0

If I have some branching operation in TensorFlow, how can I return a None tensor in one branch, and a filled tensor in the other?

For example:

tensor_result = tf.cond(
    pred=tf.less(0, 1),
    fn1=...,  # here I would like to return None
    fn2=tf.constant([1, 2, 3]))

And then tensor_result can be tested for being None later in the graph.

Is there currently any way of doing this? Currently I am filling a tensor with NaNs, but I imagine this isn't very efficient.

  • Why not using another boolean mask tensor "is_none" and fill it up with zero or one. How do you want to use the "is none" information later? – Patwie Aug 27 '17 at 15:52
  • You could return a ()-shaped tensor consisting of a single NaN, although such dynamic shaping disable some optimizations – Yaroslav Bulatov Aug 27 '17 at 16:28
0

Tensors are containers for numerical data types, e.g. tf.convert_to_tensor(None) raises ValueError: None values not supported.. So there is no None-Tensor.

I would do it like:

mask = tf.less(0, 1) # return a tensor of type bool
filtered = tf.cast(mask, unfiltered.dtype) * unfiltered

I would never add NaNs on my own to the computation. They strongly indicate that something went wrong.

  • My issue with this is what if unfiltered contains zero values? If I wish to branch based on whether unfiltered is None or not, I could not tell the difference between intentional zeros and zeros resulting from the filter. – mishajw126 Aug 28 '17 at 16:48
  • but you can consider the mask for this information – Patwie Aug 28 '17 at 17:25

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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