Optimal Quantum Circuit Design via Unitary Neural Networks
Zomorodi, M., Amini, H., Abbaszadeh, M., Sohrabi, J., Salari, V., Plawiak, P.
–arXiv.org Artificial Intelligence
The process of translating a quantum algorithm into a form suitable for implementation on a quantum computing platform is crucial but yet challenging. This entails specifying quantum operations with precision, a typically intricate task. In this paper, we present an alternative approach: an automated method for synthesizing the functionality of a quantum algorithm into a quantum circuit model representation. Our methodology involves training a neural network model using diverse input-output mappings of the quantum algorithm. We demonstrate that this trained model can effectively generate a quantum circuit model equivalent to the original algorithm. Remarkably, our observations indicate that the trained model achieves near-perfect mapping of unseen inputs to their respective outputs.
arXiv.org Artificial Intelligence
Aug-23-2024
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