prompt-engineering-patterns

Master advanced prompt engineering techniques to maximize LLM performance, reliability, and controllability.

38 stars

Best use case

prompt-engineering-patterns is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Master advanced prompt engineering techniques to maximize LLM performance, reliability, and controllability.

Teams using prompt-engineering-patterns 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

$curl -o ~/.claude/skills/prompt-engineering-patterns/SKILL.md --create-dirs "https://raw.githubusercontent.com/lingxling/awesome-skills-cn/main/antigravity-awesome-skills/plugins/antigravity-awesome-skills-claude/skills/prompt-engineering-patterns/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/prompt-engineering-patterns/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How prompt-engineering-patterns Compares

Feature / Agentprompt-engineering-patternsStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Master advanced prompt engineering techniques to maximize LLM performance, reliability, and controllability.

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

# Prompt Engineering Patterns

Master advanced prompt engineering techniques to maximize LLM performance, reliability, and controllability.

## Do not use this skill when

- The task is unrelated to prompt engineering patterns
- You need a different domain or tool outside this scope

## Instructions

- Clarify goals, constraints, and required inputs.
- Apply relevant best practices and validate outcomes.
- Provide actionable steps and verification.
- If detailed examples are required, open `resources/implementation-playbook.md`.

## Use this skill when

- Designing complex prompts for production LLM applications
- Optimizing prompt performance and consistency
- Implementing structured reasoning patterns (chain-of-thought, tree-of-thought)
- Building few-shot learning systems with dynamic example selection
- Creating reusable prompt templates with variable interpolation
- Debugging and refining prompts that produce inconsistent outputs
- Implementing system prompts for specialized AI assistants

## Core Capabilities

### 1. Few-Shot Learning
- Example selection strategies (semantic similarity, diversity sampling)
- Balancing example count with context window constraints
- Constructing effective demonstrations with input-output pairs
- Dynamic example retrieval from knowledge bases
- Handling edge cases through strategic example selection

### 2. Chain-of-Thought Prompting
- Step-by-step reasoning elicitation
- Zero-shot CoT with "Let's think step by step"
- Few-shot CoT with reasoning traces
- Self-consistency techniques (sampling multiple reasoning paths)
- Verification and validation steps

### 3. Prompt Optimization
- Iterative refinement workflows
- A/B testing prompt variations
- Measuring prompt performance metrics (accuracy, consistency, latency)
- Reducing token usage while maintaining quality
- Handling edge cases and failure modes

### 4. Template Systems
- Variable interpolation and formatting
- Conditional prompt sections
- Multi-turn conversation templates
- Role-based prompt composition
- Modular prompt components

### 5. System Prompt Design
- Setting model behavior and constraints
- Defining output formats and structure
- Establishing role and expertise
- Safety guidelines and content policies
- Context setting and background information

## Quick Start

```python
from prompt_optimizer import PromptTemplate, FewShotSelector

# Define a structured prompt template
template = PromptTemplate(
    system="You are an expert SQL developer. Generate efficient, secure SQL queries.",
    instruction="Convert the following natural language query to SQL:\n{query}",
    few_shot_examples=True,
    output_format="SQL code block with explanatory comments"
)

# Configure few-shot learning
selector = FewShotSelector(
    examples_db="sql_examples.jsonl",
    selection_strategy="semantic_similarity",
    max_examples=3
)

# Generate optimized prompt
prompt = template.render(
    query="Find all users who registered in the last 30 days",
    examples=selector.select(query="user registration date filter")
)
```

## Key Patterns

### Progressive Disclosure
Start with simple prompts, add complexity only when needed:

1. **Level 1**: Direct instruction
   - "Summarize this article"

2. **Level 2**: Add constraints
   - "Summarize this article in 3 bullet points, focusing on key findings"

3. **Level 3**: Add reasoning
   - "Read this article, identify the main findings, then summarize in 3 bullet points"

4. **Level 4**: Add examples
   - Include 2-3 example summaries with input-output pairs

### Instruction Hierarchy
```
[System Context] → [Task Instruction] → [Examples] → [Input Data] → [Output Format]
```

### Error Recovery
Build prompts that gracefully handle failures:
- Include fallback instructions
- Request confidence scores
- Ask for alternative interpretations when uncertain
- Specify how to indicate missing information

## Best Practices

1. **Be Specific**: Vague prompts produce inconsistent results
2. **Show, Don't Tell**: Examples are more effective than descriptions
3. **Test Extensively**: Evaluate on diverse, representative inputs
4. **Iterate Rapidly**: Small changes can have large impacts
5. **Monitor Performance**: Track metrics in production
6. **Version Control**: Treat prompts as code with proper versioning
7. **Document Intent**: Explain why prompts are structured as they are

## Common Pitfalls

- **Over-engineering**: Starting with complex prompts before trying simple ones
- **Example pollution**: Using examples that don't match the target task
- **Context overflow**: Exceeding token limits with excessive examples
- **Ambiguous instructions**: Leaving room for multiple interpretations
- **Ignoring edge cases**: Not testing on unusual or boundary inputs

## Integration Patterns

### With RAG Systems
```python
# Combine retrieved context with prompt engineering
prompt = f"""Given the following context:
{retrieved_context}

{few_shot_examples}

Question: {user_question}

Provide a detailed answer based solely on the context above. If the context doesn't contain enough information, explicitly state what's missing."""
```

### With Validation
```python
# Add self-verification step
prompt = f"""{main_task_prompt}

After generating your response, verify it meets these criteria:
1. Answers the question directly
2. Uses only information from provided context
3. Cites specific sources
4. Acknowledges any uncertainty

If verification fails, revise your response."""
```

## Performance Optimization

### Token Efficiency
- Remove redundant words and phrases
- Use abbreviations consistently after first definition
- Consolidate similar instructions
- Move stable content to system prompts

### Latency Reduction
- Minimize prompt length without sacrificing quality
- Use streaming for long-form outputs
- Cache common prompt prefixes
- Batch similar requests when possible

## Resources

- **references/few-shot-learning.md**: Deep dive on example selection and construction
- **references/chain-of-thought.md**: Advanced reasoning elicitation techniques
- **references/prompt-optimization.md**: Systematic refinement workflows
- **references/prompt-templates.md**: Reusable template patterns
- **references/system-prompts.md**: System-level prompt design
- **assets/prompt-template-library.md**: Battle-tested prompt templates
- **assets/few-shot-examples.json**: Curated example datasets
- **scripts/optimize-prompt.py**: Automated prompt optimization tool

## Success Metrics

Track these KPIs for your prompts:
- **Accuracy**: Correctness of outputs
- **Consistency**: Reproducibility across similar inputs
- **Latency**: Response time (P50, P95, P99)
- **Token Usage**: Average tokens per request
- **Success Rate**: Percentage of valid outputs
- **User Satisfaction**: Ratings and feedback

## Next Steps

1. Review the prompt template library for common patterns
2. Experiment with few-shot learning for your specific use case
3. Implement prompt versioning and A/B testing
4. Set up automated evaluation pipelines
5. Document your prompt engineering decisions and learnings

## Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.

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