🎯 Phase 1 — RL Fundamentals
Master the core mathematical and algorithmic foundations of Reinforcement Learning.
Topics
- Agent–Environment Interaction
→ Explore Agent–Environment Interaction ▸ - Markov Decision Processes (MDPs)
→ Explore Markov Decision Processes ▸ - Bellman Expectation & Optimality Equations
→ Explore Bellman Equations ▸ - Dynamic Programming
→ Start with Policy Evaluation ▸
→ Continue with Policy Iteration ▸
→ Explore Value Iteration ▸ - Monte Carlo Methods
→ Explore Monte Carlo ▸ - Temporal-Difference (TD) Learning
→ Explore TD Learning ▸
Mini Projects
- Gambler’s Problem (DP + Value Iteration)
→ Check here: Gambler’s Problem Project ▸ - Blackjack — Monte Carlo Control
→ Try it here: Blackjack Project ▸ - Random Walk — TD(0) Learning Curve
→ Explore here: Random Walk Project ▸ - FrozenLake — Monte Carlo vs TD Comparison
→ Check here: FrozenLake Project ▸
📁 Source folder:
01-Fundamentals