| """ |
| For compatibility with numpy libraries, pandas functions or methods have to |
| accept '*args' and '**kwargs' parameters to accommodate numpy arguments that |
| are not actually used or respected in the pandas implementation. |
| |
| To ensure that users do not abuse these parameters, validation is performed in |
| 'validators.py' to make sure that any extra parameters passed correspond ONLY |
| to those in the numpy signature. Part of that validation includes whether or |
| not the user attempted to pass in non-default values for these extraneous |
| parameters. As we want to discourage users from relying on these parameters |
| when calling the pandas implementation, we want them only to pass in the |
| default values for these parameters. |
| |
| This module provides a set of commonly used default arguments for functions and |
| methods that are spread throughout the codebase. This module will make it |
| easier to adjust to future upstream changes in the analogous numpy signatures. |
| """ |
| from __future__ import annotations |
|
|
| from typing import ( |
| TYPE_CHECKING, |
| Any, |
| TypeVar, |
| cast, |
| overload, |
| ) |
|
|
| import numpy as np |
| from numpy import ndarray |
|
|
| from pandas._libs.lib import ( |
| is_bool, |
| is_integer, |
| ) |
| from pandas.errors import UnsupportedFunctionCall |
| from pandas.util._validators import ( |
| validate_args, |
| validate_args_and_kwargs, |
| validate_kwargs, |
| ) |
|
|
| if TYPE_CHECKING: |
| from pandas._typing import ( |
| Axis, |
| AxisInt, |
| ) |
|
|
| AxisNoneT = TypeVar("AxisNoneT", Axis, None) |
|
|
|
|
| class CompatValidator: |
| def __init__( |
| self, |
| defaults, |
| fname=None, |
| method: str | None = None, |
| max_fname_arg_count=None, |
| ) -> None: |
| self.fname = fname |
| self.method = method |
| self.defaults = defaults |
| self.max_fname_arg_count = max_fname_arg_count |
|
|
| def __call__( |
| self, |
| args, |
| kwargs, |
| fname=None, |
| max_fname_arg_count=None, |
| method: str | None = None, |
| ) -> None: |
| if not args and not kwargs: |
| return None |
|
|
| fname = self.fname if fname is None else fname |
| max_fname_arg_count = ( |
| self.max_fname_arg_count |
| if max_fname_arg_count is None |
| else max_fname_arg_count |
| ) |
| method = self.method if method is None else method |
|
|
| if method == "args": |
| validate_args(fname, args, max_fname_arg_count, self.defaults) |
| elif method == "kwargs": |
| validate_kwargs(fname, kwargs, self.defaults) |
| elif method == "both": |
| validate_args_and_kwargs( |
| fname, args, kwargs, max_fname_arg_count, self.defaults |
| ) |
| else: |
| raise ValueError(f"invalid validation method '{method}'") |
|
|
|
|
| ARGMINMAX_DEFAULTS = {"out": None} |
| validate_argmin = CompatValidator( |
| ARGMINMAX_DEFAULTS, fname="argmin", method="both", max_fname_arg_count=1 |
| ) |
| validate_argmax = CompatValidator( |
| ARGMINMAX_DEFAULTS, fname="argmax", method="both", max_fname_arg_count=1 |
| ) |
|
|
|
|
| def process_skipna(skipna: bool | ndarray | None, args) -> tuple[bool, Any]: |
| if isinstance(skipna, ndarray) or skipna is None: |
| args = (skipna,) + args |
| skipna = True |
|
|
| return skipna, args |
|
|
|
|
| def validate_argmin_with_skipna(skipna: bool | ndarray | None, args, kwargs) -> bool: |
| """ |
| If 'Series.argmin' is called via the 'numpy' library, the third parameter |
| in its signature is 'out', which takes either an ndarray or 'None', so |
| check if the 'skipna' parameter is either an instance of ndarray or is |
| None, since 'skipna' itself should be a boolean |
| """ |
| skipna, args = process_skipna(skipna, args) |
| validate_argmin(args, kwargs) |
| return skipna |
|
|
|
|
| def validate_argmax_with_skipna(skipna: bool | ndarray | None, args, kwargs) -> bool: |
| """ |
| If 'Series.argmax' is called via the 'numpy' library, the third parameter |
| in its signature is 'out', which takes either an ndarray or 'None', so |
| check if the 'skipna' parameter is either an instance of ndarray or is |
| None, since 'skipna' itself should be a boolean |
| """ |
| skipna, args = process_skipna(skipna, args) |
| validate_argmax(args, kwargs) |
| return skipna |
|
|
|
|
| ARGSORT_DEFAULTS: dict[str, int | str | None] = {} |
| ARGSORT_DEFAULTS["axis"] = -1 |
| ARGSORT_DEFAULTS["kind"] = "quicksort" |
| ARGSORT_DEFAULTS["order"] = None |
| ARGSORT_DEFAULTS["kind"] = None |
| ARGSORT_DEFAULTS["stable"] = None |
|
|
|
|
| validate_argsort = CompatValidator( |
| ARGSORT_DEFAULTS, fname="argsort", max_fname_arg_count=0, method="both" |
| ) |
|
|
| |
| |
| ARGSORT_DEFAULTS_KIND: dict[str, int | None] = {} |
| ARGSORT_DEFAULTS_KIND["axis"] = -1 |
| ARGSORT_DEFAULTS_KIND["order"] = None |
| ARGSORT_DEFAULTS_KIND["stable"] = None |
| validate_argsort_kind = CompatValidator( |
| ARGSORT_DEFAULTS_KIND, fname="argsort", max_fname_arg_count=0, method="both" |
| ) |
|
|
|
|
| def validate_argsort_with_ascending(ascending: bool | int | None, args, kwargs) -> bool: |
| """ |
| If 'Categorical.argsort' is called via the 'numpy' library, the first |
| parameter in its signature is 'axis', which takes either an integer or |
| 'None', so check if the 'ascending' parameter has either integer type or is |
| None, since 'ascending' itself should be a boolean |
| """ |
| if is_integer(ascending) or ascending is None: |
| args = (ascending,) + args |
| ascending = True |
|
|
| validate_argsort_kind(args, kwargs, max_fname_arg_count=3) |
| ascending = cast(bool, ascending) |
| return ascending |
|
|
|
|
| CLIP_DEFAULTS: dict[str, Any] = {"out": None} |
| validate_clip = CompatValidator( |
| CLIP_DEFAULTS, fname="clip", method="both", max_fname_arg_count=3 |
| ) |
|
|
|
|
| @overload |
| def validate_clip_with_axis(axis: ndarray, args, kwargs) -> None: |
| ... |
|
|
|
|
| @overload |
| def validate_clip_with_axis(axis: AxisNoneT, args, kwargs) -> AxisNoneT: |
| ... |
|
|
|
|
| def validate_clip_with_axis( |
| axis: ndarray | AxisNoneT, args, kwargs |
| ) -> AxisNoneT | None: |
| """ |
| If 'NDFrame.clip' is called via the numpy library, the third parameter in |
| its signature is 'out', which can takes an ndarray, so check if the 'axis' |
| parameter is an instance of ndarray, since 'axis' itself should either be |
| an integer or None |
| """ |
| if isinstance(axis, ndarray): |
| args = (axis,) + args |
| |
| |
| axis = None |
|
|
| validate_clip(args, kwargs) |
| |
| |
| return axis |
|
|
|
|
| CUM_FUNC_DEFAULTS: dict[str, Any] = {} |
| CUM_FUNC_DEFAULTS["dtype"] = None |
| CUM_FUNC_DEFAULTS["out"] = None |
| validate_cum_func = CompatValidator( |
| CUM_FUNC_DEFAULTS, method="both", max_fname_arg_count=1 |
| ) |
| validate_cumsum = CompatValidator( |
| CUM_FUNC_DEFAULTS, fname="cumsum", method="both", max_fname_arg_count=1 |
| ) |
|
|
|
|
| def validate_cum_func_with_skipna(skipna: bool, args, kwargs, name) -> bool: |
| """ |
| If this function is called via the 'numpy' library, the third parameter in |
| its signature is 'dtype', which takes either a 'numpy' dtype or 'None', so |
| check if the 'skipna' parameter is a boolean or not |
| """ |
| if not is_bool(skipna): |
| args = (skipna,) + args |
| skipna = True |
| elif isinstance(skipna, np.bool_): |
| skipna = bool(skipna) |
|
|
| validate_cum_func(args, kwargs, fname=name) |
| return skipna |
|
|
|
|
| ALLANY_DEFAULTS: dict[str, bool | None] = {} |
| ALLANY_DEFAULTS["dtype"] = None |
| ALLANY_DEFAULTS["out"] = None |
| ALLANY_DEFAULTS["keepdims"] = False |
| ALLANY_DEFAULTS["axis"] = None |
| validate_all = CompatValidator( |
| ALLANY_DEFAULTS, fname="all", method="both", max_fname_arg_count=1 |
| ) |
| validate_any = CompatValidator( |
| ALLANY_DEFAULTS, fname="any", method="both", max_fname_arg_count=1 |
| ) |
|
|
| LOGICAL_FUNC_DEFAULTS = {"out": None, "keepdims": False} |
| validate_logical_func = CompatValidator(LOGICAL_FUNC_DEFAULTS, method="kwargs") |
|
|
| MINMAX_DEFAULTS = {"axis": None, "dtype": None, "out": None, "keepdims": False} |
| validate_min = CompatValidator( |
| MINMAX_DEFAULTS, fname="min", method="both", max_fname_arg_count=1 |
| ) |
| validate_max = CompatValidator( |
| MINMAX_DEFAULTS, fname="max", method="both", max_fname_arg_count=1 |
| ) |
|
|
| RESHAPE_DEFAULTS: dict[str, str] = {"order": "C"} |
| validate_reshape = CompatValidator( |
| RESHAPE_DEFAULTS, fname="reshape", method="both", max_fname_arg_count=1 |
| ) |
|
|
| REPEAT_DEFAULTS: dict[str, Any] = {"axis": None} |
| validate_repeat = CompatValidator( |
| REPEAT_DEFAULTS, fname="repeat", method="both", max_fname_arg_count=1 |
| ) |
|
|
| ROUND_DEFAULTS: dict[str, Any] = {"out": None} |
| validate_round = CompatValidator( |
| ROUND_DEFAULTS, fname="round", method="both", max_fname_arg_count=1 |
| ) |
|
|
| SORT_DEFAULTS: dict[str, int | str | None] = {} |
| SORT_DEFAULTS["axis"] = -1 |
| SORT_DEFAULTS["kind"] = "quicksort" |
| SORT_DEFAULTS["order"] = None |
| validate_sort = CompatValidator(SORT_DEFAULTS, fname="sort", method="kwargs") |
|
|
| STAT_FUNC_DEFAULTS: dict[str, Any | None] = {} |
| STAT_FUNC_DEFAULTS["dtype"] = None |
| STAT_FUNC_DEFAULTS["out"] = None |
|
|
| SUM_DEFAULTS = STAT_FUNC_DEFAULTS.copy() |
| SUM_DEFAULTS["axis"] = None |
| SUM_DEFAULTS["keepdims"] = False |
| SUM_DEFAULTS["initial"] = None |
|
|
| PROD_DEFAULTS = SUM_DEFAULTS.copy() |
|
|
| MEAN_DEFAULTS = SUM_DEFAULTS.copy() |
|
|
| MEDIAN_DEFAULTS = STAT_FUNC_DEFAULTS.copy() |
| MEDIAN_DEFAULTS["overwrite_input"] = False |
| MEDIAN_DEFAULTS["keepdims"] = False |
|
|
| STAT_FUNC_DEFAULTS["keepdims"] = False |
|
|
| validate_stat_func = CompatValidator(STAT_FUNC_DEFAULTS, method="kwargs") |
| validate_sum = CompatValidator( |
| SUM_DEFAULTS, fname="sum", method="both", max_fname_arg_count=1 |
| ) |
| validate_prod = CompatValidator( |
| PROD_DEFAULTS, fname="prod", method="both", max_fname_arg_count=1 |
| ) |
| validate_mean = CompatValidator( |
| MEAN_DEFAULTS, fname="mean", method="both", max_fname_arg_count=1 |
| ) |
| validate_median = CompatValidator( |
| MEDIAN_DEFAULTS, fname="median", method="both", max_fname_arg_count=1 |
| ) |
|
|
| STAT_DDOF_FUNC_DEFAULTS: dict[str, bool | None] = {} |
| STAT_DDOF_FUNC_DEFAULTS["dtype"] = None |
| STAT_DDOF_FUNC_DEFAULTS["out"] = None |
| STAT_DDOF_FUNC_DEFAULTS["keepdims"] = False |
| validate_stat_ddof_func = CompatValidator(STAT_DDOF_FUNC_DEFAULTS, method="kwargs") |
|
|
| TAKE_DEFAULTS: dict[str, str | None] = {} |
| TAKE_DEFAULTS["out"] = None |
| TAKE_DEFAULTS["mode"] = "raise" |
| validate_take = CompatValidator(TAKE_DEFAULTS, fname="take", method="kwargs") |
|
|
|
|
| def validate_take_with_convert(convert: ndarray | bool | None, args, kwargs) -> bool: |
| """ |
| If this function is called via the 'numpy' library, the third parameter in |
| its signature is 'axis', which takes either an ndarray or 'None', so check |
| if the 'convert' parameter is either an instance of ndarray or is None |
| """ |
| if isinstance(convert, ndarray) or convert is None: |
| args = (convert,) + args |
| convert = True |
|
|
| validate_take(args, kwargs, max_fname_arg_count=3, method="both") |
| return convert |
|
|
|
|
| TRANSPOSE_DEFAULTS = {"axes": None} |
| validate_transpose = CompatValidator( |
| TRANSPOSE_DEFAULTS, fname="transpose", method="both", max_fname_arg_count=0 |
| ) |
|
|
|
|
| def validate_groupby_func(name: str, args, kwargs, allowed=None) -> None: |
| """ |
| 'args' and 'kwargs' should be empty, except for allowed kwargs because all |
| of their necessary parameters are explicitly listed in the function |
| signature |
| """ |
| if allowed is None: |
| allowed = [] |
|
|
| kwargs = set(kwargs) - set(allowed) |
|
|
| if len(args) + len(kwargs) > 0: |
| raise UnsupportedFunctionCall( |
| "numpy operations are not valid with groupby. " |
| f"Use .groupby(...).{name}() instead" |
| ) |
|
|
|
|
| RESAMPLER_NUMPY_OPS = ("min", "max", "sum", "prod", "mean", "std", "var") |
|
|
|
|
| def validate_resampler_func(method: str, args, kwargs) -> None: |
| """ |
| 'args' and 'kwargs' should be empty because all of their necessary |
| parameters are explicitly listed in the function signature |
| """ |
| if len(args) + len(kwargs) > 0: |
| if method in RESAMPLER_NUMPY_OPS: |
| raise UnsupportedFunctionCall( |
| "numpy operations are not valid with resample. " |
| f"Use .resample(...).{method}() instead" |
| ) |
| raise TypeError("too many arguments passed in") |
|
|
|
|
| def validate_minmax_axis(axis: AxisInt | None, ndim: int = 1) -> None: |
| """ |
| Ensure that the axis argument passed to min, max, argmin, or argmax is zero |
| or None, as otherwise it will be incorrectly ignored. |
| |
| Parameters |
| ---------- |
| axis : int or None |
| ndim : int, default 1 |
| |
| Raises |
| ------ |
| ValueError |
| """ |
| if axis is None: |
| return |
| if axis >= ndim or (axis < 0 and ndim + axis < 0): |
| raise ValueError(f"`axis` must be fewer than the number of dimensions ({ndim})") |
|
|
|
|
| _validation_funcs = { |
| "median": validate_median, |
| "mean": validate_mean, |
| "min": validate_min, |
| "max": validate_max, |
| "sum": validate_sum, |
| "prod": validate_prod, |
| } |
|
|
|
|
| def validate_func(fname, args, kwargs) -> None: |
| if fname not in _validation_funcs: |
| return validate_stat_func(args, kwargs, fname=fname) |
|
|
| validation_func = _validation_funcs[fname] |
| return validation_func(args, kwargs) |
|
|