Pushing artificial intelligence (AI) from central cloud to network edge has reached board consensus in both industry and academia for materializing the vision of artificial intelligence of things (AIoT) in the sixth-generation (6G) era. This gives rise to an emerging research area known as edge intelligence, which concerns the distillation of human-like intelligence from the huge amount of data scattered at wireless network edge. In general, realizing edge intelligence corresponds to the process of sensing, communication, and computation, which are coupled ingredients for data generation, exchanging, and processing, respectively. However, conventional wireless networks design the sensing, communication, and computation separately in a task-agnostic manner, which encounters difficulties in accommodating the stringent demands of ultra-low latency, ultra-high reliability, and high capacity in emerging AI applications such as auto-driving. This thus prompts a new design paradigm of seamless integrated sensing, communication, and computation (ISCC) in a task-oriented manner, which comprehensively accounts for the use of the data in the downstream AI applications. In view of its growing interest, this article provides a timely overview of ISCC for edge intelligence by introducing its basic concept, design challenges, and enabling techniques, surveying the state-of-the-art development, and shedding light on the road ahead.
翻译:从中央云层到网络边缘的人工智能(AI)从中央云层推向中央云端到网络边缘,在工业和学术界都达成了董事会共识,以便在第六代(6G)时代实现人工智能(AIoT)的愿景,从而产生了一个称为边缘智能的新兴研究领域,它涉及从无线网络边缘散布的大量数据中提取类似人类的智能。一般来说,实现边缘智能与遥感、通信和计算过程相对应,这些过程分别是数据生成、交换和处理的组合要素。然而,传统的无线网络以任务 -- -- 不可知性的方式分别设计遥感、通信和计算,这在满足极端低纬度、高度可靠性和诸如自动驱动等新兴的人工智能应用的严格需求方面遇到困难。因此,以任务导向的方式,实现无缝综合遥感、通信和计算(ISCC)的新设计模式,全面说明数据在下游应用中的使用情况。鉴于其日益增长的兴趣,这篇文章通过介绍基本概念、设计挑战以及扶持性道路调查,为前沿发展提供了空间智能智能智能情报的及时概览。