Sancus

Author:

Peng Jingshu1,Chen Zhao1,Shao Yingxia2,Shen Yanyan3,Chen Lei1,Cao Jiannong4

Affiliation:

1. The Hong Kong University of Science and Technology

2. Beijing University of Posts and Telecommunications

3. Shanghai Jiao Tong University

4. The Hong Kong Polytechnic University

Abstract

Graph neural networks (GNNs) have emerged due to their success at modeling graph data. Yet, it is challenging for GNNs to efficiently scale to large graphs. Thus, distributed GNNs come into play. To avoid communication caused by expensive data movement between workers, we propose Sancus, a staleness-aware communication-avoiding decentralized GNN system. By introducing a set of novel bounded embedding staleness metrics and adaptively skipping broadcasts, Sancus abstracts decentralized GNN processing as sequential matrix multiplication and uses historical embeddings via cache. Theoretically, we show bounded approximation errors of embeddings and gradients with convergence guarantee. Empirically, we evaluate Sancus with common GNN models via different system setups on large-scale benchmark datasets. Compared to SOTA works, Sancus can avoid up to 74% communication with at least 1.86X faster throughput on average without accuracy loss.

Publisher

Association for Computing Machinery (ACM)

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

Reference45 articles.

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4. Jianfei Chen , Jun Zhu , and Le Song . 2018 . Stochastic Training of Graph Convolutional Networks with Variance Reduction. In ICML 2018 , Stockholmsmässan, Stockholm, Sweden , July 10-15, 2018 (Proceedings of Machine Learning Research), Vol. 80. PMLR, 941--949. http://proceedings.mlr.press/v80/chen18p.html Jianfei Chen, Jun Zhu, and Le Song. 2018. Stochastic Training of Graph Convolutional Networks with Variance Reduction. In ICML 2018, Stockholmsmässan, Stockholm, Sweden, July 10-15, 2018 (Proceedings of Machine Learning Research), Vol. 80. PMLR, 941--949. http://proceedings.mlr.press/v80/chen18p.html

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