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
float("2,5".replace(',', '.')) will do in most cases
valueis a large number and
.has been used for thousands, you can:
Replace all commas for points:
Remove all but the last point:
value.replace(".", "", value.count(".") -1)
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:
Try replacing all the decimal commas with decimal dots:
floatAsStr = "2,5" floatAsStr = floatAsStr.replace(",", "."); myFloat = float(floatAsStr)
replace, of course, work on any substring as python does now differentiate between char and string.
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