Deploy ML Models to Production

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

Deploy ML Models to Production

Coursera · Intermediate ·🏭 MLOps & LLMOps ·3mo ago

Key Takeaways

Deploys ML models to production using model development, hyperparameter tuning, and industrial-grade experimentation

Original Description

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.
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

DevOps Took 10 Years to Mature.
MLOps is distinct from DevOps and solves unique problems, requiring a different approach
Medium · DevOps
Praesto: A Kubernetes Operator for Node-Local ML Model Caching with CSI
Learn how Praesto, a Kubernetes Operator, optimizes ML model caching for Node-Local storage with CSI, reducing costs and improving performance
Medium · DevOps
Beyond `ollama run`: Production-Ready DeepSeek R1 Deployment with vLLM and Nginx
Learn to deploy DeepSeek R1 with vLLM and Nginx for production-ready environments, moving beyond local development
Dev.to · Shannon Dias
MCP Health Check: Building Production Monitoring for Your MCP Server — What I Learned After 84 Production Outages
Learn to build production monitoring for your MCP server to minimize outages and ensure smooth operation
Dev.to AI
Up next
Pole Pruner How A Rope Lever Shears High Branches
Innoforge Studio
Watch →