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# mypy: allow-untyped-defs | |
from __future__ import annotations | |
from collections.abc import Collection | |
from collections.abc import Sized | |
from decimal import Decimal | |
import math | |
from numbers import Complex | |
import pprint | |
import re | |
from types import TracebackType | |
from typing import Any | |
from typing import Callable | |
from typing import cast | |
from typing import ContextManager | |
from typing import final | |
from typing import Mapping | |
from typing import overload | |
from typing import Pattern | |
from typing import Sequence | |
from typing import Tuple | |
from typing import Type | |
from typing import TYPE_CHECKING | |
from typing import TypeVar | |
import _pytest._code | |
from _pytest.outcomes import fail | |
if TYPE_CHECKING: | |
from numpy import ndarray | |
def _compare_approx( | |
full_object: object, | |
message_data: Sequence[tuple[str, str, str]], | |
number_of_elements: int, | |
different_ids: Sequence[object], | |
max_abs_diff: float, | |
max_rel_diff: float, | |
) -> list[str]: | |
message_list = list(message_data) | |
message_list.insert(0, ("Index", "Obtained", "Expected")) | |
max_sizes = [0, 0, 0] | |
for index, obtained, expected in message_list: | |
max_sizes[0] = max(max_sizes[0], len(index)) | |
max_sizes[1] = max(max_sizes[1], len(obtained)) | |
max_sizes[2] = max(max_sizes[2], len(expected)) | |
explanation = [ | |
f"comparison failed. Mismatched elements: {len(different_ids)} / {number_of_elements}:", | |
f"Max absolute difference: {max_abs_diff}", | |
f"Max relative difference: {max_rel_diff}", | |
] + [ | |
f"{indexes:<{max_sizes[0]}} | {obtained:<{max_sizes[1]}} | {expected:<{max_sizes[2]}}" | |
for indexes, obtained, expected in message_list | |
] | |
return explanation | |
# builtin pytest.approx helper | |
class ApproxBase: | |
"""Provide shared utilities for making approximate comparisons between | |
numbers or sequences of numbers.""" | |
# Tell numpy to use our `__eq__` operator instead of its. | |
__array_ufunc__ = None | |
__array_priority__ = 100 | |
def __init__(self, expected, rel=None, abs=None, nan_ok: bool = False) -> None: | |
__tracebackhide__ = True | |
self.expected = expected | |
self.abs = abs | |
self.rel = rel | |
self.nan_ok = nan_ok | |
self._check_type() | |
def __repr__(self) -> str: | |
raise NotImplementedError | |
def _repr_compare(self, other_side: Any) -> list[str]: | |
return [ | |
"comparison failed", | |
f"Obtained: {other_side}", | |
f"Expected: {self}", | |
] | |
def __eq__(self, actual) -> bool: | |
return all( | |
a == self._approx_scalar(x) for a, x in self._yield_comparisons(actual) | |
) | |
def __bool__(self): | |
__tracebackhide__ = True | |
raise AssertionError( | |
"approx() is not supported in a boolean context.\nDid you mean: `assert a == approx(b)`?" | |
) | |
# Ignore type because of https://github.com/python/mypy/issues/4266. | |
__hash__ = None # type: ignore | |
def __ne__(self, actual) -> bool: | |
return not (actual == self) | |
def _approx_scalar(self, x) -> ApproxScalar: | |
if isinstance(x, Decimal): | |
return ApproxDecimal(x, rel=self.rel, abs=self.abs, nan_ok=self.nan_ok) | |
return ApproxScalar(x, rel=self.rel, abs=self.abs, nan_ok=self.nan_ok) | |
def _yield_comparisons(self, actual): | |
"""Yield all the pairs of numbers to be compared. | |
This is used to implement the `__eq__` method. | |
""" | |
raise NotImplementedError | |
def _check_type(self) -> None: | |
"""Raise a TypeError if the expected value is not a valid type.""" | |
# This is only a concern if the expected value is a sequence. In every | |
# other case, the approx() function ensures that the expected value has | |
# a numeric type. For this reason, the default is to do nothing. The | |
# classes that deal with sequences should reimplement this method to | |
# raise if there are any non-numeric elements in the sequence. | |
def _recursive_sequence_map(f, x): | |
"""Recursively map a function over a sequence of arbitrary depth""" | |
if isinstance(x, (list, tuple)): | |
seq_type = type(x) | |
return seq_type(_recursive_sequence_map(f, xi) for xi in x) | |
elif _is_sequence_like(x): | |
return [_recursive_sequence_map(f, xi) for xi in x] | |
else: | |
return f(x) | |
class ApproxNumpy(ApproxBase): | |
"""Perform approximate comparisons where the expected value is numpy array.""" | |
def __repr__(self) -> str: | |
list_scalars = _recursive_sequence_map( | |
self._approx_scalar, self.expected.tolist() | |
) | |
return f"approx({list_scalars!r})" | |
def _repr_compare(self, other_side: ndarray | list[Any]) -> list[str]: | |
import itertools | |
import math | |
def get_value_from_nested_list( | |
nested_list: list[Any], nd_index: tuple[Any, ...] | |
) -> Any: | |
""" | |
Helper function to get the value out of a nested list, given an n-dimensional index. | |
This mimics numpy's indexing, but for raw nested python lists. | |
""" | |
value: Any = nested_list | |
for i in nd_index: | |
value = value[i] | |
return value | |
np_array_shape = self.expected.shape | |
approx_side_as_seq = _recursive_sequence_map( | |
self._approx_scalar, self.expected.tolist() | |
) | |
# convert other_side to numpy array to ensure shape attribute is available | |
other_side_as_array = _as_numpy_array(other_side) | |
assert other_side_as_array is not None | |
if np_array_shape != other_side_as_array.shape: | |
return [ | |
"Impossible to compare arrays with different shapes.", | |
f"Shapes: {np_array_shape} and {other_side_as_array.shape}", | |
] | |
number_of_elements = self.expected.size | |
max_abs_diff = -math.inf | |
max_rel_diff = -math.inf | |
different_ids = [] | |
for index in itertools.product(*(range(i) for i in np_array_shape)): | |
approx_value = get_value_from_nested_list(approx_side_as_seq, index) | |
other_value = get_value_from_nested_list(other_side_as_array, index) | |
if approx_value != other_value: | |
abs_diff = abs(approx_value.expected - other_value) | |
max_abs_diff = max(max_abs_diff, abs_diff) | |
if other_value == 0.0: | |
max_rel_diff = math.inf | |
else: | |
max_rel_diff = max(max_rel_diff, abs_diff / abs(other_value)) | |
different_ids.append(index) | |
message_data = [ | |
( | |
str(index), | |
str(get_value_from_nested_list(other_side_as_array, index)), | |
str(get_value_from_nested_list(approx_side_as_seq, index)), | |
) | |
for index in different_ids | |
] | |
return _compare_approx( | |
self.expected, | |
message_data, | |
number_of_elements, | |
different_ids, | |
max_abs_diff, | |
max_rel_diff, | |
) | |
def __eq__(self, actual) -> bool: | |
import numpy as np | |
# self.expected is supposed to always be an array here. | |
if not np.isscalar(actual): | |
try: | |
actual = np.asarray(actual) | |
except Exception as e: | |
raise TypeError(f"cannot compare '{actual}' to numpy.ndarray") from e | |
if not np.isscalar(actual) and actual.shape != self.expected.shape: | |
return False | |
return super().__eq__(actual) | |
def _yield_comparisons(self, actual): | |
import numpy as np | |
# `actual` can either be a numpy array or a scalar, it is treated in | |
# `__eq__` before being passed to `ApproxBase.__eq__`, which is the | |
# only method that calls this one. | |
if np.isscalar(actual): | |
for i in np.ndindex(self.expected.shape): | |
yield actual, self.expected[i].item() | |
else: | |
for i in np.ndindex(self.expected.shape): | |
yield actual[i].item(), self.expected[i].item() | |
class ApproxMapping(ApproxBase): | |
"""Perform approximate comparisons where the expected value is a mapping | |
with numeric values (the keys can be anything).""" | |
def __repr__(self) -> str: | |
return f"approx({({k: self._approx_scalar(v) for k, v in self.expected.items()})!r})" | |
def _repr_compare(self, other_side: Mapping[object, float]) -> list[str]: | |
import math | |
approx_side_as_map = { | |
k: self._approx_scalar(v) for k, v in self.expected.items() | |
} | |
number_of_elements = len(approx_side_as_map) | |
max_abs_diff = -math.inf | |
max_rel_diff = -math.inf | |
different_ids = [] | |
for (approx_key, approx_value), other_value in zip( | |
approx_side_as_map.items(), other_side.values() | |
): | |
if approx_value != other_value: | |
if approx_value.expected is not None and other_value is not None: | |
max_abs_diff = max( | |
max_abs_diff, abs(approx_value.expected - other_value) | |
) | |
if approx_value.expected == 0.0: | |
max_rel_diff = math.inf | |
else: | |
max_rel_diff = max( | |
max_rel_diff, | |
abs( | |
(approx_value.expected - other_value) | |
/ approx_value.expected | |
), | |
) | |
different_ids.append(approx_key) | |
message_data = [ | |
(str(key), str(other_side[key]), str(approx_side_as_map[key])) | |
for key in different_ids | |
] | |
return _compare_approx( | |
self.expected, | |
message_data, | |
number_of_elements, | |
different_ids, | |
max_abs_diff, | |
max_rel_diff, | |
) | |
def __eq__(self, actual) -> bool: | |
try: | |
if set(actual.keys()) != set(self.expected.keys()): | |
return False | |
except AttributeError: | |
return False | |
return super().__eq__(actual) | |
def _yield_comparisons(self, actual): | |
for k in self.expected.keys(): | |
yield actual[k], self.expected[k] | |
def _check_type(self) -> None: | |
__tracebackhide__ = True | |
for key, value in self.expected.items(): | |
if isinstance(value, type(self.expected)): | |
msg = "pytest.approx() does not support nested dictionaries: key={!r} value={!r}\n full mapping={}" | |
raise TypeError(msg.format(key, value, pprint.pformat(self.expected))) | |
class ApproxSequenceLike(ApproxBase): | |
"""Perform approximate comparisons where the expected value is a sequence of numbers.""" | |
def __repr__(self) -> str: | |
seq_type = type(self.expected) | |
if seq_type not in (tuple, list): | |
seq_type = list | |
return f"approx({seq_type(self._approx_scalar(x) for x in self.expected)!r})" | |
def _repr_compare(self, other_side: Sequence[float]) -> list[str]: | |
import math | |
if len(self.expected) != len(other_side): | |
return [ | |
"Impossible to compare lists with different sizes.", | |
f"Lengths: {len(self.expected)} and {len(other_side)}", | |
] | |
approx_side_as_map = _recursive_sequence_map(self._approx_scalar, self.expected) | |
number_of_elements = len(approx_side_as_map) | |
max_abs_diff = -math.inf | |
max_rel_diff = -math.inf | |
different_ids = [] | |
for i, (approx_value, other_value) in enumerate( | |
zip(approx_side_as_map, other_side) | |
): | |
if approx_value != other_value: | |
abs_diff = abs(approx_value.expected - other_value) | |
max_abs_diff = max(max_abs_diff, abs_diff) | |
if other_value == 0.0: | |
max_rel_diff = math.inf | |
else: | |
max_rel_diff = max(max_rel_diff, abs_diff / abs(other_value)) | |
different_ids.append(i) | |
message_data = [ | |
(str(i), str(other_side[i]), str(approx_side_as_map[i])) | |
for i in different_ids | |
] | |
return _compare_approx( | |
self.expected, | |
message_data, | |
number_of_elements, | |
different_ids, | |
max_abs_diff, | |
max_rel_diff, | |
) | |
def __eq__(self, actual) -> bool: | |
try: | |
if len(actual) != len(self.expected): | |
return False | |
except TypeError: | |
return False | |
return super().__eq__(actual) | |
def _yield_comparisons(self, actual): | |
return zip(actual, self.expected) | |
def _check_type(self) -> None: | |
__tracebackhide__ = True | |
for index, x in enumerate(self.expected): | |
if isinstance(x, type(self.expected)): | |
msg = "pytest.approx() does not support nested data structures: {!r} at index {}\n full sequence: {}" | |
raise TypeError(msg.format(x, index, pprint.pformat(self.expected))) | |
class ApproxScalar(ApproxBase): | |
"""Perform approximate comparisons where the expected value is a single number.""" | |
# Using Real should be better than this Union, but not possible yet: | |
# https://github.com/python/typeshed/pull/3108 | |
DEFAULT_ABSOLUTE_TOLERANCE: float | Decimal = 1e-12 | |
DEFAULT_RELATIVE_TOLERANCE: float | Decimal = 1e-6 | |
def __repr__(self) -> str: | |
"""Return a string communicating both the expected value and the | |
tolerance for the comparison being made. | |
For example, ``1.0 ± 1e-6``, ``(3+4j) ± 5e-6 ∠ ±180°``. | |
""" | |
# Don't show a tolerance for values that aren't compared using | |
# tolerances, i.e. non-numerics and infinities. Need to call abs to | |
# handle complex numbers, e.g. (inf + 1j). | |
if (not isinstance(self.expected, (Complex, Decimal))) or math.isinf( | |
abs(self.expected) | |
): | |
return str(self.expected) | |
# If a sensible tolerance can't be calculated, self.tolerance will | |
# raise a ValueError. In this case, display '???'. | |
try: | |
vetted_tolerance = f"{self.tolerance:.1e}" | |
if ( | |
isinstance(self.expected, Complex) | |
and self.expected.imag | |
and not math.isinf(self.tolerance) | |
): | |
vetted_tolerance += " ∠ ±180°" | |
except ValueError: | |
vetted_tolerance = "???" | |
return f"{self.expected} ± {vetted_tolerance}" | |
def __eq__(self, actual) -> bool: | |
"""Return whether the given value is equal to the expected value | |
within the pre-specified tolerance.""" | |
asarray = _as_numpy_array(actual) | |
if asarray is not None: | |
# Call ``__eq__()`` manually to prevent infinite-recursion with | |
# numpy<1.13. See #3748. | |
return all(self.__eq__(a) for a in asarray.flat) | |
# Short-circuit exact equality. | |
if actual == self.expected: | |
return True | |
# If either type is non-numeric, fall back to strict equality. | |
# NB: we need Complex, rather than just Number, to ensure that __abs__, | |
# __sub__, and __float__ are defined. | |
if not ( | |
isinstance(self.expected, (Complex, Decimal)) | |
and isinstance(actual, (Complex, Decimal)) | |
): | |
return False | |
# Allow the user to control whether NaNs are considered equal to each | |
# other or not. The abs() calls are for compatibility with complex | |
# numbers. | |
if math.isnan(abs(self.expected)): | |
return self.nan_ok and math.isnan(abs(actual)) | |
# Infinity shouldn't be approximately equal to anything but itself, but | |
# if there's a relative tolerance, it will be infinite and infinity | |
# will seem approximately equal to everything. The equal-to-itself | |
# case would have been short circuited above, so here we can just | |
# return false if the expected value is infinite. The abs() call is | |
# for compatibility with complex numbers. | |
if math.isinf(abs(self.expected)): | |
return False | |
# Return true if the two numbers are within the tolerance. | |
result: bool = abs(self.expected - actual) <= self.tolerance | |
return result | |
# Ignore type because of https://github.com/python/mypy/issues/4266. | |
__hash__ = None # type: ignore | |
def tolerance(self): | |
"""Return the tolerance for the comparison. | |
This could be either an absolute tolerance or a relative tolerance, | |
depending on what the user specified or which would be larger. | |
""" | |
def set_default(x, default): | |
return x if x is not None else default | |
# Figure out what the absolute tolerance should be. ``self.abs`` is | |
# either None or a value specified by the user. | |
absolute_tolerance = set_default(self.abs, self.DEFAULT_ABSOLUTE_TOLERANCE) | |
if absolute_tolerance < 0: | |
raise ValueError( | |
f"absolute tolerance can't be negative: {absolute_tolerance}" | |
) | |
if math.isnan(absolute_tolerance): | |
raise ValueError("absolute tolerance can't be NaN.") | |
# If the user specified an absolute tolerance but not a relative one, | |
# just return the absolute tolerance. | |
if self.rel is None: | |
if self.abs is not None: | |
return absolute_tolerance | |
# Figure out what the relative tolerance should be. ``self.rel`` is | |
# either None or a value specified by the user. This is done after | |
# we've made sure the user didn't ask for an absolute tolerance only, | |
# because we don't want to raise errors about the relative tolerance if | |
# we aren't even going to use it. | |
relative_tolerance = set_default( | |
self.rel, self.DEFAULT_RELATIVE_TOLERANCE | |
) * abs(self.expected) | |
if relative_tolerance < 0: | |
raise ValueError( | |
f"relative tolerance can't be negative: {relative_tolerance}" | |
) | |
if math.isnan(relative_tolerance): | |
raise ValueError("relative tolerance can't be NaN.") | |
# Return the larger of the relative and absolute tolerances. | |
return max(relative_tolerance, absolute_tolerance) | |
class ApproxDecimal(ApproxScalar): | |
"""Perform approximate comparisons where the expected value is a Decimal.""" | |
DEFAULT_ABSOLUTE_TOLERANCE = Decimal("1e-12") | |
DEFAULT_RELATIVE_TOLERANCE = Decimal("1e-6") | |
def approx(expected, rel=None, abs=None, nan_ok: bool = False) -> ApproxBase: | |
"""Assert that two numbers (or two ordered sequences of numbers) are equal to each other | |
within some tolerance. | |
Due to the :doc:`python:tutorial/floatingpoint`, numbers that we | |
would intuitively expect to be equal are not always so:: | |
>>> 0.1 + 0.2 == 0.3 | |
False | |
This problem is commonly encountered when writing tests, e.g. when making | |
sure that floating-point values are what you expect them to be. One way to | |
deal with this problem is to assert that two floating-point numbers are | |
equal to within some appropriate tolerance:: | |
>>> abs((0.1 + 0.2) - 0.3) < 1e-6 | |
True | |
However, comparisons like this are tedious to write and difficult to | |
understand. Furthermore, absolute comparisons like the one above are | |
usually discouraged because there's no tolerance that works well for all | |
situations. ``1e-6`` is good for numbers around ``1``, but too small for | |
very big numbers and too big for very small ones. It's better to express | |
the tolerance as a fraction of the expected value, but relative comparisons | |
like that are even more difficult to write correctly and concisely. | |
The ``approx`` class performs floating-point comparisons using a syntax | |
that's as intuitive as possible:: | |
>>> from pytest import approx | |
>>> 0.1 + 0.2 == approx(0.3) | |
True | |
The same syntax also works for ordered sequences of numbers:: | |
>>> (0.1 + 0.2, 0.2 + 0.4) == approx((0.3, 0.6)) | |
True | |
``numpy`` arrays:: | |
>>> import numpy as np # doctest: +SKIP | |
>>> np.array([0.1, 0.2]) + np.array([0.2, 0.4]) == approx(np.array([0.3, 0.6])) # doctest: +SKIP | |
True | |
And for a ``numpy`` array against a scalar:: | |
>>> import numpy as np # doctest: +SKIP | |
>>> np.array([0.1, 0.2]) + np.array([0.2, 0.1]) == approx(0.3) # doctest: +SKIP | |
True | |
Only ordered sequences are supported, because ``approx`` needs | |
to infer the relative position of the sequences without ambiguity. This means | |
``sets`` and other unordered sequences are not supported. | |
Finally, dictionary *values* can also be compared:: | |
>>> {'a': 0.1 + 0.2, 'b': 0.2 + 0.4} == approx({'a': 0.3, 'b': 0.6}) | |
True | |
The comparison will be true if both mappings have the same keys and their | |
respective values match the expected tolerances. | |
**Tolerances** | |
By default, ``approx`` considers numbers within a relative tolerance of | |
``1e-6`` (i.e. one part in a million) of its expected value to be equal. | |
This treatment would lead to surprising results if the expected value was | |
``0.0``, because nothing but ``0.0`` itself is relatively close to ``0.0``. | |
To handle this case less surprisingly, ``approx`` also considers numbers | |
within an absolute tolerance of ``1e-12`` of its expected value to be | |
equal. Infinity and NaN are special cases. Infinity is only considered | |
equal to itself, regardless of the relative tolerance. NaN is not | |
considered equal to anything by default, but you can make it be equal to | |
itself by setting the ``nan_ok`` argument to True. (This is meant to | |
facilitate comparing arrays that use NaN to mean "no data".) | |
Both the relative and absolute tolerances can be changed by passing | |
arguments to the ``approx`` constructor:: | |
>>> 1.0001 == approx(1) | |
False | |
>>> 1.0001 == approx(1, rel=1e-3) | |
True | |
>>> 1.0001 == approx(1, abs=1e-3) | |
True | |
If you specify ``abs`` but not ``rel``, the comparison will not consider | |
the relative tolerance at all. In other words, two numbers that are within | |
the default relative tolerance of ``1e-6`` will still be considered unequal | |
if they exceed the specified absolute tolerance. If you specify both | |
``abs`` and ``rel``, the numbers will be considered equal if either | |
tolerance is met:: | |
>>> 1 + 1e-8 == approx(1) | |
True | |
>>> 1 + 1e-8 == approx(1, abs=1e-12) | |
False | |
>>> 1 + 1e-8 == approx(1, rel=1e-6, abs=1e-12) | |
True | |
You can also use ``approx`` to compare nonnumeric types, or dicts and | |
sequences containing nonnumeric types, in which case it falls back to | |
strict equality. This can be useful for comparing dicts and sequences that | |
can contain optional values:: | |
>>> {"required": 1.0000005, "optional": None} == approx({"required": 1, "optional": None}) | |
True | |
>>> [None, 1.0000005] == approx([None,1]) | |
True | |
>>> ["foo", 1.0000005] == approx([None,1]) | |
False | |
If you're thinking about using ``approx``, then you might want to know how | |
it compares to other good ways of comparing floating-point numbers. All of | |
these algorithms are based on relative and absolute tolerances and should | |
agree for the most part, but they do have meaningful differences: | |
- ``math.isclose(a, b, rel_tol=1e-9, abs_tol=0.0)``: True if the relative | |
tolerance is met w.r.t. either ``a`` or ``b`` or if the absolute | |
tolerance is met. Because the relative tolerance is calculated w.r.t. | |
both ``a`` and ``b``, this test is symmetric (i.e. neither ``a`` nor | |
``b`` is a "reference value"). You have to specify an absolute tolerance | |
if you want to compare to ``0.0`` because there is no tolerance by | |
default. More information: :py:func:`math.isclose`. | |
- ``numpy.isclose(a, b, rtol=1e-5, atol=1e-8)``: True if the difference | |
between ``a`` and ``b`` is less that the sum of the relative tolerance | |
w.r.t. ``b`` and the absolute tolerance. Because the relative tolerance | |
is only calculated w.r.t. ``b``, this test is asymmetric and you can | |
think of ``b`` as the reference value. Support for comparing sequences | |
is provided by :py:func:`numpy.allclose`. More information: | |
:std:doc:`numpy:reference/generated/numpy.isclose`. | |
- ``unittest.TestCase.assertAlmostEqual(a, b)``: True if ``a`` and ``b`` | |
are within an absolute tolerance of ``1e-7``. No relative tolerance is | |
considered , so this function is not appropriate for very large or very | |
small numbers. Also, it's only available in subclasses of ``unittest.TestCase`` | |
and it's ugly because it doesn't follow PEP8. More information: | |
:py:meth:`unittest.TestCase.assertAlmostEqual`. | |
- ``a == pytest.approx(b, rel=1e-6, abs=1e-12)``: True if the relative | |
tolerance is met w.r.t. ``b`` or if the absolute tolerance is met. | |
Because the relative tolerance is only calculated w.r.t. ``b``, this test | |
is asymmetric and you can think of ``b`` as the reference value. In the | |
special case that you explicitly specify an absolute tolerance but not a | |
relative tolerance, only the absolute tolerance is considered. | |
.. note:: | |
``approx`` can handle numpy arrays, but we recommend the | |
specialised test helpers in :std:doc:`numpy:reference/routines.testing` | |
if you need support for comparisons, NaNs, or ULP-based tolerances. | |
To match strings using regex, you can use | |
`Matches <https://github.com/asottile/re-assert#re_assertmatchespattern-str-args-kwargs>`_ | |
from the | |
`re_assert package <https://github.com/asottile/re-assert>`_. | |
.. warning:: | |
.. versionchanged:: 3.2 | |
In order to avoid inconsistent behavior, :py:exc:`TypeError` is | |
raised for ``>``, ``>=``, ``<`` and ``<=`` comparisons. | |
The example below illustrates the problem:: | |
assert approx(0.1) > 0.1 + 1e-10 # calls approx(0.1).__gt__(0.1 + 1e-10) | |
assert 0.1 + 1e-10 > approx(0.1) # calls approx(0.1).__lt__(0.1 + 1e-10) | |
In the second example one expects ``approx(0.1).__le__(0.1 + 1e-10)`` | |
to be called. But instead, ``approx(0.1).__lt__(0.1 + 1e-10)`` is used to | |
comparison. This is because the call hierarchy of rich comparisons | |
follows a fixed behavior. More information: :py:meth:`object.__ge__` | |
.. versionchanged:: 3.7.1 | |
``approx`` raises ``TypeError`` when it encounters a dict value or | |
sequence element of nonnumeric type. | |
.. versionchanged:: 6.1.0 | |
``approx`` falls back to strict equality for nonnumeric types instead | |
of raising ``TypeError``. | |
""" | |
# Delegate the comparison to a class that knows how to deal with the type | |
# of the expected value (e.g. int, float, list, dict, numpy.array, etc). | |
# | |
# The primary responsibility of these classes is to implement ``__eq__()`` | |
# and ``__repr__()``. The former is used to actually check if some | |
# "actual" value is equivalent to the given expected value within the | |
# allowed tolerance. The latter is used to show the user the expected | |
# value and tolerance, in the case that a test failed. | |
# | |
# The actual logic for making approximate comparisons can be found in | |
# ApproxScalar, which is used to compare individual numbers. All of the | |
# other Approx classes eventually delegate to this class. The ApproxBase | |
# class provides some convenient methods and overloads, but isn't really | |
# essential. | |
__tracebackhide__ = True | |
if isinstance(expected, Decimal): | |
cls: type[ApproxBase] = ApproxDecimal | |
elif isinstance(expected, Mapping): | |
cls = ApproxMapping | |
elif _is_numpy_array(expected): | |
expected = _as_numpy_array(expected) | |
cls = ApproxNumpy | |
elif _is_sequence_like(expected): | |
cls = ApproxSequenceLike | |
elif isinstance(expected, Collection) and not isinstance(expected, (str, bytes)): | |
msg = f"pytest.approx() only supports ordered sequences, but got: {expected!r}" | |
raise TypeError(msg) | |
else: | |
cls = ApproxScalar | |
return cls(expected, rel, abs, nan_ok) | |
def _is_sequence_like(expected: object) -> bool: | |
return ( | |
hasattr(expected, "__getitem__") | |
and isinstance(expected, Sized) | |
and not isinstance(expected, (str, bytes)) | |
) | |
def _is_numpy_array(obj: object) -> bool: | |
""" | |
Return true if the given object is implicitly convertible to ndarray, | |
and numpy is already imported. | |
""" | |
return _as_numpy_array(obj) is not None | |
def _as_numpy_array(obj: object) -> ndarray | None: | |
""" | |
Return an ndarray if the given object is implicitly convertible to ndarray, | |
and numpy is already imported, otherwise None. | |
""" | |
import sys | |
np: Any = sys.modules.get("numpy") | |
if np is not None: | |
# avoid infinite recursion on numpy scalars, which have __array__ | |
if np.isscalar(obj): | |
return None | |
elif isinstance(obj, np.ndarray): | |
return obj | |
elif hasattr(obj, "__array__") or hasattr("obj", "__array_interface__"): | |
return np.asarray(obj) | |
return None | |
# builtin pytest.raises helper | |
E = TypeVar("E", bound=BaseException) | |
def raises( | |
expected_exception: type[E] | tuple[type[E], ...], | |
*, | |
match: str | Pattern[str] | None = ..., | |
) -> RaisesContext[E]: ... | |
def raises( | |
expected_exception: type[E] | tuple[type[E], ...], | |
func: Callable[..., Any], | |
*args: Any, | |
**kwargs: Any, | |
) -> _pytest._code.ExceptionInfo[E]: ... | |
def raises( | |
expected_exception: type[E] | tuple[type[E], ...], *args: Any, **kwargs: Any | |
) -> RaisesContext[E] | _pytest._code.ExceptionInfo[E]: | |
r"""Assert that a code block/function call raises an exception type, or one of its subclasses. | |
:param expected_exception: | |
The expected exception type, or a tuple if one of multiple possible | |
exception types are expected. Note that subclasses of the passed exceptions | |
will also match. | |
:kwparam str | re.Pattern[str] | None match: | |
If specified, a string containing a regular expression, | |
or a regular expression object, that is tested against the string | |
representation of the exception and its :pep:`678` `__notes__` | |
using :func:`re.search`. | |
To match a literal string that may contain :ref:`special characters | |
<re-syntax>`, the pattern can first be escaped with :func:`re.escape`. | |
(This is only used when ``pytest.raises`` is used as a context manager, | |
and passed through to the function otherwise. | |
When using ``pytest.raises`` as a function, you can use: | |
``pytest.raises(Exc, func, match="passed on").match("my pattern")``.) | |
Use ``pytest.raises`` as a context manager, which will capture the exception of the given | |
type, or any of its subclasses:: | |
>>> import pytest | |
>>> with pytest.raises(ZeroDivisionError): | |
... 1/0 | |
If the code block does not raise the expected exception (:class:`ZeroDivisionError` in the example | |
above), or no exception at all, the check will fail instead. | |
You can also use the keyword argument ``match`` to assert that the | |
exception matches a text or regex:: | |
>>> with pytest.raises(ValueError, match='must be 0 or None'): | |
... raise ValueError("value must be 0 or None") | |
>>> with pytest.raises(ValueError, match=r'must be \d+$'): | |
... raise ValueError("value must be 42") | |
The ``match`` argument searches the formatted exception string, which includes any | |
`PEP-678 <https://peps.python.org/pep-0678/>`__ ``__notes__``: | |
>>> with pytest.raises(ValueError, match=r"had a note added"): # doctest: +SKIP | |
... e = ValueError("value must be 42") | |
... e.add_note("had a note added") | |
... raise e | |
The context manager produces an :class:`ExceptionInfo` object which can be used to inspect the | |
details of the captured exception:: | |
>>> with pytest.raises(ValueError) as exc_info: | |
... raise ValueError("value must be 42") | |
>>> assert exc_info.type is ValueError | |
>>> assert exc_info.value.args[0] == "value must be 42" | |
.. warning:: | |
Given that ``pytest.raises`` matches subclasses, be wary of using it to match :class:`Exception` like this:: | |
with pytest.raises(Exception): # Careful, this will catch ANY exception raised. | |
some_function() | |
Because :class:`Exception` is the base class of almost all exceptions, it is easy for this to hide | |
real bugs, where the user wrote this expecting a specific exception, but some other exception is being | |
raised due to a bug introduced during a refactoring. | |
Avoid using ``pytest.raises`` to catch :class:`Exception` unless certain that you really want to catch | |
**any** exception raised. | |
.. note:: | |
When using ``pytest.raises`` as a context manager, it's worthwhile to | |
note that normal context manager rules apply and that the exception | |
raised *must* be the final line in the scope of the context manager. | |
Lines of code after that, within the scope of the context manager will | |
not be executed. For example:: | |
>>> value = 15 | |
>>> with pytest.raises(ValueError) as exc_info: | |
... if value > 10: | |
... raise ValueError("value must be <= 10") | |
... assert exc_info.type is ValueError # This will not execute. | |
Instead, the following approach must be taken (note the difference in | |
scope):: | |
>>> with pytest.raises(ValueError) as exc_info: | |
... if value > 10: | |
... raise ValueError("value must be <= 10") | |
... | |
>>> assert exc_info.type is ValueError | |
**Using with** ``pytest.mark.parametrize`` | |
When using :ref:`pytest.mark.parametrize ref` | |
it is possible to parametrize tests such that | |
some runs raise an exception and others do not. | |
See :ref:`parametrizing_conditional_raising` for an example. | |
.. seealso:: | |
:ref:`assertraises` for more examples and detailed discussion. | |
**Legacy form** | |
It is possible to specify a callable by passing a to-be-called lambda:: | |
>>> raises(ZeroDivisionError, lambda: 1/0) | |
<ExceptionInfo ...> | |
or you can specify an arbitrary callable with arguments:: | |
>>> def f(x): return 1/x | |
... | |
>>> raises(ZeroDivisionError, f, 0) | |
<ExceptionInfo ...> | |
>>> raises(ZeroDivisionError, f, x=0) | |
<ExceptionInfo ...> | |
The form above is fully supported but discouraged for new code because the | |
context manager form is regarded as more readable and less error-prone. | |
.. note:: | |
Similar to caught exception objects in Python, explicitly clearing | |
local references to returned ``ExceptionInfo`` objects can | |
help the Python interpreter speed up its garbage collection. | |
Clearing those references breaks a reference cycle | |
(``ExceptionInfo`` --> caught exception --> frame stack raising | |
the exception --> current frame stack --> local variables --> | |
``ExceptionInfo``) which makes Python keep all objects referenced | |
from that cycle (including all local variables in the current | |
frame) alive until the next cyclic garbage collection run. | |
More detailed information can be found in the official Python | |
documentation for :ref:`the try statement <python:try>`. | |
""" | |
__tracebackhide__ = True | |
if not expected_exception: | |
raise ValueError( | |
f"Expected an exception type or a tuple of exception types, but got `{expected_exception!r}`. " | |
f"Raising exceptions is already understood as failing the test, so you don't need " | |
f"any special code to say 'this should never raise an exception'." | |
) | |
if isinstance(expected_exception, type): | |
expected_exceptions: tuple[type[E], ...] = (expected_exception,) | |
else: | |
expected_exceptions = expected_exception | |
for exc in expected_exceptions: | |
if not isinstance(exc, type) or not issubclass(exc, BaseException): | |
msg = "expected exception must be a BaseException type, not {}" # type: ignore[unreachable] | |
not_a = exc.__name__ if isinstance(exc, type) else type(exc).__name__ | |
raise TypeError(msg.format(not_a)) | |
message = f"DID NOT RAISE {expected_exception}" | |
if not args: | |
match: str | Pattern[str] | None = kwargs.pop("match", None) | |
if kwargs: | |
msg = "Unexpected keyword arguments passed to pytest.raises: " | |
msg += ", ".join(sorted(kwargs)) | |
msg += "\nUse context-manager form instead?" | |
raise TypeError(msg) | |
return RaisesContext(expected_exception, message, match) | |
else: | |
func = args[0] | |
if not callable(func): | |
raise TypeError(f"{func!r} object (type: {type(func)}) must be callable") | |
try: | |
func(*args[1:], **kwargs) | |
except expected_exception as e: | |
return _pytest._code.ExceptionInfo.from_exception(e) | |
fail(message) | |
# This doesn't work with mypy for now. Use fail.Exception instead. | |
raises.Exception = fail.Exception # type: ignore | |
class RaisesContext(ContextManager[_pytest._code.ExceptionInfo[E]]): | |
def __init__( | |
self, | |
expected_exception: type[E] | tuple[type[E], ...], | |
message: str, | |
match_expr: str | Pattern[str] | None = None, | |
) -> None: | |
self.expected_exception = expected_exception | |
self.message = message | |
self.match_expr = match_expr | |
self.excinfo: _pytest._code.ExceptionInfo[E] | None = None | |
if self.match_expr is not None: | |
re_error = None | |
try: | |
re.compile(self.match_expr) | |
except re.error as e: | |
re_error = e | |
if re_error is not None: | |
fail(f"Invalid regex pattern provided to 'match': {re_error}") | |
def __enter__(self) -> _pytest._code.ExceptionInfo[E]: | |
self.excinfo = _pytest._code.ExceptionInfo.for_later() | |
return self.excinfo | |
def __exit__( | |
self, | |
exc_type: type[BaseException] | None, | |
exc_val: BaseException | None, | |
exc_tb: TracebackType | None, | |
) -> bool: | |
__tracebackhide__ = True | |
if exc_type is None: | |
fail(self.message) | |
assert self.excinfo is not None | |
if not issubclass(exc_type, self.expected_exception): | |
return False | |
# Cast to narrow the exception type now that it's verified. | |
exc_info = cast(Tuple[Type[E], E, TracebackType], (exc_type, exc_val, exc_tb)) | |
self.excinfo.fill_unfilled(exc_info) | |
if self.match_expr is not None: | |
self.excinfo.match(self.match_expr) | |
return True | |