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arXiv 提交日期: 2026-06-11
📄 Abstract - Graph Reinforcement Learning for Calibration-Aware Quantum Circuit Routing

Quantum circuit routing is a key step in compiling programs for noisy intermediate-scale quantum processors. Routes that appear efficient by standard overhead metrics can still lose fidelity when they pass through poorly calibrated couplers. We study a calibration-aware graph reinforcement-learning router that uses same-day IBM Heron r2 calibration data to choose hardware-edge SWAPs. We train the policy with proximal policy optimization and evaluate it with exact simulated fidelity across nine Munich Quantum Toolkit (MQT) Bench circuits and three calibration snapshots. Across these evaluations, pooled mean exact fidelity is $0.727$, compared with $0.440$ for SABRE-best20 and $0.481$ for target-aware SABRE. Fidelity gains come with higher routed two-qubit counts and are concentrated in the 5q and 8q circuit families; under the fixed tree action graph, all 10q families favor SABRE-best20. Overall, our results show that calibration-aware learned routing can improve fidelity beyond gate-count-driven compilation.

顶级标签: reinforcement learning machine learning systems
详细标签: quantum circuit routing graph reinforcement learning proximal policy optimization calibration-aware fidelity optimization 或 搜索:

基于图强化学习的校准感知量子电路路由方法 / Graph Reinforcement Learning for Calibration-Aware Quantum Circuit Routing


1️⃣ 一句话总结

该论文提出了一种利用图强化学习和当天校准数据的量子电路路由方法,能够避开性能差的耦合器,从而在噪声环境中显著提升电路保真度,优于传统仅关注门数量的路由策略。

源自 arXiv: 2606.12816