/deep-rl-class

This repo contain the syllabus of the Hugging Face Deep Reinforcement Learning Class.

Primary LanguageJupyter Notebook

The Hugging Face Deep Reinforcement Learning Class πŸ€—

In this free course, you will:

  • πŸ“– Study Deep Reinforcement Learning in theory and practice.
  • πŸ§‘β€πŸ’» Learn to use famous Deep RL libraries such as Stable Baselines3, RL Baselines3 Zoo, and RLlib.
  • πŸ€– Train agents in unique environments such as SnowballFight, Huggy the Doggo 🐢, and classical ones such as Space Invaders and PyBullet.
  • πŸ’Ύ Publish your trained agents in one line of code to the Hugging Face Hub. But also download powerful agents from the community.
  • πŸ† Participate in challenges where you will evaluate your agents against other teams.
  • πŸ–ŒοΈπŸŽ¨ Learn to share your own environments made with Unity and Godot.

➑️➑️➑️ Don't forget to sign up here: http://eepurl.com/h1pElX

The best way to keep in touch is to join our discord server to exchange with the community and with us πŸ‘‰πŸ» https://discord.gg/aYka4Yhff9

Are you new to Discord? Check our discord 101 to get the best practices πŸ‘‰ https://github.com/huggingface/deep-rl-class/blob/main/DISCORD.Md

And don't forget to share with your friends who want to learn πŸ€—!

The Syllabus πŸ—οΈ

This course is self-paced you can start when you want πŸ₯³.

πŸ“† Publishing date πŸ“˜ Unit πŸ‘©β€πŸ’» Hands-on
Published πŸ₯³ An Introduction to Deep Reinforcement Learning Train a Deep Reinforcement Learning lander agent to land correctly on the Moon πŸŒ• using Stable-Baselines3
Published πŸ₯³ Bonus
Published πŸ₯³ Q-Learning Train an agent to cross a Frozen lake β›„ and train an autonomous taxi πŸš–.
Published πŸ₯³ Deep Q-Learning Train a Deep Q-Learning agent to play Space Invaders using RL-Baselines3-Zoo
Published πŸ₯³ Bonus: Automatic Hyperparameter Tuning using Optuna
Published πŸ₯³ 🎁 Learn to train your first Unity MLAgent Train a curious agent to destroy Pyramids πŸ’₯
Published πŸ₯³ Policy Gradient with PyTorch Code a Reinforce agent from scratch using PyTorch and train it to play Pong 🎾, CartPole and Pixelcopter 🚁
Published πŸ₯³ Towards better explorations methods with Curiosity
Published πŸ₯³ Advantage Actor Critic (A2C) Train a bipedal walker and a spider to learn to walk using A2C
August the 5th Proximal Policy Optimization (PPO) πŸ—οΈ
August Decision Transformers and offline Reinforcement Learning πŸ—οΈ

The library you'll learn during this course

The Environments you'll use

Custom environments made by the Hugging Face Team using Unity and Godot

Gym classic controls environments πŸ•ΉοΈ

  • Lunar-Lander v2 πŸš€πŸŒ™

lunarlander.gif

PyBullet πŸ€–

  • More to come 🚧

Gym Atari environments πŸ‘Ύ

  • Space Invaders πŸ‘Ύ

spaceinvaders.gif

MLAgents environments πŸ–ŒοΈ

  • More to come 🚧

Prerequisites

  • Good skills in Python 🐍
  • Basics in Deep Learning and Pytorch

If it's not the case yet, you can check these free resources:

FAQ

Is this class free?

Yes, totally free πŸ₯³.

Do I need to have a Hugging Face account to follow the course?

Yes, to push your trained agents during the hands-on, you need an account (it's free) πŸ€—.

You can create one here πŸ‘‰ https://huggingface.co/join

What’s the format of the class?

The course consists of 8 Units. In each of the Units, we'll have:

  • A theory explained part: an article and a video (based on Deep Reinforcement Learning Course)
  • A hands-on Google Colab where you'll learn to use famous Deep RL libraries such as Stable Baselines3, RL Baselines3 Zoo, and RLlib to train your agents in unique environments such as SnowballFight, Huggy the Doggo 🐢, and classical ones such as Space Invaders and PyBullet.
  • Some optional challenges: train an agent in another environment, and try to beat the results.

It's not a live course video, so you can watch and read each unit when you want πŸ€— You can check the syllabus here πŸ‘‰ https://github.com/huggingface/deep-rl-class

What I will do during this course?

In this free course, you will:

  • πŸ“– Study Deep Reinforcement Learning in theory and practice.
  • πŸ§‘β€πŸ’» Learn to use famous Deep RL libraries such as Stable Baselines3, RL Baselines3 Zoo, and RLlib.
  • πŸ€– Train agents in unique environments such as SnowballFight, Huggy the Doggo 🐢, and classical ones such as Space Invaders and PyBullet.
  • πŸ’Ύ Publish your trained agents in one line of code to the Hub. But also download powerful agents from the community.
  • πŸ† Participate in challenges where you will evaluate your agents against other teams.
  • πŸ–ŒοΈπŸŽ¨ Learn to share your own environments made with Unity and Godot.

Where do I sign up?

Here πŸ‘‰ http://eepurl.com/h1pElX

Where can I find the course?

On this repository, we'll publish every week the links (chapters, hands-ons, videos).

Where can I exchange with my classmates and with you?

We have a discord server where you can exchange with the community and with us πŸ‘‰πŸ» https://discord.gg/aYka4Yhff9

Don’t forget to introduce yourself when you sign up πŸ€—

I have some feedback

We want to improve and update the course iteratively with your feedback. If you have some, please fill this form πŸ‘‰ https://forms.gle/3HgA7bEHwAmmLfwh9

How much background knowledge is needed?

Some prerequisites:

Good skills in Python 🐍 Basics in Deep Learning and Pytorch

If it's not the case yet, you can check these free resources:

Is there a certificate?

Yes πŸŽ‰. You'll need to upload the eight models with the eight hands-on.

Citing the project

To cite this repository in publications:

@misc{deep-rl-class,
  author = {Simonini, Thomas and Sanseviero, Omar},
  title = {The Hugging Face Deep Reinforcement Learning Class},
  year = {2022},
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {\url{https://github.com/huggingface/deep-rl-class}},
}