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CLAIRE and euRobotics: all questions answered on humanoid robotics


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20 December 2022



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On 9 December, CLAIRE and euRobotics jointly hosted an All Questions Answered (AQuA) event. This one hour session focussed on humanoid robotics, and participants could ask questions regarding the current and future state of AI, robotics and human augmentation in Europe.

The questions were fielded by an expert panel, comprising:

  • Rainer Bischoff, euRobotics
  • Wolfram Burgard, Professor of Robotics and AI, University of Technology Nuremberg
  • Francesco Ferro, CEO, PAL Robotics
  • Holger Hoos, Chair of the Board of Directors, CLAIRE

The session was recorded and you can watch in full below:




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AIhub is a non-profit dedicated to connecting the AI community to the public by providing free, high-quality information in AI.





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