427 lines
15 KiB
Python
427 lines
15 KiB
Python
"""
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This file contains a minimal set of tests for compliance with the extension
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array interface test suite, and should contain no other tests.
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The test suite for the full functionality of the array is located in
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`pandas/tests/arrays/`.
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The tests in this file are inherited from the BaseExtensionTests, and only
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minimal tweaks should be applied to get the tests passing (by overwriting a
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parent method).
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Additional tests should either be added to one of the BaseExtensionTests
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classes (if they are relevant for the extension interface for all dtypes), or
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be added to the array-specific tests in `pandas/tests/arrays/`.
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Note: we do not bother with base.BaseIndexTests because NumpyExtensionArray
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will never be held in an Index.
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"""
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import numpy as np
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import pytest
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from pandas.core.dtypes.dtypes import NumpyEADtype
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import pandas as pd
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import pandas._testing as tm
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from pandas.api.types import is_object_dtype
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from pandas.core.arrays.numpy_ import NumpyExtensionArray
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from pandas.tests.extension import base
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orig_assert_attr_equal = tm.assert_attr_equal
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def _assert_attr_equal(attr: str, left, right, obj: str = "Attributes"):
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"""
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patch tm.assert_attr_equal so NumpyEADtype("object") is closed enough to
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np.dtype("object")
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"""
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if attr == "dtype":
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lattr = getattr(left, "dtype", None)
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rattr = getattr(right, "dtype", None)
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if isinstance(lattr, NumpyEADtype) and not isinstance(rattr, NumpyEADtype):
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left = left.astype(lattr.numpy_dtype)
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elif isinstance(rattr, NumpyEADtype) and not isinstance(lattr, NumpyEADtype):
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right = right.astype(rattr.numpy_dtype)
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orig_assert_attr_equal(attr, left, right, obj)
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@pytest.fixture(params=["float", "object"])
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def dtype(request):
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return NumpyEADtype(np.dtype(request.param))
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@pytest.fixture
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def allow_in_pandas(monkeypatch):
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"""
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A monkeypatch to tells pandas to let us in.
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By default, passing a NumpyExtensionArray to an index / series / frame
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constructor will unbox that NumpyExtensionArray to an ndarray, and treat
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it as a non-EA column. We don't want people using EAs without
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reason.
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The mechanism for this is a check against ABCNumpyExtensionArray
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in each constructor.
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But, for testing, we need to allow them in pandas. So we patch
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the _typ of NumpyExtensionArray, so that we evade the ABCNumpyExtensionArray
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check.
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"""
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with monkeypatch.context() as m:
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m.setattr(NumpyExtensionArray, "_typ", "extension")
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m.setattr(tm.asserters, "assert_attr_equal", _assert_attr_equal)
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yield
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@pytest.fixture
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def data(allow_in_pandas, dtype):
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if dtype.numpy_dtype == "object":
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return pd.Series([(i,) for i in range(100)]).array
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return NumpyExtensionArray(np.arange(1, 101, dtype=dtype._dtype))
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@pytest.fixture
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def data_missing(allow_in_pandas, dtype):
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if dtype.numpy_dtype == "object":
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return NumpyExtensionArray(np.array([np.nan, (1,)], dtype=object))
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return NumpyExtensionArray(np.array([np.nan, 1.0]))
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@pytest.fixture
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def na_cmp():
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def cmp(a, b):
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return np.isnan(a) and np.isnan(b)
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return cmp
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@pytest.fixture
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def data_for_sorting(allow_in_pandas, dtype):
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"""Length-3 array with a known sort order.
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This should be three items [B, C, A] with
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A < B < C
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"""
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if dtype.numpy_dtype == "object":
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# Use an empty tuple for first element, then remove,
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# to disable np.array's shape inference.
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return NumpyExtensionArray(np.array([(), (2,), (3,), (1,)], dtype=object)[1:])
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return NumpyExtensionArray(np.array([1, 2, 0]))
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@pytest.fixture
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def data_missing_for_sorting(allow_in_pandas, dtype):
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"""Length-3 array with a known sort order.
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This should be three items [B, NA, A] with
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A < B and NA missing.
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"""
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if dtype.numpy_dtype == "object":
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return NumpyExtensionArray(np.array([(1,), np.nan, (0,)], dtype=object))
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return NumpyExtensionArray(np.array([1, np.nan, 0]))
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@pytest.fixture
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def data_for_grouping(allow_in_pandas, dtype):
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"""Data for factorization, grouping, and unique tests.
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Expected to be like [B, B, NA, NA, A, A, B, C]
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Where A < B < C and NA is missing
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"""
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if dtype.numpy_dtype == "object":
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a, b, c = (1,), (2,), (3,)
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else:
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a, b, c = np.arange(3)
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return NumpyExtensionArray(
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np.array([b, b, np.nan, np.nan, a, a, b, c], dtype=dtype.numpy_dtype)
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)
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@pytest.fixture
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def data_for_twos(dtype):
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if dtype.kind == "O":
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pytest.skip(f"{dtype} is not a numeric dtype")
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arr = np.ones(100) * 2
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return NumpyExtensionArray._from_sequence(arr, dtype=dtype)
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@pytest.fixture
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def skip_numpy_object(dtype, request):
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"""
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Tests for NumpyExtensionArray with nested data. Users typically won't create
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these objects via `pd.array`, but they can show up through `.array`
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on a Series with nested data. Many of the base tests fail, as they aren't
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appropriate for nested data.
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This fixture allows these tests to be skipped when used as a usefixtures
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marker to either an individual test or a test class.
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"""
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if dtype == "object":
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mark = pytest.mark.xfail(reason="Fails for object dtype")
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request.applymarker(mark)
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skip_nested = pytest.mark.usefixtures("skip_numpy_object")
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class TestNumpyExtensionArray(base.ExtensionTests):
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@pytest.mark.skip(reason="We don't register our dtype")
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# We don't want to register. This test should probably be split in two.
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def test_from_dtype(self, data):
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pass
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@skip_nested
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def test_series_constructor_scalar_with_index(self, data, dtype):
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# ValueError: Length of passed values is 1, index implies 3.
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super().test_series_constructor_scalar_with_index(data, dtype)
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def test_check_dtype(self, data, request, using_infer_string):
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if data.dtype.numpy_dtype == "object":
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request.applymarker(
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pytest.mark.xfail(
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reason=f"NumpyExtensionArray expectedly clashes with a "
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f"NumPy name: {data.dtype.numpy_dtype}"
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)
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)
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super().test_check_dtype(data)
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def test_is_not_object_type(self, dtype, request):
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if dtype.numpy_dtype == "object":
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# Different from BaseDtypeTests.test_is_not_object_type
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# because NumpyEADtype(object) is an object type
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assert is_object_dtype(dtype)
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else:
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super().test_is_not_object_type(dtype)
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@skip_nested
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def test_getitem_scalar(self, data):
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# AssertionError
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super().test_getitem_scalar(data)
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@skip_nested
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def test_shift_fill_value(self, data):
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# np.array shape inference. Shift implementation fails.
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super().test_shift_fill_value(data)
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@skip_nested
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def test_fillna_copy_frame(self, data_missing):
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# The "scalar" for this array isn't a scalar.
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super().test_fillna_copy_frame(data_missing)
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@skip_nested
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def test_fillna_copy_series(self, data_missing):
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# The "scalar" for this array isn't a scalar.
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super().test_fillna_copy_series(data_missing)
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@skip_nested
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def test_searchsorted(self, data_for_sorting, as_series):
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# TODO: NumpyExtensionArray.searchsorted calls ndarray.searchsorted which
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# isn't quite what we want in nested data cases. Instead we need to
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# adapt something like libindex._bin_search.
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super().test_searchsorted(data_for_sorting, as_series)
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@pytest.mark.xfail(reason="NumpyExtensionArray.diff may fail on dtype")
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def test_diff(self, data, periods):
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return super().test_diff(data, periods)
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def test_insert(self, data, request):
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if data.dtype.numpy_dtype == object:
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mark = pytest.mark.xfail(reason="Dimension mismatch in np.concatenate")
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request.applymarker(mark)
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super().test_insert(data)
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@skip_nested
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def test_insert_invalid(self, data, invalid_scalar):
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# NumpyExtensionArray[object] can hold anything, so skip
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super().test_insert_invalid(data, invalid_scalar)
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divmod_exc = None
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series_scalar_exc = None
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frame_scalar_exc = None
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series_array_exc = None
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def test_divmod(self, data):
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divmod_exc = None
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if data.dtype.kind == "O":
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divmod_exc = TypeError
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self.divmod_exc = divmod_exc
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super().test_divmod(data)
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def test_divmod_series_array(self, data):
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ser = pd.Series(data)
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exc = None
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if data.dtype.kind == "O":
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exc = TypeError
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self.divmod_exc = exc
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self._check_divmod_op(ser, divmod, data)
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def test_arith_series_with_scalar(self, data, all_arithmetic_operators, request):
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opname = all_arithmetic_operators
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series_scalar_exc = None
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if data.dtype.numpy_dtype == object:
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if opname in ["__mul__", "__rmul__"]:
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mark = pytest.mark.xfail(
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reason="the Series.combine step raises but not the Series method."
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)
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request.node.add_marker(mark)
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series_scalar_exc = TypeError
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self.series_scalar_exc = series_scalar_exc
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super().test_arith_series_with_scalar(data, all_arithmetic_operators)
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def test_arith_series_with_array(self, data, all_arithmetic_operators):
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opname = all_arithmetic_operators
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series_array_exc = None
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if data.dtype.numpy_dtype == object and opname not in ["__add__", "__radd__"]:
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series_array_exc = TypeError
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self.series_array_exc = series_array_exc
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super().test_arith_series_with_array(data, all_arithmetic_operators)
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def test_arith_frame_with_scalar(self, data, all_arithmetic_operators, request):
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opname = all_arithmetic_operators
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frame_scalar_exc = None
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if data.dtype.numpy_dtype == object:
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if opname in ["__mul__", "__rmul__"]:
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mark = pytest.mark.xfail(
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reason="the Series.combine step raises but not the Series method."
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)
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request.node.add_marker(mark)
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frame_scalar_exc = TypeError
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self.frame_scalar_exc = frame_scalar_exc
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super().test_arith_frame_with_scalar(data, all_arithmetic_operators)
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def _supports_reduction(self, ser: pd.Series, op_name: str) -> bool:
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if ser.dtype.kind == "O":
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return op_name in ["sum", "min", "max", "any", "all"]
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return True
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def check_reduce(self, ser: pd.Series, op_name: str, skipna: bool):
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res_op = getattr(ser, op_name)
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# avoid coercing int -> float. Just cast to the actual numpy type.
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# error: Item "ExtensionDtype" of "dtype[Any] | ExtensionDtype" has
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# no attribute "numpy_dtype"
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cmp_dtype = ser.dtype.numpy_dtype # type: ignore[union-attr]
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alt = ser.astype(cmp_dtype)
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exp_op = getattr(alt, op_name)
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if op_name == "count":
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result = res_op()
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expected = exp_op()
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else:
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result = res_op(skipna=skipna)
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expected = exp_op(skipna=skipna)
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tm.assert_almost_equal(result, expected)
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@pytest.mark.skip("TODO: tests not written yet")
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@pytest.mark.parametrize("skipna", [True, False])
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def test_reduce_frame(self, data, all_numeric_reductions, skipna):
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pass
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@skip_nested
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def test_fillna_series(self, data_missing):
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# Non-scalar "scalar" values.
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super().test_fillna_series(data_missing)
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@skip_nested
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def test_fillna_frame(self, data_missing):
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# Non-scalar "scalar" values.
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super().test_fillna_frame(data_missing)
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@skip_nested
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def test_setitem_invalid(self, data, invalid_scalar):
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# object dtype can hold anything, so doesn't raise
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super().test_setitem_invalid(data, invalid_scalar)
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@skip_nested
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def test_setitem_sequence_broadcasts(self, data, box_in_series):
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# ValueError: cannot set using a list-like indexer with a different
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# length than the value
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super().test_setitem_sequence_broadcasts(data, box_in_series)
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@skip_nested
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@pytest.mark.parametrize("setter", ["loc", None])
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def test_setitem_mask_broadcast(self, data, setter):
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# ValueError: cannot set using a list-like indexer with a different
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# length than the value
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super().test_setitem_mask_broadcast(data, setter)
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@skip_nested
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def test_setitem_scalar_key_sequence_raise(self, data):
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# Failed: DID NOT RAISE <class 'ValueError'>
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super().test_setitem_scalar_key_sequence_raise(data)
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# TODO: there is some issue with NumpyExtensionArray, therefore,
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# skip the setitem test for now, and fix it later (GH 31446)
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@skip_nested
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@pytest.mark.parametrize(
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"mask",
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[
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np.array([True, True, True, False, False]),
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pd.array([True, True, True, False, False], dtype="boolean"),
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],
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ids=["numpy-array", "boolean-array"],
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)
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def test_setitem_mask(self, data, mask, box_in_series):
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super().test_setitem_mask(data, mask, box_in_series)
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@skip_nested
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@pytest.mark.parametrize(
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"idx",
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[[0, 1, 2], pd.array([0, 1, 2], dtype="Int64"), np.array([0, 1, 2])],
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ids=["list", "integer-array", "numpy-array"],
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)
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def test_setitem_integer_array(self, data, idx, box_in_series):
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super().test_setitem_integer_array(data, idx, box_in_series)
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@pytest.mark.parametrize(
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"idx, box_in_series",
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[
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([0, 1, 2, pd.NA], False),
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pytest.param([0, 1, 2, pd.NA], True, marks=pytest.mark.xfail),
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(pd.array([0, 1, 2, pd.NA], dtype="Int64"), False),
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(pd.array([0, 1, 2, pd.NA], dtype="Int64"), False),
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],
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ids=["list-False", "list-True", "integer-array-False", "integer-array-True"],
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)
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def test_setitem_integer_with_missing_raises(self, data, idx, box_in_series):
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super().test_setitem_integer_with_missing_raises(data, idx, box_in_series)
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@skip_nested
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def test_setitem_slice(self, data, box_in_series):
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super().test_setitem_slice(data, box_in_series)
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@skip_nested
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def test_setitem_loc_iloc_slice(self, data):
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super().test_setitem_loc_iloc_slice(data)
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def test_setitem_with_expansion_dataframe_column(self, data, full_indexer):
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# https://github.com/pandas-dev/pandas/issues/32395
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df = expected = pd.DataFrame({"data": pd.Series(data)})
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result = pd.DataFrame(index=df.index)
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# because result has object dtype, the attempt to do setting inplace
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# is successful, and object dtype is retained
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key = full_indexer(df)
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result.loc[key, "data"] = df["data"]
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# base class method has expected = df; NumpyExtensionArray behaves oddly because
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# we patch _typ for these tests.
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if data.dtype.numpy_dtype != object:
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if not isinstance(key, slice) or key != slice(None):
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expected = pd.DataFrame({"data": data.to_numpy()})
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tm.assert_frame_equal(result, expected, check_column_type=False)
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@pytest.mark.xfail(reason="NumpyEADtype is unpacked")
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def test_index_from_listlike_with_dtype(self, data):
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super().test_index_from_listlike_with_dtype(data)
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@skip_nested
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@pytest.mark.parametrize("engine", ["c", "python"])
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def test_EA_types(self, engine, data, request):
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super().test_EA_types(engine, data, request)
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class Test2DCompat(base.NDArrayBacked2DTests):
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pass
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