This is a simple repository for preparing a k3s
+ nvidia/cuda
base image that enables a K3d cluster to have access to your host machine's NVIDIA, CUDA-capable GPU(s).
Access to GitHub and GitHub Container Registry. Please follow the GitHub Container Registry instructions.
Docker and all of its dependencies must be installed.
For the container GPU test, a NVIDIA GPU with CUDA cores and drivers must be present. Additionally, the CUDA toolkit and NVIDIA container toolkit must be installed.
For Kubernetes testing and pre-requisites, please see Kubernetes Deployment for details.
Check out the Make targets for the various options.
Follow the instructions in the zarf-package-k3d-airgap repository for bootstrapping a K3d cluster that can access your NVIDIA GPUs.
You can also a use more abstracted version of the above Kubernetes deployment by following the instructions in the uds-leapfrogai bundle repository.
Run:
kubectl apply -f test/cuda-vector-add.yaml
kubectl logs cuda-vector-add