NetOrchLLM: Mastering Wireless Network Orchestration with Large Language Models
Asmaa Abdallah, Abdullatif Albaseer, Abdulkadir Celik, Mohamed, Abdallah, Ahmed M. Eltawil

TL;DR
This paper introduces NETORCHLLM, a framework utilizing large language models to improve wireless network orchestration, addressing the complexity of 6G networks with practical AI-driven solutions.
Contribution
The paper presents a novel LLM-based framework for wireless network management, demonstrating its practical application and effectiveness in optimizing dense and dynamic 6G networks.
Findings
LLMs can effectively orchestrate wireless network models.
NETORCHLLM improves network performance in dynamic environments.
The framework bridges theoretical AI concepts with practical wireless management.
Abstract
The transition to 6G networks promises unprecedented advancements in wireless communication, with increased data rates, ultra-low latency, and enhanced capacity. However, the complexity of managing and optimizing these next-generation networks presents significant challenges. The advent of large language models (LLMs) has revolutionized various domains by leveraging their sophisticated natural language understanding capabilities. However, the practical application of LLMs in wireless network orchestration and management remains largely unexplored. Existing literature predominantly offers visionary perspectives without concrete implementations, leaving a significant gap in the field. To address this gap, this paper presents NETORCHLLM, a wireless NETwork ORCHestrator LLM framework that uses LLMs to seamlessly orchestrate diverse wireless-specific models from wireless communication…
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