AI RESEARCH
ArGEnT: Arbitrary Geometry-encoded Transformer for Operator Learning
arXiv CS.LG
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ArXi:2602.11626v2 Announce Type: replace Learning solution operators for systems with complex, varying geometries and parametric physical settings is a central challenge in scientific machine learning. In many-query regimes such as design optimization, control and inverse problems, surrogate modeling must generalize across geometries while allowing flexible evaluation at arbitrary spatial locations. In this work, we propose Arbitrary Geometry-encoded Transformer (ArGEnT), a geometry-aware attention-based architecture for operator learning on arbitrary domains.