Stanford Seminar - Towards Safe and Efficient Learning in the Physical World

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  • čas přidán 18. 04. 2024
  • April 5, 2024
    Andreas Krause of ETH Zurich
    How can we enable agents to efficiently and safely learn online, from interaction with the real world? I will first present safe Bayesian optimization, where we quantify uncertainty in the unknown objective and constraints, and, under some regularity conditions, can guarantee both safety and convergence to a natural notion of reachable optimum. I will then consider Bayesian model-based deep reinforcement learning, where we use the epistemic uncertainty in the world model to guide exploration while ensuring safety. Lastly I will discuss how we can meta-learn flexible probabilistic models from related tasks and simulations, and demonstrate our approaches on real-world applications, such as robotics tasks and tuning the SwissFEL Free Electron Laser.
    About the speaker: inf.ethz.ch/people/person-det...
    More about the course can be found here: stanfordasl.github.io/robotic...
    View the entire AA289 Stanford Robotics and Autonomous Systems Seminar playlist: • Stanford AA289 - Robot...
    ► Check out the entire catalog of courses and programs available through Stanford Online: online.stanford.edu/explore

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