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Variational Learning of Integrated Quantum Photonic Circuits via Genetic Algorithm.

Authors :
Zhang, Hui
Yang, Chengran
Mok, Wai‐Keong
Wan, Lingxiao
Cai, Hong
Li, Qiang
Gao, Feng
Luo, Xianshu
Lo, Guo‐Qiang
Chin, Lip Ket
Shi, Yuzhi
Thompson, Jayne
Gu, Mile
Liu, Ai Qun
Source :
Laser & Photonics Reviews. Dec2024, p1. 8p. 7 Illustrations.
Publication Year :
2024

Abstract

Integrated photonic circuits play a crucial role in implementing quantum information processing in the noisy intermediate‐scale quantum (NISQ) era. Variational learning is a promising avenue that leverages classical optimization techniques to enhance quantum advantages on NISQ devices. However, most variational algorithms are circuit‐model‐based and encounter challenges when implemented on integrated photonic circuits, because they involve explicit decomposition of large quantum circuits into sequences of basic entangled gates, leading to an exponential decay of success probability due to the non‐deterministic nature of photonic entangling gates. Here, a variational learning approach is presented for designing quantum photonic circuits, which directly incorporates post‐selection and elementary photonic components into the training process. The complicated circuit is treated as a single nonlinear logical operator and a unified design is discovered for it through variational learning. Engineering an integrated photonic chip with automated control achieved by genetic algorithm, the internal parameters of the chip are adjusted and optimized in real‐time for task‐specific cost functions. A simple case of designing photonic circuits for a single ancilla CNOT gate with improved success rate is utilized to illustrate how the proposed approach works, and then the approach is applied to the first demonstration of quantum stochastic simulation using integrated photonics. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
18638880
Database :
Academic Search Index
Journal :
Laser & Photonics Reviews
Publication Type :
Academic Journal
Accession number :
181877199
Full Text :
https://doi.org/10.1002/lpor.202400359