a = tf.constant([[1,2,3],[4,5,6]])
b = tf.constant([True, False], dtype=tf.bool)

array([[1, 2, 3],
       [4, 5, 6]], dtype=int32)
array([ True, False], dtype=bool)

I want to apply a functions to the inputs above, a, and b using tf.map_fn. It will input both [1,2,3], and True and output similar values.

Let's say out function is simply the identity: lambda(x,y): x,y so, given an input of [1,2,3], True, it will output those identical tensors.

I know how to use tf.map_fn(...) with one variable, but not with two. And in this case I have mixed data types (int32 and bool) so I can't simply concatenate the tensors and split them after the call.

Can I use tf.map_fn(...) with multiple inputs/outputs of different data types?

2 Answers 2


Figured it out. You have to define the data types for each tensor in dtype for each of the different tensors, then you can pass the tensors as a tuple, your map function receives a tuple of inputs, and map_fn returns back back a tuple.

Example that works:

a = tf.constant([[1,2,3],[4,5,6]])
b = tf.constant([True, False], dtype=tf.bool)

c = tf.map_fn(lambda x: (x[0], x[1]), (a,b), dtype=(tf.int32, tf.bool))

array([[1, 2, 3],
       [4, 5, 6]], dtype=int32)
array([ True, False], dtype=bool)
  • 5
    Be warned that if you use this the processing will be done in CPU, not on the GPU. This can be especially detrimental to speed when training on a GPU. Aug 18, 2017 at 22:00
  • 2
    How do you know that this particular function uses the CPU instead of the GPU? Is it due to the function tf.map_fn itself or the dtype specification?
    – gebbissimo
    May 21, 2019 at 15:13
  • 2
    Revisiting this a couple of years later, I'm not so sure about that comment. If lambda only returns TF ops, I'm not sure if those will drop to the CPU or not, and I'm not sure if anything's changed in TF between then and now. If someone wants to confirm with a trace or dump of what devices the tensors are attached to that would be useful. It seems that if fn returns TF ops only, those should operate on the default device. May 21, 2019 at 15:28

Do what is said below, but tuple unpack the values inside the tf.function without the lambda, as computationally expensive and lambdas do not work well with TensorFlow as tf functions.

def x(x):
  x,y = tuple(x) 

c = tf.map_fn(, (a,b), dtype=(tf.int32, tf.bool))

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