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Ruby FANN-Fast Artificial Neural Network 1.1.3
File ID: 106102






Ruby FANN-Fast Artificial Neural Network 1.1.3
Download Ruby FANN-Fast Artificial Neural Network 1.1.3http://rubyforge.orgReport Error Link
License: Freeware
File Size: 163.8 KB
Downloads: 206
Submit Rating:
Ruby FANN-Fast Artificial Neural Network 1.1.3 Description
Description: RubyFann Bindings to use FANN (Fast Artificial Neural Network) from within ruby/rails environment. Requires: Ruby 1.8.6 or greater. gnu make tools or equiv for native code in ext To install: sudo gem install ruby-fann

License: Freeware

Related: Install, Tools, greater, equiv, Native, rubyfann, requires, environment, Artificial, bindings, Neural, Network, rubyrails

O/S:BSD, Linux, Solaris, Mac OS X

File Size: 163.8 KB

Downloads: 206



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