A modified graph convolutional isomorphism network predicts polynomial coefficients for a sparse pseudo-inverse AMG smoother, cutting V-cycles and delivering 4-37% wall-clock speedups while generalizing to larger and unseen meshes.
Weymouth and Bernat Font
3 Pith papers cite this work. Polarity classification is still indexing.
years
2026 3verdicts
UNVERDICTED 3representative citing papers
Kirigami parachutes are stable for deployments equal to their radius and tumble for smaller ones, as found in effectively infinite-domain fluid simulations.
An LLM-based self-evolving agent discovers a traveling-wave controller with body-frame guidance and yaw feedback that generalizes to unseen targets for an underactuated fluid swimmer.
citing papers explorer
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Acceleration of an algebraic multigrid pressure solver using graph neural networks
A modified graph convolutional isomorphism network predicts polynomial coefficients for a sparse pseudo-inverse AMG smoother, cutting V-cycles and delivering 4-37% wall-clock speedups while generalizing to larger and unseen meshes.
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Stability of Kirigami parachutes in effectively infinite numerical domains
Kirigami parachutes are stable for deployments equal to their radius and tumble for smaller ones, as found in effectively infinite-domain fluid simulations.
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Self-Evolving Scientific Agent Discovers Generalizable Physically-Reasoned Fluid Control
An LLM-based self-evolving agent discovers a traveling-wave controller with body-frame guidance and yaw feedback that generalizes to unseen targets for an underactuated fluid swimmer.