Understanding and Managing Non-functional Requirements for Machine Learning Systems
Licentiatavhandling, 2023
Objective: The research project focuses on addressing and managing issues related to NFRs for ML systems. The objective of the research is to identify current practices and challenges related to NFRs in an ML context, and to develop solutions to manage NFRs for ML systems.
Method: We are using design science as a base of the research method. We carried out different empirical methodologies–including interviews, survey, and a part of systematic mapping study to collect data, and to explore the problem space. To get in-depth insights on collected data, we performed thematic analysis on qualitative data and used descriptive statistics to analyze qualitative data. We are working towards proposing a quality framework as an artifact to identify, define, specify, and manage NFRs for ML systems.
Findings: We found that NFRs are crucial and play an important role for the success of the ML systems. However, there is a research gap in this area, and managing NFRs for ML systems is challenging. To address the research objectives, we have identified important NFRs for ML systems, and NFR and NFR measurement-related challenges. We also identified preliminary NFR definition and measurement scope and RE-related challenges in different example contexts.
Conclusion: Although NFRs are very important for ML systems, it is complex and difficult to define, allocate, specify, and measure NFRs for ML systems. Currently the industry and research is does not have specific and well organized solutions for managing NFRs for ML systems because of unintended bias, the non-deterministic behavior of ML, and expensive and time-consuming exhaustive testing. Currently, we are working on the development of a quality framework to manage (e.g., identify important NFRs, scoping and measuring NFRs) NFRs in the ML systems development process.
Requirements Engineering
Quality Requirements
Machine Learning
NFRs
Non-functional Requirements
Författare
Khan Mohammad Habibullah
Chalmers, Data- och informationsteknik, Software Engineering
Non-functional requirements for machine learning: understanding current use and challenges among practitioners
Requirements Engineering,;Vol. In Press(2023)
Artikel i vetenskaplig tidskrift
Non-Functional Requirements for Machine Learning: An Exploration of System Scope and Interest
International Workshop on Software Engineering for Responsible Artificial Intelligence,;(2022)p. 29-36
Paper i proceeding
Non-functional requirements for machine learning: understanding current use and challenges in industry
Requirements Engineering for Automotive Perception Systems: An Interview Study
Automotive Perception Software Development: An Empirical Investigation into Data, Annotation, and Ecosystem Challenges
Ämneskategorier
Programvaruteknik
Datavetenskap (datalogi)
Utgivare
Chalmers
CSE Jupiter 473
Opponent: Angelo Susi, Senior Researcher, Head of Software Engineering Unit, Foundation Bruno Kessler (FBK), Trento, Italy