【ISBDAS 2025】会议特邀IEEE Fellow、南洋理工大学李晓黎教授作主旨报告!

Keynote Speaker


李晓黎.jpg

Xiaoli Li, IEEE Fellow, Nanyang Technological University, Singapore


BIO: Xiaoli is currently the Department Head and Senior Principal Scientist at the Institute for Infocomm Research, A*STAR, Singapore. He also serves as an adjunct full professor at the School of Computer Science and Engineering, Nanyang Technological University, Singapore. With a diverse range of research interests, Xiaoli focuses on cutting-edge areas such as AI, data mining, machine learning, and bioinformatics. His contributions to these fields are evident through his extensive publication record, boasting over 360 peer-reviewed papers, and the recognition he has received, including over ten best paper awards. He has been serving as Editor-in-chief of the Annual Review of Artificial Intelligence and an Associate Editor for prestigious journals like IEEE Transactions on Artificial Intelligence and Knowledge and Information Systems, as well as conference chairs and area chairs of leading AI, machine learning, and data science conferences, such as AAAI, IJCAI, ICLR, NeurIPS, KDD, ICDM etc. Beyond academia, Xiaoli possesses extensive industry experience, where he has successfully spearheaded over 10 R&D projects in collaboration with major industry players across diverse sectors, such as aerospace, telecom, insurance, and professional service companies. Xiaoli is an IEEE Fellow and Fellow of Asia-Pacific Artificial Intelligence Association (AAIA). He has been recognized as one of the world's top 2% scientists in the AI domain by Stanford University, Clarivate's Highly Cited Researcher,  and one of the top ranked computer scientists by Research.com.


Title: AI-Driven Big Time Series Data Analytics

Abstract: The exponential growth of sensor deployments across industries such as manufacturing, aerospace, transportation, and education presents unprecedented opportunities for leveraging AI in time-series data analytics. This keynote highlights state-of-the-art AI solutions powering real-world applications, including predictive maintenance, and real-time decision-making. In manufacturing and aerospace, AI-driven analytics enhance operational efficiency by enabling predictive maintenance, reducing downtime, and improving machine remaining useful life predictions. Key challenges, such as achieving high accuracy, compressing models for edge deployment, and adapting to diverse industrial domains, will be discussed. In transportation, real-time AI analytics revolutionize smart traffic management, promoting safety and optimizing resource allocation. Meanwhile, in education, the rise of online learning platforms generates vast time-series data, paving the way for personalized and adaptive learning experiences. From knowledge tracing to predicting student performance and identifying at-risk learners, AI enables timely interventions and fosters tailored learning pathways. Join us to explore how AI is revolutionizing industries and education, driving innovation, and enhancing global competitiveness in today’s data-centric era.


【点击】了解更多更多会议详情


2025/01/17 15:53
ISBDAS 2025已通过IEEE出版申请


尊敬的专家、学者:

第八届大数据与应用统计国际学术研讨会(ISBDAS 2025)已进入IEEE会议列表!会议将于2025年2月28日-3月2日在中国广州举行。组委会诚邀国内外相关高校和科研院所的科研人员、企业工程技术人员等参加会议。

三人及三人以上组团报名参会,可享受团队优惠!!

ISBDAS 2025已上线至IEEE官方列表:

https://conferences.ieee.org/conferences_events/conferences/conferencedetails/64762

1.png

 

【出版检索历史】

ISBDAS 2024-2024.03.08-10 北京,会后5个月见刊,检索待更新;

ISBDAS 2023-2023.03.10-12 上海,会后4个月见刊,见刊后1个月检索;

ISBDAS 2022-2022.04.22-24 西宁,会后2个月见刊,见刊后1个月检索;

ISBDAS 2021-2021.05.21-23 大理,会后1个月见刊,见刊后1个月检索

ISBDAS 2020-2020.07.10-12 昆明,会后1个月见刊,见刊后2个月检索

ISBDAS 2019-2019.09.20-22 大连,会后3个月见刊,见刊后1个月检索

ISBDAS 2018-2018.11.02-04 广州,会后2个月见刊,见刊后2个月检索

【报名链接】

*投稿链接:https://www.ais.cn/attendees/paperSubmit/IFMBJJ?invite=L8123

*参会链接:https://www.ais.cn/attendees/toSignUp/IFMBJJ?invite=L8123


【征稿主题】

Track 1: 大数据算法

智能计算应用

模型与计算

智能计算算法

进化计算

数据挖掘

三元决策与机器学习

组合算法

数据和文本挖掘

知识推理

深度学习

Track 2: 应用数学理论

博弈论

认知建模与计算

概率论与统计学

微分方程及其应用

离散数学与控制

线性代数及其应用

数值分析

运筹学与优化

近似理论

组合数学

可计算性理论

离散几何

矩阵计算


【论文出版】

43a27ffc868bd0bd7d4b19a8f1b3d395_313220415154643826.png

所有的投稿都必须经过2-3位组委会专家审稿,经过严格的审稿之后,最终所录用的论文将由IEEE (979-8-3315-0719-0) 出版,出版后提交IEEE Xplore, EI, Scopus检索。

ISBDAS 2025 组委会

2024年8月22日


2024/08/22 16:17
<
去登录