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moai-domain-web-api

modu-ai
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デザインaiapidesign

について

このスキルは、OpenAPI 3.1仕様を使用したREST APIおよびGraphQL設計のベストプラクティスを提供します。認証、バージョニング、レート制限を網羅し、TRUST 5原則を適用します。API関連の議論中や、TDDワークフローで仕様を実装する際に自動的に使用してください。

クイックインストール

Claude Code

推奨
プラグインコマンド推奨
/plugin add https://github.com/modu-ai/moai-adk
Git クローン代替
git clone https://github.com/modu-ai/moai-adk.git ~/.claude/skills/moai-domain-web-api

このコマンドをClaude Codeにコピー&ペーストしてスキルをインストールします

ドキュメント

Domain Web Api Skill

Skill Metadata

FieldValue
Skill Namemoai-domain-web-api
Version2.0.0 (2025-10-22)
Allowed toolsRead (read_file), Bash (terminal)
Auto-loadOn demand when keywords detected
TierDomain

What It Does

REST API and GraphQL design with OpenAPI 3.1, authentication, versioning, and rate limiting.

Key capabilities:

  • ✅ Best practices enforcement for domain domain
  • ✅ TRUST 5 principles integration
  • ✅ Latest tool versions (2025-10-22)
  • ✅ TDD workflow support

When to Use

Automatic triggers:

  • Related code discussions and file patterns
  • SPEC implementation (/alfred:2-run)
  • Code review requests

Manual invocation:

  • Review code for TRUST 5 compliance
  • Design new features
  • Troubleshoot issues

Tool Version Matrix (2025-10-22)

ToolVersionPurposeStatus
OpenAPI3.1.0Primary✅ Current
Postman11.21.0Primary✅ Current
Swagger UI5.18.2Primary✅ Current

Inputs

  • Language-specific source directories
  • Configuration files
  • Test suites and sample data

Outputs

  • Test/lint execution plan
  • TRUST 5 review checkpoints
  • Migration guidance

Failure Modes

  • When required tools are not installed
  • When dependencies are missing
  • When test coverage falls below 85%

Dependencies

  • Access to project files via Read/Bash tools
  • Integration with moai-foundation-langs for language detection
  • Integration with moai-foundation-trust for quality gates

References (Latest Documentation)

Documentation links updated 2025-10-22


Changelog

  • v2.0.0 (2025-10-22): Major update with latest tool versions, comprehensive best practices, TRUST 5 integration
  • v1.0.0 (2025-03-29): Initial Skill release

Works Well With

  • moai-foundation-trust (quality gates)
  • moai-alfred-code-reviewer (code review)
  • moai-essentials-debug (debugging support)

Best Practices

DO:

  • Follow domain best practices
  • Use latest stable tool versions
  • Maintain test coverage ≥85%
  • Document all public APIs

DON'T:

  • Skip quality gates
  • Use deprecated tools
  • Ignore security warnings
  • Mix testing frameworks

GitHub リポジトリ

modu-ai/moai-adk
パス: src/moai_adk/templates/.claude/skills/moai-domain-web-api
agentic-aiagentic-codingagentic-workflowclaudeclaudecodevibe-coding

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