RelaySum for Decentralized Deep Learning on Heterogeneous Data
Abstract
In decentralized machine learning, workers compute model updates on their local data. Because the workers only communicate with few neighbors without central coordination, these updates propagate progressively over the network. This paradigm enables distributed training on networks without all-to-all connectivity, helping to protect data privacy as well as to reduce the communication cost of distributed training in data centers. A key challenge, primarily in decentralized deep learning, remains the handling of differences between the workers' local data distributions. To tackle this challenge, we introduce the RelaySum mechanism for information propagation in decentralized learning. RelaySum uses spanning trees to distribute information exactly uniformly across all workers with finite delays depending on the distance between nodes. In contrast, the typical gossip averaging mechanism only distributes data uniformly asymptotically while using the same communication volume per step as RelaySum. We prove that RelaySGD, based on this mechanism, is independent of data heterogeneity and scales to many workers, enabling highly accurate decentralized deep learning on heterogeneous data. Our code is available at http://github.com/epfml/relaysgd.
Cite
@article{arxiv.2110.04175,
title = {RelaySum for Decentralized Deep Learning on Heterogeneous Data},
author = {Thijs Vogels and Lie He and Anastasia Koloskova and Tao Lin and Sai Praneeth Karimireddy and Sebastian U. Stich and Martin Jaggi},
journal= {arXiv preprint arXiv:2110.04175},
year = {2022}
}
Comments
Presented at NeurIPS 2021