I prefer ROCM:
R -
O -
C -
M -- Fuck me, it didn’t work again
I program 2-3 layers above (Tensorflow) and those words reverberate all the way up.
I program and those words reverberate.
I reverberate.
be.
Recently, I’ve just given up trying to use cuda for machine learning. Instead, I’ve been using (relatively) cpu intensive activation functions & architecture to make up the difference. It hasn’t worked, but I can at least consistently inch forward.
Oh cool I got the wrong nvidia driver installed. Guess I’ll reinstall linux 🙃
Yum downgrade.
Related to D: today vscode released an update that made it so you can’t use the remote tools with Ubuntu 18.04 (which is supported with security updates until 2028) 🥴 the only fix is to downgrade
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For sure, I’m on the latest LTS! The problem here is that the remote ssh tools don’t work on older servers either, so you can no longer use the same workflow you had yesterday if you’re trying to connect to an 18.04 Ubuntu server
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Maybe because of the privilege escalation that was just found in glibc?
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Yeah. Fuck stable dev platforms, amirite?
You can cure yourself of that shiny-things addiction, but you have to go attend the meetings yourself.
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Some numbnut pushed nvidia driver code with compilation errors and now I have to use an old Kernel until it’s fixed
Nvidia: I have altered the deal, pray I do not alter it further.
Not a hot dog.
I’ve been working with CUDA for 10 years and I don’t feel it’s that bad…
I started working with CUDA at version 3 (so maybe around 2010?) and it was definitely more than rough around the edges at that time. Nah, honestly, it was a nightmare - I discovered bugs and deviations from the documented behavior on a daily basis. That kept up for a few releases, although I’ll mention that NVIDIA was/is really motivated to push CUDA for general purpose computing and thus the support was top notch - still was in no way pleasant to work with.
That being said, our previous implementation was using OpenGL and did in fact produce computational results as a byproduct of rendering noise on a lab screen, so there’s that.
I don’t know wtf cuda is, but the sentiment is pretty universal: please just fucking work I want to kill myself
Cuda turns a gpu in to a very fast cpu for specific operations. It won’t replace the cpu, just assist it.
Graphics are just maths. Plenty of operations for display the beautiful 3d models with the beautiful lights and shadows and shines.
Those maths used for display 3d, can be used for calculate other stuffs, like chatgpt’s engine.
Pretty much the exact reason containerized environments were created.
Yep, I usually make docker environments for cuda workloads because of these things. Much more reliable
You can’t run a different Nvidia driver in a container though
When you hit that config need the next step is light weight VM + pcie passthru.
I don’t know what any of this means, upvoted everything anyway.
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