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"Machine learning to tame divergent density functional approximations: a ..."
Chenru Duan et al. (2021)
- Chenru Duan, Shuxin Chen, Michael G. Taylor, Fang Liu, Heather J. Kulik:
Machine learning to tame divergent density functional approximations: a new path to consensus materials design principles. CoRR abs/2106.13109 (2021)
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