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14.02.2025

Teaser image to Daniel Cremers at AI Action Summit

Daniel Cremers at AI Action Summit

Discussions on the Future of AI

MCML Director Daniel Cremers met the French Minister of Science Philippe Baptiste at the AI Action Summit in Paris, last week.

He was also part of the Symposium about frontiers in Generative AI at the Institut Polytechnique de Paris that hosted the scientific days of the AI Action Summit. Together with Vicky Kalogeiton, Gaël Varoquaux, Stéphane Mallat, and Lingpeng Kong he explored the mathematical foundations, scalability solutions, and future directions of GenAI, emphasizing the role in AI-driven scientific discovery, creative applications, and computational science’s broader landscape.

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