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LLM Fine-Tuning Cost Calculator

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专业提示

Before committing to a full fine-tuning project, run a quick experiment with just 20 to 30 examples. If the fine-tuned model shows measurable improvement on your test set with this small dataset, it indicates fine-tuning is a viable strategy for your task. If 30 examples show no improvement, adding more data is unlikely to help, and you should investigate whether the base model capability is sufficient or if the task definition needs refinement.

难度:高级

你知道吗?

The compute cost to fine-tune GPT-4o-mini on 100 high-quality examples is approximately $0.24, less than the cost of a single gumball from a vending machine. The real expense is always the human expertise needed to create those 100 examples, which typically costs 500 to 2,000 times more than the compute. This makes fine-tuning one of the most human-labor-intensive AI techniques despite having trivial compute costs.

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Reviewed May 2026
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