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Fine‑Tune LLMs for Enterprise AI: QLoRA and P‑Tuning v2
Fine-tuning large language models (LLMs) for enterprise use cases requires balancing performance, cost, and implementation complexity. Two leading methods QLoRA (quantized LoRA) and P-Tuning v2 offer distinct advantages depending on your goals. Below is a comparison table summarizing key metrics, followed by highlights on their implementation, benefits, and time-to-value. Both QLoRA and P-Tuning v2 reduce the computational burden of fine-tuning, but their use cases differ: Time and effort estimates vary: