LGDCMay 31, 2022

Distributed Graph Neural Network Training with Periodic Stale Representation Synchronization

arXiv:2206.00057v24 citationsh-index: 73
Originality Incremental advance
AI Analysis

This addresses the problem of scalable GNN training for applications with large graphs, representing a novel hybrid approach rather than an incremental improvement.

The paper tackles the challenge of training Graph Neural Networks on large graphs by proposing DIGEST, a distributed training framework that uses periodic stale representation synchronization to preserve global graph information while reducing communication costs. Experimental results show DIGEST achieves up to 21.82× speedups without performance loss compared to state-of-the-art distributed GNN frameworks.

Despite the recent success of Graph Neural Networks, it remains challenging to train a GNN on large graphs with millions of nodes and billions of edges, which are prevalent in many graph-based applications. Traditional sampling-based methods accelerate GNN training by dropping edges and nodes, which impairs the graph integrity and model performance. Differently, distributed GNN algorithms accelerate GNN training by utilizing multiple computing devices and can be classified into two types: "partition-based" methods enjoy low communication costs but suffer from information loss due to dropped edges, while "propagation-based" methods avoid information loss but suffer from prohibitive communication overhead caused by the neighbor explosion. To jointly address these problems, this paper proposes DIGEST (DIstributed Graph reprEsentation SynchronizaTion), a novel distributed GNN training framework that synergizes the complementary strength of both categories of existing methods. We propose to allow each device to utilize the stale representations of its neighbors in other subgraphs during subgraph parallel training. This way, our method preserves global graph information from neighbors to avoid information loss and reduce communication costs. Our convergence analysis demonstrates that DIGEST enjoys a state-of-the-art convergence rate. Extensive experimental evaluation on large, real-world graph datasets shows that DIGEST achieves up to 21.82 speedups without compromising performance compared to state-of-the-art distributed GNN training frameworks.

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