Agently MCP
Discover public A2A agents on the Agently platform using its public API.
agently-mcp: Model Context Protocol Server for Agently Agents
agently-mcp is a lightweight MCP server implementation that enables A2A AI agents to discover and fetch other A2A agents on the Agently platform.
This essentially allows for an infinite amount of combinations: just imagine ANY data, sent in ANY modality to ANY agent, that will then call ANY number of other agents, for them to then cooperate and complete ANY sort of task - then you'll see that this is the ultimate future we are all heading towards, and that this is now becoming the present.
Key Features
- 🔍 Agent Discovery: Query and retrieve public Agently agents with flexible filtering, sorting, and pagination.
- ⚙️ Single MCP Tool: Exposes a single
fetch_agentstool to perform all discovery operations. - 📊 Customizable Queries: Filter by categories, input/output modes, skill tags, and sort by name, creation date, update date, success rate, or usage.
- 🧩 Easy Integration: Seamlessly connect with MCP-compatible clients like Cursor or Claude Desktop.
fetch_agents Tool Reference
Description
Fetch a paginated list of public agents from the Agently REST API (v1) with optional filters and sorting.
Request Parameters
All parameters are passed as properties in the arguments object:
| Parameter | Type | Default | Notes |
|---|---|---|---|
page | number | 1 | Page number (min: 1) |
limit | number | 10 | Items per page (1–50) |
searchTerm | string | — | Text search on agent names/descriptions (max 250 chars) |
categories | string[] | — | Filter by categories (AND logic, max 20 items) |
inputModes | string[] | — | Filter by input MIME types (AND logic, max 20 items) |
outputModes | string[] | — | Filter by output MIME types (AND logic, max 20 items) |
skillTags | string[] | — | Filter by skill tags (AND logic, max 20 items) |
sortByName | 'a-z' 'z-a' | — | Sort alphabetically |
sortByCreatedAt | 'newest' 'oldest' | — | Sort by creation date |
sortByUpdatedAt | 'newest' 'oldest' | — | Sort by last update |
sortBySuccessRate | 'highest' 'lowest' | — | Sort by agent success rate |
sortByUsage | 'highest' 'lowest' | — | Sort by usage count |
sortByViews | 'highest' 'lowest' | — | Sort by views |
isLocal | boolean | false | When true, returns Local agents instead of Deployed |
explanation | string | — | Optional note passed to the API (for logging/tracing) |
Response
Returns a CallToolResult containing:
- A JSON-stringified array of
found_agentsmatching the query. - The pagination details from the Agently API response.
Installation
Install via npm or yarn:
npm install agently-mcp
# or
yarn add agently-mcp
Usage
As a Standalone Server
Launch the MCP server to listen for requests on standard I/O:
# Global install
npm install -g agently-mcp
mcp-server
# Or using npx
yarn global add agently-mcp # or npm i -g
npx agently-mcp
The server will log its configured Agently API endpoint and await MCP tool calls.
Integrating with an MCP Client
Configure your MCP client (e.g., Cursor, Claude Desktop) to use agently-mcp:
{
"mcpServers": {
"agently": {
"command": "npx",
"args": [
"-y",
"agently-mcp@latest"
]
}
}
}
Using an API Key (optional)
If you have an Agently API key that restricts access to a specific set of agents, pass it to the MCP server via the AGENTLY_API_KEY environment variable. When supplied, the server automatically adds a Bearer token to outgoing requests so that only the agents allowed for that key are returned.
{
"mcpServers": {
"agently": {
"command": "npx",
"args": [
"-y",
"agently-mcp@latest"
],
"env": {
"AGENTLY_API_KEY": "YOUR_API_KEY_HERE"
}
}
}
}
If AGENTLY_API_KEY is not provided, the server behaves exactly as before and returns all public agents.
Windows Users
If you encounter execution issues, wrap the invocation in a `cmd /c` call:
{
"mcpServers": {
"agently": {
"command": "cmd",
"args": [
"/c",
"-y",
"npx",
"agently-mcp"
]
}
}
}
Debugging
Use the MCP Inspector to visualize and debug the MCP communication:
npx @modelcontextprotocol/inspector
This launches a local web UI for monitoring requests and responses over stdio.
For more details on the Agently Public API and MCP specification, refer to the respective documentation.
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