A Critical Review of Common Log Data Sets Used for Evaluation of Sequence-based Anomaly Detection Techniques
Log data store event execution patterns that correspond to underlying workflows of systems or applications. While most logs are informative, log data also include artifacts that indicate failures or incidents. Accordingly, log data are often used to evaluate anomaly detection techniques that aim to automatically disclose unexpected or otherwise relevant system behavior patterns. Recently, detection approaches leveraging deep learning have increasingly focused on anomalies that manifest as changes of sequential patterns within otherwise normal event traces. Several publicly available data sets, such as HDFS, BGL, Thunderbird, OpenStack, and Hadoop, have since become standards for evaluating these anomaly detection techniques, however, the appropriateness of these data sets has not been closely investigated in the past. In this paper we therefore analyze six publicly available log data sets with focus on the manifestations of anomalies and simple techniques for their detection. Our findings suggest that most anomalies are not directly related to sequential manifestations and that advanced detection techniques are not required to achieve high detection rates on these data sets.
Thu 18 JulDisplayed time zone: Brasilia, Distrito Federal, Brazil change
16:00 - 18:00 | Log Analysis and DebuggingResearch Papers / Industry Papers at Acerola Chair(s): Domenico Bianculli University of Luxembourg | ||
16:00 18mTalk | Go Static: Contextualized Logging Statement Generation Research Papers Yichen LI The Chinese University of Hong Kong, Yintong Huo The Chinese University of Hong Kong, Renyi Zhong The Chinese University of Hong Kong, Zhihan Jiang The Chinese University of Hong Kong, Jinyang Liu The Chinese University of Hong Kong, Junjie Huang The Chinese University of Hong Kong, Jiazhen Gu The Chinese University of Hong Kong, Pinjia He Chinese University of Hong Kong, Shenzhen, Michael Lyu The Chinese University of Hong Kong | ||
16:18 18mTalk | DeSQL: Interactive Debugging of SQL in Data-Intensive Scalable Computing Research Papers | ||
16:36 18mTalk | DTD: Comprehensive and Scalable Testing for Debuggers Research Papers Hongyi Lu Southern University of Science and Technology/Hong Kong University of Science and Technology, Zhibo Liu The Hong Kong University of Science and Technology, Shuai Wang The Hong Kong University of Science and Technology, Fengwei Zhang Southern University of Science and Technology | ||
16:54 9mTalk | Decoding Anomalies! Unraveling Operational Challenges in Human-in-the-Loop Anomaly Validation Industry Papers Dong Jae Kim Concordia University, Steven Locke , Tse-Hsun (Peter) Chen Concordia University, Andrei Toma ERA Environmental Management Solutions, Sarah Sajedi ERA Environmental Management Solutions, Steve Sporea , Laura Weinkam | ||
17:03 18mTalk | A Critical Review of Common Log Data Sets Used for Evaluation of Sequence-based Anomaly Detection Techniques Research Papers Max Landauer AIT Austrian Institute of Technology, Florian Skopik AIT Austrian Institute of Technology, Markus Wurzenberger AIT Austrian Institute of Technology | ||
17:21 18mResearch paper | LILAC: Log Parsing using LLMs with Adaptive Parsing Cache Research Papers Zhihan Jiang The Chinese University of Hong Kong, Jinyang Liu The Chinese University of Hong Kong, Zhuangbin Chen School of Software Engineering, Sun Yat-sen University, Yichen LI The Chinese University of Hong Kong, Junjie Huang The Chinese University of Hong Kong, Yintong Huo The Chinese University of Hong Kong, Pinjia He Chinese University of Hong Kong, Shenzhen, Jiazhen Gu The Chinese University of Hong Kong, Michael Lyu The Chinese University of Hong Kong DOI Pre-print | ||
17:39 18mTalk | TraStrainer: Adaptive Sampling for Distributed Traces with System Runtime State Research Papers Haiyu Huang Sun Yat-sen University, Xiaoyu Zhang HUAWEI CLOUD COMPUTING TECHNOLOGIES CO. LTD., Pengfei Chen Sun Yat-sen University, Zilong He Sun Yat-sen University, Zhiming Chen Sun Yat-sen University, Guangba Yu Sun Yat-sen University, Hongyang Chen Sun Yat-sen University, Chen Sun Huawei Pre-print |