Skip to main content
Redhat Developers  Logo
  • AI

    Get started with AI

    • Red Hat AI
      Accelerate the development and deployment of enterprise AI solutions.
    • AI learning hub
      Explore learning materials and tools, organized by task.
    • AI interactive demos
      Click through scenarios with Red Hat AI, including training LLMs and more.
    • AI/ML learning paths
      Expand your OpenShift AI knowledge using these learning resources.
    • AI quickstarts
      Focused AI use cases designed for fast deployment on Red Hat AI platforms.
    • No-cost AI training
      Foundational Red Hat AI training.

    Featured resources

    • OpenShift AI learning
    • Open source AI for developers
    • AI product application development
    • Open source-powered AI/ML for hybrid cloud
    • AI and Node.js cheat sheet

    Red Hat AI Factory with NVIDIA

    • Red Hat AI Factory with NVIDIA is a co-engineered, enterprise-grade AI solution for building, deploying, and managing AI at scale across hybrid cloud environments.
    • Explore the solution
  • Learn

    Self-guided

    • Documentation
      Find answers, get step-by-step guidance, and learn how to use Red Hat products.
    • Learning paths
      Explore curated walkthroughs for common development tasks.
    • Guided learning
      Receive custom learning paths powered by our AI assistant.
    • See all learning

    Hands-on

    • Developer Sandbox
      Spin up Red Hat's products and technologies without setup or configuration.
    • Interactive labs
      Learn by doing in these hands-on, browser-based experiences.
    • Interactive demos
      Click through product features in these guided tours.

    Browse by topic

    • AI/ML
    • Automation
    • Java
    • Kubernetes
    • Linux
    • See all topics

    Training & certifications

    • Courses and exams
    • Certifications
    • Skills assessments
    • Red Hat Academy
    • Learning subscription
    • Explore training
  • Build

    Get started

    • Red Hat build of Podman Desktop
      A downloadable, local development hub to experiment with our products and builds.
    • Developer Sandbox
      Spin up Red Hat's products and technologies without setup or configuration.

    Download products

    • Access product downloads to start building and testing right away.
    • Red Hat Enterprise Linux
    • Red Hat AI
    • Red Hat OpenShift
    • Red Hat Ansible Automation Platform
    • See all products

    Featured

    • Red Hat build of OpenJDK
    • Red Hat JBoss Enterprise Application Platform
    • Red Hat OpenShift Dev Spaces
    • Red Hat Developer Toolset

    References

    • E-books
    • Documentation
    • Cheat sheets
    • Architecture center
  • Community

    Get involved

    • Events
    • Live AI events
    • Red Hat Summit
    • Red Hat Accelerators
    • Community discussions

    Follow along

    • Articles & blogs
    • Developer newsletter
    • Videos
    • Github

    Get help

    • Customer service
    • Customer support
    • Regional contacts
    • Find a partner

    Join the Red Hat Developer program

    • Download Red Hat products and project builds, access support documentation, learning content, and more.
    • Explore the benefits

Podman AI Lab and RamaLama unite for easier local AI

June 3, 2025
Florent Benoit
Related topics:
Artificial intelligenceContainersDeveloper toolsOpen source
Related products:
Podman Desktop

    Working with AI models locally can be tricky. You often have to deal with many different software pieces and settings. Podman AI Lab and RamaLama are two projects that make running AI models on your own computer simple and straightforward.

    RamaLama helps you run AI models in two main ways: directly on your computer (if you have a local inference engine like llama.cpp installed, for example) or inside containers. Podman AI Lab always uses containers to run AI models. Both projects use a way to let the AI models inside containers use your computer's powerful graphics card (GPU) to run faster.

    RamaLama and AI Lab: Making local AI simple

    RamaLama was created to make running AI models on your computer easy. It tries to use your computer's own software first if it can. For example, if you have a local inference engine like llama.cpp installed, RamaLama can use it directly. This can make the models run very quickly. RamaLama can also run models inside containers if needed.

    Podman AI Lab is an extension of Podman Desktop, a graphical tool for managing containers and Kubernetes clusters. It gives you a simple way to try out AI models by running them inside containers. A big part of the AI Lab is making sure the AI models in containers can use your computer's GPU to speed things up.

    Working together: Using the same containers

    Previously, both RamaLama and the Podman AI Lab used their own sets of containers for running AI models. Now Podman AI Lab uses containers built by the RamaLama project. This has several key advantages:

    • Less duplication: You no longer need to build and keep track of two different sets of containers.
    • Consistent experience: Whether you use RamaLama in a container or the AI Lab, you use the same well-made containers.
    • Easier updates: When we improve the containers or introduce a new GPU support, both projects benefit.
    • Simpler GPU use: The RamaLama containers are set up to easily use your computer's GPU, and the AI Lab now uses this setup. This makes it easier to get your AI models running fast within the AI Lab.

    What you need: Podman and GPU support

    To use the GPU with the containers, you need to have Podman installed on your computer. Podman is a tool for running containers. The way GPU support works depends on your operating system: 

    • On macOS, you typically need krunkit and libkrun for efficient GPU sharing. 
    • On Windows, GPU passthrough is generally facilitated through WSL2 (Windows Subsystem for Linux 2).

    For detailed instructions and further benefits of GPU integration with Podman, refer to the Podman Desktop documentation. This resource provides comprehensive guidance on configuring GPU support across different platforms, ensuring you can harness the full power of your GPU for demanding containerized applications.

    What this means for you

    By working together and using the same containers, RamaLama and the Podman AI Lab are making it much simpler to run AI models on your own computer. Spend less time setting things up and more time working with AI.

    Both Podman AI Lab and RamaLama are part of the same GitHub organization to facilitate closer collaboration.

    Learn more and get involved

    Check out the following resources to explore the projects in detail and contribute to their development.

    Podman AI Lab:

    • Website: https://podman-desktop.io/extensions/ai-lab
    • Project code: https://github.com/containers/podman-desktop-extension-ai-lab
    • Report issues: https://github.com/containers/podman-desktop-extension-ai-lab/issues

    RamaLama:

    • Website: https://ramalama.ai/
    • Project code: https://github.com/containers/ramalama
    • Report issues: https://github.com/containers/ramalama/issues

    Related Posts

    • How RamaLama makes working with AI models boring

    • Getting started with Podman AI Lab

    • Introducing Podman AI Lab: Developer tooling for working with LLMs

    • How RamaLama runs AI models in isolation by default

    • Simplify AI data integration with RamaLama and RAG

    • Experiment and test AI models with Podman AI Lab

    Recent Posts

    • Debugging image mode with Red Hat OpenShift 4.20: A practical guide

    • EvalHub: Because "looks good to me" isn't a benchmark

    • SQL Server HA on RHEL: Meet Pacemaker HA Agent v2 (tech preview)

    • Deploy with confidence: Continuous integration and continuous delivery for agentic AI

    • Every layer counts: Defense in depth for AI agents with Red Hat AI

    Red Hat Developers logo LinkedIn YouTube Twitter Facebook

    Platforms

    • Red Hat AI
    • Red Hat Enterprise Linux
    • Red Hat OpenShift
    • Red Hat Ansible Automation Platform
    • See all products

    Build

    • Developer Sandbox
    • Developer tools
    • Interactive tutorials
    • API catalog

    Quicklinks

    • Learning resources
    • E-books
    • Cheat sheets
    • Blog
    • Events
    • Newsletter

    Communicate

    • About us
    • Contact sales
    • Find a partner
    • Report a website issue
    • Site status dashboard
    • Report a security problem

    RED HAT DEVELOPER

    Build here. Go anywhere.

    We serve the builders. The problem solvers who create careers with code.

    Join us if you’re a developer, software engineer, web designer, front-end designer, UX designer, computer scientist, architect, tester, product manager, project manager or team lead.

    Sign me up

    Red Hat legal and privacy links

    • About Red Hat
    • Jobs
    • Events
    • Locations
    • Contact Red Hat
    • Red Hat Blog
    • Inclusion at Red Hat
    • Cool Stuff Store
    • Red Hat Summit
    © 2026 Red Hat

    Red Hat legal and privacy links

    • Privacy statement
    • Terms of use
    • All policies and guidelines
    • Digital accessibility

    Chat Support

    Please log in with your Red Hat account to access chat support.