A Machine Learning Approach to Generate Quantum Light
Abstract
Spontaneous parametric down-conversion (SPDC) is a key technique in quantum optics used to generate entangled photon pairs. However, generating a desirable D-dimensional qudit state in the SPDC process remains a challenge. In this paper, we introduce a physically-constrained and differentiable model to overcome this challenge, and demonstrate its effectiveness through the design of shaped pump beams and structured nonlinear photonic crystals. We avoid any restrictions induced by the stochastic nature of our physical process and integrate a set of stochastic dynamical equations governing its evolution under the SPDC Hamiltonian. Our model is capable of learning the relevant interaction parameters and designing nonlinear quantum optical systems that achieve desired quantum states. We show, theoretically and experimentally, how to generate maximally entangled states in the spatial degree of freedom. Additionally, we demonstrate all-optical coherent control of the generated state by reshaping the pump beam. Our work has potential applications in high-dimensional quantum key distribution and quantum information processing.
Cite
Text
Rozenberg et al. "A Machine Learning Approach to Generate Quantum Light." ICLR 2023 Workshops: Physics4ML, 2023.Markdown
[Rozenberg et al. "A Machine Learning Approach to Generate Quantum Light." ICLR 2023 Workshops: Physics4ML, 2023.](https://mlanthology.org/iclrw/2023/rozenberg2023iclrw-machine/)BibTeX
@inproceedings{rozenberg2023iclrw-machine,
title = {{A Machine Learning Approach to Generate Quantum Light}},
author = {Rozenberg, Eyal and Karnieli, Aviv and Yesharim, Ofir and Foley-Comer, Joshua and Trajtenberg-Mills, Sivan and Mishra, Sarika and Prabhakar, Shashi and Singh, Ravindra Pratap and Freedman, Daniel and Bronstein, Alex M. and Arie, Ady},
booktitle = {ICLR 2023 Workshops: Physics4ML},
year = {2023},
url = {https://mlanthology.org/iclrw/2023/rozenberg2023iclrw-machine/}
}