postgres-semantic-search✓ Pass
PostgreSQL-based semantic and hybrid search with pgvector and ParadeDB. Use when implementing vector search, semantic search, hybrid search, or full-text search in PostgreSQL. Covers pgvector setup, indexing (HNSW, IVFFlat), hybrid search (FTS + BM25 + RRF), ParadeDB as Elasticsearch alternative, and re-ranking with Cohere/cross-encoders. Supports vector(1536) and halfvec(3072) types for OpenAI embeddings. Triggers: pgvector, vector search, semantic search, hybrid search, embedding search, PostgreSQL RAG, BM25, RRF, HNSW index, similarity search, ParadeDB, pg_search, reranking, Cohere rerank, pg_trgm, trigram, fuzzy search, LIKE, ILIKE, autocomplete, typo tolerance, fuzzystrmatch
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SKILL.md Content
---
name: postgres-semantic-search
description: |
PostgreSQL-based semantic and hybrid search with pgvector and ParadeDB.
Use when implementing vector search, semantic search, hybrid search,
or full-text search in PostgreSQL. Covers pgvector setup, indexing
(HNSW, IVFFlat), hybrid search (FTS + BM25 + RRF), ParadeDB as
Elasticsearch alternative, and re-ranking with Cohere/cross-encoders.
Supports vector(1536) and halfvec(3072) types for OpenAI embeddings.
Triggers: pgvector, vector search, semantic search, hybrid search,
embedding search, PostgreSQL RAG, BM25, RRF, HNSW index, similarity search,
ParadeDB, pg_search, reranking, Cohere rerank, pg_trgm, trigram,
fuzzy search, LIKE, ILIKE, autocomplete, typo tolerance, fuzzystrmatch
---
# PostgreSQL Semantic Search
## Quick Start
### 1. Setup
```sql
CREATE EXTENSION IF NOT EXISTS vector;
CREATE TABLE documents (
id SERIAL PRIMARY KEY,
content TEXT NOT NULL,
embedding vector(1536) -- text-embedding-3-small
-- Or: embedding halfvec(3072) -- text-embedding-3-large (50% memory)
);
```
### 2. Basic Semantic Search
```sql
SELECT id, content, 1 - (embedding <=> query_vec) AS similarity
FROM documents
ORDER BY embedding <=> query_vec
LIMIT 10;
```
### 3. Add Index (> 10k documents)
```sql
CREATE INDEX ON documents USING hnsw (embedding vector_cosine_ops);
```
### Docker Quick Start
```bash
# pgvector with PostgreSQL 17
docker run -d --name pgvector-db \
-e POSTGRES_PASSWORD=postgres \
-p 5432:5432 \
pgvector/pgvector:pg17
# Or PostgreSQL 18 (latest)
docker run -d --name pgvector-db \
-e POSTGRES_PASSWORD=postgres \
-p 5432:5432 \
pgvector/pgvector:pg18
# ParadeDB (includes pgvector + pg_search + BM25)
docker run -d --name paradedb \
-e POSTGRES_PASSWORD=postgres \
-p 5432:5432 \
paradedb/paradedb:latest
```
Connect: `psql postgresql://postgres:postgres@localhost:5432/postgres`
## Cheat Sheet
### Distance Operators
```sql
embedding <=> query -- Cosine distance (1 - similarity)
embedding <-> query -- L2/Euclidean distance
embedding <#> query -- Negative inner product
```
### Common Queries
```sql
-- Top 10 similar (cosine)
SELECT * FROM docs ORDER BY embedding <=> $1 LIMIT 10;
-- With similarity score
SELECT *, 1 - (embedding <=> $1) AS similarity FROM docs ORDER BY 2 DESC LIMIT 10;
-- With threshold
SELECT * FROM docs WHERE embedding <=> $1 < 0.3 ORDER BY 1 LIMIT 10;
-- Preload index (run on startup)
SELECT 1 FROM docs ORDER BY embedding <=> $1 LIMIT 1;
```
### Index Quick Reference
```sql
-- HNSW (recommended)
CREATE INDEX ON docs USING hnsw (embedding vector_cosine_ops);
-- With tuning
CREATE INDEX ON docs USING hnsw (embedding vector_cosine_ops)
WITH (m = 24, ef_construction = 200);
-- Query-time recall
SET hnsw.ef_search = 100;
-- Iterative scan for filtered queries (pgvector 0.8+)
SET hnsw.iterative_scan = relaxed_order;
SET ivfflat.iterative_scan = on;
```
## Decision Trees
### Choose Search Method
```
Query type?
├─ Conceptual/meaning-based → Pure vector search
├─ Exact terms/names → Pure keyword search (FTS)
├─ Fuzzy/typo-tolerant → pg_trgm trigram similarity
├─ Autocomplete/prefix → pg_trgm + prefix index
├─ Substring (LIKE/ILIKE) → pg_trgm GIN index
└─ Mixed/unknown → Hybrid search
├─ Simple setup → FTS + RRF (no extra extensions)
├─ Better ranking → BM25 + RRF (pg_search extension)
└─ Full-featured → ParadeDB (Elasticsearch alternative)
```
### Choose Index Type
```
Document count?
├─ < 10,000 → No index needed
├─ 10k - 1M → HNSW (best recall)
└─ > 1M → IVFFlat (less memory) or HNSW
```
### Choose Vector Type
```
Embedding model?
├─ text-embedding-3-small (1536) → vector(1536)
├─ text-embedding-3-large (3072) → halfvec(3072) (50% memory savings)
└─ Other models → vector(dimensions)
```
## Operators
| Operator | Distance | Use Case |
|----------|----------|----------|
| `<=>` | Cosine | Text embeddings (default) |
| `<->` | L2/Euclidean | Image embeddings |
| `<#>` | Inner product | Normalized vectors |
## SQL Functions
### Semantic Search
- `match_documents(query_vec, threshold, limit)` - Basic search
- `match_documents_filtered(query_vec, metadata_filter, threshold, limit)` - With JSONB filter
- `match_chunks(query_vec, threshold, limit)` - Search document chunks
### Fuzzy Search (pg_trgm)
- `fuzzy_search_trigram(query_text, threshold, limit)` - Trigram similarity search
- `autocomplete_search(prefix, limit)` - Prefix + fuzzy autocomplete
- `hybrid_search_fuzzy_semantic(query_text, query_vec, limit, rrf_k)` - Fuzzy + vector RRF
- `weighted_fts_search(query_text, language, limit)` - FTS with title/content weighting
### Hybrid Search (FTS)
- `hybrid_search_fts(query_vec, query_text, limit, rrf_k, language)` - FTS + RRF
- `hybrid_search_weighted(query_vec, query_text, limit, sem_weight, kw_weight)` - Linear combination
- `hybrid_search_fallback(query_vec, query_text, limit)` - Graceful degradation
### Hybrid Search (BM25)
- `hybrid_search_bm25(query_vec, query_text, limit, rrf_k)` - BM25 + RRF
- `hybrid_search_bm25_highlighted(...)` - With snippet highlighting
- `hybrid_search_chunks_bm25(...)` - For RAG with chunks
## Re-ranking (Optional)
Two-stage retrieval improves precision: fast recall → precise rerank.
### When to Use
- Results need higher precision
- Using < 50 candidates after initial search
- Have budget for API calls (Cohere) or compute (local models)
### Options
| Method | Latency | Quality | Cost |
|--------|---------|---------|------|
| Cohere Rerank v4.0-fast | ~150ms | Excellent | $0.001/query |
| Cohere Rerank v4.0-pro | ~300ms | Best | $0.002/query |
| Zerank 2 | ~100ms | Best | API cost |
| Voyage Rerank 2.5 | ~100ms | Excellent | API cost |
| Cross-encoder (local) | ~500ms | Very Good | Compute |
### TypeScript Example (Cohere)
```typescript
import { CohereClient } from 'cohere-ai';
const cohere = new CohereClient({ token: process.env.COHERE_API_KEY });
async function rerankResults(query: string, documents: string[]) {
const response = await cohere.rerank({
model: 'rerank-v4.0-fast', // or 'rerank-v4.0-pro' for best quality
query,
documents,
topN: 10,
});
return response.results;
}
```
- [reranking.md](references/reranking.md) - Detailed guide
## References
- [fuzzy-search.md](references/fuzzy-search.md) - pg_trgm, fuzzy matching, LIKE/ILIKE, autocomplete, advanced FTS
- [paradedb.md](references/paradedb.md) - ParadeDB full-text search (Elasticsearch alternative)
- [vector-types.md](references/vector-types.md) - vector vs halfvec, dimensions, storage
- [indexing.md](references/indexing.md) - HNSW, IVFFlat, GIN parameters
- [hybrid-search.md](references/hybrid-search.md) - FTS, BM25, RRF algorithms
- [performance.md](references/performance.md) - Cold-start, memory, HNSW vs IVFFlat
## Scripts
- [setup.sql](scripts/setup.sql) - Extension and table setup
- [semantic_search.sql](scripts/semantic_search.sql) - Semantic search functions
- [hybrid_search_fts.sql](scripts/hybrid_search_fts.sql) - FTS hybrid functions
- [hybrid_search_bm25.sql](scripts/hybrid_search_bm25.sql) - BM25 hybrid functions
- [fuzzy_search.sql](scripts/fuzzy_search.sql) - pg_trgm fuzzy search, autocomplete, weighted FTS
- [indexes.sql](scripts/indexes.sql) - Index creation scripts
## Common Patterns
### TypeScript Integration (Supabase)
```typescript
// Semantic search
const { data } = await supabase.rpc('match_documents', {
query_embedding: embedding,
match_threshold: 0.7,
match_count: 10
});
// Hybrid search
const { data } = await supabase.rpc('hybrid_search_fts', {
query_embedding: embedding,
query_text: userQuery,
match_count: 10,
rrf_k: 60,
fts_language: 'simple'
});
```
### Drizzle ORM
```typescript
import { sql } from 'drizzle-orm';
const results = await db.execute(sql`
SELECT * FROM match_documents(
${embedding}::vector(1536),
0.7,
10
)
`);
```
## Troubleshooting
| Symptom | Cause | Solution |
|---------|-------|----------|
| Index not used | < 10k rows or planner choice | Normal for small tables, check with EXPLAIN |
| Slow first query (30-60s) | HNSW cold-start | `SELECT pg_prewarm('idx_name')` or preload query |
| Poor recall | Low ef_search | `SET hnsw.ef_search = 100` or higher |
| FTS returns nothing | Wrong language config | Use `'simple'` for mixed/unknown languages |
| Memory error on index build | maintenance_work_mem too low | Increase to 2GB+ |
| Cosine similarity > 1 | Vectors not normalized | Normalize before insert or use L2 |
| Slow inserts | Index overhead | Batch inserts, consider IVFFlat |
| Fuzzy search slow | Missing trigram index | `CREATE INDEX USING gin (col gin_trgm_ops)` |
| ILIKE '%x%' slow | No pg_trgm GIN index | Enable pg_trgm + create GIN trigram index |
| `%` operator error | pg_trgm not installed | `CREATE EXTENSION IF NOT EXISTS pg_trgm` |
## Version Info (January 2026)
- **PostgreSQL 18.1**: Latest maintenance release with security fixes (Nov 2025)
- **PostgreSQL 17.7**: Stable LTS option
- **pgvector 0.8.1**: Iterative scans, PostgreSQL 18 support, halfvec up to 4000 dims
- **pg_search 0.21.2**: MVCC visibility, parallel aggregation, varchar[] indexing
- **Cohere Rerank v4.0**: 32K context, 100+ languages, self-learning (Dec 2025)
## External Documentation
- [pgvector GitHub](https://github.com/pgvector/pgvector) - Official extension, latest features
- [OpenAI Embeddings Guide](https://platform.openai.com/docs/guides/embeddings) - Embedding models and best practices
- [Supabase Vector Guide](https://supabase.com/docs/guides/ai/vector-columns) - Supabase-specific integration
- [ParadeDB pg_search](https://docs.paradedb.com/search/quickstart) - BM25 extension documentation
- [PostgreSQL FTS](https://www.postgresql.org/docs/current/textsearch.html) - Built-in full-text search
// Install Skill
Install Skill
Skills are third-party code from public GitHub repositories. SkillHub scans for known malicious patterns but cannot guarantee safety. Review the source code before installing.
Install globally (user-level):
npx skillhub install laguagu/claude-code-nextjs-skills/postgres-semantic-searchInstall in current project:
npx skillhub install laguagu/claude-code-nextjs-skills/postgres-semantic-search --projectSuggested path: ~/.claude/skills/postgres-semantic-search/