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I would like to multiply each element(say [i,j]) of a MxN 2D matrix(say A) to to all elements in the 3D row of a 3D matrix(say B), so B[i,j,:]. The following doesn't help because it gives me a (2,3,3) shaped matrix rather than (3,3,2). Plus, I think for such a multiplication making a copy is redundant. Is there a better way of doing it?

B=np.ones((3,3,2))
A=np.arange(1,10).reshape(3,3)
c=np.tile(A,(2,1,1))
print np.multiply(a,c)

The output I expect is:

[[[1,1]],[[2,2]],[[3,3]],[[4,4]][[5,5]],[[6,6]],[[7,7]],[[8,8]],[[9,9]]]
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My code doesn't work. Cant broadcast... I know... –  Cupitor Nov 16 '13 at 14:44

1 Answer 1

up vote 2 down vote accepted

Your expected output (after adding a comma) would have shape (9, 1, 2) if passed to array. Assuming that's a mistake, and you do want an array of shape (3,3,2) with those values, then I think all you need to do is extend A:

>>> A = np.arange(1,10).reshape(3,3)
>>> B = np.ones((3,3,2))
>>> C = A[..., None] * B
>>> C
array([[[ 1.,  1.],
        [ 2.,  2.],
        [ 3.,  3.]],

       [[ 4.,  4.],
        [ 5.,  5.],
        [ 6.,  6.]],

       [[ 7.,  7.],
        [ 8.,  8.],
        [ 9.,  9.]]])
>>> C.shape
(3, 3, 2)
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Yes my self-made output is wrong. Thanks a lot! –  Cupitor Nov 16 '13 at 15:19

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