Leveraging Physics-Induced Bias in Scientific Machine Learning for Computational Mechanics
Offered By: Alan Turing Institute via YouTube
Course Description
Overview
Explore a comprehensive lecture on leveraging physics-induced bias in scientific machine learning for computational mechanics, focusing on physics-informed, structure-preserved learning for problems with irregular geometries. Delve into advanced concepts presented by Jianxun Wang at the Alan Turing Institute, offering valuable insights for researchers and practitioners in the field of scientific computing and machine learning. Gain a deeper understanding of how to incorporate physical principles into machine learning models to enhance their performance and accuracy when dealing with complex geometrical structures in computational mechanics problems.
Syllabus
Jianxun Wang - Leveraging physics-induced bias in scientific machine learning for computational...
Taught by
Alan Turing Institute
Related Courses
Introduction to Scientific Machine LearningPurdue University via edX Scientific Machine Learning: Opportunities and Challenges - Keynote
The Julia Programming Language via YouTube Scientific Machine Learning - Where Physics-based Modeling Meets Data-driven Learning
Santa Fe Institute via YouTube AI for Science - Expo Stage Talk - AAAS Annual Meeting
AAAS Annual Meeting via YouTube Generalizing Scientific Machine Learning and Differentiable Simulation Beyond Continuous Models
Alan Turing Institute via YouTube