利用智能模型应对边缘网格的挑战

P. Oikonomou, Anna Karanika, C. Anagnostopoulos, Kostas Kolomvatsos
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引用次数: 1

摘要

如今,我们正在见证物联网(IoT)的出现,许多设备在它们之间或与它们的环境进行交互。大量的设备导致大量的数据需要适当的处理。“遗留”方法依赖于云,在云上增加计算资源可以实现任何所需的处理。然而,支持实时应用程序的需求要求在提供结果时减少延迟。边缘计算(EC)是延迟问题的“解决者”。各种处理活动可以在与物联网设备直接连接的EC节点上执行。在我们完成一个完全自动化的生态系统之前,应该遇到许多挑战,在这个生态系统中,节点可以合作或了解它们的状态,从而有效地为应用程序服务。在本文中,我们对边缘网格(EM)愿景的相关研究活动进行了调查,即在EC上的情报“掩护”。我们介绍了必要的硬件,并讨论了EC/EM节点功能的各个方面的研究成果。我们介绍了用于数据、任务和资源管理的技术和理论,同时讨论了如何在该领域采用机器学习和优化。
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On the Use of Intelligent Models towards Meeting the Challenges of the Edge Mesh
Nowadays, we are witnessing the advent of the Internet of Things (IoT) with numerous devices performing interactions between them or with their environment. The huge number of devices leads to huge volumes of data that demand the appropriate processing. The “legacy” approach is to rely on Cloud where increased computational resources can realize any desired processing. However, the need for supporting real-time applications requires a reduced latency in the provision of outcomes. Edge Computing (EC) comes as the “solver” of the latency problem. Various processing activities can be performed at EC nodes having direct connection with IoT devices. A number of challenges should be met before we conclude a fully automated ecosystem where nodes can cooperate or understand their status to efficiently serve applications. In this article, we perform a survey of the relevant research activities towards the vision of Edge Mesh (EM), i.e., a “cover” of intelligence upon the EC. We present the necessary hardware and discuss research outcomes in every aspect of EC/EM nodes functioning. We present technologies and theories adopted for data, tasks, and resource management while discussing how machine learning and optimization can be adopted in the domain.
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