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A Control Plane Architecture to Enhance Network Appliance Agility through Autonomic Functionality

机译:通过自主功能增强网络设备敏捷性的控制平面体系结构

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Heterogeneous networking appliances are pervading every aspect of daily life, offering a diverse array of services and capabilities. This has led to increasingly complex systems on a micro and macro scale. The challenging nature of complexity remains a key area of research. Current research focuses upon two key 驴planes驴; the knowledge plane (applications controlling device behavior through for example, machine learning; a fundamental aspect of autonomic systems) and the control plane (inter-device communication mechanisms). We believe a self-tuning control architecture is required to bring these two planes together, so supporting future autonomic agility. The knowledge plane will discern the required learning and the control plane will control the learning dissemination through a novel, generic dissemination and negotiation control protocol. We have proposed and designed an autonomic self-tuning architecture, which includes a negotiable control protocol, as well as, support for a flexible number and type of algorithm overlays. The control plane enables key learning attributes to be made visible at the control plane. These attributes are used to negotiate and agree an apt learning payload. This paper provides details of a prototype showing how we can extend the existing networking infrastructure by using this architecture. It shows how the control protocol attributes and learning payload can be self-tuned by an appropriate algorithm, such as a cost benefit analysis algorithm, to allow a network device to self-tune and achieve our stated goals
机译:异构网络设备遍及日常生活的各个方面,提供各种服务和功能。这导致了微观和宏观尺度上日益复杂的系统。复杂性的挑战性仍然是研究的关键领域。当前的研究集中在两个关键的驴飞机上。知识平面(应用程序通过例如机器学习来控制设备行为;自主系统的基本方面)和控制平面(设备间通信机制)。我们认为,需要自整定的控制架构来将这两个平面整合在一起,从而支持未来的自主敏捷性。知识平面将识别所需的学习,而控制平面将通过一种新颖的,通用的传播和协商控制协议来控制学习的传播。我们已经提出并设计了一种自主的自我调整体系结构,该体系结构包括可协商的控制协议以及对灵活数量和类型的算法覆盖的支持。控制平面使关键学习属性在控制平面上可见。这些属性用于协商并同意适当的学习负载。本文提供了一个原型的详细信息,该原型显示了我们如何使用该体系结构扩展现有的网络基础结构。它显示了如何通过适当的算法(例如成本效益分析算法)对控制协议属性和学习有效负载进行自我调整,以使网络设备能够自我调整并达到我们规定的目标

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