APPFLChain: A Privacy Protection Distributed Artificial-Intelligence Architecture Based on Federated Learning and Consortium Blockchain
Jun-Teng Yang, Wen-Yuan Chen, Che-Hua Li, Scott C.-H. Huang and, Hsiao-Chun Wu

TL;DR
APPFLChain integrates federated learning with consortium blockchain to enable secure, private, and decentralized AI model training among multiple parties, addressing security and trust issues inherent in centralized systems.
Contribution
The paper introduces a novel architecture combining Hyperledger Fabric blockchain with federated learning for secure, decentralized AI training in IoT environments.
Findings
Demonstrates high security and privacy in AI training
Achieves tamper-proof and traceable data management
Ensures reliable decision-making in a simulated real-world scenario
Abstract
Recent research in Internet of things has been widely applied for industrial practices, fostering the exponential growth of data and connected devices. Henceforth, data-driven AI models would be accessed by different parties through certain data-sharing policies. However, most of the current training procedures rely on the centralized data-collection strategy and a single computational server. However, such a centralized scheme may lead to many issues. Customer data stored in a centralized database may be tampered with so the provenance and authenticity of data cannot be justified. Once the aforementioned security concerns occur, the credibility of the trained AI models would be questionable and even unfavorable outcomes might be produced at the test stage. Lately, blockchain and AI, the two core technologies in Industry 4.0 and Web 3.0, have been explored to facilitate the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Blockchain Technology Applications and Security · Stochastic Gradient Optimization Techniques
MethodsTest
