Data needs and challenges for quantum dot devices automation

arXiv:2312.14322v316 citationsh-index: 24npj Quantum Information
Originality Synthesis-oriented
AI Analysis

This incremental work targets researchers in quantum computing by focusing on automation needs for scalable quantum dot qubit systems.

The paper addresses the challenges in automating quantum dot device tuning and operation due to imperfections and growing parameter complexity, outlining community insights on datasets, benchmarking, and standardization to guide researchers.

Gate-defined quantum dots are a promising candidate system for realizing scalable, coupled qubit systems and serving as a fundamental building block for quantum computers. However, present-day quantum dot devices suffer from imperfections that must be accounted for, which hinders the characterization, tuning, and operation process. Moreover, with an increasing number of quantum dot qubits, the relevant parameter space grows sufficiently to make heuristic control infeasible. Thus, it is imperative that reliable and scalable autonomous tuning approaches are developed. This meeting report outlines current challenges in automating quantum dot device tuning and operation with a particular focus on datasets, benchmarking, and standardization. We also present insights and ideas put forward by the quantum dot community on how to overcome them. We aim to provide guidance and inspiration to researchers invested in automation efforts.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes