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Quantum Algorithms
Full-stack Physics-level model of cascaded entanglement links
arXiv
Authors: J. Gabriel Richardson, Prajit Dhara, Abhishek Bhatt, Saikat Guha, Stefan Krastanov
Year
2025
Paper ID
50984
Status
Preprint
Abstract Read
~2 min
Abstract Words
164
Citations
N/A
Abstract
While the last few decades have seen a proliferation of experimental demonstrations of entanglement sources, practicality of deployment has been a secondary concern. Recently, the ZALM source was introduced, as a well-engineered functional device, easily integrated within a complete networking system. It addresses numerous concerns which make typical academic demonstrations less practical: reliable heralding signals, multiplexing across multiple dimensions, and efficient use of input power. We present a stack of tools for modeling mode-by-mode a ZALM source under realistic conditions, in isolation or as a part of a complete network testbed. Our modeling formalism builds upon a hybrid Gaussian and non-Gaussian representation, providing a flexible tradeoff between performance and accuracy, while also greatly simplifying the exact calculation of otherwise expensive scalar figures of merit. This toolkit, implemented in the Python package called "genqo", is integrated within the QuantumSavory full-stack simulator and the QuantumSymbolics computer algebra system. We use this software stack to demonstrate a number of complete networking protocols built upon the ZALM source.
Why This Paper Matters
- It adds a 2025 reference point for readers tracking recent quantum research.
- While the last few decades have seen a proliferation of experimental demonstrations of entanglement sources, practicality of deployment has been a secondary concern.
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