Abstract

Understanding the computational power of noisy intermediate-scale quantum (NISQ) devices is of both fundamental and practical importance to quantum information science. Here, we address the question of whether error-uncorrected noisy quantum computers can provide computational advantage over classical computers. Specifically, we study noisy random circuit sampling in one dimension (or 1D noisy RCS) as a simple model for exploring the effects of noise on the computational power of a noisy quantum device. In particular, we simulate the real-time dynamics of 1D noisy random quantum circuits via matrix product operators (MPOs) and characterize the computational power of the 1D noisy quantum system by using a metric we call MPO entanglement entropy. The latter metric is chosen because it determines the cost of classical MPO simulation. We numerically demonstrate that for the two-qubit gate error rates we considered, there exists a characteristic system size above which adding more qubits does not bring about an exponential growth of the cost of classical MPO simulation of 1D noisy systems. Specifically, we show that above the characteristic system size, there is an optimal circuit depth, independent of the system size, where the MPO entanglement entropy is maximized. Most importantly, the maximum achievable MPO entanglement entropy is bounded by a constant that depends only on the gate error rate, not on the system size. We also provide a heuristic analysis to get the scaling of the maximum achievable MPO entanglement entropy as a function of the gate error rate. The obtained scaling suggests that although the cost of MPO simulation does not increase exponentially in the system size above a certain characteristic system size, it does increase exponentially as the gate error rate decreases, possibly making classical simulation practically not feasible even with state-of-the-art supercomputers.

Highlights

  • Quantum computers can provide significant computational advantage over classical computers as they can efficiently solve certain important problems that are believed to be not solvable in polynomial time with classical computers

  • We have numerically investigated the computational power of 1D noisy quantum systems by using matrix product operators (MPOs)

  • The key observation is that the maximum achievable MPO entanglement entropy Smax is bounded by a constant Smax,∞(p) that is independent of the system size, but depends only on gate error rates

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Summary

Introduction

Quantum computers can provide significant computational advantage over classical computers as they can efficiently solve certain important problems that are believed to be not solvable in polynomial time with classical computers. We directly simulate the mixed state dynamics of 1D noisy random quantum circuits by using matrix product operators (MPOs) [47, 48] Note that this is a strictly more challenging task than sampling since any output probability (including marginal and conditional probabilities) can be computed efficiently from an MPO and sampling can be done straightforwardly. The main contribution of our work is to characterize the computational power of 1D noisy quantum devices by using a metric we call MPO entanglement entropy We choose the latter metric because it determines the cost of classical MPO simulation as well as the degree of non-trivial quantum correlation of a mixed state.

Noisy random circuit sampling in one dimension
Noise model
Matrix product operators
Vectorization of density matrices and canonical form
Canonical update of MPOs
MPO entanglement entropy
Efficient computation of the output probabilities
Main results
Numerical results
Maximum achievable MPO entanglement entropy
Relation to previous results
Summary and open questions
A Canonical update of MPOs under the action of a general two-qudit CPTP map
Findings
B Time cost of MPO simulation of 1D noisy RCS
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