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arxiv: 1805.05462 · v2 · pith:BRUA4TW2new · submitted 2018-05-14 · 🪐 quant-ph

Quantum neural networks to simulate many-body quantum systems

classification 🪐 quant-ph
keywords quantumsystemsbodymanyneuralalgorithmalreadyassisted
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We conduct experimental simulations of many body quantum systems using a \emph{hybrid} classical-quantum algorithm. In our setup, the wave function of the transverse field quantum Ising model is represented by a restricted Boltzmann machine. This neural network is then trained using variational Monte Carlo assisted by a D-Wave quantum sampler to find the ground state energy. Our results clearly demonstrate that already the first generation of quantum computers can be harnessed to tackle non-trivial problems concerning physics of many body quantum systems.

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