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zircote

anthropic-prompt-engineer

by zircote

Claude Code plugin with 115+ specialized Opus 4.5 agents organized by domain, 54 development skills, and exploration commands

1🍴 0📅 Jan 23, 2026

SKILL.md


name: anthropic-prompt-engineer description: Master Anthropic's prompt engineering techniques to generate new prompts or improve existing ones using best practices for Claude AI models.

Anthropic Prompt Engineer

Trigger Phrases

Activate when user says:

  • "improve this prompt", "optimize my prompt", "make this prompt better"
  • "write a prompt for", "create a prompt that", "generate a prompt"
  • "prompt engineering", "prompt best practices"
  • "help me with prompting", "how should I prompt this"
  • "fix my prompt", "debug this prompt", "my prompt isn't working"
  • "using anthropic techniques", "Claude prompt tips"

Master the art and science of prompt engineering with Anthropic's proven techniques. Generate new prompts from scratch or improve existing ones using best practices for Claude AI models (Claude 4.x, Sonnet, Opus, Haiku).

What This Skill Does

Helps you create and optimize prompts for Claude AI using Anthropic's official techniques:

  • Generate new prompts - Build effective prompts from requirements
  • Improve existing prompts - Optimize prompts for better results
  • Apply best practices - Use proven techniques from Anthropic
  • Avoid common mistakes - Prevent hallucinations and unclear outputs
  • Optimize for Claude 4.x - Leverage latest model capabilities
  • Structure complex prompts - Build multi-step, production-ready prompts

Why Prompt Engineering Matters

Without proper prompting:

  • Inconsistent or incorrect outputs
  • Hallucinations and made-up information
  • Unclear or verbose responses
  • Wasted tokens and API calls
  • Poor performance on complex tasks
  • Difficulty reproducing results

With engineered prompts:

  • Precise, reliable outputs
  • Factual, grounded responses
  • Clear, formatted results
  • Efficient token usage
  • Excellent complex task performance
  • Reproducible, production-ready results

Quick Start

Generate a New Prompt

Using the anthropic-prompt-engineer skill, create a prompt that:
- Extracts structured data from customer emails
- Returns JSON format
- Handles missing information gracefully
- Includes 2 examples

Improve an Existing Prompt

Using the anthropic-prompt-engineer skill, improve this prompt:

"Analyze this code and tell me if there are bugs"

Make it more effective using Anthropic's best practices.

Core Techniques Summary

1. Be Clear and Direct

Provide explicit, unambiguous instructions. Claude 4.x excels with precise direction.

2. Use XML Tags for Structure

Organize prompts with semantic tags like <instructions>, <example>, <context>.

3. Chain of Thought (CoT)

Ask Claude to think step-by-step for complex reasoning.

4. Prefilling

Start Claude's response to guide format and style.

5. Few-Shot Examples

Provide 2-5 diverse examples showing the pattern you want.

6. Role Assignment

Give Claude a specific role or persona for appropriate context.

Reference Materials

All techniques, examples, and templates are available in the references/ directory:

  • core_techniques.md - Essential techniques with examples
  • advanced_techniques.md - Advanced methods and optimization
  • common_mistakes.md - Pitfalls to avoid
  • claude_4_best_practices.md - Claude 4.x specific guidance
  • prompt_templates.md - Ready-to-use templates

Usage Examples

Example 1: Generate a Data Extraction Prompt

Create a prompt that extracts names, emails, and phone numbers from business cards.

Example 2: Improve a Vague Prompt

Transform "Write about machine learning" into a structured, effective prompt.

Example 3: Debug a Failing Prompt

Fix inconsistent outputs by adding structure, examples, and format specification.

Best Practices Checklist

  • Instructions are clear and specific
  • Output format is explicitly defined
  • Examples align with desired behavior
  • XML tags separate different sections
  • Context is minimal but sufficient
  • Edge cases are addressed
  • Tested on diverse inputs
  • Token usage is optimized

Key Principles

  1. Empirical Approach - Test, measure, iterate
  2. Context as Resource - Every token counts
  3. Clarity Over Cleverness - Explicit instructions work best
  4. Examples Teach Best - Show, don't just tell
  5. Structure Helps - Organization reduces confusion
  6. Iteration Improves - Refine based on results

Summary

Master prompt engineering to create:

  • Reliable and consistent outputs
  • Production-ready prompts
  • Token-efficient solutions
  • Easy to maintain systems

Apply Anthropic's proven techniques for best results.


Remember: Good prompts are engineered, not guessed.

Score

Total Score

75/100

Based on repository quality metrics

SKILL.md

SKILL.mdファイルが含まれている

+20
LICENSE

ライセンスが設定されている

+10
説明文

100文字以上の説明がある

+10
人気

GitHub Stars 100以上

0/15
最近の活動

3ヶ月以内に更新

+5
フォーク

10回以上フォークされている

0/5
Issue管理

オープンIssueが50未満

+5
言語

プログラミング言語が設定されている

+5
タグ

1つ以上のタグが設定されている

+5

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