mongodb-atlas-vector-search and mongodb-ai-vector-search

Maintenance 0/25
Adoption 7/25
Maturity 16/25
Community 18/25
Maintenance 0/25
Adoption 2/25
Maturity 8/25
Community 12/25
Stars: 25
Forks: 16
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License: Apache-2.0
Stars: 2
Forks: 1
Downloads:
Commits (30d): 0
Language: Jupyter Notebook
License:
Stale 6m No Package No Dependents
No License Stale 6m No Package No Dependents

About mongodb-atlas-vector-search

sujee/mongodb-atlas-vector-search

Using MongDB Atlas with embedding models and LLMs to do vector search and RAG applications

This helps developers build applications that can understand and answer questions about large collections of documents. It takes raw text or PDF documents, processes them to create numerical representations (embeddings), and stores them in MongoDB Atlas. The output is a system that can intelligently retrieve relevant information and generate answers using large language models, useful for creating smart search or Q&A features.

information-retrieval application-development database-management AI-powered-search knowledge-base-systems

About mongodb-ai-vector-search

irfan-iiitr/mongodb-ai-vector-search

Building a movie recommender app backend using MongoDB Atlas Search and local embeddings. Features include efficient searches, user interaction, and logging for debugging.

Scores updated daily from GitHub, PyPI, and npm data. How scores work