LIBSVM.jl - LIBSVM bindings for Julia

  •        4

This is a Julia interface for LIBSVM. This provides a lower level API similar to LIBSVM C-interface. See ?svmtrain for options.

https://github.com/mpastell/LIBSVM.jl

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