| name | prompt-engineer |
| description | Comprehensive LLM prompt engineering and optimization workflow that orchestrates expert analysis, advanced techniques, and multi-domain optimization using the integrated toolset. Handles everything from basic prompt improvement to complex multi-agent prompt orchestration. |
| license | Apache 2.0 |
| tools |
Prompt Engineer Master - Advanced LLM Prompt Engineering Workflow
Overview
This skill provides end-to-end prompt engineering and optimization services by orchestrating multiple expert systems, advanced reasoning techniques, and specialized tools. It transforms basic prompts into highly optimized, context-aware, and domain-specific prompts that maximize LLM performance across various applications.
Key Capabilities:
- 🧠Multi-Expert Prompt Analysis - Coordinates domain experts for specialized prompt optimization
- 🎯 Advanced Technique Integration - Applies cutting-edge prompt engineering methods (ToT, ReWOO, Meta-Prompting)
- 📊 Multi-Path Validation - Systematic testing and validation of prompt variations
- 🔧 Domain-Specific Optimization - Tailors prompts for specific industries and use cases
- 📋 Implementation Guidance - Provides deployment strategies and performance monitoring
When to Use This Skill
Perfect for:
- Prompt optimization and performance improvement
- Complex prompt engineering challenges
- Domain-specific prompt adaptation
- Multi-agent prompt orchestration
- Prompt validation and testing
- LLM application development
Triggers:
- "Optimize this prompt for better performance"
- "Help me improve the effectiveness of this prompt"
- "Create a specialized prompt for [domain/use case]"
- "Test and validate different prompt versions"
- "Design a prompt strategy for [application]"
Prompt Engineering Expert Panel
Prompt Architect (Strategic Design)
- Focus: Overall prompt architecture and strategic optimization
- Techniques: Meta-prompting analysis, structural design, performance optimization
- Considerations: LLM architecture, token efficiency, context management
Cognitive Engineer (Reasoning Enhancement)
- Focus: Multi-step reasoning and complex problem-solving prompts
- Techniques: Tree of Thoughts, Chain of Thought, Self-consistency validation
- Considerations: Reasoning depth, logical flow, verification mechanisms
Domain Specialist (Industry Optimization)
- Focus: Industry-specific prompt adaptation and terminology optimization
- Techniques: Domain knowledge integration, specialized patterns, compliance considerations
- Considerations: Industry standards, regulatory requirements, professional conventions
Performance Analyst (Optimization Metrics)
- Focus: Prompt performance measurement and optimization
- Techniques: A/B testing, performance benchmarking, quality assessment
- Considerations: Response quality, efficiency, consistency, user satisfaction
Creative Director (Communication Enhancement)
- Focus: Prompt clarity, creativity, and user engagement
- Techniques: Conversational optimization, persona development, tone adjustment
- Considerations: User experience, brand voice, cultural sensitivity
Prompt Engineering Workflow
Phase 1: Prompt Analysis & Assessment
Use when: Evaluating existing prompts or starting optimization
Tools Used:
/sc:analyze existing-prompt-structure
BMAD Meta-Prompting Analysis: structural prompt evaluation
Deep Research Agent: prompt effectiveness research
Activities:
- Analyze current prompt structure and effectiveness
- Identify optimization opportunities and bottlenecks
- Evaluate task-appropriateness and clarity
- Assess domain-specific requirements and constraints
- Benchmark against industry best practices
Phase 2: Strategy & Technique Selection
Use when: Designing optimization approach
Tools Used:
/sc:design --type prompt optimization-strategy
Sequential MCP: multi-path reasoning analysis
Business Panel: strategic alignment assessment
Activities:
- Select appropriate prompt engineering techniques (ToT, ReWOO, etc.)
- Design multi-path testing strategies
- Define optimization metrics and success criteria
- Plan domain-specific adaptations
- Create implementation timeline and milestones
Phase 3: Multi-Expert Prompt Engineering
Use when: Creating optimized prompt variations
Tools Used:
BMAD Persona-Pattern Hybrid: expert role integration
SuperClaude Expert Panel: domain-specific optimization
Context7 MCP: technical pattern integration
Magic MCP: creative prompt generation
Activities:
- Generate multiple prompt variations using different techniques
- Apply domain-specific optimizations and terminology
- Implement advanced reasoning patterns (ToT, CoT, etc.)
- Optimize for token efficiency and context management
- Create specialized prompts for different user segments
Phase 4: Validation & Testing
Use when: Ensuring prompt effectiveness and reliability
Tools Used:
Sequential MCP: self-consistency validation
BMAD Self-Consistency Validation: multi-path testing
Performance Analyst: quality assessment and benchmarking
Playwright MCP: user interaction testing
Activities:
- Conduct systematic testing across prompt variations
- Validate reasoning consistency and quality
- Measure performance against defined metrics
- Test with diverse user scenarios and edge cases
- Optimize based on testing results and feedback
Phase 5: Implementation & Deployment
Use when: Rolling out optimized prompts
Tools Used:
/sc:implement prompt-deployment-strategy
BMAD Implementation Workflow: structured rollout
DevOps Architect: monitoring and optimization setup
Activities:
- Create implementation guidelines and best practices
- Design monitoring and feedback collection systems
- Plan iteration strategies and continuous improvement
- Provide user training and documentation
- Establish performance monitoring and alerting
Integration Patterns
SuperClaude Command Integration
| Command | Use Case | Output |
|---|---|---|
/sc:design |
Prompt architecture design | Structured prompt frameworks |
/sc:brainstorm |
Creative prompt generation | Innovative prompt variations |
/sc:analyze |
Prompt effectiveness analysis | Performance insights and recommendations |
/sc:test |
Prompt validation and testing | Quality assessment results |
/sc:implement |
Prompt deployment | Implementation strategies and guidelines |
BMAD Method Integration
| Technique | Role | Capabilities |
|---|---|---|
| Meta-Prompting Analysis | Prompt architecture | Structural analysis, optimization opportunities |
| Self-Consistency Validation | Quality assurance | Multi-path testing, consistency verification |
| Persona-Pattern Hybrid | Domain optimization | Expert role integration, specialized knowledge |
| Tree of Thoughts | Complex reasoning | Multi-path exploration, reasoning optimization |
| ReWOO | Efficiency optimization | Reasoning-action separation, token efficiency |
MCP Server Integration
| Server | Expertise | Focus |
|---|---|---|
| Sequential | Complex reasoning | Multi-step analysis, validation |
| Context7 | Technical patterns | Framework integration, best practices |
| Magic | Creative generation | UI/UX prompts, user engagement |
| Playwright | User testing | Interaction validation, usability |
| Serena | Project memory | Session persistence, learning |
Usage Examples
Example 1: Basic Prompt Optimization
User: "Optimize this customer service prompt for better response quality"
Workflow:
1. Phase 1: Analyze current prompt structure and effectiveness
2. Phase 2: Select optimization techniques (clarity, empathy, problem-solving)
3. Phase 3: Generate multiple optimized variations
4. Phase 4: Test with various customer scenarios
5. Phase 5: Deploy best-performing prompt with monitoring
Output: Optimized prompt with 40% improvement in customer satisfaction
Example 2: Domain-Specific Prompt Creation
User: "Create specialized prompts for medical diagnosis assistance"
Workflow:
1. Phase 1: Analyze medical domain requirements and compliance needs
2. Phase 2: Design strategy with medical expert integration
3. Phase 3: Create HIPAA-compliant, medically-accurate prompts
4. Phase 4: Validate with medical professionals and test cases
5. Phase 5: Deploy with monitoring for accuracy and safety
Output: Medical diagnosis prompts with 95% accuracy and full compliance
Example 3: Multi-Agent Prompt System
User: "Design a prompt orchestration system for complex project management"
Workflow:
1. Phase 1: Analyze project management requirements and workflows
2. Phase 2: Design multi-agent prompt architecture
3. Phase 3: Create coordinated prompts for planning, execution, monitoring
4. Phase 4: Test system with real project scenarios
5. Phase 5: Deploy with integration with existing PM tools
Output: Multi-agent prompt system improving project efficiency by 35%
Quality Assurance Mechanisms
Multi-Expert Validation
- Cross-Domain Review: Multiple expert perspectives on prompt effectiveness
- Technical Validation: Integration with latest prompt engineering research
- Performance Testing: Systematic validation across diverse scenarios
- Compliance Checking: Regulatory and ethical guideline adherence
Automated Quality Checks
- Consistency Verification: Ensure uniform performance across variations
- Performance Benchmarking: Compare against industry standards and baselines
- Safety Validation: Check for potential misuse, bias, and safety concerns
- Efficiency Analysis: Optimize token usage and response quality
Continuous Improvement
- Feedback Integration: User feedback and performance monitoring
- Learning Loop: Systematic improvement based on usage patterns
- Pattern Recognition: Identify successful prompt patterns for reuse
- Innovation Integration: Incorporate latest prompt engineering research
Output Deliverables
Primary Deliverable: Complete Prompt Engineering Package
prompt-engineering-package/
├── optimized-prompts/
│ ├── primary-prompt.md # Main optimized prompt
│ ├── variations/ # Alternative prompt versions
│ │ ├── creative-variant.md # Creative-focused version
│ │ ├── technical-variant.md # Technical-focused version
│ │ └── concise-variant.md # Token-efficient version
│ └── domain-specific/ # Industry-specific adaptations
│ ├── healthcare.md # Healthcare domain version
│ ├── finance.md # Finance domain version
│ └── education.md # Education domain version
├── testing-results/
│ ├── performance-metrics.md # Quantitative performance data
│ ├── quality-assessment.md # Qualitative analysis results
│ ├── user-testing.md # User interaction testing results
│ └── benchmark-comparison.md # Industry benchmark comparisons
├── implementation/
│ ├── deployment-guide.md # Rollout strategy and guidelines
│ ├── monitoring-setup.md # Performance monitoring configuration
│ ├── user-training.md # Training materials and best practices
│ └── iteration-plan.md # Continuous improvement strategy
├── documentation/
│ ├── prompt-analysis.md # Detailed analysis of original prompt
│ ├── optimization-strategy.md # Applied techniques and rationale
│ ├── technical-specifications.md # Technical implementation details
│ └── compliance-review.md # Regulatory and ethical compliance
└── templates/
├── prompt-optimization-template.md # Reusable optimization framework
├── testing-template.md # Standardized testing procedures
└── monitoring-template.md # Performance monitoring setup
Supporting Artifacts
- Expert Panel Reports: Multi-expert analysis and recommendations
- BMAD Method Outputs: Structured prompt optimization workflows
- SuperClaude Command Logs: Command-by-command optimization process
- MCP Integration Patterns: Tool-specific optimization strategies
Advanced Features
Intelligent Technique Selection
- Automatically suggests appropriate prompt engineering techniques based on task complexity
- Recommends domain-specific optimizations and adaptations
- Optimizes for specific LLM architectures and capabilities
- Balances creativity, accuracy, and efficiency requirements
Multi-Modal Prompt Support
- Handles text, image, and multi-modal prompt optimization
- Integrates with different input types and output requirements
- Optimizes for various LLM capabilities (text generation, analysis, reasoning)
- Supports cross-modal prompt patterns and interactions
Performance Optimization
- Token efficiency analysis and optimization
- Response time optimization strategies
- Cost-benefit analysis of prompt variations
- Resource usage optimization for different deployment scenarios
Safety and Compliance
- Built-in safety checks and bias detection
- Regulatory compliance validation (HIPAA, GDPR, etc.)
- Ethical guidelines adherence monitoring
- Risk assessment and mitigation strategies
Troubleshooting
Common Prompt Engineering Challenges
- Performance Plateaus: Use advanced techniques like ToT and multi-path reasoning
- Domain Adaptation: Apply persona-pattern hybrid with domain experts
- Token Efficiency: Implement ReWOO and context optimization strategies
- Consistency Issues: Apply self-consistency validation and quality monitoring
Optimization Strategy Recovery
- Prompt Quality Issues: Re-analyze with meta-prompting analysis techniques
- Technique Selection Problems: Re-evaluate task requirements and constraints
- Integration Challenges: Optimize tool coordination and workflow design
- Performance Monitoring: Implement comprehensive testing and validation strategies
Best Practices
For Prompt Design
- Start with clear objectives and success criteria
- Use structured prompt patterns and frameworks
- Incorporate domain-specific knowledge and terminology
- Design for maintainability and iterative improvement
For Optimization Techniques
- Apply appropriate techniques based on task complexity
- Validate optimization results with systematic testing
- Monitor performance across diverse scenarios and users
- Document optimization decisions and rationale
For Multi-Agent Coordination
- Design clear interaction patterns and communication protocols
- Establish consensus mechanisms and conflict resolution strategies
- Optimize for coordination overhead and efficiency
- Monitor multi-agent system performance and reliability
For Continuous Improvement
- Establish feedback loops and learning mechanisms
- Monitor performance trends and optimization opportunities
- Stay updated with latest prompt engineering research
- Share insights and patterns with the broader community
This prompt engineer skill transforms the complex process of LLM prompt optimization into a guided, expert-supported workflow that leverages the full power of your integrated development toolset. It ensures that prompt engineering decisions are well-reasoned, thoroughly validated, and aligned with both performance requirements and domain-specific needs.