4.7 Article

A variational toolbox for quantum multi-parameter estimation

期刊

NPJ QUANTUM INFORMATION
卷 7, 期 1, 页码 -

出版社

NATURE RESEARCH
DOI: 10.1038/s41534-021-00425-y

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资金

  1. BMWi (PlanQK)
  2. MATH+ excellence cluster [EF1-7]
  3. Templeton Foundation
  4. DFG [CRC 183]
  5. NWO Gravitation Program Quantum Software Consortium
  6. Projekt DEAL

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This research demonstrates the feasibility of variational quantum algorithms on noisy and intermediate-scale quantum devices to address the core challenge of multi-parameter estimation problems. A general framework is introduced and practical functionality is shown through numerical simulations. By utilizing quantum technology, more optimal quantum metrology protocols have been developed.
With an ever-expanding ecosystem of noisy and intermediate-scale quantum devices, exploring their possible applications is a rapidly growing field of quantum information science. In this work, we demonstrate that variational quantum algorithms feasible on such devices address a challenge central to the field of quantum metrology: The identification of near-optimal probes and measurement operators for noisy multi-parameter estimation problems. We first introduce a general framework that allows for sequential updates of variational parameters to improve probe states and measurements and is widely applicable to both discrete and continuous-variable settings. We then demonstrate the practical functioning of the approach through numerical simulations, showcasing how tailored probes and measurements improve over standard methods in the noisy regime. Along the way, we prove the validity of a general parameter-shift rule for noisy evolutions, expected to be of general interest in variational quantum algorithms. In our approach, we advocate the mindset of quantum-aided design, exploiting quantum technology to learn close to optimal, experimentally feasible quantum metrology protocols.

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