商品描述
This beginner-friendly course on reinforcement learning equips you with the foundational and practical knowledge needed to understand and apply key RL concepts in real-world scenarios. Start by exploring what reinforcement learning is, why it matters, and how it differs from supervised and unsupervised learning. Learn essential terms and core principles through relatable examples. Dive deeper into the mechanics of decision-making with the Markov Decision Process (MDP), the backbone of RL. Gain practical experience by observing step-by-step demos that show how agents interact with environments to learn optimal behaviors. To be successful in this course, no prior experience is required. It is ideal for students, aspiring AI professionals, and machine learning enthusiasts. By the end of this course, you will be able to: - Understand what reinforcement learning is and how it works - Distinguish RL from supervised and unsupervised learning - Apply key RL concepts such as MDP in decision-making systems - Analyze real-world scenarios through guided reinforcement learning demos Ideal for future AI engineers, ML practitioners, and data science professionals.