I want to replace all strings that contain a specific substring. So for example if I have this dataframe:

import pandas as pd
df = pd.DataFrame({'name': ['Bob', 'Jane', 'Alice'], 
                   'sport': ['tennis', 'football', 'basketball']})

I could replace football with the string 'ball sport' like this:

df.replace({'sport': {'football': 'ball sport'}})

What I want though is to replace everything that contains ball (in this case football and basketball) with 'ball sport'. Something like this:

df.replace({'sport': {'[strings that contain ball]': 'ball sport'}})
up vote 10 down vote accepted

You can use str.contains to mask the rows that contain 'ball' and then overwrite with the new value:

In [71]:
df.loc[df['sport'].str.contains('ball'), 'sport'] = 'ball sport'

    name       sport
0    Bob      tennis
1   Jane  ball sport
2  Alice  ball sport

To make it case-insensitive pass `case=False:

df.loc[df['sport'].str.contains('ball', case=False), 'sport'] = 'ball sport'
  • Thanks this works :D This method seems to be case sensitive. Would there be a way to change that? – sk8r Sep 29 '16 at 12:04
  • pass case=False: df['sport'].str.contains('ball', case=False) – EdChum Sep 29 '16 at 12:05
  • Nice thats a perfect solution, thanks for your help! – sk8r Sep 29 '16 at 12:07
  • @EdChum, What about if only change that column name is Alice? – Axis Feb 9 at 3:19
  • @Axis sorry I don't understand your question can you explain what the desired output should be – EdChum Feb 9 at 9:00

You can use apply with a lambda. The x parameter of the lambda function will be each value in the 'sport' column:

df.sport = df.sport.apply(lambda x: 'ball sport' if 'ball' in x else x)
  • And add small notice - works if not None in df.sport – jezrael Sep 29 '16 at 11:10

you can use str.replace

df.sport.str.replace(r'(^.*ball.*$)', 'ball sport')

0        tennis
1    ball sport
2    ball sport
Name: sport, dtype: object

reassign with

df['sport'] = df.sport.str.replace(r'(^.*ball.*$)', 'ball sport')

enter image description here

  • Can you add timings? – jezrael Sep 29 '16 at 11:11
  • Thanks it works :) How could I change the regex so that it isn't case sensitive? – sk8r Sep 29 '16 at 12:02
  • 1
    regex solutions are mostly underrated, +1 – Zero Mar 27 at 14:25

A different str.contains

 df['support'][df.name.str.contains('ball')] = 'ball support'

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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