在线学习和适应网络管理程序性能模型

Christian Sieber, A. Obermair, W. Kellerer
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引用次数: 11

摘要

软件定义网络(SDN)为逻辑上集中的实体(SDN控制器)铺平了道路,以便对网络的转发状态进行近乎实时的控制。网络管理程序是一个中间层,允许多个SDN控制器通过分割网络并赋予每个控制器对网络的一部分的权力来共享这种控制。这使得网络管理程序成为可靠性和性能方面的关键组件。同时,计算虚拟化无处不在,可能无法保证将资源静态分配给网络管理程序。因此,了解具有不同计算资源的环境中的网络管理程序的性能非常重要。在本文中,我们提出了一个在线机器学习管道来综合一个运行的虚拟机监控程序实例在面对不同资源时的性能模型。性能模型允许根据控制消息吞吐量对当前容量进行精确估计,而无需进行耗时的离线基准测试。我们使用一个流行的网络管理程序实现在虚拟测试平台中评估管道。结果表明,所提出的管道能够以较低的误差估计管理程序实例的容量,并且能够快速检测和适应可用资源的变化。通过探索学习管道的参数空间,讨论了不同参数选择和用例下学习管道在估计精度和收敛时间方面的特点。尽管我们使用网络管理程序来评估该方法,但我们的工作可以推广到与网络管理程序具有相似特征和需求的其他对延迟敏感的应用程序。
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Online learning and adaptation of network hypervisor performance models
Software Defined Networking (SDN) paved the way for a logically centralized entity, the SDN controller, to excerpt near real-time control over the forwarding state of a network. Network hypervisors are an in-between layer to allow multiple SDN controllers to share this control by slicing the network and giving each controller the power over a part of the network. This makes network hypervisors a critical component in terms of reliability and performance. At the same time, compute virtualization is ubiquitous and may not guarantee statically assigned resources to the network hypervisors. It is therefore important to understand the performance of network hypervisors in environments with varying compute resources. In this paper we propose an online machine learning pipeline to synthesize a performance model of a running hypervisor instance in the face of varying resources. The performance model allows precise estimations of the current capacity in terms of control message throughput without time-intensive offline benchmarks. We evaluate the pipeline in a virtual testbed with a popular network hypervisor implementation. The results show that the proposed pipeline is able to estimate the capacity of a hypervisor instance with a low error and furthermore is able to quickly detect and adapt to a change in available resources. By exploring the parameter space of the learning pipeline, we discuss its characteristics in terms of estimation accuracy and convergence time for different parameter choices and use cases. Although we evaluate the approach with network hypervisors, our work can be generalized to other latency-sensitive applications with similar characteristics and requirements as network hypervisors.
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