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

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

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