AI RESEARCH
Geometry-Aware Neural Optimizer for Shape Optimization and Inversion
arXiv CS.LG
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ArXi:2605.04474v1 Announce Type: new Geometry is central to PDE-governed systems, motivating shape optimization and inversion. Classical pipelines conduct costly forward simulation with geometry processing, requiring substantial expert effort. Neural surrogates accelerate forward analysis but do not close the loop because gradients from objectives to geometry are often unavailable. Existing differentiable methods either rely on restrictive parameterizations or unstable latent optimization driven by scalar objectives, limiting interpretability and part-wise control.