I'm using pandas time series indexed with a
DatetimeIndex, and I need to have support for semiannual frequencies. The basic semiannual frequency has
2H=Jul-Dec, though some series might have the last month be a month other than December, for instance
I imagine I could certainly achieve what I want by making a custom class that derives from pandas'
DateOffset class. However, before I go and do that, I'm curious if there is a way I can simply use a built-in frequency, for instance a 6-month frequency? I have tried to do this, but cannot get resampling to the way I want.
import numpy as np import pandas as pd from datetime import datetime data = np.arange(12) s = pd.Series(data, pd.date_range(start=datetime(2007,1,31), periods=len(data), freq="M")) s.resample("6M") Out: 2007-01-31 0.0 2007-07-31 3.5 2008-01-31 9.0 Freq: 6M
Notice how pandas is aggregating using windows from Aug-Jan and Feb-Jul. In this base case I would want Jan-Jun and Jul-Dec.