ML: Privacy-Aware ML

This category focuses on machine learning methods with built-in privacy protections to safeguard sensitive data during training, inference, and deployment. It includes approaches such as differential privacy, secure multi-party computation, homomorphic encryption, and privacy-preserving federated learning. Research addresses the trade-off between model performance and data confidentiality.

AI Grid Ambassadors

AI Grid Ambassador in Israel

AI Grid Ambassador in Great Britain

AI Grid Ambassador in Sweden

AI Grid Ambassador in Switzerland

AI Grid Ambassador in the USA (West Coast)

AI Grid Ambassador in Japan (Tokyo)

AI Grid Ambassador in Spain

AI Grid Ambassador in the USA (East Coast)

AI Grid Ambassador in France

Director of Strategic Planning, Fondazione Bruno Kessler