Scientific Machine Learning - Where Physics-based Modeling Meets Data-driven Learning
Santa Fe Institute via YouTube
Overview
Syllabus
Scientific Machine Learning Where Physics-based Modeling Meets Data-driven Learning
Scientific Machine Learning What are the opportunities and challenges of machine learning in complex applications across science, engineering, and medicine?
How do we harness the explosion of data to extract knowledge, insight and decisions?
Example: modeling combustion in a rocket engine Conservation of mass (p), momentum (w), energy (E)
There are multiple ways to write the Euler equations
Introducing auxiliary variables can expose structure - lifting
Lifting example: Tubular reactor
Modeling a single injector of a rocket engine combustor
Performance of learned quadratic ROM
Data-driven decisions
Taught by
Santa Fe Institute