학술논문

Quantum device fine-tuning using unsupervised embedding learning
Document Type
Working Paper
Source
Subject
Condensed Matter - Mesoscale and Nanoscale Physics
Computer Science - Machine Learning
Quantum Physics
Language
Abstract
Quantum devices with a large number of gate electrodes allow for precise control of device parameters. This capability is hard to fully exploit due to the complex dependence of these parameters on applied gate voltages. We experimentally demonstrate an algorithm capable of fine-tuning several device parameters at once. The algorithm acquires a measurement and assigns it a score using a variational auto-encoder. Gate voltage settings are set to optimise this score in real-time in an unsupervised fashion. We report fine-tuning times of a double quantum dot device within approximately 40 min.