1

For example, I have the tensor

x = tf.constant([[1, 2], [1, 2], [2, 3], [4, 5], [4,5]])

Then I have a list of aggregation indices

idx = [[0,1],[2], [3, 4]]

And apply to the x and take the mean of each individual tensor

y = []
for i in idx:
  y.append(tf.reduce_mean(tf.gather(x, i, 0), 0))

Finally, stack them togather

y = tf.stack(y, 0)

I wanna the results to be tensor([[1, 2], [2, 3], [4, 5]])

It has problems, the for loop is not efficient, could anyone help me to resolve it?

  • What's the problem you mentioned? – giser_yugang May 15 '19 at 1:38
  • @giser_yugang How to get rid of the for loop? – Kimmi May 15 '19 at 1:40
  • Maybe you need to try Ragged Tensors tensorflow>=1.13. – giser_yugang May 15 '19 at 1:55
0

Does this work for you ? Please verify. Note that it prints floats for some reason and the version of Tensorflow is 1.13. I am also not sure how efficient this is compared to yours as I don't have a microbenchmark.

x = tf.constant([[1, 2], [1, 2], [2, 3], [4, 5], [4,5]])

print( sess.run(tf.reduce_mean(tf.gather(x,tf.ragged.constant([[0,1],[2], [3, 4]]),0),1) ))

prints

[[1. 2.]
 [2. 3.]
 [4. 5.]]

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