Back to Advanced Retrieval for AI with Chroma
DeepLearning.AI

Advanced Retrieval for AI with Chroma

Information Retrieval (IR) and Retrieval Augmented Generation (RAG) are only effective if the information retrieved from a database as a result of a query is relevant to the query and its application. Too often, queries return semantically similar results but don’t answer the question posed. They may also return irrelevant material which can distract the LLM from the correct results. This course teaches advanced retrieval techniques to improve the relevancy of retrieved results. The techniques covered include: 1. Query Expansion: Expanding user queries improves information retrieval by including related concepts and keywords. Utilizing an LLM makes this traditional technique even more effective. Another form of expansion has the LLM suggest a possible answer to the query which is then included in the query. 2. Cross-encoder reranking: Reranking retrieval results to select the results most relevant to your query improves your results. 3. Training and utilizing Embedding Adapters: Adding an adapter layer to reshape embeddings can improve retrieval by emphasizing elements relevant to your application.

Status: Retrieval-Augmented Generation
Status: Embeddings
IntermediateProject1 hour

Featured reviews

CC

5.0Reviewed Oct 2, 2024

This guy explains in a way that everyone can easily understand vector concepts.

All reviews

Showing: 5 of 5

CHRISTOPHER CHANTRES
5.0
Reviewed Oct 2, 2024
Akarsh
5.0
Reviewed Aug 20, 2024
AmitBiswas
4.0
Reviewed Dec 20, 2024
Santhosh
3.0
Reviewed Jan 9, 2025
Shiba Brata Das
1.0
Reviewed Oct 15, 2024