I'm trying to train a neural net on a GPU using Keras and am getting a "Resource exhausted: OOM when allocating tensor" error. The specific tensor it's trying to allocate isn't very big, so I assume some previous tensor consumed almost all the VRAM. The error message comes with a hint that suggests this:

Hint: If you want to see a list of allocated tensors when OOM happens, add report_tensor_allocations_upon_oom to RunOptions for current allocation info.

That sounds good, but how do I do it? RunOptions appears to be a Tensorflow thing, and what little documentation I can find for it associates it with a "session". I'm using Keras, so Tensorflow is hidden under a layer of abstraction and its sessions under another layer below that.

How do I dig underneath everything to set this option in such a way that it will take effect?


Its not as hard as it seems, what you need to know is that according to the documentation, the **kwargs parameter passed to model.compile will be passed to session.run

So you can do something like:

import tensorflow as tf
run_opts = tf.RunOptions(report_tensor_allocations_upon_oom = True)

model.compile(loss = "...", optimizer = "...", metrics = "..", options = run_opts)

And it should be passed directly each time session.run is called.

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    I used options=run_opts, since it's a kwargs thing, and that worked – dspeyer Apr 7 '18 at 5:52
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    @Matias Valdenegro I get ValueError: ('Some keys in session_kwargs are not supported at this time: %s', dict_keys(['options'])). Any idea what I'm doing wrong? – Amila Jul 22 '18 at 9:58
  • I had this exact same issue. Using keras version 2.2.4... is there any solution? – zwep Dec 10 '18 at 18:00
  • Also, I received this error 'Protocol message RunOptions has no "report_tensor_allocations_upon_oom" field.' – zwep Dec 11 '18 at 11:12
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    This caused me a segmentation fault for some reason: [1] 3957 segmentation fault python oom_net.py – Zaccharie Ramzi Jul 31 '19 at 9:55

Currently, it is not possible to add the options to model.compile. See: https://github.com/tensorflow/tensorflow/issues/19911

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    While this link may answer the question, it is better to include the essential parts of the answer here and provide the link for reference. Link-only answers can become invalid if the linked page changes. – Enea Dume Aug 15 '18 at 15:03

I made the same mistake you did, and to solve the problem I used the solution Dr. Snoopy gave me. Even though now I don't get any more mistakes, the Jupyter notebook's Kernel is dying (The kernel appears to have died. It will restart automatically) - yes I work on Jupyter Notebook. I then tried to change the boolean to False and it works!!!!

Here's the code that works for me (from Dr. Snoopy):

import tensorflow as tf
run_opts = tf.RunOptions(report_tensor_allocations_upon_oom = False)

model.compile(loss = "...", optimizer = "...", metrics = "..", options = run_opts)
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