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14.07.2025

Teaser image to MCML's delegation visit to the USA

MCML's Delegation Visit to the USA

Short Recap

In May, a 20-member delegation from MCML visited top U.S. institutions — Harvard, MIT, NYU, and Cornell Tech — to foster long-term collaboration in AI research. The visit marked an important step in MCML’s newly launched AI X-Change program, which supports international research stays for PhD students and hosts visiting scholars in machine learning. The trip focused on research in generative models and medical AI—covering topics such as fairness, transparency, clinical applications, and the integration of AI into healthcare. Discussions also explored the foundations of machine learning and social data science.

Link to USA Delegation Visit Report 2025

USA Delegation Visit Report 2025

#community #research

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