menu

Optimize Costs for Google Kubernetes Engine

Advanced 12단계 1일 크레딧 35개

Earn a skill badge by completing the Optimize Costs for Kubernetes Engine, where you learn about the following tools and techniques to help optimize resource usage and eliminate unnecessary costs on Google Kubernetes Engine (GKE): create and manage a multi tenant cluster, monitor resource usage by namespace, configure cluster and pod autoscaling, configure load balancing, and set up liveness and readiness probes. The videos and labs in this quest explore best practices for running cost-optimized Kubernetes applications on GKE.

A skill badge is an exclusive digital badge issued by Google Cloud in recognition of your proficiency with Google Cloud products and services and tests your ability to apply your knowledge in an interactive hands-on environment. Complete this skill badge quest, and the final assessment challenge lab, to receive a skill badge that you can share with your network.

Infrastructure

기본 요건:

This quest explores intermediate to advanced concepts about Google Kubernetes Engine cluster optimization and assumes the student already knows basic concepts around cluster creation and management. If you are new to Google Kubernetes Engine, it's recommended to first take the Kubernetes in Google Cloud quest.

Quest Outline

동영상

Monitoring your GKE costs

실습

Managing a GKE Multi-tenant Cluster with Namespaces

This lab explores best practices in managing and monitoring a multi-tenant cluster in order to optimize your costs.

동영상

Virtual machines in GKE

실습

Exploring Cost-optimization for GKE Virtual Machines

In this hands-on lab, you’ll learn how to determine and select the the most cost effective machine type for a GKE application. You will also explore the pros and cons of a multi-zonal cluster.

실습

Understanding and Combining GKE Autoscaling Strategies

In this lab you will explore the benefits of different Google Kubernetes Engine autoscaling strategies, like Horizontal Pod Autoscaling and Vertical Pod Autoscaling for pod-level scaling, and Cluster Autoscaler and Node Auto Provisioning for node-level scaling.

실습

GKE Workload Optimization

This lab demonstrates how optimization in your cluster's workloads can lead to an overall optimization of your resources and costs. It walks through a few different workload optimization strategies such as container native load balancing, application load testing, readiness and liveness probes, and pod disruption budgets.

실습

Optimize Costs for Google Kubernetes Engine: Challenge Lab

This lab offers a series of challenges that involve deploying, scaling, and maintaining a cluster application while optimizing resource usage.

지금 등록

배지 획득에 대한 진행 상황을 추적하려면 이 퀘스트에 등록하세요.