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CROSS-TRACE SCALABLE ISSUE DETECTION AND CLUSTERING

机译:跨轨可伸缩的问题检测和聚类

摘要

Techniques and systems for cross-trace scalable issue detection and clustering that scale-up trace analysis for issue detection and root-cause clustering using a machine learning based approach are described herein. These techniques enable a scalable performance analysis framework for computing devices addressing issue detection, which is designed as a multiple scale feature for learning based issue detection, and root cause clustering. In various embodiments the techniques employ a cross-trace similarity model, which is defined to hierarchically cluster problems detected in the learning based issue detection via butterflies of trigram stacks. The performance analysis framework is scalable to manage millions of traces, which include high problem complexity.
机译:本文描述了用于交叉跟踪可伸缩问题检测和聚类的技术和系统,其使用基于机器学习的方法扩大了跟踪分析以用于问题检测和根本原因聚类。这些技术为计算设备解决问题​​检测提供了可扩展的性能分析框架,该框架设计为用于基于学习的问题检测和根本原因聚类的多尺度功能。在各种实施例中,该技术采用交叉迹线相似度模型,其被定义为通过三联词组的蝶形对在基于学习的问题检测中检测到的问题进行分层聚类。性能分析框架可扩展以管理数百万条跟踪,其中包括高问题复杂性。

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