Statistics & Applied Probability - PSTAT

Statistical and machine learning approaches to computational uncertainty quantification in mathematical models with applications to computer simulations, images, and time-series, spatio-temporal, and functional data. Topics include computer model emulation and design, reproducing kernel Hilbert spaces, Gaussian processes, dynamic systems, the Kalman filter, inverse problems, and Bayesian optimization.

Prerequisites: PSTAT 126


PSTAT 237
28 / 30 Enrolled
Uncertainty Quantification
Mengyang Michael Gu 3.8
M W
09:30 AM - 10:45 AM
100.0% A