2.5 KiB
Training on Amazon Web Service
This page contains instructions for setting up an EC2 instance on Amazon Web Service for use in training ML-Agents environments. Current limitations of the Unity Engine require that a screen be available to render to. In order to make this possible when training on a remote server, a virtual screen is required. We can do this by installing Xorg and creating a virtual screen. Once installed and created, we can display the Unity environment in the virtual environment, and train as we would on a local machine.
Instructions here are adapted from this Medium post on running general Unity applications in the cloud.
- To begin with, you will need an EC2 instance which contains the latest Nvidia drivers, CUDA8, and cuDNN. There are a number of external tutorials which describe this, such as:
- Move
python
to remote instance. - Install the required packages with
pip install .
. - Run the following commands to install Xorg:
sudo apt-get update sudo apt-get install -y xserver-xorg mesa-utils sudo nvidia-xconfig -a --use-display-device=None --virtual=1280x1024
- Restart the EC2 instance.
- On start-up, run:
sudo /usr/bin/X :0 & export DISPLAY=:0
Depending on how Xorg is configured, you may need to run
sudo killall Xorg
before starting Xorg with the above command. - To ensure the installation was succesful, run
glxgears
. If there are no errors, then Xorg is correctly configured. - There is a bug in Unity 2017.1 which requires the uninstallation of
libxrandr2
, which can be removed withapt-get remove --purge libxrandr2
. This is scheduled to be fixed in 2017.3.
If all steps worked correctly, upload an example binary built for Linux to the instance, and test it from python with:
from unityagents import UnityEnvironment
env = UnityEnvironment(your_env)
You should receive a message confirming that the environment was loaded succesfully.