Retrieval, rerankers, and RAG tips and tricks | Data Brew | Episode 39 - podcast episode cover

Retrieval, rerankers, and RAG tips and tricks | Data Brew | Episode 39

Feb 20, 202545 min
--:--
--:--
Listen in podcast apps:

Episode description

In this episode, Andrew Drozdov, Research Scientist at Databricks, explores how Retrieval Augmented Generation (RAG) enhances AI models by integrating retrieval capabilities for improved response accuracy and relevance.

Highlights include:
- Addressing LLM limitations by injecting relevant external information.
- Optimizing document chunking, embedding, and query generation for RAG.
- Improving retrieval systems with embeddings and fine-tuning techniques.
- Enhancing search results using re-rankers and retrieval diagnostics.
- Applying RAG strategies in enterprise AI for domain-specific improvements.

Retrieval, rerankers, and RAG tips and tricks | Data Brew | Episode 39 | Data Brew by Databricks podcast - Listen or read transcript on Metacast