peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/numpy
/_globals.py
""" | |
Module defining global singleton classes. | |
This module raises a RuntimeError if an attempt to reload it is made. In that | |
way the identities of the classes defined here are fixed and will remain so | |
even if numpy itself is reloaded. In particular, a function like the following | |
will still work correctly after numpy is reloaded:: | |
def foo(arg=np._NoValue): | |
if arg is np._NoValue: | |
... | |
That was not the case when the singleton classes were defined in the numpy | |
``__init__.py`` file. See gh-7844 for a discussion of the reload problem that | |
motivated this module. | |
""" | |
import enum | |
from ._utils import set_module as _set_module | |
__all__ = ['_NoValue', '_CopyMode'] | |
# Disallow reloading this module so as to preserve the identities of the | |
# classes defined here. | |
if '_is_loaded' in globals(): | |
raise RuntimeError('Reloading numpy._globals is not allowed') | |
_is_loaded = True | |
class _NoValueType: | |
"""Special keyword value. | |
The instance of this class may be used as the default value assigned to a | |
keyword if no other obvious default (e.g., `None`) is suitable, | |
Common reasons for using this keyword are: | |
- A new keyword is added to a function, and that function forwards its | |
inputs to another function or method which can be defined outside of | |
NumPy. For example, ``np.std(x)`` calls ``x.std``, so when a ``keepdims`` | |
keyword was added that could only be forwarded if the user explicitly | |
specified ``keepdims``; downstream array libraries may not have added | |
the same keyword, so adding ``x.std(..., keepdims=keepdims)`` | |
unconditionally could have broken previously working code. | |
- A keyword is being deprecated, and a deprecation warning must only be | |
emitted when the keyword is used. | |
""" | |
__instance = None | |
def __new__(cls): | |
# ensure that only one instance exists | |
if not cls.__instance: | |
cls.__instance = super().__new__(cls) | |
return cls.__instance | |
def __repr__(self): | |
return "<no value>" | |
_NoValue = _NoValueType() | |
class _CopyMode(enum.Enum): | |
""" | |
An enumeration for the copy modes supported | |
by numpy.copy() and numpy.array(). The following three modes are supported, | |
- ALWAYS: This means that a deep copy of the input | |
array will always be taken. | |
- IF_NEEDED: This means that a deep copy of the input | |
array will be taken only if necessary. | |
- NEVER: This means that the deep copy will never be taken. | |
If a copy cannot be avoided then a `ValueError` will be | |
raised. | |
Note that the buffer-protocol could in theory do copies. NumPy currently | |
assumes an object exporting the buffer protocol will never do this. | |
""" | |
ALWAYS = True | |
IF_NEEDED = False | |
NEVER = 2 | |
def __bool__(self): | |
# For backwards compatibility | |
if self == _CopyMode.ALWAYS: | |
return True | |
if self == _CopyMode.IF_NEEDED: | |
return False | |
raise ValueError(f"{self} is neither True nor False.") | |