from datetime import date, datetime from io import StringIO import numpy as np import pytest import pandas as pd from pandas import DataFrame, Index, MultiIndex, Series, bdate_range import pandas._testing as tm def test_apply_issues(): # GH 5788 s = """2011.05.16,00:00,1.40893 2011.05.16,01:00,1.40760 2011.05.16,02:00,1.40750 2011.05.16,03:00,1.40649 2011.05.17,02:00,1.40893 2011.05.17,03:00,1.40760 2011.05.17,04:00,1.40750 2011.05.17,05:00,1.40649 2011.05.18,02:00,1.40893 2011.05.18,03:00,1.40760 2011.05.18,04:00,1.40750 2011.05.18,05:00,1.40649""" df = pd.read_csv( StringIO(s), header=None, names=["date", "time", "value"], parse_dates=[["date", "time"]], ) df = df.set_index("date_time") expected = df.groupby(df.index.date).idxmax() result = df.groupby(df.index.date).apply(lambda x: x.idxmax()) tm.assert_frame_equal(result, expected) # GH 5789 # don't auto coerce dates df = pd.read_csv(StringIO(s), header=None, names=["date", "time", "value"]) exp_idx = Index( ["2011.05.16", "2011.05.17", "2011.05.18"], dtype=object, name="date" ) expected = Series(["00:00", "02:00", "02:00"], index=exp_idx) result = df.groupby("date").apply(lambda x: x["time"][x["value"].idxmax()]) tm.assert_series_equal(result, expected) def test_apply_trivial(): # GH 20066 # trivial apply: ignore input and return a constant dataframe. df = DataFrame( {"key": ["a", "a", "b", "b", "a"], "data": [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=["key", "data"], ) expected = pd.concat([df.iloc[1:], df.iloc[1:]], axis=1, keys=["float64", "object"]) result = df.groupby([str(x) for x in df.dtypes], axis=1).apply( lambda x: df.iloc[1:] ) tm.assert_frame_equal(result, expected) def test_apply_trivial_fail(): # GH 20066 df = DataFrame( {"key": ["a", "a", "b", "b", "a"], "data": [1.0, 2.0, 3.0, 4.0, 5.0]}, columns=["key", "data"], ) expected = pd.concat([df, df], axis=1, keys=["float64", "object"]) result = df.groupby([str(x) for x in df.dtypes], axis=1).apply(lambda x: df) tm.assert_frame_equal(result, expected) def test_fast_apply(): # make sure that fast apply is correctly called # rather than raising any kind of error # otherwise the python path will be callsed # which slows things down N = 1000 labels = np.random.randint(0, 2000, size=N) labels2 = np.random.randint(0, 3, size=N) df = DataFrame( { "key": labels, "key2": labels2, "value1": np.random.randn(N), "value2": ["foo", "bar", "baz", "qux"] * (N // 4), } ) def f(g): return 1 g = df.groupby(["key", "key2"]) grouper = g.grouper splitter = grouper._get_splitter(g._selected_obj, axis=g.axis) group_keys = grouper._get_group_keys() sdata = splitter._get_sorted_data() values, mutated = splitter.fast_apply(f, sdata, group_keys) assert not mutated @pytest.mark.parametrize( "df, group_names", [ (DataFrame({"a": [1, 1, 1, 2, 3], "b": ["a", "a", "a", "b", "c"]}), [1, 2, 3]), (DataFrame({"a": [0, 0, 1, 1], "b": [0, 1, 0, 1]}), [0, 1]), (DataFrame({"a": [1]}), [1]), (DataFrame({"a": [1, 1, 1, 2, 2, 1, 1, 2], "b": range(8)}), [1, 2]), (DataFrame({"a": [1, 2, 3, 1, 2, 3], "two": [4, 5, 6, 7, 8, 9]}), [1, 2, 3]), ( DataFrame( { "a": list("aaabbbcccc"), "B": [3, 4, 3, 6, 5, 2, 1, 9, 5, 4], "C": [4, 0, 2, 2, 2, 7, 8, 6, 2, 8], } ), ["a", "b", "c"], ), (DataFrame([[1, 2, 3], [2, 2, 3]], columns=["a", "b", "c"]), [1, 2]), ], ids=[ "GH2936", "GH7739 & GH10519", "GH10519", "GH2656", "GH12155", "GH20084", "GH21417", ], ) def test_group_apply_once_per_group(df, group_names): # GH2936, GH7739, GH10519, GH2656, GH12155, GH20084, GH21417 # This test should ensure that a function is only evaluated # once per group. Previously the function has been evaluated twice # on the first group to check if the Cython index slider is safe to use # This test ensures that the side effect (append to list) is only triggered # once per group names = [] # cannot parameterize over the functions since they need external # `names` to detect side effects def f_copy(group): # this takes the fast apply path names.append(group.name) return group.copy() def f_nocopy(group): # this takes the slow apply path names.append(group.name) return group def f_scalar(group): # GH7739, GH2656 names.append(group.name) return 0 def f_none(group): # GH10519, GH12155, GH21417 names.append(group.name) return None def f_constant_df(group): # GH2936, GH20084 names.append(group.name) return DataFrame({"a": [1], "b": [1]}) for func in [f_copy, f_nocopy, f_scalar, f_none, f_constant_df]: del names[:] df.groupby("a").apply(func) assert names == group_names def test_group_apply_once_per_group2(capsys): # GH: 31111 # groupby-apply need to execute len(set(group_by_columns)) times expected = 2 # Number of times `apply` should call a function for the current test df = DataFrame( { "group_by_column": [0, 0, 0, 0, 1, 1, 1, 1], "test_column": ["0", "2", "4", "6", "8", "10", "12", "14"], }, index=["0", "2", "4", "6", "8", "10", "12", "14"], ) df.groupby("group_by_column").apply(lambda df: print("function_called")) result = capsys.readouterr().out.count("function_called") # If `groupby` behaves unexpectedly, this test will break assert result == expected @pytest.mark.xfail(reason="GH-34998") def test_apply_fast_slow_identical(): # GH 31613 df = DataFrame({"A": [0, 0, 1], "b": range(3)}) # For simple index structures we check for fast/slow apply using # an identity check on in/output def slow(group): return group def fast(group): return group.copy() fast_df = df.groupby("A").apply(fast) slow_df = df.groupby("A").apply(slow) tm.assert_frame_equal(fast_df, slow_df) @pytest.mark.parametrize( "func", [ lambda x: x, pytest.param(lambda x: x[:], marks=pytest.mark.xfail(reason="GH-34998")), lambda x: x.copy(deep=False), pytest.param( lambda x: x.copy(deep=True), marks=pytest.mark.xfail(reason="GH-34998") ), ], ) def test_groupby_apply_identity_maybecopy_index_identical(func): # GH 14927 # Whether the function returns a copy of the input data or not should not # have an impact on the index structure of the result since this is not # transparent to the user df = DataFrame({"g": [1, 2, 2, 2], "a": [1, 2, 3, 4], "b": [5, 6, 7, 8]}) result = df.groupby("g").apply(func) tm.assert_frame_equal(result, df) def test_apply_with_mixed_dtype(): # GH3480, apply with mixed dtype on axis=1 breaks in 0.11 df = DataFrame( { "foo1": np.random.randn(6), "foo2": ["one", "two", "two", "three", "one", "two"], } ) result = df.apply(lambda x: x, axis=1).dtypes expected = df.dtypes tm.assert_series_equal(result, expected) # GH 3610 incorrect dtype conversion with as_index=False df = DataFrame({"c1": [1, 2, 6, 6, 8]}) df["c2"] = df.c1 / 2.0 result1 = df.groupby("c2").mean().reset_index().c2 result2 = df.groupby("c2", as_index=False).mean().c2 tm.assert_series_equal(result1, result2) def test_groupby_as_index_apply(df): # GH #4648 and #3417 df = DataFrame( { "item_id": ["b", "b", "a", "c", "a", "b"], "user_id": [1, 2, 1, 1, 3, 1], "time": range(6), } ) g_as = df.groupby("user_id", as_index=True) g_not_as = df.groupby("user_id", as_index=False) res_as = g_as.head(2).index res_not_as = g_not_as.head(2).index exp = Index([0, 1, 2, 4]) tm.assert_index_equal(res_as, exp) tm.assert_index_equal(res_not_as, exp) res_as_apply = g_as.apply(lambda x: x.head(2)).index res_not_as_apply = g_not_as.apply(lambda x: x.head(2)).index # apply doesn't maintain the original ordering # changed in GH5610 as the as_index=False returns a MI here exp_not_as_apply = MultiIndex.from_tuples([(0, 0), (0, 2), (1, 1), (2, 4)]) tp = [(1, 0), (1, 2), (2, 1), (3, 4)] exp_as_apply = MultiIndex.from_tuples(tp, names=["user_id", None]) tm.assert_index_equal(res_as_apply, exp_as_apply) tm.assert_index_equal(res_not_as_apply, exp_not_as_apply) ind = Index(list("abcde")) df = DataFrame([[1, 2], [2, 3], [1, 4], [1, 5], [2, 6]], index=ind) res = df.groupby(0, as_index=False).apply(lambda x: x).index tm.assert_index_equal(res, ind) def test_apply_concat_preserve_names(three_group): grouped = three_group.groupby(["A", "B"]) def desc(group): result = group.describe() result.index.name = "stat" return result def desc2(group): result = group.describe() result.index.name = "stat" result = result[: len(group)] # weirdo return result def desc3(group): result = group.describe() # names are different result.index.name = f"stat_{len(group):d}" result = result[: len(group)] # weirdo return result result = grouped.apply(desc) assert result.index.names == ("A", "B", "stat") result2 = grouped.apply(desc2) assert result2.index.names == ("A", "B", "stat") result3 = grouped.apply(desc3) assert result3.index.names == ("A", "B", None) def test_apply_series_to_frame(): def f(piece): with np.errstate(invalid="ignore"): logged = np.log(piece) return DataFrame( {"value": piece, "demeaned": piece - piece.mean(), "logged": logged} ) dr = bdate_range("1/1/2000", periods=100) ts = Series(np.random.randn(100), index=dr) grouped = ts.groupby(lambda x: x.month) result = grouped.apply(f) assert isinstance(result, DataFrame) tm.assert_index_equal(result.index, ts.index) def test_apply_series_yield_constant(df): result = df.groupby(["A", "B"])["C"].apply(len) assert result.index.names[:2] == ("A", "B") def test_apply_frame_yield_constant(df): # GH13568 result = df.groupby(["A", "B"]).apply(len) assert isinstance(result, Series) assert result.name is None result = df.groupby(["A", "B"])[["C", "D"]].apply(len) assert isinstance(result, Series) assert result.name is None def test_apply_frame_to_series(df): grouped = df.groupby(["A", "B"]) result = grouped.apply(len) expected = grouped.count()["C"] tm.assert_index_equal(result.index, expected.index) tm.assert_numpy_array_equal(result.values, expected.values) def test_apply_frame_not_as_index_column_name(df): # GH 35964 - path within _wrap_applied_output not hit by a test grouped = df.groupby(["A", "B"], as_index=False) result = grouped.apply(len) expected = grouped.count().rename(columns={"C": np.nan}).drop(columns="D") # TODO: Use assert_frame_equal when column name is not np.nan (GH 36306) tm.assert_index_equal(result.index, expected.index) tm.assert_numpy_array_equal(result.values, expected.values) def test_apply_frame_concat_series(): def trans(group): return group.groupby("B")["C"].sum().sort_values()[:2] def trans2(group): grouped = group.groupby(df.reindex(group.index)["B"]) return grouped.sum().sort_values()[:2] df = DataFrame( { "A": np.random.randint(0, 5, 1000), "B": np.random.randint(0, 5, 1000), "C": np.random.randn(1000), } ) result = df.groupby("A").apply(trans) exp = df.groupby("A")["C"].apply(trans2) tm.assert_series_equal(result, exp, check_names=False) assert result.name == "C" def test_apply_transform(ts): grouped = ts.groupby(lambda x: x.month) result = grouped.apply(lambda x: x * 2) expected = grouped.transform(lambda x: x * 2) tm.assert_series_equal(result, expected) def test_apply_multikey_corner(tsframe): grouped = tsframe.groupby([lambda x: x.year, lambda x: x.month]) def f(group): return group.sort_values("A")[-5:] result = grouped.apply(f) for key, group in grouped: tm.assert_frame_equal(result.loc[key], f(group)) def test_apply_chunk_view(): # Low level tinkering could be unsafe, make sure not df = DataFrame({"key": [1, 1, 1, 2, 2, 2, 3, 3, 3], "value": range(9)}) result = df.groupby("key", group_keys=False).apply(lambda x: x[:2]) expected = df.take([0, 1, 3, 4, 6, 7]) tm.assert_frame_equal(result, expected) def test_apply_no_name_column_conflict(): df = DataFrame( { "name": [1, 1, 1, 1, 1, 1, 2, 2, 2, 2], "name2": [0, 0, 0, 1, 1, 1, 0, 0, 1, 1], "value": range(9, -1, -1), } ) # it works! #2605 grouped = df.groupby(["name", "name2"]) grouped.apply(lambda x: x.sort_values("value", inplace=True)) def test_apply_typecast_fail(): df = DataFrame( { "d": [1.0, 1.0, 1.0, 2.0, 2.0, 2.0], "c": np.tile(["a", "b", "c"], 2), "v": np.arange(1.0, 7.0), } ) def f(group): v = group["v"] group["v2"] = (v - v.min()) / (v.max() - v.min()) return group result = df.groupby("d").apply(f) expected = df.copy() expected["v2"] = np.tile([0.0, 0.5, 1], 2) tm.assert_frame_equal(result, expected) def test_apply_multiindex_fail(): index = MultiIndex.from_arrays([[0, 0, 0, 1, 1, 1], [1, 2, 3, 1, 2, 3]]) df = DataFrame( { "d": [1.0, 1.0, 1.0, 2.0, 2.0, 2.0], "c": np.tile(["a", "b", "c"], 2), "v": np.arange(1.0, 7.0), }, index=index, ) def f(group): v = group["v"] group["v2"] = (v - v.min()) / (v.max() - v.min()) return group result = df.groupby("d").apply(f) expected = df.copy() expected["v2"] = np.tile([0.0, 0.5, 1], 2) tm.assert_frame_equal(result, expected) def test_apply_corner(tsframe): result = tsframe.groupby(lambda x: x.year).apply(lambda x: x * 2) expected = tsframe * 2 tm.assert_frame_equal(result, expected) def test_apply_without_copy(): # GH 5545 # returning a non-copy in an applied function fails data = DataFrame( { "id_field": [100, 100, 200, 300], "category": ["a", "b", "c", "c"], "value": [1, 2, 3, 4], } ) def filt1(x): if x.shape[0] == 1: return x.copy() else: return x[x.category == "c"] def filt2(x): if x.shape[0] == 1: return x else: return x[x.category == "c"] expected = data.groupby("id_field").apply(filt1) result = data.groupby("id_field").apply(filt2) tm.assert_frame_equal(result, expected) @pytest.mark.parametrize("test_series", [True, False]) def test_apply_with_duplicated_non_sorted_axis(test_series): # GH 30667 df = DataFrame( [["x", "p"], ["x", "p"], ["x", "o"]], columns=["X", "Y"], index=[1, 2, 2] ) if test_series: ser = df.set_index("Y")["X"] result = ser.groupby(level=0).apply(lambda x: x) # not expecting the order to remain the same for duplicated axis result = result.sort_index() expected = ser.sort_index() tm.assert_series_equal(result, expected) else: result = df.groupby("Y").apply(lambda x: x) # not expecting the order to remain the same for duplicated axis result = result.sort_values("Y") expected = df.sort_values("Y") tm.assert_frame_equal(result, expected) def test_apply_reindex_values(): # GH: 26209 # reindexing from a single column of a groupby object with duplicate indices caused # a ValueError (cannot reindex from duplicate axis) in 0.24.2, the problem was # solved in #30679 values = [1, 2, 3, 4] indices = [1, 1, 2, 2] df = DataFrame({"group": ["Group1", "Group2"] * 2, "value": values}, index=indices) expected = Series(values, index=indices, name="value") def reindex_helper(x): return x.reindex(np.arange(x.index.min(), x.index.max() + 1)) # the following group by raised a ValueError result = df.groupby("group").value.apply(reindex_helper) tm.assert_series_equal(expected, result) def test_apply_corner_cases(): # #535, can't use sliding iterator N = 1000 labels = np.random.randint(0, 100, size=N) df = DataFrame( { "key": labels, "value1": np.random.randn(N), "value2": ["foo", "bar", "baz", "qux"] * (N // 4), } ) grouped = df.groupby("key") def f(g): g["value3"] = g["value1"] * 2 return g result = grouped.apply(f) assert "value3" in result def test_apply_numeric_coercion_when_datetime(): # In the past, group-by/apply operations have been over-eager # in converting dtypes to numeric, in the presence of datetime # columns. Various GH issues were filed, the reproductions # for which are here. # GH 15670 df = DataFrame( {"Number": [1, 2], "Date": ["2017-03-02"] * 2, "Str": ["foo", "inf"]} ) expected = df.groupby(["Number"]).apply(lambda x: x.iloc[0]) df.Date = pd.to_datetime(df.Date) result = df.groupby(["Number"]).apply(lambda x: x.iloc[0]) tm.assert_series_equal(result["Str"], expected["Str"]) # GH 15421 df = DataFrame( {"A": [10, 20, 30], "B": ["foo", "3", "4"], "T": [pd.Timestamp("12:31:22")] * 3} ) def get_B(g): return g.iloc[0][["B"]] result = df.groupby("A").apply(get_B)["B"] expected = df.B expected.index = df.A tm.assert_series_equal(result, expected) # GH 14423 def predictions(tool): out = Series(index=["p1", "p2", "useTime"], dtype=object) if "step1" in list(tool.State): out["p1"] = str(tool[tool.State == "step1"].Machine.values[0]) if "step2" in list(tool.State): out["p2"] = str(tool[tool.State == "step2"].Machine.values[0]) out["useTime"] = str(tool[tool.State == "step2"].oTime.values[0]) return out df1 = DataFrame( { "Key": ["B", "B", "A", "A"], "State": ["step1", "step2", "step1", "step2"], "oTime": ["", "2016-09-19 05:24:33", "", "2016-09-19 23:59:04"], "Machine": ["23", "36L", "36R", "36R"], } ) df2 = df1.copy() df2.oTime = pd.to_datetime(df2.oTime) expected = df1.groupby("Key").apply(predictions).p1 result = df2.groupby("Key").apply(predictions).p1 tm.assert_series_equal(expected, result) def test_apply_aggregating_timedelta_and_datetime(): # Regression test for GH 15562 # The following groupby caused ValueErrors and IndexErrors pre 0.20.0 df = DataFrame( { "clientid": ["A", "B", "C"], "datetime": [np.datetime64("2017-02-01 00:00:00")] * 3, } ) df["time_delta_zero"] = df.datetime - df.datetime result = df.groupby("clientid").apply( lambda ddf: Series( {"clientid_age": ddf.time_delta_zero.min(), "date": ddf.datetime.min()} ) ) expected = DataFrame( { "clientid": ["A", "B", "C"], "clientid_age": [np.timedelta64(0, "D")] * 3, "date": [np.datetime64("2017-02-01 00:00:00")] * 3, } ).set_index("clientid") tm.assert_frame_equal(result, expected) def test_apply_groupby_datetimeindex(): # GH 26182 # groupby apply failed on dataframe with DatetimeIndex data = [["A", 10], ["B", 20], ["B", 30], ["C", 40], ["C", 50]] df = DataFrame( data, columns=["Name", "Value"], index=pd.date_range("2020-09-01", "2020-09-05") ) result = df.groupby("Name").sum() expected = DataFrame({"Name": ["A", "B", "C"], "Value": [10, 50, 90]}) expected.set_index("Name", inplace=True) tm.assert_frame_equal(result, expected) def test_time_field_bug(): # Test a fix for the following error related to GH issue 11324 When # non-key fields in a group-by dataframe contained time-based fields # that were not returned by the apply function, an exception would be # raised. df = DataFrame({"a": 1, "b": [datetime.now() for nn in range(10)]}) def func_with_no_date(batch): return Series({"c": 2}) def func_with_date(batch): return Series({"b": datetime(2015, 1, 1), "c": 2}) dfg_no_conversion = df.groupby(by=["a"]).apply(func_with_no_date) dfg_no_conversion_expected = DataFrame({"c": 2}, index=[1]) dfg_no_conversion_expected.index.name = "a" dfg_conversion = df.groupby(by=["a"]).apply(func_with_date) dfg_conversion_expected = DataFrame({"b": datetime(2015, 1, 1), "c": 2}, index=[1]) dfg_conversion_expected.index.name = "a" tm.assert_frame_equal(dfg_no_conversion, dfg_no_conversion_expected) tm.assert_frame_equal(dfg_conversion, dfg_conversion_expected) def test_gb_apply_list_of_unequal_len_arrays(): # GH1738 df = DataFrame( { "group1": ["a", "a", "a", "b", "b", "b", "a", "a", "a", "b", "b", "b"], "group2": ["c", "c", "d", "d", "d", "e", "c", "c", "d", "d", "d", "e"], "weight": [1.1, 2, 3, 4, 5, 6, 2, 4, 6, 8, 1, 2], "value": [7.1, 8, 9, 10, 11, 12, 8, 7, 6, 5, 4, 3], } ) df = df.set_index(["group1", "group2"]) df_grouped = df.groupby(level=["group1", "group2"], sort=True) def noddy(value, weight): out = np.array(value * weight).repeat(3) return out # the kernel function returns arrays of unequal length # pandas sniffs the first one, sees it's an array and not # a list, and assumed the rest are of equal length # and so tries a vstack # don't die df_grouped.apply(lambda x: noddy(x.value, x.weight)) def test_groupby_apply_all_none(): # Tests to make sure no errors if apply function returns all None # values. Issue 9684. test_df = DataFrame({"groups": [0, 0, 1, 1], "random_vars": [8, 7, 4, 5]}) def test_func(x): pass result = test_df.groupby("groups").apply(test_func) expected = DataFrame() tm.assert_frame_equal(result, expected) def test_groupby_apply_none_first(): # GH 12824. Tests if apply returns None first. test_df1 = DataFrame({"groups": [1, 1, 1, 2], "vars": [0, 1, 2, 3]}) test_df2 = DataFrame({"groups": [1, 2, 2, 2], "vars": [0, 1, 2, 3]}) def test_func(x): if x.shape[0] < 2: return None return x.iloc[[0, -1]] result1 = test_df1.groupby("groups").apply(test_func) result2 = test_df2.groupby("groups").apply(test_func) index1 = MultiIndex.from_arrays([[1, 1], [0, 2]], names=["groups", None]) index2 = MultiIndex.from_arrays([[2, 2], [1, 3]], names=["groups", None]) expected1 = DataFrame({"groups": [1, 1], "vars": [0, 2]}, index=index1) expected2 = DataFrame({"groups": [2, 2], "vars": [1, 3]}, index=index2) tm.assert_frame_equal(result1, expected1) tm.assert_frame_equal(result2, expected2) def test_groupby_apply_return_empty_chunk(): # GH 22221: apply filter which returns some empty groups df = DataFrame({"value": [0, 1], "group": ["filled", "empty"]}) groups = df.groupby("group") result = groups.apply(lambda group: group[group.value != 1]["value"]) expected = Series( [0], name="value", index=MultiIndex.from_product( [["empty", "filled"], [0]], names=["group", None] ).drop("empty"), ) tm.assert_series_equal(result, expected) def test_apply_with_mixed_types(): # gh-20949 df = DataFrame({"A": "a a b".split(), "B": [1, 2, 3], "C": [4, 6, 5]}) g = df.groupby("A") result = g.transform(lambda x: x / x.sum()) expected = DataFrame({"B": [1 / 3.0, 2 / 3.0, 1], "C": [0.4, 0.6, 1.0]}) tm.assert_frame_equal(result, expected) result = g.apply(lambda x: x / x.sum()) tm.assert_frame_equal(result, expected) def test_func_returns_object(): # GH 28652 df = DataFrame({"a": [1, 2]}, index=pd.Int64Index([1, 2])) result = df.groupby("a").apply(lambda g: g.index) expected = Series( [pd.Int64Index([1]), pd.Int64Index([2])], index=pd.Int64Index([1, 2], name="a") ) tm.assert_series_equal(result, expected) @pytest.mark.parametrize( "group_column_dtlike", [datetime.today(), datetime.today().date(), datetime.today().time()], ) def test_apply_datetime_issue(group_column_dtlike): # GH-28247 # groupby-apply throws an error if one of the columns in the DataFrame # is a datetime object and the column labels are different from # standard int values in range(len(num_columns)) df = DataFrame({"a": ["foo"], "b": [group_column_dtlike]}) result = df.groupby("a").apply(lambda x: Series(["spam"], index=[42])) expected = DataFrame( ["spam"], Index(["foo"], dtype="object", name="a"), columns=[42] ) tm.assert_frame_equal(result, expected) def test_apply_series_return_dataframe_groups(): # GH 10078 tdf = DataFrame( { "day": { 0: pd.Timestamp("2015-02-24 00:00:00"), 1: pd.Timestamp("2015-02-24 00:00:00"), 2: pd.Timestamp("2015-02-24 00:00:00"), 3: pd.Timestamp("2015-02-24 00:00:00"), 4: pd.Timestamp("2015-02-24 00:00:00"), }, "userAgent": { 0: "some UA string", 1: "some UA string", 2: "some UA string", 3: "another UA string", 4: "some UA string", }, "userId": { 0: "17661101", 1: "17661101", 2: "17661101", 3: "17661101", 4: "17661101", }, } ) def most_common_values(df): return Series({c: s.value_counts().index[0] for c, s in df.iteritems()}) result = tdf.groupby("day").apply(most_common_values)["userId"] expected = Series( ["17661101"], index=pd.DatetimeIndex(["2015-02-24"], name="day"), name="userId" ) tm.assert_series_equal(result, expected) @pytest.mark.parametrize("category", [False, True]) def test_apply_multi_level_name(category): # https://github.com/pandas-dev/pandas/issues/31068 b = [1, 2] * 5 if category: b = pd.Categorical(b, categories=[1, 2, 3]) expected_index = pd.CategoricalIndex([1, 2], categories=[1, 2, 3], name="B") else: expected_index = Index([1, 2], name="B") df = DataFrame( {"A": np.arange(10), "B": b, "C": list(range(10)), "D": list(range(10))} ).set_index(["A", "B"]) result = df.groupby("B").apply(lambda x: x.sum()) expected = DataFrame({"C": [20, 25], "D": [20, 25]}, index=expected_index) tm.assert_frame_equal(result, expected) assert df.index.names == ["A", "B"] def test_groupby_apply_datetime_result_dtypes(): # GH 14849 data = DataFrame.from_records( [ (pd.Timestamp(2016, 1, 1), "red", "dark", 1, "8"), (pd.Timestamp(2015, 1, 1), "green", "stormy", 2, "9"), (pd.Timestamp(2014, 1, 1), "blue", "bright", 3, "10"), (pd.Timestamp(2013, 1, 1), "blue", "calm", 4, "potato"), ], columns=["observation", "color", "mood", "intensity", "score"], ) result = data.groupby("color").apply(lambda g: g.iloc[0]).dtypes expected = Series( [np.dtype("datetime64[ns]"), object, object, np.int64, object], index=["observation", "color", "mood", "intensity", "score"], ) tm.assert_series_equal(result, expected) @pytest.mark.parametrize( "index", [ pd.CategoricalIndex(list("abc")), pd.interval_range(0, 3), pd.period_range("2020", periods=3, freq="D"), pd.MultiIndex.from_tuples([("a", 0), ("a", 1), ("b", 0)]), ], ) def test_apply_index_has_complex_internals(index): # GH 31248 df = DataFrame({"group": [1, 1, 2], "value": [0, 1, 0]}, index=index) result = df.groupby("group").apply(lambda x: x) tm.assert_frame_equal(result, df) @pytest.mark.parametrize( "function, expected_values", [ (lambda x: x.index.to_list(), [[0, 1], [2, 3]]), (lambda x: set(x.index.to_list()), [{0, 1}, {2, 3}]), (lambda x: tuple(x.index.to_list()), [(0, 1), (2, 3)]), ( lambda x: {n: i for (n, i) in enumerate(x.index.to_list())}, [{0: 0, 1: 1}, {0: 2, 1: 3}], ), ( lambda x: [{n: i} for (n, i) in enumerate(x.index.to_list())], [[{0: 0}, {1: 1}], [{0: 2}, {1: 3}]], ), ], ) def test_apply_function_returns_non_pandas_non_scalar(function, expected_values): # GH 31441 df = DataFrame(["A", "A", "B", "B"], columns=["groups"]) result = df.groupby("groups").apply(function) expected = Series(expected_values, index=Index(["A", "B"], name="groups")) tm.assert_series_equal(result, expected) def test_apply_function_returns_numpy_array(): # GH 31605 def fct(group): return group["B"].values.flatten() df = DataFrame({"A": ["a", "a", "b", "none"], "B": [1, 2, 3, np.nan]}) result = df.groupby("A").apply(fct) expected = Series( [[1.0, 2.0], [3.0], [np.nan]], index=Index(["a", "b", "none"], name="A") ) tm.assert_series_equal(result, expected) @pytest.mark.parametrize("function", [lambda gr: gr.index, lambda gr: gr.index + 1 - 1]) def test_apply_function_index_return(function): # GH: 22541 df = DataFrame([1, 2, 2, 2, 1, 2, 3, 1, 3, 1], columns=["id"]) result = df.groupby("id").apply(function) expected = Series( [Index([0, 4, 7, 9]), Index([1, 2, 3, 5]), Index([6, 8])], index=Index([1, 2, 3], name="id"), ) tm.assert_series_equal(result, expected) def test_apply_function_with_indexing_return_column(): # GH: 7002 df = DataFrame( { "foo1": ["one", "two", "two", "three", "one", "two"], "foo2": [1, 2, 4, 4, 5, 6], } ) result = df.groupby("foo1", as_index=False).apply(lambda x: x.mean()) expected = DataFrame({"foo1": ["one", "three", "two"], "foo2": [3.0, 4.0, 4.0]}) tm.assert_frame_equal(result, expected) @pytest.mark.xfail(reason="GH-34998") def test_apply_with_timezones_aware(): # GH: 27212 dates = ["2001-01-01"] * 2 + ["2001-01-02"] * 2 + ["2001-01-03"] * 2 index_no_tz = pd.DatetimeIndex(dates) index_tz = pd.DatetimeIndex(dates, tz="UTC") df1 = DataFrame({"x": list(range(2)) * 3, "y": range(6), "t": index_no_tz}) df2 = DataFrame({"x": list(range(2)) * 3, "y": range(6), "t": index_tz}) result1 = df1.groupby("x", group_keys=False).apply(lambda df: df[["x", "y"]].copy()) result2 = df2.groupby("x", group_keys=False).apply(lambda df: df[["x", "y"]].copy()) tm.assert_frame_equal(result1, result2) def test_apply_is_unchanged_when_other_methods_are_called_first(reduction_func): # GH #34656 # GH #34271 df = DataFrame( { "a": [99, 99, 99, 88, 88, 88], "b": [1, 2, 3, 4, 5, 6], "c": [10, 20, 30, 40, 50, 60], } ) expected = DataFrame( {"a": [264, 297], "b": [15, 6], "c": [150, 60]}, index=Index([88, 99], name="a"), ) # Check output when no other methods are called before .apply() grp = df.groupby(by="a") result = grp.apply(sum) tm.assert_frame_equal(result, expected) # Check output when another method is called before .apply() grp = df.groupby(by="a") args = {"nth": [0], "corrwith": [df]}.get(reduction_func, []) _ = getattr(grp, reduction_func)(*args) result = grp.apply(sum) tm.assert_frame_equal(result, expected) def test_apply_with_date_in_multiindex_does_not_convert_to_timestamp(): # GH 29617 df = DataFrame( { "A": ["a", "a", "a", "b"], "B": [ date(2020, 1, 10), date(2020, 1, 10), date(2020, 2, 10), date(2020, 2, 10), ], "C": [1, 2, 3, 4], }, index=Index([100, 101, 102, 103], name="idx"), ) grp = df.groupby(["A", "B"]) result = grp.apply(lambda x: x.head(1)) expected = df.iloc[[0, 2, 3]] expected = expected.reset_index() expected.index = pd.MultiIndex.from_frame(expected[["A", "B", "idx"]]) expected = expected.drop(columns="idx") tm.assert_frame_equal(result, expected) for val in result.index.levels[1]: assert type(val) is date def test_apply_by_cols_equals_apply_by_rows_transposed(): # GH 16646 # Operating on the columns, or transposing and operating on the rows # should give the same result. There was previously a bug where the # by_rows operation would work fine, but by_cols would throw a ValueError df = DataFrame( np.random.random([6, 4]), columns=pd.MultiIndex.from_product([["A", "B"], [1, 2]]), ) by_rows = df.T.groupby(axis=0, level=0).apply( lambda x: x.droplevel(axis=0, level=0) ) by_cols = df.groupby(axis=1, level=0).apply(lambda x: x.droplevel(axis=1, level=0)) tm.assert_frame_equal(by_cols, by_rows.T) tm.assert_frame_equal(by_cols, df) def test_apply_dropna_with_indexed_same(): # GH 38227 df = DataFrame( { "col": [1, 2, 3, 4, 5], "group": ["a", np.nan, np.nan, "b", "b"], }, index=list("xxyxz"), ) result = df.groupby("group").apply(lambda x: x) expected = DataFrame( { "col": [1, 4, 5], "group": ["a", "b", "b"], }, index=list("xxz"), ) tm.assert_frame_equal(result, expected)