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Quantum Machine Learning
Fast characterization of multiplexed single-electron pumps with machine learning
arXiv
Authors: N. Schoinas, Y. Rath, S. Norimoto, W. Xie, P. See, J. P. Griffiths, C. Chen, D. A. Ritchie, M. Kataoka, A. Rossi, I. Rungger
Year
2024
Paper ID
67060
Status
Preprint
Abstract Read
~2 min
Abstract Words
154
Citations
N/A
Abstract
We present an efficient machine learning based automated framework for the fast tuning of single-electron pump devices into current quantization regimes. It uses a sparse measurement approach based on an iterative active learning algorithm to take targeted measurements in the gate voltage parameter space. When compared to conventional parameter scans, our automated framework allows us to decrease the number of measurement points by about an order of magnitude. This corresponds to an eight-fold decrease in the time required to determine quantization errors, which are estimated via an exponential extrapolation of the first current plateau embedded into the algorithm. We show the robustness of the framework by characterizing 28 individual devices arranged in a GaAs/AlGaAs multiplexer array, which we use to identify a subset of devices suitable for parallel operation at communal gate voltages. The method opens up the possibility to efficiently scale the characterization of such multiplexed devices to a large number of pumps.
Why This Paper Matters
- This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
- It adds a 2024 reference point for readers tracking recent quantum research.
- We present an efficient machine learning based automated framework for the fast tuning of single-electron pump devices into current quantization regimes.
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