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Main Authors: Ching, Cheng-Wei, Chen, Xin, Kim, Taehwan, Kuo, Jian-Jhih, Da Silva, Dilma, Hu, Liting
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.26323
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author Ching, Cheng-Wei
Chen, Xin
Kim, Taehwan
Kuo, Jian-Jhih
Da Silva, Dilma
Hu, Liting
author_facet Ching, Cheng-Wei
Chen, Xin
Kim, Taehwan
Kuo, Jian-Jhih
Da Silva, Dilma
Hu, Liting
contents Federated Learning (FL) is an emerging distributed machine learning (ML) technique that enables in-situ model training and inference on decentralized edge devices. We propose Totoro$^+$, a novel scalable FL system that enables massive FL applications to run simultaneously on edge networks. The key insight is to explore a distributed hash table (DHT)-based peer-to-peer (P2P) model to re-architect the centralized FL system design into a fully decentralized one. In contrast to previous studies where many FL applications shared one centralized parameter server, Totoro$^+$ assigns a dedicated parameter server to each application. Any edge node can act as any application's coordinator, aggregator, client selector, worker (participant device), or any combination of the above, thereby radically improving scalability and adaptivity. Totoro$^+$ introduces three innovations to realize its design: a locality-aware P2P multi-ring structure, a publish/subscribe-based forest abstraction, and a game-theoretic path planning model with a guarantee of an $ε$-approximate Nash equilibrium. Real-world experiments on 500 Amazon EC2 servers show that Totoro$^+$ scales gracefully with the number of FL applications and $N$ edge nodes speeds up the total training time by $1.2\times-14.0\times$, achieves $\mathcal{O}(\log N)$ hops for model dissemination and gradient aggregation with millions of nodes, and efficiently adapts to the practical edge networks and churns.
format Preprint
id arxiv_https___arxiv_org_abs_2605_26323
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Totoro$^+$: An Adaptive and Scalable Edge Federated Learning System
Ching, Cheng-Wei
Chen, Xin
Kim, Taehwan
Kuo, Jian-Jhih
Da Silva, Dilma
Hu, Liting
Distributed, Parallel, and Cluster Computing
Federated Learning (FL) is an emerging distributed machine learning (ML) technique that enables in-situ model training and inference on decentralized edge devices. We propose Totoro$^+$, a novel scalable FL system that enables massive FL applications to run simultaneously on edge networks. The key insight is to explore a distributed hash table (DHT)-based peer-to-peer (P2P) model to re-architect the centralized FL system design into a fully decentralized one. In contrast to previous studies where many FL applications shared one centralized parameter server, Totoro$^+$ assigns a dedicated parameter server to each application. Any edge node can act as any application's coordinator, aggregator, client selector, worker (participant device), or any combination of the above, thereby radically improving scalability and adaptivity. Totoro$^+$ introduces three innovations to realize its design: a locality-aware P2P multi-ring structure, a publish/subscribe-based forest abstraction, and a game-theoretic path planning model with a guarantee of an $ε$-approximate Nash equilibrium. Real-world experiments on 500 Amazon EC2 servers show that Totoro$^+$ scales gracefully with the number of FL applications and $N$ edge nodes speeds up the total training time by $1.2\times-14.0\times$, achieves $\mathcal{O}(\log N)$ hops for model dissemination and gradient aggregation with millions of nodes, and efficiently adapts to the practical edge networks and churns.
title Totoro$^+$: An Adaptive and Scalable Edge Federated Learning System
topic Distributed, Parallel, and Cluster Computing
url https://arxiv.org/abs/2605.26323