DocumentCode
1501481
Title
ASIdE: Using Autocorrelation-Based Size Estimation for Scheduling Bursty Workloads
Author
Mi, Ningfang ; Casale, Giuliano ; Smirni, Evgenia
Author_Institution
Northeastern Univ., Boston, MA, USA
Volume
9
Issue
2
fYear
2012
fDate
6/1/2012 12:00:00 AM
Firstpage
198
Lastpage
212
Abstract
Temporal dependence in workloads creates peak congestion that can make service unavailable and reduce system performance. To improve system performability under conditions of temporal dependence, a server should quickly process bursts of requests that may need large service demands. In this paper, we propose and evaluateASIdE, an Autocorrelation-based SIze Estimation, that selectively delays requests which contribute to the workload temporal dependence. ASIdE implicitly approximates the shortest job first (SJF) scheduling policy but without any prior knowledge of job service times. Extensive experiments show that (1) ASIdE achieves good service time estimates from the temporal dependence structure of the workload to implicitly approximate the behavior of SJF; and (2) ASIdE successfully counteracts peak congestion in the workload and improves system performability under a wide variety of settings. Specifically, we show that system capacity under ASIdE is largely increased compared to the first-come first-served (FCFS) scheduling policy and is highly-competitive with SJF.
Keywords
performance evaluation; scheduling; ASIdE; autocorrelation-based size estimation; bursty workloads scheduling; first-come first-served scheduling policy; job service times; peak congestion; server; shortest job first scheduling policy; system performability; temporal dependence; Correlation; Delay; Estimation; Forecasting; Monitoring; Servers; FCFS scheduling; SJF scheduling; Temporal dependence; delay-based scheduling; no-knowledge scheduling;
fLanguage
English
Journal_Title
Network and Service Management, IEEE Transactions on
Publisher
ieee
ISSN
1932-4537
Type
jour
DOI
10.1109/TNSM.2012.041712.100073
Filename
6189000
Link To Document