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postgresql-table-design

wshobson/agents

Design PostgreSQL schemas with best-practices for data types, indexing, constraints, and performance.

What is postgresql-table-design?

This skill guides PostgreSQL table design covering normalization, data types, indexing strategies, constraints, and PostgreSQL-specific gotchas. Use it when creating or reviewing schemas to ensure correctness, performance, and maintainability.

  • Choose appropriate data types (BIGINT GENERATED ALWAYS AS IDENTITY, TIMESTAMPTZ, NUMERIC, TEXT, JSONB, etc.) with PostgreSQL-specific guidance
  • Design normalized schemas (3NF) with strategic denormalization only where measured performance gains justify maintenance cost
  • Create effective indexes on primary keys, foreign keys, filter/sort columns, and join keys
  • Apply constraints (PRIMARY KEY, FOREIGN KEY with ON DELETE/UPDATE actions, UNIQUE, CHECK, EXCLUDE) correctly
  • Avoid PostgreSQL gotchas: unquoted identifiers are lowercased, FK columns need manual indexes, sequences have gaps, UNIQUE allows multiple NULLs
  • Implement row-level security policies and choose appropriate table types (regular, TEMPORARY, UNLOGGED)

How to install postgresql-table-design

npx skills add https://github.com/wshobson/agents --skill postgresql-table-design
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How to use postgresql-table-design

  1. 1.Identify your table's purpose (transactional, time-series, semi-structured) and access patterns
  2. 2.Choose data types following the guidance: BIGINT GENERATED ALWAYS AS IDENTITY for IDs, TIMESTAMPTZ for events, NUMERIC for money, TEXT for strings, JSONB for optional semi-structured data
  3. 3.Define PRIMARY KEY and FOREIGN KEY constraints with appropriate ON DELETE/UPDATE actions
  4. 4.Add NOT NULL and DEFAULT constraints where semantically required
  5. 5.Create indexes on FK columns, frequent filter/sort columns, and join keys
  6. 6.Apply CHECK constraints for domain validation and UNIQUE constraints with NULLS NOT DISTINCT (PG15+) where needed
  7. 7.Enable row-level security if row-based access control is required
  8. 8.Review the schema against the PostgreSQL gotchas section before deployment

Use cases

Good for
  • Design a user/order schema with proper PKs, FKs, and indexes for transactional queries
  • Review an existing table for missing FK indexes or suboptimal data type choices
  • Build a time-series event table with TIMESTAMPTZ and appropriate constraints
  • Create a semi-structured data table using JSONB with GIN indexing for flexible attributes
  • Implement row-level security to restrict order visibility by user_id
Who it's for
  • Backend engineers designing PostgreSQL databases
  • Database architects reviewing schema proposals
  • Full-stack developers building applications with PostgreSQL
  • Data engineers optimizing table structures for query performance

postgresql-table-design FAQ

Should I use UUID or BIGINT GENERATED ALWAYS AS IDENTITY for primary keys?

Prefer BIGINT GENERATED ALWAYS AS IDENTITY for most cases. Use UUID only when you need global uniqueness across distributed systems, merging databases, or opaque IDs. Generate UUIDs with uuidv7() (PG18+) or gen_random_uuid() for older versions.

Why do I need to manually index foreign key columns?

PostgreSQL does not automatically create indexes on FK columns, unlike some other databases. Add them explicitly to speed up joins and prevent locking issues during parent table deletes/updates.

Is it safe to denormalize my schema for performance?

Denormalize only after measuring that join performance is actually problematic and the read gains justify the maintenance burden. Normalize to 3NF first to eliminate data redundancy and update anomalies.

Why does my UNIQUE constraint allow multiple NULL values?

PostgreSQL's UNIQUE constraint treats multiple NULLs as distinct by default. Use UNIQUE (...) NULLS NOT DISTINCT (PG15+) to restrict to a single NULL if needed.

Should I use VARCHAR(n) or CHAR(n) for strings?

Use TEXT instead. If length limits are required, use CHECK (LENGTH(col) <= n) rather than VARCHAR(n) or CHAR(n). Avoid CHAR(n) entirely as it pads with spaces.

Full instructions (SKILL.md)

Source of truth, from wshobson/agents.


name: postgresql-table-design description: Use this skill when designing or reviewing a PostgreSQL-specific schema. Covers best-practices, data types, indexing, constraints, performance patterns, and advanced features

PostgreSQL Table Design

Core Rules

  • Define a PRIMARY KEY for reference tables (users, orders, etc.). Not always needed for time-series/event/log data. When used, prefer BIGINT GENERATED ALWAYS AS IDENTITY; use UUID only when global uniqueness/opacity is needed.
  • Normalize first (to 3NF) to eliminate data redundancy and update anomalies; denormalize only for measured, high-ROI reads where join performance is proven problematic. Premature denormalization creates maintenance burden.
  • Add NOT NULL everywhere it’s semantically required; use DEFAULTs for common values.
  • Create indexes for access paths you actually query: PK/unique (auto), FK columns (manual!), frequent filters/sorts, and join keys.
  • Prefer TIMESTAMPTZ for event time; NUMERIC for money; TEXT for strings; BIGINT for integer values, DOUBLE PRECISION for floats (or NUMERIC for exact decimal arithmetic).

PostgreSQL “Gotchas”

  • Identifiers: unquoted → lowercased. Avoid quoted/mixed-case names. Convention: use snake_case for table/column names.
  • Unique + NULLs: UNIQUE allows multiple NULLs. Use UNIQUE (...) NULLS NOT DISTINCT (PG15+) to restrict to one NULL.
  • FK indexes: PostgreSQL does not auto-index FK columns. Add them.
  • No silent coercions: length/precision overflows error out (no truncation). Example: inserting 999 into NUMERIC(2,0) fails with error, unlike some databases that silently truncate or round.
  • Sequences/identity have gaps (normal; don't "fix"). Rollbacks, crashes, and concurrent transactions create gaps in ID sequences (1, 2, 5, 6...). This is expected behavior—don't try to make IDs consecutive.
  • Heap storage: no clustered PK by default (unlike SQL Server/MySQL InnoDB); CLUSTER is one-off reorganization, not maintained on subsequent inserts. Row order on disk is insertion order unless explicitly clustered.
  • MVCC: updates/deletes leave dead tuples; vacuum handles them—design to avoid hot wide-row churn.

Data Types

  • IDs: BIGINT GENERATED ALWAYS AS IDENTITY preferred (GENERATED BY DEFAULT also fine); UUID when merging/federating/used in a distributed system or for opaque IDs. Generate with uuidv7() (preferred if using PG18+) or gen_random_uuid() (if using an older PG version).
  • Integers: prefer BIGINT unless storage space is critical; INTEGER for smaller ranges; avoid SMALLINT unless constrained.
  • Floats: prefer DOUBLE PRECISION over REAL unless storage space is critical. Use NUMERIC for exact decimal arithmetic.
  • Strings: prefer TEXT; if length limits needed, use CHECK (LENGTH(col) <= n) instead of VARCHAR(n); avoid CHAR(n). Use BYTEA for binary data. Large strings/binary (>2KB default threshold) automatically stored in TOAST with compression. TOAST storage: PLAIN (no TOAST), EXTENDED (compress + out-of-line), EXTERNAL (out-of-line, no compress), MAIN (compress, keep in-line if possible). Default EXTENDED usually optimal. Control with ALTER TABLE tbl ALTER COLUMN col SET STORAGE strategy and ALTER TABLE tbl SET (toast_tuple_target = 4096) for threshold. Case-insensitive: for locale/accent handling use non-deterministic collations; for plain ASCII use expression indexes on LOWER(col) (preferred unless column needs case-insensitive PK/FK/UNIQUE) or CITEXT.
  • Money: NUMERIC(p,s) (never float).
  • Time: TIMESTAMPTZ for timestamps; DATE for date-only; INTERVAL for durations. Avoid TIMESTAMP (without timezone). Use now() for transaction start time, clock_timestamp() for current wall-clock time.
  • Booleans: BOOLEAN with NOT NULL constraint unless tri-state values are required.
  • Enums: CREATE TYPE ... AS ENUM for small, stable sets (e.g. US states, days of week). For business-logic-driven and evolving values (e.g. order statuses) → use TEXT (or INT) + CHECK or lookup table.
  • Arrays: TEXT[], INTEGER[], etc. Use for ordered lists where you query elements. Index with GIN for containment (@>, <@) and overlap (&&) queries. Access: arr[1] (1-indexed), arr[1:3] (slicing). Good for tags, categories; avoid for relations—use junction tables instead. Literal syntax: '{val1,val2}' or ARRAY[val1,val2].
  • Range types: daterange, numrange, tstzrange for intervals. Support overlap (&&), containment (@>), operators. Index with GiST. Good for scheduling, versioning, numeric ranges. Pick a bounds scheme and use it consistently; prefer [) (inclusive/exclusive) by default.
  • Network types: INET for IP addresses, CIDR for network ranges, MACADDR for MAC addresses. Support network operators (<<, >>, &&).
  • Geometric types: POINT, LINE, POLYGON, CIRCLE for 2D spatial data. Index with GiST. Consider PostGIS for advanced spatial features.
  • Text search: TSVECTOR for full-text search documents, TSQUERY for search queries. Index tsvector with GIN. Always specify language: to_tsvector('english', col) and to_tsquery('english', 'query'). Never use single-argument versions. This applies to both index expressions and queries.
  • Domain types: CREATE DOMAIN email AS TEXT CHECK (VALUE ~ '^[^@]+@[^@]+$') for reusable custom types with validation. Enforces constraints across tables.
  • Composite types: CREATE TYPE address AS (street TEXT, city TEXT, zip TEXT) for structured data within columns. Access with (col).field syntax.
  • JSONB: preferred over JSON; index with GIN. Use only for optional/semi-structured attrs. ONLY use JSON if the original ordering of the contents MUST be preserved.
  • Vector types: vector type by pgvector for vector similarity search for embeddings.

Do not use the following data types

  • DO NOT use timestamp (without time zone); DO use timestamptz instead.
  • DO NOT use char(n) or varchar(n); DO use text instead.
  • DO NOT use money type; DO use numeric instead.
  • DO NOT use timetz type; DO use timestamptz instead.
  • DO NOT use timestamptz(0) or any other precision specification; DO use timestamptz instead
  • DO NOT use serial type; DO use generated always as identity instead.

Table Types

  • Regular: default; fully durable, logged.
  • TEMPORARY: session-scoped, auto-dropped, not logged. Faster for scratch work.
  • UNLOGGED: persistent but not crash-safe. Faster writes; good for caches/staging.

Row-Level Security

Enable with ALTER TABLE tbl ENABLE ROW LEVEL SECURITY. Create policies: CREATE POLICY user_access ON orders FOR SELECT TO app_users USING (user_id = current_user_id()). Built-in user-based access control at the row level.

Constraints

  • PK: implicit UNIQUE + NOT NULL; creates a B-tree index.
  • FK: specify ON DELETE/UPDATE action (CASCADE, RESTRICT, SET NULL, SET DEFAULT). Add explicit index on referencing column—speeds up joins and prevents locking issues on parent deletes/updates. Use DEFERRABLE INITIALLY DEFERRED for circular FK dependencies checked at transaction end.
  • UNIQUE: creates a B-tree index; allows multiple NULLs unless NULLS NOT DISTINCT (PG15+). Standard behavior: (1, NULL) and (1, NULL) are allowed. With NULLS NOT DISTINCT: only one (1, NULL) allowed. Prefer NULLS NOT DISTINCT unless you specifically need duplicate NULLs.
  • CHECK: row-local constraints; NULL values pass the check (three-valued logic). Example: CHECK (price > 0) allows NULL prices. Combine with NOT NULL to enforce: price NUMERIC NOT NULL CHECK (price > 0).
  • EXCLUDE: prevents overlapping values using operators. EXCLUDE USING gist (room_id WITH =, booking_period WITH &&) prevents double-booking rooms. Requires appropriate index type (often GiST).

Indexing

  • B-tree: default for equality/range queries (=, <, >, BETWEEN, ORDER BY)
  • Composite: order matters—index used if equality on leftmost prefix (WHERE a = ? AND b > ? uses index on (a,b), but WHERE b = ? does not). Put most selective/frequently filtered columns first.
  • Covering: CREATE INDEX ON tbl (id) INCLUDE (name, email) - includes non-key columns for index-only scans without visiting table.
  • Partial: for hot subsets (WHERE status = 'active'CREATE INDEX ON tbl (user_id) WHERE status = 'active'). Any query with status = 'active' can use this index.
  • Expression: for computed search keys (CREATE INDEX ON tbl (LOWER(email))). Expression must match exactly in WHERE clause: WHERE LOWER(email) = 'user@example.com'.
  • GIN: JSONB containment/existence, arrays (@>, ?), full-text search (@@)
  • GiST: ranges, geometry, exclusion constraints
  • BRIN: very large, naturally ordered data (time-series)—minimal storage overhead. Effective when row order on disk correlates with indexed column (insertion order or after CLUSTER).

Partitioning

  • Use for very large tables (>100M rows) where queries consistently filter on partition key (often time/date).
  • Alternate use: use for tables where data maintenance tasks dictates e.g. data pruned or bulk replaced periodically
  • RANGE: common for time-series (PARTITION BY RANGE (created_at)). Create partitions: CREATE TABLE logs_2024_01 PARTITION OF logs FOR VALUES FROM ('2024-01-01') TO ('2024-02-01'). TimescaleDB automates time-based or ID-based partitioning with retention policies and compression.
  • LIST: for discrete values (PARTITION BY LIST (region)). Example: FOR VALUES IN ('us-east', 'us-west').
  • HASH: for even distribution when no natural key (PARTITION BY HASH (user_id)). Creates N partitions with modulus.
  • Constraint exclusion: requires CHECK constraints on partitions for query planner to prune. Auto-created for declarative partitioning (PG10+).
  • Prefer declarative partitioning or hypertables. Do NOT use table inheritance.
  • Limitations: no global UNIQUE constraints—include partition key in PK/UNIQUE. FKs from partitioned tables not supported; use triggers.

Special Considerations

Update-Heavy Tables

  • Separate hot/cold columns—put frequently updated columns in separate table to minimize bloat.
  • Use fillfactor=90 to leave space for HOT updates that avoid index maintenance.
  • Avoid updating indexed columns—prevents beneficial HOT updates.
  • Partition by update patterns—separate frequently updated rows in a different partition from stable data.

Insert-Heavy Workloads

  • Minimize indexes—only create what you query; every index slows inserts.
  • Use COPY or multi-row INSERT instead of single-row inserts.
  • UNLOGGED tables for rebuildable staging data—much faster writes.
  • Defer index creation for bulk loads—>drop index, load data, recreate indexes.
  • Partition by time/hash to distribute load. TimescaleDB automates partitioning and compression of insert-heavy data.
  • Use a natural key for primary key such as a (timestamp, device_id) if enforcing global uniqueness is important many insert-heavy tables don't need a primary key at all.
  • If you do need a surrogate key, Prefer BIGINT GENERATED ALWAYS AS IDENTITY over UUID.

Upsert-Friendly Design

  • Requires UNIQUE index on conflict target columns—ON CONFLICT (col1, col2) needs exact matching unique index (partial indexes don't work).
  • Use EXCLUDED.column to reference would-be-inserted values; only update columns that actually changed to reduce write overhead.
  • DO NOTHING faster than DO UPDATE when no actual update needed.

Safe Schema Evolution

  • Transactional DDL: most DDL operations can run in transactions and be rolled back—BEGIN; ALTER TABLE...; ROLLBACK; for safe testing.
  • Concurrent index creation: CREATE INDEX CONCURRENTLY avoids blocking writes but can't run in transactions.
  • Volatile defaults cause rewrites: adding NOT NULL columns with volatile defaults (e.g., now(), gen_random_uuid()) rewrites entire table. Non-volatile defaults are fast.
  • Drop constraints before columns: ALTER TABLE DROP CONSTRAINT then DROP COLUMN to avoid dependency issues.
  • Function signature changes: CREATE OR REPLACE with different arguments creates overloads, not replacements. DROP old version if no overload desired.

Generated Columns

  • ... GENERATED ALWAYS AS (<expr>) STORED for computed, indexable fields. PG18+ adds VIRTUAL columns (computed on read, not stored).

Extensions

  • pgcrypto: crypt() for password hashing.
  • uuid-ossp: alternative UUID functions; prefer pgcrypto for new projects.
  • pg_trgm: fuzzy text search with % operator, similarity() function. Index with GIN for LIKE '%pattern%' acceleration.
  • citext: case-insensitive text type. Prefer expression indexes on LOWER(col) unless you need case-insensitive constraints.
  • btree_gin/btree_gist: enable mixed-type indexes (e.g., GIN index on both JSONB and text columns).
  • hstore: key-value pairs; mostly superseded by JSONB but useful for simple string mappings.
  • timescaledb: essential for time-series—automated partitioning, retention, compression, continuous aggregates.
  • postgis: comprehensive geospatial support beyond basic geometric types—essential for location-based applications.
  • pgvector: vector similarity search for embeddings.
  • pgaudit: audit logging for all database activity.

JSONB Guidance

  • Prefer JSONB with GIN index.
  • Default: CREATE INDEX ON tbl USING GIN (jsonb_col); → accelerates:
    • Containment jsonb_col @> '{"k":"v"}'
    • Key existence jsonb_col ? 'k', any/all keys ?\|, ?&
    • Path containment on nested docs
    • Disjunction jsonb_col @> ANY(ARRAY['{"status":"active"}', '{"status":"pending"}'])
  • Heavy @> workloads: consider opclass jsonb_path_ops for smaller/faster containment-only indexes:
    • CREATE INDEX ON tbl USING GIN (jsonb_col jsonb_path_ops);
    • Trade-off: loses support for key existence (?, ?|, ?&) queries—only supports containment (@>)
  • Equality/range on a specific scalar field: extract and index with B-tree (generated column or expression):
    • ALTER TABLE tbl ADD COLUMN price INT GENERATED ALWAYS AS ((jsonb_col->>'price')::INT) STORED;
    • CREATE INDEX ON tbl (price);
    • Prefer queries like WHERE price BETWEEN 100 AND 500 (uses B-tree) over WHERE (jsonb_col->>'price')::INT BETWEEN 100 AND 500 without index.
  • Arrays inside JSONB: use GIN + @> for containment (e.g., tags). Consider jsonb_path_ops if only doing containment.
  • Keep core relations in tables; use JSONB for optional/variable attributes.
  • Use constraints to limit allowed JSONB values in a column e.g. config JSONB NOT NULL CHECK(jsonb_typeof(config) = 'object')

Examples

Users

CREATE TABLE users (
  user_id BIGINT GENERATED ALWAYS AS IDENTITY PRIMARY KEY,
  email TEXT NOT NULL UNIQUE,
  name TEXT NOT NULL,
  created_at TIMESTAMPTZ NOT NULL DEFAULT now()
);
CREATE UNIQUE INDEX ON users (LOWER(email));
CREATE INDEX ON users (created_at);

Orders

CREATE TABLE orders (
  order_id BIGINT GENERATED ALWAYS AS IDENTITY PRIMARY KEY,
  user_id BIGINT NOT NULL REFERENCES users(user_id),
  status TEXT NOT NULL DEFAULT 'PENDING' CHECK (status IN ('PENDING','PAID','CANCELED')),
  total NUMERIC(10,2) NOT NULL CHECK (total > 0),
  created_at TIMESTAMPTZ NOT NULL DEFAULT now()
);
CREATE INDEX ON orders (user_id);
CREATE INDEX ON orders (created_at);

JSONB

CREATE TABLE profiles (
  user_id BIGINT PRIMARY KEY REFERENCES users(user_id),
  attrs JSONB NOT NULL DEFAULT '{}',
  theme TEXT GENERATED ALWAYS AS (attrs->>'theme') STORED
);
CREATE INDEX profiles_attrs_gin ON profiles USING GIN (attrs);