Section 01
[Introduction] Unsloth Fine-tuning Practice: Low-Cost Enhancement of LLM Reasoning and Decision-Making Capabilities
This project shows how to use the Unsloth framework for parameter-efficient fine-tuning of large language models. While keeping computational costs manageable, it significantly improves the model's reasoning, instruction-following, and decision-making capabilities, solving the problems of high cost and high hardware requirements in traditional full-parameter fine-tuning, and providing a feasible solution for small and medium teams and researchers.