Towards Measuring the Adaptability of an AO4BPEL Process
May 15, 2019 Β· Declared Dead Β· π Australasian Computer Science Week
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Authors
Khavee Agustus Botangen, Jian Yu, Michael Sheng
arXiv ID
1905.06438
Category
cs.SE: Software Engineering
Citations
3
Venue
Australasian Computer Science Week
Last Checked
4 months ago
Abstract
Adaptability is a significant property which enables software systems to continuously provide the required functionality and achieve optimal performance. The recognised importance of adaptability makes its evaluation an essential task. However, the various adaptability dimensions and implementation mechanisms make adaptive strategies difficult to evaluate. In service oriented computing, several frameworks that extend the WS-BPEL, the de facto standard in composing distributed business applications, focus on enabling the adaptability of processes. We aim to evaluate the adaptability of processes specified from the extended-BPEL frameworks. In this paper, we propose metrics to measure the adaptability of an AO4BPEL process. The metrics is grounded in the perspective that a process is capable of dynamically adapting to changes in business requirements. This opens potential future work on evaluating the adaptability of processes specified from various aspect-oriented WS-BPEL frameworks.
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