Installation and Setup
First, we need to create a Vector Index in the Upstash Console. Once we have our index, we will copy theUPSTASH_VECTOR_REST_URL and UPSTASH_VECTOR_REST_TOKEN and paste them to our .env file. To learn more about index creation, you can check out this page.
Add the following content to your .env file (replace with your actual URL and token):
upstash-vector library via PyPI. Additionally, we will install python-dotenv to load environment variables from the .env file.
Code
Create a Python script (e.g.,main.py) and add the following code to perform semantic search using Upstash Vector:
main.py
Running the Code
To run the code, execute the following command in your terminal:Code Breakdown
-
Environment Setup: We use
python-dotenvto load our environment variables and use theIndex.from_env()method to initialize the index client. -
Document Insertion: We define a list of documents, each with a unique ID and text content. The
upsert()function inserts these documents into our index. These documents are automatically converted into embeddings. To learn more about Upstash Embedding Models, you can check out this page. -
Index Reset: Before inserting documents, the
reset()function clears any existing data in the index. -
Search Query: After inserting the documents, we perform semantic search. The
query()function returns thetop_kmost similar documents to the query along with their metadata ifinclude_metadatais set toTrue.