Title :
Hierarchical Forecasting of Web Server Workload Using Sequential Monte Carlo Training
Author :
Vercauteren, Tom ; Aggarwal, Pradeep ; Wang, Xiaodong ; Li, Ta-Hsin
Author_Institution :
Dept. of Electr. Eng., Columbia Univ., New York, NY
Abstract :
We propose a solution to the Web server load prediction problem based on a hierarchical framework with multiple time scales. This framework leads to adaptive procedures that provide both long-term (in days) and short-term (in minutes) predictions with simultaneous confidence bands which accommodate not only serial correlation but also heavy-tailedness, and non-stationarity of the data. The long-term load is modeled as a dynamic harmonic regression (DHR), the coefficients of which evolve according to a random walk, and are tracked using sequential Monte Carlo (SMC) algorithms; whereas, the short-term load is predicted using an autoregressive model, whose parameters are also estimated using SMC techniques. We evaluate our method using real world web workload data.
Keywords :
Internet; Monte Carlo methods; autoregressive processes; DHR; SMC algorithm; Web server workload prediction; autoregressive model; dynamic harmonic regression; hierarchical forecasting; sequential Monte Carlo training; Clustering algorithms; Load modeling; Monte Carlo methods; Parameter estimation; Predictive models; Quality of service; Resource management; Sliding mode control; Time measurement; Web server;
Conference_Titel :
Information Sciences and Systems, 2006 40th Annual Conference on
Conference_Location :
Princeton, NJ
Print_ISBN :
1-4244-0349-9
Electronic_ISBN :
1-4244-0350-2
DOI :
10.1109/CISS.2006.286594