From claude-code-toolkit
Provides prompt engineering patterns including structured system prompts, chain-of-thought reasoning, few-shot examples, and tool use for LLMs.
How this skill is triggered — by the user, by Claude, or both
Slash command
/claude-code-toolkit:prompt-engineeringThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
```
You are a senior code reviewer. Your role is to analyze pull requests for:
1. Correctness - logic errors, edge cases, off-by-one errors
2. Security - injection, authentication, data exposure
3. Performance - N+1 queries, unnecessary allocations, missing indexes
4. Maintainability - naming, complexity, test coverage
For each issue found, respond with:
- Severity: critical | warning | suggestion
- File and line reference
- What is wrong
- How to fix it (with code snippet)
If the code is well-written, say so briefly. Do not invent problems.
Structure system prompts with role, scope, output format, and constraints. Be explicit about what the model should NOT do.
Analyze this database query for performance issues.
Think step by step:
1. Identify the tables and joins involved
2. Check if appropriate indexes exist for the WHERE and JOIN conditions
3. Look for full table scans or cartesian products
4. Estimate the row count at each step
5. Suggest specific index creation or query restructuring
Query:
SELECT o.*, u.name, p.title
FROM orders o
JOIN users u ON o.user_id = u.id
JOIN products p ON o.product_id = p.id
WHERE o.created_at > '2024-01-01'
AND u.country = 'US'
ORDER BY o.created_at DESC
LIMIT 50;
Chain-of-thought prompting improves accuracy on reasoning tasks by forcing the model to show intermediate steps.
Convert natural language to SQL. Follow these examples:
Input: "How many orders were placed last month?"
Output: SELECT COUNT(*) FROM orders WHERE created_at >= DATE_TRUNC('month', CURRENT_DATE - INTERVAL '1 month') AND created_at < DATE_TRUNC('month', CURRENT_DATE);
Input: "Top 5 customers by total spending"
Output: SELECT customer_id, SUM(total_amount) AS total_spent FROM orders GROUP BY customer_id ORDER BY total_spent DESC LIMIT 5;
Input: "Products that have never been ordered"
Output: SELECT p.* FROM products p LEFT JOIN order_items oi ON p.id = oi.product_id WHERE oi.id IS NULL;
Now convert:
Input: "Average order value per country for the last quarter"
Provide 3-5 diverse examples that demonstrate the expected format and edge cases.
{
"tools": [
{
"name": "search_codebase",
"description": "Search for code patterns across the repository. Use when you need to find implementations, usages, or definitions.",
"parameters": {
"type": "object",
"properties": {
"query": {
"type": "string",
"description": "Regex pattern or keyword to search for"
},
"file_type": {
"type": "string",
"description": "File extension filter (e.g., 'ts', 'py')"
}
},
"required": ["query"]
}
}
]
}
Write tool descriptions that explain WHEN to use the tool, not just what it does.
def build_review_prompt(diff: str, context: str, rules: list[str]) -> str:
rules_text = "\n".join(f"- {rule}" for rule in rules)
return f"""Review this code diff against the following rules:
{rules_text}
Context about the codebase:
{context}
Diff to review:
{diff}
Respond with a JSON array of findings. If no issues, return an empty array.
Each finding: {{"severity": "critical|warning|info", "line": number, "message": "string", "suggestion": "string"}}"""
npx claudepluginhub rohitg00/awesome-claude-code-toolkitApplies advanced prompt engineering patterns: few-shot learning, chain-of-thought, structured outputs, prompt optimization, and template systems for production LLM applications.
Teaches prompt engineering patterns including few-shot learning, chain-of-thought reasoning, optimization, and template systems for better LLM outputs.
Applies prompt engineering patterns like few-shot, chain-of-thought, structured JSON outputs, optimization, and templates to boost LLM reliability and performance in production apps.