See event details for additional info.
有興趣的人
日期 |
2022-09-26 |
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時間 |
12:10-13:00 |
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地點 |
理學教學新大樓物理系1F 36169會議室 |
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領域 |
Quantum Information Science |
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講者 |
李瑞光 教授 - 國立清華大學電機系 |
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題目 |
Machine-Learning enhanced Quantum State Tomography |
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摘要 |
In this talk, I shall be covering fundamental details about machine-learning (ML) enhanced quantum state tomography (QST) for squeezed states. Implementation of machine learning architecture with a convolutional neural network will be illustrated and demonstrated through the experimentally measured data generated from squeezed vacuum states [1]. In addition to using the reconstruction model in training a truncated density matrix, we also develop a high-performance, lightweight, and easy-to-install supervised characteristic model by generating the target parameters directly [2]. With the help of machine learning-enhanced quantum state tomography, we also experimentally reconstructed the Wigner’s quantum phase current for the first time [3]. A brief view on quantum ML will also be discussed [4]. At the same time, as a collaborator for LIGO-Virgo-KAGRA gravitational wave network and Einstein Telescope, I will introduce our plan to inject this squeezed vacuum field into the advanced gravitational wave detectors [5]. I will also cover progress in applying such a ML- QST as a crucial diagnostic toolbox for applications with squeezed states, from quantum information process, quantum metrology, and macroscopic quantum state generation. |
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