a5d34c001a
New German documentation (docs/de/): - index.md, quickstart.md, installation.md - baraql.md, graph.md, vector.md, mcp.md Updated English documentation: - changelog.md: all Sessions 10-12 features - graph.md: SQL GRAPH_TABLE, CREATE GRAPH, all 8 algorithms, Cypher, similarity_nodes, node2vec - vector.md: hybrid RAG, chunk(), embed_text(), auto-embed, nl_to_sql(), schema_prompt() - baraql.md: new AI & Cross-Modal Functions section, updated keyword tables - mcp.md: MCP Server documentation (new file) - index.md: added German (DE) language link
130 lines
3.3 KiB
Markdown
130 lines
3.3 KiB
Markdown
# Vektor-Suche
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Native HNSW und IVF-PQ Indizes für Ähnlichkeitssuche mit vollständiger SQL-Integration.
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## SQL — Vektor-Spalten
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```sql
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CREATE TABLE items (
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id INT PRIMARY KEY,
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embedding VECTOR(768)
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);
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```
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Der `VECTOR(n)`-Typ speichert float32-Arrays mit fester Dimension `n`.
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## Vektoren einfügen
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```sql
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INSERT INTO items (id, embedding) VALUES (1, '[0.1, 0.2, 0.3, ...]');
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```
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## Vektor-Distanzfunktionen
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```sql
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-- Kosinus-Distanz (0 = identisch, 1 = orthogonal)
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SELECT id, cosine_distance(embedding, '[0.1, 0.2, 0.3]') AS dist FROM items;
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-- Euklidische / L2 Distanz
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SELECT id, euclidean_distance(embedding, '[0.1, 0.2, 0.3]') AS dist FROM items;
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SELECT id, embedding <-> '[0.1, 0.2, 0.3]' AS dist FROM items;
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-- Inneres Produkt (negativ für Minimierung)
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SELECT id, inner_product(embedding, '[0.1, 0.2, 0.3]') AS dist FROM items;
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-- Manhattan / L1 Distanz
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SELECT id, l1_distance(embedding, '[0.1, 0.2, 0.3]') AS dist FROM items;
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```
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## Vektor-Indizes
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```sql
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-- HNSW-Index für approximative Nächste-Nachbarn-Suche
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CREATE INDEX idx_items_vec ON items(embedding) USING hnsw;
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-- Der Index wird bei INSERT und UPDATE automatisch aktualisiert
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```
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## Hybrid RAG Search
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```sql
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-- Kombinierte Vektor- + Volltext-Suche mit RRF-Reranking
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SELECT hybrid_search('AI query', embedding, content, 10) AS result;
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-- Gefilterte hybride Suche
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SELECT hybrid_search_filtered('AI query', embedding, content, 10, 'category', 'news') AS result;
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```
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## AI Pipeline
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### Text-Chunking
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```sql
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-- Text in überlappende Chunks zerlegen
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SELECT chunk('Langer Text hier...', 1024, 128) AS result;
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-- Ergebnis: [{"index":0, "text":"...", "size":124}, ...]
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```
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### Embedding-Generierung
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```sql
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-- Externen Embedding-Service aufrufen (konfiguriert via Umgebungsvariablen)
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SELECT embed_text('Suchtext hier') AS result;
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```
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Umgebungsvariablen für den Embedder:
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```bash
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export BARADB_EMBED_ENDPOINT=http://localhost:11434/api/embeddings
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export BARADB_EMBED_MODEL=nomic-embed-text
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```
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### Auto-Embedding bei INSERT
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Wenn eine VECTOR-Spalte NULL ist, aber eine TEXT-Spalte einen Wert hat, wird das Embedding automatisch generiert (falls ein Embedder konfiguriert ist).
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```sql
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CREATE TABLE docs (id INTEGER PRIMARY KEY, content TEXT, embedding VECTOR(768));
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CREATE INDEX docs_vec ON docs(embedding) USING hnsw;
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-- embedding wird automatisch gefüllt
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INSERT INTO docs (id, content) VALUES (1, 'Dieser Text wird automatisch embedded');
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```
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## Distanzmetriken
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| Metrik | SQL-Funktion | Beschreibung |
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|--------|-------------|-------------|
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| `cosine` | `cosine_distance(a, b)` | Kosinus-Distanz |
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| `euclidean` | `euclidean_distance(a, b)` / `<->` | L2-Distanz |
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| `dotproduct` | `inner_product(a, b)` | Negatives Skalarprodukt |
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| `manhattan` | `l1_distance(a, b)` | L1-Distanz |
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## Index-Typen
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### HNSW (Standard)
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```nim
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import barabadb/vector/engine
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var hnsw = newHNSWIndex(dimensions = 128, m = 16, efConstruction = 200)
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```
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### IVF-PQ
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```nim
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var ivfpq = newIVFPQIndex(dimensions = 128, numCentroids = 256, subQuantizers = 8)
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```
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## Native Nim API
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```nim
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import barabadb/vector/engine
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var idx = newHNSWIndex(dimensions = 128)
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idx.insert(1, @[1.0'f32, 0.0'f32, ...], {"category": "A"}.toTable)
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let results = idx.search(queryVector, k = 10)
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let filtered = idx.searchWithFilter(queryVector, k = 10,
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filter = proc(meta: Table[string, string]): bool = return "category" in meta)
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```
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