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I would like to return some data from c++ code as a numpy.array object. I had a look at boost::python::numeric, but its documentation is very terse. Can I get an example of e.g. returning a (not very large) vector<double> to python? I don't mind doing copies of data.

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I agree its documentation is dreadful. They just copy the commentless header into their documentation page and don't show you the basics, i.e. getting data from STL collection into this object. –  CashCow Jan 8 '13 at 11:57
The boost people are very clever, too clever for their own good. I go to their Wrapper concepts page and see nothing that makes sense. –  CashCow Jan 8 '13 at 11:57
I found what I think is the best solution I've come across yet and posted it below. –  CashCow Jan 9 '13 at 10:18

3 Answers 3

Another interface between Boost.Python and NumPy can be found here:


It's a moderately complete wrapper of the NumPy C-API into a Boost.Python interface, with the intention of eventually submitting it to Boost. I'm not sure the documentation is any better overall than boost::python::numeric at this point, but there are a lot of code examples and at least it's under active development. It's pretty low-level, and mostly focused on how to address the more difficult problem of how to pass C++ data to and from NumPy without copying, but here's how you'd do a copied std::vector return with that:

#include "boost/numpy.hpp"

namespace bp = boost::python;
namespace bn = boost::numpy;

std::vector<double> myfunc(...);

bn::ndarray mywrapper(...) {
    std::vector<double> v = myfunc(...);
    Py_intptr_t shape[1] = { v.size() };
    bn::ndarray result = bn::zeros(1, shape, bn::dtype::get_builtin<double>());
    std::copy(v.begin(), v.end(), reinterpret_cast<double*>(result.get_data()));
    return result;

    bp::def("myfunc", mywrapper);
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May be very nice if I could actually get to the code but github seems to be blocked here, or something else is wrong because I'm getting a broken link. Surely there must be a way to populate a boost::python::numeric::array with data from a simple std::vector without having to get some 3rd party library. It would help if boost's documentation actually gave you documentation on the member functions rather than reproducing the uncommented header. –  CashCow Jan 8 '13 at 13:43
I can't make an edit because it's too minor, but it should be bn::zeros, not bp::zeros. –  Gabriel Jul 23 '14 at 14:29

A solution that doesn't require you to download any special 3rd party C++ library (but you need numpy).

#include <numpy/ndarrayobject.h> // ensure you include this header

boost::python::object stdVecToNumpyArray( std::vector<double> const& vec )
      npy_intp size = vec.size();

     /* const_cast is rather horrible but we need a writable pointer
        in C++11, vec.data() will do the trick
        but you will still need to const_cast

      double * data = size ? const_cast<double *>(&vec[0]) 
        : static_cast<double *>(NULL); 

    // create a PyObject * from pointer and data 
      PyObject * pyObj = PyArray_SimpleNewFromData( 1, &size, NPY_DOUBLE, data );
      boost::python::handle<> handle( pyObj );
      boost::python::numeric::array arr( handle );

    /* The problem of returning arr is twofold: firstly the user can modify
      the data which will betray the const-correctness 
      Secondly the lifetime of the data is managed by the C++ API and not the 
      lifetime of the numpy array whatsoever. But we have a simple solution..

       return arr.copy(); // copy the object. numpy owns the copy now.

Of course you might write a function from double * and size, which is generic then invoke that from the vector by extracting this info. You could also write a template but you'd need some kind of mapping from data type to the NPY_TYPES enum.

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Thanks for this example. Just a heads up, I had to use numeric::array::set_module_and_type("numpy", "ndarray"); or I would get the python runtime error "ImportError: No module named 'Numeric' or its type 'ArrayType' did not follow the NumPy protocol" –  PiQuer Aug 29 '13 at 14:51
Thanks @PiQuer, it helped –  Christopher B. Choy Dec 14 '14 at 0:23
Why are you const_casting if you can just make the argument a non-const reference? –  rubenvb Apr 17 at 11:52
@rubenvb Because we want the argument to be a const reference. We are not actually going to modify the data, but we need to workaround the fact that PyArray_SimpleNewFromData requires a double* –  CashCow Apr 17 at 11:56
Note that unlike many of my answers on StackOverflow this was a situation where I actually needed it, came here, found the question but no adequate answer. Then worked it out and came back to post it. –  CashCow Apr 17 at 11:59

Doing it using the numpy api directly is not necessarily difficult, but I use boost::multiarray regularly for my projects and find it convenient to transfer the shapes of the array between the C++/Python boundary automatically. So, here is my recipe. Use http://code.google.com/p/numpy-boost/, or better yet, this version of the numpy_boost.hpp header; which is a better fit for multi-file boost::python projects, although it uses some C++11. Then, from your boost::python code, use something like this:

PyObject* myfunc(/*....*/)
   // If your data is already in a boost::multiarray object:
   // numpy_boost< double, 1 > to_python( numpy_from_boost_array(result_cm) );
   // otherwise:
   numpy_boost< double, 1> to_python( boost::extents[n] );
   std::copy( my_vector.begin(), my_vector.end(), to_python.begin() );

   PyObject* result = to_python.py_ptr();
   Py_INCREF( result );

   return result;
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What would be the correct way to return a py::object (py=boost::python)? I have PyObject* result=numpy_boost<double,2>(numpy_from_boost_array(...)).py_ptr(); and return py::object(py::handle<>(py::borrowed(o))); but that crashes. Hint? –  eudoxos May 29 '12 at 10:53
PS. the crash is at line 229 of the dropbox version, line a = (PyArrayObject*)PyArray_SimpleNew(NDims, shape, detail::numpy_type_map<T>::typenum);. Strange. –  eudoxos May 29 '12 at 11:05
@eudoxos You might have a problem with the PY_ARRAY_UNIQUE_SYMBOL and NO_IMPORT_ARRAY macros, as well as import_array, as your crash is exactly when the array is created, which needs a call (I think) through certain pointer table that numpy needs (initialized with import_array() ). –  dsign May 29 '12 at 13:00

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