高级检索
    王睿, 齐建鹏, 陈亮, 杨龙. 面向边缘智能的协同推理综述[J]. 计算机研究与发展, 2023, 60(2): 398-414. DOI: 10.7544/issn1000-1239.202110867
    引用本文: 王睿, 齐建鹏, 陈亮, 杨龙. 面向边缘智能的协同推理综述[J]. 计算机研究与发展, 2023, 60(2): 398-414. DOI: 10.7544/issn1000-1239.202110867
    Wang Rui, Qi Jianpeng, Chen Liang, Yang Long. Survey of Collaborative Inference for Edge Intelligence[J]. Journal of Computer Research and Development, 2023, 60(2): 398-414. DOI: 10.7544/issn1000-1239.202110867
    Citation: Wang Rui, Qi Jianpeng, Chen Liang, Yang Long. Survey of Collaborative Inference for Edge Intelligence[J]. Journal of Computer Research and Development, 2023, 60(2): 398-414. DOI: 10.7544/issn1000-1239.202110867

    面向边缘智能的协同推理综述

    Survey of Collaborative Inference for Edge Intelligence

    • 摘要: 近年来,信息技术的不断变革伴随数据量的急剧爆发,使主流的云计算解决方案面临实时性差、带宽受限、高能耗、维护费用高、隐私安全等问题. 边缘智能的出现与快速发展有效缓解了此类问题,它将用户需求处理下沉到边缘,避免了海量数据在网络中的流动,得到越来越多的关注. 由于边缘计算中资源性能普遍较低,通过资源实现协同推理正成为热点.通过对边缘智能发展的趋势分析,得出边缘协同推理目前仍处于增长期,还未进入稳定发展期. 因此,在对边缘协同推理进行充分调研的基础上,将边缘协同推理划分为智能化方法与协同推理架构2个部分,分别对其中涉及到的关键技术进行纵向归纳整理,并从动态场景角度出发,对每种关键技术进行深入分析,对不同关键技术进行横向比较以及适用场景分析.最后对动态场景下的边缘协同推理给出值得研究的若干发展方向.

       

      Abstract: At present, the continuous change of information technology along with the dramatic explosion of data quantity makes the cloud computing solutions face many problems such as high latency, limited bandwidth, high carbon footprint, high maintenance cost, and privacy concerns. In recent years, the emergence and rapid development of edge computing has effectively alleviated such dilemmas, sinking user demand processing to the edge and avoiding the flow of massive data in the network. As a typical scenario of edge computing, edge intelligence is gaining increasing attention, in which one of the most important stages is the inference phase. Due to the general low performance of resources in edge computing, collaborative inference through resources is becoming a hot topic. By analyzing the trends of edge intelligence development, we conclude that collaborative inference at the edge is still in the increasing phase and has not yet entered a stable phase. We divide edge-edge collaborative inference into two parts: Intelligent methods and collaborative inference architecture, based on a thorough investigation of edge collaborative inference. The involved key technologies are summarized vertically and organized from the perspective of dynamic scenarios. Each key technology is analyzed in more detail, and the different key technologies are compared horizontally and analyzed on the application scenarios. Finally, we propose several directions that deserve further studying in collaborative edge inference in dynamic scenarios.

       

    /

    返回文章
    返回