| name | cloudflare-router |
| description | Manage Cloudflare DNS, CDN, and security rules via API. Use when configuring domains, SSL, WAF, or edge caching. |
| domain | core |
| tags | ["api","cloudflare","infrastructure","memory","router","self-improvement"] |
| persona | {"name":"Matthew Prince","title":"The Edge Network Expert - Master of Global Routing","expertise":["Edge Computing","CDN","Network Security","Global Routing"],"philosophy":"The network is the computer.","credentials":["CEO of Cloudflare","Built one of the largest edge networks","Pioneer of serverless edge"],"principles":["Route to nearest edge","Cache aggressively","Secure by default","Scale globally"]} |
Cloudflare Router
When to Use
Trigger phrases:
-
"cloudflare router"
-
"Adding new subdomains pointing to local services"
-
"Managing Cloudflare Tunnel ingress rules"
-
"Generating nginx reverse proxy configs"
-
Adding new subdomains pointing to local services
-
Managing Cloudflare Tunnel ingress rules
-
Generating nginx reverse proxy configs
-
Deploying DNS records to Cloudflare
-
Monitoring service health and status
When NOT to Use
- When the task can be solved with existing standard libraries
- When the infrastructure is already in place and working
- When the added complexity does not provide measurable benefit
Overview
Cloudflare Router is a foundational core infrastructure skill that provides system foundation capabilities for the agent ecosystem.
Architecture
- Input layer — Receives and validates incoming requests
- Processing layer — Core logic for system foundation
- Output layer — Formats and delivers results
- State management — Maintains context across invocations
Configuration
- Set up required environment variables and paths
- Configure logging level and output format
- Define resource limits (memory, time, API calls)
- Enable/disable features via configuration flags
Integration
- Exposes standard interfaces for other skills to consume
- Supports event-driven and request-response patterns
- Compatible with the 1ai-skills hook system
- Logs metrics for the skill performance monitor
Anti-Rationalization
| Rationalization | Reality |
|---|
| "I will add monitoring later" | Without monitoring, you cannot detect failures. Add it from day one. |
| "One model is enough" | Different tasks need different models. Route intelligently. |
| "Premature optimization" | Infrastructure decisions are hard to change later. Design for scale early. |
ROUTES = {
"code": ["claude-sonnet-4-20250514", "gpt-4o"],
"vision": ["gemini-2.5-pro", "gpt-4o"],
"fast": ["gemini-2.5-flash", "gpt-4o-mini"],
}
def route_request(task: str, prompt: str):
models = ROUTES.get(task, ROUTES["fast"])
for model in models:
try:
return call_model(model, prompt)
except Exception:
continue
raise RuntimeError("All models failed")
Process
- Prepare — Gather requirements, verify prerequisites, set up environment
- Execute — Run cloudflare router workflow with configured parameters
- Verify — Validate output meets requirements, document results
Verification