A generative model for inorganic materials design

Claudio Zeni(Microsoft Research (United Kingdom)), Robert Pinsler(Microsoft Research (United Kingdom)), Daniel Zügner(Microsoft (Germany)), Andrew T. Fowler(Microsoft Research (United Kingdom)), Matthew K. Horton(Microsoft (United States)), Xiang Fu(Microsoft Research (United Kingdom)), Zilong Wang(Chinese Academy of Sciences), Aliaksandra Shysheya(Microsoft Research (United Kingdom)), Jonathan Crabbé(Microsoft Research (United Kingdom)), Shoko Ueda(Microsoft Research (United Kingdom)), Roberto Sordillo(Microsoft Research (United Kingdom)), Lixin Sun(Microsoft Research (United Kingdom)), Jake A. Smith(Microsoft (United States)), Bichlien H. Nguyen(Microsoft (United States)), Hannes Schulz(Microsoft (Germany)), Sarah Lewis(Microsoft Research (United Kingdom)), Chin‐Wei Huang(Microsoft (Netherlands)), Ziheng Lu(Microsoft Research Asia (China)), Yichi Zhou(Microsoft Research Asia (China)), Han Yang(Microsoft Research Asia (China)), Hongxia Hao(Microsoft Research Asia (China)), Jielan Li(Microsoft Research Asia (China)), Chunlei Yang(Chinese Academy of Sciences), Wenjie Li(Chinese Academy of Sciences), Ryota Tomioka(Microsoft Research (United Kingdom)), Tian Xie(Microsoft Research (United Kingdom))
Nature
January 16, 2025
Cited by 341Open Access
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Abstract

Abstract The design of functional materials with desired properties is essential in driving technological advances in areas such as energy storage, catalysis and carbon capture 1–3 . Generative models accelerate materials design by directly generating new materials given desired property constraints, but current methods have a low success rate in proposing stable crystals or can satisfy only a limited set of property constraints 4–11 . Here we present MatterGen, a model that generates stable, diverse inorganic materials across the periodic table and can further be fine-tuned to steer the generation towards a broad range of property constraints. Compared with previous generative models 4,12 , structures produced by MatterGen are more than twice as likely to be new and stable, and more than ten times closer to the local energy minimum. After fine-tuning, MatterGen successfully generates stable, new materials with desired chemistry, symmetry and mechanical, electronic and magnetic properties. As a proof of concept, we synthesize one of the generated structures and measure its property value to be within 20% of our target. We believe that the quality of generated materials and the breadth of abilities of MatterGen represent an important advancement towards creating a foundational generative model for materials design.


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