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ISBDAS 2026 : The 9th International Symposium on Big Data and Applied Statistics | |||||||||||||||
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Call For Papers | |||||||||||||||
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The 9th International Symposium on Big Data and Applied Statistics (ISBDAS 2026) will be held from March 6 to 8, 2026, in Guangzhou, China. This conference aims to establish a high-level platform for global experts, engineers, researchers, and industry professionals in "Big Data" and "Applied Statistics" to share cutting-edge research and technological innovations, track academic trends, broaden research perspectives, foster in-depth scholarly collaboration, and accelerate industrial partnerships for academic achievements.
🔹The topics of interest for submission include, but are not limited to: · Big Data Analytics · Models, Architecture, and algorithms of Big Data · Big Data Search and Information Retrieval Techniques · Big Data Acquisition, Integration, Cleaning · Scalable Computing Models, Theories, and Algorithms · Big Data and Deep Learning · Big Data and High Performance Computing · Cyber-Infrastructure for Big Data · Resource Management Approaches for Big Data Systems · Big Data Applications for Internet of Things · Big Data Applications for Smart City · Scalability of Big Data Systems · Big Data Privacy and Security · Big Data Archival and Preservation · Big Data Transformation, and Presentation · Distributed Big Data Storage Architectures · High-Performance Big Data Processing Frameworks · Cloud Native Big Data Computing Models · Lossless Big Data Compression Algorithms · Edge - Cloud Collaborative Big Data Computing · Statistical Computing in Big Data Environments · Statistical Methods for High-Dimensional Data Analysis · Applications of Nonparametric Statistical Methods in Data Mining · Statistical Learning Theory and Algorithms · Statistical Software & Tool Development · Advanced Cluster Analysis Algorithms · Data Multivariate Statistical Methods · Statistical Data Fusion in Sensor Networks · Statistical Classification Algorithms in Pattern Recognition · Time Series Forecasting & Modeling · Statistical Analysis and Prediction in Power Systems · Statistical Modeling and Optimization in Communication Networks · Statistical Reliability Prediction Algorithms 🔹Publication All papers will be reviewed by two or three expert reviewers from the conference committees. After a careful reviewing process, all accepted papers will be published by IEEE (ISBN: 979-8-3315-7218-1) and submit to EI Compendex and Scopus for indexing. 🔹Conference E-Mail: ISBDAS@163.com |
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