Accelerating Gossip SGD with Periodic Global Averaging

Abstract

Communication overhead hinders the scalability of large-scale distributed training. Gossip SGD, where each node averages only with its neighbors, is more communication-efficient than the prevalent parallel SGD. However, its convergence rate is reversely proportional to quantity $1-\beta$ which measures the network connectivity. On large and sparse networks where $1-\beta \to 0$, Gossip SGD requires more iterations to converge, which offsets against its communication benefit. This paper introduces Gossip-PGA, which adds Periodic Global Averaging to accelerate Gossip SGD. Its transient stage, i.e., the iterations required to reach asymptotic linear speedup stage, improves from $\Omega(\beta^4 n^3/(1-\beta)^4)$ to $\Omega(\beta^4 n^3 H^4)$ for non-convex problems. The influence of network topology in Gossip-PGA can be controlled by the averaging period $H$. Its transient-stage complexity is also superior to local SGD which has order $\Omega(n^3 H^4)$. Empirical results of large-scale training on image classification (ResNet50) and language modeling (BERT) validate our theoretical findings.

Cite

Text

Chen et al. "Accelerating Gossip SGD with Periodic Global Averaging." International Conference on Machine Learning, 2021.

Markdown

[Chen et al. "Accelerating Gossip SGD with Periodic Global Averaging." International Conference on Machine Learning, 2021.](https://mlanthology.org/icml/2021/chen2021icml-accelerating/)

BibTeX

@inproceedings{chen2021icml-accelerating,
  title     = {{Accelerating Gossip SGD with Periodic Global Averaging}},
  author    = {Chen, Yiming and Yuan, Kun and Zhang, Yingya and Pan, Pan and Xu, Yinghui and Yin, Wotao},
  booktitle = {International Conference on Machine Learning},
  year      = {2021},
  pages     = {1791-1802},
  volume    = {139},
  url       = {https://mlanthology.org/icml/2021/chen2021icml-accelerating/}
}