reMarkable MCP Server
Unlock the full potential of your reMarkable tablet as a second brain for AI assistants. This MCP server lets Claude, VS Code Copilot, and other AI tools read, search, and traverse your entire reMarkable library — including handwritten notes via OCR.
Why rm-mcp?
Your reMarkable tablet is a powerful tool for thinking, note-taking, and research. But that knowledge stays trapped on the device. This MCP server changes that:
- Full library access — Browse folders, search documents, read any file
- Typed text extraction — Native support for Type Folio and typed annotations
- Handwriting OCR — Convert handwritten notes to searchable text
- PDF & EPUB support — Extract text from documents, plus your annotations
- Smart search — Find content across your entire library
- Second brain integration — Use with Obsidian, note-taking apps, or any AI workflow
Whether you're researching, writing, or developing ideas, rm-mcp lets you leverage everything on your reMarkable through AI.
Quick Install
Uses the reMarkable Cloud API. Requires a reMarkable Connect subscription.
One-command setup (recommended)
uvx rm-mcp --setup
This opens your browser, prompts for the one-time code, and prints the ready-to-paste config for Claude Code and Claude Desktop.
Manual setup
1. Get a One-Time Code
Go to my.remarkable.com/device/browser/connect and generate a code.
2. Convert to Token
uvx rm-mcp --register YOUR_CODE
3. Add to your MCP client
Claude Code:
claude mcp add remarkable \
-e REMARKABLE_TOKEN='<paste token from step 2>' \
-e REMARKABLE_OCR_BACKEND=sampling \
-- uvx rm-mcp@latest
Claude Desktop — add to claude_desktop_config.json (use full path to uvx, e.g. from which uvx):
{
"mcpServers": {
"remarkable": {
"command": "/Users/YOU/.local/bin/uvx",
"args": ["rm-mcp@latest"],
"env": {
"REMARKABLE_TOKEN": "<paste token from step 2>"
}
}
}
}
Tools
| Tool | Description |
|---|---|
remarkable_read | Read and extract text from documents (with pagination and search) |
remarkable_browse | Navigate folders in your library |
remarkable_search | Search content across multiple documents |
remarkable_recent | Get recently modified documents |
remarkable_status | Check connection status |
remarkable_image | Get PNG/SVG images of pages (supports OCR via sampling) |
All tools are read-only and return structured JSON with hints for next actions.
Smart Features
- Multi-page read — Read all pages at once with
pages="all", or a range likepages="1-3" - Grep auto-redirect —
grepautomatically finds and jumps to the matching page - Auto-redirect — Browsing a document path returns its content automatically
- Auto-OCR — Notebooks with no typed text automatically enable OCR (opt out with
auto_ocr=False) - Full-text search — Reading a document indexes it for fast future searches
- Compact mode — Use
compact_output=Trueto reduce token usage in responses - Batch search — Search across multiple documents in one call
- Vision support — Get page images for visual context (diagrams, mockups, sketches)
- Sampling OCR — Use client's AI for OCR on images (no API key needed)
Example Usage
# Read a document
remarkable_read("Meeting Notes")
# Read all pages at once
remarkable_read("Meeting Notes", pages="all")
# Read a range of pages
remarkable_read("Research Paper", pages="1-3")
# Search for keywords (auto-redirects to matching page)
remarkable_read("Project Plan", grep="deadline")
# Enable OCR for handwritten notes
remarkable_read("Journal", include_ocr=True)
# Browse your library
remarkable_browse("/Work/Projects")
# Search across documents
remarkable_search("meeting", grep="action items")
# Get recent documents with previews
remarkable_recent(limit=5, include_preview=True)
# Get a page image
remarkable_image("UI Mockup", page=1)
# Get image with OCR text extraction
remarkable_image("Handwritten Notes", include_ocr=True)
Resources
Documents are automatically registered as MCP resources:
| URI Scheme | Description |
|---|---|
remarkable:///{path}.txt | Extracted text content |
remarkableimg:///{path}.page-{N}.png | PNG image of page N (notebooks only) |
remarkablesvg:///{path}.page-{N}.svg | SVG vector image of page N (notebooks only) |
📖 Full Resources Documentation
OCR for Handwriting
rm-mcp uses sampling OCR — your MCP client's AI model extracts text from handwritten notes. No additional API keys or services needed.
How It Works
When you use include_ocr=True, rm-mcp sends page images to your client's LLM (Claude, GPT-4, etc.) via MCP sampling. The model reads the handwriting and returns the text.
Usage
# OCR on a page image
remarkable_image("Handwritten Notes", include_ocr=True)
# OCR when reading a notebook
remarkable_read("Journal", include_ocr=True)
Requirements
- Your MCP client must support the sampling capability (VS Code + Copilot, Claude Desktop, etc.)
REMARKABLE_OCR_BACKEND=sampling(this is the default)
Advanced Configuration
Root Path Filtering
Limit the MCP server to a specific folder on your reMarkable. All operations will be scoped to this folder:
{
"servers": {
"remarkable": {
"command": "uvx",
"args": ["rm-mcp"],
"env": {
"REMARKABLE_TOKEN": "your-token",
"REMARKABLE_ROOT_PATH": "/Work"
}
}
}
}
With this configuration:
remarkable_browse("/")shows contents of/Workremarkable_browse("/Projects")shows/Work/Projects- Documents outside
/Workare not accessible
Useful for:
- Focusing on work documents during office hours
- Separating personal and professional notes
- Limiting scope for specific AI workflows
Custom Background Color
Set the default background color for image rendering:
{
"servers": {
"remarkable": {
"command": "uvx",
"args": ["rm-mcp"],
"env": {
"REMARKABLE_TOKEN": "your-token",
"REMARKABLE_BACKGROUND_COLOR": "#FFFFFF"
}
}
}
}
Supported formats:
#RRGGBB— RGB hex (e.g.,#FFFFFFfor white)#RRGGBBAA— RGBA hex (e.g.,#00000000for transparent)
Default is #FBFBFB (reMarkable paper color). This affects both the remarkable_image tool and image resources.
All Environment Variables
| Variable | Default | Description |
|---|---|---|
REMARKABLE_TOKEN | (required) | Auth token from uvx rm-mcp --setup |
REMARKABLE_ROOT_PATH | / | Limit access to a specific folder |
REMARKABLE_OCR_BACKEND | sampling | OCR backend (sampling) |
REMARKABLE_BACKGROUND_COLOR | #FBFBFB | Background color for rendered images (#RRGGBB or #RRGGBBAA) |
REMARKABLE_CACHE_TTL | 60 | Collection cache TTL in seconds |
REMARKABLE_COMPACT | (off) | Set to 1 or true to omit hints from responses globally |
REMARKABLE_MAX_OUTPUT_CHARS | 50000 | Maximum characters in tool responses |
REMARKABLE_PAGE_SIZE | 8000 | PDF/EPUB page size in characters |
REMARKABLE_PARALLEL_WORKERS | 5 | Parallel workers for metadata fetching |
REMARKABLE_INDEX_PATH | ~/.cache/rm-mcp/index.db | SQLite full-text search index location |
REMARKABLE_INDEX_REBUILD | (off) | Set to 1 to force index rebuild on startup |
Most users only need REMARKABLE_TOKEN. The rest are for advanced tuning.
Use Cases
Research & Writing
Use rm-mcp while working in an Obsidian vault or similar to transfer knowledge from your handwritten notes into structured documents. AI can read your research notes and help develop your ideas.
Daily Review
Ask your AI assistant to summarize your recent notes, find action items, or identify patterns across your journal entries.
Document Search
Find that half-remembered note by searching across your entire library — including handwritten content.
Knowledge Management
Treat your reMarkable as a second brain that AI can access. Combined with tools like Obsidian, you can build a powerful personal knowledge system.
Documentation
| Guide | Description |
|---|---|
| Tools Reference | Detailed tool documentation |
| Resources Reference | MCP resources documentation |
| Capability Negotiation | MCP protocol capabilities |
| Development | Contributing and development setup |
| Future Plans | Roadmap and planned features |
Development
git clone https://github.com/wavyrai/rm-mcp.git
cd rm-mcp
uv sync --all-extras
uv run pytest test_server.py -v
License
MIT
Built with rmscene, PyMuPDF, and inspiration from ddvk/rmapi.