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Lemur: Log Parsing with Entropy Sampling and Chain-of-Thought Merging

Authors :
Zhang, Wei
Guo, Hongcheng
Le, Anjie
Yang, Jian
Liu, Jiaheng
Li, Zhoujun
Zheng, Tieqiao
Xu, Shi
Zang, Runqiang
Zheng, Liangfan
Zhang, Bo
Publication Year :
2024

Abstract

Logs produced by extensive software systems are integral to monitoring system behaviors. Advanced log analysis facilitates the detection, alerting, and diagnosis of system faults. Log parsing, which entails transforming raw log messages into structured templates, constitutes a critical phase in the automation of log analytics. Existing log parsers fail to identify the correct templates due to reliance on human-made rules. Besides, These methods focus on statistical features while ignoring semantic information in log messages. To address these challenges, we introduce a cutting-edge \textbf{L}og parsing framework with \textbf{E}ntropy sampling and Chain-of-Thought \textbf{M}erging (Lemur). Specifically, to discard the tedious manual rules. We propose a novel sampling method inspired by information entropy, which efficiently clusters typical logs. Furthermore, to enhance the merging of log templates, we design a chain-of-thought method for large language models (LLMs). LLMs exhibit exceptional semantic comprehension, deftly distinguishing between parameters and invariant tokens. We have conducted experiments on large-scale public datasets. Extensive evaluation demonstrates that Lemur achieves the state-of-the-art performance and impressive efficiency.<br />Comment: 7 pages

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.18205
Document Type :
Working Paper