Skip to content

Latest commit

 

History

History

test

Astra Store

Installation

pip install astra-haystack

Local Development

install astra-haystack package locally to run integration tests:

Open in gitpod: Open in Gitpod

Switch Python version to 3.9 (Requires 3.8+ but not 3.12)

pyenv install 3.9
pyenv local 3.9

Local install for the package pip install -e . To execute integration tests, add needed environment variables ASTRA_DB_API_ENDPOINT=<id> ASTRA_DB_APPLICATION_TOKEN=<token> and execute python examples/example.py

Install requirements pip install -r requirements.txt

Export environment variables

export ASTRA_DB_API_ENDPOINT=
export ASTRA_DB_APPLICATION_TOKEN=
export COLLECTION_NAME=
export OPENAI_API_KEY=

run the python examples python example/example.py or python example/pipeline_example.py

Usage

This package includes Astra Document Store and Astra Embedding Retriever classes that integrate with Haystack, allowing you to easily perform document retrieval or RAG with Astra, and include those functions in Haystack pipelines.

In order to use the Document Store directly:

Import the Document Store:

from haystack_integrations.document_stores.astra import AstraDocumentStore
from haystack.document_stores.types.policy import DuplicatePolicy

Load in environment variables:

api_endpoint = os.getenv("ASTRA_DB_API_ENDPOINT", "")
token = os.getenv("ASTRA_DB_APPLICATION_TOKEN", "")
collection_name = os.getenv("COLLECTION_NAME", "haystack_vector_search")

Create the Document Store object:

document_store = AstraDocumentStore(
    api_endpoint=api_endpoint,
    token=token,
    collection_name=collection_name,
    duplicates_policy=DuplicatePolicy.SKIP,
    embedding_dim=384,
)

Then you can use the document store functions like count_document below: document_store.count_documents()

Using the Astra Embedding Retriever with Haystack Pipelines

Create the Document Store object like above, then import and create the Pipeline:

from haystack import Pipeline
pipeline = Pipeline()

Add your AstraEmbeddingRetriever into the pipeline pipeline.add_component(instance=AstraEmbeddingRetriever(document_store=document_store), name="retriever")

Add other components and connect them as desired. Then run your pipeline: pipeline.run(...)