Active operator learning with predictive uncertainty quantification for partial differential equations
arXiv:2503.03178v4 Announce Type: replace Abstract: With the increased prevalence of neural operators being used to provide rapid solutions to partial differential equations (PDEs), understanding the accuracy of model predictions and the associated error levels is necessary for deploying reliable surrogate…
