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ICACDS 2016 : International Conference on Advances in Computing and Data Sciences

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Link: http://icacds2016.krishnacollege.ac.in/
 
When Nov 11, 2016 - Nov 12, 2016
Where Ghaziabad
Submission Deadline Sep 5, 2016
Notification Due Oct 15, 2016
Final Version Due Oct 25, 2016
Categories    computer science   advanced computing   system and software engg
 

Call For Papers

ICACDS-2016 is soliciting original, previously unpublished and high-quality research papers addressing research challenges and advances in the tracks mentioned below. The maximum allowable length of the paper is 10 pages (including figures and references) for regular research articles. Articles will be reviewed by three experts to decide its suitability for publication in the conference. Acceptance of papers will be communicated to authors by email.

The topics of the conference include, but are not limited to:

Track 1: Advanced Computing
Track 2: Communications
Track 3: Informatics
Track 4: Internet of Things (IoT)
Track 5: Data Sciences & Big Data

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