08
Nov
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09
Nov

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Bootcamp
3rd Bootcamp "AI Meets Entrepreneurs"
Shaping the Future of AI Medicine & Healthcare
08.11.2024 - 09.11.2024
5:00 pm - 6:15 pm
LMU Main Building, Kleine Aula and RAW, Herzog-Wilhelm-Str. 15, 80331 Munich
The MCML is organizing together with impACTup! and LMU Media Informatics Group a two-part event to shift ML and AI researchers into an entrepreneurial mindset. With input from experts and hands-on experience, we want to highlight the opportunities and challenges that a career as a founder and entrepreneur can hold in contrast to traditional research.
This edition of our event aims to unlock the potential of Start-Ups utilizing AI to revolutionize medical healthcare. But what is healthcare innovation exactly? It involves the integration of AI technologies to improve patient outcomes, enhance diagnostic accuracy, streamline healthcare delivery, and personalize treatment plans, ultimately ensuring better health and quality of life for all.
Organized by:
Dr. Thomas Meier, Dr. Luke Haliburton MCML
Dr. Dominik Domnik, Dr. Christina Hagl impACTup!
Prof. Albrecht Schmidt, Julian Rasch MCML / LMU Media Informatics Group
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