Kollektiv logo

Kollektiv

Kollektiv

DocumentationOauth2.1

Kollektiv MCP Server

Kollektiv - Documentation service

Kollektiv hero image

Kollektiv MCP Server

Kollektiv MCP Server is a cutting-edge Model Context Protocol (MCP) server that enables seamless document analysis and retrieval-augmented generation (RAG) capabilities for AI assistants like ChatGPT and Claude. Built by the creators of the viral Supabase MCP server, Kollektiv has launched to enable you to chat with and query your own documents. A dead simple UI interface lets you upload a set of files, and then you can RAG them as a group across either Kollektiv's remote SSE or Streamable MCP Server.

Key Features & Capabilities

Semantic Document Search

Use it for analyzing reports, sifting through technical docs, or anywhere else you might have a handful of lengthy, private-or-curated PDFs or markdown files.

  • Advanced RAG (Retrieval-Augmented Generation) search over uploaded documents
  • Natural language querying of document collections

Document Management

  • Simple document upload interface
  • Support for PDFs and markdown files
  • Group document analysis capabilities
  • List and manage uploaded documents

ChatGPT Custom Connectors & Claude Custom Connectors

The Kollektiv MCP server provides seamless integration with:

  • ChatGPT custom connectors for document-based AI interactions
  • Claude custom connectors through the Model Context Protocol
  • Remote MCP servers architecture for scalable deployment

Primary Use Cases

Business Intelligence & Analysis

  • Corporate report analysis and summarization
  • Financial document review and insights
  • Market research document processing

Technical Documentation

  • API documentation querying
  • Technical manual analysis
  • Engineering specification review

Research & Academia

  • Academic paper analysis
  • Research document compilation
  • Literature review assistance

Enterprise Knowledge Management

  • Internal document search and retrieval
  • Policy and procedure querying
  • Compliance document analysis

Target Audience

Business Professionals

  • Executives needing quick document insights
  • Analysts working with large document sets
  • Consultants processing client materials

Developers & Technical Teams

  • Software engineers analyzing technical docs
  • DevOps teams managing documentation
  • Technical writers organizing content

Knowledge Workers

  • Researchers handling multiple document sources
  • Legal professionals reviewing contracts
  • HR teams managing policy documents

Technical Architecture

Server Details

  • Server URL: https://mcp.thekollektiv.ai/sse
  • Protocol: Server-Sent Events (SSE) for real-time communication
  • Total Tools: 2 specialized document processing tools

Available Tools

  1. execute_rag_search - Performs semantic search over uploaded documents
  2. list_uploaded_documents - Returns list of user's uploaded documentsugh technical docs, or anywhere else you might have a handful of lengthy, private-or-curated PDFs or markdown files.

🌐 Remote MCP Server Architecture Scalable cloud-based deployment eliminates infrastructure management overhead.

Getting Started

  1. Upload Documents - Use Kollektiv's simple interface to upload your PDFs or markdown files
  2. Connect to AI Assistant - Integrate with ChatGPT or Claude using the MCP server endpoint
  3. Start Querying - Ask natural language questions about your documents
  4. Get Insights - Receive AI-powered analysis and summaries of your content

Competitive Advantages

  • Kollektiv chatgpt connector provides seamless ChatGPT integration
  • Kollektiv claude integration offers native Claude support
  • Kollektiv mcp server delivers enterprise-grade document processing
  • Remote deployment eliminates infrastructure complexity
  • Proven development team with successful MCP server track record

Transform your document analysis workflow today with Kollektiv's powerful MCP server - the smart choice for AI-powered document intelligence.

Connect to kollektiv

https://mcp.thekollektiv.ai/sse

Oauth2.1

Documentation