Agent Generation
This skill provides knowledge for generating effective Claude Code agents tailored to specific projects. It is used internally by the agent-team-creator plugin when analyzing codebases and creating specialized agent teams. Contains templates, best practices, and patterns for writing project-aware agents.
Best use case
Agent Generation is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
This skill provides knowledge for generating effective Claude Code agents tailored to specific projects. It is used internally by the agent-team-creator plugin when analyzing codebases and creating specialized agent teams. Contains templates, best practices, and patterns for writing project-aware agents.
Teams using Agent Generation should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/agent-generation/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How Agent Generation Compares
| Feature / Agent | Agent Generation | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
This skill provides knowledge for generating effective Claude Code agents tailored to specific projects. It is used internally by the agent-team-creator plugin when analyzing codebases and creating specialized agent teams. Contains templates, best practices, and patterns for writing project-aware agents.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
SKILL.md Source
# Agent Generation for Project-Specific Teams This skill provides the knowledge and templates needed to generate high-quality Claude Code agents that are experts on a specific codebase. ## Core Principles ### 1. Project-Aware Agents Generated agents must understand the specific project, not just general concepts: - Reference actual file paths and directories from the project - Mention specific frameworks, libraries, and versions used - Include project-specific conventions and patterns - Use terminology from the codebase (class names, module names, etc.) ### 2. Complementary Team Design Each agent should have a distinct role without overlapping: | Agent Type | Focus Area | Avoids | |------------|------------|--------| | Tech-Stack Expert | Frameworks, libraries, tooling | Business logic | | Architecture Expert | Structure, patterns, conventions | Implementation details | | Domain Expert | Business logic, data models, APIs | Infrastructure | | Testing Specialist | Test patterns, fixtures, coverage | Production code | | DevOps Expert | CI/CD, deployment, infrastructure | Application code | ### 3. Strong Trigger Conditions Each agent needs specific, non-overlapping trigger phrases: ```yaml whenToUse: | This agent should be used when the user asks about "React component patterns", "hook usage in this project", "state management with Redux", or needs help understanding how the frontend architecture works. ``` ## Agent Structure Template Every generated agent follows this structure: ```markdown --- identifier: project-role-expert whenToUse: | This agent should be used when... [specific triggers with project context] systemPrompt: | [Comprehensive system prompt with project knowledge] tools: [Glob, Grep, Read, Edit, Write, Bash, LS, Task, WebFetch, WebSearch] color: "#hexcode" model: sonnet --- ``` ## Analysis-to-Agent Mapping ### Tech Stack Analysis Analyze these files to identify tech stack: - `package.json`, `requirements.txt`, `Cargo.toml`, `go.mod` - Framework config files: `next.config.js`, `vite.config.ts`, `django/settings.py` - Build configs: `tsconfig.json`, `webpack.config.js`, `babel.config.js` Generate agents for each major technology: - One agent per primary framework (React, FastAPI, Django, etc.) - Combined agents for related libraries (testing libraries together) ### Architecture Analysis Analyze these patterns: - Directory structure depth and organization - Module/package boundaries - Import patterns and dependencies - Design patterns in use (MVC, Clean Architecture, etc.) Generate architecture agent covering: - Project structure and navigation - Code organization conventions - Module relationships - Naming conventions ### Domain Analysis Analyze these elements: - Data models and schemas - API endpoints and routes - Business logic modules - Database migrations and queries Generate domain agents for: - Data model understanding - API structure and contracts - Business rule implementation ## Color Palette for Agent Types Use consistent colors by agent type: | Agent Type | Color | Hex | |------------|-------|-----| | Tech-Stack | Blue | `#3B82F6` | | Architecture | Purple | `#8B5CF6` | | Domain/Business | Green | `#10B981` | | Testing | Orange | `#F59E0B` | | DevOps/Infra | Red | `#EF4444` | | Security | Pink | `#EC4899` | | Performance | Cyan | `#06B6D4` | ## Writing Effective System Prompts ### Structure 1. **Role Definition** (1-2 sentences) ``` You are an expert on the [Project Name] codebase, specializing in [domain]. ``` 2. **Project Context** (3-5 sentences) ``` This project uses [tech stack]. The codebase is organized with [structure]. Key directories include [paths]. The project follows [patterns/conventions]. ``` 3. **Expertise Areas** (bullet list) ``` Your expertise includes: - Specific area 1 with project context - Specific area 2 with file references - Specific area 3 with convention details ``` 4. **Guidance Principles** (3-5 bullets) ``` When helping: - Always reference existing patterns in [path] - Follow the [convention] established in [file] - Ensure consistency with [standard] ``` ### Include Project-Specific Knowledge Always embed actual project details: ```markdown systemPrompt: | You are an expert on the **Acme Dashboard** React application. ## Project Overview This is a Next.js 14 application using the App Router. The codebase uses: - TypeScript with strict mode - Tailwind CSS for styling - React Query for server state - Zustand for client state ## Key Directories - `src/app/` - Next.js app router pages - `src/components/` - Reusable UI components - `src/hooks/` - Custom React hooks - `src/lib/` - Utility functions and API clients ## Conventions - Components use PascalCase: `UserProfile.tsx` - Hooks use camelCase with 'use' prefix: `useAuth.ts` - API routes follow REST conventions - All components have co-located test files ``` ## Example Triggers by Agent Type ### Tech-Stack Expert Triggers ```yaml whenToUse: | This agent should be used when the user asks about "React patterns in this project", "how hooks are used here", "component architecture", "state management approach", "Next.js configuration", "TypeScript types", or needs help with frontend implementation following project conventions. ``` ### Architecture Expert Triggers ```yaml whenToUse: | This agent should be used when the user asks "where should I put this code", "how is the project organized", "what's the module structure", "how do imports work", "project conventions", "directory layout", or needs guidance on code organization and architectural decisions. ``` ### Domain Expert Triggers ```yaml whenToUse: | This agent should be used when the user asks about "user authentication flow", "how orders are processed", "data model relationships", "API endpoint structure", "business rules for [feature]", or needs understanding of domain-specific logic and data flows. ``` ## Dynamic Team Sizing Determine team size based on project complexity: | Project Signals | Team Size | Agent Types | |-----------------|-----------|-------------| | Single framework, <50 files | 2-3 | Tech + Architecture | | Multiple frameworks, 50-200 files | 4-5 | Tech (2) + Arch + Domain | | Monorepo or >200 files | 5-8 | Full coverage per service | | Microservices | 3-4 per service | Service-specific teams | ## Additional Resources ### Reference Files For detailed templates and examples: - **`references/agent-templates.md`** - Complete agent templates for each type - **`references/analysis-patterns.md`** - Patterns for codebase analysis ### Example Files Working examples in `examples/`: - **`tech-stack-expert.md`** - Complete tech-stack agent example - **`architecture-expert.md`** - Complete architecture agent example - **`domain-expert.md`** - Complete domain agent example
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