English

DIGEST: Fast and Communication Efficient Decentralized Learning with Local Updates

Machine Learning 2024-05-14 v2 Distributed, Parallel, and Cluster Computing

Abstract

Two widely considered decentralized learning algorithms are Gossip and random walk-based learning. Gossip algorithms (both synchronous and asynchronous versions) suffer from high communication cost, while random-walk based learning experiences increased convergence time. In this paper, we design a fast and communication-efficient asynchronous decentralized learning mechanism DIGEST by taking advantage of both Gossip and random-walk ideas, and focusing on stochastic gradient descent (SGD). DIGEST is an asynchronous decentralized algorithm building on local-SGD algorithms, which are originally designed for communication efficient centralized learning. We design both single-stream and multi-stream DIGEST, where the communication overhead may increase when the number of streams increases, and there is a convergence and communication overhead trade-off which can be leveraged. We analyze the convergence of single- and multi-stream DIGEST, and prove that both algorithms approach to the optimal solution asymptotically for both iid and non-iid data distributions. We evaluate the performance of single- and multi-stream DIGEST for logistic regression and a deep neural network ResNet20. The simulation results confirm that multi-stream DIGEST has nice convergence properties; i.e., its convergence time is better than or comparable to the baselines in iid setting, and outperforms the baselines in non-iid setting.

Keywords

Cite

@article{arxiv.2307.07652,
  title  = {DIGEST: Fast and Communication Efficient Decentralized Learning with Local Updates},
  author = {Peyman Gholami and Hulya Seferoglu},
  journal= {arXiv preprint arXiv:2307.07652},
  year   = {2024}
}
R2 v1 2026-06-28T11:30:59.100Z