Listen "AI Agents That Do What We Want"
Episode Synopsis
Researchers used to define objectives for artificial intelligence (AI) agents by hand, but with progress in optimization and reinforcement learning, it became obvious that it's too difficult to think of everything ahead of time and write it down. Instead, these days the objective is viewed as a hidden part of the state on which researchers can receive feedback or observations from humans — how they act and react, how they compare options, what they say. In this talk, Anca Dragan, Associate Professor of Electrical Engineering and Computer Sciences at UC Berkeley, discusses what this transition has achieved, what open challenges researchers still face and ideas for mitigating them. Dragan discusses applications in robotics and how the lessons there apply to virtual agents like large language models. Series: "Data Science Channel" [Science] [Show ID: 39350]
More episodes of the podcast UC Berkeley (Audio)
This Fungus Turns Food Waste Into Cuisine
05/09/2025
The Times of Possibility
05/08/2025
Seas the Day: A New Narrative for the Ocean
15/07/2025
The Arc of Energy Justice: A Pursuit to Ensure Affordable Reliable and Clean Energy for All
17/02/2025
Do Cash Transfers Save Lives?
27/01/2025
ZARZA We are Zarza, the prestigious firm behind major projects in information technology.