# Running Ollama on NVIDIA Jetson Devices With some minor configuration, Ollama runs well on [NVIDIA Jetson Devices](https://www.nvidia.com/en-us/autonomous-machines/embedded-systems/). The following has been tested on [JetPack 5.1.2](https://developer.nvidia.com/embedded/jetpack). NVIDIA Jetson devices are Linux-based embedded AI computers that are purpose-built for AI applications. Jetsons have an integrated GPU that is wired directly to the memory controller of the machine. For this reason, the `nvidia-smi` command is unrecognized, and Ollama proceeds to operate in "CPU only" mode. This can be verified by using a monitoring tool like jtop. In order to address this, we simply pass the path to the Jetson's pre-installed CUDA libraries into `ollama serve` (while in a tmux session). We then hardcode the num_gpu parameters into a cloned version of our target model. Prerequisites: - curl - tmux Here are the steps: - Install Ollama via standard Linux command (ignore the 404 error): `curl https://ollama.ai/install.sh | sh` - Stop the Ollama service: `sudo systemctl stop ollama` - Start Ollama serve in a tmux session called ollama_jetson and reference the CUDA libraries path: `tmux has-session -t ollama_jetson 2>/dev/null || tmux new-session -d -s ollama_jetson 'LD_LIBRARY_PATH=/usr/local/cuda/lib64 ollama serve'` - Pull the model you want to use (e.g. mistral): `ollama pull mistral` - Create a new Modelfile specifically for enabling GPU support on the Jetson: `touch ModelfileMistralJetson` - In the ModelfileMistralJetson file, specify the FROM model and the num_gpu PARAMETER as shown below: ``` FROM mistral PARAMETER num_gpu 999 ``` - Create a new model from your Modelfile: `ollama create mistral-jetson -f ./ModelfileMistralJetson` - Run the new model: `ollama run mistral-jetson` If you run a monitoring tool like jtop you should now see that Ollama is using the Jetson's integrated GPU. And that's it!