Computer Science – Distributed – Parallel – and Cluster Computing
Scientific paper
2012-02-28
Workshop on Large-Scale Parallel Processing in conjunction with 26th IEEE International Parallel and Distributed Processing Sy
Computer Science
Distributed, Parallel, and Cluster Computing
10 pages
Scientific paper
For the first time, this paper systematically identifies three categories of throughput oriented workloads in data centers: services, data processing applications, and interactive real-time applications, whose targets are to increase the volume of throughput in terms of processed requests or data, or supported maximum number of simultaneous subscribers, respectively, and we coins a new term high volume throughput computing (in short HVC) to describe those workloads and data center systems designed for them. We characterize and compare HVC with other computing paradigms, e.g., high throughput computing, warehouse-scale computing, and cloud computing, in terms of levels, workloads, metrics, coupling degree, data scales, and number of jobs or service instances. We also preliminarily report our ongoing work on the metrics and benchmarks for HVC systems, which is the foundation of designing innovative data center systems for HVC workloads.
Jia Zhen
Luo Chunjie
Sun Ninghui
Wang Lei
Zhan Jianfeng
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