Open Multi-Agent Canvas

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Open Multi-Agent Canvas integrates multiple AI agents into a single, interactive interface, supporting dynamic multi-agent conversations and deep research through configurable MCP servers and seamless agent management.
Added on:
Created by:
Apr 17 2025
Open Multi-Agent Canvas

Open Multi-Agent Canvas

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0
Open Multi-Agent Canvas
Open Multi-Agent Canvas integrates multiple AI agents into a single, interactive interface, supporting dynamic multi-agent conversations and deep research through configurable MCP servers and seamless agent management.
Added on:
Created by:
Apr 17 2025
CopilotKit
Featured

What is Open Multi-Agent Canvas?

This platform provides a multi-agent chat environment built with Next.js, LangGraph, and CopilotKit. It allows users to manage various AI agents in one conversation, suitable for travel planning, research, and task automation. Users can connect to MCP servers via different protocols, including local commands and external servers, to facilitate complex multi-agent workflows, deep research, and collaborative AI tasks. Designed for developers, researchers, and advanced users, it offers a flexible setup for deploying and interacting with multiple AI agents in a unified environment.

Who will use Open Multi-Agent Canvas?

  • Developers
  • Researchers
  • AI Enthusiasts
  • Task Automation Users

How to use the Open Multi-Agent Canvas?

  • Step1: Access the platform via the provided URL
  • Step2: Configure MCP servers in the interface
  • Step3: Add or manage AI agents within the environment
  • Step4: Interact with multiple agents through dynamic conversations
  • Step5: Use MCP servers for deep research or task execution

Open Multi-Agent Canvas's Core Features & Benefits

The Core Features
  • Manage multiple AI agents
  • Connect to various MCP servers
  • Support for local and external MCP protocols
  • Dynamic multi-agent conversation interface
  • Agent deployment and configuration
The Benefits
  • Facilitates complex multi-agent workflows
  • Supports seamless integration with external MCP servers
  • Enhances research and automation capabilities
  • User-friendly interface for managing multiple agents

Open Multi-Agent Canvas's Main Use Cases & Applications

  • Multi-agent research projects
  • Travel planning with AI agents
  • Collaborative AI task automation
  • Deep research with MCP server integration

FAQs of Open Multi-Agent Canvas

Developer

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