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Understand Deep Q-Learning with Code and Math Together

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Abdurrahman TEKIN

4:33:24

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  • 1 - Introduction.mp4
    04:37
  • 2 - 1 A quick look at the first project.mp4
    03:41
  • 3 - 2 Understand fully connected linear layer.mp4
    19:57
  • 4 - 3 Understand Forward method.mp4
    17:42
  • 5 - 4 Understand the Math of ADAM OPTIMIZER.mp4
    40:24
  • 6 - 5 Understand How to take actions.mp4
    26:11
  • 7 - 6 Undertstan QLearning Paramaters.mp4
    11:36
  • 8 - 7 Finding Qvalue and Next QValue.mp4
    16:53
  • 9 - 8 Understand How to Combine QLearning and Deep Learning.mp4
    26:27
  • 10 - 9 Learn how to optimize paramaters.mp4
    11:27
  • 11 - 10 Understand the Training loop.mp4
    22:02
  • 12 - 11 Create QTable.mp4
    25:27
  • 13 - 12 Print the Optimal Path According to QTable.mp4
    12:29
  • 14 - 13 Add one obstacle to the environment.mp4
    05:35
  • 15 - 14 Optimize the code to solve 3x3 envronment.mp4
    11:54
  • 16 - 15 Save and Load the Model.mp4
    17:02
  • Files.zip
  • Description


    Mastering Deep Q-Learning: Unveiling the Code and Math Behind Intelligent Navigation

    What You'll Learn?


    • Deep Q-Learning fundamentals
    • Code implementation of Deep Q-Learning
    • Mathematical foundations of Deep Q-Learning
    • Building a navigation agent from scratch
    • Python programming for reinforcement learning
    • Understanding state representation
    • Action selection strategies
    • Reward computation
    • Q-value estimation
    • DQN (Deep Q-Network) architecture
    • Neural network layers and their role
    • Exploration-exploitation trade-off
    • Optimization algorithms
    • Loss functions and gradients
    • Backpropagation
    • Explaining the math behind Deep Q-Learning

    Who is this for?


  • Students and learners interested in reinforcement learning and its applications
  • Data scientists and machine learning practitioners wanting to expand their knowledge in Deep Q-Learning
  • Programmers and developers looking to implement intelligent navigation systems
  • Researchers and academics exploring the field of artificial intelligence and deep learning
  • Professionals seeking to enhance their understanding of Q-Learning and its mathematical foundations
  • Enthusiasts interested in building intelligent agents and exploring the intersection of code and math
  • What You Need to Know?


  • Basic knowledge of Python programming language
  • Familiarity with fundamental concepts of reinforcement learning
  • Understanding of basic mathematical concepts (linear algebra, calculus)
  • More details


    Description

    Embark on a captivating journey into the realm of Deep Q-Learning and unravel the secrets behind intelligent navigation. In this immersive course, we delve deep into the code and math that power this groundbreaking reinforcement learning technique. Brace yourself for an exhilarating exploration where you'll gain a comprehensive understanding of Deep Q-Learning while dissecting each line of code, peering into the intricacies of the mathematical foundations.


    Throughout this course, you'll undertake an exciting project that brings Deep Q-Learning to life. By building a powerful agent from scratch, you'll witness firsthand the transformation of a blank slate into an intelligent navigator. With Python and the PyTorch library as your tools, you'll embark on a mission to navigate a grid-based environment, with the ultimate goal of reaching a designated target location.


    As you progress, you'll unravel the mysteries of the math behind Deep Q-Learning. Every step of the way, we'll meticulously explain the mathematical concepts underpinning the code, ensuring you develop a solid grasp of the underlying principles. From state representation and action selection to reward computation and Q-value estimation, you'll gain a deep understanding of the mathematical foundations that drive intelligent decision-making.


    Guided by expert instructors, you'll explore the inner workings of the DQN (Deep Q-Network) model, comprehending the architecture and its role in approximating Q-values. You'll dive into the intricacies of neural networks, witnessing how each layer contributes to the agent's decision-making process. By dissecting the code and examining the model's behavior, you'll uncover the secrets behind intelligent action selection.


    But that's not all – you'll also tackle the challenges of training the agent. Discover the exploration-exploitation trade-off as you learn to balance the agent's curiosity and exploitation of learned knowledge. Witness the power of optimization algorithms and delve into the intricacies of loss functions, gradients, and backpropagation. Through rigorous training, you'll witness the agent's continuous improvement, learning how to mold its behavior through the application of rewards and penalties.


    By the end of this course, you'll emerge as a proficient Deep Q-Learning practitioner, equipped with the knowledge and skills to design intelligent agents capable of navigating complex environments. You'll have a deep understanding of the fundamental concepts, the ability to dissect and comprehend code, and the expertise to explain the math behind each line. Prepare to unlock the potential of Deep Q-Learning and embark on a transformative learning journey like no other.


    Enroll now and unravel the power of Deep Q-Learning with code and math as your guides!

    Who this course is for:

    • Students and learners interested in reinforcement learning and its applications
    • Data scientists and machine learning practitioners wanting to expand their knowledge in Deep Q-Learning
    • Programmers and developers looking to implement intelligent navigation systems
    • Researchers and academics exploring the field of artificial intelligence and deep learning
    • Professionals seeking to enhance their understanding of Q-Learning and its mathematical foundations
    • Enthusiasts interested in building intelligent agents and exploring the intersection of code and math

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    Abdurrahman TEKIN
    Abdurrahman TEKIN
    Instructor's Courses
    My name is Abdurrahman Tekin and I am a Ph.D. student in the field of aircraft design. In addition to my research, I also have extensive experience in teaching. I have been teaching for the last 4 years and have had the privilege of working with students from 161 different countries.As a teacher, I specialize in teaching Chinese, English, and Python. I have a passion for these languages and enjoy sharing my knowledge with my students. With my expertise, I am confident that I can help you improve your language skills and achieve your goals.In addition to my teaching experience, I also have a strong background in research. As a Ph.D. student in aircraft design, I have a deep understanding of the latest techniques and technologies in the field. This allows me to provide my students with valuable insights and practical knowledge that can be applied in real-world situations.Overall, I am committed to providing a high-quality learning experience for my students. I am dedicated to helping you achieve your goals, and I am always available to answer any questions you may have. Whether you are a beginner or an advanced learner, I am confident that I can help you improve your skills and reach your full potential.
    Students take courses primarily to improve job-related skills.Some courses generate credit toward technical certification. Udemy has made a special effort to attract corporate trainers seeking to create coursework for employees of their company.
    • language english
    • Training sessions 16
    • duration 4:33:24
    • Release Date 2024/09/18