You cannot select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
openai-cookbook/examples/vector_databases/mongodb_atlas
Logan Kilpatrick f1e13cfcc7
Misc updates (#1022)
5 months ago
..
README.md Adding MongoDB Atlas to examples of Vector Databases (#874) 7 months ago
semantic_search_using_mongodb_atlas_vector_search.ipynb Misc updates (#1022) 5 months ago

README.md

MongoDB Atlas Vector Search

Atlas Vector Search is a fully managed service that simplifies the process of effectively indexing high-dimensional vector data within MongoDB and being able to perform fast vector similarity searches. With Atlas Vector Search, you can use MongoDB as a standalone vector database for a new project or augment your existing MongoDB collections with vector search functionality. With Atlas Vector Search, you can use the powerful capabilities of vector search in any major public cloud (AWS, Azure, GCP) and achieve massive scalability and data security out of the box while being enterprise-ready with provisions like FedRamp, SoC2 compliance.

Documentation - link