Skip to main content
  1. Blog
  2. Article

John Zannos
on 3 June 2014

IBM App Throwdown – Canonical’s Juju selected as top five finalist


IBM is holding a contest for developing solutions for its new Power8 server architecture.  We’re thrilled that our service orchestration tool, Juju, ported to IBM’s Power8 CPU has been selected as one of the top five finalists.

You can show your support and vote for Juju by tweeting anything that includes “@ubuntucloud #ibminnovateapp”, or by visiting the App Throwdown page and clicking the “Tweet your Vote” link under Canonical: http://ibmappthrowdown.tumblr.com/

If you don’t already know about Juju take a moment a look see what is does, you can learn all about it and how it can help you move to cloud infrastructure at our website https://juju.ubuntu.com/

Related posts


Gabriel Aguiar Noury
16 June 2026

A look into Ubuntu Core 26: Building a local AI inference appliance in a virtual machine

Internet of Things Article

Welcome to this blog series which explores innovative uses of Ubuntu Core. Throughout this series, Canonical’s Engineers will show what you can build with this Core 26 release, highlighting the features and tools available to you.  In this first blog, Farshid Tavakolizadeh, Engineer Manager for Canonical’s Industrial team, will show you h ...


Pedro Lazzarotto
12 June 2026

A decade of Ubuntu on IBM Z and IBM LinuxONE

Partners Article

This year we celebrate a decade of Ubuntu Server support on the s390x architecture: marking a long-standing collaboration between Canonical and IBM that began at LinuxCon 2015. The first release happened on April 21, 2016, bringing Ubuntu 16.04 LTS (Xenial Xerus) to IBM Z and IBM LinuxONE platforms.  A first for Ubuntu on IBM That ...


Pedro Lazzarotto
11 June 2026

AI at the edge: simplifying infrastructure with Cisco and Canonical

AI Article

Legacy infrastructure was not designed for the requirements of the AI era. While large-scale model training remains centralized in data centers, test-time inference is rapidly shifting to the edge to reduce latency and bandwidth consumption. This shift creates a new frontier for enterprise AI, but deploying at the edge introduces signific ...