Improving the Fidelity of CNOT Circuits on NISQ Hardware
Dohun Kim, Minyoung Kim, Sarah Meng Li, and Michele Mosca

TL;DR
This paper presents a noise-aware CNOT synthesis algorithm for NISQ hardware that significantly improves circuit fidelity and reduces gate count by considering error rates and nearest-neighbour interactions.
Contribution
It introduces a new cost function approximating average gate fidelity and a noise-aware routing algorithm, NAPermRowCol, enhancing circuit fidelity and reducing CNOT count on NISQ devices.
Findings
Improves CNOT circuit fidelity by up to 9 times compared to IBM's Qiskit.
Reduces CNOT count by up to 162 times on average.
Matches error probability with high accuracy using the new Cost function.
Abstract
We introduce an improved CNOT synthesis algorithm that considers nearest-neighbour interactions and CNOT gate error rates in noisy intermediate-scale quantum (NISQ) hardware. Compared to IBM's Qiskit compiler, it improves the fidelity of a synthesized CNOT circuit by about 2 times on average (up to 9 times). It lowers the synthesized CNOT count by a factor of 13 on average (up to a factor of 162). Our contribution is twofold. First, we define a function by approximating the average gate fidelity . According to the simulation results, fits the error probability of a noisy CNOT circuit, , much tighter than the commonly used cost functions. On IBM's fake Nairobi backend, it matches to within . On other backends, it fits to within . accurately quantifies…
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Taxonomy
TopicsAdvancements in Semiconductor Devices and Circuit Design · Analog and Mixed-Signal Circuit Design · Quantum-Dot Cellular Automata
