Blockchain-Enabled Federated Learning

Explainable & Ethical AI
Published: arXiv: 2508.06406v1
Authors

Murtaza Rangwala Venugopal K R Rajkumar Buyya

Abstract

Blockchain-enabled federated learning (BCFL) addresses fundamental challenges of trust, privacy, and coordination in collaborative AI systems. This chapter provides comprehensive architectural analysis of BCFL systems through a systematic four-dimensional taxonomy examining coordination structures, consensus mechanisms, storage architectures, and trust models. We analyze design patterns from blockchain-verified centralized coordination to fully decentralized peer-to-peer networks, evaluating trade-offs in scalability, security, and performance. Through detailed examination of consensus mechanisms designed for federated learning contexts, including Proof of Quality and Proof of Federated Learning, we demonstrate how computational work can be repurposed from arbitrary cryptographic puzzles to productive machine learning tasks. The chapter addresses critical storage challenges by examining multi-tier architectures that balance blockchain's transaction constraints with neural networks' large parameter requirements while maintaining cryptographic integrity. A technical case study of the TrustMesh framework illustrates practical implementation considerations in BCFL systems through distributed image classification training, demonstrating effective collaborative learning across IoT devices with highly non-IID data distributions while maintaining complete transparency and fault tolerance. Analysis of real-world deployments across healthcare consortiums, financial services, and IoT security applications validates the practical viability of BCFL systems, achieving performance comparable to centralized approaches while providing enhanced security guarantees and enabling new models of trustless collaborative intelligence.

Paper Summary

Key Innovation
The innovative solution proposed by this research is the use of blockchain technology to enable federated learning. Federated learning allows devices or organizations to collaborate on machine learning tasks without sharing their private data, but traditional approaches can be limited by trust issues and coordination challenges. The integration of blockchain technology provides a secure, transparent, and decentralized framework for collaborative learning.
Practical Impact
The practical impact of this research is the potential for new models of collaborative intelligence that can unlock the benefits of machine learning while respecting privacy and security constraints. This could enable healthcare consortiums to develop more accurate diagnostic systems, financial institutions to improve fraud detection, or IoT devices to collaborate on threat detection and response.
Analogy / Intuitive Explanation
Imagine a group of experts working together to solve a complex puzzle without sharing their individual pieces. Each expert has a unique perspective and insights that can help solve the puzzle, but they don't trust each other enough to share their entire piece. Blockchain-enabled federated learning is like creating a secure, transparent, and decentralized framework for these experts to work together, combining their individual insights to create a complete and accurate solution. In this analogy, the blockchain serves as the "puzzle board" where the experts can contribute their pieces (data) without sharing them with each other. The federated learning algorithm is like the "puzzle solver" that combines the individual pieces to create a complete and accurate solution. This framework enables collaboration while maintaining the privacy and security of each expert's contributions.
Paper Information
Categories:
cs.DC cs.LG
Published Date:

arXiv ID:

2508.06406v1

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