I have the following dataframe:

0    pre
1    post
2    a
3    b
4    post
5    pre
6    pre

I want to replace all rows in the dataframe which do not contain 'pre' to become 'nonpre', so dataframe looks like:

0    pre
1    nonpre
2    nonpre
3    nonpre
4    nonpre
5    pre
6    pre

I can do this using a dictionary and pandas replace, however I want to just select the elements which are not 'pre' and replace them with 'nonpre'. is there a better way to do that without listing all possible col values in a dictionary?

2 Answers 2


As long as you're comfortable with the df.loc[condition, column] syntax that pandas allows, this is very easy, just do df['col'] != 'pre' to find all rows that should be changed:

df['col2'] = df['col']
df.loc[df['col'] != 'pre', 'col2'] = 'nonpre'

    col    col2
0   pre     pre
1  post  nonpre
2     a  nonpre
3     b  nonpre
4  post  nonpre
5   pre     pre
6   pre     pre
  • thanks! is there any issue with using .loc I should be wary of?
    – user308827
    Nov 25, 2014 at 2:49
  • 1
    No, .loc is basically what you should be trying first when you want to get at a particular set of rows and columns in your dataframe. Not sure if you have experience with R, but it works very similarly to the subsetting syntax for R dataframes.
    – Marius
    Nov 25, 2014 at 2:51
df[df['col'].apply(lambda x: 'pre' not in x)] = 'nonpre'

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.