I did two experiments involving Matlab, Neural Networks, and two very different PCs. The second one (the better), has two CUDA GPU cards, so I expected that it's speed be higher a lot but contradictory the time to finish the same task as the first PC is 8 times more. I would like to know where I did the mistake. I would like to know how I can take advantage of those 2 CUDA GPU cards, because if I can't then I waste the money I invested on that computer. How can I modify that second code to be faster?. The Matlab version I used is: R2013a. Below you have two codes that you can run like that because they use a Matlab built-in dataset: house_dataset.

Thank you very much for your help!

**Computer 1:**

Specifications:

Laptop PC. Intel(R) Core(TM) i5-2430M CPU @ 2.40GHZ (4 Cores). RAM: 4GB

OS: Window 7

**Script: test_script_NO_gpu_cuda**

```
clear all;
countTests = 200;
performances = zeros(1, countTests);
[x, t] = house_dataset;
tStart = tic;
for i = 1 : countTests,
net = fitnet(10);
net.trainFcn = 'trainscg';
net.trainParam.showWindow = false;
net = train(net, x, t, 'useParallel', 'yes', 'useGPU', 'only');
y = net(x);
per = perform(net, t, y);
performances(i) = per;
end
elapsedTime = toc(tStart);
display(sprintf('Average performance: %.1f', mean(performances)));
display(sprintf('Elapsed time: %.1f seconds', elapsedTime));
```

>> **test_script_NO_gpu_cuda**

Average performance: 17.4

Elapsed time: 47.8 seconds

**Computer 2:**

Specifications:

Desktop PC. Two GPU of the same type: NVIDIA Teslaâ„˘ M2050 (448 cuda cores each one). RAM: 22 GB
OS: Ubuntu 12.04 LTS

**Script: test_script_YES_gpu_cuda**

```
clear all;
matlabpool open
countTests = 200;
performances = zeros(1, countTests);
[x, t] = house_dataset;
tStart = tic;
for i = 1 : countTests,
net = fitnet(10);
net.trainFcn = 'trainscg';
net.trainParam.showWindow = false;
net = train(net, x, t, 'useParallel', 'yes', 'useGPU', 'only');
y = net(x);
per = perform(net, t, y);
performances(i) = per;
end
elapsedTime = toc(tStart);
matlabpool close
display(sprintf('Average performance: %.1f', mean(performances)));
display(sprintf('Elapsed time: %.1f seconds', elapsedTime));
```

>> **test_script_YES_gpu_cuda**

Starting matlabpool using the 'local' profile ... connected to 8 workers.

Sending a stop signal to all the workers ... stopped.

Average performance: 18.7

Elapsed time: 373.9 seconds

`train`

with`showResources`

set to`yes`

? That should show you whether the training was actually taking advantage of the MATLAB workers and/or GPUs. See the last section of mathworks.co.uk/help/nnet/ug/parallel-and-gpu-computing.html – Sam Roberts Sep 2 '13 at 9:03