write-claude-md
정보
이 스킬은 개발자들이 AI 코딩 어시스턴트에 프로젝트별 지침을 제공하는 효과적인 CLAUDE.md 파일을 작성하는 데 도움을 줍니다. 구조, 일반적인 섹션, 모범 사례, 그리고 MCP 서버 및 에이전트 정의와의 통합 방법을 다룹니다. 새로운 AI 지원 프로젝트를 시작하거나 기존 프로젝트에서 AI의 동작을 개선할 때 사용하세요.
빠른 설치
Claude Code
추천npx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/write-claude-mdClaude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요
문서
Write CLAUDE.md
Create CLAUDE.md file giving AI assistants effective project-specific context.
When Use
- Starting new project where AI assistants will be used
- Improving AI assistant behavior on existing project
- Documenting project conventions, workflows, constraints
- Integrating MCP servers or agent definitions into project
Inputs
- Required: Project type and technology stack
- Required: Key conventions and constraints
- Optional: MCP server configurations
- Optional: Author and contributor information
- Optional: Security and confidentiality requirements
Steps
Step 1: Create Basic CLAUDE.md
Place CLAUDE.md in project root:
# Project Name
Brief description of what this project is and its purpose.
## Quick Start
Essential commands for working on this project:
```bash
# Install dependencies
npm install # or renv::restore() for R
# Run tests
npm test # or devtools::test() for R
# Build
npm run build # or devtools::check() for R
Architecture
Key architectural decisions and patterns used in this project.
Conventions
- Always use descriptive variable names
- Follow [language-specific style guide]
- Write tests for all new functionality
**Got:** `CLAUDE.md` file exists in project root with at minimum project description, quick start commands, architecture overview, conventions section.
**If err:** Unsure what to include? Start with just Quick Start section containing three most important commands (install, test, build). File can be expanded incrementally as project evolves.
### Step 2: Add Technology-Specific Sections
**For R packages**:
```markdown
## Development Workflow
```r
devtools::load_all() # Load for development
devtools::document() # Regenerate docs
devtools::test() # Run tests
devtools::check() # Full package check
Package Structure
R/- Source code (one function per file)tests/testthat/- Tests mirror R/ structurevignettes/- Long-form documentationman/- Generated by roxygen2 (do not edit manually)
Critical Files (Do Not Delete)
.Rprofile- Session configuration.Renviron- Environment variables (git-ignored)renv.lock- Locked dependencies
**For Node.js/TypeScript**:
```markdown
## Stack
- Next.js 15 with App Router
- TypeScript strict mode
- Tailwind CSS for styling
- Vercel for deployment
## Conventions
- Use `@/` import alias for src/ directory
- Server Components by default, `"use client"` only when needed
- API routes in `src/app/api/`
Got: Technology-specific sections added matching project's actual stack — R package structure for R projects, Node.js stack details for web projects, etc. Commands and paths reference real project layout.
If err: Project uses unfamiliar stack? Inspect package.json, DESCRIPTION, Cargo.toml, or equivalent to identify technology. Add corresponding section.
Step 3: Add MCP Server Information
## Available MCP Servers
### r-mcptools (R Integration)
- **Purpose**: Connect to R/RStudio sessions
- **Status**: Configured
- **Configuration**: `claude mcp add r-mcptools stdio "Rscript.exe" -- -e "mcptools::mcp_server()"`
### hf-mcp-server (Hugging Face)
- **Purpose**: AI/ML model and dataset access
- **Status**: Configured
- **Configuration**: `claude mcp add hf-mcp-server -e HF_TOKEN=token -- mcp-remote https://huggingface.co/mcp`
Got: Each configured MCP server has subsection documenting purpose, status (configured/available/not configured), command used to add. No actual tokens or secrets included.
If err: MCP servers not yet configured? Document as "Available" with setup instructions rather than "Configured." Use placeholder values like your_token_here for any credentials.
Step 4: Add Author Information
## Author Information
### Standard Package Authorship
- **Name**: Author Name
- **Email**: [email protected]
- **ORCID**: 0000-0000-0000-0000
- **GitHub**: username
Got: Author information section includes name, email, ORCID (for academic/research projects), GitHub username. For R packages, format matches DESCRIPTION file requirements.
If err: Author information sensitive or should not be public? Use organization name instead of personal details, or omit section entirely for internal-only projects.
Step 5: Add Security Guidelines
## Security & Confidentiality
- Never commit `.Renviron`, `.env`, or files containing tokens
- Use placeholder values in documentation: `YOUR_TOKEN_HERE`
- Environment variables for all secrets
- Git-ignored: `.Renviron`, `.env`, `credentials.json`
Got: Security section lists files that must never be committed, placeholder conventions for documentation, confirms .gitignore covers all sensitive files.
If err: Unsure which files sensitive? Run grep -rn "sk-\|ghp_\|password" . to scan for exposed secrets. Any file containing real credentials should be added to .gitignore and mentioned in this section.
Step 6: Reference Skills and Guides
## Development Best Practices References
@agent-almanac/skills/write-testthat-tests/SKILL.md
@agent-almanac/skills/submit-to-cran/SKILL.md
Got: Relevant skills and guides referenced using @ paths. Gives AI assistants access to detailed procedures for common tasks in project.
If err: Referenced skills or guides don't exist at specified paths? Verify paths or remove references. Broken @ references provide no value. May confuse assistant.
Step 7: Add Quality and Status Information
## Quality Status
- R CMD check: 0 errors, 0 warnings, 1 note
- Test coverage: 85%
- Tests: 200+ passing
- Vignettes: 3 (rated 9/10)
Got: Quality metrics section reflects current state of project with accurate numbers for check results, test coverage, test count, documentation status.
If err: Metrics not yet available (new project)? Add placeholder entries with "TBD". Update them as project matures. Do not fabricate numbers.
Check
- CLAUDE.md in project root
- Quick start commands accurate and work
- Architecture section reflects actual project structure
- No sensitive information (tokens, passwords, private paths)
- MCP server configurations current
- Referenced files and paths exist
Pitfalls
- Stale information: Update CLAUDE.md when project structure changes
- Too much detail: Keep concise. Link to detailed guides rather than duplicating content.
- Sensitive data: Never include actual tokens or credentials. Use placeholders.
- Conflicting instructions: Ensure CLAUDE.md doesn't contradict other config files
- Missing from
.Rbuildignore: For R packages, add^CLAUDE\\.md$to.Rbuildignore
Examples
Pattern observed across successful projects:
- putior (829 lines): Comprehensive CLAUDE.md with quality metrics, 20 accomplishments, MCP integration details, development workflow
- Simple project (20 lines): Just quick start commands and key conventions
Scale CLAUDE.md to match project complexity.
See Also
create-r-package- CLAUDE.md as part of package setupconfigure-mcp-server- MCP configuration referenced in CLAUDE.mdsecurity-audit-codebase- verify no secrets in CLAUDE.md
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