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Leaving 8 workers lead to x8 times more RAM usage when preloading mel spectrograms, when it is not needed for single-process training.

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It shouldn't be added to the official codebase, generally, people want to benefit from multiprocessing.

@nikich340
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It shouldn't be added to the official codebase, generally, people want to benefit from multiprocessing.

Have you looked into the commit? It changes hardcoded behaviour "I have 8 gpus, use 8 train loaders" to "I have N gpus, use N train loaders".
I am sure most of people using this repo don't have 8 gpus and so much RAM for useless loader copies.

@lexkoro
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lexkoro commented Jun 13, 2023

@nikich340 num_workers has nothing to do with the number of GPUs you have.

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nikich340 commented Jun 14, 2023

@nikich340 num_workers has nothing to do with the number of GPUs you have.

Ok, then there still should be a way to check if user really needs this, when every worker uses 4 gb of ram and it overfits real memory, using swap file give no benefit at all.

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3 participants