Reduced Order Models for Efficient PDE-Constrained Optimization Problems - Part I
Hausdorff Center for Mathematics via YouTube
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Learn about reduced order modeling techniques for solving PDE-constrained optimization problems efficiently in this comprehensive lecture by Mario Ohlberger from the Hausdorff Center for Mathematics, covering fundamental concepts and methodologies for reducing computational complexity while maintaining solution accuracy in partial differential equation optimization scenarios over the course of 65 minutes.
Syllabus
Mario Ohlberger: Reduced Order Models for Efficient PDE-Constrained Optimization Problems Part I
Taught by
Hausdorff Center for Mathematics