I have some data from log files and would like to group entries by a minute:

 def gen(date, count=10):
     while count > 0:
         yield date, "event{}".format(randint(1,9)), "source{}".format(randint(1,3))
         count -= 1
         date += DateOffset(seconds=randint(40))

 df = DataFrame.from_records(list(gen(datetime(2012,1,1,12, 30))), index='Time', columns=['Time', 'Event', 'Source'])


 Event  Source
 2012-01-01 12:30:00     event3  source1
 2012-01-01 12:30:12     event2  source2
 2012-01-01 12:30:12     event2  source2
 2012-01-01 12:30:29     event6  source1
 2012-01-01 12:30:38     event1  source1
 2012-01-01 12:31:05     event4  source2
 2012-01-01 12:31:38     event4  source1
 2012-01-01 12:31:44     event5  source1
 2012-01-01 12:31:48     event5  source2
 2012-01-01 12:32:23     event6  source1

I tried these options:

  1. df.resample('Min') is too high level and wants to aggregate.
  2. df.groupby(date_range(datetime(2012,1,1,12, 30), freq='Min', periods=4)) fails with exception.
  3. df.groupby(TimeGrouper(freq='Min')) works fine and returns a DataFrameGroupBy object for further processing, e.g.:

    grouped = df.groupby(TimeGrouper(freq='Min'))
    2012-01-01 12:30:00  source1    1
    2012-01-01 12:31:00  source2    2
                         source1    2
    2012-01-01 12:32:00  source2    2
                         source1    2
    2012-01-01 12:33:00  source1    1

However, the TimeGrouper class is not documented.

What is the correct way to group by a period of time? How can I group the data by a minute AND by the Source column, e.g. groupby([TimeGrouper(freq='Min'), df.Source])?

3 Answers 3


You can group on any array/Series of the same length as your DataFrame --- even a computed factor that's not actually a column of the DataFrame. So to group by minute you can do:

df.groupby(df.index.map(lambda t: t.minute))

If you want to group by minute and something else, just mix the above with the column you want to use:

df.groupby([df.index.map(lambda t: t.minute), 'Source'])

Personally I find it useful to just add columns to the DataFrame to store some of these computed things (e.g., a "Minute" column) if I want to group by them often, since it makes the grouping code less verbose.

Or you could try something like this:

  • 5
    Thank you. I got the result I was looking for with this statement: df.groupby([df.index.map(lambda t: datetime(t.year, t.month, t.day, t.hour, t.minute)), df.Source, df.Event]).size().unstack(level=2)
    – serguei
    Commented Jun 17, 2012 at 19:15
  • 2
    how can i extend it to 30 minutes ? Commented Aug 20, 2014 at 7:32
  • 11
    This pd.TimeGrouper can be used to group by multiples of time units df.groupby(pd.TimeGrouper(freq='30Min'))
    – salomonvh
    Commented Sep 16, 2015 at 12:47
  • I want to group data by days, but my day ends at 02:00 not at 24:00. How can this be done? Commented Feb 20, 2018 at 11:57
  • 4
    TimeGrouper is deprecated since pandas 21 (pandas.pydata.org/pandas-docs/stable/whatsnew/…) - would pdGrouper be a drop in replacement here? Commented Jul 7, 2019 at 13:43

Since the original answer is rather old and pandas introduced periods a different solution is nowadays:


Additionally, you can resample


pd.TimeGrouper is now depreciated. Here is v1.05 update using pd.Grouper

df['Date'] = df.index

df.groupby(['Source',pd.Grouper(key = 'Date', freq='30min')])

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