This repository hosts the accompanying software for the following research article.
Research article: Transformer Models for Quantum Gate Set Tomography
Quantum computation represents a promising frontier in the domain of high-performance computing, blending quantum information theory with practical applications to overcome the limitations of classical computation. This study investigates the challenges of manufacturing high-fidelity and scalable quantum processors. Quantum gate set tomography (QGST) is a critical method for characterizing quantum processors and understanding their operational capabilities and limitations. This paper introduces
@article{yu2024transformer,
title={Transformer Models for Quantum Gate Set Tomography},
author={Yu, King Yiu and Sarkar, Aritra and Ishihara, Ryoichi and Feld, Sebastian},
journal={arXiv preprint arXiv:2405.02097},
year={2024}
}