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Trapped Ion Quantum Computing
Quantum Machine Learning
Rapid characterisation of linear-optical networks via PhaseLift
arXiv
Authors: Daniel Suess, Nicola Maraviglia, Richard Kueng, Alexandre Maïnos, Chris Sparrow, Toshikazu Hashimoto, Nobuyuki Matsuda, David Gross, Anthony Laing
Year
2020
Paper ID
20267
Status
Preprint
Abstract Read
~2 min
Abstract Words
213
Citations
N/A
Abstract
Linear-optical circuits are elementary building blocks for classical and quantum information processing with light. In particular, due to its monolithic structure, integrated photonics offers great phase-stability and can rely on the large scale manufacturability provided by the semiconductor industry. New devices, based on such optical circuits, hold the promise of faster and energy-efficient computations in machine learning applications and even implementing quantum algorithms intractable for classical computers. However, this technological revolution requires accurate and scalable certification protocols for devices that can be comprised of thousands of optical modes. Here, we present a novel technique to reconstruct the transfer matrix of linear optical networks that is based on the recent advances in low-rank matrix recovery and convex optimisation problems known as PhaseLift algorithms. Conveniently, our characterisation protocol can be performed with a coherent classical light source and photodiodes. We prove that this method is robust to noise and scales efficiently with the number of modes. We experimentally tested the proposed characterisation protocol on a programmable integrated interferometer designed for quantum information processing. We compared the transfer matrix reconstruction obtained with our method against the one provided by a more demanding reconstruction scheme based on two-photon quantum interference. For 5-dimensional random unitaries, the average circuit fidelity between the matrices obtained from the two reconstructions is 0.993.
Why This Paper Matters
- This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
- It adds a 2020 reference point for readers tracking recent quantum research.
- Linear-optical circuits are elementary building blocks for classical and quantum information processing with light.
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