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Design and training of an RL agent to control a Quadcopter using Actor-Critic RL method

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Deep-RL-Quadcopter-Controller

Design and training of an RL agent to control a Quadcopter using Actor-Critic RL method

Teaching a Quadcopter How to Fly!

In this project, I will design an agent to fly a quadcopter, and then train it using a actro critic reinforcement learning algorithm.

Project Instructions

  1. Clone the repository and navigate to the downloaded folder.
git clone https://github.com/udacity/RL-Quadcopter-2.git
cd RL-Quadcopter-2
  1. Create and activate a new environment.
conda create -n quadcop python=3.6 matplotlib numpy pandas
source activate quadcop
  1. Create an IPython kernel for the quadcop environment.
python -m ipykernel install --user --name quadcop --display-name "quadcop"
  1. Open the notebook.
jupyter notebook Quadcopter_Project.ipynb
  1. Before running code, change the kernel to match the quadcop environment by using the drop-down menu (Kernel > Change kernel > quadcop). Then, follow the instructions in the notebook.

  2. You will likely need to install more pip packages to complete this project. Please curate the list of packages needed to run your project in the requirements.txt file in the repository.