# Unsloth on DGX Spark > Optimized fine-tuning with Unsloth ## Table of Contents - [Overview](#overview) - [Instructions](#instructions) --- ## Overview ## Basic idea - **Performance-first**: It claims to speed up training (e.g. 2× faster on single GPU, up to 30× in multi-GPU setups) and reduce memory usage compared to standard methods. - **Kernel-level optimizations**: Core compute is built with custom kernels (e.g. with Triton) and hand-optimized math to boost throughput and efficiency. - **Quantization & model formats**: Supports dynamic quantization (4-bit, 16-bit) and GGUF formats to reduce footprint, while aiming to retain accuracy. - **Broad model support**: Works with many LLMs (LLaMA, Mistral, Qwen, DeepSeek, etc.) and allows training, fine-tuning, exporting to formats like Ollama, vLLM, GGUF, Hugging Face. - **Simplified interface**: Provides easy-to-use notebooks and tools so users can fine-tune models with minimal boilerplate. ## What you'll accomplish You'll set up Unsloth for optimized fine-tuning of large language models on NVIDIA Spark devices, achieving up to 2x faster training speeds with reduced memory usage through efficient parameter-efficient fine-tuning methods like LoRA and QLoRA. ## What to know before starting - Python package management with pip and virtual environments - Hugging Face Transformers library basics (loading models, tokenizers, datasets) - GPU fundamentals (CUDA/GPU vs CPU, VRAM constraints, device availability) - Basic understanding of LLM training concepts (loss functions, checkpoints) - Familiarity with prompt engineering and base model interaction - Optional: LoRA/QLoRA parameter-efficient fine-tuning knowledge ## Prerequisites - NVIDIA Spark device with Blackwell GPU architecture - `nvidia-smi` shows a summary of GPU information - CUDA 13.0 installed: `nvcc --version` - Internet access for downloading models and datasets ## Ancillary files The Python test script can be found [here on GitHub](https://gitlab.com/nvidia/dgx-spark/temp-external-playbook-assets/dgx-spark-playbook-assets/-/blob/main/${MODEL}/assets/test_unsloth.py) ## Time & risk **Duration**: 30-60 minutes for initial setup and test run **Risks**: - Triton compiler version mismatches may cause compilation errors - CUDA toolkit configuration issues may prevent kernel compilation - Memory constraints on smaller models require batch size adjustments **Rollback**: Uninstall packages with `pip uninstall unsloth torch torchvision`. ## Instructions ## Step 1. Verify prerequisites Confirm your NVIDIA Spark device has the required CUDA toolkit and GPU resources available. ```bash nvcc --version ``` The output should show CUDA 13.0. ```bash nvidia-smi ``` The output should show a summary of GPU information. ## Step 2. Get the container image ```bash docker pull nvcr.io/nvidia/pytorch:25.08-py3 ``` ## Step 3. Launch Docker ```bash docker run --gpus all --ulimit memlock=-1 -it --ulimit stack=67108864 --entrypoint /usr/bin/bash --rm nvcr.io/nvidia/pytorch:25.08-py3 ``` ## Step 4. Install dependencies inside Docker ```bash pip install transformers peft datasets "trl==0.19.1" pip install --no-deps unsloth unsloth_zoo ``` ## Step 5. Build and install bitsandbytes inside Docker ```bash git clone https://github.com/bitsandbytes-foundation/bitsandbytes.git cd bitsandbytes cmake -S . -B build -DCOMPUTE_BACKEND=cuda -DCOMPUTE_CAPABILITY="80;86;87;89;90" cd build make -j cd .. pip install . ``` ## Step 6. Create Python test script Curl the test script [here](https://gitlab.com/nvidia/dgx-spark/temp-external-playbook-assets/dgx-spark-playbook-assets/-/blob/main/${MODEL}/assets/test_unsloth.py) into the container. ```bash curl -O https://gitlab.com/nvidia/dgx-spark/temp-external-playbook-assets/dgx-spark-playbook-assets/-/blob/main/${MODEL}/assets/test_unsloth.py We will use this test script to validate the installation with a simple fine-tuning task. ## Step 7. Run the validation test Execute the test script to verify Unsloth is working correctly. ```bash python test_unsloth.py ``` Expected output in the terminal window: - "Unsloth: Will patch your computer to enable 2x faster free finetuning" - Training progress bars showing loss decreasing over 60 steps - Final training metrics showing completion ## Step 8. Next steps Test with your own model and dataset by updating the `test_unsloth.py` file: ```python ## Replace line 32 with your model choice model_name = "unsloth/Meta-Llama-3.1-8B-bnb-4bit" ## Load your custom dataset in line 8 dataset = load_dataset("your_dataset_name") ## Adjust training parameter args at line 61 per_device_train_batch_size = 4 max_steps = 1000 ``` Visit https://github.com/unslothai/unsloth/wiki for advanced usage instructions, including: - [Saving models in GGUF format for vLLM](https://github.com/unslothai/unsloth/wiki#saving-to-gguf) - [Continued training from checkpoints](https://github.com/unslothai/unsloth/wiki#loading-lora-adapters-for-continued-finetuning) - [Using custom chat templates](https://github.com/unslothai/unsloth/wiki#chat-templates) - [Running evaluation loops](https://github.com/unslothai/unsloth/wiki#evaluation-loop---also-fixes-oom-or-crashing)