OpenRouter
Integrate with OpenRouter.ai's diverse ecosystem of AI models. Requires an OpenRouter API key.
OpenRouter MCP Server
A Model Context Protocol (MCP) server providing seamless integration with OpenRouter.ai's diverse model ecosystem. Access various AI models through a unified, type-safe interface with built-in caching, rate limiting, and error handling.
Features
-
Model Access
- Direct access to all OpenRouter.ai models
- Automatic model validation and capability checking
- Default model configuration support
-
Performance Optimization
- Smart model information caching (1-hour expiry)
- Automatic rate limit management
- Exponential backoff for failed requests
-
Unified Response Format
- Consistent
ToolResultstructure for all responses - Clear error identification with
isErrorflag - Structured error messages with context
- Consistent
Installation
pnpm install @mcpservers/openrouterai
Configuration
Prerequisites
- Get your OpenRouter API key from OpenRouter Keys
- Choose a default model (optional)
Environment Variables
OPENROUTER_API_KEY: Required. Your OpenRouter API key.OPENROUTER_DEFAULT_MODEL: Optional. The default model to use if not specified in the request (e.g.,openrouter/auto).OPENROUTER_MAX_TOKENS: Optional. Default maximum number of tokens to generate ifmax_tokensis not provided in the request.OPENROUTER_PROVIDER_QUANTIZATIONS: Optional. Comma-separated list of default quantization levels to filter by (e.g.,fp16,int8) ifprovider.quantizationsis not provided in the request. (Phase 1)OPENROUTER_PROVIDER_IGNORE: Optional. Comma-separated list of default provider names to ignore (e.g.,mistralai,openai) ifprovider.ignoreis not provided in the request. (Phase 1)OPENROUTER_PROVIDER_SORT: Optional. Default sort order for providers ("price", "throughput", or "latency"). Overridden byprovider.sortargument. (Phase 2)OPENROUTER_PROVIDER_ORDER: Optional. Default prioritized list of provider IDs (JSON array string, e.g.,'["openai/gpt-4o", "anthropic/claude-3-opus"]'). Overridden byprovider.orderargument. (Phase 2)OPENROUTER_PROVIDER_REQUIRE_PARAMETERS: Optional. Default boolean (trueorfalse) to only use providers supporting all specified request parameters. Overridden byprovider.require_parametersargument. (Phase 2)OPENROUTER_PROVIDER_DATA_COLLECTION: Optional. Default data collection policy ("allow" or "deny"). Overridden byprovider.data_collectionargument. (Phase 2)OPENROUTER_PROVIDER_ALLOW_FALLBACKS: Optional. Default boolean (trueorfalse) to control fallback behavior if preferred providers fail. Overridden byprovider.allow_fallbacksargument. (Phase 2)
# Example .env file content
OPENROUTER_API_KEY=your-api-key-here
OPENROUTER_DEFAULT_MODEL=openrouter/auto
OPENROUTER_MAX_TOKENS=1024
OPENROUTER_PROVIDER_QUANTIZATIONS=fp16,int8
OPENROUTER_PROVIDER_IGNORE=openai,anthropic
OPENROUTER_PROVIDER_SORT=price
OPENROUTER_PROVIDER_ORDER='["openai/gpt-4o", "anthropic/claude-3-opus"]'
OPENROUTER_PROVIDER_REQUIRE_PARAMETERS=true
OPENROUTER_PROVIDER_DATA_COLLECTION=deny
OPENROUTER_PROVIDER_ALLOW_FALLBACKS=false
OPENROUTER_PROVIDER_QUANTIZATIONS=fp16,int8 OPENROUTER_PROVIDER_IGNORE=openai,anthropic
### Setup
Add to your MCP settings configuration file (`cline_mcp_settings.json` or `claude_desktop_config.json`):
```json
{
"mcpServers": {
"openrouterai": {
"command": "npx",
"args": ["@mcpservers/openrouterai"],
"env": {
"OPENROUTER_API_KEY": "your-api-key-here",
"OPENROUTER_DEFAULT_MODEL": "optional-default-model",
"OPENROUTER_MAX_TOKENS": "1024",
"OPENROUTER_PROVIDER_QUANTIZATIONS": "fp16,int8",
"OPENROUTER_PROVIDER_IGNORE": "openai,anthropic"
}
}
}
}
## Response Format
All tools return responses in a standardized structure:
```typescript
interface ToolResult {
isError: boolean;
content: Array<{
type: "text";
text: string; // JSON string or error message
}>;
}
Success Example:
{
"isError": false,
"content": [{
"type": "text",
"text": "{\"id\": \"gen-123\", ...}"
}]
}
Error Example:
{
"isError": true,
"content": [{
"type": "text",
"text": "Error: Model validation failed - 'invalid-model' not found"
}]
}
Available Tools
chat_completion
Sends a request to the OpenRouter Chat Completions API.
Input Schema:
model(string, optional): The model to use (e.g.,openai/gpt-4o,google/gemini-pro). OverridesOPENROUTER_DEFAULT_MODEL. Defaults toopenrouter/autoif neither is set.- Model Suffixes: You can append
:nitroto a model ID (e.g.,openai/gpt-4o:nitro) to potentially route to faster, experimental versions if available. Append:floor(e.g.,mistralai/mistral-7b-instruct:floor) to use the cheapest available variant of a model, often useful for testing or low-cost tasks. Note: Availability of:nitroand:floorvariants depends on OpenRouter.
- Model Suffixes: You can append
messages(array, required): An array of message objects conforming to the OpenAI chat completion format.temperature(number, optional): Sampling temperature. Defaults to 1.max_tokens(number, optional): Maximum number of tokens to generate in the completion. OverridesOPENROUTER_MAX_TOKENS.provider(object, optional): Provider routing configuration. Overrides correspondingOPENROUTER_PROVIDER_*environment variables.quantizations(array of strings, optional): List of quantization levels to filter by (e.g.,["fp16", "int8"]). Only models matching one of these levels will be considered. OverridesOPENROUTER_PROVIDER_QUANTIZATIONS. (Phase 1)ignore(array of strings, optional): List of provider names to exclude (e.g.,["openai", "anthropic"]). Models from these providers will not be used. OverridesOPENROUTER_PROVIDER_IGNORE. (Phase 1)sort("price" | "throughput" | "latency", optional): Sort providers by the specified criteria. OverridesOPENROUTER_PROVIDER_SORT. (Phase 2)order(array of strings, optional): A prioritized list of provider IDs (e.g.,["openai/gpt-4o", "anthropic/claude-3-opus"]). OverridesOPENROUTER_PROVIDER_ORDER. (Phase 2)require_parameters(boolean, optional): If true, only use providers that support all specified request parameters (like tools, functions, temperature). OverridesOPENROUTER_PROVIDER_REQUIRE_PARAMETERS. (Phase 2)data_collection("allow" | "deny", optional): Specify whether providers are allowed to collect data from the request. OverridesOPENROUTER_PROVIDER_DATA_COLLECTION. (Phase 2)allow_fallbacks(boolean, optional): If true (default), allows falling back to other providers if the preferred ones fail or are unavailable. If false, fails the request if preferred providers cannot be used. OverridesOPENROUTER_PROVIDER_ALLOW_FALLBACKS. (Phase 2)
Example Usage:
{
"tool": "chat_completion",
"arguments": {
"model": "anthropic/claude-3-haiku",
"messages": [
{ "role": "user", "content": "Explain the concept of quantization in AI models." }
],
"max_tokens": 500,
"provider": {
"quantizations": ["fp16"],
"ignore": ["openai"],
"sort": "price",
"order": ["anthropic/claude-3-haiku", "google/gemini-pro"],
"require_parameters": true,
"allow_fallbacks": false
}
}
}
This example requests a completion from anthropic/claude-3-haiku, limits the response to 500 tokens. It specifies provider routing options: prefer fp16 quantized models, ignore openai providers, sort remaining providers by price, prioritize anthropic/claude-3-haiku then google/gemini-pro, require the chosen provider to support all request parameters (like max_tokens), and disable fallbacks (fail if the prioritized providers cannot fulfill the request).
search_models
Search and filter available models:
interface ModelSearchRequest {
query?: string;
provider?: string;
minContextLength?: number;
capabilities?: {
functions?: boolean;
vision?: boolean;
};
}
// Response: ToolResult with model list or error
get_model_info
Get detailed information about a specific model:
{
model: string; // Model identifier
}
validate_model
Check if a model ID is valid:
interface ModelValidationRequest {
model: string;
}
// Response:
// Success: { isError: false, valid: true }
// Error: { isError: true, error: "Model not found" }
Error Handling
The server provides structured errors with contextual information:
// Error response structure
{
isError: true,
content: [{
type: "text",
text: "Error: [Category] - Detailed message"
}]
}
Common Error Categories:
Validation Error: Invalid input parametersAPI Error: OpenRouter API communication issuesRate Limit: Request throttling detectionInternal Error: Server-side processing failures
Handling Responses:
async function handleResponse(result: ToolResult) {
if (result.isError) {
const errorMessage = result.content[0].text;
if (errorMessage.startsWith('Error: Rate Limit')) {
// Handle rate limiting
}
// Other error handling
} else {
const data = JSON.parse(result.content[0].text);
// Process successful response
}
}
Development
See CONTRIBUTING.md for detailed information about:
- Development setup
- Project structure
- Feature implementation
- Error handling guidelines
- Tool usage examples
# Install dependencies
pnpm install
# Build project
pnpm run build
# Run tests
pnpm test
Changelog
See CHANGELOG.md for recent updates including:
- Unified response format implementation
- Enhanced error handling system
- Type-safe interface improvements
License
This project is licensed under the Apache License 2.0 - see the LICENSE file for details.
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