First quantum machine learning applications on an on-site room-temperature quantum computer
Abstract
We demonstrate - for the first time - the application of a quantum machine learning (QML) algorithm on an on-site room-temperature quantum computer. A two-qubit quantum computer installed at the Pawsey Supercomputing Centre in Perth, Australia, is used to solve multi-class classification problems on unseen, i.e. untrained, 2D data points. The underlying 1-qubit model is based on the data re-uploading framework of the universal quantum classifier and was trained on an ideal quantum simulator using the Adam optimiser. No noise models or device-specific insights were used in the training process. The optimised model was deployed to the quantum device by means of a single XYX decomposition leading to three parameterised single qubit rotations. The results for different classification problems are compared to the optimal results of an ideal simulator. The room-temperature quantum computer achieves very high classification accuracies, on par with ideal state vector simulations.
Cite
@article{arxiv.2312.11673,
title = {First quantum machine learning applications on an on-site room-temperature quantum computer},
author = {Nils Herrmann and Mariam Akhtar and Daanish Arya and Marcus W. Doherty and Pascal Macha and Florian Preis and Stefan Prestel and Michael L. Walker},
journal= {arXiv preprint arXiv:2312.11673},
year = {2023}
}
Comments
7 pages, 5 figures