Agent skill

generating-documentation

Generate comprehensive technical documentation including API docs (OpenAPI/Swagger), code documentation (TypeDoc/Sphinx), documentation sites (Docusaurus/MkDocs), Architecture Decision Records (ADRs), and diagrams (Mermaid/PlantUML). Use when documenting APIs, libraries, systems architecture, or building developer-facing documentation sites.

Stars 333
Forks 51

Install this agent skill to your Project

npx add-skill https://github.com/ancoleman/ai-design-components/tree/main/skills/generating-documentation

SKILL.md

Documentation Generation

Generate comprehensive technical documentation across multiple layers: API documentation, code documentation, documentation sites, architecture decisions, and system diagrams.

When to Use This Skill

Use this skill when:

  • Documenting REST or GraphQL APIs with OpenAPI specifications
  • Creating code documentation for libraries (TypeScript, Python, Go, Rust)
  • Building documentation sites for projects or products
  • Recording architectural decisions (ADRs) for system design choices
  • Generating diagrams to visualize system architecture or data flows
  • Setting up automated documentation pipelines in CI/CD

Documentation Layers Overview

Technical documentation operates at five distinct layers:

Layer 1: API Documentation - OpenAPI specs for REST/GraphQL APIs (Swagger UI, Redoc, Scalar) Layer 2: Code Documentation - Generated from code comments (TypeDoc, Sphinx, godoc, rustdoc) Layer 3: Documentation Sites - Comprehensive guides and tutorials (Docusaurus, MkDocs) Layer 4: Architecture Decisions - ADRs using MADR template format Layer 5: Diagrams - Visual architecture (Mermaid, PlantUML, D2)

See references/api-documentation.md, references/code-documentation.md, and references/documentation-sites.md for detailed guides.

Quick Decision Framework

Which Documentation Layer?

API for external consumers?
  → Layer 1: API Documentation (OpenAPI + Swagger UI/Redoc)

Code for maintainers?
  → Layer 2: Code Documentation (TypeDoc/Sphinx/godoc/rustdoc)

Comprehensive guides?
  → Layer 3: Documentation Site (Docusaurus/MkDocs)

Architectural decision?
  → Layer 4: ADR (MADR template)

Visual system design?
  → Layer 5: Diagrams (Mermaid/PlantUML/D2)

Tool Selection Matrix

Need Primary Tool Best For
Doc Site Docusaurus Feature-rich React sites
Doc Site MkDocs Material Simple Python docs
API Docs (Interactive) Swagger UI Testing
API Docs (Read-Only) Redoc Professional design
TypeScript TypeDoc All TS projects
Python Sphinx All Python projects
Go godoc Built-in
Rust rustdoc Built-in
Diagrams Mermaid All-purpose

API Documentation Quick Start

Create OpenAPI specification:

yaml
openapi: 3.1.0
info:
  title: User API
  version: 1.0.0

servers:
  - url: https://api.example.com/v1

paths:
  /users/{userId}:
    get:
      summary: Get a user
      parameters:
        - name: userId
          in: path
          required: true
          schema:
            type: string
      responses:
        '200':
          description: Success
          content:
            application/json:
              schema:
                $ref: '#/components/schemas/User'

components:
  schemas:
    User:
      type: object
      required: [id, email, name]
      properties:
        id:
          type: string
        email:
          type: string
          format: email
        name:
          type: string

  securitySchemes:
    bearerAuth:
      type: http
      scheme: bearer
      bearerFormat: JWT

security:
  - bearerAuth: []

Render with Swagger UI, Redoc, or Scalar. See references/api-documentation.md for complete examples and templates/openapi-template.yaml for starter template.

Code Documentation Quick Start

TypeScript

typescript
/**
 * Calculate the sum of two numbers.
 *
 * @param a - The first number
 * @param b - The second number
 * @returns The sum of a and b
 *
 * @example
 * ```typescript
 * const result = add(2, 3);
 * console.log(result); // 5
 * ```
 */
export function add(a: number, b: number): number {
  return a + b;
}

Generate docs:

bash
npm install -D typedoc
npx typedoc --entryPoints src/index.ts --out docs

Python

python
def calculate_total(items: list[dict], tax_rate: float = 0.0) -> float:
    """Calculate the total price including tax.

    Args:
        items: List of items with 'price' and 'quantity' keys.
        tax_rate: Tax rate as decimal (e.g., 0.1 for 10%).

    Returns:
        Total price including tax.

    Example:
        >>> items = [{'price': 10, 'quantity': 2}]
        >>> calculate_total(items, tax_rate=0.1)
        22.0
    """
    subtotal = sum(item['price'] * item['quantity'] for item in items)
    return subtotal * (1 + tax_rate)

Generate docs:

bash
pip install sphinx sphinx-rtd-theme
sphinx-quickstart docs
cd docs && make html

See references/code-documentation.md for Go and Rust examples.

Documentation Site Quick Start

Docusaurus

bash
npx create-docusaurus@latest my-website classic
cd my-website
npm start

Basic config:

javascript
// docusaurus.config.js
module.exports = {
  title: 'My Project',
  url: 'https://docs.example.com',
  themeConfig: {
    navbar: {
      items: [
        {type: 'doc', docId: 'intro', label: 'Docs'},
      ],
    },
  },
  presets: [
    ['@docusaurus/preset-classic', {
      docs: {
        sidebarPath: require.resolve('./sidebars.js'),
      },
    }],
  ],
};

MkDocs

bash
pip install mkdocs mkdocs-material
mkdocs new my-project
mkdocs serve

Basic config:

yaml
# mkdocs.yml
site_name: My Project
theme:
  name: material
  features:
    - navigation.tabs
    - search.suggest

plugins:
  - search

nav:
  - Home: index.md
  - Getting Started: getting-started.md

See references/documentation-sites.md for versioning and deployment.

Architecture Decision Records

Use MADR template for recording decisions:

markdown
# Use PostgreSQL for Primary Database

* Status: accepted
* Deciders: Engineering Team, CTO
* Date: 2025-01-15

## Context and Problem Statement

Application requires relational database with complex queries,
ACID transactions, JSON support, and full-text search.

## Decision Drivers

* Data integrity (ACID compliance)
* Performance (10K+ queries/second)
* Cost (open-source preferred)
* Features (JSONB, full-text search)

## Considered Options

* PostgreSQL
* MySQL
* Amazon Aurora

## Decision Outcome

Chosen "PostgreSQL" for best balance of features and cost.

### Positive Consequences

* Open-source with no licensing costs
* Advanced features (JSONB, full-text search)
* Strong ACID compliance

### Negative Consequences

* Self-hosting requires DevOps investment
* Horizontal scaling requires changes

Copy full template from templates/adr-template.md. See references/adr-guide.md for workflow and examples/adr/0001-database-selection.md for complete example.

Diagrams Quick Start

Create diagrams with Mermaid:

markdown
```mermaid
sequenceDiagram
    User->>Frontend: Click "Login"
    Frontend->>API: POST /auth/login
    API->>Database: Verify credentials
    Database-->>API: User found
    API-->>Frontend: JWT token
    Frontend->>User: Redirect to dashboard
```

Mermaid renders in GitHub, Docusaurus, and MkDocs. See references/diagram-generation.md for PlantUML and D2 examples.

Common Patterns

Design-First vs Code-First APIs

Design-First:

  1. Write OpenAPI spec
  2. Review with stakeholders
  3. Generate server stubs
  4. Implement handlers

Pros: Contract before implementation, parallel development Cons: Spec authoring can be verbose

Code-First:

  1. Implement API with decorators
  2. Generate OpenAPI from code
  3. Publish documentation

Pros: Faster development, spec matches code Cons: Documentation lags behind

Recommendation: Design-first for new APIs, code-first for existing.

Embedding API Docs in Sites

Docusaurus integration:

javascript
// docusaurus.config.js
plugins: [
  ['docusaurus-plugin-openapi-docs', {
    config: {
      api: {
        specPath: 'openapi/api.yaml',
        outputDir: 'docs/api',
      },
    },
  }],
],
themes: ['docusaurus-theme-openapi-docs'],

See references/api-documentation.md for MkDocs integration.

CI/CD Automation

yaml
# .github/workflows/docs.yml
name: Documentation

on:
  push:
    branches: [main]

jobs:
  build-deploy:
    runs-on: ubuntu-latest
    steps:
      - uses: actions/checkout@v4
      - uses: actions/setup-node@v4

      - name: Generate API docs
        run: npm run docs:api

      - name: Generate code docs
        run: npm run docs:code

      - name: Build site
        run: npm run docs:build

      - name: Deploy to GitHub Pages
        uses: peaceiris/actions-gh-pages@v3
        with:
          github_token: ${{ secrets.GITHUB_TOKEN }}
          publish_dir: ./build

See references/ci-cd-integration.md for validation and versioning.

When to Write an ADR

Write ADRs for:

✅ Technology selection (database, framework, cloud) ✅ Architecture patterns (microservices, event-driven) ✅ Decisions with trade-offs (pros/cons) ✅ Team alignment needed

Don't write ADRs for:

❌ Trivial decisions (naming, formatting) ❌ Easily reversible (config tweaks) ❌ Implementation details (document in code)

See references/adr-guide.md for workflow and examples.

Reference Documentation

For detailed guides:

  • references/api-documentation.md - OpenAPI, Swagger UI, Redoc, Scalar, design-first vs code-first
  • references/code-documentation.md - TypeDoc, Sphinx, godoc, rustdoc with examples
  • references/documentation-sites.md - Docusaurus and MkDocs setup, versioning, deployment
  • references/adr-guide.md - MADR template, workflow, when to write ADRs
  • references/diagram-generation.md - Mermaid, PlantUML, D2 syntax and integration
  • references/ci-cd-integration.md - Automation, validation, deployment strategies

Templates

  • templates/adr-template.md - MADR template for Architecture Decision Records
  • templates/openapi-template.yaml - OpenAPI 3.1 specification starter

Examples

  • examples/openapi/ - Complete OpenAPI specifications
  • examples/typescript/ - TypeDoc configuration and TSDoc examples
  • examples/python/ - Sphinx configuration and docstring examples
  • examples/adr/ - Real-world Architecture Decision Records
  • examples/diagrams/ - Mermaid, PlantUML, D2 examples

Tool Recommendations

Based on research (December 2025):

Documentation Sites:

  • Docusaurus - React-based, feature-rich (versioning, i18n, search)
  • MkDocs Material - Python-based, simple, beautiful

API Documentation:

  • Swagger UI - Interactive testing
  • Redoc - Beautiful read-only
  • Scalar - Modern 2025 design

Code Documentation:

  • TypeScript: TypeDoc
  • Python: Sphinx
  • Go: godoc (built-in)
  • Rust: rustdoc (built-in)

Diagrams:

  • Mermaid - Most popular, GitHub-integrated
  • PlantUML - UML standard
  • D2 - Modern, declarative

Integration with Other Skills

  • api-patterns - API implementation and documentation
  • building-ci-pipelines - Automate documentation generation
  • testing-strategies - Document test patterns
  • sdk-design - Generate SDK documentation

Best Practices

  1. Docs-as-Code - Keep docs in version control
  2. Single Source of Truth - Generate from code/specs
  3. Automation - Generate in CI/CD pipelines
  4. Examples - Include working code examples
  5. Validation - Lint Markdown, validate specs
  6. Versioning - Version docs with releases
  7. Consistency - Use consistent terminology
  8. Maintenance - Update when code changes

Common Pitfalls

Documentation Drift - Docs become outdated → Automate generation, validate in CI/CD

Over-Documentation - Documenting obvious behavior → Focus on "why" not "what"

Fragmented Docs - Information scattered → Single site with clear navigation

No Examples - Theory without practice → Include runnable examples

Expand your agent's capabilities with these related and highly-rated skills.

ancoleman/ai-design-components

designing-sdks

Design production-ready SDKs with retry logic, error handling, pagination, and multi-language support. Use when building client libraries for APIs or creating developer-facing SDK interfaces.

333 51
Explore
ancoleman/ai-design-components

administering-linux

Manage Linux systems covering systemd services, process management, filesystems, networking, performance tuning, and troubleshooting. Use when deploying applications, optimizing server performance, diagnosing production issues, or managing users and security on Linux servers.

333 51
Explore
ancoleman/ai-design-components

implementing-api-patterns

API design and implementation across REST, GraphQL, gRPC, and tRPC patterns. Use when building backend services, public APIs, or service-to-service communication. Covers REST frameworks (FastAPI, Axum, Gin, Hono), GraphQL libraries (Strawberry, async-graphql, gqlgen, Pothos), gRPC (Tonic, Connect-Go), tRPC for TypeScript, pagination strategies (cursor-based, offset-based), rate limiting, caching, versioning, and OpenAPI documentation generation. Includes frontend integration patterns for forms, tables, dashboards, and ai-chat skills.

333 51
Explore
ancoleman/ai-design-components

prompt-engineering

Engineer effective LLM prompts using zero-shot, few-shot, chain-of-thought, and structured output techniques. Use when building LLM applications requiring reliable outputs, implementing RAG systems, creating AI agents, or optimizing prompt quality and cost. Covers OpenAI, Anthropic, and open-source models with multi-language examples (Python/TypeScript).

333 51
Explore
ancoleman/ai-design-components

deploying-applications

Deployment patterns from Kubernetes to serverless and edge functions. Use when deploying applications, setting up CI/CD, or managing infrastructure. Covers Kubernetes (Helm, ArgoCD), serverless (Vercel, Lambda), edge (Cloudflare Workers, Deno), IaC (Pulumi, OpenTofu, SST), and GitOps patterns.

333 51
Explore
ancoleman/ai-design-components

optimizing-costs

Optimize cloud infrastructure costs through FinOps practices, commitment discounts, right-sizing, and automated cost management. Use when reducing cloud spend, implementing budget controls, or establishing cost visibility across AWS, Azure, GCP, and Kubernetes environments.

333 51
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results