Practical Introduction to Safe Reinforcement Learning
- Track: AI and Machine Learning devroom
- Room: UB2.252A (Lameere)
- Day: Sunday
- Start: 11:15
- End: 11:30
- Video only: ub2252a
- Chat: Join the conversation!
This talk is about the basics of safe reinforcement learning and its use cases. I will discuss what makes a reinforcement learning algorithm safe and the motivation for pursuing safety. Furthermore, the role of open-source software such as Gymnasium, SUMO and Melting-pot in developing reinforcement learning algorithms will be highlighted. Finally, I will present two practical scenarios detailing how one might implement safe reinforcement learning algorithms.
For this talk I do not assume any knowledge of reinforcement learning and all the necessary background information will be provided.
Speakers
Kryspin Varys |