Monitoring Machine Learning Systems: A Multivocal Literature Review
September 17, 2025 Β· Declared Dead Β· π arXiv.org
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Authors
Hira Naveed, Scott Barnett, Chetan Arora, John Grundy, Hourieh Khalajzadeh, Omar Haggag
arXiv ID
2509.14294
Category
cs.SE: Software Engineering
Cross-listed
cs.LG
Citations
2
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Context: Dynamic production environments make it challenging to maintain reliable machine learning (ML) systems. Runtime issues, such as changes in data patterns or operating contexts, that degrade model performance are a common occurrence in production settings. Monitoring enables early detection and mitigation of these runtime issues, helping maintain users' trust and prevent unwanted consequences for organizations. Aim: This study aims to provide a comprehensive overview of the ML monitoring literature. Method: We conducted a multivocal literature review (MLR) following the well established guidelines by Garousi to investigate various aspects of ML monitoring approaches in 136 papers. Results: We analyzed selected studies based on four key areas: (1) the motivations, goals, and context; (2) the monitored aspects, specific techniques, metrics, and tools; (3) the contributions and benefits; and (4) the current limitations. We also discuss several insights found in the studies, their implications, and recommendations for future research and practice. Conclusion: Our MLR identifies and summarizes ML monitoring practices and gaps, emphasizing similarities and disconnects between formal and gray literature. Our study is valuable for both academics and practitioners, as it helps select appropriate solutions, highlights limitations in current approaches, and provides future directions for research and tool development.
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