TL;DR
This survey reviews the state of software engineering approaches for AI-based systems, highlighting research trends, common challenges like data issues, and identifying gaps in areas such as software maintenance.
Contribution
It provides a comprehensive classification of SE approaches for AI systems based on SWEBOK areas and analyzes research trends and gaps from 248 studies.
Findings
Most studies published since 2018
Dependability and safety are the most studied properties
Data-related issues are the most recurrent challenges
Abstract
AI-based systems are software systems with functionalities enabled by at least one AI component (e.g., for image- and speech-recognition, and autonomous driving). AI-based systems are becoming pervasive in society due to advances in AI. However, there is limited synthesized knowledge on Software Engineering (SE) approaches for building, operating, and maintaining AI-based systems. To collect and analyze state-of-the-art knowledge about SE for AI-based systems, we conducted a systematic mapping study. We considered 248 studies published between January 2010 and March 2020. SE for AI-based systems is an emerging research area, where more than 2/3 of the studies have been published since 2018. The most studied properties of AI-based systems are dependability and safety. We identified multiple SE approaches for AI-based systems, which we classified according to the SWEBOK areas. Studies…
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