TL;DR
This paper introduces QCPOP, a polynomial optimization method that efficiently finds globally optimal solutions in quantum control problems, significantly outperforming traditional gradient-based methods and enabling solutions previously considered intractable.
Contribution
The paper presents QCPOP, a novel global optimization approach for quantum control that directly finds optimal solutions, overcoming local extrema issues and drastically reducing computation time.
Findings
QCPOP finds global optima in a single run where gradient methods need thousands.
The method achieves speedups of a thousandfold or more.
It demonstrates solving previously intractable quantum control problems.
Abstract
Optimization of constrained quantum control problems powers quantum technologies. This task becomes very difficult when these control problems are nonconvex and plagued with dense local extrema. For such problems current optimization methods must be repeated many times to find good solutions, each time requiring many simulations of the system. Here, we present quantum control via polynomial optimization (QCPOP), a method that eliminates this problem by directly finding globally optimal solutions. The resulting increase in speed, which can be a thousandfold or more, makes it possible to solve problems that were previously intractable. This remarkable advance is due to global optimization methods recently developed for polynomial functions. We demonstrate the power of this method by showing that it obtains an optimal solution in a single run for a problem in which local extrema are so…
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