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MACS: Multi-Agent Reinforcement Learning for Optimization of Crystal Structures

Zamaraeva, Elena, Collins, Christopher M., Darling, George R., Dyer, Matthew S., Peng, Bei, Savani, Rahul, Antypov, Dmytro, Gusev, Vladimir V., Clymo, Judith, Spirakis, Paul G., Rosseinsky, Matthew J.

arXiv.org Artificial Intelligence

Geometry optimization of atomic structures is a common and crucial task in computational chemistry and materials design. Following the learning to optimize paradigm, we propose a new multi-agent reinforcement learning method called Multi-Agent Crystal Structure optimization (MACS) to address periodic crystal structure optimization. MACS treats geometry optimization as a partially observable Markov game in which atoms are agents that adjust their positions to collectively discover a stable configuration. We train MACS across various compositions of reported crystalline materials to obtain a policy that successfully optimizes structures from the training compositions as well as structures of larger sizes and unseen compositions, confirming its excellent scalability and zero-shot transferability. We benchmark our approach against a broad range of state-of-the-art optimization methods and demonstrate that MACS optimizes periodic crystal structures significantly faster, with fewer energy calculations, and the lowest failure rate.


Machine-learning-accelerated simulations to enable automatic surface reconstruction

Du, Xiaochen, Damewood, James K., Lunger, Jaclyn R., Millan, Reisel, Yildiz, Bilge, Li, Lin, Gómez-Bombarelli, Rafael

arXiv.org Artificial Intelligence

Understanding material surfaces and interfaces is vital in applications like catalysis or electronics. By combining energies from electronic structure with statistical mechanics, ab initio simulations can in principle predict the structure of material surfaces as a function of thermodynamic variables. However, accurate energy simulations are prohibitive when coupled to the vast phase space that must be statistically sampled. Here, we present a bi-faceted computational loop to predict surface phase diagrams of multi-component materials that accelerates both the energy scoring and statistical sampling methods. Fast, scalable, and data-efficient machine learning interatomic potentials are trained on high-throughput density-functional theory calculations through closed-loop active learning. Markov-chain Monte Carlo sampling in the semi-grand canonical ensemble is enabled by using virtual surface sites. The predicted surfaces for GaN(0001), Si(111), and SrTiO3(001) are in agreement with past work and suggest that the proposed strategy can model complex material surfaces and discover previously unreported surface terminations.