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'
df

Out[71]:
    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')
df

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'

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