Build production GenAI systems on Databricks by mastering prompt engineering, RAG pipelines, model governance, and code intelligence. You will apply chain-of-thought, ReAct, and few-shot prompting patterns to decompose complex tasks, then construct retrieval-augmented generation pipelines that fuse vector search with BM25 using Reciprocal Rank Fusion.

Generative AI and LLMs on Databricks

Generative AI and LLMs on Databricks
This course is part of Enterprise AI and Data Engineering with Databricks Specialization

Instructor: Noah Gift
Access provided by Interbank
Recommended experience
What you'll learn
Apply prompt engineering patterns (CoT, ReAct, few-shot) and sampling parameters to control LLM output for production systems
Design and evaluate hybrid RAG pipelines using embeddings, BM25, and Reciprocal Rank Fusion with six standard retrieval metrics
Implement model security through cryptographic chain-of-trust signing, AI Gateway governance, and Unity Catalog model registry workflows
Skills you'll gain
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4 assignments
March 2026
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