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Convergence of Edge Computing and Deep Learning: A Comprehensive Survey

机译:边缘计算与深度学习的融合:综合调查

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Ubiquitous sensors and smart devices from factories and communities are generating massive amounts of data, and ever-increasing computing power is driving the core of computation and services from the cloud to the edge of the network. As an important enabler broadly changing people's lives, from face recognition to ambitious smart factories and cities, developments of artificial intelligence (especially deep learning, DL) based applications and services are thriving. However, due to efficiency and latency issues, the current cloud computing service architecture hinders the vision of "providing artificial intelligence for every person and every organization at everywhere". Thus, unleashing DL services using resources at the network edge near the data sources has emerged as a desirable solution. Therefore, edge intelligence, aiming to facilitate the deployment of DL services by edge computing, has received significant attention. In addition, DL, as the representative technique of artificial intelligence, can be integrated into edge computing frameworks to build intelligent edge for dynamic, adaptive edge maintenance and management. With regard to mutually beneficial edge intelligence and intelligent edge, this paper introduces and discusses: 1) the application scenarios of both; 2) the practical implementation methods and enabling technologies, namely DL training and inference in the customized edge computing framework; 3) challenges and future trends of more pervasive and fine-grained intelligence. We believe that by consolidating information scattered across the communication, networking, and DL areas, this survey can help readers to understand the connections between enabling technologies while promoting further discussions on the fusion of edge intelligence and intelligent edge, i.e., Edge DL.
机译:来自工厂和社区的无处不在的传感器和智能设备正在产生大量的数据,并且不断增加的计算能力从云到网络边缘的计算和服务核心。作为一个重要的推动者,广泛改变人们的生活,从面对雄心勃勃的智慧工厂和城市,人工智能发展(特别是深度学习,DL)的应用和服务都在蓬勃发展。然而,由于效率和延迟问题,当前云计算服务架构阻碍了“为每个人提供人工智能和各地的每个组织的愿景”。因此,在数据源附近的网络边缘处的资源释放DL服务已成为理想的解决方案。因此,Edge Intelligence,旨在促进通过边缘计算部署DL服务,受到重大关注。此外,作为人工智能的代表技术,可以集成到边缘计算框架中,为动态,自适应边缘维护和管理构建智能边缘。关于互利边缘智能和智能边缘,本文介绍和讨论了:1)两者的应用场景; 2)实际实施方法和启用技术,即定制边缘计算框架中的DL培训和推断; 3)挑战和未来趋势更普遍,细粒度的智慧。我们认为,通过巩固跨越通信,网络和DL领域的信息,这项调查可以帮助读者了解实现技术之间的联系,同时促进边缘智能和智能边缘的融合进一步讨论,即边缘DL。

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