# Why is this numpy array operation so slow?

I am a python beginner and I am trying to average two NumPy 2D arrays with shape of (1024,1024). Doing it like this is quite fast:

``````newImage = (image1 + image2) / 2
``````

But now the images have a "mask" that invalidate certain elements if set to zero. That means if one of the elements is zero, the resulting element should also be zero. My trivial solution is:

``````newImage = numpy.zeros( (1024,1024) , dtype=numpy.int16 )

for y in xrange(newImage.shape[0]):
for x in xrange(newImage.shape[1]):
val1 = image1[y][x]
val2 = image2[y][x]
if val1!=0 and val2!=0:
newImage[y][x] = (val1 + val2) / 2
``````

But this is really slow. I did not time it, but it seems to be slower by a factor of 100.

I also tried using a lambda operator and "map", but this does not return a NumPy array.

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Try this:

``````newImage = numpy.where(np.logical_and(image1, image2), (image1 + image2) / 2, 0)
``````

Where none of `image1` and `image2` equals zero, take their mean, otherwise zero.

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Thanks, this works and is fast. – Stiefel Apr 8 '11 at 13:26

Looping with native Python code is generally much slower than using built-in tools that use fast C loops. I'm not familiar with NumPy; can you use `map()` to do a transformation from your two input arrays to the output? If so, that should be faster.

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Explicit `for` loops are very inefficient in Python in general, not only for `numpy` operations. Fortunately, there are faster ways to solve our problem. If memory is not an issue, this solution is quite good:

``````import numpy as np
new_image = np.zeros((1024, 1024), dtype=np.int16)
valid = (image1!=0) & (image2!=0)
new_image[valid] = (image1+image2)[valid]
``````

Another solution using masked arrays, which do not create copies of the arrays (they represent views of the original `image1/2`:

``````m1 = np.ma.masked_equal(image1, 0)
new_image = (m1+m2).filled(0)
``````

Update: The first solution seems to be 3 times faster than the second for arrays with about 1000 non-zero entries.

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numpy array access operation seems slow at best. I can't see any reason for it. You can clearly see it by constructing a simple example:

``````    import numpy
# numpy version
def at(s,n):
t1=time.time()
a=numpy.zeros(s,dtype=numpy.int32)
for i in range(n):
a[i%s]=n
t2=time.time()
return t2-t1
# native version
def an(s,n):
t1=time.time()
a=[(i) for i in range(s)]
for i in range(n):
a[i%s]=n
t2=time.time()
return t2-t1

# test
[at(100000,1000000),an(100000,1000000)]
``````

Result: [0.21972250938415527, 0.15950298309326172]

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