my problem "should" be simple but I am still not able to solve it.

I am currently working on a project that requires some heavy computations (done in C++) and some post-simulations data analysis (done in Python).

However, now I am changing the main algorithm and I will need to "cycle" some computations back and forth from C++ and Python. That is, I will need to move back and forth from C++ and Python a matrix of doubles.

In C++ the matrix of data is a "gsl_matrix" object while in python the same matrix is implemented as a "numpy array".

At the moment, I am running my C++ code, saving the matrix to file, reading it from python, writing it back to file and then opening it back again in C++ for further computations.

Since this is VERY inefficient, I would like to ask if somebody can give me an example on how to do it in a "clean" way.

I have been reading (and trying for 10 days) SWIG, Cython, Boost.Python and Boost.Numpy but I'm still not able to crack it.

Does anyone have a worked example to share?

Thanks!

Rene

`gsl_matrix`

`struct`

pointer to a`PyArrayObject`

pointer using`PyArray_SimpleNewFromData`

seems pretty straightforward, but how to handle everything around it depends very much on what/how you want things to happen. – Jaime Sep 11 '13 at 19:37