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Prediction of Compilation Options for Quantum Circuits via Adaptive Deep Residual Neural Network Cover

Prediction of Compilation Options for Quantum Circuits via Adaptive Deep Residual Neural Network

Open Access
|Jun 2026

References

  1. A. Javadi-Abhari, M. Treinish, K. Krsulich, C. J. Wood, J. Lishman, J. Gacon, S. Martiel, P. D. Nation, L. S. Bishop and A. W. Cross (2024). “Quantum computing with Qiskit”. arXiv preprint.
  2. S. Sivarajah, S. Dilkes, A. Cowtan, W. Simmons, A. Edgington and R. Duncan (2020). t|ket : A retargetable compiler for NISQ devices. Quantum Science and Technology, 6, 014003.
  3. R. S. Smith, M. J. Curtis and W. J. Zeng (2016). A practical quantum instruction set architecture. arXiv preprint.
  4. V. Bergholm, J. Izaac, M. Schuld, C. Gogolin, S. Ahmed, V. Ajith, M. S. Alam, G. Alonso-Linaje, B. Akash-Narayanan and A. Asadi (2018). PennyLane: Automatic differentiation of hybrid quantum-classical computations. arXiv preprint.
  5. L. K. Grover (1996). “A fast quantum mechanical algorithm for database search”, in: Proceedings of the Twentyeighth Annual ACM Symposium on Theory of Computing, pp. 212–219.
  6. P. W. Shor (1999). “Polynomial-time algorithms for prime factorization and discrete logarithms on a quantum computer”. SIAM Review, 41, 303–332.
  7. A. W. Harrow, A. Hassidim and S. Lloyd (2009). “Quantum algorithm for linear systems of equations”. Physical Review Letters, 103, 150502.
  8. M. Salm, J. Barzen, U. Breitenbücher, F. Leymann, B. Weder and K. Wild (2020). “The NISQ analyzer: automating the selection of quantum computers for quantum algorithms”, in Symposium and Summer School on Service-Oriented Computing, pp. 66–85. Springer
  9. M. Salm, J. Barzen, F. Leymann and B. Weder (2022). “Prioritization of compiled quantum circuits for different quantum computers”, in: 2022 IEEE International Conference on Software Analysis, Evolution and Reengineering (SANER), pp. 1258–1265. IEEE.
  10. M. Salm, J. Barzen, F. Leymann and P. Wundrack (2023). “How to select quantum compilers and quantum computers before compilation”, in: CLOSER, pp. 172–183.
  11. N. Quetschlich, L. Burgholzer and R. Wille, “Predicting good quantum circuit compilation options”, in: 2023 IEEE International Conference on Quantum Software (QSW), pp. 43–53 (2023). IEEE.
  12. N. Quetschlich, L. Burgholzer and R. Wille (2023). “Compiler optimization for quantum computing using reinforcement learning”, in: 2023 60th ACM/IEEE Design Automation Conference (DAC), pp. 1–6. IEEE.
  13. N. Quetschlich, L. Burgholzer and R. Wille (2023). “MQT predictor: Automatic device selection with devicespecific circuit compilation”. ACM Transactions on Quantum Computing.
  14. T. Tomesh, P. Gokhale, V. Omole, G. S. Ravi, K. N. Smith, J. Viszlai, X.-C. Wu, N. Hardavellas, M. R. Martonosi and F. T. Chong (2022). “Supermarq: A scalable quantum benchmark suite”, in: 2022 IEEE International Symposium on High-Performance Computer Architecture (HPCA), pp. 587–603. IEEE.
  15. M. Bandic, C. G. Almudever and S. Feld (2022). “Interaction graph-based profiling of quantum benchmarks for improving quantum circuit mapping techniques”. arXiv preprint.
  16. Y. Qian, Z. Guan, S. Zheng and S. Feng (2023). “A method based on timing weight priority and distance optimization for quantum circuit transformation”. Entropy 25(3), 465.
  17. L. Breiman (2001). “Random forests”. Machine Learning 45, 5–32.
  18. J. H. Friedman (2001). “Greedy function approximation: A gradient boosting machine”. Annals of Statistics 1189–1232.
  19. W.-Y. Loh (2011). “Classification and regression trees”. Wiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery 1(1), 14–23.
  20. T. Cover and P. Hart (1967). “Nearest neighbor pattern classification”. IEEE Transactions on Information Theory 13(1), 21–27.
  21. M. Riedmiller and A. Lernen (2014). “Multi-layer perceptron”. Machine Learning Lab Special Lecture, University of Freiburg 24.
  22. C. Cortes (1995). “Support-vector networks”. Machine Learning.
  23. A. P. Dempster, N. M. Laird and D. B. Rubin (1977). “Maximum likelihood from incomplete data via the EM algorithm”. Journal of the Royal Statistical Society, Series B, 39:1, 1–22.
  24. K. He, X. Zhang, S. Ren and J. Sun (2016). “Deep residual learning for image recognition”, in: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 770–778.
  25. A. Vaswani, N. Shazeer, N. Parmar, J. Uszkoreit, L. Jones, A. N. Gomez, Ł. Kaiser and I. Polosukhin (2017). “Attention is all you need”. Advances in Neural Information Processing Systems.
  26. F. Wang, M. Jiang, C. Qian, S. Yang, C. Li, H. Zhang, X. Wang and X. Tang (2017). “Residual attention network for image classification”, in: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition, pp. 3156–3164.
  27. J. M. Hernández and P. Van Mieghem, “Classification of graph metrics”, University of Technology: Mekelweg, The Netherlands 1.
  28. L. d. F. Costa, F. A. Rodrigues, G. Travieso and P. R. Villas Boas (2007). “Characterization of complex networks: A survey of measurements”. Advances in Physics, 56(1), 167–242.
  29. A. W. Cross, L. S. Bishop, J. A. Smolin and J. M. Gambetta (2017). “Open quantum assembly language”. arXiv preprint.
  30. P. Sedgwick (2014). “Spearman’s rank correlation coefficient”. BMJ, 349.
  31. M. Cerezo, A. Arrasmith, R. Babbush, S. C. Benjamin, S. Endo, K. Fujii, J. R. McClean, K. Mitarai, X. Yuan and L. Cincio (2021). “Variational quantum algorithms”. Nature Reviews Physics, 3(9), 625–644.
  32. J. Choi and J. Kim (2019). “A tutorial on quantum approximate optimization algorithm (QAOA): Fundamentals and applications”, in: 2019 International Conference on Information and Communication Technology Convergence (ICTC), pp. 138–142. IEEE.
  33. F. Mandl and G. Shaw (2013). Quantum Field Theory. John Wiley & Sons.
  34. Y.-Z. Li, W. Liu, G.-S. Xu, M.-D. Li, K. Chen and S.-L. He (2025). “Quantum circuit mapping based on discrete particle swarm optimization and deep reinforcement learning”. Swarm and Evolutionary Computation, 95, 101923.
DOI: https://doi.org/10.2478/qic-2026-0003 | Journal eISSN: 3106-0544 | Journal ISSN: 1533-7146
Language: English
Page range: 38 - 67
Submitted on: Oct 10, 2025
Accepted on: Dec 16, 2025
Published on: Jun 4, 2026
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year

© 2026 Shouli He, Wen Liu, Yangzhi Li, Maoduo Li, Kai Chen, Yaohua Lu, published by Cerebration Science Publishing Co., Limited
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.