2024
DOI: 10.1021/jacsau.4c00618
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From Data to Discovery: Recent Trends of Machine Learning in Metal–Organic Frameworks

Junkil Park,
Honghui Kim,
Yeonghun Kang
et al.

Abstract: Renowned for their high porosity and structural diversity, metal− organic frameworks (MOFs) are a promising class of materials for a wide range of applications. In recent decades, with the development of large-scale databases, the MOF community has witnessed innovations brought by data-driven machine learning methods, which have enabled a deeper understanding of the chemical nature of MOFs and led to the development of novel structures. Notably, machine learning is continuously and rapidly advancing as new met… Show more

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