Quantum error correction (QEC) is essential for quantum computing to mitigate the effect of errors on qubits, and surface code (SC) is one of the most promising QEC methods. Decoding SCs is the most computational expensive task in the control device of quantum computers (QCs), and many works focus on accurate decoding algorithms for SCs, including ones with neural networks (NNs). Practical QCs also require low-latency decoding because slow decoding leads to the accumulation of errors on qubits, resulting in logical failures. For QCs with superconducting qubits, a practical decoder must be very power-efficient in addition to having high accuracy and low latency. In order to reduce the hardware complexity of QC, we are supposed to decode SCs in a cryogenic environment with a limited power budget, where superconducting qubits operate. In this paper, we propose an NN-based accurate, fast, and low-power decoder capable of decoding SCs and lattice surgery (LS) operations with measurement errors on ancillary qubits. To achieve both accuracy and hardware efficiency of the SC decoder, we apply a binarized NN. We design a neural processing unit (NPU) for the decoder with SFQ-based digital circuits and evaluate it with a SPICE-level simulation. We evaluate the decoder performance by a quantum error simulator for the single logical qubit protection and the minimum operation of LS with code distances up to 13, and it achieves 2.5% and 1.0% accuracy thresholds, respectively.
翻译:量子错误校正(QEC)对于量子计算减轻误差对qubits的影响至关重要,表面代码(SC)是最有希望的QEC方法之一。在量子计算机(QCs)控制设备中,解析SC是最昂贵的计算任务,许多工作的重点是对SC的精确解码算法,包括神经网络(NNSs)。实际QC还需要低时间解码,因为缓慢解码导致qubits误差累积,导致逻辑故障。对于具有超导水平qubits的QCs来说,一个实际解码器必须是非常高效的QCs。为了降低QC的硬件复杂性,我们需要在一个低温环境中解码,包括神经网络(NNPs),在超导象子操作中,我们建议一个基于NNW的准确、快速和低功率解码解码的计算器,对于具有超导解的QUsloadoraloral oral oral oral oralsal, 用Sal-ral de ral deal deal de ral de ral de oralsal.我们可以进行一个最低的操作。