Canvas MCP Server

Canvas MCP Server

Connects Claude to the Canvas LMS REST API, enabling natural language queries about courses, assignments, grades, deadlines, and announcements.

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Canvas MCP Server

An MCP server, built with FastMCP, that connects Claude to the Canvas LMS REST API. Once configured, you can ask Claude about your courses, assignments, grades, upcoming deadlines and announcements in plain language.

Tools exposed to Claude

Tool Description
get_courses List all active courses you are enrolled in (id, name, course code, enrollment type).
get_assignments(course_id) List all assignments for a course (id, name, due date, points, submission types).
get_assignment_details(course_id, assignment_id) Full details of one assignment, including a plain-text description, unlock and lock dates.
get_grades(course_id) Your current grade/score in a course plus a list of graded submissions.
get_upcoming_events(days_ahead=14) Upcoming assignment due dates and calendar events within the next N days.
get_announcements(course_id) The 10 most recent announcements for a course, as plain text.
get_current_user The authenticated user's id, name and email — handy for verifying your token.
get_modules(course_id) A course's modules and their items (pages, assignments, files, ...).
search_course_content(course_id, search_term) Search a course's assignments and modules for a term.
get_course_details(course_id) One course's details, including the syllabus and term (HTML stripped).
get_submission(course_id, assignment_id) Your submission for one assignment: score, grade, state, late/missing flags and instructor comments.
get_discussion_topics(course_id) A course's discussion topics (excluding announcements), as plain text.
get_discussion_entries(course_id, topic_id) The full threaded posts of a discussion topic, including nested replies, as plain text.
get_overdue_assignments(course_id) Past-due assignments for a course (Canvas "overdue" bucket).
get_rubric(course_id, rubric_id) A rubric's grading criteria and ratings.
get_pages(course_id) List a course's wiki/content pages (title + slug + link).
get_page_content(course_id, page_url) Read a Canvas page's full text (login-gated pages fetched via your token).

get_modules items now also expose external_url (the real external website for external-link items) and page_url (the slug to feed get_page_content), in addition to the Canvas html_url — so module links can actually be opened or read.

All tools are read-only — this server never modifies anything in Canvas.


1. Generate a Canvas API token

You authenticate to Canvas with a personal access token. To create one:

  1. Log in to your institution's Canvas site (for example, https://gatech.instructure.com).
  2. Click Account in the global navigation menu on the far left.
  3. Click Settings.
  4. Scroll down to the Approved Integrations section.
  5. Click the + New Access Token button.
  6. Enter a Purpose (e.g. Claude MCP server). You may leave the Expires field blank for a non-expiring token, or set an expiry date.
  7. Click Generate Token.
  8. Copy the token immediately and store it somewhere safe — Canvas only shows it once. If you lose it you must generate a new one.

Treat this token like a password. Anyone with it can act as you in Canvas. Never commit it to git or share it. This project keeps it in a git-ignored .env file.


2. Setup

Copy or clone these files to a folder on your machine, then from inside that folder:

a. Create your .env

cp .env.example .env

On Windows PowerShell:

Copy-Item .env.example .env

Open .env and fill in your values:

CANVAS_API_TOKEN=1234~your_real_token_here
CANVAS_BASE_URL=https://gatech.instructure.com

Set CANVAS_BASE_URL to your institution's Canvas URL (no trailing /api/v1 — the server appends that for you).

b. Install dependencies

It is recommended to use a virtual environment:

python -m venv .venv
# macOS/Linux:
source .venv/bin/activate
# Windows PowerShell:
.\.venv\Scripts\Activate.ps1

pip install -r requirements.txt

3. Run the server

The server speaks MCP over stdio. You can launch it either way:

fastmcp run canvas_mcp/server.py

or

python -m canvas_mcp.server

If CANVAS_API_TOKEN or CANVAS_BASE_URL is missing, the server raises a clear RuntimeError explaining what to fix.

When run directly, an MCP server waits for a client (such as Claude Desktop) to connect over stdio — so it is normal for it to appear to "hang" with no output. That means it started correctly.


4. Connect it to Claude Desktop (Windows)

Claude Desktop launches the server for you, so you normally do not run the commands above by hand once it is configured.

  1. Open the Claude Desktop config file. On Windows it lives at:

    %APPDATA%\Claude\claude_desktop_config.json
    

    You can paste that path into the Run dialog (Win + R) or open it from Claude Desktop via File → Settings → Developer → Edit Config.

  2. Add a canvas entry under mcpServers. Pass your Canvas credentials directly in an env block — that way Claude Desktop sets them in the server's environment and you do not need a separate .env file. Replace the paths and values with your own:

    {
      "mcpServers": {
        "canvas": {
          "command": "C:\\Users\\YourName\\projects\\canvas-mcp\\.venv\\Scripts\\python.exe",
          "args": [
            "-m",
            "canvas_mcp.server"
          ],
          "cwd": "C:\\Users\\YourName\\projects\\canvas-mcp",
          "env": {
            "CANVAS_BASE_URL": "https://your-school.instructure.com",
            "CANVAS_API_TOKEN": "YOUR_TOKEN_HERE"
          }
        }
      }
    }
    

    Notes:

    • Use double backslashes (\\) in every JSON path on Windows.
    • The env block is the recommended way to supply CANVAS_BASE_URL and CANVAS_API_TOKEN — the server reads them straight from its environment, so a .env file is optional when launched this way.
    • command should be the Python interpreter. Using the project's .venv\\Scripts\\python.exe guarantees the installed dependencies are on the path. Plain "python" also works only if it is on your PATH and has the requirements installed.
    • cwd must point at the project root (the folder that contains the canvas_mcp package) so python -m canvas_mcp.server can import it.
  3. Save the file.


5. Verify it works

  1. Fully quit Claude Desktop (right-click the tray icon → Quit) and reopen it. Config changes are only picked up on a fresh start.

  2. Open a new chat. Click the tools/plug icon in the message box — you should see canvas listed with its tools.

  3. Ask something like:

    "Who am I logged in as in Canvas?"

    Claude should call get_current_user and return your name — a quick token check. Then try:

    "What courses am I enrolled in this semester?"

    Claude should call get_courses and respond with your course list.

  4. Follow up with, for example:

    "What assignments are due in the next week?"

    to exercise get_upcoming_events.

Troubleshooting

  • Server not listed / red error in Claude: open Settings → Developer in Claude Desktop and view the MCP logs, or check %APPDATA%\Claude\logs\.
  • RuntimeError: CANVAS_API_TOKEN is not set: the env block is missing from your claude_desktop_config.json (or, if you run it manually, your .env is missing / not in the cwd you configured).
  • HTTP 401 errors in tool output: the token is wrong, expired, or revoked — generate a new one (Section 1).
  • HTTP 404 errors: double-check the course_id and that CANVAS_BASE_URL matches your institution.

Project structure

canvas_mcp/
  __init__.py        # package marker (empty)
  server.py          # FastMCP app + all six tools
requirements.txt     # pinned dependencies
.env.example         # template for your .env (copy to .env)
.env                 # your secrets (git-ignored, never committed)
README.md            # this file

License

Provided as-is for personal/educational use. You are responsible for complying with your institution's Canvas API usage policies.

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