# Split a series on time gaps in pandas?

Is it possible to split a time series on it's gaps. For example, suppose we had the following:

``````rng2011 = pd.date_range('1/1/2011', periods=72, freq='H')
rng2012 = pd.date_range('1/1/2012', periods=72, freq='H')
Y = rng2011.union(rng2012)
``````

Is it possible to look for gaps of a year or more, and split the data frame on them?

I imagine this would go something like:

``````Y.groupby(Y.map(lambda x: x.year))
``````

Except that this splits on the year date, and I'm interested in specifying an interval gap rather than the year attribute of the row.

The application is I've got trip logs from a gps, but no delineation of when one trip ended and another began. I'd like to split on gaps of ten minutes or longer.

-

Assuming Y is a column in your dataframe, one way is to use `diff` and cumsum:

``````df = DataFrame(Y)
df[1] = df[0].diff() > 600000000000.0 #nanoseconds in ten minutes
df[1] = df[1].apply(lambda x: 1 if x else 0).cumsum()
df.groupby(1)
``````

Note: If you use the number of nanoseconds in 72 hours it'll split into two groups.

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thanks, that works nicely! Can you also do the same with Y as an index? –  Maus Dec 20 '12 at 20:04
does this work on 0.10.0? col 1 contains the range 0..143 on my system. –  Garrett Dec 20 '12 at 20:17
@crewbum that's because the dataset is separated by hour (so they all split...)! –  Andy Hayden Dec 20 '12 at 20:21
does it make sense for diff() on a datetime64 series to return a float64 series, while `df[0][1] - df[0][0]` returns a datetime.timedelta object? –  Garrett Dec 20 '12 at 20:21
diff returns timedelta objects now in pandas master. –  K.-Michael Aye Mar 8 '13 at 5:54