Crafting optimal strategies in uncertain terrains
Reinforcement Learning
This project explores Markov decision processes, applying Policy Iteration, Value Iteration, and Q-Learning to solve the stochastic puzzles of Frozen Lake and Black Jack. It demonstrates the art of decision-making under uncertainty, utilizing reinforcement learning to seek out the best action paths for maximum rewards.