A neural processing approach to quantum state discrimination
- URL: http://arxiv.org/abs/2409.03748v2
- Date: Mon, 9 Sep 2024 03:39:53 GMT
- Title: A neural processing approach to quantum state discrimination
- Authors: Saeed A. Khan, Fangjun Hu, Gerasimos Angelatos, Michael Hatridge, Hakan E. Türeci,
- Abstract summary: nonlinear processing of quantum signals is often associated with non-idealities and excess noise.
We present a framework to uncover general quantum signal processing principles of a broad class of bosonic quantum nonlinear processors.
Our work provides pathways to utilize nonlinear quantum systems as general devices, and enables a new paradigm for nonlinear quantum information processing.
- Score: 0.2796197251957245
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Although linear quantum amplification has proven essential to the processing of weak quantum signals, extracting higher-order quantum features such as correlations in principle demands nonlinear operations. However, nonlinear processing of quantum signals is often associated with non-idealities and excess noise, and absent a general framework to harness nonlinearity, such regimes are typically avoided. Here we present a framework to uncover general quantum signal processing principles of a broad class of bosonic quantum nonlinear processors (QNPs), inspired by a remarkably analogous paradigm in nature: the processing of environmental stimuli by nonlinear, noisy neural ensembles, to enable perception. Using a quantum-coherent description of a QNP monitoring a quantum signal source, we show that quantum nonlinearity can be harnessed to calculate higher-order features of an incident quantum signal, concentrating them into linearly-measurable observables, a transduction not possible using linear amplifiers. Secondly, QNPs provide coherent nonlinear control over quantum fluctuations including their own added noise, enabling noise suppression in an observable without suppressing transduced information, a paradigm that bears striking similarities to optimal neural codings that allow perception even under highly stochastic neural dynamics. Unlike the neural case, we show that QNP-engineered noise distributions can exhibit non-classical correlations, providing a new means to harness resources such as entanglement. Finally, we show that even simple QNPs in realistic measurement chains can provide enhancements of signal-to-noise ratio for practical tasks such as quantum state discrimination. Our work provides pathways to utilize nonlinear quantum systems as general computation devices, and enables a new paradigm for nonlinear quantum information processing.
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