학술논문

Decentralized Intelligence Network (DIN)
Document Type
Working Paper
Author
Source
Subject
Computer Science - Cryptography and Security
Computer Science - Computers and Society
Computer Science - Distributed, Parallel, and Cluster Computing
Computer Science - Emerging Technologies
Computer Science - Machine Learning
Language
Abstract
Decentralized Intelligence Network (DIN) addresses the significant challenges of data sovereignty and AI utilization caused by the fragmentation and siloing of data across providers and institutions. This comprehensive framework overcomes access barriers to scalable data sources previously hindered by silos by leveraging: 1) personal data stores as a prerequisite for data sovereignty; 2) a scalable federated learning protocol implemented on a public blockchain for decentralized AI training, where data remains with participants and only model parameter updates are shared; and 3) a scalable, trustless rewards mechanism to incentivize participation and ensure fair reward distribution. This framework ensures that no entity can prevent or control access to training on data offered by participants or determine financial benefits, as these processes operate on a public blockchain with an immutable record and without a third party. It supports effective AI training, allowing participants to maintain control over their data, benefit financially, and contribute to a decentralized, scalable ecosystem that leverages collective AI to develop beneficial algorithms.
Comment: 10 pages, 1 figure