Research Seminar: Data-Efficient Deep Learning using Physics-Informed Neural Networks
- Starts: 10:00 am on Friday, March 24, 2023
- Ends: 11:00 am on Friday, March 24, 2023
A grand challenge with great opportunities is to develop a coherent framework that enables blending conservation laws, physical principles, and/or phenomenological behaviors expressed by differential equations with the vast data sets available in many fields of engineering, science, and technology. At the intersection of probabilistic machine learning, deep learning, and scientific computations, this work is pursuing the overall vision to establish promising new directions for harnessing the long-standing developments of classical methods in applied mathematics and mathematical physics to design learning machines with the ability to operate in complex domains without requiring large quantities of data.