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analyze-codebase-for-mcp

pjt222
업데이트됨 2 days ago
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정보

이 스킬은 코드베이스를 분석하여 MCP 도구로 노출하기에 적합한 함수, API, 데이터 소스를 식별하고 명세서를 생성합니다. MCP 서버를 계획할 때, AI 도구 래핑을 위해 코드베이스를 감사할 때, 또는 기존 기능과 현재 MCP 노출 수준을 비교할 때 사용하세요. 이는 개발자가 체계적으로 도구 후보를 발견하고 scaffold-mcp-server를 위한 명세를 작성하는 데 도움을 줍니다.

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

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문서

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 저장소

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