._handle,
                _c_str(field_name),
                ptr_data,
                ctypes.c_int(len(data)),
                ctypes.c_int(type_data),
            )
        )
2846
        self.version += 1
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2847
        return self
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2848

2849
    def get_field(self, field_name: str) -> Optional[np.ndarray]:
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2850
        """Get property from the Dataset.
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2851

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        Can only be run on a constructed Dataset.

        Unlike ``get_group()``, ``get_init_score()``, ``get_label()``, ``get_position()``, and ``get_weight()``,
        this method ignores any raw data passed into ``lgb.Dataset()`` on the Python side, and will only read
        data from the constructed C++ ``Dataset`` object.

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        Parameters
        ----------
2860
        field_name : str
2861
            The field name of the information.
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        Returns
        -------
2865
        info : numpy array or None
2866
            A numpy array with information from the Dataset.
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2867
        """
2868
        if self._handle is None:
2869
            raise Exception(f"Cannot get {field_name} before construct Dataset")
2870
2871
        tmp_out_len = ctypes.c_int(0)
        out_type = ctypes.c_int(0)
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2872
        ret = ctypes.POINTER(ctypes.c_void_p)()
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        _safe_call(
            _LIB.LGBM_DatasetGetField(
                self._handle,
                _c_str(field_name),
                ctypes.byref(tmp_out_len),
                ctypes.byref(ret),
                ctypes.byref(out_type),
            )
        )
2882
        if out_type.value != _FIELD_TYPE_MAPPER[field_name]:
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            raise TypeError("Return type error for get_field")
        if tmp_out_len.value == 0:
            return None
2886
        if out_type.value == _C_API_DTYPE_INT32:
2887
2888
            arr = _cint32_array_to_numpy(
                cptr=ctypes.cast(ret, ctypes.POINTER(ctypes.c_int32)),
2889
                length=tmp_out_len.value,
2890
            )
2891
        elif out_type.value == _C_API_DTYPE_FLOAT32:
2892
2893
            arr = _cfloat32_array_to_numpy(
                cptr=ctypes.cast(ret, ctypes.POINTER(ctypes.c_float)),
2894
                length=tmp_out_len.value,
2895
            )
2896
        elif out_type.value == _C_API_DTYPE_FLOAT64:
2897
2898
            arr = _cfloat64_array_to_numpy(
                cptr=ctypes.cast(ret, ctypes.POINTER(ctypes.c_double)),
2899
                length=tmp_out_len.value,
2900
            )
2901
        else:
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2902
            raise TypeError("Unknown type")
2903
        if field_name == "init_score":
2904
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2906
            num_data = self.num_data()
            num_classes = arr.size // num_data
            if num_classes > 1:
2907
                arr = arr.reshape((num_data, num_classes), order="F")
2908
        return arr
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2909

2910
2911
    def set_categorical_feature(
        self,
2912
        categorical_feature: _LGBM_CategoricalFeatureConfiguration,
2913
    ) -> "Dataset":
2914
        """Set categorical features.
2915
2916
2917

        Parameters
        ----------
2918
        categorical_feature : list of str or int, or 'auto'
2919
            Names or indices of categorical features.
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        Returns
        -------
        self : Dataset
            Dataset with set categorical features.
2925
2926
        """
        if self.categorical_feature == categorical_feature:
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2927
            return self
2928
        if self.data is not None:
2929
2930
            if self.categorical_feature is None:
                self.categorical_feature = categorical_feature
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                return self._free_handle()
2932
            elif categorical_feature == "auto":
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                return self
2934
            else:
2935
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2939
                if self.categorical_feature != "auto":
                    _log_warning(
                        "categorical_feature in Dataset is overridden.\n"
                        f"New categorical_feature is {list(categorical_feature)}"
                    )
2940
                self.categorical_feature = categorical_feature
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2941
                return self._free_handle()
2942
        else:
2943
2944
2945
2946
            raise LightGBMError(
                "Cannot set categorical feature after freed raw data, "
                "set free_raw_data=False when construct Dataset to avoid this."
            )
2947

2948
2949
    def _set_predictor(
        self,
2950
        predictor: Optional[_InnerPredictor],
2951
    ) -> "Dataset":
2952
2953
2954
2955
        """Set predictor for continued training.

        It is not recommended for user to call this function.
        Please use init_model argument in engine.train() or engine.cv() instead.
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Guolin Ke committed
2956
        """
2957
        if predictor is None and self._predictor is None:
Nikita Titov's avatar
Nikita Titov committed
2958
            return self
2959
        elif isinstance(predictor, _InnerPredictor) and isinstance(self._predictor, _InnerPredictor):
2960
2961
2962
            if (predictor == self._predictor) and (
                predictor.current_iteration() == self._predictor.current_iteration()
            ):
2963
                return self
2964
        if self._handle is None:
Guolin Ke's avatar
Guolin Ke committed
2965
            self._predictor = predictor
2966
2967
        elif self.data is not None:
            self._predictor = predictor
2968
2969
2970
            self._set_init_score_by_predictor(
                predictor=self._predictor,
                data=self.data,
2971
                used_indices=None,
2972
            )
2973
2974
        elif self.used_indices is not None and self.reference is not None and self.reference.data is not None:
            self._predictor = predictor
2975
2976
2977
            self._set_init_score_by_predictor(
                predictor=self._predictor,
                data=self.reference.data,
2978
                used_indices=self.used_indices,
2979
            )
Guolin Ke's avatar
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2980
        else:
2981
2982
2983
2984
            raise LightGBMError(
                "Cannot set predictor after freed raw data, "
                "set free_raw_data=False when construct Dataset to avoid this."
            )
2985
        return self
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2986

2987
    def set_reference(self, reference: "Dataset") -> "Dataset":
2988
        """Set reference Dataset.
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2989
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        Parameters
        ----------
        reference : Dataset
2993
            Reference that is used as a template to construct the current Dataset.
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        Returns
        -------
        self : Dataset
            Dataset with set reference.
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Guolin Ke committed
2999
        """
3000
3001
3002
        self.set_categorical_feature(reference.categorical_feature).set_feature_name(
            reference.feature_name
        )._set_predictor(reference._predictor)
3003
        # we're done if self and reference share a common upstream reference
3004
        if self.get_ref_chain().intersection(reference.get_ref_chain()):
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3005
            return self
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3006
3007
        if self.data is not None:
            self.reference = reference
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3008
            return self._free_handle()
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Guolin Ke committed
3009
        else:
3010
3011
3012
3013
            raise LightGBMError(
                "Cannot set reference after freed raw data, "
                "set free_raw_data=False when construct Dataset to avoid this."
            )
Guolin Ke's avatar
Guolin Ke committed
3014

3015
    def set_feature_name(self, feature_name: _LGBM_FeatureNameConfiguration) -> "Dataset":
3016
        """Set feature name.
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Guolin Ke committed
3017
3018
3019

        Parameters
        ----------
3020
        feature_name : list of str
3021
            Feature names.
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3023
3024
3025
3026

        Returns
        -------
        self : Dataset
            Dataset with set feature name.
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Guolin Ke committed
3027
        """
3028
        if feature_name != "auto":
3029
            self.feature_name = feature_name
3030
        if self._handle is not None and feature_name is not None and feature_name != "auto":
wxchan's avatar
wxchan committed
3031
            if len(feature_name) != self.num_feature():
3032
3033
3034
                raise ValueError(
                    f"Length of feature_name({len(feature_name)}) and num_feature({self.num_feature()}) don't match"
                )
3035
            c_feature_name = [_c_str(name) for name in feature_name]
3036
3037
3038
3039
3040
3041
3042
            _safe_call(
                _LIB.LGBM_DatasetSetFeatureNames(
                    self._handle,
                    _c_array(ctypes.c_char_p, c_feature_name),
                    ctypes.c_int(len(feature_name)),
                )
            )
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3043
        return self
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3044

3045
    def set_label(self, label: Optional[_LGBM_LabelType]) -> "Dataset":
3046
        """Set label of Dataset.
Guolin Ke's avatar
Guolin Ke committed
3047
3048
3049

        Parameters
        ----------
3050
        label : list, numpy 1-D array, pandas Series / one-column DataFrame, pyarrow Array, pyarrow ChunkedArray or None
3051
            The label information to be set into Dataset.
Nikita Titov's avatar
Nikita Titov committed
3052
3053
3054
3055
3056

        Returns
        -------
        self : Dataset
            Dataset with set label.
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Guolin Ke committed
3057
3058
        """
        self.label = label
3059
        if self._handle is not None:
3060
3061
            if isinstance(label, pd_DataFrame):
                if len(label.columns) > 1:
3062
                    raise ValueError("DataFrame for label cannot have multiple columns")
3063
                label_array = np.ravel(_pandas_to_numpy(label, target_dtype=np.float32))
3064
3065
            elif _is_pyarrow_array(label):
                label_array = label
3066
            else:
3067
3068
3069
                label_array = _list_to_1d_numpy(label, dtype=np.float32, name="label")
            self.set_field("label", label_array)
            self.label = self.get_field("label")  # original values can be modified at cpp side
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3070
        return self
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Guolin Ke committed
3071

3072
3073
    def set_weight(
        self,
3074
        weight: Optional[_LGBM_WeightType],
3075
    ) -> "Dataset":
3076
        """Set weight of each instance.
Guolin Ke's avatar
Guolin Ke committed
3077
3078
3079

        Parameters
        ----------
3080
        weight : list, numpy 1-D array, pandas Series, pyarrow Array, pyarrow ChunkedArray or None
3081
            Weight to be set for each data point. Weights should be non-negative.
Nikita Titov's avatar
Nikita Titov committed
3082
3083
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3085
3086

        Returns
        -------
        self : Dataset
            Dataset with set weight.
Guolin Ke's avatar
Guolin Ke committed
3087
        """
3088
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3094
        # Check if the weight contains values other than one
        if weight is not None:
            if _is_pyarrow_array(weight):
                if pa_compute.all(pa_compute.equal(weight, 1)).as_py():
                    weight = None
            elif np.all(weight == 1):
                weight = None
Guolin Ke's avatar
Guolin Ke committed
3095
        self.weight = weight
3096
3097

        # Set field
3098
        if self._handle is not None and weight is not None:
3099
            if not _is_pyarrow_array(weight):
3100
3101
3102
                weight = _list_to_1d_numpy(weight, dtype=np.float32, name="weight")
            self.set_field("weight", weight)
            self.weight = self.get_field("weight")  # original values can be modified at cpp side
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3103
        return self
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Guolin Ke committed
3104

3105
3106
    def set_init_score(
        self,
3107
        init_score: Optional[_LGBM_InitScoreType],
3108
    ) -> "Dataset":
3109
        """Set init score of Booster to start from.
Guolin Ke's avatar
Guolin Ke committed
3110
3111
3112

        Parameters
        ----------
3113
        init_score : list, list of lists (for multi-class task), numpy array, pandas Series, pandas DataFrame (for multi-class task), pyarrow Array, pyarrow ChunkedArray, pyarrow Table (for multi-class task) or None
3114
            Init score for Booster.
Nikita Titov's avatar
Nikita Titov committed
3115
3116
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3118
3119

        Returns
        -------
        self : Dataset
            Dataset with set init score.
Guolin Ke's avatar
Guolin Ke committed
3120
3121
        """
        self.init_score = init_score
3122
        if self._handle is not None and init_score is not None:
3123
3124
            self.set_field("init_score", init_score)
            self.init_score = self.get_field("init_score")  # original values can be modified at cpp side
Nikita Titov's avatar
Nikita Titov committed
3125
        return self
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Guolin Ke committed
3126

3127
3128
    def set_group(
        self,
3129
        group: Optional[_LGBM_GroupType],
3130
    ) -> "Dataset":
3131
        """Set group size of Dataset (used for ranking).
Guolin Ke's avatar
Guolin Ke committed
3132
3133
3134

        Parameters
        ----------
3135
        group : list, numpy 1-D array, pandas Series, pyarrow Array, pyarrow ChunkedArray or None
3136
3137
3138
            Group/query data.
            Only used in the learning-to-rank task.
            sum(group) = n_samples.
3139
3140
            For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
            where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
Nikita Titov's avatar
Nikita Titov committed
3141
3142
3143
3144
3145

        Returns
        -------
        self : Dataset
            Dataset with set group.
Guolin Ke's avatar
Guolin Ke committed
3146
3147
        """
        self.group = group
3148
        if self._handle is not None and group is not None:
3149
            if not _is_pyarrow_array(group):
3150
3151
                group = _list_to_1d_numpy(group, dtype=np.int32, name="group")
            self.set_field("group", group)
3152
            # original values can be modified at cpp side
3153
            constructed_group = self.get_field("group")
3154
3155
            if constructed_group is not None:
                self.group = np.diff(constructed_group)
Nikita Titov's avatar
Nikita Titov committed
3156
        return self
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Guolin Ke committed
3157

3158
3159
    def set_position(
        self,
3160
        position: Optional[_LGBM_PositionType],
3161
3162
3163
3164
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3166
3167
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3169
3170
3171
3172
3173
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3175
    ) -> "Dataset":
        """Set position of Dataset (used for ranking).

        Parameters
        ----------
        position : numpy 1-D array, pandas Series or None, optional (default=None)
            Position of items used in unbiased learning-to-rank task.

        Returns
        -------
        self : Dataset
            Dataset with set position.
        """
        self.position = position
        if self._handle is not None and position is not None:
3176
3177
            position = _list_to_1d_numpy(position, dtype=np.int32, name="position")
            self.set_field("position", position)
3178
3179
        return self

3180
    def get_feature_name(self) -> List[str]:
3181
3182
3183
3184
        """Get the names of columns (features) in the Dataset.

        Returns
        -------
3185
        feature_names : list of str
3186
3187
            The names of columns (features) in the Dataset.
        """
3188
        if self._handle is None:
3189
3190
3191
3192
3193
            raise LightGBMError("Cannot get feature_name before construct dataset")
        num_feature = self.num_feature()
        tmp_out_len = ctypes.c_int(0)
        reserved_string_buffer_size = 255
        required_string_buffer_size = ctypes.c_size_t(0)
3194
        string_buffers = [ctypes.create_string_buffer(reserved_string_buffer_size) for _ in range(num_feature)]
3195
        ptr_string_buffers = (ctypes.c_char_p * num_feature)(*map(ctypes.addressof, string_buffers))  # type: ignore[misc]
3196
3197
3198
3199
3200
3201
3202
3203
3204
3205
        _safe_call(
            _LIB.LGBM_DatasetGetFeatureNames(
                self._handle,
                ctypes.c_int(num_feature),
                ctypes.byref(tmp_out_len),
                ctypes.c_size_t(reserved_string_buffer_size),
                ctypes.byref(required_string_buffer_size),
                ptr_string_buffers,
            )
        )
3206
3207
        if num_feature != tmp_out_len.value:
            raise ValueError("Length of feature names doesn't equal with num_feature")
3208
3209
3210
3211
        actual_string_buffer_size = required_string_buffer_size.value
        # if buffer length is not long enough, reallocate buffers
        if reserved_string_buffer_size < actual_string_buffer_size:
            string_buffers = [ctypes.create_string_buffer(actual_string_buffer_size) for _ in range(num_feature)]
3212
            ptr_string_buffers = (ctypes.c_char_p * num_feature)(*map(ctypes.addressof, string_buffers))  # type: ignore[misc]
3213
3214
3215
3216
3217
3218
3219
3220
3221
3222
3223
            _safe_call(
                _LIB.LGBM_DatasetGetFeatureNames(
                    self._handle,
                    ctypes.c_int(num_feature),
                    ctypes.byref(tmp_out_len),
                    ctypes.c_size_t(actual_string_buffer_size),
                    ctypes.byref(required_string_buffer_size),
                    ptr_string_buffers,
                )
            )
        return [string_buffers[i].value.decode("utf-8") for i in range(num_feature)]
3224

3225
    def get_label(self) -> Optional[_LGBM_LabelType]:
3226
        """Get the label of the Dataset.
Guolin Ke's avatar
Guolin Ke committed
3227
3228
3229

        Returns
        -------
3230
        label : list, numpy 1-D array, pandas Series / one-column DataFrame or None
3231
            The label information from the Dataset.
3232
            For a constructed ``Dataset``, this will only return a numpy array.
Guolin Ke's avatar
Guolin Ke committed
3233
        """
3234
        if self.label is None:
3235
            self.label = self.get_field("label")
Guolin Ke's avatar
Guolin Ke committed
3236
3237
        return self.label

3238
    def get_weight(self) -> Optional[_LGBM_WeightType]:
3239
        """Get the weight of the Dataset.
Guolin Ke's avatar
Guolin Ke committed
3240
3241
3242

        Returns
        -------
3243
        weight : list, numpy 1-D array, pandas Series or None
3244
            Weight for each data point from the Dataset. Weights should be non-negative.
3245
            For a constructed ``Dataset``, this will only return ``None`` or a numpy array.
Guolin Ke's avatar
Guolin Ke committed
3246
        """
3247
        if self.weight is None:
3248
            self.weight = self.get_field("weight")
Guolin Ke's avatar
Guolin Ke committed
3249
3250
        return self.weight

3251
    def get_init_score(self) -> Optional[_LGBM_InitScoreType]:
3252
        """Get the initial score of the Dataset.
Guolin Ke's avatar
Guolin Ke committed
3253
3254
3255

        Returns
        -------
3256
        init_score : list, list of lists (for multi-class task), numpy array, pandas Series, pandas DataFrame (for multi-class task), or None
3257
            Init score of Booster.
3258
            For a constructed ``Dataset``, this will only return ``None`` or a numpy array.
Guolin Ke's avatar
Guolin Ke committed
3259
        """
3260
        if self.init_score is None:
3261
            self.init_score = self.get_field("init_score")
Guolin Ke's avatar
Guolin Ke committed
3262
3263
        return self.init_score

3264
    def get_data(self) -> Optional[_LGBM_TrainDataType]:
3265
3266
3267
3268
        """Get the raw data of the Dataset.

        Returns
        -------
3269
        data : str, pathlib.Path, numpy array, pandas DataFrame, H2O DataTable's Frame (deprecated), scipy.sparse, Sequence, list of Sequence or list of numpy array or None
3270
3271
            Raw data used in the Dataset construction.
        """
3272
        if self._handle is None:
3273
            raise Exception("Cannot get data before construct Dataset")
3274
        if self._need_slice and self.used_indices is not None and self.reference is not None:
Guolin Ke's avatar
Guolin Ke committed
3275
3276
            self.data = self.reference.data
            if self.data is not None:
3277
                if isinstance(self.data, (np.ndarray, scipy.sparse.spmatrix)):
Guolin Ke's avatar
Guolin Ke committed
3278
                    self.data = self.data[self.used_indices, :]
3279
                elif isinstance(self.data, pd_DataFrame):
Guolin Ke's avatar
Guolin Ke committed
3280
                    self.data = self.data.iloc[self.used_indices].copy()
3281
                elif isinstance(self.data, dt_DataTable):
3282
                    _emit_datatable_deprecation_warning()
Guolin Ke's avatar
Guolin Ke committed
3283
                    self.data = self.data[self.used_indices, :]
3284
3285
                elif isinstance(self.data, Sequence):
                    self.data = self.data[self.used_indices]
3286
                elif _is_list_of_sequences(self.data) and len(self.data) > 0:
3287
                    self.data = np.array(list(self._yield_row_from_seqlist(self.data, self.used_indices)))
Guolin Ke's avatar
Guolin Ke committed
3288
                else:
3289
3290
3291
                    _log_warning(
                        f"Cannot subset {type(self.data).__name__} type of raw data.\n" "Returning original raw data"
                    )
3292
            self._need_slice = False
Guolin Ke's avatar
Guolin Ke committed
3293
        if self.data is None:
3294
3295
3296
3297
            raise LightGBMError(
                "Cannot call `get_data` after freed raw data, "
                "set free_raw_data=False when construct Dataset to avoid this."
            )
3298
3299
        return self.data

3300
    def get_group(self) -> Optional[_LGBM_GroupType]:
3301
        """Get the group of the Dataset.
Guolin Ke's avatar
Guolin Ke committed
3302
3303
3304

        Returns
        -------
3305
        group : list, numpy 1-D array, pandas Series or None
3306
3307
3308
            Group/query data.
            Only used in the learning-to-rank task.
            sum(group) = n_samples.
3309
3310
            For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
            where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
3311
            For a constructed ``Dataset``, this will only return ``None`` or a numpy array.
Guolin Ke's avatar
Guolin Ke committed
3312
        """
3313
        if self.group is None:
3314
            self.group = self.get_field("group")
Guolin Ke's avatar
Guolin Ke committed
3315
3316
            if self.group is not None:
                # group data from LightGBM is boundaries data, need to convert to group size
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Nikita Titov committed
3317
                self.group = np.diff(self.group)
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Guolin Ke committed
3318
3319
        return self.group

3320
    def get_position(self) -> Optional[_LGBM_PositionType]:
3321
3322
3323
3324
        """Get the position of the Dataset.

        Returns
        -------
3325
        position : numpy 1-D array, pandas Series or None
3326
            Position of items used in unbiased learning-to-rank task.
3327
            For a constructed ``Dataset``, this will only return ``None`` or a numpy array.
3328
3329
        """
        if self.position is None:
3330
            self.position = self.get_field("position")
3331
3332
        return self.position

3333
    def num_data(self) -> int:
3334
        """Get the number of rows in the Dataset.
Guolin Ke's avatar
Guolin Ke committed
3335
3336
3337

        Returns
        -------
3338
3339
        number_of_rows : int
            The number of rows in the Dataset.
Guolin Ke's avatar
Guolin Ke committed
3340
        """
3341
        if self._handle is not None:
3342
            ret = ctypes.c_int(0)
3343
3344
3345
3346
3347
3348
            _safe_call(
                _LIB.LGBM_DatasetGetNumData(
                    self._handle,
                    ctypes.byref(ret),
                )
            )
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wxchan committed
3349
            return ret.value
Guolin Ke's avatar
Guolin Ke committed
3350
        else:
3351
            raise LightGBMError("Cannot get num_data before construct dataset")
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Guolin Ke committed
3352

3353
    def num_feature(self) -> int:
3354
        """Get the number of columns (features) in the Dataset.
Guolin Ke's avatar
Guolin Ke committed
3355
3356
3357

        Returns
        -------
3358
3359
        number_of_columns : int
            The number of columns (features) in the Dataset.
Guolin Ke's avatar
Guolin Ke committed
3360
        """
3361
        if self._handle is not None:
3362
            ret = ctypes.c_int(0)
3363
3364
3365
3366
3367
3368
            _safe_call(
                _LIB.LGBM_DatasetGetNumFeature(
                    self._handle,
                    ctypes.byref(ret),
                )
            )
wxchan's avatar
wxchan committed
3369
            return ret.value
Guolin Ke's avatar
Guolin Ke committed
3370
        else:
3371
            raise LightGBMError("Cannot get num_feature before construct dataset")
Guolin Ke's avatar
Guolin Ke committed
3372

3373
    def feature_num_bin(self, feature: Union[int, str]) -> int:
3374
3375
        """Get the number of bins for a feature.

3376
3377
        .. versionadded:: 4.0.0

3378
3379
        Parameters
        ----------
3380
3381
        feature : int or str
            Index or name of the feature.
3382
3383
3384
3385
3386
3387

        Returns
        -------
        number_of_bins : int
            The number of constructed bins for the feature in the Dataset.
        """
3388
        if self._handle is not None:
3389
            if isinstance(feature, str):
3390
3391
3392
                feature_index = self.feature_name.index(feature)
            else:
                feature_index = feature
3393
            ret = ctypes.c_int(0)
3394
3395
3396
3397
3398
3399
3400
            _safe_call(
                _LIB.LGBM_DatasetGetFeatureNumBin(
                    self._handle,
                    ctypes.c_int(feature_index),
                    ctypes.byref(ret),
                )
            )
3401
3402
3403
3404
            return ret.value
        else:
            raise LightGBMError("Cannot get feature_num_bin before construct dataset")

3405
    def get_ref_chain(self, ref_limit: int = 100) -> Set["Dataset"]:
3406
3407
3408
3409
3410
        """Get a chain of Dataset objects.

        Starts with r, then goes to r.reference (if exists),
        then to r.reference.reference, etc.
        until we hit ``ref_limit`` or a reference loop.
3411
3412
3413
3414
3415

        Parameters
        ----------
        ref_limit : int, optional (default=100)
            The limit number of references.
3416
3417
3418

        Returns
        -------
3419
3420
3421
        ref_chain : set of Dataset
            Chain of references of the Datasets.
        """
3422
        head = self
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        ref_chain: Set[Dataset] = set()
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        while len(ref_chain) < ref_limit:
            if isinstance(head, Dataset):
3426
                ref_chain.add(head)
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                if (head.reference is not None) and (head.reference not in ref_chain):
                    head = head.reference
                else:
                    break
            else:
                break
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3433
        return ref_chain
3434

3435
    def add_features_from(self, other: "Dataset") -> "Dataset":
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        """Add features from other Dataset to the current Dataset.

        Both Datasets must be constructed before calling this method.

        Parameters
        ----------
        other : Dataset
            The Dataset to take features from.

        Returns
        -------
        self : Dataset
            Dataset with the new features added.
        """
3450
        if self._handle is None or other._handle is None:
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            raise ValueError("Both source and target Datasets must be constructed before adding features")
        _safe_call(
            _LIB.LGBM_DatasetAddFeaturesFrom(
                self._handle,
                other._handle,
            )
        )
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        was_none = self.data is None
        old_self_data_type = type(self.data).__name__
        if other.data is None:
            self.data = None
        elif self.data is not None:
            if isinstance(self.data, np.ndarray):
                if isinstance(other.data, np.ndarray):
                    self.data = np.hstack((self.data, other.data))
3466
                elif isinstance(other.data, scipy.sparse.spmatrix):
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3467
                    self.data = np.hstack((self.data, other.data.toarray()))
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                elif isinstance(other.data, pd_DataFrame):
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                    self.data = np.hstack((self.data, other.data.values))
3470
                elif isinstance(other.data, dt_DataTable):
3471
                    _emit_datatable_deprecation_warning()
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                    self.data = np.hstack((self.data, other.data.to_numpy()))
                else:
                    self.data = None
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            elif isinstance(self.data, scipy.sparse.spmatrix):
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                sparse_format = self.data.getformat()
3477
                if isinstance(other.data, (np.ndarray, scipy.sparse.spmatrix)):
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                    self.data = scipy.sparse.hstack((self.data, other.data), format=sparse_format)
3479
                elif isinstance(other.data, pd_DataFrame):
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                    self.data = scipy.sparse.hstack((self.data, other.data.values), format=sparse_format)
3481
                elif isinstance(other.data, dt_DataTable):
3482
                    _emit_datatable_deprecation_warning()
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                    self.data = scipy.sparse.hstack((self.data, other.data.to_numpy()), format=sparse_format)
                else:
                    self.data = None
3486
            elif isinstance(self.data, pd_DataFrame):
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                if not PANDAS_INSTALLED:
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                    raise LightGBMError(
                        "Cannot add features to DataFrame type of raw data "
                        "without pandas installed. "
                        "Install pandas and restart your session."
                    )
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3493
                if isinstance(other.data, np.ndarray):
3494
                    self.data = concat((self.data, pd_DataFrame(other.data)), axis=1, ignore_index=True)
3495
                elif isinstance(other.data, scipy.sparse.spmatrix):
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                    self.data = concat((self.data, pd_DataFrame(other.data.toarray())), axis=1, ignore_index=True)
3497
                elif isinstance(other.data, pd_DataFrame):
3498
                    self.data = concat((self.data, other.data), axis=1, ignore_index=True)
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                elif isinstance(other.data, dt_DataTable):
3500
                    _emit_datatable_deprecation_warning()
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                    self.data = concat((self.data, pd_DataFrame(other.data.to_numpy())), axis=1, ignore_index=True)
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                else:
                    self.data = None
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            elif isinstance(self.data, dt_DataTable):
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                _emit_datatable_deprecation_warning()
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3506
                if isinstance(other.data, np.ndarray):
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                    self.data = dt_DataTable(np.hstack((self.data.to_numpy(), other.data)))
3508
                elif isinstance(other.data, scipy.sparse.spmatrix):
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                    self.data = dt_DataTable(np.hstack((self.data.to_numpy(), other.data.toarray())))
                elif isinstance(other.data, pd_DataFrame):
                    self.data = dt_DataTable(np.hstack((self.data.to_numpy(), other.data.values)))
                elif isinstance(other.data, dt_DataTable):
                    self.data = dt_DataTable(np.hstack((self.data.to_numpy(), other.data.to_numpy())))
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                else:
                    self.data = None
            else:
                self.data = None
        if self.data is None:
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            err_msg = (
                f"Cannot add features from {type(other.data).__name__} type of raw data to "
                f"{old_self_data_type} type of raw data.\n"
            )
            err_msg += (
                "Set free_raw_data=False when construct Dataset to avoid this" if was_none else "Freeing raw data"
            )
3526
            _log_warning(err_msg)
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3527
        self.feature_name = self.get_feature_name()
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        _log_warning(
            "Reseting categorical features.\n"
            "You can set new categorical features via ``set_categorical_feature`` method"
        )
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        self.categorical_feature = "auto"
        self.pandas_categorical = None
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        return self

3536
    def _dump_text(self, filename: Union[str, Path]) -> "Dataset":
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        """Save Dataset to a text file.

        This format cannot be loaded back in by LightGBM, but is useful for debugging purposes.

        Parameters
        ----------
3543
        filename : str or pathlib.Path
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            Name of the output file.

        Returns
        -------
        self : Dataset
            Returns self.
        """
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        _safe_call(
            _LIB.LGBM_DatasetDumpText(
                self.construct()._handle,
                _c_str(str(filename)),
            )
        )
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        return self

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3559

3560
3561
_LGBM_CustomObjectiveFunction = Callable[
    [np.ndarray, Dataset],
3562
    Tuple[np.ndarray, np.ndarray],
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]
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_LGBM_CustomEvalFunction = Union[
    Callable[
        [np.ndarray, Dataset],
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        _LGBM_EvalFunctionResultType,
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    ],
    Callable[
        [np.ndarray, Dataset],
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        List[_LGBM_EvalFunctionResultType],
    ],
3573
]
3574
3575


3576
class Booster:
3577
    """Booster in LightGBM."""
3578

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    def __init__(
        self,
        params: Optional[Dict[str, Any]] = None,
        train_set: Optional[Dataset] = None,
        model_file: Optional[Union[str, Path]] = None,
3584
        model_str: Optional[str] = None,
3585
    ):
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        """Initialize the Booster.
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        Parameters
        ----------
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3590
        params : dict or None, optional (default=None)
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            Parameters for Booster.
        train_set : Dataset or None, optional (default=None)
            Training dataset.
3594
        model_file : str, pathlib.Path or None, optional (default=None)
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            Path to the model file.
3596
        model_str : str or None, optional (default=None)
3597
            Model will be loaded from this string.
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        """
3599
        self._handle = ctypes.c_void_p()
3600
        self._network = False
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3601
        self.__need_reload_eval_info = True
3602
        self._train_data_name = "training"
3603
        self.__set_objective_to_none = False
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3604
        self.best_iteration = -1
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        self.best_score: _LGBM_BoosterBestScoreType = {}
3606
        params = {} if params is None else deepcopy(params)
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        if train_set is not None:
3608
            # Training task
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            if not isinstance(train_set, Dataset):
3610
                raise TypeError(f"Training data should be Dataset instance, met {type(train_set).__name__}")
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            params = _choose_param_value(
                main_param_name="machines",
                params=params,
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                default_value=None,
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            )
            # if "machines" is given, assume user wants to do distributed learning, and set up network
            if params["machines"] is None:
                params.pop("machines", None)
            else:
                machines = params["machines"]
                if isinstance(machines, str):
3622
                    num_machines_from_machine_list = len(machines.split(","))
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3624
                elif isinstance(machines, (list, set)):
                    num_machines_from_machine_list = len(machines)
3625
                    machines = ",".join(machines)
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                else:
                    raise ValueError("Invalid machines in params.")

                params = _choose_param_value(
                    main_param_name="num_machines",
                    params=params,
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                    default_value=num_machines_from_machine_list,
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                )
                params = _choose_param_value(
                    main_param_name="local_listen_port",
                    params=params,
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                    default_value=12400,
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                )
                self.set_network(
                    machines=machines,
                    local_listen_port=params["local_listen_port"],
                    listen_time_out=params.get("time_out", 120),
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                    num_machines=params["num_machines"],
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                )
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            # construct booster object
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            train_set.construct()
            # copy the parameters from train_set
            params.update(train_set.get_params())
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            params_str = _param_dict_to_str(params)
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            _safe_call(
                _LIB.LGBM_BoosterCreate(
                    train_set._handle,
                    _c_str(params_str),
                    ctypes.byref(self._handle),
                )
            )
3657
            # save reference to data
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3658
            self.train_set = train_set
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            self.valid_sets: List[Dataset] = []
            self.name_valid_sets: List[str] = []
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3661
            self.__num_dataset = 1
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            self.__init_predictor = train_set._predictor
            if self.__init_predictor is not None:
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                _safe_call(
                    _LIB.LGBM_BoosterMerge(
                        self._handle,
                        self.__init_predictor._handle,
                    )
                )
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3670
            out_num_class = ctypes.c_int(0)
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            _safe_call(
                _LIB.LGBM_BoosterGetNumClasses(
                    self._handle,
                    ctypes.byref(out_num_class),
                )
            )
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3677
            self.__num_class = out_num_class.value
3678
            # buffer for inner predict
3679
            self.__inner_predict_buffer: List[Optional[np.ndarray]] = [None]
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3681
            self.__is_predicted_cur_iter = [False]
            self.__get_eval_info()
3682
            self.pandas_categorical = train_set.pandas_categorical
3683
            self.train_set_version = train_set.version
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3684
        elif model_file is not None:
3685
            # Prediction task
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3686
            out_num_iterations = ctypes.c_int(0)
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            _safe_call(
                _LIB.LGBM_BoosterCreateFromModelfile(
                    _c_str(str(model_file)),
                    ctypes.byref(out_num_iterations),
                    ctypes.byref(self._handle),
                )
            )
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3694
            out_num_class = ctypes.c_int(0)
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            _safe_call(
                _LIB.LGBM_BoosterGetNumClasses(
                    self._handle,
                    ctypes.byref(out_num_class),
                )
            )
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3701
            self.__num_class = out_num_class.value
3702
            self.pandas_categorical = _load_pandas_categorical(file_name=model_file)
3703
            if params:
3704
                _log_warning("Ignoring params argument, using parameters from model file.")
3705
            params = self._get_loaded_param()
3706
        elif model_str is not None:
3707
            self.model_from_string(model_str)
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3708
        else:
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            raise TypeError(
                "Need at least one training dataset or model file or model string " "to create Booster instance"
            )
3712
        self.params = params
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3713

3714
    def __del__(self) -> None:
3715
        try:
3716
            if self._network:
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                self.free_network()
        except AttributeError:
            pass
        try:
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            if self._handle is not None:
                _safe_call(_LIB.LGBM_BoosterFree(self._handle))
3723
3724
        except AttributeError:
            pass
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3725

3726
    def __copy__(self) -> "Booster":
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3727
3728
        return self.__deepcopy__(None)

3729
    def __deepcopy__(self, *args: Any, **kwargs: Any) -> "Booster":
3730
        model_str = self.model_to_string(num_iteration=-1)
3731
        return Booster(model_str=model_str)
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3732

3733
    def __getstate__(self) -> Dict[str, Any]:
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        this = self.__dict__.copy()
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        handle = this["_handle"]
        this.pop("train_set", None)
        this.pop("valid_sets", None)
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        if handle is not None:
3739
            this["_handle"] = self.model_to_string(num_iteration=-1)
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        return this

3742
    def __setstate__(self, state: Dict[str, Any]) -> None:
3743
        model_str = state.get("_handle", state.get("handle", None))
3744
        if model_str is not None:
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3745
            handle = ctypes.c_void_p()
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3746
            out_num_iterations = ctypes.c_int(0)
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            _safe_call(
                _LIB.LGBM_BoosterLoadModelFromString(
                    _c_str(model_str),
                    ctypes.byref(out_num_iterations),
                    ctypes.byref(handle),
                )
            )
            state["_handle"] = handle
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        self.__dict__.update(state)

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    def _get_loaded_param(self) -> Dict[str, Any]:
        buffer_len = 1 << 20
        tmp_out_len = ctypes.c_int64(0)
        string_buffer = ctypes.create_string_buffer(buffer_len)
3761
        ptr_string_buffer = ctypes.c_char_p(ctypes.addressof(string_buffer))
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        _safe_call(
            _LIB.LGBM_BoosterGetLoadedParam(
                self._handle,
                ctypes.c_int64(buffer_len),
                ctypes.byref(tmp_out_len),
                ptr_string_buffer,
            )
        )
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        actual_len = tmp_out_len.value
        # if buffer length is not long enough, re-allocate a buffer
        if actual_len > buffer_len:
            string_buffer = ctypes.create_string_buffer(actual_len)
3774
            ptr_string_buffer = ctypes.c_char_p(ctypes.addressof(string_buffer))
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            _safe_call(
                _LIB.LGBM_BoosterGetLoadedParam(
                    self._handle,
                    ctypes.c_int64(actual_len),
                    ctypes.byref(tmp_out_len),
                    ptr_string_buffer,
                )
            )
        return json.loads(string_buffer.value.decode("utf-8"))
3784

3785
    def free_dataset(self) -> "Booster":
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        """Free Booster's Datasets.

        Returns
        -------
        self : Booster
            Booster without Datasets.
        """
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        self.__dict__.pop("train_set", None)
        self.__dict__.pop("valid_sets", None)
3795
        self.__num_dataset = 0
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3796
        return self
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3797

3798
    def _free_buffer(self) -> "Booster":
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        self.__inner_predict_buffer = []
        self.__is_predicted_cur_iter = []
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        return self
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    def set_network(
        self,
        machines: Union[List[str], Set[str], str],
        local_listen_port: int = 12400,
        listen_time_out: int = 120,
3808
        num_machines: int = 1,
3809
    ) -> "Booster":
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        """Set the network configuration.

        Parameters
        ----------
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        machines : list, set or str
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            Names of machines.
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3816
        local_listen_port : int, optional (default=12400)
3817
            TCP listen port for local machines.
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        listen_time_out : int, optional (default=120)
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            Socket time-out in minutes.
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3820
        num_machines : int, optional (default=1)
3821
            The number of machines for distributed learning application.
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        Returns
        -------
        self : Booster
            Booster with set network.
3827
        """
3828
        if isinstance(machines, (list, set)):
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            machines = ",".join(machines)
        _safe_call(
            _LIB.LGBM_NetworkInit(
                _c_str(machines),
                ctypes.c_int(local_listen_port),
                ctypes.c_int(listen_time_out),
                ctypes.c_int(num_machines),
            )
        )
3838
        self._network = True
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3839
        return self
3840

3841
    def free_network(self) -> "Booster":
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3848
        """Free Booster's network.

        Returns
        -------
        self : Booster
            Booster with freed network.
        """
3849
        _safe_call(_LIB.LGBM_NetworkFree())
3850
        self._network = False
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3851
        return self
3852

3853
    def trees_to_dataframe(self) -> pd_DataFrame:
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3855
        """Parse the fitted model and return in an easy-to-read pandas DataFrame.

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        The returned DataFrame has the following columns.

            - ``tree_index`` : int64, which tree a node belongs to. 0-based, so a value of ``6``, for example, means "this node is in the 7th tree".
            - ``node_depth`` : int64, how far a node is from the root of the tree. The root node has a value of ``1``, its direct children are ``2``, etc.
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            - ``node_index`` : str, unique identifier for a node.
            - ``left_child`` : str, ``node_index`` of the child node to the left of a split. ``None`` for leaf nodes.
            - ``right_child`` : str, ``node_index`` of the child node to the right of a split. ``None`` for leaf nodes.
            - ``parent_index`` : str, ``node_index`` of this node's parent. ``None`` for the root node.
            - ``split_feature`` : str, name of the feature used for splitting. ``None`` for leaf nodes.
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3866
            - ``split_gain`` : float64, gain from adding this split to the tree. ``NaN`` for leaf nodes.
            - ``threshold`` : float64, value of the feature used to decide which side of the split a record will go down. ``NaN`` for leaf nodes.
3867
            - ``decision_type`` : str, logical operator describing how to compare a value to ``threshold``.
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3869
              For example, ``split_feature = "Column_10", threshold = 15, decision_type = "<="`` means that
              records where ``Column_10 <= 15`` follow the left side of the split, otherwise follows the right side of the split. ``None`` for leaf nodes.
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3871
            - ``missing_direction`` : str, split direction that missing values should go to. ``None`` for leaf nodes.
            - ``missing_type`` : str, describes what types of values are treated as missing.
3872
            - ``value`` : float64, predicted value for this leaf node, multiplied by the learning rate.
3873
            - ``weight`` : float64 or int64, sum of Hessian (second-order derivative of objective), summed over observations that fall in this node.
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3875
            - ``count`` : int64, number of records in the training data that fall into this node.

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        Returns
        -------
        result : pandas DataFrame
            Returns a pandas DataFrame of the parsed model.
        """
        if not PANDAS_INSTALLED:
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3883
3884
3885
            raise LightGBMError(
                "This method cannot be run without pandas installed. "
                "You must install pandas and restart your session to use this method."
            )
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3887

        if self.num_trees() == 0:
3888
            raise LightGBMError("There are no trees in this Booster and thus nothing to parse")
3889

3890
        def _is_split_node(tree: Dict[str, Any]) -> bool:
3891
            return "split_index" in tree.keys()
3892

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        def create_node_record(
            tree: Dict[str, Any],
            node_depth: int = 1,
            tree_index: Optional[int] = None,
            feature_names: Optional[List[str]] = None,
3898
            parent_node: Optional[str] = None,
3899
3900
3901
        ) -> Dict[str, Any]:
            def _get_node_index(
                tree: Dict[str, Any],
3902
                tree_index: Optional[int],
3903
            ) -> str:
3904
                tree_num = f"{tree_index}-" if tree_index is not None else ""
3905
                is_split = _is_split_node(tree)
3906
                node_type = "S" if is_split else "L"
3907
                # if a single node tree it won't have `leaf_index` so return 0
3908
                node_num = tree.get("split_index" if is_split else "leaf_index", 0)
3909
                return f"{tree_num}{node_type}{node_num}"
3910

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            def _get_split_feature(
                tree: Dict[str, Any],
3913
                feature_names: Optional[List[str]],
3914
            ) -> Optional[str]:
3915
3916
                if _is_split_node(tree):
                    if feature_names is not None:
3917
                        feature_name = feature_names[tree["split_feature"]]
3918
                    else:
3919
                        feature_name = tree["split_feature"]
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3923
                else:
                    feature_name = None
                return feature_name

3924
            def _is_single_node_tree(tree: Dict[str, Any]) -> bool:
3925
                return set(tree.keys()) == {"leaf_value", "leaf_count"}
3926
3927

            # Create the node record, and populate universal data members
3928
            node: Dict[str, Union[int, str, None]] = OrderedDict()
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            node["tree_index"] = tree_index
            node["node_depth"] = node_depth
            node["node_index"] = _get_node_index(tree, tree_index)
            node["left_child"] = None
            node["right_child"] = None
            node["parent_index"] = parent_node
            node["split_feature"] = _get_split_feature(tree, feature_names)
            node["split_gain"] = None
            node["threshold"] = None
            node["decision_type"] = None
            node["missing_direction"] = None
            node["missing_type"] = None
            node["value"] = None
            node["weight"] = None
            node["count"] = None
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            # Update values to reflect node type (leaf or split)
            if _is_split_node(tree):
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                node["left_child"] = _get_node_index(tree["left_child"], tree_index)
                node["right_child"] = _get_node_index(tree["right_child"], tree_index)
                node["split_gain"] = tree["split_gain"]
                node["threshold"] = tree["threshold"]
                node["decision_type"] = tree["decision_type"]
                node["missing_direction"] = "left" if tree["default_left"] else "right"
                node["missing_type"] = tree["missing_type"]
                node["value"] = tree["internal_value"]
                node["weight"] = tree["internal_weight"]
                node["count"] = tree["internal_count"]
3957
            else:
3958
                node["value"] = tree["leaf_value"]
3959
                if not _is_single_node_tree(tree):
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3961
                    node["weight"] = tree["leaf_weight"]
                    node["count"] = tree["leaf_count"]
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            return node

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        def tree_dict_to_node_list(
            tree: Dict[str, Any],
            node_depth: int = 1,
            tree_index: Optional[int] = None,
            feature_names: Optional[List[str]] = None,
3970
            parent_node: Optional[str] = None,
3971
        ) -> List[Dict[str, Any]]:
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            node = create_node_record(
                tree=tree,
                node_depth=node_depth,
                tree_index=tree_index,
                feature_names=feature_names,
                parent_node=parent_node,
            )
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            res = [node]

            if _is_split_node(tree):
                # traverse the next level of the tree
3984
                children = ["left_child", "right_child"]
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3986
                for child in children:
                    subtree_list = tree_dict_to_node_list(
3987
                        tree=tree[child],
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                        node_depth=node_depth + 1,
                        tree_index=tree_index,
                        feature_names=feature_names,
3991
                        parent_node=node["node_index"],
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                    )
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                    # In tree format, "subtree_list" is a list of node records (dicts),
                    # and we add node to the list.
                    res.extend(subtree_list)
            return res

        model_dict = self.dump_model()
3999
        feature_names = model_dict["feature_names"]
4000
        model_list = []
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        for tree in model_dict["tree_info"]:
            model_list.extend(
                tree_dict_to_node_list(
                    tree=tree["tree_structure"], tree_index=tree["tree_index"], feature_names=feature_names
                )
            )
4007

4008
        return pd_DataFrame(model_list, columns=model_list[0].keys())
4009

4010
    def set_train_data_name(self, name: str) -> "Booster":
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4014
        """Set the name to the training Dataset.

        Parameters
        ----------
4015
        name : str
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            Name for the training Dataset.

        Returns
        -------
        self : Booster
            Booster with set training Dataset name.
4022
        """
4023
        self._train_data_name = name
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4024
        return self
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4025

4026
    def add_valid(self, data: Dataset, name: str) -> "Booster":
4027
        """Add validation data.
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        Parameters
        ----------
        data : Dataset
4032
            Validation data.
4033
        name : str
4034
            Name of validation data.
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        Returns
        -------
        self : Booster
            Booster with set validation data.
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4040
        """
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4041
        if not isinstance(data, Dataset):
4042
            raise TypeError(f"Validation data should be Dataset instance, met {type(data).__name__}")
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4043
        if data._predictor is not self.__init_predictor:
4044
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            raise LightGBMError("Add validation data failed, " "you should use same predictor for these data")
        _safe_call(
            _LIB.LGBM_BoosterAddValidData(
                self._handle,
                data.construct()._handle,
            )
        )
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        self.valid_sets.append(data)
        self.name_valid_sets.append(name)
        self.__num_dataset += 1
        self.__inner_predict_buffer.append(None)
        self.__is_predicted_cur_iter.append(False)
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4056
        return self
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4057

4058
    def reset_parameter(self, params: Dict[str, Any]) -> "Booster":
4059
        """Reset parameters of Booster.
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        Parameters
        ----------
        params : dict
4064
            New parameters for Booster.
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        Returns
        -------
        self : Booster
            Booster with new parameters.
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4070
        """
4071
        params_str = _param_dict_to_str(params)
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4072
        if params_str:
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            _safe_call(
                _LIB.LGBM_BoosterResetParameter(
                    self._handle,
                    _c_str(params_str),
                )
            )
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        self.params.update(params)
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4080
        return self
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4081

4082
4083
4084
    def update(
        self,
        train_set: Optional[Dataset] = None,
4085
        fobj: Optional[_LGBM_CustomObjectiveFunction] = None,
4086
    ) -> bool:
Nikita Titov's avatar
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4087
        """Update Booster for one iteration.
4088

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        Parameters
        ----------
4091
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4094
        train_set : Dataset or None, optional (default=None)
            Training data.
            If None, last training data is used.
        fobj : callable or None, optional (default=None)
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4095
            Customized objective function.
4096
4097
4098
            Should accept two parameters: preds, train_data,
            and return (grad, hess).

4099
                preds : numpy 1-D array or numpy 2-D array (for multi-class task)
4100
                    The predicted values.
4101
4102
                    Predicted values are returned before any transformation,
                    e.g. they are raw margin instead of probability of positive class for binary task.
4103
4104
                train_data : Dataset
                    The training dataset.
4105
                grad : numpy 1-D array or numpy 2-D array (for multi-class task)
4106
4107
                    The value of the first order derivative (gradient) of the loss
                    with respect to the elements of preds for each sample point.
4108
                hess : numpy 1-D array or numpy 2-D array (for multi-class task)
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4110
                    The value of the second order derivative (Hessian) of the loss
                    with respect to the elements of preds for each sample point.
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4111

4112
            For multi-class task, preds are numpy 2-D array of shape = [n_samples, n_classes],
4113
            and grad and hess should be returned in the same format.
4114

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        Returns
        -------
4117
4118
        is_finished : bool
            Whether the update was successfully finished.
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4119
        """
4120
        # need reset training data
4121
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4124
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4126
        if train_set is None and self.train_set_version != self.train_set.version:
            train_set = self.train_set
            is_the_same_train_set = False
        else:
            is_the_same_train_set = train_set is self.train_set and self.train_set_version == train_set.version
        if train_set is not None and not is_the_same_train_set:
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4127
            if not isinstance(train_set, Dataset):
4128
                raise TypeError(f"Training data should be Dataset instance, met {type(train_set).__name__}")
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4129
            if train_set._predictor is not self.__init_predictor:
4130
                raise LightGBMError("Replace training data failed, " "you should use same predictor for these data")
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4131
            self.train_set = train_set
4132
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4134
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4137
            _safe_call(
                _LIB.LGBM_BoosterResetTrainingData(
                    self._handle,
                    self.train_set.construct()._handle,
                )
            )
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4138
            self.__inner_predict_buffer[0] = None
4139
            self.train_set_version = self.train_set.version
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4140
4141
        is_finished = ctypes.c_int(0)
        if fobj is None:
4142
            if self.__set_objective_to_none:
4143
4144
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4146
4147
4148
4149
                raise LightGBMError("Cannot update due to null objective function.")
            _safe_call(
                _LIB.LGBM_BoosterUpdateOneIter(
                    self._handle,
                    ctypes.byref(is_finished),
                )
            )
4150
            self.__is_predicted_cur_iter = [False for _ in range(self.__num_dataset)]
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4152
            return is_finished.value == 1
        else:
4153
            if not self.__set_objective_to_none:
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4154
                self.reset_parameter({"objective": "none"}).__set_objective_to_none = True
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4155
4156
4157
            grad, hess = fobj(self.__inner_predict(0), self.train_set)
            return self.__boost(grad, hess)

4158
4159
4160
    def __boost(
        self,
        grad: np.ndarray,
4161
        hess: np.ndarray,
4162
    ) -> bool:
4163
        """Boost Booster for one iteration with customized gradient statistics.
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4164

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4166
        .. note::

4167
4168
            Score is returned before any transformation,
            e.g. it is raw margin instead of probability of positive class for binary task.
4169
            For multi-class task, score are numpy 2-D array of shape = [n_samples, n_classes],
4170
            and grad and hess should be returned in the same format.
4171

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4173
        Parameters
        ----------
4174
        grad : numpy 1-D array or numpy 2-D array (for multi-class task)
4175
4176
            The value of the first order derivative (gradient) of the loss
            with respect to the elements of score for each sample point.
4177
        hess : numpy 1-D array or numpy 2-D array (for multi-class task)
4178
4179
            The value of the second order derivative (Hessian) of the loss
            with respect to the elements of score for each sample point.
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4182

        Returns
        -------
Nikita Titov's avatar
Nikita Titov committed
4183
4184
        is_finished : bool
            Whether the boost was successfully finished.
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4185
        """
4186
        if self.__num_class > 1:
4187
4188
4189
4190
            grad = grad.ravel(order="F")
            hess = hess.ravel(order="F")
        grad = _list_to_1d_numpy(grad, dtype=np.float32, name="gradient")
        hess = _list_to_1d_numpy(hess, dtype=np.float32, name="hessian")
4191
4192
        assert grad.flags.c_contiguous
        assert hess.flags.c_contiguous
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4193
        if len(grad) != len(hess):
4194
4195
            raise ValueError(f"Lengths of gradient ({len(grad)}) and Hessian ({len(hess)}) don't match")
        num_train_data = self.train_set.num_data()
4196
        if len(grad) != num_train_data * self.__num_class:
4197
4198
4199
            raise ValueError(
                f"Lengths of gradient ({len(grad)}) and Hessian ({len(hess)}) "
                f"don't match training data length ({num_train_data}) * "
4200
                f"number of models per one iteration ({self.__num_class})"
4201
            )
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wxchan committed
4202
        is_finished = ctypes.c_int(0)
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4210
        _safe_call(
            _LIB.LGBM_BoosterUpdateOneIterCustom(
                self._handle,
                grad.ctypes.data_as(ctypes.POINTER(ctypes.c_float)),
                hess.ctypes.data_as(ctypes.POINTER(ctypes.c_float)),
                ctypes.byref(is_finished),
            )
        )
4211
        self.__is_predicted_cur_iter = [False for _ in range(self.__num_dataset)]
wxchan's avatar
wxchan committed
4212
4213
        return is_finished.value == 1

4214
    def rollback_one_iter(self) -> "Booster":
Nikita Titov's avatar
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4221
        """Rollback one iteration.

        Returns
        -------
        self : Booster
            Booster with rolled back one iteration.
        """
4222
        _safe_call(_LIB.LGBM_BoosterRollbackOneIter(self._handle))
4223
        self.__is_predicted_cur_iter = [False for _ in range(self.__num_dataset)]
Nikita Titov's avatar
Nikita Titov committed
4224
        return self
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4225

4226
    def current_iteration(self) -> int:
4227
4228
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4230
4231
4232
4233
        """Get the index of the current iteration.

        Returns
        -------
        cur_iter : int
            The index of the current iteration.
        """
Guolin Ke's avatar
Guolin Ke committed
4234
        out_cur_iter = ctypes.c_int(0)
4235
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4238
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4240
        _safe_call(
            _LIB.LGBM_BoosterGetCurrentIteration(
                self._handle,
                ctypes.byref(out_cur_iter),
            )
        )
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wxchan committed
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4242
        return out_cur_iter.value

4243
    def num_model_per_iteration(self) -> int:
4244
4245
4246
4247
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4249
4250
4251
        """Get number of models per iteration.

        Returns
        -------
        model_per_iter : int
            The number of models per iteration.
        """
        model_per_iter = ctypes.c_int(0)
4252
4253
4254
4255
4256
4257
        _safe_call(
            _LIB.LGBM_BoosterNumModelPerIteration(
                self._handle,
                ctypes.byref(model_per_iter),
            )
        )
4258
4259
        return model_per_iter.value

4260
    def num_trees(self) -> int:
4261
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4264
4265
4266
4267
4268
        """Get number of weak sub-models.

        Returns
        -------
        num_trees : int
            The number of weak sub-models.
        """
        num_trees = ctypes.c_int(0)
4269
4270
4271
4272
4273
4274
        _safe_call(
            _LIB.LGBM_BoosterNumberOfTotalModel(
                self._handle,
                ctypes.byref(num_trees),
            )
        )
4275
4276
        return num_trees.value

4277
    def upper_bound(self) -> float:
4278
4279
4280
4281
        """Get upper bound value of a model.

        Returns
        -------
4282
        upper_bound : float
4283
4284
4285
            Upper bound value of the model.
        """
        ret = ctypes.c_double(0)
4286
4287
4288
4289
4290
4291
        _safe_call(
            _LIB.LGBM_BoosterGetUpperBoundValue(
                self._handle,
                ctypes.byref(ret),
            )
        )
4292
4293
        return ret.value

4294
    def lower_bound(self) -> float:
4295
4296
4297
4298
        """Get lower bound value of a model.

        Returns
        -------
4299
        lower_bound : float
4300
4301
4302
            Lower bound value of the model.
        """
        ret = ctypes.c_double(0)
4303
4304
4305
4306
4307
4308
        _safe_call(
            _LIB.LGBM_BoosterGetLowerBoundValue(
                self._handle,
                ctypes.byref(ret),
            )
        )
4309
4310
        return ret.value

4311
4312
4313
4314
    def eval(
        self,
        data: Dataset,
        name: str,
4315
        feval: Optional[Union[_LGBM_CustomEvalFunction, List[_LGBM_CustomEvalFunction]]] = None,
4316
    ) -> List[_LGBM_BoosterEvalMethodResultType]:
4317
        """Evaluate for data.
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4318
4319
4320

        Parameters
        ----------
4321
4322
        data : Dataset
            Data for the evaluating.
4323
        name : str
4324
            Name of the data.
4325
        feval : callable, list of callable, or None, optional (default=None)
4326
            Customized evaluation function.
4327
            Each evaluation function should accept two parameters: preds, eval_data,
4328
            and return (eval_name, eval_result, is_higher_better) or list of such tuples.
4329

4330
                preds : numpy 1-D array or numpy 2-D array (for multi-class task)
4331
                    The predicted values.
4332
                    For multi-class task, preds are numpy 2-D array of shape = [n_samples, n_classes].
4333
                    If custom objective function is used, predicted values are returned before any transformation,
4334
                    e.g. they are raw margin instead of probability of positive class for binary task in this case.
4335
                eval_data : Dataset
4336
                    A ``Dataset`` to evaluate.
4337
                eval_name : str
Andrew Ziem's avatar
Andrew Ziem committed
4338
                    The name of evaluation function (without whitespace).
4339
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4342
4343
                eval_result : float
                    The eval result.
                is_higher_better : bool
                    Is eval result higher better, e.g. AUC is ``is_higher_better``.

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wxchan committed
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4345
        Returns
        -------
Nikita Titov's avatar
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4346
        result : list
4347
            List with (dataset_name, eval_name, eval_result, is_higher_better) tuples.
wxchan's avatar
wxchan committed
4348
        """
Guolin Ke's avatar
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4349
4350
        if not isinstance(data, Dataset):
            raise TypeError("Can only eval for Dataset instance")
wxchan's avatar
wxchan committed
4351
4352
4353
4354
        data_idx = -1
        if data is self.train_set:
            data_idx = 0
        else:
4355
            for i in range(len(self.valid_sets)):
wxchan's avatar
wxchan committed
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4357
4358
                if data is self.valid_sets[i]:
                    data_idx = i + 1
                    break
4359
        # need to push new valid data
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wxchan committed
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4365
        if data_idx == -1:
            self.add_valid(data, name)
            data_idx = self.__num_dataset - 1

        return self.__inner_eval(name, data_idx, feval)

4366
4367
    def eval_train(
        self,
4368
        feval: Optional[Union[_LGBM_CustomEvalFunction, List[_LGBM_CustomEvalFunction]]] = None,
4369
    ) -> List[_LGBM_BoosterEvalMethodResultType]:
4370
        """Evaluate for training data.
wxchan's avatar
wxchan committed
4371
4372
4373

        Parameters
        ----------
4374
        feval : callable, list of callable, or None, optional (default=None)
4375
            Customized evaluation function.
4376
            Each evaluation function should accept two parameters: preds, eval_data,
4377
            and return (eval_name, eval_result, is_higher_better) or list of such tuples.
4378

4379
                preds : numpy 1-D array or numpy 2-D array (for multi-class task)
4380
                    The predicted values.
4381
                    For multi-class task, preds are numpy 2-D array of shape = [n_samples, n_classes].
4382
                    If custom objective function is used, predicted values are returned before any transformation,
4383
                    e.g. they are raw margin instead of probability of positive class for binary task in this case.
Akshita Dixit's avatar
Akshita Dixit committed
4384
                eval_data : Dataset
4385
                    The training dataset.
4386
                eval_name : str
Andrew Ziem's avatar
Andrew Ziem committed
4387
                    The name of evaluation function (without whitespace).
4388
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                eval_result : float
                    The eval result.
                is_higher_better : bool
                    Is eval result higher better, e.g. AUC is ``is_higher_better``.

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        Returns
        -------
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        result : list
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            List with (train_dataset_name, eval_name, eval_result, is_higher_better) tuples.
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        """
4398
        return self.__inner_eval(self._train_data_name, 0, feval)
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    def eval_valid(
        self,
4402
        feval: Optional[Union[_LGBM_CustomEvalFunction, List[_LGBM_CustomEvalFunction]]] = None,
4403
    ) -> List[_LGBM_BoosterEvalMethodResultType]:
4404
        """Evaluate for validation data.
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        Parameters
        ----------
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        feval : callable, list of callable, or None, optional (default=None)
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            Customized evaluation function.
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            Each evaluation function should accept two parameters: preds, eval_data,
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            and return (eval_name, eval_result, is_higher_better) or list of such tuples.
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                preds : numpy 1-D array or numpy 2-D array (for multi-class task)
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                    The predicted values.
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                    For multi-class task, preds are numpy 2-D array of shape = [n_samples, n_classes].
4416
                    If custom objective function is used, predicted values are returned before any transformation,
4417
                    e.g. they are raw margin instead of probability of positive class for binary task in this case.
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                eval_data : Dataset
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                    The validation dataset.
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                eval_name : str
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                    The name of evaluation function (without whitespace).
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                eval_result : float
                    The eval result.
                is_higher_better : bool
                    Is eval result higher better, e.g. AUC is ``is_higher_better``.

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        Returns
        -------
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        result : list
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            List with (validation_dataset_name, eval_name, eval_result, is_higher_better) tuples.
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        """
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        return [
            item
            for i in range(1, self.__num_dataset)
            for item in self.__inner_eval(self.name_valid_sets[i - 1], i, feval)
        ]
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    def save_model(
        self,
        filename: Union[str, Path],
        num_iteration: Optional[int] = None,
        start_iteration: int = 0,
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        importance_type: str = "split",
4444
    ) -> "Booster":
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        """Save Booster to file.
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        Parameters
        ----------
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        filename : str or pathlib.Path
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            Filename to save Booster.
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        num_iteration : int or None, optional (default=None)
            Index of the iteration that should be saved.
            If None, if the best iteration exists, it is saved; otherwise, all iterations are saved.
            If <= 0, all iterations are saved.
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        start_iteration : int, optional (default=0)
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            Start index of the iteration that should be saved.
4457
        importance_type : str, optional (default="split")
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            What type of feature importance should be saved.
            If "split", result contains numbers of times the feature is used in a model.
            If "gain", result contains total gains of splits which use the feature.
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        Returns
        -------
        self : Booster
            Returns self.
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        """
4467
        if num_iteration is None:
4468
            num_iteration = self.best_iteration
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        importance_type_int = _FEATURE_IMPORTANCE_TYPE_MAPPER[importance_type]
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        _safe_call(
            _LIB.LGBM_BoosterSaveModel(
                self._handle,
                ctypes.c_int(start_iteration),
                ctypes.c_int(num_iteration),
                ctypes.c_int(importance_type_int),
                _c_str(str(filename)),
            )
        )
4479
        _dump_pandas_categorical(self.pandas_categorical, filename)
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        return self
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    def shuffle_models(
        self,
        start_iteration: int = 0,
4485
        end_iteration: int = -1,
4486
    ) -> "Booster":
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        """Shuffle models.
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        Parameters
        ----------
        start_iteration : int, optional (default=0)
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            The first iteration that will be shuffled.
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        end_iteration : int, optional (default=-1)
            The last iteration that will be shuffled.
4495
            If <= 0, means the last available iteration.
4496

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        Returns
        -------
        self : Booster
            Booster with shuffled models.
4501
        """
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        _safe_call(
            _LIB.LGBM_BoosterShuffleModels(
                self._handle,
                ctypes.c_int(start_iteration),
                ctypes.c_int(end_iteration),
            )
        )
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        return self
4510

4511
    def model_from_string(self, model_str: str) -> "Booster":
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        """Load Booster from a string.

        Parameters
        ----------
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        model_str : str
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            Model will be loaded from this string.

        Returns
        -------
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        self : Booster
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            Loaded Booster object.
        """
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        # ensure that existing Booster is freed before replacing it
        # with a new one createdfrom file
        _safe_call(_LIB.LGBM_BoosterFree(self._handle))
4527
        self._free_buffer()
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        self._handle = ctypes.c_void_p()
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        out_num_iterations = ctypes.c_int(0)
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        _safe_call(
            _LIB.LGBM_BoosterLoadModelFromString(
                _c_str(model_str),
                ctypes.byref(out_num_iterations),
                ctypes.byref(self._handle),
            )
        )
4537
        out_num_class = ctypes.c_int(0)
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        _safe_call(
            _LIB.LGBM_BoosterGetNumClasses(
                self._handle,
                ctypes.byref(out_num_class),
            )
        )
4544
        self.__num_class = out_num_class.value
4545
        self.pandas_categorical = _load_pandas_categorical(model_str=model_str)
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        return self

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    def model_to_string(
        self,
        num_iteration: Optional[int] = None,
        start_iteration: int = 0,
4552
        importance_type: str = "split",
4553
    ) -> str:
4554
        """Save Booster to string.
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        Parameters
        ----------
        num_iteration : int or None, optional (default=None)
            Index of the iteration that should be saved.
            If None, if the best iteration exists, it is saved; otherwise, all iterations are saved.
            If <= 0, all iterations are saved.
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        start_iteration : int, optional (default=0)
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            Start index of the iteration that should be saved.
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        importance_type : str, optional (default="split")
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            What type of feature importance should be saved.
            If "split", result contains numbers of times the feature is used in a model.
            If "gain", result contains total gains of splits which use the feature.
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        Returns
        -------
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        str_repr : str
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            String representation of Booster.
        """
4574
        if num_iteration is None:
4575
            num_iteration = self.best_iteration
4576
        importance_type_int = _FEATURE_IMPORTANCE_TYPE_MAPPER[importance_type]
4577
        buffer_len = 1 << 20
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        tmp_out_len = ctypes.c_int64(0)
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        string_buffer = ctypes.create_string_buffer(buffer_len)
4580
        ptr_string_buffer = ctypes.c_char_p(ctypes.addressof(string_buffer))
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4582
        _safe_call(
            _LIB.LGBM_BoosterSaveModelToString(
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                self._handle,
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                ctypes.c_int(start_iteration),
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                ctypes.c_int(num_iteration),
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                ctypes.c_int(importance_type_int),
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                ctypes.c_int64(buffer_len),
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                ctypes.byref(tmp_out_len),
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                ptr_string_buffer,
            )
        )
        actual_len = tmp_out_len.value
        # if buffer length is not long enough, re-allocate a buffer
        if actual_len > buffer_len:
            string_buffer = ctypes.create_string_buffer(actual_len)
            ptr_string_buffer = ctypes.c_char_p(ctypes.addressof(string_buffer))
            _safe_call(
                _LIB.LGBM_BoosterSaveModelToString(
                    self._handle,
                    ctypes.c_int(start_iteration),
                    ctypes.c_int(num_iteration),
                    ctypes.c_int(importance_type_int),
                    ctypes.c_int64(actual_len),
                    ctypes.byref(tmp_out_len),
                    ptr_string_buffer,
                )
            )
        ret = string_buffer.value.decode("utf-8")
4609
4610
        ret += _dump_pandas_categorical(self.pandas_categorical)
        return ret
4611

4612
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4615
    def dump_model(
        self,
        num_iteration: Optional[int] = None,
        start_iteration: int = 0,
4616
4617
        importance_type: str = "split",
        object_hook: Optional[Callable[[Dict[str, Any]], Dict[str, Any]]] = None,
4618
    ) -> Dict[str, Any]:
Nikita Titov's avatar
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4619
        """Dump Booster to JSON format.
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        Parameters
        ----------
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        num_iteration : int or None, optional (default=None)
            Index of the iteration that should be dumped.
            If None, if the best iteration exists, it is dumped; otherwise, all iterations are dumped.
            If <= 0, all iterations are dumped.
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Nikita Titov committed
4627
        start_iteration : int, optional (default=0)
4628
            Start index of the iteration that should be dumped.
4629
        importance_type : str, optional (default="split")
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4632
            What type of feature importance should be dumped.
            If "split", result contains numbers of times the feature is used in a model.
            If "gain", result contains total gains of splits which use the feature.
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        object_hook : callable or None, optional (default=None)
            If not None, ``object_hook`` is a function called while parsing the json
            string returned by the C API. It may be used to alter the json, to store
            specific values while building the json structure. It avoids
            walking through the structure again. It saves a significant amount
            of time if the number of trees is huge.
            Signature is ``def object_hook(node: dict) -> dict``.
            None is equivalent to ``lambda node: node``.
            See documentation of ``json.loads()`` for further details.
4642

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        Returns
        -------
4645
        json_repr : dict
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4646
            JSON format of Booster.
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4647
        """
4648
        if num_iteration is None:
4649
            num_iteration = self.best_iteration
4650
        importance_type_int = _FEATURE_IMPORTANCE_TYPE_MAPPER[importance_type]
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wxchan committed
4651
        buffer_len = 1 << 20
4652
        tmp_out_len = ctypes.c_int64(0)
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wxchan committed
4653
        string_buffer = ctypes.create_string_buffer(buffer_len)
4654
        ptr_string_buffer = ctypes.c_char_p(ctypes.addressof(string_buffer))
4655
4656
        _safe_call(
            _LIB.LGBM_BoosterDumpModel(
4657
                self._handle,
4658
                ctypes.c_int(start_iteration),
Guolin Ke's avatar
Guolin Ke committed
4659
                ctypes.c_int(num_iteration),
4660
                ctypes.c_int(importance_type_int),
4661
                ctypes.c_int64(buffer_len),
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                ctypes.byref(tmp_out_len),
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                ptr_string_buffer,
            )
        )
        actual_len = tmp_out_len.value
        # if buffer length is not long enough, reallocate a buffer
        if actual_len > buffer_len:
            string_buffer = ctypes.create_string_buffer(actual_len)
            ptr_string_buffer = ctypes.c_char_p(ctypes.addressof(string_buffer))
            _safe_call(
                _LIB.LGBM_BoosterDumpModel(
                    self._handle,
                    ctypes.c_int(start_iteration),
                    ctypes.c_int(num_iteration),
                    ctypes.c_int(importance_type_int),
                    ctypes.c_int64(actual_len),
                    ctypes.byref(tmp_out_len),
                    ptr_string_buffer,
                )
            )
        ret = json.loads(string_buffer.value.decode("utf-8"), object_hook=object_hook)
        ret["pandas_categorical"] = json.loads(
            json.dumps(
                self.pandas_categorical,
                default=_json_default_with_numpy,
            )
        )
4689
        return ret
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4692
    def predict(
        self,
4693
        data: _LGBM_PredictDataType,
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4700
        start_iteration: int = 0,
        num_iteration: Optional[int] = None,
        raw_score: bool = False,
        pred_leaf: bool = False,
        pred_contrib: bool = False,
        data_has_header: bool = False,
        validate_features: bool = False,
4701
        **kwargs: Any,
4702
    ) -> Union[np.ndarray, scipy.sparse.spmatrix, List[scipy.sparse.spmatrix]]:
4703
        """Make a prediction.
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4706

        Parameters
        ----------
4707
        data : str, pathlib.Path, numpy array, pandas DataFrame, pyarrow Table, H2O DataTable's Frame (deprecated) or scipy.sparse
4708
            Data source for prediction.
4709
            If str or pathlib.Path, it represents the path to a text file (CSV, TSV, or LibSVM).
4710
        start_iteration : int, optional (default=0)
4711
            Start index of the iteration to predict.
4712
            If <= 0, starts from the first iteration.
4713
        num_iteration : int or None, optional (default=None)
4714
4715
4716
4717
            Total number of iterations used in the prediction.
            If None, if the best iteration exists and start_iteration <= 0, the best iteration is used;
            otherwise, all iterations from ``start_iteration`` are used (no limits).
            If <= 0, all iterations from ``start_iteration`` are used (no limits).
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        raw_score : bool, optional (default=False)
            Whether to predict raw scores.
        pred_leaf : bool, optional (default=False)
            Whether to predict leaf index.
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4723
        pred_contrib : bool, optional (default=False)
            Whether to predict feature contributions.
4724

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4731
            .. note::

                If you want to get more explanations for your model's predictions using SHAP values,
                like SHAP interaction values,
                you can install the shap package (https://github.com/slundberg/shap).
                Note that unlike the shap package, with ``pred_contrib`` we return a matrix with an extra
                column, where the last column is the expected value.
4732

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        data_has_header : bool, optional (default=False)
            Whether the data has header.
4735
            Used only if data is str.
4736
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4738
        validate_features : bool, optional (default=False)
            If True, ensure that the features used to predict match the ones used to train.
            Used only if data is pandas DataFrame.
4739
4740
        **kwargs
            Other parameters for the prediction.
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        Returns
        -------
4744
        result : numpy array, scipy.sparse or list of scipy.sparse
4745
            Prediction result.
4746
            Can be sparse or a list of sparse objects (each element represents predictions for one class) for feature contributions (when ``pred_contrib=True``).
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        """
4748
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4750
4751
        predictor = _InnerPredictor.from_booster(
            booster=self,
            pred_parameter=deepcopy(kwargs),
        )
4752
        if num_iteration is None:
4753
            if start_iteration <= 0:
4754
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4756
                num_iteration = self.best_iteration
            else:
                num_iteration = -1
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        return predictor.predict(
            data=data,
            start_iteration=start_iteration,
            num_iteration=num_iteration,
            raw_score=raw_score,
            pred_leaf=pred_leaf,
            pred_contrib=pred_contrib,
            data_has_header=data_has_header,
4765
            validate_features=validate_features,
4766
        )
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4767

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4769
    def refit(
        self,
4770
        data: _LGBM_TrainDataType,
4771
        label: _LGBM_LabelType,
4772
4773
        decay_rate: float = 0.9,
        reference: Optional[Dataset] = None,
4774
4775
4776
        weight: Optional[_LGBM_WeightType] = None,
        group: Optional[_LGBM_GroupType] = None,
        init_score: Optional[_LGBM_InitScoreType] = None,
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4778
        feature_name: _LGBM_FeatureNameConfiguration = "auto",
        categorical_feature: _LGBM_CategoricalFeatureConfiguration = "auto",
4779
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4781
        dataset_params: Optional[Dict[str, Any]] = None,
        free_raw_data: bool = True,
        validate_features: bool = False,
4782
        **kwargs: Any,
4783
    ) -> "Booster":
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4787
        """Refit the existing Booster by new data.

        Parameters
        ----------
4788
        data : str, pathlib.Path, numpy array, pandas DataFrame, H2O DataTable's Frame (deprecated), scipy.sparse, Sequence, list of Sequence or list of numpy array
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Guolin Ke committed
4789
            Data source for refit.
4790
            If str or pathlib.Path, it represents the path to a text file (CSV, TSV, or LibSVM).
4791
        label : list, numpy 1-D array, pandas Series / one-column DataFrame, pyarrow Array or pyarrow ChunkedArray
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Guolin Ke committed
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4793
            Label for refit.
        decay_rate : float, optional (default=0.9)
4794
4795
            Decay rate of refit,
            will use ``leaf_output = decay_rate * old_leaf_output + (1.0 - decay_rate) * new_leaf_output`` to refit trees.
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4797
        reference : Dataset or None, optional (default=None)
            Reference for ``data``.
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4800

            .. versionadded:: 4.0.0

4801
        weight : list, numpy 1-D array, pandas Series, pyarrow Array, pyarrow ChunkedArray or None, optional (default=None)
4802
            Weight for each ``data`` instance. Weights should be non-negative.
4803
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4805

            .. versionadded:: 4.0.0

4806
        group : list, numpy 1-D array, pandas Series, pyarrow Array, pyarrow ChunkedArray or None, optional (default=None)
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4810
4811
            Group/query size for ``data``.
            Only used in the learning-to-rank task.
            sum(group) = n_samples.
            For example, if you have a 100-document dataset with ``group = [10, 20, 40, 10, 10, 10]``, that means that you have 6 groups,
            where the first 10 records are in the first group, records 11-30 are in the second group, records 31-70 are in the third group, etc.
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            .. versionadded:: 4.0.0

4815
        init_score : list, list of lists (for multi-class task), numpy array, pandas Series, pandas DataFrame (for multi-class task), pyarrow Array, pyarrow ChunkedArray, pyarrow Table (for multi-class task) or None, optional (default=None)
4816
            Init score for ``data``.
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            .. versionadded:: 4.0.0

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        feature_name : list of str, or 'auto', optional (default="auto")
            Feature names for ``data``.
            If 'auto' and data is pandas DataFrame, data columns names are used.
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            .. versionadded:: 4.0.0

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        categorical_feature : list of str or int, or 'auto', optional (default="auto")
            Categorical features for ``data``.
            If list of int, interpreted as indices.
            If list of str, interpreted as feature names (need to specify ``feature_name`` as well).
            If 'auto' and data is pandas DataFrame, pandas unordered categorical columns are used.
4831
            All values in categorical features will be cast to int32 and thus should be less than int32 max value (2147483647).
4832
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            Large values could be memory consuming. Consider using consecutive integers starting from zero.
            All negative values in categorical features will be treated as missing values.
            The output cannot be monotonically constrained with respect to a categorical feature.
4835
            Floating point numbers in categorical features will be rounded towards 0.
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4838

            .. versionadded:: 4.0.0

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4840
        dataset_params : dict or None, optional (default=None)
            Other parameters for Dataset ``data``.
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            .. versionadded:: 4.0.0

4844
4845
        free_raw_data : bool, optional (default=True)
            If True, raw data is freed after constructing inner Dataset for ``data``.
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            .. versionadded:: 4.0.0

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        validate_features : bool, optional (default=False)
            If True, ensure that the features used to refit the model match the original ones.
            Used only if data is pandas DataFrame.
4852
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            .. versionadded:: 4.0.0

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        **kwargs
            Other parameters for refit.
4857
            These parameters will be passed to ``predict`` method.
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        Returns
        -------
        result : Booster
            Refitted Booster.
        """
4864
        if self.__set_objective_to_none:
4865
            raise LightGBMError("Cannot refit due to null objective function.")
4866
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        if dataset_params is None:
            dataset_params = {}
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        predictor = _InnerPredictor.from_booster(booster=self, pred_parameter=deepcopy(kwargs))
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        leaf_preds: np.ndarray = predictor.predict(  # type: ignore[assignment]
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            data=data,
            start_iteration=-1,
            pred_leaf=True,
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            validate_features=validate_features,
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        )
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        nrow, ncol = leaf_preds.shape
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        out_is_linear = ctypes.c_int(0)
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        _safe_call(
            _LIB.LGBM_BoosterGetLinear(
                self._handle,
                ctypes.byref(out_is_linear),
            )
        )
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        new_params = _choose_param_value(
            main_param_name="linear_tree",
            params=self.params,
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            default_value=None,
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        )
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        new_params["linear_tree"] = bool(out_is_linear.value)
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        new_params.update(dataset_params)
        train_set = Dataset(
            data=data,
            label=label,
            reference=reference,
            weight=weight,
            group=group,
            init_score=init_score,
            feature_name=feature_name,
            categorical_feature=categorical_feature,
            params=new_params,
            free_raw_data=free_raw_data,
        )
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        new_params["refit_decay_rate"] = decay_rate
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        new_booster = Booster(new_params, train_set)
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        # Copy models
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        _safe_call(
            _LIB.LGBM_BoosterMerge(
                new_booster._handle,
                predictor._handle,
            )
        )
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        leaf_preds = leaf_preds.reshape(-1)
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        ptr_data, _, _ = _c_int_array(leaf_preds)
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        _safe_call(
            _LIB.LGBM_BoosterRefit(
                new_booster._handle,
                ptr_data,
                ctypes.c_int32(nrow),
                ctypes.c_int32(ncol),
            )
        )
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        new_booster._network = self._network
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        return new_booster

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    def get_leaf_output(self, tree_id: int, leaf_id: int) -> float:
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        """Get the output of a leaf.

        Parameters
        ----------
        tree_id : int
            The index of the tree.
        leaf_id : int
            The index of the leaf in the tree.

        Returns
        -------
        result : float
            The output of the leaf.
        """
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        ret = ctypes.c_double(0)
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        _safe_call(
            _LIB.LGBM_BoosterGetLeafValue(
                self._handle,
                ctypes.c_int(tree_id),
                ctypes.c_int(leaf_id),
                ctypes.byref(ret),
            )
        )
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        return ret.value

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    def set_leaf_output(
        self,
        tree_id: int,
        leaf_id: int,
        value: float,
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    ) -> "Booster":
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        """Set the output of a leaf.

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        .. versionadded:: 4.0.0

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        Parameters
        ----------
        tree_id : int
            The index of the tree.
        leaf_id : int
            The index of the leaf in the tree.
        value : float
            Value to set as the output of the leaf.

        Returns
        -------
        self : Booster
            Booster with the leaf output set.
        """
        _safe_call(
            _LIB.LGBM_BoosterSetLeafValue(
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                self._handle,
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                ctypes.c_int(tree_id),
                ctypes.c_int(leaf_id),
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                ctypes.c_double(value),
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            )
        )
        return self

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    def num_feature(self) -> int:
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        """Get number of features.

        Returns
        -------
        num_feature : int
            The number of features.
        """
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        out_num_feature = ctypes.c_int(0)
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        _safe_call(
            _LIB.LGBM_BoosterGetNumFeature(
                self._handle,
                ctypes.byref(out_num_feature),
            )
        )
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        return out_num_feature.value

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    def feature_name(self) -> List[str]:
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        """Get names of features.
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        Returns
        -------
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        result : list of str
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            List with names of features.
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        """
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        num_feature = self.num_feature()
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        # Get name of features
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        tmp_out_len = ctypes.c_int(0)
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        reserved_string_buffer_size = 255
        required_string_buffer_size = ctypes.c_size_t(0)
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        string_buffers = [ctypes.create_string_buffer(reserved_string_buffer_size) for _ in range(num_feature)]
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        ptr_string_buffers = (ctypes.c_char_p * num_feature)(*map(ctypes.addressof, string_buffers))  # type: ignore[misc]
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        _safe_call(
            _LIB.LGBM_BoosterGetFeatureNames(
                self._handle,
                ctypes.c_int(num_feature),
                ctypes.byref(tmp_out_len),
                ctypes.c_size_t(reserved_string_buffer_size),
                ctypes.byref(required_string_buffer_size),
                ptr_string_buffers,
            )
        )
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        if num_feature != tmp_out_len.value:
            raise ValueError("Length of feature names doesn't equal with num_feature")
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        actual_string_buffer_size = required_string_buffer_size.value
        # if buffer length is not long enough, reallocate buffers
        if reserved_string_buffer_size < actual_string_buffer_size:
            string_buffers = [ctypes.create_string_buffer(actual_string_buffer_size) for _ in range(num_feature)]
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            ptr_string_buffers = (ctypes.c_char_p * num_feature)(*map(ctypes.addressof, string_buffers))  # type: ignore[misc]
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            _safe_call(
                _LIB.LGBM_BoosterGetFeatureNames(
                    self._handle,
                    ctypes.c_int(num_feature),
                    ctypes.byref(tmp_out_len),
                    ctypes.c_size_t(actual_string_buffer_size),
                    ctypes.byref(required_string_buffer_size),
                    ptr_string_buffers,
                )
            )
        return [string_buffers[i].value.decode("utf-8") for i in range(num_feature)]
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    def feature_importance(
        self,
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        importance_type: str = "split",
        iteration: Optional[int] = None,
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    ) -> np.ndarray:
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        """Get feature importances.
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        Parameters
        ----------
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        importance_type : str, optional (default="split")
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            How the importance is calculated.
            If "split", result contains numbers of times the feature is used in a model.
            If "gain", result contains total gains of splits which use the feature.
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        iteration : int or None, optional (default=None)
            Limit number of iterations in the feature importance calculation.
            If None, if the best iteration exists, it is used; otherwise, all trees are used.
            If <= 0, all trees are used (no limits).
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        Returns
        -------
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        result : numpy array
            Array with feature importances.
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        """
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        if iteration is None:
            iteration = self.best_iteration
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        importance_type_int = _FEATURE_IMPORTANCE_TYPE_MAPPER[importance_type]
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        result = np.empty(self.num_feature(), dtype=np.float64)
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        _safe_call(
            _LIB.LGBM_BoosterFeatureImportance(
                self._handle,
                ctypes.c_int(iteration),
                ctypes.c_int(importance_type_int),
                result.ctypes.data_as(ctypes.POINTER(ctypes.c_double)),
            )
        )
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        if importance_type_int == _C_API_FEATURE_IMPORTANCE_SPLIT:
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            return result.astype(np.int32)
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        else:
            return result
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    def get_split_value_histogram(
        self,
        feature: Union[int, str],
        bins: Optional[Union[int, str]] = None,
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        xgboost_style: bool = False,
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    ) -> Union[Tuple[np.ndarray, np.ndarray], np.ndarray, pd_DataFrame]:
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        """Get split value histogram for the specified feature.

        Parameters
        ----------
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        feature : int or str
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            The feature name or index the histogram is calculated for.
            If int, interpreted as index.
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            If str, interpreted as name.
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            .. warning::

                Categorical features are not supported.
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        bins : int, str or None, optional (default=None)
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            The maximum number of bins.
            If None, or int and > number of unique split values and ``xgboost_style=True``,
            the number of bins equals number of unique split values.
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            If str, it should be one from the list of the supported values by ``numpy.histogram()`` function.
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        xgboost_style : bool, optional (default=False)
            Whether the returned result should be in the same form as it is in XGBoost.
            If False, the returned value is tuple of 2 numpy arrays as it is in ``numpy.histogram()`` function.
            If True, the returned value is matrix, in which the first column is the right edges of non-empty bins
            and the second one is the histogram values.

        Returns
        -------
        result_tuple : tuple of 2 numpy arrays
            If ``xgboost_style=False``, the values of the histogram of used splitting values for the specified feature
            and the bin edges.
        result_array_like : numpy array or pandas DataFrame (if pandas is installed)
            If ``xgboost_style=True``, the histogram of used splitting values for the specified feature.
        """
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        def add(root: Dict[str, Any]) -> None:
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            """Recursively add thresholds."""
5126
            if "split_index" in root:  # non-leaf
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                if feature_names is not None and isinstance(feature, str):
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                    split_feature = feature_names[root["split_feature"]]
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                else:
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                    split_feature = root["split_feature"]
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                if split_feature == feature:
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                    if isinstance(root["threshold"], str):
                        raise LightGBMError("Cannot compute split value histogram for the categorical feature")
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                    else:
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                        values.append(root["threshold"])
                add(root["left_child"])
                add(root["right_child"])
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        model = self.dump_model()
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        feature_names = model.get("feature_names")
        tree_infos = model["tree_info"]
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        values: List[float] = []
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        for tree_info in tree_infos:
5144
            add(tree_info["tree_structure"])
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5146
        if bins is None or isinstance(bins, int) and xgboost_style:
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            n_unique = len(np.unique(values))
            bins = max(min(n_unique, bins) if bins is not None else n_unique, 1)
        hist, bin_edges = np.histogram(values, bins=bins)
        if xgboost_style:
            ret = np.column_stack((bin_edges[1:], hist))
            ret = ret[ret[:, 1] > 0]
            if PANDAS_INSTALLED:
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                return pd_DataFrame(ret, columns=["SplitValue", "Count"])
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            else:
                return ret
        else:
            return hist, bin_edges

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    def __inner_eval(
        self,
        data_name: str,
        data_idx: int,
5164
        feval: Optional[Union[_LGBM_CustomEvalFunction, List[_LGBM_CustomEvalFunction]]],
5165
    ) -> List[_LGBM_BoosterEvalMethodResultType]:
5166
        """Evaluate training or validation data."""
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        if data_idx >= self.__num_dataset:
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            raise ValueError("Data_idx should be smaller than number of dataset")
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        self.__get_eval_info()
        ret = []
        if self.__num_inner_eval > 0:
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            result = np.empty(self.__num_inner_eval, dtype=np.float64)
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            tmp_out_len = ctypes.c_int(0)
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            _safe_call(
                _LIB.LGBM_BoosterGetEval(
                    self._handle,
                    ctypes.c_int(data_idx),
                    ctypes.byref(tmp_out_len),
                    result.ctypes.data_as(ctypes.POINTER(ctypes.c_double)),
                )
            )
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            if tmp_out_len.value != self.__num_inner_eval:
5183
                raise ValueError("Wrong length of eval results")
5184
            for i in range(self.__num_inner_eval):
5185
                ret.append((data_name, self.__name_inner_eval[i], result[i], self.__higher_better_inner_eval[i]))
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        if callable(feval):
            feval = [feval]
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        if feval is not None:
            if data_idx == 0:
                cur_data = self.train_set
            else:
                cur_data = self.valid_sets[data_idx - 1]
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            for eval_function in feval:
                if eval_function is None:
                    continue
                feval_ret = eval_function(self.__inner_predict(data_idx), cur_data)
                if isinstance(feval_ret, list):
                    for eval_name, val, is_higher_better in feval_ret:
                        ret.append((data_name, eval_name, val, is_higher_better))
                else:
                    eval_name, val, is_higher_better = feval_ret
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                    ret.append((data_name, eval_name, val, is_higher_better))
        return ret

5205
    def __inner_predict(self, data_idx: int) -> np.ndarray:
5206
        """Predict for training and validation dataset."""
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        if data_idx >= self.__num_dataset:
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            raise ValueError("Data_idx should be smaller than number of dataset")
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        if self.__inner_predict_buffer[data_idx] is None:
            if data_idx == 0:
                n_preds = self.train_set.num_data() * self.__num_class
            else:
                n_preds = self.valid_sets[data_idx - 1].num_data() * self.__num_class
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            self.__inner_predict_buffer[data_idx] = np.empty(n_preds, dtype=np.float64)
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        # avoid to predict many time in one iteration
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        if not self.__is_predicted_cur_iter[data_idx]:
            tmp_out_len = ctypes.c_int64(0)
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            data_ptr = self.__inner_predict_buffer[data_idx].ctypes.data_as(ctypes.POINTER(ctypes.c_double))  # type: ignore[union-attr]
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            _safe_call(
                _LIB.LGBM_BoosterGetPredict(
                    self._handle,
                    ctypes.c_int(data_idx),
                    ctypes.byref(tmp_out_len),
                    data_ptr,
                )
            )
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            if tmp_out_len.value != len(self.__inner_predict_buffer[data_idx]):  # type: ignore[arg-type]
5228
                raise ValueError(f"Wrong length of predict results for data {data_idx}")
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            self.__is_predicted_cur_iter[data_idx] = True
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        result: np.ndarray = self.__inner_predict_buffer[data_idx]  # type: ignore[assignment]
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        if self.__num_class > 1:
            num_data = result.size // self.__num_class
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            result = result.reshape(num_data, self.__num_class, order="F")
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        return result
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5236
    def __get_eval_info(self) -> None:
5237
        """Get inner evaluation count and names."""
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        if self.__need_reload_eval_info:
            self.__need_reload_eval_info = False
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            out_num_eval = ctypes.c_int(0)
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            # Get num of inner evals
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            _safe_call(
                _LIB.LGBM_BoosterGetEvalCounts(
                    self._handle,
                    ctypes.byref(out_num_eval),
                )
            )
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            self.__num_inner_eval = out_num_eval.value
            if self.__num_inner_eval > 0:
5250
                # Get name of eval metrics
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                tmp_out_len = ctypes.c_int(0)
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                reserved_string_buffer_size = 255
                required_string_buffer_size = ctypes.c_size_t(0)
                string_buffers = [
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                    ctypes.create_string_buffer(reserved_string_buffer_size) for _ in range(self.__num_inner_eval)
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                ]
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                ptr_string_buffers = (ctypes.c_char_p * self.__num_inner_eval)(*map(ctypes.addressof, string_buffers))  # type: ignore[misc]
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                _safe_call(
                    _LIB.LGBM_BoosterGetEvalNames(
                        self._handle,
                        ctypes.c_int(self.__num_inner_eval),
                        ctypes.byref(tmp_out_len),
                        ctypes.c_size_t(reserved_string_buffer_size),
                        ctypes.byref(required_string_buffer_size),
                        ptr_string_buffers,
                    )
                )
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                if self.__num_inner_eval != tmp_out_len.value:
5269
                    raise ValueError("Length of eval names doesn't equal with num_evals")
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                actual_string_buffer_size = required_string_buffer_size.value
                # if buffer length is not long enough, reallocate buffers
                if reserved_string_buffer_size < actual_string_buffer_size:
                    string_buffers = [
                        ctypes.create_string_buffer(actual_string_buffer_size) for _ in range(self.__num_inner_eval)
                    ]
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                    ptr_string_buffers = (ctypes.c_char_p * self.__num_inner_eval)(
                        *map(ctypes.addressof, string_buffers)
                    )  # type: ignore[misc]
                    _safe_call(
                        _LIB.LGBM_BoosterGetEvalNames(
                            self._handle,
                            ctypes.c_int(self.__num_inner_eval),
                            ctypes.byref(tmp_out_len),
                            ctypes.c_size_t(actual_string_buffer_size),
                            ctypes.byref(required_string_buffer_size),
                            ptr_string_buffers,
                        )
                    )
                self.__name_inner_eval = [string_buffers[i].value.decode("utf-8") for i in range(self.__num_inner_eval)]
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                self.__higher_better_inner_eval = [
5291
                    name.startswith(("auc", "ndcg@", "map@", "average_precision")) for name in self.__name_inner_eval
5292
                ]