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Adaptive Resource Allocation Optimization Using Large Language Models in Dynamic Wireless Environments

Hyeonho Noh, Byonghyo Shim, Hyun Jong Yang

2025IEEE Transactions on Vehicular Technology14 citationsDOI

Abstract

While deep learning (DL) has made notable progress in addressing complex radio access network control challenges, DL has shown limitations in solving constrained NP-hard problems often encountered in network optimization. Moreover, even minor changes in communication objectives demand time-consuming retraining, limiting their adaptability to dynamic environments where task objectives, constraints, environmental factors, and communication scenarios frequently change. To address these challenges, we propose a large language model for resource allocation optimizer (LLM-RAO), a novel approach that harnesses the capabilities of LLMs to address the complex resource allocation problem while adhering to quality of service (QoS) constraints. By employing a prompt-based tuning strategy to flexibly convey ever-changing task descriptions and requirements to the LLM, LLM-RAO demonstrates robust performance and seamless adaptability in dynamic environments without requiring extensive retraining. Simulation results reveal that LLM-RAO achieves up to a 40% performance enhancement compared to conventional DL methods and up to an 80% improvement over analytical approaches. Moreover, in scenarios with fluctuating communication objectives, LLM-RAO attains up to 2.9 times the performance of traditional DL-based networks.

Topics & Concepts

Computer scienceWirelessResource allocationResource management (computing)Distributed computingComputer networkTelecommunicationsRecommender Systems and TechniquesContext-Aware Activity Recognition SystemsIoT and Edge/Fog Computing
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