Practical Reinforcement Learning with TensorFlow and Keras โ€” LearnFlat

Practical Reinforcement Learning with TensorFlow and Keras

Master the fundamentals of reinforcement learning by building and training intelligent agents using TensorFlow, Keras, and modern Gymnasium environments.

โฑ 1 jam 42 min ๐Ÿ“š 11 pelajaran ๐ŸŽง Versi audio

Tentang kursus ini

Reinforcement learning is driving some of the most exciting breakthroughs in artificial intelligence, from autonomous systems to game-playing agents. Understanding how to build these self-learning models is an essential skill for any modern aspiring machine learning practitioner. In this text-based course, you will transition from understanding basic decision-making theory to writing clean, functional reinforcement learning code. You will learn to construct intelligent agents that interact with simulated environments, learn from trial and error, and optimize their behavior over time using industry-standard machine learning libraries. What you'll learn: Understand the foundational concepts of reinforcement learning, including Markov Decision Processes, states, actions, and rewards; Configure and interact with simulated environments using the modern Gymnasium toolkit; Implement classic Q-learning algorithms to solve fundamental decision-making problems; Build Deep Q-Networks (DQN) using TensorFlow and Keras to handle complex state spaces; Apply policy gradient methods and explore the mechanics of actor-critic architectures; Analyze and debug agent performance through written code walkthroughs and structured evaluation metrics. The course starts with essential terminology and the mathematical foundations of decision-making before moving into step-by-step code implementations. You will progress from simple tabular methods to deep reinforcement learning architectures, gaining a conceptual and practical grasp of agent-environment loops. Designed for beginners to reinforcement learning who have a basic familiarity with Python and general machine learning concepts, with no advanced prior experience in control theory required. Start reading today to build your first intelligent, self-learning agents.

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