15

Jul

Teaser image to Physical AI: Promises and Challenges

Munich AI Lectures

Physical AI: Promises and Challenges

Daniela Rus, Massachusetts Institute of Technology (MIT)

   15.07.2024

   5:00 pm - 7:00 pm

   TU Munich, Institute for Advanced Study, Auditorium (Ground floor), Lichtenbergstraße 2a, 85748 Garching

On behalf of our partners at the Bavarian AI network baiosphere, the MCML cordially invites you to the Munich AI Lectures.

Daniela Rus, Director of the Computer Science and Artificial Intelligence Laboratory (CSAIL) at MIT, will discuss recent developments in machine learning and robotics, focusing on how machines think, how they are designed, and how they learn.

Organized by:

baiosphere

Bavarian Academy of Science and Humanities

Helmholtz Munich

LMU Munich

TUM

AI-HUB LMU

ELLIS Munich Unit

Konrad Zuse School of Excellence in Reliable AI

MCML

Munich Data Science Institute TUM

Munich Institute of Robotics and Machine Intelligence TUM


Related

Link to Practical Causal Reasoning as a Means for Ethical ML

Colloquium  •  25.06.2025  •  LMU Department of Statistics and via zoom

Practical Causal Reasoning as a Means for Ethical ML

25.06.25, 4:15-5:45 pm: Isabel Valera, Uni Saarbrücken explores fairness in ML and introduces DeCaFlow, a causal model for counterfactuals.


Link to Veridical Data Science and PCS Uncertainty
Quantification

Colloquium  •  11.06.2025  •  LMU Department of Statistics and via zoom

Veridical Data Science and PCS Uncertainty Quantification

11.06.25, 4:15-5:45 pm: Bin Yu, UC Berkeley on how PCS improves AI reliability by tackling hidden uncertainty in data science decisions.