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Cloud computing versus in-house clusters: a comparative study

机译:云计算与内部集群的比较研究

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Multi-core cloud clusters are best suited environment for academic institutions in the third world countries to gain supercomputing power and enable researchers to inquest new trends in scientific computing with affordable cost and less administrative load. This work aims to analyze the parallelism efficiency of a parallel computational fluid mechanics solver (the lattice Boltzmann method (LBM)) on multi-core cloud clusters. This paper demonstrates reliability and cost effectiveness of using tailor-made hired cloud clusters as compared to in-house high performance computing architecture. On these clusters we have found that the lattice Boltzmann implementation on a Cartesian grid is fully adaptive, highly flexible and cost effective to use for solving complex large fluid mechanical systems, such as flooding in real-time at a very low cost on leased cluster than in-house ones.
机译:多核云集群最适合第三世界国家的学术机构获得超级计算能力,并使研究人员能够以可承受的成本和更少的管理负担来探索科学计算的新趋势。这项工作旨在分析多核云集群上的并行计算流体力学求解器(格子Boltzmann方法(LBM))的并行效率。本文演示了与内部高性能计算体系结构相比,使用量身定制的租用云集群的可靠性和成本效益。在这些集群上,我们发现笛卡尔网格上的格子Boltzmann实现完全自适应,高度灵活且具有成本效益,可用于解决复杂的大型流体机械系统,例如以非常低的成本对租用集群进行实时驱油。内部的。

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