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analyze-codebase-for-mcp

pjt222
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About

This skill analyzes codebases to identify functions, APIs, and data sources suitable for exposure as MCP tools, generating a specification document. Use it when planning an MCP server, auditing a codebase for AI tool wrapping, or comparing existing capabilities with current MCP exposure. It helps developers systematically discover tool candidates and create specs for scaffold-mcp-server.

Quick Install

Claude Code

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npx skills add pjt222/agent-almanac -a claude-code
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/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternative
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/analyze-codebase-for-mcp

Copy and paste this command in Claude Code to install this skill

Documentation

Codebasis fuer MCP analysieren

Scannen a codebase to discover functions, REST endpoints, CLI commands, and data access patterns that are good candidates for MCP tool exposure, then produce a structured tool specification document.

Wann verwenden

  • Planning an MCP server for an existing project and need to know what to expose
  • Auditing a codebase vor wrapping it as an AI-accessible tool surface
  • Comparing what a codebase can do versus what is already exposed via MCP
  • Generating a tool specification document to hand off to scaffold-mcp-server
  • Evaluating whether a third-party library is worth wrapping as MCP tools

Eingaben

  • Erforderlich: Path to die Codebasis root directory
  • Erforderlich: Target language(s) of die Codebasis (e.g., TypeScript, Python, R, Go)
  • Optional: Existing MCP server code to compare gegen (gap analysis)
  • Optional: Domain focus (e.g., "data analysis", "file operations", "API integration")
  • Optional: Maximum number of tools to recommend (default: 20)

Vorgehensweise

Schritt 1: Scannen Codebase Structure

1.1. Use Glob to map das Verzeichnis tree, focusing on source directories:

  • src/**/*.{ts,js,py,R,go,rs} for Quelldateis
  • **/routes/**, **/api/**, **/controllers/** for endpoint definitions
  • **/cli/**, **/commands/** for CLI entry points
  • **/package.json, **/setup.py, **/DESCRIPTION for Abhaengigkeit metadata

1.2. Categorize files by role:

  • Entry points: main files, route handlers, CLI commands
  • Core logic: business logic functions, algorithms, data transformers
  • Data access: database queries, file I/O, API clients
  • Utilities: helpers, formatters, validators

1.3. Zaehlen total files, lines of code, and exported symbols to gauge project size.

Erwartet: A categorized file inventory with role annotations.

Bei Fehler: If die Codebasis is too large (>10,000 files), narrow the scan to specific directories or modules using the domain focus input. If no Quelldateis are found, verify the root path and language parameters.

Schritt 2: Identifizieren Exposed Functions and Endpoints

2.1. Use Grep to find exported functions and oeffentliche APIs:

  • TypeScript/JavaScript: export (async )?function, export default, module.exports
  • Python: functions not prefixed with _, @app.route, @router
  • R: functions listed in NAMESPACE or #' @export roxygen tags
  • Go: capitalized function names (exported by convention)

2.2. Fuer jede candidate function, extract:

  • Name: function or endpoint name
  • Signature: parameters with types and defaults
  • Zurueckgeben type: what die Funktion produces
  • Documentation: docstrings, JSDoc, roxygen, godoc
  • Location: Dateipfad and line number

2.3. For REST APIs, zusaetzlich extract:

  • HTTP method and route pattern
  • Request body schema
  • Response shape
  • Authentication requirements

2.4. Erstellen a candidate list sorted by potential utility (public, documented, well-typed functions first).

Erwartet: A list of 20-100 candidate functions/endpoints with extracted metadata.

Bei Fehler: If few candidates are found, broaden the search to include internal functions that could be made public. If documentation is sparse, flag this as a risk in die Ausgabe.

Schritt 3: Bewerten MCP Suitability

3.1. Fuer jede candidate, assess gegen MCP tool criteria:

  • Input contract clarity: Are parameters well-typed and documented? Can they be described in a JSON Schema?
  • Output predictability: Does die Funktion return structured data (JSON-serializable)? Is the return shape consistent?
  • Side effects: Does die Funktion modify state (files, database, external services)? Side effects muss clearly labeled.
  • Idempotency: Is the operation safe to retry? Non-idempotent tools need explicit warnings.
  • Execution time: Will it complete innerhalb a reasonable timeout (< 30 seconds)? Long-running operations need async patterns.
  • Error handling: Does it throw structured errors or fail silently?

3.2. Score each candidate on a 1-5 scale:

  • 5: Pure function, typed I/O, documented, fast, no Seiteneffekts
  • 4: Well-typed, documented, minor Seiteneffekts (e.g., logging)
  • 3: Reasonable I/O contract but needs wrapping (e.g., returns raw objects)
  • 2: Significant Seiteneffekts or unclear contract, needs substantial adaptation
  • 1: Not suitable ohne major refactoring

3.3. Filtern candidates to those scoring 3 or ueber. Flag score-2 items as "future candidates" requiring refactoring.

Erwartet: A scored and filtered candidate list with suitability rationale for each.

Bei Fehler: If most candidates score unter 3, die Codebasis may need refactoring vor MCP exposure. Dokumentieren the gaps and recommend specific improvements (add types, extract pure functions, wrap Seiteneffekts).

Schritt 4: Entwerfen Tool Specifications

4.1. Fuer jede selected candidate (score >= 3), draft a tool specification:

- name: tool_name
  description: >
    One-line description of what the tool does.
  source_function: module.function_name
  source_file: src/path/to/file.ts:42
  parameters:
    param_name:
      type: string | number | boolean | object | array
      description: What this parameter controls
      required: true | false
      default: value_if_optional
  returns:
    type: string | object | array
    description: What the tool returns
  side_effects:
    - description of any side effect
  estimated_latency: fast | medium | slow
  suitability_score: 5

4.2. Group tools into logical categories (e.g., "Data Queries", "File Operations", "Analysis", "Configuration").

4.3. Identifizieren Abhaengigkeiten zwischen tools (e.g., "list_datasets" sollte called vor "query_dataset").

4.4. Bestimmen if any tools need wrappers to:

  • Simplify complex parameter objects into flat inputs
  • Konvertieren raw return values to structured text or JSON
  • Hinzufuegen safety guards (e.g., read-only wrappers for database functions)

Erwartet: A complete YAML tool specification with categories, Abhaengigkeiten, and wrapper notes.

Bei Fehler: If tool specifications are ambiguous, revisit Step 2 to extract more detail from Quellcode. If parameter types cannot be inferred, flag for manual review.

Schritt 5: Generieren Tool Spec Document

5.1. Schreiben the final specification document with these sections:

  • Summary: Codebase overview, language, size, and analysis date
  • Recommended Tools: Full specifications from Step 4, grouped by category
  • Future Candidates: Score-2 items with refactoring recommendations
  • Excluded Items: Score-1 items with exclusion rationale
  • Dependencies: Tool Abhaengigkeit graph
  • Implementation Notes: Wrapper requirements, Authentifizierung needs, transport recommendations

5.2. Speichern as mcp-tool-spec.yml (machine-readable) and optionally mcp-tool-spec.md (human-readable summary).

5.3. If an existing MCP server was provided, include a gap analysis section:

  • Tools in the spec but not yet implemented
  • Implemented tools not in the spec (possibly stale)
  • Tools with specification drift (implementation diverges from spec)

Erwartet: A complete tool specification document ready for consumption by scaffold-mcp-server.

Bei Fehler: If the document exceeds reasonable size (>200 tools), split into modules with cross-references. If die Codebasis has no suitable candidates, produce a "readiness assessment" document with refactoring recommendations stattdessen.

Validierung

  • All Quelldateis in das Ziel codebase were scanned
  • Candidate functions have extracted names, signatures, and return types
  • Each candidate has a suitability score with written rationale
  • Tool specifications include complete parameter schemas with types
  • Side effects are explicitly documented for every tool
  • The output document is valid YAML (parseable by any YAML library)
  • Tool names follow MCP conventions (snake_case, descriptive, unique)
  • Categories and Abhaengigkeiten form a coherent tool surface
  • Gap analysis is included when an existing MCP server was provided
  • Future candidates section lists refactoring steps needed for score-2 items

Haeufige Stolperfallen

  • Exposing too many tools: AI assistants work best with 10-30 focused tools. Priorisieren breadth of capability over depth. Resist exposing every public function.
  • Ignoring Seiteneffekts: A function that "just reads" but also writes to a log or cache still has Seiteneffekts. Audit carefully with Grep for file writes, network calls, and database mutations.
  • Assuming type safety: Dynamic languages (Python, R, JavaScript) may have functions with no type annotations. Infer types from usage patterns and tests, but flag uncertainty in the spec.
  • Missing Authentifizierung context: Functions that work in an authenticated web request may fail when called via MCP ohne session context. Pruefen auf implicit auth Abhaengigkeiten wie z.B. session cookies, JWT tokens, or environment-injected Zugangsdaten.
  • Over-engineering wrappers: If a function needs a 50-line wrapper to be MCP-compatible, it may not be a good candidate. Bevorzugen functions that map naturally to tool interfaces.
  • Neglecting error paths: MCP tools must return structured errors. Functions that throw untyped exceptions need error-handling wrappers.
  • Conflating internal and external APIs: Internal helper functions called by other internal code are poor MCP candidates. Fokussieren auf functions designed for external consumption or clear boundary APIs.
  • Skipping the gap analysis: If an existing MCP server is provided, always compare the spec gegen current implementation. Without gap analysis, you risk duplicating work or missing stale tools.

Verwandte Skills

  • scaffold-mcp-server - use die Ausgabe spec to generate a working MCP server
  • build-custom-mcp-server - manual server implementation reference
  • configure-mcp-server - connect das Ergebnising server to Claude Code/Desktop
  • troubleshoot-mcp-connection - debug connectivity nach deploying der Server
  • review-software-architecture - architecture review for tool surface design
  • security-audit-codebase - security audit vor exposing functions externally

GitHub Repository

pjt222/agent-almanac
Path: i18n/de/skills/analyze-codebase-for-mcp
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