Towards AI-Native RAN: An Operator's Perspective of 6G Day 1 Standardization
Nan Li, Qi Sun, Lehan Wang, Xiaofei Xu, Jinri Huang, Chunhui Liu, Jing Gao, Yuhong Huang, and Chih-Lin I

TL;DR
This paper discusses the design principles and standardization of AI-Native RAN for 6G, emphasizing its core capabilities, architecture, and validation through large-scale field trials to improve network performance.
Contribution
It introduces a comprehensive framework for AI-Native RAN in 6G, focusing on Day 1 architecture, functionalities, and standardization principles based on extensive operational experience.
Findings
Significant reduction in air interface latency
Improved root cause identification
Lower network energy consumption
Abstract
Artificial Intelligence/Machine Learning (AI/ML) has become the most certain and prominent feature of 6G mobile networks. Unlike 5G, where AI/ML was not natively integrated but rather an add-on feature over existing architecture, 6G shall incorporate AI from the onset to address its complexity and support ubiquitous AI applications. Based on our extensive mobile network operation and standardization experience from 2G to 5G, this paper explores the design and standardization principles of AI-Native radio access networks (RAN) for 6G, with a particular focus on its critical Day 1 architecture, functionalities and capabilities. We investigate the framework of AI-Native RAN and present its three essential capabilities to shed some light on the standardization direction; namely, AI-driven RAN processing/optimization/automation, reliable AI lifecycle management (LCM), and AI-as-a-Service…
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