Standalone Compiler gpuArray RTX 4090 CUDA 12.0
Ältere Kommentare anzeigen
Hi,
got a new ML machine with an NVIDIA RTX 4090. I have tried to run a quick benchmark written on my own as a compiled standalone application. What I have done:
- Use another machine to compile my code as an app via Compiler Toolbox (R2022b)
- Installed this on the new machine with the RTX 4090 including newest MCR
- Test GPU gets recognized by the app using gpuDeviceTable - works
- Try a simple feedforward network training with GPU - works
- Try my own implementation of some code with gpuArrays - failed (see below)

Is the latest MCR not compatabile with the new RTX 4090 in some parts of functions (as here with pinv)?
5 Kommentare
Joss Knight
am 17 Dez. 2022
This looks like a bug - either with MATLAB or more likely CUDA. You should raise a support ticket.
In the meantime
- Make sure you have the latest graphics driver
- Make sure your device is not low on memory when pinv is called. Write a toy version which only calls pinv and uses small arrays.
- Reimplement avoiding cuSolver. Can your code use backslash instead? pinvA = A\eye(size(A,1))
patmen346
am 19 Dez. 2022
Joss Knight
am 19 Dez. 2022
Awesome. Can you give me an example matrix that errors? Also, can you only reproduce this with the MCR or does it also happen when running MATLAB?
Unfortunately I don't have an Ada card right now but I can certainly ask NVIDIA to look into it.
Joss Knight
am 19 Dez. 2022
By the way, what I gave you was actually inv. If A is rectangular or singular you want pinvA = (A'*A)\(A'*eye(size(A,1));
Joss Knight
am 19 Dez. 2022
Antworten (0)
Kategorien
Mehr zu Get Started with GPU Coder finden Sie in Hilfe-Center und File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!