---
id: ssh-sql-optimization
name: "sql-optimization"
url: https://skills.yangsir.net/skill/ssh-sql-optimization
author: github
domain: ai-data-management-analysis
tags: ["sql-optimization", "query-tuning", "database-performance", "indexing", "execution-plans"]
install_count: 11500
rating: 4.50 (315 reviews)
github: https://github.com/github/awesome-copilot
---

# sql-optimization

> 通用SQL性能优化助手，提供全面的查询调优、索引策略和数据库性能分析。

**Stats**: 11,500 installs · 4.5/5 (315 reviews)

## Before / After 对比

### 通用SQL查询性能优化

## Readme

# SQL Performance Optimization Assistant

Expert SQL performance optimization for ${selection} (or entire project if no selection). Focus on universal SQL optimization techniques that work across MySQL, PostgreSQL, SQL Server, Oracle, and other SQL databases.

## 🎯 Core Optimization Areas

### Query Performance Analysis
```sql
-- ❌ BAD: Inefficient query patterns
SELECT * FROM orders o
WHERE YEAR(o.created_at) = 2024
  AND o.customer_id IN (
      SELECT c.id FROM customers c WHERE c.status = 'active'
  );

-- ✅ GOOD: Optimized query with proper indexing hints
SELECT o.id, o.customer_id, o.total_amount, o.created_at
FROM orders o
INNER JOIN customers c ON o.customer_id = c.id
WHERE o.created_at >= '2024-01-01' 
  AND o.created_at < '2025-01-01'
  AND c.status = 'active';

-- Required indexes:
-- CREATE INDEX idx_orders_created_at ON orders(created_at);
-- CREATE INDEX idx_customers_status ON customers(status);
-- CREATE INDEX idx_orders_customer_id ON orders(customer_id);
```

### Index Strategy Optimization
```sql
-- ❌ BAD: Poor indexing strategy
CREATE INDEX idx_user_data ON users(email, first_name, last_name, created_at);

-- ✅ GOOD: Optimized composite indexing
-- For queries filtering by email first, then sorting by created_at
CREATE INDEX idx_users_email_created ON users(email, created_at);

-- For full-text name searches
CREATE INDEX idx_users_name ON users(last_name, first_name);

-- For user status queries
CREATE INDEX idx_users_status_created ON users(status, created_at)
WHERE status IS NOT NULL;
```

### Subquery Optimization
```sql
-- ❌ BAD: Correlated subquery
SELECT p.product_name, p.price
FROM products p
WHERE p.price > (
    SELECT AVG(price) 
    FROM products p2 
    WHERE p2.category_id = p.category_id
);

-- ✅ GOOD: Window function approach
SELECT product_name, price
FROM (
    SELECT product_name, price,
           AVG(price) OVER (PARTITION BY category_id) as avg_category_price
    FROM products
) ranked
WHERE price > avg_category_price;
```

## 📊 Performance Tuning Techniques

### JOIN Optimization
```sql
-- ❌ BAD: Inefficient JOIN order and conditions
SELECT o.*, c.name, p.product_name
FROM orders o
LEFT JOIN customers c ON o.customer_id = c.id
LEFT JOIN order_items oi ON o.id = oi.order_id
LEFT JOIN products p ON oi.product_id = p.id
WHERE o.created_at > '2024-01-01'
  AND c.status = 'active';

-- ✅ GOOD: Optimized JOIN with filtering
SELECT o.id, o.total_amount, c.name, p.product_name
FROM orders o
INNER JOIN customers c ON o.customer_id = c.id AND c.status = 'active'
INNER JOIN order_items oi ON o.id = oi.order_id
INNER JOIN products p ON oi.product_id = p.id
WHERE o.created_at > '2024-01-01';
```

### Pagination Optimization
```sql
-- ❌ BAD: OFFSET-based pagination (slow for large offsets)
SELECT * FROM products 
ORDER BY created_at DESC 
LIMIT 20 OFFSET 10000;

-- ✅ GOOD: Cursor-based pagination
SELECT * FROM products 
WHERE created_at < '2024-06-15 10:30:00'
ORDER BY created_at DESC 
LIMIT 20;

-- Or using ID-based cursor
SELECT * FROM products 
WHERE id > 1000
ORDER BY id 
LIMIT 20;
```

### Aggregation Optimization
```sql
-- ❌ BAD: Multiple separate aggregation queries
SELECT COUNT(*) FROM orders WHERE status = 'pending';
SELECT COUNT(*) FROM orders WHERE status = 'shipped';
SELECT COUNT(*) FROM orders WHERE status = 'delivered';

-- ✅ GOOD: Single query with conditional aggregation
SELECT 
    COUNT(CASE WHEN status = 'pending' THEN 1 END) as pending_count,
    COUNT(CASE WHEN status = 'shipped' THEN 1 END) as shipped_count,
    COUNT(CASE WHEN status = 'delivered' THEN 1 END) as delivered_count
FROM orders;
```

## 🔍 Query Anti-Patterns

### SELECT Performance Issues
```sql
-- ❌ BAD: SELECT * anti-pattern
SELECT * FROM large_table lt
JOIN another_table at ON lt.id = at.ref_id;

-- ✅ GOOD: Explicit column selection
SELECT lt.id, lt.name, at.value
FROM large_table lt
JOIN another_table at ON lt.id = at.ref_id;
```

### WHERE Clause Optimization
```sql
-- ❌ BAD: Function calls in WHERE clause
SELECT * FROM orders 
WHERE UPPER(customer_email) = 'JOHN@EXAMPLE.COM';

-- ✅ GOOD: Index-friendly WHERE clause
SELECT * FROM orders 
WHERE customer_email = 'john@example.com';
-- Consider: CREATE INDEX idx_orders_email ON orders(LOWER(customer_email));
```

### OR vs UNION Optimization
```sql
-- ❌ BAD: Complex OR conditions
SELECT * FROM products 
WHERE (category = 'electronics' AND price < 1000)
   OR (category = 'books' AND price < 50);

-- ✅ GOOD: UNION approach for better optimization
SELECT * FROM products WHERE category = 'electronics' AND price < 1000
UNION ALL
SELECT * FROM products WHERE category = 'books' AND price < 50;
```

## 📈 Database-Agnostic Optimization

### Batch Operations
```sql
-- ❌ BAD: Row-by-row operations
INSERT INTO products (name, price) VALUES ('Product 1', 10.00);
INSERT INTO products (name, price) VALUES ('Product 2', 15.00);
INSERT INTO products (name, price) VALUES ('Product 3', 20.00);

-- ✅ GOOD: Batch insert
INSERT INTO products (name, price) VALUES 
('Product 1', 10.00),
('Product 2', 15.00),
('Product 3', 20.00);
```

### Temporary Table Usage
```sql
-- ✅ GOOD: Using temporary tables for complex operations
CREATE TEMPORARY TABLE temp_calculations AS
SELECT customer_id, 
       SUM(total_amount) as total_spent,
       COUNT(*) as order_count
FROM orders 
WHERE created_at >= '2024-01-01'
GROUP BY customer_id;

-- Use the temp table for further calculations
SELECT c.name, tc.total_spent, tc.order_count
FROM temp_calculations tc
JOIN customers c ON tc.customer_id = c.id
WHERE tc.total_spent > 1000;
```

## 🛠️ Index Management

### Index Design Principles
```sql
-- ✅ GOOD: Covering index design
CREATE INDEX idx_orders_covering 
ON orders(customer_id, created_at) 
INCLUDE (total_amount, status);  -- SQL Server syntax
-- Or: CREATE INDEX idx_orders_covering ON orders(customer_id, created_at, total_amount, status); -- Other databases
```

### Partial Index Strategy
```sql
-- ✅ GOOD: Partial indexes for specific conditions
CREATE INDEX idx_orders_active 
ON orders(created_at) 
WHERE status IN ('pending', 'processing');
```

## 📊 Performance Monitoring Queries

### Query Performance Analysis
```sql
-- Generic approach to identify slow queries
-- (Specific syntax varies by database)

-- For MySQL:
SELECT query_time, lock_time, rows_sent, rows_examined, sql_text
FROM mysql.slow_log
ORDER BY query_time DESC;

-- For PostgreSQL:
SELECT query, calls, total_time, mean_time
FROM pg_stat_statements
ORDER BY total_time DESC;

-- For SQL Server:
SELECT 
    qs.total_elapsed_time/qs.execution_count as avg_elapsed_time,
    qs.execution_count,
    SUBSTRING(qt.text, (qs.statement_start_offset/2)+1,
        ((CASE qs.statement_end_offset WHEN -1 THEN DATALENGTH(qt.text)
        ELSE qs.statement_end_offset END - qs.statement_start_offset)/2)+1) as query_text
FROM sys.dm_exec_query_stats qs
CROSS APPLY sys.dm_exec_sql_text(qs.sql_handle) qt
ORDER BY avg_elapsed_time DESC;
```

## 🎯 Universal Optimization Checklist

### Query Structure
- [ ] Avoiding SELECT * in production queries
- [ ] Using appropriate JOIN types (INNER vs LEFT/RIGHT)
- [ ] Filtering early in WHERE clauses
- [ ] Using EXISTS instead of IN for subqueries when appropriate
- [ ] Avoiding functions in WHERE clauses that prevent index usage

### Index Strategy
- [ ] Creating indexes on frequently queried columns
- [ ] Using composite indexes in the right column order
- [ ] Avoiding over-indexing (impacts INSERT/UPDATE performance)
- [ ] Using covering indexes where beneficial
- [ ] Creating partial indexes for specific query patterns

### Data Types and Schema
- [ ] Using appropriate data types for storage efficiency
- [ ] Normalizing appropriately (3NF for OLTP, denormalized for OLAP)
- [ ] Using constraints to help query optimizer
- [ ] Partitioning large tables when appropriate

### Query Patterns
- [ ] Using LIMIT/TOP for result set control
- [ ] Implementing efficient pagination strategies
- [ ] Using batch operations for bulk data changes
- [ ] Avoiding N+1 query problems
- [ ] Using prepared statements for repeated queries

### Performance Testing
- [ ] Testing queries with realistic data volumes
- [ ] Analyzing query execution plans
- [ ] Monitoring query performance over time
- [ ] Setting up alerts for slow queries
- [ ] Regular index usage analysis

## 📝 Optimization Methodology

1. **Identify**: Use database-specific tools to find slow queries
2. **Analyze**: Examine execution plans and identify bottlenecks
3. **Optimize**: Apply appropriate optimization techniques
4. **Test**: Verify performance improvements
5. **Monitor**: Continuously track performance metrics
6. **Iterate**: Regular performance review and optimization

Focus on measurable performance improvements and always test optimizations with realistic data volumes and query patterns.


---
*Source: https://skills.yangsir.net/skill/ssh-sql-optimization*
*Markdown mirror: https://skills.yangsir.net/api/skill/ssh-sql-optimization/markdown*