Files
claude-skills-reference/agents/CLAUDE.md
Leo 418de87449 docs: add ClawHub publishing constraints to CLAUDE.md, agents/CLAUDE.md, GEMINI.md
- cs- prefix for slug conflicts only (ClawHub registry, not repo)
- No paid/commercial service dependencies
- Rate limit: 5 new skills/hour
- plugin.json schema enforcement
- Version must match repo release
2026-03-10 19:27:16 +01:00

11 KiB

Agent Development Guide

This guide provides comprehensive instructions for creating cs- prefixed agents* that seamlessly integrate with the 42 production skills in this repository.

Agent Architecture

What are cs-* Agents?

cs- agents* are specialized Claude Code agents that orchestrate the 42 existing skills. Each agent:

  • References skills via relative paths (../../marketing-skill/)
  • Executes Python automation tools from skill packages
  • Follows established workflows and templates
  • Maintains skill portability and independence

Key Principle: Agents ORCHESTRATE skills, they don't replace them. Skills remain self-contained and portable.

ClawHub Publishing Constraints

When skills are published to ClawHub (clawhub.com):

  • cs- prefix for slug conflicts only — applies only on the ClawHub registry when another publisher already owns the slug. Repo folder names and local skill names are never renamed.
  • No paid/commercial service dependencies — skills must not require paid third-party API keys or commercial services unless provided by the project itself.
  • plugin.json — ONLY fields: name, description, version, author, homepage, repository, license, skills: "./".
  • Rate limit: 5 new skills/hour on ClawHub. Use drip publishing for bulk operations.

Production Agents

5 Agents Currently Available (as of November 5, 2025):

Agent Domain Description Skills Used Lines
cs-content-creator Marketing AI-powered content creation with brand voice consistency and SEO optimization content-creator 327
cs-demand-gen-specialist Marketing Demand generation and customer acquisition specialist marketing-demand-acquisition 289
cs-ceo-advisor C-Level Strategic leadership advisor for CEOs covering vision, strategy, board management ceo-advisor 360
cs-cto-advisor C-Level Technical leadership advisor for CTOs covering tech strategy and team scaling cto-advisor 412
cs-product-manager Product Product management agent for RICE prioritization and customer discovery product-manager-toolkit 407

Total: 1,795 lines of comprehensive agent documentation

Template Available: templates/agent-template.md (318 lines) - Use this to create new agents

Agent vs Skill

Aspect Agent (cs-*) Skill
Purpose Orchestrate and execute workflows Provide tools, knowledge, templates
Location agents/domain/ domain-skill/skill-name/
Structure Single .md file with YAML frontmatter SKILL.md + scripts/ + references/ + assets/
Integration References skills via ../../ Self-contained, no dependencies
Naming cs-content-creator, cs-ceo-advisor content-creator, ceo-advisor

Agent File Structure

Required YAML Frontmatter

Every agent file must start with valid YAML frontmatter:

---
name: cs-agent-name
description: One-line description of what this agent does
skills: skill-folder-name
domain: domain-name
model: sonnet
tools: [Read, Write, Bash, Grep, Glob]
---

Field Definitions:

  • name: Agent identifier with cs- prefix (e.g., cs-content-creator)
  • description: Single sentence describing agent's purpose
  • skills: Skill folder this agent references (e.g., marketing-skill/content-creator)
  • domain: Domain category (marketing, product, engineering, c-level, pm, ra-qm)
  • model: Claude model to use (sonnet, opus, haiku)
  • tools: Array of Claude Code tools agent can use

Required Markdown Sections

After YAML frontmatter, include these sections:

  1. Purpose (2-3 paragraphs)
  2. Skill Integration (with subsections)
    • Skill Location
    • Python Tools
    • Knowledge Bases
    • Templates
  3. Workflows (minimum 3 workflows)
  4. Integration Examples (concrete code/command examples)
  5. Success Metrics (how to measure effectiveness)
  6. Related Agents (cross-references)
  7. References (links to documentation)

Relative Path Resolution

Path Pattern

All skill references use the ../../ pattern:

**Skill Location:** `../../marketing-skill/content-creator/`

### Python Tools

1. **Brand Voice Analyzer**
   - **Path:** `../../marketing-skill/content-creator/scripts/brand_voice_analyzer.py`
   - **Usage:** `python ../../marketing-skill/content-creator/scripts/brand_voice_analyzer.py content.txt`

2. **SEO Optimizer**
   - **Path:** `../../marketing-skill/content-creator/scripts/seo_optimizer.py`
   - **Usage:** `python ../../marketing-skill/content-creator/scripts/seo_optimizer.py article.md "keyword"`

Why ../../?

From agent location: agents/marketing/cs-content-creator.md To skill location: marketing-skill/content-creator/

Navigation: agents/marketing/../../ (up to root) → marketing-skill/content-creator/

Always test paths resolve correctly!

Python Tool Integration

Execution Pattern

Agents execute Python tools from skill packages:

# From agent context
python ../../marketing-skill/content-creator/scripts/brand_voice_analyzer.py input.txt

# With JSON output
python ../../marketing-skill/content-creator/scripts/brand_voice_analyzer.py input.txt json

# With arguments
python ../../product-team/product-manager-toolkit/scripts/rice_prioritizer.py features.csv --capacity 20

Tool Requirements

All Python tools must:

  • Use standard library only (or minimal dependencies documented in SKILL.md)
  • Support both JSON and human-readable output
  • Provide --help flag with usage information
  • Return appropriate exit codes (0 = success, 1 = error)
  • Handle missing arguments gracefully

Error Handling

When Python tools fail:

  1. Check file path resolution
  2. Verify input file exists
  3. Check Python version compatibility (3.8+)
  4. Review tool's --help output
  5. Inspect error messages in stderr

Workflow Documentation

Workflow Structure

Each workflow must include:

### Workflow 1: [Clear Descriptive Name]

**Goal:** One-sentence description

**Steps:**
1. **[Action]** - Description with specific commands/tools
2. **[Action]** - Description with specific commands/tools
3. **[Action]** - Description with specific commands/tools

**Expected Output:** What success looks like

**Time Estimate:** How long this workflow takes

**Example:**
\`\`\`bash
# Concrete example command
python ../../marketing-skill/content-creator/scripts/seo_optimizer.py article.md "primary keyword"
\`\`\`

Minimum Requirements

Each agent must document at least 3 workflows covering:

  1. Primary use case (most common scenario)
  2. Advanced use case (complex scenario)
  3. Integration use case (combining multiple tools)

Agent Template

Use this template when creating new agents:

---
name: cs-agent-name
description: One-line description
skills: skill-folder-name
domain: domain-name
model: sonnet
tools: [Read, Write, Bash, Grep, Glob]
---

# Agent Name

## Purpose

[2-3 paragraphs describing what this agent does, why it exists, and who it serves]

## Skill Integration

**Skill Location:** \`../../domain-skill/skill-name/\`

### Python Tools

1. **Tool Name**
   - **Purpose:** What it does
   - **Path:** \`../../domain-skill/skill-name/scripts/tool.py\`
   - **Usage:** \`python ../../domain-skill/skill-name/scripts/tool.py [args]\`

### Knowledge Bases

1. **Reference Name**
   - **Location:** \`../../domain-skill/skill-name/references/file.md\`
   - **Content:** What's inside

### Templates

1. **Template Name**
   - **Location:** \`../../domain-skill/skill-name/assets/template.md\`
   - **Use Case:** When to use

## Workflows

### Workflow 1: [Name]

**Goal:** Description

**Steps:**
1. Step 1
2. Step 2
3. Step 3

**Expected Output:** Success criteria

**Example:**
\`\`\`bash
python ../../domain-skill/skill-name/scripts/tool.py input.txt
\`\`\`

### Workflow 2: [Name]
[Same structure]

### Workflow 3: [Name]
[Same structure]

## Integration Examples

[Concrete examples with actual commands and expected outputs]

## Success Metrics

- Metric 1: How to measure
- Metric 2: How to measure
- Metric 3: How to measure

## Related Agents

- [cs-related-agent](../domain/cs-related-agent.md) - How they relate

## References

- [Skill Documentation](../../domain-skill/skill-name/SKILL.md)
- [Domain Roadmap](../../domain-skill/roadmap.md)

Quality Standards

Agent Quality Checklist

Before committing an agent:

  • YAML frontmatter valid (no parsing errors)
  • All required fields present (name, description, skills, domain, model, tools)
  • cs-* prefix used for agent naming
  • Relative paths resolve correctly (../../ pattern)
  • Skill location documented and accessible
  • Python tools referenced with correct paths
  • At least 3 workflows documented
  • Integration examples provided and tested
  • Success metrics defined
  • Related agents cross-referenced

Testing Agent Integration

Test these aspects:

1. Path Resolution

# From agent directory
cd agents/marketing/
ls ../../marketing-skill/content-creator/  # Should list contents

2. Python Tool Execution

# Create test input
echo "Test content" > test-input.txt

# Execute tool
python ../../marketing-skill/content-creator/scripts/brand_voice_analyzer.py test-input.txt

# Verify output

3. Knowledge Base Access

# Verify reference files exist
cat ../../marketing-skill/content-creator/references/brand_guidelines.md

Domain-Specific Guidelines

Marketing Agents (agents/marketing/)

  • Focus on content creation, SEO, demand generation
  • Reference: ../../marketing-skill/
  • Tools: brand_voice_analyzer.py, seo_optimizer.py

Product Agents (agents/product/)

  • Focus on prioritization, user research, agile workflows
  • Reference: ../../product-team/
  • Tools: rice_prioritizer.py, user_story_generator.py, okr_cascade_generator.py

C-Level Agents (agents/c-level/)

  • Focus on strategic decision-making
  • Reference: ../../c-level-advisor/
  • Tools: Strategic analysis and planning tools

Engineering Agents (agents/engineering/)

  • Focus on scaffolding, code quality, fullstack development
  • Reference: ../../engineering-team/
  • Tools: project_scaffolder.py, code_quality_analyzer.py

Common Pitfalls

Avoid these mistakes:

Hardcoding absolute paths Skipping YAML frontmatter validation Forgetting to test relative paths Documenting workflows without examples Creating agent dependencies (keep them independent) Duplicating skill content in agent files Using LLM calls instead of referencing Python tools

Next Steps

After creating an agent:

  1. Test all relative paths resolve
  2. Execute all Python tools from agent context
  3. Verify all workflows with concrete examples
  4. Update agent catalog in main README.md
  5. Create GitHub issue for agent testing
  6. Commit with conventional commit message: feat(agents): implement cs-agent-name

Last Updated: November 5, 2025 Current Sprint: sprint-11-05-2025 (Skill-Agent Integration Phase 1-2) Related: See main CLAUDE.md for repository overview