[Done ] Relevance: This content is related to building with OpenAI technologies and is useful to others.
[Done ] Uniqueness: I have searched for related examples in the OpenAI Cookbook, and verified that my content offers new insights or unique information compared to existing documentation.
[ Done] Spelling and Grammar: I have checked for spelling or grammatical mistakes.
[ Done] Clarity: I have done a final read-through and verified that my submission is well-organized and easy to understand.
[ Done] Correctness: The information I include is correct and all of my code executes successfully.
[ Done] Completeness: I have explained everything fully, including all necessary references and citations.
We will rate each of these areas on a scale from 1 to 4, and will only accept contributions that score 3 or higher on all areas. Refer to our contribution guidelines for more details.
MongoDB Vector Database
Summary
Added in the ability to perform a semantic search in MongoDB Vector Search
Motivation
We were planning to include a cookbook for a vector database like Pinecone. I decided to use MongoDB because it has a larger market share
For new content
When contributing new content, read through our contribution guidelines, and mark the following action items as completed:
We will rate each of these areas on a scale from 1 to 4, and will only accept contributions that score 3 or higher on all areas. Refer to our contribution guidelines for more details.