Prompt Engineering Patterns
Advanced prompt engineering techniques to maximize LLM performance, reliability, and controllability.
Overview
Effective prompt engineering combines structured patterns, iterative optimization, and psychological principles to achieve consistent, high-quality LLM outputs. This skill covers core capabilities, key patterns, best practices, and production-ready templates.
Core Capabilities
- Few-Shot Learning: Teach by showing examples (2-5 input-output pairs)
- Chain-of-Thought Prompting: Request step-by-step reasoning
- Prompt Optimization: Systematically improve through testing
- Template Systems: Build reusable prompt structures
- System Prompt Design: Set global behavior and constraints
When to Use
Use prompt engineering when:
- Writing commands, hooks, or skills for agents
- Designing prompts for sub-agents
- Optimizing LLM interactions
- Building production prompt templates
- Improving output consistency and reliability
Progressive Loading
L2 Content (loaded when patterns and practices needed):
- See: references/patterns.md
- Core Capabilities (detailed)
- Key Patterns
- Best Practices
- Common Pitfalls
- Integration Patterns
- Performance Optimization
L3 Content (loaded when advanced techniques and examples needed):
- See: references/advanced.md
- The Seven Principles
- Principle Combinations by Prompt Type
- Psychology Behind Effective Prompts
- Ethical Use Guidelines
- Production Examples
- Quick Reference