Treffer: Toward Decentralized Intelligence: A Systematic Literature Review of Blockchain-Enabled AI Systems.

Title:
Toward Decentralized Intelligence: A Systematic Literature Review of Blockchain-Enabled AI Systems.
Authors:
Al Jasem, Mohamad Sheikho1 (AUTHOR), De Clark, Trevor1 (AUTHOR), Shrestha, Ajay Kumar1 (AUTHOR) ajay.shrestha@viu.ca
Source:
Information. Sep2025, Vol. 16 Issue 9, p765. 26p.
Database:
Academic Search Index

Weitere Informationen

The convergence of decentralized artificial intelligence (DAI), blockchain technology, and smart contracts is reshaping the design and governance of intelligent systems. As these technologies rapidly evolve, addressing privacy within their architecture, usage models, and associated risks has become increasingly critical. This systematic literature review examines architectural patterns, governance frameworks, real-world applications, and persistent challenges in DAI systems. It identifies prevailing designs such as federated learning integrated with consensus protocols, smart contract-based incentive mechanisms, and decentralized verification methods. Drawing from a diverse body of recent literature, the review highlights implementations across sectors, including healthcare, finance, IoT, autonomous systems, and intelligent infrastructure, each demonstrating significant contributions to privacy, security, and collaborative innovation. Despite these advancements, DAI systems face ongoing obstacles such as scalability limitations, privacy trade-offs, and difficulties with regulatory compliance. The review emphasizes the need for integrative governance approaches that balance transparency, accountability, incentive alignment, and ethical oversight. These elements are proposed as co-evolving pillars essential to establishing trustworthiness in decentralized AI ecosystems. This work offers a comprehensive review for understanding the current landscape and guiding the development of responsible and effective DAI systems in the Web3 era. [ABSTRACT FROM AUTHOR]