posted by organizer: jssec || 6149 views || tracked by 11 users: [display]

CBD 2013 : 1st International Conference on Advanced Cloud and Big Data


When Dec 13, 2013 - Dec 15, 2013
Where Nanjing, China
Submission Deadline Oct 30, 2013
Notification Due Nov 20, 2013
Categories    cloud computing   big data   distributed system

Call For Papers

CBD 2013: Call for Paper

Important Dates:
- Submission deadline: Oct 30, 2013
- Notification of acceptance: Nov 20, 2013
- Registration due: Nov 30, 2013
The Cloud Computing Center of Excellence (CoE) at Southeast University in cooperation with IBM STG University Alliances is the first CoE in the world and the only one in China, and is now organizing CBD to promote the cooperative cloud research and industry development.

Scope of Conference
The International Conference on Advanced Cloud and Big Data (CBD) is an established and prestigious forum for researchers, practitioners, developers and users who are interested in cloud computing and big data to explore new ideas, techniques and tools, as well as to exchange experience. Besides the latest research achievements, this conference also covers innovative commercial data management systems, innovative commercial applications of cloud computing and big data technology, and experience in applying recent research advances to real-world problems. We solicit original papers on a wide range of cloud computing and big data topics that can be divided into three tracks but are not limited to: Research Track, Industry Track, Application Track.
Paper Submission
Papers reporting original research results and experience are solicited. Each paper, written in English, is limited to 8 pages (IEEE proceedings format), including references and illustrations. Electronic submissions in PDF format are strongly recommended. Submission of a paper should be regarded as an undertaking that, should the paper be accepted, at least one of the authors will attend the conference to present the paper.
Submission Web Site: Mailing address:
All submitted papers will be reviewed by program committee members and selected based on their originality, significance, relevance, and clarity of presentation. Accepted papers will be published by Conference Publishing Services (CPS) and will be submitted for indexing to EI (Compendex). Authors of selected papers will be invited to submit revised and expanded version of their papers to be considered for publication in special issues of well-known international journals such as IEICE Transactions on Information and Systems (SCI) and International Journal of Cloud Computing.
General Conference Co-Chairs
- Yi Pan, Georgia State University, USA
- Ling Shao, IBM
- Zhong Tian, IBM
Program Committee Co-Chairs
- Junzhou Luo, Southeast University, China
- Garth Tschetter, IBM
- Laurence T. Yang, St. Francis Xavier University, Canada
Sponsors Co-Chairs
- Keith Brown, IBM
- Hao Wang, IBM
Organization Co-Chairs
- Bo Liu, Southeast University, China
- Zhuo Li, IBM
- Beibei Shi, IBM
Publication Co-Chairs
- Fang Dong, Southeast University, China
- Wei Li, Southeast University, China
Organized by
- Southeast University
Co-Sponsored by
- ACM Nanjing Chapter
Dr. Bo Liu
Southeast University, China
Tel: +86-25-52091013

Related Resources

CLUSTER 2023   cluster 2023 : IEEE Cluster Conference
ACM-Ei/Scopus-CWCBD 2023   2023 4th International Conference on Wireless Communications and Big Data (CWCBD 2023) -EI Compendex
IOTBC 2023   International Conference IOT, Blockchain and Cryptography
ACM ICCBDC 2023   ACM--2023 7th International Conference on Cloud and Big Data Computing (ICCBDC 2023)
ACM-EI/Scopus-ITCC 2023   2023 3rd International Conference on Information Technology and Cloud Computing (ITCC 2023) -EI Compendex
ICACII 2023   2nd International Conference on Advances in Computational Intelligence and Informatics
SoCAV 2023   2023 International Symposium on Connected and Autonomous Vehicles (SoCAV 2023)
MSE 2023   7th International Conference on Materials Science and Engineering
IOTCB 2023   2nd International Conference on IOT, Cloud and Big Data