PhysicsNature Physics
Empowering deep neural quantum states through efficient optimization
A. Chen and M. Heyl
Discover the groundbreaking research by Ao Chen and Markus Heyl on neural quantum states, which aims to solve the challenge of computing the ground state of complex two-dimensional quantum systems. Their innovative minimum-step stochastic-reconfiguration optimization algorithm enables the training of deep networks with up to a million parameters, achieving machine precision and revealing intriguing quantum-spin-liquid phases.
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