# handling zeros in pandas DataFrames column divisions in Python

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?

-
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

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
``````
-
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
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`? – Amelio Vazquez-Reina Jul 28 '14 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 '14 at 18:16