Curious about our podcast secrets?

Subscribe to our Newsletter and connect on Facebook!
Click here to get the inside scoop—delivered weekly.

You're one step away from the inside scoop.

Whether you're a host, a guest, or just podcast-curious, this is where the magic happens.

Guest means you wish to be on a podcast. Host means you have a podcast and are looking for guests.
This field is hidden when viewing the form

By submitting this form, you agree to receive occasional emails from The Podcast Collaborative.
We send weekly updates, collaboration tips, and podcasting opportunities to help you connect, collaborate, and grow.
You can unsubscribe anytime—no hard feelings! (More in our Privacy Policy and Terms of Use)

Center for Advanced Studies (CAS) Research Focus Next Generation AI

Center for Advanced Studies (CAS) Research Focus Next Generation AI

Center for Advanced Studies (CAS) Research Focus Next Generation AI

We estimate there's a 83% chance this podcast is looking for guests- reach out and make your move!

Topic Category:

Science

(Log in to see email address)

Language:

English

Podcast Stats:

Number of Episodes: 7
Series Type: episodic
Content Type: VIDEO

Podcast Description

We currently witness the impressive success of artificial intelligence (AI) in real-world applications, ranging from autonomous driving over speech recognition to the health care sector. At the same time, modern, typically data-driven AI methods have a similarly strong impact on science such as astronomy, physics, medicine – as well as humanities or social sciences, often replacing classical methods in the state of the art. In fact, at present, basically any research area is already impacted or starting to get involved in research questions in the realm of AI. However, despite this outstanding success, most of the research on AI is empirically driven and not only is a comprehensive theoretical foundation -- in particular, in the sense of explanations of decisions -- missing, but even the limitations of these methods are far from being well understood. It is also far from clear how AI-based methods can be optimally combined with classical methods based on physical models as domain knowledge.

At present, two general streams of research in artificial intelligence can be identified worldwide. On the one hand, existing methodologies are adapted and applied to diverse scientific areas, while on the other hand, researchers aim to tackle the aforementioned methodological/theoretical problems and initiate the next generation of artificial intelligence. At LMU Munich, those directions are also prominently represented and displayed at https://www.lmu.de/ai. It is important to also stress that in fact both directions require a highly interdisciplinary effort and have many interconnections.

The CAS Research Focus therefore aims to connect, in particular, more methodological/theoretical with more application-oriented researchers across all faculties of LMU Munich as well as existing research and teaching activities, focusing on the following key problem complexes at the verge of the next generation of AI:

AI and Uncertainty
AI and Domain Knowledge
Limitations of AI
Social Aspects of AI (Explainability, Fairness, etc.)

Podcast Insights

Content Themes

Explores topics such as the integration of AI in various fields including medicine, social sciences, and astrophysics, with episodes discussing AI and uncertainty in biomedical research and the impact of AlphaFold on protein studies, emphasizing innovative methodologies and interdisciplinary connections.

Further Podcast insights, such as show format, guest types, ideal guests, and target audience are available to Podcast Collab Club Members!

Disclaimer
This podcast’s information is provided for general reference and was obtained from publicly accessible sources. The Podcast Collaborative neither produces nor verifies the content, accuracy, or suitability of this podcast. Views and opinions belong solely to the podcast creators and guests.

 

For a complete disclaimer, please see our Full Disclaimer on the archive page. The Podcast Collaborative bears no responsibility for the podcast’s themes, language, or overall content. Listener discretion is advised. Read our Terms of Use and Privacy Policy for more details.