学术

物理学院陈玉琴学术报告的通知(School of Physics Colloquium)

编辑:李嘉宁 来源:物理学院 时间:2022年11月01日 访问次数:0  源地址

题目:Challenges and opportunities for quantum computing in noisy intermediate-scale quantum era

报告人:陈玉琴

  点:腾讯会议:460-178-163

  间: 114日,周五,15:30-16:30

 

摘要

As we enter the noisy intermediate-scale quantum (NISQ) era, we face the near-term prospect of demonstrating non-trivial computations on quantum circuits consisting of 50 to a few hundred qubits without error correction. In this talk, I will discuss the challenges in quantum noise and opportunities in quantum simulation for quantum computing in NISQ era.  Specifically, I will present our recent progress on non-Markovian noise on quantum processor [1,2]. We propose protocols based on transfer tensor maps and spectral transfer tensor maps to capture non-Markovianity and reconstruct the noise spectral density beyond pure dephasing models.  I will also introduce the AI-assisted quantum algorithm in accelerating the quantum annealing process [3], in which we propose a Monte Carlo Tree Search (MCTS) algorithm and QuantumZero (QZero) to automate the design of annealing schedules. At last, I will describe a Lyapunov control-assisted quantum algorithm in accelerating quantum imaginary simulation and its realization on digital quantum computer [4].

 

References

[1]  Chen, Yu-Qin, et al. Non-markovian noise characterization with the transfer tensor method. Physical Review Applied 13.3 (2020): 034045.

[2]  Chen, Yu-Qin, et al. Spectral-Transfer-Tensor Method for Characterizing Non-Markovian Noise. Physical Review Applied 17.6 (2022): 064007.

[3]  Chen, Yu-Qin, et al. Optimizing quantum annealing schedules with Monte Carlo tree search enhanced with neural networks. Nature Machine Intelligence 4.3 (2022): 269-278.

[4]  Chen, Yu-Cheng, Chen,Yu-Qin  et al. Variational quantum simulation of the imaginary-time Lyapunov control for accelerating the ground-state preparation. arXiv preprint arXiv:2112.11782 (2021)

 

个人简介

 


Dr. Yu-Qin Chen is a Senior Researcher in Tencent Quantum Laboratory, Tencent, China.  She received her Ph.D in physics from International Center for Quantum Materials, School of Physics, Peking University in 2019 and then joined Tencent Quantum Laboratory.  She is interested in quantum machine learning, artificial intelligence, quantum information science, quantum computation algorithm, quantum simulation in condensed matter physics and chemical systems.

 

欢迎老师和同学参加!


总访问量:10743231