A minimal Canvas LMS MCP (Machine Conversation Protocol) server for easy access to education data through your Canvas LMS instance. This server provides a bridge between AI systems (like Cursor) and Canvas Learning Management System.
- List planner items (assignments, quizzes, etc.)
- Get and list assignments
- Get and list quizzes
- Get and list courses
- Get course syllabus
- Get course modules
- List files
To install Canvas LMS Server for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @ahnopologetic/canvas-lms-mcp --client claude- Python 3.13+
- Canvas LMS API token
uvpackage manager (recommended)
The easiest way to install and run canvas-lms-mcp is using uvx:
uvx canvas-lms-mcpThis will run the server in an isolated environment without installing it permanently.
To install the tool permanently:
uv tool install canvas-lms-mcp-
Clone the repository:
git clone https://github.com/yourusername/canvas-lms-mcp.git cd canvas-lms-mcp -
Install with uv:
# Install uv if you don't have it yet curl -LsSf https://astral.sh/uv/install.sh | sh # Create a virtual environment and install dependencies uv venv uv pip install -e .
Alternatively, use traditional methods:
python -m venv .venv source .venv/bin/activate # On Windows: .venv\Scripts\activate pip install -e .
Set the following environment variables:
export CANVAS_API_TOKEN="your_canvas_api_token"
export CANVAS_BASE_URL="https://your-institution.instructure.com" # Default: https://canvas.instructure.comYou can get your Canvas API token from your Canvas account settings.
Start the server with uv:
uv run src/canvas_lms_mcp/main.pyIf installed with uvx tool:
canvas-lms-mcpBy default, the server runs on http://localhost:8000. You can use the FastMCP interface at http://localhost:8000/docs to interact with the API.
The server provides the following tools for interacting with Canvas LMS:
List courses that the user is actively enrolled in.
Parameters:
page(optional, default=1): Page number (1-indexed)items_per_page(optional, default=10): Number of items per page
Get a single course by ID.
Parameters:
course_id(required): Course IDinclude(optional): List of additional data to include
Get a course's syllabus.
Parameters:
course_id(required): Course ID
Get modules for a course.
Parameters:
course_id(required): Course IDinclude(optional): List of additional data to include
List assignments for a course.
Parameters:
course_id(required): Course IDbucket(required): Filter assignments by ("past", "overdue", "undated", "ungraded", "unsubmitted", "upcoming", "future")order_by(required): Field to order assignments by ("due_at", "position", "name")page(optional, default=1): Page number (1-indexed)items_per_page(optional, default=10): Number of items per page
Get a single assignment by ID.
Parameters:
course_id(required): Course IDassignment_id(required): Assignment ID
List quizzes for a course.
Parameters:
course_id(required): Course IDinclude(optional): List of additional data to includepage(optional, default=1): Page number (1-indexed)items_per_page(optional, default=10): Number of items per page
Get a single quiz by ID.
Parameters:
course_id(required): Course IDquiz_id(required): Quiz ID
List files for a course or folder.
Parameters:
course_id(optional): Course IDfolder_id(optional): Folder IDinclude(optional): List of additional data to includepage(optional, default=1): Page number (1-indexed)items_per_page(optional, default=10): Number of items per page
List planner items for the authenticated user.
Parameters:
start_date(required): Start date in ISO 8601 formatend_date(required): End date in ISO 8601 formatcontext_codes(optional): List of context codes (e.g., ["course_123"])page(optional, default=1): Page number (1-indexed)items_per_page(optional, default=10): Number of items per page
Cursor is an AI-powered IDE that can interact with the Canvas LMS MCP server to provide education data directly within your development environment.
-
Install the Cursor IDE from https://cursor.sh/
-
Create a
.cursor/mcp.jsonfile in your project directory with the following content:{ "mcpServers": { "canvas": { "command": "uvx", "args": [ "canvas-lms-mcp" ], "env": { "CANVAS_API_TOKEN": "your_canvas_api_token", "CANVAS_BASE_URL": "https://your-institution.instructure.com" } } } }Replace:
your_canvas_api_tokenwith your actual Canvas API tokenyour-institution.instructure.comwith your Canvas institution URL
-
Restart Cursor for the changes to take effect.
You can also integrate a time server for timezone-related queries by adding a "time" server to your mcp.json:
"time": {
"command": "uvx",
"args": [
"mcp-server-time",
"--local-timezone=America/New_York"
]
}This allows you to use time-related functions with your Canvas data.
Once connected, you can ask Cursor AI about your Canvas data:
- "What assignments do I have due next week?"
- "Show me the syllabus for my Biology course"
- "List all my upcoming quizzes"
- "What's on my schedule for tomorrow?"
Example conversation:
YOU: What assignments do I have due soon?
CURSOR: I'll check your upcoming assignments.
Based on your Canvas data, here are your upcoming assignments:
- "Final Project" for CS101 due on December 10, 2023
- "Lab Report #5" for BIOL200 due on December 7, 2023
- "Research Paper" for ENGL301 due on December 15, 2023
For detailed development instructions, please see the DEVELOPMENT.md file.
This project is licensed under the MIT License - see the LICENSE file for details.