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ICASMT 2020 : International Conference on Applied Science, Management & Technology | SCOPUS, Elsevier

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Link: https://iiarp.org/conferences/ICASMT-Bangkok-09-Feb-2020/518
 
When Feb 9, 2020 - Feb 9, 2020
Where BANGKOK,THAILAND
Abstract Registration Due Jan 27, 2020
Submission Deadline Jan 15, 2020
Notification Due Jan 22, 2020
Final Version Due Feb 3, 2020
Categories    applied science   technology   management   data analysis
 

Call For Papers

International Conference on Applied Science, Management & Technology (ICASMT) provides a leading forum to discuss the issues of Applied Science, Management & Technology research and practice emerging trends. We invite scholars / scientists / mathematicians / lawyers / researchers / practitioners / students to join us and share the new innovative trends in their field. This common platform is expected to bring the bases for joint venture among different fields to serve the society in a better way.

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