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What's the best way to handle zero denominators when dividing pandas DataFrame columns by each other in Python? for example:

df = pandas.DataFrame({"a": [1, 2, 0, 1, 5], "b": [0, 10, 20, 30, 50]})
df.a / df.b  # yields error

I'd like the ratios where the denominator is zero to be registered as NA (numpy.nan). How can this be done efficiently in pandas?

Casting to float64 does not work at level of columns:

In [29]: df
Out[29]: 
   a   b
0  1   0
1  2  10
2  0  20
3  1  30
4  5  50

In [30]: df["a"].astype("float64") / df["b"].astype("float64")
...

FloatingPointError: divide by zero encountered in divide

How can I do it just for particular columns and not entire df?

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2  
If you just use floats, you'll get +/-inf –  askewchan Apr 26 '13 at 20:06
    
@askewchan: it does not work for me - see edit –  user248237dfsf Apr 26 '13 at 20:32

1 Answer 1

up vote 5 down vote accepted

You need to work in floats, otherwise you will have integer division, prob not what you want

In [12]: df = pandas.DataFrame({"a": [1, 2, 0, 1, 5], 
                                "b": [0, 10, 20, 30, 50]}).astype('float64')

In [13]: df
Out[13]: 
   a   b
0  1   0
1  2  10
2  0  20
3  1  30
4  5  50

In [14]: df.dtypes
Out[14]: 
a    float64
b    float64
dtype: object

Here's one way

In [15]: x = df.a/df.b

In [16]: x
Out[16]: 
0         inf
1    0.200000
2    0.000000
3    0.033333
4    0.100000
dtype: float64

In [17]: x[np.isinf(x)] = np.nan

In [18]: x
Out[18]: 
0         NaN
1    0.200000
2    0.000000
3    0.033333
4    0.100000
dtype: float64

Here's another way

In [20]: df.a/df.b.replace({ 0 : np.nan })
Out[20]: 
0         NaN
1    0.200000
2    0.000000
3    0.033333
4    0.100000
dtype: float64
share|improve this answer
1  
Can I cast just a column of the df into float64 and not the whole dataframe? See my edit. I still get the error with float64 dtype –  user248237dfsf Apr 26 '13 at 20:29
1  
yes in 0.11; 0.10.1 or earlier should work, what version are u using? –  Jeff Apr 26 '13 at 21:55
    
also are you doing a np.seterr() anywhere in your codebase? –  Jeff Apr 26 '13 at 22:00
    
To clarify, couldn't one handle this now with pd.DataFrame.div? –  user815423426 Jul 28 at 18:13
    
No, that just broadcasts. The issue here is how to handle 0/0 (and turn it into a nan, as by default it will be inf) –  Jeff Jul 28 at 18:16

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