XDrain:使用固定深度森林对日志流进行有效的日志解析

IF 3.8 2区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Changjian Liu , Yang Tian , Siyu Yu , Donghui Gao , Yifan Wu , Suqun Huang , Xiaochun Hu , Ningjiang Chen
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引用次数: 0

摘要

日志记录了丰富的信息,可以帮助操作员诊断系统故障[1]。分析日志流中的日志可以加快诊断过程,有效减轻故障的影响。日志解析是自动日志分析的先决条件,它能将半结构化日志转化为结构化日志。然而,现有解析器的有效性只在有限的日志集上进行过评估,缺乏足够的日志类型。在对现有日志解析器进行更全面的评估后,我们发现了以下不足:(1) 可变起始日志会使某些日志解析器容易出错。(2) 日志流中日志的顺序会对效果产生很大影响。我们提出了 XDrain,通过使用固定深度的森林来应对这些挑战。XDrain 首先会对日志的顺序和每个日志中单词的顺序进行多次调整。其次,XDrain 会为洗牌后生成的所有日志生成解析森林。最后,通过投票生成最终的日志模板。评估结果表明,XDrain 在两个广泛使用的准确度指标上都优于现有的日志解析器,并且不受不恰当的日志顺序的影响。XDrain 解析 100 万条日志平均只需 97.89 秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
XDrain: Effective log parsing in log streams using fixed-depth forest

Logs record rich information that can help operators diagnose system failure [1]. Analyzing logs in log streams can expedite the diagnostic process and effectively mitigate the impact of failures. Log parsing is a prerequisite for automated log analysis, which transforms semi-structured logs into structured logs. However, the effectiveness of existing parsers has only been evaluated on a limited set of logs, which lack sufficient log types. After conducting a more comprehensive evaluation of the existing log parser, we identified the following deficiencies: (1) Variable-starting logs can make some log parsers error-prone. (2) The order of logs in a log stream can have a great impact on the effectiveness. We proposes XDrain to satisfy these challenges by using fixed-depth forest. XDrain first shuffles the order of logs and the order of words within each log a few times. Secondly, XDrain will generate parsing forest for all the logs generated after the shuffling. Finally, the final log template is generated by voting. Evaluation results show that XDrain outperforms existing log parsers on two widely-used accuracy metrics and is immune to inappropriate log order. XDrain only takes about 97.89 s to parse one million logs on average.

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来源期刊
Information and Software Technology
Information and Software Technology 工程技术-计算机:软件工程
CiteScore
9.10
自引率
7.70%
发文量
164
审稿时长
9.6 weeks
期刊介绍: Information and Software Technology is the international archival journal focusing on research and experience that contributes to the improvement of software development practices. The journal''s scope includes methods and techniques to better engineer software and manage its development. Articles submitted for review should have a clear component of software engineering or address ways to improve the engineering and management of software development. Areas covered by the journal include: • Software management, quality and metrics, • Software processes, • Software architecture, modelling, specification, design and programming • Functional and non-functional software requirements • Software testing and verification & validation • Empirical studies of all aspects of engineering and managing software development Short Communications is a new section dedicated to short papers addressing new ideas, controversial opinions, "Negative" results and much more. Read the Guide for authors for more information. The journal encourages and welcomes submissions of systematic literature studies (reviews and maps) within the scope of the journal. Information and Software Technology is the premiere outlet for systematic literature studies in software engineering.
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