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I have the below pandas data frame. I need to do a Group By by column B and sum col A and remove the time stamp. So..In the below...should have one record with the A's summed up. Som How I do thus in pandas?

                               A  B
2013-03-15 17:00:00            1  134
2013-03-15 18:00:00          810  134
2013-03-15 19:00:00         1797  134
2013-03-15 20:00:00          813  134
2013-03-15 21:00:00         1323  134
2013-03-16 05:00:00           98  134
2013-03-16 06:00:00          515  134
2013-03-16 10:00:00          377  134
2013-03-16 11:00:00         1798  134
2013-03-16 12:00:00          985  134
2013-03-17 08:00:00          258  134
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up vote 2 down vote accepted

This can be done with a straight-forward groupby operation:

import io
import pandas as pd

content='''\
date time                               A  B
2013-03-15 17:00:00            1  134
2013-03-15 18:00:00          810  134
2013-03-15 19:00:00         1797  134
2013-03-15 20:00:00          813  135
2013-03-15 21:00:00         1323  134
2013-03-16 05:00:00           98  134
2013-03-16 06:00:00          515  135
2013-03-16 10:00:00          377  134
2013-03-16 11:00:00         1798  136
2013-03-16 12:00:00          985  136
2013-03-17 08:00:00          258  137'''

df = pd.read_table(io.BytesIO(content), sep='\s+',
                   parse_dates=[[0, 1]], header=0,
                   index_col=0)

print(df.groupby(['B']).sum())

yields

        A
B        
134  4406
135  1328
136  2783
137   258

Some of the values in B were changed to show a more interesting groupby operation.

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