A New Paradigm of User-Centric Wireless Communication Driven by Large Language Models
- URL: http://arxiv.org/abs/2504.11696v1
- Date: Wed, 16 Apr 2025 01:43:36 GMT
- Title: A New Paradigm of User-Centric Wireless Communication Driven by Large Language Models
- Authors: Kuiyuan Ding, Caili Guo, Yang Yang, Wuxia Hu, Yonina C. Eldar,
- Abstract summary: Next generation of wireless communications seeks to deeply integrate artificial intelligence with user-centric communication networks.<n>We propose a novel paradigm for wireless communication that innovatively incorporates the nature language to structured query language.<n>We present a prototype system in which a dynamic semantic representation network at the physical layer adapts its encoding depth to meet user requirements.
- Score: 53.16213723669751
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The next generation of wireless communications seeks to deeply integrate artificial intelligence (AI) with user-centric communication networks, with the goal of developing AI-native networks that more accurately address user requirements. The rapid development of large language models (LLMs) offers significant potential in realizing these goals. However, existing efforts that leverage LLMs for wireless communication often overlook the considerable gap between human natural language and the intricacies of real-world communication systems, thus failing to fully exploit the capabilities of LLMs. To address this gap, we propose a novel LLM-driven paradigm for wireless communication that innovatively incorporates the nature language to structured query language (NL2SQL) tool. Specifically, in this paradigm, user personal requirements is the primary focus. Upon receiving a user request, LLMs first analyze the user intent in terms of relevant communication metrics and system parameters. Subsequently, a structured query language (SQL) statement is generated to retrieve the specific parameter values from a high-performance real-time database. We further utilize LLMs to formulate and solve an optimization problem based on the user request and the retrieved parameters. The solution to this optimization problem then drives adjustments in the communication system to fulfill the user's requirements. To validate the feasibility of the proposed paradigm, we present a prototype system. In this prototype, we consider user-request centric semantic communication (URC-SC) system in which a dynamic semantic representation network at the physical layer adapts its encoding depth to meet user requirements. Additionally, two LLMs are employed to analyze user requests and generate SQL statements, respectively. Simulation results demonstrate the effectiveness.
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