spawn — for Claude Code PyAgent, community, for Claude Code, ide skills, python-expert.md, claude-architect.md, react-expert.md, **YAML Frontmatter Fields:**, description, Expert

v1.0.0

About this Skill

Ideal for AI agents that need spawn - expert agent generator. spawn is an AI agent skill for spawn - expert agent generator.

Features

Spawn - Expert Agent Generator
Target quality: 500-1000 lines per agent with real code examples, complete configs, and detailed
Benchmark agents: python-expert.md (1600 lines), claude-architect.md (1242 lines), react-expert.md
Mode 1: Single Agent Generation
Generate one expert agent prompt for a specific technology platform.

# Core Topics

UndiFineD UndiFineD
[4]
[0]
Updated: 3/29/2026

Killer-Skills Review

Decision support comes first. Repository text comes second.

Reviewed Landing Page Review Score: 10/11

Killer-Skills keeps this page indexable because it adds recommendation, limitations, and review signals beyond the upstream repository text.

Original recommendation layer Concrete use-case guidance Explicit limitations and caution Quality floor passed for review Locale and body language aligned
Review Score
10/11
Quality Score
70
Canonical Locale
en
Detected Body Locale
en

Ideal for AI agents that need spawn - expert agent generator. spawn is an AI agent skill for spawn - expert agent generator.

Core Value

spawn helps agents spawn - expert agent generator. Python Agent # Spawn - Expert Agent Generator Generate world-class, comprehensive expert agent prompts for Claude Code.

Ideal Agent Persona

Ideal for AI agents that need spawn - expert agent generator.

Capabilities Granted for spawn

Applying Spawn - Expert Agent Generator
Applying Target quality: 500-1000 lines per agent with real code examples, complete configs, and detailed
Applying Benchmark agents: python-expert.md (1600 lines), claude-architect.md (1242 lines), react-expert.md

! Prerequisites & Limits

  • All agents MUST be created as Markdown files with YAML frontmatter :
  • Project-level : .claude/agents/ (current project only)
  • Use "use PROACTIVELY" or "MUST BE USED" to encourage automatic invocation

Source Boundary

The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.

After The Review

Decide The Next Action Before You Keep Reading Repository Material

Killer-Skills should not stop at opening repository instructions. It should help you decide whether to install this skill, when to cross-check against trusted collections, and when to move into workflow rollout.

Labs Demo

Browser Sandbox Environment

⚡️ Ready to unleash?

Experience this Agent in a zero-setup browser environment powered by WebContainers. No installation required.

Boot Container Sandbox

FAQ & Installation Steps

These questions and steps mirror the structured data on this page for better search understanding.

? Frequently Asked Questions

What is spawn?

Ideal for AI agents that need spawn - expert agent generator. spawn is an AI agent skill for spawn - expert agent generator.

How do I install spawn?

Run the command: npx killer-skills add UndiFineD/PyAgent/spawn. It works with Cursor, Windsurf, VS Code, Claude Code, and 19+ other IDEs.

What are the use cases for spawn?

Key use cases include: Applying Spawn - Expert Agent Generator, Applying Target quality: 500-1000 lines per agent with real code examples, complete configs, and detailed, Applying Benchmark agents: python-expert.md (1600 lines), claude-architect.md (1242 lines), react-expert.md.

Which IDEs are compatible with spawn?

This skill is compatible with Cursor, Windsurf, VS Code, Trae, Claude Code, OpenClaw, Aider, Codex, OpenCode, Goose, Cline, Roo Code, Kiro, Augment Code, Continue, GitHub Copilot, Sourcegraph Cody, and Amazon Q Developer. Use the Killer-Skills CLI for universal one-command installation.

Are there any limitations for spawn?

All agents MUST be created as Markdown files with YAML frontmatter :. Project-level : .claude/agents/ (current project only). Use "use PROACTIVELY" or "MUST BE USED" to encourage automatic invocation.

How To Install

  1. 1. Open your terminal

    Open the terminal or command line in your project directory.

  2. 2. Run the install command

    Run: npx killer-skills add UndiFineD/PyAgent/spawn. The CLI will automatically detect your IDE or AI agent and configure the skill.

  3. 3. Start using the skill

    The skill is now active. Your AI agent can use spawn immediately in the current project.

Upstream Repository Material

The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.

Upstream Source

spawn

Python Agent # Spawn - Expert Agent Generator Generate world-class, comprehensive expert agent prompts for Claude Code. Spawn - Expert Agent Generator

SKILL.md
Readonly
Upstream Repository Material
The section below is imported from the upstream repository and should be treated as secondary evidence. Use the Killer-Skills review above as the primary layer for fit, risk, and installation decisions.
Supporting Evidence

Spawn - Expert Agent Generator

Generate world-class, comprehensive expert agent prompts for Claude Code. Each agent should be a definitive reference for its domain - the kind of guide a PhD-level practitioner would create.

Target quality: 500-1000 lines per agent with real code examples, complete configs, and detailed patterns.

Benchmark agents: python-expert.md (1600 lines), claude-architect.md (1242 lines), react-expert.md (440 lines)

Usage Modes

Mode 1: Single Agent Generation

Generate one expert agent prompt for a specific technology platform.

Prompt for:

  • Technology platform/framework name
  • Scope (project-level or global/user-level)
  • Focus areas (optional: specific features, patterns, use cases)
  • Output format (markdown file or clipboard-ready text)

Mode 2: Batch Agent Generation

Create multiple agent prompts from a list of technology platforms.

Accept:

  • Multi-line list of technology platforms
  • Scope (project-level or global/user-level)
  • Common focus areas (optional)
  • Output format (individual .md files or consolidated text)

Mode 3: Architecture Analysis

Analyze a tech stack or architecture description and suggest relevant agents.

Process:

  1. Read architecture description (from user input or file)
  2. Identify all technology platforms/services
  3. Ask for scope (project or global)
  4. Present checkbox selector for agent creation
  5. Generate selected agents

Agent File Format

All agents MUST be created as Markdown files with YAML frontmatter:

  • Project-level: .claude/agents/ (current project only)
  • Global/User-level: ~/.claude/agents/ or C:\Users\[username]\.claude\agents\ (all projects)

File Structure:

markdown
1--- 2name: technology-name-expert 3description: When this agent should be used. Can include examples and use cases. No strict length limit - be clear and specific. Include "use PROACTIVELY" for automatic invocation. 4model: inherit 5color: blue 6--- 7 8[Agent system prompt content here]

YAML Frontmatter Fields:

  • name (required): Unique identifier, lowercase-with-hyphens (e.g., "asus-router-expert")
  • description (required): Clear, specific description of when to use this agent
    • No strict length limit - prioritize clarity over brevity
    • Can include examples, use cases, and context
    • Use "use PROACTIVELY" or "MUST BE USED" to encourage automatic invocation
    • Multi-line YAML string format is fine for lengthy descriptions
  • tools (optional): Comma-separated list of allowed tools (e.g., "Read, Grep, Glob, Bash")
    • If omitted, agent inherits all tools from main session
    • Best practice: Only grant tools necessary for the agent's purpose (improves security and focus)
  • model (optional): Specify model ("sonnet", "opus", "haiku", or "inherit" to use main session model)
  • color (optional): Visual identifier in UI ("blue", "green", "purple", etc.)

File Creation: Agents can be created programmatically using the Write tool:

Project-level: .claude/agents/[platform]-expert.md
Global/User-level: ~/.claude/agents/[platform]-expert.md (or C:\Users\[username]\.claude\agents\ on Windows)

Choosing Scope:

  • Project Agent (.claude/agents/): Specific to the current project, can be version controlled and shared with team
  • Global Agent (~/.claude/agents/): Available across all projects on your machine

After creation, the agent is immediately available for use with the Task tool.

Claude Code Agent Documentation

Essential Reading:

Key Concepts from Documentation:

  • Subagents operate in separate context windows with customized system prompts
  • Each subagent can have restricted tool access for focused capabilities
  • Multiple subagents can run concurrently for parallel processing
  • User-level agents (~/.claude/agents/) are available across all projects
  • Project-level agents (.claude/agents/) are project-specific and shareable
  • Use /agents command for the recommended UI to manage agents
  • Start with Claude-generated agents, then customize for best results
  • Version control project-level subagents for team collaboration

Generation Requirements

For each agent, create a comprehensive expert prompt with:

Agent Content Structure (10-Part Template):

Every generated agent MUST follow this comprehensive 10-part structure:

  1. Part 1: Core Concepts - Fundamental principles, mental model, architecture overview
  2. Part 2: Essential Patterns (5-10 patterns) - Each with: when to use, full implementation (20-50 lines), variations, common mistakes
  3. Part 3: Advanced Techniques (3-5 techniques) - Deep dives with complete examples
  4. Part 4: Configuration - Complete dev config, complete prod config, environment variables table
  5. Part 5: Integration Patterns - Integration code for 2-3 common technologies
  6. Part 6: Testing Strategies - Unit tests with mocks, integration tests, test configuration
  7. Part 7: Error Handling - Custom exception hierarchy, retry/circuit breaker patterns, structured logging
  8. Part 8: Performance Optimization - Profiling techniques, optimization table, caching strategies
  9. Part 9: Security Considerations - Common vulnerabilities, security hardening checklist
  10. Part 10: Quick Reference - Common operations cheat sheet (20-30 snippets), CLI commands, troubleshooting table

Plus: Quality Checklist, Anti-Patterns (5-10 with bad/good code), Canonical Resources (10-15 URLs)

See python-expert.md and react-expert.md in agents/ for reference implementations.

Requirements:

  • YAML frontmatter at top with required fields (name, description)
  • Concise, actionable system prompt (not verbose)
  • Minimum 10 official/authoritative URLs
  • Include real, production-ready code examples (10+ code blocks)
  • Include complete configuration files (dev + prod)
  • Include testing patterns with actual test code
  • Focus on patterns, best practices, architecture
  • Include canonical references for expansion
  • Markdown formatted for direct use
  • Description field can be lengthy with examples if needed for clarity

Output Options

Ask user to choose scope:

  1. Project Agent - Save to .claude/agents/ (project-specific, version controlled)
  2. Global Agent - Save to ~/.claude/agents/ or C:\Users\[username]\.claude\agents\ (all projects)

Ask user to choose format:

  1. Clipboard-ready - Output complete markdown (with YAML frontmatter) in code block
  2. File creation - Use Write tool to save to appropriate agents directory based on scope
  3. Both - Create file using Write tool AND show complete content in chat for review

File Creation Process: When creating files programmatically:

  1. Generate complete agent content with YAML frontmatter
  2. Determine path based on scope selection:
    • Project: .claude/agents/[platform-name]-expert.md
    • Global: ~/.claude/agents/[platform-name]-expert.md (or Windows equivalent)
  3. Use Write tool with appropriate path
  4. Verify file was created successfully
  5. Agent is immediately available for use

Examples

Example 1: Single Agent

User: /spawn
Agent: [Shows multi-tab AskUserQuestion with 5 tabs]
  Tab 1 (Mode): Single Agent / Batch Generation / Architecture Analysis
  Tab 2 (Scope): Project Agent / Global Agent
  Tab 3 (Output): Create File / Show in Chat / Both
  Tab 4 (Platform): Custom Platform / [or popular options]
  Tab 5 (Focus): [Multi-select] General Coverage / Caching Patterns / Pub/Sub / etc.
User: [Selects all answers and submits once]
  Mode: Single Agent
  Scope: Global Agent
  Output: Both
  Platform: Redis (via Other field)
  Focus: General Coverage, Caching Patterns, Pub/Sub
Agent: [Generates Redis expert prompt and saves to ~/.claude/agents/redis-expert.md]

Example 2: Batch Generation

User: /spawn
Agent: [Shows multi-tab AskUserQuestion with 3 tabs]
  Tab 1 (Mode): Single Agent / Batch Generation / Architecture Analysis
  Tab 2 (Scope): Project Agent / Global Agent
  Tab 3 (Output): Create Files / Show in Chat / Both
User: [Submits]
  Mode: Batch Generation
  Scope: Project Agent
  Output: Create Files
Agent: Please provide platforms (one per line):
User: PostgreSQL
Redis
RabbitMQ

Agent: [Creates 3 .md files in .claude/agents/ (project directory)]

Example 3: Architecture Analysis

User: /spawn
Agent: [Shows multi-tab AskUserQuestion with 3 tabs]
  Tab 1 (Mode): Single Agent / Batch Generation / Architecture Analysis
  Tab 2 (Scope): Project Agent / Global Agent
  Tab 3 (Output): Create Files / Show in Chat / Both
User: [Submits]
  Mode: Architecture Analysis
  Scope: Global Agent
  Output: Both
Agent: Describe your architecture or provide file path:
User: E-commerce platform: Next.js frontend, Node.js API, PostgreSQL, Redis cache, Stripe payments, AWS S3 storage, SendGrid emails
Agent: Found platforms: Next.js, Node.js, PostgreSQL, Redis, Stripe, AWS S3, SendGrid
[Shows multi-select AskUserQuestion]
User: [Selects: nextjs-expert, postgres-expert, redis-expert, stripe-expert]
Agent: [Generates 4 selected agents in ~/.claude/agents/]

Implementation Steps

  1. Ask All Questions at Once using a single multi-question AskUserQuestion call:

    • Question 1 (header: "Mode"): Single Agent / Batch Generation / Architecture Analysis
    • Question 2 (header: "Scope"): Project Agent (this project only) / Global Agent (all projects)
    • Question 3 (header: "Output"): Create File / Show in Chat / Both

    For Single Mode, also ask in the same call:

    • Question 4 (header: "Platform"): Offer "Custom Platform" option (user types in Other field)
    • Question 5 (header: "Focus", multiSelect: true): General Coverage / [2-3 common focus areas for that tech]
  2. For Single Mode:

    • If user selected "Custom Platform", prompt for the platform name in chat
    • Generate comprehensive prompt based on answers
    • Create file and/or display based on output preference
  3. For Batch Mode:

    • Ask user to provide multi-line platform list in chat
    • For each platform:
      • Generate expert prompt
      • Save to .claude/agents/[platform]-expert.md
    • Report completion with file paths
  4. For Architecture Analysis:

    • Ask user for architecture description in chat
    • Parse and identify technologies
    • Present checkbox selector using AskUserQuestion (multiSelect: true)
    • Generate selected agents
    • Save to files based on output preference
  5. Generate Each Agent Prompt:

    • Research official docs (WebSearch or WebFetch)
    • Find 10+ authoritative URLs
    • Structure according to template above
    • Focus on patterns and best practices
    • Target 500-1000 lines with comprehensive patterns
    • Markdown formatted
  6. Output:

    • Determine file path based on Scope selection:
      • Project Agent: .claude/agents/[platform]-expert.md
      • Global Agent: ~/.claude/agents/[platform]-expert.md (Unix/Mac) or C:\Users\[username]\.claude\agents\[platform]-expert.md (Windows)
    • If "Create File" or "Both": Use Write tool with appropriate path and complete YAML frontmatter + system prompt
    • If "Show in Chat" or "Both": Display complete markdown (including frontmatter) in code block
    • Confirm creation with full file path
    • Remind user agent is immediately available via Task tool

Important: Always use a single AskUserQuestion call with multiple questions (2-4) to create the multi-tab interface. Never ask questions sequentially one at a time.

Quality Checklist

Before outputting each agent prompt, verify:

  • YAML frontmatter present with required fields (name, description)
  • Name uses lowercase-with-hyphens format
  • Description is clear and specific (length is flexible)
  • Tools field specified if restricting access (best practice: limit to necessary tools)
  • 10+ authoritative URLs included in system prompt
  • 10+ production-ready code examples included
  • Complete dev and prod configuration files
  • Testing patterns with actual test code
  • Error handling patterns and exception hierarchy
  • 5+ anti-patterns with bad/good code comparison
  • Concise and scannable system prompt
  • Clear use cases defined
  • Integration points identified
  • Common patterns referenced
  • Anti-patterns listed
  • Proper markdown formatting throughout
  • Filename matches name field: [name].md
  • Follows Claude Code subagent best practices (see documentation links above)

Post-Generation

After creating agents, remind user:

  1. Review generated prompts
  2. Test agent with sample questions
  3. Refine based on actual usage
  4. Add to version control if satisfied
  5. Consult Claude Code documentation links above for advanced features and best practices

Additional Resources:

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