Could I use Convolutional Neural Network in Neural Network toolbox with GPU card of capabilty less than 3.0
2 views (last 30 days)
Show older comments
Serghei Malkov
on 12 May 2016
Commented: Chan Yao Jun
on 30 Jul 2016
Image Category Classification Using Deep Learning example did not work with my Quadro 4000 card. It required GPU card with CUDA 3.0 or higher. Is it possible to adjust the code to use GPU card with lower capability?
0 Comments
Accepted Answer
Ben Tordoff
on 12 May 2016
Hi Serghei, I'm afraid the answer is no. Neural Network Toolbox uses NVIDIA's cuDNN library for running Convolutional Neural Networks on the GPU and this library has always required a device with compute capability 3.0 or higher. As you have discovered, the Quadro 4000 is compute capability 2.0. Nearly all NVIDIA GPUs released since mid-2012 have compute capability 3.0 or higher.
2 Comments
RoiD
on 21 May 2016
Hi, I'm also facing the same problem, I want to use trained-convNets as a feature extractor. Is there any possibilty to use Matlab toolbox with an older GPUs? or even running it on CPU instead?
(There is no need for extensive computational power unless you train a network from scratch)
-R
Chan Yao Jun
on 30 Jul 2016
Hi, im facing the similar problem. The GPU in my laptop is GT540M and it has a compute capability of 2.1 only. Is there any other possible ways to run Convolutional Neural Networks in my laptop?
Thanks.
More Answers (0)
See Also
Categories
Find more on Image Data Workflows in Help Center and File Exchange
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!