它真的能理解日志

Aidi Pi, Wei Chen, W. Zeller, Xiaobo Zhou
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引用次数: 4

摘要

通过日志重建工作流对于排除目标分布式系统的故障至关重要。从日志中提取足够的信息并保持简洁的视图也是一项挑战,这使得手工日志分析难以实践。然而,目前流行的工具依赖于基于标识符的日志解析,留下了大量未被利用的工作流信息。在本文中,我们提出了一种日志提取方法NLog,该方法利用基于自然语言处理的方法从日志消息中获取关键信息,并在不需要任何领域知识的情况下从不同语句生成的日志中识别出相同的对象。我们建议使用关键字消息,一种新的日志存储结构来存储解析后的日志。我们实现了NLog,并将其应用于分布式数据分析框架Spark和MapReduce。评估结果表明,即使没有显式标识符,NLog也能准确识别日志消息中的对象。通过使用关键字消息,用户可以拥有一个简洁而灵活的工作流视图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
It Can Understand the Logs, Literally
Workflow reconstruction through logs is crucial for troubleshooting targeted distributed systems. It is also challenging to extract enough information from logs and keep a concise view, which makes manual log analysis hard to practice. However, currently popular tools rely on identifier-based log parsing, leaving a large amount of workflow information unexploited. In this paper, we propose a log extraction approach NLog, which utilizes a natural language processing based approach to obtain the key information from log messages and identify the same object in logs generated by different statements without any domain knowledge. We propose to use keyed message, a new log storage structure to store the parsed logs. We implement NLog and apply it to distributed data analytics frameworks Spark and MapReduce. Evaluation results show that NLog can accurately identify the objects in log messages even without explicit identifiers. By using keyed messages, users can have a concise as well as flexible view of the workflows.
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