25.11.2024
Meet Three MCML Junior Members
Article on Research in Bavaria
In the new article published at Research in Bavaria, the Munich Center for Machine Learning is highlighted as a crucial part of Bavaria’s AI and machine learning research.
It highlights the work of MCML’s members, who are advancing innovative solutions through collaboration and interdisciplinary research.
The article also discusses how MCML’s community helps strengthen Munich’s reputation as a leading hub for AI.
«There are so many social events throughout MCML, LMU and TUM that, if you wanted, you could attend something every week. It's a great community!»
Jesse Grootjen
Junior Member
«Munich has become one of Europe's leading hubs for AI and Computer Vision, which aligned perfectly with my research interests.»
Azade Farshad
Junior Member
«Munich is renowned for its cleanliness, excellent public transport and perfect blend of big city vibrancy and small town charm»
Gabriel Marques Tavares
Junior Member
25.11.2024
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