Skip to content
Course Rockstar
Data ScienceAll Levels

Deploy ML Models to Production

This comprehensive course is designed for aspiring MLOps engineers and data scientists looking to bridge the gap between experimental notebooks and robust...

By KodeKloud on Coursera

About This Course

This comprehensive course is designed for aspiring MLOps engineers and data scientists looking to bridge the gap between experimental notebooks and robust production environments. You will begin by establishing a strong foundation in model development, exploring the hardware essentials of CPUs and GPUs, and mastering hyperparameter tuning. The curriculum moves rapidly into industrial-grade experimentation using MLflow, where you will learn to track parameters, manage model artifacts, and control versioning through hands-on labs. The second half of the course focuses on real-world application through a specialized project: building a deployment pipeline for an Insurance Claim application. You will gain practical experience generating synthetic data, setting up dedicated MLflow servers, and utilizing BentoML for high-performance model serving. By upgrading a standard Flask application to interact with a professional serving infrastructure, you will master the art of online model delivery. This course ensures you leave with the technical confidence to register, deploy, and manage machine learning models in a live operational setting.

Topics Covered

Frequently Asked Questions

How much does Deploy ML Models to Production cost?

Deploy ML Models to Production costs $49. Check the course page for current pricing and available discounts.

Who teaches Deploy ML Models to Production?

Deploy ML Models to Production is taught by KodeKloud, KodeKloud.

What skill level is Deploy ML Models to Production for?

This course is designed for all levels learners.

Similar Courses

$49.00
Enroll Now
Students0
DurationSelf-paced
LevelAll Levels
Languageen
PlatformCoursera
InstructorKodeKloud