Skip to main content
Glama

featuriq-mcp

An MCP (Model Context Protocol) server for Featuriq — the product feedback and roadmap tool for PMs.

Connect your Featuriq workspace to any MCP-compatible AI client (Claude Desktop, Cursor, etc.) and query your feature requests, search customer feedback, run AI prioritization, update statuses, and notify users — all from natural language.


Installation

Option 1 — run directly with npx (no install required)

npx featuriq-mcp

Option 2 — install globally

npm install -g featuriq-mcp
featuriq-mcp

Setup

1. Get your API key

Log in to featuriq.io, go to Settings → API, and copy your API key.

2. Set the environment variable

export FEATURIQ_API_KEY=fq_live_xxxxxxxxxxxxxxxxxxxx

Or copy .env.example to .env and fill in your key if your client supports .env files.

Variable

Required

Default

Description

FEATURIQ_API_KEY

Yes

Your Featuriq API key

FEATURIQ_API_URL

No

https://featuriq.io/v1

Override the API base URL

3. Add to your MCP client

Claude Desktop

Edit ~/Library/Application Support/Claude/claude_desktop_config.json (macOS) or %APPDATA%\Claude\claude_desktop_config.json (Windows):

{
  "mcpServers": {
    "featuriq": {
      "command": "npx",
      "args": ["featuriq-mcp"],
      "env": {
        "FEATURIQ_API_KEY": "fq_live_xxxxxxxxxxxxxxxxxxxx"
      }
    }
  }
}

Cursor

Add to your Cursor MCP settings:

{
  "featuriq": {
    "command": "npx featuriq-mcp",
    "env": {
      "FEATURIQ_API_KEY": "fq_live_xxxxxxxxxxxxxxxxxxxx"
    }
  }
}

Available Tools

get_top_requests

Returns the top feature requests sorted by vote count or revenue impact.

Parameters:

  • limit (number, default 10) — how many results to return

  • sort_by ("votes" | "revenue_impact", default "votes") — sort order

Example prompts:

  • "What are the top 5 most-requested features?"

  • "Show me the highest revenue impact requests."


search_feedback

Semantically searches all feedback posts using natural language — finds relevant results even when the exact words don't match.

Parameters:

  • query (string) — what to search for

  • limit (number, default 10) — max results

Example prompts:

  • "Find feedback about slow dashboard loading."

  • "Search for requests related to CSV export."

  • "What are users saying about mobile performance?"


get_feature_feedback

Returns all comments and discussion for a specific feature request.

Parameters:

  • feature_id (string) — the feature's unique ID

Example prompts:

  • "Show me all feedback on feature feat_01j8k..."

  • "What are users saying about the API rate limit request?"


get_prioritization

Returns an AI-prioritized list of features, scored across the factors you choose.

Parameters:

  • factors (array) — one or more of: "votes", "revenue", "effort", "strategic_fit"

  • limit (number, default 10)

Example prompts:

  • "Prioritize our backlog by votes and revenue impact."

  • "Give me the top 10 features ranked by votes, effort, and strategic fit."

  • "What should we build next quarter based on revenue and strategic alignment?"


update_feature_status

Updates the status of a feature request.

Parameters:

  • feature_id (string) — the feature's unique ID

  • status ("planned" | "in_progress" | "shipped" | "closed")

Example prompts:

  • "Mark feature feat_01j8k as in_progress."

  • "Set the dark mode request to shipped."

  • "Close the feature request for legacy IE support."


notify_requesters

Sends a personalized notification to every user who voted for a feature.

Parameters:

  • feature_id (string) — which feature's voters to notify

  • message (string) — the message to send (Featuriq personalizes it per recipient)

Example prompts:

  • "Notify everyone who requested CSV export that it's now live."

  • "Tell the users who voted for dark mode that we're starting work on it next sprint."


create_post

Creates a new feedback post on a Featuriq board.

Parameters:

  • board_id (string) — which board to post to

  • title (string) — short title for the post

  • description (string) — full description

Example prompts:

  • "Log a feature request for bulk CSV import on the features board."

  • "Create a post for the Slack integration idea from today's customer call."


Available Resources

Resources are data sources that the AI can read at any time for context.

featuriq://roadmap

The current roadmap grouped by status: In Progress, Planned, and Recently Shipped.

Example prompts:

  • "What's on our current roadmap?"

  • "What features are in progress right now?"

featuriq://changelog

The last 20 shipped features with ship dates and release notes.

Example prompts:

  • "What have we shipped recently?"

  • "Write a summary of our last month's product updates."


Example Conversation

You: What are the top feature requests we haven't started yet, and which ones should we prioritize based on votes and revenue impact?

Claude: (calls get_top_requests and get_prioritization) Here are your top unstarted requests...

You: Great. Mark the #1 one as in_progress and notify everyone who voted for it.

Claude: (calls update_feature_status then notify_requesters) Done! Status updated and 47 users notified.


Development

git clone https://github.com/carlosalvite/featuriq-mcp
cd featuriq-mcp
npm install
npm run build
FEATURIQ_API_KEY=your_key node dist/index.js

To watch for changes during development:

npm run dev

License

MIT © Featuriq

F
license - not found
-
quality - not tested
C
maintenance

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/carlosalvite/featuriq-mcp'

If you have feedback or need assistance with the MCP directory API, please join our Discord server