Skip to content

Latest commit

 

History

History
16 lines (12 loc) · 410 Bytes

File metadata and controls

16 lines (12 loc) · 410 Bytes

Reinforcement Learning:

The repository includes RL and DRL NoteBooks. The algorithms implemented:

  1. Random Search.
  2. Hill Climbing.
  3. MDP.
  4. Monte Carlo.
  5. Temporal Difference Methods.
  6. Cross-Entropy.
  7. Deep Q-Learning.
  8. Actor-Critic; (Advantage and Asynchronous).
  9. Policy Gradient Methods

Codes/Notebooks from Deep Reinforcement Learning Book for Packt and Practical Reinforcement Learning.