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Boris Kozinsky - Uncertainty-aware machine learning models of many-body atomic interactions

Recorded 17 April 2023. Boris Kozinsky of Harvard University presents "Symmetry and uncertainty-aware machine learning models of many-body atomic and electronic interactions" at IPAM's workshop for Scale-Bridging Materials Modeling at Extreme Computational Scales.
Learn more online at: http://www.ipam.ucla.edu/programs/workshops/workshop-ii-scale-bridging-materials-modeling-at-extreme-computational-scales/

Видео Boris Kozinsky - Uncertainty-aware machine learning models of many-body atomic interactions канала Institute for Pure & Applied Mathematics (IPAM)
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21 апреля 2023 г. 20:20:19
00:57:56
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