Design Patterns for AI-based Systems: A Multivocal Literature Review and Pattern Repository

Lukas Heiland, Marius Hauser, J. Bogner
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引用次数: 1

Abstract

Systems with artificial intelligence components, so-called AI-based systems, have gained considerable attention recently. However, many organizations have issues with achieving production readiness with such systems. As a means to improve certain software quality attributes and to address frequently occurring problems, design patterns represent proven solution blueprints. While new patterns for AI-based systems are emerging, existing patterns have also been adapted to this new context.The goal of this study is to provide an overview of design patterns for AI-based systems, both new and adapted ones. We want to collect and categorize patterns, and make them accessible for researchers and practitioners. To this end, we first performed a multivocal literature review (MLR) to collect design patterns used with AI-based systems. We then integrated the created pattern collection into a web-based pattern repository to make the patterns browsable and easy to find.As a result, we selected 51 resources (35 white and 16 gray ones), from which we extracted 70 unique patterns used for AI-based systems. Among these are 34 new patterns and 36 traditional ones that have been adapted to this context. Popular pattern categories include architecture (25 patterns), deployment (16), implementation (9), or security & safety (9). While some patterns with four or more mentions already seem established, the majority of patterns have only been mentioned once or twice (51 patterns). Our results in this emerging field can be used by researchers as a foundation for follow-up studies and by practitioners to discover relevant patterns for informing the design of AI-based systems.
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基于人工智能系统的设计模式:多语种文献综述和模式库
具有人工智能组件的系统,即所谓的基于ai的系统,最近受到了相当大的关注。然而,许多组织在使用这样的系统实现生产就绪方面存在问题。作为改进某些软件质量属性和处理经常出现的问题的一种手段,设计模式代表了经过验证的解决方案蓝图。虽然基于人工智能的系统的新模式正在出现,但现有的模式也已经适应了这种新的环境。本研究的目的是概述基于ai的系统的设计模式,包括新的和经过调整的设计模式。我们希望收集和分类模式,并使研究人员和实践者能够访问它们。为此,我们首先进行了多语种文献综述(MLR),以收集基于人工智能的系统使用的设计模式。然后,我们将创建的模式集合集成到基于web的模式存储库中,以使模式易于浏览和查找。因此,我们选择了51个资源(35个白色资源和16个灰色资源),从中我们提取了70个用于基于ai的系统的独特模式。其中有34种新模式和36种传统模式已经适应了这种情况。流行的模式类别包括体系结构(25种模式)、部署(16种模式)、实现(9种模式)或安全性(9种模式)。虽然一些模式被提及四次或更多,但大多数模式只被提及一两次(51种模式)。我们在这个新兴领域的研究结果可以被研究人员用作后续研究的基础,也可以被实践者用来发现相关的模式,为基于人工智能的系统设计提供信息。
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