ADSEng: a model-based methodology for autonomous digital service engineering

Dhaminda B. Abeywickrama, E. Ovaska
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引用次数: 2

Abstract

In digital service ecosystems (DSEs), business stakeholders provide the most important driving factors and managing them is a challenge. It requires systems and services to handle uncertainty. Uncertainty in DSEs can be attributed to several factors; for example, dynamic nature and the unknown deployment environment, and change and evolution of requirements. Therefore, there is a need for novel software engineering methods and tools to handle these uncertainties in DSEs. In this regard, valuable lessons can be learnt from the autonomic computing (AC) paradigm and systems that are characterized by self-* properties. This paper proposes a novel, systematic service engineering methodology called ADSEng for ecosystem-based engineering of autonomous digital services. In the current research, the means of handling uncertainty from requirements to architecture and running systems are investigated. To do this, two interrelated research problems are studied: reflexivity that is realized using AC techniques, and evolvability of the ecosystem, supported by automated transformations. Our main contributions are: (i) a modeling methodology from uncertainty specification to runtime models and (ii) quality-driven adaptation patterns embodied by digital services. The paper also presents key lessons learnt from the research experience thus far.
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ADSEng:一种基于模型的自主数字服务工程方法
在数字服务生态系统(DSEs)中,业务利益相关者提供了最重要的驱动因素,管理它们是一项挑战。它需要系统和服务来处理不确定性。DSEs的不确定性可归因于几个因素;例如,动态性质和未知的部署环境,以及需求的变化和演变。因此,需要新的软件工程方法和工具来处理这些不确定性。在这方面,可以从自主计算(AC)范例和以自我属性为特征的系统中学到宝贵的经验。本文提出了一种新颖的系统服务工程方法,称为ADSEng,用于基于生态系统的自主数字服务工程。在当前的研究中,研究了从需求到体系结构和运行系统的不确定性处理方法。为此,我们研究了两个相互关联的研究问题:利用交流技术实现的自反性,以及由自动化转换支持的生态系统的可进化性。我们的主要贡献是:(i)从不确定性规范到运行时模型的建模方法和(ii)由数字服务体现的质量驱动的适应模式。本文还介绍了迄今为止从研究经验中吸取的主要教训。
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