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Commandline application to calibrate the WACQT quantum computers automatically

Project description

Tergite Automatic Calibration

CI

A commandline application to calibrate the WACQT quantum computers automatically.

This project contains a calibration supervisor, a collection of calibration schedules and a collection of post-processing and analysis routines. It is developed and tested on WACQT Quantum Computer at Chalmers University of Technology.

This project is developed by a core group of collaborators.
Chalmers Next Labs AB (CNL) takes on the role of managing and maintaining this project.

Note: The Tergite stack is developed on a separate version control system and mirrored on GitHub. If you are reading this on GitHub, then you are looking at a mirror.

Quick Start

Dependencies

  • Ensure you have conda installed. (You could simply have python +3.12 installed instead.)
  • Ensure you have redis server running
  • The standard port for a redis server is 6379, so, this is going to be filled in the .env configuration later.
redis-server

Installation

  • Clone the repo
  • If you are developing on another server e.g. the development server, please replace the url to clone
git clone git@github.com:tergite/tergite-autocalibration.git
  • Create conda environment
conda create -n tac -y python=3.12 -y
conda activate tac
  • Install the application
cd tergite-autocalibration
pip install -e .
  • Copy the .example.env file to .env and update the environment variables there appropriately.
  • Check out the section about configuration about which other configuration files have to be edited.
cp .example.env .env
  • Start the automatic calibration
acli start
  • For more help on other commands, type:
acli --help

Documentation

The documentation is maintained using Quarto. Everytime there is a release, you can find the documentation from the release on https://tergite.github.io/tergite-autocalibration.

To see the documentation for the branch that you are currently working on, please open the docs/index.html file in your browser. If the rendered documentation does not reflect the state of the documentation of the markdown files in docs_editable, open a terminal in docs_editable and run:

quarto preview

If you are interested to edit the documentation, please check out the documentation section in the contribution guidelines. There is also a page in the documentation to help you with writing better documentation.

Contributing to the project

If you would like to contribute to tergite-autocalibration, please have a look at our contribution guidelines.

Authors

This project is a work of many contributors.

Special credit goes to the authors of this project as seen in the CREDITS file.

Change log

To view the changelog for each version, have a look at the CHANGELOG.md file.

License

When you submit code changes, your submissions are understood to be under the same Apache 2.0 License that covers the project.

Acknowledgements

This project was sponsored by:

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