Blockchain and Federated Learning: A New Era for AI Governance and Privacy

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Joerg Hiller
Mar 14, 2025 03:56

Explore how blockchain technology and federated learning are reshaping AI development with decentralized, privacy-focused governance, enabling large-scale collaboration without compromising data security.





The convergence of federated learning (FL) and blockchain technology is setting the stage for a new era in artificial intelligence (AI) development, characterized by decentralized governance and enhanced privacy. According to Sei, this powerful combination allows multiple devices or organizations to collaboratively train AI models without sharing raw data, thus preserving privacy.

Federated Learning and Privacy

Federated learning is a distributed machine learning approach where model training occurs across numerous devices or data silos, eliminating the need for data centralization. This method addresses privacy concerns by allowing data to remain on local devices, thereby preventing data leakage and avoiding reliance on a central data holder. This approach is particularly beneficial for sensitive data, such as personal smartphone information or hospital records, which can be used for AI training without compromising confidentiality.

Decentralized AI Governance

The collaborative nature of federated learning results in AI models that are not controlled by any single entity. This raises the question of governance: who decides how these models are used and updated? Traditional governance often involves centralized control, which can lead to conflicts of interest and lack of transparency. In contrast, blockchain technology offers a decentralized governance model, where decision-making is distributed among stakeholders, including data providers and model users. This approach ensures transparency and accountability, as all governance actions are recorded immutably on the blockchain.

Blockchain’s Role in Federated Learning

Integrating blockchain technology with federated learning transforms the process into a fully decentralized operation. Clients submit model updates as transactions to the blockchain, where a network of nodes aggregates and maintains the global model state. This method eliminates the central server, reducing the risk of a single point of failure and increasing security through blockchain’s cryptographic mechanisms.

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High-Throughput Blockchains

The effectiveness of blockchain-based federated learning hinges on high throughput. Large-scale federated learning involves thousands of participants, each submitting frequent updates. Traditional blockchains struggle with such demands, but a high-throughput blockchain capable of processing 5 gigagas per second can handle the necessary transaction volume, ensuring real-time model training and efficient incentive mechanisms.

Incentive Mechanisms

High throughput also facilitates sophisticated incentive systems. By using blockchain smart contracts, participants can be rewarded for honest contributions and penalized for malicious behavior. This economic model encourages continuous, high-quality participation, ensuring the integrity of the federated learning process.

Overall, the integration of blockchain with federated learning offers a scalable and democratically governed AI model, paving the way for secure and fair AI development.

Image source: Shutterstock



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