Designing complex concentrated alloys with quantum machine learning and language modeling
<p>Designing novel complex concentrated alloys (CCAs) is an essential topic in materials science. However, due to the complicated high-dimensional component-property relationship, tuning material properties by researchers’ experience is challenging, even when guided by physical or em...
Main Authors: | Pei, Z, Gong, Y, Liu, X, Yin, J |
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Format: | Journal article |
Language: | English |
Published: |
Cell Press
2024
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