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引用次数: 14
摘要
本文介绍了QoS explorer,这是一个我们开发的交互式工具,它可以从工作流组成部分的QoS特征预测工作流的服务质量(QoS),即使涉及的关系很复杂。这有助于工作流的设计和实例化,以满足QoS约束,因为它使用户能够发现并将精力集中在工作流中最影响其主要QoS关注点的方面,从而提高工作流开发的效率。此外,我们使用的基础模型比最近类似工作的模型更复杂(Jaeger等人,2005;Ardagna and Pernici, 2005;Menasce, 2004),并包括处理整个统计分布和概率状态(而不是其他地方使用的简单数字常量),以模拟执行时间等非常量变量
QoS Explorer: A Tool for Exploring QoS in Composed Services
This paper presents QoS explorer, an interactive tool we have developed which predicts quality of service (QoS) of a workflow from the QoS characteristics of its constituents, even when the relationships involved are complex. This facilitates design and instantiation of workflows to satisfy QoS constraints, as it enables the user to discover and focus effort on the aspects of a workflow which most affect their primary QoS concerns, thus improving efficiency of workflow development. Further, the underlying model we use is more sophisticated than those of similar recent work (Jaeger et al., 2005; Ardagna and Pernici, 2005; Menasce, 2004), and includes processing of entire statistical distributions and probabilistic states (instead of the simple numeric constants used elsewhere) to model such non-constant variables as execution time