Defining Emergent Software Using Continuous Self-Assembly, Perception, and Learning

Roberto Rodrigues Filho, Barry Porter
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引用次数: 33

Abstract

Architectural self-organisation, in which different configurations of software modules are dynamically assembled based on the current context, has been shown to be an effective way for software to self-optimise over time. Current approaches to this rely heavily on human-led definitions: models, policies, and processes to control how self-organisation works. We present the case for a paradigm shift to fully emergent computer software that places the burden of understanding entirely into the hands of software itself. These systems are autonomously assembled at runtime from discovered constituent parts and their internal health and external deployment environment continually monitored. An online, unsupervised learning system then uses runtime adaptation to continuously explore alternative system assemblies and locate optimal solutions. Based on our experience over the past 3 years, we define the problem space of emergent software and present a working case study of an emergent web server as a concrete example of the paradigm. Our results demonstrate two main aspects of the problem space for this case study: that different assemblies of behaviour are optimal in different deployment environment conditions and that these assemblies can be autonomously learned from generalised perception data while the system is online.
使用连续的自组装、感知和学习来定义紧急软件
架构自组织,其中软件模块的不同配置是基于当前上下文动态组装的,已被证明是软件随着时间的推移进行自我优化的有效方法。目前解决这一问题的方法严重依赖于人类主导的定义:控制自组织如何运作的模型、政策和流程。我们提出了一个范例转移到完全紧急的计算机软件的案例,将理解的负担完全交给软件本身。这些系统是在运行时根据发现的组成部分自主组装的,它们的内部运行状况和外部部署环境会持续受到监控。然后,一个在线的、无监督的学习系统使用运行时适应性来不断探索可选择的系统组件并找到最佳解决方案。根据我们过去3年的经验,我们定义了紧急软件的问题空间,并给出了一个紧急web服务器的工作案例研究,作为范例的具体例子。我们的结果展示了本案例研究的问题空间的两个主要方面:不同的行为集合在不同的部署环境条件下是最佳的,这些集合可以在系统在线时从广义感知数据中自主学习。
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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