3RNN/Lib/site-packages/pandas/core/indexes/extension.py

173 lines
5.1 KiB
Python
Raw Normal View History

2024-05-26 19:49:15 +02:00
"""
Shared methods for Index subclasses backed by ExtensionArray.
"""
from __future__ import annotations
from typing import (
TYPE_CHECKING,
Callable,
TypeVar,
)
from pandas.util._decorators import cache_readonly
from pandas.core.dtypes.generic import ABCDataFrame
from pandas.core.indexes.base import Index
if TYPE_CHECKING:
import numpy as np
from pandas._typing import (
ArrayLike,
npt,
)
from pandas.core.arrays import IntervalArray
from pandas.core.arrays._mixins import NDArrayBackedExtensionArray
_ExtensionIndexT = TypeVar("_ExtensionIndexT", bound="ExtensionIndex")
def _inherit_from_data(
name: str, delegate: type, cache: bool = False, wrap: bool = False
):
"""
Make an alias for a method of the underlying ExtensionArray.
Parameters
----------
name : str
Name of an attribute the class should inherit from its EA parent.
delegate : class
cache : bool, default False
Whether to convert wrapped properties into cache_readonly
wrap : bool, default False
Whether to wrap the inherited result in an Index.
Returns
-------
attribute, method, property, or cache_readonly
"""
attr = getattr(delegate, name)
if isinstance(attr, property) or type(attr).__name__ == "getset_descriptor":
# getset_descriptor i.e. property defined in cython class
if cache:
def cached(self):
return getattr(self._data, name)
cached.__name__ = name
cached.__doc__ = attr.__doc__
method = cache_readonly(cached)
else:
def fget(self):
result = getattr(self._data, name)
if wrap:
if isinstance(result, type(self._data)):
return type(self)._simple_new(result, name=self.name)
elif isinstance(result, ABCDataFrame):
return result.set_index(self)
return Index(result, name=self.name)
return result
def fset(self, value) -> None:
setattr(self._data, name, value)
fget.__name__ = name
fget.__doc__ = attr.__doc__
method = property(fget, fset)
elif not callable(attr):
# just a normal attribute, no wrapping
method = attr
else:
# error: Incompatible redefinition (redefinition with type "Callable[[Any,
# VarArg(Any), KwArg(Any)], Any]", original type "property")
def method(self, *args, **kwargs): # type: ignore[misc]
if "inplace" in kwargs:
raise ValueError(f"cannot use inplace with {type(self).__name__}")
result = attr(self._data, *args, **kwargs)
if wrap:
if isinstance(result, type(self._data)):
return type(self)._simple_new(result, name=self.name)
elif isinstance(result, ABCDataFrame):
return result.set_index(self)
return Index(result, name=self.name)
return result
# error: "property" has no attribute "__name__"
method.__name__ = name # type: ignore[attr-defined]
method.__doc__ = attr.__doc__
return method
def inherit_names(
names: list[str], delegate: type, cache: bool = False, wrap: bool = False
) -> Callable[[type[_ExtensionIndexT]], type[_ExtensionIndexT]]:
"""
Class decorator to pin attributes from an ExtensionArray to a Index subclass.
Parameters
----------
names : List[str]
delegate : class
cache : bool, default False
wrap : bool, default False
Whether to wrap the inherited result in an Index.
"""
def wrapper(cls: type[_ExtensionIndexT]) -> type[_ExtensionIndexT]:
for name in names:
meth = _inherit_from_data(name, delegate, cache=cache, wrap=wrap)
setattr(cls, name, meth)
return cls
return wrapper
class ExtensionIndex(Index):
"""
Index subclass for indexes backed by ExtensionArray.
"""
# The base class already passes through to _data:
# size, __len__, dtype
_data: IntervalArray | NDArrayBackedExtensionArray
# ---------------------------------------------------------------------
def _validate_fill_value(self, value):
"""
Convert value to be insertable to underlying array.
"""
return self._data._validate_setitem_value(value)
@cache_readonly
def _isnan(self) -> npt.NDArray[np.bool_]:
# error: Incompatible return value type (got "ExtensionArray", expected
# "ndarray")
return self._data.isna() # type: ignore[return-value]
class NDArrayBackedExtensionIndex(ExtensionIndex):
"""
Index subclass for indexes backed by NDArrayBackedExtensionArray.
"""
_data: NDArrayBackedExtensionArray
def _get_engine_target(self) -> np.ndarray:
return self._data._ndarray
def _from_join_target(self, result: np.ndarray) -> ArrayLike:
assert result.dtype == self._data._ndarray.dtype
return self._data._from_backing_data(result)