Robust quantum gates using smooth pulses and physics-informed neural
networks
- URL: http://arxiv.org/abs/2011.02512v2
- Date: Fri, 27 May 2022 23:31:59 GMT
- Title: Robust quantum gates using smooth pulses and physics-informed neural
networks
- Authors: Utkan G\"ung\"ord\"u and J. P. Kestner
- Abstract summary: We present the first general method for obtaining truly smooth pulses that minimizes sensitivity to noise.
We parametrize the Hamiltonian using a neural network, which allows the use of a large number of optimization parameters.
We demonstrate the capability of our approach by finding smooth shapes which suppress the effects of noise within the logical subspace as well as leakage out of that subspace.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The presence of decoherence in quantum computers necessitates the suppression
of noise. Dynamically corrected gates via specially designed control pulses
offer a path forward, but hardware-specific experimental constraints can cause
complications. Existing methods to obtain smooth pulses are either restricted
to two-level systems, require an optimization over noise realizations or
limited to piecewise-continuous pulse sequences. In this work, we present the
first general method for obtaining truly smooth pulses that minimizes
sensitivity to noise, eliminating the need for sampling over noise realizations
and making assumptions regarding the underlying statistics of the experimental
noise. We parametrize the Hamiltonian using a neural network, which allows the
use of a large number of optimization parameters to adequately explore the
functional control space. We demonstrate the capability of our approach by
finding smooth shapes which suppress the effects of noise within the logical
subspace as well as leakage out of that subspace.
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