This foundational course on Q-Learning equips you with the essential knowledge to understand reinforcement learning concepts and apply them in real-world AI scenarios. Learn the fundamentals of Q-Learning, including Q-values, rewards, episodes, temporal difference, and the exploration vs. exploitation trade-off. Progress to applying Q-Learning by determining Q-values and guiding agent decision-making. Gain practical skills through step-by-step guided demos, where you’ll implement Q-Learning and see how agents optimize their actions in environments like robotics, gaming, and intelligent systems. Build the confidence to design adaptive AI models that learn and improve over time.


您将学到什么
Grasp Q-Learning fundamentals and reinforcement learning concepts
Understand Q-values, rewards, episodes, and temporal difference
Balance exploration vs. exploitation in training AI agents
Implement Q-Learning models with hands-on demos for real-world use
要了解的详细信息

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September 2025
6 项作业
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该课程共有2个模块
Learn the fundamentals of Q-Learning, a key reinforcement learning algorithm for training intelligent agents. Start with an introduction to Q-Learning and understand its role in decision-making. Explore core components including Q-values, rewards, episodes, temporal difference, and the balance of exploration vs. exploitation. Build practical skills to implement Q-Learning and optimize agent performance in real-world applications.
涵盖的内容
5个视频1篇阅读材料3个作业1个插件
Learn to apply Q-Learning by understanding how Q-values are determined and used for agent decision-making. Explore the process of evaluating Q-values to guide optimal actions in reinforcement learning. Gain hands-on experience through guided demos, where you’ll implement Q-Learning step by step and build practical skills to train and optimize intelligent agents in real-world scenarios.
涵盖的内容
3个视频3个作业1个插件
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University of Alberta
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University of Alberta
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University of Alberta
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常见问题
Q-Learning is a reinforcement learning algorithm that helps agents learn optimal actions by maximizing future rewards.
This course is designed for beginners, developers, and professionals seeking practical skills in reinforcement learning.
You’ll learn Q-Learning fundamentals, including Q-values, rewards, exploration vs. exploitation, and hands-on implementation.
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