llayer / titanic_k8s

Repository to test the deployment of a docker image to AKS

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

titanic_k8s

Repository to test the deployment of a docker image to AKS

0. Prerequsites

To run this tutorial you need to have

  • Docker Desktop running locally
  • a Bash shell that has the Azure CLI and kubectl installed
  • an Azure Subscription

1. Clone the repository and develop locally

git clone https://github.com/llayer/titanic_k8s.git

Install the pipfile (requires a python3.7 version) and open the shell:

cd titanic_k8s/deploy
pipenv install
pipenv shell

Run the app:

python api.py

2. Build docker image and test locally

docker build --tag html-sklearn-app deploy
docker run -it --rm --name html-sklearn-app -p 5000:5000 -d html-sklearn-app
docker ps

The HTML GUI can then be accessed on localhost:5000
It is also possible to make a request from the CLI:

 curl http://localhost:5000/titanic/v1/predict_api --request POST --header 'Content-Type: application/json' --data '{"Pclass": [1], "Sex": ["female"], "Age": [20], "SibSp": [1], "Parch": [0], "Fare": [100], "Embarked": ["S"]}'

To stop the container run:

docker stop html-sklearn-app

3. Upload image to Azure Container Registry (ACR)

Login to Azure via a Webbrowser and if not yet done create Resource Group

az login
az group create --name ak8_knowledge_transfer --location westeurope

then create an ACR instance and login

az acr create --resource-group ak8_knowledge_transfer --name ak8acr --sku Basic
az acr login --name ak8acr

Figure out the acrLoginServer-adress of the ACR:

az acr list --resource-group ak8_knowledge_transfer --query "[].{acrLoginServer:loginServer}" --output table

Then tag the local docker image with the acrLoginServer-adress (here 'ak8acr.azurecr.io') and push the image to the ACR

docker images
docker tag html-sklearn-app:latest ak8acr.azurecr.io/html-sklearn-app:v1
docker push ak8acr.azurecr.io/html-sklearn-app:v1

The images on ACR can be listed with:

az acr repository list --name ak8acr --output table

4. Deploy to Kubernetes

Start a Kubernetes Cluster

az aks create --resource-group ak8_knowledge_transfer --name ak8sklearn --node-count 2 --generate-ssh-keys --attach-acr ak8acr

Note you need to have Admin/Owner rights to be able to connect to ACR or you need to create a Service Principal
To configure kubectl run:

az aks get-credentials --resource-group ak8_knowledge_transfer --name ak8sklearn

The connection to the cluster can be checked with:

kubectl get nodes

The image can then be deployed with the commands:

kubectl create deployment html-sklearn-app --image=ak8acr.azurecr.io/html-sklearn-app:v1
kubectl expose deployment html-sklearn-app --port 5000 --type=LoadBalancer --name html-sklearn-app-lb

The status of the pods can be checked with

kubectl get pods

Find the public IP:

kubectl get service html-sklearn-app-lb --watch

The HTML API can the be accessed via the IP at port 5000, e.g. navigate in the browser to http://20.23.18.73:5000/
A request can also be made via the CLI:

curl http://20.23.18.73:5000/titanic/v1/predict_api --request POST --header 'Content-Type: application/json' --request POST --header 'Content-Type: application/json'   --data '{"Pclass": [1], "Sex": ["male"], "Age": [32], "SibSp": [1], "Parch": [0], "Fare": [100], "Embarked": ["S"]}'

Once the Cluster is not needed any more, it can be stopped or deleted with:

az aks stop --name ak8sklearn --resource-group ak8_knowledge_transfer
az aks delete --name ak8sklearn --resource-group ak8_knowledge_transfer

5. Scale and update the app

To update the image locally after changes to the code, remove the old one and build a new one

docker image rm html-sklearn-app
docker build --tag html-sklearn-app deploy

Then tag the new image version and push to the ACR:

docker tag html-sklearn-app:latest ak8acr.azurecr.io/html-sklearn-app:v2
docker push ak8acr.azurecr.io/html-sklearn-app:v2

To keep the deployment stable, it is required to scale the pods:

kubectl scale --replicas=3 deployment/html-sklearn-app
kubectl get pods

The new image can then be set via:

kubectl set image deployment html-sklearn-app html-sklearn-app=ak8acr.azurecr.io/html-sklearn-app:v2
kubectl get pods
kubectl scale --replicas=1 deployment/html-sklearn-app

The public IP can then be obtained via:

kubectl get service html-sklearn-app-lb --watch

About

Repository to test the deployment of a docker image to AKS


Languages

Language:Jupyter Notebook 92.0%Language:CSS 4.8%Language:Python 1.6%Language:HTML 1.5%Language:Dockerfile 0.1%