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LLM-Based Intent Processing and Network Optimization Using Attention-Based Hierarchical Reinforcement Learning

Md Arafat Habib, Pedro Enrique Iturria-Rivera, Yigit Ozcan, Medhat Elsayed, Majid Bavand, Raimundus Gaigalas, Melike Erol‐Kantarci

202517 citationsDOI

Abstract

Intent-based network automation is a promising tool that enables easier network management; however, certain challenges must be addressed effectively. These are: 1) processing intents, i.e., identification of logic and necessary parameters to fulfill an intent, 2) validating an intent to align it with current network status, and 3) satisfying intents via network optimizing applications. This paper addresses these points via a three-fold strategy to introduce intent-based automation for modern 5G architectures. First, intents are processed via a lightweight Large Language Model (LLM). Secondly, once an intent is processed, it is validated against future incoming traffic volume profiles (high or low). Finally, a series of network optimization applications has been developed. With their machine learning-based functionalities, they can improve certain key performance indicators such as throughput, delay, and energy efficiency. In the final stage, using an attention-based hierarchical reinforcement learning algorithm, these applications are optimally initiated to satisfy the intent of an operator. Our simulations show that the proposed method can achieve at least a 12% increase in throughput, a 17.1% increase in energy efficiency, and a 26.5% decrease in network delay compared to the baseline algorithms.

Topics & Concepts

Reinforcement learningComputer scienceArtificial intelligenceMachine learningNeural Networks and Applications
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