Duration: (43:43) ?Subscribe5835 2025-02-23T12:09:41+00:00
MSML2020 Invited Talk by Prof. Anna Gilbert, Yale University
(45:58)
MSML2020 Invited talk by Prof. Weinan E, Princeton University
(42:50)
MSML2020 Invited Talk by Prof. Roberto Car, Princeton University
(46:58)
MSML2020 Invited Talk by Prof. Lexing Ying, Stanford University
(48:11)
MSML2020 Invited Talk by Prof. Nathan Kutz, University of Washington
(56:47)
MSML2020 Invited Talk by Prof. Lenka Zdeborová, CNRS France
(43:33)
MSML2020 Invited Talk by Prof. Stanley Osher, University of California, Los Angeles
(42:26)
MSML2020 Invited Talk by Prof. George Karniadakis, Brown University
(43:43)
MSML2020 Invited Talk by Prof. Stéphane Mallat, Collége de France, ENS Paris, Flatiron Institute
(41:11)
محمد على كلاي رحمه الله يتكلم عن الجنة
(3:22)
Anima Anandkumar - Neural operator: A new paradigm for learning PDEs
(59:56)
Learning Physics Informed Machine Learning Part 2- Inverse Physics Informed Neural Networks (PINNs)
(30:52)
L'apprentissage face à la malédiction de la grande dimension (1) - Stéphane Mallat (2017-2018)
(1:37:16)
Justin Smith - The state of neural network interatomic potentials - IPAM at UCLA
(41:23)
PLUMED Masterclass 22-3.1
(58:17)
The Universal Approximation Theorem for neural networks
(6:25)
AN20: Partial Differential Equations Meet Deep Learning: Old Solutions for New Problems \u0026 Vice Versa
(55:10)
Machine Learning Interatomic Potential Development with MAML
(48:59)
Get hands On with PINNs
(35:48)
MSML2020 Conference Introduction
(4:15)
MSML2020 Paper Presentation - Hugo Cui
(14:19)
MSML2020 Paper Presentation - Karthik Aadithya
(18:7)