面向传感即服务的尾延迟慢感知作业调度

Stoddard Rosenkrantz, Huiyang Li, Prathyusha Enganti, Zhongwei Li, Lin Sun, Zhijun Wang, Hao Che, Hong Jiang
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引用次数: 1

摘要

随着物联网边缘云层次结构发展成为一个成熟的生态系统,具有严格的作业服务水平目标(slo)的大规模基于感知即服务(SaS)的服务预计将成为主导云服务。一个可行的sa业务模型在设计上必须本质上是多层的,并且在涉及大量可能出现在不同层的自愿涉众的联合环境中工作。它还必须尊重隐私和利益相关者资源的自主控制。这就需要开发一个完全分布式的、慢速感知的作业资源分配和调度平台。在本文中,我们提出了一个尾延迟-慢速感知的sa作业资源分配和调度平台,称为JADE。它是一个四层平台,即云、边缘集群、边缘和物联网层。为了尊重不同层的个体利益相关者的隐私和控制自主权,JADE设计遵循层间关注点分离的设计原则。其设计的核心是开发一种分解技术,将sa服务需求(特别是作业尾部延迟SLO)分解为映射到每个较低层的单个感知任务的任务性能预算。这使得允许每个较低的层自主管理自己的资源,以满足感知任务预算,从而满足sa服务需求,同时保留其隐私和控制自主权成为可能。最后,给出了基于仿真和JADE初始原型的初步测试结果,证明了该解决方案的良好前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
JADE: Tail-Latency-SLO-Aware Job Scheduling for Sensing-as-a-Service
As the IoT-Edge-Cloud hierarchy is evolving into a mature ecosystem, large-scale Sensing-as-a-Service (SaS) based services with stringent job service level objectives (SLOs) are expected to emerge as dominant cloud services. A viable business model for SaS must be inherently multi-tier by design and work in a confederated environment involving a large number of voluntary stakeholders who may appear at different tiers. It must also honor privacy and autonomous control of stakeholder resources. This calls for a fully distributed, SLO-aware job resource allocation and scheduling platform to be developed. In this paper, we propose a tail-latency-SLO-aware job resource allocation and scheduling platform for SaS, called JADE. It is a four-tier platform, i.e., cloud, edge cluster, edge, and IoT tiers. To honor the privacy and autonomy of control for individual stakeholders at different tiers, the JADE design follows the design principle of separation of concerns among tiers. Central to its design is to develop a decomposition technique that decomposes SaS service requirements, in particular, the job tail-latency SLO, into task performance budgets for individual sensing tasks mapped to each lower tier. This makes it possible to allow each lower tier to manage its own resources autonomously to meet the sensing task budgets and hence the SaS service requirements, while preserving its privacy and autonomy of control. Finally, preliminary testing results based on both simulation and an initial prototype of JADE are presented to demonstrate the promising prospects of the solution.
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