DeServE: delay-agnostic service offloading in mobile edge clouds: poster

Amit Samanta, Yong Li
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引用次数: 15

Abstract

The mobile edge computing platform [2, 3] generally measured the delay based on the total time required to offload the services of edge devices to edge servers. On the other hand, the service delay is also depended on the response time of edge services from different mobile applications. Hence, there exists a disparity between the actual and measured service delay experienced by the mobile edge devices. This type problem arises due to the fact that the wireless radio network infrastructure is shared by the multiple mobile devices. As a result, the congestion occurs in the network and the arrival packets are likely to be dropped by the network switches in the access network. In such situation, the real-time critical edge applications mostly care about the quality-of-service (QoS) for different mobile devices, while offloading the edge services to edge servers. Thus, we improve the QoS of edge devices using delay-agnostic service offloading scheme to meet the offloading requirements of those delay-agnostic applications. Prior works have devoted to filling the gap at edge network by introducing the priority-based computational offloading [1] or energy-efficient resource allocation [4] schemes for edge computing applications. However, the priority-based service offloading and resource allocation do not provide the fair QoS to mobile devices, as the actual bottleneck is usually existed in the delay-agnostic nature of mobile applications. Therefore, although the existing offloading schemes perform well for multi-modal applications in terms of energy efficiency and computational overhead [1]. However, in those works, they assumed that the delay requirement of services to be fixed, but in real-life the delay requirement of services may vary radically. This type of situation is considered to be delay-agnostic property for edge devices, in this poster. Looking at the above points, we propose DESERVE, which introduces a delay-agnostic service offloading scheme for mobile edge computing platform in order to improve the QoS of each individual. The overview of DESERVE is depicted in Figure 1. For the edge devices, the flexible and optimal resource allocation technique is exploited for delay-agnostic service offloading scheme in edge computing platform. The resource allocation technique is leveraged for edge devices using the advanced techniques of software defined networks (SDN). However, an adaptive service identifier is deployed specifically for the identification of critical edge applications at the edge of mobile edge platform, instead of installing centralized SDN controller. After the identification of critical edge services, the identified services are forwarded to the controller and the corresponding rules to be offloaded for those services in the edge servers of edge platform.
值得:移动边缘云中的延迟不可知服务卸载:海报
移动边缘计算平台[2,3]通常根据将边缘设备的业务卸载到边缘服务器所需的总时间来衡量延迟。另一方面,服务延迟还取决于来自不同移动应用程序的边缘服务的响应时间。因此,移动边缘设备所经历的实际服务延迟与测量服务延迟之间存在差异。这种类型的问题是由于无线无线网络基础设施是由多个移动设备共享的。这样会导致网络拥塞,到达的数据包很可能被接入网中的网络交换机丢弃。在这种情况下,实时关键边缘应用程序主要关注不同移动设备的服务质量(QoS),而将边缘服务卸载到边缘服务器。因此,我们使用延迟不可知的服务卸载方案来提高边缘设备的QoS,以满足这些延迟不可知应用的卸载需求。先前的工作致力于通过引入边缘计算应用的基于优先级的计算卸载[1]或节能资源分配[4]方案来填补边缘网络的空白。然而,基于优先级的服务卸载和资源分配并不能为移动设备提供公平的QoS,因为实际的瓶颈通常存在于移动应用的延迟不可知特性中。因此,尽管现有的卸载方案在能源效率和计算开销方面对多模态应用表现良好[1]。然而,在这些作品中,他们假设服务的延迟需求是固定的,但在现实生活中,服务的延迟需求可能会发生根本变化。在这张海报中,这种情况被认为是边缘设备的延迟不可知属性。考虑到以上几点,我们提出了DESERVE,它为移动边缘计算平台引入了一种延迟不可知的服务卸载方案,以提高每个个体的QoS。DESERVE的概述如图1所示。针对边缘设备,利用灵活优化的资源分配技术,实现了边缘计算平台中时延不可知的业务卸载方案。利用软件定义网络(SDN)的先进技术,将资源分配技术用于边缘设备。但是,在移动边缘平台的边缘部署了专门用于识别关键边缘应用的自适应业务标识符,而不是安装集中式SDN控制器。识别出关键边缘服务后,将识别出的关键边缘服务转发给控制器,并在边缘平台的边缘服务器上卸载相应的边缘服务规则。
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