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I have a pandas DataFrame containing timestamped events from multiple users. By default, the DataFrame is sorted by timestamp.

uid timestamp other_vars
  1       100        ...
  1       150        ...
  2       150        ...
  2       200        ...
  1       225        ...
  3       300        ...
  3       400        ...

I'd like to get the diff of the timestamp within users. That is, for each event, I want to get the time elapsed since the previous event generated by the same user.

uid timestamp diff other_vars
  1       100   NA        ...
  1       150   50        ...
  2       150   NA        ...
  2       200   50        ...
  1       225   75        ...
  3       300   NA        ...
  3       400  100        ...

Is there a clean way to do this in pandas, ideally without sorting by User? Thanks!

share|improve this question
    
groupby the uid and then transform –  katrielalex Feb 5 '13 at 19:27

1 Answer 1

up vote 3 down vote accepted

As mentioned in the comments, you can use groupby. I'd groupby and then diff. groupby will (unsurprisingly) group the rows:

>>> df
   uid  timestamp other_vars
0    1        100        ...
1    1        150        ...
2    2        150        ...
3    2        200        ...
4    1        225        ...
5    3        300        ...
6    3        400        ...
>>> for name, gr in df.groupby("uid"):
...     print name
...     print gr
...     
1
   uid  timestamp other_vars
0    1        100        ...
1    1        150        ...
4    1        225        ...
2
   uid  timestamp other_vars
2    2        150        ...
3    2        200        ...
3
   uid  timestamp other_vars
5    3        300        ...
6    3        400        ...

And then we select the column we're interested in along these groups and diff it:

>>> df["diff"] = df.groupby("uid")["timestamp"].diff()
>>> df
   uid  timestamp other_vars  diff
0    1        100        ...   NaN
1    1        150        ...    50
2    2        150        ...   NaN
3    2        200        ...    50
4    1        225        ...    75
5    3        300        ...   NaN
6    3        400        ...   100

Note that we didn't sort the timestamps, so if you wanted that you've have to do it explicitly.

share|improve this answer
    
This almost works. Unfortunately, the Series returned from the grouped diff contains some strange values. Running df["diff"].value_counts() yields "TypeError: unhashable type: 'numpy.ndarray'". I can go back and remove these values, but it feels clunky. –  Abe Feb 5 '13 at 19:50
    
Hmm. Could you add the output of df.to_dict() to your original post? [Or just a section of it which reproduces your error.] Either something's weird about your data or there's a bug in your pandas version. Which are you running, by the way? –  DSM Feb 5 '13 at 19:52
    
I'm running 0.9.1. Here's a slice of the to_dict output: ... 7945: 1486.0, 7946: 85489.0, 7947: 85763.0, 7948: array(nan), 7949: 84609.0, 7950: 87224.0, 7951: 85241.0, 7952: 176535.0, 7953: 82165.0, 7954: 87291.0, 7955: 85195.0, 7956: 88829.0, 7957: 72692.0} –  Abe Feb 5 '13 at 19:55
    
You can see the one array(nan) entry that's tripping up value_counts. –  Abe Feb 5 '13 at 19:56
    
Yeah, that looks weird. I don't know how you're getting the array(nan) in there in the first place -- it should just be nan. –  DSM Feb 5 '13 at 20:18

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