11.04.2024

Teaser image to Call for abstracts - MCML Conference on "The Ethics of Conversational Agents & Generative AI"

Call for Abstracts - MCML Conference on "The Ethics of Conversational Agents & Generative AI"

12 & 13 September 2024, LMU Munich

The MCML AI Ethics research group invites submissions of abstracts (250-500 words) for a two-day conference on "The Ethics of Conversational Agents and Generative AI" taking place at LMU Munich this fall.

The conference will bring together academic researchers and industry AI Ethics practitioners interested in the ethical challenges raised by generative and conversational artificial intelligence.

Confirmed speakers include:

  • Alena Buyx (MCML/TUM)

  • Herman Cappelen (University of Hong Kong)

  • Michael Klenk (Delft University of Technology)

  • Jana Sedlakova (University of Zurich).

Abstracts on any topic relating to the ethics of generative AI and conversational agents are welcome!

Submission deadline: 15 May 2024, 1pm CET via mcmlaiethicsconference@lrz.uni-muenchen.de

#event #research #lange #nyholm
Subscribe to RSS News feed

Related

Link to Rethinking AI in Public Institutions - Balancing Prediction and Capacity

09.10.2025

Rethinking AI in Public Institutions - Balancing Prediction and Capacity

Unai Fischer Abaigar explores how AI can make public decisions fairer, smarter, and more effective.

Link to MCML-LAMARR Workshop at University of Bonn

08.10.2025

MCML-LAMARR Workshop at University of Bonn

MCML and Lamarr researchers met in Bonn to exchange ideas on NLP, LLM finetuning, and AI ethics.

Link to Three MCML Members Win Best Paper Award at AutoML 2025

08.10.2025

Three MCML Members Win Best Paper Award at AutoML 2025

MCML PI Matthias Feurer and Director Bernd Bischl’s paper on overtuning won Best Paper at AutoML 2025, offering insights for robust HPO.

Link to Machine Learning for Climate Action - with researcher Kerstin Forster

29.09.2025

Machine Learning for Climate Action - With Researcher Kerstin Forster

Kerstin Forster researches how AI can cut emissions, boost renewable energy, and drive corporate sustainability.

Link to Making Machine Learning More Accessible with AutoML

26.09.2025

Making Machine Learning More Accessible With AutoML

Matthias Feurer discusses AutoML, hyperparameter optimization, OpenML, and making machine learning more accessible and efficient for researchers.

Back to Top