A Data Scientist’s Guide To Getting Started With Kubernetes On AWS
Last Updated on July 20, 2023 by Editorial Team
Author(s): ___
Originally published on Towards AI.
Overview

Source: https://aws.amazon.com/eks/
In this article, I will share how to use Kubernetes to run data science workloads. I will begin by showing how to set up a Kubernetes cluster on AWS. Then, I will show how to launch a Jupyter notebook manually and using Kubeflow. Along the way, you will learn a few commands to administer a Kubernetes cluster.
I assume the reader knows how to spin up an EC2 instance and can read simple bash scripts. If that is not the case, then refer to this tutorial to learn how to launch an EC2 instance and this article for a primer… Read the full blog for free on Medium.
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