Published December 6, 2020 | Version v1
Conference paper

Throughput-Optimal Topology Design for Cross-Silo Federated Learning

Description

Federated learning usually employs a client-server architecture where an orchestrator iteratively aggregates model updates from remote clients and pushes them back a refined model. This approach may be inefficient in cross-silo settings, as close-by data silos with high-speed access links may exchange information faster than with the orchestrator, and the orchestrator may become a communication bottleneck. In this paper we define the problem of topology design for cross-silo federated learning using the theory of max-plus linear systems to compute the system throughput---number of communication rounds per time unit. We also propose practical algorithms that, under the knowledge of measurable network characteristics, find a topology with the largest throughput or with provable throughput guarantees. In realistic Internet networks with 10 Gbps access links for silos, our algorithms speed up training by a factor 9 and 1.5 in comparison to the master-slave architecture and to state-of-the-art MATCHA, respectively. Speedups are even larger with slower access links.

Abstract

NeurIPS 2020

Abstract

International audience

Additional details

Identifiers

URL
https://hal.inria.fr/hal-03007834
URN
urn:oai:HAL:hal-03007834v2

Origin repository

Origin repository
UNICA