Skip to content
brickster.ai
All news
Data + AI FoundationsDatabricks Blog·June 23, 2026·Databricks Staff

End-to-End RAG Workflow: How Retrieval Augmented Generation Works

Summary

Databricks now offers a five-stage RAG workflow for connecting LLMs to external knowledge bases, enabling accurate, domain-specific answers without model retraining. Production RAG requires careful selection of embedding models, vector database indexing, chunking strategies, and hybrid search, with independent evaluation of retrieval precision and generation faithfulness.

Summary generated by brickster.ai. For the full article, follow the source link above.

More from Databricks Blog