How to Deploy End to End ML Projects in Production AWS Cloud Using CI CD Pipeline
Krish Naik via YouTube
Learn Python with Generative AI - Self Paced Online
AI, Data Science & Business Certificates from Google, IBM & Microsoft
Overview
Google, IBM & Meta Certificates — All 10,000+ Courses at 40% Off
One annual plan covers every course and certificate on Coursera. 40% off for a limited time.
Get Full Access
Deploy an end-to-end machine learning application using CI/CD pipelines and GitHub Actions on AWS cloud infrastructure. Learn how to set up Docker workflows, configure IAM users, create ECR repositories, launch EC2 instances, and implement app runners. Follow along with step-by-step instructions covering prerequisites, Docker setup, AWS configurations, and running the complete workflow. Gain practical experience in deploying production-ready ML projects using cloud services and automation tools.
Syllabus
Prerequisites
Docker And Workflow Set up
Iam User Setup In AWS
ECR Repository set up
EC2 Instance set up
Docker Set up In EC2 instance
App runner set up
run Workflow
Taught by
Krish Naik