database-performance-debugging
Debug database performance issues through query analysis, index optimization, and execution plan review. Identify and fix slow queries.
About database-performance-debugging
database-performance-debugging is a Claude AI skill developed by aj-geddes. Debug database performance issues through query analysis, index optimization, and execution plan review. Identify and fix slow queries. This powerful Claude Code plugin helps developers automate workflows and enhance productivity with intelligent AI assistance.
Why use database-performance-debugging? With 5 stars on GitHub, this skill has been trusted by developers worldwide. Install this Claude skill instantly to enhance your development workflow with AI-powered automation.
| name | database-performance-debugging |
| description | Debug database performance issues through query analysis, index optimization, and execution plan review. Identify and fix slow queries. |
Database Performance Debugging
Overview
Database performance issues directly impact application responsiveness. Debugging focuses on identifying slow queries and optimizing execution plans.
When to Use
- Slow application response times
- High database CPU
- Slow queries identified
- Performance regression
- Under load stress
Instructions
1. Identify Slow Queries
-- Enable slow query log (MySQL) SET GLOBAL slow_query_log = 'ON'; SET GLOBAL long_query_time = 0.5; -- View slow queries SHOW GLOBAL STATUS LIKE 'Slow_queries'; SELECT * FROM mysql.slow_log; -- PostgreSQL slow queries CREATE EXTENSION pg_stat_statements; SELECT mean_exec_time, calls, query FROM pg_stat_statements ORDER BY mean_exec_time DESC LIMIT 10; -- SQL Server slow queries SELECT TOP 10 execution_count, total_elapsed_time, statement_text FROM sys.dm_exec_query_stats ORDER BY total_elapsed_time DESC; -- Query profiling EXPLAIN ANALYZE SELECT * FROM orders WHERE user_id = 123; -- Slow: Seq Scan (full table scan) -- Fast: Index Scan
2. Common Issues & Solutions
Issue: N+1 Query Problem Symptom: 1001 queries for 1000 records Example (Python): for user in users: posts = db.query(Post).filter(Post.user_id == user.id) # 1 + 1000 queries Solution: users = db.query(User).options(joinedload(User.posts)) # Single query with JOIN --- Issue: Missing Index Symptom: Seq Scan instead of Index Scan Solution: CREATE INDEX idx_orders_user_id ON orders(user_id); Verify: EXPLAIN ANALYZE shows Index Scan now --- Issue: Inefficient JOIN Before: SELECT * FROM orders o, users u WHERE o.user_id = u.id AND u.email LIKE '%@example.com' # Bad: Table scan on users for every order After: SELECT o.* FROM orders o JOIN users u ON o.user_id = u.id WHERE u.email = 'exact@example.com' # Good: Single email lookup --- Issue: Large Table Scan Symptom: SELECT * FROM large_table (1M rows) Solutions: 1. Add LIMIT clause 2. Add WHERE condition 3. Select specific columns 4. Use pagination 5. Archive old data --- Issue: Slow Aggregation Before (1 minute): SELECT user_id, COUNT(*), SUM(amount) FROM transactions GROUP BY user_id After (50ms): SELECT user_id, transaction_count, total_amount FROM user_transaction_stats WHERE updated_at > NOW() - INTERVAL 1 DAY # Materialized view or aggregation table
3. Execution Plan Analysis
EXPLAIN Output Understanding: Seq Scan (Full Table Scan): - Reads entire table - Slowest method - Fix: Add index Index Scan: - Uses index - Fast - Ideal Bitmap Index Scan: - Partial index scan - Converts to heap scan - Moderate speed Nested Loop: - For each row in left, scan right - O(n*m) complexity - Slow for large tables Hash Join: - Build hash table of smaller table - Probe with larger table - Faster than nested loop Merge Join: - Sort both tables, merge - Fastest for large sorted data - Requires sort operation --- Reading EXPLAIN ANALYZE: Node: Seq Scan on orders (actual 8023.456 ms) - Seq Scan = Full table scan - actual time = real execution time - 8023 ms = TOO SLOW Rows: 1000000 (estimated) 1000000 (actual) - Match = planner accurate - Mismatch = update statistics Node: Index Scan (actual 15.234 ms) - Index Scan = Fast - 15 ms = ACCEPTABLE
4. Debugging Process
Steps: 1. Identify Slow Query - Enable slow query logging - Run workload - Review slow log - Note execution time 2. Analyze with EXPLAIN - Run EXPLAIN ANALYZE - Look for Seq Scan - Check estimated vs actual rows - Review join methods 3. Find Root Cause - Missing index? - Inefficient join? - Missing WHERE clause? - Outdated statistics? 4. Try Fix - Add index - Rewrite query - Update statistics - Archive old data 5. Measure Improvement - Run query after fix - Compare execution time - Before: 5000ms - After: 100ms (50x faster!) 6. Monitor - Track slow queries - Set baseline - Alert on regression - Periodic review --- Checklist: [ ] Slow query identified and logged [ ] EXPLAIN ANALYZE run [ ] Estimated vs actual rows analyzed [ ] Seq Scans identified [ ] Indexes checked [ ] Join strategy reviewed [ ] Statistics updated [ ] Query rewritten if needed [ ] Index created if needed [ ] Fix verified [ ] Performance baseline established [ ] Monitoring configured [ ] Documented for team
Key Points
- Enable slow query logging in production
- Use EXPLAIN ANALYZE to investigate
- Look for Seq Scan = missing index
- Add indexes to WHERE/JOIN columns
- Monitor query statistics
- Update table statistics regularly
- Rewrite queries to avoid inefficiencies
- Use pagination for large result sets
- Measure before and after optimization
- Track slow query trends

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