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
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=',')
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:
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