My default approach is to learn how others have solved the problem. There are 2800+ CRAN packages, and many have been there for over a decade. The problem is solvable, and has been solved.
Now, it is also true that the documentation is there, but maybe scattered too much. Moreover, targets shift. For example, years ago, we still used
src/Makefile, these days that is very much recommended against because of the need of multiarch builds (on OS X, on Windows, and one day also on Linux).
So trying to keep it simple helps. You can in fact have a valid C++ project ... without anything. Just drop the sources files in
src/ of your package foo, and R will know how to build
libfoo.dylib or ..., depending on the platform. And if you need other header files, try using
src/Makevars. For external dependencies it gets trickier and one what have to learn
autoconf et al, but many packages skate by with something simple.
So please do expand your question, show what is failing and document what you tried. I am sure we can help you along.
Edit: And in case you want to this with the Rcpp package (which help with R and C++ integration), then there is an entire vignette about to do this in your own package.
Edit 2: Now that expanded your question, CUDA is a completely different beast. That is more difficult as you mix different compilers etc pp. There are two example packages on CRAN, study those.