VOOZH about

URL: https://www.coursera.org/learn/operationalizing-ml-models-mlops-for-scalable-ai

⇱ Operationalizing ML Models: MLOps for Scalable AI | Coursera


Operationalizing ML Models: MLOps for Scalable AI

Keep adding new skills with 10,000+ programs for $239 (usually $399). Save now.

Operationalizing ML Models: MLOps for Scalable AI

Included with

Ask Coursera

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

4 hours to complete
Flexible schedule
Learn at your own pace

Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

4 hours to complete
Flexible schedule
Learn at your own pace

What you'll learn

  • Implement scalable MLOps workflows that ensure efficient and reliable machine learning operations.

  • Build CI/CD pipelines for seamless and automated model updates, streamlining the development lifecycle.

  • Monitor deployed ML models for performance and drift.

  • Optimize AI infrastructure to handle scalability challenges and support high-performance deployments.

Details to know

Shareable certificate

Add to your LinkedIn profile

Assessments

1 assignment

Taught in English

There is 1 module in this course

In this course you’ll explore how to turn promising ML prototypes into robust, scalable, and maintainable systems that deliver real value. Through hands-on demos, practical tools, and real-world case studies from companies like Netflix, Uber, and Google, you’ll gain a comprehensive understanding of what it takes to run ML systems effectively in production using MLOps.

This course is designed for data scientists, machine learning engineers, AI practitioners, and IT professionals who want to operationalize machine learning workflows, scale AI systems, and streamline deployment and infrastructure management. To get the most out of this course, learners should have a basic understanding of machine learning concepts, be familiar with Python programming, and have experience using Docker and containerization technologies. By the end of this course, learners will be able to operationalize machine learning models by designing scalable MLOps workflows, automating deployments with CI/CD pipelines, monitoring performance and detecting data drift, and optimizing AI infrastructure using tools like Docker, MLflow, and Kubernetes to support robust, real-world AI applications.

In this course, you’ll explore how to turn promising ML prototypes into robust, scalable, and maintainable systems that deliver real value. Through hands-on demos, practical tools, and real-world case studies from companies like Netflix, Uber, and Google, you’ll gain a comprehensive understanding of what it takes to run ML systems effectively in production using MLOps.

What's included

11 videos7 readings1 assignment1 peer review2 discussion prompts

11 videosTotal 81 minutes
  • Introduction and Welcome 4 minutes
  • What is MLOps?6 minutes
  • Key Components of MLOps 8 minutes
  • Building Your First MLOps Pipeline with Docker and MLflow 12 minutes
  • Introduction to CI/CD for ML 6 minutes
  • Designing Effective CI/CD Pipelines 7 minutes
  • Automating ML Model Deployments with CI/CD 8 minutes
  • Model Monitoring Techniques 6 minutes
  • Automating Model Monitoring with Tools 10 minutes
  • Building Dashboards for ML Model Monitoring 11 minutes
  • Congratulations and Continuous Learning Journey2 minutes
7 readingsTotal 50 minutes
  • Welcome to the Course: Course Overview5 minutes
  • Hands On Learning (HOL): Deploying and Monitoring ML Models with MLOps10 minutes
  • Why MLOps Is Critical to The Future Of Your Business5 minutes
  • Hands On Learning (HOL): Automating ML Model Deployment with CI/CD Pipelines10 minutes
  • Building Robust CI/CD for ML Systems 5 minutes
  • Hands On Learning (HOL): Automating Model Monitoring and Performance Tracking10 minutes
  • The Importance of Model Monitoring5 minutes
1 assignmentTotal 20 minutes
  • Operationalizing ML Models: MLOps for Scalable AI20 minutes
1 peer reviewTotal 60 minutes
  • Project: Loan Prediction Model60 minutes
2 discussion promptsTotal 10 minutes
  • Designing CI/CD Pipelines for High-Stakes ML Deployments5 minutes
  • Detecting and Responding to Drift in Real-Time ML Monitoring5 minutes

Instructors

Coursera
568 Courses1,143,467 learners

Explore more from Machine Learning

Why people choose Coursera for their career

👁 Image

Felipe M.

Learner since 2018
"To be able to take courses at my own pace and rhythm has been an amazing experience. I can learn whenever it fits my schedule and mood."
👁 Image

Jennifer J.

Learner since 2020
"I directly applied the concepts and skills I learned from my courses to an exciting new project at work."
👁 Image

Larry W.

Learner since 2021
"When I need courses on topics that my university doesn't offer, Coursera is one of the best places to go."
👁 Image

Chaitanya A.

"Learning isn't just about being better at your job: it's so much more than that. Coursera allows me to learn without limits."

Frequently asked questions

To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.

When you purchase a Certificate you get access to all course materials, including graded assignments. Upon completing the course, your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.

Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.

Financial aid available,