Skip to main content
  1. Blog
  2. Article

Hasmik Zmoyan
on 25 January 2024

Ubuntu AI podcast: AI for day-to-day tasks


Welcome to Ubuntu AI podcast, where we talk about AI with the industry leaders.

This episode was recorded in Riga, during the Ubuntu Summit 2023. We’re talking about the implementation of AI solutions for day-to-day tasks with the CEO of Nextcloud Frank Karlitschek.

AI usage in Nextcloud

We are talking about the AI usage at Nextcloud and privacy plays a big role there. Listen to the episode to learn more about how to ensure customer’s privacy when implementing AI solutions. We will also dive deeper into use-cases for Nextcloud.

Implementing AI solutions within your organization

You can built all your AI projects with secure and supported Canonical MLOps. Stable, secure, scalable tooling is a priority for enterprises. Having AI that enterprises can benefit from is critical.

If you are still defining the use-cases within your organization, our expert team is here to provide Canonical’s AI consulting services, designed to support you in every step of your journey.

Learn more about Canonical AI solutions here.

Download our guide to MLOps. Take your AI projects to production.

Related posts


Canonical
1 June 2026

Securing AI agent workflows on Ubuntu with the new NVIDIA OpenShell snap

AI Article

By packaging OpenShell as a snap, Canonical is enabling enterprises to confidently run next-generation agentic workflows across local devices, hybrid environments, and private clouds. ...


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 ...