Toward Consistent High-fidelity Quantum Learning on Unstable Devices via Efficient In-situ Calibration
Zhirui Hu, Robert Wolle, Mingzhen Tian, Qiang Guan, Travis Humble,, Weiwen Jiang

TL;DR
This paper introduces QuPAD, a pulse-based calibration framework that enhances quantum learning fidelity on unstable NISQ devices by efficiently optimizing pulse parameters, significantly reducing runtime and improving accuracy.
Contribution
The paper presents a novel pulse-based calibration method, QuPAD, replacing CNOT gates with Rzx gates and using an evolutionary algorithm for fast, high-fidelity quantum circuit calibration.
Findings
QuPAD reduces calibration runtime by up to 270x.
Achieves 59.33% accuracy improvement in classification tasks.
Improves molecular simulation accuracy by 66.34%.
Abstract
In the near-term noisy intermediate-scale quantum (NISQ) era, high noise will significantly reduce the fidelity of quantum computing. Besides, the noise on quantum devices is not stable. This leads to a challenging problem: At run-time, is there a way to efficiently achieve a consistent high-fidelity quantum system on unstable devices? To study this problem, we take quantum learning (a.k.a., variational quantum algorithm) as a vehicle, such as combinatorial optimization and machine learning. A straightforward approach is to optimize a Circuit with a parameter-shift approach on the target quantum device before using it; however, the optimization has an extremely high time cost, which is not practical at run-time. To address the pressing issue, in this paper, we proposed a novel quantum pulse-based noise adaptation framework, namely QuPAD. In the proposed framework, first, we identify…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Neural Networks and Reservoir Computing · Advancements in Semiconductor Devices and Circuit Design
