How to replace text in a string column of a Pandas dataframe?
Solution 1:
Use the vectorised str
method replace
:
df['range'] = df['range'].str.replace(',','-')
df
range
0 (2-30)
1 (50-290)
EDIT: so if we look at what you tried and why it didn't work:
df['range'].replace(',','-',inplace=True)
from the docs we see this description:
str or regex: str: string exactly matching to_replace will be replaced with value
So because the str values do not match, no replacement occurs, compare with the following:
df = pd.DataFrame({'range':['(2,30)',',']})
df['range'].replace(',','-', inplace=True)
df['range']
0 (2,30)
1 -
Name: range, dtype: object
here we get an exact match on the second row and the replacement occurs.
Solution 2:
For anyone else arriving here from Google search on how to do a string replacement on all columns (for example, if one has multiple columns like the OP's 'range' column):
Pandas has a built in replace
method available on a dataframe object.
df.replace(',', '-', regex=True)
Source: Docs
Solution 3:
Replace all commas with underscore in the column names
data.columns= data.columns.str.replace(' ','_',regex=True)
Solution 4:
In addition, for those looking to replace more than one character in a column, you can do it using regular expressions:
import re
chars_to_remove = ['.', '-', '(', ')', '']
regular_expression = '[' + re.escape (''. join (chars_to_remove)) + ']'
df['string_col'].str.replace(regular_expression, '', regex=True)