Use containers for RAG development
Prerequisites
Complete Containerize a RAG application.
Overview
In this section, you'll learn how to set up a development environment to access all the services that your generative RAG application needs. This includes:
- Adding a local database
- Adding a local or remote LLM service
Note
You can see more samples of containerized GenAI applications in the GenAI Stack demo applications.
Add a local database
You can use containers to set up local services, like a database. In this section, you'll explore the database service in the docker-compose.yaml
file.
To run the database service:
-
In the cloned repository's directory, open the
docker-compose.yaml
file in an IDE or text editor. -
In the
docker-compose.yaml
file, you'll see the following:services: qdrant: image: qdrant/qdrant container_name: qdrant ports: - "6333:6333" volumes: - qdrant_data:/qdrant/storage
Note
To learn more about Qdrant, see the Qdrant Official Docker Image.
-
Start the application. Inside the
winy
directory, run the following command in a terminal.$ docker compose up --build
-
Access the application. Open a browser and view the application at http://localhost:8501. You should see a simple Streamlit application.
-
Stop the application. In the terminal, press
ctrl
+c
to stop the application.
Add a local or remote LLM service
The sample application supports both Ollama. This guide provides instructions for the following scenarios:
- Run Ollama in a container
- Run Ollama outside of a container
While all platforms can use any of the previous scenarios, the performance and GPU support may vary. You can use the following guidelines to help you choose the appropriate option:
- Run Ollama in a container if you're on Linux, and using a native installation of the Docker Engine, or Windows 10/11, and using Docker Desktop, you have a CUDA-supported GPU, and your system has at least 8 GB of RAM.
- Run Ollama outside of a container if running Docker Desktop on a Linux Machine.
Choose one of the following options for your LLM service.
When running Ollama in a container, you should have a CUDA-supported GPU. While you can run Ollama in a container without a supported GPU, the performance may not be acceptable. Only Linux and Windows 11 support GPU access to containers.
To run Ollama in a container and provide GPU access:
-
Install the prerequisites.
- For Docker Engine on Linux, install the NVIDIA Container Toolkilt.
- For Docker Desktop on Windows 10/11, install the latest NVIDIA driver and make sure you are using the WSL2 backend
-
The
docker-compose.yaml
file already contains the necessary instructions. In your own apps, you'll need to add the Ollama service in yourdocker-compose.yaml
. The following is the updateddocker-compose.yaml
:ollama: image: ollama/ollama container_name: ollama ports: - "8000:8000" deploy: resources: reservations: devices: - driver: nvidia count: 1 capabilities: [gpu]
Note
For more details about the Compose instructions, see Turn on GPU access with Docker Compose.
-
Once the Ollama container is up and running it is possible to use the
download_model.sh
inside thetools
folder with this command:. ./download_model.sh <model-name>
Pulling an Ollama model can take several minutes.
To run Ollama outside of a container:
-
Install and run Ollama on your host machine.
-
Pull the model to Ollama using the following command.
$ ollama pull llama2
-
Remove the
ollama
service from thedocker-compose.yaml
and update properly the connection variables inwiny
service:- OLLAMA=http://ollama:11434 + OLLAMA=<your-url>
Run your RAG application
At this point, you have the following services in your Compose file:
- Server service for your main RAG application
- Database service to store vectors in a Qdrant database
- (optional) Ollama service to run the LLM service
Once the application is running, open a browser and access the application at http://localhost:8501.
Depending on your system and the LLM service that you chose, it may take several minutes to answer.
Summary
In this section, you learned how to set up a development environment to provide access all the services that your GenAI application needs.
Related information:
Next steps
See samples of more GenAI applications in the GenAI Stack demo applications.