Machine learning enables completely automatic tuning of a quantum device faster than human experts
Device variability is a bottleneck for the scalability of semiconductor quantum devices. Increasing device control comes at the cost of a large parameter space that has to be explored in order to find the optimal operating conditions. We demonstrate a statistical tuning algorithm that navigates this...
Main Authors: | Moon, H, Lennon, DT, Kirkpatrick, J, van Esbroeck, NMV, Camenzind, LC, Yu, L, Vigneau, F, Zumbühl, DM, Briggs, GAD, Osborne, MA, Sejdinovic, D, Laird, EA, Ares, N |
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Format: | Journal article |
Language: | English |
Published: |
Springer Nature
2020
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