From openrouter-pack
Routes OpenRouter API calls to optimal models by task (e.g., code review to Claude-3.5-Sonnet) or prompt complexity for cost, quality, latency optimization in multi-model apps.
How this skill is triggered — by the user, by Claude, or both
Slash command
/openrouter-pack:openrouter-model-routingThis skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
OpenRouter gives you access to 100+ models through one API. The key to cost efficiency is routing each request to the right model based on task complexity, required capabilities, cost budget, and latency requirements. This skill covers task-based routing, complexity classification, cost-aware selection, and OpenRouter's native routing features.
OpenRouter gives you access to 100+ models through one API. The key to cost efficiency is routing each request to the right model based on task complexity, required capabilities, cost budget, and latency requirements. This skill covers task-based routing, complexity classification, cost-aware selection, and OpenRouter's native routing features.
import os, re
from openai import OpenAI
client = OpenAI(
base_url="https://openrouter.ai/api/v1",
api_key=os.environ["OPENROUTER_API_KEY"],
default_headers={"HTTP-Referer": "https://my-app.com", "X-Title": "my-app"},
)
# Model tiers by cost and capability
MODELS = {
"free": "google/gemma-2-9b-it:free", # $0/0 — testing only
"budget": "meta-llama/llama-3.1-8b-instruct", # $0.06/$0.06 per 1M
"mid": "openai/gpt-4o-mini", # $0.15/$0.60 per 1M
"standard":"anthropic/claude-3.5-sonnet", # $3/$15 per 1M
"premium": "openai/o1", # $15/$60 per 1M
}
TASK_ROUTING = {
"classification": "budget", # Simple label assignment
"translation": "mid", # Moderate quality needed
"summarization": "mid", # Good quality, cost-effective
"code_generation": "standard", # Needs high accuracy
"code_review": "standard", # Needs reasoning
"analysis": "standard", # Complex reasoning
"creative_writing":"standard", # Quality matters
"deep_reasoning": "premium", # Multi-step logic
"simple_qa": "budget", # Basic questions
"chat": "mid", # General conversation
}
def route_request(task_type: str, messages: list[dict], **kwargs) -> dict:
"""Route to appropriate model based on task type."""
tier = TASK_ROUTING.get(task_type, "mid")
model = MODELS[tier]
response = client.chat.completions.create(
model=model, messages=messages, **kwargs
)
return {
"content": response.choices[0].message.content,
"model": response.model,
"tier": tier,
"tokens": response.usage.prompt_tokens + response.usage.completion_tokens,
}
def classify_complexity(prompt: str) -> str:
"""Classify prompt complexity to select model tier.
Simple heuristics -- replace with a trained classifier for production.
"""
word_count = len(prompt.split())
has_code = bool(re.search(r'```|def |function |class |import ', prompt))
has_reasoning = bool(re.search(r'explain|analyze|compare|why|how does|trade.?off', prompt, re.I))
has_math = bool(re.search(r'calculate|equation|formula|derive|proof', prompt, re.I))
if has_math or (has_reasoning and has_code):
return "premium"
if has_code or has_reasoning or word_count > 500:
return "standard"
if word_count > 100:
return "mid"
return "budget"
def auto_route(messages: list[dict], **kwargs):
"""Automatically select model based on prompt complexity."""
user_msg = next((m["content"] for m in reversed(messages) if m["role"] == "user"), "")
tier = classify_complexity(user_msg)
model = MODELS[tier]
response = client.chat.completions.create(model=model, messages=messages, **kwargs)
return response
# Route: "fallback" — try models in order until one succeeds
response = client.chat.completions.create(
model="anthropic/claude-3.5-sonnet",
messages=[{"role": "user", "content": "Hello"}],
max_tokens=200,
extra_body={
"models": [
"anthropic/claude-3.5-sonnet",
"openai/gpt-4o",
"openai/gpt-4o-mini",
],
"route": "fallback",
},
)
# Provider routing — control which provider serves a model
response = client.chat.completions.create(
model="anthropic/claude-3.5-sonnet",
messages=[{"role": "user", "content": "Hello"}],
max_tokens=200,
extra_body={
"provider": {
"order": ["Anthropic", "AWS Bedrock"],
"allow_fallbacks": True,
},
},
)
# Model variant: ":floor" picks cheapest provider
response = client.chat.completions.create(
model="anthropic/claude-3.5-sonnet:floor",
messages=[{"role": "user", "content": "Hello"}],
max_tokens=200,
)
import requests
def get_model_pricing() -> dict:
"""Fetch current pricing for cost-aware routing."""
models = requests.get("https://openrouter.ai/api/v1/models").json()["data"]
return {
m["id"]: {
"prompt": float(m["pricing"]["prompt"]) * 1_000_000,
"completion": float(m["pricing"]["completion"]) * 1_000_000,
"context": m["context_length"],
}
for m in models
}
def cheapest_model_for_task(pricing: dict, min_context: int = 4096,
needs_tools: bool = False) -> str:
"""Find the cheapest model that meets requirements."""
candidates = [
(mid, p) for mid, p in pricing.items()
if p["context"] >= min_context and p["prompt"] > 0 # Exclude free (unreliable)
]
candidates.sort(key=lambda x: x[1]["prompt"] + x[1]["completion"])
return candidates[0][0] if candidates else "openai/gpt-4o-mini"
| Error | Cause | Fix |
|---|---|---|
| Wrong model selected | Classification too coarse | Add more task categories; test with diverse prompts |
| Model unavailable | Selected model temporarily down | Add fallback chain per tier |
| Cost overrun | Complex tasks routed to premium models | Set max_tokens and daily budget caps |
| Quality regression | Budget model can't handle task | Monitor output quality; escalate tier on poor results |
:floor variant to automatically get the cheapest provider for any modelmax_tokens on every request to cap per-request cost regardless of model tiernpx claudepluginhub jeremylongshore/claude-code-plugins-plus-skills --plugin openrouter-packModel routing configuration templates and strategies for cost optimization, speed optimization, quality optimization, and intelligent fallback chains. Use when building AI applications with OpenRouter, implementing model routing strategies, optimizing API costs, setting up fallback chains, implementing quality-based routing, or when user mentions model routing, cost optimization, fallback strategies, model selection, intelligent routing, or dynamic model switching.
Routes tasks to the cheapest capable model via llm-router MCP tools (Ollama, Codex, paid APIs in free-first order). Maps task types to cost-optimized calls.
Implements Python rules engine for OpenRouter model selection using user tier, task type, budget, tools, vision, and latency conditions with priorities and fallbacks.