Completed
How do we harness the explosion of data to extract knowledge, insight and decisions?
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Scientific Machine Learning - Where Physics-based Modeling Meets Data-driven Learning
Automatically move to the next video in the Classroom when playback concludes
- 1 Scientific Machine Learning Where Physics-based Modeling Meets Data-driven Learning
- 2 Scientific Machine Learning What are the opportunities and challenges of machine learning in complex applications across science, engineering, and medicine?
- 3 How do we harness the explosion of data to extract knowledge, insight and decisions?
- 4 Example: modeling combustion in a rocket engine Conservation of mass (p), momentum (w), energy (E)
- 5 There are multiple ways to write the Euler equations
- 6 Introducing auxiliary variables can expose structure - lifting
- 7 Lifting example: Tubular reactor
- 8 Modeling a single injector of a rocket engine combustor
- 9 Performance of learned quadratic ROM
- 10 Data-driven decisions