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import functools |
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import inspect |
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import os |
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import random |
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from typing import Tuple, Type |
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import traceback |
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import unittest |
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import warnings |
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import numpy |
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import cupy |
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from cupy.exceptions import AxisError |
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from cupy.testing import _array |
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from cupy.testing import _parameterized |
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import cupyx |
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import cupyx.scipy.sparse |
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from cupy.testing._pytest_impl import is_available |
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if is_available(): |
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import _pytest.outcomes |
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_is_pytest_available = True |
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_skip_classes: Tuple[Type, ...] = ( |
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unittest.SkipTest, _pytest.outcomes.Skipped) |
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else: |
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_is_pytest_available = False |
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_skip_classes = unittest.SkipTest, |
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def _format_exception(exc): |
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if exc is None: |
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return None |
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return ''.join(traceback.TracebackException.from_exception(exc).format()) |
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def _call_func(impl, args, kw): |
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exceptions = Exception, |
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if _is_pytest_available: |
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exceptions += _pytest.outcomes.Skipped, |
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try: |
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result = impl(*args, **kw) |
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error = None |
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except exceptions as e: |
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tb = e.__traceback__ |
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if tb.tb_next is None: |
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raise e |
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result = None |
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error = e |
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return result, error |
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def _call_func_cupy(impl, args, kw, name, sp_name, scipy_name): |
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assert isinstance(name, str) |
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assert sp_name is None or isinstance(sp_name, str) |
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assert scipy_name is None or isinstance(scipy_name, str) |
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kw = kw.copy() |
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if sp_name: |
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kw[sp_name] = cupyx.scipy.sparse |
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if scipy_name: |
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kw[scipy_name] = cupyx.scipy |
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kw[name] = cupy |
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result, error = _call_func(impl, args, kw) |
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return result, error |
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def _call_func_numpy(impl, args, kw, name, sp_name, scipy_name): |
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assert isinstance(name, str) |
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assert sp_name is None or isinstance(sp_name, str) |
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assert scipy_name is None or isinstance(scipy_name, str) |
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kw = kw.copy() |
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kw[name] = numpy |
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if sp_name: |
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import scipy.sparse |
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kw[sp_name] = scipy.sparse |
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if scipy_name: |
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import scipy |
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kw[scipy_name] = scipy |
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result, error = _call_func(impl, args, kw) |
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return result, error |
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def _call_func_numpy_cupy(impl, args, kw, name, sp_name, scipy_name): |
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cupy_result, cupy_error = _call_func_cupy( |
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impl, args, kw, name, sp_name, scipy_name) |
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numpy_result, numpy_error = _call_func_numpy( |
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impl, args, kw, name, sp_name, scipy_name) |
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return ( |
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cupy_result, cupy_error, |
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numpy_result, numpy_error) |
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_numpy_errors = [ |
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AttributeError, Exception, IndexError, TypeError, ValueError, |
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NotImplementedError, DeprecationWarning, |
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AxisError, numpy.linalg.LinAlgError, |
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] |
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def _check_numpy_cupy_error_compatible(cupy_error, numpy_error): |
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"""Checks if try/except blocks are equivalent up to public error classes |
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""" |
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return all(isinstance(cupy_error, err) == isinstance(numpy_error, err) |
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for err in _numpy_errors) |
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def _fail_test_with_unexpected_errors( |
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tb, msg_format, cupy_error, numpy_error): |
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msg = msg_format.format( |
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cupy_error=_format_exception(cupy_error), |
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numpy_error=_format_exception(numpy_error)) |
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raise AssertionError(msg).with_traceback(tb) |
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def _check_cupy_numpy_error(cupy_error, numpy_error, |
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accept_error=False): |
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if (isinstance(cupy_error, _skip_classes) |
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and isinstance(numpy_error, _skip_classes)): |
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if cupy_error.__class__ is not numpy_error.__class__: |
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raise AssertionError( |
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'Both numpy and cupy were skipped but with different ' |
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'exceptions.') |
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if cupy_error.args != numpy_error.args: |
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raise AssertionError( |
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'Both numpy and cupy were skipped but with different causes.') |
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raise numpy_error |
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if os.environ.get('CUPY_CI', '') != '' and cupy_error is not None: |
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frame = traceback.extract_tb(cupy_error.__traceback__)[-1] |
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filename = os.path.basename(frame.filename) |
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if filename == 'test_helper.py': |
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pass |
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elif filename.startswith('test_'): |
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_fail_test_with_unexpected_errors( |
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cupy_error.__traceback__, |
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'Error was raised from test code.\n\n{cupy_error}', |
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cupy_error, None) |
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if accept_error is True: |
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accept_error = Exception |
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elif not accept_error: |
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accept_error = () |
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if cupy_error is None and numpy_error is None: |
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raise AssertionError( |
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'Both cupy and numpy are expected to raise errors, but not') |
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elif cupy_error is None: |
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_fail_test_with_unexpected_errors( |
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numpy_error.__traceback__, |
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'Only numpy raises error\n\n{numpy_error}', |
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None, numpy_error) |
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elif numpy_error is None: |
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_fail_test_with_unexpected_errors( |
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cupy_error.__traceback__, |
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'Only cupy raises error\n\n{cupy_error}', |
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cupy_error, None) |
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elif not _check_numpy_cupy_error_compatible(cupy_error, numpy_error): |
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_fail_test_with_unexpected_errors( |
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cupy_error.__traceback__, |
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'''Different types of errors occurred |
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cupy |
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{cupy_error} |
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numpy |
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{numpy_error} |
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''', |
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cupy_error, numpy_error) |
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elif not (isinstance(cupy_error, accept_error) |
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and isinstance(numpy_error, accept_error)): |
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_fail_test_with_unexpected_errors( |
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cupy_error.__traceback__, |
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'''Both cupy and numpy raise exceptions |
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cupy |
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{cupy_error} |
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numpy |
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{numpy_error} |
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''', |
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cupy_error, numpy_error) |
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def _signed_counterpart(dtype): |
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return numpy.dtype(numpy.dtype(dtype).char.lower()).type |
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def _make_positive_masks(impl, args, kw, name, sp_name, scipy_name): |
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ks = [k for k, v in kw.items() if v in _unsigned_dtypes] |
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for k in ks: |
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kw[k] = _signed_counterpart(kw[k]) |
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result, error = _call_func_cupy( |
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impl, args, kw, name, sp_name, scipy_name) |
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assert error is None |
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if not isinstance(result, (tuple, list)): |
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result = result, |
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return [cupy.asnumpy(r) >= 0 for r in result] |
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def _contains_signed_and_unsigned(kw): |
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def isdtype(v): |
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if isinstance(v, numpy.dtype): |
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return True |
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elif isinstance(v, str): |
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return True |
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elif isinstance(v, type) and issubclass(v, numpy.number): |
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return True |
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else: |
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return False |
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vs = set(v for v in kw.values() if isdtype(v)) |
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return any(d in vs for d in _unsigned_dtypes) and \ |
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any(d in vs for d in _float_dtypes + _signed_dtypes) |
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def _wraps_partial(wrapped, *names): |
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def decorator(impl): |
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impl = functools.wraps(wrapped)(impl) |
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impl.__signature__ = inspect.signature( |
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functools.partial(wrapped, **{name: None for name in names})) |
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return impl |
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return decorator |
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def _wraps_partial_xp(wrapped, name, sp_name, scipy_name): |
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names = [name, sp_name, scipy_name] |
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names = [n for n in names if n is not None] |
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return _wraps_partial(wrapped, *names) |
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def _make_decorator(check_func, name, type_check, contiguous_check, |
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accept_error, sp_name=None, scipy_name=None, |
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check_sparse_format=True): |
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assert isinstance(name, str) |
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assert sp_name is None or isinstance(sp_name, str) |
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assert scipy_name is None or isinstance(scipy_name, str) |
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def decorator(impl): |
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@_wraps_partial_xp(impl, name, sp_name, scipy_name) |
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def test_func(*args, **kw): |
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( |
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cupy_result, cupy_error, |
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numpy_result, numpy_error) = ( |
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_call_func_numpy_cupy( |
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impl, args, kw, name, sp_name, scipy_name)) |
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assert cupy_result is not None or cupy_error is not None |
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assert numpy_result is not None or numpy_error is not None |
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if cupy_error or numpy_error: |
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_check_cupy_numpy_error(cupy_error, |
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numpy_error, |
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accept_error=accept_error) |
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return |
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if not isinstance(cupy_result, (tuple, list)): |
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cupy_result = cupy_result, |
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if not isinstance(numpy_result, (tuple, list)): |
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numpy_result = numpy_result, |
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assert len(cupy_result) == len(numpy_result) |
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cupy_numpy_result_ndarrays = [ |
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_convert_output_to_ndarray( |
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cupy_r, numpy_r, sp_name, check_sparse_format) |
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for cupy_r, numpy_r in zip(cupy_result, numpy_result)] |
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numpy_version = numpy.lib.NumpyVersion(numpy.__version__) |
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if type_check and numpy_version < '2.0.0': |
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for cupy_r, numpy_r in cupy_numpy_result_ndarrays: |
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if cupy_r.dtype != numpy_r.dtype: |
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raise AssertionError( |
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'''ndarrays of different dtypes are returned. |
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cupy: {} |
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numpy: {}'''.format(cupy_r.dtype, numpy_r.dtype)) |
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if contiguous_check: |
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for cupy_r, numpy_r in zip(cupy_result, numpy_result): |
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if isinstance(numpy_r, numpy.ndarray): |
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if (numpy_r.flags.c_contiguous |
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and not cupy_r.flags.c_contiguous): |
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raise AssertionError( |
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'The state of c_contiguous flag is false. ' |
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'(cupy_result:{} numpy_result:{})'.format( |
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cupy_r.flags.c_contiguous, |
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numpy_r.flags.c_contiguous)) |
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if (numpy_r.flags.f_contiguous |
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and not cupy_r.flags.f_contiguous): |
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raise AssertionError( |
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'The state of f_contiguous flag is false. ' |
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'(cupy_result:{} numpy_result:{})'.format( |
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cupy_r.flags.f_contiguous, |
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numpy_r.flags.f_contiguous)) |
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for cupy_r, numpy_r in cupy_numpy_result_ndarrays: |
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assert cupy_r.shape == numpy_r.shape |
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masks = [None] * len(cupy_result) |
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if _contains_signed_and_unsigned(kw): |
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needs_mask = [ |
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cupy_r.dtype in _unsigned_dtypes |
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for cupy_r in cupy_result] |
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if any(needs_mask): |
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masks = _make_positive_masks( |
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impl, args, kw, name, sp_name, scipy_name) |
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for i, flag in enumerate(needs_mask): |
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if not flag: |
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masks[i] = None |
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for (cupy_r, numpy_r), mask in zip( |
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cupy_numpy_result_ndarrays, masks): |
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skip = False |
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if mask is not None: |
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if cupy_r.shape == (): |
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skip = (mask == 0).all() |
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else: |
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cupy_r = cupy_r[mask].get() |
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numpy_r = numpy_r[mask] |
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if not skip: |
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check_func(cupy_r, numpy_r) |
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return test_func |
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return decorator |
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def _convert_output_to_ndarray(c_out, n_out, sp_name, check_sparse_format): |
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"""Checks type of cupy/numpy results and returns cupy/numpy ndarrays. |
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|
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Args: |
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c_out (cupy.ndarray, cupyx.scipy.sparse matrix, cupy.poly1d or scalar): |
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cupy result |
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n_out (numpy.ndarray, scipy.sparse matrix, numpy.poly1d or scalar): |
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numpy result |
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sp_name(str or None): Argument name whose value is either |
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``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
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argument is given for the modules. |
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check_sparse_format (bool): If ``True``, consistency of format of |
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sparse matrix is also checked. Default is ``True``. |
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|
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Returns: |
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The tuple of cupy.ndarray and numpy.ndarray. |
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""" |
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if sp_name is not None and cupyx.scipy.sparse.issparse(c_out): |
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|
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import scipy.sparse |
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assert scipy.sparse.issparse(n_out) |
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if check_sparse_format: |
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assert c_out.format == n_out.format |
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return c_out.toarray(), n_out.toarray() |
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|
if (isinstance(c_out, cupy.ndarray) |
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|
and isinstance(n_out, (numpy.ndarray, numpy.generic))): |
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|
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return c_out, n_out |
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|
if isinstance(c_out, cupy.poly1d) and isinstance(n_out, numpy.poly1d): |
|
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|
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assert c_out.variable == n_out.variable |
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return c_out.coeffs, n_out.coeffs |
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|
if isinstance(c_out, numpy.generic) and isinstance(n_out, numpy.generic): |
|
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|
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|
return c_out, n_out |
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|
if numpy.isscalar(c_out) and numpy.isscalar(n_out): |
|
|
|
|
|
return cupy.array(c_out), numpy.array(n_out) |
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|
raise AssertionError( |
|
|
'numpy and cupy returns different type of return value:\n' |
|
|
'cupy: {}\nnumpy: {}'.format( |
|
|
type(c_out), type(n_out))) |
|
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|
|
|
|
|
|
def _check_tolerance_keys(rtol, atol): |
|
|
def _check(tol): |
|
|
if isinstance(tol, dict): |
|
|
for k in tol.keys(): |
|
|
if type(k) is type: |
|
|
continue |
|
|
if type(k) is str and k == 'default': |
|
|
continue |
|
|
msg = ('Keys of the tolerance dictionary need to be type ' |
|
|
'objects as `numpy.float32` and `cupy.float32` or ' |
|
|
'`\'default\'` string.') |
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|
raise TypeError(msg) |
|
|
_check(rtol) |
|
|
_check(atol) |
|
|
|
|
|
|
|
|
def _resolve_tolerance(type_check, result, rtol, atol): |
|
|
def _resolve(dtype, tol): |
|
|
if isinstance(tol, dict): |
|
|
tol1 = tol.get(dtype.type) |
|
|
if tol1 is None: |
|
|
tol1 = tol.get('default') |
|
|
if tol1 is None: |
|
|
raise TypeError( |
|
|
'Can not find tolerance for {}'.format(dtype.type)) |
|
|
return tol1 |
|
|
else: |
|
|
return tol |
|
|
|
|
|
dtype = result.dtype |
|
|
rtol1 = _resolve(dtype, rtol) |
|
|
atol1 = _resolve(dtype, atol) |
|
|
return rtol1, atol1 |
|
|
|
|
|
|
|
|
def numpy_cupy_allclose(rtol=1e-7, atol=0, err_msg='', verbose=True, |
|
|
name='xp', type_check=True, accept_error=False, |
|
|
sp_name=None, scipy_name=None, contiguous_check=True, |
|
|
*, _check_sparse_format=True): |
|
|
"""Decorator that checks NumPy results and CuPy ones are close. |
|
|
|
|
|
Args: |
|
|
rtol(float or dict): Relative tolerance. Besides a float value, a |
|
|
dictionary that maps a dtypes to a float value can be supplied to |
|
|
adjust tolerance per dtype. If the dictionary has ``'default'`` |
|
|
string as its key, its value is used as the default tolerance in |
|
|
case any dtype keys do not match. |
|
|
atol(float or dict): Absolute tolerance. Besides a float value, a |
|
|
dictionary can be supplied as ``rtol``. |
|
|
err_msg(str): The error message to be printed in case of failure. |
|
|
verbose(bool): If ``True``, the conflicting values are |
|
|
appended to the error message. |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
type_check(bool): If ``True``, consistency of dtype is also checked. |
|
|
accept_error(bool, Exception or tuple of Exception): Specify |
|
|
acceptable errors. When both NumPy test and CuPy test raises the |
|
|
same type of errors, and the type of the errors is specified with |
|
|
this argument, the errors are ignored and not raised. |
|
|
If it is ``True`` all error types are acceptable. |
|
|
If it is ``False`` no error is acceptable. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
contiguous_check(bool): If ``True``, consistency of contiguity is |
|
|
also checked. |
|
|
|
|
|
Decorated test fixture is required to return the arrays whose values are |
|
|
close between ``numpy`` case and ``cupy`` case. |
|
|
For example, this test case checks ``numpy.zeros`` and ``cupy.zeros`` |
|
|
should return same value. |
|
|
|
|
|
>>> import unittest |
|
|
>>> from cupy import testing |
|
|
>>> class TestFoo(unittest.TestCase): |
|
|
... |
|
|
... @testing.numpy_cupy_allclose() |
|
|
... def test_foo(self, xp): |
|
|
... # ... |
|
|
... # Prepare data with xp |
|
|
... # ... |
|
|
... |
|
|
... xp_result = xp.zeros(10) |
|
|
... return xp_result |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.assert_allclose` |
|
|
""" |
|
|
_check_tolerance_keys(rtol, atol) |
|
|
|
|
|
|
|
|
|
|
|
|
|
|
if not type_check: |
|
|
if isinstance(rtol, dict) or isinstance(atol, dict): |
|
|
raise TypeError('When `type_check` is `False`, `rtol` and `atol` ' |
|
|
'must be supplied as float.') |
|
|
|
|
|
def check_func(c, n): |
|
|
rtol1, atol1 = _resolve_tolerance(type_check, c, rtol, atol) |
|
|
_array.assert_allclose(c, n, rtol1, atol1, err_msg, verbose) |
|
|
return _make_decorator(check_func, name, type_check, contiguous_check, |
|
|
accept_error, sp_name, scipy_name, |
|
|
_check_sparse_format) |
|
|
|
|
|
|
|
|
def numpy_cupy_array_almost_equal(decimal=6, err_msg='', verbose=True, |
|
|
name='xp', type_check=True, |
|
|
accept_error=False, sp_name=None, |
|
|
scipy_name=None): |
|
|
"""Decorator that checks NumPy results and CuPy ones are almost equal. |
|
|
|
|
|
Args: |
|
|
decimal(int): Desired precision. |
|
|
err_msg(str): The error message to be printed in case of failure. |
|
|
verbose(bool): If ``True``, the conflicting values |
|
|
are appended to the error message. |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
type_check(bool): If ``True``, consistency of dtype is also checked. |
|
|
accept_error(bool, Exception or tuple of Exception): Specify |
|
|
acceptable errors. When both NumPy test and CuPy test raises the |
|
|
same type of errors, and the type of the errors is specified with |
|
|
this argument, the errors are ignored and not raised. |
|
|
If it is ``True`` all error types are acceptable. |
|
|
If it is ``False`` no error is acceptable. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
|
|
|
Decorated test fixture is required to return the same arrays |
|
|
in the sense of :func:`cupy.testing.assert_array_almost_equal` |
|
|
(except the type of array module) even if ``xp`` is ``numpy`` or ``cupy``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.assert_array_almost_equal` |
|
|
""" |
|
|
def check_func(x, y): |
|
|
_array.assert_array_almost_equal(x, y, decimal, err_msg, verbose) |
|
|
return _make_decorator(check_func, name, type_check, False, |
|
|
accept_error, sp_name, scipy_name) |
|
|
|
|
|
|
|
|
def numpy_cupy_array_almost_equal_nulp(nulp=1, name='xp', type_check=True, |
|
|
accept_error=False, sp_name=None, |
|
|
scipy_name=None): |
|
|
"""Decorator that checks results of NumPy and CuPy are equal w.r.t. spacing. |
|
|
|
|
|
Args: |
|
|
nulp(int): The maximum number of unit in the last place for tolerance. |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
type_check(bool): If ``True``, consistency of dtype is also checked. |
|
|
accept_error(bool, Exception or tuple of Exception): Specify |
|
|
acceptable errors. When both NumPy test and CuPy test raises the |
|
|
same type of errors, and the type of the errors is specified with |
|
|
this argument, the errors are ignored and not raised. |
|
|
If it is ``True``, all error types are acceptable. |
|
|
If it is ``False``, no error is acceptable. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
|
|
|
Decorated test fixture is required to return the same arrays |
|
|
in the sense of :func:`cupy.testing.assert_array_almost_equal_nulp` |
|
|
(except the type of array module) even if ``xp`` is ``numpy`` or ``cupy``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.assert_array_almost_equal_nulp` |
|
|
""" |
|
|
def check_func(x, y): |
|
|
_array.assert_array_almost_equal_nulp(x, y, nulp) |
|
|
return _make_decorator(check_func, name, type_check, False, |
|
|
accept_error, sp_name, scipy_name=None) |
|
|
|
|
|
|
|
|
def numpy_cupy_array_max_ulp(maxulp=1, dtype=None, name='xp', type_check=True, |
|
|
accept_error=False, sp_name=None, |
|
|
scipy_name=None): |
|
|
"""Decorator that checks results of NumPy and CuPy ones are equal w.r.t. ulp. |
|
|
|
|
|
Args: |
|
|
maxulp(int): The maximum number of units in the last place |
|
|
that elements of resulting two arrays can differ. |
|
|
dtype(numpy.dtype): Data-type to convert the resulting |
|
|
two array to if given. |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
type_check(bool): If ``True``, consistency of dtype is also checked. |
|
|
accept_error(bool, Exception or tuple of Exception): Specify |
|
|
acceptable errors. When both NumPy test and CuPy test raises the |
|
|
same type of errors, and the type of the errors is specified with |
|
|
this argument, the errors are ignored and not raised. |
|
|
If it is ``True`` all error types are acceptable. |
|
|
If it is ``False`` no error is acceptable. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
|
|
|
Decorated test fixture is required to return the same arrays |
|
|
in the sense of :func:`assert_array_max_ulp` |
|
|
(except the type of array module) even if ``xp`` is ``numpy`` or ``cupy``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.assert_array_max_ulp` |
|
|
|
|
|
""" |
|
|
def check_func(x, y): |
|
|
_array.assert_array_max_ulp(x, y, maxulp, dtype) |
|
|
return _make_decorator(check_func, name, type_check, False, |
|
|
accept_error, sp_name, scipy_name) |
|
|
|
|
|
|
|
|
def numpy_cupy_array_equal(err_msg='', verbose=True, name='xp', |
|
|
type_check=True, accept_error=False, sp_name=None, |
|
|
scipy_name=None, strides_check=False): |
|
|
"""Decorator that checks NumPy results and CuPy ones are equal. |
|
|
|
|
|
Args: |
|
|
err_msg(str): The error message to be printed in case of failure. |
|
|
verbose(bool): If ``True``, the conflicting values are |
|
|
appended to the error message. |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
type_check(bool): If ``True``, consistency of dtype is also checked. |
|
|
accept_error(bool, Exception or tuple of Exception): Specify |
|
|
acceptable errors. When both NumPy test and CuPy test raises the |
|
|
same type of errors, and the type of the errors is specified with |
|
|
this argument, the errors are ignored and not raised. |
|
|
If it is ``True`` all error types are acceptable. |
|
|
If it is ``False`` no error is acceptable. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
strides_check(bool): If ``True``, consistency of strides is also |
|
|
checked. |
|
|
|
|
|
Decorated test fixture is required to return the same arrays |
|
|
in the sense of :func:`numpy_cupy_array_equal` |
|
|
(except the type of array module) even if ``xp`` is ``numpy`` or ``cupy``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.assert_array_equal` |
|
|
""" |
|
|
def check_func(x, y): |
|
|
_array.assert_array_equal(x, y, err_msg, verbose, strides_check) |
|
|
return _make_decorator(check_func, name, type_check, False, |
|
|
accept_error, sp_name, scipy_name) |
|
|
|
|
|
|
|
|
def numpy_cupy_array_list_equal( |
|
|
err_msg='', verbose=True, name='xp', sp_name=None, scipy_name=None): |
|
|
"""Decorator that checks the resulting lists of NumPy and CuPy's one are equal. |
|
|
|
|
|
Args: |
|
|
err_msg(str): The error message to be printed in case of failure. |
|
|
verbose(bool): If ``True``, the conflicting values are appended |
|
|
to the error message. |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
|
|
|
Decorated test fixture is required to return the same list of arrays |
|
|
(except the type of array module) even if ``xp`` is ``numpy`` or ``cupy``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.assert_array_list_equal` |
|
|
""" |
|
|
warnings.warn( |
|
|
'numpy_cupy_array_list_equal is deprecated.' |
|
|
' Use numpy_cupy_array_equal instead.', |
|
|
DeprecationWarning) |
|
|
|
|
|
def check_func(x, y): |
|
|
_array.assert_array_equal(x, y, err_msg, verbose) |
|
|
return _make_decorator(check_func, name, False, False, |
|
|
False, sp_name, scipy_name) |
|
|
|
|
|
|
|
|
def numpy_cupy_array_less(err_msg='', verbose=True, name='xp', |
|
|
type_check=True, accept_error=False, sp_name=None, |
|
|
scipy_name=None): |
|
|
"""Decorator that checks the CuPy result is less than NumPy result. |
|
|
|
|
|
Args: |
|
|
err_msg(str): The error message to be printed in case of failure. |
|
|
verbose(bool): If ``True``, the conflicting values are |
|
|
appended to the error message. |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
type_check(bool): If ``True``, consistency of dtype is also checked. |
|
|
accept_error(bool, Exception or tuple of Exception): Specify |
|
|
acceptable errors. When both NumPy test and CuPy test raises the |
|
|
same type of errors, and the type of the errors is specified with |
|
|
this argument, the errors are ignored and not raised. |
|
|
If it is ``True`` all error types are acceptable. |
|
|
If it is ``False`` no error is acceptable. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
|
|
|
Decorated test fixture is required to return the smaller array |
|
|
when ``xp`` is ``cupy`` than the one when ``xp`` is ``numpy``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.assert_array_less` |
|
|
""" |
|
|
def check_func(x, y): |
|
|
_array.assert_array_less(x, y, err_msg, verbose) |
|
|
return _make_decorator(check_func, name, type_check, False, |
|
|
accept_error, sp_name, scipy_name) |
|
|
|
|
|
|
|
|
def numpy_cupy_equal(name='xp', sp_name=None, scipy_name=None): |
|
|
"""Decorator that checks NumPy results are equal to CuPy ones. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
|
|
|
Decorated test fixture is required to return the same results |
|
|
even if ``xp`` is ``numpy`` or ``cupy``. |
|
|
""" |
|
|
def decorator(impl): |
|
|
@_wraps_partial_xp(impl, name, sp_name, scipy_name) |
|
|
def test_func(*args, **kw): |
|
|
|
|
|
( |
|
|
cupy_result, cupy_error, |
|
|
numpy_result, numpy_error) = ( |
|
|
_call_func_numpy_cupy( |
|
|
impl, args, kw, name, sp_name, scipy_name)) |
|
|
|
|
|
if cupy_error or numpy_error: |
|
|
_check_cupy_numpy_error( |
|
|
cupy_error, numpy_error, |
|
|
accept_error=False) |
|
|
return |
|
|
|
|
|
if cupy_result != numpy_result: |
|
|
message = '''Results are not equal: |
|
|
cupy: %s |
|
|
numpy: %s''' % (str(cupy_result), str(numpy_result)) |
|
|
raise AssertionError(message) |
|
|
return test_func |
|
|
return decorator |
|
|
|
|
|
|
|
|
def numpy_cupy_raises(name='xp', sp_name=None, scipy_name=None, |
|
|
accept_error=Exception): |
|
|
"""Decorator that checks the NumPy and CuPy throw same errors. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name whose value is either |
|
|
``numpy`` or ``cupy`` module. |
|
|
sp_name(str or None): Argument name whose value is either |
|
|
``scipy.sparse`` or ``cupyx.scipy.sparse`` module. If ``None``, no |
|
|
argument is given for the modules. |
|
|
scipy_name(str or None): Argument name whose value is either ``scipy`` |
|
|
or ``cupyx.scipy`` module. If ``None``, no argument is given for |
|
|
the modules. |
|
|
accept_error(bool, Exception or tuple of Exception): Specify |
|
|
acceptable errors. When both NumPy test and CuPy test raises the |
|
|
same type of errors, and the type of the errors is specified with |
|
|
this argument, the errors are ignored and not raised. |
|
|
If it is ``True`` all error types are acceptable. |
|
|
If it is ``False`` no error is acceptable. |
|
|
|
|
|
Decorated test fixture is required throw same errors |
|
|
even if ``xp`` is ``numpy`` or ``cupy``. |
|
|
""" |
|
|
warnings.warn( |
|
|
'cupy.testing.numpy_cupy_raises is deprecated.', |
|
|
DeprecationWarning) |
|
|
|
|
|
def decorator(impl): |
|
|
@_wraps_partial_xp(impl, name, sp_name, scipy_name) |
|
|
def test_func(*args, **kw): |
|
|
|
|
|
( |
|
|
cupy_result, cupy_error, |
|
|
numpy_result, numpy_error) = ( |
|
|
_call_func_numpy_cupy( |
|
|
impl, args, kw, name, sp_name, scipy_name)) |
|
|
|
|
|
_check_cupy_numpy_error(cupy_error, |
|
|
numpy_error, |
|
|
accept_error=accept_error) |
|
|
return test_func |
|
|
return decorator |
|
|
|
|
|
|
|
|
def for_dtypes(dtypes, name='dtype'): |
|
|
"""Decorator for parameterized dtype test. |
|
|
|
|
|
Args: |
|
|
dtypes(list of dtypes): dtypes to be tested. |
|
|
name(str): Argument name to which specified dtypes are passed. |
|
|
|
|
|
This decorator adds a keyword argument specified by ``name`` |
|
|
to the test fixture. Then, it runs the fixtures in parallel |
|
|
by passing the each element of ``dtypes`` to the named |
|
|
argument. |
|
|
""" |
|
|
def decorator(impl): |
|
|
@_wraps_partial(impl, name) |
|
|
def test_func(*args, **kw): |
|
|
for dtype in dtypes: |
|
|
try: |
|
|
kw[name] = numpy.dtype(dtype).type |
|
|
impl(*args, **kw) |
|
|
except _skip_classes as e: |
|
|
print('skipped: {} = {} ({})'.format(name, dtype, e)) |
|
|
except Exception: |
|
|
print(name, 'is', dtype) |
|
|
raise |
|
|
|
|
|
return test_func |
|
|
return decorator |
|
|
|
|
|
|
|
|
_complex_dtypes = (numpy.complex64, numpy.complex128) |
|
|
_regular_float_dtypes = (numpy.float64, numpy.float32) |
|
|
_float_dtypes = _regular_float_dtypes + (numpy.float16,) |
|
|
_signed_dtypes = tuple(numpy.dtype(i).type for i in 'bhilq') |
|
|
_unsigned_dtypes = tuple(numpy.dtype(i).type for i in 'BHILQ') |
|
|
_int_dtypes = _signed_dtypes + _unsigned_dtypes |
|
|
_int_bool_dtypes = _int_dtypes + (numpy.bool_,) |
|
|
_regular_dtypes = _regular_float_dtypes + _int_bool_dtypes |
|
|
_dtypes = _float_dtypes + _int_bool_dtypes |
|
|
|
|
|
|
|
|
def _make_all_dtypes(no_float16, no_bool, no_complex): |
|
|
if no_float16: |
|
|
dtypes = _regular_float_dtypes |
|
|
else: |
|
|
dtypes = _float_dtypes |
|
|
|
|
|
if no_bool: |
|
|
dtypes += _int_dtypes |
|
|
else: |
|
|
dtypes += _int_bool_dtypes |
|
|
|
|
|
if not no_complex: |
|
|
dtypes += _complex_dtypes |
|
|
|
|
|
return dtypes |
|
|
|
|
|
|
|
|
def for_all_dtypes(name='dtype', no_float16=False, no_bool=False, |
|
|
no_complex=False): |
|
|
"""Decorator that checks the fixture with all dtypes. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name to which specified dtypes are passed. |
|
|
no_float16(bool): If ``True``, ``numpy.float16`` is |
|
|
omitted from candidate dtypes. |
|
|
no_bool(bool): If ``True``, ``numpy.bool_`` is |
|
|
omitted from candidate dtypes. |
|
|
no_complex(bool): If ``True``, ``numpy.complex64`` and |
|
|
``numpy.complex128`` are omitted from candidate dtypes. |
|
|
|
|
|
dtypes to be tested: ``numpy.complex64`` (optional), |
|
|
``numpy.complex128`` (optional), |
|
|
``numpy.float16`` (optional), ``numpy.float32``, |
|
|
``numpy.float64``, ``numpy.dtype('b')``, ``numpy.dtype('h')``, |
|
|
``numpy.dtype('i')``, ``numpy.dtype('l')``, ``numpy.dtype('q')``, |
|
|
``numpy.dtype('B')``, ``numpy.dtype('H')``, ``numpy.dtype('I')``, |
|
|
``numpy.dtype('L')``, ``numpy.dtype('Q')``, and ``numpy.bool_`` (optional). |
|
|
|
|
|
The usage is as follows. |
|
|
This test fixture checks if ``cPickle`` successfully reconstructs |
|
|
:class:`cupy.ndarray` for various dtypes. |
|
|
``dtype`` is an argument inserted by the decorator. |
|
|
|
|
|
>>> import unittest |
|
|
>>> from cupy import testing |
|
|
>>> class TestNpz(unittest.TestCase): |
|
|
... |
|
|
... @testing.for_all_dtypes() |
|
|
... def test_pickle(self, dtype): |
|
|
... a = testing.shaped_arange((2, 3, 4), dtype=dtype) |
|
|
... s = pickle.dumps(a) |
|
|
... b = pickle.loads(s) |
|
|
... testing.assert_array_equal(a, b) |
|
|
|
|
|
Typically, we use this decorator in combination with |
|
|
decorators that check consistency between NumPy and CuPy like |
|
|
:func:`cupy.testing.numpy_cupy_allclose`. |
|
|
The following is such an example. |
|
|
|
|
|
>>> import unittest |
|
|
>>> from cupy import testing |
|
|
>>> class TestMean(unittest.TestCase): |
|
|
... |
|
|
... @testing.for_all_dtypes() |
|
|
... @testing.numpy_cupy_allclose() |
|
|
... def test_mean_all(self, xp, dtype): |
|
|
... a = testing.shaped_arange((2, 3), xp, dtype) |
|
|
... return a.mean() |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes` |
|
|
""" |
|
|
return for_dtypes(_make_all_dtypes(no_float16, no_bool, no_complex), |
|
|
name=name) |
|
|
|
|
|
|
|
|
def for_float_dtypes(name='dtype', no_float16=False): |
|
|
"""Decorator that checks the fixture with float dtypes. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name to which specified dtypes are passed. |
|
|
no_float16(bool): If ``True``, ``numpy.float16`` is |
|
|
omitted from candidate dtypes. |
|
|
|
|
|
dtypes to be tested are ``numpy.float16`` (optional), ``numpy.float32``, |
|
|
and ``numpy.float64``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes`, |
|
|
:func:`cupy.testing.for_all_dtypes` |
|
|
""" |
|
|
if no_float16: |
|
|
return for_dtypes(_regular_float_dtypes, name=name) |
|
|
else: |
|
|
return for_dtypes(_float_dtypes, name=name) |
|
|
|
|
|
|
|
|
def for_signed_dtypes(name='dtype'): |
|
|
"""Decorator that checks the fixture with signed dtypes. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name to which specified dtypes are passed. |
|
|
|
|
|
dtypes to be tested are ``numpy.dtype('b')``, ``numpy.dtype('h')``, |
|
|
``numpy.dtype('i')``, ``numpy.dtype('l')``, and ``numpy.dtype('q')``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes`, |
|
|
:func:`cupy.testing.for_all_dtypes` |
|
|
""" |
|
|
return for_dtypes(_signed_dtypes, name=name) |
|
|
|
|
|
|
|
|
def for_unsigned_dtypes(name='dtype'): |
|
|
"""Decorator that checks the fixture with unsigned dtypes. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name to which specified dtypes are passed. |
|
|
|
|
|
dtypes to be tested are ``numpy.dtype('B')``, ``numpy.dtype('H')``, |
|
|
|
|
|
``numpy.dtype('I')``, ``numpy.dtype('L')``, and ``numpy.dtype('Q')``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes`, |
|
|
:func:`cupy.testing.for_all_dtypes` |
|
|
""" |
|
|
return for_dtypes(_unsigned_dtypes, name=name) |
|
|
|
|
|
|
|
|
def for_int_dtypes(name='dtype', no_bool=False): |
|
|
"""Decorator that checks the fixture with integer and optionally bool dtypes. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name to which specified dtypes are passed. |
|
|
no_bool(bool): If ``True``, ``numpy.bool_`` is |
|
|
omitted from candidate dtypes. |
|
|
|
|
|
dtypes to be tested are ``numpy.dtype('b')``, ``numpy.dtype('h')``, |
|
|
``numpy.dtype('i')``, ``numpy.dtype('l')``, ``numpy.dtype('q')``, |
|
|
``numpy.dtype('B')``, ``numpy.dtype('H')``, ``numpy.dtype('I')``, |
|
|
``numpy.dtype('L')``, ``numpy.dtype('Q')``, and ``numpy.bool_`` (optional). |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes`, |
|
|
:func:`cupy.testing.for_all_dtypes` |
|
|
""" |
|
|
if no_bool: |
|
|
return for_dtypes(_int_dtypes, name=name) |
|
|
else: |
|
|
return for_dtypes(_int_bool_dtypes, name=name) |
|
|
|
|
|
|
|
|
def for_complex_dtypes(name='dtype'): |
|
|
"""Decorator that checks the fixture with complex dtypes. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name to which specified dtypes are passed. |
|
|
|
|
|
dtypes to be tested are ``numpy.complex64`` and ``numpy.complex128``. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes`, |
|
|
:func:`cupy.testing.for_all_dtypes` |
|
|
""" |
|
|
return for_dtypes(_complex_dtypes, name=name) |
|
|
|
|
|
|
|
|
def for_dtypes_combination(types, names=('dtype',), full=None): |
|
|
"""Decorator that checks the fixture with a product set of dtypes. |
|
|
|
|
|
Args: |
|
|
types(list of dtypes): dtypes to be tested. |
|
|
names(list of str): Argument names to which dtypes are passed. |
|
|
full(bool): If ``True``, then all combinations |
|
|
of dtypes will be tested. |
|
|
Otherwise, the subset of combinations will be tested |
|
|
(see the description below). |
|
|
|
|
|
Decorator adds the keyword arguments specified by ``names`` |
|
|
to the test fixture. Then, it runs the fixtures in parallel |
|
|
with passing (possibly a subset of) the product set of dtypes. |
|
|
The range of dtypes is specified by ``types``. |
|
|
|
|
|
The combination of dtypes to be tested changes depending |
|
|
on the option ``full``. If ``full`` is ``True``, |
|
|
all combinations of ``types`` are tested. |
|
|
Sometimes, such an exhaustive test can be costly. |
|
|
So, if ``full`` is ``False``, only a subset of possible combinations |
|
|
is randomly sampled. If ``full`` is ``None``, the behavior is |
|
|
determined by an environment variable ``CUPY_TEST_FULL_COMBINATION``. |
|
|
If the value is set to ``'1'``, it behaves as if ``full=True``, and |
|
|
otherwise ``full=False``. |
|
|
""" |
|
|
types = list(types) |
|
|
|
|
|
if len(types) == 1: |
|
|
name, = names |
|
|
return for_dtypes(types, name) |
|
|
|
|
|
if full is None: |
|
|
full = int(os.environ.get('CUPY_TEST_FULL_COMBINATION', '0')) != 0 |
|
|
|
|
|
if full: |
|
|
combination = _parameterized.product({name: types for name in names}) |
|
|
else: |
|
|
ts = [] |
|
|
for _ in range(len(names)): |
|
|
|
|
|
shuffled_types = types[:] |
|
|
random.shuffle(shuffled_types) |
|
|
ts.append(types + shuffled_types) |
|
|
|
|
|
combination = [tuple(zip(names, typs)) for typs in zip(*ts)] |
|
|
|
|
|
combination = [dict(assoc_list) for assoc_list in set(combination)] |
|
|
|
|
|
def decorator(impl): |
|
|
@_wraps_partial(impl, *names) |
|
|
def test_func(*args, **kw): |
|
|
for dtypes in combination: |
|
|
kw_copy = kw.copy() |
|
|
kw_copy.update(dtypes) |
|
|
|
|
|
try: |
|
|
impl(*args, **kw_copy) |
|
|
except _skip_classes as e: |
|
|
msg = ', '.join( |
|
|
'{} = {}'.format(name, dtype) |
|
|
for name, dtype in dtypes.items()) |
|
|
print('skipped: {} ({})'.format(msg, e)) |
|
|
except Exception: |
|
|
print(dtypes) |
|
|
raise |
|
|
|
|
|
return test_func |
|
|
return decorator |
|
|
|
|
|
|
|
|
def for_all_dtypes_combination(names=('dtyes',), |
|
|
no_float16=False, no_bool=False, full=None, |
|
|
no_complex=False): |
|
|
"""Decorator that checks the fixture with a product set of all dtypes. |
|
|
|
|
|
Args: |
|
|
names(list of str): Argument names to which dtypes are passed. |
|
|
no_float16(bool): If ``True``, ``numpy.float16`` is |
|
|
omitted from candidate dtypes. |
|
|
no_bool(bool): If ``True``, ``numpy.bool_`` is |
|
|
omitted from candidate dtypes. |
|
|
full(bool): If ``True``, then all combinations of dtypes |
|
|
will be tested. |
|
|
Otherwise, the subset of combinations will be tested |
|
|
(see description in :func:`cupy.testing.for_dtypes_combination`). |
|
|
no_complex(bool): If, True, ``numpy.complex64`` and |
|
|
``numpy.complex128`` are omitted from candidate dtypes. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes_combination` |
|
|
""" |
|
|
types = _make_all_dtypes(no_float16, no_bool, no_complex) |
|
|
return for_dtypes_combination(types, names, full) |
|
|
|
|
|
|
|
|
def for_signed_dtypes_combination(names=('dtype',), full=None): |
|
|
"""Decorator for parameterized test w.r.t. the product set of signed dtypes. |
|
|
|
|
|
Args: |
|
|
names(list of str): Argument names to which dtypes are passed. |
|
|
full(bool): If ``True``, then all combinations of dtypes |
|
|
will be tested. |
|
|
Otherwise, the subset of combinations will be tested |
|
|
(see description in :func:`cupy.testing.for_dtypes_combination`). |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes_combination` |
|
|
""" |
|
|
return for_dtypes_combination(_signed_dtypes, names=names, full=full) |
|
|
|
|
|
|
|
|
def for_unsigned_dtypes_combination(names=('dtype',), full=None): |
|
|
"""Decorator for parameterized test w.r.t. the product set of unsigned dtypes. |
|
|
|
|
|
Args: |
|
|
names(list of str): Argument names to which dtypes are passed. |
|
|
full(bool): If ``True``, then all combinations of dtypes |
|
|
will be tested. |
|
|
Otherwise, the subset of combinations will be tested |
|
|
(see description in :func:`cupy.testing.for_dtypes_combination`). |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes_combination` |
|
|
""" |
|
|
return for_dtypes_combination(_unsigned_dtypes, names=names, full=full) |
|
|
|
|
|
|
|
|
def for_int_dtypes_combination(names=('dtype',), no_bool=False, full=None): |
|
|
"""Decorator for parameterized test w.r.t. the product set of int and boolean. |
|
|
|
|
|
Args: |
|
|
names(list of str): Argument names to which dtypes are passed. |
|
|
no_bool(bool): If ``True``, ``numpy.bool_`` is |
|
|
omitted from candidate dtypes. |
|
|
full(bool): If ``True``, then all combinations of dtypes |
|
|
will be tested. |
|
|
Otherwise, the subset of combinations will be tested |
|
|
(see description in :func:`cupy.testing.for_dtypes_combination`). |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_dtypes_combination` |
|
|
""" |
|
|
if no_bool: |
|
|
types = _int_dtypes |
|
|
else: |
|
|
types = _int_bool_dtypes |
|
|
return for_dtypes_combination(types, names, full) |
|
|
|
|
|
|
|
|
def for_orders(orders, name='order'): |
|
|
"""Decorator to parameterize tests with order. |
|
|
|
|
|
Args: |
|
|
orders(list of order): orders to be tested. |
|
|
name(str): Argument name to which the specified order is passed. |
|
|
|
|
|
This decorator adds a keyword argument specified by ``name`` |
|
|
to the test fixtures. Then, the fixtures run by passing each element of |
|
|
``orders`` to the named argument. |
|
|
|
|
|
""" |
|
|
def decorator(impl): |
|
|
@_wraps_partial(impl, name) |
|
|
def test_func(*args, **kw): |
|
|
for order in orders: |
|
|
try: |
|
|
kw[name] = order |
|
|
impl(*args, **kw) |
|
|
except Exception: |
|
|
print(name, 'is', order) |
|
|
raise |
|
|
|
|
|
return test_func |
|
|
return decorator |
|
|
|
|
|
|
|
|
def for_CF_orders(name='order'): |
|
|
"""Decorator that checks the fixture with orders 'C' and 'F'. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name to which the specified order is passed. |
|
|
|
|
|
.. seealso:: :func:`cupy.testing.for_all_dtypes` |
|
|
|
|
|
""" |
|
|
return for_orders([None, 'C', 'F', 'c', 'f'], name) |
|
|
|
|
|
|
|
|
def for_contiguous_axes(name='axis'): |
|
|
'''Decorator for parametrizing tests with possible contiguous axes. |
|
|
|
|
|
Args: |
|
|
name(str): Argument name to which specified axis are passed. |
|
|
|
|
|
.. note:: |
|
|
1. Adapted from tests/cupy_tests/fft_tests/test_fft.py. |
|
|
2. Example: for ``shape = (1, 2, 3)``, the tested axes are |
|
|
``[(2,), (1, 2), (0, 1, 2)]`` for the C order, and |
|
|
``[(0,), (0, 1), (0, 1, 2)]`` for the F order. |
|
|
''' |
|
|
def decorator(impl): |
|
|
@_wraps_partial(impl, name) |
|
|
def test_func(self, *args, **kw): |
|
|
ndim = len(self.shape) |
|
|
order = self.order |
|
|
for i in range(ndim): |
|
|
a = () |
|
|
if order in ('c', 'C'): |
|
|
for j in range(ndim-1, i-1, -1): |
|
|
a = (j,) + a |
|
|
elif order in ('f', 'F'): |
|
|
for j in range(0, i+1): |
|
|
a = a + (j,) |
|
|
else: |
|
|
raise ValueError('Please specify the array order.') |
|
|
try: |
|
|
kw[name] = a |
|
|
impl(self, *args, **kw) |
|
|
except Exception: |
|
|
print(name, 'is', a, ', ndim is', ndim, ', shape is', |
|
|
self.shape, ', order is', order) |
|
|
raise |
|
|
return test_func |
|
|
return decorator |
|
|
|