面向量子电路与量子代码的生成式人工智能:技术综述与分类 / Generative AI for Quantum Circuits and Quantum Code: A Technical Review and Taxonomy
1️⃣ 一句话总结
这篇论文系统回顾了13种用于生成量子电路和代码的AI系统,发现虽然它们在语法和语义层面表现良好,但都缺乏在真实量子硬件上的端到端验证,导致生成结果与实际应用之间存在明显差距。
We review thirteen generative systems and five supporting datasets for quantum circuit and quantum code generation, identified through a structured scoping review of Hugging Face, arXiv, and provenance tracing (January-February 2026). We organize the field along two axes: artifact type (Qiskit code, OpenQASM programs, circuit graphs); crossed with training regime (supervised fine-tuning, verifier-in-the-loop RL, diffusion/graph generation, agentic optimization); and systematically apply a three-layer evaluation framework covering syntactic validity, semantic correctness, and hardware executability. The central finding is that while all reviewed systems address syntax and most address semantics to some degree, none reports end-to-end evaluation on quantum hardware (Layer 3b), leaving a significant gap between generated circuits and practical deployment. Scope note: quantum code refers throughout to quantum program artifacts (QASM, Qiskit); we do not cover generation of quantum error-correcting codes (QEC).
面向量子电路与量子代码的生成式人工智能:技术综述与分类 / Generative AI for Quantum Circuits and Quantum Code: A Technical Review and Taxonomy
这篇论文系统回顾了13种用于生成量子电路和代码的AI系统,发现虽然它们在语法和语义层面表现良好,但都缺乏在真实量子硬件上的端到端验证,导致生成结果与实际应用之间存在明显差距。
源自 arXiv: 2603.16216