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.