George, 2023 - Google Patents

Understanding and Machine Learning of Materials Properties with Quantum-Chemical Bonding Analysis

George, 2023

Document ID
16252917981381452968
Author
George J
Publication year

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Bonds and local atomic environments are crucial descriptors for material properties. They have been used to create design rules for materials and are used as features in machine learning of material properties. This talk will show how our recently developed tools, that …
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