Scaling quantum approximate optimization on near-term hardware

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作者
Phillip C. Lotshaw
Thien Nguyen
Anthony Santana
Alexander McCaskey
Rebekah Herrman
James Ostrowski
George Siopsis
Travis S. Humble
机构
[1] Oak Ridge National Laboratory,Quantum Computational Sciences Group
[2] Oak Ridge National Laboratory,Beyond Moore Computing Group
[3] Oak Ridge National Laboratory,Quantum Science Center
[4] University of Tennessee,Department of Industrial and Systems Engineering
[5] University of Tennessee,Department of Physics and Astronomy
[6] Quantum Brilliance,undefined
[7] Q-CTRL,undefined
[8] NVIDIA,undefined
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The quantum approximate optimization algorithm (QAOA) is an approach for near-term quantum computers to potentially demonstrate computational advantage in solving combinatorial optimization problems. However, the viability of the QAOA depends on how its performance and resource requirements scale with problem size and complexity for realistic hardware implementations. Here, we quantify scaling of the expected resource requirements by synthesizing optimized circuits for hardware architectures with varying levels of connectivity. Assuming noisy gate operations, we estimate the number of measurements needed to sample the output of the idealized QAOA circuit with high probability. We show the number of measurements, and hence total time to solution, grows exponentially in problem size and problem graph degree as well as depth of the QAOA ansatz, gate infidelities, and inverse hardware graph degree. These problems may be alleviated by increasing hardware connectivity or by recently proposed modifications to the QAOA that achieve higher performance with fewer circuit layers.
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