Agent Skills: Prompting - Meta-Prompting & Template System

USE WHEN meta-prompting, template generation, prompt optimization, or programmatic prompt composition.

UncategorizedID: edheltzel/atlas/Prompting

Install this agent skill to your local

pnpm dlx add-skill https://github.com/edheltzel/atlas/tree/HEAD/claudecode/.claude/skills/Prompting

Skill Files

Browse the full folder contents for Prompting.

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claudecode/.claude/skills/Prompting/SKILL.md

Skill Metadata

Name
Prompting
Description
USE WHEN meta-prompting, template generation, prompt optimization, or programmatic prompt composition.

Customization

Before executing, check for user customizations at: ~/.claude/skills/PAI/USER/SKILLCUSTOMIZATIONS/Prompting/

If this directory exists, load and apply any PREFERENCES.md, configurations, or resources found there. These override default behavior. If the directory does not exist, proceed with skill defaults.

🚨 MANDATORY: Voice Notification (REQUIRED BEFORE ANY ACTION)

You MUST send this notification BEFORE doing anything else when this skill is invoked.

  1. Send voice notification:

    curl -s -X POST http://localhost:8888/notify \
      -H "Content-Type: application/json" \
      -d '{"message": "Running the WORKFLOWNAME workflow in the Prompting skill to ACTION"}' \
      > /dev/null 2>&1 &
    
  2. Output text notification:

    Running the **WorkflowName** workflow in the **Prompting** skill to ACTION...
    

This is not optional. Execute this curl command immediately upon skill invocation.

Prompting - Meta-Prompting & Template System

Invoke when: meta-prompting, template generation, prompt optimization, programmatic prompt composition, creating dynamic agents, generating structured prompts from data.

Overview

The Prompting skill owns ALL prompt engineering concerns:

  • Standards - Anthropic best practices, Claude 4.x patterns, empirical research
  • Templates - Handlebars-based system for programmatic prompt generation
  • Tools - Template rendering, validation, and composition utilities
  • Patterns - Reusable prompt primitives and structures

This is the "standard library" for prompt engineering - other skills reference these resources when they need to generate or optimize prompts.

Core Components

1. Standards.md

Complete prompt engineering documentation based on:

  • Anthropic's Claude 4.x Best Practices (November 2025)
  • Context engineering principles
  • The Fabric prompt pattern system
  • 1,500+ academic papers on prompt optimization

Key Topics:

  • Markdown-first design (NO XML tags)

Usage Examples

Example 1: Using Briefing Template (Agent Skill)

// skills/Agents/Tools/AgentFactory.ts
import { renderTemplate } from '~/.claude/skills/Prompting/Tools/RenderTemplate.ts';

const prompt = renderTemplate('Primitives/Briefing.hbs', {
  briefing: { type: 'research' },
  agent: { id: 'EN-1', name: 'Skeptical Thinker', personality: {...} },
  task: { description: 'Analyze security architecture', questions: [...] },
  output_format: { type: 'markdown' }
});

Example 2: Using Structure Template (Workflow)

# Data: phased-analysis.yaml
phases:
  - name: Discovery
    purpose: Identify attack surface
    steps:
      - action: Map entry points
        instructions: List all external interfaces...
  - name: Analysis
    purpose: Assess vulnerabilities
    steps:
      - action: Test boundaries
        instructions: Probe each entry point...
bun run RenderTemplate.ts \
  --template Primitives/Structure.hbs \
  --data phased-analysis.yaml

Example 3: Custom Agent with Voice Mapping

// Generate specialized agent with appropriate voice
const agent = composeAgent(['security', 'skeptical', 'thorough'], task, traits);
// Returns: { name, traits, voice: 'default', voiceId: 'VOICE_ID...' }

Integration with Other Skills

Agents Skill

  • Uses Templates/Primitives/Briefing.hbs for agent context handoff
  • Uses RenderTemplate.ts to compose dynamic agents
  • Maintains agent-specific template: Agents/Templates/DynamicAgent.hbs

Evals Skill

  • Uses eval-specific templates: Judge, Rubric, TestCase, Comparison, Report
  • Leverages RenderTemplate.ts for eval prompt generation
  • Eval templates may be stored in Evals/Templates/ but use Prompting's engine

Development Skill

  • References Standards.md for prompt best practices
  • Uses Structure.hbs for workflow patterns
  • Applies Gate.hbs for validation checklists

Token Efficiency

The templating system eliminated ~35,000 tokens (65% reduction) across PAI:

| Area | Before | After | Savings | |------|--------|-------|---------| | SKILL.md Frontmatter | 20,750 | 8,300 | 60% | | Agent Briefings | 6,400 | 1,900 | 70% | | Voice Notifications | 6,225 | 725 | 88% | | Workflow Steps | 7,500 | 3,000 | 60% | | TOTAL | ~53,000 | ~18,000 | 65% |

Best Practices

1. Separation of Concerns

  • Templates: Structure and formatting only
  • Data: Content and parameters (YAML/JSON)
  • Logic: Rendering and validation (TypeScript)

2. Keep Templates Simple

  • Avoid complex logic in templates
  • Use Handlebars helpers for transformations
  • Business logic belongs in TypeScript, not templates

3. DRY Principle

  • Extract repeated patterns into partials
  • Use presets for common configurations
  • Single source of truth for definitions

4. Version Control

  • Templates and data in separate files
  • Track changes independently
  • Enable A/B testing of structures

References

Primary Documentation:

  • Standards.md - Complete prompt engineering guide
  • Templates/README.md - Template system overview (if preserved)
  • Tools/RenderTemplate.ts - Implementation details

Research Foundation:

  • Anthropic: "Claude 4.x Best Practices" (November 2025)
  • Anthropic: "Effective Context Engineering for AI Agents"
  • Anthropic: "Prompt Templates and Variables"
  • The Fabric System (January 2024)
  • "The Prompt Report" - arXiv:2406.06608
  • "The Prompt Canvas" - arXiv:2412.05127

Related Skills:

  • Agents - Dynamic agent composition
  • Evals - LLM-as-Judge prompting
  • Development - Spec-driven development patterns

Philosophy: Prompts that write prompts. Structure is code, content is data. Meta-prompting enables dynamic composition where the same template with different data generates specialized agents, workflows, and evaluation frameworks. This is core PAI DNA - programmatic prompt generation at scale.