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SIGMOD 2018 : International Conference on Management of Data

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Conference Series : International Conference on Management of Data
 
Link: https://sigmod2018.org/
 
When Jun 10, 2018 - Jun 15, 2018
Where Houston, TX
Abstract Registration Due Jul 6, 2017
Submission Deadline Jul 13, 2017
Notification Due Nov 3, 2017
Final Version Due Feb 16, 2018
 

Call For Papers

The annual ACM SIGMOD conference is a leading international forum for database researchers, practitioners, developers, and users to explore cutting-edge ideas, results, and to exchange techniques, tools, and experiences.

We invite the submission of original research contributions relating to all aspects of data management defined broadly, and particularly encourage submissions on topics of emerging interest in the research and development communities.

All aspects of the submission and notification process will be handled electronically. The call for papers and detailed submission information will be available at: http://sigmod2018.org/

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