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Main Authors: Li, Mengyao, Ploch, Noah, Troia, Sebastian, Spatocco, Carlo, Kellerer, Wolfgang, Maier, Guido
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.02703
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author Li, Mengyao
Ploch, Noah
Troia, Sebastian
Spatocco, Carlo
Kellerer, Wolfgang
Maier, Guido
author_facet Li, Mengyao
Ploch, Noah
Troia, Sebastian
Spatocco, Carlo
Kellerer, Wolfgang
Maier, Guido
contents The rapid increase in connected devices has signifi- cantly intensified the computational and communication demands on modern telecommunication networks. To address these chal- lenges, integrating advanced Machine Learning (ML) techniques like Federated Learning (FL) with emerging paradigms such as Multi-access Edge Computing (MEC) and Software-Defined Wide Area Networks (SD-WANs) is crucial. This paper intro- duces online resource management strategies specifically designed for FL model aggregation, utilizing intermediate aggregation at edge nodes. Our analysis highlights the benefits of incorporating edge aggregators to reduce network link congestion and maximize the potential of edge computing nodes. However, the risk of network congestion persists. To mitigate this, we propose a novel aggregation approach that deploys an aggregator overlay network. We present an Integer Linear Programming (ILP) model and a heuristic algorithm to optimize the routing within this overlay network. Our solution demonstrates improved adapt- ability to network resource utilization, significantly reducing FL training round failure rates by up to 15% while also alleviating cloud link congestion.
format Preprint
id arxiv_https___arxiv_org_abs_2511_02703
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On the Optimization of Model Aggregation for Federated Learning at the Network Edge
Li, Mengyao
Ploch, Noah
Troia, Sebastian
Spatocco, Carlo
Kellerer, Wolfgang
Maier, Guido
Networking and Internet Architecture
The rapid increase in connected devices has signifi- cantly intensified the computational and communication demands on modern telecommunication networks. To address these chal- lenges, integrating advanced Machine Learning (ML) techniques like Federated Learning (FL) with emerging paradigms such as Multi-access Edge Computing (MEC) and Software-Defined Wide Area Networks (SD-WANs) is crucial. This paper intro- duces online resource management strategies specifically designed for FL model aggregation, utilizing intermediate aggregation at edge nodes. Our analysis highlights the benefits of incorporating edge aggregators to reduce network link congestion and maximize the potential of edge computing nodes. However, the risk of network congestion persists. To mitigate this, we propose a novel aggregation approach that deploys an aggregator overlay network. We present an Integer Linear Programming (ILP) model and a heuristic algorithm to optimize the routing within this overlay network. Our solution demonstrates improved adapt- ability to network resource utilization, significantly reducing FL training round failure rates by up to 15% while also alleviating cloud link congestion.
title On the Optimization of Model Aggregation for Federated Learning at the Network Edge
topic Networking and Internet Architecture
url https://arxiv.org/abs/2511.02703