I am using ctypes to implement a C++ function in Python. The C++ function should return a pointer to an array. Unfortunately I haven't figured out, how to access the array in Python. I tried numpy.frombuffer, but that was not successful. It just returned an array of arbitrary numbers. Obviously I didn't used it correctly. Here is a simple example with an array of size 10:

Content of function.cpp:

extern "C" int* function(){
int* information = new int[10];
for(int k=0;k<10;k++){
    information[k] = k;
return information;

Content of wrapper.py:

import ctypes
import numpy as np

output = ctypes.CDLL('./library.so').function()

ArrayType = ctypes.c_double*10
array_pointer = ctypes.cast(output, ctypes.POINTER(ArrayType))
print np.frombuffer(array_pointer.contents)

To compile the C++ file i am using:

g++ -c -fPIC function.cpp -o function.o
g++ -shared -Wl,-soname,library.so -o library.so function.o

Do you have any suggestions what I have to do to access the array values in Python?

  • Of course i forgot to import some specific ctypes functions like c_double and POINTER. I just forgot to add them here.
    – dolby
    Feb 15, 2013 at 2:38

2 Answers 2


Your python code will work after some minor modifications:

import ctypes

f = ctypes.CDLL('./library.so').function
f.restype = ctypes.POINTER(ctypes.c_int * 10)
print [i for i in f().contents] # output: [0, 1, 2, 3, 4, 5, 6, 7, 8, 9]

Basically there are two changes:

  1. remove numpy-related code and ctypes.cast call since we don't need them.

  2. specify the return type to ctypes.POINTER(ctypes.c_int * 10).

    By default foreign functions are assumed to return the C int type, hence we need change it to the desired pointer type.

BTW, returning a newed array from C code to Python code seems inappropriate. Who and when will free the memory? It's better to create arrays in Python code and pass them to C code. This way it's clear that the Python code owns the arrays and takes the responsibility of creating and reclaiming their spaces.

  • 12
    Can you point out how would we create such an array in python and pass it's pointer to C?
    – shahensha
    Jul 21, 2015 at 5:19
  • @Shahensha What I do for int/float arrays is use numpy arrays, and the embedded ctypes interface (data_as)
    – Adversus
    Apr 26, 2016 at 14:19
  • A bit of necromancery here... How would you delete the memory when done with it?
    – XapaJIaMnu
    Jan 5, 2017 at 18:35
  • @XapaJIaMnu you could create a separate function to release the malloced memmory after you have safely returned and made a copy of the array in python
    – VMMF
    Jul 29 at 19:42
  • What to do if the size of the return array is unknown? f.restype = ctypes.POINTER(ctypes.c_int * what? )
    – VMMF
    Jul 29 at 19:46

function.cpp returns an int array, while wrapper.py tries to interpret them as doubles. Change ArrayType to ctypes.c_int * 10 and it should work.

It's probably easier to just use np.ctypeslib instead of frombuffer yourself. This should look something like

import ctypes
from numpy.ctypeslib import ndpointer

lib = ctypes.CDLL('./library.so')
lib.function.restype = ndpointer(dtype=ctypes.c_int, shape=(10,))

res = lib.function()
  • I imported also c_int and replaced c_double but python prints now an array of only 5 elements and the values are still wrong. This is weird.
    – dolby
    Feb 15, 2013 at 3:10
  • Excellent, thank you very much! It works now. Python just gives me the warning "[...] RuntimeWarning: Invalid PEP 3118 format string: '<P' [...]" But according to this discussion it is not a problem.
    – dolby
    Feb 15, 2013 at 3:28
  • 2
    A bit of necromancery here... How would you delete the memory when done with it?
    – XapaJIaMnu
    Jan 5, 2017 at 18:34
  • 2
    @XapaJlaMnu Your library should have a corresponding extern C function to call to free the memory, which internally uses C++ delete if it was allocated with new. ctypes uses C interfaces, and since C doesn't have delete, neither does ctypes.
    – Danica
    Jan 5, 2017 at 18:39
  • 2
    As suggested in the other answer, if possible it's usually better to allocate the memory with numpy and pass it off to a C function to populate.
    – Danica
    Jan 5, 2017 at 18:41

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