I have read some pricing data into a pandas dataframe the values appear as:

$40000 conditions attached

I want to strip it down to just the numeric values. I know I can loop through and apply regex


to each field then join the resulting list back together but is there a not loopy way?


up vote 10 down vote accepted

You could remove all the non-digits using re.sub():

value = re.sub(r"[^0-9]+", "", value)

regex101 demo

  • 1
    \D+ will be the smallest :-P – Sabuj Hassan Mar 23 '14 at 7:56
  • 1
    whats the best way to apply it to the column in the dataframe? so I have df['pricing'] do I just loop row by row? – KillerSnail Mar 23 '14 at 7:57
  • @KillerSnail I don't have much experience with pandas, but I think that you should be able to use it like this: df['pricing'] = re.sub(r"[^0-9]+", "", df['pricing']). – Jerry Mar 23 '14 at 8:14
  • 19
    ok I think I got it for pandas use: df['Pricing'].replace(to_replace='[^0-9]+', value='',inplace==True,regex=True) the .replace method uses re.sub – KillerSnail Mar 23 '14 at 8:55
  • 1
    caution - stripping all non digit symbols would remove negative sign decimal point, and join together unrelated numbers, e.g. "$8.99 but $2 off with coupon" becomes "8992", "$5.99" becomes "499", "$5" becomes "5". – ChuckCottrill Apr 26 '17 at 17:52

You could use Series.str.replace:

import pandas as pd

df = pd.DataFrame(['$40,000*','$40000 conditions attached'], columns=['P'])
#                             P
# 0                    $40,000*
# 1  $40000 conditions attached

df['P'] = df['P'].str.replace(r'\D+', '').astype('int')


0  40000
1  40000

since \D matches any non-decimal digit.

  • 1
    Just the answer I was looking for. Thanks!! – Anupama G Aug 10 '17 at 14:38

You could use pandas' replace method; also you may want to keep the thousands separator ',' and the decimal place separator '.'

import pandas as pd

df = pd.DataFrame(['$40,000.32*','$40000 conditions attached'], columns=['pricing'])
df['pricing'].replace(to_replace="\$([0-9,\.]+).*", value=r"\1", regex=True, inplace=True)
0  40,000.32
1      40000

You don't need regex for this. This should work:

df['col'] = df['col'].astype(str).convert_objects(convert_numeric=True)

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.