Numpy max slow when applied to list of arrays

I carry out some computations to obtain a list of numpy arrays. Subsequently, I would like to find the largest values along the first axis. My current implementation (see below) is very slow and I would like to find alternatives.

Original

``````pending = [<list of items>]
matrix = [compute(item) for item in pending if <some condition on item>]
dominant = np.max(matrix, axis = 0)
``````

Revision 1: This implementation is faster (~10x; presumably because numpy does not need to figure out the shape of the array)

``````pending = [<list of items>]
matrix = [compute(item) for item in pending if <some condition on item>]
matrix = np.vstack(matrix)
dominant = np.max(matrix, axis = 0)
``````

I ran a couple of tests and the slowdown seems to be due to an internal conversion of the list of arrays to a numpy array

`````` Timer unit: 1e-06 s
Total time: 1.21389 s
Line # Hits         Time  Per Hit   % Time  Line Contents
==============================================================
4                                           def direct_max(list_of_arrays):
5      1000      1213886   1213.9    100.0      np.max(list_of_arrays, axis = 0)

Total time: 1.20766 s
Line # Hits         Time  Per Hit   % Time  Line Contents
==============================================================
8                                           def numpy_max(list_of_arrays):
9      1000      1151281   1151.3     95.3      list_of_arrays = np.array(list_of_arrays)
10      1000        56384     56.4      4.7      np.max(list_of_arrays, axis = 0)

Total time: 0.15437 s
Line # Hits         Time  Per Hit   % Time  Line Contents
==============================================================
12                                           @profile
13                                           def stack_max(list_of_arrays):
14      1000       102205    102.2     66.2      list_of_arrays = np.vstack(list_of_arrays)
15      1000        52165     52.2     33.8      np.max(list_of_arrays, axis = 0)
``````

Is there any way to speed up the max function or is it possible to populate a numpy array efficiently with the results of my calculation such that max is fast?

-
What datatype are `items`? –  mgilson Apr 10 '13 at 18:00
The fastest way would be to start in the first place with a 2d numpy array instead of a list of arrays. If the lists have different lengths, just pad with -inf or nan. –  Bitwise Apr 10 '13 at 18:16
@mgilson: The items themselves are key-value-pairs of the form (key: some hashable type, value: numpy array) –  Till Hoffmann Apr 10 '13 at 18:19
@Bitwise: Yes, that would be ideal. However, I need to process the items sequentially. What is the best way of doing that with a numpy array? –  Till Hoffmann Apr 10 '13 at 18:31
Can you hint us what processing you are doing? –  Jaime Apr 10 '13 at 18:32

You can use `reduce(np.maximum, matrix)`, here is a test:

``````import numpy as np
np.random.seed(0)

N, M = 1000, 1000
matrix = [np.random.rand(N) for _ in xrange(M)]

%timeit np.max(matrix, axis = 0)
%timeit np.max(np.vstack(matrix), axis = 0)
%timeit reduce(np.maximum, matrix)
``````

The result is:

``````10 loops, best of 3: 116 ms per loop
10 loops, best of 3: 10.6 ms per loop
100 loops, best of 3: 3.66 ms per loop
``````

Edit

`argmax()' is more difficult, but you can use a for loop:

``````def argmax_list(matrix):
m = matrix[0].copy()
idx = np.zeros(len(m), dtype=np.int)
for i, a in enumerate(matrix[1:], 1):
mask = m < a
return idx
``````

It's still faster than `argmax()`:

``````%timeit np.argmax(matrix, axis=0)
%timeit np.argmax(np.vstack(matrix), axis=0)
%timeit argmax_list(matrix)
``````

result:

``````10 loops, best of 3: 131 ms per loop
10 loops, best of 3: 21 ms per loop
100 loops, best of 3: 13.1 ms per loop
``````
-
That's great. One more question: Do you have a suggestion how to emulate the behaviour of `np.argmax` using the same methodology? –  Till Hoffmann Apr 11 '13 at 12:50