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QCoDeS compatible driver for the OPX+ from Quantum Machines

Project description

arbok_driver

QCoDeS compatible driver for the OPX+ from Quantum Machines Arbok is taylored for routines using the Quantum Machines OPX(+) quantum control hardware.

Installation

Installation via the latest pip release :

pip install arbok-driver

To install the arbok python package locally follow the steps below:

1) Clone github repository

git clone https://github.com/andncl/arbok_driver.git

2) Prepare conda environment

We create an empty conda environment to avoid interference with other python packages and to manage package dependencies for measurements. Remember to fix the python version as shown below when creating the environment, since some of the modules are not yet compatible with the latest 3.12.

conda create --name <your_env_name> python=3.12
conda activate <your_env_name>
conda install pip

3) Go to repo folder and install local arbok module

pip install -e .

**Do not forget the dot after '-e' **. Arbok should now install all its requirements automatically. If you need additional packages, install them in your new environment called <your_env_name>

4) Install git hooks

Install the git hook so that your notebooks are stripped before committing.

To do this with Microsoft :

.\tools\git.hooks\setupMicrosoft.ps1

To do this with Linux :

./tools/git.hooks/setupLinux.sh

Optional 1) Adding your environment to ipykernel

I recommend running measurements from jupyter lab, which is automatically installed when executing 3). To pick the environment you just created within the jupyter lab application, add it to the ipython kernel.

python -m ipykernel install --user --name <your_env_name>

Optional 2) Live plotting and data inspection with plottr

Data inslection and live plotting can be done with the plottr-inpectr module. To launch it open a terminal and activate your conda environment...

conda activate <your-env-name>

... and launch plottr

plottr-inspectr --dbpath <path-to-your-database>

The data inspector is now running independently of all measurement while beiong connected to the selected database. Select auto-update intervals to have new measurements displayed in real time

Tutorial: Launch jupyter-lab to run measurements

Jupyter notebooks are a very convenient way of cinducting measurements. Code cells can be run one after another data analysis can be done concurrently to measurements. Keeping measurements in notbooks also guaratees a clear separation between the underlying code base and the configuration files of devices and sequences.

Again activate your conda environment and launch jupyterlab

For example to run the first tutorial:

jupyter lab docs/1_parameterizing_sequences.ipynb

Re-launching an existing arbok session

If all running applications have been closed for example when the hosting PC is being restarted, a previously run arbok session can be easily restarted in a few steps.

1) Launching the jupyter notebook

Activate your conda install environment that you created initally. If you are unsure what the name of your environment is type conda env list. After that launch jupyter lab as shown below. To simplyfy navigation, launch jupyter in the directory where your notebooks are saved.

conda activate <your-env-name>
jupyter lab

2) Launching plottr-inspectr

Exactly as described above!

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