联邦云中生物信息学工作流高效执行的成本和时间预测

M. Rosa, Aleteia P. F. Araujo, Felipe L. S. Mendes
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引用次数: 8

摘要

云计算设计了一个有趣的计算模型,它提供了一组功能,如存储、数据库和处理能力,所有这些都可以作为服务提供。最近,云计算的概念已经扩展到联合云计算,其中不同的提供者相互连接,以集成和透明的方式向最终用户提供更多的资源。因此,在需要大量处理和/或存储能力的应用中,例如生物信息学中的工作流程,广泛鼓励使用云平台。操作此类工作流的用户面临着种类繁多且数量庞大的可用资源,因此很难为某个工作流选择正确的资源。这种测量远非微不足道,为了解决这个问题,本文提出了一种称为sPCR(成本预测和计算资源服务)的方法,该方法混合了GRASP元启发式和多元线性回归方法,目的是以透明的方式向用户描述资源的维度。此外,sPCR允许用户在高性能、低预算运行之间进行交互和选择,或者设置支付多少费用和完成工作流的时间,所有这些都是自动和透明的。结果表明,sPCR能够有效地估计工作流的资源、成本和执行时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cost and Time Prediction for Efficient Execution of Bioinformatics Workflows in Federated Cloud
Cloud computing has devised an interesting computational model which provides a set of features such as storage, database and processing power, all made available as services. Recently, the concept of cloud computing has been extended to federated cloud computing in which different providers interconnect to provide more resources in an integrated and transparent way to the end user. Thus, the use of cloud platforms has been widely encouraged in applications that require a lot of processing and/or storage power, such as workflows in Bioinformatics. Users who operate such workflows are faced with a very large variety and amount of available resources, making it difficult to choose the correct ones for a certain workflow. This measurement is far from trivial and, in order to address this problem, this paper proposes an approach called sPCR (Cost Prediction and Computational Resources Service), which mixes GRASP metaheuristics and the multiple linear regression method with the purpose of dimensioning the resources to the users in a transparent way. In addition, sPCR allows the user to interact and choose between high-performance, low-budget runs, or set how much to pay and how long to finish workflows, all automatically and transparently. The results show that sPCR is able to efficiently estimate the resources, costs and execution time of workflows.
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