rag-semantic-kernel-mongodb-vcore
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A sample for implementing retrieval augmented generation using Azure Open AI to generate embeddings, Azure Cosmos DB for MongoDB vCore to perform vector search, and semantic kernel.
page_type: sample languages:
- azdeveloper
- python
- bicep
- html products:
- azure
- azure-app-service
- azure-openai
- cosmos-db
- mongodb-vcore urlFragment: rag-semantic-kernel-mongodb-vcore name: A Python sample for implementing retrieval augmented generation using Azure Open AI to generate embeddings, Azure Cosmos DB for MongoDB vCore to perform vector search and semantic kernel. Deployed to Azure App service using Azure Developer CLI (azd).
RAG using Semantic Kernel with Azure OpenAI and Azure Cosmos DB for MongoDB vCore
A Python sample for implementing retrieval augmented generation using Azure Open AI to generate embeddings, Azure Cosmos DB for MongoDB vCore to perform vector search and semantic kernel. Deployed to Azure App service using Azure Developer CLI (azd).
🎥 Click this image to watch the recorded reactor workshop
How to use?
-
Create the following resources on Microsoft Azure:
- Azure Cosmos DB for MongoDB vCore cluster. See the Quick Start guide here.
- Azure OpenAI resource with:
- Embedding model deployment. (ex.
text-embedding-ada-002) See the guide here. - Chat model deployment. (ex.
gpt-35-turbo)
- Embedding model deployment. (ex.
-
📝 Start here 👉 rag-azure-openai-cosmosdb-notebook.ipynb
https://github.com/john0isaac/rag-semantic-kernel-mongodb-vcore/assets/64026625/676a0e10-876f-45e6-942d-0494ac327c75
Test it inside codespaces 👇
Running the web app locally
To run the Quart application, follow these steps:
-
Download the project starter code locally
git clone https://github.com/john0isaac/rag-semantic-kernel-mongodb-vcore.git cd rag-semantic-kernel-mongodb-vcore -
Install, initialize and activate a virtualenv using:
pip install virtualenv python -m virtualenv .venv source .venv/bin/activateNote - In Windows, the
.venvdoes not have abindirectory. Therefore, you'd use the analogous command shown below:source .venv/Scripts/activate -
Install the dependencies:
pip install -r requirements-dev.txt -
Run the notebook to generate the .env file and test out everything first
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Install the app as an editable package:
pip install -e src -
Execute the following command in your terminal to start the quart app
export QUART_APP=src.quartapp export QUART_ENV=development export QUART_DEBUG=true quart run --reloadFor Windows, use
setxcommand shown below:setx QUART_APP src.quartapp setx QUART_ENV development setx QUART_DEBUG true quart run --reload -
Verify on the Browser
Navigate to project homepage http://127.0.0.1:5000/ or http://localhost:5000
https://github.com/john0isaac/rag-semantic-kernel-mongodb-vcore/assets/64026625/8a7556d6-2b54-40b5-825b-06d6efd4d1ca
Step-by-Step Deployment
Follow this guide 👉 Build RAG Chat App using Azure Cosmos DB for MongoDB vCore and Azure OpenAI: Step-by-Step Guide
azd Deployment
This repository is set up for deployment on Azure App Service (w/Azure Cosmos DB for MongoDB vCore) using the configuration files in the infra folder.
To deploy your own instance, follow these steps:
-
Sign up for a free Azure account
-
Install the Azure Dev CLI.
-
Login to your Azure account:
azd auth login -
Initialize a new
azdenvironment:azd initIt will prompt you to provide a name (like "quart-app") that will later be used in the name of the deployed resources.
-
Provision and deploy all the resources:
azd upIt will prompt you to login, pick a subscription, and provide a location (like "eastus"). Then it will provision the resources in your account and deploy the latest code. If you get an error with deployment, changing the location (like to "centralus") can help, as there may be availability constraints for some of the resources.
When azd has finished deploying, you'll see an endpoint URI in the command output. Visit that URI to browse the app! 🎉
[!NOTE] If you make any changes to the app code, you can just run this command to redeploy it:
azd deploy
Add the Data
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Open the Azure portal and sign in.
-
Navigate to your App Service page.
-
Select SSH from the left menu then, select Go.
-
In the SSH terminal, run
python ./scripts/add_data.py.
Add your Own Data
The Python scrips that adds the data is configured to accept any JSON file with your data but you need to specify the following parameters when you run it:
-
Data file path: Path to the JSON file that contains your data.
--file="./data/text-sample.json"or-f "./data/text-sample.json" -
ID field: This is the name of the field that cosmos uses to identify your database records.
--id-field=idor-id id -
Text field: This is the name of the field that will be used to generate the vector embeddings from and stored in the database.
--text-field=contentor-txt content -
Description field: This is the name of the description field that cosmos will store along with the embeddings.
--description-field=titleor-desc titlepython ./scripts/add_data.py --file="./data/text-sample.json" --id-field=id --text-field=content --description-field=title
Example for Step-by-step Manual Deployment
-
Add your JSON data to the data folder.
-
The workflow will trigger automatically and push your data to the Azure App service.
-
Open the Azure portal and sign in.
-
Navigate to your App Service page.
-
Select SSH from the left menu then, select Go.
-
In the SSH terminal, run the following command with the changed values to suit your data:
python ./scripts/add_data.py --file="./data/text-sample.json" --id-field=id --text-field=content --description-field=title
Example for azd Deployment
-
Add your JSON data to the data folder.
-
Run
azd deployto upload the data to Azure App Service. -
Open the Azure portal and sign in.
-
Navigate to your App Service page.
-
Select SSH from the left menu then, select Go.
-
In the SSH terminal, run the following command with the changed values to suit your data:
python ./scripts/add_data.py --file="./data/text-sample.json" --id-field=id --text-field=content --description-field=title
