New from O’Reilly: The memory architecture behind adaptive AI agents

Read the report
Building with LangChain

Similarity search using vector store

About

Forget keyword matching—similarity search lets your AI find what you mean, not just what you type. Ricardo Ferreira walks through building a similarity search with Redis as a vector store in LangChain, using a Marvel anti-hero dataset. See how embeddings and distance algorithms power smarter, fuzzier lookups, and how to fine-tune your queries for speed and precision.

23 minutes
Key topics
  1. Build and optimize similarity search using Redis as a vector store in LangChain
  2. How embeddings and distance algorithms make search results smarter and more intuitive
Speakers
Ricardo Ferreira

Ricardo Ferreira

Principal Developer Advocate

Latest content

See all
Image
Event replays
AI-powered spreadsheets: Let AI agents gather, structure, & act on your data
23 minutes
Image
Event replays
Scaling Raymond James' chatbot from idea to production
27 minutes
Image
Event replays
How Amgen scans millions of documents to develop life-saving drugs faster
29 minutes

Get started with Redis today

Speak to a Redis expert and learn more about enterprise-grade Redis today.