Towards Information-Centric Edge Platform for Mesh Networks: The Case of CityLab Testbed

Mennan Selimi, L. Navarro, B. Braem, Felix Freitag, Adisorn Lertsinsrubtavee
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引用次数: 5

Abstract

By leveraging resources from the Fed4Fire+ City-Lab testbed, we design the PiGeon edge computing platform that experiments solution that enable ICN based edge services in wireless mesh networks (WMNs). PiGeon combines into a platform several trends in edge computing namely the ICN (Information-Centric Networking), the containerization of services exemplified by Docker, novel service placement algorithms and the increasing availability of energy efficient but still powerful hardware at user premises (Raspberry Pi, mini-PCs, and enhanced home gateways). We underpin the PiGeon platform with Docker container-based service that can be seamlessly delivered, cached and deployed at the network edge. The core of the PiGeon platform is the Decision Engine making a decision on where and when to deploy a service instance to satisfy the service requirements while considering the network status and available hardware resources.We collect network data from a real citywide mesh network such as CityLab FIRE testbed located at the city of Antwerp, Belgium. The collected data is used to feed our service placement heuristic within the PiGeon platform. Through a real deployment in CityLab testbed, we show that our service placement heuristic improves the response time up to 37% for stateful services (Web2.0 service). Apart from improving the QoS for end-users, our results show that ICN plays a key role in improving the service delivery time as well as reducing the traffic consumption in WMNs. The overall effect of ICN in our platform is that most content and service delivery requests can be satisfied very close to the client device, many times just one hop away, decoupling QoS from intra-network traffic and origin server load.
迈向以信息为中心的网状网络边缘平台:以CityLab试验台为例
通过利用Fed4Fire+ City-Lab测试平台的资源,我们设计了鸽子边缘计算平台,该平台可以在无线网状网络(WMNs)中实现基于ICN的边缘服务。PiGeon将边缘计算的几个趋势结合到一个平台中,即ICN(信息中心网络),以Docker为例的服务容器化,新颖的服务放置算法以及用户场所中节能但仍然强大的硬件(树莓派,迷你pc和增强型家庭网关)的可用性。我们用Docker基于容器的服务来支撑PiGeon平台,这些服务可以在网络边缘无缝交付、缓存和部署。PiGeon平台的核心是决策引擎,它在考虑网络状态和可用硬件资源的同时,决定何时何地部署服务实例以满足服务需求。我们从位于比利时安特卫普市的CityLab FIRE测试平台等真实的全市网状网络中收集网络数据。收集的数据用于在PiGeon平台内提供我们的服务放置启发式。通过CityLab测试平台的实际部署,我们表明我们的服务放置启发式方法将有状态服务(Web2.0服务)的响应时间提高了37%。除了提高终端用户的服务质量外,我们的研究结果表明,ICN在改善服务交付时间和减少wmn的流量消耗方面发挥了关键作用。ICN在我们平台上的总体效果是,大多数内容和服务交付请求可以在非常接近客户端设备的地方得到满足,很多时候只有一跳之隔,将QoS与网络内流量和源服务器负载解耦。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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