From 9012dbd0b1ff571dbaf1872d311def4098b68322 Mon Sep 17 00:00:00 2001 From: ViktarStarastsenka <99594890+ViktarStarastsenka@users.noreply.github.com> Date: Wed, 8 Oct 2025 10:12:54 +0200 Subject: [PATCH] Update rag.md Changing links to vector tutorials --- src/uc/rag.md | 5 +++-- 1 file changed, 3 insertions(+), 2 deletions(-) diff --git a/src/uc/rag.md b/src/uc/rag.md index eee8ea8..e1cdd14 100644 --- a/src/uc/rag.md +++ b/src/uc/rag.md @@ -12,8 +12,9 @@ It supports the storage and retrieval of vectors, which are essential for handli Here are some key features and components of Redis that make it suitable for RAG: 1. **Redis as a vector database**: The following set of tutorials provide examples of how to use Redis as a vector database: - - [Basic vector search ](redisinsight:_?tutorialId=vss-vectors-basic) - - [Advanced vector search](redisinsight:_?tutorialId=vss-vectors-adv-hash) + - [E-commerce Discovery](redisinsight:_?tutorialId=e-commerce-discovery) + - [Building personalized recommendations](redisinsight:_?tutorialId=personalized_recommendations) + - [Creating an AI Assistant](redisinsight:_?tutorialId=ai_assistant) 1. **Redis Vector Library (RedisVL)**: This library is designed to enhance the development of generative AI applications by efficiently managing vector data. It allows the storage of embeddings (vector representations of text) and facilitates fast similarity searches, which are crucial for retrieving relevant information in RAG.