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Empowering deep neural quantum states through efficient optimization

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Nature Physics, Published online: 01 July 2024; doi:10.1038/s41567-024-02566-1

An optimization algorithm reduces the cost of training large-scale neural quantum states. This leads to accurate computations of the ground states of frustrated magnets and provides evidence of gapless quantum-spin-liquid phases.