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Harnessing Scale and Physics: A Multi-Graph Neural Operator Framework for PDEs on Arbitrary Geometries
2024Zhihao Li, Haoze Song et al.
[2]
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2024Zhihao Li, Zhilu Lai et al.
[3]
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2021Shuhao Cao
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2021M. Hillier
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"Develop a Gaussian Particle Operator for interpretable and efficient PDE simulations with near-linear complexity and mesh-agnostic geometry."

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