Quantum-Challenge-Grader
Quantum-Challenge-Grader copied to clipboard
Grading client for the IBM Quantum Challenges
Quantum Challenge Grader
Grading client for the IBM Quantum Challenge grading service.
Run locally
Pre-requisites:
- IBM Quantum account
-
Python (3.10 or later) environment with
- Classic Jupyter Notebook interface or JupyterLab
- Qiskit
To install the grader locally:
-
In the Python environment, install the grading client
pip install git+https://github.com/qiskit-community/Quantum-Challenge-Grader.git
Alternatively, if you also need to install JupyterLab and Qiskit along with the grader you can instead run:
pip install 'qc-grader[qiskit,jupyter] @ git+https://github.com/qiskit-community/Quantum-Challenge-Grader.git'
-
Configure the
QXToken
environment variablesFrom a terminal (before launching your JupyterLab environment), enter
export QXToken=your_quantum_api_token
where
your_quantum_api_token
is your IBM Quantum API Token found in your Account Profile.Alternatively, if you prefer you can instead run the following at the top cell of a notebook cell (whenever you start/restart the kernel)
%set_env QXToken=your_quantum_api_token
Note: you can check if the environment variable has been set by running the following in a notebook cell:
import os print(os.getenv('QXToken'))
Usage
-
Open an exercise notebook
- In IBM Quantum Lab, the notebooks can be found in the
quantum-challenge
folder in the Lab files panel - For local install, download the notebooks (from IBM Quantum Lab or specific challenge repo) and import into local Jupyter environment
- In IBM Quantum Lab, the notebooks can be found in the
-
Run the notebook cells, answering the exercises and submitting solution for grading. For example
from qc_grader.challenges.challenge_2021 import grade_lab1_ex1 grade_lab1_ex1(qc_1)
from qc_grader.challenges.challenge_2021 import grade_lab1_ex2 grade_lab1_ex2(qc_2)