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page_type languages products urlFragment name description
sample
azdeveloper
go
javascript
rust
nodejs
python
bicep
terraform
dockerfile
azure
azure-kubernetes-service
azure-openai
azure-cosmos-db
azure-container-registry
azure-service-bus
azure-monitor
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azure-managed-grafana
azure-key-vault
aks-store-demo
AKS Store Demo
This sample demo app consists of a group of containerized microservices that can be easily deployed into an Azure Kubernetes Service (AKS) cluster.

AKS Store Demo

This sample demo app consists of a group of containerized microservices that can be easily deployed into an Azure Kubernetes Service (AKS) cluster. This is meant to show a realistic scenario using a polyglot architecture, event-driven design, and common open source back-end services (eg - RabbitMQ, MongoDB). The application also leverages OpenAI's GPT-3 models to generate product descriptions. This can be done using either Azure OpenAI or OpenAI.

This application is inspired by another demo app called Red Dog.

Note

This is not meant to be an example of perfect code to be used in production, but more about showing a realistic application running in AKS.

Architecture

The application has the following services:

Service Description
makeline-service This service handles processing orders from the queue and completing them (Golang)
order-service This service is used for placing orders (Javascript)
product-service This service is used to perform CRUD operations on products (Rust)
store-front Web app for customers to place orders (Vue.js)
store-admin Web app used by store employees to view orders in queue and manage products (Vue.js)
virtual-customer Simulates order creation on a scheduled basis (Rust)
virtual-worker Simulates order completion on a scheduled basis (Rust)
ai-service Optional service for adding generative text and graphics creation (Python)
mongodb MongoDB instance for persisted data
rabbitmq RabbitMQ for an order queue

Logical Application Architecture Diagram

Run the app on Azure Kubernetes Service (AKS)

To learn how to deploy this app on AKS, see Quickstart: Deploy an Azure Kubernetes Service (AKS) cluster using Azure CLI.

Note

The above article shows a simplified version of the store app with some services removed. For the full application, you can use the aks-store-all-in-one.yaml file in this repo.

Run on any Kubernetes

This application uses public images stored in GitHub Container Registry and Microsoft Container Registry (MCR). Once your Kubernetes cluster of choice is setup, you can deploy the full app with the below commands.

This deployment deploys everything except the ai-service that integrates OpenAI. If you want to try integrating the OpenAI component, take a look at this article: Deploy an application that uses OpenAI on Azure Kubernetes Service (AKS).

kubectl create ns pets

kubectl apply -f https://raw.githubusercontent.com/Azure-Samples/aks-store-demo/main/aks-store-all-in-one.yaml -n pets

Run the app locally

The application is designed to be run in an AKS cluster, but can also be run locally using Docker Compose.

Tip

You must have Docker Desktop installed to run this app locally. If you do not have it installed locally, you can try opening this repo in a GitHub Codespace instead

To run this app locally:

Clone the repo to your development computer and navigate to the directory:

git clone https://github.com/Azure-Samples/aks-store-demo.git
cd aks-store-demo

Configure your Azure OpenAI or OpenAI API keys in docker-compose.yml using the environment variables in the ai-service section:

  ai-service:
    build: src/ai-service
    container_name: 'ai-service'
    ...
    environment:
      - USE_AZURE_OPENAI=True # set to False if you are not using Azure OpenAI
      - AZURE_OPENAI_DEPLOYMENT_NAME= # required if using Azure OpenAI
      - AZURE_OPENAI_ENDPOINT= # required if using Azure OpenAI
      - OPENAI_API_KEY= # always required
      - OPENAI_ORG_ID= # required if using OpenAI
    ...

Alternatively, if you do not have access to Azure OpenAI or OpenAI API keys, you can run the app without the ai-service by commenting out the ai-service section in docker-compose.yml. For example:

#  ai-service:
#    build: src/ai-service
#    container_name: 'ai-service'
...
#    networks:
#      - backend_services

Start the app using docker compose. For example:

docker compose up

To stop the app, you can hit the CTRL+C key combination in the terminal window where the app is running.

Run the app with GitHub Codespaces

This repo also includes DevContainer configuration, so you can open the repo using GitHub Codespaces. This will allow you to run the app in a container in the cloud, without having to install Docker on your local machine. When the Codespace is created, you can run the app using the same instructions as above.

Open in GitHub Codespaces

Deploy the app to Azure using Azure Developer CLI

See the Azure Developer CLI documentation for instructions on how to quickly deploy the app to Azure.

Additional Resources