Towards a feasible implementation of quantum neural networks using quantum dots
classification
🪐 quant-ph
cond-mat.mes-hall
keywords
quantumimplementationnetworksneuraldotsfeasibletemperaturesacoustic
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We propose an implementation of quantum neural networks using an array of quantum dots with dipole-dipole interactions. We demonstrate that this implementation is both feasible and versatile by studying it within the framework of GaAs based quantum dot qubits coupled to a reservoir of acoustic phonons. Using numerically exact Feynman integral calculations, we have found that the quantum coherence in our neural networks survive for over a hundred ps even at liquid nitrogen temperatures (77 K), which is three orders of magnitude higher than current implementations which are based on SQUID-based systems operating at temperatures in the mK range.
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