I know the exact reason TensorRT uses too much memory. They programmatically generated an exhaustive number of tensor operations ( really matrix transforms) at compile time.
This is also the case for Google's Tensorflow. When you build it, the compile log looks like fucking ATLAS.
part of my reasoning is that when you profile in nvvp you can see the symbols, and the name of the functions resembles my hypothesis
Prediction, in the next few years, a every machine will have 2 GB of RAM dedicated to AI.
So, we need to make something like a DLL optimizer that recognizing code overlap between similar DLLs. So, that when you're running different versions of Electron or this CUDA stuff, there will be some memory savings.
Also I can stupid without realising it - I have been press the top of shampoo and conditioner bottles same amount of times, subconsciously thinking I am getting the same amount of shampoo and conditioner from the bottles. But I did not realise that because viscosity of shampoo and conditioners are different, I am getting different amount of shampoo and conditioner from the bottles by pressing same amount of times. Such simple mistake.
That's fun too. If only we had a build system that could correctly track dependencies.
> error: C2797: 'ChainException::werror_message': list initialization inside member initializer list or non-static data member initializer is not implemented
Also -fdiagnostics-color=always is one of the most satisfying compiler flags I've used. If only Qt Creator would not be garbage and use forkpty to make that work without hacks.
If you have an array with 5 dimensions, each 1000 large, that's about 900 terrabyte times the size of your elements. No surprise that allocation failed. — François Andrieux28 mins ago