I've noticed that a recent model warns that 2.37G of memory wasn't able to be allocated:

W tensorflow/core/common_runtime/bfc_allocator.cc:217] Ran out of memory trying to allocate 2.37GiB. The caller indicates that this is not a failure, but may mean that there could be performance gains if more memory is available.

But my GPU is operating at nearly 100% (small input compared to a large model in this case).

If I am reading this correctly, I assume that my model did not fit entirely in GPU memory. However since the GPU is running at 100% am I also to assume that tensorflow is intelligently swapping graph elements in and out of GPU memory asynchronously?

I'm just curious to know what's going on under the hood there.

  • 1
    Functional ops like while_loop allows swapping GPU memory to CPU, search for swap_memory on github. I'm not aware of any memory swapping happening when you don't use functional ops – Yaroslav Bulatov Jan 23 '17 at 19:50
up vote 2 down vote accepted

To know what is going on under the hood add this code to your run function:

run_metadata = tf.RunMetadata()
sess = tf.Session(config=config) 
sess.run(train_step,
           feed_dict={x: batch_xs,
                      y_: batch_ys},
            options=tf.RunOptions(trace_level=tf.RunOptions.FULL_TRACE),
           run_metadata=run_metadata)
trace = timeline.Timeline(step_stats=run_metadata.step_stats)
with open('timeline.ctf.json', 'w') as trace_file:
   trace_file.write(trace.generate_chrome_trace_format())

and then open the generated timeline.ctf.json from the chrome://timeline interface and you will see what is going on under the hood.

It is very likely that is swapping GPU memory.

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