Design and execution of quantum circuits using tens of superconducting qubits and thousands of gates for dense Ising optimization problems
We develop a hardware-efficient ansatz for variational optimization, derived from existing ansatze in the literature, that parametrizes subsets of all interactions in the Cost Hamiltonian in each layer. We treat gate orderings as a variational parameter and observe that doing so can provide signific...
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Zusammenfassung: | We develop a hardware-efficient ansatz for variational optimization, derived
from existing ansatze in the literature, that parametrizes subsets of all
interactions in the Cost Hamiltonian in each layer. We treat gate orderings as
a variational parameter and observe that doing so can provide significant
performance boosts in experiments. We carried out experimental runs of a
compilation-optimized implementation of fully-connected Sherrington-Kirkpatrick
Hamiltonians on a 50-qubit linear-chain subsystem of Rigetti Aspen-M-3 transmon
processor. Our results indicate that, for the best circuit designs tested, the
average performance at optimized angles and gate orderings increases with
circuit depth (using more parameters), despite the presence of a high level of
noise. We report performance significantly better than using a random guess
oracle for circuits involving up to approx 5000 two-qubit and approx 5000
one-qubit native gates. We additionally discuss various takeaways of our
results toward more effective utilization of current and future quantum
processors for optimization. |
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DOI: | 10.48550/arxiv.2308.12423 |