A vector search SQLite extension that runs anywhere!
Find a file
2024-09-07 10:03:12 -07:00
.github gha: include-hidden-files smh 2024-09-07 10:03:12 -07:00
benchmarks benchmark updates 2024-07-28 11:08:12 -07:00
bindings fix rust builds 2024-09-07 09:22:30 -07:00
examples gitignore 2024-09-07 09:22:36 -07:00
scripts always include notes, even on alpha releases 2024-08-05 16:04:08 -07:00
site more docs work 2024-09-07 09:22:44 -07:00
tests fmt and SQLITE_VEC_OMIT_FS fixes 2024-08-10 23:33:28 -07:00
.gitignore l1 distance (#39) 2024-07-23 09:04:15 -07:00
LICENSE-APACHE add licenses 2024-05-10 22:42:10 -07:00
LICENSE-MIT add licenses 2024-05-10 22:42:10 -07:00
Makefile typo fix 2024-09-05 21:26:42 -07:00
README.md Fix URL to rqlite page (#81) 2024-08-10 11:39:22 -07:00
reference.yaml doc 2024-07-31 12:55:50 -07:00
sqlite-dist.toml update sqlite-dist 2024-08-05 16:03:09 -07:00
sqlite-vec.c fmt and SQLITE_VEC_OMIT_FS fixes 2024-08-10 23:33:28 -07:00
sqlite-vec.h.tmpl Add SQLITE_VEC_STATIC option, prefix json function 2024-08-09 10:44:39 -07:00
tmp-static.py static updates 2024-07-31 12:56:09 -07:00
VERSION v0.1.2-alpha.8 2024-09-07 09:49:26 -07:00

sqlite-vec

An extremely small, "fast enough" vector search SQLite extension that runs anywhere! A successor to sqlite-vss

Important

sqlite-vec is a pre-v1, so expect breaking changes!

  • Store and query float, int8, and binary vectors in vec0 virtual tables
  • Written in pure C, no dependencies, runs anywhere SQLite runs (Linux/MacOS/Windows, in the browser with WASM, Raspberry Pis, etc.)
  • Pre-filter vectors with rowid IN (...) subqueries

Mozilla Builders logo

sqlite-vec is a Mozilla Builders project, with additional sponsorship from Fly.io , Turso, and SQLite Cloud. See the Sponsors section for more details.

Installing

See Installing sqlite-vec for more details.

Language Install More Info
Python pip install sqlite-vec sqlite-vec with Python PyPI
Node.js npm install sqlite-vec sqlite-vec with Node.js npm
Ruby gem install sqlite-vec sqlite-vec with Ruby Gem
Go go get -u github.com/asg017/sqlite-vec/bindings/go sqlite-vec with Go Go Reference
Rust cargo add sqlite-vec sqlite-vec with Rust Crates.io
Datasette datasette install datasette-sqlite-vec sqlite-vec with Datasette Datasette
rqlite rqlited -extensions-path=sqlite-vec.tar.gz sqlite-vec with rqlite rqlite
sqlite-utils sqlite-utils install sqlite-utils-sqlite-vec sqlite-vec with sqlite-utils sqlite-utils
Github Release GitHub tag (latest SemVer pre-release)

Sample usage

.load ./vec0

create virtual table vec_examples using vec0(
  sample_embedding float[8]
);

-- vectors can be provided as JSON or in a compact binary format
insert into vec_examples(rowid, sample_embedding)
  values
    (1, '[-0.200, 0.250, 0.341, -0.211, 0.645, 0.935, -0.316, -0.924]'),
    (2, '[0.443, -0.501, 0.355, -0.771, 0.707, -0.708, -0.185, 0.362]'),
    (3, '[0.716, -0.927, 0.134, 0.052, -0.669, 0.793, -0.634, -0.162]'),
    (4, '[-0.710, 0.330, 0.656, 0.041, -0.990, 0.726, 0.385, -0.958]');


-- KNN style query
select
  rowid,
  distance
from vec_examples
where sample_embedding match '[0.890, 0.544, 0.825, 0.961, 0.358, 0.0196, 0.521, 0.175]'
order by distance
limit 2;
/*
┌───────┬──────────────────┐
│ rowid │     distance     │
├───────┼──────────────────┤
│ 2     │ 2.38687372207642 │
│ 1     │ 2.38978505134583 │
└───────┴──────────────────┘
*/

Sponsors

Development of sqlite-vec is supported by multiple generous sponsors! Mozilla is the main sponsor through the new Builders project.

Mozilla Builders logo

sqlite-vec is also sponsored by the following companies:

Fly.io logo Turso logo SQLite Cloud logo

As well as multiple individual supporters on Github sponsors!

If your company interested in sponsoring sqlite-vec development, send me an email to get more info: https://alexgarcia.xyz

See Also

  • sqlite-ecosystem, Maybe more 3rd party SQLite extensions I've developed
  • sqlite-rembed, Generate text embeddings from remote APIs like OpenAI/Nomic/Ollama, meant for testing and SQL scripts
  • sqlite-lembed, Generate text embeddings locally from embedding models in the .gguf format