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This is the Python backend for the new EyeTrackVR App. :shipit:

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EyeTrackVR Backend

This is the eye tracking backend for the new EyeTrackVR App.
As this project is still in heavy development its API can and will change without warning!

Development

Requirements

Application Architecture

This documentation is meant to give a high level overview of the backend, things have been simplified for the sake of my sanity.

To avoid performance problems within python itself this backend has been designed in a unique slightly non-pythonic way.
The main performance bottleneck in python is the GIL (Global Interpreter Lock) which prevents multiple threads from running at the same time, we can get around this by using multiple processes instead of threads.
So thats exactly what we do, each computationally expensive task is run in its own process, this allows us to utilize all of the CPU cores on the system while completely avoiding the GIL.
At runtime the backend will spawn 3 sub-processes per active Tracker instance, this means that if you have 2 active trackers defined in the config we will spawn 6 sub-processes, meaning in total the backend will have 7 processes running, this may seem like a lot but it doesnt impact overall system performance as much as you would think.

Rundown of the processes:

  • Main Process (Only 1 will ever exist):
    This process is responsible for spawning and managing all other processes, it also handles the rest API and config management
  • Manager Process (Only 1 will ever exist):
    This process is responsible for managing all IPC (Inter Process Communication) between the main process and all sub-processes
  • Camera Process (Each active tracker will have 1):
    This process is responsible for capturing images from the camera and sending them to the tracker process
  • Tracker Process (Each active tracker will have 1):
    This process is responsible for processing the images sent by the camera process, it does this by running algorithms (defined in the config) on the image and then sending the results to the OSC process
  • OSC Process (Each active tracker will have 1):
    This process is responsible for sending the results from the tracker process to the OSC server defined in the config

All processes communicate with each other using IPC (Inter Process Communication) and are completely isolated from each other, this means that if one process crashes it will not affect any other processes and we can simply restart the crashed process without having to restart the entire backend.
If you are wondering how we keep a updated copy of the config in each process, the short answer is we dont directly share the config between processes because it is impossible to share a nested dict (trust me i tried for months), instead we spawn a thread in each process that listens for changes in the config file, once a change is detected the thread will update the processes copy of the config and trigger callback functions depending on what changed.
This means that if you change the config file while the backend is running the changes will be propegated and applied to all processes without having to restart any components of the backend.

Setting up a development enviroment

  1. Install the latest version of the Git CLI

  2. Install and setup a version of Python 3.11

  3. Install Poetry >1.6.0
    (it is recomened you install poetry globally with the shell script and not pip)

  4. Clone this repository with

git clone --recusive https://github.com/EyeTrackVR/ETVR-Backend.git
  1. navigate into the cloned repository
cd ETVR-Backend
  1. Install project dependencies with poetry
poetry install --no-root

Starting the development server

By default the development server will be hosted on http://127.0.0.1:8000/
The backend is controlled entirely through its rest API by itself this backend does not provide a GUI, i recomend reading the docs located at http://127.0.0.1:8000/docs#/ to get a better understanding of how the app and it's API works.

Please note that by default hot reloading is enabled, saving code while processes are active can result in undefined behavour!
To start the local development server run either of the following commands.

python build.py run
cd TrackingBackend/ && poetry run uvicorn --factory main:setup_app --reload --port 8000

The build script

This project uses a custom build script to automate common tasks such as linting, testing and building.
To see a list of all available commands run the following command.

python build.py help

Build Script Commands

Running the CI/CD pipeline locally

This project utilizes the following in its automated CI/CD pipeline:
black for code formatting, ruff for linting, pytest for unit testing and mypy for type checking.
To run the CI/CD pipeline locally you can use the lint command in the build script.

python build.py lint

Building the backend

Building the backend is done with pyinstaller, the build script will automatically install pyinstaller and bundle the backend into a single executable.
On linux you may need to install pyinstaller using your package manager

python build.py build

If you want to build the backend manually you can do so with the following command.

poetry run pyinstaller ETVR.spec TrackingBackend/main.py

Profiling

If you encounter any performance issues you can profile the backend using viztracer.
To start profiling run the following command, this will start the backend and generate a result.json which can be opened with vizviewer
If you dont like viztracer you can use almost any other profiler (multi-processing and multi-threading support is required)
currently using the build script to start profiling is broken!

cd TrackingBackend/ && poetry run viztracer main.py

License

Unless explicitly stated otherwise all code contained within this repository is under the MIT License