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📄 Abstract
Abstract: Translating a general quantum circuit on a specific hardware topology with a
reduced set of available gates, also known as transpilation, comes with a
substantial increase in the length of the equivalent circuit. Due to
decoherence, the quality of the computational outcome can degrade seriously
with increasing circuit length. Thus, there is major interest to reduce a
quantum circuit to an equivalent circuit which is in its gate count as short as
possible. One method to address efficient transpilation is based on approaches
known from stochastic optimization, e.g. by using random sampling and token
replacement strategies. Here, a core challenge is that these methods can suffer
from sampling efficiency, causing long and energy consuming optimization time.
As a remedy, we propose in this work 2D neural guided sampling. Thus, given a
2D representation of a quantum circuit, a neural network predicts groups of
gates in the quantum circuit, which are likely reducible. Thus, it leads to a
sampling prior which can heavily reduce the compute time for quantum circuit
reduction. In several experiments, we demonstrate that our method is superior
to results obtained from different qiskit or BQSKit optimization levels.
Key Contributions
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