18

Feb

Teaser image to Next Generation AI Topic IV

Round-Table

Next Generation AI Topic IV

Social Aspects of AI

   18.02.2022

   LMU Munich

In the era of AI, automated decision-making is crucial, especially in safety-critical applications. The GDPR mandates explainability, fairness, and overall trustworthiness. This workshop explores cutting-edge methods and challenges in achieving these goals, addressing the key concerns of the next generation of AI in Europe.


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