Geometry-Informed Neural Operator for Large-Scale 3D PDEs

Neural Information Processing Systems 

To empirically validate the performance of our method on large-scale simulation, we generate the industry-standard aerodynamics dataset of 3D vehicle geometries with Reynolds numbers as high as five million. For this large-scale 3D fluid simulation, numerical methods are expensive to compute surface pressure.