Can Multi-Agent Consensus Improve Quality Tradeoffs in Software Architecture Optimization?

J. A. D. Pace, Santiago A. Vidal, Antonela Tommasel, Sebastian Frank, A. Hoorn
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Abstract

When designing a software architecture to fulfill quality-attribute requirements, architects normally explore and assess alternative solutions leading to different quality-attribute tradeoffs. In this context, we developed the SQuAT framework to support automated multi-objective optimization in large design spaces. SQuAT provides a modular, multi-agent architecture in which each agent represents and optimizes a particular quality attribute. However, this search strategy has problems identifying tradeoffs that satisfy all the parties (or architects’ concerns), particularly when searching for many candidate solutions and evaluating them becomes computationally costly. This is actually a general challenge for architecture optimization tools. To deal with it, SQuAT features an agent negotiation protocol that seeks consensus based on the utility of solutions as judged by each agent. In this paper, we present a parameterized heuristic that enhances the integration between search and negotiation in SQuAT, and also report on an empirical evaluation with two case studies. The results show initial evidence that using negotiation is more effective than doing a pure search to identify solutions having a balanced utility across agents, and thus, offer alternative quality-attribute tradeoffs to the architect.
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多智能体共识能改善软件架构优化中的质量权衡吗?
当设计软件架构以满足质量属性需求时,架构师通常会探索和评估导致不同质量属性权衡的替代解决方案。在这种情况下,我们开发了蹲框架,以支持大型设计空间中的自动多目标优化。蹲提供了一个模块化的多代理体系结构,其中每个代理代表并优化一个特定的质量属性。然而,这种搜索策略在确定满足所有各方(或架构师关注的问题)的权衡方面存在问题,特别是在搜索许多候选解决方案并对它们进行评估的计算成本很高时。这实际上是架构优化工具面临的一个普遍挑战。为了解决这个问题,蹲下的特点是一个代理协商协议,它根据每个代理判断的解决方案的效用来寻求共识。在本文中,我们提出了一种参数化的启发式方法,增强了深蹲搜索和协商之间的整合,并报告了两个案例的实证评估。结果显示了最初的证据,使用协商比进行纯粹的搜索来识别具有跨代理的平衡效用的解决方案更有效,因此,为架构师提供了可选择的质量属性权衡。
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