isswift:快速准确的大规模cdn影响识别

Jiyan Sun, Tao Lin, Yinlong Liu, X. Wang, Bo Jiang, Liru Geng, Pengkun Jing, Liang Dai
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引用次数: 0

摘要

维护大型内容交付网络(CDN)的一个关键挑战是,当发生严重的系统问题(例如,硬件故障)时,最大限度地减少服务停机时间。在这种情况下,关键步骤是快速准确地识别性能下降的用户范围,称为影响识别。成功的影响识别不仅可以帮助识别受影响的用户,还可以为故障排除提供有意义的信息。然而,目前的影响识别实践通常需要网络工程师手动识别受影响的用户几个小时,这可能会导致巨大的业务损失。大型cdn影响自动识别面临的主要挑战包括底层异常检测不准确、影响识别搜索空间巨大、用户流量长尾分布严重等。在本文中,我们提出了isswift,这是一个专门为大规模cdn中的影响识别而设计的系统,以应对上述挑战。我们对iSwift在半合成数据集上的性能进行了评估,结果表明iSwift可以在10秒内获得大于0.85的f1分数,这明显优于目前最先进的解决方案。此外,isswift已经作为试点项目在生产CDN中部署了大约一年,并展示了其在线性能,得到了网络运营商的认可。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
iSwift: Fast and Accurate Impact Identification for Large-scale CDNs
One key challenge to maintain a large-scale Content Delivery Network (CDN) is to minimize the service downtime when severe system problems happen (e.g., hardware failures). In this case, a critical step is to quickly and accurately identify the range of users with performance degradation, termed impact identification. Successful impact identification not only helps identify impacted users but also provides meaningful information for troubleshooting. However, current practice of impact identification usually takes network engineers several hours to manually identify impacted users, which may lead to a huge business loss. The main challenges for automatic impact identification in large CDNs include the inaccuracy of underlying anomaly detection, huge search space of impact identification and severe long-tail distribution of user traffic. In this paper we propose iSwift, a system that is specifically designed for impact identification in large-scale CDNs in order to address aforementioned challenges. We evaluate the performance of iSwift on semi-synthetic datasets and the results show that iSwift can achieve a F1-score greater than 0.85 within ten seconds, which significantly outperforms state-of-the-art solutions. Furthermore, iSwift has been deployed in a production CDN around one year as a pilot project and demonstrated its online performance confirmed by the network operators.
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