George Karniadakis - From PINNs to DeepOnets
Talk starts at: 3:30
Prof. George Karniadakis from Brown University speaking in the Data-driven methods for science and engineering seminar. Recorded on October 2, 2020.
Full title: From PINNs to DeepOnets: Approximating functions, functionals, and operators using deep neural networks for diverse applications
For more information including past and upcoming talks, visit: http://www.databookuw.com/seminars/
Sign up for notifications of future talks: https://mailman11.u.washington.edu/mailman/listinfo/datadriven-seminar
Видео George Karniadakis - From PINNs to DeepOnets канала Physics Informed Machine Learning
Prof. George Karniadakis from Brown University speaking in the Data-driven methods for science and engineering seminar. Recorded on October 2, 2020.
Full title: From PINNs to DeepOnets: Approximating functions, functionals, and operators using deep neural networks for diverse applications
For more information including past and upcoming talks, visit: http://www.databookuw.com/seminars/
Sign up for notifications of future talks: https://mailman11.u.washington.edu/mailman/listinfo/datadriven-seminar
Видео George Karniadakis - From PINNs to DeepOnets канала Physics Informed Machine Learning
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15 октября 2020 г. 5:59:29
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