# How to efficiently handle european decimal separators using the pandas read_csv function?

I'm using read_csv to read CSV files into pandas data frames. My CSV files contain large numbers of decimals/floats. The numbers are encoded using the european decimal notation:

``````1.234.456,78
``````

This means that the '.' is used as the thousand seperator and the ',' is the decimal mark.

pandas 0.8. provides a read_csv argument called 'thousands' to set the thousand seperator. Is there an additional argument to provide the decimal mark as well? If no, what is the most effcient way to parse a europen style decimal number?

Currently i'm using string replace which i consider to be a significant perfomance penalty. The coding i'm using is this:

``````# Convert to float data type and change decimal point from ',' to '.'
f = lambda x: string.replace(x, u',', u'.')
df['MyColumn'] = df['MyColumn'].map(f)
``````

Any help is appreciated.

Thanks, Thomas

-
Note this is mentioned in open issues 584 and 781 on GitHub –  Wes McKinney Aug 3 '12 at 2:09

You can use the `converters` kw in `read_csv`. Given `/tmp/data.csv` like this:

``````"x","y"
"one","1.234,56"
"two","2.000,00"
``````

you can do:

``````In [20]: pandas.read_csv('/tmp/data.csv', converters={'y': lambda x: float(x.replace('.','').replace(',','.'))})
Out[20]:
x        y
0  one  1234.56
1  two  2000.00
``````
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Thanks, it works. I'm not sure if the converter function is faster than string.replace. The profiler will tell. ;-) –  THM Aug 1 '12 at 21:01
Probably the speed will be the same, but using the `converters` you gain the ability of specifying the type of your column. –  lbolla Aug 1 '12 at 21:06