2024
DOI: 10.1101/2024.05.20.595026
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Aligning protein generative models with experimental fitness via Direct Preference Optimization

Talal Widatalla,
Rafael Rafailov,
Brian Hie

Abstract: Generative models trained on unlabeled protein datasets have demonstrated a remarkable ability to predict some biological functions without any task-specific training data. However, this capability does not extend to all relevant functions and, in many cases, the unsupervised model still underperforms task-specific, supervised baselines. We hypothesize that this is due to a fundamental "alignment gap" in which the rules learned during unsupervised training are not guaranteed to be related to the function of in… Show more

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