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I am trying to loop through a matrix to replace every number along the diagonal (top left to bottom right), with -5. I have read previous questions and answers and I see that you can use... np.fill_diagonal(A, -5) to the get the answer. However I am trying to use a loop with if statements. Can anyone help me get started? Here is my matrix.

 A = array([[1.2,3.4,10.3],[2,8,78],[45,-36,8]]) 
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What would you test with the if statement? –  heltonbiker Oct 18 '12 at 19:05
@heltonbiker -- I'm guessing OP wants to loop over each element in the matrix, test if i == j and if so, update. –  mgilson Oct 18 '12 at 19:06

3 Answers 3

up vote 1 down vote accepted

If I got it right, you want to iterate over columns and rows, so (quite silly, indeed):

for i in A.shape[0]:
    for j in A.shape[1]:
        if i == j:
            A[i,j] = -5

Although I have to think this is not needed if you ALREADY have an array/matrix, then using Mgilson's answer or, better yet, numpy.fill_diagonal(array, value).

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Don't use my answer. Use np.fill_diagonal. –  mgilson Oct 18 '12 at 19:19
Thanks, I appreciate it. This is what I was looking for. –  Bill Oct 18 '12 at 19:19

This is quite easy. Your matrix must be square, otherwise it doesn't really have a "diagonal". The elements on the diagonal are A[i,i], so you just need to loop over for i in range(N) and set A[i,i] = -5 for each i. (No if statements necessary)

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But is there a way to do it using if commands? –  Bill Oct 18 '12 at 19:15
@user1754710: The point is you don't need an if statement. If you really want to do it that way, use nested for loops and set the value to -5 when i == j. –  martineau Oct 18 '12 at 19:17

You should use numpy, but then your array has to be ofcourse a numpy.array or numpy.matrix.

In [1]: import numpy as np
In [2]: A=np.random.random((3,3))
In [3]: A
array([[ 5.        ,  0.47884865,  0.8596375 ],
       [ 0.70925986,  5.        ,  0.29764543],
       [ 0.98049303,  0.13811067,  5.        ]])

In [4]: np.fill_diagonal(A, 5)

In [5]: A
array([[ 5.        ,  0.47884865,  0.8596375 ],
       [ 0.70925986,  5.        ,  0.29764543],
       [ 0.98049303,  0.13811067,  5.        ]])
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