This is my code:

frst_df = df.drop(columns=["Comment"]).groupby(['source'], as_index=False).agg('first')
cmnt_df = df.groupby(['source'], as_index=False)['Comment'].apply(', '.join)
merge_df = pd.merge(frst_df, cmnt_df , on='source')

I hope it is understandable what I'm trying to do here.

I have a large dataframe where I have a column 'source'. This is the primary column of the dataframe. Now for the column 'Comment', I want to join all comments corresponding to the value of the 'source'. There are approx 50 other columns in the dataframe. I want to pick only the first element from all the values corresponding to the 'source'.

The code I wrote works fine, but the dataframe is huge and it takes lots of time to create two separate dataframes and then merge them. Is there any better way to do this?


2 Answers 2


You can use GroupBy.agg by dictionary - all columns are aggregate by first only Comment by join:

df = pd.DataFrame({

d = dict.fromkeys(df.columns.difference(['source']), 'first')
d['Comment'] = ', '.join

merge_df = df.groupby('source', as_index=False).agg(d)
print (merge_df)
  source  B  C  Comment  D  E
0      a  4  7  a, b, c  1  5
1      b  5  4     d, e  7  9
2      c  4  3        f  0  4

This is another possible solution.

df['Comment'] = df.groupby('source')['Comment'].transform(lambda x: ','.join(x))
df = df.groupby('source').first()

Your Answer

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

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