I've been looking for some information on coding CUDA (the nvidia gpu language) with C#. I have seen a few of the libraries, but it seems that they would add a bit of overhead (because of the p/invokes, etc).

  • How should I go about using CUDA in my C# applications? Would it be better to code it in say C++ and compile that into a dll?
  • Would this overhead of using a wrapper kill any advantages I would get from using CUDA?
  • And are there any good examples of using CUDA with C#?

There is such a nice complete cuda 4.2 wrapper as ManagedCuda. You simply add C++ cuda project to your solution, which contains yours c# project, then you just add

call "%VS100COMNTOOLS%vsvars32.bat"
for /f %%a IN ('dir /b "$(ProjectDir)Kernels\*.cu"') do nvcc -ptx -arch sm_21 -m 64 -o "$(ProjectDir)bin\Debug\%%~na_64.ptx" "$(ProjectDir)Kernels\%%~na.cu"
for /f %%a IN ('dir /b "$(ProjectDir)Kernels\*.cu"') do nvcc -ptx -arch sm_21 -m 32 -o "$(ProjectDir)bin\Debug\%%~na.ptx" "$(ProjectDir)Kernels\%%~na.cu"

to post-build events in your c# project properties, this compiles *.ptx file and copies it in your c# project output directory.

Then you need simply create new context, load module from file, load function and work with device.

//NewContext creation
CudaContext cntxt = new  CudaContext();

//Module loading from precompiled .ptx in a project output folder
CUmodule cumodule = cntxt.LoadModule("kernel.ptx");

//_Z9addKernelPf - function name, can be found in *.ptx file
CudaKernel addWithCuda = new CudaKernel("_Z9addKernelPf", cumodule, cntxt);

//Create device array for data
CudaDeviceVariable<cData2> vec1_device = new CudaDeviceVariable<cData2>(num);            

//Create arrays with data
cData2[] vec1 = new cData2[num];

//Copy data to device

//Set grid and block dimensions                       
addWithCuda.GridDimensions = new dim3(8, 1, 1);
addWithCuda.BlockDimensions = new dim3(512, 1, 1);

//Run the kernel

//Copy data from device
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  • How much of overhead will this be? I need to call one of my CUDA kernels repeatedly in a for loop in the host code. – stephanmg May 3 '19 at 1:23
  • ManagedCuda unfortunately no longer appears to be active. – BJury Oct 15 '19 at 19:24

This has been commented on the nvidia list in the past:


it would be easy to use P/Invoke to use it in assemblies like so:

  public static extern CUResult cuMemAlloc(ref CUdeviceptr dptr, uint bytesize);
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  • I didn't realise that you could just PInvoke the CUDA calls. Shame that you need to buy into NVidia for this to work. – Prime By Design Mar 21 '17 at 10:15
  • Will this have less overhead? I think the managed CUDA version above should have overhead due to marshalling/unmarshalling of the data? – stephanmg May 3 '19 at 1:24

I guess Hybridizer, explained here as a blog post on Nvidia is also worth to mention. Here is its related GitHub repo it seems.

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There are several alternatives you can use to use CUDA in your C# applications.

  • Write a C++/CUDA library in a separate project, and use P/Invoke. The overhead of P/invokes over native calls will likely be negligible.
  • Use a CUDA wrapper such as ManagedCuda(which will expose entire CUDA API). You won't have to write your DLLImports by hand for the entire CUDA runtime API (which is convenient). Unfortunely, you will still have to write your own CUDA code in a separate project.
  • (recommended) You can use free/opensource/proprietary compilers (which will generate cuda (either source or binary) from your c# code.

You can find several of them online : have a look at this answer for example.

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  • Good options but I just want to point out that sometime you can't use a different or proprietary compiler. – stephanmg May 4 '19 at 0:13

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