from datetime import datetime from decimal import Decimal from io import StringIO import numpy as np import pytest from pandas.errors import PerformanceWarning import pandas as pd from pandas import DataFrame, Index, MultiIndex, Series, Timestamp, date_range, read_csv import pandas._testing as tm from pandas.core.base import SpecificationError import pandas.core.common as com def test_repr(): # GH18203 result = repr(pd.Grouper(key="A", level="B")) expected = "Grouper(key='A', level='B', axis=0, sort=False)" assert result == expected @pytest.mark.parametrize("dtype", ["int64", "int32", "float64", "float32"]) def test_basic(dtype): data = Series(np.arange(9) // 3, index=np.arange(9), dtype=dtype) index = np.arange(9) np.random.shuffle(index) data = data.reindex(index) grouped = data.groupby(lambda x: x // 3) for k, v in grouped: assert len(v) == 3 agged = grouped.aggregate(np.mean) assert agged[1] == 1 tm.assert_series_equal(agged, grouped.agg(np.mean)) # shorthand tm.assert_series_equal(agged, grouped.mean()) tm.assert_series_equal(grouped.agg(np.sum), grouped.sum()) expected = grouped.apply(lambda x: x * x.sum()) transformed = grouped.transform(lambda x: x * x.sum()) assert transformed[7] == 12 tm.assert_series_equal(transformed, expected) value_grouped = data.groupby(data) tm.assert_series_equal( value_grouped.aggregate(np.mean), agged, check_index_type=False ) # complex agg agged = grouped.aggregate([np.mean, np.std]) msg = r"nested renamer is not supported" with pytest.raises(SpecificationError, match=msg): grouped.aggregate({"one": np.mean, "two": np.std}) group_constants = {0: 10, 1: 20, 2: 30} agged = grouped.agg(lambda x: group_constants[x.name] + x.mean()) assert agged[1] == 21 # corner cases msg = "Must produce aggregated value" # exception raised is type Exception with pytest.raises(Exception, match=msg): grouped.aggregate(lambda x: x * 2) def test_groupby_nonobject_dtype(mframe, df_mixed_floats): key = mframe.index.codes[0] grouped = mframe.groupby(key) result = grouped.sum() expected = mframe.groupby(key.astype("O")).sum() tm.assert_frame_equal(result, expected) # GH 3911, mixed frame non-conversion df = df_mixed_floats.copy() df["value"] = range(len(df)) def max_value(group): return group.loc[group["value"].idxmax()] applied = df.groupby("A").apply(max_value) result = applied.dtypes expected = Series( [np.dtype("object")] * 2 + [np.dtype("float64")] * 2 + [np.dtype("int64")], index=["A", "B", "C", "D", "value"], ) tm.assert_series_equal(result, expected) def test_groupby_return_type(): # GH2893, return a reduced type df1 = DataFrame( [ {"val1": 1, "val2": 20}, {"val1": 1, "val2": 19}, {"val1": 2, "val2": 27}, {"val1": 2, "val2": 12}, ] ) def func(dataf): return dataf["val2"] - dataf["val2"].mean() result = df1.groupby("val1", squeeze=True).apply(func) assert isinstance(result, Series) df2 = DataFrame( [ {"val1": 1, "val2": 20}, {"val1": 1, "val2": 19}, {"val1": 1, "val2": 27}, {"val1": 1, "val2": 12}, ] ) def func(dataf): return dataf["val2"] - dataf["val2"].mean() result = df2.groupby("val1", squeeze=True).apply(func) assert isinstance(result, Series) # GH3596, return a consistent type (regression in 0.11 from 0.10.1) df = DataFrame([[1, 1], [1, 1]], columns=["X", "Y"]) result = df.groupby("X", squeeze=False).count() assert isinstance(result, DataFrame) def test_inconsistent_return_type(): # GH5592 # inconsistent return type df = DataFrame( dict( A=["Tiger", "Tiger", "Tiger", "Lamb", "Lamb", "Pony", "Pony"], B=Series(np.arange(7), dtype="int64"), C=date_range("20130101", periods=7), ) ) def f(grp): return grp.iloc[0] expected = df.groupby("A").first()[["B"]] result = df.groupby("A").apply(f)[["B"]] tm.assert_frame_equal(result, expected) def f(grp): if grp.name == "Tiger": return None return grp.iloc[0] result = df.groupby("A").apply(f)[["B"]] e = expected.copy() e.loc["Tiger"] = np.nan tm.assert_frame_equal(result, e) def f(grp): if grp.name == "Pony": return None return grp.iloc[0] result = df.groupby("A").apply(f)[["B"]] e = expected.copy() e.loc["Pony"] = np.nan tm.assert_frame_equal(result, e) # 5592 revisited, with datetimes def f(grp): if grp.name == "Pony": return None return grp.iloc[0] result = df.groupby("A").apply(f)[["C"]] e = df.groupby("A").first()[["C"]] e.loc["Pony"] = pd.NaT tm.assert_frame_equal(result, e) # scalar outputs def f(grp): if grp.name == "Pony": return None return grp.iloc[0].loc["C"] result = df.groupby("A").apply(f) e = df.groupby("A").first()["C"].copy() e.loc["Pony"] = np.nan e.name = None tm.assert_series_equal(result, e) def test_pass_args_kwargs(ts, tsframe): def f(x, q=None, axis=0): return np.percentile(x, q, axis=axis) g = lambda x: np.percentile(x, 80, axis=0) # Series ts_grouped = ts.groupby(lambda x: x.month) agg_result = ts_grouped.agg(np.percentile, 80, axis=0) apply_result = ts_grouped.apply(np.percentile, 80, axis=0) trans_result = ts_grouped.transform(np.percentile, 80, axis=0) agg_expected = ts_grouped.quantile(0.8) trans_expected = ts_grouped.transform(g) tm.assert_series_equal(apply_result, agg_expected) tm.assert_series_equal(agg_result, agg_expected) tm.assert_series_equal(trans_result, trans_expected) agg_result = ts_grouped.agg(f, q=80) apply_result = ts_grouped.apply(f, q=80) trans_result = ts_grouped.transform(f, q=80) tm.assert_series_equal(agg_result, agg_expected) tm.assert_series_equal(apply_result, agg_expected) tm.assert_series_equal(trans_result, trans_expected) # DataFrame df_grouped = tsframe.groupby(lambda x: x.month) agg_result = df_grouped.agg(np.percentile, 80, axis=0) apply_result = df_grouped.apply(DataFrame.quantile, 0.8) expected = df_grouped.quantile(0.8) tm.assert_frame_equal(apply_result, expected, check_names=False) tm.assert_frame_equal(agg_result, expected) agg_result = df_grouped.agg(f, q=80) apply_result = df_grouped.apply(DataFrame.quantile, q=0.8) tm.assert_frame_equal(agg_result, expected) tm.assert_frame_equal(apply_result, expected, check_names=False) def test_len(): df = tm.makeTimeDataFrame() grouped = df.groupby([lambda x: x.year, lambda x: x.month, lambda x: x.day]) assert len(grouped) == len(df) grouped = df.groupby([lambda x: x.year, lambda x: x.month]) expected = len({(x.year, x.month) for x in df.index}) assert len(grouped) == expected # issue 11016 df = pd.DataFrame(dict(a=[np.nan] * 3, b=[1, 2, 3])) assert len(df.groupby(("a"))) == 0 assert len(df.groupby(("b"))) == 3 assert len(df.groupby(["a", "b"])) == 3 def test_basic_regression(): # regression result = Series([1.0 * x for x in list(range(1, 10)) * 10]) data = np.random.random(1100) * 10.0 groupings = Series(data) grouped = result.groupby(groupings) grouped.mean() @pytest.mark.parametrize( "dtype", ["float64", "float32", "int64", "int32", "int16", "int8"] ) def test_with_na_groups(dtype): index = Index(np.arange(10)) values = Series(np.ones(10), index, dtype=dtype) labels = Series( [np.nan, "foo", "bar", "bar", np.nan, np.nan, "bar", "bar", np.nan, "foo"], index=index, ) # this SHOULD be an int grouped = values.groupby(labels) agged = grouped.agg(len) expected = Series([4, 2], index=["bar", "foo"]) tm.assert_series_equal(agged, expected, check_dtype=False) # assert issubclass(agged.dtype.type, np.integer) # explicitly return a float from my function def f(x): return float(len(x)) agged = grouped.agg(f) expected = Series([4, 2], index=["bar", "foo"]) tm.assert_series_equal(agged, expected, check_dtype=False) assert issubclass(agged.dtype.type, np.dtype(dtype).type) def test_indices_concatenation_order(): # GH 2808 def f1(x): y = x[(x.b % 2) == 1] ** 2 if y.empty: multiindex = MultiIndex(levels=[[]] * 2, codes=[[]] * 2, names=["b", "c"]) res = DataFrame(columns=["a"], index=multiindex) return res else: y = y.set_index(["b", "c"]) return y def f2(x): y = x[(x.b % 2) == 1] ** 2 if y.empty: return DataFrame() else: y = y.set_index(["b", "c"]) return y def f3(x): y = x[(x.b % 2) == 1] ** 2 if y.empty: multiindex = MultiIndex( levels=[[]] * 2, codes=[[]] * 2, names=["foo", "bar"] ) res = DataFrame(columns=["a", "b"], index=multiindex) return res else: return y df = DataFrame({"a": [1, 2, 2, 2], "b": range(4), "c": range(5, 9)}) df2 = DataFrame({"a": [3, 2, 2, 2], "b": range(4), "c": range(5, 9)}) # correct result result1 = df.groupby("a").apply(f1) result2 = df2.groupby("a").apply(f1) tm.assert_frame_equal(result1, result2) # should fail (not the same number of levels) msg = "Cannot concat indices that do not have the same number of levels" with pytest.raises(AssertionError, match=msg): df.groupby("a").apply(f2) with pytest.raises(AssertionError, match=msg): df2.groupby("a").apply(f2) # should fail (incorrect shape) with pytest.raises(AssertionError, match=msg): df.groupby("a").apply(f3) with pytest.raises(AssertionError, match=msg): df2.groupby("a").apply(f3) def test_attr_wrapper(ts): grouped = ts.groupby(lambda x: x.weekday()) result = grouped.std() expected = grouped.agg(lambda x: np.std(x, ddof=1)) tm.assert_series_equal(result, expected) # this is pretty cool result = grouped.describe() expected = {name: gp.describe() for name, gp in grouped} expected = DataFrame(expected).T tm.assert_frame_equal(result, expected) # get attribute result = grouped.dtype expected = grouped.agg(lambda x: x.dtype) # make sure raises error msg = "'SeriesGroupBy' object has no attribute 'foo'" with pytest.raises(AttributeError, match=msg): getattr(grouped, "foo") def test_frame_groupby(tsframe): grouped = tsframe.groupby(lambda x: x.weekday()) # aggregate aggregated = grouped.aggregate(np.mean) assert len(aggregated) == 5 assert len(aggregated.columns) == 4 # by string tscopy = tsframe.copy() tscopy["weekday"] = [x.weekday() for x in tscopy.index] stragged = tscopy.groupby("weekday").aggregate(np.mean) tm.assert_frame_equal(stragged, aggregated, check_names=False) # transform grouped = tsframe.head(30).groupby(lambda x: x.weekday()) transformed = grouped.transform(lambda x: x - x.mean()) assert len(transformed) == 30 assert len(transformed.columns) == 4 # transform propagate transformed = grouped.transform(lambda x: x.mean()) for name, group in grouped: mean = group.mean() for idx in group.index: tm.assert_series_equal(transformed.xs(idx), mean, check_names=False) # iterate for weekday, group in grouped: assert group.index[0].weekday() == weekday # groups / group_indices groups = grouped.groups indices = grouped.indices for k, v in groups.items(): samething = tsframe.index.take(indices[k]) assert (samething == v).all() def test_frame_groupby_columns(tsframe): mapping = {"A": 0, "B": 0, "C": 1, "D": 1} grouped = tsframe.groupby(mapping, axis=1) # aggregate aggregated = grouped.aggregate(np.mean) assert len(aggregated) == len(tsframe) assert len(aggregated.columns) == 2 # transform tf = lambda x: x - x.mean() groupedT = tsframe.T.groupby(mapping, axis=0) tm.assert_frame_equal(groupedT.transform(tf).T, grouped.transform(tf)) # iterate for k, v in grouped: assert len(v.columns) == 2 def test_frame_set_name_single(df): grouped = df.groupby("A") result = grouped.mean() assert result.index.name == "A" result = df.groupby("A", as_index=False).mean() assert result.index.name != "A" result = grouped.agg(np.mean) assert result.index.name == "A" result = grouped.agg({"C": np.mean, "D": np.std}) assert result.index.name == "A" result = grouped["C"].mean() assert result.index.name == "A" result = grouped["C"].agg(np.mean) assert result.index.name == "A" result = grouped["C"].agg([np.mean, np.std]) assert result.index.name == "A" msg = r"nested renamer is not supported" with pytest.raises(SpecificationError, match=msg): grouped["C"].agg({"foo": np.mean, "bar": np.std}) def test_multi_func(df): col1 = df["A"] col2 = df["B"] grouped = df.groupby([col1.get, col2.get]) agged = grouped.mean() expected = df.groupby(["A", "B"]).mean() # TODO groupby get drops names tm.assert_frame_equal( agged.loc[:, ["C", "D"]], expected.loc[:, ["C", "D"]], check_names=False ) # some "groups" with no data df = DataFrame( { "v1": np.random.randn(6), "v2": np.random.randn(6), "k1": np.array(["b", "b", "b", "a", "a", "a"]), "k2": np.array(["1", "1", "1", "2", "2", "2"]), }, index=["one", "two", "three", "four", "five", "six"], ) # only verify that it works for now grouped = df.groupby(["k1", "k2"]) grouped.agg(np.sum) def test_multi_key_multiple_functions(df): grouped = df.groupby(["A", "B"])["C"] agged = grouped.agg([np.mean, np.std]) expected = DataFrame({"mean": grouped.agg(np.mean), "std": grouped.agg(np.std)}) tm.assert_frame_equal(agged, expected) def test_frame_multi_key_function_list(): data = DataFrame( { "A": [ "foo", "foo", "foo", "foo", "bar", "bar", "bar", "bar", "foo", "foo", "foo", ], "B": [ "one", "one", "one", "two", "one", "one", "one", "two", "two", "two", "one", ], "C": [ "dull", "dull", "shiny", "dull", "dull", "shiny", "shiny", "dull", "shiny", "shiny", "shiny", ], "D": np.random.randn(11), "E": np.random.randn(11), "F": np.random.randn(11), } ) grouped = data.groupby(["A", "B"]) funcs = [np.mean, np.std] agged = grouped.agg(funcs) expected = pd.concat( [grouped["D"].agg(funcs), grouped["E"].agg(funcs), grouped["F"].agg(funcs)], keys=["D", "E", "F"], axis=1, ) assert isinstance(agged.index, MultiIndex) assert isinstance(expected.index, MultiIndex) tm.assert_frame_equal(agged, expected) @pytest.mark.parametrize("op", [lambda x: x.sum(), lambda x: x.mean()]) def test_groupby_multiple_columns(df, op): data = df grouped = data.groupby(["A", "B"]) result1 = op(grouped) keys = [] values = [] for n1, gp1 in data.groupby("A"): for n2, gp2 in gp1.groupby("B"): keys.append((n1, n2)) values.append(op(gp2.loc[:, ["C", "D"]])) mi = MultiIndex.from_tuples(keys, names=["A", "B"]) expected = pd.concat(values, axis=1).T expected.index = mi # a little bit crude for col in ["C", "D"]: result_col = op(grouped[col]) pivoted = result1[col] exp = expected[col] tm.assert_series_equal(result_col, exp) tm.assert_series_equal(pivoted, exp) # test single series works the same result = data["C"].groupby([data["A"], data["B"]]).mean() expected = data.groupby(["A", "B"]).mean()["C"] tm.assert_series_equal(result, expected) def test_as_index_select_column(): # GH 5764 df = pd.DataFrame([[1, 2], [1, 4], [5, 6]], columns=["A", "B"]) result = df.groupby("A", as_index=False)["B"].get_group(1) expected = pd.Series([2, 4], name="B") tm.assert_series_equal(result, expected) result = df.groupby("A", as_index=False)["B"].apply(lambda x: x.cumsum()) expected = pd.Series( [2, 6, 6], name="B", index=pd.MultiIndex.from_tuples([(0, 0), (0, 1), (1, 2)]) ) tm.assert_series_equal(result, expected) def test_groupby_as_index_agg(df): grouped = df.groupby("A", as_index=False) # single-key result = grouped.agg(np.mean) expected = grouped.mean() tm.assert_frame_equal(result, expected) result2 = grouped.agg({"C": np.mean, "D": np.sum}) expected2 = grouped.mean() expected2["D"] = grouped.sum()["D"] tm.assert_frame_equal(result2, expected2) grouped = df.groupby("A", as_index=True) msg = r"nested renamer is not supported" with pytest.raises(SpecificationError, match=msg): grouped["C"].agg({"Q": np.sum}) # multi-key grouped = df.groupby(["A", "B"], as_index=False) result = grouped.agg(np.mean) expected = grouped.mean() tm.assert_frame_equal(result, expected) result2 = grouped.agg({"C": np.mean, "D": np.sum}) expected2 = grouped.mean() expected2["D"] = grouped.sum()["D"] tm.assert_frame_equal(result2, expected2) expected3 = grouped["C"].sum() expected3 = DataFrame(expected3).rename(columns={"C": "Q"}) result3 = grouped["C"].agg({"Q": np.sum}) tm.assert_frame_equal(result3, expected3) # GH7115 & GH8112 & GH8582 df = DataFrame(np.random.randint(0, 100, (50, 3)), columns=["jim", "joe", "jolie"]) ts = Series(np.random.randint(5, 10, 50), name="jim") gr = df.groupby(ts) gr.nth(0) # invokes set_selection_from_grouper internally tm.assert_frame_equal(gr.apply(sum), df.groupby(ts).apply(sum)) for attr in ["mean", "max", "count", "idxmax", "cumsum", "all"]: gr = df.groupby(ts, as_index=False) left = getattr(gr, attr)() gr = df.groupby(ts.values, as_index=True) right = getattr(gr, attr)().reset_index(drop=True) tm.assert_frame_equal(left, right) def test_as_index_series_return_frame(df): grouped = df.groupby("A", as_index=False) grouped2 = df.groupby(["A", "B"], as_index=False) result = grouped["C"].agg(np.sum) expected = grouped.agg(np.sum).loc[:, ["A", "C"]] assert isinstance(result, DataFrame) tm.assert_frame_equal(result, expected) result2 = grouped2["C"].agg(np.sum) expected2 = grouped2.agg(np.sum).loc[:, ["A", "B", "C"]] assert isinstance(result2, DataFrame) tm.assert_frame_equal(result2, expected2) result = grouped["C"].sum() expected = grouped.sum().loc[:, ["A", "C"]] assert isinstance(result, DataFrame) tm.assert_frame_equal(result, expected) result2 = grouped2["C"].sum() expected2 = grouped2.sum().loc[:, ["A", "B", "C"]] assert isinstance(result2, DataFrame) tm.assert_frame_equal(result2, expected2) def test_as_index_series_column_slice_raises(df): # GH15072 grouped = df.groupby("A", as_index=False) msg = r"Column\(s\) C already selected" with pytest.raises(IndexError, match=msg): grouped["C"].__getitem__("D") def test_groupby_as_index_cython(df): data = df # single-key grouped = data.groupby("A", as_index=False) result = grouped.mean() expected = data.groupby(["A"]).mean() expected.insert(0, "A", expected.index) expected.index = np.arange(len(expected)) tm.assert_frame_equal(result, expected) # multi-key grouped = data.groupby(["A", "B"], as_index=False) result = grouped.mean() expected = data.groupby(["A", "B"]).mean() arrays = list(zip(*expected.index.values)) expected.insert(0, "A", arrays[0]) expected.insert(1, "B", arrays[1]) expected.index = np.arange(len(expected)) tm.assert_frame_equal(result, expected) def test_groupby_as_index_series_scalar(df): grouped = df.groupby(["A", "B"], as_index=False) # GH #421 result = grouped["C"].agg(len) expected = grouped.agg(len).loc[:, ["A", "B", "C"]] tm.assert_frame_equal(result, expected) def test_groupby_as_index_corner(df, ts): msg = "as_index=False only valid with DataFrame" with pytest.raises(TypeError, match=msg): ts.groupby(lambda x: x.weekday(), as_index=False) msg = "as_index=False only valid for axis=0" with pytest.raises(ValueError, match=msg): df.groupby(lambda x: x.lower(), as_index=False, axis=1) def test_groupby_multiple_key(df): df = tm.makeTimeDataFrame() grouped = df.groupby([lambda x: x.year, lambda x: x.month, lambda x: x.day]) agged = grouped.sum() tm.assert_almost_equal(df.values, agged.values) grouped = df.T.groupby( [lambda x: x.year, lambda x: x.month, lambda x: x.day], axis=1 ) agged = grouped.agg(lambda x: x.sum()) tm.assert_index_equal(agged.index, df.columns) tm.assert_almost_equal(df.T.values, agged.values) agged = grouped.agg(lambda x: x.sum()) tm.assert_almost_equal(df.T.values, agged.values) def test_groupby_multi_corner(df): # test that having an all-NA column doesn't mess you up df = df.copy() df["bad"] = np.nan agged = df.groupby(["A", "B"]).mean() expected = df.groupby(["A", "B"]).mean() expected["bad"] = np.nan tm.assert_frame_equal(agged, expected) def test_omit_nuisance(df): grouped = df.groupby("A") result = grouped.mean() expected = df.loc[:, ["A", "C", "D"]].groupby("A").mean() tm.assert_frame_equal(result, expected) agged = grouped.agg(np.mean) exp = grouped.mean() tm.assert_frame_equal(agged, exp) df = df.loc[:, ["A", "C", "D"]] df["E"] = datetime.now() grouped = df.groupby("A") result = grouped.agg(np.sum) expected = grouped.sum() tm.assert_frame_equal(result, expected) # won't work with axis = 1 grouped = df.groupby({"A": 0, "C": 0, "D": 1, "E": 1}, axis=1) msg = "reduction operation 'sum' not allowed for this dtype" with pytest.raises(TypeError, match=msg): grouped.agg(lambda x: x.sum(0, numeric_only=False)) def test_omit_nuisance_python_multiple(three_group): grouped = three_group.groupby(["A", "B"]) agged = grouped.agg(np.mean) exp = grouped.mean() tm.assert_frame_equal(agged, exp) def test_empty_groups_corner(mframe): # handle empty groups df = DataFrame( { "k1": np.array(["b", "b", "b", "a", "a", "a"]), "k2": np.array(["1", "1", "1", "2", "2", "2"]), "k3": ["foo", "bar"] * 3, "v1": np.random.randn(6), "v2": np.random.randn(6), } ) grouped = df.groupby(["k1", "k2"]) result = grouped.agg(np.mean) expected = grouped.mean() tm.assert_frame_equal(result, expected) grouped = mframe[3:5].groupby(level=0) agged = grouped.apply(lambda x: x.mean()) agged_A = grouped["A"].apply(np.mean) tm.assert_series_equal(agged["A"], agged_A) assert agged.index.name == "first" def test_nonsense_func(): df = DataFrame([0]) msg = r"unsupported operand type\(s\) for \+: 'int' and 'str'" with pytest.raises(TypeError, match=msg): df.groupby(lambda x: x + "foo") def test_wrap_aggregated_output_multindex(mframe): df = mframe.T df["baz", "two"] = "peekaboo" keys = [np.array([0, 0, 1]), np.array([0, 0, 1])] agged = df.groupby(keys).agg(np.mean) assert isinstance(agged.columns, MultiIndex) def aggfun(ser): if ser.name == ("foo", "one"): raise TypeError else: return ser.sum() agged2 = df.groupby(keys).aggregate(aggfun) assert len(agged2.columns) + 1 == len(df.columns) def test_groupby_level_apply(mframe): result = mframe.groupby(level=0).count() assert result.index.name == "first" result = mframe.groupby(level=1).count() assert result.index.name == "second" result = mframe["A"].groupby(level=0).count() assert result.index.name == "first" def test_groupby_level_mapper(mframe): deleveled = mframe.reset_index() mapper0 = {"foo": 0, "bar": 0, "baz": 1, "qux": 1} mapper1 = {"one": 0, "two": 0, "three": 1} result0 = mframe.groupby(mapper0, level=0).sum() result1 = mframe.groupby(mapper1, level=1).sum() mapped_level0 = np.array([mapper0.get(x) for x in deleveled["first"]]) mapped_level1 = np.array([mapper1.get(x) for x in deleveled["second"]]) expected0 = mframe.groupby(mapped_level0).sum() expected1 = mframe.groupby(mapped_level1).sum() expected0.index.name, expected1.index.name = "first", "second" tm.assert_frame_equal(result0, expected0) tm.assert_frame_equal(result1, expected1) def test_groupby_level_nonmulti(): # GH 1313, GH 13901 s = Series([1, 2, 3, 10, 4, 5, 20, 6], Index([1, 2, 3, 1, 4, 5, 2, 6], name="foo")) expected = Series([11, 22, 3, 4, 5, 6], Index(range(1, 7), name="foo")) result = s.groupby(level=0).sum() tm.assert_series_equal(result, expected) result = s.groupby(level=[0]).sum() tm.assert_series_equal(result, expected) result = s.groupby(level=-1).sum() tm.assert_series_equal(result, expected) result = s.groupby(level=[-1]).sum() tm.assert_series_equal(result, expected) msg = "level > 0 or level < -1 only valid with MultiIndex" with pytest.raises(ValueError, match=msg): s.groupby(level=1) with pytest.raises(ValueError, match=msg): s.groupby(level=-2) msg = "No group keys passed!" with pytest.raises(ValueError, match=msg): s.groupby(level=[]) msg = "multiple levels only valid with MultiIndex" with pytest.raises(ValueError, match=msg): s.groupby(level=[0, 0]) with pytest.raises(ValueError, match=msg): s.groupby(level=[0, 1]) msg = "level > 0 or level < -1 only valid with MultiIndex" with pytest.raises(ValueError, match=msg): s.groupby(level=[1]) def test_groupby_complex(): # GH 12902 a = Series(data=np.arange(4) * (1 + 2j), index=[0, 0, 1, 1]) expected = Series((1 + 2j, 5 + 10j)) result = a.groupby(level=0).sum() tm.assert_series_equal(result, expected) result = a.sum(level=0) tm.assert_series_equal(result, expected) def test_mutate_groups(): # GH3380 df = DataFrame( { "cat1": ["a"] * 8 + ["b"] * 6, "cat2": ["c"] * 2 + ["d"] * 2 + ["e"] * 2 + ["f"] * 2 + ["c"] * 2 + ["d"] * 2 + ["e"] * 2, "cat3": [f"g{x}" for x in range(1, 15)], "val": np.random.randint(100, size=14), } ) def f_copy(x): x = x.copy() x["rank"] = x.val.rank(method="min") return x.groupby("cat2")["rank"].min() def f_no_copy(x): x["rank"] = x.val.rank(method="min") return x.groupby("cat2")["rank"].min() grpby_copy = df.groupby("cat1").apply(f_copy) grpby_no_copy = df.groupby("cat1").apply(f_no_copy) tm.assert_series_equal(grpby_copy, grpby_no_copy) def test_no_mutate_but_looks_like(): # GH 8467 # first show's mutation indicator # second does not, but should yield the same results df = DataFrame({"key": [1, 1, 1, 2, 2, 2, 3, 3, 3], "value": range(9)}) result1 = df.groupby("key", group_keys=True).apply(lambda x: x[:].key) result2 = df.groupby("key", group_keys=True).apply(lambda x: x.key) tm.assert_series_equal(result1, result2) def test_groupby_series_indexed_differently(): s1 = Series( [5.0, -9.0, 4.0, 100.0, -5.0, 55.0, 6.7], index=Index(["a", "b", "c", "d", "e", "f", "g"]), ) s2 = Series( [1.0, 1.0, 4.0, 5.0, 5.0, 7.0], index=Index(["a", "b", "d", "f", "g", "h"]) ) grouped = s1.groupby(s2) agged = grouped.mean() exp = s1.groupby(s2.reindex(s1.index).get).mean() tm.assert_series_equal(agged, exp) def test_groupby_with_hier_columns(): tuples = list( zip( *[ ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"], ["one", "two", "one", "two", "one", "two", "one", "two"], ] ) ) index = MultiIndex.from_tuples(tuples) columns = MultiIndex.from_tuples( [("A", "cat"), ("B", "dog"), ("B", "cat"), ("A", "dog")] ) df = DataFrame(np.random.randn(8, 4), index=index, columns=columns) result = df.groupby(level=0).mean() tm.assert_index_equal(result.columns, columns) result = df.groupby(level=0, axis=1).mean() tm.assert_index_equal(result.index, df.index) result = df.groupby(level=0).agg(np.mean) tm.assert_index_equal(result.columns, columns) result = df.groupby(level=0).apply(lambda x: x.mean()) tm.assert_index_equal(result.columns, columns) result = df.groupby(level=0, axis=1).agg(lambda x: x.mean(1)) tm.assert_index_equal(result.columns, Index(["A", "B"])) tm.assert_index_equal(result.index, df.index) # add a nuisance column sorted_columns, _ = columns.sortlevel(0) df["A", "foo"] = "bar" result = df.groupby(level=0).mean() tm.assert_index_equal(result.columns, df.columns[:-1]) def test_grouping_ndarray(df): grouped = df.groupby(df["A"].values) result = grouped.sum() expected = df.groupby("A").sum() tm.assert_frame_equal( result, expected, check_names=False ) # Note: no names when grouping by value def test_groupby_wrong_multi_labels(): data = """index,foo,bar,baz,spam,data 0,foo1,bar1,baz1,spam2,20 1,foo1,bar2,baz1,spam3,30 2,foo2,bar2,baz1,spam2,40 3,foo1,bar1,baz2,spam1,50 4,foo3,bar1,baz2,spam1,60""" data = read_csv(StringIO(data), index_col=0) grouped = data.groupby(["foo", "bar", "baz", "spam"]) result = grouped.agg(np.mean) expected = grouped.mean() tm.assert_frame_equal(result, expected) def test_groupby_series_with_name(df): result = df.groupby(df["A"]).mean() result2 = df.groupby(df["A"], as_index=False).mean() assert result.index.name == "A" assert "A" in result2 result = df.groupby([df["A"], df["B"]]).mean() result2 = df.groupby([df["A"], df["B"]], as_index=False).mean() assert result.index.names == ("A", "B") assert "A" in result2 assert "B" in result2 def test_seriesgroupby_name_attr(df): # GH 6265 result = df.groupby("A")["C"] assert result.count().name == "C" assert result.mean().name == "C" testFunc = lambda x: np.sum(x) * 2 assert result.agg(testFunc).name == "C" def test_consistency_name(): # GH 12363 df = DataFrame( { "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"], "B": ["one", "one", "two", "two", "two", "two", "one", "two"], "C": np.random.randn(8) + 1.0, "D": np.arange(8), } ) expected = df.groupby(["A"]).B.count() result = df.B.groupby(df.A).count() tm.assert_series_equal(result, expected) def test_groupby_name_propagation(df): # GH 6124 def summarize(df, name=None): return Series({"count": 1, "mean": 2, "omissions": 3}, name=name) def summarize_random_name(df): # Provide a different name for each Series. In this case, groupby # should not attempt to propagate the Series name since they are # inconsistent. return Series({"count": 1, "mean": 2, "omissions": 3}, name=df.iloc[0]["A"]) metrics = df.groupby("A").apply(summarize) assert metrics.columns.name is None metrics = df.groupby("A").apply(summarize, "metrics") assert metrics.columns.name == "metrics" metrics = df.groupby("A").apply(summarize_random_name) assert metrics.columns.name is None def test_groupby_nonstring_columns(): df = DataFrame([np.arange(10) for x in range(10)]) grouped = df.groupby(0) result = grouped.mean() expected = df.groupby(df[0]).mean() tm.assert_frame_equal(result, expected) def test_groupby_mixed_type_columns(): # GH 13432, unorderable types in py3 df = DataFrame([[0, 1, 2]], columns=["A", "B", 0]) expected = DataFrame([[1, 2]], columns=["B", 0], index=Index([0], name="A")) result = df.groupby("A").first() tm.assert_frame_equal(result, expected) result = df.groupby("A").sum() tm.assert_frame_equal(result, expected) # TODO: Ensure warning isn't emitted in the first place @pytest.mark.filterwarnings("ignore:Mean of:RuntimeWarning") def test_cython_grouper_series_bug_noncontig(): arr = np.empty((100, 100)) arr.fill(np.nan) obj = Series(arr[:, 0]) inds = np.tile(range(10), 10) result = obj.groupby(inds).agg(Series.median) assert result.isna().all() def test_series_grouper_noncontig_index(): index = Index(tm.rands_array(10, 100)) values = Series(np.random.randn(50), index=index[::2]) labels = np.random.randint(0, 5, 50) # it works! grouped = values.groupby(labels) # accessing the index elements causes segfault f = lambda x: len(set(map(id, x.index))) grouped.agg(f) def test_convert_objects_leave_decimal_alone(): s = Series(range(5)) labels = np.array(["a", "b", "c", "d", "e"], dtype="O") def convert_fast(x): return Decimal(str(x.mean())) def convert_force_pure(x): # base will be length 0 assert len(x.values.base) > 0 return Decimal(str(x.mean())) grouped = s.groupby(labels) result = grouped.agg(convert_fast) assert result.dtype == np.object_ assert isinstance(result[0], Decimal) result = grouped.agg(convert_force_pure) assert result.dtype == np.object_ assert isinstance(result[0], Decimal) def test_groupby_dtype_inference_empty(): # GH 6733 df = DataFrame({"x": [], "range": np.arange(0, dtype="int64")}) assert df["x"].dtype == np.float64 result = df.groupby("x").first() exp_index = Index([], name="x", dtype=np.float64) expected = DataFrame({"range": Series([], index=exp_index, dtype="int64")}) tm.assert_frame_equal(result, expected, by_blocks=True) def test_groupby_list_infer_array_like(df): result = df.groupby(list(df["A"])).mean() expected = df.groupby(df["A"]).mean() tm.assert_frame_equal(result, expected, check_names=False) with pytest.raises(KeyError, match=r"^'foo'$"): df.groupby(list(df["A"][:-1])) # pathological case of ambiguity df = DataFrame({"foo": [0, 1], "bar": [3, 4], "val": np.random.randn(2)}) result = df.groupby(["foo", "bar"]).mean() expected = df.groupby([df["foo"], df["bar"]]).mean()[["val"]] def test_groupby_keys_same_size_as_index(): # GH 11185 freq = "s" index = pd.date_range( start=pd.Timestamp("2015-09-29T11:34:44-0700"), periods=2, freq=freq ) df = pd.DataFrame([["A", 10], ["B", 15]], columns=["metric", "values"], index=index) result = df.groupby([pd.Grouper(level=0, freq=freq), "metric"]).mean() expected = df.set_index([df.index, "metric"]) tm.assert_frame_equal(result, expected) def test_groupby_one_row(): # GH 11741 msg = r"^'Z'$" df1 = pd.DataFrame(np.random.randn(1, 4), columns=list("ABCD")) with pytest.raises(KeyError, match=msg): df1.groupby("Z") df2 = pd.DataFrame(np.random.randn(2, 4), columns=list("ABCD")) with pytest.raises(KeyError, match=msg): df2.groupby("Z") def test_groupby_nat_exclude(): # GH 6992 df = pd.DataFrame( { "values": np.random.randn(8), "dt": [ np.nan, pd.Timestamp("2013-01-01"), np.nan, pd.Timestamp("2013-02-01"), np.nan, pd.Timestamp("2013-02-01"), np.nan, pd.Timestamp("2013-01-01"), ], "str": [np.nan, "a", np.nan, "a", np.nan, "a", np.nan, "b"], } ) grouped = df.groupby("dt") expected = [pd.Index([1, 7]), pd.Index([3, 5])] keys = sorted(grouped.groups.keys()) assert len(keys) == 2 for k, e in zip(keys, expected): # grouped.groups keys are np.datetime64 with system tz # not to be affected by tz, only compare values tm.assert_index_equal(grouped.groups[k], e) # confirm obj is not filtered tm.assert_frame_equal(grouped.grouper.groupings[0].obj, df) assert grouped.ngroups == 2 expected = { Timestamp("2013-01-01 00:00:00"): np.array([1, 7], dtype=np.int64), Timestamp("2013-02-01 00:00:00"): np.array([3, 5], dtype=np.int64), } for k in grouped.indices: tm.assert_numpy_array_equal(grouped.indices[k], expected[k]) tm.assert_frame_equal(grouped.get_group(Timestamp("2013-01-01")), df.iloc[[1, 7]]) tm.assert_frame_equal(grouped.get_group(Timestamp("2013-02-01")), df.iloc[[3, 5]]) with pytest.raises(KeyError, match=r"^NaT$"): grouped.get_group(pd.NaT) nan_df = DataFrame( {"nan": [np.nan, np.nan, np.nan], "nat": [pd.NaT, pd.NaT, pd.NaT]} ) assert nan_df["nan"].dtype == "float64" assert nan_df["nat"].dtype == "datetime64[ns]" for key in ["nan", "nat"]: grouped = nan_df.groupby(key) assert grouped.groups == {} assert grouped.ngroups == 0 assert grouped.indices == {} with pytest.raises(KeyError, match=r"^nan$"): grouped.get_group(np.nan) with pytest.raises(KeyError, match=r"^NaT$"): grouped.get_group(pd.NaT) def test_groupby_2d_malformed(): d = DataFrame(index=range(2)) d["group"] = ["g1", "g2"] d["zeros"] = [0, 0] d["ones"] = [1, 1] d["label"] = ["l1", "l2"] tmp = d.groupby(["group"]).mean() res_values = np.array([[0, 1], [0, 1]], dtype=np.int64) tm.assert_index_equal(tmp.columns, Index(["zeros", "ones"])) tm.assert_numpy_array_equal(tmp.values, res_values) def test_int32_overflow(): B = np.concatenate((np.arange(10000), np.arange(10000), np.arange(5000))) A = np.arange(25000) df = DataFrame({"A": A, "B": B, "C": A, "D": B, "E": np.random.randn(25000)}) left = df.groupby(["A", "B", "C", "D"]).sum() right = df.groupby(["D", "C", "B", "A"]).sum() assert len(left) == len(right) def test_groupby_sort_multi(): df = DataFrame( { "a": ["foo", "bar", "baz"], "b": [3, 2, 1], "c": [0, 1, 2], "d": np.random.randn(3), } ) tups = [tuple(row) for row in df[["a", "b", "c"]].values] tups = com.asarray_tuplesafe(tups) result = df.groupby(["a", "b", "c"], sort=True).sum() tm.assert_numpy_array_equal(result.index.values, tups[[1, 2, 0]]) tups = [tuple(row) for row in df[["c", "a", "b"]].values] tups = com.asarray_tuplesafe(tups) result = df.groupby(["c", "a", "b"], sort=True).sum() tm.assert_numpy_array_equal(result.index.values, tups) tups = [tuple(x) for x in df[["b", "c", "a"]].values] tups = com.asarray_tuplesafe(tups) result = df.groupby(["b", "c", "a"], sort=True).sum() tm.assert_numpy_array_equal(result.index.values, tups[[2, 1, 0]]) df = DataFrame( {"a": [0, 1, 2, 0, 1, 2], "b": [0, 0, 0, 1, 1, 1], "d": np.random.randn(6)} ) grouped = df.groupby(["a", "b"])["d"] result = grouped.sum() def _check_groupby(df, result, keys, field, f=lambda x: x.sum()): tups = [tuple(row) for row in df[keys].values] tups = com.asarray_tuplesafe(tups) expected = f(df.groupby(tups)[field]) for k, v in expected.items(): assert result[k] == v _check_groupby(df, result, ["a", "b"], "d") def test_dont_clobber_name_column(): df = DataFrame( {"key": ["a", "a", "a", "b", "b", "b"], "name": ["foo", "bar", "baz"] * 2} ) result = df.groupby("key").apply(lambda x: x) tm.assert_frame_equal(result, df) def test_skip_group_keys(): tsf = tm.makeTimeDataFrame() grouped = tsf.groupby(lambda x: x.month, group_keys=False) result = grouped.apply(lambda x: x.sort_values(by="A")[:3]) pieces = [group.sort_values(by="A")[:3] for key, group in grouped] expected = pd.concat(pieces) tm.assert_frame_equal(result, expected) grouped = tsf["A"].groupby(lambda x: x.month, group_keys=False) result = grouped.apply(lambda x: x.sort_values()[:3]) pieces = [group.sort_values()[:3] for key, group in grouped] expected = pd.concat(pieces) tm.assert_series_equal(result, expected) def test_no_nonsense_name(float_frame): # GH #995 s = float_frame["C"].copy() s.name = None result = s.groupby(float_frame["A"]).agg(np.sum) assert result.name is None def test_multifunc_sum_bug(): # GH #1065 x = DataFrame(np.arange(9).reshape(3, 3)) x["test"] = 0 x["fl"] = [1.3, 1.5, 1.6] grouped = x.groupby("test") result = grouped.agg({"fl": "sum", 2: "size"}) assert result["fl"].dtype == np.float64 def test_handle_dict_return_value(df): def f(group): return {"max": group.max(), "min": group.min()} def g(group): return Series({"max": group.max(), "min": group.min()}) result = df.groupby("A")["C"].apply(f) expected = df.groupby("A")["C"].apply(g) assert isinstance(result, Series) tm.assert_series_equal(result, expected) @pytest.mark.parametrize("grouper", ["A", ["A", "B"]]) def test_set_group_name(df, grouper): def f(group): assert group.name is not None return group def freduce(group): assert group.name is not None return group.sum() def foo(x): return freduce(x) grouped = df.groupby(grouper) # make sure all these work grouped.apply(f) grouped.aggregate(freduce) grouped.aggregate({"C": freduce, "D": freduce}) grouped.transform(f) grouped["C"].apply(f) grouped["C"].aggregate(freduce) grouped["C"].aggregate([freduce, foo]) grouped["C"].transform(f) def test_group_name_available_in_inference_pass(): # gh-15062 df = pd.DataFrame({"a": [0, 0, 1, 1, 2, 2], "b": np.arange(6)}) names = [] def f(group): names.append(group.name) return group.copy() df.groupby("a", sort=False, group_keys=False).apply(f) expected_names = [0, 1, 2] assert names == expected_names def test_no_dummy_key_names(df): # see gh-1291 result = df.groupby(df["A"].values).sum() assert result.index.name is None result = df.groupby([df["A"].values, df["B"].values]).sum() assert result.index.names == (None, None) def test_groupby_sort_multiindex_series(): # series multiindex groupby sort argument was not being passed through # _compress_group_index # GH 9444 index = MultiIndex( levels=[[1, 2], [1, 2]], codes=[[0, 0, 0, 0, 1, 1], [1, 1, 0, 0, 0, 0]], names=["a", "b"], ) mseries = Series([0, 1, 2, 3, 4, 5], index=index) index = MultiIndex( levels=[[1, 2], [1, 2]], codes=[[0, 0, 1], [1, 0, 0]], names=["a", "b"] ) mseries_result = Series([0, 2, 4], index=index) result = mseries.groupby(level=["a", "b"], sort=False).first() tm.assert_series_equal(result, mseries_result) result = mseries.groupby(level=["a", "b"], sort=True).first() tm.assert_series_equal(result, mseries_result.sort_index()) def test_groupby_reindex_inside_function(): periods = 1000 ind = date_range(start="2012/1/1", freq="5min", periods=periods) df = DataFrame({"high": np.arange(periods), "low": np.arange(periods)}, index=ind) def agg_before(hour, func, fix=False): """ Run an aggregate func on the subset of data. """ def _func(data): d = data.loc[data.index.map(lambda x: x.hour < 11)].dropna() if fix: data[data.index[0]] if len(d) == 0: return None return func(d) return _func def afunc(data): d = data.select(lambda x: x.hour < 11).dropna() return np.max(d) grouped = df.groupby(lambda x: datetime(x.year, x.month, x.day)) closure_bad = grouped.agg({"high": agg_before(11, np.max)}) closure_good = grouped.agg({"high": agg_before(11, np.max, True)}) tm.assert_frame_equal(closure_bad, closure_good) def test_groupby_multiindex_missing_pair(): # GH9049 df = DataFrame( { "group1": ["a", "a", "a", "b"], "group2": ["c", "c", "d", "c"], "value": [1, 1, 1, 5], } ) df = df.set_index(["group1", "group2"]) df_grouped = df.groupby(level=["group1", "group2"], sort=True) res = df_grouped.agg("sum") idx = MultiIndex.from_tuples( [("a", "c"), ("a", "d"), ("b", "c")], names=["group1", "group2"] ) exp = DataFrame([[2], [1], [5]], index=idx, columns=["value"]) tm.assert_frame_equal(res, exp) def test_groupby_multiindex_not_lexsorted(): # GH 11640 # define the lexsorted version lexsorted_mi = MultiIndex.from_tuples( [("a", ""), ("b1", "c1"), ("b2", "c2")], names=["b", "c"] ) lexsorted_df = DataFrame([[1, 3, 4]], columns=lexsorted_mi) assert lexsorted_df.columns.is_lexsorted() # define the non-lexsorted version not_lexsorted_df = DataFrame( columns=["a", "b", "c", "d"], data=[[1, "b1", "c1", 3], [1, "b2", "c2", 4]] ) not_lexsorted_df = not_lexsorted_df.pivot_table( index="a", columns=["b", "c"], values="d" ) not_lexsorted_df = not_lexsorted_df.reset_index() assert not not_lexsorted_df.columns.is_lexsorted() # compare the results tm.assert_frame_equal(lexsorted_df, not_lexsorted_df) expected = lexsorted_df.groupby("a").mean() with tm.assert_produces_warning(PerformanceWarning): result = not_lexsorted_df.groupby("a").mean() tm.assert_frame_equal(expected, result) # a transforming function should work regardless of sort # GH 14776 df = DataFrame( {"x": ["a", "a", "b", "a"], "y": [1, 1, 2, 2], "z": [1, 2, 3, 4]} ).set_index(["x", "y"]) assert not df.index.is_lexsorted() for level in [0, 1, [0, 1]]: for sort in [False, True]: result = df.groupby(level=level, sort=sort).apply(DataFrame.drop_duplicates) expected = df tm.assert_frame_equal(expected, result) result = ( df.sort_index() .groupby(level=level, sort=sort) .apply(DataFrame.drop_duplicates) ) expected = df.sort_index() tm.assert_frame_equal(expected, result) def test_index_label_overlaps_location(): # checking we don't have any label/location confusion in the # the wake of GH5375 df = DataFrame(list("ABCDE"), index=[2, 0, 2, 1, 1]) g = df.groupby(list("ababb")) actual = g.filter(lambda x: len(x) > 2) expected = df.iloc[[1, 3, 4]] tm.assert_frame_equal(actual, expected) ser = df[0] g = ser.groupby(list("ababb")) actual = g.filter(lambda x: len(x) > 2) expected = ser.take([1, 3, 4]) tm.assert_series_equal(actual, expected) # ... and again, with a generic Index of floats df.index = df.index.astype(float) g = df.groupby(list("ababb")) actual = g.filter(lambda x: len(x) > 2) expected = df.iloc[[1, 3, 4]] tm.assert_frame_equal(actual, expected) ser = df[0] g = ser.groupby(list("ababb")) actual = g.filter(lambda x: len(x) > 2) expected = ser.take([1, 3, 4]) tm.assert_series_equal(actual, expected) def test_transform_doesnt_clobber_ints(): # GH 7972 n = 6 x = np.arange(n) df = DataFrame({"a": x // 2, "b": 2.0 * x, "c": 3.0 * x}) df2 = DataFrame({"a": x // 2 * 1.0, "b": 2.0 * x, "c": 3.0 * x}) gb = df.groupby("a") result = gb.transform("mean") gb2 = df2.groupby("a") expected = gb2.transform("mean") tm.assert_frame_equal(result, expected) @pytest.mark.parametrize( "sort_column", ["ints", "floats", "strings", ["ints", "floats"], ["ints", "strings"]], ) @pytest.mark.parametrize( "group_column", ["int_groups", "string_groups", ["int_groups", "string_groups"]] ) def test_groupby_preserves_sort(sort_column, group_column): # Test to ensure that groupby always preserves sort order of original # object. Issue #8588 and #9651 df = DataFrame( { "int_groups": [3, 1, 0, 1, 0, 3, 3, 3], "string_groups": ["z", "a", "z", "a", "a", "g", "g", "g"], "ints": [8, 7, 4, 5, 2, 9, 1, 1], "floats": [2.3, 5.3, 6.2, -2.4, 2.2, 1.1, 1.1, 5], "strings": ["z", "d", "a", "e", "word", "word2", "42", "47"], } ) # Try sorting on different types and with different group types df = df.sort_values(by=sort_column) g = df.groupby(group_column) def test_sort(x): tm.assert_frame_equal(x, x.sort_values(by=sort_column)) g.apply(test_sort) def test_group_shift_with_null_key(): # This test is designed to replicate the segfault in issue #13813. n_rows = 1200 # Generate a moderately large dataframe with occasional missing # values in column `B`, and then group by [`A`, `B`]. This should # force `-1` in `labels` array of `g.grouper.group_info` exactly # at those places, where the group-by key is partially missing. df = DataFrame( [(i % 12, i % 3 if i % 3 else np.nan, i) for i in range(n_rows)], dtype=float, columns=["A", "B", "Z"], index=None, ) g = df.groupby(["A", "B"]) expected = DataFrame( [(i + 12 if i % 3 and i < n_rows - 12 else np.nan) for i in range(n_rows)], dtype=float, columns=["Z"], index=None, ) result = g.shift(-1) tm.assert_frame_equal(result, expected) def test_group_shift_with_fill_value(): # GH #24128 n_rows = 24 df = DataFrame( [(i % 12, i % 3, i) for i in range(n_rows)], dtype=float, columns=["A", "B", "Z"], index=None, ) g = df.groupby(["A", "B"]) expected = DataFrame( [(i + 12 if i < n_rows - 12 else 0) for i in range(n_rows)], dtype=float, columns=["Z"], index=None, ) result = g.shift(-1, fill_value=0)[["Z"]] tm.assert_frame_equal(result, expected) def test_group_shift_lose_timezone(): # GH 30134 now_dt = pd.Timestamp.utcnow() df = DataFrame({"a": [1, 1], "date": now_dt}) result = df.groupby("a").shift(0).iloc[0] expected = Series({"date": now_dt}, name=result.name) tm.assert_series_equal(result, expected) def test_pivot_table_values_key_error(): # This test is designed to replicate the error in issue #14938 df = pd.DataFrame( { "eventDate": pd.date_range(datetime.today(), periods=20, freq="M").tolist(), "thename": range(0, 20), } ) df["year"] = df.set_index("eventDate").index.year df["month"] = df.set_index("eventDate").index.month with pytest.raises(KeyError, match="'badname'"): df.reset_index().pivot_table( index="year", columns="month", values="badname", aggfunc="count" ) def test_empty_dataframe_groupby(): # GH8093 df = DataFrame(columns=["A", "B", "C"]) result = df.groupby("A").sum() expected = DataFrame(columns=["B", "C"], dtype=np.float64) expected.index.name = "A" tm.assert_frame_equal(result, expected) def test_tuple_as_grouping(): # https://github.com/pandas-dev/pandas/issues/18314 df = pd.DataFrame( { ("a", "b"): [1, 1, 1, 1], "a": [2, 2, 2, 2], "b": [2, 2, 2, 2], "c": [1, 1, 1, 1], } ) with pytest.raises(KeyError): df[["a", "b", "c"]].groupby(("a", "b")) result = df.groupby(("a", "b"))["c"].sum() expected = pd.Series([4], name="c", index=pd.Index([1], name=("a", "b"))) tm.assert_series_equal(result, expected) def test_tuple_correct_keyerror(): # https://github.com/pandas-dev/pandas/issues/18798 df = pd.DataFrame( 1, index=range(3), columns=pd.MultiIndex.from_product([[1, 2], [3, 4]]) ) with pytest.raises(KeyError, match=r"^\(7, 8\)$"): df.groupby((7, 8)).mean() def test_groupby_agg_ohlc_non_first(): # GH 21716 df = pd.DataFrame( [[1], [1]], columns=["foo"], index=pd.date_range("2018-01-01", periods=2, freq="D"), ) expected = pd.DataFrame( [[1, 1, 1, 1, 1], [1, 1, 1, 1, 1]], columns=pd.MultiIndex.from_tuples( ( ("foo", "sum", "foo"), ("foo", "ohlc", "open"), ("foo", "ohlc", "high"), ("foo", "ohlc", "low"), ("foo", "ohlc", "close"), ) ), index=pd.date_range("2018-01-01", periods=2, freq="D"), ) result = df.groupby(pd.Grouper(freq="D")).agg(["sum", "ohlc"]) tm.assert_frame_equal(result, expected) def test_groupby_multiindex_nat(): # GH 9236 values = [ (pd.NaT, "a"), (datetime(2012, 1, 2), "a"), (datetime(2012, 1, 2), "b"), (datetime(2012, 1, 3), "a"), ] mi = pd.MultiIndex.from_tuples(values, names=["date", None]) ser = pd.Series([3, 2, 2.5, 4], index=mi) result = ser.groupby(level=1).mean() expected = pd.Series([3.0, 2.5], index=["a", "b"]) tm.assert_series_equal(result, expected) def test_groupby_empty_list_raises(): # GH 5289 values = zip(range(10), range(10)) df = DataFrame(values, columns=["apple", "b"]) msg = "Grouper and axis must be same length" with pytest.raises(ValueError, match=msg): df.groupby([[]]) def test_groupby_multiindex_series_keys_len_equal_group_axis(): # GH 25704 index_array = [["x", "x"], ["a", "b"], ["k", "k"]] index_names = ["first", "second", "third"] ri = pd.MultiIndex.from_arrays(index_array, names=index_names) s = pd.Series(data=[1, 2], index=ri) result = s.groupby(["first", "third"]).sum() index_array = [["x"], ["k"]] index_names = ["first", "third"] ei = pd.MultiIndex.from_arrays(index_array, names=index_names) expected = pd.Series([3], index=ei) tm.assert_series_equal(result, expected) def test_groupby_groups_in_BaseGrouper(): # GH 26326 # Test if DataFrame grouped with a pandas.Grouper has correct groups mi = pd.MultiIndex.from_product([["A", "B"], ["C", "D"]], names=["alpha", "beta"]) df = pd.DataFrame({"foo": [1, 2, 1, 2], "bar": [1, 2, 3, 4]}, index=mi) result = df.groupby([pd.Grouper(level="alpha"), "beta"]) expected = df.groupby(["alpha", "beta"]) assert result.groups == expected.groups result = df.groupby(["beta", pd.Grouper(level="alpha")]) expected = df.groupby(["beta", "alpha"]) assert result.groups == expected.groups @pytest.mark.parametrize("group_name", ["x", ["x"]]) def test_groupby_axis_1(group_name): # GH 27614 df = pd.DataFrame( np.arange(12).reshape(3, 4), index=[0, 1, 0], columns=[10, 20, 10, 20] ) df.index.name = "y" df.columns.name = "x" results = df.groupby(group_name, axis=1).sum() expected = df.T.groupby(group_name).sum().T tm.assert_frame_equal(results, expected) # test on MI column iterables = [["bar", "baz", "foo"], ["one", "two"]] mi = pd.MultiIndex.from_product(iterables=iterables, names=["x", "x1"]) df = pd.DataFrame(np.arange(18).reshape(3, 6), index=[0, 1, 0], columns=mi) results = df.groupby(group_name, axis=1).sum() expected = df.T.groupby(group_name).sum().T tm.assert_frame_equal(results, expected) @pytest.mark.parametrize( "op, expected", [ ( "shift", { "time": [ None, None, Timestamp("2019-01-01 12:00:00"), Timestamp("2019-01-01 12:30:00"), None, None, ] }, ), ( "bfill", { "time": [ Timestamp("2019-01-01 12:00:00"), Timestamp("2019-01-01 12:30:00"), Timestamp("2019-01-01 14:00:00"), Timestamp("2019-01-01 14:30:00"), Timestamp("2019-01-01 14:00:00"), Timestamp("2019-01-01 14:30:00"), ] }, ), ( "ffill", { "time": [ Timestamp("2019-01-01 12:00:00"), Timestamp("2019-01-01 12:30:00"), Timestamp("2019-01-01 12:00:00"), Timestamp("2019-01-01 12:30:00"), Timestamp("2019-01-01 14:00:00"), Timestamp("2019-01-01 14:30:00"), ] }, ), ], ) def test_shift_bfill_ffill_tz(tz_naive_fixture, op, expected): # GH19995, GH27992: Check that timezone does not drop in shift, bfill, and ffill tz = tz_naive_fixture data = { "id": ["A", "B", "A", "B", "A", "B"], "time": [ Timestamp("2019-01-01 12:00:00"), Timestamp("2019-01-01 12:30:00"), None, None, Timestamp("2019-01-01 14:00:00"), Timestamp("2019-01-01 14:30:00"), ], } df = DataFrame(data).assign(time=lambda x: x.time.dt.tz_localize(tz)) grouped = df.groupby("id") result = getattr(grouped, op)() expected = DataFrame(expected).assign(time=lambda x: x.time.dt.tz_localize(tz)) tm.assert_frame_equal(result, expected) def test_groupby_only_none_group(): # see GH21624 # this was crashing with "ValueError: Length of passed values is 1, index implies 0" df = pd.DataFrame({"g": [None], "x": 1}) actual = df.groupby("g")["x"].transform("sum") expected = pd.Series([np.nan], name="x") tm.assert_series_equal(actual, expected) def test_groupby_duplicate_index(): # GH#29189 the groupby call here used to raise ser = pd.Series([2, 5, 6, 8], index=[2.0, 4.0, 4.0, 5.0]) gb = ser.groupby(level=0) result = gb.mean() expected = pd.Series([2, 5.5, 8], index=[2.0, 4.0, 5.0]) tm.assert_series_equal(result, expected) @pytest.mark.parametrize("bool_agg_func", ["any", "all"]) def test_bool_aggs_dup_column_labels(bool_agg_func): # 21668 df = pd.DataFrame([[True, True]], columns=["a", "a"]) grp_by = df.groupby([0]) result = getattr(grp_by, bool_agg_func)() expected = df tm.assert_frame_equal(result, expected) @pytest.mark.parametrize( "idx", [pd.Index(["a", "a"]), pd.MultiIndex.from_tuples((("a", "a"), ("a", "a")))] ) def test_dup_labels_output_shape(groupby_func, idx): if groupby_func in {"size", "ngroup", "cumcount"}: pytest.skip("Not applicable") df = pd.DataFrame([[1, 1]], columns=idx) grp_by = df.groupby([0]) args = [] if groupby_func in {"fillna", "nth"}: args.append(0) elif groupby_func == "corrwith": args.append(df) elif groupby_func == "tshift": df.index = [pd.Timestamp("today")] args.extend([1, "D"]) result = getattr(grp_by, groupby_func)(*args) assert result.shape == (1, 2) tm.assert_index_equal(result.columns, idx) def test_groupby_crash_on_nunique(axis): # Fix following 30253 df = pd.DataFrame({("A", "B"): [1, 2], ("A", "C"): [1, 3], ("D", "B"): [0, 0]}) axis_number = df._get_axis_number(axis) if not axis_number: df = df.T result = df.groupby(axis=axis_number, level=0).nunique() expected = pd.DataFrame({"A": [1, 2], "D": [1, 1]}) if not axis_number: expected = expected.T tm.assert_frame_equal(result, expected) def test_groupby_list_level(): # GH 9790 expected = pd.DataFrame(np.arange(0, 9).reshape(3, 3)) result = expected.groupby(level=[0]).mean() tm.assert_frame_equal(result, expected)