Global Decision Making Over Deep Variability in Feedback-Driven Software Development

J. Kienzle, B. Combemale, G. Mussbacher, Omar Alam, F. Bordeleau, Lola Burgueño, G. Engels, Jessie Galasso, J. Jézéquel, Bettina Kemme, Sébastien Mosser, H. Sahraoui, Maximilian Schiedermeier, Eugene Syriani
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Abstract

To succeed with the development of modern software, organizations must have the agility to adapt faster to constantly evolving environments to deliver more reliable and optimized solutions that can be adapted to the needs and environments of their stakeholders including users, customers, business, development, and IT. However, stakeholders do not have sufficient automated support for global decision making, considering the increasing variability of the solution space, the frequent lack of explicit representation of its associated variability and decision points, and the uncertainty of the impact of decisions on stakeholders and the solution space. This leads to an ad-hoc decision making process that is slow, error-prone, and often favors local knowledge over global, organization-wide objectives. The Multi-Plane Models and Data (MP-MODA) framework explicitly represents and manages variability, impacts, and decision points. It enables automation and tool support in aid of a multi-criteria decision making process involving different stakeholders within a feedback-driven software development process where feedback cycles aim to reduce uncertainty. We present the conceptual structure of the framework, discuss its potential benefits, and enumerate key challenges related to tool supported automation and analysis within MP-MODA.
反馈驱动软件开发中深度可变性的全局决策
为了成功地开发现代软件,组织必须具有敏捷性,以便更快地适应不断发展的环境,以交付更可靠和优化的解决方案,这些解决方案可以适应其涉众(包括用户、客户、业务、开发和IT)的需求和环境。然而,考虑到解决方案空间不断增加的可变性,相关可变性和决策点的明确表示的频繁缺乏,以及决策对涉众和解决方案空间影响的不确定性,涉众对全局决策制定没有足够的自动化支持。这导致了一个特别的决策制定过程,这个过程是缓慢的,容易出错的,并且经常倾向于局部知识而不是全局的,组织范围的目标。多平面模型和数据(MP-MODA)框架明确地表示和管理可变性、影响和决策点。在反馈驱动的软件开发过程中,它支持自动化和工具支持,以帮助涉及不同涉众的多标准决策制定过程,其中反馈周期旨在减少不确定性。我们提出了该框架的概念结构,讨论了其潜在的好处,并列举了MP-MODA中与工具支持的自动化和分析相关的关键挑战。
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