Machine learning for efficient generation of universal photonic quantum computing resources
ORAL
Abstract
We present numerical results from simulations using deep reinforcement learning to control a measurement-based quantum processor—a time-multiplexed optical circuit sampled by photon-number-resolving detection—and find it generates squeezed cat states quasi-deterministically, with an average success rate of 98%, far outperforming all other proposals. Since squeezed cat states are deterministic precursors to the Gottesman-Kitaev-Preskill (GKP) bosonic error code, this is a key result for enabling fault tolerant photonic quantum computing.
*We acknowledge support from NSF grants PHY-2112867 and ECCS-2219760. We thank U. of Virginia Research Computing for providing access to the Rivanna computing cluster.
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Publication: arXiv:2310.03130
Presenters
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Olivier R Pfister
- U. Virginia