Your submission was sent successfully! Close

Thank you for signing up for our newsletter!
In these regular emails you will find the latest updates from Canonical and upcoming events where you can meet our team.Close

Thank you for contacting our team. We will be in touch shortly.Close

  1. Blog
  2. Article

Canonical
on 4 October 2010

Centralised logging with rsyslog


The management of multiple systems requires the setup of tools to control the servers behaviour in real time and post analysis. Moreover, regulations and best practices often require the IT department to maintain an accurate log of all events happening in their systems in order to allow for later analysis. Performing such analysis on each system is time consuming and is relatively insecure because if a server is compromised, the attacker, having gained root access, will be able to cover its traces by removing the portions of the logs that he wants.

Related posts


Rajan Patel
20 October 2022

Landscape beta: test the Landscape Server migration to Ubuntu 22.04 LTS

Cloud and server Article

The new Landscape beta makes it easier than ever to administer your entire Ubuntu estate across any architecture, from amd64, riscv, to arm64. Landscape beta’s charms have been rewritten in Juju’s new operator framework, and offer high availability in 3 simple steps. ...


robgibbon
26 October 2021

In defence of pet servers

Apps Article

We all know the drill by now: modern compute infrastructure needs to be deterministic, disposable, commoditised and repeatable. We’re all farmers now, and our server estates must be treated like cattle – ready for slaughter at a moment’s notice. However, we must remember that the driver behind the new design rationale is primarily the unr ...


Alex Cattle
1 April 2020

Accelerate AI/ML workloads with Kubeflow and System Architecture

AI Webinar

AI/ML model training is becoming more time consuming due to the increase in data needed to achieve higher accuracy levels. This is compounded by growing business expectations to frequently re-train and tune models as new data is available. The two combined is resulting in heavier compute demands for AI/ML applications. This trend is set t ...