R-CASS:基于算法选择的自适应服务导向系统

N. Deshpande, Naveen Sharma, Qi Yu, Daniel E. Krutz
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引用次数: 1

摘要

在服务组合中,通过组合web服务来构建复杂的应用程序,以满足用户服务质量(QoS)和业务需求。为了满足这些需求,应用程序是通过使用搜索算法评估所有可能的web服务组合来组成的。这些算法需要准确和廉价,以评估大量可能的服务组合和服务的QoS属性波动,同时满足有限计算资源的约束。最近的研究表明,在解决方案质量和计算资源使用方面,不同的搜索算法可以在问题域的特定实例上优于其他算法。有问题的是,当前的服务组合方法忽略了这个属性,导致组合效率低下。为了解决这些限制,我们提出了一个组合算法选择框架,它在运行时为每个组合任务选择一个算法,R-CASS。我们的评估表明,R-CASS可以提高作文的效率,减少了55.1%的作文时间和37.5%的内存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
R-CASS: Using Algorithm Selection for Self-Adaptive Service Oriented Systems
In service composition, complex applications are built by combining web services to fulfill user Quality of Service (QoS) and business requirements. To meet these requirements, applications are composed by evaluating all possible web service combinations using search algorithms. These algorithms need to be accurate and inexpensive to evaluate a large number of possible service combinations and services' fluctuating QoS attributes while meeting the constraints of limited computational resources. Recent research has shown that different search algorithms can outperform others on specific instances of a problem domain, in terms of solution quality and computational resource usage. Problematically, current service composition approaches ignore this property, leading to inefficient compositions. To address these limitations, we propose a composition algorithm selection framework which selects an algorithm per composition task at runtime, R-CASS. Our evaluations demonstrate that R-CASS leads to more efficient compositions, reducing composition time by 55.1% and memory by 37.5%.
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