Hierarchical and Decentralised Federated Learning
Omer Rana, Theodoros Spyridopoulos, Nathaniel Hudson, Matt Baughman,, Kyle Chard, Ian Foster, Aftab Khan

TL;DR
Hierarchical Federated Learning extends traditional FL by enabling multi-level model aggregation suited for complex cyber-physical systems, improving efficiency, privacy, and adaptability across diverse deployment environments.
Contribution
This paper introduces Hierarchical Federated Learning, a novel extension of FL that addresses challenges in resource management, privacy, and model personalization in complex distributed systems.
Findings
Enhances model aggregation efficiency in IoT environments
Balances global and local model personalization
Reduces communication costs and improves performance
Abstract
Federated learning has shown enormous promise as a way of training ML models in distributed environments while reducing communication costs and protecting data privacy. However, the rise of complex cyber-physical systems, such as the Internet-of-Things, presents new challenges that are not met with traditional FL methods. Hierarchical Federated Learning extends the traditional FL process to enable more efficient model aggregation based on application needs or characteristics of the deployment environment (e.g., resource capabilities and/or network connectivity). It illustrates the benefits of balancing processing across the cloud-edge continuum. Hierarchical Federated Learning is likely to be a key enabler for a wide range of applications, such as smart farming and smart energy management, as it can improve performance and reduce costs, whilst also enabling FL workflows to be deployed…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Smart Cities and Technologies · Mobile Crowdsensing and Crowdsourcing
