Research Bio
Aditi Krishnapriyan's research interests are focused on developing machine learning methods that are motivated by the opportunities and challenges in science and engineering, with particular interest in physics-inspired machine learning methods. Some of the areas of exploration include approaches to incorporate physical inductive biases into ML models to improve generalization, the advantages that ML can bring to classical physics-based numerical solvers (such as through end-to-end differentiable frameworks and implicit layers), and better learning strategies for distribution shifts in the physical sciences. Our foundational research is informed by and grounded in applications in physics, fluid and molecular dynamics, materials design, climate science, and other related areas. This work also includes interfacing with other fields including numerical methods, dynamical systems theory, quantum mechanical simulations, computational geometry, and optimization.
Research Expertise and Interest
machine learning, geometric deep learning, differentiable physics, dynamical systems, numerical methods, computational geometry, optimization
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Teaching
Seminar in Chemical Engineering [CHMENG 298]
Research in Chemical Engineering [CHMENG 299]
Professional Preparation: Supervised Teaching of Chemical Engineering [CHMENG 300]
Individual Studies for Graduate Students [CHMENG 602]
Supervised Independent Study [COMPSCI 199]
Individual Research [COMPSCI 299]
Mathematics and Statistics in Chemical Engineering [CHMENG 130]
Special Laboratory Study [CHMENG 196]
Seminar in Chemical Engineering [CHMENG 298]
Research in Chemical Engineering [CHMENG 299]
Professional Preparation: Supervised Teaching of Chemical Engineering [CHMENG 300]
Individual Studies for Graduate Students [CHMENG 602]
Individual Research [COMPSCI 299]
Field Studies in Computer Science [COMPSCI 297]
Field Studies in Electrical Engineering [ELENG 297]
Physics-Inspired Machine Learning [CHMENG 236]
Seminar in Chemical Engineering [CHMENG 298]
Research in Chemical Engineering [CHMENG 299]
Professional Preparation: Supervised Teaching of Chemical Engineering [CHMENG 300]
Individual Studies for Graduate Students [CHMENG 602]
Supervised Independent Study [COMPSCI 199]
Special Topics [COMPSCI 294]
Individual Research [COMPSCI 299]