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首页> 外文期刊>IEEE Transactions on Emerging Topics in Computational Intelligence >Multi-Objective Data Placement for Workflow Management in Cloud Infrastructure Using NSGA-II
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Multi-Objective Data Placement for Workflow Management in Cloud Infrastructure Using NSGA-II

机译:使用NSGA-II在云基础设施中工作流管理的多目标数据放置

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摘要

The cloud computing paradigm provides massive storage and rich computing resources for workflow deployment and implementation. Nevertheless, workflow applications (e.g., meteorological prediction and financial analysis) are usually data intensive, and substantial data resources with privacy information tend to be accessed during the workflow implementation. Therefore, it remains challenging to design a data placement method for seeking tradeoffs among multiple performance metrics, i.e., resource usage, data acquisition time, and energy cost, while avoiding privacy conflicts of information-overlapping datasets for workflow implementation of the cloud infrastructure. To address this challenge, a multi-objective data placement method for workflow management in the cloud infrastructure with privacy protection is proposed in this paper. Technically, the BCube topology is adopted to establish the resource model in the cloud infrastructure, and the potential privacy conflicts of datasets required for workflow implementation are analyzed. Then, a non-dominated sorting genetic algorithm II is leveraged to promote the resource usage, reduce the data acquisition time, and optimize the energy cost of the cloud infrastructure, while achieving the privacy protection for data placement. Finally, experimental evaluations demonstrate that the performance of the cloud infrastructure is optimized for workflow management.
机译:云计算范例为工作流部署和实现提供了大量存储和丰富的计算资源。然而,工作流程应用程序(例如,气象预测和财务分析)通常是数据密集型的,并且在工作流实现期间往往会访问具有隐私信息的大量数据资源。因此,设计用于在多个性能度量,即资源使用,数据采集时间和能量成本之间寻求权衡的数据放置方法仍然具有挑战性,同时避免了云基础设施的工作流实现的信息 - 重叠数据集的隐私冲突。为了解决这一挑战,本文提出了一种具有隐私保护的云基础架构工作流管理的多目标数据放置方法。从技术上讲,采用BCube拓扑在云基础设施中建立资源模型,分析工作流实现所需的数据集的潜在隐私冲突。然后,利用非主导的分类遗传算法II以促进资源使用,减少数据采集时间,并优化云基础设施的能量成本,同时实现了对数据放置的隐私保护。最后,实验评估表明,云基础架构的性能针对工作流管理进行了优化。

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