NetGraf:端到端学习网络监控服务

Bashir Mohammed, M. Kiran, B. Enders
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引用次数: 3

摘要

网络监视服务对于确保交付最佳性能和帮助确定故障服务非常重要。特别是对于大型数据传输,检查吞吐量、数据包丢失和延迟等关键性能指标可以决定实验结果的好坏。但是,网络监控工具收集的指标非常不同,并且取决于所安装的设备。此外,能够了解和确定性能下降原因的工具也很有限。本文介绍了NetGraf,一种新型的端到端学习监控系统,它利用当前的监控工具,将多个数据源合并到一个仪表板中以方便使用,并提供机器学习库来分析数据并执行实时异常发现。使用数据库后端,NetGraf可以了解性能趋势,并向用户显示网络性能是否下降。我们将演示如何通过自动化服务轻松部署NetGraf,并将其链接到多个监控源以收集数据。NetGraf旨在通过机器学习创新和整合各种数据源,满足整体学习网络遥测监测的需求。据我们所知,这是有史以来第一个端到端的学习监控服务。我们将在两个网络设置中演示它的使用,以展示它的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NetGraf: An End-to-End Learning Network Monitoring Service
Network monitoring services are of enormous importance to ensure optimal performance is being delivered and help determine any failing services. Particularly for large data transfers, checking key performance indicators like throughput, packet loss, and latency can make or break experiment results. However, network monitoring tools are very diverse in metrics collected and dependent on the devices installed. Additionally, there are limited tools that can learn and determine the cause of degraded performance. This paper presents NetGraf, a novel end-to-end learning monitoring system that utilizes current monitoring tools, merges multiple data sources into one dashboard for easy use, and provides machine learning libraries to analyze the data and perform real-time anomaly finding. Using a database backend, NetGraf can learn performance trends and show users if network performance has degraded. We demonstrate how NetGraf can easily be deployed through automation services and linked to multiple monitoring sources to collect data. Via the machine learning innovation and merging various data sources, NetGraf aims to fulfill the need for holistic learning network telemetry monitoring. To the best of our knowledge, this is the first-ever end-to-end learning monitoring service. We demonstrate its use on two network setups to showcase its impact.
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