Vinkius
Langflow Multi-agent

Supercharge your AI with Langflow Multi-agent. Run, audit, and manage complex agent workflows via chat.

Claude Claude
ChatGPT ChatGPT
Cursor Cursor
Gemini Gemini
Windsurf Windsurf
VS Code VS Code
JetBrains JetBrains
Vercel Vercel
See Vinkius in Action

Works with every AI agent you already use

…and any MCP-compatible client

Langflow (Visual Multi-agent Orchestrator) MCP on Cursor AI Code Editor MCP Client Langflow (Visual Multi-agent Orchestrator) MCP on Claude Desktop App MCP Integration Langflow (Visual Multi-agent Orchestrator) MCP on OpenAI Agents SDK MCP Compatible Langflow (Visual Multi-agent Orchestrator) MCP on Visual Studio Code MCP Extension Client Langflow (Visual Multi-agent Orchestrator) MCP on GitHub Copilot AI Agent MCP Integration Langflow (Visual Multi-agent Orchestrator) MCP on Google Gemini AI MCP Integration Langflow (Visual Multi-agent Orchestrator) MCP on Lovable AI Development MCP Client Langflow (Visual Multi-agent Orchestrator) MCP on Mistral AI Agents MCP Compatible Langflow (Visual Multi-agent Orchestrator) MCP on Amazon AWS Bedrock MCP Support

Connect to your AI in seconds.

Langflow MCP lets your agent run complex AI workflows through natural conversation. You can manage entire projects, list all defined flows, execute specific multi-step chains, and trigger external webhooks—all from a single chat interface.

What your AI can do

Create flow

Creates a brand new AI flow definition within Langflow.

Create project

Establishes a new container folder for organizing related projects.

Create response

Simulates an OpenAI-compatible response endpoint using a specific flow ID as the model.

+ 21 more capabilities included
Run Defined Workflows

Execute entire multi-step AI processes using either text or conversational input.

Manage Project Folders

Create, read, and delete project folders to keep related agent workflows organized.

Audit Agent Flows

List all available flows or retrieve specific flow definitions by ID.

Monitor Execution State

Retrieve historical chat messages, execution traces, and component interaction logs for debugging.

Trigger External Events

Initiate a workflow run in response to an external system event via webhooks.

Compatible AI Apps

OAuth 2.0 Compatible
Vinkius runs on Claude Claude
Vinkius runs on ChatGPT ChatGPT
Vinkius runs on Cursor Cursor
Vinkius runs on Gemini Gemini
Vinkius runs on VS Code VS Code
Vinkius runs on JetBrains JetBrains
Vinkius runs on Vercel Vercel
Vinkius runs on Zendesk Zendesk
+ any other MCP app
Included with Plan

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AI Agent

Langflow (Visual Multi-agent Orchestrator) MCP Tools (24)

These tools give you granular control to build, test, and deploy every aspect of your multi-agent AI workflow, from project setup to final execution.

Make your AI actually useful.

Add this MCP to Claude, Cursor, or Windsurf and your AI stops guessing. It gets real tools to look things up, take action, and handle the stuff you keep doing by hand.

Start using Langflow (Visual Multi-agent Orchestrator) on Vinkius

Create Flow

Creates a brand new AI flow definition within Langflow.

Create Project

Establishes a new container folder for organizing related projects.

Create Response

Simulates an OpenAI-compatible response endpoint using a specific flow ID as the...

Delete File V2

Removes a user file from the system storage.

Delete Flow

Deletes an existing AI flow definition entirely.

Delete Project

Wipes out all contents and definitions within a project folder.

Get File V2

Downloads the content of a specified user file.

Get Flow

Retrieves the full configuration details for one specific flow using its ID.

Get Logs

Fetches recent system logs related to workflow execution.

Get Monitor Messages

Retrieves the complete chat history from a specific monitor session.

Get Monitor Traces

Pulls detailed execution paths and span trees for debugging failures.

Get Monitor Transactions

Retrieves logs detailing how different components interacted during a run.

Get Project

Gets the current details and metadata for a designated project folder.

List Files V1

Lists files associated with a specific flow ID (version 1).

List Files V2

Lists all user-uploaded files in the system storage (version 2).

List Flows

Retrieves a list of every flow definition currently stored.

List Projects

Displays all active project folders and their IDs.

List Users

Lists details for all authenticated users in the system (requires superuser access).

Run Flow

Executes a defined AI flow using either plain text or conversational input.

Run Workflow

Runs a complex, long-running background workflow job (version 2 API).

Trigger Webhook

Starts a flow run by simulating an external system webhook call.

Update Flow

Modifies the parameters or configuration of an existing AI flow definition.

Update Project

Updates metadata or descriptive information for a project folder.

Whoami

Returns the profile and details of the currently authenticated user.

Connect to your AI in seconds. Security and governance baked right in.

Pick your AI client below to get set up. Just create a Vinkius account, subscribe, and you're instantly up and running. We handle the entire backend infrastructure, delivering out-of-the-box support for HTTPS Streamable, SSE, and OAuth2—zero messy routing required.

Claude AI

Claude AI

1

Open Claude Settings

Go to claude.ai, click your profile icon, then navigate to Customize → Connectors.

2

Add Custom Connector

Click the "+" button and select Add custom connector. Paste your Vinkius endpoint URL:

https://edge.vinkius.com/[YOUR_TOKEN_HERE]/mcp

Replace [YOUR_TOKEN_HERE] with your token from cloud.vinkius.com. For OAuth-protected servers, expand Advanced settings to add credentials.

3

Start a conversation

Open a new chat. The Langflow Multi-agent integration is available immediately — no restart needed.

Choose How to Get Started

Build a custom MCP for your own tools, or connect a ready-made integration from our catalog.

Build Your Own

Turn any API into an MCP. Import a spec, define Agent Skills, or deploy with MCPFusion.

  • Import from OpenAPI, Swagger, or YAML specs
  • Create Agent Skills with progressive disclosure
  • Deploy to edge with MCPFusion framework
  • Built in DLP, auth, and compliance on every call
  • Real time usage dashboard and cost metering
  • Publish to catalog or keep private
Start building

Make Your AI Do More

Start with Langflow (Visual Multi-agent Orchestrator), then connect any of our 5,000+ other servers whenever your AI needs more. One click, no limits.

  • Use this MCP plus 5,000+ others, all in one place
  • Add new capabilities to your AI anytime you want
  • Every connection is secured and compliant automatically
  • Track usage and costs across all your servers
  • Works with Claude, ChatGPT, Cursor, and more
  • New servers added to the catalog every week
Langflow Multi-agent MCP server cover

Independent Platform Disclaimer: Vinkius is an independent platform and is not affiliated with, endorsed by, sponsored by, verified by, or otherwise authorized by Langflow. All third-party trademarks, logos, and brand names are the property of their respective owners. Their use on this website is strictly for informational purposes to identify service compatibility and interoperability.

VINKIUS INFRASTRUCTURE

Cloud Hosted

Managed infra

V8 Isolated

Sandboxed per request

Zero-Trust Proxy

No stored credentials

DLP Enforced

Policy on every call

GDPR Compliant

EU data residency

Token Compression

~60% cost reduction

Your data is protected. See how we built it.

Works with Claude, ChatGPT, Cursor, and more

The Model Context Protocol standardizes how applications expose capabilities to LLMs. Instead of operating in isolation, your AI gains direct access to external platforms, live data, and real-world actions through secure, standardized connections.

This connection provides 24 powerful capabilities that interface natively with Claude, ChatGPT, Cursor, and other compatible AI platforms. No middleware. No custom integration required.

Managing AI Agents Used to Mean Jumping Between Dashboards.

Today, running a sophisticated agent workflow is a multi-step process. You build the flow in one UI, run it in another, check the logs in a third dashboard, and if something breaks, you have to switch back to an editor just to read the error message. It's constant context switching and copy-pasting IDs.

With this MCP, you talk to your agent about the workflow. You simply tell it what needs doing—like 'Run the Market Analyzer flow.' The entire process, from execution to retrieving logs (`get_logs`), happens right here. That’s a massive time saver.

Controlling Your Entire Agent Ecosystem with Langflow MCP

You instantly gain control over the agent's entire lifecycle. You can list all flows using `list_flows`, create new project boundaries with `create_project`, and even update old definitions via `update_flow`—all in natural language commands.

The biggest change is that you treat your entire AI environment as a single, addressable system. It's not just about running code; it's about managing the structure, monitoring the state, and controlling every part of it from one place.

What your AI can actually do with this

Running sophisticated, multi-agent systems used to mean jumping between dashboards or writing wrapper scripts just to test a simple change. Now you don't have to. This MCP connects your AI client directly to your Langflow instance, giving you full operational control over complex agent workflows via conversation. Need to check the logs after a run? Just ask.

Want to update the logic for an old flow or create a new project folder? You can do it by talking to your agent. It’s essentially wrapping up all your workflow management into one conversational endpoint, making deep agentic work accessible right where you're already working. If you use Vinkius, this MCP gives you instant access to managing and running these complex AI pipelines without ever leaving your chat window.

Built · Hosted · Managed by Vinkius Langflow Multi-agent Orchestrator - Manage AI Workflows
Server ID 019e5d2c-4b66-705b-b911-ba3f5ffaaf1d
Vinkius Inspector
Compliance Grade F
Score 15.83/100
Vinkius Inspector Badge — Score 15.83/100

Questions you might have

How do I see what flows are available using list_flows? +

Use list_flows to retrieve a directory of all defined agent pipelines. This command gives you the IDs and names, so you know exactly which flow you need to execute.

What is the difference between run_flow and run_workflow? +

run_flow handles typical, contained chat-based agent interactions. run_workflow is for running complex, long-running background jobs that need to complete regardless of your current connection.

Can I check the history using get_monitor_messages? +

Yes. You use get_monitor_messages to pull the full chat transcript from a specific session. This is essential for reviewing what the agent actually told you during its run.

How do I start an external process? +

You trigger external events using trigger_webhook. You just need to provide the webhook ID, and the MCP simulates receiving that event, kicking off a flow immediately.

I'm organizing many agents. How do I use `list_projects` and `create_project` to keep my workflows separate? +

Use this MCP to containerize your agent work into projects. First, call list_projects to see existing containers. Then, run create_project when you need a new folder for related flows or experiments.

I ran a complex flow and it failed. How do I use `get_monitor_traces` to find the exact error? +

The traces give you the full execution path, which is critical for debugging. Call get_monitor_traces to retrieve component interactions and span trees, showing exactly where and why the agent logic broke.

I need to download a user's data file linked to an agent flow. Should I use `list_files_v2` or `get_file_v2`? +

Start by calling list_files_v2 to see all available files for a specific flow ID. Once you have the correct file ID, run get_file_v2 to actually download and retrieve the content.

Before I delete or update anything, how do I verify my user identity using `whoami`? +

Use whoami to confirm your current authenticated credentials. This is key for verifying permissions before running sensitive actions like deleting a flow or modifying project metadata.

Can I run a flow using its name instead of a long UUID? +

Yes! The run_flow tool accepts either the Flow ID or the Flow Name in the flow_id parameter, making it easy to trigger specific logic by name.

How do I see all the available projects and folders in my Langflow instance? +

Use the list_projects tool. It will return a list of all projects (folders) which help organize your flows and components.

Is it possible to trigger a flow from an external webhook payload? +

Absolutely. Use the trigger_webhook tool by providing the flow_id and the data JSON payload you want to send to the flow's entry point.

Built & Managed by Vinkius 30s setup 24 tools

We've already built the connector for Langflow Multi-agent. Just plug in your AI agents and start using Vinkius.

No hosting. No infrastructure. No complex setup.
All 24 tools are live and waiting. You're up and running in seconds.

Vinkius runs on Claude Claude
Vinkius runs on ChatGPT ChatGPT
Vinkius runs on Cursor Cursor
Vinkius runs on Gemini Gemini
Vinkius runs on Windsurf Windsurf
Vinkius runs on VS Code VS Code
Vinkius runs on JetBrains JetBrains
Vinkius runs on Vercel Vercel
+ other MCP clients

Vinkius gives your AI agents access to the full catalog of app connectors, all fully managed, secure, and enterprise-ready. One subscription, every tool you need.

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