DocumentCode :
159886
Title :
A framework for predicting service delivery efforts using IT infrastructure-to-incident correlation
Author :
Branch, Joel W. ; Yixin Diao ; Shwartz, Larisa
Author_Institution :
IBM T.J. Watson Res. Center, Yorktown Heights, NY, USA
fYear :
2014
fDate :
5-9 May 2014
Firstpage :
1
Lastpage :
8
Abstract :
Predicting IT infrastructure performance under varying conditions, e.g., the addition of a new server or increased transaction loads, has become a typical IT management exercise. However, within a service delivery context, enterprise clients are demanding predictive analytics that outline future “costs” associated with changing conditions. The service delivery staffing costs incurred in addressing problems and requests (arriving in the form of incident and other problem tickets) in the managed environment is especially of high importance. This paper describes an analytical study addressing such cost prediction. Specifically, a novel approach is described in which support vector regression is used to predict service delivery workloads (measured by ticket volumes) based on managed server characteristics Additionally, a proposed framework combining various analytical models is proposed to predict service delivery staffing requirements under changing IT infrastructure characteristics and conditions. Detailed descriptions of the workload prediction techniques, as well as an evaluation using data from an actual large service delivery engagement, are presented.
Keywords :
DP management; costing; personnel; regression analysis; service-oriented architecture; support vector machines; technical support services; IT infrastructure performance; IT infrastructure-to-incident correlation; IT management exercise; cost prediction; enterprise clients; large service delivery engagement; managed server characteristics; predicting service delivery efforts; predictive analytics; service delivery context; service delivery staffing costs; service delivery staffing requirements; service delivery workloads; support vector regression; workload prediction techniques; Analytical models; Complexity theory; Load modeling; Monitoring; Predictive models; Servers; Support vector machines; machine learning; performance analysis; predictive models;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Network Operations and Management Symposium (NOMS), 2014 IEEE
Conference_Location :
Krakow
Type :
conf
DOI :
10.1109/NOMS.2014.6838266
Filename :
6838266
Link To Document :
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