Artificial Intelligence for Quantum Computing

Yuri Alexeev, Marwa H. Farag, Taylor L. Patti, Mark E. Wolf, Natalia Ares, Alán Aspuru-Guzik, Simon C. Benjamin, Zhenyu Cai, Zohim Chandani, Federico Fedele, Nicholas Harrigan, Jin-Sung Kim, Elica Kyoseva, Justin G. Lietz, Tom Lubowe, Alexander McCaskey, Roger G. Melko, Kouhei Nakaji, Alberto Peruzzo, Sam Stanwyck, Norm M. Tubman, Hanrui Wang, Timothy Costa
NVIDIA, Oxford, University of Toronto, Vector Institute, Quantum Motion, University of Waterloo, Perimeter Institute for Theoretical Physics, Qubit Pharmaceuticals, NASA, UCLA
(* indicates equal contribution)

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Abstract

Artificial intelligence (AI) advancements over the past few years have had an unprecedented and revolutionary impact across everyday application areas. Its significance also extends to technical challenges within science and engineering, including the nascent field of quantum computing (QC). The counterintuitive nature and high-dimensional mathematics of QC make it a prime candidate for AI’s data-driven learning capabilities, and in fact, many of QC’s biggest scaling challenges may ultimately rest on developments in AI. However, bringing leading techniques from AI to QC requires drawing on disparate expertise from arguably two of the most advanced and esoteric areas of computer science. Here we aim to encourage this cross-pollination by reviewing how state-of-the-art AI techniques are already advancing challenges across the hardware and software stack needed to develop useful QC - from device design to applications. We then close by examining its future opportunities and obstacles in this space.

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Citation

@article{alexeev2024artificial,  title={Artificial Intelligence for Quantum Computing},  author={Alexeev, Yuri and Farag, Marwa H and Patti, Taylor L and Wolf, Mark E and Ares, Natalia and Aspuru-Guzik, Al{\'a}n and Benjamin, Simon C and Cai, Zhenyu and Chandani, Zohim and Fedele, Federico and others},  journal={arXiv preprint arXiv:2411.09131},  year={2024}}

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