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openai-prompt-engineer
// Generate and improve prompts using best practices for OpenAI GPT-5 and other LLMs. Apply advanced techniques like chain-of-thought, few-shot prompting, and progressive disclosure.
// Generate and improve prompts using best practices for OpenAI GPT-5 and other LLMs. Apply advanced techniques like chain-of-thought, few-shot prompting, and progressive disclosure.
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Determine the best Anthropic architecture for your project by analyzing requirements and recommending the optimal combination of Skills, Agents, Prompts, and SDK primitives.
Master Anthropic's prompt engineering techniques to generate new prompts or improve existing ones using best practices for Claude AI models.
| name | openai-prompt-engineer |
| description | Generate and improve prompts using best practices for OpenAI GPT-5 and other LLMs. Apply advanced techniques like chain-of-thought, few-shot prompting, and progressive disclosure. |
A comprehensive skill for crafting, analyzing, and improving prompts for OpenAI's GPT-5 and other modern Large Language Models (LLMs), with focus on GPT-5-specific optimizations and universal prompting techniques.
Helps you create and optimize prompts using cutting-edge techniques:
Without good prompts:
With optimized prompts:
Bad: "Write about AI" Good: "Write a 500-word technical article explaining transformer architecture for software engineers with 2-3 years of experience. Include code examples in Python and focus on practical implementation."
Use clear formatting to organize instructions:
Role: You are a senior Python developer
Task: Review this code for security vulnerabilities
Constraints:
- Focus on OWASP Top 10
- Provide specific line numbers
- Suggest fixes with code examples
Output format: Markdown with severity ratings
Show the model what you want:
Input: "User clicked login"
Output: "USER_LOGIN_CLICKED"
Input: "Payment processed successfully"
Output: "PAYMENT_PROCESSED_SUCCESS"
Input: "Email verification failed"
Output: [Your turn]
Add phrases like:
Specify exactly how you want the response:
<output_format>
<summary>One sentence overview</summary>
<details>
<point>Key finding 1</point>
<point>Key finding 2</point>
</details>
<recommendation>Specific action to take</recommendation>
</output_format>
Use this template:
[ROLE/CONTEXT]
You are [specific role with relevant expertise]
[TASK]
[Clear, specific task description]
[CONSTRAINTS]
- [Limitation 1]
- [Limitation 2]
[FORMAT]
Output should be [exact format specification]
[EXAMPLES - if using few-shot]
[Example 1]
[Example 2]
[THINK STEP-BY-STEP - if complex reasoning]
Before answering, [thinking instruction]
When to use: Complex reasoning, math, multi-step problems
How it works: Ask the model to show intermediate steps
Example:
Problem: A store has 15 apples. They sell 60% in the morning and
half of what's left in the afternoon. How many remain?
Please solve this step-by-step:
1. Calculate morning sales
2. Calculate remaining after morning
3. Calculate afternoon sales
4. Calculate final remaining
Result: More accurate answers through explicit reasoning
When to use: Pattern matching, classification, style transfer
How it works: Provide 2-5 examples, then the actual task
Example:
Convert casual text to professional business tone:
Input: "Hey! Thanks for reaching out. Let's chat soon!"
Output: "Thank you for your message. I look forward to our conversation."
Input: "That's a great idea! I'm totally on board with this."
Output: "I appreciate your suggestion and fully support this initiative."
Input: "Sounds good, catch you later!"
Output: [Model completes]
When to use: Complex problems without examples
How it works: Simply add "Let's think step by step"
Example:
Question: What are the security implications of storing JWTs
in localStorage?
Let's think step by step:
Magic phrase: "Let's think step by step" → dramatically improves reasoning
When to use: Working with Claude or need parsed output
Example:
Analyze this code for issues. Structure your response as:
<analysis>
<security_issues>
<issue severity="high|medium|low">
<description>What's wrong</description>
<location>File and line number</location>
<fix>How to fix it</fix>
</issue>
</security_issues>
<performance_issues>
<!-- Same structure -->
</performance_issues>
<best_practices>
<suggestion>Improvement suggestion</suggestion>
</best_practices>
</analysis>
When to use: Large context, multi-step workflows
How it works: Break tasks into stages, only request what's needed now
Example:
Stage 1: "Analyze this codebase structure and list the main components"
[Get response]
Stage 2: "Now, for the authentication component you identified,
show me the security review"
[Get response]
Stage 3: "Based on that review, generate fixes for the high-severity issues"
Structured Prompting:
ROLE: Senior TypeScript Developer
TASK: Implement user authentication service
CONSTRAINTS:
- Use JWT with refresh tokens
- TypeScript with strict mode
- Include comprehensive error handling
- Follow SOLID principles
OUTPUT: Complete TypeScript class with JSDoc comments
REASONING_EFFORT: high (for complex business logic)
Control Agentic Behavior:
"Implement this feature step-by-step, asking for confirmation
before each major decision"
OR
"Complete this task end-to-end without asking for guidance.
Persist until fully handled."
Manage Verbosity:
"Provide a concise implementation (under 100 lines) focusing
only on core functionality"
Use XML Tags:
<instruction>
Review this pull request for security issues
</instruction>
<code>
[Code to review]
</code>
<focus_areas>
- SQL injection vulnerabilities
- XSS attack vectors
- Authentication bypasses
- Data exposure risks
</focus_areas>
<output_format>
For each issue found, provide:
1. Severity (Critical/High/Medium/Low)
2. Location
3. Explanation
4. Fix recommendation
</output_format>
Step-by-Step Thinking:
Think through this architecture decision step by step:
1. First, identify the requirements
2. Then, list possible approaches
3. Evaluate trade-offs for each
4. Make a recommendation with reasoning
Clear Specificity:
BAD: "Make the response professional"
GOOD: "Use formal business language, avoid contractions,
address the user as 'you', keep sentences under 20 words"
Use this checklist to improve any prompt:
Before:
"Write some code for user authentication"
After:
"Write a TypeScript class called AuthService that:
- Accepts email/password credentials
- Validates against a User repository
- Returns a JWT token on success
- Throws AuthenticationError on failure
- Includes comprehensive JSDoc comments
- Follows dependency injection pattern"
Before:
"Convert these variable names to camelCase"
After:
"Convert these variable names to camelCase:
user_name → userName
total_count → totalCount
is_active → isActive
Now convert:
order_status →
created_at →
max_retry_count →"
Before:
"Analyze this code for problems"
After:
"Analyze this code and output in this format:
## Security Issues
- [Issue]: [Description] (Line X)
## Performance Issues
- [Issue]: [Description] (Line X)
## Code Quality
- [Issue]: [Description] (Line X)
## Recommendations
1. [Priority 1 fix]
2. [Priority 2 fix]"
Before:
"Build a complete e-commerce backend with authentication,
payments, inventory, and shipping"
After (Progressive):
"Let's build this in stages:
Stage 1: Design the authentication system architecture
[Get response, review]
Stage 2: Implement the auth service
[Get response, review]
Stage 3: Add payment processing
[Continue...]"
Ask:
"Using the prompt-engineer skill, create a prompt for:
[Describe your task and requirements]"
You'll get:
Ask:
"Using the prompt-engineer skill, improve this prompt:
[Your current prompt]
Goal: [What you want to achieve]
Model: [GPT-5 / Claude / Other]"
You'll get:
Ask:
"Using the prompt-engineer skill, analyze this prompt:
[Your prompt]"
You'll get:
Task: Get thorough, consistent code reviews
Optimized Prompt:
ROLE: Senior Software Engineer conducting PR review
REVIEW THIS CODE:
[code block]
REVIEW CRITERIA:
1. Security vulnerabilities (OWASP Top 10)
2. Performance issues
3. Code quality and readability
4. Best practices compliance
5. Test coverage gaps
OUTPUT FORMAT:
For each issue found:
- Severity: [Critical/High/Medium/Low]
- Category: [Security/Performance/Quality/Testing]
- Location: [File:Line]
- Issue: [Clear description]
- Impact: [Why this matters]
- Fix: [Specific code recommendation]
At the end, provide:
- Overall assessment (Approve/Request Changes/Comment)
- Summary of critical items that must be fixed
Task: Generate clear API documentation
Optimized Prompt:
ROLE: Technical writer with API documentation expertise
TASK: Generate API documentation for this endpoint
ENDPOINT DETAILS:
[code/specs]
DOCUMENTATION REQUIREMENTS:
- Target audience: Junior to mid-level developers
- Include curl and JavaScript examples
- Explain all parameters clearly
- Show example responses with descriptions
- Include common error cases
- Add troubleshooting section
FORMAT:
# [Endpoint Name]
## Overview
[One paragraph description]
## Endpoint
`[HTTP METHOD] /path`
## Parameters
| Name | Type | Required | Description |
|------|------|----------|-------------|
## Request Example
```bash
[curl example]
[example with inline comments]
[Troubleshooting guide]
### Example 3: Data Analysis
**Task:** Analyze data and provide insights
**Optimized Prompt:**
ROLE: Data analyst with expertise in business metrics
DATA: [dataset]
ANALYSIS REQUEST: Analyze this data step-by-step:
OUTPUT FORMAT:
[2-3 sentences]
| Metric | Value | Change | Trend |
[Brief explanation of analysis approach]
## Best Practices Summary
### DO ✅
- **Be specific** - Exact requirements, not vague requests
- **Use structure** - Organize with clear sections
- **Provide examples** - Show what you want (few-shot)
- **Request reasoning** - "Think step-by-step" for complex tasks
- **Define format** - Specify exact output structure
- **Test iteratively** - Refine based on results
- **Match to model** - Use model-specific techniques
- **Include context** - Give necessary background
- **Handle edge cases** - Specify exception handling
- **Set constraints** - Define limitations clearly
### DON'T ❌
- **Be vague** - "Write something about X"
- **Skip examples** - When patterns need to be matched
- **Assume format** - Model will choose unpredictably
- **Overload single prompt** - Break complex tasks into stages
- **Ignore model differences** - GPT-5 and Claude need different approaches
- **Give up too soon** - Iterate on prompts
- **Mix instructions** - Keep separate concerns separate
- **Forget constraints** - Specify ALL requirements
- **Use ambiguous terms** - "Good", "professional", "better" without definition
- **Skip testing** - Always validate outputs
## Quick Reference
### Prompt Template (Universal)
[ROLE] You are [specific expertise]
[CONTEXT] [Background information]
[TASK] [Clear, specific task]
[CONSTRAINTS]
[FORMAT] [Exact output structure]
[EXAMPLES - Optional] [2-3 examples]
[REASONING - Optional] Think through this step-by-step: [Thinking guidance]
### When to Use Each Technique
| Technique | Best For | Example Use Case |
|-----------|----------|------------------|
| Chain-of-Thought | Complex reasoning | Math, logic puzzles, multi-step analysis |
| Few-Shot | Pattern matching | Classification, style transfer, formatting |
| Zero-Shot | Simple, clear tasks | Direct questions, basic transformations |
| Structured (XML) | Parsed output | Data extraction, API responses |
| Progressive Disclosure | Large tasks | Full implementations, research |
| Role-Based | Expert knowledge | Code review, architecture decisions |
### Model Selection Guide
**Use GPT-5 when:**
- Need strong reasoning
- Agentic behavior helpful
- Code generation focus
- Latest knowledge needed
**Use Claude when:**
- Very long context (100K+ tokens)
- Detailed instruction following
- Safety-critical applications
- Prefer XML structuring
## Resources
All reference materials included:
- GPT-5 specific techniques and patterns
- Claude optimization strategies
- Advanced prompting patterns
- Optimization and improvement frameworks
## Summary
Effective prompt engineering:
- **Saves time** - Get right results faster
- **Reduces costs** - Fewer API calls needed
- **Improves quality** - More accurate, consistent outputs
- **Enables complexity** - Tackle harder problems
- **Scales knowledge** - Capture best practices
Use this skill to create prompts that:
- Are clear and specific
- Use proven techniques
- Match your model
- Get consistent results
- Achieve your goals
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**Remember:** A well-crafted prompt is worth 10 poorly-attempted ones. Invest time upfront for better results.