Quantum Neural Network Training of a Repeater Node
Diego Fuentealba, Jack Dahn, James Steck, and Elizabeth Behrman

TL;DR
This paper demonstrates that a quantum neural network can be trained to perform a swap operation in quantum systems, showing increased noise tolerance with system size, which is promising for scalable quantum networks.
Contribution
It introduces a QNN-based approach for implementing swap operations, highlighting its robustness and scalability compared to traditional methods.
Findings
QNN easily generalizes to multiple qubits
Noise tolerance increases with system size
QNN outperforms standard swap gate under noise
Abstract
The construction of robust and scalable quantum gates is a uniquely hard problem in the field of quantum computing. Real-world quantum computers suffer from many forms of noise, characterized by the decoherence and relaxation times of a quantum circuit, which make it very hard to construct efficient quantum algorithms. One example is a quantum repeater node, a circuit that swaps the states of two entangled input and output qubits. Robust quantum repeaters are a necessary building block of long-distance quantum networks. A solution exists for this problem, known as a swap gate, but its noise tolerance is poor. Machine learning may hold the key to efficient and robust quantum algorithm design, as demonstrated by its ability to learn to control other noisy and highly nonlinear systems. Here, a quantum neural network (QNN) is constructed to perform the swap operation and compare a trained…
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