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Computational Mechanics & Scientific Artificial Intelligence Lab (CoMSAIL)

Prof. Jian-xun Wang's research group -- we advance knowledge at the Interface of scientific AI and computational physics (scientific machine learning, data assimilation, physics-informed deep learning, Bayesian learning, differentiable programming, uncertainty quantification)

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Han and Luning passed the Qual Exam, congrats!

Posted on August 25, 2019 by Jian-Xun Wang
Posted in NewsTagged Students

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Presented PCML paper in USC Workshop on Research Challenges at the interface of Machine Learning and Uncertainty Quantification
New publication in Computer Methods in Applied Mechanics and Engineering

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Email (Cornell): jw2837@cornell.edu
Email (ND): jwang33@nd.edu

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