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The Crunch Group The collaborative research work of George Em Karniadakis
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Machine Learning + X Seminars 2024

  • January 26, 2024 recording
  • January 26, 2024: Physics-informed neural networks for quantum control by Ariel Norambuena, Universidad Mayor
  • January 19, 2024 recording
  • January 19, 2024: U-DeepONet: U-Net Enhanced Deep Operator Network for Geologic Carbon Sequestration by Waleed Diab, Khalifa University
  • January 12, 2024 recording
  • January 12, 2024: PPDONet: Deep Operator Networks for forward and inverse problems in astronomy by Shunyuan Mao, University of Victoria
  • January 12, 2024: Physics-informed neural networks for solving phonon Boltzmann transport equations by Tengfei Luo, University of Notre Dame
  • January 05, 2024 recording
  • January 05, 2024: Neural Operator Learning Enhanced Physics-informed Neural Networks for solving differential equations with sharp solutions by Zhiping Mao, Xiamen University
  • January 05, 2024: Physics-Informed Parallel Neural Networks with Self-Adaptive Loss Weighting for the Identification of Structural Systems by Rui Zhang, Penn State University
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