Enhanced Squeezing and Faster Metrology from Layered Quantum Neural Networks
Nickholas Gutierrez, Rodrigo Araiza Bravo, Susanne Yelin

TL;DR
This paper demonstrates that layered quantum neural networks can significantly enhance spin squeezing and improve the speed and sensitivity of quantum metrology protocols compared to other architectures.
Contribution
It introduces layered quantum neural networks as a novel architecture for quantum sensing, showing they outperform traditional models in speed and sensitivity of spin squeezing.
Findings
QNNs reduce squeezing time by a factor of N_out.
Heisenberg-limited phase sensitivity achieved with QNNs.
Sensitivity scales as sqrt(L) with number of layers.
Abstract
Spin squeezing is a powerful resource for quantum metrology, and recent hardware platforms based on interacting qubits provide multiple possible architectures to generate and reverse squeezing during a sensing protocol. In this work, we compare the sensing performance of three such architectures: quantum reservoir computers (QRCs), quantum perceptrons, and multi-layer quantum neural networks (QNNs), when used as squeezing-based field sensors. For all models, we consider a standard metrological sequence consisting of coherent-spin preparation, one-axis-twisting dynamics, field encoding via a weak rotation, time-reversal, and collective readout. We show that a single quantum perceptron generates the same optimal sensitivity as a QRC, but in the perturbative regime it benefits from accelerated squeezing due to steering by the output qubit. Stacking perceptrons into a QNN further amplifies…
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Taxonomy
TopicsQuantum and electron transport phenomena · Quantum Computing Algorithms and Architecture · Neural Networks and Reservoir Computing
