RTX 3090 vs A100 in deep learning.

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지환 오
지환 오 el 4 de Mayo de 2022
Comentada: Joss Knight el 10 de Mayo de 2022
I ran ResNet on RTX 3090 and A100
Performance is better in RTX 3090 about 1.2 times than A100
I searched and found out that GPU Coder helps use TensorCore
So, I want to be sure if I use GPU Coder, A100's performance is going to better before I purchasing GPU Coder
Thanks.

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Joss Knight
Joss Knight el 6 de Mayo de 2022
According to the spec as documented on Wikipedia, the RTX 3090 has about 2x the maximum speed at single precision than the A100, so I would expect it to be faster. The A100 is much faster in double precision than the GeForce card.
Both will be using Tensor Cores for deep learning in MATLAB.
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Kyle Lee
Kyle Lee el 10 de Mayo de 2022
For understanding, I ask you to confirm.
Then, If other models like Alexnet, Googlenet etc.. are used , do these models automatically use Tensor Core?
Joss Knight
Joss Knight el 10 de Mayo de 2022
Yes.

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David Willingham
David Willingham el 4 de Mayo de 2022
Hi,
What version of MATLAB did you test ResNet out on? I'd recommend running benchmarks on the latest version of MATLAB.
Was it for inference or training?
AS an FYI, you can contact MathWorks and receive a trial of GPU Coder to test out the performance first hand.

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