3.9 Article

Robust implementation of generative modeling with parametrized quantum circuits

Journal

QUANTUM MACHINE INTELLIGENCE
Volume 3, Issue 1, Pages -

Publisher

SPRINGERNATURE
DOI: 10.1007/s42484-021-00040-2

Keywords

NISQ; Quantum machine learning; Generative modeling; Unsupervised machine learning; Quantum circuit Born machine

Funding

  1. ASCR Quantum Testbed Pathfinder Program at Oak Ridge National Laboratory under FWP [ERKJ332]

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This study evaluated the on-hardware performance of hybrid quantum-classical algorithms using Rigetti's Quantum Cloud Services, focusing on different classical solvers and circuit ansatze. The results showed that gradient-free optimization algorithms outperformed gradient-based solvers, especially in handling noisy objective functions under experimental conditions.
Although the performance of hybrid quantum-classical algorithms is highly dependent on the selection of the classical optimizer and the circuit ansatze (Benedetti et al, npj Quantum Inf 5:45, 2019; Hamilton et al, 2018; Zhu et al, 2018), a robust and thorough assessment on-hardware of such features has been missing to date. From the optimizer perspective, the primary challenge lies in the solver's stochastic nature, and their significant variance over the random initialization. Therefore, a robust comparison requires one to perform several training curves for each solver before one can reach conclusions about their typical performance. Since each of the training curves requires the execution of thousands of quantum circuits in the quantum computer, such a robust study remained a steep challenge for most hybrid platforms available today. Here, we leverage on Rigetti's Quantum Cloud Services (QCS (TM)) to overcome this implementation barrier, and we study the on-hardware performance of the data-driven quantum circuit learning (DDQCL) for three different state-of-the-art classical solvers, and on two-different circuit ansatze associated to different entangling connectivity graphs for the same task. Additionally, we assess the gains in performance from varying circuit depths. To evaluate the typical performance associated with each of these settings in this benchmark study, we use at least five independent runs of DDQCL towards the generation of quantum generative models capable of capturing the patterns of the canonical Bars and Stripes dataset. In this experimental benchmarking, the gradient-free optimization algorithms show an outstanding performance compared to the gradient-based solver. In particular, one of them had better performance when handling the unavoidable noisy objective function to be minimized under experimental conditions.

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