A sample app for the Retrieval-Augmented Generation pattern running in Azure, using Azure AI Search for retrieval and Azure OpenAI large language models to power ChatGPT-style and Q&A experiences.
This solution creates a ChatGPT-like frontend experience over your own documents using RAG (Retrieval Augmented Generation). It uses Azure OpenAI Service to access GPT models, and Azure AI Search for data indexing and retrieval.
This solution’s backend is written in Python. There are also JavaScript, .NET, and Java samples based on this one. Learn more about developing AI apps using Azure AI Services.
This template, the application code and configuration it contains, has been built to showcase Microsoft Azure specific services and tools. We strongly advise our customers not to make this code part of their production environments without implementing or enabling additional security features. See our productionizing guide for tips, and consult the Azure OpenAI Landing Zone reference architecture for more best practices.
📺 Watch a video overview of the app.
This sample demonstrates a few approaches for creating ChatGPT-like experiences over your own data using the Retrieval Augmented Generation pattern. It uses Azure OpenAI Service to access a GPT model (gpt-35-turbo), and Azure AI Search for data indexing and retrieval.
The repo includes sample data so it’s ready to try end to end. In this sample application we use a fictitious company called Contoso Electronics, and the experience allows its employees to ask questions about the benefits, internal policies, as well as job descriptions and roles.
IMPORTANT: In order to deploy and run this example, you’ll need:
Microsoft.Authorization/roleAssignments/write
permissions, such as Role Based Access Control Administrator, User Access Administrator, or Owner. If you don’t have subscription-level permissions, you must be granted RBAC for an existing resource group and deploy to that existing group.Microsoft.Resources/deployments/write
permissions on the subscription level.Pricing varies per region and usage, so it isn’t possible to predict exact costs for your usage.
However, you can try the Azure pricing calculator for the resources below.
To reduce costs, you can switch to free SKUs for various services, but those SKUs have limitations.
See this guide on deploying with minimal costs for more details.
⚠️ To avoid unnecessary costs, remember to take down your app if it’s no longer in use,
either by deleting the resource group in the Portal or running azd down
.
You have a few options for setting up this project.
The easiest way to get started is GitHub Codespaces, since it will setup all the tools for you,
but you can also set it up locally if desired.
You can run this repo virtually by using GitHub Codespaces, which will open a web-based VS Code in your browser:
Once the codespace opens (this may take several minutes), open a terminal window.
A related option is VS Code Dev Containers, which will open the project in your local VS Code using the Dev Containers extension:
Start Docker Desktop (install it if not already installed)
In the VS Code window that opens, once the project files show up (this may take several minutes), open a terminal window.
Install the required tools:
python --version
from console. On Ubuntu, you might need to run sudo apt install python-is-python3
to link python
to python3
.pwsh.exe
from a PowerShell terminal. If this fails, you likely need to upgrade PowerShell.Create a new folder and switch to it in the terminal.
Run this command to download the project code:
azd init -t azure-search-openai-demo
Note that this command will initialize a git repository, so you do not need to clone this repository.
The steps below will provision Azure resources and deploy the application code to Azure Container Apps. To deploy to Azure App Service instead, follow the app service deployment guide.
Login to your Azure account:
azd auth login
For GitHub Codespaces users, if the previous command fails, try:
azd auth login --use-device-code
Create a new azd environment:
azd env new
Enter a name that will be used for the resource group.
This will create a new folder in the .azure
folder, and set it as the active environment for any calls to azd
going forward.
(Optional) This is the point where you can customize the deployment by setting environment variables, in order to use existing resources, enable optional features (such as auth or vision), or deploy to free tiers.
Run azd up
- This will provision Azure resources and deploy this sample to those resources, including building the search index based on the files found in the ./data
folder.
azd down
or delete the resources manually to avoid unnecessary spending.After the application has been successfully deployed you will see a URL printed to the console. Click that URL to interact with the application in your browser.
It will look like the following:
NOTE: It may take 5-10 minutes after you see ‘SUCCESS’ for the application to be fully deployed. If you see a “Python Developer” welcome screen or an error page, then wait a bit and refresh the page.
If you’ve only changed the backend/frontend code in the app
folder, then you don’t need to re-provision the Azure resources. You can just run:
azd deploy
If you’ve changed the infrastructure files (infra
folder or azure.yaml
), then you’ll need to re-provision the Azure resources. You can do that by running:
azd up
You can only run a development server locally after having successfully run the azd up
command. If you haven’t yet, follow the deploying steps above.
azd auth login
if you have not logged in recently.Windows:
./app/start.ps1
Linux/Mac:
./app/start.sh
VS Code: Run the “VS Code Task: Start App” task.
It’s also possible to enable hotloading or the VS Code debugger.
See more tips in the local development guide.
Once in the web app:
To clean up all the resources created by this sample:
azd down
y
y
The resource group and all the resources will be deleted.
You can find extensive documentation in the docs folder:
This is a sample built to demonstrate the capabilities of modern Generative AI apps and how they can be built in Azure.
For help with deploying this sample, please post in GitHub Issues. If you’re a Microsoft employee, you can also post in our Teams channel.
This repository is supported by the maintainers, not by Microsoft Support,
so please use the support mechanisms described above, and we will do our best to help you out.
Note: The PDF documents used in this demo contain information generated using a language model (Azure OpenAI Service). The information contained in these documents is only for demonstration purposes and does not reflect the opinions or beliefs of Microsoft. Microsoft makes no representations or warranties of any kind, express or implied, about the completeness, accuracy, reliability, suitability or availability with respect to the information contained in this document. All rights reserved to Microsoft.