LAPSE:2025.0454
Published Article

LAPSE:2025.0454
A Comparative Analysis of Industrial MLOps prototype for ML Application Deployment at the edge devices
June 27, 2025
Abstract
This paper introduces a prototype for constructing an edge AI system utilizing the contemporary Machine Learning Operations (MLOps) concept. By employing microcontrollers such as the Raspberry Pi as hardware, our methodology includes data scrubbing and machine learning model deployment on edge devices. Crucially, the MLOps pipeline is fully developed within the ecoKI platform, a research platform for ML/AI applications. In this study, we thoroughly investigate the performance of our ecoKI platform by comparing it with the established Edge Impulse platform. We deployed the ML model with different weight quantization methods, such as FP32 and INT8, to compare accuracy variations and inference speed between these two platforms and quantization strategies on edge devices. In our experiments, we identified that the average accuracy performance of the ecoKI platform is 3.61% better than the edge impulse. Moreover, real-time AI processing on edge devices enables microcontrollers, even those with limited resources, to effectively handle tasks in areas such as predictive maintenance, process optimization, quality assurance, and supply chain management.
This paper introduces a prototype for constructing an edge AI system utilizing the contemporary Machine Learning Operations (MLOps) concept. By employing microcontrollers such as the Raspberry Pi as hardware, our methodology includes data scrubbing and machine learning model deployment on edge devices. Crucially, the MLOps pipeline is fully developed within the ecoKI platform, a research platform for ML/AI applications. In this study, we thoroughly investigate the performance of our ecoKI platform by comparing it with the established Edge Impulse platform. We deployed the ML model with different weight quantization methods, such as FP32 and INT8, to compare accuracy variations and inference speed between these two platforms and quantization strategies on edge devices. In our experiments, we identified that the average accuracy performance of the ecoKI platform is 3.61% better than the edge impulse. Moreover, real-time AI processing on edge devices enables microcontrollers, even those with limited resources, to effectively handle tasks in areas such as predictive maintenance, process optimization, quality assurance, and supply chain management.
Record ID
Keywords
Artificial Intelligence, Big Data, Edge Intelligence, Energy Efficiency, Industry 40, Machine Learning
Suggested Citation
Rani F, Jose F, Vogt L, Urbas L. A Comparative Analysis of Industrial MLOps prototype for ML Application Deployment at the edge devices. Systems and Control Transactions 4:1878-1883 (2025) https://doi.org/10.69997/sct.152203
Author Affiliations
Rani F: Faculty of Electrical and Computer Engineering, Chair of Process Control Systems & Process Systems Engineering Group,; Process-to-Order-Group, TUD Dresden University of Technology, 01069 Dresden, Germany
Jose F: Faculty of Electrical and Computer Engineering, Chair of Process Control Systems & Process Systems Engineering Group,; Process-to-Order-Group, TUD Dresden University of Technology, 01069 Dresden, Germany
Vogt L: Faculty of Electrical and Computer Engineering, Chair of Process Control Systems & Process Systems Engineering Group,; Process-to-Order-Group, TUD Dresden University of Technology, 01069 Dresden, Germany
Urbas L: Faculty of Electrical and Computer Engineering, Chair of Process Control Systems & Process Systems Engineering Group,; Process-to-Order-Group, TUD Dresden University of Technology, 01069 Dresden, Germany
Jose F: Faculty of Electrical and Computer Engineering, Chair of Process Control Systems & Process Systems Engineering Group,; Process-to-Order-Group, TUD Dresden University of Technology, 01069 Dresden, Germany
Vogt L: Faculty of Electrical and Computer Engineering, Chair of Process Control Systems & Process Systems Engineering Group,; Process-to-Order-Group, TUD Dresden University of Technology, 01069 Dresden, Germany
Urbas L: Faculty of Electrical and Computer Engineering, Chair of Process Control Systems & Process Systems Engineering Group,; Process-to-Order-Group, TUD Dresden University of Technology, 01069 Dresden, Germany
Journal Name
Systems and Control Transactions
Volume
4
First Page
1878
Last Page
1883
Year
2025
Publication Date
2025-07-01
Version Comments
Original Submission
Other Meta
PII: 1878-1883-1625-SCT-4-2025, Publication Type: Journal Article
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LAPSE:2025.0454
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https://doi.org/10.69997/sct.152203
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Jun 27, 2025
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References Cited
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