Optimize multiple nested for loops in python

Following is the test code, my actual code looks almost similar in which i use the original matrix rather randomly generated. How can I optimize this nested for loops. I know it's possible in python but I am unable to do so.

``````import time
import numpy as np

a = 1000
b = 500
sum2,sum3,sum4 = 0
t0 = time.time()

x = np.random.random(a*a).reshape([a,a])

for outer1 in xrange(0,a):
for inner1 in xrange(0,b):
for outer2 in xrange(0,a):
for inner2 in xrange(0, a):
sum2 += x[outer2][inner2]  #this is not the only operation I have
for outer3 in xrange(0,a):
for inner3 in xrange(0, a):
sum3 += x[outer3][inner3] #this is not the only operation I have
for outer4 in xrange(0,a):
for inner4 in xrange(0, a):
sum4 += x[outer4][inner4] #this is not the only operation I have

print time.time() - t0
print 'sum2: '+str(sum2)+' sum3: '+str(sum3)+' sum4: '+str(sum4)
``````

I am using python 2.7. Thank you.

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The additional computations that you do make all the difference in how you could optimize your code. And, also are more likely to be the cause of any bottleneck, rather than these sums. –  Dunes Jan 21 '12 at 11:08

With Numpy arrays, the way to optimize the computations is to use vectorized operations as much as possible. In your example, since it looks like you're summing the elements of each array, you should keep the array 1-dimensional and just use the `sum` function directly:

``````x = np.random.random(a*a)
sum2 = x.sum()
``````

and so on.

Similarly, for your actual code, you will need to translate your loops into vectorized operations. I can't say anything about how to do that without knowing what your actual computation is.

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As your code suggests, `sum2` depends only on the values `outer2` and `inner2`, and this is done within two loops whose variables are `outer1` and `inner1`. In the code you pasted, you can simply leave out the 2 outer loops (`outer1` and `inner1`), and instead multiply the value of `sum2` by `a*b`. This eliminates two loops and replaces them by a multiplication which should be faster.