2,000+ MCP servers ready to useZero-Trust ArchitectureTitanium-grade infrastructure
Vinkius

pgvector (Vector Database) MCP Server

Built by Vinkius GDPR ToolsGrátis

Run vector similarity searches, manage embedding tables, and build AI-powered retrieval pipelines — all directly inside your existing PostgreSQL database.

Vinkius AI Gateway suporta streamable HTTP e SSE.

pgvector (Vector Database)

Funciona com todos os agentes de IA que você já usa

…e qualquer cliente compatível com MCP

CursorClaudeOpenAIVS CodeCopilotGoogleLovableMistralAWSCursorClaudeOpenAIVS CodeCopilotGoogleLovableMistralAWS

pgvector MCP Server: veja o seu AI Agent em ação

AI AgentVinkiuspgvector (Vector Database)
You

Vinkius AI Gateway
GDPR·High Security·Kill Switch·Ultra-Low Latency·Plug and Play

Capacidades integradas (6)

create_index

Create vector index

create_table

Create vector table

delete_vector

Delete a vector

insert_vector

Insert a vector

list_tables

List tables

search_vectors

Vector similarity search

O que esse conector desbloqueia

Connect your PostgreSQL + pgvector database to any AI agent and manage vector embeddings, similarity searches, and index optimizations through natural conversation.

What you can do

  • Vector Similarity Search — Run nearest-neighbor queries using cosine, L2, or inner product distance metrics across millions of embeddings with a single prompt.
  • Table Management — Discover which tables contain vector columns, create new embedding tables with custom dimensions, and inspect your schema.
  • Embedding CRUD — Insert, update, and delete individual vector entries with metadata, keeping your knowledge base fresh and accurate.
  • Index Optimization — Create HNSW or IVFFlat indexes on vector columns to accelerate approximate nearest-neighbor (ANN) queries by orders of magnitude.

How it works

1. Subscribe to the pgvector integration on the marketplace.
2. Paste your PostgreSQL connection string (e.g., postgresql://user:pass@host:5432/db).
3. Ask your AI agent to search vectors, create tables, or optimize indexes.

Who is this for?

  • AI Engineers — Build RAG (Retrieval-Augmented Generation) pipelines that query production embeddings without writing custom API endpoints.
  • Data Architects — Manage vector schemas, monitor index performance, and optimize query latency from a single conversational interface.
  • Fullstack Developers — Add semantic search to existing apps by querying pgvector directly through your AI agent, no new microservices needed.

Perguntas frequentes

Dê aos seus agentes de IA o poder do pgvector

Acesse o pgvector e mais de 2.000 servidores MCP — prontos para seus agentes usarem, agora mesmo. Sem código cola. Sem integrações customizadas. Apenas plugue o Vinkius AI Gateway e deixe seus agentes trabalharem.