""" This file contains a minimal set of tests for compliance with the extension array interface test suite, and should contain no other tests. The test suite for the full functionality of the array is located in `pandas/tests/arrays/`. The tests in this file are inherited from the BaseExtensionTests, and only minimal tweaks should be applied to get the tests passing (by overwriting a parent method). Additional tests should either be added to one of the BaseExtensionTests classes (if they are relevant for the extension interface for all dtypes), or be added to the array-specific tests in `pandas/tests/arrays/`. Note: we do not bother with base.BaseIndexTests because PandasArray will never be held in an Index. """ import numpy as np import pytest from pandas.core.dtypes.cast import can_hold_element from pandas.core.dtypes.dtypes import ( ExtensionDtype, PandasDtype, ) import pandas as pd import pandas._testing as tm from pandas.api.types import is_object_dtype from pandas.core.arrays.numpy_ import PandasArray from pandas.core.internals import blocks from pandas.tests.extension import base def _can_hold_element_patched(obj, element) -> bool: if isinstance(element, PandasArray): element = element.to_numpy() return can_hold_element(obj, element) orig_assert_attr_equal = tm.assert_attr_equal def _assert_attr_equal(attr: str, left, right, obj: str = "Attributes"): """ patch tm.assert_attr_equal so PandasDtype("object") is closed enough to np.dtype("object") """ if attr == "dtype": lattr = getattr(left, "dtype", None) rattr = getattr(right, "dtype", None) if isinstance(lattr, PandasDtype) and not isinstance(rattr, PandasDtype): left = left.astype(lattr.numpy_dtype) elif isinstance(rattr, PandasDtype) and not isinstance(lattr, PandasDtype): right = right.astype(rattr.numpy_dtype) orig_assert_attr_equal(attr, left, right, obj) @pytest.fixture(params=["float", "object"]) def dtype(request): return PandasDtype(np.dtype(request.param)) @pytest.fixture def allow_in_pandas(monkeypatch): """ A monkeypatch to tells pandas to let us in. By default, passing a PandasArray to an index / series / frame constructor will unbox that PandasArray to an ndarray, and treat it as a non-EA column. We don't want people using EAs without reason. The mechanism for this is a check against ABCPandasArray in each constructor. But, for testing, we need to allow them in pandas. So we patch the _typ of PandasArray, so that we evade the ABCPandasArray check. """ with monkeypatch.context() as m: m.setattr(PandasArray, "_typ", "extension") m.setattr(blocks, "can_hold_element", _can_hold_element_patched) m.setattr(tm.asserters, "assert_attr_equal", _assert_attr_equal) yield @pytest.fixture def data(allow_in_pandas, dtype): if dtype.numpy_dtype == "object": return pd.Series([(i,) for i in range(100)]).array return PandasArray(np.arange(1, 101, dtype=dtype._dtype)) @pytest.fixture def data_missing(allow_in_pandas, dtype): if dtype.numpy_dtype == "object": return PandasArray(np.array([np.nan, (1,)], dtype=object)) return PandasArray(np.array([np.nan, 1.0])) @pytest.fixture def na_value(): return np.nan @pytest.fixture def na_cmp(): def cmp(a, b): return np.isnan(a) and np.isnan(b) return cmp @pytest.fixture def data_for_sorting(allow_in_pandas, dtype): """Length-3 array with a known sort order. This should be three items [B, C, A] with A < B < C """ if dtype.numpy_dtype == "object": # Use an empty tuple for first element, then remove, # to disable np.array's shape inference. return PandasArray(np.array([(), (2,), (3,), (1,)], dtype=object)[1:]) return PandasArray(np.array([1, 2, 0])) @pytest.fixture def data_missing_for_sorting(allow_in_pandas, dtype): """Length-3 array with a known sort order. This should be three items [B, NA, A] with A < B and NA missing. """ if dtype.numpy_dtype == "object": return PandasArray(np.array([(1,), np.nan, (0,)], dtype=object)) return PandasArray(np.array([1, np.nan, 0])) @pytest.fixture def data_for_grouping(allow_in_pandas, dtype): """Data for factorization, grouping, and unique tests. Expected to be like [B, B, NA, NA, A, A, B, C] Where A < B < C and NA is missing """ if dtype.numpy_dtype == "object": a, b, c = (1,), (2,), (3,) else: a, b, c = np.arange(3) return PandasArray( np.array([b, b, np.nan, np.nan, a, a, b, c], dtype=dtype.numpy_dtype) ) @pytest.fixture def skip_numpy_object(dtype, request): """ Tests for PandasArray with nested data. Users typically won't create these objects via `pd.array`, but they can show up through `.array` on a Series with nested data. Many of the base tests fail, as they aren't appropriate for nested data. This fixture allows these tests to be skipped when used as a usefixtures marker to either an individual test or a test class. """ if dtype == "object": mark = pytest.mark.xfail(reason="Fails for object dtype") request.node.add_marker(mark) skip_nested = pytest.mark.usefixtures("skip_numpy_object") class BaseNumPyTests: @classmethod def assert_series_equal(cls, left, right, *args, **kwargs): # base class tests hard-code expected values with numpy dtypes, # whereas we generally want the corresponding PandasDtype if ( isinstance(right, pd.Series) and not isinstance(right.dtype, ExtensionDtype) and isinstance(left.dtype, PandasDtype) ): right = right.astype(PandasDtype(right.dtype)) return tm.assert_series_equal(left, right, *args, **kwargs) class TestCasting(BaseNumPyTests, base.BaseCastingTests): pass class TestConstructors(BaseNumPyTests, base.BaseConstructorsTests): @pytest.mark.skip(reason="We don't register our dtype") # We don't want to register. This test should probably be split in two. def test_from_dtype(self, data): pass @skip_nested def test_series_constructor_scalar_with_index(self, data, dtype): # ValueError: Length of passed values is 1, index implies 3. super().test_series_constructor_scalar_with_index(data, dtype) class TestDtype(BaseNumPyTests, base.BaseDtypeTests): def test_check_dtype(self, data, request): if data.dtype.numpy_dtype == "object": request.node.add_marker( pytest.mark.xfail( reason=f"PandasArray expectedly clashes with a " f"NumPy name: {data.dtype.numpy_dtype}" ) ) super().test_check_dtype(data) def test_is_not_object_type(self, dtype, request): if dtype.numpy_dtype == "object": # Different from BaseDtypeTests.test_is_not_object_type # because PandasDtype(object) is an object type assert is_object_dtype(dtype) else: super().test_is_not_object_type(dtype) class TestGetitem(BaseNumPyTests, base.BaseGetitemTests): @skip_nested def test_getitem_scalar(self, data): # AssertionError super().test_getitem_scalar(data) class TestGroupby(BaseNumPyTests, base.BaseGroupbyTests): pass class TestInterface(BaseNumPyTests, base.BaseInterfaceTests): @skip_nested def test_array_interface(self, data): # NumPy array shape inference super().test_array_interface(data) class TestMethods(BaseNumPyTests, base.BaseMethodsTests): @skip_nested def test_shift_fill_value(self, data): # np.array shape inference. Shift implementation fails. super().test_shift_fill_value(data) @skip_nested def test_fillna_copy_frame(self, data_missing): # The "scalar" for this array isn't a scalar. super().test_fillna_copy_frame(data_missing) @skip_nested def test_fillna_copy_series(self, data_missing): # The "scalar" for this array isn't a scalar. super().test_fillna_copy_series(data_missing) @skip_nested def test_searchsorted(self, data_for_sorting, as_series): # Test setup fails. super().test_searchsorted(data_for_sorting, as_series) @pytest.mark.xfail(reason="PandasArray.diff may fail on dtype") def test_diff(self, data, periods): return super().test_diff(data, periods) def test_insert(self, data, request): if data.dtype.numpy_dtype == object: mark = pytest.mark.xfail(reason="Dimension mismatch in np.concatenate") request.node.add_marker(mark) super().test_insert(data) @skip_nested def test_insert_invalid(self, data, invalid_scalar): # PandasArray[object] can hold anything, so skip super().test_insert_invalid(data, invalid_scalar) class TestArithmetics(BaseNumPyTests, base.BaseArithmeticOpsTests): divmod_exc = None series_scalar_exc = None frame_scalar_exc = None series_array_exc = None @skip_nested def test_divmod(self, data): super().test_divmod(data) @skip_nested def test_divmod_series_array(self, data): ser = pd.Series(data) self._check_divmod_op(ser, divmod, data, exc=None) @skip_nested def test_arith_series_with_scalar(self, data, all_arithmetic_operators): super().test_arith_series_with_scalar(data, all_arithmetic_operators) def test_arith_series_with_array(self, data, all_arithmetic_operators, request): opname = all_arithmetic_operators if data.dtype.numpy_dtype == object and opname not in ["__add__", "__radd__"]: mark = pytest.mark.xfail(reason="Fails for object dtype") request.node.add_marker(mark) super().test_arith_series_with_array(data, all_arithmetic_operators) @skip_nested def test_arith_frame_with_scalar(self, data, all_arithmetic_operators): super().test_arith_frame_with_scalar(data, all_arithmetic_operators) class TestPrinting(BaseNumPyTests, base.BasePrintingTests): pass class TestNumericReduce(BaseNumPyTests, base.BaseNumericReduceTests): def check_reduce(self, s, op_name, skipna): result = getattr(s, op_name)(skipna=skipna) # avoid coercing int -> float. Just cast to the actual numpy type. expected = getattr(s.astype(s.dtype._dtype), op_name)(skipna=skipna) tm.assert_almost_equal(result, expected) @pytest.mark.parametrize("skipna", [True, False]) def test_reduce_series(self, data, all_boolean_reductions, skipna): super().test_reduce_series(data, all_boolean_reductions, skipna) @skip_nested class TestBooleanReduce(BaseNumPyTests, base.BaseBooleanReduceTests): pass class TestMissing(BaseNumPyTests, base.BaseMissingTests): @skip_nested def test_fillna_series(self, data_missing): # Non-scalar "scalar" values. super().test_fillna_series(data_missing) @skip_nested def test_fillna_frame(self, data_missing): # Non-scalar "scalar" values. super().test_fillna_frame(data_missing) class TestReshaping(BaseNumPyTests, base.BaseReshapingTests): @pytest.mark.parametrize( "in_frame", [ True, pytest.param( False, marks=pytest.mark.xfail(reason="PandasArray inconsistently extracted"), ), ], ) def test_concat(self, data, in_frame): super().test_concat(data, in_frame) class TestSetitem(BaseNumPyTests, base.BaseSetitemTests): @skip_nested def test_setitem_invalid(self, data, invalid_scalar): # object dtype can hold anything, so doesn't raise super().test_setitem_invalid(data, invalid_scalar) @skip_nested def test_setitem_sequence_broadcasts(self, data, box_in_series): # ValueError: cannot set using a list-like indexer with a different # length than the value super().test_setitem_sequence_broadcasts(data, box_in_series) @skip_nested @pytest.mark.parametrize("setter", ["loc", None]) def test_setitem_mask_broadcast(self, data, setter): # ValueError: cannot set using a list-like indexer with a different # length than the value super().test_setitem_mask_broadcast(data, setter) @skip_nested def test_setitem_scalar_key_sequence_raise(self, data): # Failed: DID NOT RAISE super().test_setitem_scalar_key_sequence_raise(data) # TODO: there is some issue with PandasArray, therefore, # skip the setitem test for now, and fix it later (GH 31446) @skip_nested @pytest.mark.parametrize( "mask", [ np.array([True, True, True, False, False]), pd.array([True, True, True, False, False], dtype="boolean"), ], ids=["numpy-array", "boolean-array"], ) def test_setitem_mask(self, data, mask, box_in_series): super().test_setitem_mask(data, mask, box_in_series) @skip_nested @pytest.mark.parametrize( "idx", [[0, 1, 2], pd.array([0, 1, 2], dtype="Int64"), np.array([0, 1, 2])], ids=["list", "integer-array", "numpy-array"], ) def test_setitem_integer_array(self, data, idx, box_in_series): super().test_setitem_integer_array(data, idx, box_in_series) @pytest.mark.parametrize( "idx, box_in_series", [ ([0, 1, 2, pd.NA], False), pytest.param([0, 1, 2, pd.NA], True, marks=pytest.mark.xfail), (pd.array([0, 1, 2, pd.NA], dtype="Int64"), False), (pd.array([0, 1, 2, pd.NA], dtype="Int64"), False), ], ids=["list-False", "list-True", "integer-array-False", "integer-array-True"], ) def test_setitem_integer_with_missing_raises(self, data, idx, box_in_series): super().test_setitem_integer_with_missing_raises(data, idx, box_in_series) @skip_nested def test_setitem_slice(self, data, box_in_series): super().test_setitem_slice(data, box_in_series) @skip_nested def test_setitem_loc_iloc_slice(self, data): super().test_setitem_loc_iloc_slice(data) def test_setitem_with_expansion_dataframe_column(self, data, full_indexer): # https://github.com/pandas-dev/pandas/issues/32395 df = expected = pd.DataFrame({"data": pd.Series(data)}) result = pd.DataFrame(index=df.index) # because result has object dtype, the attempt to do setting inplace # is successful, and object dtype is retained key = full_indexer(df) result.loc[key, "data"] = df["data"] # base class method has expected = df; PandasArray behaves oddly because # we patch _typ for these tests. if data.dtype.numpy_dtype != object: if not isinstance(key, slice) or key != slice(None): expected = pd.DataFrame({"data": data.to_numpy()}) self.assert_frame_equal(result, expected) @skip_nested class TestParsing(BaseNumPyTests, base.BaseParsingTests): pass class Test2DCompat(BaseNumPyTests, base.NDArrayBacked2DTests): pass