LogShrink: Effective Log Compression by Leveraging Commonality and Variability of Log Data
September 18, 2023 ยท Declared Dead ยท ๐ International Conference on Software Engineering
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Authors
Xiaoyun Li, Hongyu Zhang, Van-Hoang Le, Pengfei Chen
arXiv ID
2309.09479
Category
cs.SE: Software Engineering
Citations
31
Venue
International Conference on Software Engineering
Last Checked
3 months ago
Abstract
Log data is a crucial resource for recording system events and states during system execution. However, as systems grow in scale, log data generation has become increasingly explosive, leading to an expensive overhead on log storage, such as several petabytes per day in production. To address this issue, log compression has become a crucial task in reducing disk storage while allowing for further log analysis. Unfortunately, existing general-purpose and log-specific compression methods have been limited in their ability to utilize log data characteristics. To overcome these limitations, we conduct an empirical study and obtain three major observations on the characteristics of log data that can facilitate the log compression task. Based on these observations, we propose LogShrink, a novel and effective log compression method by leveraging commonality and variability of log data. An analyzer based on longest common subsequence and entropy techniques is proposed to identify the latent commonality and variability in log messages. The key idea behind this is that the commonality and variability can be exploited to shrink log data with a shorter representation. Besides, a clustering-based sequence sampler is introduced to accelerate the commonality and variability analyzer. The extensive experimental results demonstrate that LogShrink can exceed baselines in compression ratio by 16% to 356% on average while preserving a reasonable compression speed.
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