Using a "CUDAKernel" type object within a parfor loop
5 views (last 30 days)
Show older comments
Joseph DeCunha
on 21 Jun 2023
Commented: Joss Knight
on 23 Jun 2023
Hello,
Thanks in advance for your help.
I'm trying to make use of a CUDAKernel object from within a parfor loop, but when I do so I am met with the message:
Warning: Cannot load an object of class 'CUDAKernel':
No matching constructor signature found.
> In parallel.internal.pool.optionallyDeserialize (line 7)
In parallel.internal.parfor.cppRemoteParallelFunction (line 25)
As a workaround for this issue, I have tried passing in a string which contains the name of the kernel as follows:
cudaKernel = parallel.gpu.CUDAKernel(cudaKernelName+".ptx", cudaKernelName+".cu");
However, directly constructing the kernel in each iteration of the for loop greatly reduces performance.
I am wondering, is there any efficient way that I can pass an existing CUDAKernel object into a parfor loop?
Joseph
0 Comments
Accepted Answer
Joss Knight
on 22 Jun 2023
A CUDAKernel object cannot be serialized, as you've found, so you will need to construct it separately on each worker. However, you can do this efficiently using parallel.pool.Constant:
kernelConst = parallel.pool.Constant(@()parallel.gpu.CUDAKernel(cudaKernelName+".ptx", cudaKernelName+".cu"));
Then inside the parfor you access the object using kernelConst.Value:
parfor idx = 1:numIterations
% ...
feval(kernelConst.Value, args, etc);
end
This efficiently constructs the object on each worker just once.
Note that if you don't have a multi-GPU setup, the execution of your kernel object will be serialized anyway, which means the kernels on each worker will not be running at the same time.
3 Comments
More Answers (1)
Aditya Singh
on 22 Jun 2023
Edited: Aditya Singh
on 22 Jun 2023
Hello Joseph,
As per my understanding, you are facing an issue in using CUDAKernel in parfor loop, so you tried a workaround. But in this approach, you are making a kernel instance each time, which you want to avoid.
The workaround for not having to create a kernel every time is to utilize a pre-compiled kernel. This approach assumes that the kernel code undergoes minimal modifications with each iteration.
Suppose that you have a CUDA kernel called `vectorAddKernel` that adds two vectors of size `n` and writes the result to a third vector of the same size. The kernel code is presented below:
% Define the kernel source code with placeholders for input parameters
kernelSource = ['#include <cuda.h>\n' ...
'template <int n>\n' ...
'extern "C" __global__ void vectorAddKernel(float* A, float* B, float* C)\n'
'{\n' ...
' int i = threadIdx.x + blockDim.x * blockIdx.x;\n' ...
' if (i < n) {\n' ...
' C[i] = A[i] + B[i];\n' ...
' }\n' ...
'}'];
% Define the kernel parameters
n = 1024;
numIterations = 10;
% Compile the templated kernel code to PTX code using nvcc and then load
% the file
kernelPTX = fileread('vectorAddKernel.ptx');
compiledKernel = parallel.gpu.CUDAKernel(kernelPTX, 'vectorAddKernel');
% Inside the parfor loop, call the compiled kernel with the necessary arguments
parfor idx = 1:numIterations
% Call kernel with arguments
blockSize = [256,1,1]; % block size
gridSize = [ceil(n/256),1,1]; % grid size
output{idx} = zeros(n, 1, 'single', 'gpuArray');
feval(compiledKernel, blockSize, gridSize, {gpuArray(single(rand(n, 1))), gpuArray(single(rand(n, 1))), output{idx}});
end
For reference, kindly see:
- Kernel executable on GPU - MATLAB - MathWorks India
- Decide When to Use parfor - MATLAB & Simulink - MathWorks India
- Nested parfor and for-Loops and Other parfor Requirements - MATLAB & Simulink - MathWorks India
Hope this helps!
4 Comments
Joss Knight
on 22 Jun 2023
You can directly compile to PTX from MATLAB using mexcuda with the -ptx option. You should probably add that (and check that the code runs).
See Also
Categories
Find more on GPU Computing in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!