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With pandas 0.8.0,

import pandas
import pandas.tseries.offsets
h = pandas.tseries.offsets.Hour()
times = pandas.date_range(start='2010-1-1 1:00:05', periods=3, freq='3H')
times

[2010-01-01 01:00:05, ..., 2010-01-01 07:00:05] Length: 3, Freq: 3H, Timezone: None

times.snap(h)

[2010-01-01 01:00:05, ..., 2010-01-01 07:00:05] Length: 3, Freq: H, Timezone: None

This is because:

h.onOffset(times[0])

True

I'd guess that this functionality is pretty new, it doesn't seem to be documented much.

The rollforward and rollback methods do exactly what you would expect:

My larger goal here is using 2 frequencies (e.g. 4 hours and 1 day) and bucketing a series of timestamps based on the first frequency modulo the second (e.g. 7:05:33 -> 1, 19:59:59 -> 4, 21:44:00 -> 5)

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I have no idea but I just wanted to say this is the best sounding question title ever. –  Owen Jul 17 '12 at 2:37

1 Answer 1

The Hour DateOffset is "every hour" and not "every hour on the hour". You can try subclassing Hour to override onOffset. You can also checkout the TimeSeries.between_time method.

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