Agent skill
grey-haven-project-scaffolding
Generate production-ready project scaffolds for Grey Haven stack with Cloudflare Workers, React + TypeScript, Python + Pydantic, PlanetScale, proper structure, and configuration. Use when starting new projects, creating microservices, setting up monorepo workspaces, initializing projects, or when user mentions 'new project', 'project scaffold', 'project template', 'project setup', 'bootstrap project', 'project starter', or 'initialize project'.
Install this agent skill to your Project
npx add-skill https://github.com/greyhaven-ai/claude-code-config/tree/main/grey-haven-plugins/core/skills/project-scaffolding
SKILL.md
Project Scaffolding Skill
Generate production-ready project scaffolds for Grey Haven stack (Cloudflare Workers, React + TypeScript, Python + Pydantic, PlanetScale).
Description
Rapid project initialization with best practices, proper structure, and configuration for Grey Haven technology stack.
What's Included
- Examples: Full-stack app scaffolds, API-only projects, frontend templates
- Reference: Project structure conventions, configuration guides
- Templates: Project templates for different stacks
- Checklists: Scaffold verification, deployment readiness
Use When
- Starting new projects
- Creating microservices
- Setting up monorepo workspaces
Related Agents
project-scaffolder
Skill Version: 1.0
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