I have a CSV file with data reading that I want to read into Python. I get lists that contain strings like "2,5". Now doing float("2,5") does not work, because it has the wrong decimal mark.

How do I read this into Python as 2.5?


float("2,5".replace(',', '.')) will do in most cases

If valueis a large number and .has been used for thousands, you can:

Replace all commas for points: value.replace(",", ".")

Remove all but the last point: value.replace(".", "", value.count(".") -1)

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    Just curious, is it the true-way solution? Looks awful for me. – Andrey Agibalov Aug 18 '11 at 11:11
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    It's not a worldwide standard. For instance, in Russia commas are standard and points are not widely used. So, I believe, that correct solution for this problem is to somehow be aware of this document's author locale. Another question is - since we're talking about CSV, how did they manage to save floats with commas? :-). 3,14 is, I believe, 2 integers and not a float. – Andrey Agibalov Aug 18 '11 at 11:19
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    @loki2302 Standard csv format for countries with comma as decimal delimiter is to use ; as field delimiter in csv files. – Lauritz V. Thaulow Aug 18 '11 at 11:22
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    Standard delimiter is a comma. Everyone knows that, except Americans and English :D – Kheldar Aug 18 '11 at 11:28
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    @Jean-FrançoisCorbett I suppose I haven't been clear enough. My point was simply that delimiters depend on the language you use, mainly how numbers have been represented historically. English-based languages and Latin-based languages use incompatible systems, which is why the UK and former colonies are featured in your list. Regards! – Kheldar Dec 17 '17 at 12:23

You may do it the locale-aware way:

import locale

# Set to users preferred locale:
locale.setlocale(locale.LC_ALL, '')
# Or a specific locale:
locale.setlocale(locale.LC_NUMERIC, "en_DK.UTF-8")

print locale.atof("3,14")

Read this section before using this method.


Pandas supports this out of the box:

df = pd.read_csv(r'data.csv', decimal=',')

See http://pandas.pydata.org/pandas-docs/stable/generated/pandas.read_csv.html

  • Is there some ready command to replace comma decimal points with dot decimal points in pandas (without brute-force replacing with some regex)? – hhh Oct 2 '17 at 14:16
  • Didn't find one. But what's wrong with replacing it via apply or applymap? – maggie Oct 2 '17 at 16:41

using a regex will be more reliable

import re

decmark_reg = re.compile('(?<=\d),(?=\d)')

ss = 'abc , 2,5 def ,5,88 or (2,5, 8,12, 8945,3 )'

print ss
print decmark_reg.sub('.',ss)


abc , 2,5 def ,5,88 or (2,5, 8,12, 8945,3 )
abc , 2.5 def ,5.88 or (2.5, 8.12, 8945.3 )

If you want to treat more complex cases (numbers with no digit before the decimal mark for exemple) the regex I crafted to detect all types of numbers in the following thread may be of interest for you:


  • How can you do this on a pandas dataframe (not string)? – hhh Oct 2 '17 at 14:20

Try replacing all the decimal commas with decimal dots:

floatAsStr = "2,5"
floatAsStr = floatAsStr.replace(",", ".");
myFloat = float(floatAsStr)

The function replace, of course, work on any substring as python does now differentiate between char and string.

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    str is a bad, bad variable name. – eumiro Aug 18 '11 at 11:13
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    you are right, I just copied the code from some tutorial page and added the last line... – penelope Aug 18 '11 at 12:29

First you must ensure what locale was used to provide the number. Failing to do this random problems surely will occur.

import locale

loc = locale.getlocale()  # get and save current locale
# use locale that provided the number;
# example if German locale was used:
locale.setlocale(locale.LC_ALL, 'de_DE')
pythonnumber = locale.atof(value)
locale.setlocale(locale.LC_ALL, loc)  # restore saved locale

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