🚀 TaskMaster: Todoist MCP for Cursor AI

🚀 TaskMaster: Todoist MCP for Cursor AI

A Model Context Protocol server that enables Cursor AI assistants to interact with Todoist tasks directly from the coding environment, supporting advanced task filtering and rich formatting.

mingolladaniele

Developer Tools
Visit Server

README

🚀 TaskMaster: Todoist MCP for Cursor AI

A Model Context Protocol (MCP) server implementation for Todoist integration, specifically developed for Cursor AI. This server allows Cursor AI assistants to interact with your Todoist tasks directly from your coding environment.

Demo Video

TaskMaster Demo

Features

  • Flexible Task Filtering: Filter tasks using Todoist's powerful filter syntax
    • Filter by due date: today, tomorrow, overdue
    • Filter by priority levels (1-4, where 1 is highest)
    • Filter using complex query combinations
  • Rich Task Formatting: Each task displays priority, due date, and other relevant information with clear icons
  • Cursor AI Integration: Seamlessly use Todoist within your Cursor AI coding environment

Installation

Prerequisites

  • Python 3.10 or higher
  • Poetry (for dependency management)
  • Todoist account and API token

Setup

  1. Clone this repository:
git clone https://github.com/mingolladaniele/todoist-mcp.git
cd todoist-mcp
  1. Install dependencies:
pip install -r requirements.txt
  1. Set your Todoist API token as an environment variable:
# Linux/macOS
export TODOIST_API_TOKEN="your-api-token-here"

# Windows
set TODOIST_API_TOKEN="your-api-token-here"

You can find your Todoist API token in Todoist settings → Integrations → Developer.

Usage

Running the server

python server.py

MCP Tool

The server provides the following MCP tool:

get_tasks_tool

Retrieves tasks with powerful filtering options.

Parameters:

  • filter_string: Advanced Todoist filter query string for complex filtering
  • priority: Optional priority level (1-4, where 1 is highest priority)

Example filter strings:

  • "today" - Tasks due today
  • "overdue" - Overdue tasks
  • "Jan 3" - Tasks due on January 3rd
  • "due before: May 5" - Tasks due before May 5th
  • "due after: May 5" - Tasks due after May 5th
  • "due before: +4 hours" - Tasks due within the next four hours and all overdue tasks
  • "no date" - Tasks with no due date
  • "5 days" or "next 5 days" - Tasks due in the next 5 days
  • "recurring" - Tasks with a recurring date

Setting up with Cursor AI

To use with Cursor AI, create or edit the MCP configuration file:

Windows: C:\Users\<username>\.cursor\mcp.json

{
  "mcpServers": {
    "todoist-mcp": {
      "command": "C:/Users/<username>/path/to/todoist-mcp/.venv/Scripts/python.exe",
      "args": [
        "C:/Users/<username>/path/to/todoist-mcp/server.py"
      ],
      "env": {
        "TODOIST_API_TOKEN": "your-api-token-here"
      }
    }
  }
}

Replace <username> and paths with your actual username and the correct paths to your installation.

Once you do that, go to Cursor Settings → MCP and check that the server is correctly running (green dot).

Project Structure

The codebase is organized into modules:

  • api/: API wrapper for Todoist
  • config/: Configuration and settings
  • utils/: Utility functions and helpers including task formatting

Roadmap

Here are the features planned for future releases:

  • Task Creation: Add new tasks to your Todoist directly from Cursor AI
  • Task Completion: Mark tasks as complete without switching context
  • Task Deletion: Remove tasks that are no longer needed
  • Smart Task Balancing: AI-powered task rebalancing based on:
    • Project priority
    • Time commitments
    • Due dates
    • Current workload
  • Project Management: Create and manage Todoist projects
  • Labels and Filters: Add custom labels and create saved filters

License

MIT License

Recommended Servers

playwright-mcp

playwright-mcp

A Model Context Protocol server that enables LLMs to interact with web pages through structured accessibility snapshots without requiring vision models or screenshots.

Official
Featured
TypeScript
Magic Component Platform (MCP)

Magic Component Platform (MCP)

An AI-powered tool that generates modern UI components from natural language descriptions, integrating with popular IDEs to streamline UI development workflow.

Official
Featured
Local
TypeScript
MCP Package Docs Server

MCP Package Docs Server

Facilitates LLMs to efficiently access and fetch structured documentation for packages in Go, Python, and NPM, enhancing software development with multi-language support and performance optimization.

Featured
Local
TypeScript
Claude Code MCP

Claude Code MCP

An implementation of Claude Code as a Model Context Protocol server that enables using Claude's software engineering capabilities (code generation, editing, reviewing, and file operations) through the standardized MCP interface.

Featured
Local
JavaScript
@kazuph/mcp-taskmanager

@kazuph/mcp-taskmanager

Model Context Protocol server for Task Management. This allows Claude Desktop (or any MCP client) to manage and execute tasks in a queue-based system.

Featured
Local
JavaScript
Linear MCP Server

Linear MCP Server

Enables interaction with Linear's API for managing issues, teams, and projects programmatically through the Model Context Protocol.

Featured
JavaScript
mermaid-mcp-server

mermaid-mcp-server

A Model Context Protocol (MCP) server that converts Mermaid diagrams to PNG images.

Featured
JavaScript
Jira-Context-MCP

Jira-Context-MCP

MCP server to provide Jira Tickets information to AI coding agents like Cursor

Featured
TypeScript
Linear MCP Server

Linear MCP Server

A Model Context Protocol server that integrates with Linear's issue tracking system, allowing LLMs to create, update, search, and comment on Linear issues through natural language interactions.

Featured
JavaScript
Sequential Thinking MCP Server

Sequential Thinking MCP Server

This server facilitates structured problem-solving by breaking down complex issues into sequential steps, supporting revisions, and enabling multiple solution paths through full MCP integration.

Featured
Python