mcp-server-coordinate
Extracts structured commitments (who promised what, by when, under conditions) from text transcripts, emails, Slack logs, etc. using Anthropic API.
README
mcp-server-coordinate
An MCP server that extracts structured commitments from unstructured text meeting transcripts, email threads, Slack logs, or SMS chains.
Given messy human communication, it tells you: who promised what, by when, and under what conditions.
"Sarah said she'd loop in the design team once the spec is finalized,
and Tom committed to shipping the API endpoint by end of sprint."
↓
Commitment 1
Person: Sarah
Committed: Loop in the design team
Deadline: not stated
Conditions: once the spec is finalized
Confidence: high
Quote: "she'd loop in the design team once the spec is finalized"
Commitment 2
Person: Tom
Committed: Ship the API endpoint
Deadline: end of sprint
Conditions: none
Confidence: high
Quote: "committed to shipping the API endpoint by end of sprint"
Installation
npm install -g mcp-server-coordinate
Or run without installing:
npx mcp-server-coordinate --file transcript.txt
Requirements
An Anthropic API key:
export ANTHROPIC_API_KEY=sk-ant-...
Usage
As an MCP server (Claude Desktop / Cursor / etc.)
Add to your MCP config:
{
"mcpServers": {
"coordinate": {
"command": "npx",
"args": ["-y", "mcp-server-coordinate"],
"env": {
"ANTHROPIC_API_KEY": "sk-ant-..."
}
}
}
}
Then in Claude, use the extract_commitments tool:
Extract commitments from this transcript: [paste text]
As a CLI
# Inline text
mcp-server-coordinate "Alice will send the proposal by Thursday."
# From a file
mcp-server-coordinate --file meeting.txt
# Pipe from stdin
cat thread.txt | mcp-server-coordinate
What gets extracted
Each commitment includes:
| Field | Description |
|---|---|
person |
Who made the commitment |
commitment |
What they agreed to do |
deadline |
When (verbatim from source, e.g. "Friday", "end of Q2") |
conditions |
Any stated conditions ("if budget is approved") |
confidence |
high / medium / low |
source_quote |
The shortest verbatim excerpt proving the commitment |
The response also includes source_type (transcript / email / sms / thread / unknown) and estimated participant_count.
How it works
Uses claude-haiku-4-5 with tool use / structured output. The model is prompted to extract commitments conservatively — it distinguishes between strong commitments ("I'll send it by Friday") and weak ones ("I'll look into it"), and surfaces that distinction in the confidence field.
MCP Tool
extract_commitments
| Parameter | Type | Description |
|---|---|---|
text |
string |
The unstructured text to analyze |
License
MIT
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