Why Use This This skill provides specialized capabilities for aiskillstore's codebase.
Use Cases Developing new features in the aiskillstore repository Refactoring existing code to follow aiskillstore standards Understanding and working with aiskillstore's codebase structure
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Updated At Jan 19, 2026, 04:39 AM
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---
skill_id: when-building-semantic-search-use-agentdb-vector-search
name: agentdb-semantic-vector-search
description: Build semantic vector search systems with AgentDB for intelligent document retrieval, RAG applications, and knowledge bases using embedding-based similarity matching
version: 1.0.0
category: agentdb
subcategory: semantic-search
trigger_pattern: "when-building-semantic-search"
agents:
- ml-developer
- backend-dev
- tester
complexity: intermediate
estimated_duration: 6-8 hours
prerequisites:
- AgentDB basics
- Embedding models knowledge
- REST API development
outputs:
- Semantic search engine
- Document retrieval system
- RAG-ready infrastructure
- Query API endpoints
validation_criteria:
- Search returns relevant results
- Retrieval accuracy > 90%
- Query latency < 100ms
- API functional and documented
evidence_based_techniques:
- Relevance evaluation
- Precision/recall metrics
- User feedback testing
metadata:
author: claude-flow
created: 2025-10-30
tags:
- agentdb
- semantic-search
- rag
- vector-search
- embeddings
---
# AgentDB Semantic Vector Search
## Overview
Implement semantic vector search with AgentDB for intelligent document retrieval, similarity matching, and context-aware querying. Build RAG systems, semantic search engines, and knowledge bases.
## SOP Framework: 5-Phase Semantic Search
### Phase 1: Setup Vector Database (1-2 hours)
- Initialize AgentDB
- Configure embedding model
- Setup database schema
### Phase 2: Embed Documents (1-2 hours)
- Process document corpus
- Generate embeddings
- Store vectors with metadata
### Phase 3: Build Search Index (1-2 hours)
- Create HNSW index
- Optimize search parameters
- Test retrieval accuracy
### Phase 4: Implement Query Interface (1-2 hours)
- Create REST API endpoints
- Add filtering and ranking
- Implement hybrid search
### Phase 5: Refine and Optimize (1-2 hours)
- Improve relevance
- Add re-ranking
- Performance tuning
## Quick Start
```typescript
import { AgentDB, EmbeddingModel } from 'agentdb-vector-search';
// Initialize
const db = new AgentDB({ name: 'semantic-search', dimensions: 1536 });
const embedder = new EmbeddingModel('openai/ada-002');
// Embed documents
for (const doc of documents) {
const embedding = await embedder.embed(doc.text);
await db.insert({
id: doc.id,
vector: embedding,
metadata: { title: doc.title, content: doc.text }
});
}
// Search
const query = 'machine learning tutorials';
const queryEmbedding = await embedder.embed(query);
const results = await db.search({
vector: queryEmbedding,
topK: 10,
filter: { category: 'tech' }
});
```
## Features
- **Semantic Search**: Meaning-based retrieval
- **Hybrid Search**: Vector + keyword search
- **Filtering**: Metadata-based filtering
- **Re-ranking**: Improve result relevance
- **RAG Integration**: Context for LLMs
## Success Metrics
- Retrieval accuracy > 90%
- Query latency < 100ms
- Relevant results in top-10: > 95%
- API uptime > 99.9%
## Additional Resources
- Full docs: SKILL.md
- AgentDB Vector Search: https://agentdb.dev/docs/vector-search