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I want to figure out how to remove nan values from my array. It looks something like this:

x = [1400, 1500, 1600, nan, nan, nan ,1700] #Not in this exact configuration

I'm relatively new to python so I'm still learning. Any tips?

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2 Answers 2

up vote 22 down vote accepted

If you're using numpy for your arrays, you can also use

x = x[numpy.logical_not(numpy.isnan(x))]

Equivalently

x = x[~numpy.isnan(x)]

[Thanks to chbrown for the added shorthand]

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2  
Or x = x[numpy.isfinite(x)] –  lazy1 Jul 23 '12 at 22:29
    
These both work! I'm so glad there are so many ways to do this. Thank you! –  Dax Feliz Jul 23 '12 at 22:47
2  
Or x = x[~numpy.isnan(x)], which is equivalent to mutzmatron's original answer, but shorter. In case you want to keep your infinities around, know that numpy.isfinite(numpy.inf) == False, of course, but ~numpy.isnan(numpy.inf) == True. –  chbrown Nov 19 '13 at 19:02
    
@dax-felizv I agree with @chbrown, NaN and Infinite are not the same in numpy. @chbrown - thanks for pointing out the shorthand for logical_not, though beware that it is considerably slower - stackoverflow.com/questions/15998188/…, stackoverflow.com/questions/13600988/… –  jmetz Nov 20 '13 at 19:45
    
Hmm, @mutzmatron -- I figured they did the same thing underneath the hood, and I'm getting very similar results with timeit (as did @unutbu at that first link): python -m timeit -s "import numpy; bools = numpy.random.uniform(size=10000) >= 0.5" "numpy.logical_not(bools)" vs. python -m timeit -s "import numpy; bools = numpy.random.uniform(size=10000) >= 0.5" "~bools" (numpy.__version__ == '1.8.0') –  chbrown Nov 20 '13 at 22:41

Try this:

import math
print [value for value in x if not math.isnan(value)]

For more, read on List Comprehensions.

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AWESOME! That did it! Thank you so much! I wish one line of code could fix all my problems :) –  Dax Feliz Jul 23 '12 at 22:45
    
If you're using numpy both my answer and that by @lazy1 are almost an order of magnitude faster than the list comprehension - lazy1's solution is slightly faster (though technically will also not return any infinity values). –  jmetz Jul 24 '12 at 13:54

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