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Value-Based Methods

Trained Agents

This repository contains material related to Udacity's Value-based Methods course.

Table of Contents

Tutorials

The tutorials lead you through implementing various algorithms in reinforcement learning. All of the code is in PyTorch (v0.4) and Python 3.

  • Deep Q-Network: Explore how to use a Deep Q-Network (DQN) to navigate a space vehicle without crashing.

Labs / Projects

The labs and projects can be found below. All of the projects use rich simulation environments from Unity ML-Agents.

  • Navigation: In the first project, you will train an agent to collect yellow bananas while avoiding blue bananas.

Resources

OpenAI Gym Benchmarks

Box2d

Dependencies

To set up your python environment to run the code in this repository, follow the instructions below.

  1. Create (and activate) a new environment with Python 3.6.

    • Linux or Mac:
    conda create --name drlnd python=3.6
    source activate drlnd
    • Windows:
    conda create --name drlnd python=3.6 
    activate drlnd
  2. Follow the instructions in this repository to perform a minimal install of OpenAI gym.

    • Install the box2d environment group by following the instructions here.
  3. Clone the repository (if you haven't already!), and navigate to the python/ folder. Then, install several dependencies.

git clone https://github.com/udacity/Value-based-methods.git
cd Value-based-methods/python
pip install .
  1. Create an IPython kernel for the drlnd environment.
python -m ipykernel install --user --name drlnd --display-name "drlnd"
  1. Before running code in a notebook, change the kernel to match the drlnd environment by using the drop-down Kernel menu.

Kernel

Want to learn more?

Come learn with us in the Deep Reinforcement Learning Nanodegree program at Udacity!