• Computer Science > Networking and Internet Architecture [Submitted on 29 Dec 2025 (v1), last revised 24 Feb 2026 (this version, v2)] Title:Hierarchical Decision Mamba Meets Agentic AI: A Novel Approach for RAN Slicing in 6G View PDFAbstract:Radio Access Network (RAN) slicing enables multiple logical networks to exist on top of the same physical infrastructure by allocating resources to distinct service groups, where radio resource scheduling plays a key role in ensuring compliance with slice-specific Service-Level Agreements (SLAs). • Existing configuration-based or intent-driven Reinforcement Learning (RL) approaches usually rely on static mappings and SLA conversions. • The current literature does not integrate natural language understanding with coordinated decision-making. • To address these limitations, we propose an Agentic AI framework for 6G RAN slicing, driven by a super agent built using Hierarchical Decision Mamba (HDM) controllers and a Large Language Model (LLM). • The super agent interprets operator intents and translates them into actionable goals using the LLM, which are used by HDM to coordinate inter-slice, intra-slice, and self-healing agents. • Compared to transformer-based and reward-driven baselines, the proposed Agentic AI framework demonstrates consistent improvements across key performance indicators, including higher throughput, improved cell-edge performance, and reduced latency across different slices.

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  • Computer Science > Networking and Internet Architecture [Submitted on 29 Dec 2025 (v1), last revised 24 Feb 2026 (this version, v2)] Title:Hierarchical Decision Mamba Meets Agentic AI: A Novel Approach for RAN Slicing in 6G View PDFAbstract:Radio Access Network (RAN) slicing enables multiple logical networks to exist on top of the same physical infrastructure by allocating resources to distinct service groups, where radio resource scheduling plays a key role in ensuring compliance with slice-specific Service-Level Agreements (SLAs). Existing configuration-based or intent-driven Reinforcement L

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