Saved in:
Bibliographic Details
Main Authors: Goethals, Tom, Sebrechts, Merlijn, De Schrijver, Stijn, De Turck, Filip, Volckaert, Bruno
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.01549
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917116271132672
author Goethals, Tom
Sebrechts, Merlijn
De Schrijver, Stijn
De Turck, Filip
Volckaert, Bruno
author_facet Goethals, Tom
Sebrechts, Merlijn
De Schrijver, Stijn
De Turck, Filip
Volckaert, Bruno
contents Federated Learning is a popular approach for distributed learning due to its security and computational benefits. With the advent of powerful devices in the network edge, Gossip Learning further decentralizes Federated Learning by removing centralized integration and relying fully on peer to peer updates. However, the averaging methods generally used in both Federated and Gossip Learning are not ideal for model accuracy and global convergence. Additionally, there are few options to deploy Learning workloads in the edge as part of a larger application using a declarative approach such as Kubernetes manifests. This paper proposes Delta Sum Learning as a method to improve the basic aggregation operation in Gossip Learning, and implements it in a decentralized orchestration framework based on Open Application Model, which allows for dynamic node discovery and intent-driven deployment of multi-workload applications. Evaluation results show that Delta Sum performance is on par with alternative integration methods for 10 node topologies, but results in a 58% lower global accuracy drop when scaling to 50 nodes. Overall, it shows strong global convergence and a logarithmic loss of accuracy with increasing topology size compared to a linear loss for alternatives under limited connectivity.
format Preprint
id arxiv_https___arxiv_org_abs_2512_01549
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Delta Sum Learning: an approach for fast and global convergence in Gossip Learning
Goethals, Tom
Sebrechts, Merlijn
De Schrijver, Stijn
De Turck, Filip
Volckaert, Bruno
Distributed, Parallel, and Cluster Computing
Artificial Intelligence
Federated Learning is a popular approach for distributed learning due to its security and computational benefits. With the advent of powerful devices in the network edge, Gossip Learning further decentralizes Federated Learning by removing centralized integration and relying fully on peer to peer updates. However, the averaging methods generally used in both Federated and Gossip Learning are not ideal for model accuracy and global convergence. Additionally, there are few options to deploy Learning workloads in the edge as part of a larger application using a declarative approach such as Kubernetes manifests. This paper proposes Delta Sum Learning as a method to improve the basic aggregation operation in Gossip Learning, and implements it in a decentralized orchestration framework based on Open Application Model, which allows for dynamic node discovery and intent-driven deployment of multi-workload applications. Evaluation results show that Delta Sum performance is on par with alternative integration methods for 10 node topologies, but results in a 58% lower global accuracy drop when scaling to 50 nodes. Overall, it shows strong global convergence and a logarithmic loss of accuracy with increasing topology size compared to a linear loss for alternatives under limited connectivity.
title Delta Sum Learning: an approach for fast and global convergence in Gossip Learning
topic Distributed, Parallel, and Cluster Computing
Artificial Intelligence
url https://arxiv.org/abs/2512.01549