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Understand Deep Q-Learning with Code and Math Together

person icon Abdurrahman Tekin

4.6

Understand Deep Q-Learning with Code and Math Together

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

updated on icon Updated on Jun, 2024

language icon Language - English

person icon Abdurrahman Tekin

category icon Python,Python Programming,Data Science and AI ML,ML

Lectures -16

Resources -1

Duration -4.5 hours

4.6

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Course 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!

Goals

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

Prerequisites

Basic knowledge of Python programming language

Familiarity with fundamental concepts of reinforcement learning

Understanding of basic mathematical concepts (linear algebra, calculus)

Understand Deep Q-Learning with Code and Math Together

Curriculum

Check out the detailed breakdown of what’s inside the course

Introduction
1 Lectures
  • play icon Introduction 04:37 04:37
Course Content
15 Lectures
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Instructor Details

Abdurrahman Tekin

Abdurrahman Tekin


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