Score: 2

Poster: FedBlockParadox -- A Framework for Simulating and Securing Decentralized Federated Learning

Published: June 3, 2025 | arXiv ID: 2506.02679v1

By: Gabriele Digregorio , Francesco Bleggi , Federico Caroli and more

Potential Business Impact:

Tests how AI learns safely from many computers.

Business Areas:
Ethereum Blockchain and Cryptocurrency

A significant body of research in decentralized federated learning focuses on combining the privacy-preserving properties of federated learning with the resilience and transparency offered by blockchain-based systems. While these approaches are promising, they often lack flexible tools to evaluate system robustness under adversarial conditions. To fill this gap, we present FedBlockParadox, a modular framework for modeling and evaluating decentralized federated learning systems built on blockchain technologies, with a focus on resilience against a broad spectrum of adversarial attack scenarios. It supports multiple consensus protocols, validation methods, aggregation strategies, and configurable attack models. By enabling controlled experiments, FedBlockParadox provides a valuable resource for researchers developing secure, decentralized learning solutions. The framework is open-source and built to be extensible by the community.

Country of Origin
🇮🇹 Italy

Repos / Data Links

Page Count
6 pages

Category
Computer Science:
Cryptography and Security