# built-in range or numpy.arange: which is more efficient?

When iterating over a large array with a range expression, should I use Python's built-in range function, or numpy's `arange` to get the best performance?

My reasoning so far:

`arange` probably resorts to a native implementation and might be faster therefore. On the other hand, `arange` returns a full array, which occupies memory, so there might be an overhead. Python 3's range expression is a generator, which does not hold all the values in memory.

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For large arrays numpy should be the faster solution.

In numpy you should use combinations of vectorized calculations, ufuncs and indexing to solve your problems as it runs at `C` speed. Looping over numpy arrays is inefficient compared to this.

(Something like the worst thing you could do would be to iterate over the array with an index created with `range` or `np.arange` as the first sentence in your question suggests, but I'm not sure if you really mean that.)

``````import numpy as np
import sys

sys.version
# out: '2.7.3rc2 (default, Mar 22 2012, 04:35:15) \n[GCC 4.6.3]'
np.version.version
# out: '1.6.2'

size = int(1E6)

%timeit for x in range(size): x ** 2
# out: 10 loops, best of 3: 136 ms per loop

%timeit for x in xrange(size): x ** 2
# out: 10 loops, best of 3: 88.9 ms per loop

# avoid this
%timeit for x in np.arange(size): x ** 2
#out: 1 loops, best of 3: 1.16 s per loop

# use this
%timeit np.arange(size) ** 2
#out: 100 loops, best of 3: 19.5 ms per loop
``````

So for this case numpy is 4 times faster than using `xrange` if you do it right. Depending on your problem numpy can be much faster than a 4 or 5 times speed up.

The answers to this question explain some more advantages of using numpy arrays instead of python lists for large data sets.

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With python 2.6 and 2.7, you should use xrange (see below). From what you say, in Python 3, range is the same as xrange (returns a generator). So maybe range is as good for you.

Now, you should try it yourself (using timeit: - here the ipython "magic function"):

``````%timeit for i in range(1000000): pass
[out] 10 loops, best of 3: 63.6 ms per loop

%timeit for i in np.arange(1000000): pass
[out] 10 loops, best of 3: 158 ms per loop

%timeit for i in xrange(1000000): pass
[out] 10 loops, best of 3: 23.4 ms per loop
``````

Now, as pointed by bmu, most of the time it is possible to use numpy vector/array formula (or ufunc etc...) which run a c speed: much faster. This is what we could call "vector programming". It makes program easier to implement than C (and more readable) but almost as fast in the end.

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Thanks, I didn't know about the magic function. –  cls May 22 '12 at 10:42
There is a standard python 'timeit' module which allows to do the same without IPython. But it is just much more easy to use this magic function. –  Juh_ May 22 '12 at 11:52
-1 because I think this is not a good benchmark. looping over a numpy array is inefficient. –  bmu May 22 '12 at 20:25
I fully agree, but the question was about "iterating over a large array". In some situation, it is not possible to use the numpy vectorized, ufunc or indexing. On example I encountered is to compute the eigenvectors of a list of matrices (>= 3x3) –  Juh_ Jun 19 '12 at 9:42