Mastering Deep Q-Learning with GYM-Cliff Walking Environment

From Theory to Practice: Building Intelligent Agents with Deep Q-Learning in the "CliffWalking" Environment.
4.75 (2 reviews)
Udemy
platform
English
language
Data Science
category
Mastering Deep Q-Learning with GYM-Cliff Walking Environment
32
students
3.5 hours
content
Nov 2024
last update
$19.99
regular price

What you will learn

Bellman Equation: Understand the foundational equation that drives intelligent decision-making in reinforcement learning.

"gym" and "deque": Master the usage of essential tools to implement Deep Q-Learning algorithms efficiently.

Deep Learning Integration: Discover how to combine Deep Learning techniques with Q-Learning to enhance agent performance.

"GYM-CliffWalking" Environment: Gain hands-on experience navigating a challenging environment to optimize agent behavior.

Optimal Decision-Making: Develop strategies for making intelligent choices in dynamic and complex scenarios.

Practical Examples: Explore real-world applications and case studies to see Deep Q-Learning in action.

Implementation Best Practices: Learn tips and tricks for efficient algorithm implementation and performance optimization.

Intelligent Agent Design: Build agents capable of solving problems and adapting to changing environments.

Troubleshooting and Problem-Solving: Develop skills to overcome challenges and fine-tune agent performance.

6037800
udemy ID
6/23/2024
course created date
7/15/2024
course indexed date
Bot
course submited by