skills/databases/SKILL.md
PostgreSQL and MongoDB patterns, queries, and optimization. ALWAYS use when the user mentions "SQL", "query", "database", "table", "schema", "migration", "index", "slow query", "Postgres", "Mongo", "base de données", "requête", "optimiser". Provides best practices for schema design, query optimization, indexing strategies, migrations, and performance tuning. Use when writing complex queries, debugging slow performance, designing schemas, or setting up database infrastructure.
npx skillsauth add devattom/.claude databasesInstall 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.
Unified guide for working with MongoDB (document-oriented) and PostgreSQL (relational) databases. Choose the right database for your use case and master both systems.
Use when:
Best for: Content management, catalogs, IoT time series, real-time analytics, mobile apps, user profiles
Best for: Financial systems, e-commerce transactions, ERP, CRM, data warehousing, analytics
# 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" })
# 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';
// MongoDB
db.users.insertOne({ name: "Bob", email: "[email protected]" })
db.users.insertMany([{ name: "Alice" }, { name: "Charlie" }])
-- PostgreSQL
INSERT INTO users (name, email) VALUES ('Bob', '[email protected]');
INSERT INTO users (name, email) VALUES ('Alice', NULL), ('Charlie', NULL);
// MongoDB
db.users.find({ age: { $gte: 18 } })
db.users.findOne({ email: "[email protected]" })
-- PostgreSQL
SELECT * FROM users WHERE age >= 18;
SELECT * FROM users WHERE email = '[email protected]' LIMIT 1;
// MongoDB
db.users.updateOne({ name: "Bob" }, { $set: { age: 25 } })
db.users.updateMany({ status: "pending" }, { $set: { status: "active" } })
-- PostgreSQL
UPDATE users SET age = 25 WHERE name = 'Bob';
UPDATE users SET status = 'active' WHERE status = 'pending';
// MongoDB
db.users.deleteOne({ name: "Bob" })
db.users.deleteMany({ status: "deleted" })
-- PostgreSQL
DELETE FROM users WHERE name = 'Bob';
DELETE FROM users WHERE status = 'deleted';
// MongoDB
db.users.createIndex({ email: 1 })
db.users.createIndex({ status: 1, createdAt: -1 })
-- PostgreSQL
CREATE INDEX idx_users_email ON users(email);
CREATE INDEX idx_users_status_created ON users(status, created_at DESC);
Database utility scripts in scripts/:
# 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
| 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 |
MongoDB:
PostgreSQL:
development
Use when you want to audit a project wiki for quality issues — stale version claims, contradictions between pages, orphan pages, broken wiki links, missing cross-references, or misalignment between wiki content and the actual codebase state.
development
Systematic error debugging with analysis, solution discovery, and verification
development
Structured adversarial debate between AI councillors using Agent Teams to evaluate ideas, plans, or decisions. ALWAYS use when the user says "council", "debate this", "evaluate this idea", "challenge my plan", "stress-test", "devil's advocate", "multiple perspectives", "évaluer cette idée", "débattre", "challenger mon plan", "tester cette décision", or when the user wants rigorous multi-perspective analysis of a proposal, architecture decision, or strategic choice. Each councillor (visionary, critic, pragmatist, innovator, ethicist, domain expert) represents a distinct perspective and they challenge each other through cross-examination and peer exchange, producing a nuanced verdict (PROCEED / PROCEED WITH CONDITIONS / RECONSIDER / DO NOT PROCEED). Do NOT use for divergent brainstorming or idea generation — use workflow-brainstorm instead.
testing
Automated CI/CD pipeline fixer - watches CI, fixes errors locally, commits, and loops until green. Use when CI is failing and you want to automatically fix and verify changes.