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Data Science ITNG 2020 : Data Science Track - 17th International Conference on Information Technology : New Generations

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Link: http://www.comp.ita.br/~vdias/itng.html
 
When Apr 5, 2020 - Apr 8, 2020
Where Las Vegas, USA
Submission Deadline Oct 11, 2019
Notification Due Dec 6, 2019
Final Version Due Jan 10, 2020
Categories    data science   wavelet   stastical analysis   numerical computation
 

Call For Papers

General Informations
Scope: Nowadays Data Science is a fast growing field in Computer Science and Engineering. The amazing financial results obtained by the enterprises using this technology, lead most of the players to enter in the game. Besides the Cloud Computer Environment, other topics like Big Data, Statistic Models, Software Testing, Distributed and NoSQL Data Bases, must be studied, in an agile development surrounding. This is a response to the need of developing reliable, testable software with quality. So, the purpose of this track is to be an open forum to discuss its scientific aspects and its applications to the Industry.


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