Dimension reduced surrogate construction for parametric PDE maps
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Updated
Dec 18, 2024 - Python
Dimension reduced surrogate construction for parametric PDE maps
GCA-ROM is a library which implements graph convolutional autoencoder architecture as a nonlinear model order reduction strategy.
Derivative-Informed Neural Operator: An Efficient Framework for High-Dimensional Parametric Derivative Learning
Graph Feedforward Networks: a resolution-invariant generalisation of feedforward networks for graphical data, applied to model order reduction
Deep Adaptive Sampling for Surrogate Modeling Without Labeled Data
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