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I am using Pandas to structure and process Data. This is my DataFrame:

enter image description here

I grouped many datetimes by minute and I did an aggregation in order to have the sum of 'bitrate' scores by minute. This was my code to have this Dataframe:

def aggregate_data(data):

    def delete_seconds(time):

        return (datetime.datetime.strptime(time, '%Y-%m-%d %H:%M:%S')).replace(second=0)


    data['new_time'] = data['beginning_time'].apply(delete_seconds)
    df = (data[['new_time', 'bitrate']].groupby(['new_time'])).aggregate(np.sum)

    return df

Now I want to do a similar thing with 5 minutes as buckets. I wand to do group my datetimes by 5 minutes and do a mean.. Something like this : (This dosent work of course!)

df.groupby([df.index.map(lambda t: t.5minute)]).aggregate(np.mean)

Ideas ? Thx !

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  • if your index is already a datetimeIndex then you can just use resample: df.resample('5min').mean() should work
    – EdChum
    Commented Sep 23, 2016 at 15:38

1 Answer 1

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use resample.

df.resample('5Min').sum()

This assumes your index is properly set as a DateTimeIndex.

you can also use the TimeGrouper, as resampling is a groupby operation on time buckets.

df.groupby(pd.TimeGrouper('5Min')).sum()

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