torch.testing¶
- torch.testing.assert_close(actual, expected, *, allow_subclasses=True, rtol=None, atol=None, equal_nan=False, check_device=True, check_dtype=True, check_layout=True, check_stride=False, msg=None)[source]¶
Asserts that
actualandexpectedare close.If
actualandexpectedare strided, non-quantized, real-valued, and finite, they are considered close ifNon-finite values (
-infandinf) are only considered close if and only if they are equal.NaN’s are only considered equal to each other ifequal_nanisTrue.In addition, they are only considered close if they have the same -
device(ifcheck_deviceisTrue), -dtype(ifcheck_dtypeisTrue), -layout(ifcheck_layoutisTrue), and - stride (ifcheck_strideisTrue). If eitheractualorexpectedis a meta tensor, only the attribute checks will be performed.If
actualandexpectedare sparse (either having COO, CSR, CSC, BSR, or BSC layout), their strided members are checked individually. Indices, namelyindicesfor COO,crow_indicesandcol_indicesfor CSR and BSR, orccol_indicesandrow_indicesfor CSC and BSC layouts, respectively, are always checked for equality whereas the values are checked for closeness according to the definition above.If
actualandexpectedare quantized, they are considered close if they have the sameqscheme()and the result ofdequantize()is close according to the definition above.actualandexpectedcan beTensor’s or any tensor-or-scalar-likes from whichtorch.Tensor’s can be constructed withtorch.as_tensor(). Except for Python scalars the input types have to be directly related. In addition,actualandexpectedcan beSequence’s orMapping’s in which case they are considered close if their structure matches and all their elements are considered close according to the above definition.Note
Python scalars are an exception to the type relation requirement, because their
type(), i.e.int,float, andcomplex, is equivalent to thedtypeof a tensor-like. Thus, Python scalars of different types can be checked, but requirecheck_dtype=False.- Parameters:
actual (Any) – Actual input.
expected (Any) – Expected input.
allow_subclasses (bool) – If
True(default) and except for Python scalars, inputs of directly related types are allowed. Otherwise type equality is required.rtol (Optional[float]) – Relative tolerance. If specified
atolmust also be specified. If omitted, default values based on thedtypeare selected with the below table.atol (Optional[float]) – Absolute tolerance. If specified
rtolmust also be specified. If omitted, default values based on thedtypeare selected with the below table.equal_nan (Union[bool, str]) – If
True, twoNaNvalues will be considered equal.check_device (bool) – If
True(default), asserts that corresponding tensors are on the samedevice. If this check is disabled, tensors on differentdevice’s are moved to the CPU before being compared.check_dtype (bool) – If
True(default), asserts that corresponding tensors have the samedtype. If this check is disabled, tensors with differentdtype’s are promoted to a commondtype(according totorch.promote_types()) before being compared.check_layout (bool) – If
True(default), asserts that corresponding tensors have the samelayout. If this check is disabled, tensors with differentlayout’s are converted to strided tensors before being compared.check_stride (bool) – If
Trueand corresponding tensors are strided, asserts that they have the same stride.msg (Optional[Union[str, Callable[[str], str]]]) – Optional error message to use in case a failure occurs during the comparison. Can also passed as callable in which case it will be called with the generated message and should return the new message.
- Raises:
ValueError – If no
torch.Tensorcan be constructed from an input.ValueError – If only
rtoloratolis specified.NotImplementedError – If a tensor is a meta tensor. This is a temporary restriction and will be relaxed in the future.
AssertionError – If corresponding inputs are not Python scalars and are not directly related.
AssertionError – If
allow_subclassesisFalse, but corresponding inputs are not Python scalars and have different types.AssertionError – If the inputs are
Sequence’s, but their length does not match.AssertionError – If the inputs are
Mapping’s, but their set of keys do not match.AssertionError – If corresponding tensors do not have the same
shape.AssertionError – If
check_layoutisTrue, but corresponding tensors do not have the samelayout.AssertionError – If only one of corresponding tensors is quantized.
AssertionError – If corresponding tensors are quantized, but have different
qscheme()’s.AssertionError – If
check_deviceisTrue, but corresponding tensors are not on the samedevice.AssertionError – If
check_dtypeisTrue, but corresponding tensors do not have the samedtype.AssertionError – If
check_strideisTrue, but corresponding strided tensors do not have the same stride.AssertionError – If the values of corresponding tensors are not close according to the definition above.
The following table displays the default
rtolandatolfor differentdtype’s. In case of mismatchingdtype’s, the maximum of both tolerances is used.dtypertolatolfloat161e-31e-5bfloat161.6e-21e-5float321.3e-61e-5float641e-71e-7complex321e-31e-5complex641.3e-61e-5complex1281e-71e-7quint81.3e-61e-5quint2x41.3e-61e-5quint4x21.3e-61e-5qint81.3e-61e-5qint321.3e-61e-5other
0.00.0Note
assert_close()is highly configurable with strict default settings. Users are encouraged topartial()it to fit their use case. For example, if an equality check is needed, one might define anassert_equalthat uses zero tolrances for everydtypeby default:>>> import functools >>> assert_equal = functools.partial(torch.testing.assert_close, rtol=0, atol=0) >>> assert_equal(1e-9, 1e-10) Traceback (most recent call last): ... AssertionError: Scalars are not equal! Absolute difference: 9.000000000000001e-10 Relative difference: 9.0
Examples
>>> # tensor to tensor comparison >>> expected = torch.tensor([1e0, 1e-1, 1e-2]) >>> actual = torch.acos(torch.cos(expected)) >>> torch.testing.assert_close(actual, expected)
>>> # scalar to scalar comparison >>> import math >>> expected = math.sqrt(2.0) >>> actual = 2.0 / math.sqrt(2.0) >>> torch.testing.assert_close(actual, expected)
>>> # numpy array to numpy array comparison >>> import numpy as np >>> expected = np.array([1e0, 1e-1, 1e-2]) >>> actual = np.arccos(np.cos(expected)) >>> torch.testing.assert_close(actual, expected)
>>> # sequence to sequence comparison >>> import numpy as np >>> # The types of the sequences do not have to match. They only have to have the same >>> # length and their elements have to match. >>> expected = [torch.tensor([1.0]), 2.0, np.array(3.0)] >>> actual = tuple(expected) >>> torch.testing.assert_close(actual, expected)
>>> # mapping to mapping comparison >>> from collections import OrderedDict >>> import numpy as np >>> foo = torch.tensor(1.0) >>> bar = 2.0 >>> baz = np.array(3.0) >>> # The types and a possible ordering of mappings do not have to match. They only >>> # have to have the same set of keys and their elements have to match. >>> expected = OrderedDict([("foo", foo), ("bar", bar), ("baz", baz)]) >>> actual = {"baz": baz, "bar": bar, "foo": foo} >>> torch.testing.assert_close(actual, expected)
>>> expected = torch.tensor([1.0, 2.0, 3.0]) >>> actual = expected.clone() >>> # By default, directly related instances can be compared >>> torch.testing.assert_close(torch.nn.Parameter(actual), expected) >>> # This check can be made more strict with allow_subclasses=False >>> torch.testing.assert_close( ... torch.nn.Parameter(actual), expected, allow_subclasses=False ... ) Traceback (most recent call last): ... TypeError: No comparison pair was able to handle inputs of type <class 'torch.nn.parameter.Parameter'> and <class 'torch.Tensor'>. >>> # If the inputs are not directly related, they are never considered close >>> torch.testing.assert_close(actual.numpy(), expected) Traceback (most recent call last): ... TypeError: No comparison pair was able to handle inputs of type <class 'numpy.ndarray'> and <class 'torch.Tensor'>. >>> # Exceptions to these rules are Python scalars. They can be checked regardless of >>> # their type if check_dtype=False. >>> torch.testing.assert_close(1.0, 1, check_dtype=False)
>>> # NaN != NaN by default. >>> expected = torch.tensor(float("Nan")) >>> actual = expected.clone() >>> torch.testing.assert_close(actual, expected) Traceback (most recent call last): ... AssertionError: Scalars are not close! Absolute difference: nan (up to 1e-05 allowed) Relative difference: nan (up to 1.3e-06 allowed) >>> torch.testing.assert_close(actual, expected, equal_nan=True)
>>> expected = torch.tensor([1.0, 2.0, 3.0]) >>> actual = torch.tensor([1.0, 4.0, 5.0]) >>> # The default error message can be overwritten. >>> torch.testing.assert_close(actual, expected, msg="Argh, the tensors are not close!") Traceback (most recent call last): ... AssertionError: Argh, the tensors are not close! >>> # If msg is a callable, it can be used to augment the generated message with >>> # extra information >>> torch.testing.assert_close( ... actual, expected, msg=lambda msg: f"Header\n\n{msg}\n\nFooter" ... ) Traceback (most recent call last): ... AssertionError: Header Tensor-likes are not close! Mismatched elements: 2 / 3 (66.7%) Greatest absolute difference: 2.0 at index (1,) (up to 1e-05 allowed) Greatest relative difference: 1.0 at index (1,) (up to 1.3e-06 allowed) Footer
- torch.testing.make_tensor(*shape, dtype, device, low=None, high=None, requires_grad=False, noncontiguous=False, exclude_zero=False)[source]¶
Creates a tensor with the given
shape,device, anddtype, and filled with values uniformly drawn from[low, high).If
loworhighare specified and are outside the range of thedtype’s representable finite values then they are clamped to the lowest or highest representable finite value, respectively. IfNone, then the following table describes the default values forlowandhigh, which depend ondtype.dtypelowhighboolean type
02unsigned integral type
010signed integral types
-910floating types
-99complex types
-99- Parameters:
shape (Tuple[int, ...]) – Single integer or a sequence of integers defining the shape of the output tensor.
dtype (
torch.dtype) – The data type of the returned tensor.device (Union[str, torch.device]) – The device of the returned tensor.
low (Optional[Number]) – Sets the lower limit (inclusive) of the given range. If a number is provided it is clamped to the least representable finite value of the given dtype. When
None(default), this value is determined based on thedtype(see the table above). Default:None.high (Optional[Number]) – Sets the upper limit (exclusive) of the given range. If a number is provided it is clamped to the greatest representable finite value of the given dtype. When
None(default) this value is determined based on thedtype(see the table above). Default:None.requires_grad (Optional[bool]) – If autograd should record operations on the returned tensor. Default:
False.noncontiguous (Optional[bool]) – If True, the returned tensor will be noncontiguous. This argument is ignored if the constructed tensor has fewer than two elements.
exclude_zero (Optional[bool]) – If
Truethen zeros are replaced with the dtype’s small positive value depending on thedtype. For bool and integer types zero is replaced with one. For floating point types it is replaced with the dtype’s smallest positive normal number (the “tiny” value of thedtype’sfinfo()object), and for complex types it is replaced with a complex number whose real and imaginary parts are both the smallest positive normal number representable by the complex type. DefaultFalse.
- Raises:
ValueError – if
requires_grad=Trueis passed for integral dtypeValueError – If
low > high.ValueError – If either
loworhighisnan.TypeError – If
dtypeisn’t supported by this function.
- Return type:
Examples
>>> from torch.testing import make_tensor >>> # Creates a float tensor with values in [-1, 1) >>> make_tensor((3,), device='cpu', dtype=torch.float32, low=-1, high=1) tensor([ 0.1205, 0.2282, -0.6380]) >>> # Creates a bool tensor on CUDA >>> make_tensor((2, 2), device='cuda', dtype=torch.bool) tensor([[False, False], [False, True]], device='cuda:0')