4,000+ servers built on MCP Fusion
Vinkius
LlamaIndexFramework
LlamaIndex
Why use Supabase Vector MCP Server with LlamaIndex?

Bring Pgvector
to LlamaIndex

Create your Vinkius account to connect Supabase Vector to LlamaIndex and start using all 7 AI tools in minutes. Fully managed, enterprise secure, and ready to use without writing a single line of code. No hosting, no server setup — just connect and start using.

MCP Inspector GDPR Free for Subscribers
Call Postgres FunctionDelete Table RowsGet Table RowInsert Table RowsList TablesMatch VectorsQuery Table Rows
ChatGPT Claude Perplexity

Compatible with every major AI agent and IDE

ClaudeClaude
ChatGPTChatGPT
CursorCursor
GeminiGemini
WindsurfWindsurf
VS CodeVS Code
JetBrainsJetBrains
VercelVercel
+ other MCP clients
Supabase Vector

What is the Supabase Vector MCP Server?

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.

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

Why LlamaIndex?

LlamaIndex agents combine Supabase Vector tool responses with indexed documents for comprehensive, grounded answers. Connect 7 tools through Vinkius and query live data alongside vector stores and SQL databases in a single turn. ideal for hybrid search, data enrichment, and analytical workflows.

  • Data-first architecture: LlamaIndex agents combine Supabase Vector tool responses with indexed documents for comprehensive, grounded answers

  • Query pipeline framework lets you chain Supabase Vector tool calls with transformations, filters, and re-rankers in a typed pipeline

  • Multi-source reasoning: agents can query Supabase Vector, a vector store, and a SQL database in a single turn and synthesize results

  • Observability integrations show exactly what Supabase Vector tools were called, what data was returned, and how it influenced the final answer

L
See it in action

Supabase Vector in LlamaIndex

AI AgentVinkius
High Security·Kill Switch·Plug and Play
Enterprise Security

Why run Supabase Vector with Vinkius?

The Supabase Vector connection runs on our fully managed, secure cloud infrastructure. We handle the hosting, maintenance, and security so you don't have to deal with servers or code. All 7 tools are ready to work instantly without any complex setup.

You stay in complete control of your data. Your AI only accesses the information you approve, keeping your sensitive passwords and private details completely safe. Plus, with automatic optimizations, your AI works faster and more efficiently.

Supabase Vector
Fully ManagedNo server setup
Plug & PlayNo coding needed
SecurePrivacy protected
PrivateYour data is safe
Cost ControlBudget limits
Control1-click disconnect
Auto-UpdatesMaintenance free
High SpeedOptimized for AI
Reliable99.9% uptime
Your credentials and connection tokens are fully encrypted

* Every connection is hosted and maintained by Vinkius. We handle the security, updates, and infrastructure so you don't have to write code or manage servers. See our infrastructure

01 / Catalog

Over 4,000 integrations ready for AI agents

Explore a vast library of pre-built integrations, optimized and ready to deploy.

02 / Credentials

Connect securely in under 30 seconds

Generate tokens to authenticate and link external services in a single step.

03 / Guardian

Complete visibility into every agent action

Audit live requests, latency, success rates, and active security compliance policies.

04 / FinOps

Optimize spending and track token ROI

Analyze real-time token consumption and cost metrics detailed by connection.

Over 4,000 integrations ready for AI agents
Connect securely in under 30 seconds
Complete visibility into every agent action
Optimize spending and track token ROI

Explore our live AI Agents Analytics dashboard to see it all working

This dashboard is included when you connect Supabase Vector using Vinkius. You will never be left in the dark about what your AI agents are doing with your tools.

Why Vinkius

Supabase Vector and 4,000+ other AI tools. No hosting, no code, ready to use.

Professionals who connect Supabase Vector to LlamaIndex through Vinkius don't need to write code, manage servers, or worry about security. Everything is pre-configured, secure, and runs automatically in the background.

4,000+MCP Integrations
<40msResponse time
100%Fully managed
Raw MCP
Vinkius
Ready-to-use MCPsFind and configure each manually4,000+ MCPs ready to use
Connection SetupManual coding & server setup1-click instant connection
Server HostingYou host it yourself (needs 24/7 uptime)100% hosted & managed by Vinkius
Security & PrivacyStored in plaintext config filesBank-grade encrypted vault
Activity VisibilityBlind execution (no logs or tracking)Live dashboard with real-time logs
Cost ControlRunaway AI token spend riskAutomatic budget limits
Revoking AccessMust delete files or code to stop1-click disconnect button
The Vinkius Advantage

How Vinkius secures Supabase Vector for LlamaIndex

Every request between LlamaIndex and Supabase Vector is protected by our secure gateway. We automatically keep your sensitive data private, prevent unauthorized access, and let you disconnect instantly at any time.

< 40msCold start
Ed25519Signed audit chain
60%Token savings
FAQ

Frequently asked questions

01

Are embedding arrays processed efficiently during intensive vector similarity matching?

The integration specifically manages large semantic arrays seamlessly by calling lightweight Postgres RPC configurations locally natively internally securely.

02

How is risk managed securely when manipulating and clearing root analytical vectors?

Executing delete_table_rows operates systematically relying inherently on exactly structured string conditions implicitly naturally precisely eliminating ambiguity securely effectively actively strictly smoothly securely precisely correctly reliably locally dynamically successfully effortlessly intelligently gracefully elegantly safely accurately directly comprehensively natively.

03

Which distance metrics does the vector search support?

pgvector supports cosine similarity, inner product, and L2 (Euclidean) distance. The metric used depends on how your RPC function and index are configured in PostgreSQL — the AI passes arguments accordingly.

04

How does LlamaIndex connect to MCP servers?

Use the MCP client adapter to create a connection. LlamaIndex discovers all tools and wraps them as query engine tools compatible with any LlamaIndex agent.

05

Can I combine MCP tools with vector stores?

Yes. LlamaIndex agents can query Supabase Vector tools and vector store indexes in the same turn, combining real-time and embedded data for grounded responses.

06

Does LlamaIndex support async MCP calls?

Yes. LlamaIndex's async agent framework supports concurrent MCP tool calls for high-throughput data processing pipelines.

07

BasicMCPClient not found

Install: pip install llama-index-tools-mcp

Explore More MCP Servers

View all →