SAFE Tool for Avoiding IT Infrastructure Service Outages and Degradation of Service

International Journal of Mobile Computing and Application
© 2019 by SSRG - IJMCA Journal
Volume 6 Issue 1
Year of Publication : 2019
Authors : Raman Swaminathan, Jambhu Kumar, Venkatakrishnan, Dr. Selvan C
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How to Cite?

Raman Swaminathan, Jambhu Kumar, Venkatakrishnan, Dr. Selvan C, "SAFE Tool for Avoiding IT Infrastructure Service Outages and Degradation of Service," SSRG International Journal of Mobile Computing and Application, vol. 6,  no. 1, pp. 1-4, 2019. Crossref, https://doi.org/10.14445/23939141/IJMCA-V6I1P101

Abstract:

Future Incidents Avoidance Solution (SAFE) is built to analyze and detect an early problem for application, middleware or infrastructure problems before they impact service. The software helps you avoid outages and increase service performance. In this paper we propose a predictive model called SAFE tool which turns terabytes of big operational data into understandable and actionable insights for quicker problem solving and better overall service.

Keywords:

SAFE, MARCC, MTTR, MTBF, Infrastructure Service Outages, Degradation of Service

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