Bringing Atomistic Deep Learning to Prime Time

12/09/2021
by   Nathan C. Frey, et al.
21

Artificial intelligence has not yet revolutionized the design of materials and molecules. In this perspective, we identify four barriers preventing the integration of atomistic deep learning, molecular science, and high-performance computing. We outline focused research efforts to address the opportunities presented by these challenges.

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