import operator import pytest from pandas import Series @pytest.fixture def dtype(): """A fixture providing the ExtensionDtype to validate.""" raise NotImplementedError @pytest.fixture def data(): """ Length-100 array for this type. * data[0] and data[1] should both be non missing * data[0] and data[1] should not be equal """ raise NotImplementedError @pytest.fixture def data_for_twos(): """Length-100 array in which all the elements are two.""" raise NotImplementedError @pytest.fixture def data_missing(): """Length-2 array with [NA, Valid]""" raise NotImplementedError @pytest.fixture(params=["data", "data_missing"]) def all_data(request, data, data_missing): """Parametrized fixture giving 'data' and 'data_missing'""" if request.param == "data": return data elif request.param == "data_missing": return data_missing @pytest.fixture def data_repeated(data): """ Generate many datasets. Parameters ---------- data : fixture implementing `data` Returns ------- Callable[[int], Generator]: A callable that takes a `count` argument and returns a generator yielding `count` datasets. """ def gen(count): for _ in range(count): yield data return gen @pytest.fixture def data_for_sorting(): """ Length-3 array with a known sort order. This should be three items [B, C, A] with A < B < C """ raise NotImplementedError @pytest.fixture def data_missing_for_sorting(): """ Length-3 array with a known sort order. This should be three items [B, NA, A] with A < B and NA missing. """ raise NotImplementedError @pytest.fixture def na_cmp(): """ Binary operator for comparing NA values. Should return a function of two arguments that returns True if both arguments are (scalar) NA for your type. By default, uses ``operator.is_`` """ return operator.is_ @pytest.fixture def na_value(): """The scalar missing value for this type. Default 'None'""" return None @pytest.fixture def data_for_grouping(): """ 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 """ raise NotImplementedError @pytest.fixture(params=[True, False]) def box_in_series(request): """Whether to box the data in a Series""" return request.param @pytest.fixture( params=[ lambda x: 1, lambda x: [1] * len(x), lambda x: Series([1] * len(x)), lambda x: x, ], ids=["scalar", "list", "series", "object"], ) def groupby_apply_op(request): """ Functions to test groupby.apply(). """ return request.param @pytest.fixture(params=[True, False]) def as_frame(request): """ Boolean fixture to support Series and Series.to_frame() comparison testing. """ return request.param @pytest.fixture(params=[True, False]) def as_series(request): """ Boolean fixture to support arr and Series(arr) comparison testing. """ return request.param @pytest.fixture(params=[True, False]) def use_numpy(request): """ Boolean fixture to support comparison testing of ExtensionDtype array and numpy array. """ return request.param @pytest.fixture(params=["ffill", "bfill"]) def fillna_method(request): """ Parametrized fixture giving method parameters 'ffill' and 'bfill' for Series.fillna(method=) testing. """ return request.param @pytest.fixture(params=[True, False]) def as_array(request): """ Boolean fixture to support ExtensionDtype _from_sequence method testing. """ return request.param