Charmed Spark beta release is out – try it today

This article is more than 1 year old.


Charmed Spark 3 beta – out now

The Canonical Data Fabric team is pleased to announce the first beta release of Charmed Spark, our solution for Apache Spark.

Apache Spark is a free, open source software framework for developing distributed, parallel processing jobs. It’s popular with data engineers and data scientists alike when building data pipelines for both batch and continuous data processing at scale. Engineers can write Python or Scala code to develop Spark jobs for ETL (extract-transform-load), analytics and machine learning.

Canonical is building a supported, packaged solution for running Spark jobs on Kubernetes. The preview release is the first milestone towards building a comprehensive solution for Spark users. 

The beta release includes features for:

  • Submitting jobs to the cluster
  • Managing job configuration
  • Security maintained container images
  • A software operator to deploy and operate the Spark History Server

Charmed Spark is a part of Canonical Data Fabric, a set of solutions for data processing, with additional solutions to be announced.

Charmed Spack reference architecture

Users can deploy Charmed Spark to MicroK8s, Charmed Kubernetes and AWS Elastic Kubernetes Service (EKS). Read the reference architecture guide:

Charmed Spark 3 release 1 reference architecture guide

Share your feedback

At Canonical, we always value the community’s feedback about our products. We would like to ask you to try out Canonical’s Charmed Spark and send us your comments, bug reports and general feedback so we can include them in our future releases.

To get started, head over to the Charmed Spark documentation pages and install the spark-client snap.

Chat with us at https://chat.charmhub.io/charmhub/channels/data-platform or file bug reports and feature requests in Github.


Talk to us today

Interested in running Ubuntu in your organisation?

Newsletter signup

Get the latest Ubuntu news and updates in your inbox.

By submitting this form, I confirm that I have read and agree to Canonical's Privacy Policy.

Related posts

Big data security foundations in five steps

We’ve all read the headlines about spectacular data breaches and other security incidents, and the impact that they have had on the victim organisations. And...

Can it play Doom? Running an AI LAN party on a Spark cluster with ViZDoom

It’s all about AI these days, so I decided to try and answer the important question: can you make a Spark cluster run AI agents that play a game of Doom, in a...

Why we built a Spark solution for Kubernetes

We’re super excited to announce that we have shipped the first release of our solution for big data – Charmed Spark. Charmed Spark packages a supported...