I have two data frames like following, data frame A has datetime even with minutes, data frame B only has hour.
df:A dataDate original 2018-09-30 11:20:00 3 2018-10-01 12:40:00 10 2018-10-02 07:00:00 5 2018-10-27 12:50:00 5 2018-11-28 19:45:00 7 df:B dataDate count 2018-09-30 10:00:00 300 2018-10-01 12:00:00 50 2018-10-02 07:00:00 120 2018-10-27 12:00:00 234 2018-11-28 19:05:00 714
I like to merge the two on the basis of hour date and hour, so that now in dataframe A should have all the rows filled on the basis of merge on date and hour
I can try to do it via
A['date'] = A.dataDate.date B['date'] = B.dataDate.date A['hour'] = A.dataDate.hour B['hour'] = B.dataDate.hour
and then merge
merge_df = pd.merge(A,B, how='left', left_on=['date', 'hour'], right_on=['date', 'hour'])
but its a very long process, Is their an efficient way to perform the same operation with the help of pandas time series or date functionality?