I'm reading in timeseries data that contains only the available times. This leads to a timeseries with no missing values, but an unequally spaced index. I'd like to convert this to a timeseries with an equally spaced index with missing values. Since I don't know a priori what the spacing will be, I'm currently using a function like
min_dt = np.diff(series.index.values).min() new_spacing = pandas.DateOffset(days=min_dt.days, seconds=min_dt.seconds, microseconds=min_dt.microseconds) series = series.asfreq(new_spacing)
to compute what the spacing should be (note that this is using Pandas 0.7.3 - the 0.8 beta code looks slightly differently since I have to use series.index.to_pydatetime() for correct behavior with Numpy 1.6).
Is there an easier way to do this operation using the pandas library?