{
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  "path": "/t/how-can-developers-fine-tune-large-language-models-efficiently-on-hugging-face/176094#post_2",
  "publishedAt": "2026-05-19T17:32:32.000Z",
  "site": "https://discuss.huggingface.co",
  "textContent": "Pick a solid base model, prepare a clean dataset for your use case, train a LoRA adapter, then evaluate the outputs before deploying. So, I’d start with LoRA fine-tuning using Hugging Face PEFT.",
  "title": "How can developers fine-tune large language models efficiently on Hugging Face?"
}