YoVDO

Known Boundary Emulation of Complex Computer Models - Ian Vernon, Cambridge

Offered By: Alan Turing Institute via YouTube

Tags

Uncertainty Quantification Courses Climate Modeling Courses

Course Description

Overview

Explore the concept of Known Boundary Emulation for complex computer models in this 26-minute talk by Ian Vernon from Cambridge University. Delve into uncertainty quantification techniques and the use of Gaussian Process emulators to approximate computationally expensive codes. Learn about covariance updates, efficient methods, and the application of parallel boundaries in model updating. Discover how these techniques can be applied to real-world challenges such as climate modeling, tsunami prediction, and earthquake analysis. Gain insights into the theoretical and numerical aspects of GP emulation, with a focus on handling 'large' features in complex physical and numerical models.

Syllabus

Introduction
Models
Covariance Update
More Efficient Methods
True Function
Two Boundaries
In Action
Parallel Boundaries
Two Parallel Boundaries
Updating the Model
Applications
Rate Models


Taught by

Alan Turing Institute

Related Courses

Data Science: Inferential Thinking through Simulations
University of California, Berkeley via edX
Decision Making Under Uncertainty: Introduction to Structured Expert Judgment
Delft University of Technology via edX
Probabilistic Deep Learning with TensorFlow 2
Imperial College London via Coursera
Agent Based Modeling
The National Centre for Research Methods via YouTube
Sampling in Python
DataCamp