Classical variational simulation of the Quantum Approximate Optimization Algorithm

NPJ QUANTUM INFORMATION(2021)

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摘要
A key open question in quantum computing is whether quantum algorithms can potentially offer a significant advantage over classical algorithms for tasks of practical interest. Understanding the limits of classical computing in simulating quantum systems is an important component of addressing this question. We introduce a method to simulate layered quantum circuits consisting of parametrized gates, an architecture behind many variational quantum algorithms suitable for near-term quantum computers. A neural-network parametrization of the many-qubit wavefunction is used, focusing on states relevant for the Quantum Approximate Optimization Algorithm (QAOA). For the largest circuits simulated, we reach 54 qubits at 4 QAOA layers, approximately implementing 324 RZZ gates and 216 RX gates without requiring large-scale computational resources. For larger systems, our approach can be used to provide accurate QAOA simulations at previously unexplored parameter values and to benchmark the next generation of experiments in the Noisy Intermediate-Scale Quantum (NISQ) era.
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关键词
Computational science,Information theory and computation,Quantum simulation,Physics,general,Quantum Physics,Quantum Information Technology,Spintronics,Quantum Computing,Quantum Field Theories,String Theory,Classical and Quantum Gravitation,Relativity Theory
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