posted by user: srl_cfps || 5910 views || tracked by 30 users: [display]

XLDB 2011 : 5th Extremely Large Databases Conference

FacebookTwitterLinkedInGoogle

Link: http://www-conf.slac.stanford.edu/xldb2011/
 
When Oct 18, 2011 - Oct 19, 2011
Where Menlo Park, CA
Submission Deadline Aug 31, 2011
Notification Due Sep 15, 2011
Final Version Due Oct 18, 2011
Categories    databases   storage systems   data management   distributed systems
 

Call For Papers

Call for Lightning Talks

We have reserved a group of five-minute slots at the conference for selected lightning talks. The lightning talk session will be followed by ~30 min poster session for the lightning talk speakers. Speakers are not required to prepare the poster, but should be available during the poster session to answer follow up questions.

If you are interested in speaking, you should submit a short abstract (http://www-conf.slac.stanford.edu/xldb2011/Contact.asp). Submission deadline: August 31.

Please note we will only consider non-sales talks highly relevant to managing extremely large data sets.

The talks will be selected by the organizing committee and announced on this website no later than September 15.

Lightning talk speakers are required to register for the conference (e.g., the registration fee is not waived).

Related Resources

ParLearning 2018   The 7th International Workshop on Parallel and Distributed Computing for Large Scale Machine Learning and Big Data Analytics
IJGCA 2018   International Journal of Grid Computing & Applications
ER 2019   38th International Conference on Conceptual Modeling
IJAB 2018   International Journal of Advances in Biology
Middleware 2018   ACM/IFIP/USENIX Middleware 2018 Conference
Security & Privacy at Large 2018   Workshop „Security & Privacy at Large“ im Rahmen der GI-Informatik 2018
SRDS 2018   The 37th IEEE International Symposium on Reliable Distributed Systems
JoL 2018   International Journal of Law
IJOE 2018   International Journal on Organic Electronics
TMonJobAds 2018   Text Mining on Job Advertisements - Strategies for discovering valuable information from large corpora