Title :
An approach to predictive detection for service management
Author :
Hellerstein, Joseph L. ; Zhang, Fan ; Shahabuddin, Perwez
Author_Institution :
IBM T.J. Watson Res. Center, Hawthorne, NY, USA
Abstract :
Service providers typically define quality of service problems using threshold tests, such as “are HTTP operations greater than 12 per second on server XYZ?” This paper explores the feasibility of predicting violations of threshold tests. Such a capability would allow providers to take corrective actions in advance of service disruptions. Our approach estimates the probability of threshold violations for specific times in the future. We modeled the threshold metric (e.g., HTTP operations per second) at two levels: (1) nonstationary behavior (as is done in workload forecasting for capacity planning) and (2) stationary, time-serial dependencies. Using these models, we compute the probability of threshold violations. We asses our approach using measurements of HTTP operations per second collected from a production Web server. These assessments suggest that our approach works well if: (a) the actual values of predicted metrics are sufficiently distant from their thresholds; and/or (b) the prediction horizon is not too far into the future
Keywords :
Internet; computer network management; estimation theory; prediction theory; probability; quality of service; search engines; transport protocols; HTTP operations; Web server; nonstationary behavior; predictive detection; probability estimation; quality of service; service management; service providers; stationary dependencies; threshold metric; threshold test violations; Capacity planning; Cities and towns; Delay; Industrial engineering; Network servers; Predictive models; Production; Quality of service; Testing; Web server;
Conference_Titel :
Integrated Network Management, 1999. Distributed Management for the Networked Millennium. Proceedings of the Sixth IFIP/IEEE International Symposium on
Conference_Location :
Boston, MA
Print_ISBN :
0-7803-5748-5
DOI :
10.1109/INM.1999.770691