Quantum noise is the key challenge in Noisy Intermediate-Scale Quantum (NISQ) computers. Previous work for mitigating noise has primarily focused on gate-level or pulse-level noise-adaptive compilation. However, limited research efforts have explored a higher level of optimization by making the quantum circuits themselves resilient to noise. We propose QuantumNAS, a comprehensive framework for noise-adaptive co-search of the variational circuit and qubit mapping. Variational quantum circuits are a promising approach for constructing QML and quantum simulation. However, finding the best variational circuit and its optimal parameters is challenging due to the large design space and parameter training cost. We propose to decouple the circuit search and parameter training by introducing a novel SuperCircuit. The SuperCircuit is constructed with multiple layers of pre-defined parameterized gates and trained by iteratively sampling and updating the parameter subsets (SubCircuits) of it. It provides an accurate estimation of SubCircuits performance trained from scratch. Then we perform an evolutionary co-search of SubCircuit and its qubit mapping. The SubCircuit performance is estimated with parameters inherited from SuperCircuit and simulated with real device noise models. Finally, we perform iterative gate pruning and finetuning to remove redundant gates. Extensively evaluated with 12 QML and VQE benchmarks on 14 quantum computers, QuantumNAS significantly outperforms baselines. For QML, QuantumNAS is the first to demonstrate over 95% 2-class, 85% 4-class, and 32% 10-class classification accuracy on real QC. It also achieves the lowest eigenvalue for VQE tasks on H2, H2O, LiH, CH4, BeH2 compared with UCCSD. We also open-source TorchQuantum (https://github.com/mit-han-lab/torchquantum) for fast training of parameterized quantum circuits to facilitate future research.
翻译:Qantum 噪音是Noisy 中级量子平流计算机(NISQ)的关键挑战。先前的缓解噪音工作主要侧重于门级或脉级噪音调适汇编。然而,有限的研究努力探索了更高程度的优化,使量子电路本身具有适应噪音的能力。我们提议建立量子电路(QantumNAS),这是一个用于对变异电路和quit绘图进行噪声调调调调调调的综合框架。变量电路是建造QML和量子模拟的一个很有希望的方法。然而,由于设计空间和参数培训费用巨大,找到最佳变量电路及其最佳参数是具有挑战性的。我们提议通过引入新的超级环球赛来取消电路搜索和参数培训。我们用多层预定的参数化门来建造,并经过迭代抽样取样和升级的参数集分解。我们从手头对子平流到直径直径直流的子平流测试,然后我们用进化的量基QQQ值和QQQ门的比值进行进进化研究,最后的SqralS-CSyal 4,我们用Siral平流平流平流平流平流平流的成绩评估是进行跨的平流的进度平流的进度平流的进度平流数据分析。最后的成绩评估。我们进行多层平流的平流的平流的平流的平流的平流的成绩平流的成绩平流分析。