Causality Inference For Failures In Nfv

2016 IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS)(2016)

Cited 6|Views42
No score
Abstract
In this paper we consider a root-cause analysis framework for NFV infrastructure. As monitoring machinery for NFV has matured the next step is to leverage on such data to automatically optimize failure detection, analysis, and overall resiliency. The complex architecture and dynamics of NFV poses significant challenges from the point of view of causality inference. In particular, the need for an approach that does not depend on domain knowledge or human intervention is of high importance. We propose in this context a step-wise data-driven root-case analysis approach based on correlation clustering, and time sensitivity analysis of alarms data. Our approach recovers templates of causality relationship between network resources alarms, which in turn allows to determine rules for performing root cause analysis. We demonstrate our approach on real data collected from NFV, where our algorithm computes causality templates. These templates were verified by system experts, while most of them were confirmed to be known and others were new.
More
Translated text
Key words
NFV dynamics,NFV complex architecture,NFV infrastructure,causality inference,monitoring machinery,failure detection,failure analysis,failure overall resiliency,domain knowledge,human intervention,step-wise data-driven root-case analysis approach,correlation clustering,time sensitivity analysis,causality template computation,network function virtualization
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