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postgres-pro
Use when optimizing PostgreSQL queries, configuring replication, or implementing advanced database features. Invoke for EXPLAIN analysis, JSONB operations, extension usage, VACUUM tuning, performance monitoring.
Use when optimizing PostgreSQL queries, configuring replication, or implementing advanced database features. Invoke for EXPLAIN analysis, JSONB operations, extension usage, VACUUM tuning, performance monitoring.
Generates Angular 17+ standalone components, configures advanced routing with lazy loading and guards, implements NgRx state management, applies RxJS patterns, and optimizes bundle performance. Use when building Angular 17+ applications with standalone components or signals, setting up NgRx stores, establishing RxJS reactive patterns, performance tuning, or writing Angular tests for enterprise apps.
Use when designing REST or GraphQL APIs, creating OpenAPI specifications, or planning API architecture. Invoke for resource modeling, versioning strategies, pagination patterns, error handling standards.
Use when designing new high-level system architecture, reviewing existing designs, or making architectural decisions. Invoke to create architecture diagrams, write Architecture Decision Records (ADRs), evaluate technology trade-offs, design component interactions, and plan for scalability. Use for system design, architecture review, microservices structuring, ADR authoring, scalability planning, and infrastructure pattern selection — distinct from code-level design patterns or database-only design tasks.
Integrates with Atlassian products to manage project tracking and documentation via MCP protocol. Use when querying Jira issues with JQL filters, creating and updating tickets with custom fields, searching or editing Confluence pages with CQL, managing sprints and backlogs, setting up MCP server authentication, syncing documentation, or debugging Atlassian API integrations.
Designs chaos experiments, creates failure injection frameworks, and facilitates game day exercises for distributed systems — producing runbooks, experiment manifests, rollback procedures, and post-mortem templates. Use when designing chaos experiments, implementing failure injection frameworks, or conducting game day exercises. Invoke for chaos experiments, resilience testing, blast radius control, game days, antifragile systems, fault injection, Chaos Monkey, Litmus Chaos.
Use when building CLI tools, implementing argument parsing, or adding interactive prompts. Invoke for parsing flags and subcommands, displaying progress bars and spinners, generating bash/zsh/fish completion scripts, CLI design, shell completions, and cross-platform terminal applications using commander, click, typer, or cobra.
| name | postgres-pro |
| description | Use when optimizing PostgreSQL queries, configuring replication, or implementing advanced database features. Invoke for EXPLAIN analysis, JSONB operations, extension usage, VACUUM tuning, performance monitoring. |
| license | MIT |
| metadata | {"author":"https://github.com/Jeffallan","version":"1.1.0","domain":"infrastructure","triggers":"PostgreSQL, Postgres, EXPLAIN ANALYZE, pg_stat, JSONB, streaming replication, logical replication, VACUUM, PostGIS, pgvector","role":"specialist","scope":"implementation","output-format":"code","related-skills":"database-optimizer, devops-engineer, sre-engineer"} |
Senior PostgreSQL expert with deep expertise in database administration, performance optimization, and advanced PostgreSQL features.
EXPLAIN (ANALYZE, BUFFERS) to identify bottlenecksEXPLAIN before deployingANALYZE to refresh statisticspg_stat views; verify improvements after each change-- Step 1: Identify slow queries
SELECT query, mean_exec_time, calls
FROM pg_stat_statements
ORDER BY mean_exec_time DESC
LIMIT 10;
-- Step 2: Analyze a specific slow query
EXPLAIN (ANALYZE, BUFFERS, FORMAT TEXT)
SELECT * FROM orders WHERE customer_id = 42 AND status = 'pending';
-- Look for: Seq Scan (bad on large tables), high Buffers hit, nested loops on large sets
-- Step 3: Create a targeted index
CREATE INDEX CONCURRENTLY idx_orders_customer_status
ON orders (customer_id, status)
WHERE status = 'pending'; -- partial index reduces size
-- Step 4: Verify the index is used
EXPLAIN (ANALYZE, BUFFERS)
SELECT * FROM orders WHERE customer_id = 42 AND status = 'pending';
-- Confirm: Index Scan on idx_orders_customer_status, lower actual time
-- Step 5: Update statistics if needed after bulk changes
ANALYZE orders;
Load detailed guidance based on context:
| Topic | Reference | Load When |
|---|---|---|
| Performance | references/performance.md | EXPLAIN ANALYZE, indexes, statistics, query tuning |
| JSONB | references/jsonb.md | JSONB operators, indexing, GIN indexes, containment |
| Extensions | references/extensions.md | PostGIS, pg_trgm, pgvector, uuid-ossp, pg_stat_statements |
| Replication | references/replication.md | Streaming replication, logical replication, failover |
| Maintenance | references/maintenance.md | VACUUM, ANALYZE, pg_stat views, monitoring, bloat |
-- Create GIN index for containment queries
CREATE INDEX idx_events_payload ON events USING GIN (payload);
-- Efficient JSONB containment query (uses GIN index)
SELECT * FROM events WHERE payload @> '{"type": "login", "success": true}';
-- Extract nested value
SELECT payload->>'user_id', payload->'meta'->>'ip'
FROM events
WHERE payload @> '{"type": "login"}';
-- Check tables with high dead tuple counts
SELECT relname, n_dead_tup, n_live_tup,
round(n_dead_tup::numeric / NULLIF(n_live_tup + n_dead_tup, 0) * 100, 2) AS dead_pct,
last_autovacuum
FROM pg_stat_user_tables
ORDER BY n_dead_tup DESC
LIMIT 20;
-- Manually vacuum a high-churn table and verify
VACUUM (ANALYZE, VERBOSE) orders;
-- On primary: check standby lag
SELECT client_addr, state, sent_lsn, write_lsn, flush_lsn, replay_lsn,
(sent_lsn - replay_lsn) AS replication_lag_bytes
FROM pg_stat_replication;
EXPLAIN (ANALYZE, BUFFERS) for query optimizationEXPLAIN before and after creationCREATE INDEX CONCURRENTLY to avoid table locks in productionANALYZE after bulk data changes to refresh statisticsautovacuum_vacuum_scale_factor for high-churn tablespg_stat_replicationuuid type for UUIDs, not textSELECT * in production queriesWhen implementing PostgreSQL solutions, provide:
EXPLAIN (ANALYZE, BUFFERS) output and interpretationPostgreSQL 12-16, EXPLAIN ANALYZE, B-tree/GIN/GiST/BRIN indexes, JSONB operators, streaming replication, logical replication, VACUUM/ANALYZE, pg_stat views, PostGIS, pgvector, pg_trgm, WAL archiving, PITR