RAG_MCP

Created By
mytechnotalenta year ago
A RAG-ready MCP server for semantic PDF search with OCR, FAISS, and transformers—plug into any MCP client and retrieve intelligent answers within your MCP client.
Overview

what is RAG_MCP?

RAG_MCP is a RAG-ready MCP server designed for semantic PDF search, utilizing OCR, FAISS, and transformers to provide intelligent answers.

how to use RAG_MCP?

To use RAG_MCP, integrate it with any MCP client, allowing you to perform semantic searches on PDF documents and retrieve relevant information.

key features of RAG_MCP?

  • Semantic PDF search capabilities
  • Integration with OCR for text recognition
  • Utilization of FAISS for efficient similarity search
  • Transformer models for intelligent answer retrieval

use cases of RAG_MCP?

  1. Searching academic papers for specific information.
  2. Retrieving data from scanned documents.
  3. Enhancing document management systems with intelligent search features.

FAQ from RAG_MCP?

  • What is the primary function of RAG_MCP?

RAG_MCP is designed to perform semantic searches on PDF documents, providing intelligent answers based on the content.

  • Is RAG_MCP easy to integrate?

Yes! RAG_MCP can be easily plugged into any MCP client for seamless functionality.

  • What technologies does RAG_MCP use?

RAG_MCP utilizes OCR, FAISS, and transformer models to enhance its search capabilities.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
mytechnotalent
Star
1
Language
Python
License
Apache-2.0 license
Tags

Recommend Servers

View All
Bring your real authenticated browser session to AI coding agents. Local-first MCP server + Chrome MV3 extension. No cloud. No telemetry.
@Cubenest

peek records the user's actual logged-in browser (DOM via rrweb, console events, network metadata, optional response bodies via opt-in Deep capture) through a Chrome MV3 extension. The extension ships events through a native-messaging stdio bridge to a local MCP server (peek-mcp), which persists them to a SQLite database at ~/.peek/sessions.db. AI coding agents (Claude Code, Cursor, Cline, Windsurf) read sessions from the database via 10 MCP tools: Tool What it does list_recent_sessions List recently recorded sessions (id, origin, ts, event count). get_session_summary LLM-readable narrative summary of a session. get_session_console_errors Console errors recorded in a session. get_session_network_errors Failed/notable network requests in a session. get_user_action_before_error Last N user actions before a console error. generate_playwright_repro Generate a runnable Playwright test from a session. get_dom_snapshot Reconstruct the DOM at a given timestamp. query_dom_history Timeline of attribute/text changes for a selector. request_authorization Side-panel consent for write actions (Level 3). execute_action Dispatch a UI action (gated by permission level + destructive blocklist). Why local-first matters Every other "browser session for AI" tool ships to a vendor cloud. peek's SQLite + extension live on the user's machine — no remote endpoints, no telemetry. The privacy policy (docs/peek/PRIVACY_POLICY.md) is the source of truth. Install # 1. Add the MCP server to Claude Code claude mcp add peek -- npx -y @peekdev/mcp # 2. Install the Chrome extension from the Chrome Web Store # (link added once the CWS listing is approved)

a day ago
Crevio

2 days ago