fmincon running on GPU
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CSCh
am 7 Dez. 2021
Kommentiert: Walter Roberson
am 22 Jul. 2024
Hi
I implemented a modified copy of this example.
I tried to run it on GPU
but if I try to convert the inputs (dlR,..) from alarrays to gpuarray's, I got the error
objFun = @(parameters) objectiveFunction(parameters,dlR,dlTheta,dlT,dlR0,dlTheta0,dlT0,dlUr0,parameterNames,parameterSizes);
"FMINCON requires all values returned by functions to be of data type double."
So how can I run this example with GPU power?
Best regards,
Chris
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Walter Roberson
am 2 Feb. 2022
objFun = @(parameters) objectiveFunction(parameters,dlR,dlTheta,dlT,dlR0,dlTheta0,dlT0,dlUr0,parameterNames,parameterSizes);
That is fine in itself, and if you want, any or all of the values such as dl* variables can be gpuArray --- however, the value passed by fmincon, received here as parameters will never be gpuArray .
Inside objectiveFunction you can unpack parameters as needed into individual variables, potentially constructing gpuArray objects as needed.
Then you can do whatever calculation is appropriate.
When you get an appropriate place in the calculation, gather() the gpuArray calculations. The resulting output will not be gpuArray.
The final output from objectiveFunction must not be gpuArray .
If your logic is suitable, it would be perfectly fine to code something like
cost = gather(cost);
at the end of your code -- though it would be more efficient to use different variable names so that you are not changing the type of the variable
cost_non_gpu = gather(cost); %with the function having been defined as returning cost_non_gpu
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Walter Roberson
am 3 Feb. 2022
Unfortunately at present fmincon() does not support vectorization; my point about vectorization is that if Mathwrks were looking to improve performance for fmincon, it would make more sense for Mathworks to start with permitting vectorization than it would for Mathworks to start by trying to permit the selection logic (of whether the location improved the fit) to be executed on the GPU. A GPU-improved fmincon would call for a redesign of the fmincon internals rather than for simply adding gpuArray to the list of types the code permits to be returned.
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Shivam Singh
am 2 Feb. 2022
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Walter Roberson
am 22 Jul. 2024
I doubt it. My logic at https://www.mathworks.com/matlabcentral/answers/1605350-fmincon-running-on-gpu#comment_1967900 still holds
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