Root Cause
Root cause analysis (RCA) aims to identify the underlying causes of system failures or anomalies across diverse domains, from autonomous driving to manufacturing and healthcare. Current research heavily emphasizes data-driven approaches, employing machine learning models like graph neural networks, transformers, and causal discovery algorithms (including Bayesian networks) to analyze complex datasets (often multimodal) and infer causal relationships. These advancements are improving the accuracy and efficiency of RCA, leading to faster troubleshooting, enhanced system reliability, and more informed decision-making in various industries. The development of large, publicly available datasets is also a significant focus, facilitating more robust benchmarking and algorithm comparison.
Papers
Root-KGD: A Novel Framework for Root Cause Diagnosis Based on Knowledge Graph and Industrial Data
Jiyu Chen, Jinchuan Qian, Xinmin Zhang, Zhihuan Song
Root Cause Localization for Microservice Systems in Cloud-edge Collaborative Environments
Yuhan Zhu, Jian Wang, Bing Li, Xuxian Tang, Hao Li, Neng Zhang, Yuqi Zhao