An Overview of Machine Learning Applied to High Entropy Alloys
Scientists are using machine learning to detect defects in high entropy alloys, according to a new study in the journal Nature Biotechnology and Chemistry (Nature.com) for the first time in nearly two decades, in which they were developed.
Source: azom.comPublished on 2022-01-21
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