Reader small image

You're reading from  Redis Stack for Application Modernization

Product typeBook
Published inDec 2023
PublisherPackt
ISBN-139781837638185
Edition1st Edition
Right arrow
Authors (2):
Luigi Fugaro
Luigi Fugaro
author image
Luigi Fugaro

Luigi Fugaro's first encounter with computers was in the early 80s when he was a kid. He started with a Commodore Vic-20, passing through a Sinclair, a Commodore 64, and an Atari ST 1040, where he spent days and nights giving breath mints to Otis. In 1998, he started his career as a webmaster doing HTML, JavaScript, Applets, and some graphics with Paint Shop Pro. He then switched to Delphi, Visual Basic, and then started working on Java projects. He has been developing all kinds of web applications, dealing with backend and frontend frameworks. In 2012, he started working for Red Hat and is now an architect in the EMEA Middleware team. He has authored WildFly Cookbook and Mastering JBoss Enterprise Application Platform 7 by Packt Publishing.
Read more about Luigi Fugaro

Mirko Ortensi
Mirko Ortensi
author image
Mirko Ortensi

Mirko Ortensi earned a degree in Electronic Engineering and a Master's degree in Software Engineering. Mirko's career has spanned several roles from Software Engineering to Customer Support, particularly centered around distributed database systems. As a Senior Technical Enablement Architect at Redis, Mirko shares technical knowledge about Redis's products and services.
Read more about Mirko Ortensi

View More author details
Right arrow

Indexing the embeddings

Now that we can generate a vector for the desired type of data using the corresponding ML model, we would like to index vectors for VSS. Here, we’ll introduce the VECTOR field type which, together with TEXT, TAG, NUMERIC, and GEO, complete the types of data that can be indexed by Redis Stack. Using redis-cli to create an index as usual, we can index the embedding as follows:

FT.CREATE doc_idx
ON HASH
PREFIX 1 doc:
SCHEMA content AS content TEXT
genre AS genre TAG
embedding VECTOR HNSW 6 TYPE FLOAT32 DIM 384 DISTANCE_METRIC COSINE

We can index the JSON document in a similar fashion:

FT.CREATE doc_idx
ON JSON
PREFIX 1 doc:
SCHEMA $.content as content TEXT
$.genre AS genre TAG
$.embedding VECTOR HNSW 6 TYPE FLOAT32 DIM 384 DISTANCE_METRIC COSINE

This index includes the content of the document and the embedding and uses the related types: TEXT and VECTOR. In the next subsections, we will explain the meaning of the arguments for the vector similarity...

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Redis Stack for Application Modernization
Published in: Dec 2023Publisher: PacktISBN-13: 9781837638185

Authors (2)

author image
Luigi Fugaro

Luigi Fugaro's first encounter with computers was in the early 80s when he was a kid. He started with a Commodore Vic-20, passing through a Sinclair, a Commodore 64, and an Atari ST 1040, where he spent days and nights giving breath mints to Otis. In 1998, he started his career as a webmaster doing HTML, JavaScript, Applets, and some graphics with Paint Shop Pro. He then switched to Delphi, Visual Basic, and then started working on Java projects. He has been developing all kinds of web applications, dealing with backend and frontend frameworks. In 2012, he started working for Red Hat and is now an architect in the EMEA Middleware team. He has authored WildFly Cookbook and Mastering JBoss Enterprise Application Platform 7 by Packt Publishing.
Read more about Luigi Fugaro

author image
Mirko Ortensi

Mirko Ortensi earned a degree in Electronic Engineering and a Master's degree in Software Engineering. Mirko's career has spanned several roles from Software Engineering to Customer Support, particularly centered around distributed database systems. As a Senior Technical Enablement Architect at Redis, Mirko shares technical knowledge about Redis's products and services.
Read more about Mirko Ortensi