半自动化的逆向工程方法,推荐最佳的迁移到云策略

Behnaz Aghabalaee Bonab, O. Bushehrian
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引用次数: 1

摘要

在将遗留软件迁移到云的过程中,必须根据云基础设施和需求更改软件体系结构。为了达到这个目的,软件被分解(如果可能的话)为一组协作松散耦合的服务,部署在虚拟机上。这种分解背后的主要原理是从故障组件中提供简单快速的恢复,或者用可靠的云服务替换遗留软件的所需功能。本文提出了一种基于聚类算法的半自动化逆向工程方法,以推荐最佳迁移到云的策略。该建议基于四个已定义的指标:重新设计所需的工作量、维护成本、实现的可用性和使用的云服务数量。通过两个实例分析,讨论了该方法的有效性。
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A semi-automated reverse engineering method to recommend the best migration-to-cloud strategy
in migration of the legacy software to the cloud, the software architecture has to be changed according to the cloud infrastructure and requirements. To achieve this purpose, the software is decomposed (if possible) in to a set of collaborating loosely coupled services to be deployed on the virtual machines. The main rationale behind this decomposition is to provide easy and fast recovery from failed components or replacing the required functionality of the legacy software with the reliable cloud services. In this paper a semi-automated reverse engineering method based on the clustering algorithms is proposed to recommend the best migration-to-cloud strategy. The recommendation is based on four defined metrics: the extent of effort required for reengineering, maintenance costs, achieved availability and the number of cloud services that are used. The proposed method is applied two case studies and the effectiveness of this method is discussed.
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