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Modeling the Performance of Early Fault-Tolerant Quantum Algorithms (2306.17235v2)

Published 29 Jun 2023 in quant-ph

Abstract: Progress in fault-tolerant quantum computation (FTQC) has driven the pursuit of practical applications with early fault-tolerant quantum computers (EFTQC). These devices, limited in their qubit counts and fault-tolerance capabilities, require algorithms that can accommodate some degrees of error, which are known as EFTQC algorithms. To predict the onset of early quantum advantage, a comprehensive methodology is needed to develop and analyze EFTQC algorithms, drawing insights from both the methodologies of noisy intermediate-scale quantum (NISQ) and traditional FTQC. To address this need, we propose such a methodology for modeling algorithm performance on EFTQC devices under varying degrees of error. As a case study, we apply our methodology to analyze the performance of Randomized Fourier Estimation (RFE), an EFTQC algorithm for phase estimation. We investigate the runtime performance and the fault-tolerant overhead of RFE in comparison to the traditional quantum phase estimation algorithm. Our analysis reveals that RFE achieves significant savings in physical qubit counts while having a much higher runtime upper bound. We anticipate even greater physical qubit savings when considering more realistic assumptions about the performance of EFTQC devices. By providing insights into the performance trade-offs and resource requirements of EFTQC algorithms, our work contributes to the development of practical and efficient quantum computing solutions on the path to quantum advantage.

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References (32)
  1. On proving the robustness of algorithms for early fault-tolerant quantum computers. arXiv preprint arXiv:2209.11322, 2022.
  2. Quantum supremacy using a programmable superconducting processor. Nature, 574(7779):505–510, 2019.
  3. Evidence for the utility of quantum computing before fault tolerance. Nature, 618:500–505, 2023.
  4. Quantum computation and quantum information, 2002.
  5. How to factor 2048 bit rsa integers in 8 hours using 20 million noisy qubits. Quantum, 5:433, 2021.
  6. Reliably assessing the electronic structure of cytochrome p450 on today’s classical computers and tomorrow’s quantum computers. Proceedings of the National Academy of Sciences, 119(38):e2203533119, 2022.
  7. Fault-tolerant resource estimate for quantum chemical simulations: Case study on li-ion battery electrolyte molecules. Physical Review Research, 4(2):023019, 2022.
  8. Earl T Campbell. Early fault-tolerant simulations of the hubbard model. Quantum Science and Technology, 7(1):015007, 2021.
  9. Yu Tong. Designing algorithms for estimating ground state properties on early fault-tolerant quantum computers. Quantum Views, 6:65, 2022.
  10. Minimizing estimation runtime on noisy quantum computers. PRX Quantum, 2(1):010346, 2021.
  11. Reducing runtime and error in vqe using deeper and noisier quantum circuits. arXiv preprint arXiv:2110.10664, 2021.
  12. Lin Lin and Yu Tong. Heisenberg-limited ground-state energy estimation for early fault-tolerant quantum computers. PRX Quantum, 3(1):010318, 2022.
  13. Computing ground state properties with early fault-tolerant quantum computers. Quantum, 6:761, 2022.
  14. A randomized quantum algorithm for statistical phase estimation. arXiv preprint arXiv:2110.12071, 2021.
  15. Quantum algorithm for ground state energy estimation using circuit depth with exponentially improved dependence on precision. arXiv preprint arXiv:2209.06811, 2022.
  16. Low depth algorithms for quantum amplitude estimation. Quantum, 6:745, 2022.
  17. Faster ground state energy estimation on early fault-tolerant quantum computers via rejection sampling. arXiv preprint arXiv:2304.09827, 2023.
  18. Even shorter quantum circuit for phase estimation on early fault-tolerant quantum computers with applications to ground-state energy estimation. PRX Quantum, 4:020331, May 2023.
  19. On low-depth algorithms for quantum phase estimation, 2023.
  20. Robust ground-state energy estimation under depolarizing noise, 2023.
  21. Noise tailoring for robust amplitude estimation. New Journal of Physics, 25(2):023015, 2023.
  22. Robust calibration of a universal single-qubit gate set via robust phase estimation. Physical Review A, 92(6):062315, 2015.
  23. A. Yu. Kitaev. Quantum measurements and the abelian stabilizer problem, 1995.
  24. Heisenberg-limited quantum phase estimation of multiple eigenvalues with few control qubits. Quantum, 6:830, October 2022. arXiv:2107.04605 [quant-ph].
  25. Quantum phase estimation of multiple eigenvalues for small-scale (noisy) experiments. New Journal of Physics, 21(2):023022, February 2019. Publisher: IOP Publishing.
  26. Surface codes: Towards practical large-scale quantum computation. Physical Review A, 86(3):032324, 2012.
  27. Evenly distributed unitaries: On the structure of unitary designs. Journal of mathematical physics, 48(5):052104, 2007.
  28. Exact and approximate unitary 2-designs and their application to fidelity estimation. Phys. Rev. A, 80:012304, Jul 2009.
  29. Characterizing quantum supremacy in near-term devices. Nature Physics, 14(6):595–600, June 2018.
  30. Limitations in quantum computing from resource constraints. PRX Quantum, 2(4):040335, 2021.
  31. Pravesh Kothari. Cos 521: Advanced algorithm design - lecture 3: Large deviations bounds and applications. Lecture notes, Princeton University, 2015.
  32. Quantum algorithms revisited. Proceedings of the Royal Society of London. Series A: Mathematical, Physical and Engineering Sciences, 454(1969):339–354, 1998.
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