Create a RAG Pipeline with Qdrant
Last updated
Last updated
Approximate time to complete: 5-10 minutes, excluding prerequisites
This quickstart will walk you through creating and scheduling a pipeline that uses a web crawler to ingest data from the Vectorize documentation, creates vector embeddings using an OpenAI embedding model, and writes the vectors to a Qdrant vector database.
Before starting, ensure you have access to the credentials, connection parameters, and API keys as appropriate for the following:
A Vectorize account (Create one free here ↗ )
An OpenAI API Key (How to article)
An Qdrant account (Create one on Qdrant ↗)
This quickstart shows how to create a free cluster. The steps are the same if you'd like to create a production cluster instead.
Log in to Qdrant, navigate to Clusters, and click Create Free Cluster.
While your cluster is creating, generate your API key by clicking Generate API Key.
Save and securely store your API key.
Scroll down and click on Manage your Cluster.
Copy and securely store your cluster's endpoint.
Open the Vectorize Application Console ↗
From the dashboard, click on + New RAG Pipeline
under the "RAG Pipelines" section.
Enter a name for your pipeline. For example, you can name it quickstart-pipeline
.
Click on New Vector DB to create a new vector database integration.
Select Qdrant from the list of vector databases.
Enter the parameters in the form using the Qdrant Parameters table below as a guide, then click Create Qdrant Integration.
Name
A descriptive name to identify the integration within Vectorize.
Yes
Host
The Qdrant cluster's endpoint.
Yes
API key
The Qdrant cluster's API key.
Yes
You can think of the Qdrant integration as having two parts to it. The first is authorization with your Qdrant cluster. This part is re-usable across pipelines and allows you to connect to this same application in different pipelines without providing the credentials every time.
The second part is the configuration that's specific to your RAG Pipeline. This is where you specify the name of the collection in your Qdrant database. If the collection does not already exist, Vectorize will create it for you.
Click on New AI Platform.
Select OpenAI from the AI platform options.
In the OpenAI configuration screen:
Enter a descriptive name for your OpenAI integration.
Enter your OpenAI API Key.
Leave the default values for embedding model, chunk size, and chunk overlap for the quickstart.
Click on Add Source Connector.
Choose the type of source connector you'd like to use. In this example, select Web Crawler.
Name your web crawler source connector, e.g., vectorize-docs.
Set Seed URL(s) to https://docs.vectorize.io
.
Click Create Web Crawler Integration to proceed.
Accept all the default values for the web crawler pipeline configuration:
Throttle Wait Between Requests: 500 ms
Maximum Error Count: 5
Maximum URLs: 1000
Maximum Depth: 50
Reindex Interval: 3600 seconds
Click Save Configuration.
Verify that your web crawler connector is visible under Source Connectors.
Click Next: Schedule RAG Pipeline to continue.
Accept the default schedule configuration
Click Create RAG Pipeline.
The system will now create, deploy, and backfill the pipeline.
You can monitor the status changes from Creating Pipeline to Deploying Pipeline and Starting Backfilling Process.
Once the initial population is complete, the RAG pipeline will begin crawling the Vectorize docs and writing vectors to your Pinecone index.
Once the website crawling is complete, your RAG pipeline will switch to the Listening state, where it will stay until more updates are available.
In the RAG Sandbox, you can ask questions about the data ingested by the web crawler. Click on RAG Sandbox.
Type a question into the input field (e.g., "What are the key features of Vectorize?"), and click Submit.
The system will return the most relevant chunks of information from your indexed data, along with an LLM response.
This completes the RAG pipeline quickstart. Your RAG pipeline is now set up and ready for use with Qdrant and Vectorize.