Google Kubernetes Engine documentation
Deploy, manage, and scale containerized applications on Kubernetes, powered by Google Cloud. Learn more
Start your proof of concept with $300 in free credit
- Get access to Gemini 2.0 Flash Thinking
- Free monthly usage of popular products, including AI APIs and BigQuery
- No automatic charges, no commitment
Keep exploring with 20+ always-free products
Access 20+ free products for common use cases, including AI APIs, VMs, data warehouses, and more.
Documentation resources
AI/ML on GKE tutorials
Related resources
Architecting with Kubernetes Engine
This course features a combination of lectures, demos, and hands-on labs to help you explore and deploy solution elements—including infrastructure components like pods, containers, deployments, and services—along with networks and application services.
Kubernetes Qwik Start lab
Learn how to deploy a containerized application with Kubernetes Engine in less than 30 minutes.
Serve LLMs for AI/ML inference using GPUs on GKE with vLLM
This tutorial demonstrates how to use graphical processinng units (GPUs) on GKE to run large language models (LLMs) for AI/ML inference.
Create a cluster and deploy a workload in the Google Cloud console
Learn how to create a Kubernetes cluster and deploy a 'hello world' web app in Google Cloud console.
Setting up HTTP(S) Load Balancing with Ingress
This tutorial shows how to run a web application behind an external HTTP(S) load balancer by configuring the Ingress resource.
Configuring Domain Names with Static IP Addresses
This tutorial demonstrates how to expose your web application to the internet on a static external IP address and configure DNS records of your domain name to point to your application.
Best practices for continuous integration and delivery to Google Kubernetes Engine
Learn best practices for continuous integration and continuous delivery to GKE, from source control to deployment strategies.
Configuring privately used public IPs for GKE
Apply privately used public IP addresses for Google Kubernetes Engine pod address blocks.
Best practices for running cost-optimized Kubernetes applications on GKE
Take advantage of the elasticity provided by Google Cloud when running cost-optimized applications on GKE.
Modernization path for .NET applications on Google Cloud
Learn a gradual and structured process for modernizing monolithic applications.
Related videos
Try GKE for yourself
New customers also get $300 in free credits to run, test, and deploy workloads.