RES.LL-005 D4M: Signal Processing on Databases, Fall 2012
Author(s)
Kepner, Jeremy
Downloadres-ll-005-fall-2012/contents/index.htm (35.48Kb)
Alternative title
D4M: Signal Processing on Databases
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D4M is a breakthrough in computer programming that combines graph theory, linear algebra, and databases to address problems associated with Big Data. Search, social media, ad placement, mapping, tracking, spam filtering, fraud detection, wireless communication, drug discovery, and bioinformatics all attempt to find items of interest in vast quantities of data. This course teaches a signal processing approach to these problems by combining linear algebraic graph algorithms, group theory, and database design. This approach has been implemented in software The class will begin with a number of practical problems, introduce the appropriate theory and then apply the theory to these problems. Students will apply these ideas in the final project of their choosing. The course will contain a number of smaller assignments which will prepare the students with appropriate software infrastructure for completing their final projects.
Date issued
2012-12Other identifiers
RES.LL-005-Fall2012
Other identifiers
RES.LL-005
IMSCP-MD5-796efd9c97dbf328be87fbe7cd9a203c
Keywords
big data, data analytics, dynamic distributed dimensional data model, D4M, associate arrays, group theory, entity analysis, perfect Power Law, bio sequence correlation, Accumulo, Kronecker graphs
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