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Multi-agent distributed adaptive resource allocation (MADARA)

机译:多主体分布式自适应资源分配(MADARA)

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摘要

The component placement problem involves mapping a component to a particular location and maximising component utility in grid and cloud systems. It is also an NP hard resource allocation and deployment problem, so many common grid and cloud computing libraries, such as MPICH and Hadoop, do not address this problem, even though large performance gains can occur by optimising communications between nodes. This paper provides four contributions to research on the component placement problem for grid and cloud computing environments. First, we present the multi-agent distributed adaptive resource allocation (MADARA) toolkit, which is designed to address grid and cloud allocation and deployment needs. Second, we present a heuristic called the comparison-based iteration by degree (CID) heuristic, which we use to approximate optimal deployments in MADARA. Third, we analyse the performance of applying the CID heuristic to approximate common grid and cloud operations, such as broadcast, gather and reduce. Fourth, we evaluate the results of applying genetic programming mutation to improve our CID heuristic.
机译:组件放置问题涉及将组件映射到特定位置,并最大化网格和云系统中的组件实用程序。这也是NP硬资源分配和部署的问题,因此,即使通过优化节点之间的通信可以提高性能,许多常见的网格和云计算库(例如MPICH和Hadoop)也无法解决此问题。本文为网格和云计算环境中的组件放置问题的研究提供了四点贡献。首先,我们介绍多代理分布式自适应资源分配(MADARA)工具包,该工具包旨在解决网格和云的分配和部署需求。其次,我们提出一种启发式方法,称为基于程度的基于比较的迭代(CID)启发式方法,该方法可用于估计MADARA中的最佳部署。第三,我们分析了将CID启发式方法应用于常见的网格和云操作(例如广播,收集和归约)的性能。第四,我们评估了应用基因编程突变来改善CID启发式方法的结果。

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