🎉Community Raffle - Win $25

An exclusive raffle opportunity for active members like you! Complete your profile, answer questions and get your first accepted badge to enter the raffle.
Join and Win

"Combining RapidMiner with Python and R"

User: "mlg1988"
New Altair Community Member
Updated by Jocelyn
Hello everyone,

I am exploring RapidMiner, and I saw I can use Python and R in it.
I would love to get feedback from others that combine these three tools,
what is your typical workflow?

This is how I think about it.

R = academic / statistics
Python = practical ML / software engineering
RapidMiner = visual workflow / integration platform

One simple rule would be, if you can do it in RM then do it,
and if something has to be programmed then add Python / R operators in RM.

Thank you

Find more posts tagged with

Sort by:
1 - 3 of 31
    User: "varunm1"
    New Altair Community Member
    Hi @mlg1988

    I use to do some preprocessing on files that need some libraries in Python extension and apply deep learning in RM.
    User: "SGolbert"
    New Altair Community Member
    Accepted Answer

    in my opinion R and Python help cover some niche cases which RapidMiner not yet covers, or does it poorly (e.g.: the web mining extension). If you work with the RapidMiner platform, you don't really need to program much, only a few lines to get some special functionality, via the scripting operators. The project framework that RM gives you is unparalleled in the R and Python world.

    There are some cases when some tasks are easier to do with a script than in RapidMiner, in those cases I would insist with RM for a given time, because once you solve a problem in RM, the future use of the process (changes, debugging, operationalization) is better if you don't depend on external tools.

    Regards,
    Sebastian
    User: "kayman"
    New Altair Community Member
    Not much to add, also for me Python allows me to cover the bits and pieces not available out of the box, or where python alternatives tend to be a bit faster on occasion. I've recently had a lot of fun dissecting pdf manuals and while the out of the box option in RM was a little 'mehh', being able to offload part of my workflow to python and back made it quite easy to do in the end. 

    Other stuff we use it for is dedicated API access,  web crawling if the standard options don't do the job again, and disk / network input/output things. Also some python libraries (like Vader for sentiment analysis to just name one) make a nice extension to the tool set.