Fixing the Colab memory issue and llama.cpp/quantize script problem on CUDA #46
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Hi all,
Before I start to explain my pr, wanted to thank Maxime Labonne for this valuable content. I have been working on sources on the repository and liked each of them.
After trying to use AUTOGGUF repo, I faced with multiple problems such as Google Colab memory issue and llama.cpp/quantize script problem with CUDA version. I fixed both problems on the ".ipynb" file I uploaded below with adding related markdown explanations. If you directly merge it with the main repo, you'll notice that only 4-5 rows are added into jupyter notebook.
Hope that I can contribute such amazing repository as much as I can!