Towards Perspective-Based Specification of Machine Learning-Enabled Systems

Hugo Villamizar, Marcos Kalinowski, H. Lopes
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引用次数: 5

Abstract

Machine learning (ML) teams often work on a project just to realize the performance of the model is not good enough. Indeed, the success of ML-enabled systems involves aligning data with business problems, translating them into ML tasks, experimenting with algorithms, evaluating models, capturing data from users, among others. Literature has shown that ML-enabled systems are rarely built based on precise specifications for such concerns, leading ML teams to become misaligned due to incorrect assumptions, which may affect the quality of such systems and overall project success. In order to help addressing this issue, this paper describes our work towards a perspective-based approach for specifying ML-enabled systems. The approach involves analyzing a set of 45 ML concerns grouped into five perspectives: objectives, user experience, infrastructure, model, and data. The main contribution of this paper is to provide two new artifacts that can be used to help specifying ML-enabled systems: (i) the perspective-based ML task and concern diagram and (ii) the perspective-based ML specification template.
基于透视的机器学习系统规范
机器学习(ML)团队经常在一个项目上工作,只是为了意识到模型的性能不够好。事实上,支持机器学习的系统的成功包括将数据与业务问题结合起来,将它们转化为机器学习任务,试验算法,评估模型,从用户那里获取数据等等。文献表明,支持ML的系统很少基于此类问题的精确规范构建,导致ML团队由于不正确的假设而变得不一致,这可能会影响此类系统的质量和整个项目的成功。为了帮助解决这个问题,本文描述了我们为指定支持ml的系统而采用的基于透视图的方法。该方法包括分析一组45个ML关注点,这些关注点分为五个方面:目标、用户体验、基础设施、模型和数据。本文的主要贡献是提供了两个新的工件,可用于帮助指定支持ML的系统:(i)基于透视图的ML任务和关注点图,以及(ii)基于透视图的ML规范模板。
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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