Is there any quick command or script to check for the version of CUDA installed?

I found the manual of 4.0 under the installation directory but I'm not sure whether it is of the actual installed version or not.

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    $ nvcc --version is usually the version number of interest. – Jared Hoberock Mar 15 '12 at 22:50
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    See also: How to verify CuDNN installation? – Martin Thoma Jan 2 '17 at 12:41
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    Which OS is this question targeting? – nbro Jan 11 '18 at 0:15
  • do you think about the installed and supported runtime or the installed SDK? – Alexander Stohr May 16 '19 at 15:18
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    @JaredHoberock nvcc --version produce The program 'nvcc' is currently not installed. You can install it by typing: sudo apt install nvidia-cuda-toolkit however nvidia-smi contain CUDA Version: 10.1. – mrgloom Aug 22 '19 at 13:27

17 Answers 17


As Jared mentions in a comment, from the command line:

nvcc --version

(or /usr/local/cuda/bin/nvcc --version) gives the CUDA compiler version (which matches the toolkit version).

From application code, you can query the runtime API version with


or the driver API version with


As Daniel points out, deviceQuery is an SDK sample app that queries the above, along with device capabilities.

As others note, you can also check the contents of the version.txt using (e.g., on Mac or Linux)

cat /usr/local/cuda/version.txt

However, if there is another version of the CUDA toolkit installed other than the one symlinked from /usr/local/cuda, this may report an inaccurate version if another version is earlier in your PATH than the above, so use with caution.

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    nvcc --version should work from the Windows command prompt assuming nvcc is in your path. – harrism Jan 14 '17 at 6:06
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    in Ubuntu you may need to install nvidia-cuda-tools to make this command to work. just type sudo apt install nvidia-cuda-toolkit – Oleg Kokorin Aug 24 '17 at 11:46
  • @OlegKokorin, if you're getting this advice from terminal, it seems you haven't CUDA installed. – VeLKerr Dec 24 '17 at 19:38
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    If you can't find nvcc, it should be in /usr/local/cuda/bin/. – Rush Mar 2 '18 at 19:17
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    Upvote for cat /usr/local/cuda/version.txt. Popular method with nvcc --version works if you have nvidia-toolkit installed, however, if you have only cuda runtime, nvcc might not exist. It might be the case @RutgerHofste pointed out. E.g. (Tensorflow setup instructions do not install nvcc) – Kirill Pavlov Mar 24 '19 at 13:49

On Ubuntu Cuda V8:

$ cat /usr/local/cuda/version.txt
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    this is more versatile than harrism's answer since it doesn't require installing nvcc (which requires admin privileges) – dinosaur Dec 13 '17 at 0:46
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    Works on AWS Linux Deep Learning AMI – Rutger Hofste Feb 1 '18 at 14:38
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    using this I get "CUDA Version 8.0.61" but nvcc --version gives me "Cuda compilation tools, release 7.5, V7.5.17" do you know the reason for the missmatch? – martinako Mar 21 '18 at 15:07
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    Upvoted for being the more correct answer, my CUDA version is 9.0.176 and was nowhere mentioned in nvcc -V – Kalpit May 24 '18 at 9:41
  • I get a file not found error, but nvcc reports version 8.0. /usr/local/cuda does not exist.. – Elias Jul 17 '18 at 14:35

If you run


You should find the CUDA Version on the top right corner of the comand's output. At least I found that output for CUDA version 10.0 e.g., enter image description here

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    Looks like nvidia-smi only outputs driver version for older versions. – mrgloom Jun 14 '19 at 12:55
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    That CUDA Version display only works for driver version after 410.72. And it will display CUDA Version even when no CUDA is installed. So this information not make any sense currently. Reference: devtalk.nvidia.com/default/topic/1045528/… – Bruce Yo Sep 24 '19 at 2:48
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    This answer is incorrect, That only indicates the driver CUDA version support. It does not provide any information about which CUDA version is installed or even whether there is CUDA installed at all – talonmies Nov 10 '19 at 20:09
  • This cuda version only shows the gpu cuda capabilities and not the cuda version used for runtime api. – monti May 28 at 10:33

For CUDA version:

nvcc --version

For cuDNN version:

For Linux:

Use following to find path for cuDNN:

$ whereis cuda
cuda: /usr/local/cuda

Then use this to get version from header file,

$ cat /usr/local/cuda/include/cudnn.h | grep CUDNN_MAJOR -A 2

For Windows,

Use following to find path for cuDNN:

C:\>where cudnn*
C:\Program Files\cuDNN7\cuda\bin\cudnn64_7.dll

Then use this to dump version from header file,

type "%PROGRAMFILES%\cuDNN7\cuda\include\cudnn.h" | findstr CUDNN_MAJOR
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  • you are talking about CUDA SDK. maybe the question was on CUDA runtime and drivers - then this wont fit. (or maybe the question is about compute capability - but not sure if that is the case.) – Alexander Stohr May 16 '19 at 15:23
  • nvcc is a binary and will report its version. you can have multiple versions side to side in serparate subdirs. /usr/local/cuda is an optional symlink and its probably only present if the CUDA SDK is installed. – Alexander Stohr May 16 '19 at 15:24

On Ubuntu :


$ cat /usr/local/cuda/version.txt or $ cat /usr/local/cuda-8.0/version.txt

Sometimes the folder is named "Cuda-version".

If none of above works, try going to $ /usr/local/ And find the correct name of your Cuda folder.

Output should be similar to: CUDA Version 8.0.61

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  • thats all about CUDA SDK. its not about CUDA drivers. – Alexander Stohr May 16 '19 at 15:25

Use the following command to check CUDA installation by Conda:

conda list cudatoolkit

And the following command to check CUDNN version installed by conda:

conda list cudnn

If you want to install/update CUDA and CUDNN through CONDA, please use the following commands:

conda install -c anaconda cudatoolkit
conda install -c anaconda cudnn

Alternatively you can use following commands to check CUDA installation:



nvcc --version

If you are using tensorflow-gpu through Anaconda package (You can verify this by simply opening Python in console and check if the default python shows Anaconda, Inc. when it starts, or you can run which python and check the location), then manually installing CUDA and CUDNN will most probably not work. You will have to update through conda instead.

If you want to install CUDA, CUDNN, or tensorflow-gpu manually, you can check out the instructions here https://www.tensorflow.org/install/gpu

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If you have installed CUDA SDK, you can run "deviceQuery" to see the version of CUDA

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    For those wondering: deviceQuery is a sample program to build (Linux: run make in /usr/local/cuda/samples, then ./bin/x86_64/linux/release/deviceQuery). – Matthieu Sep 29 '17 at 14:18

You might find CUDA-Z useful, here is a quote from their Site:

"This program was born as a parody of another Z-utilities such as CPU-Z and GPU-Z. CUDA-Z shows some basic information about CUDA-enabled GPUs and GPGPUs. It works with nVIDIA Geforce, Quadro and Tesla cards, ION chipsets."


On the Support Tab there is the URL for the Source Code: http://sourceforge.net/p/cuda-z/code/ and the download is not actually an Installer but the Executable itself (no installation, so this is "quick").

This Utility provides lots of information and if you need to know how it was derived there is the Source to look at. There are other Utilities similar to this that you might search for.

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  • this is a program for the Windows platform. will it be useable from inside a script? – Alexander Stohr May 16 '19 at 15:22

One can get the cuda version by typing the following in the terminal:

$ nvcc -V

# below is the result
nvcc: NVIDIA (R) Cuda compiler driver
Copyright (c) 2005-2017 NVIDIA Corporation
Built on Fri_Nov__3_21:07:56_CDT_2017
Cuda compilation tools, release 9.1, V9.1.85

Alternatively, one can manually check for the version by first finding out the installation directory using:

$ whereis -b cuda         
cuda: /usr/local/cuda

And then cd into that directory and check for the CUDA version.

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After installing CUDA one can check the versions by: nvcc -V

I have installed both 5.0 and 5.5 so it gives

Cuda Compilation Tools,release 5.5,V5.5,0

This command works for both Windows and Ubuntu.

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Apart from the ones mentioned above, your CUDA installations path (if not changed during setup) typically contains the version number

doing a which nvcc should give the path and that will give you the version

PS: This is a quick and dirty way, the above answers are more elegant and will result in the right version with considerable effort

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  • Getting /usr/bin/nvcc. nvcc --version is the way to go. – Íhor Mé Apr 21 '17 at 13:13

First you should find where Cuda installed.

If it's a default installation like here the location should be:

for ubuntu:


in this folder you should have a file


open this file with any text editor or run:

cat version.txt

from the folder


 cat /usr/local/cuda/version.txt 
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if nvcc --version is not working for you then use cat /usr/local/cuda/version.txt

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If you are running on linux:

dpkg -l | grep cuda
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i get /usr/local - no such file or directory. Though nvcc -V gives

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
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Programmatically with the CUDA Runtime API C++ wrappers:

auto v1 = cuda::version::maximum_supported_by_driver();
auto v2 = cuda::version::runtime();

This gives you a cuda::version_t structure, which you can compare and also stream, e.g.:

if (v2 < cuda::version_t{ 8, 0 } ) {
    std::cerr << "CUDA version " << v2 << " is insufficient." std::endl;
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You can check the version of CUDA using

nvcc -V

or you can use

nvcc --version

or You can check the location of where the CUDA is using

whereis cuda 

and then do

cat location/of/cuda/you/got/from/above/command
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