# numpy - calculate value from matrix indexes

I need to create a new (n*m) x 4 matrix (e.g. named b) from a n x m matrix (e.g. named a), but I don't want to use nested loops for speed reasons. Here how I would do it with a nested loop:

for j in xrange(1,m+1):
for i in xrange(1,n+1):
index = (j-1)*n+i
b[index,1] = a[i,j]
b[index,2] = index
b[index,3] = s1*i+s2*j+s3
b[index,4] = s4*i+s5*j+s6

The question is, therefore, how to create a new matrix with values derived from original matrix indexes? Thanks

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I don't understand the indexing. Say m=5 and n=4, then the value of index on the first iteration is 5. Your loop would set values of b[5,:], leaving b[0:4,:] untouched. Is that the intent? –  mtrw Aug 9 '12 at 7:54
you are completely right and I am completely sorry: I wrote the code "on the fly" and it's been a little while since I last wrote code :\$. However I hope you get the meaning of the question, I simply meant I need to scan the entire matrix with a slow nested loop approach. –  andreaconsole Aug 9 '12 at 8:12

If you can use numpy, you could try

import numpy as np
# Create an empty array
b = np.empty((np.multiply(*a.shape), 4), dtype=a.dtype)
# Get two (nxm) of indices
(irows, icols) = np.indices(a)
# Fill the b array
b[...,0] = a.flat
b[...,1] = np.arange(a.size)
b[...,2] = (s1*irows + s2*icols + s3).flat
b[...,3] = (s4*irows + s5*icols + s6).flat
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Thank you! I found a similar solution by myself, but this is better –  andreaconsole Aug 15 '12 at 13:08

some minor corrections (could not post as comment :/ ) for those who will have a similar question:

import numpy as np
# Create an empty array
b = np.empty((a.size, 4), dtype=a.dtype)
# Get two (nxm) of indices (starting from 1)
(irows, icols) = np.indices(a.shape) + 1
# Fill the b array
b[...,0] = a.flat
b[...,1] = np.arange(a.size) + 1
b[...,2] = (s1*irows + s2*icols + s3).flat
b[...,3] = (s4*irows + s5*icols + s6).flat
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