Section 01
QaML Project Introduction: A Graph Neural Network-Based Framework for Quantum Circuit Output Prediction
QaML is a Python library that combines quantum computing and machine learning. It uses graph neural networks (GNNs) to predict the expected output values of quantum circuits under both noisy and noiseless conditions, providing new ideas for quantum circuit performance evaluation and variational quantum eigensolver (VQE) optimization. The project is maintained by the QUANTUM-AND-ML team, with code hosted on GitHub. The related paper, "Output prediction of quantum circuits based on graph neural networks", was published in the Frontiers of Physics journal.