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Lifecycle Management of Federated Learning Artifacts in Industrial Applications
Publikationstyp
Conference Paper
Date Issued
2023-05
Sprache
English
Author(s)
Ungersboeck, Michael
Start Page
7
End Page
15
Citation
7th IEEE International Conference on Fog and Edge Computing (ICFEC 2023)
Contribution to Conference
7th IEEE International Conference on Fog and Edge Computing, ICFEC 2023
Publisher DOI
Scopus ID
ISBN
9798350322880
In industrial settings, traditional centralized ap-proaches for training AI models can be insufficient due to limited training data. Industrial Federated Learning (IFL) offers a promising solution by enabling collaborative training across multiple industrial devices, while keeping data on-premises. In this paper, we propose a novel approach for supporting the development, deployment, integration and execution of IFL solutions. The proposed method provides a lifecycle management of FL artifacts and supports FL as a Service (FlaaS). This enables the extensibility and customizability of FL-based edge applications in industrial settings. Additionally, we introduce a federated clustering algorithm that we have integrated into a condition monitoring app running on client locations to evaluate the proposed lifecycle management. We run two scenarios with four and 33 clients using real-world time series data from industrial pumps. Our results show the applicability of the implemented lifecycle management and demonstrates that privacy-preserving approaches compete well with privacy-disclosing ones.
Subjects
Federated Learning
Lifecycle Management
MLE@TUHH