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arxiv: 1902.00140 · v2 · pith:CDT3SVIQnew · submitted 2019-02-01 · ⚛️ physics.data-an · physics.comp-ph

Advances of Machine Learning in Molecular Modeling and Simulation

classification ⚛️ physics.data-an physics.comp-ph
keywords learningmachinechemicalmodelingmolecularresearchsimulationaddressed
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In this review, we highlight recent developments in the application of machine learning for molecular modeling and simulation. After giving a brief overview of the foundations, components, and workflow of a typical supervised learning approach for chemical problems, we showcase areas and state-of-the-art examples of their deployment. In this context, we discuss how machine learning relates to, supports, and augments more traditional physics-based approaches in computational research. We conclude by outlining challenges and future research directions that need to be addressed in order to make machine learning a mainstream chemical engineering tool.

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