I am using numpy.log10 to calculate the log of an array of probability values. There are some zeros in the array, and I am trying to get around it using

result = numpy.where(prob > 0.0000000001, numpy.log10(prob), -10)

However, RuntimeWarning: divide by zero encountered in log10 still appeared and I am sure it is this line caused the warning.

Although my problem is solved, I am confused why this warning appeared again and again?

  • 11
    numpy.log10(prob) is being evaluated before the where is being evaluated.
    – Bach
    Commented Feb 6, 2014 at 17:51
  • Note that you can use numpy.seterr eventually in combinations with catch_warnings to change the behaviour of numpy's division by zero. See this related question.
    – Bakuriu
    Commented Feb 6, 2014 at 18:04

6 Answers 6


You can turn it off with seterr

numpy.seterr(divide = 'ignore') 

and back on with

numpy.seterr(divide = 'warn') 
  • 50
    Slightly better: use a context manager: with numpy.errstate(divide='ignore'):
    – oyd11
    Commented Jan 19, 2020 at 10:02

Just use the where argument in np.log10

import numpy as np

prob = np.random.randint(5, size=4) /4

result = np.where(prob > 0.0000000001, prob, -10)
# print(result)
np.log10(result, out=result, where=result > 0)


[1.   0.   0.75 0.75]
[  0.         -10.          -0.12493874  -0.12493874]
  • 1
    best clean solution. I would also put it in a little function for reuse. Commented Jul 1, 2020 at 7:06
  • 4
    def safe_log10(x, eps=1e-10): result = np.where(x > eps, x, -10) np.log10(result, out=result, where=result > 0) return result Commented Jul 1, 2020 at 7:06

numpy.log10(prob) calculates the base 10 logarithm for all elements of prob, even the ones that aren't selected by the where. If you want, you can fill the zeros of prob with 10**-10 or some dummy value before taking the logarithm to get rid of the problem. (Make sure you don't compute prob > 0.0000000001 with dummy values, though.)

  • 2
    One way to acomplish this is by using numpy.where twice: prob_tmp = numpy.where(prob > 1.0e-10, prob, 1.0e-10), result = numpy.where(prob > 1.0e-10, numpy.log10(prob_tmp), -10)
    – feli_x
    Commented Feb 14, 2021 at 17:01

I solved this by finding the lowest non-zero number in the array and replacing all zeroes by a number lower than the lowest :p

Resulting in a code that would look like:

def replaceZeroes(data):
  min_nonzero = np.min(data[np.nonzero(data)])
  data[data == 0] = min_nonzero
  return data


prob = replaceZeroes(prob)
result = numpy.where(prob > 0.0000000001, numpy.log10(prob), -10)

Note that all numbers get a tiny fraction added to them.


Just specify where to calculate log10 as follows:

 result = np.log10(prob,where=prob>0)

Here is a demo: demo

  • This answer was reviewed in the Low Quality Queue. Here are some guidelines for How do I write a good answer?. Code only answers are not considered good answers, and are likely to be downvoted and/or deleted because they are less useful to a community of learners. Please edit your answer to include an explanation of how and why the code solves the problem, when it should be used, what its limitations are, and if possible a link to relevant documentation.
    – ljmc
    Commented Aug 30, 2022 at 10:49

This solution worked for me, use numpy.sterr to turn warnings off followed by where

numpy.seterr(divide = 'ignore')
df_train['feature_log'] = np.where(df_train['feature']>0, np.log(df_train['feature']), 0)

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