Packt – Devops Project 2022 CI-CD with Jenkins Ansible Kubernetes

Packt – Devops Project 2022 CI-CD with Jenkins Ansible Kubernetes
English | Tutorial | Size: 5.36 GB

Master DevOps CI/CD pipelines using Git, Jenkins, Ansible, Docker, and Kubernetes on AWS.
Comprehensive and hands-on course on creating DevOps CI/CD pipelines with lab exercises
Complete understanding of DevOps workflow
Setup of DevOps CI/CD pipeline to build and deploy a real-time project

About this video
In this learning journey, you will be introduced to tools such as GitHub, Jenkins, Maven, Docker, Ansible, and Kubernetes and learn how to integrate these tools to run a project in the real world.

You will start with building and deploying it on the Tomcat server. You will set up CI/CD with GitHub, Jenkins, Maven, and Tomcat. Initially, there is no environment; therefore, you start with setting up Jenkins, configuring Maven and Git, Tomcat server, integrating GitHub, Maven, Tomcat server with Jenkins, creating a CI and CD job, and testing the deployment.

Next, we will cover deploying artifacts on a Docker container as well as with the help of Ansible. For that, first set up Docker environment, write Dockerfile, create an image and container on Docker host, integrate Docker host with Jenkins, and create CI/CD job on Jenkins to build and deploy on a container.

Finally, deploy artifacts on Kubernetes. Almost all the environment is ready by now except for Kubernetes, so we will start with setting up the Ansible server, integrating Docker host with Ansible, Ansible playbook to create an image, Ansible playbook to create continuer, integrating Ansible with Jenkins, and CI/CD job to build code on Ansible and deploy it on Docker container.

By the end of this course, you will be able to confidently set up and complete CI/CD pipeline to build and deploy a Java application on AWS.

Buy Long-term Premium Accounts To Support Me & Max Speed



If any links die or problem unrar, send request to

Leave a Comment

This site uses Akismet to reduce spam. Learn how your comment data is processed.