Your submission was sent successfully! Close

Thank you for contacting us. A member of our team will be in touch shortly. Close

You have successfully unsubscribed! Close

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

Deploying Kubeflow everywhere: desktop, edge, and IoT devices

Kubeflow, the ML toolkit on K8s, now fits on your desktop and edge devices! 🚀

Data science workflows on Kubernetes

Kubeflow provides the cloud-native interface between Kubernetes and data science tools: libraries, frameworks, pipelines, and notebooks.

> Read more about what is Kubeflow

Cloud-native MLOps toolkit gets heavy

To make Kubeflow the standard cloud-native tool for MLOps within the AI landscape, the open-source community has accomplished the aggregation and integration of many projects on top of Kubernetes.

Unfortunately, this notable accomplishment also has a downside. Deploying Kubeflow on your laptop or edge device has become impractical.

The very minimum memory necessary to deploy the full Kubeflow bundle is 12Gb of RAM.

On top of that, it is Linux-based. This means that on Windows and macOS you need to allocate 12+ Gb of memory to a Linux VM.

Last time I tried, my 16Gb of RAM MacBook Pro did not like the idea.

Kubeflow lite to experiment on your desktop: Windows, macOS or Linux

To allow users to conveniently try out Kubeflow directly on their laptops or workstations, Canonical has conveniently pre-selected and packaged a subset of the Kubeflow applications to run on 8Gb of RAM.

Kubeflow runs on top of Kubernetes. Hence, in order to provide an out-of-the-box Kubeflow experience, the underlying K8s had to be also provided in a streamlined way.

The simple way to get K8s with built-in Kubeflow on Windows, macOs or Linux is MicroK8s. 

Now, besides the full Kubeflow bundle, MicroK8s also includes a Kubeflow lite bundle. To install Kubelow lite, deploy MicroK8s and then run:

$ KUBEFLOW_BUNDLE=lite microk8s enable kubeflow

> Check out what’s inside Kubeflow-lite

Kubeflow edge for inference and distributed training

Going even smaller in terms of the memory footprint, the Kubeflow edge bundle was born.

Kubeflow edge uses the inference and distributed training pieces inside Kubeflow – including TF-job-operator, PyTorch-operator, Seldon Core and Kubeflow Pipelines – and packages them for a 4Gb of RAM device to run.

So far, we have seen this option generate the most impact in industries that leverage an IoT mesh, such as manufacturing, mobility, retail, or ag-tech.

To install Kubeflow-edge, deploy MicroK8s and then run:

$ KUBEFLOW_BUNDLE=edge microk8s enable kubeflow

> Check out what’s inside Kubeflow edge

DIY: Build your own Kubeflow deployment

With the vision to empower AI innovators leveraging Kubeflow, not constrain them, Canonical has created Kubeflow lite and Kubeflow edge to get you started quickly wherever you are.

Once you have familiarized yourself with all that Kubeflow can offer, you can quickly add any application inside Kubeflow to your current bundle.

You could, for example, start with Kubeflow lite and add Katib the hyperparameter tuning piece of Kubeflow later on. To do this, run:

$ microk8s.juju deploy <app name> 

In addition, you can integrate applications that have been deployed with the command:

$ microk8s.juju relate <app A> <app B>

> Check out the list of 60 Kubeflow related applications

Kubeflow operators: the magic behind Kubeflow everywhere

This easy to deploy and composable Kubeflow is only possible due to Charmed Kubeflow, the set of charm operators that wrap the 20+ apps inside upstream Kubeflow.

> Read Kubeflow operators: lifecycle management for data science

Get started with Kubeflow

If you haven’t yet got a taste of Kubeflow, you can follow the upstream Kubeflow workstation docs, or watch the video below:

> Read the docs on MicroK8s Kubeflow add-on for more details.

Further reading

kubeflow logo

Run Kubeflow anywhere, easily

With Charmed Kubeflow, deployment and operations of Kubeflow are easy for any scenario.

Charmed Kubeflow is a collection of Python operators that define integration of the apps inside Kubeflow, like katib or pipelines-ui.

Use Kubeflow on-prem, desktop, edge, public cloud and multi-cloud.

Learn more about Charmed Kubeflow ›

kubeflow logo

What is Kubeflow?

Kubeflow makes deployments of Machine Learning workflows on Kubernetes simple, portable and scalable.

Kubeflow is the machine learning toolkit for Kubernetes. It extends Kubernetes ability to run independent and configurable steps, with machine learning specific frameworks and libraries.

Learn more about Kubeflow ›

kubeflow logo

Install Kubeflow

The Kubeflow project is dedicated to making deployments of machine learning workflows on Kubernetes simple, portable and scalable.

You can install Kubeflow on your workstation, local server or public cloud VM. It is easy to install with MicroK8s on any of these environments and can be scaled to high-availability.

Install Kubeflow ›

Newsletter signup

Get the latest Ubuntu news and updates in your inbox.

By submitting this form, I confirm that I have read and agree to Canonical's Privacy Policy.

Related posts

Let’s talk about open source, AI and cloud infrastructure at GITEX 2024

October 14 – 18, 2024. Dubai. Hall 26, Booth C40 The largest tech event of the world – GITEX 2024 – is taking place in Dubai next week. This event is a great...

How to deploy AI workloads at the edge using open source solutions

Running AI workloads at the edge with Canonical and Lenovo AI is driving a new wave of opportunities in all kinds of edge settings—from predictive maintenance...

Charmed Kubeflow 1.9 Beta is here: try it out

After releasing a new version of Ubuntu every six months for 20 years, it’s safe to say that we like keeping our traditions. Another of those traditions is...