Suppose we have a monthly time series, possibly with missing months, and upon loading the data into a pandas Series object with DatetimeIndex we wish to make sure each date observation is labeled as an end-of-month date. However, the raw input dates may fall anywhere in the month, so we need to force them to end-of-month observations.
My first thought was to do something like this:
import pandas as pd pd.DatetimeIndex([datetime(2012,1,20), datetime(2012,7,31)], freq='M')
However, this just leaves the dates as is [2012-01-20,2012-07-31] and does not force them to end-of-month values [2012-01-31,2012-07-31].
My second attempt was:
ix = pd.DatetimeIndex([datetime(2012,1,20), datetime(2012,7,31)], freq='M') s = pd.Series(np.random.randn(len(ix)), index=ix) s.asfreq('M')
But this gives:
2012-01-31 NaN 2012-02-29 NaN 2012-03-31 NaN 2012-04-30 NaN 2012-05-31 NaN 2012-06-30 NaN 2012-07-31 0.79173 Freq: M
as under the hood the
asfreq function is calling
date_range for a DatetimeIndex.
This problem is easily solved if I'm using
PeriodIndex instead of
DatetimeIndex; however, I need to support some frequencies that are not currently supported by
PeriodIndex and as far as I know there is no way to extend pandas with my own