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QLoRA vs LoRA: Which Fine‑Tuning Wins?
Watch: LoRA & QLoRA Fine-tuning Explained In-Depth by Mark Hennings QLoRA and LoRA are two parameter-efficient methods for fine-tuning large language models (LLMs), each balancing performance, resource usage, and implementation complexity. Below is a structured comparison table and analysis to help you choose the right technique for your use case. Fine-tuning large language models (LLMs) has become a cornerstone of modern AI development, as mentioned in the section. QLoRA combines quantization (reducing weights to 4-bit precision) with low-rank adaptation (adding trainable matrices to frozen layers) . This makes it ideal for resource-constrained environments, such as deploying models on consumer GPUs or edge devices. For example, a Mistral-7B QLoRA fine-tune runs on an RTX 4060 with ~15 GB VRAM, whereas a full fine-tune might need 96 GB .