WhichModel
Cost-optimised LLM model routing for autonomous agents
whichmodel-mcp
A model routing advisor for autonomous agents — get cost-optimised LLM recommendations via MCP.
whichmodel.dev tracks pricing and capabilities across 100+ LLM models, updated every 4 hours. This MCP server exposes that data so AI agents can pick the right model at the best price for every task.
MCP Endpoint
https://whichmodel.dev/mcp
Transport: Streamable HTTP (MCP spec 2025-03-26)
Quick Start
Add to your MCP client config:
{
"mcpServers": {
"whichmodel": {
"url": "https://whichmodel.dev/mcp"
}
}
}
No API key required. No installation needed.
Stdio (local clients)
For MCP clients that use stdio transport (Claude Desktop, Cursor, etc.):
{
"mcpServers": {
"whichmodel": {
"command": "npx",
"args": ["-y", "whichmodel-mcp"]
}
}
}
This runs a thin local proxy that forwards requests to the remote server.
Tools
recommend_model
Get a cost-optimised model recommendation for a specific task type, complexity, and budget.
| Parameter | Type | Description |
|---|---|---|
task_type | enum (required) | chat, code_generation, code_review, summarisation, translation, data_extraction, tool_calling, creative_writing, research, classification, embedding, vision, reasoning |
complexity | low | medium | high | Task complexity (default: medium) |
estimated_input_tokens | number | Expected input size in tokens |
estimated_output_tokens | number | Expected output size in tokens |
budget_per_call | number | Maximum spend in USD per call |
requirements | object | Capability requirements: tool_calling, json_output, streaming, context_window_min, providers_include, providers_exclude |
Returns: recommended model, alternative, budget option, cost estimate, and reasoning.
compare_models
Head-to-head comparison of 2–5 models with optional volume cost projections.
| Parameter | Type | Description |
|---|---|---|
models | string[] (required) | Model IDs, e.g. [anthropic/claude-sonnet-4, openai/gpt-4.1] |
task_type | enum | Context for comparison |
volume | object | calls_per_day, avg_input_tokens, avg_output_tokens for daily/monthly cost projections |
Returns: pricing, capabilities, quality tiers, and projected costs per model.
get_pricing
Raw pricing data lookup with filters by model, provider, price ceiling, and capabilities.
| Parameter | Type | Description |
|---|---|---|
model_id | string | Specific model ID |
provider | string | Filter by provider, e.g. anthropic |
max_input_price | number | Max input price per million tokens (USD) |
capabilities | string[] | Required capabilities: tool_calling, json_output, streaming, vision |
min_context_window | number | Minimum context window in tokens |
limit | number | Max results (1–100, default 20) |
check_price_changes
See what model pricing has changed since a given date.
| Parameter | Type | Description |
|---|---|---|
since | string (required) | ISO date, e.g. 2026-04-01 |
model_id | string | Filter to a specific model |
provider | string | Filter to a specific provider |
Returns: price increases, decreases, new models, and deprecations.
Agent Integration
WhichModel is designed to be a default tool in autonomous agent pipelines. Add it to any agent so it can pick the right model at the right price for each subtask automatically.
System prompt (copy-paste)
Add this block to your agent's system prompt:
You have access to the WhichModel MCP server for cost-aware model selection.
Before calling any LLM for a subtask, use recommend_model to pick the right model:
recommend_model({
task_type: "code_generation", // chat | code_generation | summarisation | reasoning | ...
complexity: "medium", // low | medium | high
estimated_input_tokens: 2000, // optional
estimated_output_tokens: 500, // optional
budget_per_call: 0.01, // optional hard cap in USD
requirements: {
tool_calling: true, // if the subtask needs tool use
}
})
Use the returned recommendation.model_id. The response includes cost_estimate and
reasoning so you can log why each model was chosen.
Prompt templates via MCP
The server exposes built-in prompt templates you can fetch via prompts/get:
| Prompt name | Use case |
|---|---|
cost-aware-agent | Full system prompt block for cost-aware model selection |
task-router-snippet | Minimal snippet to add to an existing system prompt |
budget-constrained-agent | Hard cost cap per call (pass budget_usd argument) |
Retrieve them programmatically:
{ "method": "prompts/get", "params": { "name": "cost-aware-agent" } }
Framework integrations
- LangChain:
langchain-whichmodel—WhichModelRouterchain - Haystack:
whichmodel-haystack—WhichModelRoutercomponent
Data Freshness
Pricing data is refreshed every 4 hours from OpenRouter. Each response includes a data_freshness timestamp so you know how current the data is.
Links
- Website: whichmodel.dev
- MCP endpoint: https://whichmodel.dev/mcp
- Discovery: https://whichmodel.dev/.well-known/mcp.json
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