Memex
Personal knowledge base MCP server enabling AI agents to search, read, and add knowledge via tools like kb_search, kb_read, and kb_add, with write operations handled through Cursor Cloud Agents that create formatted entries and open PRs.
README
Memex

Personal knowledge base as a GitHub template. An MCP server gives AI agents tools to search, read, and add knowledge. Writes go through Cursor Cloud Agents — a cloud agent reads your .cursor/rules/, creates properly formatted entries with cross-references, and opens a PR for you to review.
How It Works
You: "add what we discussed about transformers to my knowledge base"
↓
Your AI agent summarizes the discussion
↓
Calls kb_add(summary) via MCP
↓
Cursor Cloud Agent spawns, reads .cursor/rules/,
creates atomic entries with typed edges, opens a PR
↓
You review and merge
Read path: MCP server reads from local disk — fast, no API calls. Write path: Cloud agent handles formatting, cross-references, and PRs.
Quick Start
- Click Use this template on GitHub
- Clone your new repo locally
- Configure:
cp .env.example .env
# Edit .env — set CURSOR_API_KEY
# Edit config.yaml — set github.owner and github.repo
- Run the server:
uv run memex
- Add to Cursor MCP config (
.cursor/mcp.json):
{
"mcpServers": {
"memex": {
"url": "http://localhost:8787/mcp"
}
}
}
Done. Your AI agent now has access to kb_search, kb_list, kb_read, kb_add, and kb_status tools.
Knowledge Model
Flat knowledge graph: every entry is knowledge/{slug}.md.
---
title: "RLHF"
type: concept # concept | reference | insight | question | note
summary: "Fine-tuning LLMs using human preference feedback"
tags: [ml, alignment]
created: "2026-02-09"
edges:
- path: /knowledge/reward-model.md
label: uses
description: "Reward model scores outputs for training signal"
sources:
- url: "https://arxiv.org/abs/2203.02155"
---
- Typed edges in frontmatter — the graph's source of truth
- Markdown links in body — for readability, clickable on GitHub
- Backlinks computed dynamically by the server
- Body templates per type (concept → Definition/How It Works/Connections, etc.)
MCP Tools
| Tool | Description |
|---|---|
kb_search(query) |
Fulltext search across entries |
kb_list(type?, tag?) |
List entries with optional filters |
kb_read(path) |
Read entry with edges and backlinks |
kb_add(summary) |
Launch cloud agent to add knowledge via PR |
kb_status(agent_id) |
Check cloud agent status and PR URL |
Viewer (GitHub Pages)
A static site with entry list, filters, and interactive graph visualization.
Deploy automatically when a PR is merged into master that changes knowledge/** (also redeploys on viewer/** changes).
Manual deploy: go to Actions → Deploy Knowledge Base Viewer → Run workflow.
The viewer reads knowledge/*.md, builds a data.json, and deploys a single-page app with vis.js graph.
Running with Docker
docker compose up
Remote Deployment
Deploy the Docker image to any host. Set these env vars:
| Variable | Purpose |
|---|---|
MEMEX_GIT_URL |
Repo URL for cloning |
MEMEX_GIT_TOKEN |
GitHub PAT for private repos |
MEMEX_AUTH_TOKEN |
Bearer token for MCP endpoint auth |
CURSOR_API_KEY |
For kb_add (Cloud Agents API) |
OPENAI_API_KEY |
For semantic search (optional) |
Cursor MCP config for remote:
{
"mcpServers": {
"memex": {
"url": "https://your-host.example.com/mcp",
"headers": {
"Authorization": "Bearer your-token-here"
}
}
}
}
Search Backends
Configured in config.yaml under search.backend:
bm25(default) — term-frequency relevance ranking via rank-bm25substring— zero-dependency fallback, case-insensitive matchsemantic— OpenAI embeddings with cosine similarity (requiresOPENAI_API_KEY)
CLI
The cloud agent uses CLI tools to query the KB during PR creation:
uv run python -m server.cli search "reinforcement learning"
uv run python -m server.cli list --type concept --tag ml
uv run python -m server.cli read /knowledge/rlhf.md
uv run python -m server.cli stats
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