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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

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