A Spin-Optical Quantum Computing Architecture
- URL: http://arxiv.org/abs/2311.05605v5
- Date: Wed, 17 Jul 2024 14:29:52 GMT
- Title: A Spin-Optical Quantum Computing Architecture
- Authors: Grégoire de Gliniasty, Paul Hilaire, Pierre-Emmanuel Emeriau, Stephen C. Wein, Alexia Salavrakos, Shane Mansfield,
- Abstract summary: We introduce an adaptable and modular hybrid architecture designed for fault-tolerant quantum computing.
It combines quantum emitters and linear-optical entangling gates to leverage the strength of both matter-based and photonic-based approaches.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: We introduce an adaptable and modular hybrid architecture designed for fault-tolerant quantum computing. It combines quantum emitters and linear-optical entangling gates to leverage the strength of both matter-based and photonic-based approaches. A key feature of the architecture is its practicality, grounded in the utilisation of experimentally proven optical components. Our framework enables the execution of any quantum error correcting code, but in particular maintains scalability for low-density parity check codes by exploiting built-in non-local connectivity through distant optical links. To gauge its efficiency, we evaluated the architecture using a physically motivated error model. It exhibits loss tolerance comparable to existing all-photonic architecture but without the need for intricate linear-optical resource-state-generation modules that conventionally rely on resource-intensive multiplexing. The versatility of the architecture also offers uncharted avenues for further advancing performance standards.
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