18.11.2024

©MCML
MCML General Assembly
A Short Recap
MCML General Assembly 2024 celebrated innovation and collaboration with inspiring talks, Junior Flash Talks, and meaningful networking opportunities.
On November 4, 2024, members of the MCML gathered at the Bavarian Academy of Sciences and Humanities (BAdW) for the annual General Assembly. This event provided a platform to exchange ideas, showcase major initiatives, and strengthen connections within the community.

MCML Director Thomas Seidl delivers the opening welcome at the General Assembly.
The assembly began with an address by the MCML directors, who highlighted the center’s achievements over the past year.
In addition, the members voted for new diversity representatives. We are happy to announce the results of the election for the diversity representatives: For LMU Jesse de Jesus de Pinho Pinhal as well as Philip Boustani (substitute) and for TUM Anika Spiesberger have been elected. Congratulations!

Flash Talks
During the Flash Talks session by MCML’s junior members young researchers shared their projects, offering insights into their ideas and practical applications of machine learning.

Coffe Break
The event concluded with a relaxed coffee break and networking session, creating an opportunity for informal conversations.
Thank you to everyone for taking part in the event!
Some impressions
© all images: MCML
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