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Quantum Walks-Based Adaptive Distribution Generation with Efficient CUDA-Q Acceleration

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  • Yen-Jui Chang
  • Wei-Ting Wang
  • Chen-Yu Liu
  • Yun-Yuan Wang
  • Ching-Ray Chang

Abstract

We present a novel Adaptive Distribution Generator that leverages a quantum walks-based approach to generate high precision and efficiency of target probability distributions. Our method integrates variational quantum circuits with discrete-time quantum walks, specifically, split-step quantum walks and their entangled extensions, to dynamically tune coin parameters and drive the evolution of quantum states towards desired distributions. This enables accurate one-dimensional probability modeling for applications such as financial simulation and structured two-dimensional pattern generation exemplified by digit representations(0~9). Implemented within the CUDA-Q framework, our approach exploits GPU acceleration to significantly reduce computational overhead and improve scalability relative to conventional methods. Extensive benchmarks demonstrate that our Quantum Walks-Based Adaptive Distribution Generator achieves high simulation fidelity and bridges the gap between theoretical quantum algorithms and practical high-performance computation.

Suggested Citation

  • Yen-Jui Chang & Wei-Ting Wang & Chen-Yu Liu & Yun-Yuan Wang & Ching-Ray Chang, 2025. "Quantum Walks-Based Adaptive Distribution Generation with Efficient CUDA-Q Acceleration," Papers 2504.13532, arXiv.org.
  • Handle: RePEc:arx:papers:2504.13532
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    File URL: http://arxiv.org/pdf/2504.13532
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