RAG-Empowered LLM-Driven Dynamic Radio Resource Management in Open 6G RAN
Onur Salan, Burak \c{C}{\i}ra\u{g}, Onur Sever, \.Ibrahim H\"okelek, Ali G\"or\c{c}in, Hakan Ali \c{C}{\i}rpan

TL;DR
This paper introduces a novel AI-driven framework using Retrieval-Augmented Generation with Large Language Models to dynamically manage radio resources in 6G networks, enhancing efficiency and SLA compliance.
Contribution
It proposes a dual-agent ReLLM framework for adaptive, efficient radio resource management in open 6G RAN, validated on a real testbed.
Findings
Maintains near-zero drop ratio for low-priority slices.
Satisfies latency requirements for high-priority slices.
Reduces computational and energy costs of LLM inference.
Abstract
Implications of the advancements in the area of artificial intelligence to the wireless communications is extremely significant, especially in terms of resource management. In this paper, a Retrieval-Augmented Generation (RAG)-empowered Large Language Model (ReLLM)-driven dynamic radio resource management framework for Open Radio Access Network (O-RAN) inspired 6G networks is proposed. The introduced methodology leverages the ReLLM framework to interpret both historical and real-time network data, enabling adaptive control of network slices. The ReLLM is founded on two specialized agents, one is responsible for proactively detecting service level agreement (SLA) violations by continuously monitoring and estimating slice-specific performance metrics, and the other one is responsible for dynamically reallocating physical resource blocks when the SLA violation probability exceeds a…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · IoT and Edge/Fog Computing · Advanced MIMO Systems Optimization
