📢 Active Learning for Neural PDE Solvers (AL4PDE; arxiv.org/abs/2408.01536) While active learning is common in other domains, it has yet to be studied extensively for neural PDE solving. This work introduces AL4PDE, a modular and extensible active learning benchmark. #ML4PDE

AI4scienceTalks's tweet image. 📢 Active Learning for Neural PDE Solvers (AL4PDE; arxiv.org/abs/2408.01536)

While active learning is common in other domains, it has yet to be studied extensively for neural PDE solving. This work introduces AL4PDE, a modular and extensible active learning benchmark.

#ML4PDE

Includes multiple parametric PDEs & SOTA surrogate models for a solver-in-the-loop setting, enabling the evaluation of existing & development of new active learning methods for PDE solving. Evaluates batch active learning algorithms such as uncertainty & feature-based methods.


Shows that active learning reduces the average error by up to 71% compared to random sampling & significantly reduces worst-case errors. Acquired datasets are reusable, providing benefits for surrogate models not involved in the data generation. Code and dataset available soon.


A new line of research towards developing algorithms & methods that enable neural operators to achieve generalization over desiderata such as PDE parameters, ICs, BCs, Geometries, Resolutions, etc. #NeuralOperators #ML4Science #PDEs #NumericalSolvers #ActiveLearning #AI4Science


United States เทรนด์
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