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| import builtins
|
| import numpy as np
| import pytest
|
| import pandas as pd
| from pandas import (
| DataFrame,
| Index,
| Series,
| isna,
| )
| import pandas._testing as tm
|
|
| @pytest.mark.parametrize("agg_func", ["any", "all"])
| @pytest.mark.parametrize("skipna", [True, False])
| @pytest.mark.parametrize(
| "vals",
| [
| ["foo", "bar", "baz"],
| ["foo", "", ""],
| ["", "", ""],
| [1, 2, 3],
| [1, 0, 0],
| [0, 0, 0],
| [1.0, 2.0, 3.0],
| [1.0, 0.0, 0.0],
| [0.0, 0.0, 0.0],
| [True, True, True],
| [True, False, False],
| [False, False, False],
| [np.nan, np.nan, np.nan],
| ],
| )
| def test_groupby_bool_aggs(agg_func, skipna, vals):
| df = DataFrame({"key": ["a"] * 3 + ["b"] * 3, "val": vals * 2})
|
| # Figure out expectation using Python builtin
| exp = getattr(builtins, agg_func)(vals)
|
| # edge case for missing data with skipna and 'any'
| if skipna and all(isna(vals)) and agg_func == "any":
| exp = False
|
| exp_df = DataFrame([exp] * 2, columns=["val"], index=Index(["a", "b"], name="key"))
| result = getattr(df.groupby("key"), agg_func)(skipna=skipna)
| tm.assert_frame_equal(result, exp_df)
|
|
| def test_any():
| df = DataFrame(
| [[1, 2, "foo"], [1, np.nan, "bar"], [3, np.nan, "baz"]],
| columns=["A", "B", "C"],
| )
| expected = DataFrame(
| [[True, True], [False, True]], columns=["B", "C"], index=[1, 3]
| )
| expected.index.name = "A"
| result = df.groupby("A").any()
| tm.assert_frame_equal(result, expected)
|
|
| @pytest.mark.parametrize("bool_agg_func", ["any", "all"])
| def test_bool_aggs_dup_column_labels(bool_agg_func):
| # 21668
| df = DataFrame([[True, True]], columns=["a", "a"])
| grp_by = df.groupby([0])
| result = getattr(grp_by, bool_agg_func)()
|
| expected = df.set_axis(np.array([0]))
| tm.assert_frame_equal(result, expected)
|
|
| @pytest.mark.parametrize("bool_agg_func", ["any", "all"])
| @pytest.mark.parametrize("skipna", [True, False])
| @pytest.mark.parametrize(
| "data",
| [
| [False, False, False],
| [True, True, True],
| [pd.NA, pd.NA, pd.NA],
| [False, pd.NA, False],
| [True, pd.NA, True],
| [True, pd.NA, False],
| ],
| )
| def test_masked_kleene_logic(bool_agg_func, skipna, data):
| # GH#37506
| ser = Series(data, dtype="boolean")
|
| # The result should match aggregating on the whole series. Correctness
| # there is verified in test_reductions.py::test_any_all_boolean_kleene_logic
| expected_data = getattr(ser, bool_agg_func)(skipna=skipna)
| expected = Series(expected_data, index=np.array([0]), dtype="boolean")
|
| result = ser.groupby([0, 0, 0]).agg(bool_agg_func, skipna=skipna)
| tm.assert_series_equal(result, expected)
|
|
| @pytest.mark.parametrize(
| "dtype1,dtype2,exp_col1,exp_col2",
| [
| (
| "float",
| "Float64",
| np.array([True], dtype=bool),
| pd.array([pd.NA], dtype="boolean"),
| ),
| (
| "Int64",
| "float",
| pd.array([pd.NA], dtype="boolean"),
| np.array([True], dtype=bool),
| ),
| (
| "Int64",
| "Int64",
| pd.array([pd.NA], dtype="boolean"),
| pd.array([pd.NA], dtype="boolean"),
| ),
| (
| "Float64",
| "boolean",
| pd.array([pd.NA], dtype="boolean"),
| pd.array([pd.NA], dtype="boolean"),
| ),
| ],
| )
| def test_masked_mixed_types(dtype1, dtype2, exp_col1, exp_col2):
| # GH#37506
| data = [1.0, np.nan]
| df = DataFrame(
| {"col1": pd.array(data, dtype=dtype1), "col2": pd.array(data, dtype=dtype2)}
| )
| result = df.groupby([1, 1]).agg("all", skipna=False)
|
| expected = DataFrame({"col1": exp_col1, "col2": exp_col2}, index=np.array([1]))
| tm.assert_frame_equal(result, expected)
|
|
| @pytest.mark.parametrize("bool_agg_func", ["any", "all"])
| @pytest.mark.parametrize("dtype", ["Int64", "Float64", "boolean"])
| @pytest.mark.parametrize("skipna", [True, False])
| def test_masked_bool_aggs_skipna(bool_agg_func, dtype, skipna, frame_or_series):
| # GH#40585
| obj = frame_or_series([pd.NA, 1], dtype=dtype)
| expected_res = True
| if not skipna and bool_agg_func == "all":
| expected_res = pd.NA
| expected = frame_or_series([expected_res], index=np.array([1]), dtype="boolean")
|
| result = obj.groupby([1, 1]).agg(bool_agg_func, skipna=skipna)
| tm.assert_equal(result, expected)
|
|
| @pytest.mark.parametrize(
| "bool_agg_func,data,expected_res",
| [
| ("any", [pd.NA, np.nan], False),
| ("any", [pd.NA, 1, np.nan], True),
| ("all", [pd.NA, pd.NaT], True),
| ("all", [pd.NA, False, pd.NaT], False),
| ],
| )
| def test_object_type_missing_vals(bool_agg_func, data, expected_res, frame_or_series):
| # GH#37501
| obj = frame_or_series(data, dtype=object)
| result = obj.groupby([1] * len(data)).agg(bool_agg_func)
| expected = frame_or_series([expected_res], index=np.array([1]), dtype="bool")
| tm.assert_equal(result, expected)
|
|
| @pytest.mark.parametrize("bool_agg_func", ["any", "all"])
| def test_object_NA_raises_with_skipna_false(bool_agg_func):
| # GH#37501
| ser = Series([pd.NA], dtype=object)
| with pytest.raises(TypeError, match="boolean value of NA is ambiguous"):
| ser.groupby([1]).agg(bool_agg_func, skipna=False)
|
|
| @pytest.mark.parametrize("bool_agg_func", ["any", "all"])
| def test_empty(frame_or_series, bool_agg_func):
| # GH 45231
| kwargs = {"columns": ["a"]} if frame_or_series is DataFrame else {"name": "a"}
| obj = frame_or_series(**kwargs, dtype=object)
| result = getattr(obj.groupby(obj.index), bool_agg_func)()
| expected = frame_or_series(**kwargs, dtype=bool)
| tm.assert_equal(result, expected)
|
|