PM Context MCP Server
A Python MCP server that gives Claude access to PM workflow data such as sprints, roadmap, blockers, and workload, using synthetic fixture data (no API keys required) and can be forked for real Linear/Jira integration.
README
PM Context MCP Server
A Python MCP server that gives Claude access to PM workflow data (sprints, roadmap, blockers, workload) so you can ask it questions a PM actually needs answered.
No API keys required. Runs entirely on synthetic fixture data representing a fictional product team ("Petal & Co"). Designed to be forked and connected to a real Linear or Jira workspace privately.
<img src="Demo-mcp.jpg" alt="Demo of Claude answering a sprint question using the MCP server" width="50%">
The Problem
PMs spend a disproportionate amount of time context-switching: checking Linear for sprint status, Confluence for the roadmap, Slack for who's blocked. Each lookup is a tab, a search, a few seconds of reorientation.
The bigger problem is that the questions PMs ask are aggregate and cross-cutting ("what should I focus on today?", "who's overloaded?", "what's actually blocking us?") but the tools expose raw CRUD. You have to do the aggregation yourself.
This MCP server exposes PM-oriented tools to Claude so those questions get answered in one place, with actual data behind them.
Architecture
Claude (Desktop or CLI)
│
│ MCP (stdio transport)
▼
pm-mcp-server (FastMCP)
│
│ loads
▼
data/fixture.json ← synthetic Petal & Co dataset
(or real Linear / Jira API in a private fork)
The server runs as a local subprocess. Claude calls tools over stdio; no network, no auth for the demo.
Tools
| Tool | What Claude can ask |
|---|---|
get_current_sprint_tool |
"What's in the current sprint?" / "How close are we to done?" |
get_my_issues_tool |
"What's on Priya's plate right now?" |
get_blockers_tool |
"What's blocking the team?" / "What should we unblock first?" |
search_issues_tool |
"Find all issues related to payments" |
get_roadmap_tool |
"How far along are we on each epic?" |
get_team_workload_tool |
"Who has the most issues assigned?" / "Show me the Growth team's workload" |
get_velocity_tool |
"What's our sprint velocity trend?" |
How to Run
Requirements: Python 3.10+, uv
# Clone and enter the repo
git clone https://github.com/jackhendon/pm-mcp-server
cd pm-mcp-server
# Install dependencies
uv sync
# Test a tool directly
uv run python -c "from tools.sprints import get_current_sprint; import json; print(json.dumps(get_current_sprint(), indent=2))"
# Run the MCP inspector (requires mcp[cli])
uv run mcp dev server.py
Connect to Claude Desktop
Add this to your claude_desktop_config.json:
{
"mcpServers": {
"pm-context": {
"command": "/Users/yourname/.local/bin/uv",
"args": ["--directory", "/path/to/pm-mcp-server", "run", "python", "server.py"]
}
}
}
Note: Claude Desktop on macOS doesn't inherit your shell PATH, so
uvmust be an absolute path. Runwhich uvin your terminal to find it.
Config location:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json
Restart Claude Desktop. You should see pm-context listed under connected tools.
Connect to Claude Code (CLI)
claude mcp add pm-context uv run python server.py --cwd /path/to/pm-mcp-server
Try these prompts
- "What's in the current sprint and how close are we to finishing?"
- "Who has the most work on their plate right now?"
- "What's blocking the team and what should we unblock first?"
- "How has our sprint velocity trended over the last few sprints?"
- "What's the roadmap looking like across all epics?"
- "Find all issues related to API authentication"
Fixture Data: Petal & Co
The synthetic dataset represents a fictional gift-card startup's product team:
- 6 team members across 2 teams (Growth, Core)
- 3 projects: Checkout Redesign, API Platform v2, Gifting Suite
- 3 epics at different stages of completion
- 17 issues in the active sprint (Sprint 14) with realistic statuses and blockers
- 4 completed sprints for velocity calculation
The data is rich enough that all 7 tools return genuinely interesting and differentiated results.
Real API Mode
This repo is designed to be forked privately and connected to a real Linear or Jira workspace.
- Fork the repo
- Copy
.env.exampleto.envand add your credentials - Implement
tools/integrations/linear.pyortools/integrations/jira.pythat returns data in the same shape as the fixture - Update
tools/__init__.pyto route to the real integration based onDATA_SOURCEenv var
The tool signatures and return shapes stay the same. Claude doesn't know or care whether the data comes from a fixture or a live API.
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