To fully utilize CPU/GPU I run several processes that do DNN inference (feed forward) on separate datasets. Since the processes allocate CUDA memory during the feed forward I'm getting a CUDA out of memory error. To mitigate this I added torch.cuda.empty_cache() call which made things better. However, there are still occasional out of memory errors. Probably due to bad allocation/release timing.

I managed to solve the problem by adding a multiprocessing.BoundedSemaphore around the feed forward call but this introduces difficulties in initializing and sharing the semaphore between the processes.

Is there a better way to avoid this kind of errors while running multiple GPU inference processes?


I have done parallel training and inference with multiprocessing for my research (not at industry scale). From my experience, it is difficult or almost impossible to squeeze every bit of the GPU memory.

You can only estimate maximum how many processes can run in parallel, then restrict your parallel code to run that many processes at the same time. Using semaphore is the typical way to restrict the number of parallel processes. To make the sharing of semaphore between processes easier, you can use a pool and its initializer.

semaphore = mp.BoundedSemaphore(n_process)
with mp.Pool(n_process, initializer=pool_init, initargs=(semaphore,)) as pool:
    # run here, each process can access the shared variable pool_semaphore

def pool_init(semaphore):
    global pool_semaphore
    pool_semaphore = semaphore

Another approach is to put your inference call in a while loop with a try ... except block and keep trying to do inference. However, this may come with significant performance hit, maybe not a good idea.

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