diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/__pycache__/__config__.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/__pycache__/__config__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..fa5729c655e9ca56ac82bf5659f14063b14856bc Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/__pycache__/__config__.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/__pycache__/conftest.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/__pycache__/conftest.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..adbead1fd9ca2a27ff07fbc63d1fbc37c7bbe898 Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/__pycache__/conftest.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/__init__.py b/env-llmeval/lib/python3.10/site-packages/numpy/_core/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..a2f096f3f1744f5f122b97d6b7b2ce0559c6abaa --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_core/__init__.py @@ -0,0 +1,4 @@ +""" +This private module only contains stubs for interoperability with +NumPy 2.0 pickled arrays. It may not be used by the end user. +""" diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/__init__.pyi b/env-llmeval/lib/python3.10/site-packages/numpy/_core/__init__.pyi new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/__pycache__/__init__.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/_core/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..a0177bce6d7b3c7cb14518225c56ce4b37c1e183 Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/_core/__pycache__/__init__.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/__pycache__/_dtype.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/_core/__pycache__/_dtype.cpython-310.pyc new file mode 100644 index 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--git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/__pycache__/umath.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/_core/__pycache__/umath.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..3c8a8b225954b9b20befa69b9739f71f353a09e6 Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/_core/__pycache__/umath.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/_dtype.py b/env-llmeval/lib/python3.10/site-packages/numpy/_core/_dtype.py new file mode 100644 index 0000000000000000000000000000000000000000..974d93d98cbbbcd25c7aae6d299c9f0f43e41cfa --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_core/_dtype.py @@ -0,0 +1,6 @@ +from numpy.core import _dtype + +_globals = globals() + +for item in _dtype.__dir__(): + _globals[item] = getattr(_dtype, item) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.py b/env-llmeval/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.py new file mode 100644 index 0000000000000000000000000000000000000000..bfa16aabf423d478af4ea2ab1910e454f5966028 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_core/_dtype_ctypes.py @@ -0,0 +1,6 @@ +from numpy.core import _dtype_ctypes + +_globals = globals() + +for item in _dtype_ctypes.__dir__(): + _globals[item] = getattr(_dtype_ctypes, item) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/_internal.py b/env-llmeval/lib/python3.10/site-packages/numpy/_core/_internal.py new file mode 100644 index 0000000000000000000000000000000000000000..52a8e907292ebbadb481c78be2522aa37a5ba533 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_core/_internal.py @@ -0,0 +1,6 @@ +from numpy.core import _internal + +_globals = globals() + +for item in _internal.__dir__(): + _globals[item] = getattr(_internal, item) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/_multiarray_umath.py b/env-llmeval/lib/python3.10/site-packages/numpy/_core/_multiarray_umath.py new file mode 100644 index 0000000000000000000000000000000000000000..7ce48fcb258d56855ffd104e0bb1cd4aafba9de2 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_core/_multiarray_umath.py @@ -0,0 +1,6 @@ +from numpy.core import _multiarray_umath + +_globals = globals() + +for item in _multiarray_umath.__dir__(): + _globals[item] = getattr(_multiarray_umath, item) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/multiarray.py b/env-llmeval/lib/python3.10/site-packages/numpy/_core/multiarray.py new file mode 100644 index 0000000000000000000000000000000000000000..6c37d1da9fe7eede0cdf77ce3c5e6d4f2ad65550 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_core/multiarray.py @@ -0,0 +1,6 @@ +from numpy.core import multiarray + +_globals = globals() + +for item in multiarray.__dir__(): + _globals[item] = getattr(multiarray, item) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_core/umath.py b/env-llmeval/lib/python3.10/site-packages/numpy/_core/umath.py new file mode 100644 index 0000000000000000000000000000000000000000..3d08c90332a358aab1405dcc22f5dd0502a1f152 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_core/umath.py @@ -0,0 +1,6 @@ +from numpy.core import umath + +_globals = globals() + +for item in umath.__dir__(): + _globals[item] = getattr(umath, item) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/__init__.py b/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/__pycache__/__init__.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/__pycache__/__init__.cpython-310.pyc new 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b/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/hook-numpy.py @@ -0,0 +1,37 @@ +"""This hook should collect all binary files and any hidden modules that numpy +needs. + +Our (some-what inadequate) docs for writing PyInstaller hooks are kept here: +https://pyinstaller.readthedocs.io/en/stable/hooks.html + +""" +from PyInstaller.compat import is_conda, is_pure_conda +from PyInstaller.utils.hooks import collect_dynamic_libs, is_module_satisfies + +# Collect all DLLs inside numpy's installation folder, dump them into built +# app's root. +binaries = collect_dynamic_libs("numpy", ".") + +# If using Conda without any non-conda virtual environment manager: +if is_pure_conda: + # Assume running the NumPy from Conda-forge and collect it's DLLs from the + # communal Conda bin directory. DLLs from NumPy's dependencies must also be + # collected to capture MKL, OpenBlas, OpenMP, etc. + from PyInstaller.utils.hooks import conda_support + datas = conda_support.collect_dynamic_libs("numpy", dependencies=True) + +# Submodules PyInstaller cannot detect. `_dtype_ctypes` is only imported +# from C and `_multiarray_tests` is used in tests (which are not packed). +hiddenimports = ['numpy.core._dtype_ctypes', 'numpy.core._multiarray_tests'] + +# Remove testing and building code and packages that are referenced throughout +# NumPy but are not really dependencies. +excludedimports = [ + "scipy", + "pytest", + "f2py", + "setuptools", + "numpy.f2py", + "distutils", + "numpy.distutils", +] diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/pyinstaller-smoke.py b/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/pyinstaller-smoke.py new file mode 100644 index 0000000000000000000000000000000000000000..eb28070e38baf80223fe0178ac0a7c0f5732a2c8 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/pyinstaller-smoke.py @@ -0,0 +1,32 @@ +"""A crude *bit of everything* smoke test to verify PyInstaller compatibility. + +PyInstaller typically goes wrong by forgetting to package modules, extension +modules or shared libraries. This script should aim to touch as many of those +as possible in an attempt to trip a ModuleNotFoundError or a DLL load failure +due to an uncollected resource. Missing resources are unlikely to lead to +arithmetic errors so there's generally no need to verify any calculation's +output - merely that it made it to the end OK. This script should not +explicitly import any of numpy's submodules as that gives PyInstaller undue +hints that those submodules exist and should be collected (accessing implicitly +loaded submodules is OK). + +""" +import numpy as np + +a = np.arange(1., 10.).reshape((3, 3)) % 5 +np.linalg.det(a) +a @ a +a @ a.T +np.linalg.inv(a) +np.sin(np.exp(a)) +np.linalg.svd(a) +np.linalg.eigh(a) + +np.unique(np.random.randint(0, 10, 100)) +np.sort(np.random.uniform(0, 10, 100)) + +np.fft.fft(np.exp(2j * np.pi * np.arange(8) / 8)) +np.ma.masked_array(np.arange(10), np.random.rand(10) < .5).sum() +np.polynomial.Legendre([7, 8, 9]).roots() + +print("I made it!") diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/test_pyinstaller.py b/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/test_pyinstaller.py new file mode 100644 index 0000000000000000000000000000000000000000..a9061da19b88c4243a3fd28bf05fd2986292d836 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/_pyinstaller/test_pyinstaller.py @@ -0,0 +1,35 @@ +import subprocess +from pathlib import Path + +import pytest + + +# PyInstaller has been very unproactive about replacing 'imp' with 'importlib'. +@pytest.mark.filterwarnings('ignore::DeprecationWarning') +# It also leaks io.BytesIO()s. +@pytest.mark.filterwarnings('ignore::ResourceWarning') +@pytest.mark.parametrize("mode", ["--onedir", "--onefile"]) +@pytest.mark.slow +def test_pyinstaller(mode, tmp_path): + """Compile and run pyinstaller-smoke.py using PyInstaller.""" + + pyinstaller_cli = pytest.importorskip("PyInstaller.__main__").run + + source = Path(__file__).with_name("pyinstaller-smoke.py").resolve() + args = [ + # Place all generated files in ``tmp_path``. + '--workpath', str(tmp_path / "build"), + '--distpath', str(tmp_path / "dist"), + '--specpath', str(tmp_path), + mode, + str(source), + ] + pyinstaller_cli(args) + + if mode == "--onefile": + exe = tmp_path / "dist" / source.stem + else: + exe = tmp_path / "dist" / source.stem / source.stem + + p = subprocess.run([str(exe)], check=True, stdout=subprocess.PIPE) + assert p.stdout.strip() == b"I made it!" diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/__init__.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..6a0e0fb50c4845a879df3ca32b8ce9b414712f4c Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/__init__.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/py3k.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/py3k.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..8816d6bbb664a457c9ca9547f369083d6088d3ce Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/py3k.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/setup.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/setup.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..9ae6735a522adf6c3801e770d62fde2c262a4c1d Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/compat/__pycache__/setup.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/py3k.py b/env-llmeval/lib/python3.10/site-packages/numpy/compat/py3k.py new file mode 100644 index 0000000000000000000000000000000000000000..d02c9f8fe341859202319f9b7ed65818f139e269 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/compat/py3k.py @@ -0,0 +1,145 @@ +""" +Python 3.X compatibility tools. + +While this file was originally intended for Python 2 -> 3 transition, +it is now used to create a compatibility layer between different +minor versions of Python 3. + +While the active version of numpy may not support a given version of python, we +allow downstream libraries to continue to use these shims for forward +compatibility with numpy while they transition their code to newer versions of +Python. +""" +__all__ = ['bytes', 'asbytes', 'isfileobj', 'getexception', 'strchar', + 'unicode', 'asunicode', 'asbytes_nested', 'asunicode_nested', + 'asstr', 'open_latin1', 'long', 'basestring', 'sixu', + 'integer_types', 'is_pathlib_path', 'npy_load_module', 'Path', + 'pickle', 'contextlib_nullcontext', 'os_fspath', 'os_PathLike'] + +import sys +import os +from pathlib import Path +import io +try: + import pickle5 as pickle +except ImportError: + import pickle + +long = int +integer_types = (int,) +basestring = str +unicode = str +bytes = bytes + +def asunicode(s): + if isinstance(s, bytes): + return s.decode('latin1') + return str(s) + +def asbytes(s): + if isinstance(s, bytes): + return s + return str(s).encode('latin1') + +def asstr(s): + if isinstance(s, bytes): + return s.decode('latin1') + return str(s) + +def isfileobj(f): + if not isinstance(f, (io.FileIO, io.BufferedReader, io.BufferedWriter)): + return False + try: + # BufferedReader/Writer may raise OSError when + # fetching `fileno()` (e.g. when wrapping BytesIO). + f.fileno() + return True + except OSError: + return False + +def open_latin1(filename, mode='r'): + return open(filename, mode=mode, encoding='iso-8859-1') + +def sixu(s): + return s + +strchar = 'U' + +def getexception(): + return sys.exc_info()[1] + +def asbytes_nested(x): + if hasattr(x, '__iter__') and not isinstance(x, (bytes, unicode)): + return [asbytes_nested(y) for y in x] + else: + return asbytes(x) + +def asunicode_nested(x): + if hasattr(x, '__iter__') and not isinstance(x, (bytes, unicode)): + return [asunicode_nested(y) for y in x] + else: + return asunicode(x) + +def is_pathlib_path(obj): + """ + Check whether obj is a `pathlib.Path` object. + + Prefer using ``isinstance(obj, os.PathLike)`` instead of this function. + """ + return isinstance(obj, Path) + +# from Python 3.7 +class contextlib_nullcontext: + """Context manager that does no additional processing. + + Used as a stand-in for a normal context manager, when a particular + block of code is only sometimes used with a normal context manager: + + cm = optional_cm if condition else nullcontext() + with cm: + # Perform operation, using optional_cm if condition is True + + .. note:: + Prefer using `contextlib.nullcontext` instead of this context manager. + """ + + def __init__(self, enter_result=None): + self.enter_result = enter_result + + def __enter__(self): + return self.enter_result + + def __exit__(self, *excinfo): + pass + + +def npy_load_module(name, fn, info=None): + """ + Load a module. Uses ``load_module`` which will be deprecated in python + 3.12. An alternative that uses ``exec_module`` is in + numpy.distutils.misc_util.exec_mod_from_location + + .. versionadded:: 1.11.2 + + Parameters + ---------- + name : str + Full module name. + fn : str + Path to module file. + info : tuple, optional + Only here for backward compatibility with Python 2.*. + + Returns + ------- + mod : module + + """ + # Explicitly lazy import this to avoid paying the cost + # of importing importlib at startup + from importlib.machinery import SourceFileLoader + return SourceFileLoader(name, fn).load_module() + + +os_fspath = os.fspath +os_PathLike = os.PathLike diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/setup.py b/env-llmeval/lib/python3.10/site-packages/numpy/compat/setup.py new file mode 100644 index 0000000000000000000000000000000000000000..c1b34a2cc9528b859e9f40d4eaee8eb35dbf64d6 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/compat/setup.py @@ -0,0 +1,10 @@ +def configuration(parent_package='',top_path=None): + from numpy.distutils.misc_util import Configuration + + config = Configuration('compat', parent_package, top_path) + config.add_subpackage('tests') + return config + +if __name__ == '__main__': + from numpy.distutils.core import setup + setup(configuration=configuration) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/__init__.py b/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/__pycache__/__init__.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..d08bf7b9ac6f82e7c3c6adda5c87f2ca4f0affa2 Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/__pycache__/__init__.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/__pycache__/test_compat.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/__pycache__/test_compat.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..5da875dfbed0e499194e48e2d9c699184f65146d Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/__pycache__/test_compat.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/test_compat.py b/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/test_compat.py new file mode 100644 index 0000000000000000000000000000000000000000..d4391565ee074a797a8e05cc108f570e958804d7 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/compat/tests/test_compat.py @@ -0,0 +1,22 @@ +from os.path import join +from io import BufferedReader, BytesIO + +from numpy.compat import isfileobj +from numpy.testing import assert_ +from numpy.testing import tempdir + + +def test_isfileobj(): + with tempdir(prefix="numpy_test_compat_") as folder: + filename = join(folder, 'a.bin') + + with open(filename, 'wb') as f: + assert_(isfileobj(f)) + + with open(filename, 'ab') as f: + assert_(isfileobj(f)) + + with open(filename, 'rb') as f: + assert_(isfileobj(f)) + + assert_(isfileobj(BufferedReader(BytesIO())) is False) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/_locales.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/_locales.py new file mode 100644 index 0000000000000000000000000000000000000000..b1dc55a9b2dc616de400f778a5f668a8431a2689 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/_locales.py @@ -0,0 +1,74 @@ +"""Provide class for testing in French locale + +""" +import sys +import locale + +import pytest + +__ALL__ = ['CommaDecimalPointLocale'] + + +def find_comma_decimal_point_locale(): + """See if platform has a decimal point as comma locale. + + Find a locale that uses a comma instead of a period as the + decimal point. + + Returns + ------- + old_locale: str + Locale when the function was called. + new_locale: {str, None) + First French locale found, None if none found. + + """ + if sys.platform == 'win32': + locales = ['FRENCH'] + else: + locales = ['fr_FR', 'fr_FR.UTF-8', 'fi_FI', 'fi_FI.UTF-8'] + + old_locale = locale.getlocale(locale.LC_NUMERIC) + new_locale = None + try: + for loc in locales: + try: + locale.setlocale(locale.LC_NUMERIC, loc) + new_locale = loc + break + except locale.Error: + pass + finally: + locale.setlocale(locale.LC_NUMERIC, locale=old_locale) + return old_locale, new_locale + + +class CommaDecimalPointLocale: + """Sets LC_NUMERIC to a locale with comma as decimal point. + + Classes derived from this class have setup and teardown methods that run + tests with locale.LC_NUMERIC set to a locale where commas (',') are used as + the decimal point instead of periods ('.'). On exit the locale is restored + to the initial locale. It also serves as context manager with the same + effect. If no such locale is available, the test is skipped. + + .. versionadded:: 1.15.0 + + """ + (cur_locale, tst_locale) = find_comma_decimal_point_locale() + + def setup_method(self): + if self.tst_locale is None: + pytest.skip("No French locale available") + locale.setlocale(locale.LC_NUMERIC, locale=self.tst_locale) + + def teardown_method(self): + locale.setlocale(locale.LC_NUMERIC, locale=self.cur_locale) + + def __enter__(self): + if self.tst_locale is None: + pytest.skip("No French locale available") + locale.setlocale(locale.LC_NUMERIC, locale=self.tst_locale) + + def __exit__(self, type, value, traceback): + locale.setlocale(locale.LC_NUMERIC, locale=self.cur_locale) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_conversion_utils.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_conversion_utils.py new file mode 100644 index 0000000000000000000000000000000000000000..c602eba4bb286f833d081e30b6b8dfabcfe1c1e6 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_conversion_utils.py @@ -0,0 +1,208 @@ +""" +Tests for numpy/core/src/multiarray/conversion_utils.c +""" +import re +import sys + +import pytest + +import numpy as np +import numpy.core._multiarray_tests as mt +from numpy.testing import assert_warns, IS_PYPY + + +class StringConverterTestCase: + allow_bytes = True + case_insensitive = True + exact_match = False + warn = True + + def _check_value_error(self, val): + pattern = r'\(got {}\)'.format(re.escape(repr(val))) + with pytest.raises(ValueError, match=pattern) as exc: + self.conv(val) + + def _check_conv_assert_warn(self, val, expected): + if self.warn: + with assert_warns(DeprecationWarning) as exc: + assert self.conv(val) == expected + else: + assert self.conv(val) == expected + + def _check(self, val, expected): + """Takes valid non-deprecated inputs for converters, + runs converters on inputs, checks correctness of outputs, + warnings and errors""" + assert self.conv(val) == expected + + if self.allow_bytes: + assert self.conv(val.encode('ascii')) == expected + else: + with pytest.raises(TypeError): + self.conv(val.encode('ascii')) + + if len(val) != 1: + if self.exact_match: + self._check_value_error(val[:1]) + self._check_value_error(val + '\0') + else: + self._check_conv_assert_warn(val[:1], expected) + + if self.case_insensitive: + if val != val.lower(): + self._check_conv_assert_warn(val.lower(), expected) + if val != val.upper(): + self._check_conv_assert_warn(val.upper(), expected) + else: + if val != val.lower(): + self._check_value_error(val.lower()) + if val != val.upper(): + self._check_value_error(val.upper()) + + def test_wrong_type(self): + # common cases which apply to all the below + with pytest.raises(TypeError): + self.conv({}) + with pytest.raises(TypeError): + self.conv([]) + + def test_wrong_value(self): + # nonsense strings + self._check_value_error('') + self._check_value_error('\N{greek small letter pi}') + + if self.allow_bytes: + self._check_value_error(b'') + # bytes which can't be converted to strings via utf8 + self._check_value_error(b"\xFF") + if self.exact_match: + self._check_value_error("there's no way this is supported") + + +class TestByteorderConverter(StringConverterTestCase): + """ Tests of PyArray_ByteorderConverter """ + conv = mt.run_byteorder_converter + warn = False + + def test_valid(self): + for s in ['big', '>']: + self._check(s, 'NPY_BIG') + for s in ['little', '<']: + self._check(s, 'NPY_LITTLE') + for s in ['native', '=']: + self._check(s, 'NPY_NATIVE') + for s in ['ignore', '|']: + self._check(s, 'NPY_IGNORE') + for s in ['swap']: + self._check(s, 'NPY_SWAP') + + +class TestSortkindConverter(StringConverterTestCase): + """ Tests of PyArray_SortkindConverter """ + conv = mt.run_sortkind_converter + warn = False + + def test_valid(self): + self._check('quicksort', 'NPY_QUICKSORT') + self._check('heapsort', 'NPY_HEAPSORT') + self._check('mergesort', 'NPY_STABLESORT') # alias + self._check('stable', 'NPY_STABLESORT') + + +class TestSelectkindConverter(StringConverterTestCase): + """ Tests of PyArray_SelectkindConverter """ + conv = mt.run_selectkind_converter + case_insensitive = False + exact_match = True + + def test_valid(self): + self._check('introselect', 'NPY_INTROSELECT') + + +class TestSearchsideConverter(StringConverterTestCase): + """ Tests of PyArray_SearchsideConverter """ + conv = mt.run_searchside_converter + def test_valid(self): + self._check('left', 'NPY_SEARCHLEFT') + self._check('right', 'NPY_SEARCHRIGHT') + + +class TestOrderConverter(StringConverterTestCase): + """ Tests of PyArray_OrderConverter """ + conv = mt.run_order_converter + warn = False + + def test_valid(self): + self._check('c', 'NPY_CORDER') + self._check('f', 'NPY_FORTRANORDER') + self._check('a', 'NPY_ANYORDER') + self._check('k', 'NPY_KEEPORDER') + + def test_flatten_invalid_order(self): + # invalid after gh-14596 + with pytest.raises(ValueError): + self.conv('Z') + for order in [False, True, 0, 8]: + with pytest.raises(TypeError): + self.conv(order) + + +class TestClipmodeConverter(StringConverterTestCase): + """ Tests of PyArray_ClipmodeConverter """ + conv = mt.run_clipmode_converter + def test_valid(self): + self._check('clip', 'NPY_CLIP') + self._check('wrap', 'NPY_WRAP') + self._check('raise', 'NPY_RAISE') + + # integer values allowed here + assert self.conv(np.CLIP) == 'NPY_CLIP' + assert self.conv(np.WRAP) == 'NPY_WRAP' + assert self.conv(np.RAISE) == 'NPY_RAISE' + + +class TestCastingConverter(StringConverterTestCase): + """ Tests of PyArray_CastingConverter """ + conv = mt.run_casting_converter + case_insensitive = False + exact_match = True + + def test_valid(self): + self._check("no", "NPY_NO_CASTING") + self._check("equiv", "NPY_EQUIV_CASTING") + self._check("safe", "NPY_SAFE_CASTING") + self._check("same_kind", "NPY_SAME_KIND_CASTING") + self._check("unsafe", "NPY_UNSAFE_CASTING") + + +class TestIntpConverter: + """ Tests of PyArray_IntpConverter """ + conv = mt.run_intp_converter + + def test_basic(self): + assert self.conv(1) == (1,) + assert self.conv((1, 2)) == (1, 2) + assert self.conv([1, 2]) == (1, 2) + assert self.conv(()) == () + + def test_none(self): + # once the warning expires, this will raise TypeError + with pytest.warns(DeprecationWarning): + assert self.conv(None) == () + + @pytest.mark.skipif(IS_PYPY and sys.implementation.version <= (7, 3, 8), + reason="PyPy bug in error formatting") + def test_float(self): + with pytest.raises(TypeError): + self.conv(1.0) + with pytest.raises(TypeError): + self.conv([1, 1.0]) + + def test_too_large(self): + with pytest.raises(ValueError): + self.conv(2**64) + + def test_too_many_dims(self): + assert self.conv([1]*32) == (1,)*32 + with pytest.raises(ValueError): + self.conv([1]*33) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_cpu_dispatcher.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_cpu_dispatcher.py new file mode 100644 index 0000000000000000000000000000000000000000..41a60d5c395cf8df6405f9406134d83c0e2598bb --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_cpu_dispatcher.py @@ -0,0 +1,43 @@ +from numpy.core._multiarray_umath import __cpu_features__, __cpu_baseline__, __cpu_dispatch__ +from numpy.core import _umath_tests +from numpy.testing import assert_equal + +def test_dispatcher(): + """ + Testing the utilities of the CPU dispatcher + """ + targets = ( + "SSE2", "SSE41", "AVX2", + "VSX", "VSX2", "VSX3", + "NEON", "ASIMD", "ASIMDHP", + "VX", "VXE" + ) + highest_sfx = "" # no suffix for the baseline + all_sfx = [] + for feature in reversed(targets): + # skip baseline features, by the default `CCompilerOpt` do not generate separated objects + # for the baseline, just one object combined all of them via 'baseline' option + # within the configuration statements. + if feature in __cpu_baseline__: + continue + # check compiler and running machine support + if feature not in __cpu_dispatch__ or not __cpu_features__[feature]: + continue + + if not highest_sfx: + highest_sfx = "_" + feature + all_sfx.append("func" + "_" + feature) + + test = _umath_tests.test_dispatch() + assert_equal(test["func"], "func" + highest_sfx) + assert_equal(test["var"], "var" + highest_sfx) + + if highest_sfx: + assert_equal(test["func_xb"], "func" + highest_sfx) + assert_equal(test["var_xb"], "var" + highest_sfx) + else: + assert_equal(test["func_xb"], "nobase") + assert_equal(test["var_xb"], "nobase") + + all_sfx.append("func") # add the baseline + assert_equal(test["all"], all_sfx) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_cython.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_cython.py new file mode 100644 index 0000000000000000000000000000000000000000..0e0d00c2508b6450c92c65b08f34c2167253cacd --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_cython.py @@ -0,0 +1,135 @@ +import os +import shutil +import subprocess +import sys +import pytest + +import numpy as np +from numpy.testing import IS_WASM + +# This import is copied from random.tests.test_extending +try: + import cython + from Cython.Compiler.Version import version as cython_version +except ImportError: + cython = None +else: + from numpy._utils import _pep440 + + # Cython 0.29.30 is required for Python 3.11 and there are + # other fixes in the 0.29 series that are needed even for earlier + # Python versions. + # Note: keep in sync with the one in pyproject.toml + required_version = "0.29.30" + if _pep440.parse(cython_version) < _pep440.Version(required_version): + # too old or wrong cython, skip the test + cython = None + +pytestmark = pytest.mark.skipif(cython is None, reason="requires cython") + + +@pytest.fixture(scope='module') +def install_temp(tmpdir_factory): + # Based in part on test_cython from random.tests.test_extending + if IS_WASM: + pytest.skip("No subprocess") + + srcdir = os.path.join(os.path.dirname(__file__), 'examples', 'cython') + build_dir = tmpdir_factory.mktemp("cython_test") / "build" + os.makedirs(build_dir, exist_ok=True) + try: + subprocess.check_call(["meson", "--version"]) + except FileNotFoundError: + pytest.skip("No usable 'meson' found") + if sys.platform == "win32": + subprocess.check_call(["meson", "setup", + "--buildtype=release", + "--vsenv", str(srcdir)], + cwd=build_dir, + ) + else: + subprocess.check_call(["meson", "setup", str(srcdir)], + cwd=build_dir + ) + subprocess.check_call(["meson", "compile", "-vv"], cwd=build_dir) + + sys.path.append(str(build_dir)) + +def test_is_timedelta64_object(install_temp): + import checks + + assert checks.is_td64(np.timedelta64(1234)) + assert checks.is_td64(np.timedelta64(1234, "ns")) + assert checks.is_td64(np.timedelta64("NaT", "ns")) + + assert not checks.is_td64(1) + assert not checks.is_td64(None) + assert not checks.is_td64("foo") + assert not checks.is_td64(np.datetime64("now", "s")) + + +def test_is_datetime64_object(install_temp): + import checks + + assert checks.is_dt64(np.datetime64(1234, "ns")) + assert checks.is_dt64(np.datetime64("NaT", "ns")) + + assert not checks.is_dt64(1) + assert not checks.is_dt64(None) + assert not checks.is_dt64("foo") + assert not checks.is_dt64(np.timedelta64(1234)) + + +def test_get_datetime64_value(install_temp): + import checks + + dt64 = np.datetime64("2016-01-01", "ns") + + result = checks.get_dt64_value(dt64) + expected = dt64.view("i8") + + assert result == expected + + +def test_get_timedelta64_value(install_temp): + import checks + + td64 = np.timedelta64(12345, "h") + + result = checks.get_td64_value(td64) + expected = td64.view("i8") + + assert result == expected + + +def test_get_datetime64_unit(install_temp): + import checks + + dt64 = np.datetime64("2016-01-01", "ns") + result = checks.get_dt64_unit(dt64) + expected = 10 + assert result == expected + + td64 = np.timedelta64(12345, "h") + result = checks.get_dt64_unit(td64) + expected = 5 + assert result == expected + + +def test_abstract_scalars(install_temp): + import checks + + assert checks.is_integer(1) + assert checks.is_integer(np.int8(1)) + assert checks.is_integer(np.uint64(1)) + +def test_conv_intp(install_temp): + import checks + + class myint: + def __int__(self): + return 3 + + # These conversion passes via `__int__`, not `__index__`: + assert checks.conv_intp(3.) == 3 + assert checks.conv_intp(myint()) == 3 diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_errstate.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_errstate.py new file mode 100644 index 0000000000000000000000000000000000000000..3a5647f6f34036711337bfe7f625242afd1e2b28 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_errstate.py @@ -0,0 +1,61 @@ +import pytest +import sysconfig + +import numpy as np +from numpy.testing import assert_, assert_raises, IS_WASM + +# The floating point emulation on ARM EABI systems lacking a hardware FPU is +# known to be buggy. This is an attempt to identify these hosts. It may not +# catch all possible cases, but it catches the known cases of gh-413 and +# gh-15562. +hosttype = sysconfig.get_config_var('HOST_GNU_TYPE') +arm_softfloat = False if hosttype is None else hosttype.endswith('gnueabi') + +class TestErrstate: + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.skipif(arm_softfloat, + reason='platform/cpu issue with FPU (gh-413,-15562)') + def test_invalid(self): + with np.errstate(all='raise', under='ignore'): + a = -np.arange(3) + # This should work + with np.errstate(invalid='ignore'): + np.sqrt(a) + # While this should fail! + with assert_raises(FloatingPointError): + np.sqrt(a) + + @pytest.mark.skipif(IS_WASM, reason="fp errors don't work in wasm") + @pytest.mark.skipif(arm_softfloat, + reason='platform/cpu issue with FPU (gh-15562)') + def test_divide(self): + with np.errstate(all='raise', under='ignore'): + a = -np.arange(3) + # This should work + with np.errstate(divide='ignore'): + a // 0 + # While this should fail! + with assert_raises(FloatingPointError): + a // 0 + # As should this, see gh-15562 + with assert_raises(FloatingPointError): + a // a + + def test_errcall(self): + def foo(*args): + print(args) + + olderrcall = np.geterrcall() + with np.errstate(call=foo): + assert_(np.geterrcall() is foo, 'call is not foo') + with np.errstate(call=None): + assert_(np.geterrcall() is None, 'call is not None') + assert_(np.geterrcall() is olderrcall, 'call is not olderrcall') + + def test_errstate_decorator(self): + @np.errstate(all='ignore') + def foo(): + a = -np.arange(3) + a // 0 + + foo() diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_limited_api.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_limited_api.py new file mode 100644 index 0000000000000000000000000000000000000000..725de19bdaed5b46218dd7d2c882728bfc3c11be --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_limited_api.py @@ -0,0 +1,44 @@ +import os +import shutil +import subprocess +import sys +import sysconfig +import pytest + +from numpy.testing import IS_WASM + + +@pytest.mark.skipif(IS_WASM, reason="Can't start subprocess") +@pytest.mark.xfail( + sysconfig.get_config_var("Py_DEBUG"), + reason=( + "Py_LIMITED_API is incompatible with Py_DEBUG, Py_TRACE_REFS, " + "and Py_REF_DEBUG" + ), +) +def test_limited_api(tmp_path): + """Test building a third-party C extension with the limited API.""" + # Based in part on test_cython from random.tests.test_extending + + here = os.path.dirname(__file__) + ext_dir = os.path.join(here, "examples", "limited_api") + + cytest = str(tmp_path / "limited_api") + + shutil.copytree(ext_dir, cytest) + # build the examples and "install" them into a temporary directory + + install_log = str(tmp_path / "tmp_install_log.txt") + subprocess.check_output( + [ + sys.executable, + "setup.py", + "build", + "install", + "--prefix", str(tmp_path / "installdir"), + "--single-version-externally-managed", + "--record", + install_log, + ], + cwd=cytest, + ) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_longdouble.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_longdouble.py new file mode 100644 index 0000000000000000000000000000000000000000..45721950c0f19685d9c1075f95f7f126a43831aa --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_longdouble.py @@ -0,0 +1,395 @@ +import warnings +import platform +import pytest + +import numpy as np +from numpy.testing import ( + assert_, assert_equal, assert_raises, assert_warns, assert_array_equal, + temppath, IS_MUSL + ) +from numpy.core.tests._locales import CommaDecimalPointLocale + + +LD_INFO = np.finfo(np.longdouble) +longdouble_longer_than_double = (LD_INFO.eps < np.finfo(np.double).eps) + + +_o = 1 + LD_INFO.eps +string_to_longdouble_inaccurate = (_o != np.longdouble(repr(_o))) +del _o + + +def test_scalar_extraction(): + """Confirm that extracting a value doesn't convert to python float""" + o = 1 + LD_INFO.eps + a = np.array([o, o, o]) + assert_equal(a[1], o) + + +# Conversions string -> long double + +# 0.1 not exactly representable in base 2 floating point. +repr_precision = len(repr(np.longdouble(0.1))) +# +2 from macro block starting around line 842 in scalartypes.c.src. + + +@pytest.mark.skipif(IS_MUSL, + reason="test flaky on musllinux") +@pytest.mark.skipif(LD_INFO.precision + 2 >= repr_precision, + reason="repr precision not enough to show eps") +def test_repr_roundtrip(): + # We will only see eps in repr if within printing precision. + o = 1 + LD_INFO.eps + assert_equal(np.longdouble(repr(o)), o, "repr was %s" % repr(o)) + + +@pytest.mark.skipif(string_to_longdouble_inaccurate, reason="Need strtold_l") +def test_repr_roundtrip_bytes(): + o = 1 + LD_INFO.eps + assert_equal(np.longdouble(repr(o).encode("ascii")), o) + + +@pytest.mark.skipif(string_to_longdouble_inaccurate, reason="Need strtold_l") +@pytest.mark.parametrize("strtype", (np.str_, np.bytes_, str, bytes)) +def test_array_and_stringlike_roundtrip(strtype): + """ + Test that string representations of long-double roundtrip both + for array casting and scalar coercion, see also gh-15608. + """ + o = 1 + LD_INFO.eps + + if strtype in (np.bytes_, bytes): + o_str = strtype(repr(o).encode("ascii")) + else: + o_str = strtype(repr(o)) + + # Test that `o` is correctly coerced from the string-like + assert o == np.longdouble(o_str) + + # Test that arrays also roundtrip correctly: + o_strarr = np.asarray([o] * 3, dtype=strtype) + assert (o == o_strarr.astype(np.longdouble)).all() + + # And array coercion and casting to string give the same as scalar repr: + assert (o_strarr == o_str).all() + assert (np.asarray([o] * 3).astype(strtype) == o_str).all() + + +def test_bogus_string(): + assert_raises(ValueError, np.longdouble, "spam") + assert_raises(ValueError, np.longdouble, "1.0 flub") + + +@pytest.mark.skipif(string_to_longdouble_inaccurate, reason="Need strtold_l") +def test_fromstring(): + o = 1 + LD_INFO.eps + s = (" " + repr(o))*5 + a = np.array([o]*5) + assert_equal(np.fromstring(s, sep=" ", dtype=np.longdouble), a, + err_msg="reading '%s'" % s) + + +def test_fromstring_complex(): + for ctype in ["complex", "cdouble", "cfloat"]: + # Check spacing between separator + assert_equal(np.fromstring("1, 2 , 3 ,4", sep=",", dtype=ctype), + np.array([1., 2., 3., 4.])) + # Real component not specified + assert_equal(np.fromstring("1j, -2j, 3j, 4e1j", sep=",", dtype=ctype), + np.array([1.j, -2.j, 3.j, 40.j])) + # Both components specified + assert_equal(np.fromstring("1+1j,2-2j, -3+3j, -4e1+4j", sep=",", dtype=ctype), + np.array([1. + 1.j, 2. - 2.j, - 3. + 3.j, - 40. + 4j])) + # Spaces at wrong places + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1+2 j,3", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1+ 2j,3", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1 +2j,3", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1+j", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1+", dtype=ctype, sep=","), + np.array([1.])) + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1j+1", dtype=ctype, sep=","), + np.array([1j])) + + +def test_fromstring_bogus(): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1. 2. 3. flop 4.", dtype=float, sep=" "), + np.array([1., 2., 3.])) + + +def test_fromstring_empty(): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("xxxxx", sep="x"), + np.array([])) + + +def test_fromstring_missing(): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1xx3x4x5x6", sep="x"), + np.array([1])) + + +class TestFileBased: + + ldbl = 1 + LD_INFO.eps + tgt = np.array([ldbl]*5) + out = ''.join([repr(t) + '\n' for t in tgt]) + + def test_fromfile_bogus(self): + with temppath() as path: + with open(path, 'w') as f: + f.write("1. 2. 3. flop 4.\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=float, sep=" ") + assert_equal(res, np.array([1., 2., 3.])) + + def test_fromfile_complex(self): + for ctype in ["complex", "cdouble", "cfloat"]: + # Check spacing between separator and only real component specified + with temppath() as path: + with open(path, 'w') as f: + f.write("1, 2 , 3 ,4\n") + + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1., 2., 3., 4.])) + + # Real component not specified + with temppath() as path: + with open(path, 'w') as f: + f.write("1j, -2j, 3j, 4e1j\n") + + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.j, -2.j, 3.j, 40.j])) + + # Both components specified + with temppath() as path: + with open(path, 'w') as f: + f.write("1+1j,2-2j, -3+3j, -4e1+4j\n") + + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1. + 1.j, 2. - 2.j, - 3. + 3.j, - 40. + 4j])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1+2 j,3\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1+ 2j,3\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1 +2j,3\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1+j\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1+\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.])) + + # Spaces at wrong places + with temppath() as path: + with open(path, 'w') as f: + f.write("1j+1\n") + + with assert_warns(DeprecationWarning): + res = np.fromfile(path, dtype=ctype, sep=",") + assert_equal(res, np.array([1.j])) + + + + @pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") + def test_fromfile(self): + with temppath() as path: + with open(path, 'w') as f: + f.write(self.out) + res = np.fromfile(path, dtype=np.longdouble, sep="\n") + assert_equal(res, self.tgt) + + @pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") + def test_genfromtxt(self): + with temppath() as path: + with open(path, 'w') as f: + f.write(self.out) + res = np.genfromtxt(path, dtype=np.longdouble) + assert_equal(res, self.tgt) + + @pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") + def test_loadtxt(self): + with temppath() as path: + with open(path, 'w') as f: + f.write(self.out) + res = np.loadtxt(path, dtype=np.longdouble) + assert_equal(res, self.tgt) + + @pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") + def test_tofile_roundtrip(self): + with temppath() as path: + self.tgt.tofile(path, sep=" ") + res = np.fromfile(path, dtype=np.longdouble, sep=" ") + assert_equal(res, self.tgt) + + +# Conversions long double -> string + + +def test_repr_exact(): + o = 1 + LD_INFO.eps + assert_(repr(o) != '1') + + +@pytest.mark.skipif(longdouble_longer_than_double, reason="BUG #2376") +@pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") +def test_format(): + o = 1 + LD_INFO.eps + assert_("{0:.40g}".format(o) != '1') + + +@pytest.mark.skipif(longdouble_longer_than_double, reason="BUG #2376") +@pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") +def test_percent(): + o = 1 + LD_INFO.eps + assert_("%.40g" % o != '1') + + +@pytest.mark.skipif(longdouble_longer_than_double, + reason="array repr problem") +@pytest.mark.skipif(string_to_longdouble_inaccurate, + reason="Need strtold_l") +def test_array_repr(): + o = 1 + LD_INFO.eps + a = np.array([o]) + b = np.array([1], dtype=np.longdouble) + if not np.all(a != b): + raise ValueError("precision loss creating arrays") + assert_(repr(a) != repr(b)) + +# +# Locale tests: scalar types formatting should be independent of the locale +# + +class TestCommaDecimalPointLocale(CommaDecimalPointLocale): + + def test_repr_roundtrip_foreign(self): + o = 1.5 + assert_equal(o, np.longdouble(repr(o))) + + def test_fromstring_foreign_repr(self): + f = 1.234 + a = np.fromstring(repr(f), dtype=float, sep=" ") + assert_equal(a[0], f) + + def test_fromstring_best_effort_float(self): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1,234", dtype=float, sep=" "), + np.array([1.])) + + def test_fromstring_best_effort(self): + with assert_warns(DeprecationWarning): + assert_equal(np.fromstring("1,234", dtype=np.longdouble, sep=" "), + np.array([1.])) + + def test_fromstring_foreign(self): + s = "1.234" + a = np.fromstring(s, dtype=np.longdouble, sep=" ") + assert_equal(a[0], np.longdouble(s)) + + def test_fromstring_foreign_sep(self): + a = np.array([1, 2, 3, 4]) + b = np.fromstring("1,2,3,4,", dtype=np.longdouble, sep=",") + assert_array_equal(a, b) + + def test_fromstring_foreign_value(self): + with assert_warns(DeprecationWarning): + b = np.fromstring("1,234", dtype=np.longdouble, sep=" ") + assert_array_equal(b[0], 1) + + +@pytest.mark.parametrize("int_val", [ + # cases discussed in gh-10723 + # and gh-9968 + 2 ** 1024, 0]) +def test_longdouble_from_int(int_val): + # for issue gh-9968 + str_val = str(int_val) + # we'll expect a RuntimeWarning on platforms + # with np.longdouble equivalent to np.double + # for large integer input + with warnings.catch_warnings(record=True) as w: + warnings.filterwarnings('always', '', RuntimeWarning) + # can be inf==inf on some platforms + assert np.longdouble(int_val) == np.longdouble(str_val) + # we can't directly compare the int and + # max longdouble value on all platforms + if np.allclose(np.finfo(np.longdouble).max, + np.finfo(np.double).max) and w: + assert w[0].category is RuntimeWarning + +@pytest.mark.parametrize("bool_val", [ + True, False]) +def test_longdouble_from_bool(bool_val): + assert np.longdouble(bool_val) == np.longdouble(int(bool_val)) + + +@pytest.mark.skipif( + not (IS_MUSL and platform.machine() == "x86_64"), + reason="only need to run on musllinux_x86_64" +) +def test_musllinux_x86_64_signature(): + # this test may fail if you're emulating musllinux_x86_64 on a different + # architecture, but should pass natively. + known_sigs = [b'\xcd\xcc\xcc\xcc\xcc\xcc\xcc\xcc\xfb\xbf'] + sig = (np.longdouble(-1.0) / np.longdouble(10.0) + ).newbyteorder('<').tobytes()[:10] + assert sig in known_sigs + + +def test_eps_positive(): + # np.finfo('g').eps should be positive on all platforms. If this isn't true + # then something may have gone wrong with the MachArLike, e.g. if + # np.core.getlimits._discovered_machar didn't work properly + assert np.finfo(np.longdouble).eps > 0. diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_print.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_print.py new file mode 100644 index 0000000000000000000000000000000000000000..162686ee00c85b15634b18d5a7393d9d1cc6b17a --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_print.py @@ -0,0 +1,202 @@ +import sys + +import pytest + +import numpy as np +from numpy.testing import assert_, assert_equal, IS_MUSL +from numpy.core.tests._locales import CommaDecimalPointLocale + + +from io import StringIO + +_REF = {np.inf: 'inf', -np.inf: '-inf', np.nan: 'nan'} + + +@pytest.mark.parametrize('tp', [np.float32, np.double, np.longdouble]) +def test_float_types(tp): + """ Check formatting. + + This is only for the str function, and only for simple types. + The precision of np.float32 and np.longdouble aren't the same as the + python float precision. + + """ + for x in [0, 1, -1, 1e20]: + assert_equal(str(tp(x)), str(float(x)), + err_msg='Failed str formatting for type %s' % tp) + + if tp(1e16).itemsize > 4: + assert_equal(str(tp(1e16)), str(float('1e16')), + err_msg='Failed str formatting for type %s' % tp) + else: + ref = '1e+16' + assert_equal(str(tp(1e16)), ref, + err_msg='Failed str formatting for type %s' % tp) + + +@pytest.mark.parametrize('tp', [np.float32, np.double, np.longdouble]) +def test_nan_inf_float(tp): + """ Check formatting of nan & inf. + + This is only for the str function, and only for simple types. + The precision of np.float32 and np.longdouble aren't the same as the + python float precision. + + """ + for x in [np.inf, -np.inf, np.nan]: + assert_equal(str(tp(x)), _REF[x], + err_msg='Failed str formatting for type %s' % tp) + + +@pytest.mark.parametrize('tp', [np.complex64, np.cdouble, np.clongdouble]) +def test_complex_types(tp): + """Check formatting of complex types. + + This is only for the str function, and only for simple types. + The precision of np.float32 and np.longdouble aren't the same as the + python float precision. + + """ + for x in [0, 1, -1, 1e20]: + assert_equal(str(tp(x)), str(complex(x)), + err_msg='Failed str formatting for type %s' % tp) + assert_equal(str(tp(x*1j)), str(complex(x*1j)), + err_msg='Failed str formatting for type %s' % tp) + assert_equal(str(tp(x + x*1j)), str(complex(x + x*1j)), + err_msg='Failed str formatting for type %s' % tp) + + if tp(1e16).itemsize > 8: + assert_equal(str(tp(1e16)), str(complex(1e16)), + err_msg='Failed str formatting for type %s' % tp) + else: + ref = '(1e+16+0j)' + assert_equal(str(tp(1e16)), ref, + err_msg='Failed str formatting for type %s' % tp) + + +@pytest.mark.parametrize('dtype', [np.complex64, np.cdouble, np.clongdouble]) +def test_complex_inf_nan(dtype): + """Check inf/nan formatting of complex types.""" + TESTS = { + complex(np.inf, 0): "(inf+0j)", + complex(0, np.inf): "infj", + complex(-np.inf, 0): "(-inf+0j)", + complex(0, -np.inf): "-infj", + complex(np.inf, 1): "(inf+1j)", + complex(1, np.inf): "(1+infj)", + complex(-np.inf, 1): "(-inf+1j)", + complex(1, -np.inf): "(1-infj)", + complex(np.nan, 0): "(nan+0j)", + complex(0, np.nan): "nanj", + complex(-np.nan, 0): "(nan+0j)", + complex(0, -np.nan): "nanj", + complex(np.nan, 1): "(nan+1j)", + complex(1, np.nan): "(1+nanj)", + complex(-np.nan, 1): "(nan+1j)", + complex(1, -np.nan): "(1+nanj)", + } + for c, s in TESTS.items(): + assert_equal(str(dtype(c)), s) + + +# print tests +def _test_redirected_print(x, tp, ref=None): + file = StringIO() + file_tp = StringIO() + stdout = sys.stdout + try: + sys.stdout = file_tp + print(tp(x)) + sys.stdout = file + if ref: + print(ref) + else: + print(x) + finally: + sys.stdout = stdout + + assert_equal(file.getvalue(), file_tp.getvalue(), + err_msg='print failed for type%s' % tp) + + +@pytest.mark.parametrize('tp', [np.float32, np.double, np.longdouble]) +def test_float_type_print(tp): + """Check formatting when using print """ + for x in [0, 1, -1, 1e20]: + _test_redirected_print(float(x), tp) + + for x in [np.inf, -np.inf, np.nan]: + _test_redirected_print(float(x), tp, _REF[x]) + + if tp(1e16).itemsize > 4: + _test_redirected_print(float(1e16), tp) + else: + ref = '1e+16' + _test_redirected_print(float(1e16), tp, ref) + + +@pytest.mark.parametrize('tp', [np.complex64, np.cdouble, np.clongdouble]) +def test_complex_type_print(tp): + """Check formatting when using print """ + # We do not create complex with inf/nan directly because the feature is + # missing in python < 2.6 + for x in [0, 1, -1, 1e20]: + _test_redirected_print(complex(x), tp) + + if tp(1e16).itemsize > 8: + _test_redirected_print(complex(1e16), tp) + else: + ref = '(1e+16+0j)' + _test_redirected_print(complex(1e16), tp, ref) + + _test_redirected_print(complex(np.inf, 1), tp, '(inf+1j)') + _test_redirected_print(complex(-np.inf, 1), tp, '(-inf+1j)') + _test_redirected_print(complex(-np.nan, 1), tp, '(nan+1j)') + + +def test_scalar_format(): + """Test the str.format method with NumPy scalar types""" + tests = [('{0}', True, np.bool_), + ('{0}', False, np.bool_), + ('{0:d}', 130, np.uint8), + ('{0:d}', 50000, np.uint16), + ('{0:d}', 3000000000, np.uint32), + ('{0:d}', 15000000000000000000, np.uint64), + ('{0:d}', -120, np.int8), + ('{0:d}', -30000, np.int16), + ('{0:d}', -2000000000, np.int32), + ('{0:d}', -7000000000000000000, np.int64), + ('{0:g}', 1.5, np.float16), + ('{0:g}', 1.5, np.float32), + ('{0:g}', 1.5, np.float64), + ('{0:g}', 1.5, np.longdouble), + ('{0:g}', 1.5+0.5j, np.complex64), + ('{0:g}', 1.5+0.5j, np.complex128), + ('{0:g}', 1.5+0.5j, np.clongdouble)] + + for (fmat, val, valtype) in tests: + try: + assert_equal(fmat.format(val), fmat.format(valtype(val)), + "failed with val %s, type %s" % (val, valtype)) + except ValueError as e: + assert_(False, + "format raised exception (fmt='%s', val=%s, type=%s, exc='%s')" % + (fmat, repr(val), repr(valtype), str(e))) + + +# +# Locale tests: scalar types formatting should be independent of the locale +# + +class TestCommaDecimalPointLocale(CommaDecimalPointLocale): + + def test_locale_single(self): + assert_equal(str(np.float32(1.2)), str(float(1.2))) + + def test_locale_double(self): + assert_equal(str(np.double(1.2)), str(float(1.2))) + + @pytest.mark.skipif(IS_MUSL, + reason="test flaky on musllinux") + def test_locale_longdouble(self): + assert_equal(str(np.longdouble('1.2')), str(float(1.2))) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_scalarinherit.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_scalarinherit.py new file mode 100644 index 0000000000000000000000000000000000000000..f9c574d5798ea477c396b2def85d27885217386b --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_scalarinherit.py @@ -0,0 +1,98 @@ +""" Test printing of scalar types. + +""" +import pytest + +import numpy as np +from numpy.testing import assert_, assert_raises + + +class A: + pass +class B(A, np.float64): + pass + +class C(B): + pass +class D(C, B): + pass + +class B0(np.float64, A): + pass +class C0(B0): + pass + +class HasNew: + def __new__(cls, *args, **kwargs): + return cls, args, kwargs + +class B1(np.float64, HasNew): + pass + + +class TestInherit: + def test_init(self): + x = B(1.0) + assert_(str(x) == '1.0') + y = C(2.0) + assert_(str(y) == '2.0') + z = D(3.0) + assert_(str(z) == '3.0') + + def test_init2(self): + x = B0(1.0) + assert_(str(x) == '1.0') + y = C0(2.0) + assert_(str(y) == '2.0') + + def test_gh_15395(self): + # HasNew is the second base, so `np.float64` should have priority + x = B1(1.0) + assert_(str(x) == '1.0') + + # previously caused RecursionError!? + with pytest.raises(TypeError): + B1(1.0, 2.0) + + +class TestCharacter: + def test_char_radd(self): + # GH issue 9620, reached gentype_add and raise TypeError + np_s = np.bytes_('abc') + np_u = np.str_('abc') + s = b'def' + u = 'def' + assert_(np_s.__radd__(np_s) is NotImplemented) + assert_(np_s.__radd__(np_u) is NotImplemented) + assert_(np_s.__radd__(s) is NotImplemented) + assert_(np_s.__radd__(u) is NotImplemented) + assert_(np_u.__radd__(np_s) is NotImplemented) + assert_(np_u.__radd__(np_u) is NotImplemented) + assert_(np_u.__radd__(s) is NotImplemented) + assert_(np_u.__radd__(u) is NotImplemented) + assert_(s + np_s == b'defabc') + assert_(u + np_u == 'defabc') + + class MyStr(str, np.generic): + # would segfault + pass + + with assert_raises(TypeError): + # Previously worked, but gave completely wrong result + ret = s + MyStr('abc') + + class MyBytes(bytes, np.generic): + # would segfault + pass + + ret = s + MyBytes(b'abc') + assert(type(ret) is type(s)) + assert ret == b"defabc" + + def test_char_repeat(self): + np_s = np.bytes_('abc') + np_u = np.str_('abc') + res_s = b'abc' * 5 + res_u = 'abc' * 5 + assert_(np_s * 5 == res_s) + assert_(np_u * 5 == res_u) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_shape_base.py b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_shape_base.py new file mode 100644 index 0000000000000000000000000000000000000000..0428b95a9451c25ebf2ca6b6c06519de51d54a72 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/core/tests/test_shape_base.py @@ -0,0 +1,825 @@ +import pytest +import numpy as np +from numpy.core import ( + array, arange, atleast_1d, atleast_2d, atleast_3d, block, vstack, hstack, + newaxis, concatenate, stack + ) +from numpy.core.shape_base import (_block_dispatcher, _block_setup, + _block_concatenate, _block_slicing) +from numpy.testing import ( + assert_, assert_raises, assert_array_equal, assert_equal, + assert_raises_regex, assert_warns, IS_PYPY + ) + + +class TestAtleast1d: + def test_0D_array(self): + a = array(1) + b = array(2) + res = [atleast_1d(a), atleast_1d(b)] + desired = [array([1]), array([2])] + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1, 2]) + b = array([2, 3]) + res = [atleast_1d(a), atleast_1d(b)] + desired = [array([1, 2]), array([2, 3])] + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + res = [atleast_1d(a), atleast_1d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + def test_3D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + a = array([a, a]) + b = array([b, b]) + res = [atleast_1d(a), atleast_1d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + def test_r1array(self): + """ Test to make sure equivalent Travis O's r1array function + """ + assert_(atleast_1d(3).shape == (1,)) + assert_(atleast_1d(3j).shape == (1,)) + assert_(atleast_1d(3.0).shape == (1,)) + assert_(atleast_1d([[2, 3], [4, 5]]).shape == (2, 2)) + + +class TestAtleast2d: + def test_0D_array(self): + a = array(1) + b = array(2) + res = [atleast_2d(a), atleast_2d(b)] + desired = [array([[1]]), array([[2]])] + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1, 2]) + b = array([2, 3]) + res = [atleast_2d(a), atleast_2d(b)] + desired = [array([[1, 2]]), array([[2, 3]])] + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + res = [atleast_2d(a), atleast_2d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + def test_3D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + a = array([a, a]) + b = array([b, b]) + res = [atleast_2d(a), atleast_2d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + def test_r2array(self): + """ Test to make sure equivalent Travis O's r2array function + """ + assert_(atleast_2d(3).shape == (1, 1)) + assert_(atleast_2d([3j, 1]).shape == (1, 2)) + assert_(atleast_2d([[[3, 1], [4, 5]], [[3, 5], [1, 2]]]).shape == (2, 2, 2)) + + +class TestAtleast3d: + def test_0D_array(self): + a = array(1) + b = array(2) + res = [atleast_3d(a), atleast_3d(b)] + desired = [array([[[1]]]), array([[[2]]])] + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1, 2]) + b = array([2, 3]) + res = [atleast_3d(a), atleast_3d(b)] + desired = [array([[[1], [2]]]), array([[[2], [3]]])] + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + res = [atleast_3d(a), atleast_3d(b)] + desired = [a[:,:, newaxis], b[:,:, newaxis]] + assert_array_equal(res, desired) + + def test_3D_array(self): + a = array([[1, 2], [1, 2]]) + b = array([[2, 3], [2, 3]]) + a = array([a, a]) + b = array([b, b]) + res = [atleast_3d(a), atleast_3d(b)] + desired = [a, b] + assert_array_equal(res, desired) + + +class TestHstack: + def test_non_iterable(self): + assert_raises(TypeError, hstack, 1) + + def test_empty_input(self): + assert_raises(ValueError, hstack, ()) + + def test_0D_array(self): + a = array(1) + b = array(2) + res = hstack([a, b]) + desired = array([1, 2]) + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1]) + b = array([2]) + res = hstack([a, b]) + desired = array([1, 2]) + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1], [2]]) + b = array([[1], [2]]) + res = hstack([a, b]) + desired = array([[1, 1], [2, 2]]) + assert_array_equal(res, desired) + + def test_generator(self): + with pytest.raises(TypeError, match="arrays to stack must be"): + hstack((np.arange(3) for _ in range(2))) + with pytest.raises(TypeError, match="arrays to stack must be"): + hstack(map(lambda x: x, np.ones((3, 2)))) + + def test_casting_and_dtype(self): + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + res = np.hstack((a, b), casting="unsafe", dtype=np.int64) + expected_res = np.array([1, 2, 3, 2, 3, 4]) + assert_array_equal(res, expected_res) + + def test_casting_and_dtype_type_error(self): + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + with pytest.raises(TypeError): + hstack((a, b), casting="safe", dtype=np.int64) + + +class TestVstack: + def test_non_iterable(self): + assert_raises(TypeError, vstack, 1) + + def test_empty_input(self): + assert_raises(ValueError, vstack, ()) + + def test_0D_array(self): + a = array(1) + b = array(2) + res = vstack([a, b]) + desired = array([[1], [2]]) + assert_array_equal(res, desired) + + def test_1D_array(self): + a = array([1]) + b = array([2]) + res = vstack([a, b]) + desired = array([[1], [2]]) + assert_array_equal(res, desired) + + def test_2D_array(self): + a = array([[1], [2]]) + b = array([[1], [2]]) + res = vstack([a, b]) + desired = array([[1], [2], [1], [2]]) + assert_array_equal(res, desired) + + def test_2D_array2(self): + a = array([1, 2]) + b = array([1, 2]) + res = vstack([a, b]) + desired = array([[1, 2], [1, 2]]) + assert_array_equal(res, desired) + + def test_generator(self): + with pytest.raises(TypeError, match="arrays to stack must be"): + vstack((np.arange(3) for _ in range(2))) + + def test_casting_and_dtype(self): + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + res = np.vstack((a, b), casting="unsafe", dtype=np.int64) + expected_res = np.array([[1, 2, 3], [2, 3, 4]]) + assert_array_equal(res, expected_res) + + def test_casting_and_dtype_type_error(self): + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + with pytest.raises(TypeError): + vstack((a, b), casting="safe", dtype=np.int64) + + + +class TestConcatenate: + def test_returns_copy(self): + a = np.eye(3) + b = np.concatenate([a]) + b[0, 0] = 2 + assert b[0, 0] != a[0, 0] + + def test_exceptions(self): + # test axis must be in bounds + for ndim in [1, 2, 3]: + a = np.ones((1,)*ndim) + np.concatenate((a, a), axis=0) # OK + assert_raises(np.AxisError, np.concatenate, (a, a), axis=ndim) + assert_raises(np.AxisError, np.concatenate, (a, a), axis=-(ndim + 1)) + + # Scalars cannot be concatenated + assert_raises(ValueError, concatenate, (0,)) + assert_raises(ValueError, concatenate, (np.array(0),)) + + # dimensionality must match + assert_raises_regex( + ValueError, + r"all the input arrays must have same number of dimensions, but " + r"the array at index 0 has 1 dimension\(s\) and the array at " + r"index 1 has 2 dimension\(s\)", + np.concatenate, (np.zeros(1), np.zeros((1, 1)))) + + # test shapes must match except for concatenation axis + a = np.ones((1, 2, 3)) + b = np.ones((2, 2, 3)) + axis = list(range(3)) + for i in range(3): + np.concatenate((a, b), axis=axis[0]) # OK + assert_raises_regex( + ValueError, + "all the input array dimensions except for the concatenation axis " + "must match exactly, but along dimension {}, the array at " + "index 0 has size 1 and the array at index 1 has size 2" + .format(i), + np.concatenate, (a, b), axis=axis[1]) + assert_raises(ValueError, np.concatenate, (a, b), axis=axis[2]) + a = np.moveaxis(a, -1, 0) + b = np.moveaxis(b, -1, 0) + axis.append(axis.pop(0)) + + # No arrays to concatenate raises ValueError + assert_raises(ValueError, concatenate, ()) + + def test_concatenate_axis_None(self): + a = np.arange(4, dtype=np.float64).reshape((2, 2)) + b = list(range(3)) + c = ['x'] + r = np.concatenate((a, a), axis=None) + assert_equal(r.dtype, a.dtype) + assert_equal(r.ndim, 1) + r = np.concatenate((a, b), axis=None) + assert_equal(r.size, a.size + len(b)) + assert_equal(r.dtype, a.dtype) + r = np.concatenate((a, b, c), axis=None, dtype="U") + d = array(['0.0', '1.0', '2.0', '3.0', + '0', '1', '2', 'x']) + assert_array_equal(r, d) + + out = np.zeros(a.size + len(b)) + r = np.concatenate((a, b), axis=None) + rout = np.concatenate((a, b), axis=None, out=out) + assert_(out is rout) + assert_equal(r, rout) + + def test_large_concatenate_axis_None(self): + # When no axis is given, concatenate uses flattened versions. + # This also had a bug with many arrays (see gh-5979). + x = np.arange(1, 100) + r = np.concatenate(x, None) + assert_array_equal(x, r) + + # This should probably be deprecated: + r = np.concatenate(x, 100) # axis is >= MAXDIMS + assert_array_equal(x, r) + + def test_concatenate(self): + # Test concatenate function + # One sequence returns unmodified (but as array) + r4 = list(range(4)) + assert_array_equal(concatenate((r4,)), r4) + # Any sequence + assert_array_equal(concatenate((tuple(r4),)), r4) + assert_array_equal(concatenate((array(r4),)), r4) + # 1D default concatenation + r3 = list(range(3)) + assert_array_equal(concatenate((r4, r3)), r4 + r3) + # Mixed sequence types + assert_array_equal(concatenate((tuple(r4), r3)), r4 + r3) + assert_array_equal(concatenate((array(r4), r3)), r4 + r3) + # Explicit axis specification + assert_array_equal(concatenate((r4, r3), 0), r4 + r3) + # Including negative + assert_array_equal(concatenate((r4, r3), -1), r4 + r3) + # 2D + a23 = array([[10, 11, 12], [13, 14, 15]]) + a13 = array([[0, 1, 2]]) + res = array([[10, 11, 12], [13, 14, 15], [0, 1, 2]]) + assert_array_equal(concatenate((a23, a13)), res) + assert_array_equal(concatenate((a23, a13), 0), res) + assert_array_equal(concatenate((a23.T, a13.T), 1), res.T) + assert_array_equal(concatenate((a23.T, a13.T), -1), res.T) + # Arrays much match shape + assert_raises(ValueError, concatenate, (a23.T, a13.T), 0) + # 3D + res = arange(2 * 3 * 7).reshape((2, 3, 7)) + a0 = res[..., :4] + a1 = res[..., 4:6] + a2 = res[..., 6:] + assert_array_equal(concatenate((a0, a1, a2), 2), res) + assert_array_equal(concatenate((a0, a1, a2), -1), res) + assert_array_equal(concatenate((a0.T, a1.T, a2.T), 0), res.T) + + out = res.copy() + rout = concatenate((a0, a1, a2), 2, out=out) + assert_(out is rout) + assert_equal(res, rout) + + @pytest.mark.skipif(IS_PYPY, reason="PYPY handles sq_concat, nb_add differently than cpython") + def test_operator_concat(self): + import operator + a = array([1, 2]) + b = array([3, 4]) + n = [1,2] + res = array([1, 2, 3, 4]) + assert_raises(TypeError, operator.concat, a, b) + assert_raises(TypeError, operator.concat, a, n) + assert_raises(TypeError, operator.concat, n, a) + assert_raises(TypeError, operator.concat, a, 1) + assert_raises(TypeError, operator.concat, 1, a) + + def test_bad_out_shape(self): + a = array([1, 2]) + b = array([3, 4]) + + assert_raises(ValueError, concatenate, (a, b), out=np.empty(5)) + assert_raises(ValueError, concatenate, (a, b), out=np.empty((4,1))) + assert_raises(ValueError, concatenate, (a, b), out=np.empty((1,4))) + concatenate((a, b), out=np.empty(4)) + + @pytest.mark.parametrize("axis", [None, 0]) + @pytest.mark.parametrize("out_dtype", ["c8", "f4", "f8", ">f8", "i8", "S4"]) + @pytest.mark.parametrize("casting", + ['no', 'equiv', 'safe', 'same_kind', 'unsafe']) + def test_out_and_dtype(self, axis, out_dtype, casting): + # Compare usage of `out=out` with `dtype=out.dtype` + out = np.empty(4, dtype=out_dtype) + to_concat = (array([1.1, 2.2]), array([3.3, 4.4])) + + if not np.can_cast(to_concat[0], out_dtype, casting=casting): + with assert_raises(TypeError): + concatenate(to_concat, out=out, axis=axis, casting=casting) + with assert_raises(TypeError): + concatenate(to_concat, dtype=out.dtype, + axis=axis, casting=casting) + else: + res_out = concatenate(to_concat, out=out, + axis=axis, casting=casting) + res_dtype = concatenate(to_concat, dtype=out.dtype, + axis=axis, casting=casting) + assert res_out is out + assert_array_equal(out, res_dtype) + assert res_dtype.dtype == out_dtype + + with assert_raises(TypeError): + concatenate(to_concat, out=out, dtype=out_dtype, axis=axis) + + @pytest.mark.parametrize("axis", [None, 0]) + @pytest.mark.parametrize("string_dt", ["S", "U", "S0", "U0"]) + @pytest.mark.parametrize("arrs", + [([0.],), ([0.], [1]), ([0], ["string"], [1.])]) + def test_dtype_with_promotion(self, arrs, string_dt, axis): + # Note that U0 and S0 should be deprecated eventually and changed to + # actually give the empty string result (together with `np.array`) + res = np.concatenate(arrs, axis=axis, dtype=string_dt, casting="unsafe") + # The actual dtype should be identical to a cast (of a double array): + assert res.dtype == np.array(1.).astype(string_dt).dtype + + @pytest.mark.parametrize("axis", [None, 0]) + def test_string_dtype_does_not_inspect(self, axis): + with pytest.raises(TypeError): + np.concatenate(([None], [1]), dtype="S", axis=axis) + with pytest.raises(TypeError): + np.concatenate(([None], [1]), dtype="U", axis=axis) + + @pytest.mark.parametrize("axis", [None, 0]) + def test_subarray_error(self, axis): + with pytest.raises(TypeError, match=".*subarray dtype"): + np.concatenate(([1], [1]), dtype="(2,)i", axis=axis) + + +def test_stack(): + # non-iterable input + assert_raises(TypeError, stack, 1) + + # 0d input + for input_ in [(1, 2, 3), + [np.int32(1), np.int32(2), np.int32(3)], + [np.array(1), np.array(2), np.array(3)]]: + assert_array_equal(stack(input_), [1, 2, 3]) + # 1d input examples + a = np.array([1, 2, 3]) + b = np.array([4, 5, 6]) + r1 = array([[1, 2, 3], [4, 5, 6]]) + assert_array_equal(np.stack((a, b)), r1) + assert_array_equal(np.stack((a, b), axis=1), r1.T) + # all input types + assert_array_equal(np.stack(list([a, b])), r1) + assert_array_equal(np.stack(array([a, b])), r1) + # all shapes for 1d input + arrays = [np.random.randn(3) for _ in range(10)] + axes = [0, 1, -1, -2] + expected_shapes = [(10, 3), (3, 10), (3, 10), (10, 3)] + for axis, expected_shape in zip(axes, expected_shapes): + assert_equal(np.stack(arrays, axis).shape, expected_shape) + assert_raises_regex(np.AxisError, 'out of bounds', stack, arrays, axis=2) + assert_raises_regex(np.AxisError, 'out of bounds', stack, arrays, axis=-3) + # all shapes for 2d input + arrays = [np.random.randn(3, 4) for _ in range(10)] + axes = [0, 1, 2, -1, -2, -3] + expected_shapes = [(10, 3, 4), (3, 10, 4), (3, 4, 10), + (3, 4, 10), (3, 10, 4), (10, 3, 4)] + for axis, expected_shape in zip(axes, expected_shapes): + assert_equal(np.stack(arrays, axis).shape, expected_shape) + # empty arrays + assert_(stack([[], [], []]).shape == (3, 0)) + assert_(stack([[], [], []], axis=1).shape == (0, 3)) + # out + out = np.zeros_like(r1) + np.stack((a, b), out=out) + assert_array_equal(out, r1) + # edge cases + assert_raises_regex(ValueError, 'need at least one array', stack, []) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [1, np.arange(3)]) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [np.arange(3), 1]) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [np.arange(3), 1], axis=1) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [np.zeros((3, 3)), np.zeros(3)], axis=1) + assert_raises_regex(ValueError, 'must have the same shape', + stack, [np.arange(2), np.arange(3)]) + + # do not accept generators + with pytest.raises(TypeError, match="arrays to stack must be"): + stack((x for x in range(3))) + + #casting and dtype test + a = np.array([1, 2, 3]) + b = np.array([2.5, 3.5, 4.5]) + res = np.stack((a, b), axis=1, casting="unsafe", dtype=np.int64) + expected_res = np.array([[1, 2], [2, 3], [3, 4]]) + assert_array_equal(res, expected_res) + #casting and dtype with TypeError + with assert_raises(TypeError): + stack((a, b), dtype=np.int64, axis=1, casting="safe") + + +@pytest.mark.parametrize("axis", [0]) +@pytest.mark.parametrize("out_dtype", ["c8", "f4", "f8", ">f8", "i8"]) +@pytest.mark.parametrize("casting", + ['no', 'equiv', 'safe', 'same_kind', 'unsafe']) +def test_stack_out_and_dtype(axis, out_dtype, casting): + to_concat = (array([1, 2]), array([3, 4])) + res = array([[1, 2], [3, 4]]) + out = np.zeros_like(res) + + if not np.can_cast(to_concat[0], out_dtype, casting=casting): + with assert_raises(TypeError): + stack(to_concat, dtype=out_dtype, + axis=axis, casting=casting) + else: + res_out = stack(to_concat, out=out, + axis=axis, casting=casting) + res_dtype = stack(to_concat, dtype=out_dtype, + axis=axis, casting=casting) + assert res_out is out + assert_array_equal(out, res_dtype) + assert res_dtype.dtype == out_dtype + + with assert_raises(TypeError): + stack(to_concat, out=out, dtype=out_dtype, axis=axis) + + +class TestBlock: + @pytest.fixture(params=['block', 'force_concatenate', 'force_slicing']) + def block(self, request): + # blocking small arrays and large arrays go through different paths. + # the algorithm is triggered depending on the number of element + # copies required. + # We define a test fixture that forces most tests to go through + # both code paths. + # Ultimately, this should be removed if a single algorithm is found + # to be faster for both small and large arrays. + def _block_force_concatenate(arrays): + arrays, list_ndim, result_ndim, _ = _block_setup(arrays) + return _block_concatenate(arrays, list_ndim, result_ndim) + + def _block_force_slicing(arrays): + arrays, list_ndim, result_ndim, _ = _block_setup(arrays) + return _block_slicing(arrays, list_ndim, result_ndim) + + if request.param == 'force_concatenate': + return _block_force_concatenate + elif request.param == 'force_slicing': + return _block_force_slicing + elif request.param == 'block': + return block + else: + raise ValueError('Unknown blocking request. There is a typo in the tests.') + + def test_returns_copy(self, block): + a = np.eye(3) + b = block(a) + b[0, 0] = 2 + assert b[0, 0] != a[0, 0] + + def test_block_total_size_estimate(self, block): + _, _, _, total_size = _block_setup([1]) + assert total_size == 1 + + _, _, _, total_size = _block_setup([[1]]) + assert total_size == 1 + + _, _, _, total_size = _block_setup([[1, 1]]) + assert total_size == 2 + + _, _, _, total_size = _block_setup([[1], [1]]) + assert total_size == 2 + + _, _, _, total_size = _block_setup([[1, 2], [3, 4]]) + assert total_size == 4 + + def test_block_simple_row_wise(self, block): + a_2d = np.ones((2, 2)) + b_2d = 2 * a_2d + desired = np.array([[1, 1, 2, 2], + [1, 1, 2, 2]]) + result = block([a_2d, b_2d]) + assert_equal(desired, result) + + def test_block_simple_column_wise(self, block): + a_2d = np.ones((2, 2)) + b_2d = 2 * a_2d + expected = np.array([[1, 1], + [1, 1], + [2, 2], + [2, 2]]) + result = block([[a_2d], [b_2d]]) + assert_equal(expected, result) + + def test_block_with_1d_arrays_row_wise(self, block): + # # # 1-D vectors are treated as row arrays + a = np.array([1, 2, 3]) + b = np.array([2, 3, 4]) + expected = np.array([1, 2, 3, 2, 3, 4]) + result = block([a, b]) + assert_equal(expected, result) + + def test_block_with_1d_arrays_multiple_rows(self, block): + a = np.array([1, 2, 3]) + b = np.array([2, 3, 4]) + expected = np.array([[1, 2, 3, 2, 3, 4], + [1, 2, 3, 2, 3, 4]]) + result = block([[a, b], [a, b]]) + assert_equal(expected, result) + + def test_block_with_1d_arrays_column_wise(self, block): + # # # 1-D vectors are treated as row arrays + a_1d = np.array([1, 2, 3]) + b_1d = np.array([2, 3, 4]) + expected = np.array([[1, 2, 3], + [2, 3, 4]]) + result = block([[a_1d], [b_1d]]) + assert_equal(expected, result) + + def test_block_mixed_1d_and_2d(self, block): + a_2d = np.ones((2, 2)) + b_1d = np.array([2, 2]) + result = block([[a_2d], [b_1d]]) + expected = np.array([[1, 1], + [1, 1], + [2, 2]]) + assert_equal(expected, result) + + def test_block_complicated(self, block): + # a bit more complicated + one_2d = np.array([[1, 1, 1]]) + two_2d = np.array([[2, 2, 2]]) + three_2d = np.array([[3, 3, 3, 3, 3, 3]]) + four_1d = np.array([4, 4, 4, 4, 4, 4]) + five_0d = np.array(5) + six_1d = np.array([6, 6, 6, 6, 6]) + zero_2d = np.zeros((2, 6)) + + expected = np.array([[1, 1, 1, 2, 2, 2], + [3, 3, 3, 3, 3, 3], + [4, 4, 4, 4, 4, 4], + [5, 6, 6, 6, 6, 6], + [0, 0, 0, 0, 0, 0], + [0, 0, 0, 0, 0, 0]]) + + result = block([[one_2d, two_2d], + [three_2d], + [four_1d], + [five_0d, six_1d], + [zero_2d]]) + assert_equal(result, expected) + + def test_nested(self, block): + one = np.array([1, 1, 1]) + two = np.array([[2, 2, 2], [2, 2, 2], [2, 2, 2]]) + three = np.array([3, 3, 3]) + four = np.array([4, 4, 4]) + five = np.array(5) + six = np.array([6, 6, 6, 6, 6]) + zero = np.zeros((2, 6)) + + result = block([ + [ + block([ + [one], + [three], + [four] + ]), + two + ], + [five, six], + [zero] + ]) + expected = np.array([[1, 1, 1, 2, 2, 2], + [3, 3, 3, 2, 2, 2], + [4, 4, 4, 2, 2, 2], + [5, 6, 6, 6, 6, 6], + [0, 0, 0, 0, 0, 0], + [0, 0, 0, 0, 0, 0]]) + + assert_equal(result, expected) + + def test_3d(self, block): + a000 = np.ones((2, 2, 2), int) * 1 + + a100 = np.ones((3, 2, 2), int) * 2 + a010 = np.ones((2, 3, 2), int) * 3 + a001 = np.ones((2, 2, 3), int) * 4 + + a011 = np.ones((2, 3, 3), int) * 5 + a101 = np.ones((3, 2, 3), int) * 6 + a110 = np.ones((3, 3, 2), int) * 7 + + a111 = np.ones((3, 3, 3), int) * 8 + + result = block([ + [ + [a000, a001], + [a010, a011], + ], + [ + [a100, a101], + [a110, a111], + ] + ]) + expected = array([[[1, 1, 4, 4, 4], + [1, 1, 4, 4, 4], + [3, 3, 5, 5, 5], + [3, 3, 5, 5, 5], + [3, 3, 5, 5, 5]], + + [[1, 1, 4, 4, 4], + [1, 1, 4, 4, 4], + [3, 3, 5, 5, 5], + [3, 3, 5, 5, 5], + [3, 3, 5, 5, 5]], + + [[2, 2, 6, 6, 6], + [2, 2, 6, 6, 6], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8]], + + [[2, 2, 6, 6, 6], + [2, 2, 6, 6, 6], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8]], + + [[2, 2, 6, 6, 6], + [2, 2, 6, 6, 6], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8], + [7, 7, 8, 8, 8]]]) + + assert_array_equal(result, expected) + + def test_block_with_mismatched_shape(self, block): + a = np.array([0, 0]) + b = np.eye(2) + assert_raises(ValueError, block, [a, b]) + assert_raises(ValueError, block, [b, a]) + + to_block = [[np.ones((2,3)), np.ones((2,2))], + [np.ones((2,2)), np.ones((2,2))]] + assert_raises(ValueError, block, to_block) + def test_no_lists(self, block): + assert_equal(block(1), np.array(1)) + assert_equal(block(np.eye(3)), np.eye(3)) + + def test_invalid_nesting(self, block): + msg = 'depths are mismatched' + assert_raises_regex(ValueError, msg, block, [1, [2]]) + assert_raises_regex(ValueError, msg, block, [1, []]) + assert_raises_regex(ValueError, msg, block, [[1], 2]) + assert_raises_regex(ValueError, msg, block, [[], 2]) + assert_raises_regex(ValueError, msg, block, [ + [[1], [2]], + [[3, 4]], + [5] # missing brackets + ]) + + def test_empty_lists(self, block): + assert_raises_regex(ValueError, 'empty', block, []) + assert_raises_regex(ValueError, 'empty', block, [[]]) + assert_raises_regex(ValueError, 'empty', block, [[1], []]) + + def test_tuple(self, block): + assert_raises_regex(TypeError, 'tuple', block, ([1, 2], [3, 4])) + assert_raises_regex(TypeError, 'tuple', block, [(1, 2), (3, 4)]) + + def test_different_ndims(self, block): + a = 1. + b = 2 * np.ones((1, 2)) + c = 3 * np.ones((1, 1, 3)) + + result = block([a, b, c]) + expected = np.array([[[1., 2., 2., 3., 3., 3.]]]) + + assert_equal(result, expected) + + def test_different_ndims_depths(self, block): + a = 1. + b = 2 * np.ones((1, 2)) + c = 3 * np.ones((1, 2, 3)) + + result = block([[a, b], [c]]) + expected = np.array([[[1., 2., 2.], + [3., 3., 3.], + [3., 3., 3.]]]) + + assert_equal(result, expected) + + def test_block_memory_order(self, block): + # 3D + arr_c = np.zeros((3,)*3, order='C') + arr_f = np.zeros((3,)*3, order='F') + + b_c = [[[arr_c, arr_c], + [arr_c, arr_c]], + [[arr_c, arr_c], + [arr_c, arr_c]]] + + b_f = [[[arr_f, arr_f], + [arr_f, arr_f]], + [[arr_f, arr_f], + [arr_f, arr_f]]] + + assert block(b_c).flags['C_CONTIGUOUS'] + assert block(b_f).flags['F_CONTIGUOUS'] + + arr_c = np.zeros((3, 3), order='C') + arr_f = np.zeros((3, 3), order='F') + # 2D + b_c = [[arr_c, arr_c], + [arr_c, arr_c]] + + b_f = [[arr_f, arr_f], + [arr_f, arr_f]] + + assert block(b_c).flags['C_CONTIGUOUS'] + assert block(b_f).flags['F_CONTIGUOUS'] + + +def test_block_dispatcher(): + class ArrayLike: + pass + a = ArrayLike() + b = ArrayLike() + c = ArrayLike() + assert_equal(list(_block_dispatcher(a)), [a]) + assert_equal(list(_block_dispatcher([a])), [a]) + assert_equal(list(_block_dispatcher([a, b])), [a, b]) + assert_equal(list(_block_dispatcher([[a], [b, [c]]])), [a, b, c]) + # don't recurse into non-lists + assert_equal(list(_block_dispatcher((a, b))), [(a, b)]) diff --git 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b/env-llmeval/lib/python3.10/site-packages/numpy/fft/tests/test_helper.py @@ -0,0 +1,167 @@ +"""Test functions for fftpack.helper module + +Copied from fftpack.helper by Pearu Peterson, October 2005 + +""" +import numpy as np +from numpy.testing import assert_array_almost_equal +from numpy import fft, pi + + +class TestFFTShift: + + def test_definition(self): + x = [0, 1, 2, 3, 4, -4, -3, -2, -1] + y = [-4, -3, -2, -1, 0, 1, 2, 3, 4] + assert_array_almost_equal(fft.fftshift(x), y) + assert_array_almost_equal(fft.ifftshift(y), x) + x = [0, 1, 2, 3, 4, -5, -4, -3, -2, -1] + y = [-5, -4, -3, -2, -1, 0, 1, 2, 3, 4] + assert_array_almost_equal(fft.fftshift(x), y) + assert_array_almost_equal(fft.ifftshift(y), x) + + def test_inverse(self): + for n in [1, 4, 9, 100, 211]: + x = np.random.random((n,)) + assert_array_almost_equal(fft.ifftshift(fft.fftshift(x)), x) + + def test_axes_keyword(self): + freqs = [[0, 1, 2], [3, 4, -4], [-3, -2, -1]] + shifted = [[-1, -3, -2], [2, 0, 1], [-4, 3, 4]] + assert_array_almost_equal(fft.fftshift(freqs, axes=(0, 1)), shifted) + assert_array_almost_equal(fft.fftshift(freqs, axes=0), + fft.fftshift(freqs, axes=(0,))) + assert_array_almost_equal(fft.ifftshift(shifted, axes=(0, 1)), freqs) + assert_array_almost_equal(fft.ifftshift(shifted, axes=0), + fft.ifftshift(shifted, axes=(0,))) + + assert_array_almost_equal(fft.fftshift(freqs), shifted) + assert_array_almost_equal(fft.ifftshift(shifted), freqs) + + def test_uneven_dims(self): + """ Test 2D input, which has uneven dimension sizes """ + freqs = [ + [0, 1], + [2, 3], + [4, 5] + ] + + # shift in dimension 0 + shift_dim0 = [ + [4, 5], + [0, 1], + [2, 3] + ] + assert_array_almost_equal(fft.fftshift(freqs, axes=0), shift_dim0) + assert_array_almost_equal(fft.ifftshift(shift_dim0, axes=0), freqs) + assert_array_almost_equal(fft.fftshift(freqs, axes=(0,)), shift_dim0) + assert_array_almost_equal(fft.ifftshift(shift_dim0, axes=[0]), freqs) + + # shift in dimension 1 + shift_dim1 = [ + [1, 0], + [3, 2], + [5, 4] + ] + assert_array_almost_equal(fft.fftshift(freqs, axes=1), shift_dim1) + assert_array_almost_equal(fft.ifftshift(shift_dim1, axes=1), freqs) + + # shift in both dimensions + shift_dim_both = [ + [5, 4], + [1, 0], + [3, 2] + ] + assert_array_almost_equal(fft.fftshift(freqs, axes=(0, 1)), shift_dim_both) + assert_array_almost_equal(fft.ifftshift(shift_dim_both, axes=(0, 1)), freqs) + assert_array_almost_equal(fft.fftshift(freqs, axes=[0, 1]), shift_dim_both) + assert_array_almost_equal(fft.ifftshift(shift_dim_both, axes=[0, 1]), freqs) + + # axes=None (default) shift in all dimensions + assert_array_almost_equal(fft.fftshift(freqs, axes=None), shift_dim_both) + assert_array_almost_equal(fft.ifftshift(shift_dim_both, axes=None), freqs) + assert_array_almost_equal(fft.fftshift(freqs), shift_dim_both) + assert_array_almost_equal(fft.ifftshift(shift_dim_both), freqs) + + def test_equal_to_original(self): + """ Test that the new (>=v1.15) implementation (see #10073) is equal to the original (<=v1.14) """ + from numpy.core import asarray, concatenate, arange, take + + def original_fftshift(x, axes=None): + """ How fftshift was implemented in v1.14""" + tmp = asarray(x) + ndim = tmp.ndim + if axes is None: + axes = list(range(ndim)) + elif isinstance(axes, int): + axes = (axes,) + y = tmp + for k in axes: + n = tmp.shape[k] + p2 = (n + 1) // 2 + mylist = concatenate((arange(p2, n), arange(p2))) + y = take(y, mylist, k) + return y + + def original_ifftshift(x, axes=None): + """ How ifftshift was implemented in v1.14 """ + tmp = asarray(x) + ndim = tmp.ndim + if axes is None: + axes = list(range(ndim)) + elif isinstance(axes, int): + axes = (axes,) + y = tmp + for k in axes: + n = tmp.shape[k] + p2 = n - (n + 1) // 2 + mylist = concatenate((arange(p2, n), arange(p2))) + y = take(y, mylist, k) + return y + + # create possible 2d array combinations and try all possible keywords + # compare output to original functions + for i in range(16): + for j in range(16): + for axes_keyword in [0, 1, None, (0,), (0, 1)]: + inp = np.random.rand(i, j) + + assert_array_almost_equal(fft.fftshift(inp, axes_keyword), + original_fftshift(inp, axes_keyword)) + + assert_array_almost_equal(fft.ifftshift(inp, axes_keyword), + original_ifftshift(inp, axes_keyword)) + + +class TestFFTFreq: + + def test_definition(self): + x = [0, 1, 2, 3, 4, -4, -3, -2, -1] + assert_array_almost_equal(9*fft.fftfreq(9), x) + assert_array_almost_equal(9*pi*fft.fftfreq(9, pi), x) + x = [0, 1, 2, 3, 4, -5, -4, -3, -2, -1] + assert_array_almost_equal(10*fft.fftfreq(10), x) + assert_array_almost_equal(10*pi*fft.fftfreq(10, pi), x) + + +class TestRFFTFreq: + + def test_definition(self): + x = [0, 1, 2, 3, 4] + assert_array_almost_equal(9*fft.rfftfreq(9), x) + assert_array_almost_equal(9*pi*fft.rfftfreq(9, pi), x) + x = [0, 1, 2, 3, 4, 5] + assert_array_almost_equal(10*fft.rfftfreq(10), x) + assert_array_almost_equal(10*pi*fft.rfftfreq(10, pi), x) + + +class TestIRFFTN: + + def test_not_last_axis_success(self): + ar, ai = np.random.random((2, 16, 8, 32)) + a = ar + 1j*ai + + axes = (-2,) + + # Should not raise error + fft.irfftn(a, axes=axes) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/fft/tests/test_pocketfft.py b/env-llmeval/lib/python3.10/site-packages/numpy/fft/tests/test_pocketfft.py new file mode 100644 index 0000000000000000000000000000000000000000..122a9fac93ec9006e36660c5fa4b446d384b1c3e --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/fft/tests/test_pocketfft.py @@ -0,0 +1,308 @@ +import numpy as np +import pytest +from numpy.random import random +from numpy.testing import ( + assert_array_equal, assert_raises, assert_allclose, IS_WASM + ) +import threading +import queue + + +def fft1(x): + L = len(x) + phase = -2j * np.pi * (np.arange(L) / L) + phase = np.arange(L).reshape(-1, 1) * phase + return np.sum(x*np.exp(phase), axis=1) + + +class TestFFTShift: + + def test_fft_n(self): + assert_raises(ValueError, np.fft.fft, [1, 2, 3], 0) + + +class TestFFT1D: + + def test_identity(self): + maxlen = 512 + x = random(maxlen) + 1j*random(maxlen) + xr = random(maxlen) + for i in range(1, maxlen): + assert_allclose(np.fft.ifft(np.fft.fft(x[0:i])), x[0:i], + atol=1e-12) + assert_allclose(np.fft.irfft(np.fft.rfft(xr[0:i]), i), + xr[0:i], atol=1e-12) + + def test_fft(self): + x = random(30) + 1j*random(30) + assert_allclose(fft1(x), np.fft.fft(x), atol=1e-6) + assert_allclose(fft1(x), np.fft.fft(x, norm="backward"), atol=1e-6) + assert_allclose(fft1(x) / np.sqrt(30), + np.fft.fft(x, norm="ortho"), atol=1e-6) + assert_allclose(fft1(x) / 30., + np.fft.fft(x, norm="forward"), atol=1e-6) + + @pytest.mark.parametrize('norm', (None, 'backward', 'ortho', 'forward')) + def test_ifft(self, norm): + x = random(30) + 1j*random(30) + assert_allclose( + x, np.fft.ifft(np.fft.fft(x, norm=norm), norm=norm), + atol=1e-6) + # Ensure we get the correct error message + with pytest.raises(ValueError, + match='Invalid number of FFT data points'): + np.fft.ifft([], norm=norm) + + def test_fft2(self): + x = random((30, 20)) + 1j*random((30, 20)) + assert_allclose(np.fft.fft(np.fft.fft(x, axis=1), axis=0), + np.fft.fft2(x), atol=1e-6) + assert_allclose(np.fft.fft2(x), + np.fft.fft2(x, norm="backward"), atol=1e-6) + assert_allclose(np.fft.fft2(x) / np.sqrt(30 * 20), + np.fft.fft2(x, norm="ortho"), atol=1e-6) + assert_allclose(np.fft.fft2(x) / (30. * 20.), + np.fft.fft2(x, norm="forward"), atol=1e-6) + + def test_ifft2(self): + x = random((30, 20)) + 1j*random((30, 20)) + assert_allclose(np.fft.ifft(np.fft.ifft(x, axis=1), axis=0), + np.fft.ifft2(x), atol=1e-6) + assert_allclose(np.fft.ifft2(x), + np.fft.ifft2(x, norm="backward"), atol=1e-6) + assert_allclose(np.fft.ifft2(x) * np.sqrt(30 * 20), + np.fft.ifft2(x, norm="ortho"), atol=1e-6) + assert_allclose(np.fft.ifft2(x) * (30. * 20.), + np.fft.ifft2(x, norm="forward"), atol=1e-6) + + def test_fftn(self): + x = random((30, 20, 10)) + 1j*random((30, 20, 10)) + assert_allclose( + np.fft.fft(np.fft.fft(np.fft.fft(x, axis=2), axis=1), axis=0), + np.fft.fftn(x), atol=1e-6) + assert_allclose(np.fft.fftn(x), + np.fft.fftn(x, norm="backward"), atol=1e-6) + assert_allclose(np.fft.fftn(x) / np.sqrt(30 * 20 * 10), + np.fft.fftn(x, norm="ortho"), atol=1e-6) + assert_allclose(np.fft.fftn(x) / (30. * 20. * 10.), + np.fft.fftn(x, norm="forward"), atol=1e-6) + + def test_ifftn(self): + x = random((30, 20, 10)) + 1j*random((30, 20, 10)) + assert_allclose( + np.fft.ifft(np.fft.ifft(np.fft.ifft(x, axis=2), axis=1), axis=0), + np.fft.ifftn(x), atol=1e-6) + assert_allclose(np.fft.ifftn(x), + np.fft.ifftn(x, norm="backward"), atol=1e-6) + assert_allclose(np.fft.ifftn(x) * np.sqrt(30 * 20 * 10), + np.fft.ifftn(x, norm="ortho"), atol=1e-6) + assert_allclose(np.fft.ifftn(x) * (30. * 20. * 10.), + np.fft.ifftn(x, norm="forward"), atol=1e-6) + + def test_rfft(self): + x = random(30) + for n in [x.size, 2*x.size]: + for norm in [None, 'backward', 'ortho', 'forward']: + assert_allclose( + np.fft.fft(x, n=n, norm=norm)[:(n//2 + 1)], + np.fft.rfft(x, n=n, norm=norm), atol=1e-6) + assert_allclose( + np.fft.rfft(x, n=n), + np.fft.rfft(x, n=n, norm="backward"), atol=1e-6) + assert_allclose( + np.fft.rfft(x, n=n) / np.sqrt(n), + np.fft.rfft(x, n=n, norm="ortho"), atol=1e-6) + assert_allclose( + np.fft.rfft(x, n=n) / n, + np.fft.rfft(x, n=n, norm="forward"), atol=1e-6) + + def test_irfft(self): + x = random(30) + assert_allclose(x, np.fft.irfft(np.fft.rfft(x)), atol=1e-6) + assert_allclose(x, np.fft.irfft(np.fft.rfft(x, norm="backward"), + norm="backward"), atol=1e-6) + assert_allclose(x, np.fft.irfft(np.fft.rfft(x, norm="ortho"), + norm="ortho"), atol=1e-6) + assert_allclose(x, np.fft.irfft(np.fft.rfft(x, norm="forward"), + norm="forward"), atol=1e-6) + + def test_rfft2(self): + x = random((30, 20)) + assert_allclose(np.fft.fft2(x)[:, :11], np.fft.rfft2(x), atol=1e-6) + assert_allclose(np.fft.rfft2(x), + np.fft.rfft2(x, norm="backward"), atol=1e-6) + assert_allclose(np.fft.rfft2(x) / np.sqrt(30 * 20), + np.fft.rfft2(x, norm="ortho"), atol=1e-6) + assert_allclose(np.fft.rfft2(x) / (30. * 20.), + np.fft.rfft2(x, norm="forward"), atol=1e-6) + + def test_irfft2(self): + x = random((30, 20)) + assert_allclose(x, np.fft.irfft2(np.fft.rfft2(x)), atol=1e-6) + assert_allclose(x, np.fft.irfft2(np.fft.rfft2(x, norm="backward"), + norm="backward"), atol=1e-6) + assert_allclose(x, np.fft.irfft2(np.fft.rfft2(x, norm="ortho"), + norm="ortho"), atol=1e-6) + assert_allclose(x, np.fft.irfft2(np.fft.rfft2(x, norm="forward"), + norm="forward"), atol=1e-6) + + def test_rfftn(self): + x = random((30, 20, 10)) + assert_allclose(np.fft.fftn(x)[:, :, :6], np.fft.rfftn(x), atol=1e-6) + assert_allclose(np.fft.rfftn(x), + np.fft.rfftn(x, norm="backward"), atol=1e-6) + assert_allclose(np.fft.rfftn(x) / np.sqrt(30 * 20 * 10), + np.fft.rfftn(x, norm="ortho"), atol=1e-6) + assert_allclose(np.fft.rfftn(x) / (30. * 20. * 10.), + np.fft.rfftn(x, norm="forward"), atol=1e-6) + + def test_irfftn(self): + x = random((30, 20, 10)) + assert_allclose(x, np.fft.irfftn(np.fft.rfftn(x)), atol=1e-6) + assert_allclose(x, np.fft.irfftn(np.fft.rfftn(x, norm="backward"), + norm="backward"), atol=1e-6) + assert_allclose(x, np.fft.irfftn(np.fft.rfftn(x, norm="ortho"), + norm="ortho"), atol=1e-6) + assert_allclose(x, np.fft.irfftn(np.fft.rfftn(x, norm="forward"), + norm="forward"), atol=1e-6) + + def test_hfft(self): + x = random(14) + 1j*random(14) + x_herm = np.concatenate((random(1), x, random(1))) + x = np.concatenate((x_herm, x[::-1].conj())) + assert_allclose(np.fft.fft(x), np.fft.hfft(x_herm), atol=1e-6) + assert_allclose(np.fft.hfft(x_herm), + np.fft.hfft(x_herm, norm="backward"), atol=1e-6) + assert_allclose(np.fft.hfft(x_herm) / np.sqrt(30), + np.fft.hfft(x_herm, norm="ortho"), atol=1e-6) + assert_allclose(np.fft.hfft(x_herm) / 30., + np.fft.hfft(x_herm, norm="forward"), atol=1e-6) + + def test_ihfft(self): + x = random(14) + 1j*random(14) + x_herm = np.concatenate((random(1), x, random(1))) + x = np.concatenate((x_herm, x[::-1].conj())) + assert_allclose(x_herm, np.fft.ihfft(np.fft.hfft(x_herm)), atol=1e-6) + assert_allclose(x_herm, np.fft.ihfft(np.fft.hfft(x_herm, + norm="backward"), norm="backward"), atol=1e-6) + assert_allclose(x_herm, np.fft.ihfft(np.fft.hfft(x_herm, + norm="ortho"), norm="ortho"), atol=1e-6) + assert_allclose(x_herm, np.fft.ihfft(np.fft.hfft(x_herm, + norm="forward"), norm="forward"), atol=1e-6) + + @pytest.mark.parametrize("op", [np.fft.fftn, np.fft.ifftn, + np.fft.rfftn, np.fft.irfftn]) + def test_axes(self, op): + x = random((30, 20, 10)) + axes = [(0, 1, 2), (0, 2, 1), (1, 0, 2), (1, 2, 0), (2, 0, 1), (2, 1, 0)] + for a in axes: + op_tr = op(np.transpose(x, a)) + tr_op = np.transpose(op(x, axes=a), a) + assert_allclose(op_tr, tr_op, atol=1e-6) + + def test_all_1d_norm_preserving(self): + # verify that round-trip transforms are norm-preserving + x = random(30) + x_norm = np.linalg.norm(x) + n = x.size * 2 + func_pairs = [(np.fft.fft, np.fft.ifft), + (np.fft.rfft, np.fft.irfft), + # hfft: order so the first function takes x.size samples + # (necessary for comparison to x_norm above) + (np.fft.ihfft, np.fft.hfft), + ] + for forw, back in func_pairs: + for n in [x.size, 2*x.size]: + for norm in [None, 'backward', 'ortho', 'forward']: + tmp = forw(x, n=n, norm=norm) + tmp = back(tmp, n=n, norm=norm) + assert_allclose(x_norm, + np.linalg.norm(tmp), atol=1e-6) + + @pytest.mark.parametrize("dtype", [np.half, np.single, np.double, + np.longdouble]) + def test_dtypes(self, dtype): + # make sure that all input precisions are accepted and internally + # converted to 64bit + x = random(30).astype(dtype) + assert_allclose(np.fft.ifft(np.fft.fft(x)), x, atol=1e-6) + assert_allclose(np.fft.irfft(np.fft.rfft(x)), x, atol=1e-6) + + +@pytest.mark.parametrize( + "dtype", + [np.float32, np.float64, np.complex64, np.complex128]) +@pytest.mark.parametrize("order", ["F", 'non-contiguous']) +@pytest.mark.parametrize( + "fft", + [np.fft.fft, np.fft.fft2, np.fft.fftn, + np.fft.ifft, np.fft.ifft2, np.fft.ifftn]) +def test_fft_with_order(dtype, order, fft): + # Check that FFT/IFFT produces identical results for C, Fortran and + # non contiguous arrays + rng = np.random.RandomState(42) + X = rng.rand(8, 7, 13).astype(dtype, copy=False) + # See discussion in pull/14178 + _tol = 8.0 * np.sqrt(np.log2(X.size)) * np.finfo(X.dtype).eps + if order == 'F': + Y = np.asfortranarray(X) + else: + # Make a non contiguous array + Y = X[::-1] + X = np.ascontiguousarray(X[::-1]) + + if fft.__name__.endswith('fft'): + for axis in range(3): + X_res = fft(X, axis=axis) + Y_res = fft(Y, axis=axis) + assert_allclose(X_res, Y_res, atol=_tol, rtol=_tol) + elif fft.__name__.endswith(('fft2', 'fftn')): + axes = [(0, 1), (1, 2), (0, 2)] + if fft.__name__.endswith('fftn'): + axes.extend([(0,), (1,), (2,), None]) + for ax in axes: + X_res = fft(X, axes=ax) + Y_res = fft(Y, axes=ax) + assert_allclose(X_res, Y_res, atol=_tol, rtol=_tol) + else: + raise ValueError() + + +@pytest.mark.skipif(IS_WASM, reason="Cannot start thread") +class TestFFTThreadSafe: + threads = 16 + input_shape = (800, 200) + + def _test_mtsame(self, func, *args): + def worker(args, q): + q.put(func(*args)) + + q = queue.Queue() + expected = func(*args) + + # Spin off a bunch of threads to call the same function simultaneously + t = [threading.Thread(target=worker, args=(args, q)) + for i in range(self.threads)] + [x.start() for x in t] + + [x.join() for x in t] + # Make sure all threads returned the correct value + for i in range(self.threads): + assert_array_equal(q.get(timeout=5), expected, + 'Function returned wrong value in multithreaded context') + + def test_fft(self): + a = np.ones(self.input_shape) * 1+0j + self._test_mtsame(np.fft.fft, a) + + def test_ifft(self): + a = np.ones(self.input_shape) * 1+0j + self._test_mtsame(np.fft.ifft, a) + + def test_rfft(self): + a = np.ones(self.input_shape) + self._test_mtsame(np.fft.rfft, a) + + def test_irfft(self): + a = np.ones(self.input_shape) * 1+0j + self._test_mtsame(np.fft.irfft, a) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/__init__.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..5cf02fe868b04d3fd1ff145e57332475d7466b57 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/__init__.py @@ -0,0 +1,175 @@ +""" +============================ +Typing (:mod:`numpy.typing`) +============================ + +.. versionadded:: 1.20 + +Large parts of the NumPy API have :pep:`484`-style type annotations. In +addition a number of type aliases are available to users, most prominently +the two below: + +- `ArrayLike`: objects that can be converted to arrays +- `DTypeLike`: objects that can be converted to dtypes + +.. _typing-extensions: https://pypi.org/project/typing-extensions/ + +Mypy plugin +----------- + +.. versionadded:: 1.21 + +.. automodule:: numpy.typing.mypy_plugin + +.. currentmodule:: numpy.typing + +Differences from the runtime NumPy API +-------------------------------------- + +NumPy is very flexible. Trying to describe the full range of +possibilities statically would result in types that are not very +helpful. For that reason, the typed NumPy API is often stricter than +the runtime NumPy API. This section describes some notable +differences. + +ArrayLike +~~~~~~~~~ + +The `ArrayLike` type tries to avoid creating object arrays. For +example, + +.. code-block:: python + + >>> np.array(x**2 for x in range(10)) + array( at ...>, dtype=object) + +is valid NumPy code which will create a 0-dimensional object +array. Type checkers will complain about the above example when using +the NumPy types however. If you really intended to do the above, then +you can either use a ``# type: ignore`` comment: + +.. code-block:: python + + >>> np.array(x**2 for x in range(10)) # type: ignore + +or explicitly type the array like object as `~typing.Any`: + +.. code-block:: python + + >>> from typing import Any + >>> array_like: Any = (x**2 for x in range(10)) + >>> np.array(array_like) + array( at ...>, dtype=object) + +ndarray +~~~~~~~ + +It's possible to mutate the dtype of an array at runtime. For example, +the following code is valid: + +.. code-block:: python + + >>> x = np.array([1, 2]) + >>> x.dtype = np.bool_ + +This sort of mutation is not allowed by the types. Users who want to +write statically typed code should instead use the `numpy.ndarray.view` +method to create a view of the array with a different dtype. + +DTypeLike +~~~~~~~~~ + +The `DTypeLike` type tries to avoid creation of dtype objects using +dictionary of fields like below: + +.. code-block:: python + + >>> x = np.dtype({"field1": (float, 1), "field2": (int, 3)}) + +Although this is valid NumPy code, the type checker will complain about it, +since its usage is discouraged. +Please see : :ref:`Data type objects ` + +Number precision +~~~~~~~~~~~~~~~~ + +The precision of `numpy.number` subclasses is treated as a covariant generic +parameter (see :class:`~NBitBase`), simplifying the annotating of processes +involving precision-based casting. + +.. code-block:: python + + >>> from typing import TypeVar + >>> import numpy as np + >>> import numpy.typing as npt + + >>> T = TypeVar("T", bound=npt.NBitBase) + >>> def func(a: "np.floating[T]", b: "np.floating[T]") -> "np.floating[T]": + ... ... + +Consequently, the likes of `~numpy.float16`, `~numpy.float32` and +`~numpy.float64` are still sub-types of `~numpy.floating`, but, contrary to +runtime, they're not necessarily considered as sub-classes. + +Timedelta64 +~~~~~~~~~~~ + +The `~numpy.timedelta64` class is not considered a subclass of +`~numpy.signedinteger`, the former only inheriting from `~numpy.generic` +while static type checking. + +0D arrays +~~~~~~~~~ + +During runtime numpy aggressively casts any passed 0D arrays into their +corresponding `~numpy.generic` instance. Until the introduction of shape +typing (see :pep:`646`) it is unfortunately not possible to make the +necessary distinction between 0D and >0D arrays. While thus not strictly +correct, all operations are that can potentially perform a 0D-array -> scalar +cast are currently annotated as exclusively returning an `ndarray`. + +If it is known in advance that an operation _will_ perform a +0D-array -> scalar cast, then one can consider manually remedying the +situation with either `typing.cast` or a ``# type: ignore`` comment. + +Record array dtypes +~~~~~~~~~~~~~~~~~~~ + +The dtype of `numpy.recarray`, and the `numpy.rec` functions in general, +can be specified in one of two ways: + +* Directly via the ``dtype`` argument. +* With up to five helper arguments that operate via `numpy.format_parser`: + ``formats``, ``names``, ``titles``, ``aligned`` and ``byteorder``. + +These two approaches are currently typed as being mutually exclusive, +*i.e.* if ``dtype`` is specified than one may not specify ``formats``. +While this mutual exclusivity is not (strictly) enforced during runtime, +combining both dtype specifiers can lead to unexpected or even downright +buggy behavior. + +API +--- + +""" +# NOTE: The API section will be appended with additional entries +# further down in this file + +from numpy._typing import ( + ArrayLike, + DTypeLike, + NBitBase, + NDArray, +) + +__all__ = ["ArrayLike", "DTypeLike", "NBitBase", "NDArray"] + +if __doc__ is not None: + from numpy._typing._add_docstring import _docstrings + __doc__ += _docstrings + __doc__ += '\n.. autoclass:: numpy.typing.NBitBase\n' + del _docstrings + +from numpy._pytesttester import PytestTester +test = PytestTester(__name__) +del PytestTester diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/__init__.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/__init__.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..04340725844106d8d48f55e4d7b0ddb718aaa208 Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/__init__.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/mypy_plugin.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/mypy_plugin.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..09815b8af26f0a33d737e69e7bde3d78f6419d93 Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/mypy_plugin.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/setup.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/setup.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..a1bfcc97dde339dcbf1fcfb710eb16590461e937 Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/typing/__pycache__/setup.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/mypy_plugin.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/mypy_plugin.py new file mode 100644 index 0000000000000000000000000000000000000000..8ec9637016e324daa88c682a05709fbed850d0c1 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/mypy_plugin.py @@ -0,0 +1,196 @@ +"""A mypy_ plugin for managing a number of platform-specific annotations. +Its functionality can be split into three distinct parts: + +* Assigning the (platform-dependent) precisions of certain `~numpy.number` + subclasses, including the likes of `~numpy.int_`, `~numpy.intp` and + `~numpy.longlong`. See the documentation on + :ref:`scalar types ` for a comprehensive overview + of the affected classes. Without the plugin the precision of all relevant + classes will be inferred as `~typing.Any`. +* Removing all extended-precision `~numpy.number` subclasses that are + unavailable for the platform in question. Most notably this includes the + likes of `~numpy.float128` and `~numpy.complex256`. Without the plugin *all* + extended-precision types will, as far as mypy is concerned, be available + to all platforms. +* Assigning the (platform-dependent) precision of `~numpy.ctypeslib.c_intp`. + Without the plugin the type will default to `ctypes.c_int64`. + + .. versionadded:: 1.22 + +Examples +-------- +To enable the plugin, one must add it to their mypy `configuration file`_: + +.. code-block:: ini + + [mypy] + plugins = numpy.typing.mypy_plugin + +.. _mypy: http://mypy-lang.org/ +.. _configuration file: https://mypy.readthedocs.io/en/stable/config_file.html + +""" + +from __future__ import annotations + +from collections.abc import Iterable +from typing import Final, TYPE_CHECKING, Callable + +import numpy as np + +try: + import mypy.types + from mypy.types import Type + from mypy.plugin import Plugin, AnalyzeTypeContext + from mypy.nodes import MypyFile, ImportFrom, Statement + from mypy.build import PRI_MED + + _HookFunc = Callable[[AnalyzeTypeContext], Type] + MYPY_EX: None | ModuleNotFoundError = None +except ModuleNotFoundError as ex: + MYPY_EX = ex + +__all__: list[str] = [] + + +def _get_precision_dict() -> dict[str, str]: + names = [ + ("_NBitByte", np.byte), + ("_NBitShort", np.short), + ("_NBitIntC", np.intc), + ("_NBitIntP", np.intp), + ("_NBitInt", np.int_), + ("_NBitLongLong", np.longlong), + + ("_NBitHalf", np.half), + ("_NBitSingle", np.single), + ("_NBitDouble", np.double), + ("_NBitLongDouble", np.longdouble), + ] + ret = {} + for name, typ in names: + n: int = 8 * typ().dtype.itemsize + ret[f'numpy._typing._nbit.{name}'] = f"numpy._{n}Bit" + return ret + + +def _get_extended_precision_list() -> list[str]: + extended_names = [ + "uint128", + "uint256", + "int128", + "int256", + "float80", + "float96", + "float128", + "float256", + "complex160", + "complex192", + "complex256", + "complex512", + ] + return [i for i in extended_names if hasattr(np, i)] + + +def _get_c_intp_name() -> str: + # Adapted from `np.core._internal._getintp_ctype` + char = np.dtype('p').char + if char == 'i': + return "c_int" + elif char == 'l': + return "c_long" + elif char == 'q': + return "c_longlong" + else: + return "c_long" + + +#: A dictionary mapping type-aliases in `numpy._typing._nbit` to +#: concrete `numpy.typing.NBitBase` subclasses. +_PRECISION_DICT: Final = _get_precision_dict() + +#: A list with the names of all extended precision `np.number` subclasses. +_EXTENDED_PRECISION_LIST: Final = _get_extended_precision_list() + +#: The name of the ctypes quivalent of `np.intp` +_C_INTP: Final = _get_c_intp_name() + + +def _hook(ctx: AnalyzeTypeContext) -> Type: + """Replace a type-alias with a concrete ``NBitBase`` subclass.""" + typ, _, api = ctx + name = typ.name.split(".")[-1] + name_new = _PRECISION_DICT[f"numpy._typing._nbit.{name}"] + return api.named_type(name_new) + + +if TYPE_CHECKING or MYPY_EX is None: + def _index(iterable: Iterable[Statement], id: str) -> int: + """Identify the first ``ImportFrom`` instance the specified `id`.""" + for i, value in enumerate(iterable): + if getattr(value, "id", None) == id: + return i + raise ValueError("Failed to identify a `ImportFrom` instance " + f"with the following id: {id!r}") + + def _override_imports( + file: MypyFile, + module: str, + imports: list[tuple[str, None | str]], + ) -> None: + """Override the first `module`-based import with new `imports`.""" + # Construct a new `from module import y` statement + import_obj = ImportFrom(module, 0, names=imports) + import_obj.is_top_level = True + + # Replace the first `module`-based import statement with `import_obj` + for lst in [file.defs, file.imports]: # type: list[Statement] + i = _index(lst, module) + lst[i] = import_obj + + class _NumpyPlugin(Plugin): + """A mypy plugin for handling versus numpy-specific typing tasks.""" + + def get_type_analyze_hook(self, fullname: str) -> None | _HookFunc: + """Set the precision of platform-specific `numpy.number` + subclasses. + + For example: `numpy.int_`, `numpy.longlong` and `numpy.longdouble`. + """ + if fullname in _PRECISION_DICT: + return _hook + return None + + def get_additional_deps( + self, file: MypyFile + ) -> list[tuple[int, str, int]]: + """Handle all import-based overrides. + + * Import platform-specific extended-precision `numpy.number` + subclasses (*e.g.* `numpy.float96`, `numpy.float128` and + `numpy.complex256`). + * Import the appropriate `ctypes` equivalent to `numpy.intp`. + + """ + ret = [(PRI_MED, file.fullname, -1)] + + if file.fullname == "numpy": + _override_imports( + file, "numpy._typing._extended_precision", + imports=[(v, v) for v in _EXTENDED_PRECISION_LIST], + ) + elif file.fullname == "numpy.ctypeslib": + _override_imports( + file, "ctypes", + imports=[(_C_INTP, "_c_intp")], + ) + return ret + + def plugin(version: str) -> type[_NumpyPlugin]: + """An entry-point for mypy.""" + return _NumpyPlugin + +else: + def plugin(version: str) -> type[_NumpyPlugin]: + """An entry-point for mypy.""" + raise MYPY_EX diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/setup.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/setup.py new file mode 100644 index 0000000000000000000000000000000000000000..c444e769fb6d94ffc0bff6cec25cd30a86858f2e --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/setup.py @@ -0,0 +1,11 @@ +def configuration(parent_package='', top_path=None): + from numpy.distutils.misc_util import Configuration + config = Configuration('typing', parent_package, top_path) + config.add_subpackage('tests') + config.add_data_dir('tests/data') + return config + + +if __name__ == '__main__': + from numpy.distutils.core import setup + setup(configuration=configuration) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/__init__.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/__init__.py new file mode 100644 index 0000000000000000000000000000000000000000..e69de29bb2d1d6434b8b29ae775ad8c2e48c5391 diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/__pycache__/test_isfile.cpython-310.pyc b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/__pycache__/test_isfile.cpython-310.pyc new file mode 100644 index 0000000000000000000000000000000000000000..71c2496c9a8ed1d5062089f95568ea8a314f75bc Binary files /dev/null and b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/__pycache__/test_isfile.cpython-310.pyc differ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/array_constructors.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/array_constructors.py new file mode 100644 index 0000000000000000000000000000000000000000..e035a73c6fe914a14f80131184f6c78ccc3d84f1 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/array_constructors.py @@ -0,0 +1,137 @@ +import sys +from typing import Any +import numpy as np + + +class Index: + def __index__(self) -> int: + return 0 + + +class SubClass(np.ndarray): + pass + + +def func(i: int, j: int, **kwargs: Any) -> SubClass: + return B + + +i8 = np.int64(1) + +A = np.array([1]) +B = A.view(SubClass).copy() +B_stack = np.array([[1], [1]]).view(SubClass) +C = [1] + +np.ndarray(Index()) +np.ndarray([Index()]) + +np.array(1, dtype=float) +np.array(1, copy=False) +np.array(1, order='F') +np.array(1, order=None) +np.array(1, subok=True) +np.array(1, ndmin=3) +np.array(1, str, copy=True, order='C', subok=False, ndmin=2) + +np.asarray(A) +np.asarray(B) +np.asarray(C) + +np.asanyarray(A) +np.asanyarray(B) +np.asanyarray(B, dtype=int) +np.asanyarray(C) + +np.ascontiguousarray(A) +np.ascontiguousarray(B) +np.ascontiguousarray(C) + +np.asfortranarray(A) +np.asfortranarray(B) +np.asfortranarray(C) + +np.require(A) +np.require(B) +np.require(B, dtype=int) +np.require(B, requirements=None) +np.require(B, requirements="E") +np.require(B, requirements=["ENSUREARRAY"]) +np.require(B, requirements={"F", "E"}) +np.require(B, requirements=["C", "OWNDATA"]) +np.require(B, requirements="W") +np.require(B, requirements="A") +np.require(C) + +np.linspace(0, 2) +np.linspace(0.5, [0, 1, 2]) +np.linspace([0, 1, 2], 3) +np.linspace(0j, 2) +np.linspace(0, 2, num=10) +np.linspace(0, 2, endpoint=True) +np.linspace(0, 2, retstep=True) +np.linspace(0j, 2j, retstep=True) +np.linspace(0, 2, dtype=bool) +np.linspace([0, 1], [2, 3], axis=Index()) + +np.logspace(0, 2, base=2) +np.logspace(0, 2, base=2) +np.logspace(0, 2, base=[1j, 2j], num=2) + +np.geomspace(1, 2) + +np.zeros_like(A) +np.zeros_like(C) +np.zeros_like(B) +np.zeros_like(B, dtype=np.int64) + +np.ones_like(A) +np.ones_like(C) +np.ones_like(B) +np.ones_like(B, dtype=np.int64) + +np.empty_like(A) +np.empty_like(C) +np.empty_like(B) +np.empty_like(B, dtype=np.int64) + +np.full_like(A, i8) +np.full_like(C, i8) +np.full_like(B, i8) +np.full_like(B, i8, dtype=np.int64) + +np.ones(1) +np.ones([1, 1, 1]) + +np.full(1, i8) +np.full([1, 1, 1], i8) + +np.indices([1, 2, 3]) +np.indices([1, 2, 3], sparse=True) + +np.fromfunction(func, (3, 5)) + +np.identity(10) + +np.atleast_1d(C) +np.atleast_1d(A) +np.atleast_1d(C, C) +np.atleast_1d(C, A) +np.atleast_1d(A, A) + +np.atleast_2d(C) + +np.atleast_3d(C) + +np.vstack([C, C]) +np.vstack([C, A]) +np.vstack([A, A]) + +np.hstack([C, C]) + +np.stack([C, C]) +np.stack([C, C], axis=0) +np.stack([C, C], out=B_stack) + +np.block([[C, C], [C, C]]) +np.block(A) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/array_like.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/array_like.py new file mode 100644 index 0000000000000000000000000000000000000000..da2520e961e7a3b2d38e0e04183378851c17b479 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/array_like.py @@ -0,0 +1,41 @@ +from __future__ import annotations + +from typing import Any + +import numpy as np +from numpy._typing import ArrayLike, _SupportsArray + +x1: ArrayLike = True +x2: ArrayLike = 5 +x3: ArrayLike = 1.0 +x4: ArrayLike = 1 + 1j +x5: ArrayLike = np.int8(1) +x6: ArrayLike = np.float64(1) +x7: ArrayLike = np.complex128(1) +x8: ArrayLike = np.array([1, 2, 3]) +x9: ArrayLike = [1, 2, 3] +x10: ArrayLike = (1, 2, 3) +x11: ArrayLike = "foo" +x12: ArrayLike = memoryview(b'foo') + + +class A: + def __array__(self, dtype: None | np.dtype[Any] = None) -> np.ndarray: + return np.array([1, 2, 3]) + + +x13: ArrayLike = A() + +scalar: _SupportsArray = np.int64(1) +scalar.__array__() +array: _SupportsArray = np.array(1) +array.__array__() + +a: _SupportsArray = A() +a.__array__() +a.__array__() + +# Escape hatch for when you mean to make something like an object +# array. +object_array_scalar: Any = (i for i in range(10)) +np.array(object_array_scalar) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/arrayprint.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/arrayprint.py new file mode 100644 index 0000000000000000000000000000000000000000..6c704c755570d1508424af92a0eb5aa1353666a0 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/arrayprint.py @@ -0,0 +1,37 @@ +import numpy as np + +AR = np.arange(10) +AR.setflags(write=False) + +with np.printoptions(): + np.set_printoptions( + precision=1, + threshold=2, + edgeitems=3, + linewidth=4, + suppress=False, + nanstr="Bob", + infstr="Bill", + formatter={}, + sign="+", + floatmode="unique", + ) + np.get_printoptions() + str(AR) + + np.array2string( + AR, + max_line_width=5, + precision=2, + suppress_small=True, + separator=";", + prefix="test", + threshold=5, + floatmode="fixed", + suffix="?", + legacy="1.13", + ) + np.format_float_scientific(1, precision=5) + np.format_float_positional(1, trim="k") + np.array_repr(AR) + np.array_str(AR) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/comparisons.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/comparisons.py new file mode 100644 index 0000000000000000000000000000000000000000..ce41de43596e305278acf6a9efb82fa49a43da1a --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/comparisons.py @@ -0,0 +1,301 @@ +from __future__ import annotations + +from typing import Any +import numpy as np + +c16 = np.complex128() +f8 = np.float64() +i8 = np.int64() +u8 = np.uint64() + +c8 = np.complex64() +f4 = np.float32() +i4 = np.int32() +u4 = np.uint32() + +dt = np.datetime64(0, "D") +td = np.timedelta64(0, "D") + +b_ = np.bool_() + +b = bool() +c = complex() +f = float() +i = int() + +SEQ = (0, 1, 2, 3, 4) + +AR_b: np.ndarray[Any, np.dtype[np.bool_]] = np.array([True]) +AR_u: np.ndarray[Any, np.dtype[np.uint32]] = np.array([1], dtype=np.uint32) +AR_i: np.ndarray[Any, np.dtype[np.int_]] = np.array([1]) +AR_f: np.ndarray[Any, np.dtype[np.float_]] = np.array([1.0]) +AR_c: np.ndarray[Any, np.dtype[np.complex_]] = np.array([1.0j]) +AR_m: np.ndarray[Any, np.dtype[np.timedelta64]] = np.array([np.timedelta64("1")]) +AR_M: np.ndarray[Any, np.dtype[np.datetime64]] = np.array([np.datetime64("1")]) +AR_O: np.ndarray[Any, np.dtype[np.object_]] = np.array([1], dtype=object) + +# Arrays + +AR_b > AR_b +AR_b > AR_u +AR_b > AR_i +AR_b > AR_f +AR_b > AR_c + +AR_u > AR_b +AR_u > AR_u +AR_u > AR_i +AR_u > AR_f +AR_u > AR_c + +AR_i > AR_b +AR_i > AR_u +AR_i > AR_i +AR_i > AR_f +AR_i > AR_c + +AR_f > AR_b +AR_f > AR_u +AR_f > AR_i +AR_f > AR_f +AR_f > AR_c + +AR_c > AR_b +AR_c > AR_u +AR_c > AR_i +AR_c > AR_f +AR_c > AR_c + +AR_m > AR_b +AR_m > AR_u +AR_m > AR_i +AR_b > AR_m +AR_u > AR_m +AR_i > AR_m + +AR_M > AR_M + +AR_O > AR_O +1 > AR_O +AR_O > 1 + +# Time structures + +dt > dt + +td > td +td > i +td > i4 +td > i8 +td > AR_i +td > SEQ + +# boolean + +b_ > b +b_ > b_ +b_ > i +b_ > i8 +b_ > i4 +b_ > u8 +b_ > u4 +b_ > f +b_ > f8 +b_ > f4 +b_ > c +b_ > c16 +b_ > c8 +b_ > AR_i +b_ > SEQ + +# Complex + +c16 > c16 +c16 > f8 +c16 > i8 +c16 > c8 +c16 > f4 +c16 > i4 +c16 > b_ +c16 > b +c16 > c +c16 > f +c16 > i +c16 > AR_i +c16 > SEQ + +c16 > c16 +f8 > c16 +i8 > c16 +c8 > c16 +f4 > c16 +i4 > c16 +b_ > c16 +b > c16 +c > c16 +f > c16 +i > c16 +AR_i > c16 +SEQ > c16 + +c8 > c16 +c8 > f8 +c8 > i8 +c8 > c8 +c8 > f4 +c8 > i4 +c8 > b_ +c8 > b +c8 > c +c8 > f +c8 > i +c8 > AR_i +c8 > SEQ + +c16 > c8 +f8 > c8 +i8 > c8 +c8 > c8 +f4 > c8 +i4 > c8 +b_ > c8 +b > c8 +c > c8 +f > c8 +i > c8 +AR_i > c8 +SEQ > c8 + +# Float + +f8 > f8 +f8 > i8 +f8 > f4 +f8 > i4 +f8 > b_ +f8 > b +f8 > c +f8 > f +f8 > i +f8 > AR_i +f8 > SEQ + +f8 > f8 +i8 > f8 +f4 > f8 +i4 > f8 +b_ > f8 +b > f8 +c > f8 +f > f8 +i > f8 +AR_i > f8 +SEQ > f8 + +f4 > f8 +f4 > i8 +f4 > f4 +f4 > i4 +f4 > b_ +f4 > b +f4 > c +f4 > f +f4 > i +f4 > AR_i +f4 > SEQ + +f8 > f4 +i8 > f4 +f4 > f4 +i4 > f4 +b_ > f4 +b > f4 +c > f4 +f > f4 +i > f4 +AR_i > f4 +SEQ > f4 + +# Int + +i8 > i8 +i8 > u8 +i8 > i4 +i8 > u4 +i8 > b_ +i8 > b +i8 > c +i8 > f +i8 > i +i8 > AR_i +i8 > SEQ + +u8 > u8 +u8 > i4 +u8 > u4 +u8 > b_ +u8 > b +u8 > c +u8 > f +u8 > i +u8 > AR_i +u8 > SEQ + +i8 > i8 +u8 > i8 +i4 > i8 +u4 > i8 +b_ > i8 +b > i8 +c > i8 +f > i8 +i > i8 +AR_i > i8 +SEQ > i8 + +u8 > u8 +i4 > u8 +u4 > u8 +b_ > u8 +b > u8 +c > u8 +f > u8 +i > u8 +AR_i > u8 +SEQ > u8 + +i4 > i8 +i4 > i4 +i4 > i +i4 > b_ +i4 > b +i4 > AR_i +i4 > SEQ + +u4 > i8 +u4 > i4 +u4 > u8 +u4 > u4 +u4 > i +u4 > b_ +u4 > b +u4 > AR_i +u4 > SEQ + +i8 > i4 +i4 > i4 +i > i4 +b_ > i4 +b > i4 +AR_i > i4 +SEQ > i4 + +i8 > u4 +i4 > u4 +u8 > u4 +u4 > u4 +b_ > u4 +b > u4 +i > u4 +AR_i > u4 +SEQ > u4 diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/einsumfunc.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/einsumfunc.py new file mode 100644 index 0000000000000000000000000000000000000000..429764e67eccc7855d363da20d432fdb45e66971 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/einsumfunc.py @@ -0,0 +1,36 @@ +from __future__ import annotations + +from typing import Any + +import numpy as np + +AR_LIKE_b = [True, True, True] +AR_LIKE_u = [np.uint32(1), np.uint32(2), np.uint32(3)] +AR_LIKE_i = [1, 2, 3] +AR_LIKE_f = [1.0, 2.0, 3.0] +AR_LIKE_c = [1j, 2j, 3j] +AR_LIKE_U = ["1", "2", "3"] + +OUT_f: np.ndarray[Any, np.dtype[np.float64]] = np.empty(3, dtype=np.float64) +OUT_c: np.ndarray[Any, np.dtype[np.complex128]] = np.empty(3, dtype=np.complex128) + +np.einsum("i,i->i", AR_LIKE_b, AR_LIKE_b) +np.einsum("i,i->i", AR_LIKE_u, AR_LIKE_u) +np.einsum("i,i->i", AR_LIKE_i, AR_LIKE_i) +np.einsum("i,i->i", AR_LIKE_f, AR_LIKE_f) +np.einsum("i,i->i", AR_LIKE_c, AR_LIKE_c) +np.einsum("i,i->i", AR_LIKE_b, AR_LIKE_i) +np.einsum("i,i,i,i->i", AR_LIKE_b, AR_LIKE_u, AR_LIKE_i, AR_LIKE_c) + +np.einsum("i,i->i", AR_LIKE_f, AR_LIKE_f, dtype="c16") +np.einsum("i,i->i", AR_LIKE_U, AR_LIKE_U, dtype=bool, casting="unsafe") +np.einsum("i,i->i", AR_LIKE_f, AR_LIKE_f, out=OUT_c) +np.einsum("i,i->i", AR_LIKE_U, AR_LIKE_U, dtype=int, casting="unsafe", out=OUT_f) + +np.einsum_path("i,i->i", AR_LIKE_b, AR_LIKE_b) +np.einsum_path("i,i->i", AR_LIKE_u, AR_LIKE_u) +np.einsum_path("i,i->i", AR_LIKE_i, AR_LIKE_i) +np.einsum_path("i,i->i", AR_LIKE_f, AR_LIKE_f) +np.einsum_path("i,i->i", AR_LIKE_c, AR_LIKE_c) +np.einsum_path("i,i->i", AR_LIKE_b, AR_LIKE_i) +np.einsum_path("i,i,i,i->i", AR_LIKE_b, AR_LIKE_u, AR_LIKE_i, AR_LIKE_c) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/index_tricks.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/index_tricks.py new file mode 100644 index 0000000000000000000000000000000000000000..4c4c1195990accd61c3cba9c5684185038dfa17e --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/index_tricks.py @@ -0,0 +1,64 @@ +from __future__ import annotations +from typing import Any +import numpy as np + +AR_LIKE_b = [[True, True], [True, True]] +AR_LIKE_i = [[1, 2], [3, 4]] +AR_LIKE_f = [[1.0, 2.0], [3.0, 4.0]] +AR_LIKE_U = [["1", "2"], ["3", "4"]] + +AR_i8: np.ndarray[Any, np.dtype[np.int64]] = np.array(AR_LIKE_i, dtype=np.int64) + +np.ndenumerate(AR_i8) +np.ndenumerate(AR_LIKE_f) +np.ndenumerate(AR_LIKE_U) + +np.ndenumerate(AR_i8).iter +np.ndenumerate(AR_LIKE_f).iter +np.ndenumerate(AR_LIKE_U).iter + +next(np.ndenumerate(AR_i8)) +next(np.ndenumerate(AR_LIKE_f)) +next(np.ndenumerate(AR_LIKE_U)) + +iter(np.ndenumerate(AR_i8)) +iter(np.ndenumerate(AR_LIKE_f)) +iter(np.ndenumerate(AR_LIKE_U)) + +iter(np.ndindex(1, 2, 3)) +next(np.ndindex(1, 2, 3)) + +np.unravel_index([22, 41, 37], (7, 6)) +np.unravel_index([31, 41, 13], (7, 6), order='F') +np.unravel_index(1621, (6, 7, 8, 9)) + +np.ravel_multi_index(AR_LIKE_i, (7, 6)) +np.ravel_multi_index(AR_LIKE_i, (7, 6), order='F') +np.ravel_multi_index(AR_LIKE_i, (4, 6), mode='clip') +np.ravel_multi_index(AR_LIKE_i, (4, 4), mode=('clip', 'wrap')) +np.ravel_multi_index((3, 1, 4, 1), (6, 7, 8, 9)) + +np.mgrid[1:1:2] +np.mgrid[1:1:2, None:10] + +np.ogrid[1:1:2] +np.ogrid[1:1:2, None:10] + +np.index_exp[0:1] +np.index_exp[0:1, None:3] +np.index_exp[0, 0:1, ..., [0, 1, 3]] + +np.s_[0:1] +np.s_[0:1, None:3] +np.s_[0, 0:1, ..., [0, 1, 3]] + +np.ix_(AR_LIKE_b[0]) +np.ix_(AR_LIKE_i[0], AR_LIKE_f[0]) +np.ix_(AR_i8[0]) + +np.fill_diagonal(AR_i8, 5) + +np.diag_indices(4) +np.diag_indices(2, 3) + +np.diag_indices_from(AR_i8) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/lib_version.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/lib_version.py new file mode 100644 index 0000000000000000000000000000000000000000..f3825eca524795f4d9742873a773cd7749636e2a --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/lib_version.py @@ -0,0 +1,18 @@ +from numpy.lib import NumpyVersion + +version = NumpyVersion("1.8.0") + +version.vstring +version.version +version.major +version.minor +version.bugfix +version.pre_release +version.is_devversion + +version == version +version != version +version < "1.8.0" +version <= version +version > version +version >= "1.8.0" diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/literal.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/literal.py new file mode 100644 index 0000000000000000000000000000000000000000..d06431eed4da31ada71eeb3947f6b238e7b2fb74 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/literal.py @@ -0,0 +1,47 @@ +from __future__ import annotations + +from functools import partial +from collections.abc import Callable + +import pytest # type: ignore +import numpy as np + +AR = np.array(0) +AR.setflags(write=False) + +KACF = frozenset({None, "K", "A", "C", "F"}) +ACF = frozenset({None, "A", "C", "F"}) +CF = frozenset({None, "C", "F"}) + +order_list: list[tuple[frozenset, Callable]] = [ + (KACF, partial(np.ndarray, 1)), + (KACF, AR.tobytes), + (KACF, partial(AR.astype, int)), + (KACF, AR.copy), + (ACF, partial(AR.reshape, 1)), + (KACF, AR.flatten), + (KACF, AR.ravel), + (KACF, partial(np.array, 1)), + (CF, partial(np.zeros, 1)), + (CF, partial(np.ones, 1)), + (CF, partial(np.empty, 1)), + (CF, partial(np.full, 1, 1)), + (KACF, partial(np.zeros_like, AR)), + (KACF, partial(np.ones_like, AR)), + (KACF, partial(np.empty_like, AR)), + (KACF, partial(np.full_like, AR, 1)), + (KACF, partial(np.add, 1, 1)), # i.e. np.ufunc.__call__ + (ACF, partial(np.reshape, AR, 1)), + (KACF, partial(np.ravel, AR)), + (KACF, partial(np.asarray, 1)), + (KACF, partial(np.asanyarray, 1)), +] + +for order_set, func in order_list: + for order in order_set: + func(order=order) + + invalid_orders = KACF - order_set + for order in invalid_orders: + with pytest.raises(ValueError): + func(order=order) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/mod.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/mod.py new file mode 100644 index 0000000000000000000000000000000000000000..b5b9afb2a54406a5ee4282c43e027f117e714cda --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/mod.py @@ -0,0 +1,149 @@ +import numpy as np + +f8 = np.float64(1) +i8 = np.int64(1) +u8 = np.uint64(1) + +f4 = np.float32(1) +i4 = np.int32(1) +u4 = np.uint32(1) + +td = np.timedelta64(1, "D") +b_ = np.bool_(1) + +b = bool(1) +f = float(1) +i = int(1) + +AR = np.array([1], dtype=np.bool_) +AR.setflags(write=False) + +AR2 = np.array([1], dtype=np.timedelta64) +AR2.setflags(write=False) + +# Time structures + +td % td +td % AR2 +AR2 % td + +divmod(td, td) +divmod(td, AR2) +divmod(AR2, td) + +# Bool + +b_ % b +b_ % i +b_ % f +b_ % b_ +b_ % i8 +b_ % u8 +b_ % f8 +b_ % AR + +divmod(b_, b) +divmod(b_, i) +divmod(b_, f) +divmod(b_, b_) +divmod(b_, i8) +divmod(b_, u8) +divmod(b_, f8) +divmod(b_, AR) + +b % b_ +i % b_ +f % b_ +b_ % b_ +i8 % b_ +u8 % b_ +f8 % b_ +AR % b_ + +divmod(b, b_) +divmod(i, b_) +divmod(f, b_) +divmod(b_, b_) +divmod(i8, b_) +divmod(u8, b_) +divmod(f8, b_) +divmod(AR, b_) + +# int + +i8 % b +i8 % i +i8 % f +i8 % i8 +i8 % f8 +i4 % i8 +i4 % f8 +i4 % i4 +i4 % f4 +i8 % AR + +divmod(i8, b) +divmod(i8, i) +divmod(i8, f) +divmod(i8, i8) +divmod(i8, f8) +divmod(i8, i4) +divmod(i8, f4) +divmod(i4, i4) +divmod(i4, f4) +divmod(i8, AR) + +b % i8 +i % i8 +f % i8 +i8 % i8 +f8 % i8 +i8 % i4 +f8 % i4 +i4 % i4 +f4 % i4 +AR % i8 + +divmod(b, i8) +divmod(i, i8) +divmod(f, i8) +divmod(i8, i8) +divmod(f8, i8) +divmod(i4, i8) +divmod(f4, i8) +divmod(i4, i4) +divmod(f4, i4) +divmod(AR, i8) + +# float + +f8 % b +f8 % i +f8 % f +i8 % f4 +f4 % f4 +f8 % AR + +divmod(f8, b) +divmod(f8, i) +divmod(f8, f) +divmod(f8, f8) +divmod(f8, f4) +divmod(f4, f4) +divmod(f8, AR) + +b % f8 +i % f8 +f % f8 +f8 % f8 +f8 % f8 +f4 % f4 +AR % f8 + +divmod(b, f8) +divmod(i, f8) +divmod(f, f8) +divmod(f8, f8) +divmod(f4, f8) +divmod(f4, f4) +divmod(AR, f8) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/modules.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/modules.py new file mode 100644 index 0000000000000000000000000000000000000000..f2d779e20e63e6d70035348f6412fb8afe4d67ad --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/modules.py @@ -0,0 +1,42 @@ +import numpy as np +from numpy import f2py + +np.char +np.ctypeslib +np.emath +np.fft +np.lib +np.linalg +np.ma +np.matrixlib +np.polynomial +np.random +np.rec +np.testing +np.version + +np.lib.format +np.lib.mixins +np.lib.scimath +np.lib.stride_tricks +np.ma.extras +np.polynomial.chebyshev +np.polynomial.hermite +np.polynomial.hermite_e +np.polynomial.laguerre +np.polynomial.legendre +np.polynomial.polynomial + +np.__path__ +np.__version__ + +np.__all__ +np.char.__all__ +np.ctypeslib.__all__ +np.emath.__all__ +np.lib.__all__ +np.ma.__all__ +np.random.__all__ +np.rec.__all__ +np.testing.__all__ +f2py.__all__ diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/ndarray_conversion.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/ndarray_conversion.py new file mode 100644 index 0000000000000000000000000000000000000000..303cf53e44537e3e2f755b118b6fec85f634d09f --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/ndarray_conversion.py @@ -0,0 +1,94 @@ +import os +import tempfile + +import numpy as np + +nd = np.array([[1, 2], [3, 4]]) +scalar_array = np.array(1) + +# item +scalar_array.item() +nd.item(1) +nd.item(0, 1) +nd.item((0, 1)) + +# tolist is pretty simple + +# itemset +scalar_array.itemset(3) +nd.itemset(3, 0) +nd.itemset((0, 0), 3) + +# tobytes +nd.tobytes() +nd.tobytes("C") +nd.tobytes(None) + +# tofile +if os.name != "nt": + with tempfile.NamedTemporaryFile(suffix=".txt") as tmp: + nd.tofile(tmp.name) + nd.tofile(tmp.name, "") + nd.tofile(tmp.name, sep="") + + nd.tofile(tmp.name, "", "%s") + nd.tofile(tmp.name, format="%s") + + nd.tofile(tmp) + +# dump is pretty simple +# dumps is pretty simple + +# astype +nd.astype("float") +nd.astype(float) + +nd.astype(float, "K") +nd.astype(float, order="K") + +nd.astype(float, "K", "unsafe") +nd.astype(float, casting="unsafe") + +nd.astype(float, "K", "unsafe", True) +nd.astype(float, subok=True) + +nd.astype(float, "K", "unsafe", True, True) +nd.astype(float, copy=True) + +# byteswap +nd.byteswap() +nd.byteswap(True) + +# copy +nd.copy() +nd.copy("C") + +# view +nd.view() +nd.view(np.int64) +nd.view(dtype=np.int64) +nd.view(np.int64, np.matrix) +nd.view(type=np.matrix) + +# getfield +complex_array = np.array([[1 + 1j, 0], [0, 1 - 1j]], dtype=np.complex128) + +complex_array.getfield("float") +complex_array.getfield(float) + +complex_array.getfield("float", 8) +complex_array.getfield(float, offset=8) + +# setflags +nd.setflags() + +nd.setflags(True) +nd.setflags(write=True) + +nd.setflags(True, True) +nd.setflags(write=True, align=True) + +nd.setflags(True, True, False) +nd.setflags(write=True, align=True, uic=False) + +# fill is pretty simple diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/numeric.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/numeric.py new file mode 100644 index 0000000000000000000000000000000000000000..c4a73c1e9b7c2792da739047b1d7c88c22c6acfb --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/numeric.py @@ -0,0 +1,90 @@ +""" +Tests for :mod:`numpy.core.numeric`. + +Does not include tests which fall under ``array_constructors``. + +""" + +from __future__ import annotations + +import numpy as np + +class SubClass(np.ndarray): + ... + +i8 = np.int64(1) + +A = np.arange(27).reshape(3, 3, 3) +B: list[list[list[int]]] = A.tolist() +C = np.empty((27, 27)).view(SubClass) + +np.count_nonzero(i8) +np.count_nonzero(A) +np.count_nonzero(B) +np.count_nonzero(A, keepdims=True) +np.count_nonzero(A, axis=0) + +np.isfortran(i8) +np.isfortran(A) + +np.argwhere(i8) +np.argwhere(A) + +np.flatnonzero(i8) +np.flatnonzero(A) + +np.correlate(B[0][0], A.ravel(), mode="valid") +np.correlate(A.ravel(), A.ravel(), mode="same") + +np.convolve(B[0][0], A.ravel(), mode="valid") +np.convolve(A.ravel(), A.ravel(), mode="same") + +np.outer(i8, A) +np.outer(B, A) +np.outer(A, A) +np.outer(A, A, out=C) + +np.tensordot(B, A) +np.tensordot(A, A) +np.tensordot(A, A, axes=0) +np.tensordot(A, A, axes=(0, 1)) + +np.isscalar(i8) +np.isscalar(A) +np.isscalar(B) + +np.roll(A, 1) +np.roll(A, (1, 2)) +np.roll(B, 1) + +np.rollaxis(A, 0, 1) + +np.moveaxis(A, 0, 1) +np.moveaxis(A, (0, 1), (1, 2)) + +np.cross(B, A) +np.cross(A, A) + +np.indices([0, 1, 2]) +np.indices([0, 1, 2], sparse=False) +np.indices([0, 1, 2], sparse=True) + +np.binary_repr(1) + +np.base_repr(1) + +np.allclose(i8, A) +np.allclose(B, A) +np.allclose(A, A) + +np.isclose(i8, A) +np.isclose(B, A) +np.isclose(A, A) + +np.array_equal(i8, A) +np.array_equal(B, A) +np.array_equal(A, A) + +np.array_equiv(i8, A) +np.array_equiv(B, A) +np.array_equiv(A, A) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/random.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/random.py new file mode 100644 index 0000000000000000000000000000000000000000..6a4d99f12b1304773533c1cbdbd45a2d52a44d8b --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/random.py @@ -0,0 +1,1499 @@ +from __future__ import annotations + +from typing import Any +import numpy as np + +SEED_NONE = None +SEED_INT = 4579435749574957634658964293569 +SEED_ARR: np.ndarray[Any, np.dtype[np.int64]] = np.array([1, 2, 3, 4], dtype=np.int64) +SEED_ARRLIKE: list[int] = [1, 2, 3, 4] +SEED_SEED_SEQ: np.random.SeedSequence = np.random.SeedSequence(0) +SEED_MT19937: np.random.MT19937 = np.random.MT19937(0) +SEED_PCG64: np.random.PCG64 = np.random.PCG64(0) +SEED_PHILOX: np.random.Philox = np.random.Philox(0) +SEED_SFC64: np.random.SFC64 = np.random.SFC64(0) + +# default rng +np.random.default_rng() +np.random.default_rng(SEED_NONE) +np.random.default_rng(SEED_INT) +np.random.default_rng(SEED_ARR) +np.random.default_rng(SEED_ARRLIKE) +np.random.default_rng(SEED_SEED_SEQ) +np.random.default_rng(SEED_MT19937) +np.random.default_rng(SEED_PCG64) +np.random.default_rng(SEED_PHILOX) +np.random.default_rng(SEED_SFC64) + +# Seed Sequence +np.random.SeedSequence(SEED_NONE) +np.random.SeedSequence(SEED_INT) +np.random.SeedSequence(SEED_ARR) +np.random.SeedSequence(SEED_ARRLIKE) + +# Bit Generators +np.random.MT19937(SEED_NONE) +np.random.MT19937(SEED_INT) +np.random.MT19937(SEED_ARR) +np.random.MT19937(SEED_ARRLIKE) +np.random.MT19937(SEED_SEED_SEQ) + +np.random.PCG64(SEED_NONE) +np.random.PCG64(SEED_INT) +np.random.PCG64(SEED_ARR) +np.random.PCG64(SEED_ARRLIKE) +np.random.PCG64(SEED_SEED_SEQ) + +np.random.Philox(SEED_NONE) +np.random.Philox(SEED_INT) +np.random.Philox(SEED_ARR) +np.random.Philox(SEED_ARRLIKE) +np.random.Philox(SEED_SEED_SEQ) + +np.random.SFC64(SEED_NONE) +np.random.SFC64(SEED_INT) +np.random.SFC64(SEED_ARR) +np.random.SFC64(SEED_ARRLIKE) +np.random.SFC64(SEED_SEED_SEQ) + +seed_seq: np.random.bit_generator.SeedSequence = np.random.SeedSequence(SEED_NONE) +seed_seq.spawn(10) +seed_seq.generate_state(3) +seed_seq.generate_state(3, "u4") +seed_seq.generate_state(3, "uint32") +seed_seq.generate_state(3, "u8") +seed_seq.generate_state(3, "uint64") +seed_seq.generate_state(3, np.uint32) +seed_seq.generate_state(3, np.uint64) + + +def_gen: np.random.Generator = np.random.default_rng() + +D_arr_0p1: np.ndarray[Any, np.dtype[np.float64]] = np.array([0.1]) +D_arr_0p5: np.ndarray[Any, np.dtype[np.float64]] = np.array([0.5]) +D_arr_0p9: np.ndarray[Any, np.dtype[np.float64]] = np.array([0.9]) +D_arr_1p5: np.ndarray[Any, np.dtype[np.float64]] = np.array([1.5]) +I_arr_10: np.ndarray[Any, np.dtype[np.int_]] = np.array([10], dtype=np.int_) +I_arr_20: np.ndarray[Any, np.dtype[np.int_]] = np.array([20], dtype=np.int_) +D_arr_like_0p1: list[float] = [0.1] +D_arr_like_0p5: list[float] = [0.5] +D_arr_like_0p9: list[float] = [0.9] +D_arr_like_1p5: list[float] = [1.5] +I_arr_like_10: list[int] = [10] +I_arr_like_20: list[int] = [20] +D_2D_like: list[list[float]] = [[1, 2], [2, 3], [3, 4], [4, 5.1]] +D_2D: np.ndarray[Any, np.dtype[np.float64]] = np.array(D_2D_like) + +S_out: np.ndarray[Any, np.dtype[np.float32]] = np.empty(1, dtype=np.float32) +D_out: np.ndarray[Any, np.dtype[np.float64]] = np.empty(1) + +def_gen.standard_normal() +def_gen.standard_normal(dtype=np.float32) +def_gen.standard_normal(dtype="float32") +def_gen.standard_normal(dtype="double") +def_gen.standard_normal(dtype=np.float64) +def_gen.standard_normal(size=None) +def_gen.standard_normal(size=1) +def_gen.standard_normal(size=1, dtype=np.float32) +def_gen.standard_normal(size=1, dtype="f4") +def_gen.standard_normal(size=1, dtype="float32", out=S_out) +def_gen.standard_normal(dtype=np.float32, out=S_out) +def_gen.standard_normal(size=1, dtype=np.float64) +def_gen.standard_normal(size=1, dtype="float64") +def_gen.standard_normal(size=1, dtype="f8") +def_gen.standard_normal(out=D_out) +def_gen.standard_normal(size=1, dtype="float64") +def_gen.standard_normal(size=1, dtype="float64", out=D_out) + +def_gen.random() +def_gen.random(dtype=np.float32) +def_gen.random(dtype="float32") +def_gen.random(dtype="double") +def_gen.random(dtype=np.float64) +def_gen.random(size=None) +def_gen.random(size=1) +def_gen.random(size=1, dtype=np.float32) +def_gen.random(size=1, dtype="f4") +def_gen.random(size=1, dtype="float32", out=S_out) +def_gen.random(dtype=np.float32, out=S_out) +def_gen.random(size=1, dtype=np.float64) +def_gen.random(size=1, dtype="float64") +def_gen.random(size=1, dtype="f8") +def_gen.random(out=D_out) +def_gen.random(size=1, dtype="float64") +def_gen.random(size=1, dtype="float64", out=D_out) + +def_gen.standard_cauchy() +def_gen.standard_cauchy(size=None) +def_gen.standard_cauchy(size=1) + +def_gen.standard_exponential() +def_gen.standard_exponential(method="inv") +def_gen.standard_exponential(dtype=np.float32) +def_gen.standard_exponential(dtype="float32") +def_gen.standard_exponential(dtype="double") +def_gen.standard_exponential(dtype=np.float64) +def_gen.standard_exponential(size=None) +def_gen.standard_exponential(size=None, method="inv") +def_gen.standard_exponential(size=1, method="inv") +def_gen.standard_exponential(size=1, dtype=np.float32) +def_gen.standard_exponential(size=1, dtype="f4", method="inv") +def_gen.standard_exponential(size=1, dtype="float32", out=S_out) +def_gen.standard_exponential(dtype=np.float32, out=S_out) +def_gen.standard_exponential(size=1, dtype=np.float64, method="inv") +def_gen.standard_exponential(size=1, dtype="float64") +def_gen.standard_exponential(size=1, dtype="f8") +def_gen.standard_exponential(out=D_out) +def_gen.standard_exponential(size=1, dtype="float64") +def_gen.standard_exponential(size=1, dtype="float64", out=D_out) + +def_gen.zipf(1.5) +def_gen.zipf(1.5, size=None) +def_gen.zipf(1.5, size=1) +def_gen.zipf(D_arr_1p5) +def_gen.zipf(D_arr_1p5, size=1) +def_gen.zipf(D_arr_like_1p5) +def_gen.zipf(D_arr_like_1p5, size=1) + +def_gen.weibull(0.5) +def_gen.weibull(0.5, size=None) +def_gen.weibull(0.5, size=1) +def_gen.weibull(D_arr_0p5) +def_gen.weibull(D_arr_0p5, size=1) +def_gen.weibull(D_arr_like_0p5) +def_gen.weibull(D_arr_like_0p5, size=1) + +def_gen.standard_t(0.5) +def_gen.standard_t(0.5, size=None) +def_gen.standard_t(0.5, size=1) +def_gen.standard_t(D_arr_0p5) +def_gen.standard_t(D_arr_0p5, size=1) +def_gen.standard_t(D_arr_like_0p5) +def_gen.standard_t(D_arr_like_0p5, size=1) + +def_gen.poisson(0.5) +def_gen.poisson(0.5, size=None) +def_gen.poisson(0.5, size=1) +def_gen.poisson(D_arr_0p5) +def_gen.poisson(D_arr_0p5, size=1) +def_gen.poisson(D_arr_like_0p5) +def_gen.poisson(D_arr_like_0p5, size=1) + +def_gen.power(0.5) +def_gen.power(0.5, size=None) +def_gen.power(0.5, size=1) +def_gen.power(D_arr_0p5) +def_gen.power(D_arr_0p5, size=1) +def_gen.power(D_arr_like_0p5) +def_gen.power(D_arr_like_0p5, size=1) + +def_gen.pareto(0.5) +def_gen.pareto(0.5, size=None) +def_gen.pareto(0.5, size=1) +def_gen.pareto(D_arr_0p5) +def_gen.pareto(D_arr_0p5, size=1) +def_gen.pareto(D_arr_like_0p5) +def_gen.pareto(D_arr_like_0p5, size=1) + +def_gen.chisquare(0.5) +def_gen.chisquare(0.5, size=None) +def_gen.chisquare(0.5, size=1) +def_gen.chisquare(D_arr_0p5) +def_gen.chisquare(D_arr_0p5, size=1) +def_gen.chisquare(D_arr_like_0p5) +def_gen.chisquare(D_arr_like_0p5, size=1) + +def_gen.exponential(0.5) +def_gen.exponential(0.5, size=None) +def_gen.exponential(0.5, size=1) +def_gen.exponential(D_arr_0p5) +def_gen.exponential(D_arr_0p5, size=1) +def_gen.exponential(D_arr_like_0p5) +def_gen.exponential(D_arr_like_0p5, size=1) + +def_gen.geometric(0.5) +def_gen.geometric(0.5, size=None) +def_gen.geometric(0.5, size=1) +def_gen.geometric(D_arr_0p5) +def_gen.geometric(D_arr_0p5, size=1) +def_gen.geometric(D_arr_like_0p5) +def_gen.geometric(D_arr_like_0p5, size=1) + +def_gen.logseries(0.5) +def_gen.logseries(0.5, size=None) +def_gen.logseries(0.5, size=1) +def_gen.logseries(D_arr_0p5) +def_gen.logseries(D_arr_0p5, size=1) +def_gen.logseries(D_arr_like_0p5) +def_gen.logseries(D_arr_like_0p5, size=1) + +def_gen.rayleigh(0.5) +def_gen.rayleigh(0.5, size=None) +def_gen.rayleigh(0.5, size=1) +def_gen.rayleigh(D_arr_0p5) +def_gen.rayleigh(D_arr_0p5, size=1) +def_gen.rayleigh(D_arr_like_0p5) +def_gen.rayleigh(D_arr_like_0p5, size=1) + +def_gen.standard_gamma(0.5) +def_gen.standard_gamma(0.5, size=None) +def_gen.standard_gamma(0.5, dtype="float32") +def_gen.standard_gamma(0.5, size=None, dtype="float32") +def_gen.standard_gamma(0.5, size=1) +def_gen.standard_gamma(D_arr_0p5) +def_gen.standard_gamma(D_arr_0p5, dtype="f4") +def_gen.standard_gamma(0.5, size=1, dtype="float32", out=S_out) +def_gen.standard_gamma(D_arr_0p5, dtype=np.float32, out=S_out) +def_gen.standard_gamma(D_arr_0p5, size=1) +def_gen.standard_gamma(D_arr_like_0p5) +def_gen.standard_gamma(D_arr_like_0p5, size=1) +def_gen.standard_gamma(0.5, out=D_out) +def_gen.standard_gamma(D_arr_like_0p5, out=D_out) +def_gen.standard_gamma(D_arr_like_0p5, size=1) +def_gen.standard_gamma(D_arr_like_0p5, size=1, out=D_out, dtype=np.float64) + +def_gen.vonmises(0.5, 0.5) +def_gen.vonmises(0.5, 0.5, size=None) +def_gen.vonmises(0.5, 0.5, size=1) +def_gen.vonmises(D_arr_0p5, 0.5) +def_gen.vonmises(0.5, D_arr_0p5) +def_gen.vonmises(D_arr_0p5, 0.5, size=1) +def_gen.vonmises(0.5, D_arr_0p5, size=1) +def_gen.vonmises(D_arr_like_0p5, 0.5) +def_gen.vonmises(0.5, D_arr_like_0p5) +def_gen.vonmises(D_arr_0p5, D_arr_0p5) +def_gen.vonmises(D_arr_like_0p5, D_arr_like_0p5) +def_gen.vonmises(D_arr_0p5, D_arr_0p5, size=1) +def_gen.vonmises(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.wald(0.5, 0.5) +def_gen.wald(0.5, 0.5, size=None) +def_gen.wald(0.5, 0.5, size=1) +def_gen.wald(D_arr_0p5, 0.5) +def_gen.wald(0.5, D_arr_0p5) +def_gen.wald(D_arr_0p5, 0.5, size=1) +def_gen.wald(0.5, D_arr_0p5, size=1) +def_gen.wald(D_arr_like_0p5, 0.5) +def_gen.wald(0.5, D_arr_like_0p5) +def_gen.wald(D_arr_0p5, D_arr_0p5) +def_gen.wald(D_arr_like_0p5, D_arr_like_0p5) +def_gen.wald(D_arr_0p5, D_arr_0p5, size=1) +def_gen.wald(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.uniform(0.5, 0.5) +def_gen.uniform(0.5, 0.5, size=None) +def_gen.uniform(0.5, 0.5, size=1) +def_gen.uniform(D_arr_0p5, 0.5) +def_gen.uniform(0.5, D_arr_0p5) +def_gen.uniform(D_arr_0p5, 0.5, size=1) +def_gen.uniform(0.5, D_arr_0p5, size=1) +def_gen.uniform(D_arr_like_0p5, 0.5) +def_gen.uniform(0.5, D_arr_like_0p5) +def_gen.uniform(D_arr_0p5, D_arr_0p5) +def_gen.uniform(D_arr_like_0p5, D_arr_like_0p5) +def_gen.uniform(D_arr_0p5, D_arr_0p5, size=1) +def_gen.uniform(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.beta(0.5, 0.5) +def_gen.beta(0.5, 0.5, size=None) +def_gen.beta(0.5, 0.5, size=1) +def_gen.beta(D_arr_0p5, 0.5) +def_gen.beta(0.5, D_arr_0p5) +def_gen.beta(D_arr_0p5, 0.5, size=1) +def_gen.beta(0.5, D_arr_0p5, size=1) +def_gen.beta(D_arr_like_0p5, 0.5) +def_gen.beta(0.5, D_arr_like_0p5) +def_gen.beta(D_arr_0p5, D_arr_0p5) +def_gen.beta(D_arr_like_0p5, D_arr_like_0p5) +def_gen.beta(D_arr_0p5, D_arr_0p5, size=1) +def_gen.beta(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.f(0.5, 0.5) +def_gen.f(0.5, 0.5, size=None) +def_gen.f(0.5, 0.5, size=1) +def_gen.f(D_arr_0p5, 0.5) +def_gen.f(0.5, D_arr_0p5) +def_gen.f(D_arr_0p5, 0.5, size=1) +def_gen.f(0.5, D_arr_0p5, size=1) +def_gen.f(D_arr_like_0p5, 0.5) +def_gen.f(0.5, D_arr_like_0p5) +def_gen.f(D_arr_0p5, D_arr_0p5) +def_gen.f(D_arr_like_0p5, D_arr_like_0p5) +def_gen.f(D_arr_0p5, D_arr_0p5, size=1) +def_gen.f(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.gamma(0.5, 0.5) +def_gen.gamma(0.5, 0.5, size=None) +def_gen.gamma(0.5, 0.5, size=1) +def_gen.gamma(D_arr_0p5, 0.5) +def_gen.gamma(0.5, D_arr_0p5) +def_gen.gamma(D_arr_0p5, 0.5, size=1) +def_gen.gamma(0.5, D_arr_0p5, size=1) +def_gen.gamma(D_arr_like_0p5, 0.5) +def_gen.gamma(0.5, D_arr_like_0p5) +def_gen.gamma(D_arr_0p5, D_arr_0p5) +def_gen.gamma(D_arr_like_0p5, D_arr_like_0p5) +def_gen.gamma(D_arr_0p5, D_arr_0p5, size=1) +def_gen.gamma(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.gumbel(0.5, 0.5) +def_gen.gumbel(0.5, 0.5, size=None) +def_gen.gumbel(0.5, 0.5, size=1) +def_gen.gumbel(D_arr_0p5, 0.5) +def_gen.gumbel(0.5, D_arr_0p5) +def_gen.gumbel(D_arr_0p5, 0.5, size=1) +def_gen.gumbel(0.5, D_arr_0p5, size=1) +def_gen.gumbel(D_arr_like_0p5, 0.5) +def_gen.gumbel(0.5, D_arr_like_0p5) +def_gen.gumbel(D_arr_0p5, D_arr_0p5) +def_gen.gumbel(D_arr_like_0p5, D_arr_like_0p5) +def_gen.gumbel(D_arr_0p5, D_arr_0p5, size=1) +def_gen.gumbel(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.laplace(0.5, 0.5) +def_gen.laplace(0.5, 0.5, size=None) +def_gen.laplace(0.5, 0.5, size=1) +def_gen.laplace(D_arr_0p5, 0.5) +def_gen.laplace(0.5, D_arr_0p5) +def_gen.laplace(D_arr_0p5, 0.5, size=1) +def_gen.laplace(0.5, D_arr_0p5, size=1) +def_gen.laplace(D_arr_like_0p5, 0.5) +def_gen.laplace(0.5, D_arr_like_0p5) +def_gen.laplace(D_arr_0p5, D_arr_0p5) +def_gen.laplace(D_arr_like_0p5, D_arr_like_0p5) +def_gen.laplace(D_arr_0p5, D_arr_0p5, size=1) +def_gen.laplace(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.logistic(0.5, 0.5) +def_gen.logistic(0.5, 0.5, size=None) +def_gen.logistic(0.5, 0.5, size=1) +def_gen.logistic(D_arr_0p5, 0.5) +def_gen.logistic(0.5, D_arr_0p5) +def_gen.logistic(D_arr_0p5, 0.5, size=1) +def_gen.logistic(0.5, D_arr_0p5, size=1) +def_gen.logistic(D_arr_like_0p5, 0.5) +def_gen.logistic(0.5, D_arr_like_0p5) +def_gen.logistic(D_arr_0p5, D_arr_0p5) +def_gen.logistic(D_arr_like_0p5, D_arr_like_0p5) +def_gen.logistic(D_arr_0p5, D_arr_0p5, size=1) +def_gen.logistic(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.lognormal(0.5, 0.5) +def_gen.lognormal(0.5, 0.5, size=None) +def_gen.lognormal(0.5, 0.5, size=1) +def_gen.lognormal(D_arr_0p5, 0.5) +def_gen.lognormal(0.5, D_arr_0p5) +def_gen.lognormal(D_arr_0p5, 0.5, size=1) +def_gen.lognormal(0.5, D_arr_0p5, size=1) +def_gen.lognormal(D_arr_like_0p5, 0.5) +def_gen.lognormal(0.5, D_arr_like_0p5) +def_gen.lognormal(D_arr_0p5, D_arr_0p5) +def_gen.lognormal(D_arr_like_0p5, D_arr_like_0p5) +def_gen.lognormal(D_arr_0p5, D_arr_0p5, size=1) +def_gen.lognormal(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.noncentral_chisquare(0.5, 0.5) +def_gen.noncentral_chisquare(0.5, 0.5, size=None) +def_gen.noncentral_chisquare(0.5, 0.5, size=1) +def_gen.noncentral_chisquare(D_arr_0p5, 0.5) +def_gen.noncentral_chisquare(0.5, D_arr_0p5) +def_gen.noncentral_chisquare(D_arr_0p5, 0.5, size=1) +def_gen.noncentral_chisquare(0.5, D_arr_0p5, size=1) +def_gen.noncentral_chisquare(D_arr_like_0p5, 0.5) +def_gen.noncentral_chisquare(0.5, D_arr_like_0p5) +def_gen.noncentral_chisquare(D_arr_0p5, D_arr_0p5) +def_gen.noncentral_chisquare(D_arr_like_0p5, D_arr_like_0p5) +def_gen.noncentral_chisquare(D_arr_0p5, D_arr_0p5, size=1) +def_gen.noncentral_chisquare(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.normal(0.5, 0.5) +def_gen.normal(0.5, 0.5, size=None) +def_gen.normal(0.5, 0.5, size=1) +def_gen.normal(D_arr_0p5, 0.5) +def_gen.normal(0.5, D_arr_0p5) +def_gen.normal(D_arr_0p5, 0.5, size=1) +def_gen.normal(0.5, D_arr_0p5, size=1) +def_gen.normal(D_arr_like_0p5, 0.5) +def_gen.normal(0.5, D_arr_like_0p5) +def_gen.normal(D_arr_0p5, D_arr_0p5) +def_gen.normal(D_arr_like_0p5, D_arr_like_0p5) +def_gen.normal(D_arr_0p5, D_arr_0p5, size=1) +def_gen.normal(D_arr_like_0p5, D_arr_like_0p5, size=1) + +def_gen.triangular(0.1, 0.5, 0.9) +def_gen.triangular(0.1, 0.5, 0.9, size=None) +def_gen.triangular(0.1, 0.5, 0.9, size=1) +def_gen.triangular(D_arr_0p1, 0.5, 0.9) +def_gen.triangular(0.1, D_arr_0p5, 0.9) +def_gen.triangular(D_arr_0p1, 0.5, D_arr_like_0p9, size=1) +def_gen.triangular(0.1, D_arr_0p5, 0.9, size=1) +def_gen.triangular(D_arr_like_0p1, 0.5, D_arr_0p9) +def_gen.triangular(0.5, D_arr_like_0p5, 0.9) +def_gen.triangular(D_arr_0p1, D_arr_0p5, 0.9) +def_gen.triangular(D_arr_like_0p1, D_arr_like_0p5, 0.9) +def_gen.triangular(D_arr_0p1, D_arr_0p5, D_arr_0p9, size=1) +def_gen.triangular(D_arr_like_0p1, D_arr_like_0p5, D_arr_like_0p9, size=1) + +def_gen.noncentral_f(0.1, 0.5, 0.9) +def_gen.noncentral_f(0.1, 0.5, 0.9, size=None) +def_gen.noncentral_f(0.1, 0.5, 0.9, size=1) +def_gen.noncentral_f(D_arr_0p1, 0.5, 0.9) +def_gen.noncentral_f(0.1, D_arr_0p5, 0.9) +def_gen.noncentral_f(D_arr_0p1, 0.5, D_arr_like_0p9, size=1) +def_gen.noncentral_f(0.1, D_arr_0p5, 0.9, size=1) +def_gen.noncentral_f(D_arr_like_0p1, 0.5, D_arr_0p9) +def_gen.noncentral_f(0.5, D_arr_like_0p5, 0.9) +def_gen.noncentral_f(D_arr_0p1, D_arr_0p5, 0.9) +def_gen.noncentral_f(D_arr_like_0p1, D_arr_like_0p5, 0.9) +def_gen.noncentral_f(D_arr_0p1, D_arr_0p5, D_arr_0p9, size=1) +def_gen.noncentral_f(D_arr_like_0p1, D_arr_like_0p5, D_arr_like_0p9, size=1) + +def_gen.binomial(10, 0.5) +def_gen.binomial(10, 0.5, size=None) +def_gen.binomial(10, 0.5, size=1) +def_gen.binomial(I_arr_10, 0.5) +def_gen.binomial(10, D_arr_0p5) +def_gen.binomial(I_arr_10, 0.5, size=1) +def_gen.binomial(10, D_arr_0p5, size=1) +def_gen.binomial(I_arr_like_10, 0.5) +def_gen.binomial(10, D_arr_like_0p5) +def_gen.binomial(I_arr_10, D_arr_0p5) +def_gen.binomial(I_arr_like_10, D_arr_like_0p5) +def_gen.binomial(I_arr_10, D_arr_0p5, size=1) +def_gen.binomial(I_arr_like_10, D_arr_like_0p5, size=1) + +def_gen.negative_binomial(10, 0.5) +def_gen.negative_binomial(10, 0.5, size=None) +def_gen.negative_binomial(10, 0.5, size=1) +def_gen.negative_binomial(I_arr_10, 0.5) +def_gen.negative_binomial(10, D_arr_0p5) +def_gen.negative_binomial(I_arr_10, 0.5, size=1) +def_gen.negative_binomial(10, D_arr_0p5, size=1) +def_gen.negative_binomial(I_arr_like_10, 0.5) +def_gen.negative_binomial(10, D_arr_like_0p5) +def_gen.negative_binomial(I_arr_10, D_arr_0p5) +def_gen.negative_binomial(I_arr_like_10, D_arr_like_0p5) +def_gen.negative_binomial(I_arr_10, D_arr_0p5, size=1) +def_gen.negative_binomial(I_arr_like_10, D_arr_like_0p5, size=1) + +def_gen.hypergeometric(20, 20, 10) +def_gen.hypergeometric(20, 20, 10, size=None) +def_gen.hypergeometric(20, 20, 10, size=1) +def_gen.hypergeometric(I_arr_20, 20, 10) +def_gen.hypergeometric(20, I_arr_20, 10) +def_gen.hypergeometric(I_arr_20, 20, I_arr_like_10, size=1) +def_gen.hypergeometric(20, I_arr_20, 10, size=1) +def_gen.hypergeometric(I_arr_like_20, 20, I_arr_10) +def_gen.hypergeometric(20, I_arr_like_20, 10) +def_gen.hypergeometric(I_arr_20, I_arr_20, 10) +def_gen.hypergeometric(I_arr_like_20, I_arr_like_20, 10) +def_gen.hypergeometric(I_arr_20, I_arr_20, I_arr_10, size=1) +def_gen.hypergeometric(I_arr_like_20, I_arr_like_20, I_arr_like_10, size=1) + +I_int64_100: np.ndarray[Any, np.dtype[np.int64]] = np.array([100], dtype=np.int64) + +def_gen.integers(0, 100) +def_gen.integers(100) +def_gen.integers([100]) +def_gen.integers(0, [100]) + +I_bool_low: np.ndarray[Any, np.dtype[np.bool_]] = np.array([0], dtype=np.bool_) +I_bool_low_like: list[int] = [0] +I_bool_high_open: np.ndarray[Any, np.dtype[np.bool_]] = np.array([1], dtype=np.bool_) +I_bool_high_closed: np.ndarray[Any, np.dtype[np.bool_]] = np.array([1], dtype=np.bool_) + +def_gen.integers(2, dtype=bool) +def_gen.integers(0, 2, dtype=bool) +def_gen.integers(1, dtype=bool, endpoint=True) +def_gen.integers(0, 1, dtype=bool, endpoint=True) +def_gen.integers(I_bool_low_like, 1, dtype=bool, endpoint=True) +def_gen.integers(I_bool_high_open, dtype=bool) +def_gen.integers(I_bool_low, I_bool_high_open, dtype=bool) +def_gen.integers(0, I_bool_high_open, dtype=bool) +def_gen.integers(I_bool_high_closed, dtype=bool, endpoint=True) +def_gen.integers(I_bool_low, I_bool_high_closed, dtype=bool, endpoint=True) +def_gen.integers(0, I_bool_high_closed, dtype=bool, endpoint=True) + +def_gen.integers(2, dtype=np.bool_) +def_gen.integers(0, 2, dtype=np.bool_) +def_gen.integers(1, dtype=np.bool_, endpoint=True) +def_gen.integers(0, 1, dtype=np.bool_, endpoint=True) +def_gen.integers(I_bool_low_like, 1, dtype=np.bool_, endpoint=True) +def_gen.integers(I_bool_high_open, dtype=np.bool_) +def_gen.integers(I_bool_low, I_bool_high_open, dtype=np.bool_) +def_gen.integers(0, I_bool_high_open, dtype=np.bool_) +def_gen.integers(I_bool_high_closed, dtype=np.bool_, endpoint=True) +def_gen.integers(I_bool_low, I_bool_high_closed, dtype=np.bool_, endpoint=True) +def_gen.integers(0, I_bool_high_closed, dtype=np.bool_, endpoint=True) + +I_u1_low: np.ndarray[Any, np.dtype[np.uint8]] = np.array([0], dtype=np.uint8) +I_u1_low_like: list[int] = [0] +I_u1_high_open: np.ndarray[Any, np.dtype[np.uint8]] = np.array([255], dtype=np.uint8) +I_u1_high_closed: np.ndarray[Any, np.dtype[np.uint8]] = np.array([255], dtype=np.uint8) + +def_gen.integers(256, dtype="u1") +def_gen.integers(0, 256, dtype="u1") +def_gen.integers(255, dtype="u1", endpoint=True) +def_gen.integers(0, 255, dtype="u1", endpoint=True) +def_gen.integers(I_u1_low_like, 255, dtype="u1", endpoint=True) +def_gen.integers(I_u1_high_open, dtype="u1") +def_gen.integers(I_u1_low, I_u1_high_open, dtype="u1") +def_gen.integers(0, I_u1_high_open, dtype="u1") +def_gen.integers(I_u1_high_closed, dtype="u1", endpoint=True) +def_gen.integers(I_u1_low, I_u1_high_closed, dtype="u1", endpoint=True) +def_gen.integers(0, I_u1_high_closed, dtype="u1", endpoint=True) + +def_gen.integers(256, dtype="uint8") +def_gen.integers(0, 256, dtype="uint8") +def_gen.integers(255, dtype="uint8", endpoint=True) +def_gen.integers(0, 255, dtype="uint8", endpoint=True) +def_gen.integers(I_u1_low_like, 255, dtype="uint8", endpoint=True) +def_gen.integers(I_u1_high_open, dtype="uint8") +def_gen.integers(I_u1_low, I_u1_high_open, dtype="uint8") +def_gen.integers(0, I_u1_high_open, dtype="uint8") +def_gen.integers(I_u1_high_closed, dtype="uint8", endpoint=True) +def_gen.integers(I_u1_low, I_u1_high_closed, dtype="uint8", endpoint=True) +def_gen.integers(0, I_u1_high_closed, dtype="uint8", endpoint=True) + +def_gen.integers(256, dtype=np.uint8) +def_gen.integers(0, 256, dtype=np.uint8) +def_gen.integers(255, dtype=np.uint8, endpoint=True) +def_gen.integers(0, 255, dtype=np.uint8, endpoint=True) +def_gen.integers(I_u1_low_like, 255, dtype=np.uint8, endpoint=True) +def_gen.integers(I_u1_high_open, dtype=np.uint8) +def_gen.integers(I_u1_low, I_u1_high_open, dtype=np.uint8) +def_gen.integers(0, I_u1_high_open, dtype=np.uint8) +def_gen.integers(I_u1_high_closed, dtype=np.uint8, endpoint=True) +def_gen.integers(I_u1_low, I_u1_high_closed, dtype=np.uint8, endpoint=True) +def_gen.integers(0, I_u1_high_closed, dtype=np.uint8, endpoint=True) + +I_u2_low: np.ndarray[Any, np.dtype[np.uint16]] = np.array([0], dtype=np.uint16) +I_u2_low_like: list[int] = [0] +I_u2_high_open: np.ndarray[Any, np.dtype[np.uint16]] = np.array([65535], dtype=np.uint16) +I_u2_high_closed: np.ndarray[Any, np.dtype[np.uint16]] = np.array([65535], dtype=np.uint16) + +def_gen.integers(65536, dtype="u2") +def_gen.integers(0, 65536, dtype="u2") +def_gen.integers(65535, dtype="u2", endpoint=True) +def_gen.integers(0, 65535, dtype="u2", endpoint=True) +def_gen.integers(I_u2_low_like, 65535, dtype="u2", endpoint=True) +def_gen.integers(I_u2_high_open, dtype="u2") +def_gen.integers(I_u2_low, I_u2_high_open, dtype="u2") +def_gen.integers(0, I_u2_high_open, dtype="u2") +def_gen.integers(I_u2_high_closed, dtype="u2", endpoint=True) +def_gen.integers(I_u2_low, I_u2_high_closed, dtype="u2", endpoint=True) +def_gen.integers(0, I_u2_high_closed, dtype="u2", endpoint=True) + +def_gen.integers(65536, dtype="uint16") +def_gen.integers(0, 65536, dtype="uint16") +def_gen.integers(65535, dtype="uint16", endpoint=True) +def_gen.integers(0, 65535, dtype="uint16", endpoint=True) +def_gen.integers(I_u2_low_like, 65535, dtype="uint16", endpoint=True) +def_gen.integers(I_u2_high_open, dtype="uint16") +def_gen.integers(I_u2_low, I_u2_high_open, dtype="uint16") +def_gen.integers(0, I_u2_high_open, dtype="uint16") +def_gen.integers(I_u2_high_closed, dtype="uint16", endpoint=True) +def_gen.integers(I_u2_low, I_u2_high_closed, dtype="uint16", endpoint=True) +def_gen.integers(0, I_u2_high_closed, dtype="uint16", endpoint=True) + +def_gen.integers(65536, dtype=np.uint16) +def_gen.integers(0, 65536, dtype=np.uint16) +def_gen.integers(65535, dtype=np.uint16, endpoint=True) +def_gen.integers(0, 65535, dtype=np.uint16, endpoint=True) +def_gen.integers(I_u2_low_like, 65535, dtype=np.uint16, endpoint=True) +def_gen.integers(I_u2_high_open, dtype=np.uint16) +def_gen.integers(I_u2_low, I_u2_high_open, dtype=np.uint16) +def_gen.integers(0, I_u2_high_open, dtype=np.uint16) +def_gen.integers(I_u2_high_closed, dtype=np.uint16, endpoint=True) +def_gen.integers(I_u2_low, I_u2_high_closed, dtype=np.uint16, endpoint=True) +def_gen.integers(0, I_u2_high_closed, dtype=np.uint16, endpoint=True) + +I_u4_low: np.ndarray[Any, np.dtype[np.uint32]] = np.array([0], dtype=np.uint32) +I_u4_low_like: list[int] = [0] +I_u4_high_open: np.ndarray[Any, np.dtype[np.uint32]] = np.array([4294967295], dtype=np.uint32) +I_u4_high_closed: np.ndarray[Any, np.dtype[np.uint32]] = np.array([4294967295], dtype=np.uint32) + +def_gen.integers(4294967296, dtype="u4") +def_gen.integers(0, 4294967296, dtype="u4") +def_gen.integers(4294967295, dtype="u4", endpoint=True) +def_gen.integers(0, 4294967295, dtype="u4", endpoint=True) +def_gen.integers(I_u4_low_like, 4294967295, dtype="u4", endpoint=True) +def_gen.integers(I_u4_high_open, dtype="u4") +def_gen.integers(I_u4_low, I_u4_high_open, dtype="u4") +def_gen.integers(0, I_u4_high_open, dtype="u4") +def_gen.integers(I_u4_high_closed, dtype="u4", endpoint=True) +def_gen.integers(I_u4_low, I_u4_high_closed, dtype="u4", endpoint=True) +def_gen.integers(0, I_u4_high_closed, dtype="u4", endpoint=True) + +def_gen.integers(4294967296, dtype="uint32") +def_gen.integers(0, 4294967296, dtype="uint32") +def_gen.integers(4294967295, dtype="uint32", endpoint=True) +def_gen.integers(0, 4294967295, dtype="uint32", endpoint=True) +def_gen.integers(I_u4_low_like, 4294967295, dtype="uint32", endpoint=True) +def_gen.integers(I_u4_high_open, dtype="uint32") +def_gen.integers(I_u4_low, I_u4_high_open, dtype="uint32") +def_gen.integers(0, I_u4_high_open, dtype="uint32") +def_gen.integers(I_u4_high_closed, dtype="uint32", endpoint=True) +def_gen.integers(I_u4_low, I_u4_high_closed, dtype="uint32", endpoint=True) +def_gen.integers(0, I_u4_high_closed, dtype="uint32", endpoint=True) + +def_gen.integers(4294967296, dtype=np.uint32) +def_gen.integers(0, 4294967296, dtype=np.uint32) +def_gen.integers(4294967295, dtype=np.uint32, endpoint=True) +def_gen.integers(0, 4294967295, dtype=np.uint32, endpoint=True) +def_gen.integers(I_u4_low_like, 4294967295, dtype=np.uint32, endpoint=True) +def_gen.integers(I_u4_high_open, dtype=np.uint32) +def_gen.integers(I_u4_low, I_u4_high_open, dtype=np.uint32) +def_gen.integers(0, I_u4_high_open, dtype=np.uint32) +def_gen.integers(I_u4_high_closed, dtype=np.uint32, endpoint=True) +def_gen.integers(I_u4_low, I_u4_high_closed, dtype=np.uint32, endpoint=True) +def_gen.integers(0, I_u4_high_closed, dtype=np.uint32, endpoint=True) + +I_u8_low: np.ndarray[Any, np.dtype[np.uint64]] = np.array([0], dtype=np.uint64) +I_u8_low_like: list[int] = [0] +I_u8_high_open: np.ndarray[Any, np.dtype[np.uint64]] = np.array([18446744073709551615], dtype=np.uint64) +I_u8_high_closed: np.ndarray[Any, np.dtype[np.uint64]] = np.array([18446744073709551615], dtype=np.uint64) + +def_gen.integers(18446744073709551616, dtype="u8") +def_gen.integers(0, 18446744073709551616, dtype="u8") +def_gen.integers(18446744073709551615, dtype="u8", endpoint=True) +def_gen.integers(0, 18446744073709551615, dtype="u8", endpoint=True) +def_gen.integers(I_u8_low_like, 18446744073709551615, dtype="u8", endpoint=True) +def_gen.integers(I_u8_high_open, dtype="u8") +def_gen.integers(I_u8_low, I_u8_high_open, dtype="u8") +def_gen.integers(0, I_u8_high_open, dtype="u8") +def_gen.integers(I_u8_high_closed, dtype="u8", endpoint=True) +def_gen.integers(I_u8_low, I_u8_high_closed, dtype="u8", endpoint=True) +def_gen.integers(0, I_u8_high_closed, dtype="u8", endpoint=True) + +def_gen.integers(18446744073709551616, dtype="uint64") +def_gen.integers(0, 18446744073709551616, dtype="uint64") +def_gen.integers(18446744073709551615, dtype="uint64", endpoint=True) +def_gen.integers(0, 18446744073709551615, dtype="uint64", endpoint=True) +def_gen.integers(I_u8_low_like, 18446744073709551615, dtype="uint64", endpoint=True) +def_gen.integers(I_u8_high_open, dtype="uint64") +def_gen.integers(I_u8_low, I_u8_high_open, dtype="uint64") +def_gen.integers(0, I_u8_high_open, dtype="uint64") +def_gen.integers(I_u8_high_closed, dtype="uint64", endpoint=True) +def_gen.integers(I_u8_low, I_u8_high_closed, dtype="uint64", endpoint=True) +def_gen.integers(0, I_u8_high_closed, dtype="uint64", endpoint=True) + +def_gen.integers(18446744073709551616, dtype=np.uint64) +def_gen.integers(0, 18446744073709551616, dtype=np.uint64) +def_gen.integers(18446744073709551615, dtype=np.uint64, endpoint=True) +def_gen.integers(0, 18446744073709551615, dtype=np.uint64, endpoint=True) +def_gen.integers(I_u8_low_like, 18446744073709551615, dtype=np.uint64, endpoint=True) +def_gen.integers(I_u8_high_open, dtype=np.uint64) +def_gen.integers(I_u8_low, I_u8_high_open, dtype=np.uint64) +def_gen.integers(0, I_u8_high_open, dtype=np.uint64) +def_gen.integers(I_u8_high_closed, dtype=np.uint64, endpoint=True) +def_gen.integers(I_u8_low, I_u8_high_closed, dtype=np.uint64, endpoint=True) +def_gen.integers(0, I_u8_high_closed, dtype=np.uint64, endpoint=True) + +I_i1_low: np.ndarray[Any, np.dtype[np.int8]] = np.array([-128], dtype=np.int8) +I_i1_low_like: list[int] = [-128] +I_i1_high_open: np.ndarray[Any, np.dtype[np.int8]] = np.array([127], dtype=np.int8) +I_i1_high_closed: np.ndarray[Any, np.dtype[np.int8]] = np.array([127], dtype=np.int8) + +def_gen.integers(128, dtype="i1") +def_gen.integers(-128, 128, dtype="i1") +def_gen.integers(127, dtype="i1", endpoint=True) +def_gen.integers(-128, 127, dtype="i1", endpoint=True) +def_gen.integers(I_i1_low_like, 127, dtype="i1", endpoint=True) +def_gen.integers(I_i1_high_open, dtype="i1") +def_gen.integers(I_i1_low, I_i1_high_open, dtype="i1") +def_gen.integers(-128, I_i1_high_open, dtype="i1") +def_gen.integers(I_i1_high_closed, dtype="i1", endpoint=True) +def_gen.integers(I_i1_low, I_i1_high_closed, dtype="i1", endpoint=True) +def_gen.integers(-128, I_i1_high_closed, dtype="i1", endpoint=True) + +def_gen.integers(128, dtype="int8") +def_gen.integers(-128, 128, dtype="int8") +def_gen.integers(127, dtype="int8", endpoint=True) +def_gen.integers(-128, 127, dtype="int8", endpoint=True) +def_gen.integers(I_i1_low_like, 127, dtype="int8", endpoint=True) +def_gen.integers(I_i1_high_open, dtype="int8") +def_gen.integers(I_i1_low, I_i1_high_open, dtype="int8") +def_gen.integers(-128, I_i1_high_open, dtype="int8") +def_gen.integers(I_i1_high_closed, dtype="int8", endpoint=True) +def_gen.integers(I_i1_low, I_i1_high_closed, dtype="int8", endpoint=True) +def_gen.integers(-128, I_i1_high_closed, dtype="int8", endpoint=True) + +def_gen.integers(128, dtype=np.int8) +def_gen.integers(-128, 128, dtype=np.int8) +def_gen.integers(127, dtype=np.int8, endpoint=True) +def_gen.integers(-128, 127, dtype=np.int8, endpoint=True) +def_gen.integers(I_i1_low_like, 127, dtype=np.int8, endpoint=True) +def_gen.integers(I_i1_high_open, dtype=np.int8) +def_gen.integers(I_i1_low, I_i1_high_open, dtype=np.int8) +def_gen.integers(-128, I_i1_high_open, dtype=np.int8) +def_gen.integers(I_i1_high_closed, dtype=np.int8, endpoint=True) +def_gen.integers(I_i1_low, I_i1_high_closed, dtype=np.int8, endpoint=True) +def_gen.integers(-128, I_i1_high_closed, dtype=np.int8, endpoint=True) + +I_i2_low: np.ndarray[Any, np.dtype[np.int16]] = np.array([-32768], dtype=np.int16) +I_i2_low_like: list[int] = [-32768] +I_i2_high_open: np.ndarray[Any, np.dtype[np.int16]] = np.array([32767], dtype=np.int16) +I_i2_high_closed: np.ndarray[Any, np.dtype[np.int16]] = np.array([32767], dtype=np.int16) + +def_gen.integers(32768, dtype="i2") +def_gen.integers(-32768, 32768, dtype="i2") +def_gen.integers(32767, dtype="i2", endpoint=True) +def_gen.integers(-32768, 32767, dtype="i2", endpoint=True) +def_gen.integers(I_i2_low_like, 32767, dtype="i2", endpoint=True) +def_gen.integers(I_i2_high_open, dtype="i2") +def_gen.integers(I_i2_low, I_i2_high_open, dtype="i2") +def_gen.integers(-32768, I_i2_high_open, dtype="i2") +def_gen.integers(I_i2_high_closed, dtype="i2", endpoint=True) +def_gen.integers(I_i2_low, I_i2_high_closed, dtype="i2", endpoint=True) +def_gen.integers(-32768, I_i2_high_closed, dtype="i2", endpoint=True) + +def_gen.integers(32768, dtype="int16") +def_gen.integers(-32768, 32768, dtype="int16") +def_gen.integers(32767, dtype="int16", endpoint=True) +def_gen.integers(-32768, 32767, dtype="int16", endpoint=True) +def_gen.integers(I_i2_low_like, 32767, dtype="int16", endpoint=True) +def_gen.integers(I_i2_high_open, dtype="int16") +def_gen.integers(I_i2_low, I_i2_high_open, dtype="int16") +def_gen.integers(-32768, I_i2_high_open, dtype="int16") +def_gen.integers(I_i2_high_closed, dtype="int16", endpoint=True) +def_gen.integers(I_i2_low, I_i2_high_closed, dtype="int16", endpoint=True) +def_gen.integers(-32768, I_i2_high_closed, dtype="int16", endpoint=True) + +def_gen.integers(32768, dtype=np.int16) +def_gen.integers(-32768, 32768, dtype=np.int16) +def_gen.integers(32767, dtype=np.int16, endpoint=True) +def_gen.integers(-32768, 32767, dtype=np.int16, endpoint=True) +def_gen.integers(I_i2_low_like, 32767, dtype=np.int16, endpoint=True) +def_gen.integers(I_i2_high_open, dtype=np.int16) +def_gen.integers(I_i2_low, I_i2_high_open, dtype=np.int16) +def_gen.integers(-32768, I_i2_high_open, dtype=np.int16) +def_gen.integers(I_i2_high_closed, dtype=np.int16, endpoint=True) +def_gen.integers(I_i2_low, I_i2_high_closed, dtype=np.int16, endpoint=True) +def_gen.integers(-32768, I_i2_high_closed, dtype=np.int16, endpoint=True) + +I_i4_low: np.ndarray[Any, np.dtype[np.int32]] = np.array([-2147483648], dtype=np.int32) +I_i4_low_like: list[int] = [-2147483648] +I_i4_high_open: np.ndarray[Any, np.dtype[np.int32]] = np.array([2147483647], dtype=np.int32) +I_i4_high_closed: np.ndarray[Any, np.dtype[np.int32]] = np.array([2147483647], dtype=np.int32) + +def_gen.integers(2147483648, dtype="i4") +def_gen.integers(-2147483648, 2147483648, dtype="i4") +def_gen.integers(2147483647, dtype="i4", endpoint=True) +def_gen.integers(-2147483648, 2147483647, dtype="i4", endpoint=True) +def_gen.integers(I_i4_low_like, 2147483647, dtype="i4", endpoint=True) +def_gen.integers(I_i4_high_open, dtype="i4") +def_gen.integers(I_i4_low, I_i4_high_open, dtype="i4") +def_gen.integers(-2147483648, I_i4_high_open, dtype="i4") +def_gen.integers(I_i4_high_closed, dtype="i4", endpoint=True) +def_gen.integers(I_i4_low, I_i4_high_closed, dtype="i4", endpoint=True) +def_gen.integers(-2147483648, I_i4_high_closed, dtype="i4", endpoint=True) + +def_gen.integers(2147483648, dtype="int32") +def_gen.integers(-2147483648, 2147483648, dtype="int32") +def_gen.integers(2147483647, dtype="int32", endpoint=True) +def_gen.integers(-2147483648, 2147483647, dtype="int32", endpoint=True) +def_gen.integers(I_i4_low_like, 2147483647, dtype="int32", endpoint=True) +def_gen.integers(I_i4_high_open, dtype="int32") +def_gen.integers(I_i4_low, I_i4_high_open, dtype="int32") +def_gen.integers(-2147483648, I_i4_high_open, dtype="int32") +def_gen.integers(I_i4_high_closed, dtype="int32", endpoint=True) +def_gen.integers(I_i4_low, I_i4_high_closed, dtype="int32", endpoint=True) +def_gen.integers(-2147483648, I_i4_high_closed, dtype="int32", endpoint=True) + +def_gen.integers(2147483648, dtype=np.int32) +def_gen.integers(-2147483648, 2147483648, dtype=np.int32) +def_gen.integers(2147483647, dtype=np.int32, endpoint=True) +def_gen.integers(-2147483648, 2147483647, dtype=np.int32, endpoint=True) +def_gen.integers(I_i4_low_like, 2147483647, dtype=np.int32, endpoint=True) +def_gen.integers(I_i4_high_open, dtype=np.int32) +def_gen.integers(I_i4_low, I_i4_high_open, dtype=np.int32) +def_gen.integers(-2147483648, I_i4_high_open, dtype=np.int32) +def_gen.integers(I_i4_high_closed, dtype=np.int32, endpoint=True) +def_gen.integers(I_i4_low, I_i4_high_closed, dtype=np.int32, endpoint=True) +def_gen.integers(-2147483648, I_i4_high_closed, dtype=np.int32, endpoint=True) + +I_i8_low: np.ndarray[Any, np.dtype[np.int64]] = np.array([-9223372036854775808], dtype=np.int64) +I_i8_low_like: list[int] = [-9223372036854775808] +I_i8_high_open: np.ndarray[Any, np.dtype[np.int64]] = np.array([9223372036854775807], dtype=np.int64) +I_i8_high_closed: np.ndarray[Any, np.dtype[np.int64]] = np.array([9223372036854775807], dtype=np.int64) + +def_gen.integers(9223372036854775808, dtype="i8") +def_gen.integers(-9223372036854775808, 9223372036854775808, dtype="i8") +def_gen.integers(9223372036854775807, dtype="i8", endpoint=True) +def_gen.integers(-9223372036854775808, 9223372036854775807, dtype="i8", endpoint=True) +def_gen.integers(I_i8_low_like, 9223372036854775807, dtype="i8", endpoint=True) +def_gen.integers(I_i8_high_open, dtype="i8") +def_gen.integers(I_i8_low, I_i8_high_open, dtype="i8") +def_gen.integers(-9223372036854775808, I_i8_high_open, dtype="i8") +def_gen.integers(I_i8_high_closed, dtype="i8", endpoint=True) +def_gen.integers(I_i8_low, I_i8_high_closed, dtype="i8", endpoint=True) +def_gen.integers(-9223372036854775808, I_i8_high_closed, dtype="i8", endpoint=True) + +def_gen.integers(9223372036854775808, dtype="int64") +def_gen.integers(-9223372036854775808, 9223372036854775808, dtype="int64") +def_gen.integers(9223372036854775807, dtype="int64", endpoint=True) +def_gen.integers(-9223372036854775808, 9223372036854775807, dtype="int64", endpoint=True) +def_gen.integers(I_i8_low_like, 9223372036854775807, dtype="int64", endpoint=True) +def_gen.integers(I_i8_high_open, dtype="int64") +def_gen.integers(I_i8_low, I_i8_high_open, dtype="int64") +def_gen.integers(-9223372036854775808, I_i8_high_open, dtype="int64") +def_gen.integers(I_i8_high_closed, dtype="int64", endpoint=True) +def_gen.integers(I_i8_low, I_i8_high_closed, dtype="int64", endpoint=True) +def_gen.integers(-9223372036854775808, I_i8_high_closed, dtype="int64", endpoint=True) + +def_gen.integers(9223372036854775808, dtype=np.int64) +def_gen.integers(-9223372036854775808, 9223372036854775808, dtype=np.int64) +def_gen.integers(9223372036854775807, dtype=np.int64, endpoint=True) +def_gen.integers(-9223372036854775808, 9223372036854775807, dtype=np.int64, endpoint=True) +def_gen.integers(I_i8_low_like, 9223372036854775807, dtype=np.int64, endpoint=True) +def_gen.integers(I_i8_high_open, dtype=np.int64) +def_gen.integers(I_i8_low, I_i8_high_open, dtype=np.int64) +def_gen.integers(-9223372036854775808, I_i8_high_open, dtype=np.int64) +def_gen.integers(I_i8_high_closed, dtype=np.int64, endpoint=True) +def_gen.integers(I_i8_low, I_i8_high_closed, dtype=np.int64, endpoint=True) +def_gen.integers(-9223372036854775808, I_i8_high_closed, dtype=np.int64, endpoint=True) + + +def_gen.bit_generator + +def_gen.bytes(2) + +def_gen.choice(5) +def_gen.choice(5, 3) +def_gen.choice(5, 3, replace=True) +def_gen.choice(5, 3, p=[1 / 5] * 5) +def_gen.choice(5, 3, p=[1 / 5] * 5, replace=False) + +def_gen.choice(["pooh", "rabbit", "piglet", "Christopher"]) +def_gen.choice(["pooh", "rabbit", "piglet", "Christopher"], 3) +def_gen.choice(["pooh", "rabbit", "piglet", "Christopher"], 3, p=[1 / 4] * 4) +def_gen.choice(["pooh", "rabbit", "piglet", "Christopher"], 3, replace=True) +def_gen.choice(["pooh", "rabbit", "piglet", "Christopher"], 3, replace=False, p=np.array([1 / 8, 1 / 8, 1 / 2, 1 / 4])) + +def_gen.dirichlet([0.5, 0.5]) +def_gen.dirichlet(np.array([0.5, 0.5])) +def_gen.dirichlet(np.array([0.5, 0.5]), size=3) + +def_gen.multinomial(20, [1 / 6.0] * 6) +def_gen.multinomial(20, np.array([0.5, 0.5])) +def_gen.multinomial(20, [1 / 6.0] * 6, size=2) +def_gen.multinomial([[10], [20]], [1 / 6.0] * 6, size=(2, 2)) +def_gen.multinomial(np.array([[10], [20]]), np.array([0.5, 0.5]), size=(2, 2)) + +def_gen.multivariate_hypergeometric([3, 5, 7], 2) +def_gen.multivariate_hypergeometric(np.array([3, 5, 7]), 2) +def_gen.multivariate_hypergeometric(np.array([3, 5, 7]), 2, size=4) +def_gen.multivariate_hypergeometric(np.array([3, 5, 7]), 2, size=(4, 7)) +def_gen.multivariate_hypergeometric([3, 5, 7], 2, method="count") +def_gen.multivariate_hypergeometric(np.array([3, 5, 7]), 2, method="marginals") + +def_gen.multivariate_normal([0.0], [[1.0]]) +def_gen.multivariate_normal([0.0], np.array([[1.0]])) +def_gen.multivariate_normal(np.array([0.0]), [[1.0]]) +def_gen.multivariate_normal([0.0], np.array([[1.0]])) + +def_gen.permutation(10) +def_gen.permutation([1, 2, 3, 4]) +def_gen.permutation(np.array([1, 2, 3, 4])) +def_gen.permutation(D_2D, axis=1) +def_gen.permuted(D_2D) +def_gen.permuted(D_2D_like) +def_gen.permuted(D_2D, axis=1) +def_gen.permuted(D_2D, out=D_2D) +def_gen.permuted(D_2D_like, out=D_2D) +def_gen.permuted(D_2D_like, out=D_2D) +def_gen.permuted(D_2D, axis=1, out=D_2D) + +def_gen.shuffle(np.arange(10)) +def_gen.shuffle([1, 2, 3, 4, 5]) +def_gen.shuffle(D_2D, axis=1) + +def_gen.__str__() +def_gen.__repr__() +def_gen_state: dict[str, Any] +def_gen_state = def_gen.__getstate__() +def_gen.__setstate__(def_gen_state) + +# RandomState +random_st: np.random.RandomState = np.random.RandomState() + +random_st.standard_normal() +random_st.standard_normal(size=None) +random_st.standard_normal(size=1) + +random_st.random() +random_st.random(size=None) +random_st.random(size=1) + +random_st.standard_cauchy() +random_st.standard_cauchy(size=None) +random_st.standard_cauchy(size=1) + +random_st.standard_exponential() +random_st.standard_exponential(size=None) +random_st.standard_exponential(size=1) + +random_st.zipf(1.5) +random_st.zipf(1.5, size=None) +random_st.zipf(1.5, size=1) +random_st.zipf(D_arr_1p5) +random_st.zipf(D_arr_1p5, size=1) +random_st.zipf(D_arr_like_1p5) +random_st.zipf(D_arr_like_1p5, size=1) + +random_st.weibull(0.5) +random_st.weibull(0.5, size=None) +random_st.weibull(0.5, size=1) +random_st.weibull(D_arr_0p5) +random_st.weibull(D_arr_0p5, size=1) +random_st.weibull(D_arr_like_0p5) +random_st.weibull(D_arr_like_0p5, size=1) + +random_st.standard_t(0.5) +random_st.standard_t(0.5, size=None) +random_st.standard_t(0.5, size=1) +random_st.standard_t(D_arr_0p5) +random_st.standard_t(D_arr_0p5, size=1) +random_st.standard_t(D_arr_like_0p5) +random_st.standard_t(D_arr_like_0p5, size=1) + +random_st.poisson(0.5) +random_st.poisson(0.5, size=None) +random_st.poisson(0.5, size=1) +random_st.poisson(D_arr_0p5) +random_st.poisson(D_arr_0p5, size=1) +random_st.poisson(D_arr_like_0p5) +random_st.poisson(D_arr_like_0p5, size=1) + +random_st.power(0.5) +random_st.power(0.5, size=None) +random_st.power(0.5, size=1) +random_st.power(D_arr_0p5) +random_st.power(D_arr_0p5, size=1) +random_st.power(D_arr_like_0p5) +random_st.power(D_arr_like_0p5, size=1) + +random_st.pareto(0.5) +random_st.pareto(0.5, size=None) +random_st.pareto(0.5, size=1) +random_st.pareto(D_arr_0p5) +random_st.pareto(D_arr_0p5, size=1) +random_st.pareto(D_arr_like_0p5) +random_st.pareto(D_arr_like_0p5, size=1) + +random_st.chisquare(0.5) +random_st.chisquare(0.5, size=None) +random_st.chisquare(0.5, size=1) +random_st.chisquare(D_arr_0p5) +random_st.chisquare(D_arr_0p5, size=1) +random_st.chisquare(D_arr_like_0p5) +random_st.chisquare(D_arr_like_0p5, size=1) + +random_st.exponential(0.5) +random_st.exponential(0.5, size=None) +random_st.exponential(0.5, size=1) +random_st.exponential(D_arr_0p5) +random_st.exponential(D_arr_0p5, size=1) +random_st.exponential(D_arr_like_0p5) +random_st.exponential(D_arr_like_0p5, size=1) + +random_st.geometric(0.5) +random_st.geometric(0.5, size=None) +random_st.geometric(0.5, size=1) +random_st.geometric(D_arr_0p5) +random_st.geometric(D_arr_0p5, size=1) +random_st.geometric(D_arr_like_0p5) +random_st.geometric(D_arr_like_0p5, size=1) + +random_st.logseries(0.5) +random_st.logseries(0.5, size=None) +random_st.logseries(0.5, size=1) +random_st.logseries(D_arr_0p5) +random_st.logseries(D_arr_0p5, size=1) +random_st.logseries(D_arr_like_0p5) +random_st.logseries(D_arr_like_0p5, size=1) + +random_st.rayleigh(0.5) +random_st.rayleigh(0.5, size=None) +random_st.rayleigh(0.5, size=1) +random_st.rayleigh(D_arr_0p5) +random_st.rayleigh(D_arr_0p5, size=1) +random_st.rayleigh(D_arr_like_0p5) +random_st.rayleigh(D_arr_like_0p5, size=1) + +random_st.standard_gamma(0.5) +random_st.standard_gamma(0.5, size=None) +random_st.standard_gamma(0.5, size=1) +random_st.standard_gamma(D_arr_0p5) +random_st.standard_gamma(D_arr_0p5, size=1) +random_st.standard_gamma(D_arr_like_0p5) +random_st.standard_gamma(D_arr_like_0p5, size=1) +random_st.standard_gamma(D_arr_like_0p5, size=1) + +random_st.vonmises(0.5, 0.5) +random_st.vonmises(0.5, 0.5, size=None) +random_st.vonmises(0.5, 0.5, size=1) +random_st.vonmises(D_arr_0p5, 0.5) +random_st.vonmises(0.5, D_arr_0p5) +random_st.vonmises(D_arr_0p5, 0.5, size=1) +random_st.vonmises(0.5, D_arr_0p5, size=1) +random_st.vonmises(D_arr_like_0p5, 0.5) +random_st.vonmises(0.5, D_arr_like_0p5) +random_st.vonmises(D_arr_0p5, D_arr_0p5) +random_st.vonmises(D_arr_like_0p5, D_arr_like_0p5) +random_st.vonmises(D_arr_0p5, D_arr_0p5, size=1) +random_st.vonmises(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.wald(0.5, 0.5) +random_st.wald(0.5, 0.5, size=None) +random_st.wald(0.5, 0.5, size=1) +random_st.wald(D_arr_0p5, 0.5) +random_st.wald(0.5, D_arr_0p5) +random_st.wald(D_arr_0p5, 0.5, size=1) +random_st.wald(0.5, D_arr_0p5, size=1) +random_st.wald(D_arr_like_0p5, 0.5) +random_st.wald(0.5, D_arr_like_0p5) +random_st.wald(D_arr_0p5, D_arr_0p5) +random_st.wald(D_arr_like_0p5, D_arr_like_0p5) +random_st.wald(D_arr_0p5, D_arr_0p5, size=1) +random_st.wald(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.uniform(0.5, 0.5) +random_st.uniform(0.5, 0.5, size=None) +random_st.uniform(0.5, 0.5, size=1) +random_st.uniform(D_arr_0p5, 0.5) +random_st.uniform(0.5, D_arr_0p5) +random_st.uniform(D_arr_0p5, 0.5, size=1) +random_st.uniform(0.5, D_arr_0p5, size=1) +random_st.uniform(D_arr_like_0p5, 0.5) +random_st.uniform(0.5, D_arr_like_0p5) +random_st.uniform(D_arr_0p5, D_arr_0p5) +random_st.uniform(D_arr_like_0p5, D_arr_like_0p5) +random_st.uniform(D_arr_0p5, D_arr_0p5, size=1) +random_st.uniform(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.beta(0.5, 0.5) +random_st.beta(0.5, 0.5, size=None) +random_st.beta(0.5, 0.5, size=1) +random_st.beta(D_arr_0p5, 0.5) +random_st.beta(0.5, D_arr_0p5) +random_st.beta(D_arr_0p5, 0.5, size=1) +random_st.beta(0.5, D_arr_0p5, size=1) +random_st.beta(D_arr_like_0p5, 0.5) +random_st.beta(0.5, D_arr_like_0p5) +random_st.beta(D_arr_0p5, D_arr_0p5) +random_st.beta(D_arr_like_0p5, D_arr_like_0p5) +random_st.beta(D_arr_0p5, D_arr_0p5, size=1) +random_st.beta(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.f(0.5, 0.5) +random_st.f(0.5, 0.5, size=None) +random_st.f(0.5, 0.5, size=1) +random_st.f(D_arr_0p5, 0.5) +random_st.f(0.5, D_arr_0p5) +random_st.f(D_arr_0p5, 0.5, size=1) +random_st.f(0.5, D_arr_0p5, size=1) +random_st.f(D_arr_like_0p5, 0.5) +random_st.f(0.5, D_arr_like_0p5) +random_st.f(D_arr_0p5, D_arr_0p5) +random_st.f(D_arr_like_0p5, D_arr_like_0p5) +random_st.f(D_arr_0p5, D_arr_0p5, size=1) +random_st.f(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.gamma(0.5, 0.5) +random_st.gamma(0.5, 0.5, size=None) +random_st.gamma(0.5, 0.5, size=1) +random_st.gamma(D_arr_0p5, 0.5) +random_st.gamma(0.5, D_arr_0p5) +random_st.gamma(D_arr_0p5, 0.5, size=1) +random_st.gamma(0.5, D_arr_0p5, size=1) +random_st.gamma(D_arr_like_0p5, 0.5) +random_st.gamma(0.5, D_arr_like_0p5) +random_st.gamma(D_arr_0p5, D_arr_0p5) +random_st.gamma(D_arr_like_0p5, D_arr_like_0p5) +random_st.gamma(D_arr_0p5, D_arr_0p5, size=1) +random_st.gamma(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.gumbel(0.5, 0.5) +random_st.gumbel(0.5, 0.5, size=None) +random_st.gumbel(0.5, 0.5, size=1) +random_st.gumbel(D_arr_0p5, 0.5) +random_st.gumbel(0.5, D_arr_0p5) +random_st.gumbel(D_arr_0p5, 0.5, size=1) +random_st.gumbel(0.5, D_arr_0p5, size=1) +random_st.gumbel(D_arr_like_0p5, 0.5) +random_st.gumbel(0.5, D_arr_like_0p5) +random_st.gumbel(D_arr_0p5, D_arr_0p5) +random_st.gumbel(D_arr_like_0p5, D_arr_like_0p5) +random_st.gumbel(D_arr_0p5, D_arr_0p5, size=1) +random_st.gumbel(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.laplace(0.5, 0.5) +random_st.laplace(0.5, 0.5, size=None) +random_st.laplace(0.5, 0.5, size=1) +random_st.laplace(D_arr_0p5, 0.5) +random_st.laplace(0.5, D_arr_0p5) +random_st.laplace(D_arr_0p5, 0.5, size=1) +random_st.laplace(0.5, D_arr_0p5, size=1) +random_st.laplace(D_arr_like_0p5, 0.5) +random_st.laplace(0.5, D_arr_like_0p5) +random_st.laplace(D_arr_0p5, D_arr_0p5) +random_st.laplace(D_arr_like_0p5, D_arr_like_0p5) +random_st.laplace(D_arr_0p5, D_arr_0p5, size=1) +random_st.laplace(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.logistic(0.5, 0.5) +random_st.logistic(0.5, 0.5, size=None) +random_st.logistic(0.5, 0.5, size=1) +random_st.logistic(D_arr_0p5, 0.5) +random_st.logistic(0.5, D_arr_0p5) +random_st.logistic(D_arr_0p5, 0.5, size=1) +random_st.logistic(0.5, D_arr_0p5, size=1) +random_st.logistic(D_arr_like_0p5, 0.5) +random_st.logistic(0.5, D_arr_like_0p5) +random_st.logistic(D_arr_0p5, D_arr_0p5) +random_st.logistic(D_arr_like_0p5, D_arr_like_0p5) +random_st.logistic(D_arr_0p5, D_arr_0p5, size=1) +random_st.logistic(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.lognormal(0.5, 0.5) +random_st.lognormal(0.5, 0.5, size=None) +random_st.lognormal(0.5, 0.5, size=1) +random_st.lognormal(D_arr_0p5, 0.5) +random_st.lognormal(0.5, D_arr_0p5) +random_st.lognormal(D_arr_0p5, 0.5, size=1) +random_st.lognormal(0.5, D_arr_0p5, size=1) +random_st.lognormal(D_arr_like_0p5, 0.5) +random_st.lognormal(0.5, D_arr_like_0p5) +random_st.lognormal(D_arr_0p5, D_arr_0p5) +random_st.lognormal(D_arr_like_0p5, D_arr_like_0p5) +random_st.lognormal(D_arr_0p5, D_arr_0p5, size=1) +random_st.lognormal(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.noncentral_chisquare(0.5, 0.5) +random_st.noncentral_chisquare(0.5, 0.5, size=None) +random_st.noncentral_chisquare(0.5, 0.5, size=1) +random_st.noncentral_chisquare(D_arr_0p5, 0.5) +random_st.noncentral_chisquare(0.5, D_arr_0p5) +random_st.noncentral_chisquare(D_arr_0p5, 0.5, size=1) +random_st.noncentral_chisquare(0.5, D_arr_0p5, size=1) +random_st.noncentral_chisquare(D_arr_like_0p5, 0.5) +random_st.noncentral_chisquare(0.5, D_arr_like_0p5) +random_st.noncentral_chisquare(D_arr_0p5, D_arr_0p5) +random_st.noncentral_chisquare(D_arr_like_0p5, D_arr_like_0p5) +random_st.noncentral_chisquare(D_arr_0p5, D_arr_0p5, size=1) +random_st.noncentral_chisquare(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.normal(0.5, 0.5) +random_st.normal(0.5, 0.5, size=None) +random_st.normal(0.5, 0.5, size=1) +random_st.normal(D_arr_0p5, 0.5) +random_st.normal(0.5, D_arr_0p5) +random_st.normal(D_arr_0p5, 0.5, size=1) +random_st.normal(0.5, D_arr_0p5, size=1) +random_st.normal(D_arr_like_0p5, 0.5) +random_st.normal(0.5, D_arr_like_0p5) +random_st.normal(D_arr_0p5, D_arr_0p5) +random_st.normal(D_arr_like_0p5, D_arr_like_0p5) +random_st.normal(D_arr_0p5, D_arr_0p5, size=1) +random_st.normal(D_arr_like_0p5, D_arr_like_0p5, size=1) + +random_st.triangular(0.1, 0.5, 0.9) +random_st.triangular(0.1, 0.5, 0.9, size=None) +random_st.triangular(0.1, 0.5, 0.9, size=1) +random_st.triangular(D_arr_0p1, 0.5, 0.9) +random_st.triangular(0.1, D_arr_0p5, 0.9) +random_st.triangular(D_arr_0p1, 0.5, D_arr_like_0p9, size=1) +random_st.triangular(0.1, D_arr_0p5, 0.9, size=1) +random_st.triangular(D_arr_like_0p1, 0.5, D_arr_0p9) +random_st.triangular(0.5, D_arr_like_0p5, 0.9) +random_st.triangular(D_arr_0p1, D_arr_0p5, 0.9) +random_st.triangular(D_arr_like_0p1, D_arr_like_0p5, 0.9) +random_st.triangular(D_arr_0p1, D_arr_0p5, D_arr_0p9, size=1) +random_st.triangular(D_arr_like_0p1, D_arr_like_0p5, D_arr_like_0p9, size=1) + +random_st.noncentral_f(0.1, 0.5, 0.9) +random_st.noncentral_f(0.1, 0.5, 0.9, size=None) +random_st.noncentral_f(0.1, 0.5, 0.9, size=1) +random_st.noncentral_f(D_arr_0p1, 0.5, 0.9) +random_st.noncentral_f(0.1, D_arr_0p5, 0.9) +random_st.noncentral_f(D_arr_0p1, 0.5, D_arr_like_0p9, size=1) +random_st.noncentral_f(0.1, D_arr_0p5, 0.9, size=1) +random_st.noncentral_f(D_arr_like_0p1, 0.5, D_arr_0p9) +random_st.noncentral_f(0.5, D_arr_like_0p5, 0.9) +random_st.noncentral_f(D_arr_0p1, D_arr_0p5, 0.9) +random_st.noncentral_f(D_arr_like_0p1, D_arr_like_0p5, 0.9) +random_st.noncentral_f(D_arr_0p1, D_arr_0p5, D_arr_0p9, size=1) +random_st.noncentral_f(D_arr_like_0p1, D_arr_like_0p5, D_arr_like_0p9, size=1) + +random_st.binomial(10, 0.5) +random_st.binomial(10, 0.5, size=None) +random_st.binomial(10, 0.5, size=1) +random_st.binomial(I_arr_10, 0.5) +random_st.binomial(10, D_arr_0p5) +random_st.binomial(I_arr_10, 0.5, size=1) +random_st.binomial(10, D_arr_0p5, size=1) +random_st.binomial(I_arr_like_10, 0.5) +random_st.binomial(10, D_arr_like_0p5) +random_st.binomial(I_arr_10, D_arr_0p5) +random_st.binomial(I_arr_like_10, D_arr_like_0p5) +random_st.binomial(I_arr_10, D_arr_0p5, size=1) +random_st.binomial(I_arr_like_10, D_arr_like_0p5, size=1) + +random_st.negative_binomial(10, 0.5) +random_st.negative_binomial(10, 0.5, size=None) +random_st.negative_binomial(10, 0.5, size=1) +random_st.negative_binomial(I_arr_10, 0.5) +random_st.negative_binomial(10, D_arr_0p5) +random_st.negative_binomial(I_arr_10, 0.5, size=1) +random_st.negative_binomial(10, D_arr_0p5, size=1) +random_st.negative_binomial(I_arr_like_10, 0.5) +random_st.negative_binomial(10, D_arr_like_0p5) +random_st.negative_binomial(I_arr_10, D_arr_0p5) +random_st.negative_binomial(I_arr_like_10, D_arr_like_0p5) +random_st.negative_binomial(I_arr_10, D_arr_0p5, size=1) +random_st.negative_binomial(I_arr_like_10, D_arr_like_0p5, size=1) + +random_st.hypergeometric(20, 20, 10) +random_st.hypergeometric(20, 20, 10, size=None) +random_st.hypergeometric(20, 20, 10, size=1) +random_st.hypergeometric(I_arr_20, 20, 10) +random_st.hypergeometric(20, I_arr_20, 10) +random_st.hypergeometric(I_arr_20, 20, I_arr_like_10, size=1) +random_st.hypergeometric(20, I_arr_20, 10, size=1) +random_st.hypergeometric(I_arr_like_20, 20, I_arr_10) +random_st.hypergeometric(20, I_arr_like_20, 10) +random_st.hypergeometric(I_arr_20, I_arr_20, 10) +random_st.hypergeometric(I_arr_like_20, I_arr_like_20, 10) +random_st.hypergeometric(I_arr_20, I_arr_20, I_arr_10, size=1) +random_st.hypergeometric(I_arr_like_20, I_arr_like_20, I_arr_like_10, size=1) + +random_st.randint(0, 100) +random_st.randint(100) +random_st.randint([100]) +random_st.randint(0, [100]) + +random_st.randint(2, dtype=bool) +random_st.randint(0, 2, dtype=bool) +random_st.randint(I_bool_high_open, dtype=bool) +random_st.randint(I_bool_low, I_bool_high_open, dtype=bool) +random_st.randint(0, I_bool_high_open, dtype=bool) + +random_st.randint(2, dtype=np.bool_) +random_st.randint(0, 2, dtype=np.bool_) +random_st.randint(I_bool_high_open, dtype=np.bool_) +random_st.randint(I_bool_low, I_bool_high_open, dtype=np.bool_) +random_st.randint(0, I_bool_high_open, dtype=np.bool_) + +random_st.randint(256, dtype="u1") +random_st.randint(0, 256, dtype="u1") +random_st.randint(I_u1_high_open, dtype="u1") +random_st.randint(I_u1_low, I_u1_high_open, dtype="u1") +random_st.randint(0, I_u1_high_open, dtype="u1") + +random_st.randint(256, dtype="uint8") +random_st.randint(0, 256, dtype="uint8") +random_st.randint(I_u1_high_open, dtype="uint8") +random_st.randint(I_u1_low, I_u1_high_open, dtype="uint8") +random_st.randint(0, I_u1_high_open, dtype="uint8") + +random_st.randint(256, dtype=np.uint8) +random_st.randint(0, 256, dtype=np.uint8) +random_st.randint(I_u1_high_open, dtype=np.uint8) +random_st.randint(I_u1_low, I_u1_high_open, dtype=np.uint8) +random_st.randint(0, I_u1_high_open, dtype=np.uint8) + +random_st.randint(65536, dtype="u2") +random_st.randint(0, 65536, dtype="u2") +random_st.randint(I_u2_high_open, dtype="u2") +random_st.randint(I_u2_low, I_u2_high_open, dtype="u2") +random_st.randint(0, I_u2_high_open, dtype="u2") + +random_st.randint(65536, dtype="uint16") +random_st.randint(0, 65536, dtype="uint16") +random_st.randint(I_u2_high_open, dtype="uint16") +random_st.randint(I_u2_low, I_u2_high_open, dtype="uint16") +random_st.randint(0, I_u2_high_open, dtype="uint16") + +random_st.randint(65536, dtype=np.uint16) +random_st.randint(0, 65536, dtype=np.uint16) +random_st.randint(I_u2_high_open, dtype=np.uint16) +random_st.randint(I_u2_low, I_u2_high_open, dtype=np.uint16) +random_st.randint(0, I_u2_high_open, dtype=np.uint16) + +random_st.randint(4294967296, dtype="u4") +random_st.randint(0, 4294967296, dtype="u4") +random_st.randint(I_u4_high_open, dtype="u4") +random_st.randint(I_u4_low, I_u4_high_open, dtype="u4") +random_st.randint(0, I_u4_high_open, dtype="u4") + +random_st.randint(4294967296, dtype="uint32") +random_st.randint(0, 4294967296, dtype="uint32") +random_st.randint(I_u4_high_open, dtype="uint32") +random_st.randint(I_u4_low, I_u4_high_open, dtype="uint32") +random_st.randint(0, I_u4_high_open, dtype="uint32") + +random_st.randint(4294967296, dtype=np.uint32) +random_st.randint(0, 4294967296, dtype=np.uint32) +random_st.randint(I_u4_high_open, dtype=np.uint32) +random_st.randint(I_u4_low, I_u4_high_open, dtype=np.uint32) +random_st.randint(0, I_u4_high_open, dtype=np.uint32) + + +random_st.randint(18446744073709551616, dtype="u8") +random_st.randint(0, 18446744073709551616, dtype="u8") +random_st.randint(I_u8_high_open, dtype="u8") +random_st.randint(I_u8_low, I_u8_high_open, dtype="u8") +random_st.randint(0, I_u8_high_open, dtype="u8") + +random_st.randint(18446744073709551616, dtype="uint64") +random_st.randint(0, 18446744073709551616, dtype="uint64") +random_st.randint(I_u8_high_open, dtype="uint64") +random_st.randint(I_u8_low, I_u8_high_open, dtype="uint64") +random_st.randint(0, I_u8_high_open, dtype="uint64") + +random_st.randint(18446744073709551616, dtype=np.uint64) +random_st.randint(0, 18446744073709551616, dtype=np.uint64) +random_st.randint(I_u8_high_open, dtype=np.uint64) +random_st.randint(I_u8_low, I_u8_high_open, dtype=np.uint64) +random_st.randint(0, I_u8_high_open, dtype=np.uint64) + +random_st.randint(128, dtype="i1") +random_st.randint(-128, 128, dtype="i1") +random_st.randint(I_i1_high_open, dtype="i1") +random_st.randint(I_i1_low, I_i1_high_open, dtype="i1") +random_st.randint(-128, I_i1_high_open, dtype="i1") + +random_st.randint(128, dtype="int8") +random_st.randint(-128, 128, dtype="int8") +random_st.randint(I_i1_high_open, dtype="int8") +random_st.randint(I_i1_low, I_i1_high_open, dtype="int8") +random_st.randint(-128, I_i1_high_open, dtype="int8") + +random_st.randint(128, dtype=np.int8) +random_st.randint(-128, 128, dtype=np.int8) +random_st.randint(I_i1_high_open, dtype=np.int8) +random_st.randint(I_i1_low, I_i1_high_open, dtype=np.int8) +random_st.randint(-128, I_i1_high_open, dtype=np.int8) + +random_st.randint(32768, dtype="i2") +random_st.randint(-32768, 32768, dtype="i2") +random_st.randint(I_i2_high_open, dtype="i2") +random_st.randint(I_i2_low, I_i2_high_open, dtype="i2") +random_st.randint(-32768, I_i2_high_open, dtype="i2") +random_st.randint(32768, dtype="int16") +random_st.randint(-32768, 32768, dtype="int16") +random_st.randint(I_i2_high_open, dtype="int16") +random_st.randint(I_i2_low, I_i2_high_open, dtype="int16") +random_st.randint(-32768, I_i2_high_open, dtype="int16") +random_st.randint(32768, dtype=np.int16) +random_st.randint(-32768, 32768, dtype=np.int16) +random_st.randint(I_i2_high_open, dtype=np.int16) +random_st.randint(I_i2_low, I_i2_high_open, dtype=np.int16) +random_st.randint(-32768, I_i2_high_open, dtype=np.int16) + +random_st.randint(2147483648, dtype="i4") +random_st.randint(-2147483648, 2147483648, dtype="i4") +random_st.randint(I_i4_high_open, dtype="i4") +random_st.randint(I_i4_low, I_i4_high_open, dtype="i4") +random_st.randint(-2147483648, I_i4_high_open, dtype="i4") + +random_st.randint(2147483648, dtype="int32") +random_st.randint(-2147483648, 2147483648, dtype="int32") +random_st.randint(I_i4_high_open, dtype="int32") +random_st.randint(I_i4_low, I_i4_high_open, dtype="int32") +random_st.randint(-2147483648, I_i4_high_open, dtype="int32") + +random_st.randint(2147483648, dtype=np.int32) +random_st.randint(-2147483648, 2147483648, dtype=np.int32) +random_st.randint(I_i4_high_open, dtype=np.int32) +random_st.randint(I_i4_low, I_i4_high_open, dtype=np.int32) +random_st.randint(-2147483648, I_i4_high_open, dtype=np.int32) + +random_st.randint(9223372036854775808, dtype="i8") +random_st.randint(-9223372036854775808, 9223372036854775808, dtype="i8") +random_st.randint(I_i8_high_open, dtype="i8") +random_st.randint(I_i8_low, I_i8_high_open, dtype="i8") +random_st.randint(-9223372036854775808, I_i8_high_open, dtype="i8") + +random_st.randint(9223372036854775808, dtype="int64") +random_st.randint(-9223372036854775808, 9223372036854775808, dtype="int64") +random_st.randint(I_i8_high_open, dtype="int64") +random_st.randint(I_i8_low, I_i8_high_open, dtype="int64") +random_st.randint(-9223372036854775808, I_i8_high_open, dtype="int64") + +random_st.randint(9223372036854775808, dtype=np.int64) +random_st.randint(-9223372036854775808, 9223372036854775808, dtype=np.int64) +random_st.randint(I_i8_high_open, dtype=np.int64) +random_st.randint(I_i8_low, I_i8_high_open, dtype=np.int64) +random_st.randint(-9223372036854775808, I_i8_high_open, dtype=np.int64) + +bg: np.random.BitGenerator = random_st._bit_generator + +random_st.bytes(2) + +random_st.choice(5) +random_st.choice(5, 3) +random_st.choice(5, 3, replace=True) +random_st.choice(5, 3, p=[1 / 5] * 5) +random_st.choice(5, 3, p=[1 / 5] * 5, replace=False) + +random_st.choice(["pooh", "rabbit", "piglet", "Christopher"]) +random_st.choice(["pooh", "rabbit", "piglet", "Christopher"], 3) +random_st.choice(["pooh", "rabbit", "piglet", "Christopher"], 3, p=[1 / 4] * 4) +random_st.choice(["pooh", "rabbit", "piglet", "Christopher"], 3, replace=True) +random_st.choice(["pooh", "rabbit", "piglet", "Christopher"], 3, replace=False, p=np.array([1 / 8, 1 / 8, 1 / 2, 1 / 4])) + +random_st.dirichlet([0.5, 0.5]) +random_st.dirichlet(np.array([0.5, 0.5])) +random_st.dirichlet(np.array([0.5, 0.5]), size=3) + +random_st.multinomial(20, [1 / 6.0] * 6) +random_st.multinomial(20, np.array([0.5, 0.5])) +random_st.multinomial(20, [1 / 6.0] * 6, size=2) + +random_st.multivariate_normal([0.0], [[1.0]]) +random_st.multivariate_normal([0.0], np.array([[1.0]])) +random_st.multivariate_normal(np.array([0.0]), [[1.0]]) +random_st.multivariate_normal([0.0], np.array([[1.0]])) + +random_st.permutation(10) +random_st.permutation([1, 2, 3, 4]) +random_st.permutation(np.array([1, 2, 3, 4])) +random_st.permutation(D_2D) + +random_st.shuffle(np.arange(10)) +random_st.shuffle([1, 2, 3, 4, 5]) +random_st.shuffle(D_2D) + +np.random.RandomState(SEED_PCG64) +np.random.RandomState(0) +np.random.RandomState([0, 1, 2]) +random_st.__str__() +random_st.__repr__() +random_st_state = random_st.__getstate__() +random_st.__setstate__(random_st_state) +random_st.seed() +random_st.seed(1) +random_st.seed([0, 1]) +random_st_get_state = random_st.get_state() +random_st_get_state_legacy = random_st.get_state(legacy=True) +random_st.set_state(random_st_get_state) + +random_st.rand() +random_st.rand(1) +random_st.rand(1, 2) +random_st.randn() +random_st.randn(1) +random_st.randn(1, 2) +random_st.random_sample() +random_st.random_sample(1) +random_st.random_sample(size=(1, 2)) + +random_st.tomaxint() +random_st.tomaxint(1) +random_st.tomaxint((1,)) + +np.random.set_bit_generator(SEED_PCG64) +np.random.get_bit_generator() diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/simple_py3.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/simple_py3.py new file mode 100644 index 0000000000000000000000000000000000000000..c05a1ce612ac5e40d0914732c4c72ad1d3f2d552 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/data/pass/simple_py3.py @@ -0,0 +1,6 @@ +import numpy as np + +array = np.array([1, 2]) + +# The @ operator is not in python 2 +array @ array diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_isfile.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_isfile.py new file mode 100644 index 0000000000000000000000000000000000000000..2ca2c9b21f94c37252fc6130f9f03a4ad4e04433 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_isfile.py @@ -0,0 +1,32 @@ +import os +import sys +from pathlib import Path + +import numpy as np +from numpy.testing import assert_ + +ROOT = Path(np.__file__).parents[0] +FILES = [ + ROOT / "py.typed", + ROOT / "__init__.pyi", + ROOT / "ctypeslib.pyi", + ROOT / "core" / "__init__.pyi", + ROOT / "f2py" / "__init__.pyi", + ROOT / "fft" / "__init__.pyi", + ROOT / "lib" / "__init__.pyi", + ROOT / "linalg" / "__init__.pyi", + ROOT / "ma" / "__init__.pyi", + ROOT / "matrixlib" / "__init__.pyi", + ROOT / "polynomial" / "__init__.pyi", + ROOT / "random" / "__init__.pyi", + ROOT / "testing" / "__init__.pyi", +] +if sys.version_info < (3, 12): + FILES += [ROOT / "distutils" / "__init__.pyi"] + + +class TestIsFile: + def test_isfile(self): + """Test if all ``.pyi`` files are properly installed.""" + for file in FILES: + assert_(os.path.isfile(file)) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_runtime.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_runtime.py new file mode 100644 index 0000000000000000000000000000000000000000..c32c5db3266aff7643cc70b1e139aa17e24a26f6 --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_runtime.py @@ -0,0 +1,109 @@ +"""Test the runtime usage of `numpy.typing`.""" + +from __future__ import annotations + +from typing import ( + get_type_hints, + Union, + NamedTuple, + get_args, + get_origin, + Any, +) + +import pytest +import numpy as np +import numpy.typing as npt +import numpy._typing as _npt + + +class TypeTup(NamedTuple): + typ: type + args: tuple[type, ...] + origin: None | type + + +NDArrayTup = TypeTup(npt.NDArray, npt.NDArray.__args__, np.ndarray) + +TYPES = { + "ArrayLike": TypeTup(npt.ArrayLike, npt.ArrayLike.__args__, Union), + "DTypeLike": TypeTup(npt.DTypeLike, npt.DTypeLike.__args__, Union), + "NBitBase": TypeTup(npt.NBitBase, (), None), + "NDArray": NDArrayTup, +} + + +@pytest.mark.parametrize("name,tup", TYPES.items(), ids=TYPES.keys()) +def test_get_args(name: type, tup: TypeTup) -> None: + """Test `typing.get_args`.""" + typ, ref = tup.typ, tup.args + out = get_args(typ) + assert out == ref + + +@pytest.mark.parametrize("name,tup", TYPES.items(), ids=TYPES.keys()) +def test_get_origin(name: type, tup: TypeTup) -> None: + """Test `typing.get_origin`.""" + typ, ref = tup.typ, tup.origin + out = get_origin(typ) + assert out == ref + + +@pytest.mark.parametrize("name,tup", TYPES.items(), ids=TYPES.keys()) +def test_get_type_hints(name: type, tup: TypeTup) -> None: + """Test `typing.get_type_hints`.""" + typ = tup.typ + + # Explicitly set `__annotations__` in order to circumvent the + # stringification performed by `from __future__ import annotations` + def func(a): pass + func.__annotations__ = {"a": typ, "return": None} + + out = get_type_hints(func) + ref = {"a": typ, "return": type(None)} + assert out == ref + + +@pytest.mark.parametrize("name,tup", TYPES.items(), ids=TYPES.keys()) +def test_get_type_hints_str(name: type, tup: TypeTup) -> None: + """Test `typing.get_type_hints` with string-representation of types.""" + typ_str, typ = f"npt.{name}", tup.typ + + # Explicitly set `__annotations__` in order to circumvent the + # stringification performed by `from __future__ import annotations` + def func(a): pass + func.__annotations__ = {"a": typ_str, "return": None} + + out = get_type_hints(func) + ref = {"a": typ, "return": type(None)} + assert out == ref + + +def test_keys() -> None: + """Test that ``TYPES.keys()`` and ``numpy.typing.__all__`` are synced.""" + keys = TYPES.keys() + ref = set(npt.__all__) + assert keys == ref + + +PROTOCOLS: dict[str, tuple[type[Any], object]] = { + "_SupportsDType": (_npt._SupportsDType, np.int64(1)), + "_SupportsArray": (_npt._SupportsArray, np.arange(10)), + "_SupportsArrayFunc": (_npt._SupportsArrayFunc, np.arange(10)), + "_NestedSequence": (_npt._NestedSequence, [1]), +} + + +@pytest.mark.parametrize("cls,obj", PROTOCOLS.values(), ids=PROTOCOLS.keys()) +class TestRuntimeProtocol: + def test_isinstance(self, cls: type[Any], obj: object) -> None: + assert isinstance(obj, cls) + assert not isinstance(None, cls) + + def test_issubclass(self, cls: type[Any], obj: object) -> None: + if cls is _npt._SupportsDType: + pytest.xfail( + "Protocols with non-method members don't support issubclass()" + ) + assert issubclass(type(obj), cls) + assert not issubclass(type(None), cls) diff --git a/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_typing.py b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_typing.py new file mode 100644 index 0000000000000000000000000000000000000000..6f778e551576a0a18099dc7fcc06745e0d4f030b --- /dev/null +++ b/env-llmeval/lib/python3.10/site-packages/numpy/typing/tests/test_typing.py @@ -0,0 +1,300 @@ +from __future__ import annotations + +import importlib.util +import os +import re +import shutil +from collections import defaultdict +from collections.abc import Iterator +from typing import TYPE_CHECKING + +import pytest +from numpy.typing.mypy_plugin import _EXTENDED_PRECISION_LIST + + +# Only trigger a full `mypy` run if this environment variable is set +# Note that these tests tend to take over a minute even on a macOS M1 CPU, +# and more than that in CI. +RUN_MYPY = "NPY_RUN_MYPY_IN_TESTSUITE" in os.environ +if RUN_MYPY and RUN_MYPY not in ('0', '', 'false'): + RUN_MYPY = True + +# Skips all functions in this file +pytestmark = pytest.mark.skipif( + not RUN_MYPY, + reason="`NPY_RUN_MYPY_IN_TESTSUITE` not set" +) + + +# Only trigger a full `mypy` run if this environment variable is set +# Note that these tests tend to take over a minute even on a macOS M1 CPU, +# and more than that in CI. +RUN_MYPY = "NPY_RUN_MYPY_IN_TESTSUITE" in os.environ +if RUN_MYPY and RUN_MYPY not in ('0', '', 'false'): + RUN_MYPY = True + +# Skips all functions in this file +pytestmark = pytest.mark.skipif( + not RUN_MYPY, + reason="`NPY_RUN_MYPY_IN_TESTSUITE` not set" +) + + +try: + from mypy import api +except ImportError: + NO_MYPY = True +else: + NO_MYPY = False + +if TYPE_CHECKING: + # We need this as annotation, but it's located in a private namespace. + # As a compromise, do *not* import it during runtime + from _pytest.mark.structures import ParameterSet + +DATA_DIR = os.path.join(os.path.dirname(__file__), "data") +PASS_DIR = os.path.join(DATA_DIR, "pass") +FAIL_DIR = os.path.join(DATA_DIR, "fail") +REVEAL_DIR = os.path.join(DATA_DIR, "reveal") +MISC_DIR = os.path.join(DATA_DIR, "misc") +MYPY_INI = os.path.join(DATA_DIR, "mypy.ini") +CACHE_DIR = os.path.join(DATA_DIR, ".mypy_cache") + +#: A dictionary with file names as keys and lists of the mypy stdout as values. +#: To-be populated by `run_mypy`. +OUTPUT_MYPY: defaultdict[str, list[str]] = defaultdict(list) + + +def _key_func(key: str) -> str: + """Split at the first occurrence of the ``:`` character. + + Windows drive-letters (*e.g.* ``C:``) are ignored herein. + """ + drive, tail = os.path.splitdrive(key) + return os.path.join(drive, tail.split(":", 1)[0]) + + +def _strip_filename(msg: str) -> tuple[int, str]: + """Strip the filename and line number from a mypy message.""" + _, tail = os.path.splitdrive(msg) + _, lineno, msg = tail.split(":", 2) + return int(lineno), msg.strip() + + +def strip_func(match: re.Match[str]) -> str: + """`re.sub` helper function for stripping module names.""" + return match.groups()[1] + + +@pytest.fixture(scope="module", autouse=True) +def run_mypy() -> None: + """Clears the cache and run mypy before running any of the typing tests. + + The mypy results are cached in `OUTPUT_MYPY` for further use. + + The cache refresh can be skipped using + + NUMPY_TYPING_TEST_CLEAR_CACHE=0 pytest numpy/typing/tests + """ + if ( + os.path.isdir(CACHE_DIR) + and bool(os.environ.get("NUMPY_TYPING_TEST_CLEAR_CACHE", True)) + ): + shutil.rmtree(CACHE_DIR) + + split_pattern = re.compile(r"(\s+)?\^(\~+)?") + for directory in (PASS_DIR, REVEAL_DIR, FAIL_DIR, MISC_DIR): + # Run mypy + stdout, stderr, exit_code = api.run([ + "--config-file", + MYPY_INI, + "--cache-dir", + CACHE_DIR, + directory, + ]) + if stderr: + pytest.fail(f"Unexpected mypy standard error\n\n{stderr}") + elif exit_code not in {0, 1}: + pytest.fail(f"Unexpected mypy exit code: {exit_code}\n\n{stdout}") + + str_concat = "" + filename: str | None = None + for i in stdout.split("\n"): + if "note:" in i: + continue + if filename is None: + filename = _key_func(i) + + str_concat += f"{i}\n" + if split_pattern.match(i) is not None: + OUTPUT_MYPY[filename].append(str_concat) + str_concat = "" + filename = None + + +def get_test_cases(directory: str) -> Iterator[ParameterSet]: + for root, _, files in os.walk(directory): + for fname in files: + short_fname, ext = os.path.splitext(fname) + if ext in (".pyi", ".py"): + fullpath = os.path.join(root, fname) + yield pytest.param(fullpath, id=short_fname) + + +@pytest.mark.slow +@pytest.mark.skipif(NO_MYPY, reason="Mypy is not installed") +@pytest.mark.parametrize("path", get_test_cases(PASS_DIR)) +def test_success(path) -> None: + # Alias `OUTPUT_MYPY` so that it appears in the local namespace + output_mypy = OUTPUT_MYPY + if path in output_mypy: + msg = "Unexpected mypy output\n\n" + msg += "\n".join(_strip_filename(v)[1] for v in output_mypy[path]) + raise AssertionError(msg) + + +@pytest.mark.slow +@pytest.mark.skipif(NO_MYPY, reason="Mypy is not installed") +@pytest.mark.parametrize("path", get_test_cases(FAIL_DIR)) +def test_fail(path: str) -> None: + __tracebackhide__ = True + + with open(path) as fin: + lines = fin.readlines() + + errors = defaultdict(lambda: "") + + output_mypy = OUTPUT_MYPY + assert path in output_mypy + + for error_line in output_mypy[path]: + lineno, error_line = _strip_filename(error_line) + errors[lineno] += f'{error_line}\n' + + for i, line in enumerate(lines): + lineno = i + 1 + if ( + line.startswith('#') + or (" E:" not in line and lineno not in errors) + ): + continue + + target_line = lines[lineno - 1] + if "# E:" in target_line: + expression, _, marker = target_line.partition(" # E: ") + expected_error = errors[lineno].strip() + marker = marker.strip() + _test_fail(path, expression, marker, expected_error, lineno) + else: + pytest.fail( + f"Unexpected mypy output at line {lineno}\n\n{errors[lineno]}" + ) + + +_FAIL_MSG1 = """Extra error at line {} + +Expression: {} +Extra error: {!r} +""" + +_FAIL_MSG2 = """Error mismatch at line {} + +Expression: {} +Expected error: {} +Observed error: {!r} +""" + + +def _test_fail( + path: str, + expression: str, + error: str, + expected_error: None | str, + lineno: int, +) -> None: + if expected_error is None: + raise AssertionError(_FAIL_MSG1.format(lineno, expression, error)) + elif error not in expected_error: + raise AssertionError(_FAIL_MSG2.format( + lineno, expression, expected_error, error + )) + + +_REVEAL_MSG = """Reveal mismatch at line {} + +{} +""" + + +@pytest.mark.slow +@pytest.mark.skipif(NO_MYPY, reason="Mypy is not installed") +@pytest.mark.parametrize("path", get_test_cases(REVEAL_DIR)) +def test_reveal(path: str) -> None: + """Validate that mypy correctly infers the return-types of + the expressions in `path`. + """ + __tracebackhide__ = True + + output_mypy = OUTPUT_MYPY + if path not in output_mypy: + return + + for error_line in output_mypy[path]: + lineno, error_line = _strip_filename(error_line) + raise AssertionError(_REVEAL_MSG.format(lineno, error_line)) + + +@pytest.mark.slow +@pytest.mark.skipif(NO_MYPY, reason="Mypy is not installed") +@pytest.mark.parametrize("path", get_test_cases(PASS_DIR)) +def test_code_runs(path: str) -> None: + """Validate that the code in `path` properly during runtime.""" + path_without_extension, _ = os.path.splitext(path) + dirname, filename = path.split(os.sep)[-2:] + + spec = importlib.util.spec_from_file_location( + f"{dirname}.{filename}", path + ) + assert spec is not None + assert spec.loader is not None + + test_module = importlib.util.module_from_spec(spec) + spec.loader.exec_module(test_module) + + +LINENO_MAPPING = { + 11: "uint128", + 12: "uint256", + 14: "int128", + 15: "int256", + 17: "float80", + 18: "float96", + 19: "float128", + 20: "float256", + 22: "complex160", + 23: "complex192", + 24: "complex256", + 25: "complex512", +} + + +@pytest.mark.slow +@pytest.mark.skipif(NO_MYPY, reason="Mypy is not installed") +def test_extended_precision() -> None: + path = os.path.join(MISC_DIR, "extended_precision.pyi") + output_mypy = OUTPUT_MYPY + assert path in output_mypy + + with open(path) as f: + expression_list = f.readlines() + + for _msg in output_mypy[path]: + lineno, msg = _strip_filename(_msg) + expression = expression_list[lineno - 1].rstrip("\n") + + if LINENO_MAPPING[lineno] in _EXTENDED_PRECISION_LIST: + raise AssertionError(_REVEAL_MSG.format(lineno, msg)) + elif "error" not in msg: + _test_fail( + path, expression, msg, 'Expression is of type "Any"', lineno + )