Agentic AI for Intent-driven Optimization in Cell-free O-RAN
Mohammad Hossein Shokouhi, Vincent W.S. Wong

TL;DR
This paper introduces an agentic AI framework for intent-driven optimization in cell-free O-RAN, enabling coordinated decision-making among multiple agents for improved energy efficiency and scalability.
Contribution
It proposes a novel multi-agent AI framework with a supervisor, memory, and energy management agents, utilizing PEFT for scalability in cell-free O-RAN.
Findings
Reduces active O-RUs by 41.93% for energy saving.
Decreases memory usage by 92% using PEFT.
Demonstrates effective coordination among agents for complex intents.
Abstract
Agentic artificial intelligence (AI) is emerging as a key enabler for autonomous radio access networks (RANs), where multiple large language model (LLM)-based agents reason and collaborate to achieve operator-defined intents. The open RAN (O-RAN) architecture enables the deployment and coordination of such agents. However, most existing works consider simple intents handled by independent agents, while complex intents that require coordination among agents remain unexplored. In this paper, we propose an agentic AI framework for intent translation and optimization in cell-free O-RAN. A supervisor agent translates the operator intents into an optimization objective and minimum rate requirements. Based on this information, a user weighting agent retrieves relevant prior experience from a memory module to determine the user priority weights for precoding. If the intent includes an…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Software-Defined Networks and 5G · Advanced Wireless Communication Technologies
