Recently I was contemplating the choice of using either R or Python to train support vector machines.
Aside from the particular strengths and weaknesses intrinsic to both programming languages, I'm wondering if there is any heuristic guidelines for making a decision on which way to go, based on the packages themselves.
I'm thinking in terms of speed of training a model, scalability, availability of different kernels, and other such performance-related aspects.
Given some data sets of different sizes, how could one decide which path to take?
I apologize in advance for such a possibly vague question.