@dropdat/mcp
Enables AI clients to search, retrieve, and save capsules in the user's dropdat library.
README
@dropdat/mcp
MCP server for dropdat. Lets any MCP-capable AI client (Claude Code, Cursor, Cline, Claude Desktop) recall, read, and save capsules in the user's dropdat library.
Tools
| Tool | Purpose |
|---|---|
dropdat_recall |
Keyword-search capsules (titles, summaries, message bodies). |
dropdat_read |
Fetch one capsule's full contents by id (optional lineage). |
dropdat_list |
Browse recent capsules, optional tag filter. |
dropdat_capsule |
Save the current conversation slice as a new capsule (model picks the messages). |
dropdat_autocapsule |
Save the full verbatim Claude Code session by reading the on-disk .jsonl transcript. |
dropdat_recall calls the hybrid /capsules/search endpoint
(vector + BM25 fused via RRF). Set OPENAI_API_KEY on the API for
full semantic recall; without it the endpoint degrades to BM25.
Install
# from npm (recommended — clients can also `npx -y @dropdat/mcp`)
npm install -g @dropdat/mcp
# or from source
git clone https://github.com/dropdat/mcp.git
cd mcp && npm install && npm run build
Configure
Issue an API key in the dashboard → API Keys (token shown once,
shape dk_live_…). Export it:
export DROPDAT_API_KEY=dk_live_xxx
# Optional — defaults to https://dropdat.app, the hosted API.
# Set this only if you're running the API locally or self-hosted.
# export DROPDAT_API_BASE=http://localhost:8080
If you're self-hosting the API and have DEV_AUTH_BYPASS=1 enabled,
the API ignores tokens entirely and assumes DEV_USER_ID. Use a real
key against any normal deployment.
Wire into a client
Claude Code
Add to ~/.claude/mcp.json (or project .mcp.json):
{
"mcpServers": {
"dropdat": {
"command": "npx",
"args": ["-y", "@dropdat/mcp"],
"env": {
"DROPDAT_API_KEY": "dk_live_xxx"
}
}
}
}
Cursor / Cline / Claude Desktop
Same shape — npx -y @dropdat/mcp as the command, DROPDAT_API_KEY
in env. Transport is stdio.
Develop
npm run dev # tsx, no rebuild
npm run build # emit dist/
The compiled dist/index.js starts with a #!/usr/bin/env node
shebang and is chmod +x'd on build — once published, clients can
npx -y @dropdat/mcp instead of pinning a path.
Endpoint surface used
All against the Go API under /api/v1:
GET /capsules?q=&tag=&limit=POST /capsules/searchGET /capsules/{id}GET /capsules/{id}/lineagePOST /capsules
Bearer auth — accepts either a Clerk session JWT or a dk_* API key.
The MCP server uses the API-key path so it survives long-running
agent sessions without a refresh dance.
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