Agent skill

fastmcp

Build, test, inspect, install, and deploy MCP servers with FastMCP in Python. Use when creating a new MCP server, wrapping an API or database as MCP tools, exposing resources or prompts, or preparing a FastMCP server for Claude Code, Cursor, or HTTP deployment.

Stars 56,643
Forks 7,481

Install this agent skill to your Project

npx add-skill https://github.com/NousResearch/hermes-agent/tree/main/optional-skills/mcp/fastmcp

Metadata

Additional technical details for this skill

hermes
{
    "tags": [
        "MCP",
        "FastMCP",
        "Python",
        "Tools",
        "Resources",
        "Prompts",
        "Deployment"
    ],
    "homepage": "https://gofastmcp.com",
    "related_skills": [
        "native-mcp",
        "mcporter"
    ]
}

SKILL.md

FastMCP

Build MCP servers in Python with FastMCP, validate them locally, install them into MCP clients, and deploy them as HTTP endpoints.

When to Use

Use this skill when the task is to:

  • create a new MCP server in Python
  • wrap an API, database, CLI, or file-processing workflow as MCP tools
  • expose resources or prompts in addition to tools
  • smoke-test a server with the FastMCP CLI before wiring it into Hermes or another client
  • install a server into Claude Code, Claude Desktop, Cursor, or a similar MCP client
  • prepare a FastMCP server repo for HTTP deployment

Use native-mcp when the server already exists and only needs to be connected to Hermes. Use mcporter when the goal is ad-hoc CLI access to an existing MCP server instead of building one.

Prerequisites

Install FastMCP in the working environment first:

bash
pip install fastmcp
fastmcp version

For the API template, install httpx if it is not already present:

bash
pip install httpx

Included Files

Templates

  • templates/api_wrapper.py - REST API wrapper with auth header support
  • templates/database_server.py - read-only SQLite query server
  • templates/file_processor.py - text-file inspection and search server

Scripts

  • scripts/scaffold_fastmcp.py - copy a starter template and replace the server name placeholder

References

  • references/fastmcp-cli.md - FastMCP CLI workflow, installation targets, and deployment checks

Workflow

1. Pick the Smallest Viable Server Shape

Choose the narrowest useful surface area first:

  • API wrapper: start with 1-3 high-value endpoints, not the whole API
  • database server: expose read-only introspection and a constrained query path
  • file processor: expose deterministic operations with explicit path arguments
  • prompts/resources: add only when the client needs reusable prompt templates or discoverable documents

Prefer a thin server with good names, docstrings, and schemas over a large server with vague tools.

2. Scaffold from a Template

Copy a template directly or use the scaffold helper:

bash
python ~/.hermes/skills/mcp/fastmcp/scripts/scaffold_fastmcp.py \
  --template api_wrapper \
  --name "Acme API" \
  --output ./acme_server.py

Available templates:

bash
python ~/.hermes/skills/mcp/fastmcp/scripts/scaffold_fastmcp.py --list

If copying manually, replace __SERVER_NAME__ with a real server name.

3. Implement Tools First

Start with @mcp.tool functions before adding resources or prompts.

Rules for tool design:

  • Give every tool a concrete verb-based name
  • Write docstrings as user-facing tool descriptions
  • Keep parameters explicit and typed
  • Return structured JSON-safe data where possible
  • Validate unsafe inputs early
  • Prefer read-only behavior by default for first versions

Good tool examples:

  • get_customer
  • search_tickets
  • describe_table
  • summarize_text_file

Weak tool examples:

  • run
  • process
  • do_thing

4. Add Resources and Prompts Only When They Help

Add @mcp.resource when the client benefits from fetching stable read-only content such as schemas, policy docs, or generated reports.

Add @mcp.prompt when the server should provide a reusable prompt template for a known workflow.

Do not turn every document into a prompt. Prefer:

  • tools for actions
  • resources for data/document retrieval
  • prompts for reusable LLM instructions

5. Test the Server Before Integrating It Anywhere

Use the FastMCP CLI for local validation:

bash
fastmcp inspect acme_server.py:mcp
fastmcp list acme_server.py --json
fastmcp call acme_server.py search_resources query=router limit=5 --json

For fast iterative debugging, run the server locally:

bash
fastmcp run acme_server.py:mcp

To test HTTP transport locally:

bash
fastmcp run acme_server.py:mcp --transport http --host 127.0.0.1 --port 8000
fastmcp list http://127.0.0.1:8000/mcp --json
fastmcp call http://127.0.0.1:8000/mcp search_resources query=router --json

Always run at least one real fastmcp call against each new tool before claiming the server works.

6. Install into a Client When Local Validation Passes

FastMCP can register the server with supported MCP clients:

bash
fastmcp install claude-code acme_server.py
fastmcp install claude-desktop acme_server.py
fastmcp install cursor acme_server.py -e .

Use fastmcp discover to inspect named MCP servers already configured on the machine.

When the goal is Hermes integration, either:

  • configure the server in ~/.hermes/config.yaml using the native-mcp skill, or
  • keep using FastMCP CLI commands during development until the interface stabilizes

7. Deploy After the Local Contract Is Stable

For managed hosting, Prefect Horizon is the path FastMCP documents most directly. Before deployment:

bash
fastmcp inspect acme_server.py:mcp

Make sure the repo contains:

  • a Python file with the FastMCP server object
  • requirements.txt or pyproject.toml
  • any environment-variable documentation needed for deployment

For generic HTTP hosting, validate the HTTP transport locally first, then deploy on any Python-compatible platform that can expose the server port.

Common Patterns

API Wrapper Pattern

Use when exposing a REST or HTTP API as MCP tools.

Recommended first slice:

  • one read path
  • one list/search path
  • optional health check

Implementation notes:

  • keep auth in environment variables, not hardcoded
  • centralize request logic in one helper
  • surface API errors with concise context
  • normalize inconsistent upstream payloads before returning them

Start from templates/api_wrapper.py.

Database Pattern

Use when exposing safe query and inspection capabilities.

Recommended first slice:

  • list_tables
  • describe_table
  • one constrained read query tool

Implementation notes:

  • default to read-only DB access
  • reject non-SELECT SQL in early versions
  • limit row counts
  • return rows plus column names

Start from templates/database_server.py.

File Processor Pattern

Use when the server needs to inspect or transform files on demand.

Recommended first slice:

  • summarize file contents
  • search within files
  • extract deterministic metadata

Implementation notes:

  • accept explicit file paths
  • check for missing files and encoding failures
  • cap previews and result counts
  • avoid shelling out unless a specific external tool is required

Start from templates/file_processor.py.

Quality Bar

Before handing off a FastMCP server, verify all of the following:

  • server imports cleanly
  • fastmcp inspect <file.py:mcp> succeeds
  • fastmcp list <server spec> --json succeeds
  • every new tool has at least one real fastmcp call
  • environment variables are documented
  • the tool surface is small enough to understand without guesswork

Troubleshooting

FastMCP command missing

Install the package in the active environment:

bash
pip install fastmcp
fastmcp version

fastmcp inspect fails

Check that:

  • the file imports without side effects that crash
  • the FastMCP instance is named correctly in <file.py:object>
  • optional dependencies from the template are installed

Tool works in Python but not through CLI

Run:

bash
fastmcp list server.py --json
fastmcp call server.py your_tool_name --json

This usually exposes naming mismatches, missing required arguments, or non-serializable return values.

Hermes cannot see the deployed server

The server-building part may be correct while the Hermes config is not. Load the native-mcp skill and configure the server in ~/.hermes/config.yaml, then restart Hermes.

References

For CLI details, install targets, and deployment checks, read references/fastmcp-cli.md.

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