# Fine tune with Pytorch > Use Pytorch to fine-tune models locally ## Table of Contents - [Overview](#overview) - [Instructions](#instructions) --- ## Overview ## Basic Idea This playbook guides you through setting up and using Pytorch for fine-tuning large language models on NVIDIA Spark devices. ## What you'll accomplish You'll establish a complete fine-tuning environment for large language models (1-70B parameters) on your NVIDIA Spark device. By the end, you'll have a working installation that supports parameter-efficient fine-tuning (PEFT) and supervised fine-tuning (SFT) ## What to know before starting ## Prerequisites recipes are specifically for DIGITS SPARK. Please make sure that OS and drivers are latest. ## Ancillary files ALl files required for finetuning are included. ## Time & risk **Time estimate:** 30-45 mins for setup and runing finetuning. Finetuning run time varies depending on model size **Risks:** Model downloads can be large (several GB), ARM64 package compatibility issues may require troubleshooting. **Rollback:** ## Instructions ## Step 1. Pull the latest Pytorch container ```bash docker pull nvcr.io/nvidia/pytorch:25.09-py3 ``` ## Step 2. Launch Docker ```bash docker run --gpus all -it --rm --ipc=host \ -v $HOME/.cache/huggingface:/root/.cache/huggingface \ -v ${PWD}:/workspace -w /workspace \ nvcr.io/nvidia/pytorch:25.09-py3 ``` ## Step 3. Install dependencies inside the contianer ```bash pip install transformers peft datasets "trl==0.19.1" "bitsandbytes==0.48" ``` ## Step 4: authenticate with huggingface ```bash huggingface-cli login ## ``` To run LoRA on Llama3 use the following command: ```bash python Llama3_8B_LoRA_finetuning.py ``` To run qLoRA finetuning on llama3-70B use the following command: ```bash python Llama3_70B_qLoRA_finetuning.py ``` To run full finetuning on llama3-3B use the following command: ```bash python Llama3_3B_full_finetuning.py ```