ML in Production: Deploy & Scale AI Systems
Master end-to-end ML production systems with hands-on training in deployment, monitoring, and optimization.
Course Cost
₹ 2,699
Intermediate
Skill Level
10 Hours
Self-paced Video lessons
In this comprehensive course led by Andrew Ng, students learn to design and implement production-ready machine learning systems. The program covers the complete ML project lifecycle, from scoping and data preparation to deployment and monitoring. Students gain practical experience with deployment patterns, concept drift handling, and error analysis techniques. The course emphasizes real-world challenges in production ML, including data pipeline management, model optimization, and system maintenance. Through hands-on projects and practical examples, learners develop the skills needed to build, deploy, and maintain ML systems at scale. Special attention is given to establishing baselines, improving model performance, and addressing common production challenges.
What you'll learn
Design and implement end-to-end ML production systems
Establish model baselines and address concept drift effectively
Build robust data pipelines for production environments
Implement deployment patterns and monitoring strategies
Optimize model performance using error analysis techniques
Develop scalable ML solutions for real-world applications
Skills you'll gain
This course includes:
310 Minutes PreRecorded video
6 assignments
Access on Mobile, Tablet, Desktop
FullTime access
Shareable certificate
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There are 3 modules in this course
This comprehensive course focuses on the practical aspects of deploying machine learning systems in production environments. The curriculum covers three main areas: ML lifecycle and deployment patterns, modeling challenges and strategies, and data definition and baseline establishment. Students learn to handle real-world challenges in production ML systems, including data pipeline management, model monitoring, and system optimization. The course emphasizes hands-on experience with practical tools and techniques used in professional ML engineering.
Overview of the ML Lifecycle and Deployment
Module 1 · 3 Hours to complete
Modeling Challenges and Strategies
Module 2 · 3 Hours to complete
Data Definition and Baseline
Module 3 · 4 Hours to complete
Fee Structure
Payment options
Financial Aid
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Faculties
These are the expert instructors who will be teaching you throughout the course. With a wealth of knowledge and real-world experience, they're here to guide, inspire, and support you every step of the way. Get to know the people who will help you reach your learning goals and make the most of your journey.
Frequently asked Questions
Below are some of the most commonly asked questions about this course. We aim to provide clear and concise answers to help you better understand the course content, structure, and any other relevant information. If you have any additional questions or if your question is not listed here, please don't hesitate to reach out to our support team for further assistance.


