Connectto Linear MCP Server

Seamlessly integrate your CrewAI multi-agent systems with Linear using Klavis AI's comprehensive MCP server connection guide.

Linear icon

Linear

featured

Linear is a modern issue tracking and project management tool designed for high-performance teams to build better software faster

Available Tools:

  • linear_get_teams
  • linear_get_issues
  • linear_get_issue_by_id
  • +9 more tools

Quick Setup Guide

Follow these steps to connect CrewAI to this MCP server

1

Create Your Account

Sign up for KlavisAI to access our MCP server management platform.

2

Configure Agents & Tools

Set up your CrewAI agents with the MCP server tools and configure authentication settings for collaborative workflows.

3

Deploy Your Crew

Test your multi-agent workflows and start using your enhanced collaborative AI capabilities.

CrewAI + KlavisAI Integration Snippets

import os
from crewai import Agent, Task, Crew, Process
from crewai_tools import MCPServerAdapter
from klavis import Klavis
from klavis.types import McpServerName, ConnectionType

# Initialize clients
klavis_client = Klavis(api_key=os.getenv("KLAVIS_API_KEY"))

linear_mcp_instance = klavis_client.mcp_server.create_server_instance(
    server_name=McpServerName.LINEAR,
    user_id="1234",
    platform_name="Klavis",
    connection_type=ConnectionType.STREAMABLE_HTTP,
)

with MCPServerAdapter(linear_mcp_instance.server_params) as mcp_tools:
    # Create a Linear Analysis Agent
    linear_agent = Agent(
        role="Linear Analyst",
        goal="Research and analyze linear to extract comprehensive insights",
        backstory="You are an expert at analyzing linear and creating professional summaries.",
        tools=mcp_tools,
        reasoning=True,
        verbose=False
    )
    
    # Define Task
    analysis_task = Task(
        description=f"Research and analyze linear data. Extract relevant information and create a comprehensive summary with key points and main takeaways.",
        expected_output="Complete analysis with structured summary, key insights, and main takeaways",
        agent=linear_agent,
        markdown=True
    )
    
    # Create and execute the crew
    linear_crew = Crew(
        agents=[linear_agent],
        tasks=[analysis_task],
        verbose=False,
        process=Process.sequential
    )
    
    result = linear_crew.kickoff()

Frequently Asked Questions

Everything you need to know about connecting CrewAI to this MCP server

Ready to Get Started?

Join developers who are already using KlavisAI to power their CrewAI multi-agent systems with this MCP server.

Start For Free