learning-rcpp - My notes as I learn C++ and Rcpp for fast machine learning in R

  •        8

My main goal in this educational endeavor is to be able to use the MLPACK, Shark, and dlib C++ machine learning libraries in R for computationally intensive problems. Now, there is a RcppMLPACK, but that one apparently uses version 1 of MLPACK (which is now in version 2) and doesn't include any supervised learning methods, just unsupervised learning methods. If sudo apt-get install libshark-dev is no go, we have to build the library ourselves. See these installation instructions for more details.

https://github.com/bearloga/learning-rcpp

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