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arxiv: 2606.28952 · v1 · pith:ZI4AZLWAnew · submitted 2026-06-27 · 🪐 quant-ph

A High-Performance Pauli-Algebra Framework for Large-Scale Quantum Simulations

Pith reviewed 2026-06-30 09:25 UTC · model grok-4.3

classification 🪐 quant-ph
keywords Pauli algebraquantum simulationVQEHamiltonian constructionmany-body physicsquantum chemistrysparse representationssymmetry adaptation
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The pith

A Pauli-algebra framework with binary symplectic encoding and grouped sparse representations accelerates Hamiltonian construction and VQE in quantum simulations.

A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.

The paper presents a framework for efficient manipulation of Pauli operators that combines compact binary symplectic encoding, canonical coefficient reduction, and grouped sparse representations exploiting shared bit-flip patterns. This targets repeated operations in Hamiltonian construction, variational ansatz preparation, expectation-value evaluation, and real-time propagation for quantum chemistry and many-body physics. A sympathetic reader cares because these operations form the main bottleneck in classical emulation and benchmarking of quantum algorithms. The Julia and C++ code delivers speedups for sparse and symmetry-adapted many-electron spaces on multicore CPUs and GPUs, demonstrated on large-active-space VQE, ADAPT-VQE, and variational dynamics.

Core claim

The framework accelerates Pauli multiplication, Hamiltonian construction, and operator-state multiplication in sparse and symmetry-adapted many-electron spaces by using compact binary symplectic encoding, canonical coefficient reduction, and grouped sparse operator representations that exploit shared bit-flip patterns among Pauli strings.

What carries the argument

Grouped sparse operator representations that exploit shared bit-flip patterns among Pauli strings, supported by binary symplectic encoding and canonical coefficient reduction.

If this is right

  • Hamiltonian construction for large active spaces in quantum chemistry becomes computationally practical.
  • Large-active-space VQE and ADAPT-VQE calculations run efficiently on classical multicore hardware.
  • Real-time variational dynamics simulations scale to modern CPU and GPU architectures.
  • A scalable classical backend supports development and benchmarking of quantum algorithms in chemistry and many-body physics.

Where Pith is reading between the lines

These are editorial extensions of the paper, not claims the author makes directly.

  • The encoding and grouping techniques may extend to operator algebras in other quantum information tasks beyond Pauli strings.
  • Faster classical references could improve verification of results from near-term quantum hardware.
  • Similar structure-aware optimizations might apply to tensor-network or other many-body simulation methods.

Load-bearing premise

The grouped sparse operator representations that exploit shared bit-flip patterns among Pauli strings will yield practical speedups for the targeted Hamiltonian construction and VQE tasks in many-electron spaces.

What would settle it

Benchmarks on a standard many-electron Hamiltonian with hundreds of orbitals showing no runtime reduction compared to existing Pauli libraries for VQE or Hamiltonian construction.

read the original abstract

Efficient manipulation of Pauli-algebraic objects is a key bottleneck in the classical emulation and benchmarking of quantum algorithms for chemistry and many-body physics. This bottleneck appears in Hamiltonian construction, variational ansatz preparation, expectation-value and gradient evaluation, and real-time propagation, all of which require repeated Pauli-algebra operations. Here, we present a high-performance Pauli-algebra framework tailored to quantum many-body and quantum-chemical simulations. The framework combines compact binary symplectic encoding, canonical coefficient reduction, and grouped sparse operator representations that exploit shared bit-flip patterns among Pauli strings. The resulting Julia/C\texttt{++} implementation accelerates Pauli multiplication, Hamiltonian construction, and operator--state multiplication in sparse and symmetry-adapted many-electron spaces. Benchmarks demonstrate efficient Hamiltonian construction, large-active-space VQE and ADAPT-VQE calculations, and real-time variational dynamics on modern multicore CPU and GPU architectures. These results show that structure-aware Pauli-algebra engines provide a scalable classical backend for developing and benchmarking quantum algorithms in quantum chemistry and many-body simulation.

Editorial analysis

A structured set of objections, weighed in public.

Desk editor's note, referee report, simulated authors' rebuttal, and a circularity audit. Tearing a paper down is the easy half of reading it; the pith above is the substance, this is the friction.

Referee Report

0 major / 1 minor

Summary. The manuscript introduces a high-performance Pauli-algebra framework for quantum many-body and quantum-chemical simulations. It combines compact binary symplectic encoding, canonical coefficient reduction, and grouped sparse operator representations that exploit shared bit-flip patterns among Pauli strings. The resulting Julia/C++ implementation is claimed to accelerate Pauli multiplication, Hamiltonian construction, and operator-state multiplication in sparse and symmetry-adapted many-electron spaces, with benchmarks for efficient Hamiltonian construction, large-active-space VQE/ADAPT-VQE, and real-time variational dynamics on multicore CPU/GPU architectures.

Significance. If the reported performance gains hold under scrutiny, the framework supplies a practical, structure-aware classical backend that directly mitigates a recurring bottleneck in emulating and benchmarking quantum algorithms for chemistry and many-body physics. The provision of explicit algorithmic descriptions together with benchmark timings on modern hardware constitutes a concrete, falsifiable contribution.

minor comments (1)
  1. The abstract states that 'benchmarks demonstrate efficient...' yet supplies no numerical values, error bars, or hardware specifications; the main text should ensure all timing tables include these details for reproducibility.

Simulated Author's Rebuttal

0 responses · 0 unresolved

We thank the referee for their positive assessment of the manuscript and for recommending acceptance. No major comments were provided in the report.

Circularity Check

0 steps flagged

No significant circularity; framework is algorithmic and benchmark-validated

full rationale

The paper presents an algorithmic framework combining binary symplectic encoding, coefficient reduction, and grouped sparse representations for Pauli operations, followed by explicit implementation details and benchmark timings on CPU/GPU hardware for VQE and dynamics tasks. No derivation step reduces by construction to fitted parameters renamed as predictions, self-definitional equations, or load-bearing self-citations; the central claims rest on described procedures whose performance is measured externally rather than assumed. The manuscript is self-contained against its own benchmarks and does not invoke uniqueness theorems or ansatzes from prior author work to force its choices.

Axiom & Free-Parameter Ledger

0 free parameters · 0 axioms · 0 invented entities

Abstract-only review provides no explicit free parameters, axioms, or invented entities; the framework description implies standard assumptions about Pauli operator structure in quantum chemistry but does not detail them.

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discussion (0)

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Reference graph

Works this paper leans on

66 extracted references · 8 canonical work pages · 6 internal anchors

  1. [1]

    Quantum Computing in the NISQ era and beyond

    Preskill, J. Quantum Computing in the NISQ era and beyond. Quantum 2018, 2, 79

  2. [2]

    P.; Degroote, M.; Johnson, P

    Cao, Y.; Romero, J.; Olson, J. P.; Degroote, M.; Johnson, P. D.; Kieferov \'a , M.; Kivlichan, I. D.; Menke, T.; Peropadre, B.; Sawaya, N. P.; others Quantum chemistry in the age of quantum computing. Chem.\ Rev. 2019, 119, 10856--10915

  3. [3]

    McArdle, S.; Endo, S.; Aspuru-Guzik, A.; others Quantum computational chemistry. Rev. Mod. Phys. 2020, 92, 015003

  4. [4]

    Quantum algorithms for electronic structures: basis sets and boundary conditions

    Liu, J.; Fan, Y.; Li, Z.; Yang, J. Quantum algorithms for electronic structures: basis sets and boundary conditions. Chem. Soc. Rev. 2022, 51, 3263--3279

  5. [5]

    J.; Aspuru-Guzik, A.; O'Brien, J

    Peruzzo, A.; McClean, J.; Shadbolt, P.; Yung, M.-H.; Zhou, X.-Q.; Love, P. J.; Aspuru-Guzik, A.; O'Brien, J. L. A variational eigenvalue solver on a photonic quantum processor. Nat. Commun. 2014, 5, 4213

  6. [6]

    Cerezo, M.; Arrasmith, A.; Babbush, R.; others Variational quantum algorithms. Nat. Rev. Phys. 2021, 3, 625--644

  7. [7]

    H.; Tennyson, J

    Tilly, J.; Chen, H.; Cao, S.; Picozzi, D.; Setia, K.; Li, Y.; Grant, E.; Wossnig, L.; Rungger, I.; Booth, G. H.; Tennyson, J. The Variational Quantum Eigensolver: A Review of Methods and Best Practices. Phys. Rep. 2022, 986, 1--128

  8. [8]

    Simulating Periodic Systems on a Quantum Computer Using Molecular Orbitals

    Liu, J.; Wan, L.; Li, Z.; Yang, J. Simulating Periodic Systems on a Quantum Computer Using Molecular Orbitals. J. Chem. Theory Comput. 2020, 16, 6904--6914

  9. [9]

    F.; de Jong, W

    Bassman Oftelie, L.; Urbanek, M.; Metcalf, M.; Carter, J.; Kemper, A. F.; de Jong, W. A. Simulating quantum materials with digital quantum computers. Quantum Sci. Technol. 2021, 6, 043002

  10. [10]

    J.; Tacchino, F.; Tavernelli, I

    Miessen, A.; Ollitrault, P. J.; Tacchino, F.; Tavernelli, I. Quantum algorithms for quantum dynamics. Nat. Comput. Sci. 2023, 3, 25--37

  11. [11]

    A Practical Quantum Instruction Set Architecture

    Smith, R. S.; Curtis, M. J.; Zeng, W. J. A Practical Quantum Instruction Set Architecture. arXiv preprint arXiv:1608.03355 2017,

  12. [12]

    qHiPSTER: The Quantum High Performance Software Testing Environment

    Smelyanskiy, M.; Sawaya, N. P.; Aspuru-Guzik, A. qHiPSTER: The quantum high performance software testing environment. arXiv preprint arXiv:1601.07195 2016,

  13. [13]

    H \"a ner, T.; Steiger, D. S. 0.5 Petabyte Simulation of a 45-Qubit Quantum Circuit. Proceedings of the International Conference for High Performance Computing, Networking, Storage and Analysis. 2017; pp 1--10

  14. [14]

    PennyLane: Automatic differentiation of hybrid quantum-classical computations

    Bergholm, V.; Izaac, J.; Schuld, M.; Gogolin, C.; Ahmed, S.; Ajith, V.; Alam, M. S.; Alonso-Linaje, G.; AkashNarayanan, B.; Asadi, A.; others Pennylane: Automatic differentiation of hybrid quantum-classical computations. arXiv preprint arXiv:1811.04968 2018,

  15. [15]

    Gustafson, E.; Holzman, B.; Kowalkowski, J.; Lamm, H.; Li, A. C. Y.; Perdue, G.; Isakov, S. V.; Martin, O.; Thomson, R.; Beall, J.; Ganahl, M.; Vidal, G.; Peters, E. Large scale multi-node simulations of Z2 gauge theory quantum circuits using Google Cloud Platform. 2021 IEEE/ACM Second International Workshop on Quantum Computing Software (QCS). 2021; pp 72--79

  16. [16]

    Jones, T.; Brown, A.; Bush, I.; Benjamin, S. C. QuEST and high performance simulation of quantum computers. Sci. Rep. 2019, 9, 10736

  17. [17]

    M.; Mitarai, K.; Imai, R.; Tamiya, S.; Yamamoto, T.; Yan, T.; Kawakubo, T.; Nakagawa, Y

    Suzuki, Y.; Kawase, Y.; Masumura, Y.; Hiraga, Y.; Nakadai, M.; Chen, J.; Nakanishi, K. M.; Mitarai, K.; Imai, R.; Tamiya, S.; Yamamoto, T.; Yan, T.; Kawakubo, T.; Nakagawa, Y. O.; Ibe, Y.; Zhang, Y.; Yamashita, H.; Yoshimura, H.; Hayashi, A.; Fujii, K. Qulacs: a fast and versatile quantum circuit simulator for research purpose. Quantum 2021, 5, 559

  18. [18]

    R.; Rubin, N

    McClean, J. R.; Rubin, N. C.; Sung, K. J.; Kivlichan, I. D.; Bonet-Monroig, X.; Cao, Y.; Dai, C.; Fried, E. S.; Gidney, C.; Gimby, B.; Gokhale, P.; H \"a ner, T.; Hardikar, T.; Havl \'i c ek, V.; Higgott, O.; Huang, C.; Izaac, J.; Jiang, Z.; Liu, X.; McArdle, S.; Neeley, M.; O'Brien, T.; O'Gorman, B.; Ozfidan, I.; Radin, M. D.; Romero, J.; Sawaya, N. P. D...

  19. [19]

    Q ^2 Chemistry: A quantum computation platform for quantum chemistry

    Fan, Y.; Liu, J.; Zeng, X.; Xu, Z.; Shang, H.; Li, Z.; Yang, J. Q ^2 Chemistry: A quantum computation platform for quantum chemistry. JUSTC 2022, 52, 2--1--2--12

  20. [20]

    GPU-accelerated simulations of quantum annealing and the quantum approximate optimization algorithm

    Willsch, D.; Willsch, M.; Jin, F.; Michielsen, K.; De Raedt , H. GPU-accelerated simulations of quantum annealing and the quantum approximate optimization algorithm. Comput.\ Phys.\ Commun. 2022, 278, 108411

  21. [21]

    Bayraktar, H.; Charara, A.; Clark, D.; Cohen, S.; Costa, T.; Fang, Y.-L. L.; Gao, Y.; Guan, J.; Gunnels, J.; Haidar, A.; Hehn, A.; Hohnerbach, M.; Jones, M.; Lubowe, T.; Lyakh, D.; Morino, S.; Springer, P.; Stanwyck, S.; Terentyev, I.; Varadhan, S.; Wong, J.; Yamaguchi, T. cuQuantum SDK: A High-Performance Library for Accelerating Quantum Science. 2023 IE...

  22. [22]

    Quantum computing with Qiskit

    Javadi-Abhari, A.; Treinish, M.; Krsulich, K.; Wood, C. J.; Lishman, J.; Gacon, J.; Martiel, S.; Nation, P. D.; Bishop, L. S.; Cross, A. W.; Johnson, B. R.; Gambetta, J. M. Quantum Computing with Qiskit . arXiv preprint arXiv:2405.08810 2024,

  23. [23]

    P.; Shuai, Z.; Zhang, S

    Li, W.; Allcock, J.; Cheng, L.; Zhang, S.-X.; Chen, Y.-Q.; Mailoa, J. P.; Shuai, Z.; Zhang, S. TenCirChem: An Efficient Quantum Computational Chemistry Package for the NISQ Era. J. Chem.\ Theory Comput. 2023, 19, 3966--3981

  24. [24]

    Yao.jl: Extensible, Efficient Framework for Quantum Algorithm Design

    Luo, X.-Z.; Liu, J.-G.; Zhang, P.; Wang, L. Yao.jl: Extensible, Efficient Framework for Quantum Algorithm Design. Quantum 2020, 4, 341

  25. [25]

    V.; Kafri, D.; Martin, O.; Heidweiller, C

    Isakov, S. V.; Kafri, D.; Martin, O.; Heidweiller, C. V.; Mruczkiewicz, W.; Harrigan, M. P.; Rubin, N. C.; Thomson, R.; Broughton, M.; Kissell, K.; others Simulations of Quantum Circuits with Approximate Noise using qsim and Cirq. arXiv preprint arXiv:2111.02396 2021,

  26. [26]

    Efficient Classical Simulation of Slightly Entangled Quantum Computations

    Vidal, G. Efficient Classical Simulation of Slightly Entangled Quantum Computations. Phys. Rev. Lett. 2003, 91, 147902

  27. [27]

    L.; Shi, Y

    Markov, I. L.; Shi, Y. Simulating Quantum Computation by Contracting Tensor Networks. SIAM J. Comput. 2008, 38, 963--981

  28. [28]

    Hyper-Optimized Tensor Network Contraction

    Gray, J.; Kourtis, S. Hyper-Optimized Tensor Network Contraction. Quantum 2021, 5, 410

  29. [29]

    Simulation of Quantum Circuits Using the Big-Batch Tensor Network Method

    Pan, F.; Chen, K.; Zhang, P. Simulation of Quantum Circuits Using the Big-Batch Tensor Network Method. Phys. Rev. Lett. 2022, 128, 030501

  30. [30]

    L.; Larocca, M.; Cincio, L.; Cerezo, M.; Sauvage, F

    Goh, M. L.; Larocca, M.; Cincio, L.; Cerezo, M.; Sauvage, F. Lie-algebraic classical simulations for quantum computing. Phys. Rev. Research 2025, 7, 033266

  31. [31]

    F.; Kemper, A

    K \"o kc \"u , E.; Steckmann, T.; Wang, Y.; Freericks, J.; Dumitrescu, E. F.; Kemper, A. F. Fixed depth Hamiltonian simulation via Cartan decomposition. Phys.\ Rev.\ Lett. 2022, 129, 070501

  32. [32]

    Hybrid hamiltonian simulation for excitation dynamics

    Wan, L.; Liu, J.; Li, Z.; Yang, J. Hybrid hamiltonian simulation for excitation dynamics. J. Phys.\ Chem.\ Lett. 2024, 15, 11234--11243

  33. [33]

    Calculation of the Green’s Function on Near-term Quantum Computers via Cartan Decomposition

    Wan, L.; Liu, J.; Yang, J. Calculation of the Green’s Function on Near-term Quantum Computers via Cartan Decomposition. Chem. Res. Chin. Univ. 2025, 41, 1029--1036

  34. [34]

    Stabilizer codes and quantum error correction; California Institute of Technology, 1997

    Gottesman, D. Stabilizer codes and quantum error correction; California Institute of Technology, 1997

  35. [35]

    Stim: a fast stabilizer circuit simulator

    Gidney, C. Stim: a fast stabilizer circuit simulator. Quantum 2021, 5, 497

  36. [36]

    Clifford group, stabilizer states, and linear and quadratic operations over GF (2)

    Dehaene, J.; De Moor, B. Clifford group, stabilizer states, and linear and quadratic operations over GF (2). Phys.\ Rev. A 2003, 68, 042318

  37. [37]

    Tapering off qubits to simulate fermionic Hamiltonians

    Bravyi, S.; Gambetta, J. M.; Mezzacapo, A.; Temme, K. Tapering off qubits to simulate fermionic Hamiltonians. arXiv preprint arXiv:1701.08213 2017,

  38. [38]

    Efficiently Manipulating Pauli Strings with PauliArray

    Dion, M.; Belabbas, T.; Bastien, N. Efficiently Manipulating Pauli Strings with PauliArray . arXiv preprint arXiv:2405.19287 2024,

  39. [39]

    Tensorized Pauli decomposition algorithm

    Hantzko, L.; Binkowski, L.; Gupta, S. Tensorized Pauli decomposition algorithm. Phys. Scr. 2024, 99, 085128

  40. [40]

    Verteletskyi, V.; Yen, T.-C.; Izmaylov, A. F. Measurement optimization in the variational quantum eigensolver using a minimum clique cover. J. Chem.\ Theory Comput. 2020, 152, 124114

  41. [41]

    U ber das Paulische \

    Jordan, P.; Wigner, E. \"U ber das Paulische \"A quivalenzverbot. Z. Phys. 1928, 47, 631--651

  42. [42]

    B.; Kitaev, A

    Bravyi, S. B.; Kitaev, A. Y. Fermionic quantum computation. Annals of Physics 2002, 298, 210--226

  43. [43]

    T.; Richard, M

    Seeley, J. T.; Richard, M. J.; Love, P. J. The Bravyi--Kitaev transformation for quantum computation of electronic structure. J. Chem.\ Phys. 2012, 137, 224109

  44. [44]

    S.; Lloyd, S

    Abrams, D. S.; Lloyd, S. Quantum algorithm providing exponential speed increase for finding eigenvalues and eigenvectors. Phys.\ Rev.\ Lett. 1999, 83, 5162--5165

  45. [45]

    Kitaev, A. Y. Quantum Measurements and the Abelian Stabilizer Problem. arXiv preprint arXiv:quant-ph/9511026 1995,

  46. [46]

    D.; Love, P

    Aspuru-Guzik, A.; Dutoi, A. D.; Love, P. J.; Head-Gordon, M. Simulated quantum computation of molecular energies. Science 2005, 309, 1704--1707

  47. [47]

    Universal quantum simulators

    Lloyd, S. Universal quantum simulators. Science 1996, 273, 1073--1078

  48. [48]

    General theory of fractal path integrals with applications to many-body theories and statistical physics

    Suzuki, M. General theory of fractal path integrals with applications to many-body theories and statistical physics. J. Math. Phys. 1991, 32, 400--407

  49. [49]

    W.; Childs, A

    Berry, D. W.; Childs, A. M.; Cleve, R.; Kothari, R.; Somma, R. D. Simulating Hamiltonian dynamics with a truncated Taylor series. Phys. Rev. Lett. 2015, 114, 090502

  50. [50]

    H.; Chuang, I

    Low, G. H.; Chuang, I. L. Hamiltonian simulation by qubitization. Quantum 2019, 3, 163

  51. [51]

    H.; Chuang, I

    Low, G. H.; Chuang, I. L. Optimal Hamiltonian simulation by quantum signal processing. Phys. Rev. Lett. 2017, 118, 010501

  52. [52]

    A.; Chan, G

    Evangelista, F. A.; Chan, G. K.; Scuseria, G. E. Exact parameterization of fermionic wave functions via unitary coupled cluster theory. J. Chem.\ Phys. 2019, 151

  53. [53]

    S.; Armaos, V.; Barnes, C

    Yordanov, Y. S.; Armaos, V.; Barnes, C. H.; Arvidsson-Shukur, D. R. Qubit-excitation-based adaptive variational quantum eigensolver. Chem.\ Phys. 2021, 4, 228

  54. [54]

    Circuit-Efficient Qubit Excitation-Based Variational Quantum Eigensolver

    Sun, Z.; Li, X.; Liu, J.; Li, Z.; Yang, J. Circuit-Efficient Qubit Excitation-Based Variational Quantum Eigensolver. J. Chem.\ Theory Comput. 2025, 21, 5071--5082

  55. [55]

    Adaptive Variational Quantum Simulations of Periodic Materials Using Qubit-Encoded Wave Functions

    Li, X.; Fan, Y.; Liu, J.; Li, Z.; Yang, J. Adaptive Variational Quantum Simulations of Periodic Materials Using Qubit-Encoded Wave Functions. J. Chem.\ Theory Comput. 2025, 21, 5973--5985

  56. [56]

    Evaluating analytic gradients on quantum hardware

    Schuld, M.; Bergholm, V.; Gogolin, C.; Izaac, J.; Killoran, N. Evaluating analytic gradients on quantum hardware. Phys.\ Rev. A 2019, 99, 032331

  57. [57]

    Quantum circuit learning

    Mitarai, K.; Negoro, M.; Kitagawa, M.; Fujii, K. Quantum circuit learning. Phys.\ Rev. A 2018, 98, 032309

  58. [58]

    J.; Handy, N

    Knowles, P. J.; Handy, N. C. A new determinant-based full configuration interaction method. Chem.\ Phys.\ Lett. 1984, 111, 315--321

  59. [59]

    O.; Jo/rgensen, P.; Jensen, H

    Olsen, J.; Roos, B. O.; Jo/rgensen, P.; Jensen, H. J. A. Determinant based configuration interaction algorithms for complete and restricted configuration interaction spaces. J. Chem.\ Phys. 1988, 89, 2185--2192

  60. [60]

    S.; Lidar, D

    Wu, L.-A.; Byrd, M. S.; Lidar, D. Polynomial-time simulation of pairing models on a quantum computer. Phys.\ Rev.\ Lett. 2002, 89, 057904

  61. [61]

    J.; Thuente, D

    Mor\' e , J. J.; Thuente, D. J. Line search algorithms with guaranteed sufficient decrease. ACM Trans. Math. Softw. 1994, 20, 286–307

  62. [62]

    W.; Van Neck , D

    Wouters, S.; Poelmans, W.; Ayers, P. W.; Van Neck , D. CheMPS2: A free open-source spin-adapted implementation of the density matrix renormalization group for ab initio quantum chemistry. Comput.\ Phys.\ Commun. 2014, 185, 1501--1514

  63. [63]

    R.; Economou, S

    Grimsley, H. R.; Economou, S. E.; Barnes, E.; Mayhall, N. J. An adaptive variational algorithm for exact molecular simulations on a quantum computer. Nat.\ Chem. 2019, 10

  64. [64]

    An efficient quantum algorithm for the time evolution of parameterized circuits

    Barison, S.; Vicentini, F.; Carleo, G. An efficient quantum algorithm for the time evolution of parameterized circuits. Quantum 2021, 5, 512

  65. [65]

    McLachlan, A. D. A Variational Solution of the Time-Dependent Schr\"odinger Equation. Mol. Phys. 1964, 8, 39--44

  66. [66]

    Yuan, X.; Endo, S.; Zhao, Q.; Li, Y.; Benjamin, S. C. Theory of variational quantum simulation. Quantum 2019, 3, 191 mcitethebibliography