Deep Reinforcement Learning 20

Course Feature
  • Cost
    Paid
  • Provider
    Udemy
  • Certificate
    Paid Certification
  • Language
    English
  • Start Date
    2023-01-09
  • Learners
    No Information
  • Duration
    No Information
  • Instructor
    Hadelin de PontevesSuperDataScience TeamLigency Te
Next Course
4.4
10,246 Ratings
This Deep Reinforcement Learning 2.0 course is the perfect opportunity to learn and implement a new incredibly smart AI model. With this course, you will learn and understand the fundamentals of Artificial Intelligence, including Q-Learning, Deep Q-Learning, Policy Gradient, Actor-Critic and more. You will also gain an in-depth understanding of the Twin-Delayed DDPG model and its training process. Finally, you will be able to implement the model from scratch, step by step, and practice coding exercises on the free and open source AI platform, Google Colab. Don't miss out on this amazing opportunity to master this highly advanced model!
Show All
Course Overview

❗The content presented here is sourced directly from Udemy platform. For comprehensive course details, including enrollment information, simply click on the 'Go to class' link on our website.

Updated in [August 18th, 2023]

Skills and Knowledge:
By taking this course, you will acquire a wide range of skills and knowledge related to Artificial Intelligence, including Q-Learning, Deep Q-Learning, Policy Gradient, Actor-Critic, and the Twin-Delayed DDPG model. You will gain an understanding of the theory behind the model, as well as the ability to implement it from scratch using Google Colab. Additionally, you will have the opportunity to practice coding exercises and gain hands-on experience with the model.
Professional Growth:
This course contributes to professional growth by providing a comprehensive overview of the fundamentals of Artificial Intelligence, as well as a detailed explanation of the Twin-Delayed DDPG model. Through interactive coding exercises, participants will gain hands-on experience in implementing the model from scratch, and will be able to apply their knowledge to solve challenging virtual AI applications. Additionally, the course will provide participants with the opportunity to practice their skills on a free and open source AI platform, Google Colab, which will help them to stay up-to-date with the latest AI technologies.
Further Education:
This course is suitable for preparing further education as it covers the fundamentals of Artificial Intelligence, provides an in-depth look at the Twin-Delayed DDPG theory, and offers an implementation of the model from scratch. The interactive sessions and coding exercises will help to strengthen understanding of the concepts and provide hands-on experience with the model. Additionally, the use of Google Colab allows for easy access to the AI platform without the need to install any packages.

Course Syllabus

Part 1 - Fundamentals

Part 2 - Twin Delayed DDPG Theory

Part 3 - Twin Delayed DDPG Implementation

The Final Demo!

Annex 1 - Artificial Neural Networks

Annex 2 - Q-Learning

Annex 3 - Deep Q-Learning

Special Content

Show All
Recommended Courses
modern-reinforcement-learning-actor-critic-algorithms-14382
Modern Reinforcement Learning: Actor-Critic Algorithms
4.5
Udemy 2,791 learners
Learn More
This advanced course on deep reinforcement learning will teach you how to implement policy gradient, actor critic, deep deterministic policy gradient (DDPG), twin delayed deep deterministic policy gradient (TD3), and soft actor critic (SAC) algorithms in a variety of challenging environments. With a strong focus on dealing with environments with continuous action spaces, this course is perfect for those looking to do research into robotic control with deep reinforcement learning. You will learn a repeatable framework for quickly implementing the algorithms in advanced research papers, and master the answers to the fundamental questions in Actor-Critic methods. If you are a highly motivated and advanced student with prior course work in calculus, reinforcement learning, and deep learning, this course is for you.
reinforcement-learning-ai-flight-with-unity-ml-agents-14383
Reinforcement Learning: AI Flight with Unity ML-Agents
4.8
Udemy 965 learners
Learn More
This course is perfect for anyone interested in the intersection of video games and artificial intelligence. With Unity ML-Agents, you can watch your neural network learn in a real-time 3d environment based on rewards for good behavior. Learn how to use and train the example content, create custom assets with Blender, and build a full game with menus for level and difficulty selection. No prior knowledge of deep learning or reinforcement learning is required. By the end of the course, you'll have a complete game that you can share, add to your portfolio, or sell.
artificial-intelligence-iv-reinforcement-learning-in-java-14384
Artificial Intelligence IV - Reinforcement Learning in Java
4.7
Udemy 1,842 learners
Learn More
This course is perfect for those interested in Artificial Intelligence and Reinforcement Learning. It covers the mathematical background of Reinforcement Learning, such as Markov Decision Processes, value-iteration, policy-iteration and Q-learning. It also covers pathfinding algorithms with Q-learning and Q-learning with neural networks. This course is a great way to learn the state-of-the-art approach to Reinforcement Learning and gain a better understanding of Artificial Intelligence.
machine-learning-beginner-reinforcement-learning-in-python-14385
Machine Learning: Beginner Reinforcement Learning in Python
4.6
Udemy 497 learners
Learn More
This course is perfect for beginners to machine learning. In this course, you will learn to code a neural network in Python capable of delayed gratification. You will be introduced to the concept of reinforcement learning, and use the NChain game provided by the Open AI institute to understand how the computer can get a small reward if it goes backwards, but a much larger reward if it learns to make short term sacrifices by persistently pressing forwards. You will also learn Deep Q Learning - a revolutionary technique invented by Google DeepMind to teach neural networks to play chess, Go and Atari. Join this course to explore the exciting advances in artificial intelligence and learn to code a neural network in Python.
Favorites (0)
Favorites
0 favorite option

You have no favorites

Name delet