Adaptive model learning for continual verification of non-functional properties

R. Calinescu, Yasmin Rafiq, Kenneth Johnson, M. Bakir
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引用次数: 43

Abstract

A growing number of business and safety-critical services are delivered by computer systems designed to reconfigure in response to changes in workloads, requirements and internal state. In recent work, we showed how a formal technique called continual verification can be used to ensure that such systems continue to satisfy their reliability and performance requirements as they evolve, and we presented the challenges associated with the new technique. In this paper, we address important instances of two of these challenges, namely the maintenance of up-to-date reliability models and the adoption of continual verification in engineering practice. To address the first challenge, we introduce a new method for learning the parameters of the reliability models from observations of the system behaviour. This method is capable of adapting to variations in the frequency of the available system observations, yielding faster and more accurate learning than existing solutions. To tackle the second challenge, we present a new software engineering tool that enables developers to use our adaptive learning and continual verification in the area of service-based systems, without a formal verification background and with minimal effort.
用于持续验证非功能属性的自适应模型学习
越来越多的业务和安全关键服务是由计算机系统提供的,这些计算机系统可以根据工作负载、需求和内部状态的变化进行重新配置。在最近的工作中,我们展示了如何使用一种称为持续验证的正式技术来确保这样的系统在发展过程中继续满足它们的可靠性和性能需求,并且我们提出了与新技术相关的挑战。在本文中,我们解决了其中两个挑战的重要实例,即维护最新的可靠性模型和在工程实践中采用持续验证。为了解决第一个挑战,我们引入了一种新的方法,通过对系统行为的观察来学习可靠性模型的参数。这种方法能够适应可用系统观测频率的变化,产生比现有解决方案更快、更准确的学习。为了解决第二个挑战,我们提出了一个新的软件工程工具,它使开发人员能够在基于服务的系统领域使用我们的自适应学习和持续验证,而不需要正式的验证背景,并且只需要最小的努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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