SherryLiu 9ce2b5595e update README 11 ماه پیش
..
README_faiss.md 9ce2b5595e update README 11 ماه پیش
faiss_index.py a143ae8ff1 Faiss v.s. Original RAG. Taide model. 11 ماه پیش
output.txt a143ae8ff1 Faiss v.s. Original RAG. Taide model. 11 ماه پیش

README_faiss.md

Comparing Faiss with the original RAG. Both using the TAIDE LLM model. Both using created embeddings from the Supabase db.

Did not apply multi_query on Faiss (as it generates very similar answers from the original RAG). Applied multi_query on the original RAG only.

Evaluate on: 1. speed 2. RAGAS score

Some of the tested result is in the output.txt

Findings:

  • Response speed: It's not worth using Faiss to speed up llm on small dataset. Its index method is designed for large dataset.
  • Response quality: If relevant documents can be found, the original RAG which spplied the multi query method can generate more detailed answers. Faiss' answers are shorter.

Faiss: https://engineering.fb.com/2017/03/29/data-infrastructure/faiss-a-library-for-efficient-similarity-search/