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databases skill

/.claude/skills/databases

This skill helps you design databases, write queries, optimize performance, and manage migrations for MongoDB and PostgreSQL with practical guidance.

This is most likely a fork of the databases skill from mamba-mental
npx playbooks add skill dmdorta1111/jac-v1 --skill databases

Review the files below or copy the command above to add this skill to your agents.

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SKILL.md
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---
name: databases
description: Work with MongoDB (document database, BSON documents, aggregation pipelines, Atlas cloud) and PostgreSQL (relational database, SQL queries, psql CLI, pgAdmin). Use when designing database schemas, writing queries and aggregations, optimizing indexes for performance, performing database migrations, configuring replication and sharding, implementing backup and restore strategies, managing database users and permissions, analyzing query performance, or administering production databases.
license: MIT
---

# Databases Skill

Unified guide for working with MongoDB (document-oriented) and PostgreSQL (relational) databases. Choose the right database for your use case and master both systems.

## When to Use This Skill

Use when:
- Designing database schemas and data models
- Writing queries (SQL or MongoDB query language)
- Building aggregation pipelines or complex joins
- Optimizing indexes and query performance
- Implementing database migrations
- Setting up replication, sharding, or clustering
- Configuring backups and disaster recovery
- Managing database users and permissions
- Analyzing slow queries and performance issues
- Administering production database deployments

## Database Selection Guide

### Choose MongoDB When:
- Schema flexibility: frequent structure changes, heterogeneous data
- Document-centric: natural JSON/BSON data model
- Horizontal scaling: need to shard across multiple servers
- High write throughput: IoT, logging, real-time analytics
- Nested/hierarchical data: embedded documents preferred
- Rapid prototyping: schema evolution without migrations

**Best for:** Content management, catalogs, IoT time series, real-time analytics, mobile apps, user profiles

### Choose PostgreSQL When:
- Strong consistency: ACID transactions critical
- Complex relationships: many-to-many joins, referential integrity
- SQL requirement: team expertise, reporting tools, BI systems
- Data integrity: strict schema validation, constraints
- Mature ecosystem: extensive tooling, extensions
- Complex queries: window functions, CTEs, analytical workloads

**Best for:** Financial systems, e-commerce transactions, ERP, CRM, data warehousing, analytics

### Both Support:
- JSON/JSONB storage and querying
- Full-text search capabilities
- Geospatial queries and indexing
- Replication and high availability
- ACID transactions (MongoDB 4.0+)
- Strong security features

## Quick Start

### MongoDB Setup

```bash
# Atlas (Cloud) - Recommended
# 1. Sign up at mongodb.com/atlas
# 2. Create M0 free cluster
# 3. Get connection string

# Connection
mongodb+srv://user:[email protected]/db

# Shell
mongosh "mongodb+srv://cluster.mongodb.net/mydb"

# Basic operations
db.users.insertOne({ name: "Alice", age: 30 })
db.users.find({ age: { $gte: 18 } })
db.users.updateOne({ name: "Alice" }, { $set: { age: 31 } })
db.users.deleteOne({ name: "Alice" })
```

### PostgreSQL Setup

```bash
# Ubuntu/Debian
sudo apt-get install postgresql postgresql-contrib

# Start service
sudo systemctl start postgresql

# Connect
psql -U postgres -d mydb

# Basic operations
CREATE TABLE users (id SERIAL PRIMARY KEY, name TEXT, age INT);
INSERT INTO users (name, age) VALUES ('Alice', 30);
SELECT * FROM users WHERE age >= 18;
UPDATE users SET age = 31 WHERE name = 'Alice';
DELETE FROM users WHERE name = 'Alice';
```

## Common Operations

### Create/Insert
```javascript
// MongoDB
db.users.insertOne({ name: "Bob", email: "[email protected]" })
db.users.insertMany([{ name: "Alice" }, { name: "Charlie" }])
```

```sql
-- PostgreSQL
INSERT INTO users (name, email) VALUES ('Bob', '[email protected]');
INSERT INTO users (name, email) VALUES ('Alice', NULL), ('Charlie', NULL);
```

### Read/Query
```javascript
// MongoDB
db.users.find({ age: { $gte: 18 } })
db.users.findOne({ email: "[email protected]" })
```

```sql
-- PostgreSQL
SELECT * FROM users WHERE age >= 18;
SELECT * FROM users WHERE email = '[email protected]' LIMIT 1;
```

### Update
```javascript
// MongoDB
db.users.updateOne({ name: "Bob" }, { $set: { age: 25 } })
db.users.updateMany({ status: "pending" }, { $set: { status: "active" } })
```

```sql
-- PostgreSQL
UPDATE users SET age = 25 WHERE name = 'Bob';
UPDATE users SET status = 'active' WHERE status = 'pending';
```

### Delete
```javascript
// MongoDB
db.users.deleteOne({ name: "Bob" })
db.users.deleteMany({ status: "deleted" })
```

```sql
-- PostgreSQL
DELETE FROM users WHERE name = 'Bob';
DELETE FROM users WHERE status = 'deleted';
```

### Indexing
```javascript
// MongoDB
db.users.createIndex({ email: 1 })
db.users.createIndex({ status: 1, createdAt: -1 })
```

```sql
-- PostgreSQL
CREATE INDEX idx_users_email ON users(email);
CREATE INDEX idx_users_status_created ON users(status, created_at DESC);
```

## Reference Navigation

### MongoDB References
- **[mongodb-crud.md](references/mongodb-crud.md)** - CRUD operations, query operators, atomic updates
- **[mongodb-aggregation.md](references/mongodb-aggregation.md)** - Aggregation pipeline, stages, operators, patterns
- **[mongodb-indexing.md](references/mongodb-indexing.md)** - Index types, compound indexes, performance optimization
- **[mongodb-atlas.md](references/mongodb-atlas.md)** - Atlas cloud setup, clusters, monitoring, search

### PostgreSQL References
- **[postgresql-queries.md](references/postgresql-queries.md)** - SELECT, JOINs, subqueries, CTEs, window functions
- **[postgresql-psql-cli.md](references/postgresql-psql-cli.md)** - psql commands, meta-commands, scripting
- **[postgresql-performance.md](references/postgresql-performance.md)** - EXPLAIN, query optimization, vacuum, indexes
- **[postgresql-administration.md](references/postgresql-administration.md)** - User management, backups, replication, maintenance

## Python Utilities

Database utility scripts in `scripts/`:
- **db_migrate.py** - Generate and apply migrations for both databases
- **db_backup.py** - Backup and restore MongoDB and PostgreSQL
- **db_performance_check.py** - Analyze slow queries and recommend indexes

```bash
# Generate migration
python scripts/db_migrate.py --db mongodb --generate "add_user_index"

# Run backup
python scripts/db_backup.py --db postgres --output /backups/

# Check performance
python scripts/db_performance_check.py --db mongodb --threshold 100ms
```

## Key Differences Summary

| Feature | MongoDB | PostgreSQL |
|---------|---------|------------|
| Data Model | Document (JSON/BSON) | Relational (Tables/Rows) |
| Schema | Flexible, dynamic | Strict, predefined |
| Query Language | MongoDB Query Language | SQL |
| Joins | $lookup (limited) | Native, optimized |
| Transactions | Multi-document (4.0+) | Native ACID |
| Scaling | Horizontal (sharding) | Vertical (primary), Horizontal (extensions) |
| Indexes | Single, compound, text, geo, etc | B-tree, hash, GiST, GIN, etc |

## Best Practices

**MongoDB:**
- Use embedded documents for 1-to-few relationships
- Reference documents for 1-to-many or many-to-many
- Index frequently queried fields
- Use aggregation pipeline for complex transformations
- Enable authentication and TLS in production
- Use Atlas for managed hosting

**PostgreSQL:**
- Normalize schema to 3NF, denormalize for performance
- Use foreign keys for referential integrity
- Index foreign keys and frequently filtered columns
- Use EXPLAIN ANALYZE to optimize queries
- Regular VACUUM and ANALYZE maintenance
- Connection pooling (pgBouncer) for web apps

## Resources

- MongoDB: https://www.mongodb.com/docs/
- PostgreSQL: https://www.postgresql.org/docs/
- MongoDB University: https://learn.mongodb.com/
- PostgreSQL Tutorial: https://www.postgresqltutorial.com/

Overview

This skill helps design, query, optimize, and operate MongoDB (document/BSON) and PostgreSQL (relational/SQL) databases. It guides schema design, index strategy, aggregation/SQL query building, migrations, replication, backups, and production administration. The goal is practical, hands-on advice for building reliable, high-performance data layers.

How this skill works

The skill inspects use cases and recommends the appropriate database model, patterns, and tooling for MongoDB or PostgreSQL. It provides concrete examples for CRUD, aggregation pipelines, SQL queries, and index creation, plus scripts and commands for migrations, backups, and performance checks. It highlights trade-offs like consistency, scaling, and schema flexibility to inform design and operational choices.

When to use it

  • Designing or reviewing database schemas and data models
  • Writing or optimizing queries, aggregations, and joins
  • Implementing migrations, backups, and disaster recovery
  • Setting up replication, sharding, or high-availability clusters
  • Diagnosing slow queries and tuning indexes
  • Managing users, permissions, and production operations

Best practices

  • Choose MongoDB for flexible, document-centric models and high write throughput; choose PostgreSQL for ACID guarantees and complex relational queries
  • Index the fields used frequently in filters, sorts, and joins; use compound indexes where appropriate
  • Use aggregation pipelines in MongoDB and EXPLAIN ANALYZE in PostgreSQL to profile queries before indexing
  • Keep sensitive production clusters behind TLS and strong authentication; use managed services like Atlas when possible
  • Automate migrations, backups, and restores; schedule VACUUM/ANALYZE for PostgreSQL and regular backups for MongoDB
  • Use connection pooling (pgBouncer) for PostgreSQL and monitor connection usage in production

Example use cases

  • Build a catalog or user-profile store with MongoDB to leverage flexible documents and embedded relationships
  • Implement financial transactions and reporting with PostgreSQL using normalized schema, foreign keys, and window functions
  • Optimize slow OLTP queries in PostgreSQL with EXPLAIN ANALYZE and targeted indexes
  • Create MongoDB aggregation pipelines to compute analytics from event streams without ETL
  • Set up cross-region replication and backups for production resilience and disaster recovery

FAQ

Can both databases store JSON data?

Yes. MongoDB natively stores BSON documents; PostgreSQL supports JSON/JSONB columns with indexing and querying features.

When should I shard MongoDB vs scale PostgreSQL horizontally?

Shard MongoDB when you need horizontal write scaling and document distribution. PostgreSQL commonly scales reads with replicas and writes with vertical scaling or distributed extensions; choose based on workload and consistency needs.