Basically the same as Select first row in each GROUP BY group? only in pandas.

df = pd.DataFrame({'A' : ['foo', 'foo', 'foo', 'foo', 'bar', 'bar', 'bar', 'bar'],
                'B' : ['3', '1', '2', '4','2', '4', '1', '3'],

Sorting looks promising:


     A  B
1  foo  1
6  bar  1
2  foo  2
4  bar  2
0  foo  3
7  bar  3
3  foo  4
5  bar  4

But then first won't give the desired result... df.groupby('A').first()

bar  2
foo  3

Generally if you want your data sorted in a groupby but it's not one of the columns which are going to be grouped on then it's better to sort the df prior to performing groupby:

In [5]:

bar  1
foo  1
  • @JohnE yes it should, otherwise you'd have to resort it again which would be a pain – EdChum May 27 '15 at 20:32
  • 1
    hey, I'm preferring @JohnE's method as it's cleaner and more SQL-like. Maybe in pandas you can rely on sorting to be stable after grouping by another column (timsort?) but it's not as obvious as the rank syntax – ihadanny May 27 '15 at 21:30
  • @ihadanny. I totally agree, poor idea on pandas side. – user1700890 Apr 24 at 16:45

The pandas groupby function could be used for what you want, but it's really meant for aggregation. This is a simple 'take the first' operation.

What you actually want is the pandas drop_duplicates function, which by default will return the first row. What you usually would consider the groupby key, you should pass as the subset= variable


Should do what you want.

Also, df.sort('A') does not sort the DataFrame df, it returns a copy which is sorted. If you want to sort it, you have to add the inplace=True parameter.

df.sort('A', inplace=True)
  • Thanks @firelynx, but what I was really looking for is df.sort('B').groupby('A').first() – ihadanny May 27 '15 at 17:11

Here's an alternative approach using groupby().rank():

df[ df.groupby('A')['B'].rank() == 1 ]

     A  B
1  foo  1
6  bar  1

This gives you the same answer as @EdChum's for the OP's sample dataframe, but could give a different answer if you have any ties during the sort, for example, with data like this:

df = pd.DataFrame({'A': ['foo', 'foo', 'bar', 'bar'], 
                   'B': ['2', '1', '1', '1'] })

In this case you have some options using the optional method argument, depending on how you wish to handle sorting ties:

df[ df.groupby('A')['B'].rank(method='average') == 1 ]   # the default
df[ df.groupby('A')['B'].rank(method='min')     == 1 ]
df[ df.groupby('A')['B'].rank(method='first')   == 1 ]   # doesn't work, not sure why
  • 1
    agree, I was wondering the same myself. – ihadanny May 27 '15 at 21:27
  • The problem is that df.sort('B') returns a sorted copy of df, it does not change df itself. If you want to change df, you need to do one of the following: df = df.sort_values('B') or df.sort_values(inplace=True). (pandas now uses sort_values instead of sort.) – prooffreader Nov 2 '16 at 20:13

Typically you use GroupBy if there is a need to run a computation on each group (see: split-apply-combine pattern).

If you merely want to keep the first row for each unique value of a column (or a unique combination of columns) you can sort using .sort_values() (or .sort_index()) and subsequently keep each first occurence using .drop_duplicates().

df.sort_values('A', ascending=True).drop_duplicates('A', keep='first')

This approach gives you a non-destructive result where the initial DataFrame structure and index are maintained:

    A   B
4   bar 2
0   foo 3
  • Note - You can keep each first unique combination by feeding .sort_values() and .drop_duplicates() a list of column names. – fpersyn May 31 at 13:01
  • The default value for the keep argument in .drop_duplicates() is "first". Setting it explicitly is optional but can improve readability in contexts like these. – fpersyn May 31 at 14:14

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