Alexandre Tkatchenko: "Towards a Unified Machine Learning Model of Molecular Chemical Space"
Machine Learning for Physics and the Physics of Learning 2019
Workshop I: From Passive to Active: Generative and Reinforcement Learning with Physics
"Towards a Unified Machine Learning Model of Molecular Chemical Space"
Alexandre Tkatchenko, University of Luxembourg
Institute for Pure and Applied Mathematics, UCLA
September 23, 2019
For more information: http://www.ipam.ucla.edu/mlpws1
Видео Alexandre Tkatchenko: "Towards a Unified Machine Learning Model of Molecular Chemical Space" канала Institute for Pure & Applied Mathematics (IPAM)
Workshop I: From Passive to Active: Generative and Reinforcement Learning with Physics
"Towards a Unified Machine Learning Model of Molecular Chemical Space"
Alexandre Tkatchenko, University of Luxembourg
Institute for Pure and Applied Mathematics, UCLA
September 23, 2019
For more information: http://www.ipam.ucla.edu/mlpws1
Видео Alexandre Tkatchenko: "Towards a Unified Machine Learning Model of Molecular Chemical Space" канала Institute for Pure & Applied Mathematics (IPAM)
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10 октября 2019 г. 2:26:32
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