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Label-Less: A Semi-Automatic Labelling Tool for KPI Anomalies

机译:少标签:用于KPI异常的半自动标签工具

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KPI (Key Performance Indicator) anomaly detection is critical for Internet-based services to ensure the quality and reliability. However, existing algorithms' performance in reality is far from satisfying due to the lack of sufficient KPI anomaly data to help train and evaluate these algorithms. In this paper, we argue that labeling overhead is the main hurdle to obtain such datasets. Thus we novelly propose a semi-automatic labelling tool called Label-Less, which minimizes the labeling overhead in order to enable an ImageNet-like large-scale KPI anomaly dataset with high-quality ground truth. One novel technique in Label-Less is robust and rapid anomaly similarity search, which saves operators from scanning and checking the long KPIs back and forth for abnormal patterns or label consistency. In our evaluations using 30 real KPIs from a large Internet company, our anomaly similarity search achieves the best F-score of 0.95 on average, and a real-time per-KPI response time (less than 0.5 second). Overall, the feedback from deployment in practice shows that Label-Less can reduce operators' labeling overhead by more than 90%.
机译:KPI(关键绩效指标)异常检测对于基于Internet的服务以确保质量和可靠性至关重要。但是,由于缺乏足够的KPI异常数据来帮助训练和评估这些算法,因此现实中现有算法的性能远远不能令人满意。在本文中,我们认为标记开销是获取此类数据集的主要障碍。因此,我们新颖地提出了一种称为Label-Less的半自动标记工具,该工具可最小化标记开销,以使像ImageNet一样的大规模KPI异常数据集具有高质量的地面真实性。 Label-Less中的一项新技术是鲁棒且快速的异常相似性搜索,它使操作员免于来回扫描和检查长KPI的异常模式或标签一致性。在我们使用来自一家大型互联网公司的30个真实KPI进行评估时,我们的异常相似性搜索平均获得了0.95的最佳F评分,以及每个KPI的实时响应时间(少于0.5秒)。总体而言,实践中的部署反馈表明,Label-Less可以将运营商的标签开销减少90%以上。

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