Chrome Extension
WeChat Mini Program
Use on ChatGLM

Performance problems diagnosis in cloud computing systems by mining request trace logs

NOMS(2012)

Cited 27|Views23
No score
Abstract
In cloud computing systems, end-to-end request tracing approach is helpful for developers to understand the runtime behavior of user requests. Based on trace logs, we propose an approach to localize the abnormal methods that are the primary causes of performance problems. Our approach involves three steps: (1) cluster the user requests into different categories according to request call sequences and select major categories; (2) extract the principal methods that might be the causes of performance degradation; (3) pick out abnormal methods from those principal methods in each major category. We conduct four cases of performance degradations to validate our approach over a real-world enterprise-class cloud computing platform. The experimental results show that our approach can locate the prime causes of performance problems with low false-positive rate and false-negative rate.
More
Translated text
Key words
performance degradations,request call sequences,pattern clustering,user request runtime behavior,end-to-end request tracing approach,user request clustering,software performance evaluation,data mining,request trace log mining,abnormal methods,enterprise-class cloud computing platform,business data processing,cloud computing,principal method extraction,performance problem diagnosis,false positive rate,computer bugs,servers,degradation,merging,principal component analysis
AI Read Science
Must-Reading Tree
Example
Generate MRT to find the research sequence of this paper
Chat Paper
Summary is being generated by the instructions you defined