The rise of generative AI for metal-organic framework design and synthesis
  • Duan, Chenru
  • Nandy, Aditya
  • Pal, Shyam Chand
  • Yang, Xin
  • Gao, Wenhao
  • ... Kang, Yeonghun
  • 외 14명
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초록

Advances in generative artificial intelligence are transforming how metal-organic frameworks (MOFs) are designed and discovered. This perspective introduces the shift from laborious enumeration of MOF candidates to generative approaches that can autonomously propose and synthesize in the laboratory new porous reticular structures on demand. We outline the progress of employing deep learning models, such as variational autoencoders, diffusion models, and large language-model-based agents, that are fueled by the growing amount of available datafrom the MOF community and suggest novel crystalline materials designs. These generative tools can be combined with high-throughput computational screening and even automated experiments to form accelerated, closed-loop discovery pipelines. The result is a new paradigm for reticular chemistry in which AI algorithms more efficiently direct the search for high-performance MOF materials for clean air and energy applications. Finally, we highlight remaining challenges such as synthetic feasibility, dataset diversity, and the need for further integration of domain knowledge.

키워드

INFORMATION-SYSTEMLANGUAGECLASSIFICATIONCHEMISTRYPOROSITYDATABASE
제목
The rise of generative AI for metal-organic framework design and synthesis
저자
Duan, ChenruNandy, AdityaPal, Shyam ChandYang, XinGao, WenhaoDu, YuanqiKrass, HendrikKang, YeonghunBernales, VariniaYe, ZuyangPyle, TristanYang, RayGu, ZeqiSchwaller, PhilippeMa, ShengqianSun, ShijingAspuru-Guzik, AlanMoosavi, Seyed MohamadWexler, RobertZheng, Zhiling
DOI
10.1016/j.matt.2026.102748
발행일
2026-05-06
유형
Article
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