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Capacity Management and Demand Prediction for Next Generation Data Centers
Gmach, Daniel; Rolia, Jerry; Cherkasova, Ludmila; Kemper, Alfons
HPL-2007-116
Keyword(s): capacity management; next generation data centers; performance models; measurements; workload analysis; automation; enterprise applications; shared resource pools
Abstract: Advances in server, network, and storage virtualization are enabling the creation of resource pools of servers that permit multiple application workloads to share each server in the pool. This paper proposes and evaluates aspects of a capacity management process for automating the efficient use of such pools when hosting large numbers of services. We use a trace based approach to capacity management that relies on i) a definition for required capacity, ii) the characterization of workload demand patterns, iii) the generation of synthetic workloads that predict future demands based on the patterns, and iv) a workload placement recommendation service. A case study with 6 months of data representing the resource usage of 139 workloads in an enterprise data center demonstrates the effectiveness of the proposed capacity management process. Our results show that when consolidating to 8 processor systems, we predicted future per-server required capacity to within one processor 95% of the time. The approach enabled a 35% reduction in processor usage as compared to today’s current best practice for workload placement. Publication Info: Copyright 2007 IEEE. Published in the International Conference on Web Services(ICWS'2007), 9-13 July 2007, Salt Lake City, Utah, USA
8 Pages
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