How to compute integrals on the GPU using trapz function

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启渊 赵
启渊 赵 el 7 de Mzo. de 2024
Comentada: 启渊 赵 el 10 de Mzo. de 2024
Hi,
I am a student in the college, and I want to use GPU to accelerate the calculation of integrals.
% Declare the parameters used below
M
p1
p2
p3
k = 2*pi*n2/lambda;
alpha = asin(NA/n2);
u = 4*k*(p3*1)*(sin(alpha/2)^2);
Koi = M/((f*lambda)^2)*exp(-1i*u/(4*(sin(alpha/2)^2)));
theta_gpu = gpuArray.linspace(0,alpha,N);
theta_stepsize = alpha /N ;
% x_triu_gpu and y_triu_gpu are both n*n matrix.
gd = gpuDevice();
patternA = arrayfun(@myFun,x_triu_gpu,y_triu_gpu);
wait(gd)
function element = myFun(x,y)
xL2normsq = (((x+M*p1)^2+(y+M*p2)^2)^0.5)/M;
v = k*xL2normsq*sin(alpha);
%theta = 0: alpha/N :alpha;
%theta_gpu = gpuArray(theta);
function Y = intgrand(theta)
Y = (sqrt(cos(theta))) .* (1+cos(theta)) .* (exp((1i*u/2)* (sin(theta/2).^2) / (sin(alpha/2)^2))) .* (besselj(0, sin(theta)/sin(alpha)*v)) .* (sin(theta));
end
% intgrand = @(theta) (sqrt(cos(theta))) .* (1+cos(theta)) .* (exp((1i*u/2)* (sin(theta/2).^2) / (sin(alpha/2)^2))) .* (besselj(0, sin(theta)/sin(alpha)*v)) .* (sin(theta));
%Y = arrayfun(@intgrand,theta_gpu);
Y = intgrand(theta_gpu);
I0 = trapz(Y) .* theta_stepsize;
%I0 = integral(@(theta)intgrand (theta),0,alpha);
element = Koi*I0;
end
I checked that the trapz function supports GPU arrays. But when the program is running, I get the following Error,
Function passed as first input argument contains unsupported or unknown function 'trapz'.
For more information see Tips.
Error in 'Obj_and_TL_propagating_GPU' (line: 40)
My code works when I use normal variables (not gpuArray), but it takes a lot of time. Should I use another integral function?
  3 comentarios
启渊 赵
启渊 赵 el 8 de Mzo. de 2024
Editada: 启渊 赵 el 8 de Mzo. de 2024
Thanks very much for all comments!
I will give all input values, and l am looking forward to reply.
p1 = [0];
p2 = [0];
p3 = [0];
lambda=1.064;
M = 100;
n2=1.518;
f=1800;
NA=1.4;
N = 10^4;
PixelSize = 6.5;
PixelNum = 1024;
OSR = 3;
k = 2*pi*n2/lambda;
alpha = asin(NA/n2);
u = 4*k*(p3*1)*(sin(alpha/2)^2);
Koi = M/((f*lambda)^2)*exp(-1i*u/(4*(sin(alpha/2)^2)));
theta_gpu = gpuArray.linspace(0,alpha,N);
theta_stepsize = alpha /N ;
x_CCD =linspace(-PixelNum/2*OSR,PixelNum/2*OSR,PixelNum*OSR)*(PixelSize/OSR); %spatial axis shifted by m0. % 考虑到一定的采样率
x1 = x_CCD;
x2 = x_CCD;
x1length = length(x1);
x2length = length(x2);
xx = repmat(x1',1,x1length);
yy = repmat(x2,x2length,1);
x_triu_gpu = gpuArray(xx);
y_triu_gpu = gpuArray(yy);
gd = gpuDevice();
patternA = arrayfun(@myFun,x_triu_gpu,y_triu_gpu);
wait(gd)
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Function handles that will be used
function element = myFun(x,y)
xL2normsq = (((x+M*p1)^2+(y+M*p2)^2)^0.5)/M;
v = k*xL2normsq*sin(alpha);
function Y = intgrand(theta)
Y = (sqrt(cos(theta))) .* (1+cos(theta)) .* (exp((1i*u/2)* (sin(theta/2).^2) / (sin(alpha/2)^2))) .* (besselj(0, sin(theta)/sin(alpha)*v)) .* (sin(theta));
end
% intgrand = @(theta) (sqrt(cos(theta))) .* (1+cos(theta)) .* (exp((1i*u/2)* (sin(theta/2).^2) / (sin(alpha/2)^2))) .* (besselj(0, sin(theta)/sin(alpha)*v)) .* (sin(theta));
%Y = arrayfun(@intgrand,theta_gpu);
Y = intgrand(theta_gpu);
I0 = trapz(Y) .* theta_stepsize;
%I0 = integral(@(theta)intgrand (theta),0,alpha);
element = Koi*I0;
end
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
And my device has a working GPU, with the GPU info following. Is the data I entered too large, such as x_triu_gpu and y_triu_gpu?
gd =
CUDADevice - 属性:
Name: 'NVIDIA T600'
Index: 1
ComputeCapability: '7.5'
SupportsDouble: 1
DriverVersion: 12.2000
ToolkitVersion: 11
MaxThreadsPerBlock: 1024
MaxShmemPerBlock: 49152
MaxThreadBlockSize: [1024 1024 64]
MaxGridSize: [2.1475e+09 65535 65535]
SIMDWidth: 32
TotalMemory: 4.2946e+09
AvailableMemory: 3.1509e+09
MultiprocessorCount: 10
ClockRateKHz: 1335000
ComputeMode: 'Default'
GPUOverlapsTransfers: 1
KernelExecutionTimeout: 1
CanMapHostMemory: 1
DeviceSupported: 1
DeviceAvailable: 1
DeviceSelected: 1

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Respuesta aceptada

Matt J
Matt J el 9 de Mzo. de 2024
Editada: Matt J el 9 de Mzo. de 2024
You cannot use trapz within gpuArray.arrayfun, but I don't think you really need it. On my computer, the following takes about 30 min. My GPU isn't particularly fast.
function runIt
p1 = 0;
p2 = 0;
p3 = 0;
lambda=1.064;
M = 100;
n2=1.518;
f=1800;
NA=1.4;
N = 10^4;
PixelSize = 6.5;
PixelNum = 1024;
OSR = 3;
k = 2*pi*n2/lambda;
alpha = asin(NA/n2);
u = 4*k*(p3*1)*(sin(alpha/2)^2);
Koi = M/((f*lambda)^2)*exp(-1i*u/(4*(sin(alpha/2)^2)));
theta_stepsize = alpha /N ;
x_CCD =linspace(-PixelNum/2*OSR,PixelNum/2*OSR,PixelNum*OSR)*(PixelSize/OSR); %spatial axis shifted by m0. % 考虑到一定的采样率
theta = reshape(gpuArray.linspace(0,alpha,N),1,1,[]);
x = gpuArray(x_CCD')+M*p1;
y = gpuArray(x_CCD) +M*p2;
Nrows=numel(x);
Ncols=numel(y);
patternA=gpuArray.nan(Nrows,Ncols);
gd = gpuDevice();
tic
for j=1:Ncols
patternA(:,j) = myFun(y(j));
end
patternA=patternA*(Koi*theta_stepsize);
wait(gd)
toc
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
% Function handles that will be used
function element = myFun(y)
v = hypot( x, y).*(k.*sin(alpha)/M);
Y = (sqrt(cos(theta))) .* (1+cos(theta)) .* (exp((1i*u/2)* (sin(theta/2).^2) ./ (sin(alpha/2).^2)))...
.* (besselj(0, sin(theta)./sin(alpha).*v)) .* (sin(theta));
element = trapz(Y,3);
end
end
  4 comentarios
启渊 赵
启渊 赵 el 10 de Mzo. de 2024
So how should I speed up the integration operation for such a big data? Or rather, it simply cannot be accelerated?
Thank you again and I'm looking forward to your help. 🙏
启渊 赵
启渊 赵 el 10 de Mzo. de 2024
I've been thinking about the above again and think I can use the CPU parallel pool for acceleration. GPUs may not be suitable for such complex operations. May I ask if I am right?

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