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25.05.2024

Teaser image to MCML at the 18th International For..Net Symposium 2024

MCML at the 18th International For..Net Symposium 2024

Truth - Power - Rule of Law: Generative AI in the Mirror of Law, Technology and Society

On April 18-19, the 18th International For..Net Symposium 2024 “Truth - Power – Rule of Law: Generative AI in the Mirror of Law, Technology and Society” took place.

At the invitation of the TUM Center for Digital Public Services (TUM CDPS) and the Bavarian Research Institute for Digital Transformation (bidt), the guests discussed the various effects and opportunities of generative AI with regard to society and legislation.

On the evening of the first day, the Bavarian AI network baiosphere organised the For..Net lab “Generative AI hands-on”. The MCML had the honor of presenting AMELIE – our demonstrator offering a glimpse into the inner learning processes of machines – together with the projects of the AN[ki]T of Ansbach University of Applied Sciences, the AI Production Network of the University of Augsburg and the Technical University of Munich with their projects EduPin and SVan. AMELIE was developed at the chair of our PI Albrecht Schmidt.



More Information About the Symposium by Our Partners

 

 

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