# Vectorized computation of numpys tensor dot

I have two vectors containing tensors of shape `(3,3)` and shape `(3,3,3,3)` respectively. The vectors have the same length, I am computing the element-wise tensor dot of these two vectors . For example, want to vectorise the following computation to improve performance:

``````a = np.arange(9.).reshape(3,3)
b = np.arange(81.).reshape(3,3,3,3)
c = np.tensordot(a,b)

a_vec = np.asanyarray([a,a])
b_vec = np.asanyarray([b,b])
c_vec = np.empty(a_vec.shape)

for i in range(c_vec.shape):
c_vec[i, :, :] = np.tensordot(a_vec[i,:,:], b_vec[i,:,:,:,:])

print(np.allclose(c_vec, c))
# True
``````

I thought about using numpy.einsum but can't figure out the correct subscripts. I have tried a lot of different approaches but failed so far on all of them:

``````# I am trying something like this
c_vec = np.einsum("ijk, ilmno -> ijo", a_vec, b_vec)

print(np.allclose(c_vec, c))
# False
``````

But this does not reproduce the iterative computation I want above. If this can't be done using einsum or there is a more performant way to do this, I am open for any kind of solutions.

• what's the point of doubling the input arrays? This part: `a_vec = np.asanyarray([a,a])` Aug 28, 2020 at 21:19
• @Divakar yes exactly, I am trying to vectorise the loop. I have a lot of tensors and hope to speed it up this way.
– T A
Aug 28, 2020 at 21:21
• @Marat There is no point really, I am just using this as a sanity check.
– T A
Aug 28, 2020 at 21:23

Vectorized way with `np.einsum` would be -
``````c_vec = np.einsum('ijk,ijklm->ilm',a_vec,b_vec)
`tensor_dot` has an `axes` argument you can use too:
``````c_vec = np.tensordot(a_vec, b_vec, axes=([1, 2], [1, 2]))