Salvato in:
Dettagli Bibliografici
Autori principali: Zhang, Ping, Niu, Kai, Liu, Yiming, Liang, Zijian, Ma, Nan, Xu, Xiaodong, Xu, Wenjun, Sun, Mengying, Liu, Yinqiu, Wang, Xiaoyun, Zhang, Ruichen
Natura: Preprint
Pubblicazione: 2025
Soggetti:
Accesso online:https://arxiv.org/abs/2508.15277
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866909746817138688
author Zhang, Ping
Niu, Kai
Liu, Yiming
Liang, Zijian
Ma, Nan
Xu, Xiaodong
Xu, Wenjun
Sun, Mengying
Liu, Yinqiu
Wang, Xiaoyun
Zhang, Ruichen
author_facet Zhang, Ping
Niu, Kai
Liu, Yiming
Liang, Zijian
Ma, Nan
Xu, Xiaodong
Xu, Wenjun
Sun, Mengying
Liu, Yinqiu
Wang, Xiaoyun
Zhang, Ruichen
contents Artificial intelligence (AI) is expected to serve as a foundational capability across the entire lifecycle of 6G networks, spanning design, deployment, and operation. This article proposes a native AI-driven air interface architecture built around two core characteristics: compression and adaptation. On one hand, compression enables the system to understand and extract essential semantic information from the source data, focusing on task relevance rather than symbol-level accuracy. On the other hand, adaptation allows the air interface to dynamically transmit semantic information across diverse tasks, data types, and channel conditions, ensuring scalability and robustness. This article first introduces the native AI-driven air interface architecture, then discusses representative enabling methodologies, followed by a case study on semantic communication in 6G non-terrestrial networks. Finally, it presents a forward-looking discussion on the future of native AI in 6G, outlining key challenges and research opportunities.
format Preprint
id arxiv_https___arxiv_org_abs_2508_15277
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Way to Build Native AI-driven 6G Air Interface: Principles, Roadmap, and Outlook
Zhang, Ping
Niu, Kai
Liu, Yiming
Liang, Zijian
Ma, Nan
Xu, Xiaodong
Xu, Wenjun
Sun, Mengying
Liu, Yinqiu
Wang, Xiaoyun
Zhang, Ruichen
Information Theory
Artificial Intelligence
Artificial intelligence (AI) is expected to serve as a foundational capability across the entire lifecycle of 6G networks, spanning design, deployment, and operation. This article proposes a native AI-driven air interface architecture built around two core characteristics: compression and adaptation. On one hand, compression enables the system to understand and extract essential semantic information from the source data, focusing on task relevance rather than symbol-level accuracy. On the other hand, adaptation allows the air interface to dynamically transmit semantic information across diverse tasks, data types, and channel conditions, ensuring scalability and robustness. This article first introduces the native AI-driven air interface architecture, then discusses representative enabling methodologies, followed by a case study on semantic communication in 6G non-terrestrial networks. Finally, it presents a forward-looking discussion on the future of native AI in 6G, outlining key challenges and research opportunities.
title Way to Build Native AI-driven 6G Air Interface: Principles, Roadmap, and Outlook
topic Information Theory
Artificial Intelligence
url https://arxiv.org/abs/2508.15277