11

The tf.logical_or, tf.logical_and, and tf.select functions are very useful.

However, suppose you have value x, and you wanted to see if it was in a set(a, b, c, d, e). In python you would simply write:

if x in set([a, b, c, d, e]):
  # Do some action.

As far as I can tell, the only way to do this in TensorFlow, is to have nested 'tf.logical_or' along with 'tf.equal'. I provided just one iteration of this concept below:

tf.logical_or(
    tf.logical_or(tf.equal(x, a), tf.equal(x, b)),
    tf.logical_or(tf.equal(x, c), tf.equal(x, d))
)

I feel that there must be an easier way to do this in TensorFlow. Is there?

3 Answers 3

7

To provide a more concrete answer, say you want to check whether the last dimension of the tensor x contains any value from a 1D tensor s, you could do the following:

tile_multiples = tf.concat([tf.ones(tf.shape(tf.shape(x)), dtype=tf.int32), tf.shape(s)], axis=0)
x_tile = tf.tile(tf.expand_dims(x, -1), tile_multiples)
x_in_s = tf.reduce_any(tf.equal(x_tile, s), -1))

For example, for s and x:

s = tf.constant([3, 4])
x = tf.constant([[[1, 2, 3, 0, 0], 
                  [4, 4, 4, 0, 0]], 
                 [[3, 5, 5, 6, 4], 
                  [4, 7, 3, 8, 9]]])

x has shape [2, 2, 5] and s has shape [2] so tile_multiples = [1, 1, 1, 2], meaning we will tile the last dimension of x 2 times (once for each element in s) along a new dimension. So, x_tile will look like:

[[[[1 1]
   [2 2]
   [3 3]
   [0 0]
   [0 0]]

  [[4 4]
   [4 4]
   [4 4]
   [0 0]
   [0 0]]]

 [[[3 3]
   [5 5]
   [5 5]
   [6 6]
   [4 4]]

  [[4 4]
   [7 7]
   [3 3]
   [8 8]
   [9 9]]]]

and x_in_s will compare each of the tiled values to one of the values in s. tf.reduce_any along the last dim will return true if any of the tiled values was in s, giving the final result:

[[[False False  True False False]
  [ True  True  True False False]]

 [[ True False False False  True]
  [ True False  True False False]]]
4

Here's two solutions, we want to check if query is in whitelist

whitelist = tf.constant(["CUISINE", "DISH", "RESTAURANT", "ADDRESS"])
query = "RESTAURANT"

#use broadcasting for element-wise tensor operation
broadcast_equal = tf.equal(whitelist, query)

#method 1: using tensor ops
broadcast_equal_int = tf.cast(broadcast_equal, tf.int8)
broadcast_sum = tf.reduce_sum(broadcast_equal_int)

#method 2: using some tf.core API
nz_cnt = tf.count_nonzero(broadcast_equal)

sess.run([broadcast_equal, broadcast_sum, nz_cnt])
#=> [array([False, False,  True, False]), 1, 1]

So if the output is > 0 then the item is in the set.

1
  • 2
    How does this work when both query and whitelist have more than one element? Feb 12, 2021 at 15:34
3

Take a look at this related question: Count number of "True" values in boolean Tensor

You should be able to build a tensor consisting of [a, b, c, d, e] and then check if any of the rows is equal to x using tf.equal(.)

4
  • Thanks for the insight. Reduce_sum is the best way to go. Jan 5, 2016 at 18:28
  • 1
    You can also use tf.listdiff to accomplish the same thing.
    – dga
    Jan 5, 2016 at 19:26
  • @dga that shows only the difference, not the similar ones? Jan 23, 2021 at 13:54
  • For someone new to Tensorflow it is difficult to see how your linked post addresses the OP's situation. Perhaps you could post a complete code snippet here? Feb 12, 2021 at 15:33

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.