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I have a pandas DataFrame like following.

df = pd.DataFrame([[1.1, 1.1, 1.1, 2.6, 2.5, 3.4,2.6,2.6,3.4,3.4,2.6,1.1,1.1,3.3], list('AAABBBBABCBDDD'), [1.1, 1.7, 2.5, 2.6, 3.3, 3.8,4.0,4.2,4.3,4.5,4.6,4.7,4.7,4.8], ['x/y/z','x/y','x/y/z/n','x/u','x','x/u/v','x/y/z','x','x/u/v/b','-','x/y','x/y/z','x','x/u/v/w'],['1','3','3','2','4','2','5','3','6','3','5','1','1','1'],['200','400','404','200','200','404','200','404','500','200','500','200','200','400']]).T

df.columns = ['col1','col2','col3','col4','ID','col5']

I want group this by "ID" and get the 2nd row of each group. Later I will need to get 3rd and 4th also. Just explain me how to get only the 2nd row of each group.

I tried following which gives both first and second.

df.groupby('ID').head(2)

Instead I need to get only the second row. Since ID 4 and 6 has no second rows need to ignore them.

             col1 col2 col3     col4     ID    col5
ID                                           
1       0   1.1     A  1.1    x/y/z       1    200
        11  1.1     D  4.7    x/y/z       1    200
2       3   2.6     B  2.6      x/u       2    200
        5   3.4     B  3.8    x/u/v       2    404
3       1   1.1     A  1.7      x/y       3    400
        2   1.1     A  2.5  x/y/z/n       3    404
4       4   2.5     B  3.3        x       4    200
5       6   2.6     B    4    x/y/z       5    200
        10  2.6     B  4.6      x/y       5    500
6       8   3.4     B  4.3  x/u/v/b       6    500
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2 Answers 2

up vote 8 down vote accepted

I think the nth method is supposed to do just that:

In [11]: g.nth(1).dropna()
Out[11]: 
    col1 col2  col3     col4 col5
ID                               
1    1.1    D   4.7    x/y/z  200
2    3.4    B   3.8    x/u/v  404
3    1.1    A   2.5  x/y/z/n  404
5    2.6    B   4.6      x/y  500

In 0.13 another way to do this is to use cumcount:

df[g.cumcount() == n - 1]

...which is significantly faster.

In [21]: %timeit g.nth(1).dropna()
100 loops, best of 3: 11.3 ms per loop

In [22]: %timeit df[g.cumcount() == 1]
1000 loops, best of 3: 286 µs per loop
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1  
+1, but isn't nth(2) return 3rd row? MAy be you need nth(1)? –  Roman Pekar Nov 20 '13 at 5:07
    
@RomanPekar good spot! –  Andy Hayden Nov 20 '13 at 5:08
    
@Andy Hayden : Hey Andy Thanks for your elegant answer..:) Really what about third one? –  Nilani Algiriyage Nov 20 '13 at 5:10
    
@Andy Hayden : Sorry! g.nth(2).dropna() gives every third row. Thanks again..:) –  Nilani Algiriyage Nov 20 '13 at 5:15

If you use apply on the groupby, the function you pass is called on each group, passed as a DataFrame. So you can do:

df.groupby('ID').apply(lambda t: t.iloc[1])

However, this will raise an error if the group doesn't have at least two rows. If you want to exclude groups with fewer than two rows, that could be trickier. I'm not aware of a way to exclude the result of apply only for certain groups. You could try filtering the group list first by removing small groups, or return a one-row nan-filled DataFrame and do dropna on the result.

share|improve this answer
    
You have to be careful here as this will raise if there is a group with less than 1 item. –  Andy Hayden Nov 20 '13 at 5:03
    
@BrenBarn Thanks verymuch!...yes, Not working for my problem since there are groups without two rows :( –  Nilani Algiriyage Nov 20 '13 at 5:07

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