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is there a better and faster way to express the following dot-products in numpy? I have the following shapes:

>>> h.shape
(600L, 400L, 3L)
>>> c.shape
(400L, 3L)

I want to calculate the following, if possible without a loop:

ans = np.empty((600, 400))
for i in range(400):
     ans[:, i] = h[:, i, :].dot(c[i, :])

I think it should be possible with a simeple reshape, but i don't see how atm.

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1  
You create ans, but you assign to a. And I think there is a problem with the shapes in your example. –  Warren Weckesser Apr 29 '13 at 20:17
    
Thanks for the correction, the shapes are looking strange but are ok. The c[i, :] will be a 1d array and so the alignment is ok. –  tillsten Apr 29 '13 at 20:25
2  
I prefer both of the current answers to this, so I won't make it an answer, but (h*c).sum(2) should also work-- it'll be slower and use more memory than either of those. –  DSM Apr 29 '13 at 20:47
1  
DSM: Yeah, that a factor five slower. –  tillsten Apr 29 '13 at 20:54
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2 Answers 2

up vote 5 down vote accepted

As an alternative to Warren's solution, which I think is the best, there is the undocumented inner1d:

>>> from numpy.core.umath_tests import inner1d
>>> a = inner1d(h, c)
>>> np.allclose(a, ans)
True

From its docstring:

inner1d(x1, x2[, out])

inner on the last dimension and broadcast on the rest: (i),(i)->()

For this particular case, on my system, inner1dis slightly faster than np.einsum:

In [2]: %timeit np.einsum('ijk,jk->ij', h, c)
100 loops, best of 3: 3.85 ms per loop

In [3]: %timeit inner1d(h, c)
100 loops, best of 3: 2.78 ms per loop
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umath_test has a lot of useful features. matrix_multipy from there with rollaxixs can also be used. –  tillsten Apr 29 '13 at 20:45
    
Using h1 = rollaxis(h, 1) and matrix_multiply(h1, c[:, :, None]) is a factor three slower. –  tillsten Apr 29 '13 at 21:14
    
@tillsten There is a whole new set of functionality, scheduled for numpy 1.8 I believe, that adds generalized ufuncs with most linear algebra operations, and other convenience operations, e.g. adding three arrays without intermediate storage. You can browse the source code, mostly for the docstrings, here, although it doesn't seem to be as final as I thought. –  Jaime Apr 29 '13 at 21:30
    
@Jaime I'm not sure if all the pieces are already there, but a huge pull request that adds linalg gufuncs was merged a few days ago. –  jorgeca Apr 29 '13 at 22:15
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You can use numpy.einsum

ans = einsum('ijk,jk->ij', h, c)
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