事件流的症状匹配

Miao Wang, V. Holub, T. Parsons, P. O'Sullivan, John Murphy
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引用次数: 1

摘要

企业系统会产生大量的日志数据。必须自动处理这些重要且有价值的信息,以便及时进行系统分析和恢复。由于行业需求,引入了包含已知问题的标准数据库—症状数据库。每个症状都包含一个规则模式和相应的解决方案。用于症状识别的模式被编码为XPath表达式,并以标准化的WSGI格式公共基础事件与事件流进行匹配。对症状模式进行有效匹配的能力已成为各行业提出的一项重要要求。作者提出了一个实时的症状识别流的事件。该实现将允许多个自主计算组件(如自我监控传感器)在运行时有效地匹配大型数据集中的已知模式。与当前最先进的方法不同,建议的解决方案允许用户除了使用标准的数字和布尔运算符外,还使用所有复杂的XPath函数来定义模式。特别是,它的目标是针对大容量事件流高效地同时匹配一组基于xpath的症状模式,这对于症状识别至关重要,但目前可用的xpath匹配引擎无法有效地解决这一问题。
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Symptom matching for event streams
Enterprise systems produce a vast amount of logging data. This critical and valuable information must be processed automatically for timely system analysis and recovery. As a result of industry demands, a standard database containing known issues has been introduced - a symptom database. Each symptom consists of a rule pattern and corresponding solutions. Patterns used for symptom identification are encoded as a XPath expression and matched against a stream of events in a standardised WSGI format common base event. The ability of an efficient matching for symptom patterns has been raised as an important requirement by industries. The authors present a real-time symptom identification in a stream of events. The implementation will allow multiple autonomic computing components such as self-monitoring sensors to effectively match known patterns in large datasets in run time. Unlike current state of the art approaches, the proposed solution allows users to define patterns using all the complex XPath functions in addition to standard numeric and Boolean operators. In particular, it was aimed at efficient simultaneous matching of a large set of XPath-based symptom patterns against a high-volume event stream, which is crucial for symptom identification but was not addressed efficiently by currently available XPath-matching engines.
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