Hyperparameter Optimization for Reinforcement Learning Using Meta's Ax

Hyperparameter Optimization for Reinforcement Learning Using Meta's Ax

Digi-Key via YouTube Direct link

- Import Python packages

8 of 23

8 of 23

- Import Python packages

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Hyperparameter Optimization for Reinforcement Learning Using Meta's Ax

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

  1. 1 - Introduction
  2. 2 - What are hyperparameters
  3. 3 - Hyperparameter optimization loop
  4. 4 - Grid search
  5. 5 - Random search
  6. 6 - Bayesian optimization
  7. 7 - Install Python packages
  8. 8 - Import Python packages
  9. 9 - Configure Weights & Biases
  10. 10 - Set deterministic mode
  11. 11 - Load pendulum gymnasium environment
  12. 12 - Test pendulum environment
  13. 13 - Test random actions with dummy agent
  14. 14 - Testing and logging callbacks
  15. 15 - Define trial to train and test an agent
  16. 16 - Define project settings and hyperparameter ranges
  17. 17 - Create gymnasium environment
  18. 18 - Define Ax experiment to perform Bayesian optimization for hyperparameters
  19. 19 - Perform hyperparameter optimization and debugging
  20. 20 - Train agent with best hyperparameters
  21. 21 - Test agent
  22. 22 - Run additional trials
  23. 23 - Weights & Biases sweeps

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.