Efficient Qubit Calibration by Binary-Search Hamiltonian Tracking

Journal Article (2025)
Author(s)

Fabrizio Berritta (University of Copenhagen)

Jacob Benestad (Norwegian University of Science and Technology (NTNU))

Lukas Pahl (ETH Zürich, Massachusetts Institute of Technology)

Melvin Mathews (ETH Zürich, Massachusetts Institute of Technology)

Jan A. Krzywda (Universiteit Leiden)

Réouven Assouly (Massachusetts Institute of Technology)

Youngkyu Sung (Massachusetts Institute of Technology)

David K. Kim (MIT Lincoln Laboratory)

Anasua Chatterjee (TU Delft - QuTech Advanced Research Centre, Kavli institute of nanoscience Delft, University of Copenhagen, TU Delft - QN/Chatterjee Lab, TU Delft - QRD/Chatterjee Lab)

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Research Group
QRD/Chatterjee Lab
DOI related publication
https://doi.org/10.1103/77qg-p68k
More Info
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Publication Year
2025
Language
English
Research Group
QRD/Chatterjee Lab
Journal title
PRX Quantum
Issue number
3
Volume number
6
Article number
030335
Downloads counter
34
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Abstract

We present and experimentally implement a real-time protocol for calibrating the frequency of a resonantly driven qubit, achieving exponential scaling in calibration precision with the number of measurements, up to the limit imposed by decoherence. The real-time processing capabilities of a classical controller dynamically generate adaptive probing sequences for qubit-frequency estimation. Each probing evolution time and drive frequency are calculated to divide the prior probability distribution into two branches, following a locally optimal strategy that mimics a conventional binary search. The scheme does not require repeated measurements at the same setting, as it accounts for state preparation and measurement errors. Its use of a parametrized probability distribution favors numerical accuracy and computational speed. We show the efficacy of the algorithm by stabilizing a flux-tunable transmon qubit, leading to improved coherence and gate fidelity. As benchmarked by gate-set tomography, the field-programmable gate array (FPGA) powered control electronics partially mitigates non-Markovian noise, which is detrimental to quantum error correction. The mitigation is achieved by dynamically updating and feeding forward the qubit frequency. Our protocol highlights the importance of feedback in improving the calibration and stability of qubits subject to drift and can be readily applied to other qubit platforms.