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prompt-engineering

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Use this skill when you writing commands, hooks, skills for Agent, or prompts for sub agents or any other LLM interaction, including optimizing prompts, improving LLM outputs, or designing production prompt templates.

1 stars
1.2k downloads
Updated 1/15/2026

Package Files

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SKILL.md

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

  1. Few-Shot Learning: Teach by showing examples (2-5 input-output pairs)
  2. Chain-of-Thought Prompting: Request step-by-step reasoning
  3. Prompt Optimization: Systematically improve through testing
  4. Template Systems: Build reusable prompt structures
  5. 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

Install

Download ZIP
Requires askill CLI v1.0+

AI Quality Score

75/100Analyzed 3/10/2026

Well-structured skill on prompt engineering with clear core capabilities, good organization, and a useful "When to Use" section. References additional detail in external files (L2/L3 content), which limits immediate completeness but shows good progressive loading architecture. Tags improve discoverability. Score benefits from clear structure and practical guidance, though full actionability depends on referenced files.

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Metadata

Licenseunknown
Version-
Updated1/15/2026
PublisherZpankz

Tags

ci-cdllmprompting