# jupyterhub-deploy-docker **Repository Path**: weisongf/jupyterhub-deploy-docker ## Basic Information - **Project Name**: jupyterhub-deploy-docker - **Description**: Reference deployment of JupyterHub with docker - **Primary Language**: Unknown - **License**: BSD-3-Clause - **Default Branch**: main - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 1 - **Created**: 2025-12-12 - **Last Updated**: 2025-12-12 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # jupyterhub-deploy-docker **jupyterhub-deploy-docker** provides a reference deployment of [JupyterHub](https://github.com/jupyterhub/jupyterhub), a multi-user [Jupyter Notebook](https://jupyter.org) environment, on a **single host** using [Docker](https://docs.docker.com). Possible **use cases** include: - Creating a JupyterHub demo environment that you can spin up relatively quickly. - Providing a multi-user Jupyter Notebook environment for small classes, teams or departments. ## Disclaimer This deployment is **NOT** intended for a production environment. It is a reference implementation that does not meet traditional requirements in terms of availability, scalability, or security. If you are looking for a more robust solution to host JupyterHub, or you require scaling beyond a single host, please check out the excellent [zero-to-jupyterhub-k8s](https://github.com/jupyterhub/zero-to-jupyterhub-k8s) project. ## Technical Overview Key components of this reference deployment are: - **Host**: Runs the [JupyterHub components](https://jupyterhub.readthedocs.io/en/stable/reference/technical-overview.html) in a Docker container on the host. - **Authenticator**: Uses [Native Authenticator](https://github.com/jupyterhub/nativeauthenticator) to authenticate users. Any user will be allowed to sign up. - **Spawner**: Uses [DockerSpawner](https://github.com/jupyterhub/dockerspawner) to spawn single-user Jupyter Notebook servers in separate Docker containers on the same host. - **Persistence of Hub data**: Persists JupyterHub data in a Docker volume on the host. - **Persistence of user notebook directories**: Persists user notebook directories in Docker volumes on the host. ## Prerequisites ### Docker This deployment uses Docker, via [Docker Compose](https://docs.docker.com/compose/), for all the things. 1. Use [Docker's installation instructions](https://docs.docker.com/engine/install/) to set up Docker for your environment. ## Authenticator setup This deployment uses [JupyterHub Native Authenticator](https://native-authenticator.readthedocs.io/en/latest/) to authenticate users. 1. An single `admin` user will be enabled by default. Any user will be allowed to sign up. ## Build the JupyterHub Docker image 1. Use [docker compose](https://docs.docker.com/compose/reference/) to build the JupyterHub Docker image: ```bash docker compose build ``` ## Customisation: Jupyter Notebook Image You can configure JupyterHub to spawn Notebook servers from any Docker image, as long as the image's `ENTRYPOINT` and/or `CMD` starts a single-user instance of Jupyter Notebook server that is compatible with JupyterHub. To specify which Notebook image to spawn for users, you set the value of the `DOCKER_NOTEBOOK_IMAGE` environment variable to the desired container image. Whether you build a custom Notebook image or pull an image from a public or private Docker registry, the image must reside on the host. If the Notebook image does not exist on the host, Docker will attempt to pull the image the first time a user attempts to start his or her server. In such cases, JupyterHub may timeout if the image being pulled is large, so it is better to pull the image to the host before running JupyterHub. This deployment defaults to the [quay.io/jupyter/base-notebook](https://quay.io/repository/jupyter/base-notebook) Notebook image, which is built from the `base-notebook` [Docker stacks](https://github.com/jupyter/docker-stacks). You can pull the image using the following command: ```bash docker pull quay.io/jupyter/base-notebook:latest ``` ## Run JupyterHub Run the JupyterHub container on the host. To run the JupyterHub container in detached mode: ```bash docker compose up -d ``` Once the container is running, you should be able to access the JupyterHub console at `http://localhost:8000`. To bring down the JupyterHub container: ```bash docker compose down ``` --- ## FAQ ### How can I view the logs for JupyterHub or users' Notebook servers? Use `docker logs `. For example, to view the logs of the `jupyterhub` container ```bash docker logs jupyterhub ``` ### How do I specify the Notebook server image to spawn for users? In this deployment, JupyterHub uses DockerSpawner to spawn single-user Notebook servers. You set the desired Notebook server image in a `DOCKER_NOTEBOOK_IMAGE` environment variable. JupyterHub reads the Notebook image name from `jupyterhub_config.py`, which reads the Notebook image name from the `DOCKER_NOTEBOOK_IMAGE` environment variable: ```python # DockerSpawner setting in jupyterhub_config.py c.DockerSpawner.image = os.environ['DOCKER_NOTEBOOK_IMAGE'] ``` ### If I change the name of the Notebook server image to spawn, do I need to restart JupyterHub? Yes. JupyterHub reads its configuration, which includes the container image name for DockerSpawner. JupyterHub uses this configuration to determine the Notebook server image to spawn during startup. If you change DockerSpawner's name of the Docker image to spawn, you will need to restart the JupyterHub container for changes to occur. In this reference deployment, cookies are persisted to a Docker volume on the Hub's host. Restarting JupyterHub might cause a temporary blip in user service as the JupyterHub container restarts. Users will not have to login again to their individual notebook servers. However, users may need to refresh their browser to re-establish connections to the running Notebook kernels. ### How can I back up a user's notebook directory? There are multiple ways to [Back up and restore data](https://docs.docker.com/desktop/backup-and-restore/) in Docker containers. Suppose you have the following running containers: ```bash docker ps --format "table {{.ID}}\t{{.Image}}\t{{.Names}}" CONTAINER ID IMAGE NAMES bc02dd6bb91b quay.io/jupyter/minimal-notebook jupyter-jtyberg 7b48a0b33389 quay.io/jupyterhub jupyterhub ``` In this deployment, the user's notebook directories (`/home/jovyan/work`) are backed by Docker volumes. ```bash docker inspect -f '{{ .Mounts }}' jupyter-jtyberg [{jtyberg /var/lib/docker/volumes/jtyberg/_data /home/jovyan/work local rw true rprivate}] ``` We can back up the user's notebook directory by running a separate container that mounts the user's volume and creates a tarball of the directory. ```bash docker run --rm \ -u root \ -v /tmp:/backups \ -v jtyberg:/notebooks \ quay.io/jupyter/minimal-notebook \ tar cvf /backups/jtyberg-backup.tar /notebooks ``` The above command creates a tarball in the `/tmp` directory on the host.