I've installed the latest nvidia drivers (375.26) manually, and installed CUDA using cuda_8.0.44_linux.run (skipping the driver install there, since the bundled drivers are older, 367 I think).

Running the deviceQuery in CUDA samples produces the following error however:

~/cudasamples/NVIDIA_CUDA-8.0_Samples/1_Utilities/deviceQuery$ ./deviceQuery 
./deviceQuery Starting...

 CUDA Device Query (Runtime API) version (CUDART static linking)

cudaGetDeviceCount returned 35
-> CUDA driver version is insufficient for CUDA runtime version
Result = FAIL

Version info:

$ nvcc --version

nvcc: NVIDIA (R) Cuda compiler driver
Copyright (c) 2005-2016 NVIDIA Corporation
Built on Sun_Sep__4_22:14:01_CDT_2016
Cuda compilation tools, release 8.0, V8.0.44

$ nvidia-smi
Sat Dec 31 17:25:03 2016       
| NVIDIA-SMI 375.26                 Driver Version: 375.26                    |
| GPU  Name        Persistence-M| Bus-Id        Disp.A | Volatile Uncorr. ECC |
| Fan  Temp  Perf  Pwr:Usage/Cap|         Memory-Usage | GPU-Util  Compute M. |
|   0  GeForce GTX 1080    Off  | 0000:01:00.0      On |                  N/A |
|  0%   39C    P8    11W / 230W |    464MiB /  8110MiB |      1%      Default |

| Processes:                                                       GPU Memory |
|  GPU       PID  Type  Process name                               Usage      |
|    0       974    G   /usr/lib/xorg/Xorg                             193MiB |
|    0      1816    G   compiz                                         172MiB |
|    0      2178    G   ...ignDownloads/Enabled/MaterialDesignUserMa    96MiB |

$  cat /proc/driver/nvidia/version 
NVRM version: NVIDIA UNIX x86_64 Kernel Module  375.26  Thu Dec  8 18:36:43 PST 2016
GCC version:  gcc version 5.4.0 20160609 (Ubuntu 5.4.0-6ubuntu1~16.04.4) 

The anwer to similar problems has been updating the nvidia display drivers, though in my case this is already done. Does anyone have any ideas? Thanks.

  • 5
    You may have some old driver components that were on your machine from a previous install. You may also have not properly removed the nouveau driver. I'm sure there are other possibilities as well. The cuda 8 linux install guide covers all the necessary information to get CUDA working on a clean load of the OS. Dec 31, 2016 at 16:07

9 Answers 9



sudo apt-get purge nvidia-*

and reinstalling the drivers using

sudo apt-get install nvidia-375

solved it. Just for the record, the first time I updated the drivers using the GUI (Additional Drivers tab in Software & Updates).

  • thanks, had exactly the same situation and this worked. Maybe it was because transitional 367 packages.
    – Noidea
    Jun 2, 2017 at 23:33
  • one shot and accurate, strange downgrading behaviour Sep 18, 2018 at 0:59

First, check "CUDA Toolkit and Compatible Driver Versions" from here, and make sure that your cuda toolkit version is compatible with your cuda-driver version, e.g. if your driver version is nvidia-390, your cuda version must lower than CUDA 9.1.
Then, back to this issue. This issue is caused by "your cuda-driver version doesn't match your cuda version, and your CUDA local version may also different from the CUDA runtime version(cuda version in some specific virtual environments)."
I met the same issue when I tried to run tensorflow-gpu under the environment of "tensorflow_gpuenv" created by conda, and tried to test whether the "gpu:0" device worked. My driver version is nvidia-390 and I've already install cuda 9.0, so it doesn't make sense that raising that weird issue. I finally found the reason that the cuda version in the conda virtual environment is cuda 9.2 which isn't compatible with nvidia-390. I solved the issue by following steps in ubuntu 18.04:

  • check cuda driver version
    ~$ nvidia-smi or ~$ cat /proc/driver/nvidia/version
  • check local cuda version
    ~$ nvcc --version or ~$ cat /usr/local/cuda/version.txt
  • check local cudnn version
    ~$ cat /usr/local/cuda/include/cudnn.h | grep CUDNN_MAJOR -A 2

  • check cuda version in virtual environment
    ~$ conda list you can see something like these :
    cudatoolkit      9.2       0
    cudnn        7.3.1      cuda9.2_0
    you may find that the cuda version in virtual environment is different from the local cuda version, and isn't compatible with driver version nvidia-390.

So reinstall cuda in the virtual environment:

  • reinstall cuda : ~$ conda install cudatoolkit=8.0
    (change the version number '8.0' to other version number which match your driver version, and your cudnn version will update automatically to match the new version cuda )
  • 1
    In cudnn version 8 I had to use cat /usr/local/cuda/include/cudnn_version.h | grep CUDNN_MAJOR -A 2 | head -3
    – iGian
    Nov 15, 2021 at 13:48

I have followed the instructions on this page, and it works for me.


First, download installer for Linux Ubuntu 16.04 x86_64.

Next, follow these steps to install Linux Ubuntu:

  1. sudo dpkg -i cuda-repo-ubuntu1604_9.2.148-1_amd64.deb

  2. sudo apt-key adv --fetch-keys http://developer.download.nvidia.com/compute/cuda/repos/ubuntu1604/x86_64/7fa2af80.pub

  3. sudo apt-get update

  4. sudo apt-get install cuda

  • This looked too simple but it certainly worked, after trying all else. Thanks Sep 5, 2018 at 5:30

I was with the same problem. I had the version nvidia-390 installed on Ubuntu 18.04.2 LTS. My Graphic card is GeForce GTX 1080, and using tensorflow 1.12.0. I successfully solved this problem by removing the old version:

sudo apt-get purge nvidia-*

And then installing the version 418

sudo apt-get install nvidia-driver-418 nvidia-settings


I got that error on Ubuntu 16.04, because I was still using the open-source X.Org video driver. The error went away when I switched to the NVIDIA binary driver.

I found the driver settings by opening the System Settings, then clicking on Software & Updates. The video drivers are on the Additional Drivers tab.


My cent,

the problem may be related to the selected GPU mode (Performance/Power Saving Mode). The Perfomance mode uses the Nvidia GPU, and the Power Saving Mode changes to the Intel Integrated GPU. When you select (using nvidia-settings utility, in the "PRIME Profiles" configurations) the Power Saving Mode (integrated Intel GPU) and you execute the deviceQuery script... you get this error:

-> CUDA driver version is insufficient for CUDA runtime version

But this error is misleading, by selecting back the Performance Mode (NVIDIA GPU) with nvidia-settings utility the problem disappears.

In my case I had not a driver version problem but I simply need to re-enable the Nvidia GPU.


P.s: The selection is available when Prime-related-stuff is installed (you need the Nvidia proprietary driver). Further details: https://askubuntu.com/questions/858030/nvidia-prime-in-nvidia-x-server-settings-in-16-04-1

  • How do I access "NVIDIA(Performance mode)" setting? When I run nvidia-settings, I don't see this option Apr 11, 2018 at 21:19
  • 1
    When in power saving mode I have three pages from nvidia-settings menu: PRIME Profiles, Application Profiles, nvidia-settings-conf; PRIME Profiles brings you to the selection switch. I'm working with Mint and I installed the proprietary driver manually. I don't know if PRIME is supported by all the mobo around, perhaps you have to install Prime-related-stuff too. here you find screenshots and few instructions about: askubuntu.com/questions/858030/… Apr 12, 2018 at 9:01
  • 1
    I updated my answer, I have forgotten that Prime was not a default feature. Apr 12, 2018 at 9:14
  • Another related question: askubuntu.com/questions/805199/… Apr 12, 2018 at 9:17
  • I have received some downvotes. Is there anything I'm overlooking here which I could address? Jan 2, 2019 at 23:14

With reference to the answer of #Fabiano-Tarlao, if you already have installed the required NVidia driver, you can select it from the Linux command-line using:

sudo prime-select nvidia


I had similar problem.I am using anaconda, after installing keras-gpu through conda, it automatically took the most recent version of cuda, which was not compatible with my system.

You can view list of installed packages in anaconda through

conda list

In my case supported version was 10.0 but anaconda installed the latest version 10.1. if this is the case, you need to reinstall cuda in anaconda enviournment with supported version.


During my experiments(Ubuntu 18.04 LTS - on Thinkpad 470s - NVIDIA GeForce 940MX), what I learned is that Table 2. CUDA Toolkit and Compatible Driver Versions from this release notes section of the website (https://docs.nvidia.com/cuda/cuda-toolkit-release-notes/index.html) is the most important information that you need to keep in mind while installing CUDA drivers.

Also, you can compare whether your NVIDIA Driver version and the table is in Sync by checking with the command


The output will look something like this for the latest

NVIDIA-SMI 450.66 Driver Version: 450.66 CUDA Version: 11.0

enter image description here

enter image description here

Once everything is in place, you can get it working by copying the samples and run them as follows,

$ cp -r /usr/src/cudnn_samples_v8/ .
$ cd cudnn_samples_v8/
$ cd mnistCUDNN/
$ make clean && make
$ ./mnistCUDNN

You'll get the results as ...

Executing: mnistCUDNN cudnnGetVersion() : 8003 , CUDNN_VERSION from cudnn.h : 8003 (8.0.3) Host compiler version : GCC 9.3.0

There are 1 CUDA capable devices on your machine : device 0 : sms 3 Capabilities 5.0, SmClock 1189.0 Mhz, MemSize (Mb) 2004, MemClock 2505.0 Mhz, Ecc=0, boardGroupID=0 Using device 0 ..........

Resulting weights from Softmax: 0.0000000 0.0000000 0.0000000 1.0000000 0.0000000 0.0000714 0.0000000 0.0000000 0.0000000 0.0000000 Loading image data/five_28x28.pgm Performing forward propagation ... Resulting weights from Softmax: 0.0000000 0.0000008 0.0000000 0.0000002 0.0000000 1.0000000 0.0000154 0.0000000 0.0000012 0.0000006

Result of classification: 1 3 5

Test passed!

I had to try at least 5-6 times before I realized the correlation between NVIDIA drivers and CUDA versions and then it all worked in the next attempt. But a very happy ending nonetheless to get it working.

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