DevOps Skill
Comprehensive guide for deploying and managing cloud infrastructure across Cloudflare edge platform, Docker containerization, and Google Cloud Platform.
When to Use This Skill
Use this skill when:
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Deploying serverless applications to Cloudflare Workers
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Containerizing applications with Docker
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Managing Google Cloud infrastructure with gcloud CLI
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Setting up CI/CD pipelines across platforms
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Optimizing cloud infrastructure costs
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Implementing multi-region deployments
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Building edge-first architectures
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Managing container orchestration with Kubernetes
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Configuring cloud storage solutions (R2, Cloud Storage)
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Automating infrastructure with scripts and IaC
Platform Selection Guide
When to Use Cloudflare
Best For:
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Edge-first applications with global distribution
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Ultra-low latency requirements (<50ms)
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Static sites with serverless functions
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Zero egress cost scenarios (R2 storage)
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WebSocket/real-time applications (Durable Objects)
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AI/ML at the edge (Workers AI)
Key Products:
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Workers (serverless functions)
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R2 (object storage, S3-compatible)
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D1 (SQLite database with global replication)
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KV (key-value store)
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Pages (static hosting + functions)
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Durable Objects (stateful compute)
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Browser Rendering (headless browser automation)
Cost Profile: Pay-per-request, generous free tier, zero egress fees
When to Use Docker
Best For:
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Local development consistency
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Microservices architectures
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Multi-language stack applications
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Traditional VPS/VM deployments
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Kubernetes orchestration
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CI/CD build environments
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Database containerization (dev/test)
Key Capabilities:
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Application isolation and portability
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Multi-stage builds for optimization
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Docker Compose for multi-container apps
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Volume management for data persistence
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Network configuration and service discovery
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Cross-platform compatibility (amd64, arm64)
Cost Profile: Infrastructure cost only (compute + storage)
When to Use Google Cloud
Best For:
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Enterprise-scale applications
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Data analytics and ML pipelines (BigQuery, Vertex AI)
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Hybrid/multi-cloud deployments
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Kubernetes at scale (GKE)
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Managed databases (Cloud SQL, Firestore, Spanner)
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Complex IAM and compliance requirements
Key Services:
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Compute Engine (VMs)
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GKE (managed Kubernetes)
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Cloud Run (containerized serverless)
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App Engine (PaaS)
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Cloud Storage (object storage)
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Cloud SQL (managed databases)
Cost Profile: Varied pricing, sustained use discounts, committed use contracts
Quick Start
Cloudflare Workers
Install Wrangler CLI
npm install -g wrangler
Create and deploy Worker
wrangler init my-worker cd my-worker wrangler deploy
See: references/cloudflare-workers-basics.md
Docker Container
Create Dockerfile
cat > Dockerfile <<EOF FROM node:20-alpine WORKDIR /app COPY package*.json ./ RUN npm ci --production COPY . . EXPOSE 3000 CMD ["node", "server.js"] EOF
Build and run
docker build -t myapp . docker run -p 3000:3000 myapp
See: references/docker-basics.md
Google Cloud Deployment
Install and authenticate
curl https://sdk.cloud.google.com | bash gcloud init gcloud auth login
Deploy to Cloud Run
gcloud run deploy my-service
--image gcr.io/project/image
--region us-central1
See: references/gcloud-platform.md
Reference Navigation
Cloudflare Platform
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cloudflare-platform.md
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Edge computing overview, key components
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cloudflare-workers-basics.md
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Getting started, handler types, basic patterns
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cloudflare-workers-advanced.md
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Advanced patterns, performance, optimization
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cloudflare-workers-apis.md
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Runtime APIs, bindings, integrations
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cloudflare-r2-storage.md
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R2 object storage, S3 compatibility, best practices
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cloudflare-d1-kv.md
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D1 SQLite database, KV store, use cases
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browser-rendering.md
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Puppeteer/Playwright automation on Cloudflare
Docker Containerization
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docker-basics.md
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Core concepts, Dockerfile, images, containers
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docker-compose.md
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Multi-container apps, networking, volumes
Google Cloud Platform
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gcloud-platform.md
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GCP overview, gcloud CLI, authentication
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gcloud-services.md
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Compute Engine, GKE, Cloud Run, App Engine
Python Utilities
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scripts/cloudflare-deploy.py
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Automate Cloudflare Worker deployments
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scripts/docker-optimize.py
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Analyze and optimize Dockerfiles
Common Workflows
Edge + Container Hybrid
Cloudflare Workers (API Gateway)
-> Docker containers on Cloud Run (Backend Services)
-> R2 (Object Storage)
Benefits:
- Edge caching and routing
- Containerized business logic
- Global distribution
Multi-Stage Docker Build
Build stage
FROM node:20-alpine AS build WORKDIR /app COPY package*.json ./ RUN npm ci COPY . . RUN npm run build
Production stage
FROM node:20-alpine WORKDIR /app COPY --from=build /app/dist ./dist COPY --from=build /app/node_modules ./node_modules USER node CMD ["node", "dist/server.js"]
CI/CD Pipeline Pattern
1. Build: Docker multi-stage build
2. Test: Run tests in container
3. Push: Push to registry (GCR, Docker Hub)
4. Deploy: Deploy to Cloudflare Workers / Cloud Run
5. Verify: Health checks and smoke tests
Best Practices
Security
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Run containers as non-root user
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Use service account impersonation (GCP)
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Store secrets in environment variables, not code
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Scan images for vulnerabilities (Docker Scout)
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Use API tokens with minimal permissions
Performance
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Multi-stage Docker builds to reduce image size
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Edge caching with Cloudflare KV
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Use R2 for zero egress cost storage
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Implement health checks for containers
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Set appropriate timeouts and resource limits
Cost Optimization
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Use Cloudflare R2 instead of S3 for large egress
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Implement caching strategies (edge + KV)
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Right-size container resources
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Use sustained use discounts (GCP)
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Monitor usage with cloud provider dashboards
Development
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Use Docker Compose for local development
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Wrangler dev for local Worker testing
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Named gcloud configurations for multi-environment
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Version control infrastructure code
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Implement automated testing in CI/CD
Decision Matrix
Need Choose
Sub-50ms latency globally Cloudflare Workers
Large file storage (zero egress) Cloudflare R2
SQL database (global reads) Cloudflare D1
Containerized workloads Docker + Cloud Run/GKE
Enterprise Kubernetes GKE
Managed relational DB Cloud SQL
Static site + API Cloudflare Pages
WebSocket/real-time Cloudflare Durable Objects
ML/AI pipelines GCP Vertex AI
Browser automation Cloudflare Browser Rendering
Resources
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Cloudflare Docs: https://developers.cloudflare.com
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Docker Docs: https://docs.docker.com
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GCP Docs: https://cloud.google.com/docs
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Wrangler CLI: https://developers.cloudflare.com/workers/wrangler/
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gcloud CLI: https://cloud.google.com/sdk/gcloud
Implementation Checklist
Cloudflare Workers
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Install Wrangler CLI
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Create Worker project
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Configure wrangler.toml (bindings, routes)
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Test locally with wrangler dev
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Deploy with wrangler deploy
Docker
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Write Dockerfile with multi-stage builds
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Create .dockerignore file
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Test build locally
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Push to registry
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Deploy to target platform
Google Cloud
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Install gcloud CLI
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Authenticate with service account
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Create project and enable APIs
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Configure IAM permissions
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Deploy and monitor resources