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LLMs meet Federated Learning for Scalable and Secure IoT Management

LLMs meet Federated Learning for Scalable and Secure IoT Management

来源:Arxiv_logoArxiv
英文摘要

The rapid expansion of IoT ecosystems introduces severe challenges in scalability, security, and real-time decision-making. Traditional centralized architectures struggle with latency, privacy concerns, and excessive resource consumption, making them unsuitable for modern large-scale IoT deployments. This paper presents a novel Federated Learning-driven Large Language Model (FL-LLM) framework, designed to enhance IoT system intelligence while ensuring data privacy and computational efficiency. The framework integrates Generative IoT (GIoT) models with a Gradient Sensing Federated Strategy (GSFS), dynamically optimizing model updates based on real-time network conditions. By leveraging a hybrid edge-cloud processing architecture, our approach balances intelligence, scalability, and security in distributed IoT environments. Evaluations on the IoT-23 dataset demonstrate that our framework improves model accuracy, reduces response latency, and enhances energy efficiency, outperforming traditional FL techniques (i.e., FedAvg, FedOpt). These findings highlight the potential of integrating LLM-powered federated learning into large-scale IoT ecosystems, paving the way for more secure, scalable, and adaptive IoT management solutions.

Yazan Otoum、Arghavan Asad、Amiya Nayak

计算技术、计算机技术

Yazan Otoum,Arghavan Asad,Amiya Nayak.LLMs meet Federated Learning for Scalable and Secure IoT Management[EB/OL].(2025-04-22)[2025-05-22].https://arxiv.org/abs/2504.16032.点此复制

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