このコースについて
How do machines learn to make optimal decisions in complex, dynamic environments? Reinforcement learning provides the framework for training agents to solve problems through trial and error, mimicking how humans learn from experience. This text-based course guides you from absolute beginner to confidently understanding and writing reinforcement learning algorithms. You will transition from foundational mathematical models to implementing modern deep reinforcement learning approaches using clean, structured code. What you'll learn: Understand key reinforcement learning terminology, including states, actions, rewards, and policy structures; Formulate decision-making problems using Markov Decision Processes and Bellman equations; Implement classic tabular methods like Q-learning and SARSA for grid-world environments; Explore the exploration-exploitation dilemma and apply strategies like epsilon-greedy and upper confidence bounds; Modernize your skills by studying Deep Q-Networks and policy gradient methods using PyTorch; Configure standard environments using modern Python libraries like Gymnasium to train your intelligent agents. The course starts with essential theoretical definitions and mathematical foundations of decision-making. You will then progress through classic tabular algorithms before reading about and analyzing modern deep reinforcement learning implementations and training loops. This course is designed for aspiring AI developers, data scientists, and programming enthusiasts who want a clear, mathematically sound introduction to reinforcement learning. A basic understanding of Python is helpful, but no prior AI experience is required. Start reading today to unlock the power of autonomous decision-making agents.
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