Filtering queries
In this exercise, you'll practice querying the 'datacamp-index'
Pinecone index. You'll connect to the index and query it using the vector
provided to retrieve similar vectors. You'll also use metadata filtering to optimize your querying and return the most relevant search results.
This exercise is part of the course
Vector Databases for Embeddings with Pinecone
Exercise instructions
- Initialize the Pinecone connection with your API key.
- Retrieve the MOST similar vector to the
vector
provided, only searching through vectors where the metadata'year'
equals2024
.
Hands-on interactive exercise
Have a go at this exercise by completing this sample code.
# Initialize the Pinecone client with your API key
pc = Pinecone(api_key="____")
index = pc.Index('datacamp-index')
# Retrieve the MOST similar vector with the year 2024
query_result = ____
print(query_result)