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I have an array

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

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

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5 Answers 5

up vote 3 down vote accepted
from math import log
[log(y,10) for y in x]
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4  
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
numpy.log10(mat)

Note

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.

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Awesome! That did the trick. Thank you. –  Dax Feliz Jul 25 '12 at 19:11
1  
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


Example:

>>> 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


Example:

>>> map(math.log10, x)
[3.1760912590556813, 3.021106568432122, 1.5314789170422551, 2.545307116465824]
>>> 
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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.

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The map function seems like it would be really useful. Thank you. –  Dax Feliz Jul 25 '12 at 19:11
1  
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
2  
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.

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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

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