I have troubles compiling some of the examples shipped with CUDA SDK. I have installed the developers driver (version 270.41.19) and the CUDA toolkit, then finally the SDK (both the 4.0.17 version).

Initially it didn't compile at all giving:

error -- unsupported GNU version! gcc 4.5 and up are not supported!

I found the line responsible in 81:/usr/local/cuda/include/host_config.h and changed it to:

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

from that point on I got only a few of the examples to compile, it stops with:

In file included from /usr/include/c++/4.6/x86_64-linux-gnu/bits/gthr.h:162:0,
             from /usr/include/c++/4.6/ext/atomicity.h:34,
             from /usr/include/c++/4.6/bits/ios_base.h:41,
             from /usr/include/c++/4.6/ios:43,
             from /usr/include/c++/4.6/ostream:40,
             from /usr/include/c++/4.6/iterator:64,
             from /usr/local/cuda/include/thrust/iterator/iterator_categories.h:38,
             from /usr/local/cuda/include/thrust/device_ptr.h:26,
             from /usr/local/cuda/include/thrust/device_malloc_allocator.h:27,
             from /usr/local/cuda/include/thrust/device_vector.h:26,
             from lineOfSight.cu:37:
/usr/include/c++/4.6/x86_64-linux-gnu/bits/gthr-default.h:251:1: error: pasting         "__gthrw_" and "/* Android's C library does not provide pthread_cancel, check for
`pthread_create' instead.  */" does not give a valid preprocessing token
make[1]: *** [obj/x86_64/release/lineOfSight.cu.o] Error 1

As some of the examples compile I reckon this is not a driver problem, but rather must have something to do with an unsupported gcc version. Downgrading is not an option as gcc4.6 has a whole system as a dependency at this point...

  • 4
    For future readers: Make sure you're using the latest version of CUDA (unless you absolutely have to use an early one). NVIDIA ups the maximum supported compiler version with almost every release.
    – einpoklum
    Commented Aug 3, 2015 at 21:56
  • This may be helpful for those with CUDA 10 and getting the error of a too high a gnu compiler chain version: stackoverflow.com/questions/53344283/… Commented Dec 18, 2018 at 8:27
  • While installing detectron2 I got a similar message, for that I passed the system variable export TORCH_DONT_CHECK_COMPILER_ABI=1 and re-ran the setup.py and everything was installed smoothly. I am on CUDA 12.0 g++ 12.x Commented Dec 4, 2022 at 19:20
  • So this is saying that gcc is not forward compatible in ways crucial to this package? That is rather surprising and disappointing. Commented Oct 17, 2023 at 2:33

22 Answers 22

  1. Check the maximum supported GCC version for your CUDA version:

    CUDA version max supported GCC version
    12.4 13.2
    12.1, 12.2, 12.3 12.2
    12 12.1
    11.4.1+, 11.5, 11.6, 11.7, 11.8 11
    11.1, 11.2, 11.3, 11.4.0 10
    11 9
    10.1, 10.2 8
    9.2, 10.0 7
    9.0, 9.1 6
    8 5.3
    7 4.9
    5.5, 6 4.8
    4.2, 5 4.6
    4.1 4.5
    4.0 4.4
  2. Set an env var for that GCC version. For example, for CUDA 10.2:

  3. Make sure you have that version installed:

    sudo apt install gcc-$MAX_GCC_VERSION g++-$MAX_GCC_VERSION
  4. Add symlinks within CUDA folders:

    sudo ln -s /usr/bin/gcc-$MAX_GCC_VERSION /usr/local/cuda/bin/gcc 
    sudo ln -s /usr/bin/g++-$MAX_GCC_VERSION /usr/local/cuda/bin/g++

    (or substitute /usr/local/cuda with your CUDA installation path, if it's not there)

See this GitHub gist for more information on the CUDA-GCC compatibility table.

  • 6
    Saved my life lol configuration nightmare!!!! thank you. I applied this to cuda 10 with gcc and g++ 7 system links. For anyone that comes across this.
    – thekevshow
    Commented Apr 3, 2019 at 6:13
  • 2
    Should I create the /usr/bin/gcc and /usr/bin/g++ or /usr/local/cuda/bin/gcc folders myself? Commented May 13, 2020 at 16:07
  • @JoshDesmond the symlink for the files you mentioned are created in step 4.
    – bryant1410
    Commented May 13, 2020 at 21:36
  • 2
    @bryant1410 When I ran the commands in step four, I remember getting an error along the lines of, "Error: directory /usr/local/cuda/bin/gcc does not exist, aborting," or something similar. I'm realizing now, (after reading the details of the question), that your answer assumes a step 0 mentioned by OP: "I have installed the CUDA toolkit, then finally the SDK". I was trying to do the installation with NVIDIA's cuda_10.2.89_440.33.01_linux.run wizard thingy, which simply failed on runtime with a complaint about gcc compatibility. I ended up just deciding to uninstall gcc 9 :P Commented May 14, 2020 at 4:34
  • 2
    If you installed NVCC with [ana|mini]conda (conda-forge package cudatoolkit-dev), then you need to link inside your env like ln -s /usr/bin/gcc-8 /home/user/miniconda3/envs/your_env/bin/gcc and ln -s /usr/bin/g++-8 /home/user/miniconda3/envs/your_env/bin/g++ Commented Jul 8, 2020 at 16:42

As already pointed out, nvcc depends on gcc 4.4. It is possible to configure nvcc to use the correct version of gcc without passing any compiler parameters by adding softlinks to the bin directory created with the nvcc install.

The default cuda binary directory (the installation default) is /usr/local/cuda/bin, adding a softlink to the correct version of gcc from this directory is sufficient:

sudo ln -s /usr/bin/gcc-4.4 /usr/local/cuda/bin/gcc

  • 2
    "update-alternatives" command may also help, especially when installing CUDA 5.0
    – phoad
    Commented Jan 7, 2013 at 21:37
  • 4
    I also had to add a symbolic link to the correct version of g++.
    – Auron
    Commented Sep 6, 2013 at 15:52
  • 18
    I also had to link to g++. Otherwise, simple nvcc invocations work, but say, applying make to the CUDA Samples, soon brings in invocations starting with: nvcc -ccbin g++. For me I used sudo ln -s /usr/bin/gcc-4.9 /usr/local/cuda/bin/gcc and sudo ln -s /usr/bin/g++-4.9 /usr/local/cuda/bin/g++. Commented Dec 21, 2015 at 12:32
  • 8
    If you compile with cmake .. && make you can try cmake -D CUDA_NVCC_FLAGS="-ccbin gcc-4.4" .. && make. If you use plain Makefile you can try make CXX=g++-4.4 CC=gcc-4.4. Commented Apr 4, 2016 at 18:54
  • 1
    when I try this command, it says "File exists" and doesn't perform the link. Any help ?
    – Sentient07
    Commented May 25, 2016 at 20:28

gcc 4.5 and 4.6 are not supported with CUDA - code won't compile and the rest of the toolchain, including cuda-gdb, won't work properly. You cannot use them, and the restriction is non-negotiable.

Your only solution is to install a gcc 4.4 version as a second compiler (most distributions will allow that). There is an option to nvcc --compiler-bindir which can be used to point to an alternative compiler. Create a local directory and then make symbolic links to the supported gcc version executables. Pass that local directory to nvcc via the --compiler-bindir option, and you should be able to compile CUDA code without affecting the rest of your system.


Note that this question, and answer, pertain to CUDA 4.

Since it was written, NVIDIA has continued to expand support for later gcc versions in newer CUDA toolchain release

  • As of the CUDA 4.1 release, gcc 4.5 is now supported. gcc 4.6 and 4.7 are unsupported.
  • As of the CUDA 5.0 release, gcc 4.6 is now supported. gcc 4.7 is unsupported.
  • As of the CUDA 6.0 release, gcc 4.7 is now supported.
  • As of the CUDA 7.0 release, gcc 4.8 is fully supported, with 4.9 support on Ubuntu 14.04 and Fedora 21.
  • As of the CUDA 7.5 release, gcc 4.8 is fully supported, with 4.9 support on Ubuntu 14.04 and Fedora 21.
  • As of the CUDA 8 release, gcc 5.3 is fully supported on Ubuntu 16.06 and Fedora 23.
  • As of the CUDA 9 release, gcc 6 is fully supported on Ubuntu 16.04, Ubuntu 17.04 and Fedora 25.
  • The CUDA 9.2 release adds support for gcc 7
  • The CUDA 10.1 release adds support for gcc 8
  • The CUDA 10.2 release continues support for gcc 8
  • The CUDA 11.0 release adds support for gcc 9 on Ubuntu 20.04
  • The CUDA 11.1 release expands gcc 9 support across most distributions and adds support for gcc 10 on Fedora linux

There is presently (as of CUDA 11.1) no gcc 10 support in CUDA other than Fedora linux

Note that NVIDIA has recently added a very useful table here which contains the supported compiler and OS matrix for the current CUDA release.

  • Any idea what is used for CUDA 7.5?
    – GuySoft
    Commented Jan 13, 2016 at 11:53
  • 2
    I use CUDA 7.5 with gcc 4.9.3 on SLES 11 SP3 without any problem. Commented Feb 6, 2016 at 13:26
  • 4
    What? How is a code supposed to not compile with higher versions (except for hardcoded limitations of course)? The only thing I can think of is that since some version there's C11/C++11 are enabled by default, but if that is causing a problem with an old code, that could be easy workarounded with a command line switch.
    – Hi-Angel
    Commented Feb 11, 2016 at 11:38
  • 3
    Seconding @Hi-Angel. #talonmies what does "the restriction is non-negotiable" even mean? Newer versions of gcc and gdb support older binary headers for object files, as they "always" (sort of) have, there's no reason newer gcc versions shouldn't work. Symlinking solutions aside, any other problem is most likely a c preprocessor version flag setting, and if the gcc version test is "hardcoded" in some cuda header as part of a define or macro, it is easy enough to fix. The exception could be the cuda gpu compiler itself.
    – Beracah
    Commented Nov 28, 2016 at 19:35
  • 2
    This isn't s binary compatibility question. The CUDA toolchain requires that nvcc and the GPU front end parser can intercept and overload various compiler and libc/libc++ internal headers to both compile host and device code and integrate them together. The CUDA parser needs to be able to parse the gcc internal headers correctly, amongst other things. Untested gcc versions can and do fail, irrespective of preprocessor guards built into the NVIDIA headers. You can either believe me (as someone who has been hacking on the CUDA toolchain for almost 10 years), or not. At this point I don't really
    – talonmies
    Commented Nov 28, 2016 at 20:33

Gearoid Murphy's solution works better for me since on my distro (Ubuntu 11.10), gcc-4.4 and gcc-4.6 are in the same directory, so --compiler-bindir is no help. The only caveat is I also had to install g++-4.4 and symlink it as well:

sudo ln -s /usr/bin/gcc-4.4 /usr/local/cuda/bin/gcc
sudo ln -s /usr/bin/g++-4.4 /usr/local/cuda/bin/g++

If using cmake for me none of the hacks of editing the files and linking worked so I compiled using the flags which specify the gcc/g++ version.

Worked like charm.

  • haha I was going to try to link your answer from the other question here because I thought it needed to be put on this thread. Good work again! Thanks
    – MikeDoho
    Commented Jul 24, 2018 at 2:46
  • One should refrain from posting duplicate answers on SO but I had no option. :)
    – markroxor
    Commented Jul 24, 2018 at 6:38

Check out how to use "update-alternatives" to get around this issue:

... If you install gcc 4.6 you can also use the update-alternatives command to allow for easily switching between versions. This can be configured with:

sudo update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-4.6 60 --slave /usr/bin/g++ g++ /usr/bin/g++-4.6 
sudo update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-4.7 40 --slave /usr/bin/g++ g++ /usr/bin/g++-4.7 
sudo update-alternatives --config gcc

For CUDA7.5 these lines work:

sudo ln -s /usr/bin/gcc-4.9 /usr/local/cuda/bin/gcc 
sudo ln -s /usr/bin/g++-4.9 /usr/local/cuda/bin/g++

On most distributions you have the possibility to install another gcc and g++ version beside a most recent compiler like gcc-4.7. In addition most build systems are aware of the CC and CXX environment variables, which let specify you other C and C++ compilers respectively. SO I suggest something like:

CC=gcc-4.4 CXX=g++-4.4 cmake path/to/your/CMakeLists.txt

For Makefiles there should be a similar way. I do not recommend setting custom symlinks within /usr/local unless you know what you are doing.


This works for fedora 23. The compat gcc repositories will be slightly different based on your version of fedora.

If you install the following repositories:

sudo yum install compat-gcc-34-c++-3.4.6-37.fc23.x86_64 compat-gcc-34-3.4.6-37.fc23.x86_64 

Now make the soft links as mentioned above assuming your cuda bin folder is in /usr/local/cuda/

sudo ln -s /usr/bin/gcc-34 /usr/local/cuda/bin/gcc
sudo ln -s /usr/bin/g++-34 /usr/local/cuda/bin/g++

You should now be able to compile with nvcc without the gcc version error.


Another way of configuring nvcc to use a specific version of gcc (gcc-4.4, for instance), is to edit nvcc.profile and alter PATH to include the path to the gcc you want to use first.

For example (gcc-4.4.6 installed in /opt):

PATH += /opt/gcc-4.4.6/lib/gcc/x86_64-unknown-linux-gnu/4.4.6:/opt/gcc-4.4.6/bin:$(TOP)/open64/bin:$(TOP)/share/cuda/nvvm:$(_HERE_):

The location of nvcc.profile varies, but it should be in the same directory as the nvcc executable itself.

This is a bit of a hack, as nvcc.profile is not intended for user configuration as per the nvcc manual, but it was the solution which worked best for me.

  • I suggest doing this, but pointing the path to a directory with g++ symlinked to the correct gcc version (especially useful if your distribution provides a supported gcc version). For example: mkdir /usr/local/bin/cuda-hack && ln -s /usr/bin/g++-5 /usr/local/bin/cuda-hack Commented Jun 9, 2017 at 21:00

CUDA is after some header modifications compatible with gcc4.7 and maybe higher version: https://www.udacity.com/wiki/cs344/troubleshoot_gcc47


For people like me who get confused while using cmake, the FindCUDA.cmake script overrides some of the stuff from nvcc.profile. You can specify the nvcc host compiler by setting CUDA_HOST_COMPILER as per http://public.kitware.com/Bug/view.php?id=13674.

  • cmake .. -DCMAKE_INSTALL_PREFIX=/InstallPos_GPU/ -DCMAKE_C_COMPILER="/gcc-8.3.0/bin/gcc" -DCMAKE_CXX_COMPILER="/gcc-8.3.0/bin/g++" -DGMX_GPU=ON -DCUDA_TOOLKIT_ROOT_DIR=/cuda-7.5/ -D NVCCFLAGS=" -ccbin /cuda-7.5/bin/" -DCUDA_HOST_COMPILER=/cuda-7.5/bin/gcc I have successfully installed the gromacs with GPU supporting.
    – pengchy
    Commented Apr 15, 2019 at 8:24

I had to install the older versions of gcc, g++.

    sudo apt-get install gcc-4.4
    sudo apt-get install g++-4.4

Check that gcc-4.4 is in /usr/bin/, and same for g++ Then I could use the solution above:

    sudo ln -s /usr/bin/gcc-4.4 /opt/cuda/bin/gcc
    sudo ln -s /usr/bin/g++-4.4 /opt/cuda/bin/g++
  • When I try this command, it says "File exists" and doesn't perform the link. Any help ?
    – Sentient07
    Commented May 25, 2016 at 20:28
  • I'm afraid I'm too far removed from thinking about this to know what to say. Hopefully others can help. Commented May 27, 2016 at 16:08

In $CUDA_HOME/include/host_config.h, find lines like these (may slightly vary between different CUDA version):

#if __GNUC__ > 4 || (__GNUC__ == 4 && __GNUC_MINOR__ > 9)

#error -- unsupported GNU version! gcc versions later than 4.9 are not supported!

#endif [> __GNUC__ > 4 || (__GNUC__ == 4 && __GNUC_MINOR__ > 9) <]

Remove or change them matching your condition.

Note this method is potentially unsafe and may break your build. For example, gcc 5 uses C++11 as default, however this is not the case for nvcc as of CUDA 7.5. A workaround is to add

--Xcompiler="--std=c++98" for CUDA<=6.5


--std=c++11 for CUDA>=7.0.

  • where do we add the --std=c++ option to?
    – asgs
    Commented Dec 5, 2017 at 21:19

If you encounter this error, please read the log file:

$ cat /var/log/cuda-installer.log 
[INFO]: Driver installation detected by command: apt list --installed | grep -e nvidia-driver-[0-9][0-9][0-9] -e nvidia-[0-9][0-9][0-9]
[INFO]: Cleaning up window
[INFO]: Complete
[INFO]: Checking compiler version...
[INFO]: gcc location: /usr/bin/gcc

[INFO]: gcc version: gcc version 9.2.1 20191008 (Ubuntu 9.2.1-9ubuntu2) 

[ERROR]: unsupported compiler version: 9.2.1. Use --override to override this check.

Just follow the suggestion in the log file:

sudo sh cuda_<version>_linux.run --override

Job done :)

I just installed CUDA 10.2 with gcc 9.2 on Kubuntu 19.10 using the --override option.


Gearoid Murphy's solution works like a charm. For me I had two directories for CUDA:


The soft links had to be added only to the directory mentioned below:


Also, both g++ and gcc soft links were required as mentioned by SchighSchagh.


For CUDA 6.5 (and apparently 7.0 and 7.5), I've created a version of the gcc 4.8.5 RPM package (under Fedora Core 30) that allows that version of gcc to be install alongside your system's current GCC.

You can find all of that information here.

Update 2024-04-07: for CUDA 12, I've created a version of the gcc 12.3 RPM package (under Fedora Core 38) that allows that version of gcc to be install alongside your system's current GCC. You can grab the necessary spec files here. Here's what you do:

  • Download the gcc 12.3 source RPM with dnf download --source --releasever=37 gcc.
  • Install it. It should dump a bunch of files into ~/rpmbuild/SOURCES, and gcc.spec into ~/rpmbuild/SPECS.
  • Compare the newly installed gcc.spec with the gcc-12-3.spec from the above GitHub URL. They should be identical.
  • Feel free to diff gcc-12-3.spec and compat-gcc-12-3.spec, to verify I didn't do anything dodgy...just renaming files & cutting out unneeded stuff.
  • Build! Just run rpmbuild -ba on the compat-gcc-12-3.spec, and several blissful hours later, you'll have what you need!
  • Install the newly-build compat-gcc-12-3, compat-gcc-12-3-c++, compat-libstdc++-12-3, and compat-libstdc++-12-3-devel packages that can be installed without conflicts alongside your regular gcc installation.

To compile the CUDA 8.0 examples on Ubuntu 16.10, I did:

sudo apt-get install gcc-5 g++-5
cd /path/to/NVIDIA_CUDA-8.0_Samples
# Find the path to the library (this should be in NVIDIA's Makefiles)
LIBLOC=`find /usr/lib -name "libnvcuvid.so.*" | head -n1 | perl -pe 's[/usr/lib/(nvidia-\d+)/.*][$1]'`
# Substitute that path into the makefiles for the hard-coded, incorrect one
find . -name "*.mk" | xargs perl -pi -e "s/nvidia-\d+/$LIBLOC/g"
# Make using the supported compiler
HOST_COMPILER=g++-5 make

This has the advantage of not modifying the whole system or making symlinks to just the binaries (that could cause library linking problems.)


This solved my problem:

sudo rm /usr/local/cuda/bin/gcc
sudo rm /usr/local/cuda/bin/g++
sudo apt install gcc-4.4 g++-4.4
sudo ln -s /usr/bin/gcc-4.4 /usr/local/cuda/bin/gcc
sudo ln -s /usr/bin/g++-4.4 /usr/local/cuda/bin/g++

This is happening because your current CUDA version doesn't support your current GCC version. You need to do the following:

  1. Find the supported GCC version (in my case 5 for CUDA 9)

    • CUDA 4.1: GCC 4.5
    • CUDA 5.0: GCC 4.6
    • CUDA 6.0: GCC 4.7
    • CUDA 7.0: GCC 4.8
    • CUDA 7.5: GCC 4.8
    • CUDA 8: GCC 5.3
    • CUDA 9: GCC 5.5
    • CUDA 9.2: GCC 7
    • CUDA 10.1: GCC 8
  2. Install the supported GCC version

    sudo apt-get install gcc-5
    sudo apt-get install g++-5
  3. Change the softlinks for GCC in the /usr/bin directory

    cd /usr/bin
    sudo rm gcc
    sudo rm g++
    sudo ln -s /usr/bin/gcc-5 gcc
    sudo ln -s /usr/bin/g++-5 g++
  4. Change the softlinks for GCC in the /usr/local/cuda-9.0/bin directory

    cd /usr/local/cuda-9.0/bin
    sudo rm gcc
    sudo rm g++
    sudo ln -s /usr/bin/gcc-5 gcc
    sudo ln -s /usr/bin/g++-5 g++
  5. Add -DCUDA_HOST_COMPILER=/usr/bin/gcc-5 to your setup.py file, used for compilation

    if torch.cuda.is_available() and CUDA_HOME is not None:
        extension = CUDAExtension
        sources += source_cuda
        define_macros += [("WITH_CUDA", None)]
        extra_compile_args["nvcc"] = [
  6. Remove the old build directory

    rm -rd build/
  7. Compile again by setting CUDAHOSTCXX=/usr/bin/gcc-5

    CUDAHOSTCXX=/usr/bin/gcc-5 python setup.py build develop

Note: If you still get the gcc: error trying to exec 'cc1plus': execvp: no such file or directory error after following these steps, try reinstalling the GCC like this and then compiling again:

sudo apt-get install --reinstall gcc-5
sudo apt-get install --reinstall g++-5

Credits: https://github.com/facebookresearch/maskrcnn-benchmark/issues/25#issuecomment-433382510


In my case, I had CUDA already installed from the Ubuntu version and cmake would detect that one instead of the newly installed version using the NVidia SDK Manager.

I ran dpkg -l | grep cuda and could see both versions.

What I had to do is uninstall the old CUDA (version 9.1 in my case) and leave the new version alone (version 10.2). I used the purge command like so:

sudo apt-get purge libcudart9.1 nvidia-cuda-dev nvidia-cuda-doc \
                                nvidia-cuda-gdb nvidia-cuda-toolkit

Please verify that the package names match the version you want to remove from your installation.

I had to rerun cmake from a blank BUILD directory to redirect all the #include and libraries to the SDK version (since the old paths were baked in the existing build environment).


under #debian , (must be the same under #ubuntu ) :

$ apt show nvidia-cuda-toolkit
Package: nvidia-cuda-toolkit
Version: 11.8.89~11.8.0-5~deb12u1

$ dpkg -S nvidia-cuda-toolkit | grep "bin/g"
nvidia-cuda-toolkit: /usr/lib/nvidia-cuda-toolkit/bin/gcc
nvidia-cuda-toolkit: /usr/lib/nvidia-cuda-toolkit/bin/g++

$ gcc -v
gcc version 12.2.0 (Debian 12.2.0-14)

$ /usr/lib/nvidia-cuda-toolkit/bin/gcc -v
gcc version 11.3.0 (Debian 11.3.0-12)

the nvidia-cuda-toolkit package is giving its own native gcc compiler

so I've just added to my cmake :

-D CMAKE_C_COMPILER="/usr/lib/nvidia-cuda-toolkit/bin/gcc" \
-D CMAKE_CXX_COMPILER="/usr/lib/nvidia-cuda-toolkit/bin/g++" 

And all went fine compiling

  • may the one who downgraded, explain why !?
    – s4mdf0o1
    Commented Oct 22, 2023 at 8:10

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