RCInvestigator: Towards Better Investigation of Anomaly Root Causes in Cloud Computing Systems
Shuhan Liu, Yunfan Zhou, Lu Ying, Yuan Tian, Jue Zhang, Shandan Zhou, Weiwei Cui, Qingwei Lin, Thomas Moscibroda, Haidong Zhang, Di Weng, Yingcai Wu

TL;DR
This paper introduces RCInvestigator, a visual analytics system designed to improve the investigation of anomaly root causes in cloud computing systems by facilitating interactive analysis and expert collaboration.
Contribution
The paper presents a novel visual analytics approach that addresses modeling, inference, and interpretability challenges in root cause analysis for cloud anomalies.
Findings
Effective root cause investigation in real-world cloud data
Positive expert feedback on RCInvestigator's usability
Improved speed and accuracy in anomaly analysis
Abstract
Finding the root causes of anomalies in cloud computing systems quickly is crucial to ensure availability and efficiency since accurate root causes can guide engineers to take appropriate actions to address the anomalies and maintain customer satisfaction. However, it is difficult to investigate and identify the root causes based on large-scale and high-dimension monitoring data collected from complex cloud computing environments. Due to the inherently dynamic characteristics of cloud computing systems, the existing approaches in practice largely rely on manual analyses for flexibility and reliability, but massive unpredictable factors and high data complexity make the process time-consuming. Despite recent advances in automated detection and investigation approaches, the speed and quality of root cause analyses remain limited by the lack of expert involvement in these approaches. The…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Software System Performance and Reliability · Anomaly Detection Techniques and Applications
