Resource-frugal Hamiltonian eigenstate preparation via repeated quantum
phase estimation measurements
- URL: http://arxiv.org/abs/2212.00846v1
- Date: Thu, 1 Dec 2022 20:07:36 GMT
- Title: Resource-frugal Hamiltonian eigenstate preparation via repeated quantum
phase estimation measurements
- Authors: Richard Meister, Simon C. Benjamin
- Abstract summary: Preparation of Hamiltonian eigenstates is essential for many applications in quantum computing.
We adopt ideas from variants of this method to implement a resource-frugal iterative scheme.
We characterise an extension involving a modification of the target Hamiltonian to increase overall efficiency.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The preparation of Hamiltonian eigenstates is essential for many applications
in quantum computing; the efficiency with which this can be done is of key
interest. A canonical approach exploits the quantum phase estimation (QPE)
algorithm. We adopt ideas from variants of this method to implement a
resource-frugal iterative scheme, and provide analytic bounds on the complexity
(simulation time cost) for various cases of available information and tools. We
propose and characterise an extension involving a modification of the target
Hamiltonian to increase overall efficiency. The presented methods and bounds
are then demonstrated by preparing the ground state of the Hamiltonians of LiH
and H$_2$ in second quantisation; we report the performance of both ideal and
noisy implementations using simulated quantum computers. Convergence is
generally achieved much faster than the bounds suggest, while the qualitative
features are validated.
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