Abbrevation
Big Data
City
Zhengzhou
Country
China
Deadline Paper
Start Date
End Date
Abstract

Big Data recently has become a ubiquitous term to describe large datasets that are challenging to store, search, share, visualize, analyze, and learn&#046; Effective management and analysis of the Big Data would bring great benefits and unique opportunities to the users&#046; However, there are still many open issues for deep investigation&#046; The Big Data workshop 2018 (BigData 2018) is to promote the research in this emerging area of Big Data&#8211;intensive computing, algorithms, networks, systems, and applications&#046; BigData 2018, held in conjunction with CyberC 2018, aims to provide a leading forum for sharing and exchanging experiences, new ideas, and research results on broad topics of Big Data Research, Development, and Applications&#046; It solicits high&#8211;quality papers that illustrate novel Big Data models, architecture and infrastructure, management, search and processing, security and privacy, applications, surveys and industrial experiences&#046; Authors of Big Data workshop 2018 are free for enjoying CyberC 2018 and Summits&#046;<br>Authors are cordially invited to submit original research papers in any aspects of Big Data with emphasis on but are not limited to the following topics:<br>Big Data Theory and Foundation<br>&#8211; Theoretical and Computational Models for Big Data<br>&#8211; Information Quantitative and Qualitative for Big Data<br>&#8211; Theories and Methodologies for Big Data Processing<br>&#8211; Architectures and Designs of Big Data Processing Systems<br>Big Data Infrastructure<br>&#8211; Cloud/Grid/Stream Computing for Big Data<br>&#8211; High Performance/Parallel Computing Platforms for Big Data<br>&#8211; System Architectures, Platforms, Design, and Deployment for Big Data<br>&#8211; Energy&#8211;efficient Computing for Big Data<br>&#8211; Programming Models and Environments for Cluster, Cloud, and Grid Computing<br>Big Data Management<br>&#8211; Advanced Database and Web Applications for Big Data<br>&#8211; Data Model and Structure for Big Data<br>&#8211; Data Preservation and Provenance<br>&#8211; Interfaces to Database Systems and Analytics Software<br>&#8211; Data and Information Integration and Fusion for Big Data<br>&#8211; Data Management for Mobile, Pervasive and Grid Computing<br>&#8211; Scientific and Social Data Management and Workflow Optimization<br>Big Data Search and Processing<br>&#8211; Big Data Search Architecture, Scalability, and Efficiency<br>&#8211; Algorithms and Architectures for Big Data Search, Mining and Processing<br>&#8211; Search, Store and Process Big Data in Distributed, Grid and Cloud Systems<br>&#8211; Semantic&#8211;based Big Data Analytics and Processing<br>&#8211; Multi&#8211;Structured Multi&#8211;Domain Big Data Fusion and Integration<br>&#8211; Ontology Representations and Processing in Big Data<br>&#8211; Automatic and Machine Learning Methods for Big Data<br>&#8211; Hadoop and MapReduce based Approaches for Big Data Processing<br>Big Data Protection, Security and Privacy<br>&#8211; Threat and Intrusion Detection for High&#8211;Speed Networks<br>&#8211; High Performance and Efficiency Data Cryptography<br>&#8211; Privacy Threats Analysis for Big Data Systems<br>&#8211; Visualizing Large&#8211;Scale Security Data<br>&#8211; Security and Risk in Big Data Processing<br>&#8211; Trust, Reputation and Recommendation Systems for Big Data Systems<br>&#8211; Privacy and Security Preservation for Multi&#8211;Level Security (MLS) Cross&#8211;domain Big Data Computing System<br>Big Data Applications<br>&#8211; Big Data Applications and Software in Science, Engineering, Healthcare, Finance, Business, Transportation, Telecommunications, etc&#046;<br>&#8211; Big Data Analytics in Small Business Enterprises, Public Sector and Government&#046;<br>&#8211; Big Data Industry Standards<br>&#8211; Development and Deployment Experiences with Big Data Systems&#046;<br>