Exemple #1
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def test_resample():

    df = to_dataframe(data)
    assert isinstance(resample(df, "2d"), DataFrame)
    assert list(resample(df, "2d").index.values[-2:]) == [
        numpy.datetime64("2019-05-05T00:00:00.000000000"),
        numpy.datetime64("2019-05-07T00:00:00.000000000"),
    ]
Exemple #2
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def test_resample_calendar():

    df = to_dataframe(data)
    assert isinstance(resample(df, "W-Mon"), DataFrame)
    assert list(resample(df, "W-Mon").index.values[-2:]) == [
        numpy.datetime64("2019-05-06T00:00:00.000000000"),
        numpy.datetime64("2019-05-13T00:00:00.000000000"),
    ]
def resample_ohlc(price, vol, scale, mode='ohlcv'):
    timescales = {
        '5min': 5,
        '15min': 15,
        '30min': 30,
        '1h': 60,
        '4h': 240,
        '12h': 720,
        '1d': 1440,
        '3d': 4320,
        '1w': 10080
    }
    t = timescales.get(scale)

    if mode == 'ohlcv':
        new_price = resample(price, scale)
        new_vol = list(new_price.volume)

    if mode == 'close':
        new_price = []
        new_vol = []
        for i in range(int(len(price) / t)):
            pos = i * t
            p = price[pos + t - 1]
            new_price.append(p)
            v = sum(vol[pos:pos + t])
            new_vol.append(v)
    if mode == 'mean':
        new_price = []
        new_vol = []
        for i in range(int(len(price) / t)):
            pos = i * t
            p = statistics.mean(price[pos:pos + t])
            new_price.append(p)
            v = sum(vol[pos:pos + t])
            new_vol.append(v)
    if mode == 'median':
        new_price = []
        new_vol = []
        for i in range(int(len(price) / t)):
            pos = i * t
            p = statistics.median(price[pos:pos + t])
            new_price.append(p)
            v = sum(vol[pos:pos + t])
            new_vol.append(v)

    return new_price, new_vol
Exemple #4
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    def resample(ohlc: DataFrame, interval: str) -> DataFrame:
        """resample by <interval>"""

        return resample(ohlc, interval)