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I have arrays A and B both of dimension MxNxH.

I would like to define a binary operator, to "multiply", such that the result is MxN dimensions.

The equivalent operation would be:

C = A[:,:,0] * B[:,:,0] + A[:,:,1] * B[:,:,1] + .... + A[:,:,H] * B[:,:,H]

Is there a way to do this operation in a more efficient way?
For example, using a built in function in numpy?

I have tried tensordot, but this gives a different result.

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That's not "multiplying"... – Andy Hayden Nov 15 '12 at 22:25
up vote 2 down vote accepted

The easiest is:

C = numpy.sum(A * B, -1)

I think this might work too:

C = numpy.einsum("...i,...i->...", A, B)
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try this: numpy.sum( A*B, axis=2 )

this is similar to the other suggestion but perhaps clearer (axes are numbered from 0, so axis=2 is the 3rd axis or H out of MxNxH)

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