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arxiv: 2511.17514 · v1 · pith:L6PLZXRTnew · submitted 2025-10-07 · 💻 cs.NI · cs.AI· cs.IT· math.IT

XAI-on-RAN: Explainable, AI-native, and GPU-Accelerated RAN Towards 6G

classification 💻 cs.NI cs.AIcs.ITmath.IT
keywords networksautomationdesignexplainablehealthcareindustrialmodelmodels
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Artificial intelligence (AI)-native radio access networks (RANs) will serve vertical industries with stringent requirements: smart grids, autonomous vehicles, remote healthcare, industrial automation, etc. To achieve these requirements, modern 5G/6G design increasingly leverage AI for network optimization, but the opacity of AI decisions poses risks in mission-critical domains. These use cases are often delivered via non-public networks (NPNs) or dedicated network slices, where reliability and safety are vital. In this paper, we motivate the need for transparent and trustworthy AI in high-stakes communications (e.g., healthcare, industrial automation, and robotics) by drawing on 3rd generation partnership project (3GPP)'s vision for non-public networks. We design a mathematical framework to model the trade-offs between transparency (explanation fidelity and fairness), latency, and graphics processing unit (GPU) utilization in deploying explainable AI (XAI) models. Empirical evaluations demonstrate that our proposed hybrid XAI model xAI-Native, consistently surpasses conventional baseline models in performance.

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