I have been working with a dataframe in python and pandas that contains duplicate entries in the first column. The dataframe looks something like this:

    sample_id    qual    percent
0   sample_1      10        20
1   sample_2      20        30
2   sample_1      50        60
3   sample_2      10        90
4   sample_3      100       20

I want to write something that identifies duplicate entries within the first column and calculates the mean values of the subsequent columns. An ideal output would be something similar to the following:

    sample_id    qual    percent
0   sample_1      30        40
1   sample_2      15        60
2   sample_3      100       20

I have been struggling with this problem all afternoon and would appreciate any help.

  • 1
    Could you double check your expected output ? It doesn't seem like mean values.
    – 3kt
    Oct 7, 2016 at 14:30
  • You are correct. I have altered the data frame to include the correct mean values. Thanks!
    – David Ross
    Oct 7, 2016 at 14:39
  • How do we deal with this if there are duplicates and non-duplicates in the dataframe and you want to shrink duplicates to their mean values ? Thanks Jan 11, 2019 at 22:22

2 Answers 2


groupby the sample_id column and use mean

df.groupby('sample_id', as_index=False).mean()

get you

enter image description here


Groupby will work.


You can then use reset_index() to make look exactly as you want.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.