I am planning on writing some software for a web server that uses machine learning to process large amounts of data. This will be real estate data from a MySQL server. I will be using the CUDA framework from Nvidia with python/caffe or the c++ library. I will be using a Tesla P100. Although python is more widely used for machine learning I presume it is hard to write a server app in python without sacrificing performance. Is this true? Is c++ well supported for machine learning? Will anything be sacrificed by writing a professional server app in python (ex: connecting to MySQL database)?

  • Most the Machine Learning libs are written in C/C++ with wrappers for python so there is any problem with perfomance. But, if you need to do a lot of processing outside the CUDA enviroment then python could be to slow. – VMRuiz May 22 '17 at 7:05
  • You asked this same basic question a couple of hours and it was closed. That wasn't an accident – talonmies May 22 '17 at 7:07
  • I was under the impression that the question was not specific enough so I rewrote it to make it more specific. If there is another issue with this post I would be happy to take that into consideration. – Patrick Maynard May 22 '17 at 7:10
  • Machine learning and web server seems to me to be two separate concerns. – Jan Mattsson May 22 '17 at 7:15
  • 1
    The problem with this question is that there is no answer. You are basically soliciting opinions. And that is explicitly off-topic – talonmies May 22 '17 at 8:59

Both C++ and Python are perfectly reasonable languages for implementing web servers. Python is actually quite common, and there are many frameworks for writing web servers in Python such as flask, bottle, django, etc. Architecturally, I wonder whether you really need the machine learning (which I imagine would be a data processing pipeline) and the web server to be the same process / binary; however, even if you do them in the same server, I suspect that either language would be perfectly reasonable; moreover, if you ever came to the point where you needed to run a piece of computation in C++ for performance, using SWIG to call C++ from Python or using some form of message passing from Python to a C++ helper process (such as via gRPC) are options.


Python is a language that performs worse than c++ in terms of runtime for several reasons:

First and foremost, Python is a scripting language that runs with an interpreter as opposed to c++ which compiled into machine code before running.

Secondly: python runs in the background a garbage collector system while in c++ the memory management is done manually by the programmer.

In your case, I recommend that you work with Python for several reasons:

  1. Writing in Python in CUDA allows you to compile the code even though it is Python (CUDA provides JIT - Just In Time compiler, as well as a compiler and other effective tools), Which greatly improves performance
  2. Python provides many, rich varied libraries that will help you a lot in the project, especially in the field of machine learning.
  3. The development time and code length will be significantly shorter in Python.

From my experience with working at CUDA in the Python language I recommend you use numba and numbapro libraries, they are comfortable to work with and provide support for many libraries like numpy.

Best of luck.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.