# Determining if A Value is in a Set in TensorFlow

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?

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]]]
``````

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

#method 1: using tensor ops

#method 2: using some tf.core API

#=> [array([False, False,  True, False]), 1, 1]
``````

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

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

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(.)`

• Thanks for the insight. Reduce_sum is the best way to go. Jan 5, 2016 at 18:28
• 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