Are Protein Language Models Compute Optimal?

Published: 17 Jun 2024, Last Modified: 17 Jun 2024AccMLBio PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: protein language models, scaling laws, compute optimal, efficient pretraining
TL;DR: We study the scaling laws of protein language models and determine that current pLMs might be not compute optimal due to a plateau in training loss
Abstract: While protein language models (pLMs) have transformed biological research, the scaling laws governing their improvement remain underexplored. By adapting methodologies from NLP scaling laws, we investigated the optimal ratio between model parameters and training tokens within a fixed compute budget. Our study reveals that pLM sizes scale sublinearly with compute budget, showing diminishing returns in performance as model size increases, and we identify a performance plateau in training loss comparable to the one found in relevant works in the field. Our findings suggest that widely-used pLMs might not be compute-optimal, indicating that larger models could achieve convergence more efficiently. Training a 35M model on a reduced token set, we attained perplexity results comparable to larger models like ESM-2 (15B) and xTrimoPGLM (100B) with a single dataset pass. This work paves the way towards more compute-efficient pLMs, democratizing their training and practical application in computational biology.
Submission Number: 47
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