Basic implementation of K-nearest neighbour Algorithm and the application of KNN to classify protein sequences as transmembrane beta barrel or non-transmembrane beta barrel on the basis of whole sequence amino acid composition given as input.

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License

GNU General Public License version 2.0 (GPLv2)

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Additional Project Details

Operating Systems

Linux

Languages

English

Intended Audience

Other Audience

User Interface

Console/Terminal, Command-line

Programming Language

Perl, C

Related Categories

Perl Bio-Informatics Software, Perl Medical Software, C Bio-Informatics Software, C Medical Software

Registered

2008-03-30