MLOps: A Multiple Case Study in Industry 4.0
- URL: http://arxiv.org/abs/2407.09107v1
- Date: Fri, 12 Jul 2024 09:17:26 GMT
- Title: MLOps: A Multiple Case Study in Industry 4.0
- Authors: Leonhard Faubel, Klaus Schmid,
- Abstract summary: MLOps refers to the processes, tools, and organizational structures used to develop, test, deploy, and manage ML models reliably and efficiently.
This study describes four of the companies' Industry 4.0 scenarios and provides relevant insights into their implementation and the challenges they faced in numerous projects.
- Score: 0.8287206589886879
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: As Machine Learning (ML) becomes more prevalent in Industry 4.0, there is a growing need to understand how systematic approaches to bringing ML into production can be practically implemented in industrial environments. Here, MLOps comes into play. MLOps refers to the processes, tools, and organizational structures used to develop, test, deploy, and manage ML models reliably and efficiently. However, there is currently a lack of information on the practical implementation of MLOps in industrial enterprises. To address this issue, we conducted a multiple case study on MLOps in three large companies with dedicated MLOps teams, using established tools and well-defined model deployment processes in the Industry 4.0 environment. This study describes four of the companies' Industry 4.0 scenarios and provides relevant insights into their implementation and the challenges they faced in numerous projects. Further, we discuss MLOps processes, procedures, technologies, as well as contextual variations among companies.
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