31

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)

1
17

You can actually do that now with tf.gather_nd. Let's say you have a matrix m like the following:

| 1 2 3 4 |
| 5 6 7 8 |

And you want to build a matrix r of size, let's say, 3x2, built from elements of m, like this:

| 3 6 |
| 2 7 |
| 5 3 |
| 1 1 |

Each element of r corresponds to a row and column of m, and you can have matrices rows and cols with these indices (zero-based, since we are programming, not doing math!):

       | 0 1 |         | 2 1 |
rows = | 0 1 |  cols = | 1 2 |
       | 1 0 |         | 0 2 |
       | 0 0 |         | 0 0 |

Which you can stack into a 3-dimensional tensor like this:

| | 0 2 | | 1 1 | |
| | 0 1 | | 1 2 | |
| | 1 0 | | 2 0 | |
| | 0 0 | | 0 0 | |

This way, you can get from m to r through rows and cols as follows:

import numpy as np
import tensorflow as tf

m = np.array([[1, 2, 3, 4], [5, 6, 7, 8]])
rows = np.array([[0, 1], [0, 1], [1, 0], [0, 0]])
cols = np.array([[2, 1], [1, 2], [0, 2], [0, 0]])

x = tf.placeholder('float32', (None, None))
idx1 = tf.placeholder('int32', (None, None))
idx2 = tf.placeholder('int32', (None, None))
result = tf.gather_nd(x, tf.stack((idx1, idx2), -1))

with tf.Session() as sess:
    r = sess.run(result, feed_dict={
        x: m,
        idx1: rows,
        idx2: cols,
    })
print(r)

Output:

[[ 3.  6.]
 [ 2.  7.]
 [ 5.  3.]
 [ 1.  1.]]
3
  • @Mr_and_Mrs_D Well the exact spec of what tf.gather_nd is a bit complicated, you can check it in the docs. But basically, the idea is I want a matrix result of, say, MxN, were each element is taken from another matrix x. For each element I have the corresponding row and column of x; these are idx1 and idx2. I stack these two to get a MxNx2 tensor, let's call it idx12. tf.gather_nd uses the last dimension of idx12 (which has size 2, like the number of dimensions in x), to create two-dimensional indices that are used to look up the elements that go into result. – jdehesa Mar 24 '17 at 23:40
  • Please add those to your answer rand I will upvote - docs are, ugh, somewhat lacking. You should still explain what the relation of MxN is to idx1/2 – Mr_and_Mrs_D Mar 25 '17 at 0:17
  • @Mr_and_Mrs_D I've updated the answer with more context and explanations. I hope it's clearer now. – jdehesa Mar 25 '17 at 10:17
10

LDGN's comment is correct. This is not possible at the moment, and is a requested feature. If you follow issue#206 on github you'll get updated if/when this is available. Many people would like this feature.

0
2

For Tensorflow 0.11, basic indexing has been implemented. More advanced indexing (like boolean indexing) is still missing but apparently is planned for future versions.

Advanced indexing can be tracked with https://github.com/tensorflow/tensorflow/issues/4638

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