.claude/skills/database-designer/SKILL.md
Use when the user asks to design database schemas, plan data migrations, optimize queries, choose between SQL and NoSQL, or model data relationships.
npx skillsauth add bsweet101/buckstop-rebrand database-designerInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
A comprehensive database design skill that provides expert-level analysis, optimization, and migration capabilities for modern database systems. This skill combines theoretical principles with practical tools to help architects and developers create scalable, performant, and maintainable database schemas.
→ See references/database-design-reference.md for details
-- INNER JOIN: only matching rows
SELECT o.id, c.name, o.total
FROM orders o
INNER JOIN customers c ON c.id = o.customer_id;
-- LEFT JOIN: all left rows, NULLs for non-matches
SELECT c.name, COUNT(o.id) AS order_count
FROM customers c
LEFT JOIN orders o ON o.customer_id = c.id
GROUP BY c.name;
-- Self-join: hierarchical data (employees/managers)
SELECT e.name AS employee, m.name AS manager
FROM employees e
LEFT JOIN employees m ON m.id = e.manager_id;
-- Recursive CTE for org chart
WITH RECURSIVE org AS (
SELECT id, name, manager_id, 1 AS depth
FROM employees WHERE manager_id IS NULL
UNION ALL
SELECT e.id, e.name, e.manager_id, o.depth + 1
FROM employees e INNER JOIN org o ON o.id = e.manager_id
)
SELECT * FROM org ORDER BY depth, name;
-- ROW_NUMBER for pagination / dedup
SELECT *, ROW_NUMBER() OVER (PARTITION BY customer_id ORDER BY created_at DESC) AS rn
FROM orders;
-- RANK with gaps, DENSE_RANK without gaps
SELECT name, score, RANK() OVER (ORDER BY score DESC) AS rank FROM leaderboard;
-- LAG/LEAD for comparing adjacent rows
SELECT date, revenue,
revenue - LAG(revenue) OVER (ORDER BY date) AS daily_change
FROM daily_sales;
-- FILTER clause (PostgreSQL) for conditional aggregation
SELECT
COUNT(*) AS total,
COUNT(*) FILTER (WHERE status = 'active') AS active,
AVG(amount) FILTER (WHERE amount > 0) AS avg_positive
FROM accounts;
-- GROUPING SETS for multi-level rollups
SELECT region, product, SUM(revenue)
FROM sales
GROUP BY GROUPING SETS ((region, product), (region), ());
Every migration must have a reversible counterpart. Name files with a timestamp prefix for ordering:
migrations/
├── 20260101_000001_create_users.up.sql
├── 20260101_000001_create_users.down.sql
├── 20260115_000002_add_users_email_index.up.sql
└── 20260115_000002_add_users_email_index.down.sql
Use the expand-contract pattern to avoid locking or breaking running code:
-- Batch update to avoid long-running locks
UPDATE users SET email_normalized = LOWER(email)
WHERE id IN (SELECT id FROM users WHERE email_normalized IS NULL LIMIT 5000);
-- Repeat in a loop until 0 rows affected
down.sql in staging before deploying up.sql to production| Index Type | Use Case | Example |
|------------|----------|---------|
| B-tree (default) | Equality, range, ORDER BY | CREATE INDEX idx_users_email ON users(email); |
| GIN | Full-text search, JSONB, arrays | CREATE INDEX idx_docs_body ON docs USING gin(to_tsvector('english', body)); |
| GiST | Geometry, range types, nearest-neighbor | CREATE INDEX idx_locations ON places USING gist(coords); |
| Partial | Subset of rows (reduce size) | CREATE INDEX idx_active ON users(email) WHERE active = true; |
| Covering | Index-only scans | CREATE INDEX idx_cov ON orders(customer_id) INCLUDE (total, created_at); |
EXPLAIN (ANALYZE, BUFFERS, FORMAT TEXT) SELECT ...;
Key signals to watch:
Symptoms: application issues one query per row (e.g., fetching related records in a loop).
Fixes:
JOIN or subquery to fetch in one round-tripselect_related / includes / with)| Tool | Protocol | Best For | |------|----------|----------| | PgBouncer | PostgreSQL | Transaction/statement pooling, low overhead | | ProxySQL | MySQL | Query routing, read/write splitting | | Built-in pool (HikariCP, SQLAlchemy pool) | Any | Application-level pooling |
Rule of thumb: Set pool size to (2 * CPU cores) + disk spindles. For cloud SSDs, start with 2 * vCPUs and tune.
SELECT queries to replicas; writes to primarypg_last_wal_replay_lsn() to detect lag before reading critical data| Criteria | PostgreSQL | MySQL | SQLite | SQL Server | |----------|-----------|-------|--------|------------| | Best for | Complex queries, JSONB, extensions | Web apps, read-heavy workloads | Embedded, dev/test, edge | Enterprise .NET stacks | | JSON support | Excellent (JSONB + GIN) | Good (JSON type) | Minimal | Good (OPENJSON) | | Replication | Streaming, logical | Group replication, InnoDB cluster | N/A | Always On AG | | Licensing | Open source (PostgreSQL License) | Open source (GPL) / commercial | Public domain | Commercial | | Max practical size | Multi-TB | Multi-TB | ~1 TB (single-writer) | Multi-TB |
When to choose:
| Database | Model | Use When | |----------|-------|----------| | MongoDB | Document | Schema flexibility, rapid prototyping, content management | | Redis | Key-value / cache | Session store, rate limiting, leaderboards, pub/sub | | DynamoDB | Wide-column | Serverless AWS apps, single-digit-ms latency at any scale |
Use SQL as default. Reach for NoSQL only when the access pattern clearly benefits from it.
| Strategy | How It Works | Pros | Cons |
|----------|-------------|------|------|
| Hash | shard = hash(key) % N | Even distribution | Resharding is expensive |
| Range | Shard by date or ID range | Simple, good for time-series | Hot spots on latest shard |
| Geographic | Shard by user region | Data locality, compliance | Cross-region queries are hard |
| Pattern | Consistency | Latency | Use Case | |---------|------------|---------|----------| | Synchronous | Strong | Higher write latency | Financial transactions | | Asynchronous | Eventual | Low write latency | Read-heavy web apps | | Semi-synchronous | At-least-one replica confirmed | Moderate | Balance of safety and speed |
Effective database design requires balancing multiple competing concerns: performance, scalability, maintainability, and business requirements. This skill provides the tools and knowledge to make informed decisions throughout the database lifecycle, from initial schema design through production optimization and evolution.
The included tools automate common analysis and optimization tasks, while the comprehensive guides provide the theoretical foundation for making sound architectural decisions. Whether building a new system or optimizing an existing one, these resources provide expert-level guidance for creating robust, scalable database solutions.
tools
Monitors customer health, predicts churn risk, and identifies expansion opportunities using weighted scoring models for SaaS customer success. Use when analyzing customer accounts, reviewing retention metrics, scoring at-risk customers, or when the user mentions churn, customer health scores, upsell opportunities, expansion revenue, retention analysis, or customer analytics. Runs three Python CLI tools to produce deterministic health scores, churn risk tiers, and prioritized expansion recommendations across Enterprise, Mid-Market, and SMB segments.
development
Build, measure, and evolve company culture as operational behavior — not wall posters. Covers mission/vision/values workshops, values-to-behaviors translation, culture code creation, culture health assessment, and cultural rituals by stage. Use when building company values, assessing culture health, designing cultural rituals, creating culture codes, handling culture clashes, or when user mentions culture, values, culture debt, founder culture, or culture code.
testing
Technical leadership guidance for engineering teams, architecture decisions, and technology strategy. Use when assessing technical debt, scaling engineering teams, evaluating technologies, making architecture decisions, establishing engineering metrics, or when user mentions CTO, tech debt, technical debt, team scaling, architecture decisions, technology evaluation, engineering metrics, DORA metrics, or technology strategy.
tools
Founder onboarding interview that captures company context across 7 dimensions. Invoke with /cs:setup for initial interview or /cs:update for quarterly refresh. Generates ~/.claude/company-context.md used by all C-suite advisor skills.