HLF-FSL. A Decentralized Federated Split Learning Solution for IoT on Hyperledger Fabric
HLF-FSL. A Decentralized Federated Split Learning Solution for IoT on Hyperledger Fabric
Collaborative machine learning in sensitive domains demands scalable, privacy preserving solutions for enterprise deployment. Conventional Federated Learning (FL) relies on a central server, introducing single points of failure and privacy risks, while Split Learning (SL) partitions models for privacy but scales poorly due to sequential training. We present a decentralized architecture that combines Federated Split Learning (FSL) with the permissioned blockchain Hyperledger Fabric (HLF). Our chaincode orchestrates FSL's split model execution and peer-to-peer aggregation without any central coordinator, leveraging HLF's transient fields and Private Data Collections (PDCs) to keep raw data and model activations private. On CIFAR-10 and MNIST benchmarks, HLF-FSL matches centralized FSL accuracy while reducing per epoch training time compared to Ethereum-based works. Performance and scalability tests show minimal blockchain overhead and preserved accuracy, demonstrating enterprise grade viability.
Carlos Beis Penedo、Rebeca P. Díaz Redondo、Ana Fernández Vilas、Manuel Fernández Veiga、Francisco Troncoso Pastoriza
计算技术、计算机技术
Carlos Beis Penedo,Rebeca P. Díaz Redondo,Ana Fernández Vilas,Manuel Fernández Veiga,Francisco Troncoso Pastoriza.HLF-FSL. A Decentralized Federated Split Learning Solution for IoT on Hyperledger Fabric[EB/OL].(2025-07-10)[2025-07-21].https://arxiv.org/abs/2507.07637.点此复制
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