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So, I have a DataFrame with a multiindex which looks like this:

                               info1 info2       info3
abc-8182 2012-05-08 10:00:00       1   6.0     "yeah!"
         2012-05-08 10:01:00       2  25.0        ":("
pli-9230 2012-05-08 11:00:00       1  30.0  "see yah!"    
         2012-05-08 11:15:00       1  30.0  "see yah!"    


The index is an id and a datetime representing when that info about that id was recorded. What we needed to do was to find, for each id, the earliest record. We tried a lot of options from the dataframe methods but we ended up doing it by looping through the DataFrame:

df = pandas.read_csv(...)
empty = pandas.DataFrame()
ids = df.index.get_level_values(0)
for id in ids:
    minDate  = df.xs(id).index.min()
    row = df.xs(id).xs(minDate)
    mindf = pandas.DataFrame(row).transpose()
    mindf.index = pandas.MultiIndex.from_tuples([(id, mindate)])
    empty = empty.append(mindf)

print empty.groupby(lambda x : x).first()

Which gives me:

                                               x0  x1        x2
('abc-8182', <Timestamp: 2012-05-08 10:00:00>)  1   6     yeah!
('pli-9230', <Timestamp: 2012-05-08 11:00:00>)  1  30  see yah!

I feel that there must be a simple, "pandas idiomatic", very immediate way to do this without looping though the data frame like this. Is there? :)


share|improve this question
If your data is already sorted in time as indicated here [stackoverflow.com/questions/15788777/… - then drop_duplicates selects 'first' of the duplicate rows automatically –  user1827356 Apr 3 '13 at 14:26
I must pass the columns to drop the duplicates, right? But the duplicates I wanna drop are in one of the levels of an index, not as a column. –  Rafael S. Calsaverini Apr 3 '13 at 14:33
I did df['id'] = df.index.get_level_values(0) than df.drop_duplicates('id') works. It's a lot better, but it still feels hackish. –  Rafael S. Calsaverini Apr 3 '13 at 14:36
df.reset_index() would insert the index values as columns. But I agree the answer below seems 'more' correct –  user1827356 Apr 3 '13 at 14:39
This does exactly what I need: df2.reset_index().set_index('id').sort('datetime').groupby(lambda x : x).agg(lambda x : x[0]) –  Rafael S. Calsaverini Apr 3 '13 at 14:54

1 Answer 1

up vote 4 down vote accepted

To get the first item in each group, you can do:


which will drop the datetime field to a column before the groups are grouped by groupby, therefore it will remain in the dataframe in the result.

If you need to ensure the earliest time is kept, you can sort, before you call first:

share|improve this answer
You're kidding me it's that simple!! Hahaha. Even if the dates aren't sorted? Is there a way to sort them? –  Rafael S. Calsaverini Apr 3 '13 at 14:26
I tried this but it just returned the exact same dataframe. If I do df.sort().groupby(level=[0]).first() it kinds of does what I want, but I loose the date information, which is needed for my purposes. –  Rafael S. Calsaverini Apr 3 '13 at 14:31
This should work - df.sortlevel(1) –  user1827356 Apr 3 '13 at 14:34
If you have a MultiIndex where level 0 has values like 'abc-8182' and level 1 has timeseries values, then the above code should drop that duplicate row and keep the first in your example. You're saying that's not happening? –  bdiamante Apr 3 '13 at 14:48
Nope. Inspecting the result of the groupby, I have a single item in each group. It seems that grouping by both levels should result in this, given that each index entry is unique (there's only one datetime per id). –  Rafael S. Calsaverini Apr 3 '13 at 14:56

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