mcp-roam
Enables AI agents to semantically search, retrieve, and augment an org-roam knowledge graph via MCP, with features like vector-based search, YouTube ingestion, and local LLM processing.
README
mcp-roam
An MCP server that gives AI agents a semantic brain over an org-roam knowledge graph.
mcp-roam bridges any Model Context Protocol client (OpenCode, Claude, etc.) to an org-roam Zettelkasten. Beyond plain graph traversal, it embeds the entire graph inside the existing org-roam SQLite database so an agent can search your notes by meaning — and ingest new knowledge directly from YouTube transcripts or research papers.
Why
org-roam is a powerful plain-text knowledge graph, but its search is keyword-only and it lives inside Emacs. mcp-roam turns it into a queryable semantic memory that any AI agent can read, extend, and reason over — without leaving the editor or chat. It is a worked example of:
- Turning a personal tool into an MCP-native, agent-accessible service.
- Embedding a vector store inside an existing SQLite database (no separate vector DB to run).
- A local, private RAG pipeline — embeddings, reranking, and LLM summarization all run on-device via Ollama.
Features
- Graph operations — search, backlinks, forward-links, N-degree subgraphs, tags, recent notes, daily notes.
- Capture & authoring — create notes, append to them, and dump structured research notes (paper metadata + findings).
- Semantic search — search by meaning, not keywords. Two-stage retrieval (vector KNN → cross-encoder rerank).
- Claim extraction — decompose dense notes (lectures, papers) into atomic, self-contained, embeddable claims.
- LLM summarization — map-reduce summaries for long notes via a local model.
- YouTube ingestion — transcribe hour-long videos into searchable notes asynchronously, then index them.
- Privacy-first — all AI runs locally (Ollama); your notes never leave the machine.
Architecture
┌──────────────┐ MCP / stdio ┌────────────────────────┐
│ MCP client │◄────────────────────►│ mcp-roam │
│ (AI agent) │ │ (FastMCP, Python) │
└──────────────┘ └───────────┬────────────┘
│
┌─────────────────────┼──────────────────────┐
│ sqlite3 (RO graph) │ sqlite-vec (RW vec) │ pathlib (RW files)
▼ ▼ ▼
┌──────────────────────────────────────────┐ ┌──────────┐
│ org-roam SQLite DB │ │ *.org │
│ nodes · links · tags · files · aliases │ │ files │
│ embed_vec · embed_units │ └──────────┘
└──────────────────────────────────────────┘
Local services (optional, for AI features): External (optional):
┌──────────────────────┐ ┌──────────────────────┐ ┌──────────────────┐
│ Ollama │ │ yt-service │ │ scite.ai │
│ embeddings · LLM · │ │ (YouTube → text) │ │ (research, │
│ reranker │ │ │ │ via its MCP) │
└──────────────────────┘ └──────────────────────┘ └──────────────────┘
Key boundary: the org-roam graph tables are opened read-only (Emacs owns them); only the embed_* tables and .org files are written by this server.
Semantic search: a vector store inside org-roam
The standout design choice is co-location. Rather than spinning up a separate vector database (Chroma, Qdrant, etc.), mcp-roam stores embeddings in two tables appended to the same SQLite database org-roam already uses:
CREATE VIRTUAL TABLE embed_vec USING vec0(embedding float[1024]); -- sqlite-vec
CREATE TABLE embed_units(...); -- metadata: node, heading path, unit type, text
Benefits: zero new infrastructure, atomic backups (one file = graph + vectors), and embed_-prefixed tables are untouched by org-roam's own clear operations.
The pipeline:
- Org-aware segmentation —
segmenter.pysplits a note into semantic units by heading structure (not naive character chunks). It classifies each unit (summary,concept,heading,claim), skips noise (properties drawers, raw transcripts), and merges tiny siblings so "Key Concepts" sections don't explode into hundreds of vectors. - Embedding — each unit is vectorized by Ollama (
snowflake-arctic-embed2, 1024-dim) and stored via sqlite-vec. A content hash avoids re-embedding unchanged notes. - Two-stage retrieval —
roam_semantic_searchruns sqlite-vec KNN for fast candidates, then a cross-encoder reranker (Qwen3-Reranker-4B) scores each candidate against the query via yes/no logprobs, reordering by true relevance.
This makes notes discoverable by the idea they express, even when the exact words differ.
Tool reference
mcp-roam exposes 18 tools and 3 prompts.
| Tool | Description |
|---|---|
roam_search |
Keyword search by title / alias / tag |
roam_get_node |
Full node content by ID or title |
roam_backlinks |
Nodes linking to a node |
roam_context |
Rich context: content + backlinks + forward links + tags |
roam_subgraph |
N-degree neighborhood around a node |
roam_tags |
List tags, or nodes for a given tag |
roam_recent |
Recently modified notes |
roam_daily |
Get/create a daily note by date |
roam_capture |
Create a new note |
roam_append |
Append to an existing note (under a heading) |
roam_research_dump |
Structured research note (paper/web → graph) |
roam_index |
Embed one or all notes for semantic search |
roam_semantic_search |
Meaning-based search with reranking |
roam_extract_claims |
Decompose a note into atomic embeddable claims |
roam_enhance |
LLM-generated summary (map-reduce for long notes) |
roam_index_stats |
Embedding index statistics |
roam_youtube_note |
Start async YouTube → note transcription |
roam_youtube_note_status |
Poll a transcription job |
Example 1 — Semantic search over Jordan Peterson lectures
Imagine several Jordan Peterson lecture transcripts in your graph. A note on Personality 13 discusses how the Big Five trait openness predicts political liberalism — but it never uses the phrase "how personality shapes politics."
Keyword search misses it:
roam_search(query="how personality shapes politics")
→ No nodes found matching "how personality shapes politics".
Semantic search finds it by meaning. First index the relevant notes (once):
roam_index(title="Personality 13: Personality and Politics")
→ indexed 6/6 units (type: structural segmentation)
Then query:
roam_semantic_search(query="how personality shapes politics", k=5)
Semantic search: "how personality shapes politics" — 3 notes matched
## Personality 13: Personality and Politics (rerank: 0.97)
> [Key Concepts] People high in openness tend toward liberalism and
> creativity; high conscientiousness correlates with conservatism and
> orderliness. These trait distributions predict political orientation...
ID: 9f3a...
File: 20240312101500-personality_13.org
---
## Big Five and Ideology (rerank: 0.91)
> [Summary] Political belief is substantially heritable and maps onto
> personality dimensions...
---
The reranker surfaced the exact passage an agent needs — without an exact-word match. The agent can now call roam_context to pull the surrounding notes and synthesize an answer.
Example 2 — YouTube transcript → searchable note
Turn a fresh lecture into searchable knowledge in three steps.
1. Start the transcription (non-blocking — it returns immediately, even for hour-long videos):
roam_youtube_note(
url="https://youtu.be/ysQm6pF5nEo",
topic="Jordan Peterson"
)
→ Started transcription job 7c2f1a for https://youtu.be/ysQm6pF5nEo.
Check status with roam_youtube_note_status(job_id="7c2f1a").
2. Poll until done (the agent does this automatically):
roam_youtube_note_status(job_id="7c2f1a")
→ DONE - created roam note: $ROAM_DIR/20240620143022-jordan_peterson_lecture.org
Title: Jordan Peterson — Personality and Politics
Transcript: $ROAM_DIR/transcripts/20240620143022.txt
3. Summarize, index, then query — the new note is now part of the same pipeline:
roam_enhance(title="Jordan Peterson — Personality and Politics")
→ Enhanced summary (map-reduce over 11 chunks)
roam_index(title="Jordan Peterson — Personality and Politics")
→ indexed 8/8 units
roam_semantic_search(query="how personality shapes politics")
→ now also returns passages from this freshly-ingested lecture
From a raw YouTube URL to a semantically-queryable note — no copy-paste, no manual tagging.
Dependencies
mcp-roam is intentionally lean on the Python side and relies on local, private services for AI.
Python (pip / uv) — Python ≥ 3.14
| Package | Role |
|---|---|
mcp[cli] |
MCP SDK + CLI runner (the only framework dep) |
sqlite-vec |
In-DB vector storage and KNN search |
Everything else is stdlib (sqlite3, pathlib, re, uuid, urllib, dataclasses, concurrent.futures).
Local services (optional, enable AI features)
| Service | Role | Models |
|---|---|---|
| Ollama | Embeddings, reranking, LLM | snowflake-arctic-embed2 (embed), Qwen3-Reranker-4B (rerank), granite3.3 (LLM) |
Core graph tools work without Ollama. Semantic search, claims, and enhancement degrade gracefully and report that Ollama is required.
External service (optional)
| Service | Role |
|---|---|
yt-service |
HTTP microservice ($YT_SERVICE_URL) that downloads and transcribes YouTube videos. mcp-roam only calls it over HTTP — no Python dependency added. |
| scite.ai (via its own MCP) | Research literature, used together with roam_research_dump. |
Configuration
All config is via environment variables.
ROAM_DIR=$HOME/roam # org-roam directory (the .org files)
ROAM_DB=$HOME/.emacs.d/org-roam.db # org-roam SQLite database
OLLAMA_HOST=localhost:11434 # Ollama API
OLLAMA_EMBED_MODEL=snowflake-arctic-embed2
OLLAMA_RERANKER_MODEL=awenleven/Qwen3-Reranker-4B:Q4_K_M
OLLAMA_MODEL=granite3.3:latest # for enhance / claim extraction
YT_SERVICE_URL=http://localhost:9000/yt # YouTube transcription service
Run
uv run mcp-roam # starts the MCP server over stdio
Register it with an MCP client, e.g. OpenCode (~/.config/opencode/opencode.json):
{
"mcp": {
"roam": {
"type": "local",
"command": "uv",
"args": ["run", "--directory", "/path/to/roam", "mcp-roam"],
"enabled": true
}
}
}
Project structure
mcp_roam/
├── server.py ← FastMCP entry point + composition root (lifespan DI)
├── _tools.py ← 16 graph/semantic MCP tool definitions
├── youtube.py ← 2 YouTube transcription tools (HTTP, stdlib-only)
├── prompts.py ← 3 MCP prompts (assistant, research, analyze)
├── embeddings.py ← sqlite-vec store + Ollama embed/rerank
├── segmenter.py ← org-aware semantic unit segmentation
├── llm.py ← Ollama LLM: map-reduce summary + claim extraction
├── domain.py ← frozen dataclasses + org parsing (zero deps)
├── interfaces.py ← Protocol definitions (DIP contracts)
├── repo.py ← read-only SQLite repository (org-roam schema)
├── files.py ← atomic file I/O + daily-note paths
├── capture.py ← note creation / append
├── context.py ← graph context + subgraph assembly
└── research.py ← structured research note builder
Design decisions
- SOLID throughout —
interfaces.pydefinesRoamReader/RoamWriter/FileAccessProtocols;repo.pyandfiles.pyimplement them; tools depend only on interfaces. One module = one responsibility. - Dependency injection via FastMCP lifespan — the server hands a
(reader, file_access, embed_repo)tuple to every tool; no globals, trivial to test. - Read-only on the graph, read-write on embeddings — Emacs owns org-roam's tables; we only append our own
embed_*tables. No locking risk, no schema conflicts. - stdlib-first — HTTP, JSON, hashing, concurrency all use the standard library. The only pip deps are the MCP SDK and sqlite-vec.
- Graceful degradation — no Ollama? Graph tools still work. No sqlite-vec? Semantic tools report it clearly instead of crashing.
- Async without threads blocking the event loop — Ollama calls and the rerank fan-out run via
asyncio.to_thread/ThreadPoolExecutor.
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