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

Supabase Vector MCP Server

Built by Vinkius GDPR ToolsFree

Connect your AI to Supabase Vector. Execute pgvector semantic searches, manage embeddings, and run relational database queries directly from your terminal.

Vinkius AI Gateway supports streamable HTTP and SSE.

Supabase Vector

Works with every AI agent you already use

…and any MCP-compatible client

CursorClaudeOpenAIVS CodeCopilotGoogleLovableMistralAWSCursorClaudeOpenAIVS CodeCopilotGoogleLovableMistralAWS

Supabase Vector MCP Server: see your AI Agent in action

AI AgentVinkiusSupabase Vector
You

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

Built-in capabilities (7)

call_postgres_function

Calls a custom Postgres function (RPC) with parameters

delete_table_rows

This action is irreversible. Deletes rows from a table based on a column value

get_table_row

Retrieves a specific row by matching a column value

insert_table_rows

Provide a JSON array of row objects. Inserts new rows into a specific table

list_tables

Lists all tables in the Supabase project

match_vectors

Requires a valid RPC function name and an embedding array. Performs a vector similarity search via Postgres RPC

query_table_rows

Provide table name and optional select/limit. Queries rows from a specific table

What this connector unlocks

Integrate the powerful AI-native PostgreSQL extensions of Supabase Vector straight into your conversational LLM workflows. By authenticating your environment natively with the service_role key, your AI assistant bypasses row-level security constraints to operate as an unrestricted database administrator. Perform advanced similarity searches using the pgvector extension, parse and manipulate multi-dimensional embeddings, and execute foundational CRUD operations via simple natural language commands. Streamline RAG (Retrieval-Augmented Generation) setups and semantic engineering directly, avoiding the need for external dashboards or manual SQL querying.

What you can do

  • Semantic Vector Matching — Seamlessly query unstructured contextual similarities performing embedding comparisons by executing match_vectors utilizing custom postgres RPC parameters locally.
  • Database Structural Interaction — Systematically browse schema availability utilizing list_tables and extract specific data arrays effortlessly through query_table_rows.
  • Content State Manipulations — Seamlessly orchestrate data inputs invoking insert_table_rows or explicitly clear legacy assignments logically mapping identifiers with delete_table_rows.
  • Custom Functional Logic — Launch sophisticated PL/pgSQL algorithms statically configured in your Supabase backend directly with call_postgres_function.

How it works

1. Set up the Supabase Vector MCP module as an active integration inside your CLI environment.
2. In the configuration matrix, bind your exact deployed SUPABASE_URL alongside your powerful validation SUPABASE_SERVICE_KEY.
3. Instruct your AI securely: "Match the current context to my 'documents_embeddings' function extracting the 5 most similar articles, then call the active review RPC."

Who is this for?

  • AI & Data Engineers — Rapidly iterate embedding architectures testing embedding models and distance metrics strictly without opening external validation platforms.
  • PostgreSQL Database Administrators — Diagnose semantic accuracy directly from the prompt line configuring inputs organically and adjusting values via conversational arrays.
  • Backend Developers — Evaluate robust vector databases quickly debugging your semantic infrastructure and RAG deployments natively directly in your active workspace.

Frequently asked questions

Give your AI agents the power of Supabase Vector

Access Supabase Vector and 2,000+ MCP servers — ready for your agents to use, right now. No glue code. No custom integrations. Just plug Vinkius AI Gateway and let your agents work.