GASP -- A Genetic Algorithm for State Preparation
- URL: http://arxiv.org/abs/2302.11141v1
- Date: Wed, 22 Feb 2023 04:41:01 GMT
- Title: GASP -- A Genetic Algorithm for State Preparation
- Authors: Floyd M. Creevey, Charles D. Hill, Lloyd C. L. Hollenberg
- Abstract summary: We present a genetic algorithm for state preparation (GASP) which generates relatively low-depth quantum circuits for initialising a quantum computer in a specified quantum state.
GASP can produce more efficient circuits of a given accuracy with lower depth and gate counts than other methods.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The efficient preparation of quantum states is an important step in the
execution of many quantum algorithms. In the noisy intermediate-scale quantum
(NISQ) computing era, this is a significant challenge given quantum resources
are scarce and typically only low-depth quantum circuits can be implemented on
physical devices. We present a genetic algorithm for state preparation (GASP)
which generates relatively low-depth quantum circuits for initialising a
quantum computer in a specified quantum state. The method uses a basis set of
R_x, R_y, R_z, and CNOT gates and a genetic algorithm to systematically
generate circuits to synthesize the target state to the required fidelity. GASP
can produce more efficient circuits of a given accuracy with lower depth and
gate counts than other methods. This variability of the required accuracy
facilitates overall higher accuracy on implementation, as error accumulation in
high-depth circuits can be avoided. We directly compare the method to the state
initialisation technique based on an exact synthesis technique by implemented
in IBM Qiskit simulated with noise and implemented on physical IBM Quantum
devices. Results achieved by GASP outperform Qiskit's exact general circuit
synthesis method on a variety of states such as Gaussian states and W-states,
and consistently show the method reduces the number of gates required for the
quantum circuits to generate these quantum states to the required accuracy.
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