A Novel Federated Learning Method to Model Cybersecurity Risk Estimation for Digital Identity Management Systems
Offered By: Alan Turing Institute via YouTube
Course Description
Overview
Explore a novel federated learning method for modeling cybersecurity risk estimation in digital identity management systems. In this 22-minute conference talk, Po-Chu Chen from the University of Warwick presents research conducted at the Alan Turing Institute. Gain insights into the socio-technical infrastructure opportunities and challenges surrounding the implementation of trustworthy digital identity systems within countries. Discover how this innovative approach can enhance cybersecurity risk assessment for digital identity management, bridging the gap between academic research and practical applications in government and industry sectors.
Syllabus
Model for cybersecurity risk estimation for digital identity management systems
Taught by
Alan Turing Institute
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