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Bigdata 2015 : The International Workshop on Big Data and Smart Sustainable Society

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Link: http://www2.docm.mmu.ac.uk/STAFF/L.Han/BigData-2015/index.htm
 
When Oct 25, 2015 - Oct 28, 2015
Where Liverpool, UK
Submission Deadline Jul 31, 2015
Notification Due Aug 15, 2015
Final Version Due Sep 15, 2015
Categories    computer science   big data   machine learning   software architecture
 

Call For Papers

Call for Papers:
 

 International Workshop on Big Data and Smart Sustainable Society
 
To be held in conjunction with IUCC-2015 (http://cse.stfx.ca/~iucc2015/) 26-28 Oct, Liverpool, UK.

Accepted papers will be included in the IEEE conference proceedings published by IEEE Computer Society Press (indexed by EI). Distinguished selected papers will be published in Special Issues of International Journals indexed by SCI.

1. Introduction

By 2015, the total size of digital data generated by social networks, sensors, biomedical imaging and simulation devices, will reach an estimated 8 Zettabytes (e.g. 8 trillion gigabytes) according to IDC report. We are now in the era of “big data”. This type of “big” data, together with the advances in information and communication technologies such as Internet of things (IoT), connected smart objects, wearable technology, ubiquitous computing, is transforming every aspect of modern life and bringing great challenges and spectacular opportunities to fulfill our dream of a sustainable smart society.

This workshop aims to provide a platform and forum to discuss and report current state- of-the-art, new solutions, future directions to address challenges, issues and success stories on how to harness potential advances in the digital area to improve people’s life (e.g. big data, IoT, mobile/ ubiquitous computing), and how to maximize the use of big data processing and data analytics to realize the smart society.

The topics include but are not limited to:
--Novel architectures for big data processing and data analytics
--Novel data analytics/machine learning algorithms for efficient big data analytics
--Internet of things --Ubiquitous computing/wearable technology --Security and privacy in big data
--Applications in different domains such as health, social science, energy, bioscience, etc.

2. Submissions
All papers need to be submitted electronically through easychair via the link: https://easychair.org/conferences/?conf=bigdata20150. Prospective authors are invited to submit manuscripts reporting original unpublished research and recent developments in the topics related to the workshop. The length of the papers should not exceed 6 pages + 2 pages for overlength charges (IEEE Computer Society Proceedings Manuscripts style: two columns, single-spaced, 10-point font), including figures and references (Please refer to IEEE Computer Society Proceedings Author Guidelines: URL: http://computer.org/cspress/instruct.htm

3. Important Dates:
-- Paper Submission Deadline:15 July 2015 (extended to 31, July, 2015)
-- Notification Date: 15 August 2015
-- Final Manuscript Due: 15 September 2015
-- Registration Due: 15 September 2015
-- Conference Date: 26-28 October 2015

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