Connects Claude to Reddit's discussion data through five core operations: semantic subreddit discovery across 20,000+ indexed communities, targeted post search, batch fetching from multiple subreddits, and full comment tree retrieval. Also exposes feed management for saving subreddit collections you want to monitor long term. Uses vector embeddings to find conceptually relevant communities beyond Reddit's 250 result API limit, with every data point linking back to the original post with upvotes and awards. Hosted solution handles Reddit API credentials through Descope OAuth, so you skip the authentication setup. Reach for this when you need competitive analysis, customer discovery, or market research with actual citations instead of assumptions.
mcp-name: io.github.king-of-the-grackles/reddit-research-mcp
Open source Reddit intelligence, part of the research engine that powers Dialog
Version: 1.0.1
Turn Reddit's chaos into evidence-backed insights. This MCP server gives any AI assistant semantic search across 20,000+ active subreddits, deep-dive access to posts and comment threads, and saved feeds for ongoing monitoring. Every finding comes with citations to real posts and comments.
It's fully usable on its own, for free, in Claude Code, Cursor, Codex, Gemini CLI, or any MCP-compatible client. It's also part of the research engine that powers Dialog, the AI agent platform for continuous market intelligence, where it ships connected to every agent.
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. This server 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.
claude mcp add --scope local --transport http dialog-mcp https://reddit-research-mcp.fastmcp.app/mcp
cursor://anysphere.cursor-deeplink/mcp/install?name=dialog-mcp&config=eyJ1cmwiOiJodHRwczovL3JlZGRpdC1yZXNlYXJjaC1tY3AuZmFzdG1jcC5hcHAvbWNwIn0%3D
codex mcp add dialog-mcp \
npx -y mcp-remote \
https://reddit-research-mcp.fastmcp.app/mcp \
--auth-timeout 120 \
--allow-http \
gemini mcp add dialog-mcp \
npx -y mcp-remote \
https://reddit-research-mcp.fastmcp.app/mcp \
--auth-timeout 120 \
--allow-http
For other AI assistants: https://reddit-research-mcp.fastmcp.app/mcp
"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.
"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.
"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.
"What problems are SaaS founders having with subscription billing?"
Identify pain points and validate your solution with evidence from actual Reddit discussions, not assumptions.
"Save these communities as a feed so we can track competitor sentiment over time"
Build curated feeds of the communities that matter to you, then come back to them in any session. Want this to run on a schedule and land in Slack? That's what Dialog adds on top.
| 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 |
The server follows the layered abstraction pattern for scalability and self-documentation:
discover_operations()
See what operations are available and get workflow recommendations.
get_operation_schema("discover_subreddits", include_examples=True)
Understand parameter requirements, validation rules, and see examples before executing.
execute_operation("discover_subreddits", {
"query": "machine learning",
"limit": 15,
"min_confidence": 0.6
})
Perform the actual operation with validated parameters.
Find relevant communities using semantic vector search across 20,000+ indexed subreddits.
Search for posts within a specific subreddit with filters for time range and sort order.
Get posts from a single subreddit by listing type (hot, new, top, rising).
70% more efficient - Batch fetch posts from multiple subreddits concurrently.
Get complete comment trees for deep analysis of discussions.
Feeds let you save research configurations for ongoing monitoring:
The server uses Descope OAuth2 for secure authentication:
This server is free and fully usable standalone. Dialog is the hosted platform where it plugs into a larger research engine: AI agents that combine this Reddit server with 45+ other integrations to run your research continuously and deliver the results where you work.
| This MCP server (free, open source) | Dialog platform | |
|---|---|---|
| Reddit research | Full access: semantic discovery, search, posts, comments, feeds | This same server, connected by default to every agent |
| How it runs | On demand, inside your AI assistant | Autonomous agents powered by Claude that plan and execute multi-step research |
| Scheduling | Manual, session by session | Automations that run on a schedule and land in a persistent inbox |
| Delivery | Your chat window | Formatted reports with inline charts in Slack, Telegram, or the web app |
| Data sources | Reddit plus 45+ integrations: Gmail, Slack, Linear, HubSpot, Apollo, PostHog, Google Drive, and more | |
| Memory | Per session | Persistent agent workspaces that build context over time |
A typical Dialog workflow: an agent monitors your competitors' communities every Monday morning, cross-references mentions against your CRM, and posts a formatted report with charts to your team's Slack channel before standup.
Contributions are welcome. The stack:
# Clone and install (uses uv)
git clone https://github.com/king-of-the-grackles/reddit-research-mcp.git
cd reddit-research-mcp
uv sync --extra dev
# Run tests
uv run pytest
# Run the server locally
uv run reddit-mcp
Found a bug or have a feature idea? Open an issue.
Stop guessing. Start knowing what your market actually thinks.