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Robust and efficient algorithms for high-dimensional black-box quantum optimization

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Abstract

Hybrid quantum-classical optimization using near-term quantum technology is an emerging direction for exploring quantum advantage in high-dimensional systems. However, precise characterization of all experimental parameters is often impractical and challenging. A viable approach is to use algorithms that rely only on black-box inference rather than analytical gradients. Here, we combine randomized perturbation gradient estimation with adaptive momentum gradient updates to create the AdamSPSA and AdamRSGF algorithms. We prove the asymptotic convergence of our algorithms in a convex setting, and we benchmark them against other gradient-based optimization algorithms on non-convex optimal control tasks. Our results show that these new algorithms accelerate the convergence rate, decrease the variance of loss trajectories, and efficiently tune up high-fidelity (above 99.9%) Hann-window single-qubit gates from trivial initial conditions with twenty variables.

Leng et al. arXiv:1910.03591

Presenters

  • Zhaoqi Leng

    Physics, Princeton University, Princeton University

Authors

  • Zhaoqi Leng

    Physics, Princeton University, Princeton University

  • Pranav Mundada

    Princeton University, Department of Electrical Engineering, Princeton University, Electrical Engineering, Princeton University

  • Saeed Ghadimi

    Operations Research and Financial Engineering, Princeton University

  • Andrew Houck

    Princeton University, Electrical Engineering, Princeton University, Department of Electrical Engineering, Princeton University