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arxiv:2506.01666

Synthesis of discrete-continuous quantum circuits with multimodal diffusion models

Published on Jun 2
· Submitted by Floki00 on Jun 3
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Abstract

A multimodal denoising diffusion model is introduced for generating both the structure and continuous parameters of quantum circuits, offering an efficient alternative to traditional quantum operation compilation methods.

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Efficiently compiling quantum operations remains a major bottleneck in scaling quantum computing. Today's state-of-the-art methods achieve low compilation error by combining search algorithms with gradient-based parameter optimization, but they incur long runtimes and require multiple calls to quantum hardware or expensive classical simulations, making their scaling prohibitive. Recently, machine-learning models have emerged as an alternative, though they are currently restricted to discrete gate sets. Here, we introduce a multimodal denoising diffusion model that simultaneously generates a circuit's structure and its continuous parameters for compiling a target unitary. It leverages two independent diffusion processes, one for discrete gate selection and one for parameter prediction. We benchmark the model over different experiments, analyzing the method's accuracy across varying qubit counts, circuit depths, and proportions of parameterized gates. Finally, by exploiting its rapid circuit generation, we create large datasets of circuits for particular operations and use these to extract valuable heuristics that can help us discover new insights into quantum circuit synthesis.

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Can we compile unitaries into parametrized circuits without gradient-based parameter optimization? -- Yes! We developed a multimodal diffusion model that simultaneously generates a circuit's structure and its continuous parameters for compiling a target unitary.

In our paper we:

  • create a multimodal diffusion pipeline tailored to discrete-continuous quantum circuits
  • benchmark the model over different experiments, i.e. random circuits, Hamiltonian evolutions and the QFT unitary
  • use tokenization to extract reusable substructures (gadgets) from generated circuits

We publish our full pipeline and model weights.

Project page✨: https://florianfuerrutter.github.io/genQC/
Paper📄: https://www.arxiv.org/abs/2506.01666
GitHub🧑‍💻: https://github.com/FlorianFuerrutter/genQC

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