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I have a piece of code of type:

nnt = np.real(np.einsum('xa,xb,yc,yd,abcde->exy',evec,evec,evec,evec,quartic))

where evec is (say) an L x L np.float32 array, and quartic is a L x L x L x L x T np.complex64 array.

I found that this routine is rather slow.

I thought that since all the evec's are identical, there might be a faster way of doing this?

Thanks in advance.

1 Answer 1

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For start you can reuse the first calculation:

evec2 = np.real(np.einsum('xa,xb->xab',evec,evec))
nnt = np.real(np.einsum('xab,ycd,abcde->exy',evec2,evec2,quartic))

And if you don't care about memory and only need performance:

evec2 = np.real(np.einsum('xa,xb->xab',evec,evec))
nnt = np.real(np.einsum('xab,ycd,abcde->exy',evec2,evec2,quartic,optimize=True))
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  • 1
    Good idea there. To get max perf, think you can skip optimize for evec2, as there's no sum reduction there.
    – Divakar
    Jul 9, 2020 at 7:15
  • @Divakar, That is true. Thank you for the point. I edit the post.
    – Ehsan
    Jul 9, 2020 at 7:33
  • 1
    Wow! It's blazing fast. It went from 16 seconds to 0.007 seconds. I'll make sure to try to reuse calculations from now on. Thanks!
    – purestate
    Jul 9, 2020 at 8:10

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