In numpy, we can do this:
x = np.random.random((10,10)) a = np.random.randint(0,10,5) b = np.random.randint(0,10,5) x[a,b] # gives 5 entries from x, indexed according to the corresponding entries in a and b
When I try something equivalent in TensorFlow:
xt = tf.constant(x) at = tf.constant(a) bt = tf.constant(b) xt[at,bt]
The last line gives a "Bad slice index tensor" exception. It seems TensorFlow doesn't support indexing like numpy or Theano.
Does anybody know if there is a TensorFlow way of doing this (indexing a tensor by arbitrary values). I've seen the tf.nn.embedding part, but I'm not sure they can be used for this and even if they can, it's a huge workaround for something this straightforward.
(Right now, I'm feeding the data from
x as an input and doing the indexing in numpy but I hoped to put
x inside TensorFlow to get higher efficiency)