ATLAS achieves 12-30x faster out-of-core full-graph GNN inference on graphs up to 4B edges by switching to broadcast-based layer-wise execution with graph reordering, minimum-pending-message eviction, and GPU-accelerated tiered memory-disk hierarchy.
Eta prediction with graph neural networks in google maps
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A training framework for GNNs that enforces user-specified bounds or exact cluster counts in graph community detection.
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ATLAS: Efficient Out-of-Core Inference for Billion-Scale Graph Neural Networks
ATLAS achieves 12-30x faster out-of-core full-graph GNN inference on graphs up to 4B edges by switching to broadcast-based layer-wise execution with graph reordering, minimum-pending-message eviction, and GPU-accelerated tiered memory-disk hierarchy.
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Bounded Graph Clustering with Graph Neural Networks
A training framework for GNNs that enforces user-specified bounds or exact cluster counts in graph community detection.