🧪 Skills

Open Router

Configure OpenRouter model routing with provider auth, model selection, fallback chains, and cost-aware defaults for stable multi-model workflows.

v1.0.0
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Description


name: Open Router slug: open-router version: 1.0.0 homepage: https://clawic.com/skills/open-router description: Configure OpenRouter model routing with provider auth, model selection, fallback chains, and cost-aware defaults for stable multi-model workflows. changelog: Initial release with practical OpenRouter setup, routing rules, fallback reliability, and budget-safe operating guidance. metadata: {"clawdbot":{"emoji":"🛣️","requires":{"bins":["curl","jq"],"env":["OPENROUTER_API_KEY"]},"os":["linux","darwin","win32"]}}

Setup

On first use, read setup.md to align activation boundaries, reliability goals, and routing preferences before making configuration changes.

When to Use

Use this skill when the user wants to connect an OpenAI-compatible workflow to OpenRouter, choose models by task type, set safe fallbacks, and control cost drift over time.

Architecture

Memory lives in ~/open-router/. See memory-template.md for structure.

~/open-router/
├── memory.md            # Active routing profile and constraints
├── providers.md         # Confirmed provider and auth choices
├── routing-rules.md     # Task -> model and fallback policy
├── incidents.md         # Outages, rate limits, and recovery notes
└── budgets.md           # Spend guardrails and optimization actions

Quick Reference

Use the smallest relevant file for the current task.

Topic File
Setup and activation preferences setup.md
Memory template memory-template.md
Authentication and provider wiring auth-and-provider.md
Routing patterns by workload routing-playbooks.md
Reliability and fallback handling fallback-reliability.md
Cost controls and spend reviews cost-guardrails.md

Core Rules

1. Start from Workload Classes, Not Model Hype

  • Classify requests first: coding, analysis, extraction, summarization, or long-context synthesis.
  • Map each class to a primary model and a fallback before changing any defaults.

2. Keep Authentication Explicit and Verifiable

  • Use OPENROUTER_API_KEY from the local environment, never pasted into logs or chat memory.
  • Validate auth with a minimal request before applying routing changes.

3. Design Fallbacks for Failure Modes, Not Convenience

  • Separate fallback reasons: rate limit, provider outage, latency spike, or output quality failure.
  • Keep at least one fallback from a different provider family for resilience.

4. Enforce Cost Boundaries Before Throughput Tuning

  • Set cost ceilings by task class and check expected token burn before broad rollout.
  • Route low-stakes tasks to cheaper models and reserve premium models for high-impact tasks.

5. Change One Layer at a Time

  • Modify either model selection, fallback policy, or budget limits in a single iteration.
  • After each change, run a quick verification prompt set and record outcome.

6. Record Decisions for Repeatability

  • Save the final routing policy, rationale, and known tradeoffs in memory.
  • Reuse proven policies instead of repeatedly rebuilding from scratch.

Common Traps

  • Choosing one model for every task -> higher cost and unstable quality under varied workloads.
  • Using same-family fallback chain only -> cascading failures during provider-specific incidents.
  • Ignoring token limits for long inputs -> truncated responses and hidden quality loss.
  • Changing routing and budgets simultaneously -> unclear root cause when quality drops.
  • Running without verification prompts -> broken routing detected only after user-facing failures.

External Endpoints

These endpoints are used only to discover model metadata and execute routed inference requests under explicit user task intent.

Endpoint Data Sent Purpose
https://openrouter.ai/api/v1/models none or auth header only Discover current model catalog and metadata
https://openrouter.ai/api/v1/chat/completions user prompt content and selected model id Execute routed inference requests

No other data is sent externally.

Security & Privacy

Data that leaves your machine:

  • Prompt text and selected model metadata sent to OpenRouter when inference is requested.

Data that stays local:

  • Routing notes and preferences under ~/open-router/.
  • Local environment variable references and verification logs.

This skill does NOT:

  • Request raw API keys in chat.
  • Store plaintext secrets in skill memory files.
  • Modify files outside ~/open-router/ for its own state.

Trust

By using this skill, prompt content is sent to OpenRouter for model execution. Only install if you trust this service with your data.

Related Skills

Install with clawhub install <slug> if user confirms:

  • api — API request design, payload shaping, and response validation patterns
  • auth — credential handling and auth troubleshooting workflows
  • models — model comparison and selection guidance
  • monitoring — runtime health checks and incident tracking practices

Feedback

  • If useful: clawhub star open-router
  • Stay updated: clawhub sync

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Compatible Platforms

Pricing

Free

Related Configs