Awesome Log Analysis

July 20, 2022 · View on GitHub

Awesome Log Analysis

A curated list of awesome publications and researchers on log analysis, anomaly detection, fault localization, and AIOps.

Researchers

China (& HK SAR)
Michael R. Lyu, CUHKDongmei Zhang, MicrosoftPengfei Chen, SYSUDan Pei, Tsinghua
Pinjia He, CUHK-Shenzhen
USA
Yuanyuan Zhou, UCSDTao Xie, UIUCDawson Engler, StanfordBen Liblit, Wisconsin–Madison
Canada
Ding Yuan, Toronto UniversityAhmed E. Hassan, Queen's UniversityWeiyi Shang, Concordia UniversityZhen Ming (Jack) Jiang, York University
Wahab Hamou-Lhadj, Concordia University
UK
Europe
Australia
Ingo Weber, CSIRO

Conferences and Journals

Logs are a type of valuable data generated from many sources such as software, systems, networks, devices, etc. They have also been used for a number of tasks related to reliability, security, performance, and energy. Therefore, the research of log analysis has attracted interests from different research areas.

Datasets

Loghub

Papers

Surveys & Tutorials & Magazines

  1. [ACM Computing Survey] A Survey on Automated Log Analysis for Reliability Engineering
  2. [Blog] What is AIOps? Artificial Intelligence for IT Operations Explained
  3. [Book'14] I Heart Logs
  4. [Book'12] Logging and Log Management: The Authoritative Guide to Understanding the Concepts Surrounding Logging and Log Management, by Anton A. Chuvakin, Kevin J. Schmidt, Christopher Phillips.
  5. [Thesis] Log Engineering: Towards Systematic Log Mining to Support the Development of Ultra-large Scale Systems
  6. [IST'20] A Systematic Literature Review on Automated Log Abstraction Techniques
  7. [IEEE Software'16] Operational-Log Analysis for Big Data Systems: Challenges and Solutions

Logging

Log Compression

Log Parsing

Log Mining

Anomaly Detection

Failure Prediction

Failure Diagnosis

Others

License

This repo is under the MIT license.