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17.04.2025

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Industry Pitch Talks Recap

Visit to Bain & Company

The MCML visited Bain & Company for another event of our series “MCML Pitchtalks with Industry”.

After a warm welcome and talk by Josef Rieder from Bain, we had pitchtalks by MCML Junior Members:

  • Niklas Strauß, on “Reward Hacking”
  • Abdurahman Maarouf and Jonas Schweisthal on “Causal ML in Management Processes”
  • Clara Vetter on “AI and ML in Psychotherapy”
  • Yize Sun on “Quantum Computing and AI”

The wrap up talk was a short talk by the Bain Marketing team about their recently deployed AI tool “Artemis”.

We engaged in lively discussion and networking afterward, fostering the MCML industry partner community.

 

 

#event #research
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