4.6 Article

Designing quantum experiments with a genetic algorithm

Journal

QUANTUM SCIENCE AND TECHNOLOGY
Volume 4, Issue 4, Pages -

Publisher

IOP PUBLISHING LTD
DOI: 10.1088/2058-9565/ab4d89

Keywords

quantum optics; genetic algorithm; machine learning; quantum metrology; quantum interferometry; quantum state engineering

Funding

  1. South East Physics Network (SEPnet)
  2. Bristol Quantum Engineering Centre for Doctoral Training, EPSRC [EP/L015730/1]
  3. EPSRC Early Careers Fellowship [EP/M024385/1]
  4. EPSRC UK Quantum Technology Hub in Quantum Enhanced Imaging [EP/M01326X/1]
  5. Royal Commission
  6. EPSRC [EP/M024385/1, EP/M01326X/1] Funding Source: UKRI

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We introduce a genetic algorithm that designs quantum optics experiments for engineering quantum states with specific properties. Our algorithm is powerful and flexible, and can easily be modified to find methods of engineering states for a range of applications. Here we focus on quantum metrology. First, we consider the noise-free case, and use the algorithm to find quantum states with a large quantum Fisher information (QFI). We find methods, which only involve experimental elements that are available with current or near-future technology, for engineering quantum states with up to a 100 fold improvement over the best classical state, and a 20 fold improvement over the optimal Gaussian state. Such states are a superposition of the vacuum with a large number of photons (around 80), and can hence be seen as Schrdinger-cat-like states. We then apply the two most dominant noise sources in our setting-photon loss and imperfect heralding-and use the algorithm to find quantum states that still improve over the optimal Gaussian state with realistic levels of noise. This will open up experimental and technological work in using exotic non-Gaussian states for quantum-enhanced phase measurements. Finally, we use the Bayesian mean square error to look beyond the regime of validity of the QFI, finding quantum states with precision enhancements over the alternatives even when the experiment operates in the regime of limited data.

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