stellarshenson be8c8f2428 feat: add project documentation, feature plan, and version management
- Add .claude/CLAUDE.md with comprehensive architecture documentation
- Add .claude/JOURNAL.md for tracking substantive work
- Add FEATURE_PLAN.md for Reset Home Volume and Restart Server features
- Add project.env with version tracking (1.0.0_jh-4.x)
- Update Makefile with increment_version and tag targets
- Implement auto-versioning on build and dual-tag push workflow
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Stellars JupyterHub for Data Science Platform

Docker Pulls Docker Image

Multi-user JupyterHub 4 with Miniforge, Data Science stack, and NativeAuthenticator.

This platform is built to support multiple data scientists on a shared environment with isolated sessions. Powered by JupyterHub, it ensures secure, user-specific access via the NativeAuthenticator plugin. It includes a full data science stack with GPU support (optional), and integrates seamlessly into modern Docker-based workflows.

By default system is capable of automatically detecting NVIDIA CUDA-supported GPU

This deployment provides access to a centralized JupyterHub instance for managing user sessions. Optional integrations such as TensorBoard, MLFlow, or Optuna can be added manually via service extensions.

References

This project spawns user environments using docker image: stellars/stellars-jupyterlab-ds

Visit the project page for stellars-jupyterlab-ds: https://github.com/stellarshenson/stellars-jupyterlab-ds

Quickstart

Docker Compose

  1. Download compose.yml and config/jupyterhub_config.py config file
  2. Run: docker compose up --no-build
  3. Open https://localhost/jupyterhub in your browser
  4. Add admin user through self-sign-in (user will be authorised automatically)
  5. Log in as admin

Start Scripts

  • start.sh or start.bat standard startup for the environment
  • scripts/build.sh alternatively make build builds required Docker containers

Authentication

This stack uses NativeAuthenticator for user management. Admins can whitelist users or allow self-registration. Passwords are stored securely.

Deployment Notes

  • Ensure config/jupyterhub_config.py is correctly set for your environment (e.g., TLS, admin list).
  • Optional volume mounts and configuration can be modified in jupyterhub_config.py for shared storage.

Customisation

You should customise the deployment by creating a compose_override.yml file.

Custom configuration file

Example below introduces custom config file jupyterhub_config_override.py to use for your deployment:

services:
  jupyterhub:
    volumes:
      - ./config/jupyterhub_config_override.py:/srv/jupyterhub/jupyterhub_config.py:ro # config file (read only)

Enable GPU

No changes required in the configuration if you allow NVidia autodetection to be performed. Otherwise change the ENABLE_GPU_SUPPORT = 1

Changes in your compose_override.yml:

services:
  jupyterhub:
    environment:
      - ENABLE_GPU_SUPPORT=1 # enable NVIDIA GPU, values: 0 - disabled, 1 - enabled, 2 - auto-detect

Enable shared CIFS mount

Changes in your compose_override.yml:

  jupyterhub:
    volumes:
      - ./config/jupyterhub_config_override.py:/srv/jupyterhub/jupyterhub_config.py:ro # config file (read only)
      - jupyterhub_shared_nas:/mnt/shared # cifs share
    
volumes:
  # remote drive for large datasets
  jupyterhub_shared_nas:
    driver: local
    name: jupyterhub_shared_nas
    driver_opts:
      type: cifs
      device: //nas_ip_or_dns_name/data
      o: username=xxxx,password=yyyy,uid=1000,gid=1000

in the config file you will refer to this volume by its name jupyterhub_shared_nas:

# User mounts in the spawned container
c.DockerSpawner.volumes = {
    "jupyterlab-{username}_home": "/home",
    "jupyterlab-{username}_workspace": DOCKER_NOTEBOOK_DIR,
    "jupyterlab-{username}_cache": "/home/lab/.cache",
    "jupyterhub_shared_nas": "/mnt/shared"
}
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