-2

The DataFrame is given as follows

df = pd.DataFrame({'col1' : [1,2,9,2,9,6], 'col2' : [13,4,5,4,5,0], 'col3' : [8,23,5,4,9,5]})
   col1 col2 col3
0   1   13   8
1   2   4    23
2   9   5    5
3   2   4    4
4   9   5    9
5   6   0    5

How can I filter this DataFrame, so that I get only the rows that have the duplicates in both col1 and col2. So eventually the DataFrame should look like this:

df_new
   col1 col2 col3
0   2    4    23
1   2    4    5
2   9    5    4
3   9    5    9
5
  • In your df_new you provided, the rows don't have the same value in both col1 and col3 - can you clarify what you want to achieve?
    – gshpychka
    Nov 18, 2021 at 10:33
  • In the first df, row 1 and row 3 have the same values in col1 and col2 (2,4). Also, rows 2 and rows 4 share the same values (9,5). Do you know what I mean?
    – Minfetli
    Nov 18, 2021 at 10:35
  • So you want to keep the rows that have duplicated values in both col1 and col2?
    – gshpychka
    Nov 18, 2021 at 10:36
  • Yes, and both of them (because col3 is different).
    – Minfetli
    Nov 18, 2021 at 10:37
  • 1
    How can I filter this DataFrame, so that I get only the rows that have the same value in both col1 and col2 so it measn col1 == col2 Nov 18, 2021 at 10:41

1 Answer 1

5

Use pd.DataFrame.duplicated()

df_new = df[df.duplicated(subset=["col1", "col2"], keep=False)]

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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