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devops skill

/skills/devops

This skill guides deploying and managing cloud infrastructures across Cloudflare, Docker, and Google Cloud with practical, cost-efficient, scalable patterns.

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SKILL.md
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---
name: devops
description: Deploy and manage cloud infrastructure on Cloudflare (Workers, R2, D1, KV, Pages, Durable Objects, Browser Rendering), Docker containers, and Google Cloud Platform (Compute Engine, GKE, Cloud Run, App Engine, Cloud Storage). Use when deploying serverless functions to the edge, configuring edge computing solutions, managing Docker containers and images, setting up CI/CD pipelines, optimizing cloud infrastructure costs, implementing global caching strategies, working with cloud databases, or building cloud-native applications.
license: MIT
version: 1.0.0
---

# 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:
- Deploying serverless applications to Cloudflare Workers
- Containerizing applications with Docker
- Managing Google Cloud infrastructure with gcloud CLI
- Setting up CI/CD pipelines across platforms
- Optimizing cloud infrastructure costs
- Implementing multi-region deployments
- Building edge-first architectures
- Managing container orchestration with Kubernetes
- Configuring cloud storage solutions (R2, Cloud Storage)
- Automating infrastructure with scripts and IaC

## Platform Selection Guide

### When to Use Cloudflare

**Best For:**
- Edge-first applications with global distribution
- Ultra-low latency requirements (<50ms)
- Static sites with serverless functions
- Zero egress cost scenarios (R2 storage)
- WebSocket/real-time applications (Durable Objects)
- AI/ML at the edge (Workers AI)

**Key Products:**
- Workers (serverless functions)
- R2 (object storage, S3-compatible)
- D1 (SQLite database with global replication)
- KV (key-value store)
- Pages (static hosting + functions)
- Durable Objects (stateful compute)
- Browser Rendering (headless browser automation)

**Cost Profile:** Pay-per-request, generous free tier, zero egress fees

### When to Use Docker

**Best For:**
- Local development consistency
- Microservices architectures
- Multi-language stack applications
- Traditional VPS/VM deployments
- Kubernetes orchestration
- CI/CD build environments
- Database containerization (dev/test)

**Key Capabilities:**
- Application isolation and portability
- Multi-stage builds for optimization
- Docker Compose for multi-container apps
- Volume management for data persistence
- Network configuration and service discovery
- Cross-platform compatibility (amd64, arm64)

**Cost Profile:** Infrastructure cost only (compute + storage)

### When to Use Google Cloud

**Best For:**
- Enterprise-scale applications
- Data analytics and ML pipelines (BigQuery, Vertex AI)
- Hybrid/multi-cloud deployments
- Kubernetes at scale (GKE)
- Managed databases (Cloud SQL, Firestore, Spanner)
- Complex IAM and compliance requirements

**Key Services:**
- Compute Engine (VMs)
- GKE (managed Kubernetes)
- Cloud Run (containerized serverless)
- App Engine (PaaS)
- Cloud Storage (object storage)
- Cloud SQL (managed databases)

**Cost Profile:** Varied pricing, sustained use discounts, committed use contracts

## Quick Start

### Cloudflare Workers

```bash
# 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

```bash
# 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

```bash
# 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
- `cloudflare-platform.md` - Edge computing overview, key components
- `cloudflare-workers-basics.md` - Getting started, handler types, basic patterns
- `cloudflare-workers-advanced.md` - Advanced patterns, performance, optimization
- `cloudflare-workers-apis.md` - Runtime APIs, bindings, integrations
- `cloudflare-r2-storage.md` - R2 object storage, S3 compatibility, best practices
- `cloudflare-d1-kv.md` - D1 SQLite database, KV store, use cases
- `browser-rendering.md` - Puppeteer/Playwright automation on Cloudflare

### Docker Containerization
- `docker-basics.md` - Core concepts, Dockerfile, images, containers
- `docker-compose.md` - Multi-container apps, networking, volumes

### Google Cloud Platform
- `gcloud-platform.md` - GCP overview, gcloud CLI, authentication
- `gcloud-services.md` - Compute Engine, GKE, Cloud Run, App Engine

### Python Utilities
- `scripts/cloudflare-deploy.py` - Automate Cloudflare Worker deployments
- `scripts/docker-optimize.py` - Analyze and optimize Dockerfiles

## Common Workflows

### Edge + Container Hybrid

```yaml
# 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

```dockerfile
# 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

```yaml
# 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
- Run containers as non-root user
- Use service account impersonation (GCP)
- Store secrets in environment variables, not code
- Scan images for vulnerabilities (Docker Scout)
- Use API tokens with minimal permissions

### Performance
- Multi-stage Docker builds to reduce image size
- Edge caching with Cloudflare KV
- Use R2 for zero egress cost storage
- Implement health checks for containers
- Set appropriate timeouts and resource limits

### Cost Optimization
- Use Cloudflare R2 instead of S3 for large egress
- Implement caching strategies (edge + KV)
- Right-size container resources
- Use sustained use discounts (GCP)
- Monitor usage with cloud provider dashboards

### Development
- Use Docker Compose for local development
- Wrangler dev for local Worker testing
- Named gcloud configurations for multi-environment
- Version control infrastructure code
- 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

- **Cloudflare Docs:** https://developers.cloudflare.com
- **Docker Docs:** https://docs.docker.com
- **GCP Docs:** https://cloud.google.com/docs
- **Wrangler CLI:** https://developers.cloudflare.com/workers/wrangler/
- **gcloud CLI:** https://cloud.google.com/sdk/gcloud

## Implementation Checklist

### Cloudflare Workers
- [ ] Install Wrangler CLI
- [ ] Create Worker project
- [ ] Configure wrangler.toml (bindings, routes)
- [ ] Test locally with `wrangler dev`
- [ ] Deploy with `wrangler deploy`

### Docker
- [ ] Write Dockerfile with multi-stage builds
- [ ] Create .dockerignore file
- [ ] Test build locally
- [ ] Push to registry
- [ ] Deploy to target platform

### Google Cloud
- [ ] Install gcloud CLI
- [ ] Authenticate with service account
- [ ] Create project and enable APIs
- [ ] Configure IAM permissions
- [ ] Deploy and monitor resources

Overview

This skill provides practical guidance and tools to deploy and manage cloud infrastructure across Cloudflare, Docker, and Google Cloud Platform. It focuses on edge-first serverless deployments, container workflows, CI/CD patterns, cost optimization, and cloud-native best practices. Use it to design hybrid edge + cloud architectures and automate deployments reliably.

How this skill works

The skill inspects platform needs and recommends the right stack: Cloudflare Workers, R2, D1, KV and Durable Objects for edge workloads; Docker for containerization and local parity; and GCP services (Compute Engine, GKE, Cloud Run, App Engine, Cloud Storage) for scale and managed services. It provides commands, Dockerfiles, CI/CD patterns, and checklists to bootstrap projects, deploy services, and automate tests and releases. It also includes security, performance, and cost optimization guidance for each platform.

When to use it

  • Deploying serverless functions to the edge with ultra-low latency
  • Containerizing apps for consistent development and CI/CD pipelines
  • Running containerized backends on Cloud Run or GKE
  • Storing large objects with zero egress cost (R2) or serving global static sites
  • Implementing multi-region or hybrid edge + cloud architectures
  • Optimizing cloud costs and enforcing security best practices

Best practices

  • Run containers as a non-root user and scan images for vulnerabilities
  • Use multi-stage Docker builds to minimize image size and speed CI
  • Store secrets securely and use least-privilege service accounts on GCP
  • Leverage edge caching (Workers + KV) and health checks for resilience
  • Right-size resources and enable monitoring to control cost and performance

Example use cases

  • Edge API gateway on Cloudflare Workers with backend services on Cloud Run
  • Static site served by Cloudflare Pages with serverless Functions for dynamic routes
  • Local development with Docker Compose and CI using multi-stage builds and test containers
  • Global file delivery using R2 for zero egress fees and Cloud Run for processing
  • Kubernetes workloads on GKE for enterprise-scale services with Cloud SQL for managed relational storage

FAQ

Which platform should I pick for sub-50ms global latency?

Choose Cloudflare Workers and place static assets in R2 with caching via KV for the fastest global responses.

When is Docker preferred over serverless?

Use Docker when you need consistent local environments, long-running processes, complex dependencies, or full control over runtime and networking.