# Handling division by zero in Pandas calculations

I have the following data:

``````a = pd.Series([1, 2, 3])
b = pd.Series([0, 0, 0])
``````

If there is a division by zero I want to in some cases

1. set the result to one of the series
2. set the result to a specific value

But the following give "unexpected" results:

``````a.div(b, fill_value = 0)
0    inf
1    inf
2    inf

a.div(b).fillna(0)
0    inf
1    inf
2    inf

a.div(b).combine_first(a)
0    inf
1    inf
2    inf
``````

I want to arrive at:

case 1: set the data to a specific value

``````0    0
1    0
2    0
``````

case 2: set the value to a specific series

``````0    1
1    2
2    3
``````

You can use `df.replace` after division:

``````(a / b).replace(np.inf, 0)

0    0.0
1    0.0
2    0.0
dtype: float64

(a / b).replace(np.inf, a)

0    1.0
1    2.0
2    3.0
dtype: float64
``````

Want to handle negative infinity too? You'll need:

``````(a / b).replace((np.inf, -np.inf), (a, a))
``````

I think you can use `Series.replace`:

``````print (a.div(b.replace(0, np.nan)).fillna(0))
0    0.0
1    0.0
2    0.0
dtype: float64

print (a.div(b.replace(0, np.nan)).fillna(a))
0    1.0
1    2.0
2    3.0
dtype: float64
``````

You can also use the `np.isinf` function to check for infinite values and then substitue them with 0. Ex-

``````a = np.asarray(np.arange(5))
b = np.asarray([1,2,0,1,0])

c = a/b
c[np.isinf(c)] = 0

#result
>>> c
array([ 0. ,  0.5,  0. ,  3. ,  0. ])
``````