slow training on single gpu
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hey, i'm trying to train inception v3 on single gpu. it takes about 21 hours for 20,000 iteration. it takes more than an hour for 1000 iteration of 32 images in a minibatch. caffe and tensorflow are 10 times faster on the same computer. in caffe it takes 7 minutes for 1000 iterations. how can i improve the training on matlab? Thanks
2 Comments
Walter Roberson
on 21 Apr 2018
... install a faster GPU, perhaps with more memory?
There can be big performance differences between different GPUs, especially if double precision is being used. A higher GPU clock rate does not necessarily mean that it will be the best for double precision: some GPUs have special double precision units that speed processing up a lot.
tomer cz
on 22 Apr 2018
Answers (1)
Joss Knight
on 28 Apr 2018
0 votes
Upgrade MATLAB with each new release, we are making big performance improvements all the time.
4 Comments
Chris P
on 17 Aug 2020
Only certain matalb versions can be used with particular CUDA toolkits though
Joss Knight
on 17 Aug 2020
MATLAB has its own copies of the CUDA libraries, so the toolkit you install is irrelevant unless you are compiling your own CUDA code.
Walter Roberson
on 19 Aug 2020
I think maybe the point is that newer CUDA toolkits do not support some of the older architectures, and newer MATLAB versions do not support older CUDA toolkits.
Joss Knight
on 19 Aug 2020
The only dependency is the driver and the MATLAB version, since MATLAB carries the toolkit with it and it makes no difference what toolkit you install. Maybe that's what you're saying.
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