Deploying ML Models - Full Stack Deep Learning - Spring 2021
Offered By: The Full Stack via YouTube
Course Description
Overview
Explore the intricacies of deploying machine learning models in production through this comprehensive 53-minute lecture. Delve into various deployment strategies including batch prediction, model-in-service, and model-as-service approaches. Gain insights on implementing REST APIs, managing dependencies, and optimizing performance on single machines. Learn about horizontal scaling techniques, model deployment best practices, and managed options for streamlined operations. Discover the potential of edge prediction for real-time applications. Master the essential skills needed to transition ML models from development to production environments effectively.
Syllabus
- Introduction
- Batch Prediction
- Model-In-Service
- Model-as-Service
- REST APIs
- Dependency Management
- Performance Optimization Single Machine
- Horizontal Scaling
- Model Deployment
- Managed Options
- Edge Prediction
Taught by
The Full Stack
Related Courses
Web Engineering II: Developing Mobile HTML5 AppsTechnische Hochschule Mittelhessen via iversity Introduction to MongoDB using the MEAN Stack
MongoDB via edX Desarrollo de aplicaciones avanzadas con Android
Universidad Nacional Autónoma de México via Coursera Utilisez des API REST dans vos projets web
IBM via OpenClassrooms Extend Your Application with REST Services
Microsoft via edX