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This seems like it would be fairly straight forward but after nearly an entire day I have not found the solution. I've loaded my dataframe with read_csv and easily parsed, combined and indexed a date and a time column into one column but now I want to be able to just reshape and perform calculations based on hour and minute groupings similar to what you can do in excel pivot.

I know how to resample to hour or minute but it maintains the date portion associated with each hour/minute whereas I want to aggregate the data set ONLY to hour and minute similar to grouping in excel pivots and selecting "hour" and "minute" but not selecting anything else.

Any help would be greatly appreciated.

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Would it help to get a time object from each datetime one you have? You could create a pandas.Series object from your dataframe.index and then assign it to the index (replacing the current one). Could you "print" some rows of your dataframe? – heltonbiker Apr 28 '13 at 18:18
Thank you. I'm not familiar with using time object to get the time from the datetime column if that's what you mean. I just figured out one way that is extremely close to what I need using the following code for hourly and minutely respectively but is there an easier way to do it, especially a way to have hourly and minute together?: hourly = ims_havas.groupby(ims_havas.index.hour).sum() – prometheus2305 Apr 28 '13 at 18:34

Can't you do, where df is your DataFrame:

times = pd.to_datetime(df.timestamp_col)
df.groupby([times.hour, times.minute]).value_col.sum()
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Peeerfect! Thank you so much for saving the rest of my day! – prometheus2305 Apr 28 '13 at 18:45
Yes that works perfectly for me too but I have follow up question: how can I use this "grouped time series" as my x-axis in a matlibplot ? – 2705114-john Mar 12 '14 at 21:54

Wes' code didn't work for me either. But the DatetimeIndex function (docs) did:

times = pd.DatetimeIndex(data.datetime_col)
grouped = df.groupby([times.hour, times.minute])

The DatetimeIndex object is a representation of times in pandas. The first line creates a array of the datetimes. The second line uses this array to get the hour and minute data for all of the rows, allowing the data to be grouped (docs) by these values.

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@durron Edited! – Nix G-D Sep 12 '15 at 14:19

Came across this when I was searching for this type of groupby. Wes' code above didn't work for me, not sure if it's because changes in pandas over time.

In pandas 0.16.2, what I did in the end was:

grp = data.groupby(by=[ x : (x.hour, x.minute))])

You'd have (hour, minute) tuples as the grouped index. If you want multi-index:

grp = data.groupby(by=[ x : x.hour),
              x : x.minute)])
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