The following trial presents my intention, which failed to compile:

__host__ __device__ void f(){}

int main()

The compiler complaints:

a.cu(5): error: a __device__ function call cannot be configured

1 error detected in the compilation of "/tmp/tmpxft_00001537_00000000-6_a.cpp1.ii".

Hope my statement is clear, and thanks for advices.


You need to create a CUDA kernel entry point, e.g. __global__ function. Something like:

#include <stdio.h>

__host__ __device__ void f() {
#ifdef __CUDA_ARCH__
    printf ("Device Thread %d\n", threadIdx.x);
    printf ("Host code!\n");

__global__ void kernel() {

int main() {
   if (cudaDeviceSynchronize() != cudaSuccess) {
       fprintf (stderr, "Cuda call failed\n");
   return 0;
  • CUDA_ARCH will be defined in both calls. Pre-compiler code makes no sense in this context... Dec 4 '17 at 8:19

The tutorial you are looking at is so old, 2008? It might not be compatible with the version of CUDA you are using.

You can use __global__ and that means __host__ __device__, this works:

__global__ void f()
    const int tid = threadIdx.x + blockIdx.x * blockDim.x;

int main()
  • __global__ specifies a kernel entry point, i.e. a function that will auto-parallelize into GPU code when called with launch parameters. __host__ and __device__ are not used to decorate kernel functions. The only sense in which you could say __global__ means __host__ __device__ with any sense is in the case of cuda dynamic parallelism, which is only available on cc 3.5 devices. Even in that case, I think it's sloppy to say __global__ means __host__ __device__ Jun 12 '13 at 3:03
  • @RobertCrovella I agree, I only meant they are equivalent in his context, as my code cannot be called from the host anyway as it has kernel variables.
    – Adam
    Jun 12 '13 at 3:11

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.