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Build agent skills where you work — write a script, add a SKILL.md, and use it in Claude Code/codex/Cursor immediately. The same fixed entry point that runs loc
Build agent skills where you work — write a script, add a SKILL.md, and use it in Claude Code/codex/Cursor immediately. The same fixed entry point that runs locally deploys to production without a rewrite.
Most coding assistants now support skills natively, so an MCP server just for skill discovery isn't necessary. Where this package adds value is making skills' execution deterministic and deployable — with a fixed entry point and controlled execution, skills developed in your editor can run in non-sandboxed production environments. It also supports incremental loading, so agents discover skills on demand instead of loading everything upfront.
Build agent skills where you work. Write a Python script, add a SKILL.md, and your agent can use it immediately. Iterate in real-time as part of your daily workflow. When it's ready, deploy the same skill to production — no rewrite needed.
Most skill development looks like this: write code → deploy → test in a staging agent → realize it's wrong → redeploy → repeat. It's slow, and you never get to actually use the skill while building it.
MCP Skill Server flips this. It runs on your machine, inside your editor — Claude Code, Cursor, or Claude Desktop. You develop a skill and use it in your real work at the same time. That tight feedback loop (edit → save → use) means you discover what's missing naturally, not through artificial test scenarios. The premise is if the skill doesn't work well with Claude Code, it's unlikely to work with a less sophisticated agent.
Claude skills can already have companion scripts, but there's no formalized entry point — the agent decides how to invoke them. That works for local use, but it's not deployable: a production MCP server can't reliably call a skill if the execution path isn't fixed.
MCP Skill Server enforces a declared entry field in your SKILL.md frontmatter (e.g. entry: uv run python my_script.py). This gives you a single, fixed entry point that the server controls. Commands and parameters are discovered from the script's --help output — that's the source of truth, not the LLM's interpretation of your code.
1. Claude/coding agent skill → SKILL.md + scripts, but no fixed entry — agent decides how to run them
2. Local MCP skill (+ entry) → Fixed entry point, schema from --help, usable daily via this server
3. Production → Same skill, same entry — deployed to your enterprise MCP server
Every agent that connects to the MCP server gets the same interface — list_skills, get_skill, run_skill — so the skill's description, parameter names, and help text are identical regardless of which agent calls them. That said, different agents have different strengths — a skill that works locally still needs testing with your production agent.
entry in SKILL.md for reliable, secure execution. Use skill init to scaffold it, skill validate to check readiness.After installing, edit the skills path in your Claude Desktop config to point to your skills directory.
claude mcp add skills -- uvx mcp-skill-server serve /path/to/my/skills
Add to .cursor/mcp.json in your project (or Settings → MCP → Add Server):
{
"mcpServers": {
"skills": {
"command": "uvx",
"args": ["mcp-skill-server", "serve", "/path/to/my/skills"]
}
}
}
# From PyPI (recommended)
uv pip install mcp-skill-server
# Or from source
git clone https://github.com/jcc-ne/mcp-skill-server
cd mcp-skill-server && uv sync
# Run the server
uvx mcp-skill-server serve /path/to/my/skills
Then add to your editor's MCP config:
{
"mcpServers": {
"skills": {
"command": "uvx",
"args": ["mcp-skill-server", "serve", "/path/to/my/skills"]
}
}
}
skill init (recommended)# Create a new skill
uv run mcp-skill-server init ./my_skills/hello -n "hello" -d "A friendly greeting"
# Or use the standalone command
uv run mcp-skill-init ./my_skills/hello -n "hello" -d "A friendly greeting"
# Promote an existing prompt-only Claude skill to a runnable MCP skill
uv run mcp-skill-init ./existing_claude_skill
my_skills/
└── hello/
├── SKILL.md
└── hello.py
---
name: hello
description: A friendly greeting skill
entry: uv run python hello.py
---
# Hello Skill
Greets the user by name.
# hello.py
import argparse
parser = argparse.ArgumentParser(description="Greeting skill")
parser.add_argument("--name", default="World", help="Name to greet")
args = parser.parse_args()
print(f"Hello, {args.name}!")
That's it. The server auto-discovers commands and parameters from your --help output — no config needed.
When a skill is ready to graduate to production:
uv run mcp-skill-server validate ./my_skills/hello
# or
uv run mcp-skill-validate ./my_skills/hello
Checks:
--helpThe server exposes four tools to your agent:
| Tool | Description |
|---|---|
list_skills |
List all available skills |
get_skill |
Get details about a skill (commands, parameters) |
run_skill |
Execute a skill with parameters |
refresh_skills |
Reload skills after you make changes |
The server automatically discovers your skill's interface by parsing --help output:
# Subcommands become separate commands
subparsers = parser.add_subparsers(dest='command')
analyze = subparsers.add_parser('analyze', help='Run analysis')
# Arguments become parameters with inferred types
analyze.add_argument('--year', type=int, required=True) # int, required
analyze.add_argument('--file', type=str) # string, optional
Files saved to output/ are automatically detected. Alternatively, print OUTPUT_FILE:/path/to/file to stdout.
Process files generated by skills (upload, copy, transform, etc.):
from mcp_skill_server.plugins import OutputHandler, LocalOutputHandler
# Default: tracks local file paths
handler = LocalOutputHandler()
# Optional GCS handler (requires `uv sync --extra gcs`)
from mcp_skill_server.plugins import GCSOutputHandler
handler = GCSOutputHandler(
bucket_name="my-bucket",
folder_prefix="skills/outputs/",
)
Customize how execution results are formatted in MCP tool responses:
from mcp_skill_server.plugins import ResponseFormatter
class CustomFormatter(ResponseFormatter):
def format_execution_result(self, result, skill, command):
return f"Result: {result.stdout}"
# Use with create_server()
from mcp_skill_server import create_server
server = create_server(
"/path/to/skills",
response_formatter=CustomFormatter()
)
git clone https://github.com/jcc-ne/mcp-skill-server
cd mcp-skill-server
uv sync --dev
uv run pytest
uv run mcp-skill-server serve examples/
MIT
Добавь это в claude_desktop_config.json и перезапусти Claude Desktop.
{
"mcpServers": {
"mcp-skill-server": {
"command": "npx",
"args": []
}
}
}