Modern GenAI (LLMs, RAG, agentic AI) succeeds or fails on the quality, structure, and governance of the data behind it. In this course, you’ll learn how structured and unstructured data drive GenAI applications, and how to design comprehensive data frameworks, taxonomies, and governance practices that reduce hallucinations, improve relevance, and make AI outcomes reliable.

Data Frameworks for Generative AI

Data Frameworks for Generative AI
This course is part of Modern Data Strategy for Enterprise Generative AI Specialization


Instructors: Fractal Analytics Academy
Access provided by Orange
Recommended experience
What you'll learn
How structured and unstructured data duel GenAI applications, and how to prepare each for LLM consumption.
How to build retrieval-aware architectures and select context sources that improve factuality in output.
How to craft customized taxonomies and metadata for discoverability and compliance.
Use dialogues, labs, and assignments to test, iterate, and document your framework decisions.
Skills you'll gain
Tools you'll learn
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