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Trapped Ion Quantum Computing
Photonic implementation of quantum hidden subgroup database compression
arXiv
Authors: Qianyi Wang, Feiyang Liu, Teng Hu, Kwok Ho Wan, Jie Xie, M. S. Kim, Huangqiuchen Wang, Lijian Zhang, Oscar Dahlsten
Year
2025
Paper ID
17658
Status
Preprint
Abstract Read
~2 min
Abstract Words
167
Citations
N/A
Abstract
We experimentally demonstrate quantum data compression exploiting hidden subgroup symmetries using a photonic quantum processor. Classical databases containing generalized periodicities-symmetries that are in the worst cases inefficient for known classical algorithms to be detect-can efficiently compressed by quantum hidden subgroup algorithms. We implement a variational quantum autoencoder that autonomously learns both the symmetry type e.g., $mathbb{Z}2 times mathbb{Z}2$ vs. $mathbb{Z}4$ and the generalized period from structured data. The system uses single photons encoded in path, polarization, and time-bin degrees of freedom, with electronically controlled waveplates enabling tunable quantum gates. Training via gradient descent successfully identifies the hidden symmetry structure, achieving compression by eliminating redundant database entries. We demonstrate two circuit ansatzes: a parametrized generalized Fourier transform and a less-restricted architecture for Simon's symmetry. Both converge successfully, with the cost function approaching zero as training proceeds. These results provide experimental proof-of-principle that photonic quantum computers can compress classical databases by learning symmetries inaccessible to known efficient classical methods, opening pathways for quantum-enhanced information processing.
Why This Paper Matters
- This paper contributes to the Trapped-Ion Quantum Computing research area in the Quantum Articles archive.
- It adds a 2025 reference point for readers tracking recent quantum research.
- We experimentally demonstrate quantum data compression exploiting hidden subgroup symmetries using a photonic quantum processor.
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