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From Apache Wiki <wikidi...@apache.org>
Subject [Hama Wiki] Trivial Update of "FrontPage" by HyunsikChoi
Date Fri, 18 Sep 2009 05:21:11 GMT
Dear Wiki user,

You have subscribed to a wiki page or wiki category on "Hama Wiki" for change notification.

The following page has been changed by HyunsikChoi:
http://wiki.apache.org/hama/FrontPage

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  The matrix package (means a hippopotamus in Korean) is a library of matrix operations on
a Map/Reduce framework for a large-scale numerical analysis and data mining, that need the
intensive computation power of matrix inversion, e.g., linear regression, PCA, SVM and etc.
It will be useful for many scientific applications, e.g., physics computations, linear algebra,
computational fluid dynamics, statistics, graphic rendering and many more.
  
- [http://incubator.apache.org/GraphPackage The graph package], called [http://incubator.apache.org/GraphPackage
Angrapa], is an large-scale graph data management framework for analytical processing. It
is still an ongoing project. It will employ massive parallelism on Hadoop. It aims to achieve
the scalability for tera bytes or peta bytes graph data. Angrapa will be used in a variety
of scientific and industrial areas, such as data mining, machine learning, information retrieval,
bioinformatics, and social networks, required to process large-scale graph data.
+ [:GraphPackage: The graph package], called [:GraphPackage: Angrapa], is an large-scale graph
data management framework for analytical processing. It is still an ongoing project. It will
employ massive parallelism on Hadoop. It aims to achieve the scalability for tera bytes or
peta bytes graph data. Angrapa will be used in a variety of scientific and industrial areas,
such as data mining, machine learning, information retrieval, bioinformatics, and social networks,
required to process large-scale graph data.
  
   * Scientific simulation and modeling 
    * Matrix-vector/[:MatrixMultiply:matrix-matrix multiply]

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