Graph-Cut Based Coscheduling Strategy Towards Efficient Execution of Scientific Workflows in Collaborative Cloud Environments

Kefeng Deng, Junqiang Song, Kaijun Ren, Dong Yuan, Jinjun Chen
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引用次数: 15

Abstract

Recently, cloud computing has emerged as a promising computing infrastructure for performing scientific workflows by providing on-demand resources. Meanwhile, it is convenient for scientific collaboration since different cloud environments used by the researchers are connected through Internet. However, the significant latency arising from frequent access to large datasets and the corresponding data movements across geo-distributed data centers has been an obstacle to hinder the efficient execution of data-intensive scientific workflows. In this paper, we propose a novel graph-cut based data and task co scheduling strategy for minimizing the data transfer across geo-distributed data centers. Specifically, a dependency graph is firstly constructed from workflow provenance and cut into sub graphs according to the datasets which must appear in fixed data centers by a multiway cut algorithm. Then, the sub graphs might be recursively cut into smaller ones by a minimum cut algorithm referring to data correlation rules until all of them can well fit the capacity constraints of the data centers where the fixed location datasets reside. In this way, the datasets and tasks are distributed into target data centers while the total amount of data transfer between them is minimized. Additionally, a runtime scheduling algorithm is exploited to dynamically adjust the data placement during execution to prevent the data centers from overloading. Simulation results demonstrate that the total volume of data transfer across different data centers can be significantly reduced and the cost of performing scientific workflows on the clouds will be accordingly saved.
面向协同云环境下科学工作流高效执行的图切协同调度策略
最近,云计算已经成为一种很有前途的计算基础设施,通过提供按需资源来执行科学工作流。同时,研究人员使用的不同云环境通过互联网连接起来,为科学协作提供了便利。然而,频繁访问大型数据集和跨地理分布数据中心的相应数据移动所产生的显著延迟一直是阻碍数据密集型科学工作流程有效执行的障碍。在本文中,我们提出了一种新的基于图切的数据和任务协同调度策略,以最大限度地减少地理分布数据中心之间的数据传输。具体而言,首先从工作流来源构造依赖图,然后根据固定数据中心中必须出现的数据集,采用多路切割算法将依赖图分割成子图。然后,根据数据关联规则,通过最小切割算法将子图递归切割成更小的子图,直到所有子图都能很好地适应固定位置数据集所在数据中心的容量约束。这样可以将数据集和任务分散到目标数据中心,同时最大限度地减少目标数据中心之间的数据传输总量。此外,还利用运行时调度算法在执行期间动态调整数据位置,以防止数据中心过载。仿真结果表明,可以显著减少不同数据中心之间的数据传输总量,从而节省在云中执行科学工作流的成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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