# Speeding up computations with numpy matrices

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I have two matrices. Both are filled with zeros and ones. One is a big one (3000 x 2000 elements), and the other is smaller ( 20 x 20 ) elements. I am doing something like:

``````newMatrix = (size of bigMatrix), filled with zeros
l = (a constant)

for y in xrange(0, len(bigMatrix[0])):
for x in xrange(0, len(bigMatrix)):

for b in xrange(0, len(smallMatrix[0])):
for a in xrange(0, len(smallMatrix)):

if (bigMatrix[x, y] == smallMatrix[x + a - l, y + b - l]):
newMatrix[x, y] = 1
``````

Which is being painfully slow. Am I doing anything wrong? Is there a smart way to make this work faster?

edit: Basically I am, for each (x,y) in the big matrix, checking all the pixels of both big matrix and the small matrix around (x,y) to see if they are 1. If they are 1, then I set that value on newMatrix. I am doing a sort of collision detection.

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 You actually have this expression: smallMatrix[x + a - l, y + b - l]) Whe you use teh "big matrix indices" x,y to address an element on the small matrix - is this correct? – jsbueno Nov 26 '09 at 13:17 It is correct . – devoured elysium Nov 26 '09 at 16:10

I can think of a couple of optimisations there - As you are using 4 nested python "for" statements, you are about as slow as you can be.

I can't figure out exactly what you are looking for - but for one thing, if your big matrix "1"s density is low, you can certainly use python's "any" function on bigMtarix's slices to quickly check if there are any set elements there -- you could get a several-fold speed increase there:

``````step = len(smallMatrix[0])
for y in xrange(0, len(bigMatrix[0], step)):
for x in xrange(0, len(bigMatrix), step):
if not any(bigMatrix[x: x+step, y: y + step]):
continue
(...)
``````

At this point, if still need to interact on each element, you do another pair of indexes to walk each position inside the step - but I think you got the idea.

Apart from using inner Numeric operations like this "any" usage, you could certainly add some control flow code to break-off the (b,a) loop when the first matching pixel is found. (Like, inserting a "break" statement inside your last "if" and another if..break pair for the "b" loop.

I really can't figure out exactly what your intent is - so I can't give you more specifc code.

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 I don't know how I could forget what you mention in your last paragraph, that break idea. But I need to break out of 2 loops. Is there any way to do it in python without having to break the inner loop and having to use a flag to check whenever I should break the outter one? – devoured elysium Nov 26 '09 at 13:54

Your example code makes no sense, but the description of your problem sounds like you are trying to do a 2d convolution of a small bitarray over the big bitarray. There's a convolve2d function in scipy.signal package that does exactly this. Just do `convolve2d(bigMatrix, smallMatrix)` to get the result. Unfortunately the scipy implementation doesn't have a special case for boolean arrays so the full convolution is rather slow. Here's a function that takes advantage of the fact that the arrays contain only ones and zeroes:

``````import numpy as np

def sparse_convolve_of_bools(a, b):
if a.size < b.size:
a, b = b, a
offsets = zip(*np.nonzero(b))
n = len(offsets)
dtype = np.byte if n < 128 else np.short if n < 32768 else np.int
result = np.zeros(np.array(a.shape) + b.shape - (1,1), dtype=dtype)
for o in offsets:
result[o[0]:o[0] + a.shape[0], o[1]:o[1] + a.shape[1]] += a
return result
``````

On my machine it runs in less than 9 seconds for a 3000x2000 by 20x20 convolution. The running time depends on the number of ones in the smaller array, being 20ms per each nonzero element.

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I don't get what that code does, but I've tried and it seems to crash saying result = numpy.zeros(numpy.array(a.shape) + b.shape - (1,1), dtype=dtype) ValueError: shape mismatch: objects cannot be broadcast to a single shape – devoured elysium Nov 26 '09 at 15:53
Try substituting it with result = np.zeros((a.shape[0] + b.shape[0] - 1, a.shape[1] + b.shape[1] - 1, dtype=dtype) – dwf Nov 30 '09 at 5:20

If your bits are really packed 8 per byte / 32 per int, and you can reduce your smallMatrix to 20x16,
then try the following, here for a single row.
(`newMatrix[x, y] = 1` when any bit of the 20x16 around x,y is 1 ?? What are you really looking for ?)

``````python -m timeit -s '
""" slide 16-bit mask across 32-bit pairs bits[j], bits[j+1] """

import numpy as np

bits = np.zeros( 2000 // 16, np.uint16 )  # 2000 bits
bits[::8] = 1
nhit = 16 * [0]

def hit16( bits, mask, nhit ):
"""
slide 16-bit mask across 32-bit pairs bits[j], bits[j+1]
bits: long np.array( uint16 )
out: nhit[j] += 1 where pair & mask != 0
"""
left = bits[0]
for b in bits[1:]:
pair = (left << 16) | b
if pair:  # np idiom for non-0 words ?
for j in range(16):
if pair & m:
nhit[j] += 1
# hitposition = jb*16 + j
m <<= 1
left = b
# if any(nhit):  print "hit16:", nhit

' \
'