Abstract:
As the adoption of federated learning (FL) in the manufacturing industry grows and systems get increasingly complex, a need to inspect their behavior arises. Stakeholders...Show MoreMetadata
Abstract:
As the adoption of federated learning (FL) in the manufacturing industry grows and systems get increasingly complex, a need to inspect their behavior arises. Stakeholders of the FL process want a more transparent system to understand the current state and analyze how its performance changed over time. However, current representation approaches are often not designed for industrial applications and do not cover the entire FL model lifecycle. We propose the lifecycle dashboard, which considers the different requirements and perspectives of industrial stakeholders by visualizing information from the FL server. In addition, our representation approach is generic enough to be applied to different use cases and industries. We evaluate the lifecycle dashboard in a semistructured expert interview, show improvements in the understandability of FL systems, and discuss possible use cases in the industry.
Published in: IEEE Pervasive Computing ( Volume: 22, Issue: 1, 01 Jan.-March 2023)
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- IEEE Keywords
- Index Terms
- Federated Learning ,
- Training Data ,
- Similar Conditions ,
- Supply Chain ,
- Systemic Conditions ,
- Machine Learning Models ,
- Global Model ,
- Internet Of Things ,
- Manufacturing Industry ,
- Updated Model ,
- Anomaly Detection ,
- Consumption Of Services ,
- Machine Operators ,
- Central Server ,
- Representative Approaches ,
- Edge Devices ,
- Smart Manufacturing ,
- Predictive Maintenance ,
- Communication Rounds ,
- Federated Learning Model ,
- Original Equipment Manufacturers ,
- Specific Use Case ,
- Client Management ,
- Current Status ,
- Local Dataset ,
- Graph In Fig ,
- Life Cycle Stages ,
- Sudden Changes ,
- Specific Client ,
- Local Machine
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Federated Learning ,
- Training Data ,
- Similar Conditions ,
- Supply Chain ,
- Systemic Conditions ,
- Machine Learning Models ,
- Global Model ,
- Internet Of Things ,
- Manufacturing Industry ,
- Updated Model ,
- Anomaly Detection ,
- Consumption Of Services ,
- Machine Operators ,
- Central Server ,
- Representative Approaches ,
- Edge Devices ,
- Smart Manufacturing ,
- Predictive Maintenance ,
- Communication Rounds ,
- Federated Learning Model ,
- Original Equipment Manufacturers ,
- Specific Use Case ,
- Client Management ,
- Current Status ,
- Local Dataset ,
- Graph In Fig ,
- Life Cycle Stages ,
- Sudden Changes ,
- Specific Client ,
- Local Machine