Mastering Deep Q–Learning with GYM–Cliff Walking Environment

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25-06-2024, 09:20
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  • Mastering Deep Q–Learning with GYM–Cliff Walking Environment
    Free Download Mastering Deep Q–Learning with GYM–Cliff Walking Environment
    Published 6/2024
    Created by Abdurrahman TEKIN
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
    Genre: eLearning | Language: English | Duration: 12 Lectures ( 3h 19m ) | Size: 2.71 GB

Mastering Deep Q–Learning with GYM–Cliff Walking Environment
Free Download Mastering Deep Q–Learning with GYM–Cliff Walking Environment
Published 6/2024
Created by Abdurrahman TEKIN
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 12 Lectures ( 3h 19m ) | Size: 2.71 GB


From Theory to Practice: Building Intelligent Agents with Deep Q-Learning in the "CliffWalking" Environment.
What you'll 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.
Requirements:
Basic Programming Skills: Familiarity with a programming language such as Python will be beneficial for understanding and implementing the algorithms.
Understanding of Machine Learning Concepts: A basic understanding of machine learning concepts, such as supervised and unsupervised learning, will provide a strong foundation for grasping the principles of Deep Q-Learning.
Description:
Welcome to the exciting world of Deep Q-Learning! In this comprehensive course, you will embark on a journey to master one of the most powerful techniques in reinforcement learning. Get ready to delve into the depths of intelligent decision-making as we explore the intricacies of Deep Q-Learning and its practical application in the captivating "GYM-CliffWalking" environment.Throughout this course, you will uncover the fundamental concepts of Deep Q-Learning, starting with a solid understanding of the Bellman Equation and its role in optimizing agent behavior. We will walk you through the usage of essential tools like "gym" and "deque," enabling you to implement powerful algorithms with ease. With hands-on exercises and real-world examples, you will gain the confidence to build intelligent agents that can navigate complex environments and make optimal choices.But that's not all! We will dive deeper into the integration of Deep Learning and Q-Learning, equipping you with the skills to leverage neural networks and deep neural architectures to enhance the performance of your agents. Witness firsthand how Deep Q-Learning unlocks the potential to conquer challenges and achieve impressive results in dynamic scenarios.By the end of this course, you will have a solid grasp of Deep Q-Learning principles and the ability to apply them effectively in the "GYM-CliffWalking" environment. Whether you are a machine learning enthusiast, a data scientist, or a curious mind eager to explore the frontiers of artificial intelligence, this course is designed to empower you with the knowledge and skills to excel in the field of deep reinforcement learning.Join us now and embark on an exhilarating learning journey that will transform you into a proficient Deep Q-Learning practitioner. Unlock the secrets of intelligent decision-making and pave your way to creating truly intelligent agents. Enroll today and let the adventure begin!
Who this course is for:
Machine Learning Enthusiasts: Individuals passionate about machine learning and eager to explore advanced topics in reinforcement learning.
Data Scientists: Professionals working in the field of data science seeking to expand their knowledge and skills in the domain of deep reinforcement learning.
AI Researchers: Researchers interested in exploring the intersection of deep learning and reinforcement learning to develop intelligent agents.
Developers and Programmers: Software developers and programmers looking to enhance their expertise in implementing Deep Q-Learning algorithms and building intelligent agents.
Students and Academics: Students studying computer science, artificial intelligence, or related fields, as well as academics interested in incorporating Deep Q-Learning into their research or teaching.
Professionals in Robotics and Autonomous Systems: Individuals working in the fields of robotics, autonomous systems, and control systems, who want to leverage Deep Q-Learning for decision-making and optimal path planning.
Anyone Curious about Deep Q-Learning: Individuals with a curiosity for artificial intelligence and a desire to understand how Deep Q-Learning works and its practical applications.
Homepage
https://www.udemy.com/course/mastering-deep-q-learning-with-gym-cliff-walking-environment/







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