Advanced Reinforcement Learning in Python: from DQN to SAC | Udemy

Advanced Reinforcement Learning in Python: from DQN to SAC | Udemy
English | Size: 2.42 GB
Genre: eLearning

What you’ll learn
Master some of the most advanced Reinforcement Learning algorithms.
Learn how to create AIs that can act in a complex environment to achieve their goals.
Create from scratch advanced Reinforcement Learning agents using Python’s most popular tools (PyTorch Lightning, OpenAI gym, Brax, Optuna)
Learn how to perform hyperparameter tuning (Choosing the best experimental conditions for our AI to learn)
Fundamentally understand the learning process for each algorithm.
Debug and extend the algorithms presented.
Understand and implement new algorithms from research papers.

This is the most complete Advanced Reinforcement Learning course on Udemy. In it, you will learn to implement some of the most powerful Deep Reinforcement Learning algorithms in Python using PyTorch and PyTorch lightning. You will implement from scratch adaptive algorithms that solve control tasks based on experience. You will learn to combine these techniques with Neural Networks and Deep Learning methods to create adaptive Artificial Intelligence agents capable of solving decision-making tasks.

This course will introduce you to the state of the art in Reinforcement Learning techniques. It will also prepare you for the next courses in this series, where we will explore other advanced methods that excel in other types of task.

The course is focused on developing practical skills. Therefore, after learning the most important concepts of each family of methods, we will implement one or more of their algorithms in jupyter notebooks, from scratch.

Leveling modules:

– Refresher: The Markov decision process (MDP).

– Refresher: Q-Learning.

– Refresher: Brief introduction to Neural Networks.

– Refresher: Deep Q-Learning.

– Refresher: Policy gradient methods

Advanced Reinforcement Learning:

– PyTorch Lightning.

– Hyperparameter tuning with Optuna.

– Deep Q-Learning for continuous action spaces (Normalized advantage function – NAF).

– Deep Deterministic Policy Gradient (DDPG).

– Twin Delayed DDPG (TD3).

– Soft Actor-Critic (SAC).

– Hindsight Experience Replay (HER).

Who this course is for:
Developers who want to get a job in Machine Learning.
Data scientists/analysts and ML practitioners seeking to expand their breadth of knowledge.
Robotics students and researchers.
Engineering students and researchers.

If any links die or problem unrar, send request to

About WoW Team

I'm WoW Team , I love to share all the video tutorials. If you have a video tutorial, please send me, I'll post on my website. Because knowledge is not limited to, irrespective of qualifications, people join hands to help me.

Speak Your Mind

This site uses Akismet to reduce spam. Learn how your comment data is processed.