Non-functional Requirements for Machine Learning: Understanding Current Use and Challenges in Industry
Paper in proceeding, 2021

Machine Learning (ML) is an application of Artificial Intelligence (AI) that uses big data to produce complex predictions and decision-making systems, which would be challenging to obtain otherwise. To ensure the success of ML-enabled systems, it is essential to be aware of certain qualities of ML solutions (performance, transparency, fairness), known from a Requirement Engineering (RE) perspective as non-functional requirements (NFRs). However, when systems involve ML, NFRs for traditional software may not apply in the same ways; some NFRs may become more prominent or less important; NFRs may be defined over the ML model, data, or the entire system; and NFRs for ML may be measured differently. In this work, we aim to understand the state-of-the-art and challenges of dealing with NFRs for ML in industry. We interviewed ten engineering practitioners working with NFRs and ML. We find examples of (1) the identification and measurement of NFRs for ML, (2) identification of more and less important NFRs for ML, and (3) the challenges associated with NFRs and ML in the industry. This knowledge paints a picture of how ML-related NFRs are treated in practice and helps to guide future RE for ML efforts.

Author

Jennifer Horkoff

Software Engineering 1

University of Gothenburg

Khan Mohammad Habibullah

University of Gothenburg

Software Engineering 1

Proceedings of the IEEE International Conference on Requirements Engineering

1090705X (ISSN) 23326441 (eISSN)

13-23
9781665428569 (ISBN)

29th IEEE International Requirements Engineering Conference, RE 2021
Virtual, Notre Dame, USA,

Subject Categories (SSIF 2025)

Software Engineering

Computer Sciences

DOI

10.1109/RE51729.2021.00009

More information

Latest update

6/30/2025