ai-devkit
A universal CLI toolkit for serious AI-assisted development. Works across Cursor, Claude Code, Antigravity, Codex, and more.
Stars: 877
The ai-devkit repository is a comprehensive toolkit for developing and deploying artificial intelligence models. It provides a wide range of tools and resources to streamline the AI development process, including pre-trained models, data processing utilities, and deployment scripts. With a focus on simplicity and efficiency, ai-devkit aims to empower developers to quickly build and deploy AI solutions across various domains and applications.
README:
The toolkit for AI-assisted software development.
AI DevKit helps AI coding agents work more effectively with your codebase. It provides structured workflows, persistent memory, and reusable skills — so agents follow the same engineering standards as senior developers.
npx ai-devkit@latest initThis launches an interactive setup wizard that configures your project for AI-assisted development in under a minute.
| Package | Description |
|---|---|
| ai-devkit (CLI) | Scaffold structured docs, configure AI environments, and manage development phases |
| @ai-devkit/memory | Give agents persistent, searchable long-term memory via MCP |
| Agent | Status |
|---|---|
| Claude Code | ✅ Supported |
| GitHub Copilot | ✅ Supported |
| Gemini CLI | ✅ Supported |
| Cursor | ✅ Supported |
| opencode | ✅ Supported |
| Antigravity | ✅ Supported |
| Codex CLI | ✅ Supported |
| Windsurf | 🚧 Testing |
| Kilo Code | 🚧 Testing |
| Roo Code | 🚧 Testing |
| Amp | 🚧 Testing |
📖 Visit ai-devkit.com for the full documentation, including:
- Getting started guide
- Phase-based development workflow
- Memory system setup
- Skill management
- Agent configuration
We welcome contributions! See the Contributing Guide for details.
git clone https://github.com/Codeaholicguy/ai-devkit.git
cd ai-devkit
npm install
npm run buildMIT
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