FOCQS: Feedback Optimally Controlled Quantum States
Quantum optimization, both for classical and quantum functions, is one of the most well-studied applications of quantum computing, but recent trends have relied on hybrid methods that push much of the fine-tuning off onto costly classical algorithms. Feedback-based quantum algorithms, such as FALQON...
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Zusammenfassung: | Quantum optimization, both for classical and quantum functions, is one of the
most well-studied applications of quantum computing, but recent trends have
relied on hybrid methods that push much of the fine-tuning off onto costly
classical algorithms. Feedback-based quantum algorithms, such as FALQON, avoid
these fine-tuning problems but at the cost of additional circuit depth and a
lack of convergence guarantees. In this work, we take the local greedy
information collected by Lyapunov feedback control and develop an analytic
framework to use it to perturbatively update previous control layers, similar
to the global optimal control achievable using Pontryagin optimal control. This
perturbative methodology, which we call Feedback Optimally Controlled Quantum
States (FOCQS), can be used to improve the results of feedback-based
algorithms, like FALQON. Furthermore, this perturbative method can be used to
push smooth annealing-like control protocol closer to the control optimum, even
providing and iterative approach, albeit with diminishing returns. In numerical
testing, we show improvements in convergence and required depth due to these
methods over existing quantum feedback control methods. |
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DOI: | 10.48550/arxiv.2409.15426 |