Deep Gaussian Processes for Bayesian Inversion - Matt Dunlop, Courant
Alan Turing Institute via YouTube
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Explore deep Gaussian processes for Bayesian inversion in this 26-minute conference talk by Matt Dunlop from Courant. Delve into uncertainty quantification techniques for better understanding physical systems and decision-making under uncertainty. Learn how Gaussian Process emulators can replace complex, computationally expensive codes for more efficient modeling. Examine the theoretical and numerical aspects of GP emulation, with a focus on applications to large-scale problems in climate, tsunami, and earthquake research. Cover key topics including Bayesian inversion, deep Gaussian processes, composition-based processes, methods, numerical examples, and future directions in this field.
Syllabus
Introduction
Bayesian Inversion
Deep Gaussian Processes
Composition Based Processes
Methods
Numerical Examples
Future Directions
Taught by
Alan Turing Institute