Example #1
0
    def test_get_offset_name(self):
        assert BDay().freqstr == "B"
        assert BDay(2).freqstr == "2B"
        assert BMonthEnd().freqstr == "BM"
        assert Week(weekday=0).freqstr == "W-MON"
        assert Week(weekday=1).freqstr == "W-TUE"
        assert Week(weekday=2).freqstr == "W-WED"
        assert Week(weekday=3).freqstr == "W-THU"
        assert Week(weekday=4).freqstr == "W-FRI"

        assert LastWeekOfMonth(weekday=WeekDay.SUN).freqstr == "LWOM-SUN"
Example #2
0
def test_last_week_of_month_on_offset():
    # GH#19036, GH#18977 _adjust_dst was incorrect for LastWeekOfMonth
    offset = LastWeekOfMonth(n=4, weekday=6)
    ts = Timestamp("1917-05-27 20:55:27.084284178+0200", tz="Europe/Warsaw")
    slow = (ts + offset) - offset == ts
    fast = offset.is_on_offset(ts)
    assert fast == slow

    # negative n
    offset = LastWeekOfMonth(n=-4, weekday=5)
    ts = Timestamp("2005-08-27 05:01:42.799392561-0500", tz="America/Rainy_River")
    slow = (ts + offset) - offset == ts
    fast = offset.is_on_offset(ts)
    assert fast == slow
Example #3
0
def create_data():
    """ create the pickle/msgpack data """

    data = {
        'A': [0., 1., 2., 3., np.nan],
        'B': [0, 1, 0, 1, 0],
        'C': ['foo1', 'foo2', 'foo3', 'foo4', 'foo5'],
        'D': date_range('1/1/2009', periods=5),
        'E': [0., 1, Timestamp('20100101'), 'foo', 2.]
    }

    scalars = dict(timestamp=Timestamp('20130101'), period=Period('2012', 'M'))

    index = dict(int=Index(np.arange(10)),
                 date=date_range('20130101', periods=10),
                 period=period_range('2013-01-01', freq='M', periods=10),
                 float=Index(np.arange(10, dtype=np.float64)),
                 uint=Index(np.arange(10, dtype=np.uint64)),
                 timedelta=timedelta_range('00:00:00', freq='30T', periods=10))

    if _loose_version >= LooseVersion('0.18'):
        from pandas import RangeIndex
        index['range'] = RangeIndex(10)

    if _loose_version >= LooseVersion('0.21'):
        from pandas import interval_range
        index['interval'] = interval_range(0, periods=10)

    mi = dict(reg2=MultiIndex.from_tuples(tuple(
        zip(*[['bar', 'bar', 'baz', 'baz', 'foo', 'foo', 'qux', 'qux'],
              ['one', 'two', 'one', 'two', 'one', 'two', 'one', 'two']])),
                                          names=['first', 'second']))

    series = dict(float=Series(data['A']),
                  int=Series(data['B']),
                  mixed=Series(data['E']),
                  ts=Series(np.arange(10).astype(np.int64),
                            index=date_range('20130101', periods=10)),
                  mi=Series(np.arange(5).astype(np.float64),
                            index=MultiIndex.from_tuples(tuple(
                                zip(*[[1, 1, 2, 2, 2], [3, 4, 3, 4, 5]])),
                                                         names=['one',
                                                                'two'])),
                  dup=Series(np.arange(5).astype(np.float64),
                             index=['A', 'B', 'C', 'D', 'A']),
                  cat=Series(Categorical(['foo', 'bar', 'baz'])),
                  dt=Series(date_range('20130101', periods=5)),
                  dt_tz=Series(
                      date_range('20130101', periods=5, tz='US/Eastern')),
                  period=Series([Period('2000Q1')] * 5))

    mixed_dup_df = DataFrame(data)
    mixed_dup_df.columns = list("ABCDA")
    frame = dict(float=DataFrame({
        'A': series['float'],
        'B': series['float'] + 1
    }),
                 int=DataFrame({
                     'A': series['int'],
                     'B': series['int'] + 1
                 }),
                 mixed=DataFrame({k: data[k]
                                  for k in ['A', 'B', 'C', 'D']}),
                 mi=DataFrame(
                     {
                         'A': np.arange(5).astype(np.float64),
                         'B': np.arange(5).astype(np.int64)
                     },
                     index=MultiIndex.from_tuples(tuple(
                         zip(*[['bar', 'bar', 'baz', 'baz', 'baz'],
                               ['one', 'two', 'one', 'two', 'three']])),
                                                  names=['first', 'second'])),
                 dup=DataFrame(np.arange(15).reshape(5, 3).astype(np.float64),
                               columns=['A', 'B', 'A']),
                 cat_onecol=DataFrame({'A': Categorical(['foo', 'bar'])}),
                 cat_and_float=DataFrame({
                     'A':
                     Categorical(['foo', 'bar', 'baz']),
                     'B':
                     np.arange(3).astype(np.int64)
                 }),
                 mixed_dup=mixed_dup_df,
                 dt_mixed_tzs=DataFrame(
                     {
                         'A': Timestamp('20130102', tz='US/Eastern'),
                         'B': Timestamp('20130603', tz='CET')
                     },
                     index=range(5)),
                 dt_mixed2_tzs=DataFrame(
                     {
                         'A': Timestamp('20130102', tz='US/Eastern'),
                         'B': Timestamp('20130603', tz='CET'),
                         'C': Timestamp('20130603', tz='UTC')
                     },
                     index=range(5)))

    cat = dict(int8=Categorical(list('abcdefg')),
               int16=Categorical(np.arange(1000)),
               int32=Categorical(np.arange(10000)))

    timestamp = dict(normal=Timestamp('2011-01-01'),
                     nat=NaT,
                     tz=Timestamp('2011-01-01', tz='US/Eastern'))

    if _loose_version < LooseVersion('0.19.2'):
        timestamp['freq'] = Timestamp('2011-01-01', offset='D')
        timestamp['both'] = Timestamp('2011-01-01',
                                      tz='Asia/Tokyo',
                                      offset='M')
    else:
        timestamp['freq'] = Timestamp('2011-01-01', freq='D')
        timestamp['both'] = Timestamp('2011-01-01', tz='Asia/Tokyo', freq='M')

    off = {
        'DateOffset': DateOffset(years=1),
        'DateOffset_h_ns': DateOffset(hour=6, nanoseconds=5824),
        'BusinessDay': BusinessDay(offset=timedelta(seconds=9)),
        'BusinessHour': BusinessHour(normalize=True, n=6, end='15:14'),
        'CustomBusinessDay': CustomBusinessDay(weekmask='Mon Fri'),
        'SemiMonthBegin': SemiMonthBegin(day_of_month=9),
        'SemiMonthEnd': SemiMonthEnd(day_of_month=24),
        'MonthBegin': MonthBegin(1),
        'MonthEnd': MonthEnd(1),
        'QuarterBegin': QuarterBegin(1),
        'QuarterEnd': QuarterEnd(1),
        'Day': Day(1),
        'YearBegin': YearBegin(1),
        'YearEnd': YearEnd(1),
        'Week': Week(1),
        'Week_Tues': Week(2, normalize=False, weekday=1),
        'WeekOfMonth': WeekOfMonth(week=3, weekday=4),
        'LastWeekOfMonth': LastWeekOfMonth(n=1, weekday=3),
        'FY5253': FY5253(n=2, weekday=6, startingMonth=7, variation="last"),
        'Easter': Easter(),
        'Hour': Hour(1),
        'Minute': Minute(1)
    }

    return dict(series=series,
                frame=frame,
                index=index,
                scalars=scalars,
                mi=mi,
                sp_series=dict(float=_create_sp_series(),
                               ts=_create_sp_tsseries()),
                sp_frame=dict(float=_create_sp_frame()),
                cat=cat,
                timestamp=timestamp,
                offsets=off)
def create_data():
    """ create the pickle/msgpack data """

    data = {
        "A": [0.0, 1.0, 2.0, 3.0, np.nan],
        "B": [0, 1, 0, 1, 0],
        "C": ["foo1", "foo2", "foo3", "foo4", "foo5"],
        "D": date_range("1/1/2009", periods=5),
        "E": [0.0, 1, Timestamp("20100101"), "foo", 2.0],
    }

    scalars = dict(timestamp=Timestamp("20130101"), period=Period("2012", "M"))

    index = dict(
        int=Index(np.arange(10)),
        date=date_range("20130101", periods=10),
        period=period_range("2013-01-01", freq="M", periods=10),
        float=Index(np.arange(10, dtype=np.float64)),
        uint=Index(np.arange(10, dtype=np.uint64)),
        timedelta=timedelta_range("00:00:00", freq="30T", periods=10),
    )

    index["range"] = RangeIndex(10)

    if _loose_version >= LooseVersion("0.21"):
        from pandas import interval_range

        index["interval"] = interval_range(0, periods=10)

    mi = dict(reg2=MultiIndex.from_tuples(
        tuple(
            zip(*[
                ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"],
                ["one", "two", "one", "two", "one", "two", "one", "two"],
            ])),
        names=["first", "second"],
    ))

    series = dict(
        float=Series(data["A"]),
        int=Series(data["B"]),
        mixed=Series(data["E"]),
        ts=Series(np.arange(10).astype(np.int64),
                  index=date_range("20130101", periods=10)),
        mi=Series(
            np.arange(5).astype(np.float64),
            index=MultiIndex.from_tuples(tuple(
                zip(*[[1, 1, 2, 2, 2], [3, 4, 3, 4, 5]])),
                                         names=["one", "two"]),
        ),
        dup=Series(np.arange(5).astype(np.float64),
                   index=["A", "B", "C", "D", "A"]),
        cat=Series(Categorical(["foo", "bar", "baz"])),
        dt=Series(date_range("20130101", periods=5)),
        dt_tz=Series(date_range("20130101", periods=5, tz="US/Eastern")),
        period=Series([Period("2000Q1")] * 5),
    )

    mixed_dup_df = DataFrame(data)
    mixed_dup_df.columns = list("ABCDA")
    frame = dict(
        float=DataFrame({
            "A": series["float"],
            "B": series["float"] + 1
        }),
        int=DataFrame({
            "A": series["int"],
            "B": series["int"] + 1
        }),
        mixed=DataFrame({k: data[k]
                         for k in ["A", "B", "C", "D"]}),
        mi=DataFrame(
            {
                "A": np.arange(5).astype(np.float64),
                "B": np.arange(5).astype(np.int64)
            },
            index=MultiIndex.from_tuples(
                tuple(
                    zip(*[
                        ["bar", "bar", "baz", "baz", "baz"],
                        ["one", "two", "one", "two", "three"],
                    ])),
                names=["first", "second"],
            ),
        ),
        dup=DataFrame(np.arange(15).reshape(5, 3).astype(np.float64),
                      columns=["A", "B", "A"]),
        cat_onecol=DataFrame({"A": Categorical(["foo", "bar"])}),
        cat_and_float=DataFrame({
            "A": Categorical(["foo", "bar", "baz"]),
            "B": np.arange(3).astype(np.int64),
        }),
        mixed_dup=mixed_dup_df,
        dt_mixed_tzs=DataFrame(
            {
                "A": Timestamp("20130102", tz="US/Eastern"),
                "B": Timestamp("20130603", tz="CET"),
            },
            index=range(5),
        ),
        dt_mixed2_tzs=DataFrame(
            {
                "A": Timestamp("20130102", tz="US/Eastern"),
                "B": Timestamp("20130603", tz="CET"),
                "C": Timestamp("20130603", tz="UTC"),
            },
            index=range(5),
        ),
    )

    cat = dict(
        int8=Categorical(list("abcdefg")),
        int16=Categorical(np.arange(1000)),
        int32=Categorical(np.arange(10000)),
    )

    timestamp = dict(
        normal=Timestamp("2011-01-01"),
        nat=NaT,
        tz=Timestamp("2011-01-01", tz="US/Eastern"),
    )

    timestamp["freq"] = Timestamp("2011-01-01", freq="D")
    timestamp["both"] = Timestamp("2011-01-01", tz="Asia/Tokyo", freq="M")

    off = {
        "DateOffset": DateOffset(years=1),
        "DateOffset_h_ns": DateOffset(hour=6, nanoseconds=5824),
        "BusinessDay": BusinessDay(offset=timedelta(seconds=9)),
        "BusinessHour": BusinessHour(normalize=True, n=6, end="15:14"),
        "CustomBusinessDay": CustomBusinessDay(weekmask="Mon Fri"),
        "SemiMonthBegin": SemiMonthBegin(day_of_month=9),
        "SemiMonthEnd": SemiMonthEnd(day_of_month=24),
        "MonthBegin": MonthBegin(1),
        "MonthEnd": MonthEnd(1),
        "QuarterBegin": QuarterBegin(1),
        "QuarterEnd": QuarterEnd(1),
        "Day": Day(1),
        "YearBegin": YearBegin(1),
        "YearEnd": YearEnd(1),
        "Week": Week(1),
        "Week_Tues": Week(2, normalize=False, weekday=1),
        "WeekOfMonth": WeekOfMonth(week=3, weekday=4),
        "LastWeekOfMonth": LastWeekOfMonth(n=1, weekday=3),
        "FY5253": FY5253(n=2, weekday=6, startingMonth=7, variation="last"),
        "Easter": Easter(),
        "Hour": Hour(1),
        "Minute": Minute(1),
    }

    return dict(
        series=series,
        frame=frame,
        index=index,
        scalars=scalars,
        mi=mi,
        sp_series=dict(float=_create_sp_series(), ts=_create_sp_tsseries()),
        sp_frame=dict(float=_create_sp_frame()),
        cat=cat,
        timestamp=timestamp,
        offsets=off,
    )
    start_date=Timestamp('1983-01-01'),
    end_date=Timestamp('1997-06-01'))

QueenBirthday2 = Holiday(
    name="Queen's Birthday",  # 英女王生日 4月
    month=4,
    day=21,
    observance=process_queen_birthday,
    start_date=Timestamp('1926-04-21'),
    end_date=Timestamp('1983-01-01'))

CommemoratingAlliedVictory = Holiday(
    name="Commemorating the allied victory",  # 重光纪念日 8月最后一个星期一
    month=8,
    day=20,
    offset=LastWeekOfMonth(weekday=0),
    start_date=Timestamp('1945-08-30'),
    end_date=Timestamp('1997-07-01'))

IDontKnow = Holiday(
    name="I dont know these days, please tell me",  # 8月第一个星期一
    month=7,
    day=31,
    offset=WeekOfMonth(week=0, weekday=0),
    start_date=Timestamp('1960-08-01'),
    end_date=Timestamp('1983-01-01'))

HKClosedDay = [
    # I dont know these days
    Timestamp('1970-07-01', tz='UTC'),
    Timestamp('1971-07-01', tz='UTC'),
Example #6
0
def create_data():
    """create the pickle data"""
    data = {
        "A": [0.0, 1.0, 2.0, 3.0, np.nan],
        "B": [0, 1, 0, 1, 0],
        "C": ["foo1", "foo2", "foo3", "foo4", "foo5"],
        "D": date_range("1/1/2009", periods=5),
        "E": [0.0, 1, Timestamp("20100101"), "foo", 2.0],
    }

    scalars = {
        "timestamp": Timestamp("20130101"),
        "period": Period("2012", "M")
    }

    index = {
        "int": Index(np.arange(10)),
        "date": date_range("20130101", periods=10),
        "period": period_range("2013-01-01", freq="M", periods=10),
        "float": Index(np.arange(10, dtype=np.float64)),
        "uint": Index(np.arange(10, dtype=np.uint64)),
        "timedelta": timedelta_range("00:00:00", freq="30T", periods=10),
    }

    index["range"] = RangeIndex(10)

    index["interval"] = interval_range(0, periods=10)

    mi = {
        "reg2":
        MultiIndex.from_tuples(
            tuple(
                zip(*[
                    ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"],
                    ["one", "two", "one", "two", "one", "two", "one", "two"],
                ])),
            names=["first", "second"],
        )
    }

    series = {
        "float":
        Series(data["A"]),
        "int":
        Series(data["B"]),
        "mixed":
        Series(data["E"]),
        "ts":
        Series(np.arange(10).astype(np.int64),
               index=date_range("20130101", periods=10)),
        "mi":
        Series(
            np.arange(5).astype(np.float64),
            index=MultiIndex.from_tuples(tuple(
                zip(*[[1, 1, 2, 2, 2], [3, 4, 3, 4, 5]])),
                                         names=["one", "two"]),
        ),
        "dup":
        Series(np.arange(5).astype(np.float64),
               index=["A", "B", "C", "D", "A"]),
        "cat":
        Series(Categorical(["foo", "bar", "baz"])),
        "dt":
        Series(date_range("20130101", periods=5)),
        "dt_tz":
        Series(date_range("20130101", periods=5, tz="US/Eastern")),
        "period":
        Series([Period("2000Q1")] * 5),
    }

    mixed_dup_df = DataFrame(data)
    mixed_dup_df.columns = list("ABCDA")
    frame = {
        "float":
        DataFrame({
            "A": series["float"],
            "B": series["float"] + 1
        }),
        "int":
        DataFrame({
            "A": series["int"],
            "B": series["int"] + 1
        }),
        "mixed":
        DataFrame({k: data[k]
                   for k in ["A", "B", "C", "D"]}),
        "mi":
        DataFrame(
            {
                "A": np.arange(5).astype(np.float64),
                "B": np.arange(5).astype(np.int64)
            },
            index=MultiIndex.from_tuples(
                tuple(
                    zip(*[
                        ["bar", "bar", "baz", "baz", "baz"],
                        ["one", "two", "one", "two", "three"],
                    ])),
                names=["first", "second"],
            ),
        ),
        "dup":
        DataFrame(np.arange(15).reshape(5, 3).astype(np.float64),
                  columns=["A", "B", "A"]),
        "cat_onecol":
        DataFrame({"A": Categorical(["foo", "bar"])}),
        "cat_and_float":
        DataFrame({
            "A": Categorical(["foo", "bar", "baz"]),
            "B": np.arange(3).astype(np.int64),
        }),
        "mixed_dup":
        mixed_dup_df,
        "dt_mixed_tzs":
        DataFrame(
            {
                "A": Timestamp("20130102", tz="US/Eastern"),
                "B": Timestamp("20130603", tz="CET"),
            },
            index=range(5),
        ),
        "dt_mixed2_tzs":
        DataFrame(
            {
                "A": Timestamp("20130102", tz="US/Eastern"),
                "B": Timestamp("20130603", tz="CET"),
                "C": Timestamp("20130603", tz="UTC"),
            },
            index=range(5),
        ),
    }

    cat = {
        "int8": Categorical(list("abcdefg")),
        "int16": Categorical(np.arange(1000)),
        "int32": Categorical(np.arange(10000)),
    }

    timestamp = {
        "normal": Timestamp("2011-01-01"),
        "nat": NaT,
        "tz": Timestamp("2011-01-01", tz="US/Eastern"),
    }

    timestamp["freq"] = Timestamp("2011-01-01", freq="D")
    timestamp["both"] = Timestamp("2011-01-01", tz="Asia/Tokyo", freq="M")

    off = {
        "DateOffset": DateOffset(years=1),
        "DateOffset_h_ns": DateOffset(hour=6, nanoseconds=5824),
        "BusinessDay": BusinessDay(offset=timedelta(seconds=9)),
        "BusinessHour": BusinessHour(normalize=True, n=6, end="15:14"),
        "CustomBusinessDay": CustomBusinessDay(weekmask="Mon Fri"),
        "SemiMonthBegin": SemiMonthBegin(day_of_month=9),
        "SemiMonthEnd": SemiMonthEnd(day_of_month=24),
        "MonthBegin": MonthBegin(1),
        "MonthEnd": MonthEnd(1),
        "QuarterBegin": QuarterBegin(1),
        "QuarterEnd": QuarterEnd(1),
        "Day": Day(1),
        "YearBegin": YearBegin(1),
        "YearEnd": YearEnd(1),
        "Week": Week(1),
        "Week_Tues": Week(2, normalize=False, weekday=1),
        "WeekOfMonth": WeekOfMonth(week=3, weekday=4),
        "LastWeekOfMonth": LastWeekOfMonth(n=1, weekday=3),
        "FY5253": FY5253(n=2, weekday=6, startingMonth=7, variation="last"),
        "Easter": Easter(),
        "Hour": Hour(1),
        "Minute": Minute(1),
    }

    return {
        "series": series,
        "frame": frame,
        "index": index,
        "scalars": scalars,
        "mi": mi,
        "sp_series": {
            "float": _create_sp_series(),
            "ts": _create_sp_tsseries()
        },
        "sp_frame": {
            "float": _create_sp_frame()
        },
        "cat": cat,
        "timestamp": timestamp,
        "offsets": off,
    }