首页> 外文会议>Network Traffic Measurement and Analysis Conference >Demonstrating the Cost of Collecting In-Network Measurements for High-Speed VNFs
【24h】

Demonstrating the Cost of Collecting In-Network Measurements for High-Speed VNFs

机译:展示用于高速VNF的网络内测量的成本

获取原文

摘要

Recent advances in the state-of-the-art of software packet processing along with the incarnation of SDN and NFV in networking brings the utility of software switches in production to a high level. Accompanied with the wide deployment of the latter, comes the practical and urgent need of monitoring networks that are composed of software forwarders/switches. On the one hand, this may provide new types of very finegrain operational data that can be collected, thus bringing the opportunity for network managers to get a deeper understanding of the underlying network state and performance. On the other hand, this massive data availability comes at a cost: software measurements can highly affect the measured values, thus biasing the collected data. The intensity of this bias becomes stronger when measurements are taken close to the data path. We believe that this trade-off should be explored more in detail, since the availability of fine-grained data offers new opportunities to apply machine learning techniques to infer changes in the network state, to forecast the evolution of some performance metrics or to automatically respond to event triggers without the human intervention. While our long-run objective1 is a full framework for performing automated test on software routing platforms, in this demonstration we focus on two key points that are prerequisite for our approach: (i) we showcase the impact of collecting the desired data within a Virtual Network Function and (ii) we setup a simple environment for data visualization on the same physical device.
机译:软件数据包处理最新的进展以及网络中的SDN和NFV的化身将软件开关的效用带入了高水平。伴随着后者的广泛部署,是对由软件代理商/交换机组成的监控网络的实际和迫切需要。一方面,这可以提供可以收集的新类型的非常清晰的操作数据,从而为网络管理者提供了更深入地了解潜在的网络状态和性能的机会。另一方面,这种大规模的数据可用性以成本为准:软件测量可以高度影响测量值,从而偏置收集的数据。当测量接近数据路径时,该偏置的强度变得更强。我们认为,应该更详细地探讨这种权衡,因为细粒度数据的可用性提供了应用机器学习技术的新机会来推断网络状态的变化,以预测某些性能指标的演变或自动响应没有人为干预的事件触发。虽然我们的长期目标 1 是在本演示中对软件路由平台进行自动测试的完整框架,我们专注于我们方法的前提条件:(i)我们展示在虚拟网络功能内收集所需数据的影响和(ii)我们设置了一个简单的环境,用于在同一物理设备上进行数据可视化。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号