Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have an array

x = [1500, 1049.8, 34, 351, etc]

How can I take log_10() of the entire array?

share|improve this question

5 Answers 5

up vote 3 down vote accepted
from math import log
[log(y,10) for y in x]
share|improve this answer
Or use log10 ;) This is usually more accurate than log(x, 10). –  phant0m Jul 25 '12 at 19:07

numpy will do that for you.

import numpy


mat does not have to be a numpy array for this to work, and numpy should be faster than using a list comprehension as other answers suggest.

share|improve this answer
Awesome! That did the trick. Thank you. –  Dax Feliz Jul 25 '12 at 19:11
I have no doubt that NumPy will do this, and do it very quickly, but bear in mind it's a little bit overkill to install NumPy for some simple scripting. –  Hank Gay Jul 25 '12 at 19:19
who said it's for some simple scripting? –  jmetz Jul 25 '12 at 19:23
@mutzmatron Nobody, I suppose, but the question has a beginner feel to it, and when I was starting out, I used tiny, tiny problems to reduce the number of things I could mess up at any one time. Just thought I'd point it out. FTR, I upvoted you since you gave a good answer that wasn't the same as the like 20 of us who all jumped in with a list comp as our answer. –  Hank Gay Jul 25 '12 at 20:02
@HankGay - hehehe yeah I noticed how the list comp answers poured in. Cheers for the upvote, and I do agree that in a sense the pythonic way would be to use the list comp and I use them a lot. –  jmetz Jul 25 '12 at 20:04

The simpliest way is to use a list comprehension


>>> x = [1500, 1049.8, 34, 351]
>>> import math
>>> [math.log10(i) for i in x]
[3.1760912590556813, 3.021106568432122, 1.5314789170422551, 2.545307116465824]

Another way is to use the map function


>>> map(math.log10, x)
[3.1760912590556813, 3.021106568432122, 1.5314789170422551, 2.545307116465824]
share|improve this answer
Thank you so much! –  Dax Feliz Jul 25 '12 at 19:11

You could also use the map builtin function:

import math
new_list = map(math.log10, old_list)

This will probably be insignificantly faster than the list comprehension. I add it here mainly to show the similarity between the two.

EDIT (in response to the comment by @HankGay)

To prove that map is slightly faster in this case, I've written a small benchmark:

import timeit

for i in range(10):
    t=timeit.timeit("map(math.log10,a)",setup="import math; a=range(1,100)")
    print "map",t
    t=timeit.timeit("[math.log10(x) for x in a]",setup="import math; a=range(1,100)")
    print "list-comp",t

Here are the results on my laptop (OS-X 10.5.8, CPython 2.6):

map 24.5870189667
list-comp 32.556563139
map 23.2616219521
list-comp 32.0040669441
map 23.9995992184
list-comp 33.2653431892
map 24.1171340942
list-comp 33.0399811268
map 24.3114480972
list-comp 33.5015368462
map 24.296754837
list-comp 33.5107491016
map 24.0294749737
list-comp 33.5332789421
map 23.7013399601
list-comp 33.1543111801
map 24.41685009
list-comp 32.9259850979
map 24.1111209393
list-comp 32.9298729897

It is important to realize that speed isn't everything though. "readability matters". If map creates something that is harder to read, definitely go for a list comprehension.

share|improve this answer
The map function seems like it would be really useful. Thank you. –  Dax Feliz Jul 25 '12 at 19:11
I would be utterly shocked if map were faster than a list comp, at least on CPython. The CPython implementation of list comps is optimized out the wazoo. If I get some downtime, I might go set up a micro-benchmark, which, as we all know, are fabulously useful :-) –  Hank Gay Jul 25 '12 at 19:16
@HankGay -- Check out my update. For this simple test case, map is nearly 50% faster than an equivalent list comp. –  mgilson Jul 25 '12 at 19:32
@mgilson Weird. I'm on my work machine, so it's Snow Leopard w/ Python 2.6.1 (r261:67515, Jun 24 2010, 21:47:49) , and my numbers are basically showing list comps to be ever so slightly faster, but the difference is so small I doubt it is statistically significant: my code yielded lc: 1.03603506088, map: 1.04137277603, lc: 1.16478681564, map: 1.21709990501, and lc: 0.909293889999, map: 1.15685892105 –  Hank Gay Jul 25 '12 at 19:54
And, perhaps this link ( stackoverflow.com/questions/1247486/… ) should serve as the definitive reference on the subject ... –  mgilson Jul 25 '12 at 20:23
import math
x = [1500, 1049.8, 34, 351]
y = [math.log10(num) for num in x]

This is called a list comprehension. What it is doing is creating a new list whose elements are the results of applying math.log10 to the corresponding element in the original list, which is not an array, btw.

share|improve this answer
I typically avoid for x in x as at the end of your loop, you won't have a list x anymore, only the last element. –  mgilson Jul 25 '12 at 19:36
@mgilson Excellent point. I didn't do it in the sample code I posted in my comment on your solution, no idea why I did it hear (other than I typed it in the textarea instead of vim, I suppose). I will fix that. –  Hank Gay Jul 25 '12 at 19:58

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.