Introduction to Reinforcement Learning

Introduction to Reinforcement Learning

Digi-Key via YouTube Direct link

- Recommended textbook

11 of 22

11 of 22

- Recommended textbook

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Introduction to Reinforcement Learning

Automatically move to the next video in the Classroom when playback concludes

  1. 1 - Intro
  2. 2 - History of reinforcement learning
  3. 3 - Environment and agent interaction loop
  4. 4 - Gymnasium and Stable Baselines3
  5. 5 - Hands-on: how to set up a gymnasium environment
  6. 6 - Markov decision process
  7. 7 - Bellman equation for the state-value function
  8. 8 - Bellman equation for the action-value function
  9. 9 - Bellman optimality equations
  10. 10 - Exploration vs. exploitation
  11. 11 - Recommended textbook
  12. 12 - Model-based vs. model-free algorithms
  13. 13 - On-policy vs. off-policy algorithms
  14. 14 - Discrete vs. continuous action space
  15. 15 - Discrete vs. continuous observation space
  16. 16 - Overview of modern reinforcement learning algorithms
  17. 17 - Q-learning
  18. 18 - Deep Q-network DQN
  19. 19 - Hands-on: how to train a DQN agent
  20. 20 - Usefulness of reinforcement learning
  21. 21 - Challenge: inverted pendulum
  22. 22 - Conclusion

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.