🤖 End to End LLMOps Pipeline — Part 10 — Wrapping Up: Bringing It All Together using GitHub Action🤖
As we reach the final day of our series, it’s time to reflect on what we’ve learned over the past nine days. Each day, we delved into a different tool or concept, building a solid foundation for the work ahead. Here’s a quick recap of our journey:
- Day 1: Hugging Face — We explored the fundamentals of Hugging Face and its powerful tools for natural language processing.
- Day 2: FastAPI — We learned how to create fast and efficient APIs using FastAPI.
- Day 3: Docker — We dived into containerization with Docker, understanding how to package and deploy applications consistently.
- Day 4: Trivy — We discovered how to scan Docker images for vulnerabilities with Trivy, ensuring our applications are secure.
- Day 5: AWS ECR — We learned to manage and store Docker images in Amazon Elastic Container Registry (ECR).
- Day 6: Kubernetes — We ventured into the world of Kubernetes, understanding how to orchestrate and manage containerized applications at scale.
- Day 7: kube-score — We validated our Kubernetes manifests using kube-score, ensuring they follow best practices.
- Day 8: AWS EKS — We deployed our applications using Amazon Elastic Kubernetes Service (EKS), leveraging managed Kubernetes clusters.
- Day 9: Kustomize — We customized Kubernetes configurations with Kustomize, enabling flexible and reusable deployments.
Now, it’s time to bring all of these pieces together. Today, we’ll integrate everything we’ve learned using GitHub Actions. This powerful automation tool will help us streamline our workflow, from building and testing to deploying our applications seamlessly.
This GitHub Actions workflow automates the process of building, scanning, publishing a Docker image to Amazon ECR, and deploying it to an Amazon EKS cluster.
Workflow Overview
- Name: CI/CD Pipeline for EKS Deployment
- Triggers:
- Runs on push events to the main branch.
- Runs on pull requests targeting the main branch.
Environment Variables
The env section defines environment variables that are used throughout the workflow:
- AWS_REGION: AWS region where the ECR repository and EKS cluster are located.
- ECR_REPOSITORY: Name of the ECR repository.
- EKS_CLUSTER_NAME: Name of the EKS cluster.
- DEPLOYMENT_NAME: Name of the Kubernetes deployment.
- IMAGE: Name of the Docker image.
Job: Build, Scan, Publish, and Deploy
This job runs on an ubuntu-latest runner and is responsible for the entire CI/CD process. It runs in the production environment.
Steps
1. Checkout the Code
- name: Checkout
uses: actions/checkout@v2
- This step checks out the repository’s code, making it available for subsequent steps.
2. Configure AWS Credentials
- name: Configure AWS credentials
uses: aws-actions/configure-aws-credentials@v1
with:
aws-access-key-id: ${{ secrets.AWS_ACCESS_KEY_ID }}
aws-secret-access-key: ${{ secrets.AWS_SECRET_ACCESS_KEY }}
aws-region: ${{ env.AWS_REGION }}
- This step configures the AWS credentials required to interact with AWS services like ECR and EKS.
3. Login to Amazon ECR
- name: Login to Amazon ECR
id: login-ecr
run: |
aws ecr get-login-password --region $AWS_REGION | docker login --username AWS --password-stdin ${{ secrets.AWS_ACCOUNT_ID }}.dkr.ecr.$AWS_REGION.amazonaws.com
- This step logs in to the Amazon ECR registry using AWS CLI. The login credentials are passed securely using the — password-stdin option.
4. Build Docker Image
- name: Build Docker image
run: |
docker build -t $ECR_REPOSITORY:$GITHUB_SHA .
docker tag $ECR_REPOSITORY:$GITHUB_SHA ${{ secrets.AWS_ACCOUNT_ID }}.dkr.ecr.$AWS_REGION.amazonaws.com/$ECR_REPOSITORY:$GITHUB_SHA
- This step builds a Docker image from the checked-out code and tags it with the GitHub SHA for traceability.
5. Install Trivy
- name: Install Trivy
run: |
curl -sfL https://raw.githubusercontent.com/aquasecurity/trivy/main/contrib/install.sh | sudo sh -s -- -b /usr/local/bin
- This step installs Trivy, a security scanner for Docker images.
6. Clean Up Disk Space
- name: Clean up disk space
run: |
sudo rm -rf /var/lib/apt/lists/*
sudo apt-get clean
- This step cleans up disk space to ensure that the runner has enough free space for subsequent operations.
7. Scan Docker Image with Trivy
- name: Scan Docker image with Trivy
run: |
trivy image --severity HIGH,CRITICAL $ECR_REPOSITORY:$GITHUB_SHA
- This step scans the Docker image for vulnerabilities with high and critical severity using Trivy.
8. Push Docker Image to Amazon ECR
- name: Push Docker image to Amazon ECR
run: |
docker push ${{ secrets.AWS_ACCOUNT_ID }}.dkr.ecr.$AWS_REGION.amazonaws.com/$ECR_REPOSITORY:$GITHUB_SHA
- This step pushes the Docker image to the Amazon ECR repository.
9. Setup kubectl
- name: Setup kubectl
run: |
curl -o kubectl https://amazon-eks.s3.us-west-2.amazonaws.com/1.21.13/2022-06-08/bin/linux/amd64/kubectl
chmod +x ./kubectl
mkdir -p $HOME/bin && cp ./kubectl $HOME/bin/kubectl && export PATH=$HOME/bin:$PATH
echo 'export PATH=$HOME/bin:$PATH' >> ~/.bashrc
- This step installs kubectl, the Kubernetes command-line tool, and configures the system path to include it.
10. Set up Kustomize
- name: Set up Kustomize
run: |
curl -s "https://raw.githubusercontent.com/kubernetes-sigs/kustomize/master/hack/install_kustomize.sh" | bash
chmod u+x kustomize
sudo mv kustomize /usr/local/bin/kustomize
- This step installs Kustomize, a tool for customizing Kubernetes YAML configurations.
11. Update kubeconfig
- name: Update kubeconfig
run: |
aws eks update-kubeconfig --name $EKS_CLUSTER_NAME --region $AWS_REGION
- This step updates the kubeconfig file to allow kubectl to interact with the EKS cluster.
12. Install kube-score
- name: Install kube-score
run: |
curl -L -o kube-score https://github.com/zegl/kube-score/releases/download/v1.11.0/kube-score_1.11.0_linux_amd64
chmod +x kube-score
sudo mv kube-score /usr/local/bin/
- This step installs kube-score, a tool that validates Kubernetes manifests for best practices.
13. Lint Kubernetes Manifests with kube-score
- name: Lint Kubernetes manifests with kube-score
continue-on-error: true
run: |
kube-score score --output-format ci deploy.yaml
- This step lints the Kubernetes manifests using kube-score. The continue-on-error flag allows the workflow to proceed even if this step fails.
14. Deploy with Kustomize
- name: Deploy with Kustomize
run: |
kustomize edit set image image_name=${{ secrets.AWS_ACCOUNT_ID }}.dkr.ecr.$AWS_REGION.amazonaws.com/$ECR_REPOSITORY:$GITHUB_SHA
kustomize build . | kubectl apply -f -
kubectl rollout status deployment/$DEPLOYMENT_NAME
kubectl get services -o wide
-This step uses Kustomize to update the image in the Kubernetes manifests, builds the final manifests, and deploys them to the EKS cluster. It also checks the status of the deployment and lists the services.
Stay tuned as we wrap up this series by creating a fully automated CI/CD pipeline that leverages the tools and concepts we’ve mastered.
📚 If you enjoy these blog posts, please check out my three books on AWS, DevOps, and Machine Learning.
https://pratimuniyal.gumroad.com/l/BuildinganLLMOpsPipelineUsingHuggingFace
https://pratimuniyal.gumroad.com/l/cracking-the-devops-interview
https://www.amazon.com/AWS-System-Administrators-automate-infrastructure/dp/1800201532