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llmrouter

Intelligent LLM proxy that routes requests to appropriate models based on complexity. Save money by using cheaper models for simple tasks. Tested with Anthropic, OpenAI, Gemini, Kimi/Moonshot, and Ollama.

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This page reorganizes the original catalog entry around fit, installability, and workflow context first. The original raw source lives below.

Stars
3,131
Hot score
99
Updated
March 20, 2026
Overall rating
C4.0
Composite score
4.0
Best-practice grade
C56.0

Install command

npx @skill-hub/cli install openclaw-skills-llmrouter

Repository

openclaw/skills

Skill path: skills/alexrudloff/llmrouter

Intelligent LLM proxy that routes requests to appropriate models based on complexity. Save money by using cheaper models for simple tasks. Tested with Anthropic, OpenAI, Gemini, Kimi/Moonshot, and Ollama.

Open repository

Best for

Primary workflow: Ship Full Stack.

Technical facets: Full Stack, Testing.

Target audience: everyone.

License: Unknown.

Original source

Catalog source: SkillHub Club.

Repository owner: openclaw.

This is still a mirrored public skill entry. Review the repository before installing into production workflows.

What it helps with

  • Install llmrouter into Claude Code, Codex CLI, Gemini CLI, or OpenCode workflows
  • Review https://github.com/openclaw/skills before adding llmrouter to shared team environments
  • Use llmrouter for development workflows

Works across

Claude CodeCodex CLIGemini CLIOpenCode

Favorites: 0.

Sub-skills: 0.

Aggregator: No.

Original source / Raw SKILL.md

---
name: llmrouter
description: Intelligent LLM proxy that routes requests to appropriate models based on complexity. Save money by using cheaper models for simple tasks. Tested with Anthropic, OpenAI, Gemini, Kimi/Moonshot, and Ollama.
homepage: https://github.com/alexrudloff/llmrouter
metadata: {"openclaw":{"emoji":"🔀","homepage":"https://github.com/alexrudloff/llmrouter","os":["darwin","linux"],"requires":{"bins":["python3"],"anyBins":["pip","pip3"]},"primaryEnv":"ANTHROPIC_API_KEY"}}
---

# LLM Router

An intelligent proxy that classifies incoming requests by complexity and routes them to appropriate LLM models. Use cheaper/faster models for simple tasks and reserve expensive models for complex ones.

**Works with [OpenClaw](https://github.com/openclaw/openclaw)** to reduce token usage and API costs by routing simple requests to smaller models.

**Status:** Tested with Anthropic, OpenAI, Google Gemini, Kimi/Moonshot, and Ollama.

## Quick Start

### Prerequisites

1. **Python 3.10+** with pip
2. **Ollama** (optional - only if using local classification)
3. **Anthropic API key** or Claude Code OAuth token (or other provider key)

### Setup

```bash
# Clone if not already present
git clone https://github.com/alexrudloff/llmrouter.git
cd llmrouter

# Create virtual environment (required on modern Python)
python3 -m venv venv
source venv/bin/activate

# Install dependencies
pip install -r requirements.txt

# Pull classifier model (if using local classification)
ollama pull qwen2.5:3b

# Copy and customize config
cp config.yaml.example config.yaml
# Edit config.yaml with your API key and model preferences
```

### Verify Installation

```bash
# Start the server
source venv/bin/activate
python server.py

# In another terminal, test health endpoint
curl http://localhost:4001/health
# Should return: {"status": "ok", ...}
```

### Start the Server

```bash
python server.py
```

Options:
- `--port PORT` - Port to listen on (default: 4001)
- `--host HOST` - Host to bind (default: 127.0.0.1)
- `--config PATH` - Config file path (default: config.yaml)
- `--log` - Enable verbose logging
- `--openclaw` - Enable OpenClaw compatibility (rewrites model name in system prompt)

## Configuration

Edit `config.yaml` to customize:

### Model Routing

```yaml
# Anthropic routing
models:
  super_easy: "anthropic:claude-haiku-4-5-20251001"
  easy: "anthropic:claude-haiku-4-5-20251001"
  medium: "anthropic:claude-sonnet-4-20250514"
  hard: "anthropic:claude-opus-4-20250514"
  super_hard: "anthropic:claude-opus-4-20250514"

# OpenAI routing
models:
  super_easy: "openai:gpt-4o-mini"
  easy: "openai:gpt-4o-mini"
  medium: "openai:gpt-4o"
  hard: "openai:o3-mini"
  super_hard: "openai:o3"

# Google Gemini routing
models:
  super_easy: "google:gemini-2.0-flash"
  easy: "google:gemini-2.0-flash"
  medium: "google:gemini-2.0-flash"
  hard: "google:gemini-2.0-flash"
  super_hard: "google:gemini-2.0-flash"
```

**Note:** Reasoning models are auto-detected and use correct API params.

### Classifier

Three options for classifying request complexity:

**Local (default)** - Free, requires Ollama:
```yaml
classifier:
  provider: "local"
  model: "qwen2.5:3b"
```

**Anthropic** - Uses Haiku, fast and cheap:
```yaml
classifier:
  provider: "anthropic"
  model: "claude-haiku-4-5-20251001"
```

**OpenAI** - Uses GPT-4o-mini:
```yaml
classifier:
  provider: "openai"
  model: "gpt-4o-mini"
```

**Google** - Uses Gemini:
```yaml
classifier:
  provider: "google"
  model: "gemini-2.0-flash"
```

**Kimi** - Uses Moonshot:
```yaml
classifier:
  provider: "kimi"
  model: "moonshot-v1-8k"
```

Use remote (anthropic/openai/google/kimi) if your machine can't run local models.

### Supported Providers

- `anthropic:claude-*` - Anthropic Claude models (tested)
- `openai:gpt-*`, `openai:o1-*`, `openai:o3-*` - OpenAI models (tested)
- `google:gemini-*` - Google Gemini models (tested)
- `kimi:kimi-k2.5`, `kimi:moonshot-*` - Kimi/Moonshot models (tested)
- `local:model-name` - Local Ollama models (tested)

## Complexity Levels

| Level | Use Case | Default Model |
|-------|----------|---------------|
| super_easy | Greetings, acknowledgments | Haiku |
| easy | Simple Q&A, reminders | Haiku |
| medium | Coding, emails, research | Sonnet |
| hard | Complex reasoning, debugging | Opus |
| super_hard | System architecture, proofs | Opus |

## Customizing Classification

Edit `ROUTES.md` to tune how messages are classified. The classifier reads the table in this file to determine complexity levels.

## API Usage

The router exposes an OpenAI-compatible API:

```bash
curl http://localhost:4001/v1/chat/completions \
  -H "Authorization: Bearer $ANTHROPIC_API_KEY" \
  -H "Content-Type: application/json" \
  -d '{
    "model": "llm-router",
    "messages": [{"role": "user", "content": "Hello!"}]
  }'
```

## Testing Classification

```bash
python classifier.py "Write a Python sort function"
# Output: medium

python classifier.py --test
# Runs test suite
```

## Running as macOS Service

Create `~/Library/LaunchAgents/com.llmrouter.plist`:

```xml
<?xml version="1.0" encoding="UTF-8"?>
<!DOCTYPE plist PUBLIC "-//Apple//DTD PLIST 1.0//EN" "http://www.apple.com/DTDs/PropertyList-1.0.dtd">
<plist version="1.0">
<dict>
    <key>Label</key>
    <string>com.llmrouter</string>
    <key>ProgramArguments</key>
    <array>
        <string>/path/to/llmrouter/venv/bin/python</string>
        <string>/path/to/llmrouter/server.py</string>
        <string>--openclaw</string>
    </array>
    <key>RunAtLoad</key>
    <true/>
    <key>KeepAlive</key>
    <true/>
    <key>WorkingDirectory</key>
    <string>/path/to/llmrouter</string>
    <key>StandardOutPath</key>
    <string>/path/to/llmrouter/logs/stdout.log</string>
    <key>StandardErrorPath</key>
    <string>/path/to/llmrouter/logs/stderr.log</string>
</dict>
</plist>
```

**Important:** Replace `/path/to/llmrouter` with your actual install path. Must use the venv python, not system python.

```bash
# Create logs directory
mkdir -p ~/path/to/llmrouter/logs

# Load the service
launchctl load ~/Library/LaunchAgents/com.llmrouter.plist

# Verify it's running
curl http://localhost:4001/health

# To stop/restart
launchctl unload ~/Library/LaunchAgents/com.llmrouter.plist
launchctl load ~/Library/LaunchAgents/com.llmrouter.plist
```

## OpenClaw Configuration

Add the router as a provider in `~/.openclaw/openclaw.json`:

```json
{
  "models": {
    "providers": {
      "localrouter": {
        "baseUrl": "http://localhost:4001/v1",
        "apiKey": "via-router",
        "api": "openai-completions",
        "models": [
          {
            "id": "llm-router",
            "name": "LLM Router (Auto-routes by complexity)",
            "reasoning": false,
            "input": ["text", "image"],
            "cost": {
              "input": 0,
              "output": 0,
              "cacheRead": 0,
              "cacheWrite": 0
            },
            "contextWindow": 200000,
            "maxTokens": 8192
          }
        ]
      }
    }
  }
}
```

**Note:** Cost is set to 0 because actual costs depend on which model the router selects. The router logs which model handled each request.

### Set as Default Model (Optional)

To use the router for all agents by default, add:

```json
{
  "agents": {
    "defaults": {
      "model": {
        "primary": "localrouter/llm-router"
      }
    }
  }
}
```

### Using with OAuth Tokens

If your `config.yaml` uses an Anthropic OAuth token from OpenClaw's `~/.openclaw/auth-profiles.json`, the router automatically handles Claude Code identity headers.

### OpenClaw Compatibility Mode (Required)

**If using with OpenClaw, you MUST start the server with `--openclaw`:**

```bash
python server.py --openclaw
```

This flag enables compatibility features required for OpenClaw:
- Rewrites model names in responses so OpenClaw shows the actual model being used
- Handles tool name and ID remapping for proper tool call routing

Without this flag, you may encounter errors when using the router with OpenClaw.

## Common Tasks

- **Check server status**: `curl http://localhost:4001/health`
- **View current config**: `cat config.yaml`
- **Test a classification**: `python classifier.py "your message"`
- **Run classification tests**: `python classifier.py --test`
- **Restart server**: Stop and run `python server.py` again
- **View logs** (if running as service): `tail -f logs/stdout.log`

## Troubleshooting

### "externally-managed-environment" error
Python 3.11+ requires virtual environments. Create one:
```bash
python3 -m venv venv
source venv/bin/activate
pip install -r requirements.txt
```

### "Connection refused" on port 4001
Server isn't running. Start it:
```bash
source venv/bin/activate && python server.py
```

### Classification returns wrong complexity
Edit `ROUTES.md` to tune classification rules. The classifier reads this file to determine complexity levels.

### Ollama errors / "model not found"
Ensure Ollama is running and the model is pulled:
```bash
ollama serve  # Start Ollama if not running
ollama pull qwen2.5:3b
```

### OAuth token not working
Ensure your token in `config.yaml` starts with `sk-ant-oat`. The router auto-detects OAuth tokens and adds required identity headers.

### LaunchAgent not starting
Check logs and ensure paths are absolute:
```bash
cat ~/Library/LaunchAgents/com.llmrouter.plist  # Verify paths
cat /path/to/llmrouter/logs/stderr.log  # Check for errors
```


---

## Skill Companion Files

> Additional files collected from the skill directory layout.

### _meta.json

```json
{
  "owner": "alexrudloff",
  "slug": "llmrouter",
  "displayName": "Llmrouter",
  "latest": {
    "version": "0.1.1",
    "publishedAt": 1770055010755,
    "commit": "https://github.com/clawdbot/skills/commit/184a7d05c9d790360b9954dd2823042029ace9d7"
  },
  "history": []
}

```

llmrouter | SkillHub