prompting
Meta-prompting system that generates optimized prompts using templates, standards, and patterns. Produces structured prompts with role, context, and output format. USE WHEN meta-prompting, template generation, prompt optimization, programmatic prompt composition, render template, validate template, prompt engineering.
Best use case
prompting is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Meta-prompting system that generates optimized prompts using templates, standards, and patterns. Produces structured prompts with role, context, and output format. USE WHEN meta-prompting, template generation, prompt optimization, programmatic prompt composition, render template, validate template, prompt engineering.
Teams using prompting 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/prompting/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How prompting Compares
| Feature / Agent | prompting | 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?
Meta-prompting system that generates optimized prompts using templates, standards, and patterns. Produces structured prompts with role, context, and output format. USE WHEN meta-prompting, template generation, prompt optimization, programmatic prompt composition, render template, validate template, prompt engineering.
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.
SKILL.md Source
## Customization
**Before executing, check for user customizations at:**
`~/.claude/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**:
```bash
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)
```typescript
// skills/Agents/Tools/ComposeAgent.ts
import { renderTemplate } from '~/.claude/skills/Utilities/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)
```yaml
# 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...
```
```bash
bun run RenderTemplate.ts \
--template Primitives/Structure.hbs \
--data phased-analysis.yaml
```
### Example 3: Custom Agent with Voice Mapping
```typescript
// 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.Related Skills
reviewing-agent-prompting
Review and improve prompts for coding agents. Use PROACTIVELY when auditing, checking, or evaluating agent instructions, system prompts, or task delegation text. Applies state-machine thinking to identify structural gaps and improve effectiveness.
ai-prompting
Effective communication strategies for AI-assisted development. Learn context-first prompting, phased interactions, iterative refinement, and validation techniques to get better results from Claude and other AI coding assistants.
bgo
Automates the complete Blender build-go workflow, from building and packaging your extension/add-on to removing old versions, installing, enabling, and launching Blender for quick testing and iteration.
synthflow-ai-automation
Automate Synthflow AI tasks via Rube MCP (Composio). Always search tools first for current schemas.
sync-agents
Synchronize GitHub Copilot instructions, custom agents, and skills into detected AI coding agent configurations in this repository. Use when asked to mirror .github/copilot-instructions.md, .github/instructions, .github/agents, or .github/skills into Claude, Codex, Cursor, Gemini, Windsurf, and related tooling.
synapse
Multi-AI Agent Orchestration System with configurable models and role-based workflows. Use when you need to coordinate multiple AI agents (Claude, Gemini, Codex) for complex tasks like planning, code generation, analysis, review, and execution. Supports agentic workflow patterns: parallel specialists, pipeline, and swarm orchestration. Compatible with Claude Code, Cursor, and OpenCode. Triggers: 'orchestrate agents', 'multi-agent workflow', 'plan and execute', 'code review pipeline', 'run synapse', 'agentic workflow'.
synapse-action-development
Explains how to create Synapse plugin actions. Use when the user asks to "create an action", "write an action", uses "@action decorator", "BaseAction class", "function-based action", "class-based action", "Pydantic params", "ActionPipeline", "DataType", "input_type", "output_type", "semantic types", "YOLODataset", "ModelWeights", "pipeline chaining", or needs help with synapse plugin action development.
swot-pestle-analysis
Strategic environmental analysis using SWOT, PESTLE, and Porter's Five Forces. Creates structured assessments with Mermaid visualizations for competitive positioning and strategic planning.
switchailocal
Unified LLM proxy for AI agents. Route all model requests through http://localhost:18080/v1. Provides FREE access to Gemini CLI, Claude CLI, Codex, and Vibe via your existing subscriptions. Use when: (1) making LLM calls using provider prefixes, (2) switching between CLI/Local/Cloud providers, (3) needing to attach local files/folders to prompts via CLI, (4) requiring intelligent routing between models, or (5) needing to monitor provider health and analytics.
swift-actor-persistence
Use when building a thread-safe data persistence layer in Swift using actors with in-memory cache and file storage.
swamp-vault
Manage swamp vaults for secure secret storage. Use when creating vaults, storing secrets, retrieving secrets, listing vault keys, or working with vault expressions in workflows. Triggers on "vault", "secret", "secrets", "credentials", "api key storage", "secure storage", "password", "token", "key management", "sensitive data", "encrypt", "aws secrets manager", "store secret", "put secret", "get secret", "credential storage", or vault-related CLI commands.
supadata-automation
Automate Supadata tasks via Rube MCP (Composio). Always search tools first for current schemas.