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    <managingEditor>17691281867@163.com (Wenzhuo Huang)</managingEditor>
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      <title>Unsloth 高效微调实战：单卡 QLoRA 的极致性能与内部原理</title>
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      <author>17691281867@163.com (Wenzhuo Huang)</author>
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      <description>Unsloth 用手写 Triton kernel 把单卡 LoRA 微调速度和显存压到极致。本文讲清 Unsloth 的原理、和 LLaMA Factory/TRL 的组合用法，以及真实使用的坑。</description>
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      <title>LLM 微调入门：LoRA 让大模型适配私有场景</title>
      <link>https://socake.github.io/posts/llm-finetuning-lora-practice/</link>
      <pubDate>Wed, 14 Jan 2026 09:56:00 +0800</pubDate>
      <author>17691281867@163.com (Wenzhuo Huang)</author>
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      <description>什么时候该微调、什么时候该用提示工程？本文给出决策框架，然后用Unsloth+QLoRA实战微调Qwen2.5-7B，覆盖数据格式、训练监控、权重合并、部署到vLLM测试，以及10个真实踩坑记录。</description>
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