Autonomous Bootstrapping of Quantum Dot Devices

arXiv:2407.20061v212 citationsh-index: 33
Originality Incremental advance
AI Analysis

This addresses the scalability challenge for quantum computing researchers by enabling efficient tuning of complex quantum dot arrays, though it is incremental as it builds on existing methods.

The researchers tackled the problem of autonomously initializing quantum dot devices for qubit implementations by proposing a bootstrapping algorithm that validates device functionality, characterizes gates, and makes sensors operational, achieving a success rate of 96% in under 8 minutes.

Semiconductor quantum dots (QDs) are a promising platform for multiple different qubit implementations, all of which are voltage controlled by programmable gate electrodes. However, as the QD arrays grow in size and complexity, tuning procedures that can fully autonomously handle the increasing number of control parameters are becoming essential for enabling scalability. We propose a bootstrapping algorithm for initializing a depletion-mode QD device in preparation for subsequent phases of tuning. During bootstrapping, the QD device functionality is validated, all gates are characterized, and the QD charge sensor is made operational. We demonstrate the bootstrapping protocol in conjunction with a coarse-tuning module, showing that the combined algorithm can efficiently and reliably take a cooled-down QD device to a desired global-state configuration in under 8 min with a success rate of 96 %. Finally, by following heuristic approaches to QD device initialization and combining the efficient ray-based measurement with the rapid radio-frequency reflectometry measurements, the proposed algorithm establishes a reference in terms of performance, reliability, and efficiency against which alternative algorithms can be benchmarked.

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