resume-tailor-mcp
An MCP server that tailors a resume to a job posting by providing fit scores, keyword extraction, and bullet rewrites.
README
resume-tailor-mcp
An MCP server that tailors a resume to a job posting. It exposes three tools to any MCP client (Claude Desktop, an IDE, the MCP Inspector) and supports two backends: the Anthropic API with an API key, or key-less operation using MCP sampling to borrow the host's model.
What MCP is
MCP (Model Context Protocol) is a standard for giving an LLM access to tools and data. A host (such as Claude Desktop) embeds the model, a server such as this one exposes capabilities, and the two communicate over JSON-RPC. The server has no model of its own and only answers requests.
Tools
A ping health check, plus three tools:
| Tool | Input | Returns |
|---|---|---|
tailor_resume |
resume + job description | fit score, matched/missing keywords, rewrites of existing bullets, gaps, a cover note |
score_fit |
resume + job description | a 1-5 fit score with a recommendation, plus a separate ghost-job legitimacy read |
extract_keywords |
job description | the ATS keywords a posting wants, split into must-have and nice-to-have |
The system prompt constrains the model to rephrase and re-emphasize existing resume content and to flag genuine gaps rather than fabricate experience.
Backends
The backend is selected with the TAILOR_MODE environment variable:
api(default): calls the Anthropic API with anANTHROPIC_API_KEY, using structured outputs so the model is constrained to the response schema.sampling: holds no key. It requests a completion from the host via MCP sampling (createMessage) and validates the returned text against the same schema. Requires a host that supports sampling, such as Claude Desktop.
The tools are identical across both backends. See Design notes for the tradeoff.
Requirements
- Node 20 or newer.
- The
apibackend requires anANTHROPIC_API_KEY. - The
samplingbackend requires a host that supports MCP sampling.
Installation
git clone https://github.com/mr-martinsosa/resume-tailor-mcp.git
cd resume-tailor-mcp
npm install
npm run build # compile TypeScript to dist/
Usage
Run the test suite (uses injected fakes, so no API key, network, or cost):
npm test
Inspect the live server with the MCP Inspector:
npm run inspect
Claude Desktop
After npm run build, add the following to claude_desktop_config.json, using an absolute path:
{
"mcpServers": {
"resume-tailor": {
"command": "node",
"args": ["/absolute/path/to/resume-tailor-mcp/dist/server.js"],
"env": { "ANTHROPIC_API_KEY": "sk-ant-..." }
}
}
}
For key-less operation, omit ANTHROPIC_API_KEY and set the mode instead:
"env": { "TAILOR_MODE": "sampling" }
Project layout
src/
server.ts boots the stdio server; selects the backend by TAILOR_MODE
schema.ts zod schemas and prompts (one schema per tool)
tools/ one file per tool: registration and provider call
llm/
anthropic.ts direct-API backend (structured outputs)
sampling.ts key-less backend (MCP sampling + client-side validation)
test/ smoke, tool, and sampling tests, all run without a key
study-materials/ notes on MCP and the design
Design notes
- Structured outputs: the API backend uses
messages.parsewithzodOutputFormat, so the model is constrained to the schema and the SDK returns a validated, typed object with no manual parsing step. - Single schema per tool: each tool's zod schema serves as the Anthropic output format, the MCP
outputSchema, the prompt instruction in sampling mode, the client-side validator, and the TypeScript type. - Provider seam: tools call an injected function (
TailorFn,ScoreFn,ExtractFn) rather than the LLM directly. Tests inject fakes (so no key is needed), and the sampling backend was added without changing any tool. - Backend tradeoff: the direct-API backend enforces the schema server-side but requires a key; the sampling backend is key-less but gives up server-side enforcement, so it validates the returned text itself.
License
MIT. See LICENSE.
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