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Machine Learning Potentials: A Roadmap Toward Next-Generation Biomolecular Simulations

Gianni De Fabritiis
Abstract

Machine learning potentials offer a revolutionary, unifying framework for molecular simulations across scales, from quantum chemistry to coarse-grained models. Here, I explore their potential to dramatically improve accuracy and scalability in simulating complex molecular systems. I discuss key challenges that must be addressed to fully realize their transformative potential in chemical biology and related fields.

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