ChemistryNature Communications
Accelerating the discovery of active and selective CO2RR catalysts using a high-throughput virtual screening strategy
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Discover how D. H. Mok, H. Lee, G. Zhang, C. Li, Kun Jiang, and Seoin Back developed a high-throughput virtual screening workflow that utilizes machine learning to identify promising catalysts for CO2 reduction reactions, accelerating the fight against climate change.
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