Buckets:
| """ | |
| Mixin classes for custom array types that don't inherit from ndarray. | |
| """ | |
| from numpy._core import umath as um | |
| __all__ = ['NDArrayOperatorsMixin'] | |
| def _disables_array_ufunc(obj): | |
| """True when __array_ufunc__ is set to None.""" | |
| try: | |
| return obj.__array_ufunc__ is None | |
| except AttributeError: | |
| return False | |
| def _binary_method(ufunc, name): | |
| """Implement a forward binary method with a ufunc, e.g., __add__.""" | |
| def func(self, other): | |
| if _disables_array_ufunc(other): | |
| return NotImplemented | |
| return ufunc(self, other) | |
| func.__name__ = f'__{name}__' | |
| return func | |
| def _reflected_binary_method(ufunc, name): | |
| """Implement a reflected binary method with a ufunc, e.g., __radd__.""" | |
| def func(self, other): | |
| if _disables_array_ufunc(other): | |
| return NotImplemented | |
| return ufunc(other, self) | |
| func.__name__ = f'__r{name}__' | |
| return func | |
| def _inplace_binary_method(ufunc, name): | |
| """Implement an in-place binary method with a ufunc, e.g., __iadd__.""" | |
| def func(self, other): | |
| return ufunc(self, other, out=(self,)) | |
| func.__name__ = f'__i{name}__' | |
| return func | |
| def _numeric_methods(ufunc, name): | |
| """Implement forward, reflected and inplace binary methods with a ufunc.""" | |
| return (_binary_method(ufunc, name), | |
| _reflected_binary_method(ufunc, name), | |
| _inplace_binary_method(ufunc, name)) | |
| def _unary_method(ufunc, name): | |
| """Implement a unary special method with a ufunc.""" | |
| def func(self): | |
| return ufunc(self) | |
| func.__name__ = f'__{name}__' | |
| return func | |
| class NDArrayOperatorsMixin: | |
| """Mixin defining all operator special methods using __array_ufunc__. | |
| This class implements the special methods for almost all of Python's | |
| builtin operators defined in the `operator` module, including comparisons | |
| (``==``, ``>``, etc.) and arithmetic (``+``, ``*``, ``-``, etc.), by | |
| deferring to the ``__array_ufunc__`` method, which subclasses must | |
| implement. | |
| It is useful for writing classes that do not inherit from `numpy.ndarray`, | |
| but that should support arithmetic and numpy universal functions like | |
| arrays as described in :external+neps:doc:`nep-0013-ufunc-overrides`. | |
| As a trivial example, consider this implementation of an ``ArrayLike`` | |
| class that simply wraps a NumPy array and ensures that the result of any | |
| arithmetic operation is also an ``ArrayLike`` object: | |
| >>> import numbers | |
| >>> class ArrayLike(np.lib.mixins.NDArrayOperatorsMixin): | |
| ... def __init__(self, value): | |
| ... self.value = np.asarray(value) | |
| ... | |
| ... # One might also consider adding the built-in list type to this | |
| ... # list, to support operations like np.add(array_like, list) | |
| ... _HANDLED_TYPES = (np.ndarray, numbers.Number) | |
| ... | |
| ... def __array_ufunc__(self, ufunc, method, *inputs, **kwargs): | |
| ... out = kwargs.get('out', ()) | |
| ... for x in inputs + out: | |
| ... # Only support operations with instances of | |
| ... # _HANDLED_TYPES. Use ArrayLike instead of type(self) | |
| ... # for isinstance to allow subclasses that don't | |
| ... # override __array_ufunc__ to handle ArrayLike objects. | |
| ... if not isinstance( | |
| ... x, self._HANDLED_TYPES + (ArrayLike,) | |
| ... ): | |
| ... return NotImplemented | |
| ... | |
| ... # Defer to the implementation of the ufunc | |
| ... # on unwrapped values. | |
| ... inputs = tuple(x.value if isinstance(x, ArrayLike) else x | |
| ... for x in inputs) | |
| ... if out: | |
| ... kwargs['out'] = tuple( | |
| ... x.value if isinstance(x, ArrayLike) else x | |
| ... for x in out) | |
| ... result = getattr(ufunc, method)(*inputs, **kwargs) | |
| ... | |
| ... if type(result) is tuple: | |
| ... # multiple return values | |
| ... return tuple(type(self)(x) for x in result) | |
| ... elif method == 'at': | |
| ... # no return value | |
| ... return None | |
| ... else: | |
| ... # one return value | |
| ... return type(self)(result) | |
| ... | |
| ... def __repr__(self): | |
| ... return '%s(%r)' % (type(self).__name__, self.value) | |
| In interactions between ``ArrayLike`` objects and numbers or numpy arrays, | |
| the result is always another ``ArrayLike``: | |
| >>> x = ArrayLike([1, 2, 3]) | |
| >>> x - 1 | |
| ArrayLike(array([0, 1, 2])) | |
| >>> 1 - x | |
| ArrayLike(array([ 0, -1, -2])) | |
| >>> np.arange(3) - x | |
| ArrayLike(array([-1, -1, -1])) | |
| >>> x - np.arange(3) | |
| ArrayLike(array([1, 1, 1])) | |
| Note that unlike ``numpy.ndarray``, ``ArrayLike`` does not allow operations | |
| with arbitrary, unrecognized types. This ensures that interactions with | |
| ArrayLike preserve a well-defined casting hierarchy. | |
| """ | |
| __slots__ = () | |
| # Like np.ndarray, this mixin class implements "Option 1" from the ufunc | |
| # overrides NEP. | |
| # comparisons don't have reflected and in-place versions | |
| __lt__ = _binary_method(um.less, 'lt') | |
| __le__ = _binary_method(um.less_equal, 'le') | |
| __eq__ = _binary_method(um.equal, 'eq') | |
| __ne__ = _binary_method(um.not_equal, 'ne') | |
| __gt__ = _binary_method(um.greater, 'gt') | |
| __ge__ = _binary_method(um.greater_equal, 'ge') | |
| # numeric methods | |
| __add__, __radd__, __iadd__ = _numeric_methods(um.add, 'add') | |
| __sub__, __rsub__, __isub__ = _numeric_methods(um.subtract, 'sub') | |
| __mul__, __rmul__, __imul__ = _numeric_methods(um.multiply, 'mul') | |
| __matmul__, __rmatmul__, __imatmul__ = _numeric_methods( | |
| um.matmul, 'matmul') | |
| __truediv__, __rtruediv__, __itruediv__ = _numeric_methods( | |
| um.true_divide, 'truediv') | |
| __floordiv__, __rfloordiv__, __ifloordiv__ = _numeric_methods( | |
| um.floor_divide, 'floordiv') | |
| __mod__, __rmod__, __imod__ = _numeric_methods(um.remainder, 'mod') | |
| __divmod__ = _binary_method(um.divmod, 'divmod') | |
| __rdivmod__ = _reflected_binary_method(um.divmod, 'divmod') | |
| # __idivmod__ does not exist | |
| # TODO: handle the optional third argument for __pow__? | |
| __pow__, __rpow__, __ipow__ = _numeric_methods(um.power, 'pow') | |
| __lshift__, __rlshift__, __ilshift__ = _numeric_methods( | |
| um.left_shift, 'lshift') | |
| __rshift__, __rrshift__, __irshift__ = _numeric_methods( | |
| um.right_shift, 'rshift') | |
| __and__, __rand__, __iand__ = _numeric_methods(um.bitwise_and, 'and') | |
| __xor__, __rxor__, __ixor__ = _numeric_methods(um.bitwise_xor, 'xor') | |
| __or__, __ror__, __ior__ = _numeric_methods(um.bitwise_or, 'or') | |
| # unary methods | |
| __neg__ = _unary_method(um.negative, 'neg') | |
| __pos__ = _unary_method(um.positive, 'pos') | |
| __abs__ = _unary_method(um.absolute, 'abs') | |
| __invert__ = _unary_method(um.invert, 'invert') | |
Xet Storage Details
- Size:
- 7.2 kB
- Xet hash:
- 525acf183029a9b6ed7127d08d18b5c780c8096772d92e2f1babc5454fded549
·
Xet efficiently stores files, intelligently splitting them into unique chunks and accelerating uploads and downloads. More info.