ME 598 SML - Scientific Machine Learning
Last offered Fall 2022
Subject offerings of new and developing areas of knowledge in mechanical engineering intended to augment the existing curriculum. See Class Schedule or departmental course information for topics and prerequisites. Course Information: May be repeated in the same or separate terms if topics vary.
Familiarity with introductory numerical methods (e.g., CS 357 or TAM 470) and the basics of machine learning and neural networks (e.g., CS 446). Theory and practice of Scientific Machine Learning (SciML), which leverages machine learning tools for scientific computing. Topics include learning-based methods for differential equations, neural ODEs and PDEs, physics-informed networks and model discovery, interpretable and explainable learning, differentiable and probabilistic programming for scientific computing, and uncertainty quantification via learning. Efficient parallel implementation of algorithms on scalable computing architectures will be emphasized.
|Scientific Machine Learning||SML||43168||LCD||4||1100 - 1215||M W||1214 Siebel Center for Comp Sci||Matthew West|