CAII HAL Training: Physics Informed Deep Learning
This tutorial will explore how to incorporate physics into deep learning models with various examples ranging from using physics-informed neural networks (PINNs) for forward and inverse problems to employing physics-informed DeepONets for a hybrid data and physics approach to problems.
Видео CAII HAL Training: Physics Informed Deep Learning канала NCSAatIllinois
Видео CAII HAL Training: Physics Informed Deep Learning канала NCSAatIllinois
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