Industrial MLOps: a systematic review of architectures and implementation challenges
Review article, 2026

The rise of advanced digitalization in Industry 4.0 has enabled manufacturers to leverage data through AI and ML solutions for various manufacturing challenges. However, integrating these models into factory settings remains challenging, as models that perform well on static datasets struggle with dynamic shop floor data. MLOps is an emerging discipline focused on bridging the gap between ML models and production environments; however, in the manufacturing domain, questions remain about how to effectively deploy ML models using MLOps. This article addresses these gaps by conducting a systematic literature review combined with thematic analysis to explore architectures and frameworks used to adopt MLOps in real-world industrial applications, referred to here as industrial MLOps. The study identifies key architectural requirements and outlines seven implementation challenges, with recommendations and architecture mappings to overcome them. Results show that fully automated MLOps frameworks remain underdeveloped, and that modular, scalable architectures are recommended to address model drift, data quality, and integration challenges.

Machine learning operations (MLOps)

machine learning (ML)

systematic literature review (SLR)

deployment challenges

artificial intelligence (AI)

Author

Mohan Rajashekarappa

Chalmers, Industrial and Materials Science, Production Systems

Ebru Turanoglu Bekar

Chalmers, Industrial and Materials Science, Production Systems

Alexander Karlsson

University of Skövde

Jon Bokrantz

Chalmers, Industrial and Materials Science, Production Systems

Mukund Subramaniyan

Volvo Group

Anders Skoogh

Chalmers, Industrial and Materials Science, Production Systems

Production and Manufacturing Research

2169-3277 (eISSN)

Vol. 14 1 2658878

Trustworthy Predictive Maintenance TPdM

VINNOVA (2022-01710), 2022-09-30 -- 2025-09-29.

Subject Categories (SSIF 2025)

Software Engineering

Computer Sciences

Areas of Advance

Production

DOI

10.1080/21693277.2026.2658878

More information

Latest update

4/28/2026