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Implement NORM (Neural Operator on Riemannian Manifolds) #124

@ChrisRackauckas-Claude

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@ChrisRackauckas-Claude

Summary

Implement NORM, which generalizes neural operators from Euclidean spaces to Riemannian manifolds using Laplacian eigenfunctions.

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Description

NORM shifts function-to-function mappings into the subspace of Laplace-Beltrami eigenfunctions on the manifold, then learns finite-dimensional mappings there. This preserves discretization-independence on complex geometries (spheres, surfaces, general manifolds) and naturally extends spectral neural operator methods beyond Euclidean domains.

Related to SFNO (spherical case) but more general. See also GLNO (arXiv:2512.16409) for a Laplace-specific variant on manifolds.

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