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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 […] AI at the edge: simplifying infrastructure with Cisco and Canonical | Canonical The next era of telco clouds: get open infrastructure choice with Sylva and Canonical Kubernetes | Canonical What is RDMA over Converged Ethernet (RoCE)? | Canonical Beyond tokens per watt – using Ubuntu 26.04 LTS for AI A look into Ubuntu Core 26: Deploying AI models on Renesas RZ/V series for production | Canonical RISC-V profiles – why is RVA23 significant? | Canonical AI with AMD ROCm on Ubuntu: your questions answered | Canonical When distributed workloads stall because nodes cannot exchange small messages quickly and consistently, the network is the limiting factor. How do you solve that problem? InfiniBand offers one solution. InfiniBand is an interconnect, meaning the end-to-end communication system that links compute, storage, and accelerator nodes. It is impl […] Microsoft has announced the preview of Azure Cobalt 200, its second-generation custom Arm silicon. Learn how Ubuntu and Ubuntu Pro support these new VMs from day one, offering seamless deployment, long-term security maintenance, and Kernel Livepatch without requiring engineering or platform changes […] How Canonical Support solves hard Linux performance bugs  – even in 12-year old code | Canonical Securing AI agent workflows on Ubuntu with the new NVIDIA OpenShell snap | Canonical Canonical announces optimized Ubuntu images for TPU virtual machines by Google Cloud | Canonical VMware hypervisor deployment using MAAS | Canonical Migrating from Apache Spark 3 to Spark 4 | Canonical Introducing Workshop: launch sandboxed development environments on Ubuntu with a single command | Canonical Run agentic workloads on Arm and Ubuntu | Canonical Decoding design: How design and engineering thrive together in open source | Canonical Developing web apps with local LLM inference | Canonical A local privilege escalation (LPE) security vulnerability in the Linux kernel, codename “PinTheft,” was publicly disclosed on May 19, 2026. The vulnerability was fixed in the mainline Linux kernel tree. A proof-of-concept exploit was published along with public disclosure. This has been assigned the CVE ID CVE-2026-43494; other discoverin […] Canonical has announced the general availability of Managed Kubeflow on the Microsoft Azure Marketplace. This fully managed MLOps platform allows enterprise AI teams to deploy a production-ready environment in under an hour, eliminating infrastructure maintenance. […] A look into Ubuntu Core 26: Cloud-powered edge computing with AWS IoT Greengrass and Azure IoT Edge | Canonical CVE-2026-46333 (ssh-keysign-pwn) Linux kernel vulnerability mitigations | Canonical Finding the blind spot: How Canonical hunts logic flaws with AI | Canonical A local privilege escalation (LPE) vulnerability affecting the Linux kernel has been publicly disclosed on May 13, 2026. The vulnerability does not have a CVE ID published, but is referred to as “Fragnesia.” The vulnerability affects multiple Linux distributions, including all Ubuntu releases. The affected components are the Linux kernel […] Rethinking BYOD security: protecting data without trusting devices | Canonical Two local privilege escalation (LPE) vulnerabilities affecting the Linux kernel have been publicly disclosed on May 7, 2026. The vulnerabilities have been assigned the IDs CVE-2026-43284 and CVE-2026-43500 and are referred to as “Dirty Frag.” The affected components are Linux kernel modules. The first vulnerability impacts the modules tha […] Three weeks to go: A sneak peek of the Ubuntu Summit 26.04 experience | Canonical How to use Ubuntu on Windows | Canonical A local privilege escalation (LPE) vulnerability affecting the Linux kernel has been publicly disclosed on April 29, 2026. The vulnerability has been assigned CVE ID CVE-2026-31431 and is referred to as Copy Fail. The affected component is a kernel module that provides hardware-accelerated cryptographic functions: algif_aead. The vulnerab […] Run NVIDIA Nemotron 3 Nano Omni locally in a single command | Canonical Why Web Engineering is great | Canonical Ubuntu 16.04 LTS (Xenial Xerus) reached the end of its five-year Expanded Security Maintenance (ESM) window in April 2026. If you are still running 16.04, it is critical to address your support status to ensure continued security and compliance. Your support options Now that 16.04 is in its Legacy phase, you have two primary paths: […] Understanding disaggregated GenAI model serving with llm-d | Canonical From Jammy to Resolute: how Ubuntu’s toolchains have evolved | Canonical Hybrid search and reranking: a deeper look at RAG | Canonical Canonical expands Ubuntu support to next-generation MediaTek Genio 520 and 720 platforms | Canonical In this article, Keirthana TS, a Senior Technical Author at Canonical, breaks down what leadership means to her and how she understood the power of intentional leadership through her journey at Canonical. 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Beyond tokens per watt – using Ubuntu 26.04 LTS for AI | Canonical
Freyja Cooper · 2026-06-05 · via Blog

Tokens per watt (TpW) – the measure of useful AI work produced per watt of energy consumed – is the metric at top of mind for CEOs, heads of AI, and infrastructure teams alike. With the tremendous cost of GPU clusters, extracting as much value as possible from the expense is critical.

But in the pursuit of tokens, it’s important to remember that hardware efficiency isn’t the only factor influencing data center operating costs, or the output of useful, revenue-generating AI work. While TpW is crucial, we also need to consider time-to-value and the impact of human productivity, which are largely determined at the software level.

We’re shaping Ubuntu to be the software foundation for efficient AI, and in this article, I’ll share some examples of what we mean when we say that we are optimizing Ubuntu for AI. With Ubuntu 26.04 LTS, we’re not just helping organizations get more from their hardware, we’re also making life easier and more productive for teams that rely on and support the AI stack. 

An OS that’s optimized for silicon

How do you squeeze more tokens from your hardware? The prevailing wisdom is to prioritize model optimization, GPU utilization, time to first token, and tokens per second. However, it’s also essential to have a software layer that enables you to make the most of your silicon.

The host operating system plays a central role in the AI infrastructure stack. That’s “central” not just in the sense that it’s important, but also in the sense that it sits in the center of the stack, acting as the bridge between the hardware and software. The OS manages the underlying compute, so it’s responsible for ensuring you can take full advantage of your GPUs and other AI accelerators.

With that in mind, Canonical partners with silicon vendors (such as NVIDIA, AMD, Intel, Arm, and Qualcomm, as well as RISC-V platforms) to optimize Ubuntu across all major architectures. This optimization helps to ensure that the maximum watts are spent on AI workloads rather than OS overhead. 

We also work with partners to certify hardware. By providing standardized, pre-integrated secure boot enablement and firmware delivery, Canonical enables organizations to avoid having to do custom OS engineering for every new piece of hardware they add to their stack. Enterprises can get to value faster, and save on engineering resources.

Single command toolkit integrations

Let’s continue on that theme of accelerating time-to-value and enhancing human productivity. Even in the age of AI, Ubuntu remains a Linux for human beings, and a core pillar of our philosophy is minimizing the friction involved in deploying and operating AI infrastructure for our users.

To that end, we’re collaborating with NVIDIA and AMD to integrate and distribute key AI solutions with Ubuntu. Starting with Ubuntu 26.04 LTS, users can get NVIDIA CUDA, AMD ROCm, and NVIDIA DOCA-OFED each with a single command. 

GPGPU frameworks

NVIDIA CUDA and AMD ROCm are frameworks for general-purpose computing on graphics processing units (GPGPU). They are the critical software layers that enable developers to harness the massive throughput of NVIDIA and AMD GPUs for AI workloads.

Historically, installing these frameworks required multi-step processes, and navigating dependency and compatibility issues could often prove challenging, especially for inexperienced users. But with Ubuntu 26.04 LTS, NVIDIA CUDA or AMD ROCm can each be installed with just one apt install command. 

The new distribution model can save teams hours or even days on GPGPU framework setup, so organizations can start gaining value from GPUs faster. Canonical also ensures that users have smooth upgrade paths, so they can be confident when updating, and get the benefits of the latest features of these platforms.

Have questions about AMD ROCm on Ubuntu? We’ve just published a deep dive.

High-performance networking

For organizations with large-scale AI factories and HPC clusters, NVIDIA DOCA-OFED is among the go-to high-performance networking stacks. However, traditionally, the tradeoff for enabling ultra-low latency and high-throughput data transfers was the complexity of setup and maintenance. System administrators had to manage networking drivers through external installers or complex manual builds, potentially leading to version conflicts or kernel mismatch issues during OS updates.

Now that NVIDIA DOCA-OFED can be installed seamlessly, the entire lifecycle management is simplified. Alongside rapid installation, the new workflow solves common operational pain points like kernel drift, driver incompatibility, and CI breakage following kernel or OS upgrades. Infrastructure teams can deliver speed and stability, while saving resources.

Optimized for hardware and humans

Jon Seager, Canonical’s VP of Engineering, has written recently about the future of AI in Ubuntu. He signs off by stating that “Ubuntu is not becoming an AI product.” But what we are committed to is making Ubuntu an enabler for AI. Whether it’s at the silicon level with deep optimization for every architecture, or at the user level with streamlined toolkit adoption and lifecycle management, Ubuntu is the software layer that underpins an effective AI infrastructure strategy. It can help you get more tokens per watt, and beyond that, it can help you get to value faster and help bring down the operating costs for your stack.

If you’d like to learn more about AI infrastructure best practices, and how Ubuntu can fit into your AI strategy, read the enterprise guide to private AI infrastructure.

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