Risi Kondor: "Fourier space neural networks"
Machine Learning for Physics and the Physics of Learning 2019
Workshop IV: Using Physical Insights for Machine Learning
"Fourier space neural networks"
Risi Kondor - University of Chicago & Flatiron Institute, Computer Science
Institute for Pure and Applied Mathematics, UCLA
November 18, 2019
For more information: http://www.ipam.ucla.edu/mlpws4
Видео Risi Kondor: "Fourier space neural networks" канала Institute for Pure & Applied Mathematics (IPAM)
Workshop IV: Using Physical Insights for Machine Learning
"Fourier space neural networks"
Risi Kondor - University of Chicago & Flatiron Institute, Computer Science
Institute for Pure and Applied Mathematics, UCLA
November 18, 2019
For more information: http://www.ipam.ucla.edu/mlpws4
Видео Risi Kondor: "Fourier space neural networks" канала Institute for Pure & Applied Mathematics (IPAM)
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11 декабря 2019 г. 3:30:27
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