28

A similar question is asked here: Python : Getting the Row which has the max value in groups using groupby

However, I just need one record per group even if there are more than one record with maximum value in that group.

In the example below, I need one record for "s2". For me it doesn't matter which one.

>>> df = DataFrame({'Sp':['a','b','c','d','e','f'], 'Mt':['s1', 's1', 's2','s2','s2','s3'], 'Value':[1,2,3,4,5,6], 'count':[3,2,5,10,10,6]})
>>> df
   Mt Sp  Value  count
0  s1  a      1      3
1  s1  b      2      2
2  s2  c      3      5
3  s2  d      4     10
4  s2  e      5     10
5  s3  f      6      6
>>> idx = df.groupby(['Mt'])['count'].transform(max) == df['count']
>>> df[idx]
   Mt Sp  Value  count
0  s1  a      1      3
3  s2  d      4     10
4  s2  e      5     10
5  s3  f      6      6
>>> 
28

You can use first

In [14]: df.groupby('Mt').first()
Out[14]: 
   Sp  Value  count
Mt                 
s1  a      1      3
s2  c      3      5
s3  f      6      6

Update

Set as_index=False to achieve your goal

In [28]: df.groupby('Mt', as_index=False).first()
Out[28]: 
   Mt Sp  Value  count
0  s1  a      1      3
1  s2  c      3      5
2  s3  f      6      6 

Update Again

Sorry for misunderstanding what you mean. You can sort it first if you want the one with max count in a group

In [196]: df.sort('count', ascending=False).groupby('Mt', as_index=False).first()
Out[196]: 
   Mt Sp  Value  count
0  s1  a      1      3
1  s2  e      5     10
2  s3  f      6      6
  • Thanks, the structure of the dataframe changed. How to get back the same structure (ie, num of rows and columns) – user1140126 Nov 6 '13 at 17:43
  • I've updated my post – waitingkuo Nov 6 '13 at 17:57
  • @user1140126 this one returns 5 instead of 10 for Mt = s2, I thought that you need max count in each row? – Roman Pekar Nov 6 '13 at 18:09
  • He said that it doesn't matter which one is his post – waitingkuo Nov 6 '13 at 18:11
  • @waitingkuo I'm not native speaker, but for me one record per group even if there are more than one record with maximum value in that group means one record with maximum value even if there more than one record with this value. Looks like I was wrong :) – Roman Pekar Nov 6 '13 at 18:16
19

To get first occurence of maximum count you can use pandas.DataFrame.idxmax() function:

>>> df.iloc[df.groupby(['Mt']).apply(lambda x: x['count'].idxmax())]
   Mt Sp  Value  count
0  s1  a      1      3
3  s2  d      4     10
5  s3  f      6      6
  • How does this compare in speed to the other suggestions? – tommy.carstensen Mar 26 '17 at 0:52
0

Playing off of Roman Pekar's answer, I found that that the following code would work:

from math import isnan
df.iloc[[int(x) for x in df.groupby(by=df.Mt).apply(lambda x: x['count'].idxmax()).values if not isnan(y)]]

Note the isnan condition, as my application had some nan entries in the column we are maximizing over.

protected by e4c5 Mar 21 '17 at 15:49

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