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

$40,000*
$40000 conditions attached

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

[0-9]+

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

Thanks

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'])
print(df)
#                             P
# 0                    $40,000*
# 1  $40000 conditions attached

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

yields

       P
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)
print(df)
pricing
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)

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