Defining Quality Requirements for a Trustworthy AI Wildflower Monitoring Platform
March 23, 2023 Β· Declared Dead Β· π 2023 IEEE/ACM 2nd International Conference on AI Engineering β Software Engineering for AI (CAIN)
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Authors
Petra Heck, Gerard Schouten
arXiv ID
2303.13151
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.SE
Citations
2
Venue
2023 IEEE/ACM 2nd International Conference on AI Engineering β Software Engineering for AI (CAIN)
Last Checked
4 months ago
Abstract
For an AI solution to evolve from a trained machine learning model into a production-ready AI system, many more things need to be considered than just the performance of the machine learning model. A production-ready AI system needs to be trustworthy, i.e. of high quality. But how to determine this in practice? For traditional software, ISO25000 and its predecessors have since long time been used to define and measure quality characteristics. Recently, quality models for AI systems, based on ISO25000, have been introduced. This paper applies one such quality model to a real-life case study: a deep learning platform for monitoring wildflowers. The paper presents three realistic scenarios sketching what it means to respectively use, extend and incrementally improve the deep learning platform for wildflower identification and counting. Next, it is shown how the quality model can be used as a structured dictionary to define quality requirements for data, model and software. Future work remains to extend the quality model with metrics, tools and best practices to aid AI engineering practitioners in implementing trustworthy AI systems.
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