I have a dictionary name date_dict keyed by datetime dates with values corresponding to integer counts of observations. I convert this to a sparse series/dataframe with censored observations that I would like to join or convert to a series/dataframe with continuous dates. The nasty list comprehension is my hack to get around the fact that pandas apparently won't automatically covert datetime date objects to an appropriate DateTime index.
df1 = pd.DataFrame(data=date_dict.values(), index=[datetime.datetime.combine(i, datetime.time()) for i in date_dict.keys()], columns=['Name']) df1 = df1.sort(axis=0)
This example has 1258 observations and the DateTime index runs from 2003-06-24 to 2012-11-07.
df1.head() Name Date 2003-06-24 2 2003-08-13 1 2003-08-19 2 2003-08-22 1 2003-08-24 5
I can create an empty dataframe with a continuous DateTime index, but this introduces an unneeded column and seems clunky. I feel as though I'm missing a more elegant solution involving a join.
df2 = pd.DataFrame(data=None,columns=['Empty'], index=pd.DateRange(min(date_dict.keys()), max(date_dict.keys()))) df3 = df1.join(df2,how='right') df3.head() Name Empty 2003-06-24 2 NaN 2003-06-25 NaN NaN 2003-06-26 NaN NaN 2003-06-27 NaN NaN 2003-06-30 NaN NaN
Is there a simpler or more elegant way to fill a continuous dataframe from a sparse dataframe so that there is (1) a continuous index, (2) the NaNs are 0s, and (3) there is no left-over empty column in the dataframe?
Name 2003-06-24 2 2003-06-25 0 2003-06-26 0 2003-06-27 0 2003-06-30 0