Example #1
0
    def setup_method(self, method):
        self.bool_index = tm.makeBoolIndex(10, name='a')
        self.int_index = tm.makeIntIndex(10, name='a')
        self.float_index = tm.makeFloatIndex(10, name='a')
        self.dt_index = tm.makeDateIndex(10, name='a')
        self.dt_tz_index = tm.makeDateIndex(10, name='a').tz_localize(
            tz='US/Eastern')
        self.period_index = tm.makePeriodIndex(10, name='a')
        self.string_index = tm.makeStringIndex(10, name='a')
        self.unicode_index = tm.makeUnicodeIndex(10, name='a')

        arr = np.random.randn(10)
        self.bool_series = Series(arr, index=self.bool_index, name='a')
        self.int_series = Series(arr, index=self.int_index, name='a')
        self.float_series = Series(arr, index=self.float_index, name='a')
        self.dt_series = Series(arr, index=self.dt_index, name='a')
        self.dt_tz_series = self.dt_tz_index.to_series(keep_tz=True)
        self.period_series = Series(arr, index=self.period_index, name='a')
        self.string_series = Series(arr, index=self.string_index, name='a')
        self.unicode_series = Series(arr, index=self.unicode_index, name='a')

        types = ['bool', 'int', 'float', 'dt', 'dt_tz', 'period', 'string',
                 'unicode']
        self.indexes = [getattr(self, '{}_index'.format(t)) for t in types]
        self.series = [getattr(self, '{}_series'.format(t)) for t in types]
        self.objs = self.indexes + self.series
Example #2
0
    def setUp(self):

        self.d = {
            "string": tm.makeStringIndex(100),
            "date": tm.makeDateIndex(100),
            "int": tm.makeIntIndex(100),
            "rng": tm.makeRangeIndex(100),
            "float": tm.makeFloatIndex(100),
            "empty": Index([]),
            "tuple": Index(zip(["foo", "bar", "baz"], [1, 2, 3])),
            "period": Index(period_range("2012-1-1", freq="M", periods=3)),
            "date2": Index(date_range("2013-01-1", periods=10)),
            "bdate": Index(bdate_range("2013-01-02", periods=10)),
            "cat": tm.makeCategoricalIndex(100),
        }

        self.mi = {
            "reg":
            MultiIndex.from_tuples(
                [
                    ("bar", "one"),
                    ("baz", "two"),
                    ("foo", "two"),
                    ("qux", "one"),
                    ("qux", "two"),
                ],
                names=["first", "second"],
            )
        }
Example #3
0
    def setup_method(self, method):
        self.bool_index = tm.makeBoolIndex(10, name='a')
        self.int_index = tm.makeIntIndex(10, name='a')
        self.float_index = tm.makeFloatIndex(10, name='a')
        self.dt_index = tm.makeDateIndex(10, name='a')
        self.dt_tz_index = tm.makeDateIndex(
            10, name='a').tz_localize(tz='US/Eastern')
        self.period_index = tm.makePeriodIndex(10, name='a')
        self.string_index = tm.makeStringIndex(10, name='a')
        self.unicode_index = tm.makeUnicodeIndex(10, name='a')

        arr = np.random.randn(10)
        self.int_series = Series(arr, index=self.int_index, name='a')
        self.float_series = Series(arr, index=self.float_index, name='a')
        self.dt_series = Series(arr, index=self.dt_index, name='a')
        self.dt_tz_series = self.dt_tz_index.to_series(keep_tz=True)
        self.period_series = Series(arr, index=self.period_index, name='a')
        self.string_series = Series(arr, index=self.string_index, name='a')

        types = [
            'bool', 'int', 'float', 'dt', 'dt_tz', 'period', 'string',
            'unicode'
        ]
        fmts = [
            "{0}_{1}".format(t, f) for t in types for f in ['index', 'series']
        ]
        self.objs = [
            getattr(self, f) for f in fmts
            if getattr(self, f, None) is not None
        ]
Example #4
0
    def setup_method(self, method):
        super(TestIndex, self).setup_method(method)

        self.d = {
            'string': tm.makeStringIndex(100),
            'date': tm.makeDateIndex(100),
            'int': tm.makeIntIndex(100),
            'rng': tm.makeRangeIndex(100),
            'float': tm.makeFloatIndex(100),
            'empty': Index([]),
            'tuple': Index(zip(['foo', 'bar', 'baz'], [1, 2, 3])),
            'period': Index(period_range('2012-1-1', freq='M', periods=3)),
            'date2': Index(date_range('2013-01-1', periods=10)),
            'bdate': Index(bdate_range('2013-01-02', periods=10)),
            'cat': tm.makeCategoricalIndex(100),
            'interval': tm.makeIntervalIndex(100),
            'timedelta': tm.makeTimedeltaIndex(100, 'H')
        }

        self.mi = {
            'reg': MultiIndex.from_tuples([('bar', 'one'), ('baz', 'two'),
                                           ('foo', 'two'),
                                           ('qux', 'one'), ('qux', 'two')],
                                          names=['first', 'second']),
        }
Example #5
0
    def setUp(self):
        self.bool_index = tm.makeBoolIndex(10, name='a')
        self.int_index = tm.makeIntIndex(10, name='a')
        self.float_index = tm.makeFloatIndex(10, name='a')
        self.dt_index = tm.makeDateIndex(10, name='a')
        self.dt_tz_index = tm.makeDateIndex(10, name='a').tz_localize(
            tz='US/Eastern')
        self.period_index = tm.makePeriodIndex(10, name='a')
        self.string_index = tm.makeStringIndex(10, name='a')
        self.unicode_index = tm.makeUnicodeIndex(10, name='a')

        arr = np.random.randn(10)
        self.int_series = Series(arr, index=self.int_index, name='a')
        self.float_series = Series(arr, index=self.float_index, name='a')
        self.dt_series = Series(arr, index=self.dt_index, name='a')
        self.dt_tz_series = self.dt_tz_index.to_series(keep_tz=True)
        self.period_series = Series(arr, index=self.period_index, name='a')
        self.string_series = Series(arr, index=self.string_index, name='a')

        types = ['bool', 'int', 'float', 'dt', 'dt_tz', 'period', 'string',
                 'unicode']
        fmts = ["{0}_{1}".format(t, f)
                for t in types for f in ['index', 'series']]
        self.objs = [getattr(self, f)
                     for f in fmts if getattr(self, f, None) is not None]
Example #6
0
 def setUp(self):
     self.strIndex = tm.makeStringIndex(100)
     self.dateIndex = tm.makeDateIndex(100)
     self.intIndex = tm.makeIntIndex(100)
     self.floatIndex = tm.makeFloatIndex(100)
     self.empty = Index([])
     self.tuples = Index(zip(["foo", "bar", "baz"], [1, 2, 3]))
Example #7
0
    def setup_method(self, method):
        super().setup_method(method)

        self.d = {
            'string': tm.makeStringIndex(100),
            'date': tm.makeDateIndex(100),
            'int': tm.makeIntIndex(100),
            'rng': tm.makeRangeIndex(100),
            'float': tm.makeFloatIndex(100),
            'empty': Index([]),
            'tuple': Index(zip(['foo', 'bar', 'baz'], [1, 2, 3])),
            'period': Index(period_range('2012-1-1', freq='M', periods=3)),
            'date2': Index(date_range('2013-01-1', periods=10)),
            'bdate': Index(bdate_range('2013-01-02', periods=10)),
            'cat': tm.makeCategoricalIndex(100),
            'interval': tm.makeIntervalIndex(100),
            'timedelta': tm.makeTimedeltaIndex(100, 'H')
        }

        self.mi = {
            'reg':
            MultiIndex.from_tuples([('bar', 'one'), ('baz', 'two'),
                                    ('foo', 'two'), ('qux', 'one'),
                                    ('qux', 'two')],
                                   names=['first', 'second']),
        }
Example #8
0
    def setup_method(self, method):
        self.bool_index = tm.makeBoolIndex(10, name='a')
        self.int_index = tm.makeIntIndex(10, name='a')
        self.float_index = tm.makeFloatIndex(10, name='a')
        self.dt_index = tm.makeDateIndex(10, name='a')
        self.dt_tz_index = tm.makeDateIndex(
            10, name='a').tz_localize(tz='US/Eastern')
        self.period_index = tm.makePeriodIndex(10, name='a')
        self.string_index = tm.makeStringIndex(10, name='a')
        self.unicode_index = tm.makeUnicodeIndex(10, name='a')

        arr = np.random.randn(10)
        self.bool_series = Series(arr, index=self.bool_index, name='a')
        self.int_series = Series(arr, index=self.int_index, name='a')
        self.float_series = Series(arr, index=self.float_index, name='a')
        self.dt_series = Series(arr, index=self.dt_index, name='a')
        self.dt_tz_series = self.dt_tz_index.to_series(keep_tz=True)
        self.period_series = Series(arr, index=self.period_index, name='a')
        self.string_series = Series(arr, index=self.string_index, name='a')
        self.unicode_series = Series(arr, index=self.unicode_index, name='a')

        types = [
            'bool', 'int', 'float', 'dt', 'dt_tz', 'period', 'string',
            'unicode'
        ]
        self.indexes = [getattr(self, '{}_index'.format(t)) for t in types]
        self.series = [getattr(self, '{}_series'.format(t)) for t in types]
        self.objs = self.indexes + self.series
Example #9
0
    def test_invalid_index_types(self):

        # test all index types
        for i in [tm.makeIntIndex(10), tm.makeFloatIndex(10), tm.makePeriodIndex(10)]:
            self.assertRaises(TypeError, lambda: infer_freq(i))

        for i in [tm.makeStringIndex(10), tm.makeUnicodeIndex(10)]:
            self.assertRaises(ValueError, lambda: infer_freq(i))
Example #10
0
    def test_invalid_index_types(self):

        # test all index types
        for i in [tm.makeIntIndex(10), tm.makeFloatIndex(10), tm.makePeriodIndex(10)]:
            self.assertRaises(TypeError, lambda: frequencies.infer_freq(i))

        # GH 10822
        # odd error message on conversions to datetime for unicode
        if not is_platform_windows():
            for i in [tm.makeStringIndex(10), tm.makeUnicodeIndex(10)]:
                self.assertRaises(ValueError, lambda: frequencies.infer_freq(i))
Example #11
0
    def test_invalid_index_types(self):

        # test all index types
        for i in [ tm.makeIntIndex(10),
                   tm.makeFloatIndex(10),
                   tm.makePeriodIndex(10) ]:
            self.assertRaises(TypeError, lambda : infer_freq(i))

        for i in [ tm.makeStringIndex(10),
                   tm.makeUnicodeIndex(10) ]:
            self.assertRaises(ValueError, lambda : infer_freq(i))
Example #12
0
    def test_invalid_index_types(self):

        # test all index types
        for i in [tm.makeIntIndex(10), tm.makeFloatIndex(10),
                  tm.makePeriodIndex(10)]:
            pytest.raises(TypeError, lambda: frequencies.infer_freq(i))

        # GH 10822
        # odd error message on conversions to datetime for unicode
        if not is_platform_windows():
            for i in [tm.makeStringIndex(10), tm.makeUnicodeIndex(10)]:
                pytest.raises(ValueError, lambda: frequencies.infer_freq(i))
Example #13
0
    def setUp(self):
        self.int_index     = tm.makeIntIndex(10)
        self.float_index   = tm.makeFloatIndex(10)
        self.dt_index      = tm.makeDateIndex(10)
        self.period_index  = tm.makePeriodIndex(10)
        self.string_index  = tm.makeStringIndex(10)

        arr = np.random.randn(10)
        self.int_series    = Series(arr, index=self.int_index)
        self.float_series  = Series(arr, index=self.int_index)
        self.dt_series     = Series(arr, index=self.dt_index)
        self.period_series = Series(arr, index=self.period_index)
        self.string_series = Series(arr, index=self.string_index)

        self.objs = [ getattr(self,"{0}_{1}".format(t,f)) for t in ['int','float','dt','period','string'] for f in ['index','series'] ]
Example #14
0
def get_objs():
    indexes = [
        tm.makeBoolIndex(10, name='a'),
        tm.makeIntIndex(10, name='a'),
        tm.makeFloatIndex(10, name='a'),
        tm.makeDateIndex(10, name='a'),
        tm.makeDateIndex(10, name='a').tz_localize(tz='US/Eastern'),
        tm.makePeriodIndex(10, name='a'),
        tm.makeStringIndex(10, name='a'),
        tm.makeUnicodeIndex(10, name='a')
    ]

    arr = np.random.randn(10)
    series = [Series(arr, index=idx, name='a') for idx in indexes]

    objs = indexes + series
    return objs
Example #15
0
def get_objs():
    indexes = [
        tm.makeBoolIndex(10, name="a"),
        tm.makeIntIndex(10, name="a"),
        tm.makeFloatIndex(10, name="a"),
        tm.makeDateIndex(10, name="a"),
        tm.makeDateIndex(10, name="a").tz_localize(tz="US/Eastern"),
        tm.makePeriodIndex(10, name="a"),
        tm.makeStringIndex(10, name="a"),
        tm.makeUnicodeIndex(10, name="a"),
    ]

    arr = np.random.randn(10)
    series = [Series(arr, index=idx, name="a") for idx in indexes]

    objs = indexes + series
    return objs
Example #16
0
    def setUp(self):
        self.int_index = tm.makeIntIndex(10)
        self.float_index = tm.makeFloatIndex(10)
        self.dt_index = tm.makeDateIndex(10)
        self.dt_tz_index = tm.makeDateIndex(10).tz_localize(tz="US/Eastern")
        self.period_index = tm.makePeriodIndex(10)
        self.string_index = tm.makeStringIndex(10)

        arr = np.random.randn(10)
        self.int_series = Series(arr, index=self.int_index)
        self.float_series = Series(arr, index=self.int_index)
        self.dt_series = Series(arr, index=self.dt_index)
        self.dt_tz_series = self.dt_tz_index.to_series(keep_tz=True)
        self.period_series = Series(arr, index=self.period_index)
        self.string_series = Series(arr, index=self.string_index)

        types = ["int", "float", "dt", "dt_tz", "period", "string"]
        self.objs = [getattr(self, "{0}_{1}".format(t, f)) for t in types for f in ["index", "series"]]
Example #17
0
    def setUp(self):
        self.int_index     = tm.makeIntIndex(10)
        self.float_index   = tm.makeFloatIndex(10)
        self.dt_index      = tm.makeDateIndex(10)
        self.dt_tz_index   = tm.makeDateIndex(10).tz_localize(tz='US/Eastern')
        self.period_index  = tm.makePeriodIndex(10)
        self.string_index  = tm.makeStringIndex(10)

        arr = np.random.randn(10)
        self.int_series    = Series(arr, index=self.int_index)
        self.float_series  = Series(arr, index=self.int_index)
        self.dt_series     = Series(arr, index=self.dt_index)
        self.dt_tz_series  = self.dt_tz_index.to_series(keep_tz=True)
        self.period_series = Series(arr, index=self.period_index)
        self.string_series = Series(arr, index=self.string_index)

        types = ['int','float','dt', 'dt_tz', 'period','string']
        self.objs = [ getattr(self,"{0}_{1}".format(t,f)) for t in types for f in ['index','series'] ]
    def setUp(self):
        super(TestIndex, self).setUp()

        self.d = {
            'string': tm.makeStringIndex(100),
            'date': tm.makeDateIndex(100),
            'int': tm.makeIntIndex(100),
            'float': tm.makeFloatIndex(100),
            'empty': Index([]),
            'tuple': Index(zip(['foo', 'bar', 'baz'], [1, 2, 3])),
            'period': Index(period_range('2012-1-1', freq='M', periods=3)),
            'date2': Index(date_range('2013-01-1', periods=10)),
            'bdate': Index(bdate_range('2013-01-02', periods=10)),
        }

        self.mi = {
            'reg': MultiIndex.from_tuples([('bar', 'one'), ('baz', 'two'), ('foo', 'two'),
                                           ('qux', 'one'), ('qux', 'two')], names=['first', 'second']),
        }
Example #19
0
    def setUp(self):
        self.int_index = tm.makeIntIndex(10)
        self.float_index = tm.makeFloatIndex(10)
        self.dt_index = tm.makeDateIndex(10)
        self.period_index = tm.makePeriodIndex(10)
        self.string_index = tm.makeStringIndex(10)

        arr = np.random.randn(10)
        self.int_series = Series(arr, index=self.int_index)
        self.float_series = Series(arr, index=self.int_index)
        self.dt_series = Series(arr, index=self.dt_index)
        self.period_series = Series(arr, index=self.period_index)
        self.string_series = Series(arr, index=self.string_index)

        self.objs = [
            getattr(self, "{0}_{1}".format(t, f))
            for t in ['int', 'float', 'dt', 'period', 'string']
            for f in ['index', 'series']
        ]
Example #20
0
    def setUp(self):
        super(TestIndex, self).setUp()

        self.d = {
            'string': tm.makeStringIndex(100),
            'date': tm.makeDateIndex(100),
            'int': tm.makeIntIndex(100),
            'float': tm.makeFloatIndex(100),
            'empty': Index([]),
            'tuple': Index(zip(['foo', 'bar', 'baz'], [1, 2, 3])),
            'period': Index(period_range('2012-1-1', freq='M', periods=3)),
            'date2': Index(date_range('2013-01-1', periods=10)),
            'bdate': Index(bdate_range('2013-01-02', periods=10)),
        }

        self.mi = {
            'reg': MultiIndex.from_tuples([('bar', 'one'), ('baz', 'two'), ('foo', 'two'),
                                           ('qux', 'one'), ('qux', 'two')], names=['first', 'second']),
        }
Example #21
0
    def setUp(self):
        self.bool_index = tm.makeBoolIndex(10, name="a")
        self.int_index = tm.makeIntIndex(10, name="a")
        self.float_index = tm.makeFloatIndex(10, name="a")
        self.dt_index = tm.makeDateIndex(10, name="a")
        self.dt_tz_index = tm.makeDateIndex(10, name="a").tz_localize(tz="US/Eastern")
        self.period_index = tm.makePeriodIndex(10, name="a")
        self.string_index = tm.makeStringIndex(10, name="a")
        self.unicode_index = tm.makeUnicodeIndex(10, name="a")

        arr = np.random.randn(10)
        self.int_series = Series(arr, index=self.int_index, name="a")
        self.float_series = Series(arr, index=self.float_index, name="a")
        self.dt_series = Series(arr, index=self.dt_index, name="a")
        self.dt_tz_series = self.dt_tz_index.to_series(keep_tz=True)
        self.period_series = Series(arr, index=self.period_index, name="a")
        self.string_series = Series(arr, index=self.string_index, name="a")

        types = ["bool", "int", "float", "dt", "dt_tz", "period", "string", "unicode"]
        fmts = ["{0}_{1}".format(t, f) for t in types for f in ["index", "series"]]
        self.objs = [getattr(self, f) for f in fmts if getattr(self, f, None) is not None]
Example #22
0
    def setUp(self):
        super(TestIndex, self).setUp()

        self.d = {
            "string": tm.makeStringIndex(100),
            "date": tm.makeDateIndex(100),
            "int": tm.makeIntIndex(100),
            "float": tm.makeFloatIndex(100),
            "empty": Index([]),
            "tuple": Index(zip(["foo", "bar", "baz"], [1, 2, 3])),
            "period": Index(period_range("2012-1-1", freq="M", periods=3)),
            "date2": Index(date_range("2013-01-1", periods=10)),
            "bdate": Index(bdate_range("2013-01-02", periods=10)),
        }

        self.mi = {
            "reg": MultiIndex.from_tuples(
                [("bar", "one"), ("baz", "two"), ("foo", "two"), ("qux", "one"), ("qux", "two")],
                names=["first", "second"],
            )
        }
Example #23
0
    def setUp(self):
        self.int_index = tm.makeIntIndex(10)
        self.float_index = tm.makeFloatIndex(10)
        self.dt_index = tm.makeDateIndex(10)
        self.dt_tz_index = tm.makeDateIndex(10).tz_localize(tz='US/Eastern')
        self.period_index = tm.makePeriodIndex(10)
        self.string_index = tm.makeStringIndex(10)

        arr = np.random.randn(10)
        self.int_series = Series(arr, index=self.int_index)
        self.float_series = Series(arr, index=self.int_index)
        self.dt_series = Series(arr, index=self.dt_index)
        self.dt_tz_series = self.dt_tz_index.to_series(keep_tz=True)
        self.period_series = Series(arr, index=self.period_index)
        self.string_series = Series(arr, index=self.string_index)

        types = ['int', 'float', 'dt', 'dt_tz', 'period', 'string']
        self.objs = [
            getattr(self, "{0}_{1}".format(t, f)) for t in types
            for f in ['index', 'series']
        ]
Example #24
0
    rng = DatetimeIndex(["1/31/2000", "1/31/2001", "1/31/2002"])
    rng = rng[::-1]

    assert rng.inferred_freq == "-1A-JAN"


def test_non_datetime_index2():
    rng = DatetimeIndex(["1/31/2000", "1/31/2001", "1/31/2002"])
    vals = rng.to_pydatetime()

    result = frequencies.infer_freq(vals)
    assert result == rng.inferred_freq


@pytest.mark.parametrize("idx", [
    tm.makeIntIndex(10), tm.makeFloatIndex(10), tm.makePeriodIndex(10)
])
def test_invalid_index_types(idx):
    msg = ("(cannot infer freq from a non-convertible)|"
           "(Check the `freq` attribute instead of using infer_freq)")

    with pytest.raises(TypeError, match=msg):
        frequencies.infer_freq(idx)


@pytest.mark.skipif(is_platform_windows(),
                    reason="see gh-10822: Windows issue")
@pytest.mark.parametrize("idx", [tm.makeStringIndex(10),
                                 tm.makeUnicodeIndex(10)])
def test_invalid_index_types_unicode(idx):
    # see gh-10822
Example #25
0
class TestSeriesMisc(TestData, SharedWithSparse):

    series_klass = Series
    # SharedWithSparse tests use generic, series_klass-agnostic assertion
    _assert_series_equal = staticmethod(tm.assert_series_equal)

    def test_tab_completion(self):
        # GH 9910
        s = Series(list('abcd'))
        # Series of str values should have .str but not .dt/.cat in __dir__
        assert 'str' in dir(s)
        assert 'dt' not in dir(s)
        assert 'cat' not in dir(s)

        # similarly for .dt
        s = Series(date_range('1/1/2015', periods=5))
        assert 'dt' in dir(s)
        assert 'str' not in dir(s)
        assert 'cat' not in dir(s)

        # Similarly for .cat, but with the twist that str and dt should be
        # there if the categories are of that type first cat and str.
        s = Series(list('abbcd'), dtype="category")
        assert 'cat' in dir(s)
        assert 'str' in dir(s)  # as it is a string categorical
        assert 'dt' not in dir(s)

        # similar to cat and str
        s = Series(date_range('1/1/2015', periods=5)).astype("category")
        assert 'cat' in dir(s)
        assert 'str' not in dir(s)
        assert 'dt' in dir(s)  # as it is a datetime categorical

    def test_tab_completion_with_categorical(self):
        # test the tab completion display
        ok_for_cat = [
            'categories', 'codes', 'ordered', 'set_categories',
            'add_categories', 'remove_categories', 'rename_categories',
            'reorder_categories', 'remove_unused_categories', 'as_ordered',
            'as_unordered'
        ]

        def get_dir(s):
            results = [r for r in s.cat.__dir__() if not r.startswith('_')]
            return list(sorted(set(results)))

        s = Series(list('aabbcde')).astype('category')
        results = get_dir(s)
        tm.assert_almost_equal(results, list(sorted(set(ok_for_cat))))

    @pytest.mark.parametrize("index", [
        tm.makeUnicodeIndex(10),
        tm.makeStringIndex(10),
        tm.makeCategoricalIndex(10),
        Index(['foo', 'bar', 'baz'] * 2),
        tm.makeDateIndex(10),
        tm.makePeriodIndex(10),
        tm.makeTimedeltaIndex(10),
        tm.makeIntIndex(10),
        tm.makeUIntIndex(10),
        tm.makeIntIndex(10),
        tm.makeFloatIndex(10),
        Index([True, False]),
        Index(['a{}'.format(i) for i in range(101)]),
        pd.MultiIndex.from_tuples(lzip('ABCD', 'EFGH')),
        pd.MultiIndex.from_tuples(lzip([0, 1, 2, 3], 'EFGH')),
    ])
    def test_index_tab_completion(self, index):
        # dir contains string-like values of the Index.
        s = pd.Series(index=index)
        dir_s = dir(s)
        for i, x in enumerate(s.index.unique(level=0)):
            if i < 100:
                assert (not isinstance(x, string_types) or not isidentifier(x)
                        or x in dir_s)
            else:
                assert x not in dir_s

    def test_not_hashable(self):
        s_empty = Series()
        s = Series([1])
        pytest.raises(TypeError, hash, s_empty)
        pytest.raises(TypeError, hash, s)

    def test_contains(self):
        tm.assert_contains_all(self.ts.index, self.ts)

    def test_iter(self):
        for i, val in enumerate(self.series):
            assert val == self.series[i]

        for i, val in enumerate(self.ts):
            assert val == self.ts[i]

    def test_keys(self):
        # HACK: By doing this in two stages, we avoid 2to3 wrapping the call
        # to .keys() in a list()
        getkeys = self.ts.keys
        assert getkeys() is self.ts.index

    def test_values(self):
        tm.assert_almost_equal(self.ts.values, self.ts, check_dtype=False)

    def test_iteritems(self):
        for idx, val in compat.iteritems(self.series):
            assert val == self.series[idx]

        for idx, val in compat.iteritems(self.ts):
            assert val == self.ts[idx]

        # assert is lazy (genrators don't define reverse, lists do)
        assert not hasattr(self.series.iteritems(), 'reverse')

    def test_items(self):
        for idx, val in self.series.items():
            assert val == self.series[idx]

        for idx, val in self.ts.items():
            assert val == self.ts[idx]

        # assert is lazy (genrators don't define reverse, lists do)
        assert not hasattr(self.series.items(), 'reverse')

    def test_raise_on_info(self):
        s = Series(np.random.randn(10))
        with pytest.raises(AttributeError):
            s.info()

    def test_copy(self):

        for deep in [None, False, True]:
            s = Series(np.arange(10), dtype='float64')

            # default deep is True
            if deep is None:
                s2 = s.copy()
            else:
                s2 = s.copy(deep=deep)

            s2[::2] = np.NaN

            if deep is None or deep is True:
                # Did not modify original Series
                assert np.isnan(s2[0])
                assert not np.isnan(s[0])
            else:
                # we DID modify the original Series
                assert np.isnan(s2[0])
                assert np.isnan(s[0])

        # GH 11794
        # copy of tz-aware
        expected = Series([Timestamp('2012/01/01', tz='UTC')])
        expected2 = Series([Timestamp('1999/01/01', tz='UTC')])

        for deep in [None, False, True]:

            s = Series([Timestamp('2012/01/01', tz='UTC')])

            if deep is None:
                s2 = s.copy()
            else:
                s2 = s.copy(deep=deep)

            s2[0] = pd.Timestamp('1999/01/01', tz='UTC')

            # default deep is True
            if deep is None or deep is True:
                # Did not modify original Series
                assert_series_equal(s2, expected2)
                assert_series_equal(s, expected)
            else:
                # we DID modify the original Series
                assert_series_equal(s2, expected2)
                assert_series_equal(s, expected2)

    def test_axis_alias(self):
        s = Series([1, 2, np.nan])
        assert_series_equal(s.dropna(axis='rows'), s.dropna(axis='index'))
        assert s.dropna().sum('rows') == 3
        assert s._get_axis_number('rows') == 0
        assert s._get_axis_name('rows') == 'index'

    def test_class_axis(self):
        # https://github.com/pandas-dev/pandas/issues/18147
        # no exception and no empty docstring
        assert pydoc.getdoc(Series.index)

    def test_numpy_unique(self):
        # it works!
        np.unique(self.ts)

    def test_ndarray_compat(self):

        # test numpy compat with Series as sub-class of NDFrame
        tsdf = DataFrame(np.random.randn(1000, 3),
                         columns=['A', 'B', 'C'],
                         index=date_range('1/1/2000', periods=1000))

        def f(x):
            return x[x.idxmax()]

        result = tsdf.apply(f)
        expected = tsdf.max()
        tm.assert_series_equal(result, expected)

        # .item()
        s = Series([1])
        result = s.item()
        assert result == 1
        assert s.item() == s.iloc[0]

        # using an ndarray like function
        s = Series(np.random.randn(10))
        result = Series(np.ones_like(s))
        expected = Series(1, index=range(10), dtype='float64')
        tm.assert_series_equal(result, expected)

        # ravel
        s = Series(np.random.randn(10))
        tm.assert_almost_equal(s.ravel(order='F'), s.values.ravel(order='F'))

        # compress
        # GH 6658
        s = Series([0, 1., -1], index=list('abc'))
        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s > 0, s)
        tm.assert_series_equal(result, Series([1.], index=['b']))

        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s < -1, s)
        # result empty Index(dtype=object) as the same as original
        exp = Series([], dtype='float64', index=Index([], dtype='object'))
        tm.assert_series_equal(result, exp)

        s = Series([0, 1., -1], index=[.1, .2, .3])
        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s > 0, s)
        tm.assert_series_equal(result, Series([1.], index=[.2]))

        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s < -1, s)
        # result empty Float64Index as the same as original
        exp = Series([], dtype='float64', index=Index([], dtype='float64'))
        tm.assert_series_equal(result, exp)

    def test_str_attribute(self):
        # GH9068
        methods = ['strip', 'rstrip', 'lstrip']
        s = Series([' jack', 'jill ', ' jesse ', 'frank'])
        for method in methods:
            expected = Series([getattr(str, method)(x) for x in s.values])
            assert_series_equal(getattr(Series.str, method)(s.str), expected)

        # str accessor only valid with string values
        s = Series(range(5))
        with tm.assert_raises_regex(AttributeError, 'only use .str accessor'):
            s.str.repeat(2)

    def test_empty_method(self):
        s_empty = pd.Series()
        assert s_empty.empty

        for full_series in [pd.Series([1]), pd.Series(index=[1])]:
            assert not full_series.empty

    def test_tab_complete_warning(self, ip):
        # https://github.com/pandas-dev/pandas/issues/16409
        pytest.importorskip('IPython', minversion="6.0.0")
        from IPython.core.completer import provisionalcompleter

        code = "import pandas as pd; s = pd.Series()"
        ip.run_code(code)
        with tm.assert_produces_warning(None):
            with provisionalcompleter('ignore'):
                list(ip.Completer.completions('s.', 1))
Example #26
0
from pandas.compat import long, lzip

import pandas as pd
from pandas.core.indexes.api import Index, MultiIndex
import pandas.util.testing as tm


@pytest.fixture(params=[tm.makeUnicodeIndex(100),
                        tm.makeStringIndex(100),
                        tm.makeDateIndex(100),
                        tm.makePeriodIndex(100),
                        tm.makeTimedeltaIndex(100),
                        tm.makeIntIndex(100),
                        tm.makeUIntIndex(100),
                        tm.makeRangeIndex(100),
                        tm.makeFloatIndex(100),
                        Index([True, False]),
                        tm.makeCategoricalIndex(100),
                        Index([]),
                        MultiIndex.from_tuples(lzip(
                            ['foo', 'bar', 'baz'], [1, 2, 3])),
                        Index([0, 0, 1, 1, 2, 2])],
                ids=lambda x: type(x).__name__)
def indices(request):
    return request.param


@pytest.fixture(params=[1, np.array(1, dtype=np.int64)])
def one(request):
    # zero-dim integer array behaves like an integer
    return request.param
Example #27
0
class TestSeriesMisc(TestData, SharedWithSparse):

    series_klass = Series
    # SharedWithSparse tests use generic, series_klass-agnostic assertion
    _assert_series_equal = staticmethod(tm.assert_series_equal)

    def test_tab_completion(self):
        # GH 9910
        s = Series(list("abcd"))
        # Series of str values should have .str but not .dt/.cat in __dir__
        assert "str" in dir(s)
        assert "dt" not in dir(s)
        assert "cat" not in dir(s)

        # similarly for .dt
        s = Series(date_range("1/1/2015", periods=5))
        assert "dt" in dir(s)
        assert "str" not in dir(s)
        assert "cat" not in dir(s)

        # Similarly for .cat, but with the twist that str and dt should be
        # there if the categories are of that type first cat and str.
        s = Series(list("abbcd"), dtype="category")
        assert "cat" in dir(s)
        assert "str" in dir(s)  # as it is a string categorical
        assert "dt" not in dir(s)

        # similar to cat and str
        s = Series(date_range("1/1/2015", periods=5)).astype("category")
        assert "cat" in dir(s)
        assert "str" not in dir(s)
        assert "dt" in dir(s)  # as it is a datetime categorical

    def test_tab_completion_with_categorical(self):
        # test the tab completion display
        ok_for_cat = [
            "name",
            "index",
            "categorical",
            "categories",
            "codes",
            "ordered",
            "set_categories",
            "add_categories",
            "remove_categories",
            "rename_categories",
            "reorder_categories",
            "remove_unused_categories",
            "as_ordered",
            "as_unordered",
        ]

        def get_dir(s):
            results = [r for r in s.cat.__dir__() if not r.startswith("_")]
            return list(sorted(set(results)))

        s = Series(list("aabbcde")).astype("category")
        results = get_dir(s)
        tm.assert_almost_equal(results, list(sorted(set(ok_for_cat))))

    @pytest.mark.parametrize(
        "index",
        [
            tm.makeUnicodeIndex(10),
            tm.makeStringIndex(10),
            tm.makeCategoricalIndex(10),
            Index(["foo", "bar", "baz"] * 2),
            tm.makeDateIndex(10),
            tm.makePeriodIndex(10),
            tm.makeTimedeltaIndex(10),
            tm.makeIntIndex(10),
            tm.makeUIntIndex(10),
            tm.makeIntIndex(10),
            tm.makeFloatIndex(10),
            Index([True, False]),
            Index(["a{}".format(i) for i in range(101)]),
            pd.MultiIndex.from_tuples(zip("ABCD", "EFGH")),
            pd.MultiIndex.from_tuples(zip([0, 1, 2, 3], "EFGH")),
        ],
    )
    def test_index_tab_completion(self, index):
        # dir contains string-like values of the Index.
        s = pd.Series(index=index)
        dir_s = dir(s)
        for i, x in enumerate(s.index.unique(level=0)):
            if i < 100:
                assert not isinstance(
                    x, str) or not x.isidentifier() or x in dir_s
            else:
                assert x not in dir_s

    def test_not_hashable(self):
        s_empty = Series()
        s = Series([1])
        msg = "'Series' objects are mutable, thus they cannot be hashed"
        with pytest.raises(TypeError, match=msg):
            hash(s_empty)
        with pytest.raises(TypeError, match=msg):
            hash(s)

    def test_contains(self):
        tm.assert_contains_all(self.ts.index, self.ts)

    def test_iter(self):
        for i, val in enumerate(self.series):
            assert val == self.series[i]

        for i, val in enumerate(self.ts):
            assert val == self.ts[i]

    def test_keys(self):
        # HACK: By doing this in two stages, we avoid 2to3 wrapping the call
        # to .keys() in a list()
        getkeys = self.ts.keys
        assert getkeys() is self.ts.index

    def test_values(self):
        tm.assert_almost_equal(self.ts.values, self.ts, check_dtype=False)

    def test_iteritems(self):
        for idx, val in self.series.iteritems():
            assert val == self.series[idx]

        for idx, val in self.ts.iteritems():
            assert val == self.ts[idx]

        # assert is lazy (genrators don't define reverse, lists do)
        assert not hasattr(self.series.iteritems(), "reverse")

    def test_items(self):
        for idx, val in self.series.items():
            assert val == self.series[idx]

        for idx, val in self.ts.items():
            assert val == self.ts[idx]

        # assert is lazy (genrators don't define reverse, lists do)
        assert not hasattr(self.series.items(), "reverse")

    def test_raise_on_info(self):
        s = Series(np.random.randn(10))
        msg = "'Series' object has no attribute 'info'"
        with pytest.raises(AttributeError, match=msg):
            s.info()

    def test_copy(self):

        for deep in [None, False, True]:
            s = Series(np.arange(10), dtype="float64")

            # default deep is True
            if deep is None:
                s2 = s.copy()
            else:
                s2 = s.copy(deep=deep)

            s2[::2] = np.NaN

            if deep is None or deep is True:
                # Did not modify original Series
                assert np.isnan(s2[0])
                assert not np.isnan(s[0])
            else:
                # we DID modify the original Series
                assert np.isnan(s2[0])
                assert np.isnan(s[0])

    def test_copy_tzaware(self):
        # GH#11794
        # copy of tz-aware
        expected = Series([Timestamp("2012/01/01", tz="UTC")])
        expected2 = Series([Timestamp("1999/01/01", tz="UTC")])

        for deep in [None, False, True]:

            s = Series([Timestamp("2012/01/01", tz="UTC")])

            if deep is None:
                s2 = s.copy()
            else:
                s2 = s.copy(deep=deep)

            s2[0] = pd.Timestamp("1999/01/01", tz="UTC")

            # default deep is True
            if deep is None or deep is True:
                # Did not modify original Series
                assert_series_equal(s2, expected2)
                assert_series_equal(s, expected)
            else:
                # we DID modify the original Series
                assert_series_equal(s2, expected2)
                assert_series_equal(s, expected2)

    def test_axis_alias(self):
        s = Series([1, 2, np.nan])
        assert_series_equal(s.dropna(axis="rows"), s.dropna(axis="index"))
        assert s.dropna().sum("rows") == 3
        assert s._get_axis_number("rows") == 0
        assert s._get_axis_name("rows") == "index"

    def test_class_axis(self):
        # https://github.com/pandas-dev/pandas/issues/18147
        # no exception and no empty docstring
        assert pydoc.getdoc(Series.index)

    def test_numpy_unique(self):
        # it works!
        np.unique(self.ts)

    def test_ndarray_compat(self):

        # test numpy compat with Series as sub-class of NDFrame
        tsdf = DataFrame(
            np.random.randn(1000, 3),
            columns=["A", "B", "C"],
            index=date_range("1/1/2000", periods=1000),
        )

        def f(x):
            return x[x.idxmax()]

        result = tsdf.apply(f)
        expected = tsdf.max()
        tm.assert_series_equal(result, expected)

        # .item()
        with tm.assert_produces_warning(FutureWarning):
            s = Series([1])
            result = s.item()
            assert result == 1
            assert s.item() == s.iloc[0]

        # using an ndarray like function
        s = Series(np.random.randn(10))
        result = Series(np.ones_like(s))
        expected = Series(1, index=range(10), dtype="float64")
        tm.assert_series_equal(result, expected)

        # ravel
        s = Series(np.random.randn(10))
        tm.assert_almost_equal(s.ravel(order="F"), s.values.ravel(order="F"))

        # compress
        # GH 6658
        s = Series([0, 1.0, -1], index=list("abc"))
        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s > 0, s)
        tm.assert_series_equal(result, Series([1.0], index=["b"]))

        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s < -1, s)
        # result empty Index(dtype=object) as the same as original
        exp = Series([], dtype="float64", index=Index([], dtype="object"))
        tm.assert_series_equal(result, exp)

        s = Series([0, 1.0, -1], index=[0.1, 0.2, 0.3])
        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s > 0, s)
        tm.assert_series_equal(result, Series([1.0], index=[0.2]))

        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s < -1, s)
        # result empty Float64Index as the same as original
        exp = Series([], dtype="float64", index=Index([], dtype="float64"))
        tm.assert_series_equal(result, exp)

    def test_str_accessor_updates_on_inplace(self):
        s = pd.Series(list("abc"))
        s.drop([0], inplace=True)
        assert len(s.str.lower()) == 2

    def test_str_attribute(self):
        # GH9068
        methods = ["strip", "rstrip", "lstrip"]
        s = Series([" jack", "jill ", " jesse ", "frank"])
        for method in methods:
            expected = Series([getattr(str, method)(x) for x in s.values])
            assert_series_equal(getattr(Series.str, method)(s.str), expected)

        # str accessor only valid with string values
        s = Series(range(5))
        with pytest.raises(AttributeError, match="only use .str accessor"):
            s.str.repeat(2)

    def test_empty_method(self):
        s_empty = pd.Series()
        assert s_empty.empty

        for full_series in [pd.Series([1]), pd.Series(index=[1])]:
            assert not full_series.empty

    def test_tab_complete_warning(self, ip):
        # https://github.com/pandas-dev/pandas/issues/16409
        pytest.importorskip("IPython", minversion="6.0.0")
        from IPython.core.completer import provisionalcompleter

        code = "import pandas as pd; s = pd.Series()"
        ip.run_code(code)
        with tm.assert_produces_warning(None):
            with provisionalcompleter("ignore"):
                list(ip.Completer.completions("s.", 1))

    def test_integer_series_size(self):
        # GH 25580
        s = Series(range(9))
        assert s.size == 9
        s = Series(range(9), dtype="Int64")
        assert s.size == 9

    def test_get_values_deprecation(self):
        s = Series(range(9))
        with tm.assert_produces_warning(FutureWarning):
            res = s.get_values()
        tm.assert_numpy_array_equal(res, s.values)
Example #28
0
import pytest

import pandas as pd
from pandas.core.indexes.api import Index, MultiIndex
import pandas.util.testing as tm

indices_dict = {
    "unicode": tm.makeUnicodeIndex(100),
    "string": tm.makeStringIndex(100),
    "datetime": tm.makeDateIndex(100),
    "period": tm.makePeriodIndex(100),
    "timedelta": tm.makeTimedeltaIndex(100),
    "int": tm.makeIntIndex(100),
    "uint": tm.makeUIntIndex(100),
    "range": tm.makeRangeIndex(100),
    "float": tm.makeFloatIndex(100),
    "bool": Index([True, False]),
    "categorical": tm.makeCategoricalIndex(100),
    "interval": tm.makeIntervalIndex(100),
    "empty": Index([]),
    "tuples": MultiIndex.from_tuples(zip(["foo", "bar", "baz"], [1, 2, 3])),
    "repeats": Index([0, 0, 1, 1, 2, 2]),
}


@pytest.fixture(params=indices_dict.keys())
def indices(request):
    # copy to avoid mutation, e.g. setting .name
    return indices_dict[request.param].copy()

Example #29
0
class TestSeriesMisc:
    def test_scalarop_preserve_name(self, datetime_series):
        result = datetime_series * 2
        assert result.name == datetime_series.name

    def test_copy_name(self, datetime_series):
        result = datetime_series.copy()
        assert result.name == datetime_series.name

    def test_copy_index_name_checking(self, datetime_series):
        # don't want to be able to modify the index stored elsewhere after
        # making a copy

        datetime_series.index.name = None
        assert datetime_series.index.name is None
        assert datetime_series is datetime_series

        cp = datetime_series.copy()
        cp.index.name = "foo"
        printing.pprint_thing(datetime_series.index.name)
        assert datetime_series.index.name is None

    def test_append_preserve_name(self, datetime_series):
        result = datetime_series[:5].append(datetime_series[5:])
        assert result.name == datetime_series.name

    def test_binop_maybe_preserve_name(self, datetime_series):
        # names match, preserve
        result = datetime_series * datetime_series
        assert result.name == datetime_series.name
        result = datetime_series.mul(datetime_series)
        assert result.name == datetime_series.name

        result = datetime_series * datetime_series[:-2]
        assert result.name == datetime_series.name

        # names don't match, don't preserve
        cp = datetime_series.copy()
        cp.name = "something else"
        result = datetime_series + cp
        assert result.name is None
        result = datetime_series.add(cp)
        assert result.name is None

        ops = ["add", "sub", "mul", "div", "truediv", "floordiv", "mod", "pow"]
        ops = ops + ["r" + op for op in ops]
        for op in ops:
            # names match, preserve
            s = datetime_series.copy()
            result = getattr(s, op)(s)
            assert result.name == datetime_series.name

            # names don't match, don't preserve
            cp = datetime_series.copy()
            cp.name = "changed"
            result = getattr(s, op)(cp)
            assert result.name is None

    def test_combine_first_name(self, datetime_series):
        result = datetime_series.combine_first(datetime_series[:5])
        assert result.name == datetime_series.name

    def test_getitem_preserve_name(self, datetime_series):
        result = datetime_series[datetime_series > 0]
        assert result.name == datetime_series.name

        result = datetime_series[[0, 2, 4]]
        assert result.name == datetime_series.name

        result = datetime_series[5:10]
        assert result.name == datetime_series.name

    def test_pickle_datetimes(self, datetime_series):
        unp_ts = self._pickle_roundtrip(datetime_series)
        tm.assert_series_equal(unp_ts, datetime_series)

    def test_pickle_strings(self, string_series):
        unp_series = self._pickle_roundtrip(string_series)
        tm.assert_series_equal(unp_series, string_series)

    def _pickle_roundtrip(self, obj):

        with tm.ensure_clean() as path:
            obj.to_pickle(path)
            unpickled = pd.read_pickle(path)
            return unpickled

    def test_argsort_preserve_name(self, datetime_series):
        result = datetime_series.argsort()
        assert result.name == datetime_series.name

    def test_sort_index_name(self, datetime_series):
        result = datetime_series.sort_index(ascending=False)
        assert result.name == datetime_series.name

    def test_constructor_dict(self):
        d = {"a": 0.0, "b": 1.0, "c": 2.0}
        result = Series(d)
        expected = Series(d, index=sorted(d.keys()))
        tm.assert_series_equal(result, expected)

        result = Series(d, index=["b", "c", "d", "a"])
        expected = Series([1, 2, np.nan, 0], index=["b", "c", "d", "a"])
        tm.assert_series_equal(result, expected)

    def test_constructor_subclass_dict(self):
        data = tm.TestSubDict((x, 10.0 * x) for x in range(10))
        series = Series(data)
        expected = Series(dict(data.items()))
        tm.assert_series_equal(series, expected)

    def test_constructor_ordereddict(self):
        # GH3283
        data = OrderedDict(
            ("col{i}".format(i=i), np.random.random()) for i in range(12)
        )

        series = Series(data)
        expected = Series(list(data.values()), list(data.keys()))
        tm.assert_series_equal(series, expected)

        # Test with subclass
        class A(OrderedDict):
            pass

        series = Series(A(data))
        tm.assert_series_equal(series, expected)

    def test_constructor_dict_multiindex(self):
        d = {("a", "a"): 0.0, ("b", "a"): 1.0, ("b", "c"): 2.0}
        _d = sorted(d.items())
        result = Series(d)
        expected = Series(
            [x[1] for x in _d], index=pd.MultiIndex.from_tuples([x[0] for x in _d])
        )
        tm.assert_series_equal(result, expected)

        d["z"] = 111.0
        _d.insert(0, ("z", d["z"]))
        result = Series(d)
        expected = Series(
            [x[1] for x in _d], index=pd.Index([x[0] for x in _d], tupleize_cols=False)
        )
        result = result.reindex(index=expected.index)
        tm.assert_series_equal(result, expected)

    def test_constructor_dict_timedelta_index(self):
        # GH #12169 : Resample category data with timedelta index
        # construct Series from dict as data and TimedeltaIndex as index
        # will result NaN in result Series data
        expected = Series(
            data=["A", "B", "C"], index=pd.to_timedelta([0, 10, 20], unit="s")
        )

        result = Series(
            data={
                pd.to_timedelta(0, unit="s"): "A",
                pd.to_timedelta(10, unit="s"): "B",
                pd.to_timedelta(20, unit="s"): "C",
            },
            index=pd.to_timedelta([0, 10, 20], unit="s"),
        )
        tm.assert_series_equal(result, expected)

    def test_sparse_accessor_updates_on_inplace(self):
        s = pd.Series([1, 1, 2, 3], dtype="Sparse[int]")
        s.drop([0, 1], inplace=True)
        assert s.sparse.density == 1.0

    def test_tab_completion(self):
        # GH 9910
        s = Series(list("abcd"))
        # Series of str values should have .str but not .dt/.cat in __dir__
        assert "str" in dir(s)
        assert "dt" not in dir(s)
        assert "cat" not in dir(s)

        # similarly for .dt
        s = Series(date_range("1/1/2015", periods=5))
        assert "dt" in dir(s)
        assert "str" not in dir(s)
        assert "cat" not in dir(s)

        # Similarly for .cat, but with the twist that str and dt should be
        # there if the categories are of that type first cat and str.
        s = Series(list("abbcd"), dtype="category")
        assert "cat" in dir(s)
        assert "str" in dir(s)  # as it is a string categorical
        assert "dt" not in dir(s)

        # similar to cat and str
        s = Series(date_range("1/1/2015", periods=5)).astype("category")
        assert "cat" in dir(s)
        assert "str" not in dir(s)
        assert "dt" in dir(s)  # as it is a datetime categorical

    def test_tab_completion_with_categorical(self):
        # test the tab completion display
        ok_for_cat = [
            "categories",
            "codes",
            "ordered",
            "set_categories",
            "add_categories",
            "remove_categories",
            "rename_categories",
            "reorder_categories",
            "remove_unused_categories",
            "as_ordered",
            "as_unordered",
        ]

        def get_dir(s):
            results = [r for r in s.cat.__dir__() if not r.startswith("_")]
            return sorted(set(results))

        s = Series(list("aabbcde")).astype("category")
        results = get_dir(s)
        tm.assert_almost_equal(results, sorted(set(ok_for_cat)))

    @pytest.mark.parametrize(
        "index",
        [
            tm.makeUnicodeIndex(10),
            tm.makeStringIndex(10),
            tm.makeCategoricalIndex(10),
            Index(["foo", "bar", "baz"] * 2),
            tm.makeDateIndex(10),
            tm.makePeriodIndex(10),
            tm.makeTimedeltaIndex(10),
            tm.makeIntIndex(10),
            tm.makeUIntIndex(10),
            tm.makeIntIndex(10),
            tm.makeFloatIndex(10),
            Index([True, False]),
            Index(["a{}".format(i) for i in range(101)]),
            pd.MultiIndex.from_tuples(zip("ABCD", "EFGH")),
            pd.MultiIndex.from_tuples(zip([0, 1, 2, 3], "EFGH")),
        ],
    )
    def test_index_tab_completion(self, index):
        # dir contains string-like values of the Index.
        s = pd.Series(index=index)
        dir_s = dir(s)
        for i, x in enumerate(s.index.unique(level=0)):
            if i < 100:
                assert not isinstance(x, str) or not x.isidentifier() or x in dir_s
            else:
                assert x not in dir_s

    def test_not_hashable(self):
        s_empty = Series()
        s = Series([1])
        msg = "'Series' objects are mutable, thus they cannot be hashed"
        with pytest.raises(TypeError, match=msg):
            hash(s_empty)
        with pytest.raises(TypeError, match=msg):
            hash(s)

    def test_contains(self, datetime_series):
        tm.assert_contains_all(datetime_series.index, datetime_series)

    def test_iter_datetimes(self, datetime_series):
        for i, val in enumerate(datetime_series):
            assert val == datetime_series[i]

    def test_iter_strings(self, string_series):
        for i, val in enumerate(string_series):
            assert val == string_series[i]

    def test_keys(self, datetime_series):
        # HACK: By doing this in two stages, we avoid 2to3 wrapping the call
        # to .keys() in a list()
        getkeys = datetime_series.keys
        assert getkeys() is datetime_series.index

    def test_values(self, datetime_series):
        tm.assert_almost_equal(
            datetime_series.values, datetime_series, check_dtype=False
        )

    def test_iteritems_datetimes(self, datetime_series):
        for idx, val in datetime_series.iteritems():
            assert val == datetime_series[idx]

    def test_iteritems_strings(self, string_series):
        for idx, val in string_series.iteritems():
            assert val == string_series[idx]

        # assert is lazy (genrators don't define reverse, lists do)
        assert not hasattr(string_series.iteritems(), "reverse")

    def test_items_datetimes(self, datetime_series):
        for idx, val in datetime_series.items():
            assert val == datetime_series[idx]

    def test_items_strings(self, string_series):
        for idx, val in string_series.items():
            assert val == string_series[idx]

        # assert is lazy (genrators don't define reverse, lists do)
        assert not hasattr(string_series.items(), "reverse")

    def test_raise_on_info(self):
        s = Series(np.random.randn(10))
        msg = "'Series' object has no attribute 'info'"
        with pytest.raises(AttributeError, match=msg):
            s.info()

    def test_copy(self):

        for deep in [None, False, True]:
            s = Series(np.arange(10), dtype="float64")

            # default deep is True
            if deep is None:
                s2 = s.copy()
            else:
                s2 = s.copy(deep=deep)

            s2[::2] = np.NaN

            if deep is None or deep is True:
                # Did not modify original Series
                assert np.isnan(s2[0])
                assert not np.isnan(s[0])
            else:
                # we DID modify the original Series
                assert np.isnan(s2[0])
                assert np.isnan(s[0])

    def test_copy_tzaware(self):
        # GH#11794
        # copy of tz-aware
        expected = Series([Timestamp("2012/01/01", tz="UTC")])
        expected2 = Series([Timestamp("1999/01/01", tz="UTC")])

        for deep in [None, False, True]:

            s = Series([Timestamp("2012/01/01", tz="UTC")])

            if deep is None:
                s2 = s.copy()
            else:
                s2 = s.copy(deep=deep)

            s2[0] = pd.Timestamp("1999/01/01", tz="UTC")

            # default deep is True
            if deep is None or deep is True:
                # Did not modify original Series
                tm.assert_series_equal(s2, expected2)
                tm.assert_series_equal(s, expected)
            else:
                # we DID modify the original Series
                tm.assert_series_equal(s2, expected2)
                tm.assert_series_equal(s, expected2)

    def test_axis_alias(self):
        s = Series([1, 2, np.nan])
        tm.assert_series_equal(s.dropna(axis="rows"), s.dropna(axis="index"))
        assert s.dropna().sum("rows") == 3
        assert s._get_axis_number("rows") == 0
        assert s._get_axis_name("rows") == "index"

    def test_class_axis(self):
        # https://github.com/pandas-dev/pandas/issues/18147
        # no exception and no empty docstring
        assert pydoc.getdoc(Series.index)

    def test_numpy_unique(self, datetime_series):
        # it works!
        np.unique(datetime_series)

    def test_ndarray_compat(self):

        # test numpy compat with Series as sub-class of NDFrame
        tsdf = DataFrame(
            np.random.randn(1000, 3),
            columns=["A", "B", "C"],
            index=date_range("1/1/2000", periods=1000),
        )

        def f(x):
            return x[x.idxmax()]

        result = tsdf.apply(f)
        expected = tsdf.max()
        tm.assert_series_equal(result, expected)

        # .item()
        with tm.assert_produces_warning(FutureWarning):
            s = Series([1])
            result = s.item()
            assert result == 1
            assert s.item() == s.iloc[0]

        # using an ndarray like function
        s = Series(np.random.randn(10))
        result = Series(np.ones_like(s))
        expected = Series(1, index=range(10), dtype="float64")
        tm.assert_series_equal(result, expected)

        # ravel
        s = Series(np.random.randn(10))
        tm.assert_almost_equal(s.ravel(order="F"), s.values.ravel(order="F"))

        # compress
        # GH 6658
        s = Series([0, 1.0, -1], index=list("abc"))
        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s > 0, s)
        tm.assert_series_equal(result, Series([1.0], index=["b"]))

        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s < -1, s)
        # result empty Index(dtype=object) as the same as original
        exp = Series([], dtype="float64", index=Index([], dtype="object"))
        tm.assert_series_equal(result, exp)

        s = Series([0, 1.0, -1], index=[0.1, 0.2, 0.3])
        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s > 0, s)
        tm.assert_series_equal(result, Series([1.0], index=[0.2]))

        with tm.assert_produces_warning(FutureWarning, check_stacklevel=False):
            result = np.compress(s < -1, s)
        # result empty Float64Index as the same as original
        exp = Series([], dtype="float64", index=Index([], dtype="float64"))
        tm.assert_series_equal(result, exp)

    def test_str_accessor_updates_on_inplace(self):
        s = pd.Series(list("abc"))
        s.drop([0], inplace=True)
        assert len(s.str.lower()) == 2

    def test_str_attribute(self):
        # GH9068
        methods = ["strip", "rstrip", "lstrip"]
        s = Series([" jack", "jill ", " jesse ", "frank"])
        for method in methods:
            expected = Series([getattr(str, method)(x) for x in s.values])
            tm.assert_series_equal(getattr(Series.str, method)(s.str), expected)

        # str accessor only valid with string values
        s = Series(range(5))
        with pytest.raises(AttributeError, match="only use .str accessor"):
            s.str.repeat(2)

    def test_empty_method(self):
        s_empty = pd.Series()
        assert s_empty.empty

        for full_series in [pd.Series([1]), pd.Series(index=[1])]:
            assert not full_series.empty

    def test_tab_complete_warning(self, ip):
        # https://github.com/pandas-dev/pandas/issues/16409
        pytest.importorskip("IPython", minversion="6.0.0")
        from IPython.core.completer import provisionalcompleter

        code = "import pandas as pd; s = pd.Series()"
        ip.run_code(code)
        with tm.assert_produces_warning(None):
            with provisionalcompleter("ignore"):
                list(ip.Completer.completions("s.", 1))

    def test_integer_series_size(self):
        # GH 25580
        s = Series(range(9))
        assert s.size == 9
        s = Series(range(9), dtype="Int64")
        assert s.size == 9

    def test_get_values_deprecation(self):
        s = Series(range(9))
        with tm.assert_produces_warning(FutureWarning):
            res = s.get_values()
        tm.assert_numpy_array_equal(res, s.values)
Example #30
0
    def setup_method(self, method):
        self.bool_index = tm.makeBoolIndex(10, name="a")
        self.int_index = tm.makeIntIndex(10, name="a")
        self.float_index = tm.makeFloatIndex(10, name="a")
        self.dt_index = tm.makeDateIndex(10, name="a")
        self.dt_tz_index = tm.makeDateIndex(
            10, name="a").tz_localize(tz="US/Eastern")
        self.period_index = tm.makePeriodIndex(10, name="a")
        self.string_index = tm.makeStringIndex(10, name="a")
        self.unicode_index = tm.makeUnicodeIndex(10, name="a")

        arr = np.random.randn(10)
        self.bool_series = Series(arr, index=self.bool_index, name="a")
        self.int_series = Series(arr, index=self.int_index, name="a")
        self.float_series = Series(arr, index=self.float_index, name="a")
        self.dt_series = Series(arr, index=self.dt_index, name="a")
        self.dt_tz_series = self.dt_tz_index.to_series()
        self.period_series = Series(arr, index=self.period_index, name="a")
        self.string_series = Series(arr, index=self.string_index, name="a")
        self.unicode_series = Series(arr, index=self.unicode_index, name="a")

        types = [
            "bool", "int", "float", "dt", "dt_tz", "period", "string",
            "unicode"
        ]
        self.indexes = [getattr(self, "{}_index".format(t)) for t in types]
        self.series = [getattr(self, "{}_series".format(t)) for t in types]

        # To test narrow dtypes, we use narrower *data* elements, not *index* elements
        index = self.int_index
        self.float32_series = Series(arr.astype(np.float32),
                                     index=index,
                                     name="a")

        arr_int = np.random.choice(10, size=10, replace=False)
        self.int8_series = Series(arr_int.astype(np.int8),
                                  index=index,
                                  name="a")
        self.int16_series = Series(arr_int.astype(np.int16),
                                   index=index,
                                   name="a")
        self.int32_series = Series(arr_int.astype(np.int32),
                                   index=index,
                                   name="a")

        self.uint8_series = Series(arr_int.astype(np.uint8),
                                   index=index,
                                   name="a")
        self.uint16_series = Series(arr_int.astype(np.uint16),
                                    index=index,
                                    name="a")
        self.uint32_series = Series(arr_int.astype(np.uint32),
                                    index=index,
                                    name="a")

        nrw_types = [
            "float32", "int8", "int16", "int32", "uint8", "uint16", "uint32"
        ]
        self.narrow_series = [
            getattr(self, "{}_series".format(t)) for t in nrw_types
        ]

        self.objs = self.indexes + self.series + self.narrow_series
Example #31
0
		pd.Series(np.arange(4,9)) # using the numpy function
		pd.Series(np.linspace(0,9,5)) # allows to specify the number of values to be created btw boundaries

		pd.Series(np.random.normal(size=5))
		np.random.randint(50,101,10)


		a = np.array([4] * 16)
		a[1::] = [42] * 15
		a[1:8:2] = 16


		import pandas.util.testing as tm
		tm.N, tm.K = 5,3
		tm.makeFloatSeries(), tm.makeBoolIndex(), tm.makeCategoricalIndex()
		tm.makeCustomIndex(nentries=4,nlevels=2), tm.makeFloatIndex(), tm.makeIntIndex()
		tm.makeMultiIndex(), tm.makeRangeIndex(), tm.makeIntervalIndex()

		# All possible combinations (Permutations)
			from itertools import permutations 
			my_list = [1,2,3]
			perm = list(permutations(my_list))

				#(1, 2, 3)
				#(1, 3, 2)
				#(2, 1, 3)
				#(2, 3, 1)
				#(3, 1, 2)
				#(3, 2, 1)

Example #32
0
import pytest

import pandas as pd
from pandas.core.indexes.api import Index, MultiIndex
import pandas.util.testing as tm


@pytest.fixture(params=[tm.makeUnicodeIndex(100),
                        tm.makeStringIndex(100),
                        tm.makeDateIndex(100),
                        tm.makePeriodIndex(100),
                        tm.makeTimedeltaIndex(100),
                        tm.makeIntIndex(100),
                        tm.makeUIntIndex(100),
                        tm.makeRangeIndex(100),
                        tm.makeFloatIndex(100),
                        Index([True, False]),
                        tm.makeCategoricalIndex(100),
                        Index([]),
                        MultiIndex.from_tuples(zip(
                            ['foo', 'bar', 'baz'], [1, 2, 3])),
                        Index([0, 0, 1, 1, 2, 2])],
                ids=lambda x: type(x).__name__)
def indices(request):
    return request.param


@pytest.fixture(params=[1, np.array(1, dtype=np.int64)])
def one(request):
    # zero-dim integer array behaves like an integer
    return request.param