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In pandas, you can divide arrays either using the division operator / (which automatically does truediv) or by using the method div(). div() is useful because you can explicitly define the axis for the operation; unfortunately, it seems like it only performs integer division, rather than true division. I keep hitting up against this issue and it sucks to always need to multiply by 1. or use astype. Am I missing a method somewhere? There isn't a truediv method and I can't find anything online. (though dir reveals that it does define __truediv__ and it supports truediv with the / operator.

from __future__ import division
import pandas as pd
import numpy as np
df = pd.DataFrame({"A": np.arange(6)})
print df.A.div(df.A.sum()) # zeros
# print df.A.truediv(df.A.sum()) # no truediv method
print df.A / df.A.sum() # truedivision as expected

Assuming that I didn't miss a method and I need to use div so I can specify an axis, which is the preferred way to do this stylistically? (or, if applicable, which is more "pythonic"?)

Is it preferred to do:

df.A.div(df.A.sum() * 1.0)

or

df.A.astype(float).div(df.A.sum())

Does this change if the divisor is an array itself?

share|improve this question
    
you can specify dtype in the constructor, e.g. pd.DataFrame({'A' : np.arange(6) }, dtype='float64') to force a float and then all div will be true (as an aside, I agree there should be a truediv method like div, pls open an issue) – Jeff May 28 '13 at 23:44
    
you can also do: df.A.__truediv__(df.A.sum()), but only for axis=0 – Jeff May 28 '13 at 23:48
    
@Jeff I was thinking the same thing in terms of an issue. And you can definitely set dtype to float64 but that doesn't resolve the issue when writing a function you want to reuse :) – Jeff Tratner May 28 '13 at 23:51
    
true (pun intended); I would just astype to be sure, my 2c – Jeff May 29 '13 at 0:09
    
@Jeff I'm in the process of writing a patch to add this to pandas. Hopefully the next version will have it. – Jeff Tratner Jun 8 '13 at 9:36

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