Fix gradient scaling to account for world_size normalization #2172
+18
−9
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Context
What is the purpose of this PR? Is it to
Please link to any issues this PR addresses.
Changelog
What are the changes made in this PR?
scale_grads
:torchtune/recipes/full_finetune_distributed.py
Line 780 in 3518492
If A, B are processed on separate data parallel workers the current gradients would be produced by loss(A) / 2 + loss(B) / 2, and with the normalization done as before our loss becomes (loss(A) + loss(B)) / (2 * (|A| + |B|)). This PR accounts for world_size cancelling out the scaling factor.
I haven't seen very large differences wrt loss curves in my preliminary experiments after this change:
Where
world_size
means the gradient scaling factor isworld_size / num_tokens
and otherwise1 / num_tokens
. The commands to replicate these plots being:tune run --nproc_per_node 2 full_finetune_distributed --config llama3_2/3B_full metric_logger=torchtune.training.metric_logging.WandBLogger metric_logger.project=llama3.23b_fix metric_logger.name=world_size dataset.packed=True tokenizer.max_seq_len=512 compile=True
tune run --nproc_per_node 2 full_finetune_distributed.py --config configs/llama3_2/3B_full metric_logger=torchtune.training.metric_logging.WandBLogger metric_logger.project=llama3.23b_fix_noprompt metric_logger.name=world_size dataset.packed=True dataset.train_on_input=False tokenizer.max_seq_len=512 compile=True
Someone with more compute budget can probably get a better idea of the effect for larger models.
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