posted by organizer: shailaja123 || 1872 views || tracked by 4 users: [display]

BBD 2015 : 2nd Annual BYTE Into Big Data Summit


When Mar 3, 2015 - Mar 4, 2015
Submission Deadline Mar 1, 2015
Categories    big data   data storage   it services   BYTE

Call For Papers

The BYTE Into Big Data Summit to be held on 3rd - 4th March 2015, in Mumbai, India, is an opportunity for key decision makers from cross industry, involved in Data Analysis, Data Storage and Data Management to get together, discuss, understand and elucidate how enterprises can effectively understand, analyse, protect and utilize the massive surge in Data coming their way.

Key Topics:

1) Universal models for financial stability.
2) Hadoop's Role in the Data - driven Enterprise.
3) Big Data Innovation: Driving Business Success.
4) Investments that will influence our future - Big Data Technology.
5) Innovative solutions for complex data and application integration challenges.
6) business problems and driving innovation through analytics.
7) Simulation driven statistical methods for knowledge discovery and forecasting.

For more information please visit: or contact us at / 080 4963 7000

Related Resources

ICMLB 2018   International Conference on Machine Learning and Big Data 2018
ECDA 2018   European Conference on Data Analysis
ICDIM 2018   Thirteenth International Conference on Digital Information Management (ICDIM 2018)
BDCAT 2018   5th IEEE/ACM International Conference on Big Data Computing, Applications and Technologies
Signal 2018   5th International Conference on Signal and Image Processing - UGC Listed Proceedings
SI: Big Data Exploration, Visualization 2018   Special Issue on Big Data Exploration, Visualization and Analytics
UCC 2018   11th IEEE/ACM International Conference on Utility and Cloud Computing
IEEE Big Data 2018   2018 IEEE International Conference on Big Data
DISP 2018   Special Issue on Data Intelligence in Security and Privacy, Journal of Information Security and Applications
ADBIS 2018   The 22nd European Conference on Advances in Databases and Information Systems