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MLOps for cyber-physical production systems: challenges and solutions
University of Hildesheim, Institute of Computer Science, SSE, Universitätsplatz 1, Hildesheim, Germany.
Prodrive Technologies Innovation Services, Science Park 5501, Netherlands.
Capgemini Invent, Potsdamer Platz 5, Berlin, Germany.
University of Hildesheim, Institute of Computer Science, SSE, Universitätsplatz 1, Hildesheim, Germany.
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2025 (English)In: IEEE Software, ISSN 0740-7459, E-ISSN 1937-4194, Vol. 42, no 1, p. 65-73Article in journal (Refereed) Published
Abstract [en]

Machine Learning Operations (MLOps) involves software development practices for Machine Learning (ML), including data management, preprocessing, model training, deployment, and monitoring. While MLOps have received significant interest, much less work has been published addressing MLOps in industrial production settings lately, particularly if solutions are not cloud-based. This article addresses this shortcoming based on our and our partner’s real industrial experience in various projects. While there is a broad range of challenges for MLOps in cyber-physical production systems (CPPS), we focus on those related to data, models, and operations as we assume these will directly benefit the reader and provide solutions such as lightweight integration, integration of domain knowledge, periodic calibration, and interactive interfaces. In this way, we want to support practitioners in setting up industrial MLOps environments in CPPS. Further, we discuss explainability as an additional part of MLOps, which should be explored in more detail in the future.

Place, publisher, year, edition, pages
Institute of Electrical and Electronics Engineers (IEEE), 2025. Vol. 42, no 1, p. 65-73
Keywords [en]
Chemicals, Data models, Inspection, Production, Production systems, Task analysis, Training
National Category
Computer Sciences
Identifiers
URN: urn:nbn:se:umu:diva-228819DOI: 10.1109/MS.2024.3441101ISI: 001373292400004Scopus ID: 2-s2.0-105001084202OAI: oai:DiVA.org:umu-228819DiVA, id: diva2:1892488
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Vinnova, 2021-04336Available from: 2024-08-27 Created: 2024-08-27 Last updated: 2026-01-23Bibliographically approved

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Methnani, Leila

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