How to compile Deep learning Neural Network function?
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MathWorks Support Team
on 13 Dec 2017
Edited: MathWorks Support Team
on 26 May 2023
I am trying to create an executable with MATLAB compiler for neural network toolbox example here:
I get this error:
error: some functionality cannot be deployed
Accepted Answer
MathWorks Support Team
on 26 May 2023
Edited: MathWorks Support Team
on 26 May 2023
Starting R2016b MATLAB release:
You should be able to compile 'trainNetwork' and most command line functions (from both classical and deep learning networks) starting in R2016b.
Functions that cannot be compiled include the deep learning training "plot" function and all user interfaces.
Please refer the 'Neural Network Toolbox' product in this link for information on this:
Prior to R2016b release:
You can only compile a pre-trained network and use classify function to classify the test data.
So in order to compile the doc example below,
in releases prior to R2016b, please follow the steps below:
1. Run the example code in MATLAB
2. This will create the 'convnet' struct variable in your workspace. This is the pretrained network object. Save this to a mat file like below:
save 'model.mat' convnet
3. Also save the testImageData variable in the workspace to a mat file:
save 'testDigitData.mat' testDigitData
4. Then you can create a MATLAB function like below to be compiled into an executable that used the pretrained network to classify the test data.
function accuracy = runModelFromMATLAB()
load('model.mat');
load('testDigitData.mat')
YTest = classify(convnet,testDigitData);
TTest = testDigitData.Labels;
accuracy = sum(YTest == TTest)/numel(TTest)
end
5. Then create executable for this function with MATLAB compiler
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