With the 2024.1 release, we're adding a powerful Vector Search capability to the InterSystems IRIS Data Platform, to help you innovate faster and build intelligent applications powered by Generative AI. At the center of the new capability is a new VECTOR
native datatype for IRIS SQL, along with similarity functions that leverage optimized chipset instructions (SIMD).
This repository offers code samples to get you started with the new features, and we'll continue to add more, but encourage you to let us know about your own experiments on the InterSystems Developer Community. At the bottom of this page, you'll find links to a few demo repositories we liked a lot!
- Clone the repo
git clone https://github.com/intersystems-community/iris-vector-search.git
If you prefer just running the demos from your local Python environment, skip to Using your local Python environment.
-
For
langchain_demo.ipynb
andllama_demo.ipynb
, you need an OpenAI API Key. Update the corresponding entry indocker-compose.yml
:OPENAI_API_KEY: xxxxxxxxx
-
Start the Docker containers (one for IRIS, one for Jupyter):
docker-compose up
-
Install IRIS Community Edtion in a container:
docker run -d --name iris-comm -p 1972:1972 -p 52773:52773 -e IRIS_PASSWORD=demo -e IRIS_USERNAME=demo intersystemsdc/iris-community:latest
ℹ️ After running the above command, you can access the System Management Portal via http://localhost:52773/csp/sys/UtilHome.csp. Please note you may need to configure your web server separately when using another product edition.
-
Create a Python environment and activate it (conda, venv or however you wish) For example:
conda create --name iris-vector-search python=3.10 conda activate
-
Install packages for all demos:
pip install -r requirements.txt
-
For
langchain_demo.ipynb
andllama_demo.ipynb
, you need an OpenAI API Key. Create a.env
file in this repo to store the key:OPENAI_API_KEY=xxxxxxxxx
-
The demos in this repository are formatted as Jupyter notebooks. To run them, just start Jupyter and navigate to the
/demo/
folder:jupyter lab
IRIS SQL now supports vector search (with other columns)! In this demo, we're searching a whiskey dataset for whiskeys that are priced < $100 and have a taste description similar to "earthy and creamy taste".
IRIS now has a langchain integration as a VectorDB! In this demo, we use the langchain framework with IRIS to ingest and search through a document.
IRIS now has a llama_index integration as a VectorDB! In this demo, we use the llama_index framework with IRIS to ingest and search through a document.
If you need to use hybrid search (similarity search with other columns), use IRIS SQL.
If you're building a genAI app that uses a variety of tools (agents, chained reasoning, api calls), go for langchain.
If you're building a RAG app, go for the approach llama_index.
Feel free to contact Alvin / Thomas or file an issue in this GitHub repository if you have any questions!
Uses langchain-iris to search Youtube Audio transcriptions
Original IRIS langhain demo, that runs the containerized IRIS in the notebook
Original IRIS llama_index demo, that runs the containerized IRIS in the notebook
Official page for InterSystems Documentation