The Foundations of Open Generative AI Engineering course introduces learners to the principles, architectures, and trade-offs that define the open generative AI landscape. Starting with the distinctions between open source, open weights, and open access models, learners explore different licensing frameworks—including MIT, Apache, and CreativeML Open RAIL-M—and their implications for commercial use, attribution, and compliance.

Foundations of Open Generative AI Engineering

Foundations of Open Generative AI Engineering
This course is part of Open Generative AI: Build with Open Models and Tools Professional Certificate

Instructor: Professionals from the Industry
Access provided by Xavier School of Management, XLRI
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January 2026
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There are 3 modules in this course
Understand what sets open generative AI models apart. In this course, you’ll learn how to spot license limitations, break down the key components of large language and diffusion models, and compare performance trade-offs like parameter size, speed, and accuracy. You’ll also apply a simple decision framework that helps you choose the right model for your needs, building the confidence to make smart, compliant, and cost-effective choices.
What's included
3 videos2 readings1 assignment
In this module, you’ll learn how to tell what you can and can’t do with open generative AI models. We’ll break down the differences between open source, open weights, and open access, compare common license types, and show how each affects commercial use. You’ll also practice spotting legal red flags, understanding attribution requirements, and applying compliance best practices so you can avoid costly mistakes and deploy models with confidence.
What's included
2 videos2 readings1 assignment
In this module, you’ll learn the fundamentals that shape how open models are built and perform. You’ll explore the core components of transformer architecture, compare major models like LLaMA and Mistral, and understand the principles behind diffusion models. You’ll also evaluate how parameter size, context windows, and inference speed trade off against each other, so you can make informed choices about which model fits your needs.
What's included
3 videos2 readings1 assignment
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