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NEW IDEA: RL-based Fine-Tuning (Princeton, UC Berkeley)
Description:
Learn about groundbreaking research in a 43-minute tutorial that explores Reinforcement Learning-based Fine-Tuning of Advanced Diffusion models, presented by researchers from Princeton University and UC Berkeley. Dive into innovative approaches for accelerated drug discovery, focusing on bioinformatics, DNA sequencing, and protein folding applications. Master the latest developments that challenge traditional LLM and VLM training methods by exploring non-distribution constrained RL methods that optimize the fine-tuning phase. Examine cutting-edge AI research for predicting 3D molecular compounds, based on collaborative work from Genentech, Princeton University, and UC Berkeley. Understand how this revolutionary approach moves beyond the classical three-step training process of pre-training, supervised fine-tuning, and RLHF to achieve more efficient and effective results in molecular modeling and drug discovery.

Reinforcement Learning-Based Fine-Tuning of Diffusion Models for Drug Discovery

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