DISCO: A Browser-Based Privacy-Preserving Framework for Distributed Collaborative Learning

arXiv — cs.LGWednesday, November 26, 2025 at 5:00:00 AM
  • DISCO has been introduced as an open-source, browser-based framework designed to facilitate distributed collaborative learning while preserving user privacy. This platform allows non-technical users to collaboratively build machine learning models without sharing original data, addressing significant concerns over privacy and accessibility in data sharing.
  • The development of DISCO is significant as it democratizes access to machine learning technologies, enabling users without programming skills to participate in model training. This could potentially enhance the diversity of data sources and improve model accuracy across various applications.
  • This initiative aligns with ongoing discussions in the AI community regarding the balance between privacy and data utility. The integration of privacy-preserving techniques in machine learning is increasingly critical, especially in sensitive fields like healthcare, where frameworks that ensure data confidentiality while enabling collaborative learning are essential.
— via World Pulse Now AI Editorial System

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