A Depolarizing Noise-aware Transpiler for Optimal Amplitude
Amplification
- URL: http://arxiv.org/abs/2210.14335v4
- Date: Sat, 26 Nov 2022 05:34:21 GMT
- Title: A Depolarizing Noise-aware Transpiler for Optimal Amplitude
Amplification
- Authors: Debashis Ganguly and Wonsun Ahn
- Abstract summary: Amplitude amplification provides a quadratic speed-up for an array of quantum algorithms when run on a quantum machine perfectly isolated from its environment.
The advantage is substantially diminished as the NISQ-era quantum machines lack the large number of qubits necessary to provide error correction.
We propose an extension to the transpiler that predicts the accuracy of the result at every amplification with high fidelity by applying pure Bayesian analysis to individual gate noise rates.
- Score: 0.456877715768796
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Amplitude amplification provides a quadratic speed-up for an array of quantum
algorithms when run on a quantum machine perfectly isolated from its
environment. However, the advantage is substantially diminished as the NISQ-era
quantum machines lack the large number of qubits necessary to provide error
correction. Noise in the computation grows with the number of gate counts in
the circuit with each iteration of amplitude amplification. After a certain
number of amplifications, the loss in accuracy from the gate noise starts to
overshadow the gain in accuracy due to amplification, forming an inflection
point. Beyond this point, accuracy continues to deteriorate until the machine
reaches a maximally mixed state where the result is uniformly random. Hence,
quantum transpilers should take the noise parameters of the underlying quantum
machine into consideration such that the circuit can be optimized to attain the
maximal accuracy possible for that machine. In this work, we propose an
extension to the transpiler that predicts the accuracy of the result at every
amplification with high fidelity by applying pure Bayesian analysis to
individual gate noise rates. Using this information, it finds the inflection
point and optimizes the circuit by halting amplification at that point. The
prediction is made without needing to execute the circuit either on a quantum
simulator or an actual quantum machine.
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