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DCC 2017 : Data Compression Conference

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Conference Series : Data Compression Conference
 
Link: http://www.cs.brandeis.edu/~dcc/index.html
 
When Apr 4, 2017 - Apr 7, 2017
Where Utah, U.S.
Submission Deadline TBD
Categories    data compression
 

Call For Papers

The Data Compression Conference (DCC) is an international forum for current work on data compression and related applications.

Compression of specific types of data (text, images, video, etc.).
Compression in networking, communications, and storage.
Transform based compression methods.
Applications to bioinformatics.
Applications to mobile computing.
Applications to information retrieval.
Computational issues for compression related applications.
Error resilient compression algorithms.
Joint source-channel coding.
The use of techniques from information theory.
Compression related standards.

DCC 2017
Cliff Lodge, Snowbird, UT
Conference: Tuesday - Friday, April 4-7, 2017
Registration reception: Tuesday evening April 4
Presentations begin on Wednesday, April 5
(Easter Sunday is April 16, 2017; Passover starts April 10-18, 2017)

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