My personal experience has been with
Rpy2. I used it for a while, but dropped it in favor of using
system commands. A typical case for me was running a FORTRAN model using Python scripts, and post-processing with R. In my experience the easiest solution was to create a command line tool using R, which is quite straightforward (at least under Linux). The command line tool could be executed in the root of the model run, and the script would produce a set of R objects and plots in an
Routput directory. The advantage of disconnecting R and Python in this way was that I could easily debug the R code separate from the Python code.
Rpy really shines when a lot of back and forth communication between R and Python is needed. But if the functionality is nicely separable, and the overhead of disk i/o is not too bad, I would stick to
system calls. See
?system for more information regarding system calls, and
Rscript for running R scripts as a command line tool.
Regarding your wish to write R code in a Python way, this is not possible as all the solutions require you to write R code in R syntax. For
Rpy this means R syntax, but a little different (no
. for example). I agree with @gauden that there is no shortcut in using R through