# Ignoring zero by division instances in script

Is there a way to ignore values in a list that create a division by zero in an iterative script instead of removing those problem values?

I'm thinking along the lines of if

``````if(x==0):
break
elif(x!=0):
continue
``````

Where the values that aren't zero get to continue on through the script.

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`continue` doesn't mean "keep going" it means "continue from the start of the loop" – John La Rooy Jul 4 '13 at 0:53
how do you know whether a elements is zero or not even before you know what it is? I mean, you should always check all the elements, no matter in a pre-treatment to the list or in a if-statement before division. – vvy Jul 4 '13 at 0:55
What if it's an array and there's a large enough number of them that you wouldn't be able to check very easily? – Probably Incorrect Jul 4 '13 at 0:59
If two two below answers don't solve your problem, perhaps you should post some more code to further describe it. – RyPeck Jul 4 '13 at 1:06
Done. I wasn't descriptive enough. I'm gonna have to gather up some more info...it's not a question of single values, but arrays where the values within those may or may not be zero. – Probably Incorrect Jul 4 '13 at 1:09

## 4 Answers

You can use list comprehension for a more efficient code,

``````from __future__ import division
num = [1,2,3,4,5,6,3,31,1,0,120,0,0]
divisor = 10
print [divisor/x for x in num if x != 0]
``````

Output:

``````[10.0, 5.0, 3.3333333333333335, 2.5, 2.0, 1.6666666666666667, 3.3333333333333335, 0.3225806451612903, 10.0, 0.08333333333333333]
``````
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Of course. You can do what you did creating a if this, then that. Or you could even set up a try/except loop and catch the division by zero exception.

A trivial example -

``````>>> d = [1,0,3,4,5,6,0]
>>> for x in d:
...    if x == 0:
...        continue  # skip this number since it will error.
...    print (5 / x)
...
5
1
1
1
0
``````
-

If you're doing a lot of arithmetic on arrays, you may want to consider using `numpy`. On top of being easier to use, and usually much faster, it's also more flexible.

For example:

``````>>> divisors = np.array([1,2,3,4,5,6,3,31,1,0,120,0,0])
>>> fractions = 10. / divisors
>>> fractions
array([ 10.        ,   5.        ,   3.33333333,   2.5       ,
2.        ,   1.66666667,   3.33333333,   0.32258065,
10.        ,          inf,   0.08333333,          inf,          inf])
``````

Compare to:

``````>>> fractions = []
>>> for divisor in divisors:
...     if divisor == 0:
...         fractions.append(float('inf'))
...     else:
...         fractions.append(10. / divisor)
``````

Or even:

``````>>> fractions = [10. / divisor if divisor else float('inf')
...              for divisor in divisors]
``````

`numpy` isn't always the answer, but it's worth taking a look at.

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The best way should be to use exception handling to just show an error message.

``````    try:
foo_with_possible_division_by_zero()
except ZeroDivisionError:
print "Warning: NaN encountered!"
``````

If you do not want a message just replace the print statement with `pass`

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