I was getting this error

/usr/local/cuda-5.0/bin/../include/host_config.h:82:2: error: #error -- unsupported GNU version! gcc 4.7 and up are not supported! make: * [src/Throughput.o] Error 1

In the host_config.h they assure compatibility up to the 4.6

#if __GNUC__ > 4 || (__GNUC__ == 4 && __GNUC_MINOR__ > 6)

#error -- unsupported GNU version! gcc 4.7 and up are not supported!

I have both 4.6 and 4.7

elect@elect-desktop:/usr/local/cuda-5.0/bin$ gcc gcc
gcc-4.7 gcc-nm-4.7 gcc-4.6 gcc-ar-4.7

Looking on internet they suggest to add a link to the gcc-4.6 in the cuda bin directory.

So I did

elect@elect-desktop:/usr/local/cuda-5.0/bin$ sudo ln -s /usr/bin/gcc-4.6 gcc

And I get another error

**** Build of configuration Debug for project Throughput ****

make all 
Building file: ../src/Throughput.cu
Invoking: NVCC Compiler
nvcc -G -g -O0 -gencode arch=compute_20,code=sm_20 -odir "src" -M -o "src/Throughput.d"     "../src/Throughput.cu"
gcc: error trying to exec 'cc1plus': execvp: No such file or directory
make: *** [src/Throughput.o] Error 1

**** Build Finished ****

Googling again didn't bring me on some clear situations (gcc downgrading, etc)

So I am asking here what is now the problem since CUDA is supposed to be compatible with gcc-4.6 ...

My system:

  • Ubuntu 12.10 64b
  • cuda_5.0.35_linux_64_ubuntu11.10-1

This is the tutorial code I am trying to compile at the moment

 * Copyright 1993-2012 NVIDIA Corporation.  All rights reserved.
 * Please refer to the NVIDIA end user license agreement (EULA) associated
 * with this source code for terms and conditions that govern your use of
 * this software. Any use, reproduction, disclosure, or distribution of
 * this software and related documentation outside the terms of the EULA
 * is strictly prohibited.
#include <stdio.h>
#include <stdlib.h>

static const int WORK_SIZE = 256;

 * This macro checks return value of the CUDA runtime call and exits
 * the application if the call failed.
#define CUDA_CHECK_RETURN(value) {                                          \
    cudaError_t _m_cudaStat = value;                                        \
    if (_m_cudaStat != cudaSuccess) {                                       \
        fprintf(stderr, "Error %s at line %d in file %s\n",                 \
                cudaGetErrorString(_m_cudaStat), __LINE__, __FILE__);       \
        exit(1);                                                            \
    } }

__device__ unsigned int bitreverse(unsigned int number) {
    number = ((0xf0f0f0f0 & number) >> 4) | ((0x0f0f0f0f & number) << 4);
    number = ((0xcccccccc & number) >> 2) | ((0x33333333 & number) << 2);
    number = ((0xaaaaaaaa & number) >> 1) | ((0x55555555 & number) << 1);
    return number;

 * CUDA kernel function that reverses the order of bits in each element of the array.
__global__ void bitreverse(void *data) {
    unsigned int *idata = (unsigned int*) data;
    idata[threadIdx.x] = bitreverse(idata[threadIdx.x]);

 * Host function that prepares data array and passes it to the CUDA kernel.
int main(void) {
    void *d = NULL;
    int i;
    unsigned int idata[WORK_SIZE], odata[WORK_SIZE];

    for (i = 0; i < WORK_SIZE; i++)
        idata[i] = (unsigned int) i;

    CUDA_CHECK_RETURN(cudaMalloc((void**) &d, sizeof(int) * WORK_SIZE));

    CUDA_CHECK_RETURN(cudaMemcpy(d, idata, sizeof(int) * WORK_SIZE, cudaMemcpyHostToDevice));

    bitreverse<<<1, WORK_SIZE, WORK_SIZE * sizeof(int)>>>(d);

    // Wait for the GPU launched work to complete
    CUDA_CHECK_RETURN(cudaMemcpy(odata, d, sizeof(int) * WORK_SIZE, cudaMemcpyDeviceToHost));

    for (i = 0; i < WORK_SIZE; i++)
        printf("Input value: %u, device output: %u\n", idata[i], odata[i]);

    CUDA_CHECK_RETURN(cudaFree((void*) d));

    return 0;
  • Apart from the CUDA, are you dealing with pure C code? Or is it perhaps C++?
    – Bart
    Feb 9 '13 at 10:32
  • @bart: nvcc requires a working supported c++ compiler
    – talonmies
    Feb 9 '13 at 10:45
  • @Bart At the moment pure C (I added some additional code)
    – elect
    Feb 9 '13 at 10:46
  • @talonmies Ah, but isn't that the problem then? A problem with (or absence of) g++?
    – Bart
    Feb 9 '13 at 10:51
  • So shouldn't I add the link to the gcc?
    – elect
    Feb 9 '13 at 11:08

The problem stems from the CUDA toolchain not being able to find a valid C++ compiler. nvcc is only a compiler driver, it requires a working C++ compiler to compile any code.

The most correct way to do this [note you are using an unsupported Linux version, so use this advice at your own risk], is to set up a local directory holding links to a supported compiler suite (this mean matching, supported verions of gcc and g++) and pass the --compiler-bindir argument to nvcc when you compile. For example:

$ ls -l $HOME/cuda/bin
total 16
lrwxr-xr-x  1 talonmies  koti  16 Feb  9 12:41 g++ -> /usr/bin/g++-4.2
lrwxr-xr-x  1 talonmies  koti  16 Feb  9 12:41 gcc -> /usr/bin/gcc-4.2

Here I have a set of links to a supported compiler. I then can compile like this:

$ nvcc --compiler-bindir=$HOME/cuda/bin -c -arch=sm_12 -Xptxas="-v" nanobench.cu 
ptxas info    : 0 bytes gmem
ptxas info    : Compiling entry function '_Z5benchIfLi128000EEvPjPT_i' for 'sm_12'
ptxas info    : Used 5 registers, 28 bytes smem, 12 bytes cmem[1]

This is probably the safest and least invasive way to use alternative compilers where the system compiler is not supported.

  • Ok, but if it say that gcc-4.6 is compatible and I have already gcc-4.6, am I missing only g++-4.6, no?
    – elect
    Feb 9 '13 at 12:37
  • Yep, working, I was missing the link to g++-4.6, I then installed it and created a link in /cuda-5.0/bin/g++ to /usr/bin/g++-4.6. Thanks talonmies
    – elect
    Feb 9 '13 at 12:47
  • Btw, can you just confirm me if the original g++ and gcc links were pointing respectively to /usr/bin/g++ and /usr/bin/gcc?
    – elect
    Feb 9 '13 at 12:48
  • @elect: I don't understand what original links you are asking about
    – talonmies
    Feb 9 '13 at 12:56
  • Yeah sorry, I said original links because in the rush to make it work I didn't use a directory holding the links, but I overwrote the original ones in cuda-5.0/bin/
    – elect
    Feb 9 '13 at 13:54

As found elsewhere:

su -c 'update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-4.6 10'  
sudo update-alternatives --config gcc

Worked for me. I'm compiling CudaMiner though.

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.