Seamless Integration: Sampling Strategies in Federated Learning Systems
Tatjana Legler, Vinit Hegiste, Martin Ruskowski

TL;DR
This paper examines the challenges and strategies for integrating new clients into federated learning systems, emphasizing data heterogeneity, system stability, and scalability to improve distributed model training.
Contribution
It introduces novel client selection strategies and solutions for maintaining stability and scalability in federated learning with diverse, dynamic clients.
Findings
Effective client selection improves model performance.
Integration strategies enhance system stability and scalability.
Practical approaches demonstrated on optical quality inspection images.
Abstract
Federated Learning (FL) represents a paradigm shift in the field of machine learning, offering an approach for a decentralized training of models across a multitude of devices while maintaining the privacy of local data. However, the dynamic nature of FL systems, characterized by the ongoing incorporation of new clients with potentially diverse data distributions and computational capabilities, poses a significant challenge to the stability and efficiency of these distributed learning networks. The seamless integration of new clients is imperative to sustain and enhance the performance and robustness of FL systems. This paper looks into the complexities of integrating new clients into existing FL systems and explores how data heterogeneity and varying data distribution (not independent and identically distributed) among them can affect model training, system efficiency, scalability and…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
