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AI on the Edge: Characterizing AI-based IoT Applications Using Specialized Edge Architectures

机译:边缘上的AI:使用专门的边缘架构表征基于AI的物联网应用

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Edge computing has emerged as a popular paradigm for supporting mobile and IoT applications with low latency or high bandwidth needs. The attractiveness of edge computing has been further enhanced due to the recent availability of special-purpose hardware to accelerate specific compute tasks, such as deep learning inference, on edge nodes. In this paper, we experimentally compare the benefits and limitations of using specialized edge systems, built using edge accelerators, to more traditional forms of edge and cloud computing. Our experimental study using edge-based AI workloads shows that today's edge accelerators can provide comparable, and in many cases better, performance, when normalized for power or cost, than traditional edge and cloud servers. They also provide latency and bandwidth benefits for split processing, across and within tiers, when using model compression or model splitting, but require dynamic methods to determine the optimal split across tiers. We find that edge accelerators can support varying degrees of concurrency for multi-tenant inference applications, but lack isolation mechanisms necessary for edge cloud multi-tenant hosting.
机译:边缘计算已成为支持低延迟或高带宽需求的移动和物联网应用程序的流行范例。边缘计算的吸引力已得到进一步增强,这是由于专用硬件的最新可用性,以加速边缘节点上的特定计算任务(例如深度学习推理)。在本文中,我们通过实验将使用通过边缘加速器构建的专用边缘系统的优势和局限性与边缘和云计算的更传统形式进行了比较。我们使用基于边缘的AI工作负载进行的实验研究表明,与传统的边缘和云服务器相比,今天的边缘加速器在功率或成本标准化后可以提供相当的性能,并且在许多情况下可以提供更好的性能。当使用模型压缩或模型拆分时,它们还为跨层和跨层内的拆分处理提供了延迟和带宽优势,但需要动态方法来确定跨层的最佳拆分。我们发现边缘加速器可以为多租户推理应用程序支持不同程度的并发,但是缺少边缘云多租户托管所必需的隔离机制。

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