Xu Juan

Associate Professor  

Gender:Female

Alma Mater:东南大学

School/Department:College of Computer Science and Technology

Contact Information:025-84896490-16114


Paper Publications

A memory-efficient simulation method of grover?s search algorithm

Hits:

Affiliation of Author(s):计算机科学与技术学院/人工智能学院/软件学院

Journal:Comput. Mater. Continua

Abstract:Grover’s search algorithm is one of the most significant quantum algorithms, which can obtain quadratic speedup of the extensive search problems. Since Grover's search algorithm cannot be implemented on a real quantum computer at present, its quantum simulation is regarded as an effective method to study the search performance. When simulating the Grover's algorithm, the storage space required is exponential, which makes it difficult to simulate the high-qubit Grover’s algorithm. To this end, we deeply study the storage problem of probability amplitude, which is the core of the Grover simulation algorithm. We propose a novel memory-efficient method via amplitudes compression, and validate the effectiveness of the method by theoretical analysis and simulation experimentation. The results demonstrate that our compressed simulation search algorithm can help to save nearly 87.5% of the storage space than the uncompressed one. Thus under the same hardware conditions, our method can dramatically reduce the required computing nodes, and at the same time, it can simulate at least 3 qubits more than the uncompressed one. Particularly, our memory-efficient simulation method can also be used to simulate other quantum algorithms to effectively reduce the storage costs required in simulation. Copyright © 2018 Tech Science Press.

ISSN No.:1546-2218

Translation or Not:no

Date of Publication:2018-01-01

Co-author:唐旭玮,段博佳

Correspondence Author:许娟

Pre One:A High-Capacity Quantum Secret Sharing Protocol Based on Single D-Level Particles

Next One:A High-Capacity Quantum Secret Sharing Protocol Based on Single D-Level Particles

Profile

       南航计算机科学与技术学院/人工智能学院副教授,网络与信息安全系副主任,曾任校教师发展与教学评估中心主任助理,加拿大滑铁卢大学量子计算研究所访问学者。CCF高级会员,CCF量子计算专委会执行委员等

       主要研究兴趣包括先进计算、人工智能、信息安全及相关交叉领域。发表论文40余篇,出版译著和编著5部,授权和公开专利10余项,主持和参与项目20余项,获国防科技进步三等奖,学会科技创新一等奖、三等奖等。与企业共建江苏省研究生工作站。获省微课比赛一等奖等多项教学竞赛奖,指导研究生获优秀毕业生、科研创新个人称号等,指导本科生获中国高校计算机大赛一等奖、多项省级科创项目等。


研究方向:

1)计算机科学与技术
先进计算(云计算,量子计算),智能计算(量子机器学习,人工智能,智能制造),交叉方向

2)网络空间安全

信息安全,量子密码,交叉方向

3)电子信息
包括以上研究方向

欢迎以上各方向的保研/考研学生联系,也欢迎有意向提前进课题组参与科研、科创研究的本科生联系:

juanxu@nuaa.edu.cn

 

正在主持和参与的项目:

科技创新2030重大项目,国家自然科学基金重点项目,多项企业项目。


代表性学术论文

CCF A,热点论文,《科学通报》报道论文,最佳会议论文,关键性科学论文,国际报道论文。


指导学生科创/竞赛:

一级竞赛国家一等奖,省级优秀科创。