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What is Software Quality for AI Engineers? Towards a Thinning of the Fog

2022-03-23 19:43:35
Valentina Golendukhina, Valentina Lenarduzzi, Michael Felderer
   

Abstract

It is often overseen that AI-enabled systems are also software systems and therefore rely on software quality assurance (SQA). Thus, the goal of this study is to investigate the software quality assurance strategies adopted during the development, integration, and maintenance of AI/ML components and code. We conducted semi-structured interviews with representatives of ten Austrian SMEs that develop AI-enabled systems. A qualitative analysis of the interview data identified 12 issues in the development of AI/ML components. Furthermore, we identified when quality issues arise in AI/ML components and how they are detected. The results of this study should guide future work on software quality assurance processes and techniques for AI/ML components.

Abstract (translated)

URL

https://arxiv.org/abs/2203.12697

PDF

https://arxiv.org/pdf/2203.12697.pdf


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