GriNNder uses structured storage offloading with partition-wise caching and gradient regathering to train full-graph GNNs on limited memory, achieving up to 9.78x speedup over baselines.
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GriNNder: Breaking the Memory Capacity Wall in Full-Graph GNN Training with Storage Offloading
GriNNder uses structured storage offloading with partition-wise caching and gradient regathering to train full-graph GNNs on limited memory, achieving up to 9.78x speedup over baselines.