GAUL: Gestalt Analysis of Unstructured Logs for Diagnosing Recurring Problems in Large Enterprise Storage Systems

Pin Zhou, Binny S. Gill, W. Belluomini, Avani Wildani
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引用次数: 10

Abstract

We present GAUL, a system to automate the whole log comparison between a new problem and the ones diagnosed in the past to identify recurring problems. GAUL uses a fuzzy match algorithm based on the contextual overlap between log lines and efficiently implements this using scalable index/search. The accuracy and efficiency of the comparison is further improved by leveraging problem set information and noise tolerance techniques. We evaluate GAUL using 4339 customer problems that occurred in all field deployments of an enterprise storage system over the course of a year. Our results show that with human-filtered logs, GAUL can identify the correct problem set 66% of the time among the top10 matches, which is 15% more accurate than the VSM system that uses cosine similarity and 19% more accurate than the ERRCMP system that uses error codes for log comparison. With unfiltered logs, the top10 match accuracy of GAUL is 40%, which is 22% more accurate than VSM and 26% more accurate than ERRCMP.
高卢:用于诊断大型企业存储系统中反复出现问题的非结构化日志的格式塔分析
我们提出了GAUL系统,它可以自动将新问题与过去诊断的问题进行整个日志比较,以识别重复出现的问题。GAUL使用基于日志行之间上下文重叠的模糊匹配算法,并使用可扩展的索引/搜索有效地实现了这一点。通过利用问题集信息和噪声容忍技术,进一步提高了比较的准确性和效率。我们使用在一年中企业存储系统的所有现场部署中出现的4339个客户问题来评估GAUL。我们的研究结果表明,在人工过滤日志的情况下,GAUL在top10匹配中识别正确问题集的准确率为66%,比使用余弦相似度的VSM系统高出15%,比使用错误码进行日志比较的ERRCMP系统高出19%。在未过滤日志的情况下,gaaul的top10匹配准确率为40%,比VSM高22%,比ERRCMP高26%。
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