rig/rig-neo4j
github-actions[bot] f4214540a5
chore: release (#375)
Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com>
2025-04-15 10:23:05 -04:00
..
examples docs: Fix typos (#233) 2025-01-22 17:05:03 -05:00
src Fix Clippy warnings for doc indentation and Error::other usage (#364) 2025-04-03 12:57:54 +01:00
tests test(rig-neo4j): Fix neo4j integration test (#190) 2025-01-09 15:03:19 -05:00
CHANGELOG.md chore: release (#375) 2025-04-15 10:23:05 -04:00
Cargo.toml chore: release (#375) 2025-04-15 10:23:05 -04:00
LICENSE feat(neo4j): add Neo4j companion crate & VectorStoreIndex impl 2024-10-22 15:24:09 +02:00
README.md fix(neo4j): last minute doc and const adjustments 2024-11-07 13:16:19 -06:00

README.md

Rig logo + Neo4j logo



This companion crate implements a Rig vector store based on Neo4j Graph database. It uses the neo4rs crate to interact with Neo4j. Note that the neo4rs crate is a work in progress and does not yet support all Neo4j features. Further documentation on Neo4j & vector search integration can be found on the neo4rs docs.

Prerequisites

The GenAI plugin is enabled by default in Neo4j Aura.

The plugin needs to be installed on self-managed instances. This is done by moving the neo4j-genai.jar file from /products to /plugins in the Neo4j home directory, or, if you are using Docker, by starting the Docker container with the extra parameter --env NEO4J_PLUGINS='["genai"]'. For more information, see Operations Manual → Configure plugins.

Usage

Add the companion crate to your Cargo.toml, along with the rig-core crate:

[dependencies]
rig-neo4j = "0.1"

You can also run cargo add rig-neo4j rig-core to add the most recent versions of the dependencies to your project.

See the examples folder for usage examples.

Notes

  • The rig-neo4j::vector_index module offers utility functions to create and query a Neo4j vector index. You can also create indexes using the Neo4j browser or directly call cypther queries with the Neo4rs crate. See the Neo4j documentation for more information. Example examples/vector_search_simple.rs shows how to create an index on existing data.
CREATE VECTOR INDEX moviePlots
FOR (m:Movie)
ON m.embedding
OPTIONS {indexConfig: {
    `vector.dimensions`: 1536,
    `vector.similarity_function`: 'cosine'
}}

Roadmap

  • Add support for creating the vector index through RIG.
  • Add support for adding embeddings to an existing database
  • Add support for uploading documents to an existing database