Cloud Example Jupyter: Difference between revisions

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** The primary image that you can see is '''gcr.io/google_containers/pause:3.0'''  This is just a simple lightweight container that doesn't do any processing, just to keep the ''[https://rancher.com/docs/rancher/v2.x/en/k8s-in-rancher/workloads/deploy-workloads/ deployment]'' alive
** The primary image that you can see is '''gcr.io/google_containers/pause:3.0'''  This is just a simple lightweight container that doesn't do any processing, just to keep the ''[https://rancher.com/docs/rancher/v2.x/en/k8s-in-rancher/workloads/deploy-workloads/ deployment]'' alive
** The other two images are the single-user Jupyter Notebook and a networking tools image (updates iptables).  Both of these images are run with a simple echo log command, so again they don't do any processing but the image is downloaded and cached by kubernetes
** The other two images are the single-user Jupyter Notebook and a networking tools image (updates iptables).  Both of these images are run with a simple echo log command, so again they don't do any processing but the image is downloaded and cached by kubernetes
==== hub ====
This deployment:
* Scalable, currently running a single pod
* The purpose of this deployment is to run the JupyterHub process that authenticates the user, configures the proxy, and calls the spawner to create a single-user instance of Jupyter for the user.
* The only container in the pod is docker.cs.vt.edu/carnold/jupyterhub/jupyterhub:v1.00  This is a customized version of the jupyterhub docker image to add the CAS authentication plug-in.
==== jupyter-carnold ====
This deployment:
* Runs a single pod
* This is an example of a pod automatically spawned for the user ''carnold'' and hosts their single-user instance of Jupyter Notebook
* The containers in this pod are:
** The primary image is docker.cs.vt.edu/carnold/jupyterhub/singleuser:v1.06  This is a customized verison of the jupyter notebook single user docker image to add a custom script that runs on start up.
==== proxy ====
This deployment:
* Scalable, currently running a single pod
* The purpose of this deployment is to run Nginx as a reverse proxy redirecting users to their single-user instances of Jupyter Notebook.  The proxies get configured by the '''hub''' deployment.
* The only container in this pod is jupyterhub/configurable-http-proxy:4.1.0  This is based on Nginx.
* There is an external IP mapped to this service with ports 443 and 80 forwarding to this pod.  This allows connections from outside the cluster.
==== user-placeholder ====
This deployment:
*

Revision as of 13:38, 19 August 2019

Work in progress

Introduction

The goal of this project is to support a class teaching basic programming using Jupyter Notebook Jupyter notebook is a single process that supports only one person. To support a whole class, a jupyter notebook process will need to be run for each student. Jupyter offers a Jupyter Hub that automatically spawns these singe user processes. However, a single machine can only support around 50-70 students before suffering performance issues. Kubernetes allows this process to scale out horizontally by spreading the single-user instances across physical nodes. I will give a break down of different pieces needed to make this work and go into more detail on certain aspects.

Basics

Here is what the Workloads tab looks like:

Details of each deployment:

continuous-image-puller

This deployment:

  • Starts a pod on all physical nodes of the cluster. This is called a DaemonSet by kubernetes.
  • The purpose of this deployment is to pull the image(s) need to run the single-user Jupyter Notebook and automatically download on any new nodes to the cluster -- basically pre-caching the images. The process of downloading the images the first time it is run on a node can take some time and detract from the user experience.
  • The containers in each pod are:
    • The primary image that you can see is gcr.io/google_containers/pause:3.0 This is just a simple lightweight container that doesn't do any processing, just to keep the deployment alive
    • The other two images are the single-user Jupyter Notebook and a networking tools image (updates iptables). Both of these images are run with a simple echo log command, so again they don't do any processing but the image is downloaded and cached by kubernetes

hub

This deployment:

  • Scalable, currently running a single pod
  • The purpose of this deployment is to run the JupyterHub process that authenticates the user, configures the proxy, and calls the spawner to create a single-user instance of Jupyter for the user.
  • The only container in the pod is docker.cs.vt.edu/carnold/jupyterhub/jupyterhub:v1.00 This is a customized version of the jupyterhub docker image to add the CAS authentication plug-in.

jupyter-carnold

This deployment:

  • Runs a single pod
  • This is an example of a pod automatically spawned for the user carnold and hosts their single-user instance of Jupyter Notebook
  • The containers in this pod are:
    • The primary image is docker.cs.vt.edu/carnold/jupyterhub/singleuser:v1.06 This is a customized verison of the jupyter notebook single user docker image to add a custom script that runs on start up.

proxy

This deployment:

  • Scalable, currently running a single pod
  • The purpose of this deployment is to run Nginx as a reverse proxy redirecting users to their single-user instances of Jupyter Notebook. The proxies get configured by the hub deployment.
  • The only container in this pod is jupyterhub/configurable-http-proxy:4.1.0 This is based on Nginx.
  • There is an external IP mapped to this service with ports 443 and 80 forwarding to this pod. This allows connections from outside the cluster.

user-placeholder

This deployment: