用于计算化学的生成人工智能:预测突发现象的路线图

Pratyush Tiwary, Lukas Herron, Richard John, Suemin Lee, Disha Sanwal, Ruiyu Wang
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摘要

最近,生成式人工智能(AI)的迅猛发展为计算化学带来了令人兴奋的可能性。生成式人工智能方法在跨化学物种分子结构采样、开发力场和加速模拟方面取得了重大进展。本视角从生成式人工智能和计算化学的基本理论概念入手,提供了一个结构化的概述。然后介绍了广泛使用的生成式人工智能方法,包括自动编码器、生成对抗网络、强化学习、流模型和语言模型,并重点介绍了它们在力场开发和蛋白质/RNA结构预测等不同领域的应用。重点关注的是这些方法在成为真正的预测方法之前所面临的挑战,尤其是在预测新出现的化学现象方面。我们认为,模拟方法或理论的终极目标是预测前所未见的现象,而通用人工智能在被认为对化学有用之前,也应达到同样的标准。我们建议,为了克服这些挑战,未来的人工智能模型需要整合核心化学原理,尤其是统计力学原理。
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Generative artificial intelligence for computational chemistry: a roadmap to predicting emergent phenomena
The recent surge in Generative Artificial Intelligence (AI) has introduced exciting possibilities for computational chemistry. Generative AI methods have made significant progress in sampling molecular structures across chemical species, developing force fields, and speeding up simulations. This Perspective offers a structured overview, beginning with the fundamental theoretical concepts in both Generative AI and computational chemistry. It then covers widely used Generative AI methods, including autoencoders, generative adversarial networks, reinforcement learning, flow models and language models, and highlights their selected applications in diverse areas including force field development, and protein/RNA structure prediction. A key focus is on the challenges these methods face before they become truly predictive, particularly in predicting emergent chemical phenomena. We believe that the ultimate goal of a simulation method or theory is to predict phenomena not seen before, and that Generative AI should be subject to these same standards before it is deemed useful for chemistry. We suggest that to overcome these challenges, future AI models need to integrate core chemical principles, especially from statistical mechanics.
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