Deep-loglizer is a deep learning-based log analysis toolkit for automated anomaly detection.
If you use deep-loglizer in your research for publication, please kindly cite the following paper:
- Zhuangbin Chen, Jinyang Liu, Wenwei Gu, Yuxin Su, and Michael R. Lyu. Experience Report: Deep Learning-based System Log Analysis for Anomaly Detection. arXiv preprint, arXiv:2107.05908 (2021).
Model | Paper reference |
---|---|
Unsupervised models | |
LSTM | [CCS'17] Deeplog: Anomaly detection and diagnosis from system logs through deep learning, by Min Du, Feifei Li, Guineng Zheng, and Vivek Srikumar. [University of Utah] |
LSTM | [IJCAI'19] LogAnomaly: unsupervised detection of sequential and quantitative anomalies in unstructured logs by Weibin Meng, Ying Liu, Yichen Zhu et al. [Tsinghua University] |
Transformer | [ICDM'20] Self-attentive classification-based anomaly detection in unstructured logs, by Sasho Nedelkoski, Jasmin Bogatinovski, Alexander Acker, Jorge Cardoso, and Odej Kao. [TU Berlin] |
Autoencoder | [ICT Express'20] Unsupervised log message anomaly detection, by Amir Farzad and T Aaron Gulliver. [University of Victoria] |
Supervised models | |
Attentional BiLSTM | [ESEC/FSE'19] Robust log-based anomaly detection on unstable log data by Xu Zhang, Yong Xu, Qingwei Lin et al. [MSRA] |
CNN | [DASC'18] Detecting anomaly in big data system logs using convolutional neural network by Siyang Lu, Xiang Wei, Yandong Li, and Liqiang Wang. [University of Central Florida] |
git clone https://github.com/logpai/deep-loglizer.git
cd deep-loglizer
pip install -r requirements.txt
- Zhuangbin Chen, The Chinese University of Hong Kong
- Jinyang Liu, The Chinese University of Hong Kong
- Wenwei Gu, The Chinese University of Hong Kong