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INCISCOS 2016 : International Conference on Information Systems and Computer Science

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Link: http://ingenieria.ute.edu.ec/inciscos/index.php/en/call-for-papers
 
When Nov 24, 2016 - Nov 26, 2016
Where Quito, Ecuador
Submission Deadline Oct 9, 2016
Notification Due Oct 23, 2016
Final Version Due Oct 30, 2016
Categories    computer science   information systems   data mining   security
 

Call For Papers

INCISCOS 2016 is a conference for Engineering, Education and Technology, aimed to the national and international community in the area of information technology and related sciences.

We are pleased to invite you to INCISCOS 2016 - International Conference on Information Systems and Computer Science which will be held in Quito - Ecuador from November 24 to November 26.

Topics

Formal methods, computational logic and theory of computation.
Software Engineering.
Architecture and Information Systems.
Human - computer interaction (HCI).
Cloud Computing (CC).
Big Data and Predictive Applications (BD).
Smartcities and IOT
Intelligent systems and Robotics.
Educational informatics.
High Performance and Parallel Computing.

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