Claude-skills senior-prompt-engineer
This skill should be used when the user asks to "optimize prompts", "design prompt templates", "evaluate LLM outputs", "build agentic systems", "implement RAG", "create few-shot examples", "analyze token usage", or "design AI workflows". Use for prompt engineering patterns, LLM evaluation frameworks, agent architectures, and structured output design.
git clone https://github.com/alirezarezvani/claude-skills
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.gemini/skills/senior-prompt-engineer/SKILL.mdSenior Prompt Engineer
Prompt engineering patterns, LLM evaluation frameworks, and agentic system design.
Table of Contents
- Quick Start
- Tools Overview
- Prompt Engineering Workflows
- Reference Documentation
- Common Patterns Quick Reference
Quick Start
# Analyze and optimize a prompt file python scripts/prompt_optimizer.py prompts/my_prompt.txt --analyze # Evaluate RAG retrieval quality python scripts/rag_evaluator.py --contexts contexts.json --questions questions.json # Visualize agent workflow from definition python scripts/agent_orchestrator.py agent_config.yaml --visualize
Tools Overview
1. Prompt Optimizer
Analyzes prompts for token efficiency, clarity, and structure. Generates optimized versions.
Input: Prompt text file or string Output: Analysis report with optimization suggestions
Usage:
# Analyze a prompt file python scripts/prompt_optimizer.py prompt.txt --analyze # Output: # Token count: 847 # Estimated cost: $0.0025 (GPT-4) # Clarity score: 72/100 # Issues found: # - Ambiguous instruction at line 3 # - Missing output format specification # - Redundant context (lines 12-15 repeat lines 5-8) # Suggestions: # 1. Add explicit output format: "Respond in JSON with keys: ..." # 2. Remove redundant context to save 89 tokens # 3. Clarify "analyze" -> "list the top 3 issues with severity ratings" # Generate optimized version python scripts/prompt_optimizer.py prompt.txt --optimize --output optimized.txt # Count tokens for cost estimation python scripts/prompt_optimizer.py prompt.txt --tokens --model gpt-4 # Extract and manage few-shot examples python scripts/prompt_optimizer.py prompt.txt --extract-examples --output examples.json
2. RAG Evaluator
Evaluates Retrieval-Augmented Generation quality by measuring context relevance and answer faithfulness.
Input: Retrieved contexts (JSON) and questions/answers Output: Evaluation metrics and quality report
Usage:
# Evaluate retrieval quality python scripts/rag_evaluator.py --contexts retrieved.json --questions eval_set.json # Output: # === RAG Evaluation Report === # Questions evaluated: 50 # # Retrieval Metrics: # Context Relevance: 0.78 (target: >0.80) # Retrieval Precision@5: 0.72 # Coverage: 0.85 # # Generation Metrics: # Answer Faithfulness: 0.91 # Groundedness: 0.88 # # Issues Found: # - 8 questions had no relevant context in top-5 # - 3 answers contained information not in context # # Recommendations: # 1. Improve chunking strategy for technical documents # 2. Add metadata filtering for date-sensitive queries # Evaluate with custom metrics python scripts/rag_evaluator.py --contexts retrieved.json --questions eval_set.json \ --metrics relevance,faithfulness,coverage # Export detailed results python scripts/rag_evaluator.py --contexts retrieved.json --questions eval_set.json \ --output report.json --verbose
3. Agent Orchestrator
Parses agent definitions and visualizes execution flows. Validates tool configurations.
Input: Agent configuration (YAML/JSON) Output: Workflow visualization, validation report
Usage:
# Validate agent configuration python scripts/agent_orchestrator.py agent.yaml --validate # Output: # === Agent Validation Report === # Agent: research_assistant # Pattern: ReAct # # Tools (4 registered): # [OK] web_search - API key configured # [OK] calculator - No config needed # [WARN] file_reader - Missing allowed_paths # [OK] summarizer - Prompt template valid # # Flow Analysis: # Max depth: 5 iterations # Estimated tokens/run: 2,400-4,800 # Potential infinite loop: No # # Recommendations: # 1. Add allowed_paths to file_reader for security # 2. Consider adding early exit condition for simple queries # Visualize agent workflow (ASCII) python scripts/agent_orchestrator.py agent.yaml --visualize # Output: # ┌─────────────────────────────────────────┐ # │ research_assistant │ # │ (ReAct Pattern) │ # └─────────────────┬───────────────────────┘ # │ # ┌────────▼────────┐ # │ User Query │ # └────────┬────────┘ # │ # ┌────────▼────────┐ # │ Think │◄──────┐ # └────────┬────────┘ │ # │ │ # ┌────────▼────────┐ │ # │ Select Tool │ │ # └────────┬────────┘ │ # │ │ # ┌─────────────┼─────────────┐ │ # ▼ ▼ ▼ │ # [web_search] [calculator] [file_reader] # │ │ │ │ # └─────────────┼─────────────┘ │ # │ │ # ┌────────▼────────┐ │ # │ Observe │───────┘ # └────────┬────────┘ # │ # ┌────────▼────────┐ # │ Final Answer │ # └─────────────────┘ # Export workflow as Mermaid diagram python scripts/agent_orchestrator.py agent.yaml --visualize --format mermaid
Prompt Engineering Workflows
Prompt Optimization Workflow
Use when improving an existing prompt's performance or reducing token costs.
Step 1: Baseline current prompt
python scripts/prompt_optimizer.py current_prompt.txt --analyze --output baseline.json
Step 2: Identify issues Review the analysis report for:
- Token waste (redundant instructions, verbose examples)
- Ambiguous instructions (unclear output format, vague verbs)
- Missing constraints (no length limits, no format specification)
Step 3: Apply optimization patterns
| Issue | Pattern to Apply |
|---|---|
| Ambiguous output | Add explicit format specification |
| Too verbose | Extract to few-shot examples |
| Inconsistent results | Add role/persona framing |
| Missing edge cases | Add constraint boundaries |
Step 4: Generate optimized version
python scripts/prompt_optimizer.py current_prompt.txt --optimize --output optimized.txt
Step 5: Compare results
python scripts/prompt_optimizer.py optimized.txt --analyze --compare baseline.json # Shows: token reduction, clarity improvement, issues resolved
Step 6: Validate with test cases Run both prompts against your evaluation set and compare outputs.
Few-Shot Example Design Workflow
Use when creating examples for in-context learning.
Step 1: Define the task clearly
Task: Extract product entities from customer reviews Input: Review text Output: JSON with {product_name, sentiment, features_mentioned}
Step 2: Select diverse examples (3-5 recommended)
| Example Type | Purpose |
|---|---|
| Simple case | Shows basic pattern |
| Edge case | Handles ambiguity |
| Complex case | Multiple entities |
| Negative case | What NOT to extract |
Step 3: Format consistently
Example 1: Input: "Love my new iPhone 15, the camera is amazing!" Output: {"product_name": "iPhone 15", "sentiment": "positive", "features_mentioned": ["camera"]} Example 2: Input: "The laptop was okay but battery life is terrible." Output: {"product_name": "laptop", "sentiment": "mixed", "features_mentioned": ["battery life"]}
Step 4: Validate example quality
python scripts/prompt_optimizer.py prompt_with_examples.txt --validate-examples # Checks: consistency, coverage, format alignment
Step 5: Test with held-out cases Ensure model generalizes beyond your examples.
Structured Output Design Workflow
Use when you need reliable JSON/XML/structured responses.
Step 1: Define schema
{ "type": "object", "properties": { "summary": {"type": "string", "maxLength": 200}, "sentiment": {"enum": ["positive", "negative", "neutral"]}, "confidence": {"type": "number", "minimum": 0, "maximum": 1} }, "required": ["summary", "sentiment"] }
Step 2: Include schema in prompt
Respond with JSON matching this schema: - summary (string, max 200 chars): Brief summary of the content - sentiment (enum): One of "positive", "negative", "neutral" - confidence (number 0-1): Your confidence in the sentiment
Step 3: Add format enforcement
IMPORTANT: Respond ONLY with valid JSON. No markdown, no explanation. Start your response with { and end with }
Step 4: Validate outputs
python scripts/prompt_optimizer.py structured_prompt.txt --validate-schema schema.json
Reference Documentation
| File | Contains | Load when user asks about |
|---|---|---|
| 10 prompt patterns with input/output examples | "which pattern?", "few-shot", "chain-of-thought", "role prompting" |
| Evaluation metrics, scoring methods, A/B testing | "how to evaluate?", "measure quality", "compare prompts" |
| Agent architectures (ReAct, Plan-Execute, Tool Use) | "build agent", "tool calling", "multi-agent" |
Common Patterns Quick Reference
| Pattern | When to Use | Example |
|---|---|---|
| Zero-shot | Simple, well-defined tasks | "Classify this email as spam or not spam" |
| Few-shot | Complex tasks, consistent format needed | Provide 3-5 examples before the task |
| Chain-of-Thought | Reasoning, math, multi-step logic | "Think step by step..." |
| Role Prompting | Expertise needed, specific perspective | "You are an expert tax accountant..." |
| Structured Output | Need parseable JSON/XML | Include schema + format enforcement |
Common Commands
# Prompt Analysis python scripts/prompt_optimizer.py prompt.txt --analyze # Full analysis python scripts/prompt_optimizer.py prompt.txt --tokens # Token count only python scripts/prompt_optimizer.py prompt.txt --optimize # Generate optimized version # RAG Evaluation python scripts/rag_evaluator.py --contexts ctx.json --questions q.json # Evaluate python scripts/rag_evaluator.py --contexts ctx.json --compare baseline # Compare to baseline # Agent Development python scripts/agent_orchestrator.py agent.yaml --validate # Validate config python scripts/agent_orchestrator.py agent.yaml --visualize # Show workflow python scripts/agent_orchestrator.py agent.yaml --estimate-cost # Token estimation