posted by system || 3201 views || tracked by 4 users: [display]

BigDataMR 2012 : 2012 International Workshop on Big Data and MapReduce

FacebookTwitterLinkedInGoogle

Link: https://sites.google.com/site/bigdatamr2012
 
When Nov 1, 2012 - Nov 3, 2012
Where Xiangtan, China
Submission Deadline Jun 25, 2012
Categories    big data
 

Call For Papers

Call for papers: 2012 International Workshop on Big Data and MapReduce (BigDataMR2012), 1-3 Nov. 2012, Xiangtan, China. The website is https://sites.google.com/site/bigdatamr2012/.

Key dates:
Deadline for Paper Submission: June 25, 2012
Notification of Acceptance: July 30, 2012
Camera Ready Copies: August 10, 2012

Submission site and requirements:
https://www.easychair.org/conferences/?conf=bigdatamr2012. Submit your paper(s) in PDF file. Papers should be limited up to 8 pages in IEEE CS format. The template files for LATEX or WORD can be downloaded from the workshop website. All papers will be peer reviewed by two or three pc members. Submitting a paper to the workshop means that if the paper is accepted, at least one author should register to CGC2012 and attend the conference to present the paper.


Publications:
All accepted papers will appear in the proceedings published by IEEE Computer Society (EI indexed). Selected papers will be invited to special issues of CGC2012 in Concurrency and Computation: Practice and Experience, Future Generation Computer Systems and International Journal of High Performance Computing Applications.

Introduction:
Big data is an emerging paradigm applied to datasets whose size is beyond the ability of commonly used software tools to capture, manage, and process the data within a tolerable elapsed time. Such datasets are often from various sources (Variety) yet unstructured such as social media, sensors, scientific applications, surveillance, video and image archives, Internet texts and documents, Internet search indexing, medical records, business transactions and web logs;and are of large size (Volume) with fast data in/out (Velocity). Various technologies are being discussed to support the handling of big data such as massively parallel processing databases, scalable storage systems, cloud computing platforms, and MapReduce. MapReduce is a distributed programming paradigm and an associated implementation to support distributed computing over large datasets on cloud. This workshop aims at providing a forum for researchers, practitioners and developers from different background areas such as cloud computing, distributed computing and database area to exchange the latest experience, research ideas and synergic research and development on fundamental issues and applications about big data and MapReduce in cloud environments. The workshop solicits high quality research results in all related areas.

Topics:
The objective of the workshop is to invite authors to submit original manuscripts that demonstrate and explore current advances in all aspects of big data and MapReduce. The workshop solicits novel papers on a broad range of topics, including but not limited to:

Big Data theory, applications and challenges
Recent development in Big Data and MapReduce
Big Data mining and analytics
Big Data visualization
Large data stream processing on cloud
Large incremental datasets on cloud
Distributed and federated datasets
NoSQL data stores and DB scalability
Big Data sharing and privacy preserving on cloud
Security, trust and risk in Big Data
Big Data placement, scheduling, and optimization
Extension of the MapReduce programming model
Distributed file systems for Big Data
MapReduce for Big Data processing
MapReduce on hybrid cloud
MapReduce on heterogeneous distributed environments
Performance characterization, evaluation and optimization
Simulation and debugging of MapReduce and Big Data systems and tools
Security, privacy, reliability, trust and privacy in MapReduce
Volume, Velocity and Variety of Big Data on Cloud
Multiple source data processing and integration with MapReduce
Resource scheduling and SLA for MapReduce
Big Data processing tools based on MapReduce
Storage and computation management of Big Data
Large-scale scientific workflow in support of Big Data processing on Cloud

General Chairs:
Geoffrey Charles Fox, Indiana University, USA
Xian-He Sun, Illinois Institute of Technology, USA
Jian Pei, Simon Fraser University, Canada

Program Chairs:
Xuyun Zhang, University of Technology Sydney, Australia
Suraj Pandey, CSIRO, Australia
Xiaolin Li, University of Florida, USA
Jinjun Chen, University of Technology Sydney, Australia

Any enqueries, please direct to Xuyun Zhang at xyzhanggz@gmail.com

Related Resources

ICBICC 2024   2024 International Conference on Big Data, IoT, and Cloud Computing (ICBICC 2024)
ACM-Ei/Scopus-CCISS 2024   2024 International Conference on Computing, Information Science and System (CCISS 2024)
BDCAT 2024   IEEE/ACM Int’l Conf. on Big Data Computing, Applications, and Technologies
ICoSR 2024   2024 3rd International Conference on Service Robotics
IEEE BigData 2024   2024 IEEE International Conference on Big Data
SoCAV 2024   2024 International Symposium on Connected and Autonomous Vehicles (SoCAV 2024)
Singapore--CDICS 2024   The 2024 2nd International Conference on Data, Information and Computing Science (CDICS 2024)
CCBDIOT 2024   2024 3rd International Conference on Computing, Big Data and Internet of Things (CCBDIOT 2024)
SPIE-Ei/Scopus-ITNLP 2024   2024 4th International Conference on Information Technology and Natural Language Processing (ITNLP 2024) -EI Compendex
DSIT 2024   7th International Conference on Data Science and Information Technology