Cost-Driven Scheduling for Deadline-Constrained Workflow on Multi-clouds

Bing Lin, Wenzhong Guo, Guolong Chen, N. Xiong, Rongrong Li
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引用次数: 21

Abstract

The tremendous parallel computing ability of Cloud computing as a new service provisioning paradigm encourages investigators to research its drawbacks and advantages on processing large-scale scientific applications such as workflows. The current Cloud market is composed of numerous diverse Cloud providers and workflow scheduling is one of the biggest challenges on Multi-Clouds. However, the existing works fail to either satisfy the Quality of Service (QoS) requirements of end users or involve some fundamental principles of Cloud computing such as pay-as-you-go pricing model and heterogeneous computing resources. In this paper, we adapt the Partial Critical Paths algorithm (PCPA) for the multi-cloud environment and propose a scheduling strategy for scientific workflow, called Multi-Cloud Partial Critical Paths (MCPCP), which aims to minimize the execution cost of workflow while satisfying the defined deadline constrain. Our approach takes into account the essential characteristics on Multi-Clouds such as charge per time interval, various instance types from different Cloud providers as well as homogeneous intra-bandwidth vs. Heterogeneous inter-bandwidth. Various well-know workflows are used for evaluating our strategy and the experimental results show that the proposed approach has a good performance on Multi-Clouds.
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多云环境下期限约束工作流的成本驱动调度
云计算作为一种新的服务提供范式,其巨大的并行计算能力鼓励研究者研究其在处理大规模科学应用(如工作流)方面的优缺点。当前的云市场由众多不同的云提供商组成,工作流调度是多云最大的挑战之一。然而,现有的工作既不能满足最终用户对服务质量(QoS)的要求,也不能涉及云计算的一些基本原则,如按需付费的定价模式和异构计算资源。本文将部分关键路径算法(PCPA)应用于多云环境,提出了一种科学工作流调度策略——多云部分关键路径(MCPCP),该策略旨在使工作流的执行成本最小化,同时满足定义的时间约束。我们的方法考虑了多云的基本特征,比如每时间间隔收费、来自不同云提供商的各种实例类型,以及同质带宽内与异构带宽间的区别。实验结果表明,该方法在多云环境下具有良好的性能。
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