dialog-reddit-tools

dialog-reddit-tools

Dialog MCP Server enables AI assistants to conduct Reddit research through semantic search across 20,000+ indexed subreddits, fetching posts and comments with full citations and URLs. It provides a three-layer architecture (discover → schema → execute) for market research, competitive analysis, a

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mcp-name: io.github.king-of-the-grackles/reddit-research-mcp

Dialog MCP Server

AI-Powered Reddit Intelligence for Market Research & Competitive Analysis

Python 3.11+ FastMCP License: MIT

Version: 1.0.0


Turn Reddit's chaos into actionable insights. Dialog is your all-in-one Reddit intelligence platform for competitive analysis, market research, and customer discovery across 20,000+ active subreddits.

This is the official MCP server powering Dialog - the AI-powered Reddit research platform built for indie hackers, SaaS founders, product managers, and market researchers.


Why Dialog?

Evidence-based insights with full citations. Every finding links back to real Reddit posts and comments with upvote counts, awards, and direct URLs. When you say "users are complaining about X," you'll have the receipts to prove it.

Zero-friction setup. No Reddit API credentials needed. No terminal commands. No credential management. Just connect and start researching.

Semantic search at scale. Reddit's API caps at 250 search results. Dialog searches conceptually across 20,000+ indexed subreddits using vector embeddings, finding relevant communities you didn't know existed.

Persistent research management. Save subreddit collections into feeds for ongoing monitoring. Perfect for long-term competitive analysis and market research campaigns.


Quick Setup (60 Seconds)

Claude Code

claude mcp add --scope local --transport http dialog-mcp https://reddit-research-mcp.fastmcp.app/mcp

Cursor

cursor://anysphere.cursor-deeplink/mcp/install?name=dialog-mcp&config=eyJ1cmwiOiJodHRwczovL3JlZGRpdC1yZXNlYXJjaC1tY3AuZmFzdG1jcC5hcHAvbWNwIn0%3D

OpenAI Codex CLI

codex mcp add dialog-mcp \
    npx -y mcp-remote \
    https://reddit-research-mcp.fastmcp.app/mcp \
    --auth-timeout 120 \
    --allow-http \

Gemini CLI

gemini mcp add dialog-mcp \
  npx -y mcp-remote \
  https://reddit-research-mcp.fastmcp.app/mcp \
  --auth-timeout 120 \
  --allow-http

Direct MCP Server URL

For other AI assistants: https://reddit-research-mcp.fastmcp.app/mcp


What You Can Do

Competitive Analysis

"What are developers saying about Next.js vs Remix?"

Get a comprehensive report comparing sentiment, feature requests, pain points, and migration experiences with links to every mentioned discussion.

Customer Discovery

"Find the top complaints about existing CRM tools in small business communities"

Discover unmet needs, feature gaps, and pricing concerns directly from your target market with citations to real user feedback.

Market Research

"Analyze sentiment about AI coding assistants across developer communities"

Track adoption trends, concerns, success stories, and emerging use cases with temporal analysis showing how opinions evolved.

Product Validation

"What problems are SaaS founders having with subscription billing?"

Identify pain points and validate your solution with evidence from actual Reddit discussions, not assumptions.


Server Capabilities

Category Count Description
MCP Tools 3 discover_operations, get_operation_schema, execute_operation
Reddit Operations 5 discover, search, fetch_posts, fetch_multiple, fetch_comments
Feed Operations 5 create, list, get, update, delete
Indexed Subreddits 20,000+ Active communities (2k+ members, updated weekly)
MCP Prompts 1 reddit_research for automated workflows
Resources 1 reddit://server-info for documentation

Use Cases by Role

For Indie Hackers & SaaS Founders

  • Validate product ideas before building
  • Find communities where your target customers hang out
  • Monitor competitor mentions and sentiment
  • Discover unmet needs in your niche

For Product Managers

  • Gather customer feedback at scale
  • Track feature requests across communities
  • Understand competitive landscape
  • Identify emerging trends before they peak

For Market Researchers

  • Conduct sentiment analysis with full citations
  • Build audience personas from real discussions
  • Track how opinions evolve over time
  • Generate evidence-based reports

Technical Details

<details> <summary><strong>Three-Layer MCP Architecture</strong></summary>

Dialog follows the layered abstraction pattern for scalability and self-documentation:

Layer 1: Discovery

discover_operations()

See what operations are available and get workflow recommendations.

Layer 2: Schema Inspection

get_operation_schema("discover_subreddits", include_examples=True)

Understand parameter requirements, validation rules, and see examples before executing.

Layer 3: Execution

execute_operation("discover_subreddits", {
    "query": "machine learning",
    "limit": 15,
    "min_confidence": 0.6
})

Perform the actual operation with validated parameters.

</details>

<details> <summary><strong>Reddit Research Operations</strong></summary>

discover_subreddits

Find relevant communities using semantic vector search across 20,000+ indexed subreddits.

search_subreddit

Search for posts within a specific subreddit with filters for time range and sort order.

fetch_posts

Get posts from a single subreddit by listing type (hot, new, top, rising).

fetch_multiple

70% more efficient - Batch fetch posts from multiple subreddits concurrently.

fetch_comments

Get complete comment trees for deep analysis of discussions.

</details>

<details> <summary><strong>Feed Management Operations</strong></summary>

Feeds let you save research configurations for ongoing monitoring:

  • create_feed - Save discovered subreddits with analysis and metadata
  • list_feeds - View all your saved feeds with pagination
  • get_feed - Retrieve a specific feed by ID
  • update_feed - Modify feed name, subreddits, or analysis
  • delete_feed - Remove a feed permanently

</details>

<details> <summary><strong>Authentication</strong></summary>

Dialog uses Descope OAuth2 for secure authentication:

  • Setup: No Reddit credentials needed - server handles authentication
  • Token: Automatically managed by your MCP client
  • Privacy: Only accesses public Reddit data
  • First use: Authentication takes ~30 seconds, then you're set

</details>


The Dialog Platform

This MCP server is the backend for Dialog, a complete Reddit intelligence platform featuring:

  • Chat Interface - Natural language research powered by Claude AI
  • Feed Management - Create and manage curated subreddit collections
  • Consolidated Views - See hot posts from all your tracked subreddits in one place
  • Cross-Device Sync - Chat history and feeds sync across devices
  • Visual Analytics - Sentiment gauges, trend charts, and engagement metrics

Try Dialog Free


Contributing

This project uses:

  • Python 3.11+ with type hints
  • FastMCP for the server framework
  • ChromaDB for semantic search
  • PRAW for Reddit API interaction

<div align="center">

Stop guessing. Start knowing what your market actually thinks.

Dialog App | GitHub | Report Issues

</div>

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