Quantum machine learning over infinite dimensions
Physical review letters, 2017•APS
Machine learning is a fascinating and exciting field within computer science. Recently, this
excitement has been transferred to the quantum information realm. Currently, all proposals
for the quantum version of machine learning utilize the finite-dimensional substrate of
discrete variables. Here we generalize quantum machine learning to the more complex, but
still remarkably practical, infinite-dimensional systems. We present the critical subroutines of
quantum machine learning algorithms for an all-photonic continuous-variable quantum …
excitement has been transferred to the quantum information realm. Currently, all proposals
for the quantum version of machine learning utilize the finite-dimensional substrate of
discrete variables. Here we generalize quantum machine learning to the more complex, but
still remarkably practical, infinite-dimensional systems. We present the critical subroutines of
quantum machine learning algorithms for an all-photonic continuous-variable quantum …
Machine learning is a fascinating and exciting field within computer science. Recently, this excitement has been transferred to the quantum information realm. Currently, all proposals for the quantum version of machine learning utilize the finite-dimensional substrate of discrete variables. Here we generalize quantum machine learning to the more complex, but still remarkably practical, infinite-dimensional systems. We present the critical subroutines of quantum machine learning algorithms for an all-photonic continuous-variable quantum computer that can lead to exponential speedups in situations where classical algorithms scale polynomially. Finally, we also map out an experimental implementation which can be used as a blueprint for future photonic demonstrations.
American Physical Society
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