AyaFergany/RAG-App-Using-a-LLM
In this project, we leverage Weaviate, a vector database, to power our retrieval-augmented generation (RAG) application. Weaviate enables efficient vector similarity search, which is crucial for building effective RAG systems. Additionally, we use local language model (LLM) and embedding models.
No commits in the last 6 months.
Stars
1
Forks
2
Language
Jupyter Notebook
License
—
Category
Last pushed
Jun 03, 2024
Commits (30d)
0
Get this data via API
curl "https://pt-edge.onrender.com/api/v1/quality/vector-db/AyaFergany/RAG-App-Using-a-LLM"
Open to everyone — 100 requests/day, no key needed. Get a free key for 1,000/day.
Higher-rated alternatives
yichuan-w/LEANN
[MLsys2026]: RAG on Everything with LEANN. Enjoy 97% storage savings while running a fast,...
aws-samples/layout-aware-document-processing-and-retrieval-augmented-generation
Advanced document extraction and chunking techniques for retrieval augmented generation that is...
byerlikaya/SmartRAG
Multi-Modal RAG for .NET — query databases, documents, images and audio in natural language....
mrutunjay-kinagi/ragsearch
This project aims to build a Retrieval-Augmented Generation (RAG) engine to provide...
Omkar-Wagholikar/adora
Python package that makes it easy to spin up a custom Retrieval-Augmented Generation (RAG) pipeline.