
I’m sharing the exact notebook I use so you can replicate the full pipeline: load DeepSeek R1 distilled, apply LoRA, run SFT, and export to Ollama. If you want a working baseline you can modify for your own dataset, this is the fastest way to get there. I prefer shipping code because fine-tuning details matter, and small mistakes can waste hours.
You'll be taken to Github to complete your purchase.
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