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.
Deep Gaussian Processes for Bayesian Inversion - Matt Dunlop, Courant