Deep Learning of Hierarchical Multiscale Differential Equation Time Steppers
Steve Brunton via YouTube
Overview
Explore a novel deep learning architecture for integrating multiscale differential equations in time through this 32-minute video presentation. Learn about the benchmarking process on illustrative dynamical systems, delve into the methodology behind hierarchical deep learning time-steppers, and understand their efficiency compared to traditional methods. Discover how this approach can be applied to sequence generation and hybrid time steppers. Gain insights into dynamical modeling, neural network applications, and the potential impact on computational efficiency in solving complex differential equations.
Syllabus
Introduction
Dynamical Modelling
Neural Network
Methodology
Bonus Point
Results
Efficiency
Hybrid Time Steppers
Efficiency Comparison
Sequence Generation Comparison
Summary
Taught by
Steve Brunton