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Journal ArticleDOI

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

Feng Pan, +1 more
- 19 Jan 2022 - 
- Vol. 128 3, Iss: 3, pp 030501 - 030501
TLDR
The proposed big-batch method is extended to a full-amplitude simulation approach that is more efficient than the existing Schrödinger method on shallow circuits and the Schr Ödinger-Feynman method in general, enabling the state vector of Google's simplifiable circuit with n=43 qubits and m=14 cycles to be obtained using only one GPU.
Abstract
We propose a tensor network approach to compute amplitudes and probabilities for a large number of correlated bitstrings in the final state of a quantum circuit. As an application, we study Google's Sycamore circuits, which are believed to be beyond the reach of classical supercomputers and have been used to demonstrate quantum supremacy. By employing a small computational cluster containing 60 graphical processing units (GPUs), we compute exact amplitudes and probabilities of 2×10^{6} correlated bitstrings with some entries fixed (which span a subspace of the output probability distribution) for the Sycamore circuit with 53 qubits and 20 cycles. The obtained results verify the Porter-Thomas distribution of the large and deep quantum circuits of Google, provide datasets and benchmarks for developing approximate simulation methods, and can be used for spoofing the linear cross entropy benchmark of quantum supremacy. Then we extend the proposed big-batch method to a full-amplitude simulation approach that is more efficient than the existing Schrödinger method on shallow circuits and the Schrödinger-Feynman method in general, enabling us to obtain the state vector of Google's simplifiable circuit with n=43 qubits and m=14 cycles using only one GPU. We also manage to obtain the state vector for Google's simplifiable circuits with n=50 qubits and m=14 cycles using a small GPU cluster, breaking the previous record on the number of qubits in full-amplitude simulations. Our method is general in computing bitstring probabilities for a broad class of quantum circuits and can find applications in the verification of quantum computers. We anticipate that our method will pave the way for combining tensor network-based classical computations and near-term quantum computations for solving challenging problems in the real world.

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Citations
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Peer Review

Quantum computing at the quantum advantage threshold: a down-to-business review

TL;DR: A.K. Fedorov, N.Gisin, S.M. Beloussov, and A.I. Lvovsky as mentioned in this paper proposed a new method for quantum computing.
Proceedings ArticleDOI

A Polynomial-Time Classical Algorithm for Noisy Random Circuit Sampling

TL;DR: In this article , a polynomial time classical algorithm for sampling from the output distribution of a noisy random quantum circuit in the regime of anti-concentration to within inverse polynomially total variation distance is given.
Journal ArticleDOI

Solving the Sampling Problem of the Sycamore Quantum Circuits

TL;DR: In this article , the authors proposed a method to generate independent samples from the output distribution of Google's Sycamore quantum circuits with a target fidelity, which is beyond the reach of classical supercomputers and has been used to demonstrate quantum supremacy.

Decomposition of Matrix Product States into Shallow Quantum Circuits

TL;DR: This work compares a range of novel and previously-developed algorithmic protocols for decomposing matrix product states of arbitrary bond dimension into low-depth quantum circuits consisting of stacked linear layers of two-qubit unitaries and proposes a proposed decomposition protocol to form a useful ingredient within any joint application of TNs and PQCs.
Journal ArticleDOI

Near-term quantum computing techniques: Variational quantum algorithms, error mitigation, circuit compilation, benchmarking and classical simulation

TL;DR: In this article , a review of near-term quantum computing techniques, including variational quantum algorithms, error mitigation, quantum circuit compilation, and benchmarking protocols, is presented, and the future prospect of these techniques is discussed.
References
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Journal ArticleDOI

Supplementary information for "Quantum supremacy using a programmable superconducting processor"

TL;DR: In this paper, an updated version of supplementary information to accompany "Quantum supremacy using a programmable superconducting processor", an article published in the October 24, 2019 issue of Nature, is presented.
Journal ArticleDOI

Random matrix physics: Spectrum and strength fluctuations

TL;DR: In this article, it was shown that the general nature of deviations from uniformity in the spectrum of a complicated nucleus is essentially the same in all regions of the spectrum and over the entire Periodic Table.
Journal ArticleDOI

Fluctuations of Nuclear Reaction Widths

TL;DR: In this paper, the fluctuations of the neutron reduced widths from the resonance region of intermediate and heavy nuclei have been analyzed by a statistical procedure which is based on the method of maximum likelihood.
Journal ArticleDOI

Characterizing Quantum Supremacy in Near-Term Devices

TL;DR: In this article, the authors study the task of sampling from the output distributions of (pseudo-)random quantum circuits, a natural task for benchmarking quantum computers, and show that this sampling task must take exponential time in a classical computer.
Journal ArticleDOI

Simulating Quantum Computation by Contracting Tensor Networks

TL;DR: It is proved that a quantum circuit with T gates whose underlying graph has a treewidth d can be simulated deterministically in T^{O(1)}\exp[O(d)]$ time, which, in particular, is polynomial in $T$ if d=O(\log T)$.
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