Files
Baradb/docs/en/vector.md
T
dimgigov b0978812cb docs(en): Update English docs for Vector SQL Integration
- docs/en/vector.md — add SQL usage section (CREATE TABLE VECTOR,
  distance functions, <-> operator, CREATE INDEX USING hnsw)
- docs/en/baraql.md — update vector search section with real SQL syntax,
  add VECTOR(n) to data types, update keyword table
- docs/en/changelog.md — add Vector SQL Integration and bugfixes to [Unreleased]
- docs/ARCHITECTURE.md — add SQL Integration bullet to Vector Engine
- README.md — update vector engine section with SQL examples,
  add Vector SQL to roadmap, bump test count to 340+
2026-05-14 14:20:57 +03:00

3.5 KiB

Vector Search Engine

Native HNSW and IVF-PQ indexes for similarity search with full SQL integration.

SQL Usage

Creating Vector Columns

CREATE TABLE items (
  id INT PRIMARY KEY,
  embedding VECTOR(768)
);

The VECTOR(n) type stores float32 arrays of fixed dimension n.

Inserting Vectors

INSERT INTO items (id, embedding) VALUES (1, '[0.1, 0.2, 0.3, ...]');

Vector Distance Functions

-- Cosine distance (0 = identical, 1 = orthogonal)
SELECT id, cosine_distance(embedding, '[0.1, 0.2, 0.3]') AS dist
FROM items;

-- Euclidean / L2 distance
SELECT id, euclidean_distance(embedding, '[0.1, 0.2, 0.3]') AS dist
FROM items;

-- L2 distance with <-> operator
SELECT id, embedding <-> '[0.1, 0.2, 0.3]' AS dist
FROM items;

-- Inner product (negative dot product for minimization)
SELECT id, inner_product(embedding, '[0.1, 0.2, 0.3]') AS dist
FROM items;

-- Manhattan / L1 distance
SELECT id, l1_distance(embedding, '[0.1, 0.2, 0.3]') AS dist
FROM items;
-- Top-10 nearest neighbors by cosine distance
SELECT id FROM items
ORDER BY cosine_distance(embedding, '[0.1, 0.2, 0.3]') ASC
LIMIT 10;

-- Top-5 nearest neighbors by Euclidean distance
SELECT id FROM items
ORDER BY embedding <-> '[0.1, 0.2, 0.3]'
LIMIT 5;

Vector Indexes

-- Create HNSW index for approximate nearest neighbor search
CREATE INDEX idx_items_vec ON items(embedding) USING hnsw;

-- The index is automatically maintained on INSERT and UPDATE

Supported index methods:

  • USING hnsw — Hierarchical Navigable Small World (default: cosine metric)
  • USING ivfpq — Inverted File with Product Quantization

Dimension Validation

BaraDB validates vector dimensions at insert time:

-- This will fail: expected 768 dimensions but got 3
INSERT INTO items (id, embedding) VALUES (2, '[1.0, 2.0, 3.0]');

Native Nim API

For embedded or high-performance use, use the native Nim API directly:

import barabadb/vector/engine

var idx = newHNSWIndex(dimensions = 128)
idx.insert(1, @[1.0'f32, 0.0'f32, ...], {"category": "A"}.toTable)

# Search
let results = idx.search(queryVector, k = 10)

# With metadata filtering
let filtered = idx.searchWithFilter(queryVector, k = 10,
  filter = proc(meta: Table[string, string]): bool =
    return meta.getOrDefault("category") == "A")

Index Types

HNSW

Hierarchical Navigable Small World graph for approximate nearest neighbor search.

var hnsw = newHNSWIndex(
  dimensions = 128,
  m = 16,           # connections per layer
  efConstruction = 200,  # search width during construction
  efSearch = 100    # search width during query
)

IVF-PQ

Inverted File Index with Product Quantization for compression.

var ivfpq = newIVFPQIndex(
  dimensions = 128,
  numCentroids = 256,
  subQuantizers = 8
)

Distance Metrics

Metric SQL Function Description
cosine cosine_distance(a, b) Cosine dissimilarity (1 - similarity)
euclidean euclidean_distance(a, b) / <-> L2 distance
dotproduct inner_product(a, b) Negative dot product
manhattan l1_distance(a, b) L1 distance

Quantization

import barabadb/vector/quant

# Scalar quantization
let scalar = scalarQuantize(data, bits = 8)

# Product quantization
let pq = productQuantize(data, subVectors = 8, bits = 8)

SIMD Acceleration

import barabadb/vector/simd

let dist = simdCosineDistance(vec1, vec2)