TickTick MCP for managing your To-Do using AI
- • Basic MCP protocol features implemented (14/40)
- • Room for improvement in GitHub community
- • Moderate dependency usage (12/20)
- • Room for improvement in deployment maturity
- • Documentation (8/8)
- • Archestra MCP Trust score badge is missing
{
"ticktick-mcp": {
"command": "python",
"args": [
"main.py"
],
"env": {}
}
}TickTick MCP
A Model Context Protocol (MCP) server that provides tools for integrating TickTick task management tools. Using Python and the MCP SDK.
Overview
This repository contains a Model Context Protocol (MCP) server implementation for TickTick. It provides a standardized way for AI assistants and applications to interact with TickTick's task management functionality, allowing operations like:
- Retrieving projects and tasks
- Creating new projects and tasks
- Updating task details
- Completing and deleting tasks
With this MCP, AI systems can act as task masters to help manage your to-do lists and tasks in TickTick with natural language.
Requirements
- Python 3.8+
- TickTick account
- TickTick API key (via OAuth) # COMMENT: I will add a tool to generate an API key from the TickTick developer portal
Installation
-
Clone this repository
git clone https://github.com/ekkyarmandi/ticktick-mcp.git cd ticktick-mcp -
Install dependencies
pip install -r requirements.txt
Obtaining a TickTick API Key
This MCP uses TickTick's OpenAPI scheme, which requires registering an app through TickTick's developer portal:
- Go to the TickTick Developer Documentation
- Click on
Manage Appsin the top right corner and login with your TickTick credentials - Register a new app by clicking the
+App Namebutton - Enter a name for your app (only required field)
- Once created, you'll be able to see your
Client IDandClient Secret - For the
OAuth Redirect URL, enter a URL where you'll be redirected after authorization (e.g.,http://127.0.0.1:8080)
Authorizing Your App
After registering your app, use the ticktick-py library to get your access token:
from ticktick.oauth2 import OAuth2
# Replace with your details from the developer portal
client_id = "YOUR_CLIENT_ID"
client_secret = "YOUR_CLIENT_SECRET"
redirect_uri = "YOUR_REDIRECT_URI" # e.g., http://127.0.0.1:8080
auth_client = OAuth2(client_id=client_id,
client_secret=client_secret,
redirect_uri=redirect_uri)
# This will open a web browser for authorization
# Follow the instructions in the terminal to authorize
auth_client.get_access_token()
After authorizing, the access token will be saved to a .token-oauth file by default. You can extract the token from this file or use:
print(auth_client.token_info["access_token"])
Configuration
- Create a
.envfile in the root directory with your TickTick API key:TICKTICK_API_KEY=your_access_token_here
Usage
Run the MCP server:
python main.py
This will start the MCP server on port 8000. You can now connect to it using any MCP client.
Available Tools
The server provides the following tools:
get_projects: Get a list of all projectsproject_details: Get details of a specific projectget_task_details: Get details of a specific taskcreate_project: Create a new projectcreate_task: Create a new task in a projectupdate_task: Update an existing taskcomplete_task: Mark a task as completedelete_task: Delete a task
Example Interactions
Once your MCP server is running, AI systems can help manage your tasks with natural language commands like:
- "Show me all my projects"
- "Create a new project called 'Home Renovation'"
- "Add a task to buy groceries tomorrow"
- "Mark my 'Pay bills' task as complete"
- "What tasks do I have due this week?"
- "Delete the task about the canceled meeting"
Using with MCP Clients
This server can be used with any MCP-compatible client, such as:
- Claude Desktop
- Cursor IDE
- Custom AI applications using MCP SDKs
Development
To extend or modify this MCP server:
- Add new tools in
tools.py - Register them in
main.pyusingmcp.add_tool()
License
MIT
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
[](https://archestra.ai/mcp-catalog/ekkyarmandi__ticktick-mcp)TickTick MCP
A Model Context Protocol (MCP) server that provides tools for integrating TickTick task management tools. Using Python and the MCP SDK.
Overview
This repository contains a Model Context Protocol (MCP) server implementation for TickTick. It provides a standardized way for AI assistants and applications to interact with TickTick's task management functionality, allowing operations like:
- Retrieving projects and tasks
- Creating new projects and tasks
- Updating task details
- Completing and deleting tasks
With this MCP, AI systems can act as task masters to help manage your to-do lists and tasks in TickTick with natural language.
Requirements
- Python 3.8+
- TickTick account
- TickTick API key (via OAuth) # COMMENT: I will add a tool to generate an API key from the TickTick developer portal
Installation
-
Clone this repository
git clone https://github.com/ekkyarmandi/ticktick-mcp.git cd ticktick-mcp -
Install dependencies
pip install -r requirements.txt
Obtaining a TickTick API Key
This MCP uses TickTick's OpenAPI scheme, which requires registering an app through TickTick's developer portal:
- Go to the TickTick Developer Documentation
- Click on
Manage Appsin the top right corner and login with your TickTick credentials - Register a new app by clicking the
+App Namebutton - Enter a name for your app (only required field)
- Once created, you'll be able to see your
Client IDandClient Secret - For the
OAuth Redirect URL, enter a URL where you'll be redirected after authorization (e.g.,http://127.0.0.1:8080)
Authorizing Your App
After registering your app, use the ticktick-py library to get your access token:
from ticktick.oauth2 import OAuth2
# Replace with your details from the developer portal
client_id = "YOUR_CLIENT_ID"
client_secret = "YOUR_CLIENT_SECRET"
redirect_uri = "YOUR_REDIRECT_URI" # e.g., http://127.0.0.1:8080
auth_client = OAuth2(client_id=client_id,
client_secret=client_secret,
redirect_uri=redirect_uri)
# This will open a web browser for authorization
# Follow the instructions in the terminal to authorize
auth_client.get_access_token()
After authorizing, the access token will be saved to a .token-oauth file by default. You can extract the token from this file or use:
print(auth_client.token_info["access_token"])
Configuration
- Create a
.envfile in the root directory with your TickTick API key:TICKTICK_API_KEY=your_access_token_here
Usage
Run the MCP server:
python main.py
This will start the MCP server on port 8000. You can now connect to it using any MCP client.
Available Tools
The server provides the following tools:
get_projects: Get a list of all projectsproject_details: Get details of a specific projectget_task_details: Get details of a specific taskcreate_project: Create a new projectcreate_task: Create a new task in a projectupdate_task: Update an existing taskcomplete_task: Mark a task as completedelete_task: Delete a task
Example Interactions
Once your MCP server is running, AI systems can help manage your tasks with natural language commands like:
- "Show me all my projects"
- "Create a new project called 'Home Renovation'"
- "Add a task to buy groceries tomorrow"
- "Mark my 'Pay bills' task as complete"
- "What tasks do I have due this week?"
- "Delete the task about the canceled meeting"
Using with MCP Clients
This server can be used with any MCP-compatible client, such as:
- Claude Desktop
- Cursor IDE
- Custom AI applications using MCP SDKs
Development
To extend or modify this MCP server:
- Add new tools in
tools.py - Register them in
main.pyusingmcp.add_tool()
License
MIT
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
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