Sentiment Analysis based Error Detection for Large-Scale Systems

K. Alharthi, A. Jhumka, S. Di, F. Cappello, Edward Chuah
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引用次数: 6

Abstract

Today’s large-scale systems such as High Performance Computing (HPC) Systems are designed/utilized towards exascale computing, inevitably decreasing its reliability due to the increasing design complexity. HPC systems conduct extensive logging of their execution behaviour. In this paper, we leverage the inherent meaning behind the log messages and propose a novel sentiment analysis-based approach for the error detection in large-scale systems, by automatically mining the sentiments in the log messages. Our contributions are four-fold. (1) We develop a machine learning (ML) based approach to automatically build a sentiment lexicon, based on the system log message templates. (2) Using the sentiment lexicon, we develop an algorithm to detect system errors. (3) We develop an algorithm to identify the nodes and components with erroneous behaviors, based on sentiment polarity scores. (4) We evaluate our solution vs. other state-of-the-art machine/deep learning algorithms based on three representative supercomputers’ system logs. Experiments show that our error detection algorithm can identify error messages with an average MCC score and f-score of 91% and 96% respectively, while state of the art ML/deep learning model (LSTM) obtains only 67% and 84%. To the best of our knowledge, this is the first work leveraging the sentiments embedded in log entries of large-scale systems for system health analysis.
基于情感分析的大型系统错误检测
当今的大型系统,如高性能计算(HPC)系统,都是针对百亿亿次计算设计/利用的,由于设计复杂性的增加,不可避免地降低了其可靠性。高性能计算系统对其执行行为进行广泛的日志记录。在本文中,我们利用日志消息背后的内在含义,提出了一种新的基于情感分析的方法,通过自动挖掘日志消息中的情感,用于大规模系统的错误检测。我们的贡献是四倍的。(1)我们开发了一种基于机器学习(ML)的方法来自动构建基于系统日志消息模板的情感词典。(2)利用情感词典,我们开发了一种检测系统错误的算法。(3)我们开发了一种基于情感极性得分的算法来识别具有错误行为的节点和组件。(4)我们根据三个代表性超级计算机的系统日志评估我们的解决方案与其他最先进的机器/深度学习算法。实验表明,我们的错误检测算法可以识别出平均MCC分数和f分数分别为91%和96%的错误消息,而最先进的ML/深度学习模型(LSTM)仅获得67%和84%的错误消息。据我们所知,这是第一个利用嵌入在大型系统日志条目中的情感进行系统健康分析的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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