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27.03.2024

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MCML Launches New Collaborative Format for Scientific Exchange

MCML Pitch Talk Series

The MCML initiated a new collaborative format for scientific exchange and community building: Our Pitch Talk Series. Here, our junior members get the opportunity to pitch their research and connect within the MCML community.

Last Friday, we hosted three talks and were pleased to welcome more than 20 MCML members.

We had talks about:

  • Assessing Label Variation in Natural Language Inference by Cornelia Gruber
  • Structuring Uncertainty in Causal Inference by David Strieder
  • Uncertainty and Calibration in Random Forests by Mohammad Hossein Shaker

We are very much looking forward to the regular interdisciplinary exchange within our Pitch Talk Series.

 

#event #community #research

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