TL;DR
This paper introduces a scalable method for optimizing qubit assignment in noisy quantum computers using simulated annealing and Loschmidt Echo diagnostics, improving performance evaluation without extensive experimental overhead.
Contribution
It proposes a novel qubit assignment approach based on Loschmidt Echo and simulated annealing, with theoretical and experimental validation on real quantum hardware.
Findings
Loschmidt Echo correlates with state fidelity in weak error regimes.
Simulated annealing effectively finds high-quality qubit assignments.
Method scales well with device size and noise levels.
Abstract
As the number of qubits available on noisy quantum computers grows, it will become necessary to efficiently select a subset of physical qubits to use in a quantum computation. For any given quantum program and device there are many ways to assign physical qubits for execution of the program, and assignments will differ in performance due to the variability in quality across qubits and entangling operations on a single device. Evaluating the performance of each assignment using fidelity estimation introduces significant experimental overhead and will be infeasible for many applications, while relying on standard device benchmarks provides incomplete information about the performance of any specific program. Furthermore, the number of possible assignments grows combinatorially in the number of qubits on the device and in the program, motivating the use of heuristic optimization…
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